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GenAI Full Stack Developer- India (PL854)

  • Remote
    • Hyderabad , Telangāna, India

Job description

Location: India

Contract Duration: 3 Month Contract

Work Type: Remote

Job Description

Our client is seeking a GenAI Full Stack Developer to design, build, and scale enterprise AI applications powered by Large Language Models, Retrieval-Augmented Generation (RAG), and Azure-native cloud services.

This role is ideal for someone with strong backend engineering and system design capability who enjoys building production-grade AI systems across the full stack. You will work closely with product, UX, platform, and engineering teams to deliver secure, scalable, and reliable AI-powered applications with a strong focus on performance, maintainability, and responsible AI practices.

Job requirements

Full Stack Development

  • Build and maintain modern web applications using React, Next.js, Angular, or similar frameworks

  • Design and develop scalable backend APIs and AI orchestration services using advanced Python, FastAPI, Node.js, Java, or .NET

  • Develop cloud-native and serverless applications using Azure services such as Azure Functions, API Management, Logic Apps, and Azure Service Bus

  • Implement secure authentication and authorisation systems including OAuth2, OpenID Connect, JWT, and RBAC

  • Apply software engineering best practices including testing, CI/CD, documentation, code reviews, and modular architecture

GenAI & RAG Engineering

  • Design and implement AI-powered capabilities such as assistants, semantic search, summarisation, workflow automation, and intelligent retrieval systems

  • Build and optimise enterprise-grade RAG architectures including ingestion pipelines, chunking strategies, embeddings, vector search, hybrid retrieval, reranking, grounding, and hallucination mitigation

  • Integrate with LLM providers and orchestration frameworks including Azure OpenAI, OpenAI, Anthropic, Hugging Face, LangChain, Semantic Kernel, or LlamaIndex

  • Develop prompt engineering strategies, tool/function calling workflows, guardrails, moderation pipelines, and output validation systems

  • Implement observability and evaluation mechanisms for monitoring LLM quality, latency, and reliability

Data & Enterprise Integrations

  • Integrate AI applications with enterprise systems such as SharePoint, Salesforce, ServiceNow, and internal APIs

  • Develop data ingestion, enrichment, transformation, and retrieval pipelines

  • Work with relational, NoSQL, and vector databases including PostgreSQL, Redis, Azure AI Search, Pinecone, Elasticsearch, or similar technologies

  • Ensure strong governance, privacy, and security controls for enterprise and sensitive data

Performance, Security & Reliability

  • Optimise LLM performance, scalability, latency, and operational cost through caching, batching, streaming, and token optimisation

  • Design resilient distributed systems using retries, fallbacks, circuit breakers, and graceful degradation patterns

  • Implement logging, monitoring, tracing, and observability solutions using OpenTelemetry, Application Insights, Grafana, or similar tooling

  • Apply responsible AI principles including privacy controls, auditability, bias mitigation, and secure AI implementation practices

  • Participate in system design discussions and contribute to scalable cloud architecture decisions

Required Skills & Experience

  • 3 to 8+ years of full stack software engineering experience

  • Advanced Python programming and backend engineering capability

  • Deep hands-on experience building production-grade RAG systems and LLM-enabled applications

  • Strong experience with Azure-native architecture and serverless services

  • Strong understanding of REST APIs, microservices, distributed systems, and cloud-native design

  • Experience designing secure authentication and API security solutions using OAuth2, OpenID Connect, JWT, and RBAC

  • Strong system design and scalable architecture capability

  • Experience with CI/CD pipelines, testing frameworks, version control, and agile delivery methodologies

Preferred Qualifications

  • Experience with Azure OpenAI, Azure AI Search, Azure Functions, Azure API Management, Azure Key Vault, and Azure Service Bus

  • Familiarity with LangChain, Semantic Kernel, LlamaIndex, or similar AI orchestration frameworks

  • Experience with vector databases, embedding models, reranking, and grounding techniques

  • Experience with Docker, Kubernetes, Terraform, or Infrastructure as Code practices

  • Understanding of enterprise security, compliance, and governance frameworks

  • Experience designing event-driven and serverless AI systems on Azure

Tech Stack

  • Frontend: React, Next.js, TypeScript, Tailwind

  • Backend: Python (FastAPI), Node.js, .NET APIs

  • AI Stack: Azure OpenAI, LangChain, Semantic Kernel, RAG Pipelines

  • Data: PostgreSQL, Redis, Azure AI Search, Vector Databases

  • Cloud & DevOps: Azure Functions, Azure API Management, GitHub Actions, Docker, Kubernetes, OpenTelemetry

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