Role Summary
:
We are looking for a
Senior LLM Engineer
with deep expertise in
Large Language Model development, orchestration, and application engineering
. The ideal candidate has 3–5 years of hands-on experience building and deploying AI systems using
LangChain
,
LangGraph
, and related frameworks. You will be responsible for designing, implementing, and optimizing complex, multi-agent LLM applications that drive real business value.
Key Responsibilities
:
-
Design, build, and optimize
LLM-based systems
leveraging
LangChain, LangGraph, and vector databases
.
-
Develop and maintain
modular prompt pipelines, agents, and tools
that enable dynamic reasoning and contextual understanding.
-
Integrate
LLMs with APIs, databases, and internal tools
for seamless automation and data interaction.
-
Fine-tune, evaluate, and deploy
foundation models
(e.g., OpenAI, Anthropic, Mistral, Llama) for domain-specific applications.
-
Implement
retrieval-augmented generation (RAG)
and
knowledge graph reasoning
pipelines.
-
Collaborate with cross-functional teams — product managers, data engineers, and researchers — to bring LLM-driven products to life.
-
Contribute to
LLM system architecture design
, ensuring scalability, maintainability, and performance.
-
Stay current with emerging
AI frameworks, model APIs, and orchestration patterns
.
Key requirements
:
-
Master’s degree
or
Degree
in Computer Science, Artificial Intelligence, or a related field.
-
3–5 years of experience developing with
LangChain
and
LangGraph
in production environments.
-
Strong proficiency in
Python/Java Scripts
and
LLM APIs
(OpenAI, Anthropic, Hugging Face, etc.).
-
Experience with
RAG pipelines, embeddings, and vector databases
.
-
Solid understanding of
prompt engineering
,
LLM evaluation
, and
tool/agent design
.
-
Experience with
Docker
,
Git
, and modern cloud environments (e.g. Azure or AWS etc.).
-
Experience with
multi-agent systems
,
function calling
, and
graph-based orchestration
.
-
Familiarity with
LangSmith
or
LLMOps
tools for observability and performance tracking.
-
Knowledge of
data pipelines, ETL systems, or microservice architectures
.
-
Prior work in
AI product development
,
chatbot orchestration
, or
automation systems
.