2026 Talks
LLM Observability and Evaluations
- Lightning Talks
The advent of LangChain and LlamaIndex has empowered rapid development of LLM-powered applications, yet introduced complexities in debugging due to their high-level abstractions. LLM Traces and Observability offer a solution by enabling insights into system operations without needing to understand internal mechanics, crucial for tackling unexpected issues. This requires applications to be well-instrumented, emitting necessary traces and logs for effective troubleshooting. LLM evaluation and tracing modules like Arize Phoenix exemplifies a key tool in ensuring observability, thereby facilitating smoother development and maintenance processes in LLM application development.
ML Engineer & Community Leader
Amber Roberts
Arize AI
Amber Roberts is a ML Growth Lead at Arize AI, a ML observability company built for maintaining models in production. Previously, Amber was a product manager of AI at Splunk and the Head of Artificial Intelligence at Insight Data Science. A Carnegie Fellow, Amber has an MS in Astrophysics from the Universidad de Chile.
The AI Conference for Humans Who Ship
While other conferences theorize, AI Council features the engineers shipping tomorrow's breakthroughs today.