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Setting new standards for BFSI efficiency with AI-powered document processing

Artificial Intelligence (AI) is at the forefront of a transformative shift in banking, financial services, and insurance (BFSI) documentation, redefining how institutions manage, process, and analyze vast amounts of data. In an industry where precision and compliance are paramount, traditional methods of handling financial documents—often characterized by manual reviews and time-consuming processes—are becoming obsolete. The rise of AI-powered document processing technologies offers a compelling solution to these challenges, enabling organizations to streamline operations, enhance accuracy, and significantly reduce human error. 

According to McKinsey, AI is poised to deliver transformative value to the global banking sector, with potential annual benefits exceeding USD1 trillion by 2030.1 Its impact spans enhanced customer experience, operational efficiency, and improved risk management. The strategic imperative of intelligent document processing cannot be overstated. As financial institutions grapple with an ever-increasing volume of paperwork—from contracts and regulatory documents to customer communications—the need for efficient, automated solutions becomes critical. 


The size of the intelligent document processing industry is predicted to be USD.86 billion in 2025 and is estimated to cross USD66 billion by 2037.2

Reasons for growth: 

– Enterprises must process vast volumes of structured and unstructured documents with utmost speed and accuracy. 

– This entails using a potent technique: intelligent document processing for finance, which allows businesses to manage large volumes of unstructured data and convert it into valuable information for informed decision-making. 

– Organizations allocate 64% of their tech spend in operations and 36% in the innovation and growth sector.3  

Global Intelligent Document Processing Market Landscape 2025-2037: A comprehensive market analysis showing regional distribution, deployment preferences, and industry dynamics. North America leads with 35% market share, while on-premise solutions dominate at 57% of deployments. The market expects robust growth with 31.4% CAGR, driven by customer satisfaction needs and technology adoption, despite challenges in compliance and skilled workforce availability. Key players include industry leaders like Automation Anywhere, Kofax, UiPath, and IBM among others.
Intelligent document processing market overview

Intelligent document processing for financial services facilitates rapid data extraction and analysis while ensuring organizations remain compliant with evolving regulatory standards. By leveraging advanced technologies such as natural language processing and machine learning, businesses can achieve accelerated operational efficiency, positioning themselves to respond swiftly to market changes and customer needs. This blog will explore how Grid Dynamics’ AI-powered document processing solutions set new standards for BFSI operations, driving efficiency and innovation across the sector. 

The evolution of intelligent document processing in BFSI

The banking and financial sector is at a critical inflection point. A decade after the initial wave of digital transformation, many financial institutions find themselves at a crossroads—having digitized their operations but falling short of genuinely transforming their customer relationships and business models. As we approach 2025, this industry faces a dual challenge: declining customer experience metrics and pressure on profitability margins. This disconnect hampers trust and creates tangible financial, competitive, and reputational impacts across the industry. 

Enter AI-powered intelligent document processing, emerging as a crucial enabler for banks and financial institutions to deliver proactive, relevant services while creating better customer financial outcomes. This involves digitizing multiple documents and unlocking their inherent value through intelligent document automation and analysis to drive deeper customer insights and trust. 

A digital assistant platform designed for financial advisors, showcasing its various functionalities through a mind map structure. At the center is an AI brain icon in orange, connected to six key modules: creative writing for client communications, financial advisor tools, policies and procedures documentation, meeting minutes and notes management, account tracking, and domain knowledge resources. The platform appears designed to help financial advisors manage client relationships, track important information, and maintain regulatory compliance while providing personalized service, as exemplified by specific use cases like client birthday reminders and account rebalancing queries
AI platform for financial advisors

GenAI document processing and understanding solutions for the BFSI industry

Grid Dynamics has developed a suite of GenAI-powered document processing and understanding solutions tailored for the BFSI industry.

1) Intelligent document processing solution 

This advanced solution is designed to redefine how financial institutions handle complex document workflows. Leveraging GenAI, it performs ad hoc analysis of large documents like contracts and RFPs, enabling users to ask questions and generate precise summaries instantly.

How does it work?

