Mgr, Engineering - Data Science

Clari Clari · Enterprise · Bangalore, India · Applications

Engineering Manager for Data Science focused on applied GenAI, specifically in areas like context engineering, agent frameworks, multi-agent orchestration, and evaluation strategies. The role involves leading a team, setting technical direction, and ensuring the delivery of AI systems that integrate into enterprise revenue platforms. Requires hands-on prototyping and experience shipping production LLM/GenAI systems.

What you'd actually do

  1. Own the DS roadmap: Partner with Product and Engineering to translate ambiguous org’s bets into scoped DS problems with measurable hypotheses
  2. Drive cross-functional alignment: Work in lockstep with AI Platform, Product, and GTM to ensure DS work lands in production with real user impact
  3. Balance research with shipping: Decide when to explore, when to converge, and when to kill a bet — and make those trade-offs legible to leadership
  4. Set the technical direction for context engineering, agent frameworks, MCP tool registries, and multi-agent orchestration patterns
  5. Own the eval strategy: Define what "good" means for each DS system — offline benchmarks, online metrics, regression gates, and human feedback loops

Skills

Required

  • 8+ years of total experience in Data Science / ML
  • 7+ years of hands-on experience on DS/ ML and 1+ years of people management experience
  • Minimum of 2 years of experience in shipping production LLM / GenAI systems (Graph RAG, agents, fine-tuning, evals, Guardrails etc)
  • Track record of DS thought leadership: framing ambiguous AI problems into measurable bets, killing what doesn't work, doubling down on what does
  • Deep fluency in: AI eval design, context engineering, retrieval, agent frameworks, MCP, AI guardrails, prompt optimization, feedback-loop instrumentation
  • Strong Python prototyping — can independently build a working agent, retrieval pipeline, or eval harness in days
  • AI-native practitioner: treats AI as core infrastructure, not a

What the JD emphasized

  • shipping production LLM / GenAI systems
  • AI eval design
  • context engineering
  • retrieval
  • agent frameworks
  • MCP
  • AI guardrails
  • prompt optimization
  • feedback-loop instrumentation
  • build a working agent, retrieval pipeline, or eval harness

Other signals

  • multi-agent orchestration
  • agent frameworks
  • eval frameworks
  • AI guardrails
  • feedback loops
  • context engineering
  • LLM systems