Research Engineer - Data
Listed on 2026-06-18
-
IT/Tech
Data Scientist -
Research/Development
Data Scientist
About Periodic Labs
Periodic Labs is an AI and physical sciences company building state-of-the-art models to accelerate breakthroughs across materials, energy, and beyond. Backed by world-class investors and growing rapidly, we operate at the pace the frontier requires. Our team brings deep expertise, genuine ownership, and an insatiable drive to push the boundaries of what’s scientifically possible.
About the RoleYou will build and drive the data foundation for our research efforts. This means owning data strategy end-to-end: sourcing and procuring external datasets, integrating internally generated experimental data into the training stack, and ensuring the team always has the right data — in the right shape — to train and improve frontier models.
This role sits at the intersection of data engineering, research infrastructure, and strategy. You will work closely with pretraining, mid training, and RL researchers to understand what data the models need, then build the pipelines and systems to get it there. The work spans collecting and organizing diverse data sources, improving data quality through deduplication and preprocessing, and ensuring that new experimental results are incorporated in a structured, repeatable way that makes them useful for model development.
WhatYou’ll Do
- Own data strategy across the training stack — identifying gaps, evaluating new sources, and shaping the overall data roadmap in collaboration with research leads
- Source, evaluate, and procure external datasets across scientific domains including chemistry, physics, materials science, mathematics, and lab instrumentation
- Build and maintain robust pipelines for ingesting, processing, and versioning large-scale datasets from heterogeneous sources
- Design and implement new evaluation datasets and new RL environments to track and improve our key capabilities
- Integrate internally generated experimental data — from lab instrumentation, simulations, and model outputs — into the training stack in a structured and repeatable way
- Build tooling that makes it easy for researchers to inspect, query, and understand the data that goes into training runs
- Stay current with research on data-efficient training, synthetic data generation, and data selection methods — and bring relevant ideas into production
- Experience building large-scale data pipelines for LLM pretraining or mid training, including web-scale or scientific corpora
- Familiarity with dataset versioning, lineage tracking, and reproducibility tooling such as DVC
, Delta Lake
, or custom solutions - Experience sourcing and evaluating third-party datasets, including licensing considerations and quality assessment
- Strong Python engineering skills and comfort building production-quality tooling in a research environment
- Experience making evaluations and RL environments
- Experience collaborating directly with ML researchers to translate data needs into pipeline requirements and back again
- A research-oriented mindset — you run experiments on data, measure outcomes, and iterate with rigor
- Experience curating scientific datasets specifically for domain-adaptive continued pretraining or instruction tuning
- Familiarity with synthetic data generation methods, including model-generated data pipelines and quality verification
- A background in a physical science or engineering discipline that informs how you think about scientific data quality and structure
- Experience with multimodal data — integrating text, structured numerical data, molecular representations, or spectral data into unified training pipelines
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