Applied Scientist Ii, Ads AI Core Infrastructure

Amazon Amazon · Big Tech · IN, KA, Bengaluru · Software Development

Research and develop novel approaches for agent-data interaction using generative AI and agentic systems, focusing on agent orchestration, context optimization, and code generation for real-time advertiser data at scale. This role involves applied research (60%) and productionization (40%), aiming to improve latency, token consumption, and accuracy.

What you'd actually do

  1. Research and develop novel algorithms for agent-data interaction patterns that minimize latency, token consumption, and error rates
  2. Invent new methods for compressing advertiser context representations while preserving semantic meaning and analytical utility
  3. Pioneer new RAG-based embedding approaches optimized for real-time advertiser data delivery with sub-second latency
  4. Design and execute rigorous experiments comparing traditional API orchestration versus CodeAct patterns and RAG-based approaches across metrics like success rate, latency, token consumption, and response quality
  5. Collaborate with engineering teams to productionize research innovations and deploy them to advertising agents and skills

Skills

Required

  • Generative AI
  • Agentic Systems
  • LLMs
  • RAG
  • Embeddings
  • Real-time data processing
  • Algorithm development
  • Context optimization
  • Code generation
  • Latency optimization
  • Token consumption optimization
  • Data summarization
  • Semantic search
  • Experimentation design
  • Productionization

Nice to have

  • Multi-agent orchestration
  • CodeAct pattern
  • Vector databases
  • Hybrid embeddings (dense/sparse)
  • Metadata generation
  • Schema mapping

What the JD emphasized

  • invent new techniques for agent orchestration
  • invent new methods for compressing advertiser context representations
  • Pioneer new RAG-based embedding approaches
  • research and develop novel approaches for agent-data interaction

Other signals

  • Generative AI
  • Agentic Systems
  • LLMs
  • RAG
  • Embeddings
  • Real-time data