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About IDP

Intelligent document processing (IDP) is an advanced technology that leverages AI,
machine learning (ML), natural language processing (NLP), and optical character recognition (OCR) to automatically recognize, classify, extract, and process document data, capable of
intelligently automating and optimizing the handling of a large volume of documents.

*Intelligent document processing (IDP)

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IDP Process

IDP automates document processing and workflows by utilizing AI, ML,
and NLP to handle structured, semi-structured, and unstructured document data.

STEP01. Document Data
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    Structured Data
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    Semi-Structured Data
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    Unstructured Data
STEP02. Technology
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    AI
    Artificial intelligence
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    ML
    Machine learning
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    NLP
    Natural language
    processing
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    OCR
    Optical character
    recognition
STEP03. Document Automation
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    Data
    Classification

    IDP automatically categorizes various types of documents (contracts, invoices, emails, etc.) for identification and processing.

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    Data Extraction

    IDP converts documents into digital formats
    and extracts information from diverse data formats,
    including text, tables, and images.

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    Text Analysis

    IDP extracts essential information from documents,
    employing text mining technology to analyze content
    and identify crucial information, keywords, numbers,
    and dates for transfer to databases or other systems.

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    Data
    Verification

    IDP offers features to verify extracted information
    and correct errors, ensuring data accuracy.

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    Workflow
    Automation

    IDP automates workflow, assigns tasks automatically,
    and tracks task status for enhanced efficiency.

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    Security and Compliance

    IDP securely processes sensitive data and even helps
    with regulatory compliance.

Mainline’s IDP Technology

Mainline's IDP technology transcends basic document processing automation by integrating NLP,
compilation, and parsing technologies. It innovates various document tasks by interpreting complex information, extracting necessary data, and combining and managing documents.

Traditional Document Processing Automation Technology Comparison Points IDP Technology
Rule-based simple structured document processing Technology Concept AI-based technology for complex, structured, unstructured,
and semi-structured document processing
Basic technologies such as screen scraping
and workflow automation
Applied Technology Advanced technologies such as NLP, OCR,
deep learning, and parsing
Work rules based on if-then principles Automation Method Knowledge-based
Standardized and structured data such as
spreadsheets and databases
Area of Processing Non-standardized and unstructured data such as emails, invoices, receipts, and images
(constituting 80% of global business data)
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    Improved productivity
    Automating simple, repetitive document processing tasks to improve work efficiency.
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    Cost reduction
    Reducing costs compared to manual document processing.
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    Time savings
    Shortening document processing times through automation.
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    Data integrity
    Reducing human errors and maintaining document data integrity.
IDP Industry

IDP improves business productivity across various industries, including insurance, finance, manufacturing, public services, healthcare, and logistics, to innovate and streamline document processing and data management. It automates mundane manual tasks, reduces errors, and cuts costs.

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01 Insurance

Comprehensive process automation from
product development to sales, underwriting,
compensation, renewal, and cancellation

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    Product development
    Analyzing customer data to recommend suitable
    insurance products
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    Contract management
    Effective management of insurance contracts
    through automatic analysis
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    Claims processing
    Reducing time and errors in insurance claims