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About the Client
The client is a global leader in the oil and gas industry, headquartered in California, and operates across upstream, midstream, and downstream value chains in more than 180 countries. With approximately 45,000 employees worldwide and a broad customer base, the company manages extensive volumes of financial records, audit documents, contracts, and material data daily. Its scale and complexity demand stringent regulatory compliance, financial transparency, and operational efficiency.
Business Challenges
The client faced significant challenges within its finance and audit functions. Managing large volumes of structured and unstructured data had become increasingly complex and resource-intensive, and continued reliance on manual audit checks made processes slow, inconsistent, and vulnerable to errors. Material mapping automation offered a solution to these challenges by streamlining data extraction and management from diverse sources, even when information is inconsistent or unstructured. Addressing these challenges is crucial for improving operational efficiency and data accuracy.
Modern organizations frequently encounter substantial challenges when extracting and managing data from various sources, particularly when the information is inconsistent or unstructured. Addressing these challenges is crucial for improving operational efficiency and data accuracy.
Solution
To address the complexities of material mapping across diverse document sources, an intelligent and automated solution is essential. AI-powered material mapping streamlines the process, enhances accuracy, and supports auditors in their review tasks.
The solution automatically detects the type and template of uploaded documents, ensuring precise identification and mapping of materials from multiple sources.
It generates comprehensive mapping reports, tagging materials, and maintains consistency across both vendor and internal records.
Serving as an assistant to auditors, the solution simplifies the material mapping process. While auditors will continue to manage report approval and publishing milestones, there is potential for further automation in future iterations.
Material Reconciliation Technical Architecture

Figure 1: Material Reconciliation Technical Architecture
Tech Stack
| Programming Languages | Python for machine learning models, Azure SDK, scripting, and SQL for database queries and data management. |
| Azure Cloud Platform | Azure Cloud Platform, Azure Blob Storage, Azure Functions, Azure Machine Learning, Azure OpenAI services, Azure SQL Database, Azure AI Search, Azure Key Vault, API Management, and GitHub. |
| IDEs | Visual Studio Code for Python and Azure function development and Azure Machine Learning Studio for building and managing ML models. |
| Other Components | Azure SDKs for Python, Scikit Learn, Azure Cognitive Services API, Azure Logic Apps, or Data Factory. |
Business Benefits
Integrating automation and AI-driven solutions into audit processes delivers substantial improvements in efficiency, accuracy, and strategic value. Material mapping automation streamlines manual tasks and accelerates audit cycles, enabling organizations to optimize resource utilization and enhance the quality of their audit outcomes.

Increased audit frequency, with each audit previously requiring significant manual effort.

Automation enabled each auditor to save approximately six weeks per audit.

Achieved total annual savings of around 18 person-weeks, previously spent on manual reconciliation and validation.

Automated material reconciliation drastically reduces manual intervention.

Material reconciliation that previously took days or weeks was reduced to hours, enabling faster identification and resolution of issues.

Freed up auditor capacity to focus on deeper analysis and strategic insights.

Improved accuracy and consistency in data validation and reporting.
Conclusion
The Audit AI – Material Recon solution delivers a transformative approach to material mapping and reconciliation by harnessing the power of AI and automation. By accurately extracting, mapping, and tagging materials from diverse document sources, the solution streamlines audit workflows, enhances data consistency, and reduces manual effort. This intelligent system not only supports auditors in their review and approval processes but also lays the foundation for further automation and operational efficiency in the future.
Testimonial
Our team’s innovative approach by leveraging GenAI and automation, transformed the client’s audit and finance operations, enabling full document coverage and smarter risk analysis. Audit AI – Material Recon automates material mapping and reconciliation, transforming complex, inconsistent data into reliable insights and saving auditors weeks of manual effort. This project not only streamlined processes and improved data accuracy but also empowered audit teams to focus on strategic priorities. This achievement reflects our commitment to delivering practical, future-ready solutions that drive measurable value for supermajor oil & gas companies.”– Assistant Vice President, Energy & Utilities, LTIMindtree
Ready to modernize your material reconciliation and audit processes? Connect with our
team at eugene.comms@ltimindtree.com to learn how
Audit AI – Material Recon can help your organization achieve greater accuracy, efficiency, and compliance.






