Technical Product Manager (Data Search & AI squad)
Job Overview
Your day-to-day:
-
Own the product strategy and roadmap for Data Search & AI - what we build, why, and how it ladders up to the company's agentic search bet.
-
Lead the productisation of semantic search and agentic search over our data: deciding what queries we support, what "good" answers look like, and how AI capabilities are exposed to customers.
-
Shape the AI stack at a product level - embedding models, retrieval strategies, ranking, reranking, agent design - making the tradeoff calls between relevance, latency, cost, and quality.
-
Own evaluation: design the eval sets and metrics that determine whether the search is actually good, and use them to drive iteration.
-
Decide when models are good enough to ship and when they need more work - coverage vs precision tradeoffs, hallucination tolerance, when to fall back to deterministic approaches.
-
Drive customer discovery on how customers actually want to query our data - what they ask, what frustrates them today, what an AI-native interface should let them do that a traditional API or UI cannot.
-
Partner closely with the Data Product and Platform squads on what data is being indexed and what new datasets unlock new search capabilities.
-
Work with stakeholders outside Product - Sales, Customer Success, Engineering leadership - to keep the squad connected to commercial and operational reality.
To be successful you need to have:
-
At least 3 years of proven experience as a Product Manager or Technical Product Manager on a product where AI, ML, or search is core - not a side feature.
-
Working understanding of modern AI: embeddings and vector search, retrieval-augmented generation, evaluation methods, and the basics of how LLMs and agents work in production. You don't need to be an ML engineer - you do need to be able to reason about model choices, evaluate quality, and have credible conversations with the engineers building the system.
-
Strong product thinking: discovery, customer research, prioritisation, owning outcomes.
-
Comfort making product tradeoffs in AI: precision vs recall, latency vs quality, cost vs capability, when to use deterministic logic vs models.
-
Experience defining and using evaluation frameworks for AI or search products - knowing how to tell whether your system is actually getting better.
-
Experience working with cross-functional teams and stakeholders outside product.
-
Comfortable operating in ambiguity - both because this is a newly formed squad and because AI products move fast and the right answer next quarter is rarely the same as the right answer this quarter.
Salary:
- Gross salary: 4700-5700 EUR/month. Keep in mind that we are open to discuss a different salary based on your skills and competencies.
Make Your Resume Now