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SGundala/README.md

Hi there, I'm Siva πŸ‘‹

🧠 About Me

AI/ML engineer with strong technical and scientific curiosity, building AI Agents using RAG, MCP, n8n, and end-to-end automation frameworks.
I enjoy combining machine learning with scientific reasoning to solve real-world problems in Finanace, Automobile, biotech, automation, and AI systems.


πŸŽ“ Education

  • Master’s β€” University of Hyderabad

πŸ€– Autonomous Agents

  • Built autonomous AI agents to reduce ServiceNow ticket triage time by automatically classifying, routing, and suggesting resolutions for incoming incidents.

  • Developed an SDLC automation agent using LangGraph, where multiple agents (PM, Frontend, Backend, QA) collaborate through defined nodes and edges, enabling structured workflow orchestration.

  • Implemented shared contextual memory between agents to maintain task continuity and improve decision making across the development lifecycle.

πŸ€– Machine Learning & Deep Learning Experience

I have implemented and fine-tuned a variety of ML and DL models in real production use cases.

Machine Learning Models:
Linear Regression, Logistic Regression, SVM, Decision Trees (DT), Random Forests (RF), KNN, Naive Bayes (NB),
Gradient Boosted Decision Trees (GBDT), XGBoost

Deep Learning Models:
Deep Neural Networks (DNN), Convolutional Neural Networks (CNN),
Recurrent Neural Networks (RNN), Long Short-Term Memory (LSTM)


πŸ›  Technical Skills

AI & Agentic Systems

  • Retrieval-Augmented Generation (RAG)
  • Model Context Protocol (MCP)
  • n8n automation
  • Local LLMs and OpenAI models
  • Vector Databases (ChromaDB, Pinecone)
  • LangChain and LangGraph

Machine Learning & Data

  • Python, pandas, NumPy
  • scikit-learn, XGBoost
  • TensorFlow / PyTorch (learning)
  • Data cleaning, modeling, and evaluation

Developer Tools

  • Git & GitHub
  • Docker, WSL
  • Jupyter Notebook, Google Colab

πŸš€ Current Projects

  • Building AI Agents using RAG + MCP for scientific and operational automation
  • Stability testing & cold-chain automation concepts
  • ReagentXchange (surplus reagent marketplace – idea stage)
  • ML experiments with time-series and options trading data

πŸ“‚ Featured Repositories

  • RAG-ICH-Q6B
  • QC-Stability-Design-Helper
  • ReagentXchange-MVP
  • Simple-Options-Signals

πŸ“« Contact


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