AI Software Development Lead (AI-Assisted Development, GenAI, Agentic AI)
Experience: 10+ years
Location: [Pune/Hyderabad]
Seniority Level: Lead / Principal IC
About the Role
Were seeking an AI Software Development Lead to spearhead AI-assisted software development adoption across BFSI projects and lead solutioning for client proposals and pre-sales engagements.
Will champion vibe codingthe emerging practice of using LLMs and coding agents (e.g., GitHub Copilot, Cursor, Claude Code, etc.) to generate working code from natural-language instructions, iterating rapidly while enforcing quality and compliance. Your leadership will modernize engineering workflows and scale AI-first development practices across diverse BFSI portfolios.
Will architect and deliver enterprise-grade AI applications leveraging Generative AI (GenAI), Agentic AI, LLMs, RAG, and Agentic RAGwith a strong focus on security, governance, observability, and cost efficiency.
This role operationalizes AI-first delivery, increases developer productivity, strengthens proposal win rates through compelling AI solutioning, and ensures secure, compliant implementations aligned with BFSI standards.
Key Responsibilities
1. AI-Assisted Development Leadership
a. Drive organization-wide adoption of coding agents and vibe coding practices; define guardrails, standards, and governance for BFSI environments.
b. Build playbooks for prompt engineering, code generation, refactoring, test generation, documentation, and secure patterns using Copilot/Cursor/Claude Code, etc.
c. Deliver enablement programs: workshops, hands-on labs, brown-bags; establish usage analytics and productivity KPIs.
2. Solutioning, Pre-Sales & Proposal Support
a. Partner with sales, pre-sales, service lines, and delivery to:
3. Architecture & Delivery (LLMs, RAG, Agents)
a. Architect and deliver agentic systemstool orchestration, planning/critique loops, memory, multi-agent collaboration for complex BFSI workflows.
b. Own end-to-end solutioning: data acquisition/transform; embeddings/retrieval; prompt pipelines; function calling/tool schemas; APIs/SDKs; UI integration.
4. RAG & Agentic RAG Best Practices
a. Design advanced RAG pipelines: chunking, hybrid retrieval (vector + keyword), rerankers, query rewriting, context compression, caching, grounding, and citations.
b. Build Agentic RAG flows combining retrieval + tool use + planning loops to maximize accuracy, policy adherence, and cost performance.
5. Quality, Evals & Observability
a. Define LLM/agent evaluation: groundedness, factuality, precision/recall, hallucination rate, agent success rate, latency, cost/query.
b. Implement observability: tracing, token/cost accounting, prompt/version lineage, user feedback loops, and red-team logs.
6. Collaboration & Leadership
a. Mentor engineers; lead design reviews and AI SDLC standards; influence architecture councils.
b. Drive build-vs-buy decisions, vendor evaluations, and cost/latency optimization strategies.
Required Qualifications
Education & Certifications

Keyskills: Generative Ai Architecture Python vibe coding Github Claude Copilot Cursor Agentic Ai Large Language Model Github Copilot RAG Solutioning Retrieval Augmented Generation
Zensar Technologies Limited Zensar Technologies is among the top 25 software and BPO services providers in India. It is an RPG Group company. Headquartered in India, Zensar Technologies has marketing presence in US, Europe and Asia Pacific regions. The company has operations and a customer bas...