Principal Research Engineer

Synthesia Synthesia · Multimodal · EUROPE · Research and Development

Synthesia is seeking a Principal Research Engineer to own the end-to-end technical direction for offline video generation, bridging pre-training and post-training stages. This role involves defining long-term strategy, resolving complex technical problems, and accelerating the delivery of research to product. The ideal candidate has a proven track record of training large-scale generative video models from scratch and extensive experience with post-training techniques.

What you'd actually do

  1. Own the end-to-end technical direction for offline video generation, spanning pre-training and post-training, resolving the artificial boundary between those two stages in service of shipping better models faster.
  2. Partner with research leadership and team leads to define a unified long-term roadmap, broken into achievable objectives, and drive execution against it.
  3. Identify the most critical technical gaps across the video generation pipeline and jump in to unblock them, whether that means architectural decisions, training stability, post-training alignment, or cross-team coordination.
  4. Increase the velocity at which research ships to product: accelerate problem-solving, improve research-to-production handoffs, and increase visibility of research output in partnership with PMs.
  5. Coach and elevate more junior researchers and engineers toward senior technical thinking and execution.

Skills

Required

  • training large-scale video generation models from scratch
  • post-training techniques at scale (RLHF, GRPO, DPO)
  • data quality assessment
  • multi-year research strategy
  • cross-functional influence
  • technical leadership
  • hands-on execution
  • video generation
  • multimodal generation
  • human feedback pipelines

Nice to have

  • experience with proprietary data pipelines
  • experience with compute infrastructure at scale
  • experience with arbitrary long videos at high resolution
  • experience with alignment and fine-tuning techniques in a video or multimodal context
  • experience with human feedback pipelines applied to generative video or audio
  • leading or significantly influencing the technical direction of a research team while remaining hands-on

What the JD emphasized

  • trained large generative models from scratch
  • proven track record training large-scale video generation models from scratch
  • Deep experience with post-training techniques at scale
  • proven track record data quality
  • multi-year research direction
  • hands-on
  • owned a major model generation or capability jump end-to-end
  • Working across both pre-training and post-training stages
  • direct accountability for the outcomes of both
  • Experience operating at scale
  • Applying alignment and fine-tuning techniques in a video or multimodal context
  • human feedback pipelines applied to generative video or audio
  • Leading or significantly influencing the technical direction of a research team
  • remain hands-on
  • prefer to lead without staying technically involved
  • clear and direct communication
  • shipping doesn't excite yo

Other signals

  • training large generative video models from scratch
  • proprietary data pipelines
  • compute infrastructure at scale
  • human centric video models
  • arbitrary long videos at high resolution