Live Connections
Website:
liveconnections.in
Job details:
Immediate requirement for - AI Engineer.
Position: AI Engineer
Client Location: Pune
Experience: 5 to 10 Years
Compensation: Up to ₹28LPA
Notice Period: Immediate to 30 Days
Mandatory Skills
- Multi-Agent Systems (MAS)
Job Title: AI Engineer - Agentic & GenAI Systems
Role Summary
Design, build, and operate production-grade agentic and GenAI systems from end to end. You will ship robust APIs, reusable components, and secure pipelines that connect Large Language Models (LLMs) with enterprise systems. This role requires pairing strong software engineering with modern AI practices—such as RAG, agent orchestration, and evaluation—to deliver scalable business outcomes.
Responsibilities
Agent & Application Engineering
- Multi-Agent Systems (MAS): Design systems involving planning, tool-use, and delegation using frameworks like LangGraph or Semantic Kernel.
- Model Context Protocol (MCP): Integrate tools, SQL, search, and document stores using MCP with strict type contracts and safe sandboxes. Focus is on the consumption of MCP servers rather than building them from scratch.
- Model Gateway Integration: Integrate with model gateways (OpenAI, Azure OpenAI, Bedrock, or Vertex AI). Knowledge of at least one of these platforms is sufficient.
- Pro-Code Development: Build solutions using high-level coding (Python-focused); low-code/no-code experience alone is not sufficient.
Retrieval, Data & Knowledge
- RAG Services: Stand up Retrieval-Augmented Generation services, including chunking, enrichment, embeddings, and indexing using hybrid/vector search (e.g., pgvector, Pinecone, Weaviate, OpenSearch).
- Ingestion Pipelines: Implement ingestion pipelines for diverse data sources like documentation, tickets, and CRM data using Airflow, Prefect, or Ray.
- Optimization: Continuously optimize retrieval quality through chunking strategies, re-rankers, and query rewriting based on evaluation metrics.
Quality, Testing & Evaluation
- Evaluation Frameworks: Utilize Promptfoo and RAGAs for evaluating LLM outputs.
- Testing Mindset: Treat prompts and graphs as code—version, diff, and test them using golden sets and regression suites.
- Metrics Awareness: Maintain a strong awareness of AI evaluation metrics and how to verify RAG applications.
Security & Compliance
- Red Teaming: Maintain familiarity with red teaming guardrails for AI systems.
- Guardrails: Implement policy chains and guardrails using tools like OPA/Gatekeeper or Presidio for PII redaction.
Tech Stack & Qualifications
- Primary Language: Python is mandatory. Knowledge of Java, Go, or Node.js is considered optional.
- Frameworks: LangGraph or Semantic Kernel. FastAPI is a good to have.
- Cloud Platforms: Experience in any one major platform (Azure, AWS, or GCP).
- Operations (Optional): Packaging services as containers and deploying to Kubernetes with Helm/Argo CD is a bonus but not mandatory. Platform-level concerns like tenant isolation are handled by a separate team
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