Intelligent Document Processing (IDP) workflow diagram showing the automated processing of various input documents (PDF, XLS, HTML) through a custom workflow system. The workflow includes initial analysis, response generation, manual response options, refinement, and output validation stages, supported by knowledge bases containing company information and cloud services from AWS, Google Cloud, and other providers. The final output is a validated PDF document.
Intelligent document processing workflow

Core capabilities 

Our intelligent financial document processing software empowers organizations with a flexible, scalable platform that seamlessly integrates with leading LLM providers and enables custom workflow creation through powerful building blocks, all while efficiently managing and processing extensive document repositories for diverse business needs. Core capabilities include:

  • Efficient and ad hoc document analysis: This capability allows users to perform quick and flexible document analysis, extracting relevant information and insights on demand. It supports tasks such as summarizing lengthy texts and identifying key data points within contracts and reports.
  • Compliance and validation: Document processing solutions automate the verification of documents against regulatory standards, ensuring all necessary compliance requirements are met. This includes validating the authenticity of documents, checking for completeness, and identifying any discrepancies that may indicate non-compliance. 
  • Process automation: Document processing solutions streamline workflows by automating repetitive document-related tasks, such as manual data entry and report generation. This reduces effort, minimizes errors, improves data security, and accelerates processing times, ultimately enhancing productivity. 
  • Quality assurance: Our document processing solution incorporates mechanisms to ensure accuracy and reliability. This includes automated checks for data integrity and consistency and validation protocols to maintain high outputs. 
  • Question answering: Integrating conversational AI enables users to interact with the document processing solutions through natural language queries. This feature allows intuitive information retrieval and enhances user experience by providing real-time assistance with document-related inquiries. 

Notable intelligent document processing use cases

Intelligent document processing solutions for the BFSI sector encompass several vital processes that enhance operational efficiency and audit and compliance management. Document parsing extracts structured data from unstructured documents, enabling automated data entry. Attribute extraction identifies critical elements while classifying documents for compliance purposes. Document summarization distills lengthy contracts into concise overviews, facilitating quicker assessment of essential terms and risks. Document generation automates customer communications, ensuring consistency and personalization. Finally, workflow automation streamlines loan application processing by integrating various tasks into a cohesive workflow. 

Six essential document AI applications for BFSI operations, represented by simple line icons on yellow backgrounds. These functionalities span from document parsing and attribute extraction to document summarization, generation, multi-modal analysis, and workflow automation. Each icon pairs a core function with a practical example, serving both back-office and customer-facing needs in banking, financial services, and insurance sectors.
Intelligent document processing: A Swiss army knife for back office operations

Utilizing retrieval-augmented generation (RAG) techniques enhances these financial document processes by combining the strengths of information retrieval with GenAI. This allows for more accurate data extraction and context-aware document generation, ultimately driving improved decision-making and customer satisfaction. 

Multimodal Graph RAG

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2) Policy Pulse Starter Kit

The Policy Pulse Starter Kit addresses critical challenges in the Insurance industry, particularly regulatory compliance and customer engagement. It’s trained to address complex queries, offer precise answers based on policy details, and streamline customer interactions, thus enhancing service quality and reducing response times. 

Core capabilities

With specialized training and predefined rules on complex policy queries and compliance with regulatory requirements, the Policy Pulse Starter Kit empowers both customer service representatives and clients with real-time, accurate information access. Core capabilities include:

  • Regulatory change compliance: Insurers can quickly adapt their policy documents to meet new regulatory requirements. By leveraging AI, Policy Pulse streamlines the compliance process, ensuring all necessary updates are made efficiently and accurately, thus mitigating the risk of non-compliance. 
  • Quote renewal: This feature simplifies the renewal process for customers by automating competitive quote generation. It analyzes existing policies and provides tailored renewal options, significantly reducing the time and effort required for insurers and customers during renewal. 
  • Customer service: With the integrated GenAI assistant, Policy Pulse enhances customer service by providing real-time, accurate information. This tool assists both customers and customer service representatives (CSRs) address inquiries promptly, improving overall satisfaction and engagement. 
Insurance policy management interface called "Policy Pulse" featuring an AI assistant named Claudia. The interface displays a sidebar with options including Policy Impact, Quote Renewal, Document Q&A, and Upload Documents. The main panel shows a document selection dropdown with various insurance policies listed, including offerings from major insurers like GEICO, USAA, and Aviva. The AI assistant provides a welcome message and suggests ways to interact with documents through summary creation and specific topic questions.
Policy Pulse Document Q&A

