All businesses are built on data. But the question is: Is your business truly driven by data? Or are you merely gathering data without a strategy? An effective Data Engineering strategy might be the key to standing out in the market instead of lagging behind.
Let us help you find out.

Data Engineering: The Backbone of Modern Business Intelligence

In a data-driven age, where information is currency, the businesses that harness data are the only ones staying competitive. Raw data can be a terrifying nightmare because it can be messy and disorganized. Above all, you will find it nearly impossible to uncover valuable insights. That’s why you need Data Engineering.

Drive Business Excellence with Intelligent Data
Harness Data Engineering for Boosted Operational Success

Talk to Us Now!

What is Data Engineering?

Simply put, Data Engineering is all about creating, building, and maintaining systems. It enables you to collect, store, analyze, and separate relevant data. In other words, it refines raw data into a more digestible form. This allows you to now harness its power to its full potential. Without this crucial step, businesses are left drowning in a sea of digital clutter. They miss out on valuable opportunities for growth and innovation.
If you want to unlock the true potential of your data assets and stay ahead of the competition – let data engineering pave the way for success.

Why Is Data Engineering a Big Deal?

The significance of Data Engineering solutions has escalated with the exponential growth of data. Every email, customer interaction, and IoT sensor signal contributes to the data wave companies need to handle. A report from Market Data Forecast indicates that the worldwide big data and data engineering services market is anticipated to grow to around $325 billion by 2033, increasing from $75.55 billion in 2024.
Without Data Engineering solutions, companies are overwhelmed by information and unable to derive value from it. With data engineering, they achieve clarity, efficiency, and a competitive edge.

Here’s what it accomplishes:

  • Arranges and tidies data so that companies can effectively utilize it.
  • Streamlines data processes, minimizing manual work and mistakes.
  • Combines various sources for a comprehensive business perspective.
  • Enhances storage and processing, reducing expenses and increasing efficiency.
  • Ensures security & compliance because no one wants a data breach headline.

Now that we get the “why,” let’s break down the “how.”

Key Components of Data Engineering

Building Data Engineering solutions isn’t just about dumping everything into a cloud server and hoping for the best. It requires a solid foundation:

  1. Data Ingestion – Start with this first step: collect data from multiple sources such as APIs, databases, IoT devices, and social media.
  2. Data Storage – Your business will need a reliable home for your data – be it a traditional data warehouse (structured) or a data lake (unstructured).
  3. Data Processing – This is the stage where your raw data is cleaned, altered, and organized. Consider ETL (Extract, Transform, Load) pipelines that set up data for analysis.
  4. Data Orchestration – Automation solutions ensure the data processes operate smoothly while minimizing human errors.
  5. Data Governance & Security – GDPR and CCPA require uptight data security.
  6. Real-Time Analytics—Companies must stream data processing to make decisions quickly and on the go.

Data Engineering vs. Data Science: What’s the Difference?

They may seem very similar, but they are very different. Let’s simplify this for you. Data Science is like being a detective. One that digs into data to uncover patterns, trends, and insights. On the other hand, data engineering is like setting up a world-class crime lab that assists the detective in getting to the right clues. So, while one finds relevant data, the other makes sure the data is easily available and usable.
Without Data Engineering, data scientists lose almost 80% of their time because they have to clean and organize data instead of actually analyzing it. However, they can focus on extracting value and driving business impact with it.

Top Tools & Technologies in Data Engineering Solutions

The tech stack for Data Engineering solutions is constantly evolving, but here are the must-haves:

Data Storage & Management

  • Amazon Redshift / Google BigQuery – Scalable cloud data warehouses.
  • Apache Hadoop / Apache Spark – For massive distributed data processing.
  • Snowflake – A high-performance, cloud-native data platform.

ETL & Data Pipeline Tools

  • Apache Airflow – Automates and manages workflows.
  • AWS Glue / DBT (Data Build Tool) – Streamlines ETL processes.
  • Talend / Informatica – No-code ETL platforms for enterprises.

Streaming & Real-Time Processing

  • Apache Kafka – Handles real-time data streaming like a pro.
  • Google Dataflow – Processes real-time and batch data seamlessly.
  • Flink – High-performance, scalable data streaming.

Data Governance & Security

  • Apache Ranger – Manages security policies across data lakes.
  • Collibra – Enterprise data governance at scale.
  • Okta – Identity management and access control.

The Future of Data Engineering

The world of Data Engineering is only getting bigger. Here’s what’s next:

  • AI-powered automation – ML-driven pipelines that self-optimize.
  • Serverless data engineering – No infrastructure management, just pure efficiency.
  • Data Mesh – Decentralized data ownership for more agile businesses.
  • Edge Data Processing – Processing data closer to the source (IoT, mobile devices, etc.).

Real-World Examples of Data Engineering in Action

To demonstrate the impactful capabilities of Data Engineering, take a look at these success stories from Fingent’s collection:

  • Improved Decision-Making in Retail

Premium Retail Services (PRS) managed field marketing services for Samsung’s US market. Their representatives collect over a million data points monthly from over 12 retail segments. However, their reporting systems were outdated, and relying on PowerPoint and Excel led to delays and inefficiencies.
Solution: Fingent took the bull by the horns, so to speak, by developing a customized data analytics and visualization platform.
Result: This solution transformed complex datasets into intuitive visuals. It also automated data input and streamlined field data management. This enhanced their performance reviews and improved decision-making.

  • More Reliable Financial Forecasts

Quantlogic, a research firm, processed over 200,000 data touchpoints across 12 verticals in real-time in the financial sector. Its goal was to refine predictive algorithms for better investment planning.
Solution: Fingent implemented an advanced predictive analytics platform.
Result: This platform improved data quality and predictive accuracy. Thus, enabling Quantlogic to make more reliable financial forecasts.

  • Data Analytics to Determine Hospital Performance

The National Health Service (NHS) England struggled to evaluate hospital performance. This was due to their incongruent data sources and complex metrics.
Solution: Fingent deployed a comprehensive data visualization solution. This solution offered interactive graphs that linked across multiple disciplines. This system provided detailed analyses of key performance indicators.
Result: Now, NHS England can make informed decisions to enhance patient care and enjoy operational efficiency.

AI Tools for Data Analysis: Your Co-Captain to Business Success

Read More!

A Look into The Future of Data Engineering

The field of Data Engineering is swiftly evolving. Here’s what businesses can anticipate:

  • AI-Powered Automation: This will eliminate the need to monitor data pipelines manually. Machine learning algorithms will automate data pipelines and self-optimize whenever necessary.
  • Serverless Data Engineering: When you shift towards serverless architectures, your business will be able to focus on data processing instead of battling to be the tech support. The benefit? Grater scalability and cost efficiency!
  • Data Mesh Architecture: This approach enables you to own data. Each of your departments would be like a mini startup—independent, flexible, and accountable.
  • Edge Data Processing: With this, you can process data right where it began. IoT devices and mobile applications will see reduced latency while enabling real-time analytics.

How Fingent Can Help

We understand that navigating the complexities of Data Engineering is not as easy as it seems. Yes, it requires expertise and a forward-thinking approach. At Fingent, our experts specialize in crafting tailored Data Engineering solutions. And we ensure the solutions we provide always align with your business objectives. Let’s take us through our services:

Contact us today to discuss Data Engineering solutions.

Stay up to date on what's new

    About the Author

    ...
    Tony Joseph

    Tony believes in building technology around processes, rather than building processes around technology. He specializes in custom software development, especially in analyzing processes, refining it and then building technology around it.He works with clients on a daily basis to understand and analyze their operational structure, discover (and not invent) key improvement areas and come up with technology solutions to deliver an efficient process.

    Talk To Our Experts

      Top 10 Tech Stack That Reign Software Development in 2024

      What is a Tech Stack?

      A tech stack, also known as a software stack or development stack, is a combination of programming languages, frameworks, libraries, tools, and technologies that are used to develop and deploy a software application or system.

      A tech stack provides a standardized and organized approach to software development, enabling developers to leverage the existing tools, libraries, and frameworks to build efficient and reliable applications. In other words, a tech stack represents the layers of software components and infrastructure that work together to create a functioning software product.

      Layers and Components That Constitute a Technology Stack

      There are three key components that make up a tech stack:

      Client-side (frontend)

      Client-facing side that consists of what the user sees and interacts with. Frontend technologies include HTML, CSS, JavaScript, and UI frameworks and libraries.

      Server-side (backend)

      The logic that runs behind the application and its features. Various backend programming languages and tools are used for handling the requests coming from the client-facing side. Backend technologies include web frameworks, programming languages, servers, and operating systems.

      Database

      Enables the storage of application data like user profiles or information about the product or software.

      DIFFERENT LAYERS THAT CONSTITUTE A TECH STACK

      1. Operating System (OS)
      2. Server-Side Programming
      3. Web Server
      4. Database
      5. Client-Side Programming
      6. Frontend Frameworks/ Libraries
      7. Deployment & Infrastructure
      The specific technologies and components chosen for each layer may vary depending on your project requirements, scalability needs, performance considerations, target platforms (web, mobile, desktop), and your software development partner’s expertise.

      Got An Idea Or Software Requirement?

