About the job
Meta is seeking Research Engineers to join the Post-Training team within Meta Superintelligence Labs. High-quality data is the engine of AI progress at MSL, determining the capabilities we can unlock and how fast our models improve. As a Research Engineer on this team, you will build the pipelines to collect, generate, and refine the post-training data for our most advanced AI models. You'll work alongside world-class researchers and engineers to develop scalable systems for both human-in-the-loop data collection and automated synthetic data generation.
Responsibilities
Design, build, and scale full-stack data collection pipelines for post-training (SFT, RLHF) across text, vision, and action modalities
Develop and implement environments to capture complex agentic trajectories, including computer use agents, Deep research workflows, UI generation, and shopping agents
Collaborate with external data vendors and domain experts to source, securely ingest, and prepare high-quality datasets in fields like STEM, finance, legal, and health
Execute on the technical vision of research scientists to generate and filter high-quality synthetic data at scale
Build robust, reusable data processing pipelines that scale across multiple model lines and product areas
Contribute to tooling that measures and ensures the Quality, Diversity, and Safety of post-training datasets
Qualifications
Minimum
Bachelor's degree in Computer Science, Computer Engineering, relevant technical field, or equivalent practical experience
Bachelor's or Master's degree in Computer Science, Machine Learning, or a related technical field
5+ years of experience in machine learning engineering, machine learning research, or a related technical role
Proficiency in Python and experience with ML frameworks such as PyTorch
Experience identifying, designing, and completing medium to large technical features independently, without guidance
Demonstrated experiences in software engineering practices including version control, testing, and code review practices
Ability to work independently and adapt to rapidly changing priorities
Preferred
Publications at peer-reviewed venues (NeurIPS, ICML, ICLR, ACL, EMNLP, or similar) related to deep learning, language models, or data-centric AI
Hands-on experience with language model post-training systems, synthetic data generation, or building RLHF pipelines
Experience implementing or developing environments for agentic workflows (e.g., tool use, web browsing environments, coding sandboxes)
Experience working with large-scale distributed systems and high-throughput data pipelines
Familiarity with data quality filtering, deduplication, and contamination checking for LLMs
Track record of open-source contributions to ML infrastructure or datasets