Notable Policy Pulse use cases 

Regulatory change compliance
The challengeThe solution 
A prime example is House of Representatives (HR) Bill 2687, which mandates an increase in minimum insurance coverage for commercial auto policies—a significant shift not seen in 40 years. This regulation imposes a considerable workload on insurance companies as they adapt their policies to meet these new compliance standards. The Policy Pulse Starter Kit addresses the complexities of regulatory change compliance by leveraging AI to evaluate the impact of new regulations on policy documents, thereby enhancing efficiency at scale. Using pre-trained AI models on insurance-related content, it is able to assess how the changes outlined in HR2687 affect existing policy documents. AI meticulously evaluates current policies, recommending precise updates to ensure compliance by adjusting coverage limits from USD750,000 to the newly required inflation-adjusted minimum of USD5 million. Additionally, it highlights specific sections of the policy that need modification, ensuring that no critical detail is overlooked.
A regulatory impact analysis interface that shows how new insurance regulations affect policy requirements. The interface presents a side-by-side comparison of regulation changes and their policy impacts, highlighting Section 31139(b)(2)'s amendment that increases minimum financial responsibility from $750,000 to $5,000,000, and Section 31139(b)(3)'s new quinquennial adjustment requirement for medical care inflation. The system clearly outlines necessary updates to the 'Auto coverage part' section, specifically the 'Liability To Others' limit, to maintain compliance with these regulatory changes.
Policy Pulse regulatory impact analysis
Quote renewal generation
The challengeThe solution
Consumers receive renewal notices from their insurance providers each year, prompting them to seek better deals if rates have increased. This process can be cumbersome, often requiring extensive information across multiple platforms. Policy Pulse streamlines this customer journey, enhancing conversion efficiency. Users begin by uploading their renewal policy and clicking “Generate quote estimate.” The system quickly analyzes the document, identifies key details such as the number of drivers, and requests any missing information, like driver’s licenses. It then compares the input against the insurer’s latest offerings to generate a competitive renewal quote that mirrors existing coverages while optimizing pricing and benefits. Users can quickly review and adjust their quotes to meet their specific needs. 
A detailed auto insurance quote renewal from Grid Dynamics, offering coverage at $562.58 per month. The interface presents a comprehensive breakdown of Policy Coverage, including Bodily Injury Liability ($100k/$300k), Property Damage Liability ($50k), Uninsured/Underinsured Motorist BI ($100k/$300k), and Medical Payments ($1k), with individual cost breakdowns for each coverage type. The policy details show coverage for a 2020 HONDA ACCORD under renewal number #5510024822. The interface includes an "Issue Policy" button and a note indicating this is a quote estimate that requires additional details for final policy issuance via email
Policy Pulse quote renewal generation
Document Q&A 
The Policy Pulse GenAI assistant, or copilot, is designed to provide real-time support and information to customers and CSRs. Users can upload their insurance policies and pose questions directly to the copilot. The system quickly recognizes essential details, such as the insured’s name and vehicle information, and is trained to understand context, allowing it to respond accurately to various queries. 
The Policy Pulse GenAI assistant, or copilot, is designed to provide real-time support and information to customers and CSRs. Users can upload their insurance policies and pose questions directly to the copilot. The system quickly recognizes essential details, such as the insured’s name and vehicle information, and is trained to understand context, allowing it to respond accurately to various queries. 
Policy Pulse GenAI assistant

The copilot effectively handles simple and complex questions, displaying relevant information such as potential payment limits based on specific scenarios. By empowering CSRs with precise data and insights, the GenAI assistant significantly enhances customer service experience while reducing response times. This tool streamlines communication, ensuring customers receive timely and accurate assistance, ultimately improving satisfaction and operational efficiency. 

