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