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The Future of Information Retrieval: From Dense Vectors to Cognitive Search

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Feb 17, 2026
Rahul Raja, Staff Software Engineer at LinkedIn who builds large-scale search and retrieval systems, discusses the shift from keyword search to dense, vector-based retrieval. He explores cognitive search, LLM-driven reasoning and personalization, scalability of billions of embeddings, evaluation signals beyond recall, and challenges like embedding drift, access control, and cost-effective infrastructure.
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INSIGHT

Search Is Moving From Matching To Reasoning

  • Search evolved from keyword matching to dense embeddings and now toward cognitive search that reasons about user goals.
  • Cognitive search focuses on intent, multi-step actions, and personalized reasoning rather than just returning matching documents.
INSIGHT

Relevance Must Include User Happiness

  • Cognitive search adds user-happiness and next-action signals to relevance metrics, not just recall and accuracy.
  • Measure follow-up queries and user actions to assess whether search satisfied the user's goal.
ADVICE

Evaluate Multi-Turn Failures Proactively

  • Combine manual review with automated signals (e.g., number of follow-ups, repeating questions) to catch multi-turn search failures.
  • Build product-specific evals and consider an LLM judge for multi-turn behavior detection.
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