Accelerate insurance operations with the Policy Pulse Starter Kit

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3) GenAI Investment Suitability Assistant Starter Kit

The GenAI Investment Suitability Assistant is an AI-powered starter kit that optimizes how financial advisors evaluate investment opportunities for their clients. This sophisticated system operates on three key dimensions: comprehensive data integration, intelligent analysis, and customized recommendation generation. 

How does it work?

The GenAI Investment Suitability solution analyzes multimodal data sources to process client and investment data for comprehensive analysis. On the client side, it aggregates information from CRM profiles, risk assessments, and portfolio platforms to evaluate objectives, risk tolerance, and portfolio fit, while the investment stream analyzes fund documentation (PPM, LPA, side letters) to assess strategy and structure components. Through a series of advanced processing steps including vectorization, embedding creation, and similarity analysis, the system transforms this raw data into actionable insights, ultimately delivering a data-driven assessment of investment suitability that aligns client parameters with investment characteristics.

Investment Suitability Analysis Workflow Using AI: A systematic process that combines client data, fund documentation, and third-party sources to generate personalized investment recommendations through vector embeddings and LLM processing. The workflow integrates CRM profiles, risk assessments, and portfolio management data with fund documentation to deliver data-driven investment insights.
GenAI Investment Suitability Assistant workflow

Core capabilities

Core capabilities of the Investment Suitability Assistant include:

  • Data integration and aggregation: The system gathers and consolidates client suitability data from various internal and external sources, ensuring a comprehensive view of each client’s financial profile. 
  • Advanced analytics with LLMs: The assistant leverages LLMs to perform sophisticated analysis of investment documents and market conditions. This enables advisors to extract data and critical insights quickly, enhancing decision-making. 
  • Investor-fund matching: The system efficiently aligns investment options with individual investor profiles, considering risk tolerance, financial goals, and time horizons to ensure suitable recommendations. 
  • Regulatory compliance: Firms adhere to regulatory standards by automating compliance checks and maintaining an auditable decision trail, thus minimizing non-compliance risk. 
  • Suitability assessment and documentation: It generates thorough suitability assessments and necessary documentation, providing advisors with quantifiable suitability scores to support informed investment decisions tailored to each client’s needs. 

Under the hood: Agentic multimodal modern RAG

The GenAI Investment Suitability Assistant is built on advanced Agentic Retrieval-Augmented Generation (RAG) techniques, enhancing traditional methods by efficiently processing multimodal data. This approach facilitates accurate information retrieval, personalized client management, and regulatory compliance, streamlining the investment suitability assessment workflow. 

The system begins with data ingestion and vectorization, processing various data types, including documents and web content. This involves breaking down information into manageable chunks and then converting it into numerical representations for efficient searching. 

Next, machine learning applications categorize this data into formats like text, tables, and charts through a pipeline router. When a query is made, the system employs machine learning models to reformulate it for optimal retrieval, incorporating context from previous interactions. 

The system utilizes a hybrid search that combines vector and metadata searches to generate quantifiable suitability scores. Relevant data chunks are re-ranked based on the specific context of the query, allowing answer agents to produce tailored responses and suitability scores based on complex analytics. 

Finally, the architecture is designed to seamlessly integrate existing systems, including CRM platforms and financial software. This ensures that suitability scores and analytics can be incorporated directly into current workflows while operating within a scalable computing environment that enhances functionality and data accessibility. 

Notable Investment Suitability Assistant use cases

Complex fund documentation analysis
The challengeThe solution
Wealth management firms struggle to process 300-page+ private equity fund documents, requiring investment advisors to spend weeks manually reviewing PPMs, LPAs, and side letters to extract critical information about fund structure, risks, and terms.The GenAI Investment Suitability Assistant automatically processes fund documentation, extracting key details about strategy, covenants, distribution waterfalls, and risk factors in minutes. This enables advisors to quickly assess fund characteristics and match them with client profiles.
Portfolio impact assessment
The challengeThe solution
Financial advisors must evaluate how new alternative investments affect existing portfolio diversification and liquidity profiles while ensuring compliance with client Investment Policy Statements.The system analyzes portfolio composition across sectors and geographies, evaluating correlation with existing assets and impact on overall liquidity. It provides clear metrics on how the new investment affects portfolio diversification and risk exposure.
Regulatory compliance documents
The challengeThe solution
Investment firms face increasing scrutiny under FINRA Rule 2111 and Reg BI, requiring detailed documentation of suitability determinations and struggling to maintain consistent standards across advisors.The assistant creates comprehensive audit trails by:Documenting analysis of client factors including risk tolerance, financial capacity, and investment objectivesGenerating detailed suitability scores with supporting rationaleMaintaining standardized assessment criteria across all recommendations

