Job Title
Agentic / Generative AI Engineer (LLM Engineer / GenAI Engineer)
Location
Pune / Gurgaon (Gurugram)
About EXL
EXL has evolved from business process services into a global leader in
Data and AI
, partnering across industries such as insurance, healthcare, banking
& capital markets, retail, media & communications, and energy
& infrastructure.
Job Summary
We are looking for highly capable
Agentic / Generative AI Engineers
to design, build, and deploy
LLM-powered and agentic systems
for enterprise use cases—such as knowledge assistants, document
automation, summarisation, and intelligent workflow orchestration. You
will work closely with data engineers, data scientists, MLOps, and product
teams to deliver
secure, scalable, and measurable
GenAI solutions.
Mandatory:
Prior experience in
Data Engineering or Data Science
(strong foundations in data pipelines, ML lifecycle, or analytics
engineering).
Key Responsibilities
Design and build agentic LLM solutions
(single- and multi-agent patterns) to solve real business problems
across domains (e.g., customer support, document intelligence,
knowledge retrieval).
Build
RAG pipelines
end-to-end: data ingestion → chunking/embeddings → vector search →
retrieval orchestration → response synthesis, with measurable quality.
Implement
prompt engineering
and prompt orchestration (prompt chains, tool-calling, function
calling), including prompt iteration and cost/latency optimisation.
Develop production services/APIs for LLM applications (e.g.,
FastAPI/Flask/Streamlit
) and integrate with enterprise systems and data sources.
Apply
guardrails
to reduce hallucinations, enforce policy constraints, and ensure safe
tool usage; implement evaluation strategies for LLM and RAG outputs.
Collaborate with Data Engineering teams to ensure
data quality, governance, and documentation standards
, and with MLOps/Platform teams for CI/CD, monitoring, and reliable
deployments.
Create and maintain technical documentation, solution design
artefacts, and reusable components for faster delivery and consistent
engineering practices.
Must-Have Skills
9 to 12 years
total experience, with
hands-on LLM/GenAI delivery
experience (preferably 1–3+ years building production-grade LLM apps).
LLM / GenAI & Agentic Engineering
Hands-on experience with
LLMs
including
Claude
(Anthropic) and other leading models; strong understanding of
capabilities, limitations, and use-case fit.
Practical experience with
RAG
, embeddings, vector databases (e.g., FAISS/Pinecone/ChromaDB),
semantic search, and retrieval quality evaluation.
Experience with frameworks/tools such as
LangChain, LangGraph
, Hugging Face, or equivalent orchestration stacks.
Experience building
agentic workflows
including tool calling/function calling; familiarity with “agentic
architecture” concepts is valued.
Exposure to
Claude Code
or similar coding-agent workflows is a plus (agentic coding that can
work across codebases, run tests, and iterate).
Core Engineering
Strong
Python
engineering skills (production-grade coding, testing, packaging, API
development).
Solid understanding of
cloud platforms
(Azure/AWS/GCP) and deployment basics (containers, CI/CD, monitoring).
Strong communication skills—ability to translate business needs into
technical solutions and articulate trade-offs clearly.
Mandatory Background (Non-negotiable)
Prior experience in
Data Engineering or Data Science
:
Data pipelines / ETL / ELT / orchestration, or
ML/NLP modelling lifecycle, experimentation, evaluation, or
Analytics engineering and data product delivery.
Good-to-Have / Preferred
Fine-tuning approaches (e.g.,
LoRA/PEFT
), prompt tuning, few-shot strategies, and model evaluation methods.
Experience with enterprise-grade
privacy/security considerations
for GenAI solutions (data handling, redaction, access control).
Experience with Azure stack components often used in GenAI (e.g.,
Azure AI Search / Azure OpenAI) is beneficial.
Education
Bachelor’s or Master’s degree in Computer Science, Data Engineering, Data
Science, Information Systems, or related fields (or equivalent practical
experience).
Apply through whichever channel suits you best.