      Top 10 Tech Stacks Used for Software Development in 2024

      • A classic, time-tested stack of technologies that stands for – Linux (Operating System), Apache (Web Server), MySQL (Database), and PHP (Programming Language).
      • LAMP is one of the first open-source software stacks commonly used to develop and deliver web applications today.
      • Efficiently handles dynamic web pages wherein content changes each time when a page is loaded.
      • Allows you to choose components based on your specific business requirements. For instance, instead of Linux OS, you can choose Windows OS to form a WAMP stack or macOS to form a MAMP stack. You can also swap PHP in the stack with Perl or Python to get the desired results.
      • MEAN stack comprises MongoDB (Database), Express.js (Backend framework), Angular (Frontend framework), and Node.js (Runtime environment).
      • MEAN is an end-to-end JavaScript stack that allows you to use a single language throughout the stack. This helps you reuse the code across the entire application.
      • All the technologies in MEAN stack are free and open-source and are supported by a vibrant community.
      • MEAN stack technologies are ideal for cloud hosting since they are flexible, scalable, and extensible. The stack can be deployed easily as it includes its own web server.
      • The database can be scaled on-demand to accommodate usage spikes temporarily.
      • When you replace Angular in the MEAN stack with React, it becomes MERN. React is one of the most popular frameworks used for building high-end, single-page applications with interactive UI.
      • React uses JSX, a syntax extension to JavaScript, which provides a way to structure component rendering using syntax familiar to many developers.
      • React uses Virtual DOM (Document Object Model), that allows changes to be implemented easily.
      • Since React is a library and not a framework, developers may have to rely on third-party services to build the desired functionalities.
      • Ruby on Rails (RoR), or simply Rails, is a server-side web application framework written in Ruby under the MIT license.
      • Rails is an open source, object-oriented, model–view–controller (MVC) framework that provides default structures for a database, a web service, and web pages.
      • ROR offers innovative features such as seamless database table creations, migrations, and scaffolding of views to enable rapid application development.
      • The framework encourages and facilitates the use of web standards such as JSON or XML for data transfer and HTML, CSS and JavaScript for user interfacing.
      • .NET is an open-source developer platform made up of tools, programming languages, and libraries for building modern, scalable, and high-performing desktop, web, and mobile applications that can run natively on any operating system.
      • There are various implementations of .NET that allow the .NET code to execute on different operating systems – Linux, macOS, Windows, iOS, Android, and many more.
      • C#, F#, and Visual Basic are the three Microsoft-supported languages for NET development. There are many third-party created languages that work well with the .NET platform.
      • .NET is a highly coveted software development platform due to its advantages such as ease of development, code reusability, extensive support for high-performing applications, strong built in security measures, and active community support.
      • Django is a high-level Python web framework that encourages rapid web development with a clean, pragmatic design. Both Python and Django are widely used together for building full-stack applications.
      • Leveraging the Django-Python stack for application development allows you to use modern technologies including: PyCharm, Python, HTML, CSS, and JavaScript.
      • Developers can combine the stack with Apache web server, MySQL, and the Django framework for server-side development.
      • Django supports low-code web app development and also helps manage rising volumes of traffic and API requests to meet changing business needs.
      • Flutter is an open source framework by Google for building multi-platform applications from a single codebase.
      • Flutter is powered by Dart, a programming language optimized for fast apps on any platform.
      • Flutter can use Google’s Firebase on the backend which allows you to build highly scalable applications.
      • Flutter’s built-in widget catalog and UI toolkit allow you to build high-performing, natively compiled mobile apps with visually exciting application elements.
      • React Native is a JavaScript framework for building native iOS and Android mobile applications. The framework is based on React, a JavaScript library built by Facebook for UI development.
      • React Native applications are written with a mixture of JavaScript and XML markup. Applications built using React Native render using real mobile UI components, which means the apps look like any other mobile application.
      • Applications built using React Native provide a high level of reliability and performance and deliver a superior user experience.
      • The framework allows developers to reuse up to 100% of their code between different environments which saves a lot of development time.
      • Java Enterprise Edition (JEE) provides a platform for developers with enterprise features such as distributed computing and web services.
      • Java EE applications are usually run on reference run times such as microservers or application servers, which are ideal for creating e-commerce, accounting, and banking information systems.
      • Java EE technology is the de-facto standard for delivering secure, robust, scalable multi-platform applications and services that are portable across all the Java compatible, Enterprise Edition products available today.
      • Java EE has several specifications for making web pages, reading and writing from databases in a transactional way, and managing distributed queues.
      • Serverless architecture is one of the latest trends in software development that allows developers to focus solely on the application code instead of worrying about infrastructure and server management.
      • The serverless stack leverages cloud computing services such as AWS Lambda, Google Cloud Functions, and Azure Functions to create scalable and cost-effective applications without dedicated servers.
      • Since the serverless architecture is based on the Functions as a Service (FaaS) model, you don’t have to pay for unused server resources, which makes the stack highly cost-effective.
      • Serverless stack makes it easy to manage traffic spikes and server resources during peak times since the cloud provider automatically scales the application up or down based on the number of requests.

      Benefits of Using Tech Stacks in Software Development

      7 Tips For Choosing Your Technology Stack

      Сhoosing, the right technology stack for your web development is a success factor for a project. Aligning technology stack opportunities with your web development functionalities might not suffice in each case, as there are multiple factors to look upon when choosing a technology stack for your project. Here are seven aspects that can help you make the right choice.
      7 Factors to Consider when Choosing the Right Tech Stack
      1. Define the scope of the project
      2. Scalability requirements
      3. Technology & Team Expertise
      4. Time to market
      5. Security requirements
      6. Maintenance
      7. Development Cost

      Define project size, complexity, and functionality

      The tech stack used for a small project might vary from that used for bigger projects. The size of the project is a key factor to look out for when choosing a technology stack. Also, the complexity and functionalities of your project matter. If your project is complex and includes heavy functionalities, it is wiser to choose an advanced technology stack.

      Scalability requirements

      As your project progresses and grows, the tech stack should have the potential to scale sufficiently. You should choose a technology stack that allows for adding new compelling features and handles unpredictable increases in user numbers.

      Technology & Team Expertise

      It’s important to determine whether or not your team will be able to maintain the application once it is deployed. Consider your team’s experience and expertise when choosing a tech stack. It will be better if you know that your team can use a tech stack successfully and doesn’t require additional training; otherwise, there is no need to consider one.

      Time to market

      When choosing a tech stack, ensure that it can accelerate your development process without hampering the quality and closes within the deadline.

      Security requirements

      If your app will handle confidential user data and information, security plays a major role. You need to pick a robust tech stack with fully secured standards & support a high-end security framework to meet your app development goals.

      Maintenance

      The development process doesn’t end with the app launch, which needs ongoing nurturing at every stage. It is a good practice to choose a tech stack that is easy to maintain by your development team for easy upgrades & regular maintenance.

      Development Cost

      Despite the fact that many technology stacks are available in the market as open source, they may not incorporate desired functionalities or features you are looking for. Most tech stacks come with a subscription fee if you need special or advanced features. Licensing and maintenance also incur a cost. Furthermore, some technology stacks demand huge salaries for their developers. The overall cost of the technology stack leans on all these factors.

      Deliver Top-Notch Banking Experiences to Your Customers!

      “Give me six hours to chop down a tree and I will spend the first four hours sharpening the axe.”

      – Abraham Lincoln

      What Should Be Your Next Step?

      Once you have compared and analyzed different technology stacks and discovered the best stack that fits your project, the next step is to start the software development process. But before you start, there is some groundwork to be done which involves these steps.
      Project Planning
      Plan the development process, determine the project scope, set timelines and milestones, and allocate resources accordingly.
      Team Composition
      Hire software developers and experts depending on the size and complexity of your project. Ensure your team has the necessary skills and experience to deliver the project.
      Development Environment
      Install the necessary software, tools, and libraries for setting up your development environment. Configure the environment correctly and provide the required level of access to your team members.
      MVP Development
      Develop a working Minimum Viable Product (MVP) that you can share with users to validate your idea. Add more features and functionalities based on the user feedback.
      Testing and Deployment
      Test the application thoroughly to identify and resolve bugs, ensure the application works as intended to give the desired results, and deploy it to the production environment.

      How Fingent Helps?

      Being a top custom software development company, Fingent adopts the most efficient and modern technology stacks that can make your software products highly competitive and capable of fulfilling your organization’s unique requirements. Here are some of the best practices we follow when selecting software stacks for our clients’ development projects:
      With the right tech stack and a skilled software development team by your side, you can build innovative software solutions that solve your business challenges and delight your users. If you have any questions on tech stack selection or need free software consulting services, get in touch with our team.

      FAQ

      Picking on the right technology stack for web development is an important marker of the company’s priorities and culture. It is a huge responsibility that must be done with careful research and planning. Various factors, such as your web application’s speed, quality, and security level, will depend on the chosen technology stack. Hence, it is advisable to identify the pros and cons of the various technology stacks in the market.
      Choosing the right technology stack is a crucial step in your product development and is key to its success. Here are the key pointers to consider when selecting a tech stack.
      • >> Application size, type, and complexity
      • >> Team knowledge and upskilling
      • >> End-user experience and time to market
      • >> Security and scalability
      • >> Cost and overall value of the tech stack.
      Migrating your less-performing or outdated tech stack to a tech stack of your choice is possible. However, it is a relatively time-consuming and costly process. Switching to the right tech stack may skyrocket the growth of your application. It requires rigorous analysis and perfect planning before deciding to move.
      Choosing the wrong tech stack can result in operational problems that can pile up until they become unstoppable.
      • >> The need to update your existing software with a modern technology stack.
      • >> Vulnerable to security threats
      • >> Limitations in creating and adding new features to the software
      • >> Lack of knowledge in your in-house team who can use the tech stack
      • >> Tech stack without scalability feature results in crises as your business grows

      Stay up to date on what's new

        About the Author

        ...
        Author

        Talk To Our Experts

          Businesses need modern technology to survive today’s ever-evolving market. The right enterprise software solution can help businesses thrive. However, not all businesses might have the necessary in-house skills to develop one, and let’s be honest, off-the-shelf software does not fit all needs. Thanks to custom software development vendors, enterprises can access technology experts on the go to build customized technology solutions that cater to their unique business needs.

          According to a survey by Deloitte, 79% of U.S. executives currently outsource software development. However, any business application is only as good as the developer who creates it. Choosing the right software development partner is a crucial responsibility.

          If your business plans to hire an app development partner, here’s a quick checklist that can help. But before we get started, let’s look at why you need to choose the best software development vendor.

          Have an Innovative Idea for Your Next Application?

          Discuss With Our Experts Now!

          Why Do Businesses Need Software Development Vendors?

          Organizations rely on app development partners to:

          • Bridge talent gaps and save in-house hiring costs
          • Drive value by developing end-to-end solutions
          • Access the best of technology, skills, and expertise
          • Avoid development delays and cut operating costs
          • Increase speed-to-market and enhance core competencies
          • Mitigate the risks of running an in-house development project

          You can easily unlock these advantages by choosing the right software development vendor. But what happens if you choose the wrong app development partner? Here are the risks!

          What Statistics Say About Outsourcing Software Development

          Risks of Choosing a Wrong Software Development Vendor

          Wrong software vendor selection can leave a lasting impact on your company.

          • Poor-quality software rollouts can lead to massive sales losses. It can force your customers to go to competitors.
          • Ill-fitted software solutions affect your day-to-day operations and increase your team’s workload.
          • A bad match will never help you with add-ons and customizations you might need for the future.
          • Botched software can cause frequent business disruptions. It can affect your customer experience, reputation, and brand.
          • Faulty software can lower your team’s morale and engagement. Constant software glitches add to employee frustration and fatigue.
          • A wrong vendor may not be able to meet your deadlines. They may also charge you more than expected. There is always an inherent risk of hidden costs.
          • Communication breakdowns can create misunderstandings between the vendor and your stakeholders.
          • Inadequate security measures opted by the vendor can put your business at risk. It can increase the chance of damaged, lost, or stolen data.

          How can you avoid these risks? Ace software development vendor selection by using our checklist (below).

          Why is Legacy Software Modernization Inevitable for Businesses?

          Read More!

          Checklist: How to Choose the Right Software Development Vendor?

          1. Define Your Needs and Goals

          The first step to finding the right developer is identifying your goals. Why do companies seek to build customized software? Some of the common reasons are:

          • Enhancing customer experience and satisfaction
          • Improving workforce productivity and operational competency
          • Tracking and managing staff responsibilities
          • Automating specific tasks and repetitive functions
          • Boosting reliability and security

          A good discernment of your objectives and business needs will allow you to proceed to the next steps more efficiently.

          2. Set up a Budget

          Defining your goals should help you prepare a detailed budget. At this stage, it is important to determine the capital, expenditures, and forecasted return on investment (ROI).
          Assess the factors that impact the cost of your software development project:

          • Type of software you need and its level of complexity
          • Custom software or off-the-shelf software
          • UX/UI design considerations
          • Backend infrastructure and dependencies
          • Integrations with other applications you use
          • Location of the app development partner
          • Development time, resources employed
          • Investments in new technologies
          • Estimates/rates quoted by the software development vendor

          Any business’s priority is to produce high-quality software. However, keeping the project within budget is vital for business success.

          3. Research Potential Vendors

          Research potential software development vendors. Assess the selected app development partners based on the following factors:

          • Do they have experience working on the type of software you need?
          • Have they worked in your industry or domain in the past?
          • Do they handle the entire software development lifecycle? Do they provide post-launch application maintenance and support?
          • Do they help train your staff on the new software?
          • What are the services they offer?
          • Does their rate fit your budget?
          • What other value-added services do they provide software development? Developing an e-commerce application, maybe?

