Multi-Agent System Architecture
Architect and implement multi-agent workflows using LangChain, LangGraph, AutoGen, CrewAI, Google ADK, CAMEL, Swarm, and OpenAI Agents SDK to orchestrate task decomposition, memory, tool use, and agent coordination.
Model Context Protocol (MCP) Integration
Engineer workflows that use MCP for context-sharing and standardized communication among agents and with external systems (SQL, file systems, tools).
Agent Framework Development
Design abstracted agent frameworks supporting planning, reasoning, retries, orchestration, and observability.
Data Processing & Pipelines
Develop ETL pipelines for ingestion, transformation, storage, and embedding generation using Airflow, Prefect, Spark, Hadoop, and vector databases (FAISS, Pinecone, Weaviate).
LLM Fine‑Tuning & RAG Architecture
Fine‑tune GPT, LLaMA, Claude, Mistral models with efficient methods; build retrieval‑augmented systems using vector DBs and knowledge graphs.
Multimodal AI & API Integration
Integrate text, image, audio, OCR, and structured data (via CLIP, Whisper, TTS/STT); expose capabilities through REST/GraphQL APIs and microservices.
Production MLOps & Engineering
Follow core Python engineering practices—OOP, async, unit testing, packaging. Containerize with Docker and deploy on Kubernetes or serverless infra.
Ethics, Security & Performance Optimization
Integrate bias detection, explainability, privacy safeguards (prompt injection mitigation), and optimize performance and cost.
Education:
BSc or MSc in Computer Science, Engineering, Data Science, or equivalent.
Technical Skills:
Python: Advanced proficiency in OOP, async programming, packaging, testing.
LLM Frameworks: Hugging Face Transformers, PyTorch, TensorFlow.
Agent Frameworks: Experience with LangChain, LangGraph, AutoGen, CrewAI, ADK.
Protocols: Deep understanding of MCP, A2A, and agent interoperability.
Data Engineering: Airflow, Prefect, Spark/Hadoop, SQL/NoSQL, vector databases.
Cloud & Containerization: Experience with AWS, GCP, Azure, Docker, Kubernetes.
API & Microservices: FastAPI, Flask, GraphQL, event-driven systems.
RAG Systems: Expertise in FAISS, Pinecone, ChromaDB, Weaviate, and knowledge graphs.
Software Quality & Architecture: Strong foundations in system design, scalability, security, and CI/CD best practices.
Proven track record in full-stack AI agent deployment.
Deep familiarity with prompt engineering, decision chaining, and tool integrations.
Background in reinforcement learning, planning, or control-loop architectures.
Soft Skills:
Excellent communication and collaboration across multidisciplinary teams.
Analytical mindset with strong debugging and iterative development approach.
Agile-oriented: rapid experimentation, evaluation, and adaptation.