Our team builds platform capabilities that support the development and deployment of Autonomous Driving AI models. We work closely with Machine Learning Engineers to improve efficiency, quality, and reliability of the experiment lifecycle, from planning and execution to analysis and deployment readiness.
We are building an LLM-powered agent to help MLEs collect experiment context, analyze experiment progress and results, and surface useful insights across ongoing model development work.
We’re looking for an intern to help build the data foundation for this agent, with a focus on cleaning, organizing, and connecting various data sources, especially noisy chat and meeting data. The intern will help build data pipelines and LLM-assisted data cleaning workflows that allow the agent to correctly retrieve, interpret, and reason over experiment-related information. Depending on progress and interest, the intern may also help fine-tune LLM-based models using curated experiment data to improve agent performance on domain-specific tasks.