#W2 only
Job title: Senior Full Stack GenAI Engineer
Location: Reston VA - In person interviews so need Local In EAST coast only
Description:
Senior Full Stack GenAI Engineer with 10 years of experience to design and build agentic AI
solutions that automate enterprise workloads and business processes.
The ideal candidate will have strong expertise in Python-based backend development LLM-
powered applications cloud-native deployment vector databases and modern DevOps practices.
This role involves building end-to-end AI systems that integrate with enterprise platforms
automate workflows and deliver production-grade AI applications.
Key Responsibilities
Design and develop agentic AI applications that automate enterprise workflows and decision-
making processes.
Build scalable backend services using Python FastAPI and Pydantic.
Develop and deploy LLM-powered applications using models such as GPT and Claude.
Build AI agents and orchestration workflows using LangChain or Strands.
Implement Retrieval Augmented Generation (RAG) solutions using vector databases (pgvector
Pinecone Weaviate).
Perform data analysis preparation and curation to build high-quality datasets for AI and
knowledge retrieval systems.
Design and implement document ingestion pipelines for enterprise knowledge sources such as
SharePoint Confluence and Jira.
Deploy AI workloads on AWS (Bedrock ECS Fargate S3) with proper security and scalability
practices.
Develop and integrate enterprise APIs using REST GraphQL WebSockets and web services.
Implement secure authentication and authorization using Ping Identity OAuth2 OIDC and
SSO.
Build user interfaces for AI applications using ReactJS or Streamlit.
DevOps & Deployment
Build and manage CI/CD pipelines using Jenkins or GitLab.
Implement GitOps practices for automated deployments.
Containerize applications using Docker and deploy to cloud platforms.
Implement security best practices vulnerability scanning dependency management and
container security.
Required Skills
Backend & APIs
Python
FastAPI
Pydantic
REST APIs GraphQL WebSockets
GenAI & Agent Frameworks
LLMs (GPT Claude)
LangChain or Strands
Retrieval Augmented Generation (RAG)
NLP (Natural Language Processing)
Data & AI Pipelines
Data analysis data preparation and data curation
Document ingestion and knowledge base creation
Embeddings and semantic search
Vector Databases
pgvector
Pinecone
Weaviate
Cloud & Platforms
AWS (Bedrock ECS Fargate S3 Guardrails)
Databases
PostgreSQL
DynamoDB
Security & Identity
Ping Identity
OAuth2 / OIDC
SSO Authentication & Authorization
DevOps
Jenkins
GitLab
GitOps practices
Docker containerization
Security vulnerability mitigation
Frontend
ReactJS
Streamlit
Enterprise Tools
Portkey (AI Gateway)
Apigee (API Gateway)
Jira Confluence SharePoint
#W2 only Job title: Senior Full Stack GenAI Engineer Location: Reston VA - In person interviews so need Local In EAST coast only Description: Senior Full Stack GenAI Engineer with 10 years of experience to design and build agentic AI solutions that automate enterprise workloads and busi...
#W2 only
Job title: Senior Full Stack GenAI Engineer
Location: Reston VA - In person interviews so need Local In EAST coast only
Description:
Senior Full Stack GenAI Engineer with 10 years of experience to design and build agentic AI
solutions that automate enterprise workloads and business processes.
The ideal candidate will have strong expertise in Python-based backend development LLM-
powered applications cloud-native deployment vector databases and modern DevOps practices.
This role involves building end-to-end AI systems that integrate with enterprise platforms
automate workflows and deliver production-grade AI applications.
Key Responsibilities
Design and develop agentic AI applications that automate enterprise workflows and decision-
making processes.
Build scalable backend services using Python FastAPI and Pydantic.
Develop and deploy LLM-powered applications using models such as GPT and Claude.
Build AI agents and orchestration workflows using LangChain or Strands.
Implement Retrieval Augmented Generation (RAG) solutions using vector databases (pgvector
Pinecone Weaviate).
Perform data analysis preparation and curation to build high-quality datasets for AI and
knowledge retrieval systems.
Design and implement document ingestion pipelines for enterprise knowledge sources such as
SharePoint Confluence and Jira.
Deploy AI workloads on AWS (Bedrock ECS Fargate S3) with proper security and scalability
practices.
Develop and integrate enterprise APIs using REST GraphQL WebSockets and web services.
Implement secure authentication and authorization using Ping Identity OAuth2 OIDC and
SSO.
Build user interfaces for AI applications using ReactJS or Streamlit.
DevOps & Deployment
Build and manage CI/CD pipelines using Jenkins or GitLab.
Implement GitOps practices for automated deployments.
Containerize applications using Docker and deploy to cloud platforms.
Implement security best practices vulnerability scanning dependency management and
container security.
Required Skills
Backend & APIs
Python
FastAPI
Pydantic
REST APIs GraphQL WebSockets
GenAI & Agent Frameworks
LLMs (GPT Claude)
LangChain or Strands
Retrieval Augmented Generation (RAG)
NLP (Natural Language Processing)
Data & AI Pipelines
Data analysis data preparation and data curation
Document ingestion and knowledge base creation
Embeddings and semantic search
Vector Databases
pgvector
Pinecone
Weaviate
Cloud & Platforms
AWS (Bedrock ECS Fargate S3 Guardrails)
Databases
PostgreSQL
DynamoDB
Security & Identity
Ping Identity
OAuth2 / OIDC
SSO Authentication & Authorization
DevOps
Jenkins
GitLab
GitOps practices
Docker containerization
Security vulnerability mitigation
Frontend
ReactJS
Streamlit
Enterprise Tools
Portkey (AI Gateway)
Apigee (API Gateway)
Jira Confluence SharePoint
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