          4. Shortlist Top Software Development Vendors

          Choosing from hundreds of service providers can be overwhelming. Once you do the research and specify your requirements, you can start shortlisting the options you find appealing.

          Here are a few ways to narrow down your list:

          • Read through the company profiles, case studies, and client testimonials of potential vendors.
          • Use any credible B2B rating platform to check out their ratings and reviews. Platforms like Clutch, GoodFirms, etc. list the top vetted software development partners.
          • Filter vendors based on their minimum project costs, team size, average ratings, and location.
          • Keep your list short so you can reach out to the selected firms quickly.

          5. Talk to Each of the Selected Vendors

          A direct conversation with the software development vendor gives you a fair idea of their services and expertise.
          Before meeting a vendor, prepare a set of questions that will help you gauge their work:

          • What technologies and programming languages are your team proficient in?
          • What are the industries and domains that you primarily cater to?
          • What project management tools do you use to manage your workflows?
          • How do you ensure the quality of your software?
          • What is your project engagement model?
          • What software development methodology do you follow—Agile, Waterfall, RAD, Lean?
          • How do you determine the costs of your work?
          • Is my budget and expected timeline realistic for my project?

          Above all, it’s crucial to identify if the potential vendor’s way of operating and objectives align with your requirements.

          6. Narrow Down Your List Further

          A direct conversation with each vendor should help you narrow your choices between two or three developers.

          • Consult your leadership team. Weigh the pros and cons of each vendor based on your analysis.
          • Shortlist your selection to one or two providers. Ensure they can understand your needs and match your company’s culture.

          7. Data Security and Privacy Measures

          Your business software needs to handle confidential company data. Is your software development partner capable of protecting your application from cyber threats?

          • Before choosing a software development vendor, undertake an intellectual property due diligence inquiry.
          • Find out how the vendor will be handling your data and assets.
          • Review their integrated security and IP protection program.
          • Determine the internal measures you should adopt to safeguard your enterprise’s IP.
          • Identify which functions need to be managed in-house and what should be outsourced.

          8. Compliance, Reliability, and Support

          Along with analyzing the vendor’s cybersecurity offerings, you also need to verify:

          • Does the vendor’s development and delivery practice/policies comply with the essential regulations?
          • Have you done extensive background checks to ensure the integrity and reliability of the vendor?
          • Did you do a proper technical and strategic vetting of the selected development vendor?
          • Is the vendor equipped to address unexpected IT outages and disruptions?
          • What are the risk management policies/processes followed by the software development vendor? Do they have a robust disaster recovery plan?
          • Does their development process align with your organization’s sustainability goals?
          • Does the vendor stick to responsible application design, development, and maintenance that can reduce the environmental impact?

          Choosing the right software development partner requires careful planning. It’s indeed a very tricky job to pick out the right one from a huge list of potential vendors. The checklist aims to make the job simple for you.

          Nearshore vs In-House Software Development: Know The Pros & Cons

          Read More!

          Software Development Company vs. Freelancer: Which is Better?

          What is the difference between a freelancer and a software development company?

          • A freelancer is an individual who works independently on software development projects.
          • A software development company is a professional organization that provides software development services.

          freelancer vs. software development company

          How does working with a software development company help your business?

          • A team of certified professionals well-versed in multiple areas
          • Access to the latest technologies and specific domain expertise
          • A reliable vendor-customer contract (agreement) to back you
          • Round-the-clock support and IT help desk
          • Transparent communications, no hidden surprises
          • Standardized pricing with no additional costs
          • Dedicated ongoing maintenance and support

          Transform Your Business With the Right Software Development Vendor

          The best software development vendor:

          • Works with you throughout the entire development process
          • Helps navigate the complexities of software creation and maintenance
          • Makes incremental changes for continuous software enhancement
          • Develops tailor-made solutions that align with your business goals
          • Improves your business’s efficiency, productivity, and financial performance

          Let Us Help You Ease Your Digital Transformation Journey

          Discuss Your Project Now!

          Why Choose Fingent as Your Software Development Partner?

          Since 2003, Fingent has been a reliable and capable software development partner for leading global brands, including several Fortune 500 companies.

          • An impeccable track record as a successful custom software vendor
          • Experience in new and emerging technologies—AI, AR, VR, IoT, blockchain, and more
          • Legacy application modernization, cloud migration
          • Multi-platform development—web, mobile, cloud, and more
          • Diverse offshore talent pool with experienced developers and tech professionals
          • Tech certifications, partnerships, centers of excellence

          Build scalable and robust applications by partnering with a professional custom software vendor. Contact us to get an extended consultation.

           

          Stay up to date on what's new

            About the Author

            ...
            Tony Joseph

            Tony believes in building technology around processes, rather than building processes around technology. He specializes in custom software development, especially in analyzing processes, refining it and then building technology around it.He works with clients on a daily basis to understand and analyze their operational structure, discover (and not invent) key improvement areas and come up with technology solutions to deliver an efficient process.

            Talk To Our Experts

              AI in Business is a present reality! It’s a building revolution that is all-encompassing and is redefining business operations. You have only two options. Either ride on the crest of this wave or get submerged if not prepared! 

              How can you become AI-ready? In this blog, we aim to clarify pertinent questions a business leader may have to achieve this goal successfully.

              Why Do Business Leaders See AI as a Game-Changer?

              A survey of around 2,000 executives, CFOs, and CEOs across 9 countries showed that “61 percent believe AI is a game changer for their industry, with the figure rising to 82 percent in the tech sector and 51 percent among automakers.”

              They have a good reason for this, too. AI can bring phenomenal improvements in virtually every sphere of business. Automating tasks, improving forecasting, supporting intelligent decision-making, tightening compliance and security – AI does all this and more.

              The future of business is intelligence. And those who prepare for the AI revolution today will lead the way tomorrow. Preparing for an AI revolution is much like training for a championship team. Even the best players can’t win without rigorous training, good planning, and top-tier equipment. Likewise, to stay ahead in the competitive market businesses need AI preparation. This will help you to harness cutting-edge tools, refine your strategies, and build a skilled team.

              This could result in more intelligent business tactics and improved customer interactions. As leaders, you are undoubtedly enthusiastic about the potential cost savings. More importantly, consider how it can offer personalized services on a grander scale.

              Don’t Stay Behind! Unlock Business Growth, Efficiency & Innovation With AI.

              Connect With Us Now!

              How Do I Know If My Company Is Ready for AI Adoption?

              Adopting AI in business is transformative. It entails careful consideration and strategic planning. Here are some critical questions to help you assess your company’s readiness for AI adoption:

              1. Is There a Genuine Need for Your Business to Have an AI Solution?

              Arrange for a thorough analysis of your business processes. Does your business depend on large amounts of data? Are there many tasks that can be automated? Have there been security leaks or a risk of losing valuable business if there were? This analysis will help pinpoint areas where AI can provide tangible benefits and solve existing challenges.

              2. Where Can Automation Take the Load Off?

              AI’s most impactful applications include automation. Identify regular, repetitive activities in your company. Automating such tasks can enhance effectiveness and minimize the risk of human mistakes. This will enable your team to focus on innovation and more valued activities.

              3. Are Your Employees and Stakeholders Ready to Adopt AI?

              Successful AI implementation requires teamwork among your employees and stakeholders. Conduct a survey to assess the team’s willingness to adopt AI. Then, guide and support your team in understanding AI’s capabilities through training and resources. Engage stakeholders right from the planning phase. This action will guarantee that concerns are addressed and that you have their backing.

              4. Do Your Customers Understand How You Use AI?

              Ensure that your customers understand how AI is being used to enhance their experience. Help them experience the benefits. Building trust through transparency will foster customer acceptance of AI-driven innovations. Also, provides customers with options to interact with human representatives. This will help maintain a balance between automation and the personal touch.

              5. Do You Have AI Expertise, Experience, and Talent?

              Successfully integrating AI is not simple. It takes a combination of knowledge, skill, and expertise. Check if you have it. If you spot any deficiencies in AI knowledge and skills, think about hiring AI experts or teaming up with outside specialists. Create a strong AI team. 

              How to Prepare Your Company for AI Adoption?

              Preparing your company for an AI in business strategy is crucial if you want it to succeed. Done right, it can bring unprecedented efficiencies and competitive advantages. If done wrong, the risks could cost you quite a pretty penny. So before you dive in headfirst, let’s talk about those annoying risks.

              ai for business solutions

              1. Analyze the Risks

              • Ethical and Legal Risks: If you don’t want AI to cause unnecessary stress, follow ethical guidelines and legal standards. Identify and remove biases from your AI models.
              • Security Risks: Cyber-attackers love AI systems. Analyze and beef up your cybersecurity to protect your precious data.
              • Operational Risks: What can you do when you face workflow disruption? Plan ahead! Planning well in advance to address disruptions can keep things running smoothly.
              • Financial Risks: True, AI isn’t cheap. Apportion funds to cover all those costs and then some.
              • Workforce Impact: AI can change the nature of jobs. Prepare your workforce for these changes. Reskill, upskill, and repeat.

              2. Calculate the Pros and Cons 

              As with everything, there are pros and cons to the application of AI in business. It’s better to be conversant with all its strengths and weaknesses. Here is how you can understand AI’s value versus potential drawbacks.

              Pros:

              • Increased Efficiency: Like a robot butler, AI applications in business take care of all the boring, repetitive tasks, allowing your employees to focus on strategic activities.
              • Improved Decision-Making: Like a wise old sage, AI’s data analysis can dispense deeper insights for better decisions.
              • Cost Savings: AI cuts operational costs and hikes profitability.
              • Enhanced Customer Experience: AI in business personalizes interactions and turns customer service into a 5-star experience. 
              • Innovation Opportunities: AI innovation leads to a goldmine of new product ideas and market strategies.

              Cons:

              • Initial Investment: AI implementation can be costly at the beginning. 
              • Integration Challenges: Integrating AI with IT infrastructure can be complex and time-consuming.
              • Skills Gap: If your organization lacks AI expertise, you will have to invest in training or hiring new talent.
              • Dependence on Data Quality: AI relies on high-quality data. What goes in is what comes out.  Poor data leads to inaccurate results.
              • Ethical Concerns: AI raises ethical questions.  Data privacy and bias in decision-making are the two main concerns.

              3. Centralize Your Company Data

              Data is the source of energy for AI systems. Effectively adopting AI depends on centralizing, organizing, and ensuring data accessibility. Here are some ways you can achieve that: 

              • Data Integration: Merge data from different sources into a centralized platform to ensure detailed AI analysis.
              • Data Quality Management: Establish governance practices to guarantee data accuracy, completeness, and consistency. Also, regularly clean and update data.
              • Data Security: This could include encryption, access controls, and regular audits.
              • Scalable Data Infrastructure: If your data infrastructure is unable to handle large volumes, consider investing in cloud storage.
              • Data Accessibility: Do your stakeholders have the required access to data? If not, implement user-friendly tools. This will facilitate easy data access and analysis.

              4. Prepare a Roadmap for Future Scalability

              A strategic roadmap is necessary for leading AI adoption and ensuring future scalability.

