Gen AI / Agentic AI Developer
Capgemini · Brooklyn, NY · 3 wk ago
Engineering$80k–$106k/yrFull-time
About the role
We are looking for a hands-on GenAI / Agentic AI Developer to build LLM-powered applications, RAG solutions, and agentic AI workflows for enterprise use cases.
Key Responsibilities
- Build GenAI applications using LLMs, RAG, agents, and tool-calling workflows.
- Develop agentic solutions using LangChain, LangGraph, AutoGen, CrewAI, Semantic Kernel, or LlamaIndex.
- Design and implement multi-agent workflows such as planner, retriever, executor, validator, and human-in-the-loop agents.
- Build backend APIs using Python, FastAPI, Flask, REST APIs, and microservices.
- Integrate AI agents with enterprise systems, databases, APIs, document repositories, and cloud services.
- Implement document ingestion, embeddings, vector search, reranking, and retrieval pipelines.
- Deploy and monitor GenAI applications using Docker, Kubernetes, CI/CD, and cloud platforms.
- Support LLMOps including prompt/version management, model evaluation, monitoring, logging, and cost tracking
Required Skills
- Strong hands-on experience in Python development.
- Experience with OpenAI, Azure OpenAI, AWS Bedrock, Anthropic Claude, Gemini, Llama, or Mistral.
- Hands-on experience with at least one agentic framework: LangGraph, LangChain, AutoGen, CrewAI, Semantic Kernel, or LlamaIndex.
- Good understanding of RAG, embeddings, vector databases, semantic search, and prompt engineering.
- Experience with vector stores such as OpenSearch, Pinecone, FAISS, Chroma, Weaviate, Milvus, Azure AI Search, or pgvector.
- Knowledge of REST APIs, cloud deployment, Docker, CI/CD, and software engineering best practices.
- Ability to work with structured and unstructured data including PDFs, documents, APIs, databases, and knowledge bases.
Preferred Skills
- Experience with multi-agent orchestration, tool calling, memory, planning, reflection, and evaluation.
- Exposure to MCP, Graph RAG, Neo4j, knowledge graphs, or entity extraction.
- Knowledge of LLMOps tools such as LangSmith, MLflow, Phoenix, Ragas, TruLens, Arize, or OpenTelemetry.
- Experience with AWS Bedrock/SageMaker, Azure OpenAI/AI Search, or GCP Vertex AI.
- Understanding of AI guardrails, prompt injection prevention, PII masking, access control, and responsible AI.
Must-Have
- Candidate should be able to clearly explain at least one end-to-end GenAI / Agentic AI project, including problem statement, architecture, tools used, deployment approach, evaluation method, and business impact
Benefits
- Flexible work
- Healthcare including dental, vision, mental health, and well-being programs
- Financial well-being programs such as 401(k) and Employee Share Ownership Plan
- Paid time off and paid holidays
- Paid parental leave
- Family building benefits like adoption assistance, surrogacy, and cryopreservation
- Social well-being benefits like subsidized back-up child/elder care and tutoring
- Mentoring, coaching and learning programs
- Employee Resource Groups
- Disaster Relief
Salary Transparency
The base compensation range for this role in the posted location is: $80420 to $106050