ML Research Engineer
Indexed description
- We’ve raised $11M from top funds, founders, and senior leaders at OpenAI, Anthropic, HuggingFace, Mistral, DeepMind, Datadog, Sentry, and others
- We process over 100M+ API calls every month
- We fine-tune and train our own LLMs so they run faster and cheaper than any open or proprietary model
You will:
- Turn petabytes of unstructured text into a structured, explorable view (topics, clusters, segments, trends, anomalies): iterate from “unknown unknowns” to stable definitions we can track.
- Build scalable representation pipelines: sampling strategies, preprocessing/normalization, embeddings at scale, indexing, and retrieval to make the corpus searchable and analyzable.
- Use LLMs pragmatically: labeling/classification, weak supervision, data enrichment, summarization, and automated diagnostics of inbound volumes (with cost/quality controls).
- Deliver insights that change decisions: translate findings into product and operational actions (what data we have, what’s missing, where quality breaks, what to prioritize next).
- Ship self-serve analytics: datasets, data models, and lightweight tools/dashboards so the team can explore and answer questions without ad-hoc requests.
- Partner closely with engineering/research: align pipelines with production constraints (latency/cost/privacy), and integrate outputs into workflows.
- Strong Python + SQL with an engineering mindset: you can build reliable pipelines, not just notebooks.
- Solid applied NLP/ML experience on real-world text: embeddings, clustering, topic modeling, semantic search, classification; you understand failure modes and how to debug them.
- Comfortable at scale: distributed processing, large-scale storage-querying, and performance-cost tradeoffs.
- You know how to evaluate fuzzy problems: offline/online metrics, human-in-the-loop labelling, inter-annotator agreement, drift monitoring, and reproducibility.
- Have prior work with safety/moderation datasets, policy/rule systems, or high-volume logging/observability
- A public builder footprint: open-source models, datasets, or training frameworks on HuggingFace/GitHub, benchmarks, papers (workshop or main conference), or technical posts with real usage
- Experience training models at a frontier or near-frontier lab, or leading open-source model releases with documented adoption
- Experience with RL methods for LLMs beyond standard RLHF: online RL, GRPO-style methods, or novel alignment approaches
- Experience with moderation, safety, or classification models at scale
- Multilingual model training experience
- Paid time off in line with your local regulations, no matter where you work from
- Work from Paris (hybrid) with a relocation package available, or work from London (note: we are currently unable to provide relocation support and medical insurance for London-based roles)
- Comprehensive medical insurance for our France-based team
- All the hardware, tools, and services you need
- Covered subscriptions for AI agents and IDEs
- Team off-sites twice a year: we've recently been to the Alps and to Saint-Tropez
- Introductory call with HR (25 min)
- Take-home test task
- Technical interview with Head of Applied Research (60 min)
- Final conversation with our CEO (45 min)
Compensation Range: $120K - $250K
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