              • Define Clear Objectives: Set distinct goals for AI initiatives. Then, align them with business strategy and address specific pain points.
              • Pilot Projects: Start with small pilot projects to test AI feasibility and impact. Collect insights, fine-tune your approaches, and build confidence.
              • Continuous Improvement: Regularly evaluate and enhance AI strategies and solutions. You can do this by using performance data and feedback.
              • Stakeholder Engagement: Engage key stakeholders throughout the AI adoption process. Inform them about progress, challenges, and successes to ensure support.
              • Resource Allocation: Ensure necessary resources. Budget for ongoing costs like maintenance, training, and upgrades.
              • Training and Development: Invest in training programs to build AI expertise. Encourage continuous learning to stay updated with AI trends and technologies.

              A Leader’s Blueprint For AI Success

              Read More

              How Can Fingent Help Me Streamline AI Adoption?

              The application of AI in business is transformative but complex. At Fingent, we streamline this process seamlessly. We develop tailored AI strategies aligned with your business goals, conduct a thorough risk assessment and mitigation for ethical, legal, operational, financial, and cybersecurity risks, and ensure centralized data management and integration with scalable cloud solutions. Our custom artificial intelligence (AI) solutions integrate smoothly into your IT infrastructure, starting with pilot projects for validation. 

              Contact Fingent now to start your AI expedition!

               

              Rephrase with Ginger (Ctrl+Alt+E)

              Stay up to date on what's new

                About the Author

                ...
                Tony Joseph

                Tony believes in building technology around processes, rather than building processes around technology. He specializes in custom software development, especially in analyzing processes, refining it and then building technology around it.He works with clients on a daily basis to understand and analyze their operational structure, discover (and not invent) key improvement areas and come up with technology solutions to deliver an efficient process.

                Talk To Our Experts

                  Business Intelligence in Financial Services is proving to be a game changer.

                  Business intelligence is a novel technology backed by AI. It is a combination of strategies and processes. Simply put, BI collects, cleans, formats, and analyzes data.

                  No big deal? Think again!

                  In a world that is ruled by data, this is a superpower. 

                  Business intelligence is, in fact, a CFO’s best friend. It enables users to perform a wide range of activities with great ease. Since their advent, BI solutions have played a key role in banking and finance services. Business Intelligence in Financial Services offers priceless tools for risk assessment and cost management plans. They also provide detailed customer insights – a 360-degree view of the customer, which is priceless. So, in our current era, where data is everything, BI has become a valuable asset that offers support in decision-making. 

                  Let’s discuss this in detail. First, let’s talk about the elusive 360. 

                  Elevate Your Customer’s Digital Banking Experiences

                  Consult Our FinTech Experts 

                  The Need for a 360-View of Customers and Buyers in the Store

                  This technology is growing in popularity. It has become a well-favored tool among companies worldwide. A recent report predicts growth in the global business market. The predicted price for business intelligence and analytics software applications is $18 billion by 2026.

                  The concept of a 360-degree view is vital for businesses to function while predicting customer needs. This paves the path for meaningful insights and allows for more personalized interaction. The benefits of this method are listed below.

                  1. Superior Customer Understanding: The 360-degree view allows business owners to predict customers’ needs, allowing for more personalized interactions and rapport-building.

                  2. Personalized Marketing: Businesses can understand the customer’s preferences through the customer journey map. This map enables businesses to unravel customers’ thinking and curate marketing strategies, ensuring higher engagement and conversion rates.

                  3. Improved Customer Service: A 360-view means that the service representatives can access a customer’s entire history. Based on the client’s past behavior patterns, this method provides customizations. This personalization is evident in their interactions with you. In turn, it boosts customer satisfaction.

                  4. Operational Efficiency: With 360-degree view data collection, businesses can streamline their processes, making operations smoother and more efficient. The 360-degree customer view is a method that has revolutionized customer-service provider interactions. These conversations give clients a unified view of the customer’s journey. They also enable collaboration between different departments.

                  Why Do You Need a BI Strategy for Your Financial Business?

                  Technology is rapidly growing, and the amount of data generated in today’s business world is enormous. We create around 2.5 quintillion bytes of data every day!

                   Legacy financial processes have started failing. They don’t have the right tools to handle this much data. An efficient business intelligence strategy would be your knight in shining armor. It enables you to measure and evaluate performance. You can also identify competitive advantages and make informed, data-driven decisions. Other reasons why you should install this technology into your financial services include:

                  1. Better Decision Making

                  Business Intelligence implements Predictive Analysis to enrich the decision-making process. This derivative of AI can learn encoded data, recognize recurring patterns, and make accurate predictions. This greater visibility into potential outcomes based on past performances is the best tool for a business. Companies with an efficient BI strategy can gain insights on their customer behavior. This arms them with the ability to anticipate trends in the market and adjust business operations accordingly. Subsequently, the company’s risk of losses due to market shifts also drops.

                  Additionally, Business Intelligence improves communication between departments within the company. Employees can share meaningful insights from various datasets, removing the need to rely on anecdotal evidence. Working together towards a shared goal will boost efficiency and increase profits.

                  2. Increased Operational Efficiency

                  With a strong BI strategy, companies can streamline internal processes. They can also analyze employee behavior and performance to uncover hidden talent. Data analytics, a subset of BI, can shed light on how to optimize efficiencies within the organization. Companies with BI systems generally switch from manual, time-consuming labor to automated systems, which makes them more agile and frees up resources.

                  3. Solid Risk Management

                  Predictive Analytics and Machine Learning are potent tools for a business owner. These systems can also assess risks while predicting future trends. With these risk insights, companies can avoid making certain investments and commitments. This will help companies reduce losses that could hurt their bottom line if left unchecked.

                  4. Boosts Customer Retention

                  Financial business intelligence equips you with the most current information on customers. Banking and finance institutions can keep their marketing and sales teams armed. With BI’s help, your teams can recognize the organization’s most loyal and profitable clients. This information is gold as teams can concentrate their efforts on retaining these customers. They can also gain insight into the kind of customer that they can attract to their business, 

                  5. Offers Competitive Edge

                  Due to its long list of perks, the BI strategy has the power to give you a strong competitive edge in the market. It also helps you streamline the best BI solution vendor for your financial business. These services are also integrated with superior features.

                  6. Reducing Costs

                  Cost-effectiveness is a quality check for the business intelligence strategy you use. Using predictive analytics and other BI tools, budgeting becomes more precise. Resource allocation is thus streamlined, and opportunities for cost reduction are identified; an efficient BI strategy will oversee training offerings and associated costs as well. This will help you budget and reduce unforeseen spending. 

                  How Is AI Transforming Financial Services: Use Case and Applications

                  Read More!

                  How Can You Build a Successful BI Strategy for Your Financial Services Business?

                  A solid BI strategy can improve customer retention, optimize costs, and provide competitive advantages. It is vital for your plans and business goals to align with your Business Intelligence strategy to make it a success. Here are the key steps involved in building an efficient BI strategy:

                  1. Assess and Define Your BI Ecosystem

                  Gather all the information you need before embarking on this journey. A sound data plan is vital for your implementation. It should include identifying data sources and visualizing a strategy. Gather relevance from your data sources (clients, projects, sales, marketing, finance, etc.) You can organize them by department, function, or business impact to streamline the process. Visualizing a strategy will encompass discussing the company’s vision with stakeholders. Create an alluring presentation for them with the help of a designer. In your presentation, be sure to highlight the reasons and benefits of a BI strategy.

                  2. Budgeting

                  Your immediate next step is to develop an accurate budget. Without planning, the BI strategy implementation process can be expensive and can cause financial strain for the company. Developing a strategy beforehand will prepare you for any unforeseen expenditure.

                  3. Assemble Your BI Team

                  Select a group of proficient employees to work as your BI implementation team. Include company stakeholders in the team to keep them in the loop. Your team should include an HR employee, a scheduling officer, one from the union, and a legal assistant. This will be your army, as it were, so ensure you make the right choices. 

                  4. Choose Your BI Platform

                  Your business goals are bound to change. Aim to install BI software that provides self-service templates and easy usability for beginners. This step is very important because it will define how your company is affected during and after implementation. Take your time, explore various platforms, and carefully make your pick.

                  5. Select Your BI Software Partner

                  This is a delicate journey. Be bold and decisive when you reach this step. Remember that the partner you choose will guide you throughout. Compare different partners to rate their different features. Lastly, combine this with previous reports and review them. Conducting demos is the most effective method for this step.

                  6. Plan User Training

                  Imagine if, after all the effort put into implementation, no employee is equipped to handle the aftermath. A true disaster! This is why planning early user training is so important. Once you have decided on a service provider, it’s time to plan your training program. Sometimes, service providers provide video training and live classes. This helps users set up and get familiar with the software. Training will help employees stay updated on insights and learn the best features.

                  7. Refine Your Data

                  This is the last stage of preparation to build a successful BI strategy. Refine your data structures and remove waste. The cleanest data possible will yield the best productivity results. The quality of data you enter into Power BI will affect the quality of insights you get, so it’s crucial not to underestimate this step.

                  How Does Business Intelligence Benefit Financial Services?

                  A solid BI strategy can improve customer retention, optimize costs, and provide competitive advantages. Here are some top benefits of implementing BI into your financial service strategy:

                  • Real-time insights: Financial BI can spontaneously access any financial data recorded, allowing for quicker and more informed decision-making.
                  • Improved reporting: Writing reports is a tedious job that can be automated with financial BI. This frees up employees to take part in analysis and interpretation.
                  • Cost savings and revenue growth: Financial BI can help businesses recognize areas of incompetence, cut costs, and discover new revenue streams.
                  • Increased efficiency: Financial BI can automate and streamline financial processes, reducing manual work and avoiding the risk of human error.
                  • Transparency and collaboration: With financial BI, communication between other departments and finance is reinforced.

                  How Can Fingent Help in Bringing Business Intelligence to Your Financial Service?

                  Fingent is known for using cutting-edge technology to ensure the best outcomes for clients. These technologies include machine learning, natural language processing, and more. These can be fashioned into valuable Business Intelligence tools customized for your business.

                  We can help your financial organization stay ahead of the competition. The software designed for you will ensure that your organization remains resilient regardless of any form of disruptive circumstance. Experts at Fingent empower businesses to maintain momentum with new developments. They also measure the effect of changes on customer requirements. Our custom software development experts at Fingent can help you understand everything you need to know about business intelligence.

                  Talk to us today

                  Stay up to date on what's new

                    About the Author

                    ...
                    Tony Joseph

                    Tony believes in building technology around processes, rather than building processes around technology. He specializes in custom software development, especially in analyzing processes, refining it and then building technology around it.He works with clients on a daily basis to understand and analyze their operational structure, discover (and not invent) key improvement areas and come up with technology solutions to deliver an efficient process.

                    Talk To Our Experts

                      Artificial Intelligence is a multi-talented assistant and has proven its worth in the healthcare industry. Healthcare organizations have found innumerable ways to use AI, from record maintenance to patient assistance. It has completely reshaped how doctors diagnose, treat, and monitor their patients. It is also capable of drastically improving research methods, which leads to unmatched accuracy in diagnoses. By integrating AI into hospital settings and clinics, healthcare systems can potentially become smarter, faster, and more efficient worldwide. This blog will help you explore the immense possibilities of AI in healthcare!

                      How is AI Used in Healthcare?

                      Healthcare AI, valued at $11 billion in 2021, is expected to be worth $187 billion in 2030.

                      This massive increase will mean that we will continue to see exponential growth in how medical providers and organizations in the healthcare industry operate. So, how are they using this power tool? Here are some ways.