Get started with the GenAI Investment Suitability Assistant Starter Kit

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Case study: Knowledge assistant for leading investment bank and financial services company

The challenge 

Advisors at a leading financial advisory and wealth management firm faced significant challenges researching client needs and crafting personalized investment offerings. The reliance on manual processes and fragmented applications hindered their productivity, making it difficult to synthesize information quickly and effectively to serve clients. 

The solution 

To address these challenges, the firm implemented an AI-driven conversational digital assistant tailored to financial advisors. This AI-powered platform was designed to handle various queries, enabling advisors to conduct client-specific research and access a comprehensive knowledge base effortlessly. By utilizing NLP, the assistant facilitates intuitive interactions through a responsive AI chatbot, streamlining information retrieval and decision-making processes. This enhancement empowered fee-based financial advisors to efficiently tailor their offerings to meet client needs. 

AI-driven conversational digital assistant tailored to financial advisors
AI-driven conversational digital assistant tailored to financial advisors

Expanded enterprise-wide impact 

Following successful pilot implementations with financial advisors, the use of the AI knowledge framework was expanded across the organization. Now, functional teams leverage this platform to quickly synthesize insights from previously siloed data sources. This transition from a point solution to an enterprise-wide tool has unlocked significant efficiency gains throughout the business, allowing for better collaboration and improved service delivery. 

The GenAI investment suitability assistant transformed advisors’ interactions with client data, enhancing overall productivity and client satisfaction. By integrating advanced AI capabilities into its operations, the firm positioned itself as a leader in personalized financial services, driving better outcomes for clients and advisors. 

Evolution to enterprise knowledge solution 

Initially developed to boost productivity for financial advisors, our AI knowledge framework has transformed into a versatile tool that benefits various teams across the client’s organization, including marketing, compliance, HR, and customer support. This evolution marks a significant shift from a specialized solution to a comprehensive enterprise-wide resource. 

The architecture of an AI-powered Financial Advisory Platform. The architecture is presented in two parts: an on-premises system and a Knowledge AI platform. The upper section shows the technical infrastructure with components like FastAPI, LangChain, and vector databases that handle dialog management and data processing. The lower section depicts the platform's operational layer, featuring conversational and data management APIs that connect users and platform owners to AI capabilities including LLM/LVM, semantic vector search, and OCR functionality.
Knowledge AI platform

The current architecture operates on a closed cloud model but is designed with flexibility in mind. It allows the integration of different closed models or even open-source alternatives like Mistral-7B within a controlled environment. This adaptability ensures the framework can evolve alongside the organization’s needs, accommodating diverse applications and enhancing overall efficiency across departments. 

Final word

The transformative potential of AI-powered document processing solutions for the BFSI sector is profound. By automating routine tasks, enhancing compliance, and enabling data-driven decision-making, these solutions empower organizations to operate more efficiently and effectively. The ability to quickly analyze vast amounts of information and generate personalized insights improves operational productivity and elevates customer experience. As financial institutions increasingly face regulatory pressures and evolving market demands, integrating AI technologies becomes beneficial and essential for maintaining a competitive edge. 

Several key considerations emerge for executive leaders considering the adoption of AI-powered document processing solutions. First, it’s crucial to assess your organization’s specific needs and identify areas where document automation for financial services can deliver the most significant impact. Additionally, investing in robust training programs for staff will ensure that teams are equipped to leverage these technologies effectively. Finally, fostering a culture of innovation and adaptability within the organization will be vital in navigating the ongoing digital modernization journey. 

