Job Description
Key Responsibilities
1. AI Agents for Application Development
- Design and build AI agents that assist in application development lifecycle (SDLC)
- Develop agents for:
- Code generation & scaffolding
- API development & integration
- Code refactoring and optimization
- Enable developer copilots for faster feature delivery
2. AI Agents for Application Enhancements
- Build agents to:
- Analyze existing codebases and suggest enhancements or optimizations
- Automate bug detection and resolution
- Support impact analysis for changes
- Develop agents for legacy modernization and code migration (e.g., Java/.NET upgrades)
3. Testing & QA Automation Agents
- Create agents to:
- Automatically generate unit, integration, and regression test cases
- Perform test execution and defect prediction
- Enable self-healing test automation frameworks
4. LLM & Agent Framework Implementation
- Build solutions using frameworks such as:
- LangChain, LlamaIndex, Semantic Kernel, AutoGen, CrewAI
- Implement:
- Multi-agent orchestration (planner, executor, reviewer agents)
- Tool-using agents (Git, CI/CD, APIs, databases)
5. RAG & Context Engineering
- Implement RAG pipelines using application code repositories, documentation, and APIs
- Build context-aware agents using:
- Codebases (GitHub, Azure DevOps)
- Knowledge repositories (Confluence, SharePoint)
6. DevOps & Integration
- Integrate agents into:
- CI/CD pipelines (Azure DevOps, GitHub Actions)
- Developer tools (IDE plugins, Copilot extensions)
- Develop APIs/microservices to expose agent capabilities
7. Evaluation & Optimization
- Define metrics for:
- Developer productivity improvement
- Code quality and defect reduction
- Optimize for cost, latency, and accuracy of LLM usage
8. Governance & Security
- Ensure:
- Secure code handling and IP protection
- Compliance with enterprise AI governance
- Guardrails to prevent insecure or non-compliant code generation
Required Skills & Experience
Core Skills
- Strong programming skills in Python (mandatory) and at least one of Java/.NET/Node.js
- Hands-on experience with application development & SDLC processes
- Experience with REST APIs, microservices architecture
AI / GenAI Skills
- Experience building AI-powered developer tools or agents
- Strong knowledge of:
- LLMs (OpenAI, Azure OpenAI, open-source models)
- Prompt engineering & fine-tuning basics
- Experience in RAG-based solutions
Agent Frameworks
- Hands-on with:
- LangChain / Semantic Kernel / LlamaIndex
- Exposure to AutoGen / CrewAI / multi-agent patterns
DevOps & Tools
- Familiarity with:
- GitHub / Azure DevOps repositories
- CI/CD pipelines
- Docker / Kubernetes (preferred)
Good to Have
- Experience with GitHub Copilot or similar developer productivity tools
- Exposure to code analysis tools (SonarQube, SAST/DAST)
- Experience in legacy modernization projects
- BFSI domain experience (for enterprise use cases)
Experience
- 5–10 years total experience
- 2+ years in GenAI / AI-led development (preferred)
Key Responsibilities
1. AI Agents for Application Development
- Design and build AI agents that assist in application development lifecycle (SDLC)
- Develop agents for:
- Code generation & scaffolding
- API development & integration
- Code refactoring and optimization
- Enable developer copilots for faster feature delivery
2. AI Agents for Application Enhancements
- Build agents to:
- Analyze existing codebases and suggest enhancements or optimizations
- Automate bug detection and resolution
- Support impact analysis for changes
- Develop agents for legacy modernization and code migration (e.g., Java/.NET upgrades)
3. Testing & QA Automation Agents
- Create agents to:
- Automatically generate unit, integration, and regression test cases
- Perform test execution and defect prediction
- Enable self-healing test automation frameworks
4. LLM & Agent Framework Implementation
- Build solutions using frameworks such as:
- LangChain, LlamaIndex, Semantic Kernel, AutoGen, CrewAI
- Implement:
- Multi-agent orchestration (planner, executor, reviewer agents)
- Tool-using agents (Git, CI/CD, APIs, databases)
5. RAG & Context Engineering
- Implement RAG pipelines using application code repositories, documentation, and APIs
- Build context-aware agents using:
- Codebases (GitHub, Azure DevOps)
- Knowledge repositories (Confluence, SharePoint)
6. DevOps & Integration
- Integrate agents into:
- CI/CD pipelines (Azure DevOps, GitHub Actions)
- Developer tools (IDE plugins, Copilot extensions)
- Develop APIs/microservices to expose agent capabilities
7. Evaluation & Optimization
- Define metrics for:
- Developer productivity improvement
- Code quality and defect reduction
- Optimize for cost, latency, and accuracy of LLM usage
8. Governance & Security
- Ensure:
- Secure code handling and IP protection
- Compliance with enterprise AI governance
- Guardrails to prevent insecure or non-compliant code generation
Required Skills & Experience
Core Skills
- Strong programming skills in Python (mandatory) and at least one of Java/.NET/Node.js
- Hands-on experience with application development & SDLC processes
- Experience with REST APIs, microservices architecture