                      1. Easing Administrative Workflow

                      Artificial Intelligence can process and analyze extensive amounts of clinical documentation within a few minutes. This enables professionals to spot disease markers and trends that could be overlooked with manual analysis. AI can automate mundane tasks such as data entry, claim processing, and appointment scheduling, freeing up time to focus more on patient care and the management cycle. Artificial intelligence also eradicates the risk of human error by offering a faster way to analyze and review health records, medical imaging, and test results.

                      2. Disease Detection

                      Machine learning (ML) is an area of AI that reads patterns and allows a machine to learn and apply the learned experience to similar scenarios. It enables physicians, researchers, and patients to identify impending diseases. Researchers and practitioners claim that machine-learning-based disease diagnosis is inexpensive and time-efficient. Furthermore, a current study proves that these diagnoses have an accuracy rate of 90%. Diseases like dementia, heart failure, breast cancer, and pneumonia can be identified with ML. The emergence of this fascinating technology in the diagnosis domain illustrates the utility of AI in medical fields.

                      3. Automate Documentation, Store, and Organize Health Data

                      Documentation and organization processes are monotonous. They can be very tiresome and boring, leading to human errors. This process can be automated by Natural Language Processing (NLP), which interprets and uses human language to perform tasks. NLP can improve patient care with accurate diagnosis, streamlined clinical procedures, and customized services. It can also help analyze medical records and suggest improved treatment methods. The most common use of NLP in healthcare is to analyze and classify medical records.

                      4. Accelerate Drug Discovery and Development

                      AI assistance to the pharmaceutical industry can improve the overall life cycle of products and make great leaps in medical research. It can be integrated into various tasks, such as drug discovery, drug repurposing, clinical trials, and product management. This reduces the workload on human employees while simultaneously achieving targets in a short period of time. Artificial intelligence can identify hit-and-lead compounds in drug research. This allows it to provide quicker verification of the drug target and optimize the overall drug structure.

                      5. Medical Inventory Auditing

                      Inventory management is a strenuous task that requires close attention and constant supervision. However, when you integrate AI into inventory management, you can curate a seamless flow of products. 

                      Computer vision can help in this regard. It is a type of AI that can analyze images and perform tasks that replicate human behavior. With computer vision, medical institutions can automate their auditing process and reduce errors in shipments of surgical supplies.

                      Artificial intelligence can also assist medical organizations with product evaluation, prioritizing inventory tasks, and allocating inventory information across the organization network. AI in the medical industry can also automate small tasks such as the transcription of bills and the recommendation of products based on a surgeon’s order history. Even this simple automation can bring overall accuracy to the functioning of inventory.

                      Virtual Reality is Reshaping the Future of Medical Device Training

                      Explore Now!

                      6. Virtual Nursing Assistants 

                      A virtual assistant is a manifestation of AI that provides 24/7 support and monitoring for patients. It consists of AI-driven chatbots that further enhance patient engagement and adherence to treatment schedules. The overall market for virtual healthcare assistants is growing at a CAFR of 30% from 2023 to 2033. This says it all!

                      Surgical robots are another brilliant invention powered by artificial intelligence. They can perform minor surgeries with a high level of proficiency. These robots can also collect patients’ previous medical records and make appropriate suggestions to surgeons. Medical researchers and scientists are now striving to create an AI robot fully capable of performing complex surgeries.

                      7. Personalized Fitness Coach

                      We have all encountered health and fitness monitors, such as smartwatches and apps that can track and analyze our medical histories. These monitors are also powered by artificial intelligence. They store real-time data sets, and they will alert the user when they recognize a suspicious pattern. 

                      AI can also transform limited customer service into a highly scalable, personal service that provides multifaceted recommendations through real-time conversational AI. On a larger scale, AI solutions, such as data applications, ML algorithms, and deep learning algorithms, can also help healthcare professionals. They can analyze large amounts of data and offer suggestions before professionals make decisions.

                      8. Patient Prioritization System

                      According to a recent study, 83% of patients report poor communication as the worst part of their experience in healthcare centers. This illustrates the desperate need for a clearer form of communication between patients and healthcare service providers. AI technologies like natural language processing, predictive analytics, and speech recognition can monumentally bridge this gap.

                      Clinical AI is also created to focus specifically on patient care. It uses various subtypes of AI to improve patient treatment. Predictive analytics is another helpful area of AI. It predicts potential health complications by analyzing patterns in a patient’s medical history and current health data. Since this AI takes a proactive approach, it ultimately leads to better patient outcomes and reduced healthcare expenditures.

                      9. Less-invasive Surgeries

                      AI-enabled applications can assist in the development of advanced guidance and navigation systems. They improve the accuracy and precision of surgical procedures. AI-enabled applications can also be used to work around sensitive organs and tissues. They can help reduce blood loss, infection risk, and post-surgery pain. AI-powered image analysis tools can also be used to spot surgical instruments and structures within the body. It can analyze past surgeries, allowing the surgeon to be well-prepared beforehand. This creates a more personalized approach to surgical planning and execution.

                      A Quick Guide to Custom Healthcare Software Development

                      Read Now!

                      What are the Top Benefits of Using AI in Healthcare?

                      The benefits of AI in healthcare are manifold. However, its application has reaped the most benefits in fraud prevention, healthcare diagnosis, and preventive care. Here are more details: 

                      1. Fraud Prevention

                      Integrating AI can help recognize suspicious patterns in insurance claims. Sometimes, people will bill for costly services or procedures that are not performed, or they will undertake unnecessary tests that take advantage of insurance payments. Another famous type of false claim is unbundling. This is when people provide billing for individual steps of a procedure rather than the procedure as a whole. These scams can be detected by predictive analytics.

                      2. Increased Efficiency in Healthcare Diagnoses

                      A study in Harvard’s School of Public Health stated that using AI to derive diagnoses may reduce treatment costs by up to 50% and simultaneously improve health outcomes by 40%. Other studies suggest that deep learning AI technology can accurately predict breast and skin cancer, even better than experienced doctors.

                      3. Better Health Monitoring and Preventive Care

                      AI can help providers gather information from multiple wearables and monitoring devices. It can then be stored and analyzed to provide data-driven insights from many people. With AI-integrated health monitors, patients and caregivers can communicate better. These monitors can be wearables, sensors, or telehealth. They are used essentially by patients to identify symptoms early on and provide timely changes. They come in two distinct forms: AI chatbots, virtual assistants, and ambient/intelligent care. 

                      What are the Types of AI Used in Healthcare?

                      Many forms of AI have been successfully implemented in the healthcare industry. Some of these are listed below:

                      1. Machine Learning

                      Machine learning algorithms can identify patterns and form predictions by processing clinical data. This form of AI helps analyze patient records, discover new therapies, and perform medical imaging. Hence, it makes life easier for healthcare professionals and reduces costs for the patient. ML can precisely diagnose diseases, personalize treatments, and identify any changes in vital signs.

                      2. Deep Learning

                      Deep learning is a subset of AI used for tasks like speech recognition through natural language processing. This representation-based learning method is obtained by composing simple and nonlinear molecules from a lower level into a representation at a higher, more abstract level. Deep learning models are generally integrated with computer vision, speech recognition, and natural language processing to get the best results.

                      3. Natural Language Processing

                      Natural language processing (NLP) enhances patient care by improving diagnosis accuracy, streamlining clinical processes, and providing customized services. NLP can accurately diagnose illnesses by extracting important data from medical records. It can also determine the appropriate treatments and medications for each patient. This form of AI has become a powerful weapon in the modern healthcare industry.

                      4. Generative AI

                      Generative AI is a part of machine learning technology. It is trained with old data, and when commanded, it provides new data similar to the legacy data. It is used primarily for image and speech synthesis. Generative AI has untapped potential. It has the power to automate entire systems, enhance clinical decision-making processes, and even administrative processes. Generative AI shows great potential despite being scarcely implemented.

                      Explore What AI Can Do For Your Organization

                      Talk To Our Experts Now! 

                      What is the Future of AI in Healthcare?

                      AI in the healthcare market was worth over 11 billion U.S. dollars in 2021. The next prediction is that this market will outdo itself and reach around 188 billion U.S. dollars by 2030. This elucidates the drastic impact that AI has on the healthcare industry.

                      Artificial intelligence offers us many opportunities to help reduce human error and assist medical professionals. It holds heavy promises of enhancing patient experience, tightening safety, and reducing costs associated with healthcare services. As these tools and technologies continue to develop, the potential to use AI will exponentially boom. 

                      Future AI tools will have the ability to automate or augment the workload and further free up humans to spend more time on other important tasks. Deep learning AI may progress to detect diseases faster, provide better-customized treatment plans, and even completely automate certain processes, such as drug discovery or diagnostics. With such limitless potential, artificial intelligence is sure to illustrate a future filled with advancements, enhanced health outcomes, and optimized patient experiences.

                      How can Fingent Help Leverage AI for Better Healthcare Services?

                      Fingent is a top-notch technology solution provider with around 800+ successful projects. We have loyal clients across four continents. With our custom software development experts, you can develop intricate, truly innovative, AI-powered, custom healthcare software applications. These applications will give you a competitive advantage, ample time-to-market, ROI, and clinical precision. 

                      We have positive feedback and strong bonds with an eminent list of healthcare clients, including the NHS, Novita Healthcare, Mundipharma, and Casenet, LLC, among others. As the world progresses forward with artificial intelligence, it is time for you to choose the right technological partner for this journey. Contact our experts today to discuss your AI project now! 

                      Stay up to date on what's new

                        About the Author

                        ...
                        Tony Joseph

                        Tony believes in building technology around processes, rather than building processes around technology. He specializes in custom software development, especially in analyzing processes, refining it and then building technology around it.He works with clients on a daily basis to understand and analyze their operational structure, discover (and not invent) key improvement areas and come up with technology solutions to deliver an efficient process.

                        Talk To Our Experts

                          Maximize productivity and minimize uncertainty! That’s what Artificial Intelligence promises the Supply Chain and Logistics industry. The fragility of the supply chain is not unknown to industries. Delays, stoppages, and complexities in the supply chain are a few limitations businesses are striving to overcome. Operational efficiency, intelligent decision-making, and continuous improvement must be maximized. Thankfully, AI helps do just that. This blog will take you through the top benefits businesses can derive with AI in Supply Chain!

                          Why Is Now the Best Time for Supply Chain and Logistic Firms to Adopt AI?

                          The global trade scene and geopolitical risks have not been kind to the supply chain. A 2023 Annual Supply Chain Report revealed that events around the world continue to have a detrimental impact on it. These include political upheavals, climate-related events, supply chain legislation, and more. Internally, there are issues to deal with as well. A lack of governance and data management, labor strikes, and communication hurdles have proved challenging. 

                          Not everything is bad news, though. These harsh conditions have built resilience and determination in supply chain and logistics organizations worldwide. A 2024 KPMG study of supply chain trends says: “Enabled with a raft of technology developments, a new paradigm is emerging in supply chain management. One where organizations can respond quicker to day-to-day requests, proactively address problem-solving, and reduce errors and inefficiencies.” 

                          Businesses are becoming wise to the situation and are reaping benefits. According to a McKinsey report, leveraging AI has helped businesses enhance logistics costs by 15%

                          AI helps companies gain a unique competitive advantage in supply chain management and logistics operations. It can install advanced algorithms and large-scale data analytics as an emerging technology. This simplifies supply chain workflows and boosts decision-making processes. Some other perks of leveraging AI-powered technologies are accurate forecasting, inventory management, optimization of transportation functions, improvement of flexibility and agility, and enhancement of customer satisfaction. These are all the ingredients you need to get your supply chain processes back on track. 

