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  • Deloitte Digital
  • Bangalore

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abhisheksett/README.md

Hi, I'm Abhishek 👋

Specialist Master @ Deloitte · Solutions Architect · AI Engineer

I design and build AI systems for enterprise clients - from production agent architectures to reference platforms for regulated industries. 14 years of experience across full-stack engineering, cloud architecture, and AI/ML.

Currently focused on the agentic AI stack: autonomous agents, RAG systems, multi-agent orchestration, and production deployment patterns for ER&I and Healthcare clients.


What I'm Building

Project What Stack
consulting-agent Autonomous consulting intelligence agent with subagents, skills, MCP, memory, A2A, LangGraph, and CrewAI Claude Agent SDK · FastMCP · Tavily · LangGraph · CrewAI
rag-explorer Side-by-side comparison of Naive, Hybrid, and Agentic RAG on cloud architecture docs ChromaDB · BM25 · Cross-encoder · Claude SDK
eri-doc-intelligence Reference architecture for AI-powered document intelligence in Energy & Resources Architecture · AWS Bedrock · RAG · Governance

Current Focus

  • Agentic AI systems - Agent SDK, LangGraph, CrewAI, A2A protocol, MCP
  • Production RAG - Hybrid retrieval, agentic RAG, context engineering
  • Enterprise AI architecture - System design, deployment, governance, cost modelling for ER&I and Healthcare
  • AI strategy - Build vs buy, vendor analysis, ROI frameworks for Deloitte clients

Tech Stack

AI/ML Claude Agent SDK · LangGraph · CrewAI · LangChain · RAG · ChromaDB · pgvector · Tavily · MCP · A2A

Cloud & Infrastructure AWS (Lambda · API Gateway · S3 · CloudFront · Bedrock · EKS) · Docker · Kubernetes · CI/CD · Serverless

Languages & Frameworks Python · TypeScript · JavaScript · Node.js · React · Next.js · FastAPI

Databases PostgreSQL · DynamoDB · MongoDB · Redis · MySQL


Industry Domains

🔋 Energy, Resources & Industrials (ER&I)
🏥 Healthcare
🏦 Banking & Finance · E-Commerce · Pharma


Background

  • Specialist Master, Deloitte (2016 – present) - AI architect leading GenAI adoption, RAG accelerators, agentic workflows, and developer productivity programmes
  • Solutions Engineer, Pegasystems (2014 – 2016)
  • Senior Systems Engineer, Infosys (2011 – 2014)
  • B.Tech, Institute of Technology and Marine Engineering (2011)

Certifications: GenAI Framework & Tools (Deloitte 2025) · ER&I Industry Proficiency (Deloitte 2025) · Scrum Foundation Professional


Writing & Notes

I document everything I learn - concept notes, architecture decisions, client-ready explanations. Working on a personal site to publish these publicly.


Based in Bangalore · Open to architecture conversations and AI collaborations

Pinned Loading

  1. consulting-agent-with-sdk consulting-agent-with-sdk Public

    Autonomous consulting agent - Claude Agent SDK, subagents, MCP, memory, A2A, LangGraph, CrewAI

    Python

  2. agent-with-eval agent-with-eval Public

    TypeScript

  3. rag-explorer rag-explorer Public

    Naive vs Hybrid vs Agentic RAG on cloud architecture docs - side-by-side comparison

    Python

  4. claude_mcp claude_mcp Public

    Python

  5. industry-doc-intelligence industry-doc-intelligence Public

    Enterprise AI reference architecture for ER&I intelligent document processing

  6. consulting-agent consulting-agent Public

    Claude Code version - subagents, custom Skills, MCP server, eval loop

    Python