Program Manager Ii, Analytics & AI

Uber Uber · Consumer · Bangalore, India +1 · Engineering

Program Manager II for Uber's GSS Data Analytics team, focusing on leading analytics, automation, and AI initiatives. The role involves partnering with various teams to solve business challenges, develop scalable solutions, and drive measurable business impact. Responsibilities include defining problems, establishing metrics, driving execution, utilizing advanced analytics, translating findings, managing projects, designing KPI frameworks, identifying ML/GenAI opportunities, building intelligent data products (conversational assistants, recommendation systems, etc.), and leading teams/vendors.

What you'd actually do

  1. Lead end-to-end analytics, automation, and AI initiatives by partnering with Product, Operations, Engineering, and Data Science teams to define business problems, establish success metrics, and drive execution from ideation through implementation.
  2. Utilize advanced analytical and visualization techniques to develop scalable end-to-end solutions, uncover actionable insights from large and complex datasets, and influence product, operational, and strategic decisions across Uber.
  3. Translate complex analytical findings and technical solutions into clear, concise, and compelling recommendations for both technical and non-technical stakeholders, enabling data-driven decision making at all levels of the organization.
  4. Drive multiple concurrent analytics, data engineering, and AI projects while navigating ambiguity, prioritizing effectively, and maintaining a high bar for quality, accuracy, and operational excellence.
  5. Design KPI frameworks, measurement strategies, and performance tracking systems that help teams monitor business health, evaluate initiatives, and identify opportunities for growth and efficiency improvements.

Skills

Required

  • Advanced SQL
  • Python proficiency
  • Experience leading and mentoring teams
  • Strong analytical and problem-solving skills
  • Experience communicating insights and recommendations to both technical and non-technical audiences

Nice to have

  • Experience applying Machine Learning, Generative AI, or advanced analytics techniques
  • Hands-on experience integrating LLMs and AI services through APIs
  • Experience building or leading the development of AI-powered products
  • Strong understanding of ML development lifecycles, experimentation frameworks, model evaluation methodologies, and deployment considerations

What the JD emphasized

  • partnering with technical teams to deliver impactful AI-powered solutions
  • build intelligent data products and automation solutions, including conversational assistants, recommendation systems, self-service tools, and workflow automations by leveraging Python, LLM APIs, and modern AI technologies
  • Experience applying Machine Learning, Generative AI, or advanced analytics techniques to solve business problems and drive measurable outcomes.
  • Hands-on experience integrating LLMs and AI services through APIs to build intelligent applications, copilots, chatbots, or workflow automation solutions.
  • Experience building or leading the development of AI-powered products such as recommendation systems, forecasting solutions, decision-support systems, or self-service analytics platforms.

Other signals

  • partnering with technical teams to deliver impactful AI-powered solutions
  • build intelligent data products and automation solutions, including conversational assistants, recommendation systems, self-service tools, and workflow automations by leveraging Python, LLM APIs, and modern AI technologies