                          The time to build resilience with the help of technology is NOW!  

                          Explore More Business Opportunities With Artificial Intelligence

                          Contact Us Now! 

                          What Are the Top Benefits of Using AI in the Supply Chain?

                          AI can bring operational efficiency, on-time delivery, accurate predictions, risk management, and more to the supply chain and logistics management. Here are the top benefits industries can reap by deploying AI for logistics.

                          1. Reduced Cost

                          AI has the power to automate tasks. This gives a power boost to the human workforce. . It frees them up for higher-value activities and takes over the burden of mundane labor. This optimization of labor practices will reduce labor costs while increasing efficiency. AI-powered forecasting can help maintain optimal inventory levels, decreasing any risk of stock-outs and loss of sales. This directly contributes towards cost savings

                          2. On-Time Delivery

                          AI systems can process large amounts of data in real time. It can recognize patterns, enhance inventory levels, and accurately predict demand. This predictive ability ensures on-time delivery, thus enhancing operational efficiency. Generative AI can use algorithms to analyze transportation routes and optimize logistics scheduling. This will, in turn, improve delivery times and reduce fuel consumption and transportation costs. Another major benefit is real-time tracking and updates on orders. This provides transparency with customers that will increase their confidence and satisfaction.

                          3. Accurate Management And Planning

                          Predicting future demands is vital for effective stock and product management. AI algorithms can forecast product demand for specific seasons of the year. This enables companies to make well-informed decisions about managing inventory. As for logistics firms, AI can enhance supply planning. By analyzing factors such as production schedules, sales data, and costs. This analysis helps businesses to plan warehouse functions. This includes managing stock levels and surplus inventory. Thus reducing costs and providing control over expenses. A survey by McKinsey showed a reduced cost expense of 15% in logistics management. Early adopters of AI-powered supply chain management saw this change.

                          4. Risk Management

                          Leveraging AI for supply chain management and logistic operations can reduce risk. AI bots can be used effectively in this regard.  They do this with the application of advanced analytics and scenario modeling. This enables businesses to create complex contingency plans and adapt risk mitigation strategies. Generative AI measures the impact of any chain of damage. This will, in turn, allow companies to respond and use effective mitigation strategies. AI-powered supply chain monitoring tools work together to identify any risks. Early detection alarms, for example, enable timely intervention and reduce impact on performance.

                          AI Use Cases In Logistics

                          Artificial Intelligence controls data and uses machine learning to optimize the flow of goods. With algorithms to identify patterns, relationships, and trends, AI enables accurate predictions and recommendations. Here are some use cases to show how this can help businesses:

                          1. Bullwhip Effect Prevention 

                          A small change in demand can create catastrophic ripples across the supply chain. Effective demand forecasting helps mitigate this bullwhip effect. Demand forecasting utilizes predictive analytics to estimate customer demand forecasts. It does this by analyzing historical data in real-time. With this method, businesses can improve their decision-making processes and workforce planning. Thus, AI-powered demand forecasting can reduce error rates, leading to improved accuracy in demand prediction. Manufacturers can manage every little detail, like the number of vehicles dispatched, and thus reduce operational costs.

                          According to a Gartner study, demand forecasting is the most used ML application in supply chain planning. The study also highlighted that 45% of businesses have already implemented this technology, and 43% plan to use it within the next two years.

                          2. Automation Warehousing

                          Reports estimate the warehouse robotics market will reach USD 10.5 billion by 2028, accompanied by a CAGR of 11.4% during the forecasting period. The need for operational quality is the fueling force that drives this growth. Amazon is a great example of this change. The giant retail company Amazon has close to 200,000 robots functioning in its warehouses. These robots help employees pick, sort, transport, and stow packages.

                          Computer vision technology allows businesses to identify damaged goods. This ensures quality control in warehouse operations. Logistics managers can also regulate the size and type of damage. This will help them take appropriate action. Predictive maintenance is another technology that is very beneficial to a company warehouse. It can predict machine failures in the factory. It does this by processing real-time data gathered from the IoT sensors.

                          3. Back Office Management

                          Every company has a back office that handles the brunt of the workflow. It manages largely repetitive tasks, including bill of lading, invoice maintenance, document processing, and customer services. AI can transform these processes into simpler tasks. 

                          An example is the invoice of rate sheet documents. They manage communication within the workspace. With the help of AI, this process can be automated and made efficient. Accurate data input, error reconciliation, and document processing make this possible. Hyperautomation can help here as well. It combines Artificial Intelligence with robotic process automation and process mining. Together, they make the automation process seamless.

                          Customer service chatbots analyze customer experience with chatbot analytics metrics. This helps them understand the customer’s needs and respond accordingly, leading to higher customer satisfaction rates.

                          4. Sales & Marketing

                          Predictive lead scoring is a subfield of AI and is invaluable to the sales function. It uses machine learning to calculate a score for open leads based on historical data. Lead scoring will ensure that sales reps can focus on the right prospects for the company. This AI-powered tool can assign appropriate scores to leads based on their profile, behavior, and interests. These algorithms can process data. Thus, they can predict which leads will convert into paying customers.

                          AI can also analyze sales and marketing. With the help of AI-powered tools, logistics service providers can process customer behaviors. This helps them predict the customer’s next move. They can also track fluctuations in the market, enabling logistics service providers to be alert and make data-driven decisions.

                          Reshape Customer Experiences with AI & ML

                          Read More!

                          What Are the Top Trends in AI for Supply Chain? 

                          IoT, Hyper-Personalization, Robotics, and Natural Language Processing are some of the top trends businesses can expect to see and implement going forward. Here are the details:

                          1. Better Integration With The Internet Of Things (IoT)

                          Internet of Things (IoT) devices allow for real-time tracking of products in a supply chain. When combined with advanced AI technology, they can perform a wide range of tasks. These tasks include optimization of routes, reducing delays, and enhancing supply chain management.

                          New technologies, such as digital twins, will allow companies to develop a digital model of the product. This can help companies create a virtual representation of their supply chain model. Drones are also equipped with IoT sensors to test deliveries. Studies estimate that around 70% of urban deliveries are drone-based package delivery networks.

                          2. Autonomous Supply Chain Systems And Robotics

                          A 2023 Gartner study predicts that 75% of companies will install cyber-physical automation in their warehouse operations by 2027. The use of robotics and AI-driven systems will streamline the warehouse processes, thus reducing reliance on labor and resources.

                          Some companies, like Amazon, have already installed autonomous mobile robots (AMRs). In the future, many more companies will follow suit, and we can expect to see AMR technology bloom. These autonomous robots will have systems working 24/7, thus implementing a higher level of quality and productivity.

                          3. AI-Driven Hyper-Personalization Of Service

                          The increased priority to customer service is a trend seen throughout innumerable industries. AI can help with this by analyzing customer data and preferences. Businesses can better curate their services to personalized needs. With the introduction of AI, hyper-personalization will grow further. It will encourage manufacturing managers to leverage Machine learning. This will automate manufacturing adjustments that will, in turn, improve customer experience. According to reports, AI-driven forecasting can improve supply chain resilience. It has the potential to reduce stockouts by 50%

                          4. Adoption Of Advanced AI Technologies (NLP, Annss)

                          More and more companies will recognize the potential of high-level AI systems. They will rely on Machine Learning, deep learning, and natural language processing. We will see a rise in data analytics quality and, by extension, better decision-making.

                          Machine Language has an unparalleled ability to process large amounts of data to recognize trends. It will improve accuracy when it intercedes with forecasting inventory needs. 

                          Artificial Neural Networks (ANNSs) are subfields of AI that use deep learning and ML. They detect anomalies and predictive maintenance needs. NPL will also play a big role in enhancing workflow. Thus improving communication between team members, employees, and machines.

                          How Can Fingent Help Future-Proof Your Supply Chain And Logistics Firms With AI?

                          At Fingent, we recognize and understand AI’s transformative power. We expertly maneuver its ability to optimize your supply chain and offer curated custom logistics software development services. Experts at Fingent understand what is needed to implement AI solutions effectively for your business. They specialize in AI technologies like Machine Learning, Natural Language Processing, and Robotic Process Automation. We can thus help you tap into the latest advancements in technology.

                           When you work with Fingent, you get a dedicated team of experienced professionals who can guide you with expertise in logistics management and advanced AI services. Connect with us today to develop customized solutions for streamlined operations, seamless processes, and competitive advantage.

                          Stay up to date on what's new

                            About the Author

                            ...
                            Ashmitha Chatterjee

                            Ashmitha works with Fingent as a creative writer. She collaborates with the Digital Marketing team to deliver engaging, informative, and SEO friendly business collaterals. Being passionate about writing, Ashmitha frequently engages in blogging and creating fiction. Besides writing, Ashmitha indulges in exploring effective content marketing strategies.

                            Talk To Our Experts

                              How can a custom payment processing solution change your business?

                              The benefits are many: streamlined payment processes, safe transactions, easy fraud detection, and better customer experience. However, you might wonder why choose a customized solution when ready-made software can easily fetch these advantages. Tailor-built applications can do more! They offer seamless integrations, personalization, scalability, and distinct solutions that cater to your unique business needs. 

                              In this five-minute read, you’ll find more about why you implement a custom payment processing solution for your business!

                              What Business Challenges Do Payment Processing Systems Alleviate?

                              1. Late Payments

                              Late payments pose a persistent challenge for enterprises. They puncture cash flows and strain client relationships. Custom payment processing solutions tackle this issue. Automated invoicing, recurring billing, and payment reminders help ensure timely payments. Streamlining payment collection enhances cash flow management, mitigating delays and improving financial planning.

                              2. Manual Mishaps

                              Manual glitches in payment processing are a hassle. They can brood discrepancies in financial logs and regulatory tangles. Custom solutions harness automation to excise manual data input. This helps in seamlessly integrating with accounting frameworks and ERP software. This, in turn, ensures precision and uniformity in financial dealings. It also economizes time and resources while enhancing accuracy.

                              3. Security Concerns

                              Security is crucial when handling payments. With cyber-attacks increasing each year, protecting payment information is critical. Customized solutions enable security measures like tokenization, encryption, and following PCI compliance rules. These protections help keep payment data safe during transactions. They also reduce the risk of fraud or identity theft, which makes customers feel more confident about using the service.

                              4. Lack of Integration

                              Fusing payment processing systems with existing infrastructure poses a puzzler for enterprises. Customized solutions are architected to blend seamlessly with various business systems, including CRM platforms and e-commerce portals. This amalgamation streamlines operations, heightens visibility, and enhances decision-making processes.

                              A Unified Self-service Customer Portal Transforming Payment Experience

                              Read Full Case Study

                              What Are the Top Benefits of Payment Processing Solutions?

                              Let’s now unveil the metamorphic might of payment processing solutions. More importantly, see their potential to revolutionize enterprise financial functions.

                              1. Cash Flow Augmentation

                              Efficient payment processing bolsters cash flow by automating invoicing, payment collection, and reconciliation. Timely payments ensure a steady fund inflow. This is important in meeting fiscal commitments, investing, and sustaining liquidity.

                              2. Security Supremacy

                              Payment processing solutions ensure robust security, including encryption, fraud detection, and safeguarding sensitive data. Adherence to standards like PCI DSS fosters trust among customers and stakeholders.

