Guest:
Ellen Brandenburger – Product leader and coach; former head of product at Chegg Skills and Stack Overflow’s data licensing team.
What we cover in this episode:
- How Ellen joined Stack Overflow just two weeks before ChatGPT launched, reshaping the company’s future overnight
- The creation of Overflow AI: a team tasked with exploring “what’s just now possible” for developers
- Four iterations of conversational search:
- V1: a chat UI on top of keyword search
- V2: semantic search to handle natural questions
- V3: fallback to GPT-4 for gaps in Stack Overflow’s corpus
- V4: adding RAG for attribution and transparency
- Why attribution and transparency were critical for developer trust
- How the team used simple spreadsheets and subject-matter experts to evaluate answer accuracy, relevance, and completeness
- Why Stack decided to sunset conversational search despite heavy investment—what they learned and why it wasn’t wasted
- The pivot to data licensing: how Stack Overflow leveraged its 14M+ Q&A corpus to power LLM training and benchmarks
- Building industry benchmarks with subject-matter experts to prove Stack data improved LLM accuracy and relevance
Key lessons:
- Take one bite of the apple at a time—prototype, learn, iterate
- Product in the AI era means managing probabilities, not certainties
Links & References:
Fler avsnitt av Just Now Possible
Visa alla avsnitt av Just Now PossibleJust Now Possible med Teresa Torres finns tillgänglig på flera plattformar. Informationen på denna sida kommer från offentliga podd-flöden.
