opengreenhousefelicis
Staff Applied AI Scientist
Culture AMP
LocationSydney, Melbourne
Last observed2026-07-02 08:33:03.078666
Job idfelicis-culture-amp:greenhouse:7994439
We’re big believers in the power of IRL, so for most roles we ask Campers to work from their local Culture Amp office an average of 2 days a week to unlock connection, pace and culture together. Join us on our mission to make a better world of work. Culture Amp is the world’s leading employee experience platform, revolutionizing how 25 million employees across more than 6,000 companies create a better world of work. Culture Amp empowers companies of all sizes and industries to transform employee engagement, drive performance management, and develop high-performing teams. Powered by people science and the most comprehensive employee dataset in the world, the most innovative companies including Canva, On, Asana, Dolby, McDonalds and Nasdaq depend on Culture Amp every day. Culture Amp is backed by leading venture capital funds and has offices in the US, UK, Germany and Australia. Culture Amp has been recognized as one of the world’s top private cloud companies by Forbes and most innovative companies by Fast Company. For more information visit cultureamp.com . How you can help make a better world of work Shipping an AI product is only the beginning. The harder challenge, one few teams have mastered is continuous production evaluation: diagnosing performance shifts in real-time, decoding 'why' they occur, and driving measurable quality improvements at scale. We are looking for a Staff level Applied AI Scientist with a strong AI Engineering background to solve this problem for our Coach AI system, establishing the observability and evaluation frameworks that turn early production releases into robust, high-performance production products and then to make this sustainable by enabling the rest of our engineering org to do the same. As part of this team of amazing humans, You will Own the end-to-end feedback loop: establish a rigorous cycle of prompt engineering, evaluation at scale, and continuous improvement. You will build LLM-powered analysis tools that diagnose performance shifts, provide deep-dive insights, and automate recommendations for prompt or system-level enhancements. Contribute to Context engineering: design and optimise what actually enters the model's context: retrieval, memory across sessions, context assembly and compression, and managing context budget in long or multi-turn agentic flows. Validate each change against eval rather than opinion or adhoc testing. Design and run evals: sampling, LLM-as-a-judge, and labelling systems over de-identified production traces (for example, with Langfuse) to build longitudinal evaluation monitoring and alerting. Eval-driven agentic orchestration: contribute to the agent architecture (planning, tool use, routing, decomposition, verification/critique steps) and let eval findings drive structural changes — e.g. when a failure mode surfaces, add a self-check step, change tool selection, or re-route. Model and provider selection: make and own model/routing decisions against quality, latency and cost trade-offs, including when to prompt vs fine-tune vs swap models. Create and Monitor guardrails and safety in production: given sensitive coaching and people data, design input/output guardrails, PII handling, content-safety and jailbreak resistance as part of the system. Enable others: through reusable frameworks, tooling and documentation so product and engineering teams run their own evaluations. Lead from the front, then hand over. Partner closely: with the AI Coach team, product, data science and people science so measured quality maps to real customer value. Stay current: with the latest evaluation, observability and LLMOps research and provider offerings. You have Experience building and turning production agentic systems, including context engineering, RAG, memory, cost, model selection and performance. Proven experience analysing the performance of AI or data products in production and turning it into changes that maintained and improved the product. Hands-on LLM evaluation in pr
This page is generated from the committed OpenOpps static snapshot. Use the source posting or apply link for the employer's current canonical posting state.