                              3. Client Contentment

                              Frictionless payment encounters amplify client satisfaction and allegiance. Various payment alternatives, secure checkouts, and instantaneous confirmations ensure this. They truncate friction and amplify repeat transactions.

                              4. Reporting and Analytics

                              Access to real-time data and analytics catalyzes informed decision-making. Insights into transaction volumes, trends, and consumer conduct empower enterprises. They can pinpoint growth prospects and fine-tune strategies.

                              Why Choose Custom Over Off-the-Shelf?

                              Businesses frequently grapple with the choice between off-the-shelf and custom payment processing solutions. Granted, off-the-shelf options provide convenience and cost-effectiveness. However, they may fall short of meeting unique organizational needs. In contrast, custom solutions are crafted to fit specific requirements, offering unmatched advantages.

                              Custom payment processing solutions allow for flexibility and scalability. They empower enterprises to adapt and evolve in the face of fluctuating market dynamics and consumer demands.

                              Custom solutions provide unmatched flexibility to accommodate singular business processes and demands. They employ personalized workflows, user interfaces, and integrations with extant systems and third-party applications. Custom solutions harmonize these tools with organizational aspirations and priorities. This optimizes efficiency, augments productivity, and catalyzes innovation across the payment realm.

                              Limitations of Off-the-Shelf Solutions

                              Off-the-shelf solutions may seem like a quick and cost-effective way to get started, but they often come with limitations, especially in terms of functionality, customization options, and scalability. Businesses may find themselves constrained by rigid workflows and limited integration capabilities. Support for specialized payment methods or industry-specific requirements isn’t provided, either. Reliance on third-party vendors for updates, upkeep, and support can be a hassle. It can engender dependency dilemmas and potential hiccups in business operations.

                              On the other hand, custom payment processing solutions remove this element. They offer greater sway, flexibility, and ownership over the payment setting. They help enterprises optimize processes, strategically innovate, and stay ahead of the curve.

                              Deliver Top-Notch Banking Experiences to Your Customers!

                              Explore Our Fintech Services

                              How Do I Strategize A Custom Payment Processing Solution?

                              Let’s explore the strategic blueprint behind crafting custom payment processing solutions. Also, take a look at how they cater to unique business requirements:

                              1. Understanding Business Requirements

                              Businesses must first grasp their specific needs and objectives. A thorough analysis of current processes, pain points, and future goals is key. A deep understanding of business requirements is essential here. Whether its optimizing invoice management, enhancing security protocols, or integrating with existing systems.

                              2. Scalability and Flexibility

                              In today’s dynamic business landscape, scalability and flexibility are crucial. This holds true in a custom payment processing solution as well. Priorities are accommodating increasing transaction volumes, expanding product lines, and evolving business models. Adopting scalable architecture and flexible design principles can future-proof the payment processing ecosystem.

                              3. Compliance and Security

                              Compliance and security are paramount in financial transactions. A custom payment processing solution should adhere to regulatory requirements, including PCI DSS, GDPR, and industry-specific standards. Robust security measures such as encryption and multi-factor authentication are vital. They safeguard sensitive payment data and mitigate the risk of fraud and data breaches.

                              4. User Experience

                              User experience (UX) is critical for the success of any payment processing system. A seamless and intuitive user interface is important. This, coupled with streamlined workflows and clear communication, enhances usability and efficiency. Prioritizing UX can help in many ways. Organizations can improve adoption rates, reduce user errors, and enhance customer satisfaction.

                              How Can Fingent Help?

                              Fingent specializes in crafting custom software solutions. This includes personalized payment processing systems tailored to our client’s unique requirements. We have extensive experience in the field. Streamlining payment operations, bolstering security, and fostering business growth are our forte.

                              Our approach starts with a deep dive into our clients’ needs, objectives, and challenges. We work closely with stakeholders to get the complete picture. We gather insights, pinpoint pain points, and establish success metrics. Experts are handpicked, drawing on our technical expertise and industry knowledge. We then design and develop bespoke solutions that precisely address our clients’ needs. Consider this case study: 

                              specialized integrated payment processing gateway - case study

                              These features enable effortless payment experiences for customers, ensuring security and reliability. This collaboration exemplifies Fingent’s commitment to delivering innovative custom software solutions. Our strength is in tailoring these solutions to meet the unique needs of our customers.

                              Get Custom, Get Smart!

                              Payment processing systems tackle vital business challenges like late payments and manual errors. This is achieved through customized solutions for improved cash flow and enhanced security. Strategic planning and choosing the right partner are key.

                              Leverage Fingent’s expertise! Transform your payment processes and unlock new opportunities for success. See how our custom software solutions can empower your organization to thrive in the digital economy. Contact us today.

                              Stay up to date on what's new

                                About the Author

                                ...
                                Tony Joseph

                                Tony believes in building technology around processes, rather than building processes around technology. He specializes in custom software development, especially in analyzing processes, refining it and then building technology around it.He works with clients on a daily basis to understand and analyze their operational structure, discover (and not invent) key improvement areas and come up with technology solutions to deliver an efficient process.

                                Talk To Our Experts

                                  Achieving perfection is no easy process. It is not impossible either. It takes a lot of effort and hard work but with the help of Artificial Intelligence, this process can become a lot smoother. AI has undoubtedly proved itself in innumerable industries, and the financial market is no different. 

                                  With AI, Financial sectors are seeing a massive transformation in how they work, process documents, make decisions, predict market changes, and even mitigate risks. 

                                  As Dan Schulman, the CEO of PayPal once said, “We’re not trying to reinvent the wheel; we’re trying to perfect it.”

                                  In this blog, we will learn how Artificial intelligence is shaping the future of financial services.

                                  What Does Artificial Intelligence Mean to the Financial Service Sector?

                                  First, it’s imperative to understand the relationship between Artificial intelligence and finance. Almost all major banks state that they use AI for various functions. It supports financial services like automated customer assistance, risk management, and fraud detection. Research shows that machine learning makes up about 18% of the banking, financial services, and insurance market.

                                  With the assistance of AI, banks can perform a wide range of functions, including real-time performance forecasting, detection of odd spending patterns, and compliance management. This enables them to streamline and automate mundane manual processes and boost efficiency.

                                  With machine learning, AI can evaluate large amounts of data to discover trends and form predictions. This allows investors to track investment growth and beware of risks.

                                  A Comprehensive Guide: Leader’s Blueprint For AI Success

                                  Read More

                                  Top Functions That Artificial Intelligence Can Improve

                                  1. Fighting Fraud

                                  Ensuring the proactive protection of financial assets remains paramount for customers. It instills a sense of confidence and satisfaction in their investments. Artificial intelligence can help here. It analyzes a person’s buying behavior and notes their spending patterns. Something that seems out of the ordinary triggers an alert in the fraud detection systems.

                                  Machine learning algorithms can easily detect fraudulent patterns and actions. This helps financial institutions take preventive measures to tackle financial crime. According to recent research, AI-driven systems have detection accuracy rates of up to 95%! Traditional systems normally range between 60-70%. That’s a significant increase.

                                  Case study: 

                                  Companies like PayPal and Square leverage artificial intelligence well. AI algorithms track transaction patterns and detect suspicious activities that may signal fraud. These ML systems improve with time as they continuously learn from new data, enhancing their performance.

                                  2. Risk Management

                                  Addressing potential threats before they escalate into real issues. This is the secret to resolving most business challenges. 

                                  Risk management programs can be run through AI risk assessment, prediction, and mitigation. This encompasses credit risk, identifying fraud, and monitoring compliance. This will improve risk management procedures and lower the odds of suffering financial losses.

                                  Predictive analytics enabled by Artificial Intelligence can enable proactive risk management techniques. Businesses can predict market movements and detect possible dangers before they occur. In this way, AI helps improve risk management methods, make better decisions, and build resilience, which is vital in an ever-changing financial world.

                                  Case study: 

                                  JP Morgan used a machine learning system nicknamed LOXM (Deep Learning and XVA). It can forecast market risk indicators, including interest rates and credit spreads. LOXM enhanced the accuracy of market risk projections manifold. It achieved this by adding non-linear correlations and intricate interactions between variables. This allows traders and portfolio managers to make better investment decisions.

                                  3. Personalized Customer Service

                                  Everyone likes to feel special to have a service customized especially for them. As a service provider, your top priority will be to fulfill this desire. By providing individualized customer care, you can display your loyalty, care, and business success. A recent Epsilon survey shows that “80% of customers feel more compelled to engage with a service when they receive customized offers.”

                                  Chatbots and virtual assistants powered by AI are remarkable tools. They offer individualized customer care, resolve inquiries, and assist with budgeting. They do this with the backbone of Natural Language Processing (NLP) algorithms. These algorithms analyze consumer sentiment and organizational feedback. This leads to improvements in service quality and an improved customer experience.

                                  Artificial intelligence can also provide personalized recommendations for financial assets and services. This includes investment possibilities or insurance plans. These will be based on the customer’s taste and financial goals. Which in turn are retrieved through consumer data analytics and transaction histories.

                                  This way, AI can enhance the whole customer experience, develop loyalty, and increase engagement. This will eventually boost market growth and competition. A report by McKinsey showed the results of banks that use customized product suggestions. They saw a 20-30% improvement in conversion rates!

                                  Case study: 

                                  USAA introduced Nina, an AI-powered virtual assistant. It provides individualized customer care via voice and text interactions. Nina uses NLP algorithms to comprehend natural language inquiries. It then delivers appropriate information and support. Thus improving the entire customer service experience.

                                  4. Quicker Document Analysis

                                  Managing and extracting value from massive volumes of unstructured data isn’t an easy task. AI, Natural language processing (NLP), and optical character recognition (OCR) help in this. Data is extracted and organized efficiently, which leads to efficient document arrangement and analysis. 

                                  According to research, mortgage applications and loan approval times have been reduced by 30-50%! This is achieved by integrating AI into loan processes. 

                                  With AI as the backbone, you can monitor compliance by guaranteeing adherence to regulatory standards. How is this done? AI-powered systems meticulously scan documents to verify compliance with organization rules. The company thus avoids penalties and regulatory hurdles. AI improves contract management by identifying essential words, clauses, and contract hazards. This empowers institutions to make more informed decisions during negotiations and monitoring.

                                  Case study: 

                                  An AI-powered digital lending platform automates the loan origination process by collecting data from borrower documents and generating loan applications. Such a platform decreases human data entry and processing delays, helping lenders speed up loan approvals while improving the entire client experience.

                                  5. Speed

                                  “Time is money” is an age-old proverb that resonates greatly in our modern era. The need for increased speed in the financial services sector is more urgent than ever. What will help you achieve that delicate balance between speed and efficiency? This is where AI emerges as the protagonist, offering unparalleled solutions. 

                                  Speed is the cornerstone of AI’s transformative impact on the financial services landscape. Empowered by AI-driven algorithms, financial institutions can execute trades and process transactions quickly, allowing them to capitalize swiftly and efficiently on market opportunities. 

                                  AI-driven trading systems use present criteria and market data to trade. This is way faster than humans, thus boosting efficiency and cutting costs. According to research, the Algorithmic Trading Market was valued at USD 14.42 billion this year. It is predicted to grow at an 8.53% CAGR! Why such unprecedented growth?

                                  AI algorithms rapidly analyze vast real-time data. This superpower provides rapid market insights for agile decision-making and adaptation. It swiftly assesses and mitigates hazards with real-time data and market dynamics, enhancing risk management. 