As you contemplate your organization’s future in this rapidly changing landscape, now is the time to explore how AI-powered document processing can drive efficiency and enhance service delivery. Contact us today to learn more about our solutions and discover how we can help you unlock new levels of productivity and customer satisfaction in your BFSI operations. Embrace the future with confidence and position your organization for success. 

References:

  1. Building the AI bank of the future by McKinsey & Company 
  2. Intelligent Document Processing Market Size | Growth Forecasts 2037
  3. Intelligent Document Processing Market Size | Growth Forecasts 2037 

Frequently asked questions about intelligent document processing in financial services

What is intelligent document processing in financial services?

Intelligent document processing combines AI technologies to revolutionize financial services organization, storage, and management of financial documents. It helps financial institutions reduce the productivity loss caused by document-related challenges while maintaining regulatory compliance.

How does AI-powered document processing improve efficiency?

It eliminates manual data entry through automated capture and indexing, provides powerful search capabilities, and enables instant access to documents from a centralized repository. This addresses the problem of employees spending an average of 2 hours per day searching for documents.

What types of documents can be processed using this technology?

The system can handle various financial documents including:

  • Invoices and receipts
  • Contracts and agreements
  • Tax documents
  • Bank statements
  • Insurance policies
  • Regulatory compliance documents

How does OCR technology work in document processing?

Optical character recognition (OCR) converts printed text into machine-readable format through:

  • Preprocessing to clean and align images
  • Text recognition to identify characters and symbols
  • Layout recognition to analyze document structure
  • Postprocessing to create editable digital files

What role does RPA play in document processing?

Robotic process automation (RPA) automates repetitive tasks like:

  • Data entry across multiple systems
  • Document routing and filing
  • Compliance checks
  • Transaction processing
  • Contract reviews

How does machine learning enhance document processing?

Machine learning enables:

  • Pattern recognition in large datasets
  • Predictive analytics for decision-making
  • Automated categorization of documents
  • Continuous improvement in accuracy
  • Risk assessment and management

What are the compliance benefits of AI-powered document processing?

The system helps maintain regulatory compliance by:

  • Providing audit trails
  • Ensuring secure document storage
  • Enabling quick access during audits
  • Maintaining proper documentation
  • Implementing access controls

How does cloud computing support document processing?

Cloud computing provides:

  • Scalable storage capacity
  • Enhanced security measures
  • Improved accessibility
  • Real-time collaboration capabilities
  • Disaster recovery options

What are the key steps in implementing automated document workflows? Implementation involves:

Implementation involves:

  • Planning the process
  • Configuring automation rules
  • Testing the workflow
  • Creating documentation
  • Training users

To accelerate these processes, Grid Dynamics develops ready-to-implement reference blueprints for Google Cloud, AWS, and Azure environments.

How does the system ensure data security?

Security measures include:

  • Document encryption
  • Access control management
  • Audit logging
  • Secure cloud storage
  • Compliance with financial regulations

What are the key considerations when developing a content strategy for a pharmaceutical company?

Key considerations include regulatory compliance, scientific accuracy, target audience needs (e.g., healthcare professionals, patients, regulators), multichannel distribution, content localization, and alignment with overall business objectives.

How can pharmaceutical companies ensure the security of sensitive information in their content management systems?

Pharma companies can implement robust access controls, encryption, data masking, and audit trails in their CMS. Regular security audits, compliance with data protection regulations, and employee training on data handling are also crucial.

How is AI helping in the creation and management of scientific content in the pharmaceutical industry?

AI can assist in literature reviews, summarizing research findings, generating initial drafts of scientific reports, and ensuring consistency across various scientific documents. It can also help in keeping content up-to-date with the latest research findings.

What are the challenges in integrating legacy systems with modern content management solutions in pharma?

Challenges include data migration, ensuring data integrity, maintaining regulatory compliance during transition, training staff on new systems, and ensuring interoperability between old and new systems without disrupting ongoing operations.

How can content management systems support clinical trial processes in the pharmaceutical industry?

CMS can help manage and organize vast amounts of clinical trial data, ensure consistent documentation across trial sites, facilitate regulatory submissions, and support patient recruitment and engagement through targeted content delivery.

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