Job Overview :
We are looking for an experienced AI Architect to lead solution design and development efforts in the areas of
Agentic AI
and
Retrieval-Augmented Generation (RAG) . The ideal candidate will have strong experience working with large language models (LLMs), building intelligent applications using frameworks like LangChain or LlamaIndex, and designing scalable AI pipelines.
Key Responsibilities :
Design and implement
RAG-based systems
combining LLMs with vector databases and internal document sources.
Build
task-based AI agents
(e.g., chatbots, assistants) that can perform multi-step operations and integrate with external tools or APIs.
Develop and maintain
prompt templates , embedding pipelines, and orchestrators using frameworks like
LangChain, LlamaIndex , etc.
Work with
data and ML teams
to connect AI applications with enterprise knowledge sources (SharePoint, Confluence, databases, etc.).
Evaluate and integrate
embedding models ,
vector databases
(FAISS, Pinecone, Chroma), and
LLM APIs
(OpenAI, Azure OpenAI, etc.).
Collaborate with cross-functional teams to identify use cases, define architecture, and deliver PoCs or MVPs.
Contribute to CoE documentation, reusable components, and architecture patterns for RAG and agent-based solutions.
Required Skills :
5 years of hands-on experience in
Python
with exposure to building AI / NLP applications.
Practical experience with
LLM tools like LangChain, LlamaIndex , or equivalent.
Experience building
RAG systems
using vector stores and document loaders.
Familiarity with
LLM APIs
such as OpenAI, Cohere, or HuggingFace models.
Understanding of
prompt design ,
embedding models
(e.g., OpenAI, BGE, SentenceTransformers).
Working knowledge of
REST APIs ,
JSON , and integrating AI agents with backend systems.
Agentic Ai Architect • India