                                  Case study: 

                                  Fingent helped develop Ambit. A customized AI machine-learning solution that simplifies and speeds up the claims management process. The client, Sapra & Navarra, have found refuge in the solution to ease the settlement process, improve the performance efficiency of lawyers, and transform client experience.

                                  AI Cuts Average Case Settlement Time to 1-2 Days

                                  Read Full Case Study Now

                                  6. Report Generation

                                  As per a study conducted by McKinsey, AI boosts the global banking sector’s value by $1 trillion each year! This is due to its ability to enhance decision-making skills through intelligent reports.

                                  AI-generated reports greatly empower financial institutions to deliver short, accurate, and insightful reports. This enhances operational efficiency, compliance, and stakeholder engagement, thus refining decision-making capabilities.

                                  Artificial intelligence has revolutionized financial report generation by automating data analytics and customization. It speeds up the process by retrieving data from multiple sources, formatting it, and creating reports. It gives users the option to customize and personalize reports, which helps better match customer needs and tastes. 

                                  Natural Language Generation (NLG) technology has also been a great complement to AI. They aid communication by converting data and insights into understandable reports. AI also streamlines compliance and regulatory reporting. By automating report creation and updates it helps ensure adherence to evolving regulations. 

                                  Case study: 

                                  AI-powered portfolio reporting solution that assists financial professionals in creating meaningful insights and suggestions for their customers. This is achieved by compiling data from many sources and using advanced analytics. Asset managers and wealth advisers can thus generate individualized performance reports for customers. 

                                  AI Changes the Game

                                  Artificial Intelligence emerges as a game changer in the financial services world. With its revolutionary power, it disrupts traditional models. Machine learning, natural language processing, and computer vision enhance its capabilities. These are strategically applied to produce real benefits for banks. These benefits range from boosting staff and customer experiences to back-office processes.

                                  In summary, what can AI enhance? It can create and evaluate new ideas, conduct analyses, and enhance decision-making. AI enables faster prototyping and risk analysis. It not only improves operational efficiency but also provides personalization to financial institutions.

                                  You will have to decide to transition into this environment sooner or later, which makes it vital to find an efficient partner. A good track record and transparent communication are assets that must be on your list. 

                                  Deliver Top-Notch Banking Experiences to Your Customers!

                                  Explore Our Fintech Services

                                  How Fingent Can Help

                                  Fingent is one of the world’s largest software solution providers. We have a track record of delivering personalized AI solutions to our clients.

                                  A few success stories: 

                                  Top-Notch Plugins to Improve Customer Experience

                                  Fingent is in collaboration with Mastercard to develop and maintain cutting-edge plugins. The goal is to improve customer experience. This benefits support staff and the merchants using the Mastercard Payment Gateway Services.

                                  Processing Workers’ Compensation Claims Made Seamless

                                  Processing workers’ compensation claims can be a tedious task. Fingent created unique Al software to improve and accelerate the associated procedures. It uses Optical Character Recognition (OCR) and Al to enable intelligent data extraction and contextual analysis. This helps in deriving valuable insights from bigger datasets.

                                  This demonstrates our ability to utilize intelligent technology and new business models. Our team has experts in neural networks, natural language processing, and machine learning. They will work together to ensure that you get the best possible outcomes.

                                  If you are looking for a capable partner to enhance your business model, look no further! We are here, and we are ready to help!

                                  Connect with us today!

                                  Stay up to date on what's new

                                    About the Author

                                    ...
                                    Tony Joseph

                                    Tony believes in building technology around processes, rather than building processes around technology. He specializes in custom software development, especially in analyzing processes, refining it and then building technology around it.He works with clients on a daily basis to understand and analyze their operational structure, discover (and not invent) key improvement areas and come up with technology solutions to deliver an efficient process.

                                    Talk To Our Experts

                                      How Are Businesses Using AI?

                                      The verdict is crystal clear—leaders today must embrace AI solutions to stay ahead of the curve and survive in the rapidly evolving business landscape. AI can be like a GPS navigation system that guides you through unfamiliar roads. From predicting market changes to automating operations and bringing intelligent services, AI is paving the way for revolutionary business innovations. However, leveraging the best of AI needs crucial understanding and strategic planning. That’s why we have compiled a quick guide to help leaders pave the way for success with AI solutions. 

                                      The benefits of AI for businesses are vast. One major advantage is its ability to automate repetitive tasks, freeing valuable human resources to concentrate on strategic initiatives. AI’s ability to extract valuable insights from large volumes of data is one essential element businesses can utilize to make better decisions. Many industries already use AI’s qualities to improve customer experiences and gain a competitive edge. For instance, in the healthcare industry, AI is being used to diagnose diseases more accurately and quickly. In the retail sector, AI-powered chatbots are enhancing customer service. Here’s a detailed view of how various industries use AI to enhance performance. 

                                      “Leaders, embrace AI! Make it your superpower!” – Robert Barber, Leadership Development Trainer and Executive Coach.

                                      How is AI Used in Different Industries?

                                      • Healthcare: AI-powered diagnostic tools can analyze medical data, evaluate a patient’s conditions, and recommend treatments. These tools assist healthcare professionals in accurate diagnosis and treatment planning.
                                      • Finance: AI algorithms serve various purposes in finance. They are used for fraud detection, risk assessment, and algorithmic trading. This enables financial institutions to manage risks better and improve investment strategies.
                                      • Manufacturing: AI-driven predictive maintenance systems are crucial in anticipating equipment failures. They can predict issues before they happen, reducing downtime and improving production efficiency.
                                      • Retail: AI-powered recommendation systems personalize content and user experiences. Like a DJ, they create playlists based on listener preferences and moods! AI provides tailored suggestions, increases engagement, and boosts sales.

                                      Plan Custom AI Business Solutions With Us!

                                      Connect Now

                                      How Can Businesses Strategize Success with AI Solutions?

                                      In the quest for organizational success, the strategic integration of AI can be a game-changer. AI holds immense potential for businesses across industries. From streamlining operations to unlocking new opportunities for innovation, it can do it all. Let’s explore key strategies for strategizing and realizing success with AI implementation.

                                      1. Identifying Potential Impact Areas for AI Implementation

                                      Identify potential areas within business operations where AI can make a significant impact. This could include tasks that are repetitive, data-intensive, or require complex decision-making. An excellent example is AI-powered chatbots in customer service. They handle routine inquiries and free up human agents to focus on more complex issues. Similarly, AI-driven predictive maintenance systems help in manufacturing. They optimize equipment uptime and reduce maintenance costs.

                                      2. Planning an AI Strategy

                                      Create a good plan for using AI. Think carefully and make sure it fits with what your organization wants to achieve. Here are the key things to do:

                                      • Assessment: Look closely at how things are done in the company. Find out what’s not working well and where AI could help.
                                      • Goal Setting: Decide what you want to achieve with AI. Set clear goals that you can measure. It might be saving money, making more money, or making customers happier.
                                      • Resource Allocation: Make sure you have what you need to make AI work. This includes financial resources, people with the right skills, and the right tools.
                                      • Risk Management: Think about what could go wrong with using AI. This could be privacy problems or people not liking the changes. Figure out how to deal with these issues.
                                      • Timeline: Plan out when you’ll do everything. Think about when the technology will be ready, when your company will be ready, and any rules you need to follow.

                                      3. Identifying the Type of AI

                                      AI encompasses a diverse range of technologies, each with its applications and capabilities. Some key types of AI are:

                                      • Machine Learning: Machine learning teaches a computer to learn from examples instead of telling it exactly what to do. It can be used to predict the next move, suggest things one might like, and recognize what’s in pictures.
                                      • Natural Language Processing (NLP): NLP helps computers understand and talk like humans. Natural Language Processing does things like translating languages, enabling chatbots, and figuring out how people feel from what they say.
                                      • Computer Vision: Computer vision helps computers understand and work with pictures and videos. It’s used in things like recognizing faces, finding objects in pictures, and helping cars drive themselves.

                                      4. Aligning AI with Company Culture

                                      Successful AI implementation requires more than just technology. It requires a cultural shift within the organization. Leaders must ensure that AI initiatives align with the existing company culture and ecosystem. Here’s what you must focus on:

                                      • Communication: Communicate the benefits of AI adoption to employees at all levels of the organization. Address any concerns or misconceptions they may have.
                                      • Training and Upskilling: Provide training and development opportunities. This will teach employees how to use new AI tools and ways of working.
                                      • Collaboration: Encourage everyone to work together. Motivate them to share ideas and skills from different parts of the company.

                                      5. Scaling and Driving New Business Value

                                      Once AI initiatives are up and running, the focus shifts to scaling them effectively. This will help maximize their impact on business value. Strategies for scaling AI initiatives include:

                                      • Iterative Improvement: Continuously iterate and improve AI models and algorithms. Use feedback and performance metrics.
                                      • Integration: Integrate AI capabilities into existing systems and workflows. This will maximize efficiency and effectiveness.
                                      • Expansion: Look for opportunities to expand AI initiatives into new areas or markets. Use what you have already learned.

                                      6. Realizing Consistent AI Value

                                      AI is like a detective that looks at lots of clues to figure things out. It can look at tons of data to find trends, anomalies, and things that might be risky for a business. To do this, you need to implement the following:

                                      • Performance Monitoring: Monitor key KPIs to track how effective AI initiatives are. Identify areas for improvement.
                                      • Feedback Loop: Establish a feedback loop to gather input from stakeholders and end-users. Incorporate their insights into future iterations of AI solutions.
                                      • Adaptation: Remain agile. Adapt quickly to changes in the business environment, technology landscape, or regulatory requirements.

                                      Case Study: How AI Helps A Legal Firm Simplify Claims Management 

                                      Albert Navarra and Ambika Sapra, co-founders of Sapra & Navarra, LLP are living proof of how AI can help leaders transform their business.

                                      From one room, one computer, and no cases, they are now 50+ employees strong and growing stronger by the minute! Along with their determination and brilliant legal skills, a reason for their rising success is Ambit AI. Ambit AI is an AI Machine Learning program developed for them by Fingent. It simplifies and transforms the workers’ compensation claims processing experience.

                                      Ambit AI seamlessly complemented their goals as certified specialists in Workers’ Compensation Law. It also helped them achieve satisfying business outcomes for their clients. They were able to reduce claim settlement times from years to days and settlement costs by over 50%!

                                      The team now plans to scale Ambit AI to multiple insurance domains!

                                      AI Cuts Average Case Settlement Time to 1-2 Days

                                      Read Full Case Study Now

                                      How Fingent Can Help Drive Successful AI Projects

                                      Fingent is at the forefront of delivering cutting-edge AI solutions. These solutions are tailored to solve complex business problems across multiple sectors, exemplifying Fingent’s capability to work with leaders to achieve their vision.

                                      Fingent’s approach is rooted in a deep understanding of client needs. We foster a collaborative project management style and provide unwavering support post-implementation. Testimonials from satisfied clients highlight the transformative effects of Fingent’s AI solutions.

                                      Connect with us today!

                                      Stay up to date on what's new

                                        About the Author

                                        ...
                                        Tony Joseph

                                        Tony believes in building technology around processes, rather than building processes around technology. He specializes in custom software development, especially in analyzing processes, refining it and then building technology around it.He works with clients on a daily basis to understand and analyze their operational structure, discover (and not invent) key improvement areas and come up with technology solutions to deliver an efficient process.

                                        Talk To Our Experts

                                          ×