Member of Technical Staff - Post Training
Indexed description
Headquartered in Freiburg, Germany with a growing presence in San Francisco, we're scaling fast while staying true to what makes us different: research excellence, open science, and building technology that expands human creativity.
Why This Role
Post-training is where a foundation model becomes a product. In this role, you'll own the post-training pipeline for our multimodal models end to end — from data strategy and reward modeling to preference optimization, distillation, and safety tuning — across image, editing, and video. You'll drive measurable gains in model quality, build the infrastructure that lets the whole research team iterate fast, and push the state of the art in what it means to align a generative model to human intent.
This is a Staff / Senior IC role. We're looking for someone who has shipped post-training for a frontier model before and wants to do it again.
What You'll Work On
- Own the full post-training pipeline end to end — from data curation and reward modeling through fine-tuning, preference optimization, distillation, safety tuning, evaluation, and deployment
- Advance techniques across the post-training stack: SFT, RLHF, RLAIF, DPO, preference learning, and reward modeling to align models with human intent and aesthetic judgment
- Work across modalities: text-to-image, image editing, multi-reference, and video post-training
- Build personalization and customization capabilities that let users adapt our models to their own creative style
- Design and maintain high-throughput fine-tuning and evaluation infrastructure to support rapid iteration across the research team
- Identify quality and alignment gaps through rigorous evaluation, then close them through targeted research and engineering
- You've owned post-training for a frontier generative model through release (SFT, preference optimization (DPO or RLHF), distillation, safety tuning) with measurable quality wins on human prefs or standard benchmarks
- Deep experience across the post-training stack, not just one slice: reward modeling, preference learning, RLHF/RLAIF, and personalization
- Comfortable working across modalities: text-to-image, image editing, multi-reference, and ideally video
- Strong PyTorch fluency; you write research code that others can build on
- Experience with distillation (LADD, DMD, consistency models, or similar) or with building high-throughput eval pipelines is a strong plus
- Bias toward shipping: measurable model-quality improvements that reach users, not just papers
Everything we do is grounded in four values:
- Obsessed. We are a frontier research lab. The science has to be right, the understanding deep, the product beautiful.
- Low Ego. The work speaks. The best idea wins, no matter who said it. Credit is shared. Nobody is above any task.
- Bold. We take the ambitious bet. We ship, we do not wait for conditions to be perfect.
- Kind. People over politics. We treat each other with genuine warmth. Agency without empathy creates chaos.
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