ML Research Engineer
Listed on 2026-07-13
-
IT/Tech
Data Scientist, Machine Learning/ ML Engineer, AI Business & Operations
The role
We have strong hypotheses about why our data is so unique and worth more than what the internet produces. Our multimodal data corpus will reach more than 500,000 hours and more than 10 petabytes before the end of this year. Your job is to explore it, improve it and prove out our hypothesis as models and research needs grow and change.
You are also the bridge to the gap of what’s possible from the research and how our data can be used to improve and solve data needs.
You use publicly available models, open weights, and private partnerships with model makers to test, validate, and stress our data across different architectures, use cases, and training scenarios. You reproduce published findings on our corpus, run the experiments that show where our data wins and where it does not, and take the strongest results toward publication and academic collaboration.
This is a senior, hands-on, catch-all research seat: part ML engineer, part research scientist. You have tinkered with a lot of models and you like it that way.
What you ll do- Choose what experiments, what models, and what data to run.
- Demonstrate knowledge and expertise across many models, staying up on the latest findings, and newly quantifying the performance of our data.
- Reproduce published results on our data, and publish the strongest findings: clean checkpoints, honest model cards, released evaluation harnesses.
- Own and liaise with research partnerships: work with academic labs and private model makers to run studies our data uniquely enables.
- Work cross-functionally: take a business or customer need, define the dataset that meets it, and advise on the best strategy to solve it.
- Publish: design short and long-term publication strategies from the work you lead
Senior IC, 5+ years. We care about depth over breadth in one place: hands-on experience training, testing, and using video and multimodal models, and organizing the data behind them.
- Deep, hands-on experience with video and multimodal models: you have trained, fine-tuned, evaluated, and just plain tinkered with many of them, and you organize and wrangle the data they run on.
- A generalist who spans ML engineering, research science, and data science, and is comfortable owning a question from dataset to result.
- Rigorous experimental design: matched-compute, dose-response studies, preregistered endpoints and kill criteria, paired statistics, reported nulls. If a result depends on a choice made after seeing the data, you know it does not count.
- Fluency in the open-weights ecosystem:
Hugging Face stack, safe tensors, experiment tracking, and today s open model landscape (Depth Anything, VGGT, SAM 2, Wan, Cosmos, LTX). You pin exact checkpoints and read licenses as carefully as code. - Applied deep learning in PyTorch, including distributed fine-tuning and evaluation, and the instinct to diagnose a run that is quietly wrong, not just one that crashes.
- Reproducibility discipline: you validate a harness against a published number before trusting a figure on our data.
- Major plus: experience with video game data or content, whether capture, engine telemetry, or game-derived datasets.
- Depth and camera geometry: metric vs. affine-invariant depth, intrinsics and extrinsics, OpenCV/COLMAP/TUM conventions, pose metrics.
- Controllable video generation and world models: camera-trajectory and depth conditioning, action conditioning, recoverability metrics, world-model evaluation (World Score, VBench-class).
- Prior public research output, academic collaborations, or published benchmarks.
- Large-scale data handling:
Web Dataset streaming over terabyte-scale video, decoding depth blobs to metric float
32. - Agentic coding tools (Claude, Cursor, Codex) used to move fast on harness and analysis code.
Origin Lab delivers AI-enriched catalogs across video game capture, 3D environments, TV/film, and animation, licensed at the source with audit-ready provenance. We work with AI researchers from Oxford, Google Research, and others to drive breakthroughs in Artificial World Intelligence.
#J-18808-Ljbffr(If this job is in fact in your jurisdiction, then you may be using a Proxy or VPN to access this site, and to progress further, you should change your connectivity to another mobile device or PC).