AI / GenAI Skills
- Experience building AI-powered developer tools or agents
- Strong knowledge of:
- LLMs (OpenAI, Azure OpenAI, open-source models)
- Prompt engineering & fine-tuning basics
- Experience in RAG-based solutions
Agent Frameworks
- Hands-on with:
- LangChain / Semantic Kernel / LlamaIndex
- Exposure to AutoGen / CrewAI / multi-agent patterns
DevOps & Tools
- Familiarity with:
- GitHub / Azure DevOps repositories
- CI/CD pipelines
- Docker / Kubernetes (preferred)
Good to Have
- Experience with GitHub Copilot or similar developer productivity tools
- Exposure to code analysis tools (SonarQube, SAST/DAST)
- Experience in legacy modernization projects
- BFSI domain experience (for enterprise use cases)
Experience
- 5–10 years total experience
- 2+ years in GenAI / AI-led development (preferred)
Key Responsibilities
1. AI Agents for Application Development
- Design and build AI agents that assist in application development lifecycle (SDLC)
- Develop agents for:
- Code generation & scaffolding
- API development & integration
- Code refactoring and optimization
- Enable developer copilots for faster feature delivery
2. AI Agents for Application Enhancements
- Build agents to:
- Analyze existing codebases and suggest enhancements or optimizations
- Automate bug detection and resolution
- Support impact analysis for changes
- Develop agents for legacy modernization and code migration (e.g., Java/.NET upgrades)
3. Testing & QA Automation Agents
- Create agents to:
- Automatically generate unit, integration, and regression test cases
- Perform test execution and defect prediction
- Enable self-healing test automation frameworks
4. LLM & Agent Framework Implementation
- Build solutions using frameworks such as:
- LangChain, LlamaIndex, Semantic Kernel, AutoGen, CrewAI
- Implement:
- Multi-agent orchestration (planner, executor, reviewer agents)
- Tool-using agents (Git, CI/CD, APIs, databases)
5. RAG & Context Engineering
- Implement RAG pipelines using application code repositories, documentation, and APIs
- Build context-aware agents using:
- Codebases (GitHub, Azure DevOps)
- Knowledge repositories (Confluence, SharePoint)
6. DevOps & Integration
- Integrate agents into:
- CI/CD pipelines (Azure DevOps, GitHub Actions)
- Developer tools (IDE plugins, Copilot extensions)
- Develop APIs/microservices to expose agent capabilities
7. Evaluation & Optimization
- Define metrics for:
- Developer productivity improvement
- Code quality and defect reduction
- Optimize for cost, latency, and accuracy of LLM usage
8. Governance & Security
- Ensure:
- Secure code handling and IP protection
- Compliance with enterprise AI governance
- Guardrails to prevent insecure or non-compliant code generation
Required Skills & Experience
Core Skills
- Strong programming skills in Python (mandatory) and at least one of Java/.NET/Node.js
- Hands-on experience with application development & SDLC processes
- Experience with REST APIs, microservices architecture
AI / GenAI Skills
- Experience building AI-powered developer tools or agents
- Strong knowledge of:
- LLMs (OpenAI, Azure OpenAI, open-source models)
- Prompt engineering & fine-tuning basics
- Experience in RAG-based solutions
Agent Frameworks
- Hands-on with:
- LangChain / Semantic Kernel / LlamaIndex
- Exposure to AutoGen / CrewAI / multi-agent patterns
DevOps & Tools
- Familiarity with:
- GitHub / Azure DevOps repositories
- CI/CD pipelines
- Docker / Kubernetes (preferred)
Good to Have
- Experience with GitHub Copilot or similar developer productivity tools
- Exposure to code analysis tools (SonarQube, SAST/DAST)
- Experience in legacy modernization projects
- BFSI domain experience (for enterprise use cases)
Experience
- 5–10 years total experience
- 2+ years in GenAI / AI-led development (preferred)
At Zensar, we’re “experience-led everything” We are committed to conceptualizing, designing, engineering, marketing, and managing digital solutions and experiences for over 130 leading enterprises. We are a company driven by a bold purpose: Together, we shape experiences for better futures Whether for our clients, our people, or the world around us, this belief powers everything we do. At the heart of our culture is ONE with Client - a set of four core values that reflect who we are and how we work: One Zensar, Nurturing, Empowering, and Client Focus
Part of the $4.8 billion RPG Group, we’re a community of 10,000+ innovators across 30+ global locations, including Milpitas, Seattle, Princeton, Cape Town, London, Zurich, Singapore, and Mexico City. Explore Life at Zensar and join us to Grow. Own. Achieve. Learn. to be the best version of yourself.
We believe the best work happens when individuality is celebrated, growth is encouraged, and well-being is prioritized. We are an equal employment opportunity (EEO) and affirmative action employer, committed to creating an inclusive workplace. All qualified applicants will be considered without regard to race, creed, color, ancestry, religion, sex, national origin, citizenship, age, sexual orientation, gender identity, disability, marital status, family medical leave status, or protected veteran status.