Staff Research Engineer - Multimodal Generative Modelling

Synthesia Synthesia · Multimodal · EUROPE · Research and Development

Staff Research Engineer at Synthesia, a leading AI video platform, focusing on multimodal generative modeling for interactive voice-video synthesis. The role involves shaping the roadmap, proposing novel architectures, developing and evaluating streaming conversational systems, and shipping models to production. Requires strong PyTorch, generative modeling, and LLM experience, with a focus on end-to-end ownership from pretraining to deployment.

What you'd actually do

  1. Shape our roadmap to create new model capabilities and unlock new functionality for our customer base, on both short and long time horizons.
  2. Propose novel multi-modal system architectures (especially text and voice).
  3. Develop and evaluate streaming and conversational systems for low-latency, interactive voice-video synthesis.
  4. Design solutions that reinforce emotional expressiveness and natural interaction.
  5. Implement and bring designs to life, from pretraining through post-training.

Skills

Required

  • Ability to bring novel ideas and designs that advance the field of interactive multimodal systems.
  • Strong understanding of generative modelling, ideally applied to sequential or multimodal data.
  • Hands-on experience with large language models or similar transformer-based architectures.
  • High proficiency in PyTorch, including distributed training and model optimization.
  • Solid grasp of time-series modeling and tokenization, preferably in the context of audio, speech, or video.
  • Demonstrated ability to prototype quickly, test hypotheses, and iterate efficiently.
  • Proven experience training deep learning models end-to-end, from data preparation through evaluation.
  • Strong general software engineering skills, enabling contributions to a large, shared research infrastructure.

Nice to have

  • Experience with real-time or streaming architectures.
  • Familiarity with state-of-the-art architectures in audio and speech generation, such as diffusion models, neural codecs, flow-matching models, or autoregressive decoders.
  • Excellence in one or more of the following modalities: voice, text, video.
  • Evidence of original research contributions, such as publications or open-source work at top-tier venues (e.g. NeurIPS, CVPR, ICML, ICLR, Interspeech).

What the JD emphasized

  • Having shipped a generative model into a live product used at meaningful scale, not just published or prototyped it.
  • Working on conversational or interactive systems where latency, responsiveness, and user experience were first-class constraints, not afterthoughts.
  • Owning a research problem end to end: from architecture proposal through pretraining, post-training, and production deployment.

Other signals

  • AI video platform
  • multimodal generative modelling
  • interactive voice-video synthesis
  • conversational systems
  • shipping models to production