Staff Research Engineer - Multimodal Generative Modelling

Posted Yesterday
Be an Early Applicant
27 Locations
Remote
Senior level
Artificial Intelligence
The Role
Lead research and engineering for interactive multimodal generative models (text, audio, video). Propose architectures, implement pretraining and post-training, optimize low-latency streaming systems, curate datasets, define evaluation metrics, and ship production models with runtime optimizations and ongoing improvements.
Summary Generated by Built In

Synthesia is the world’s leading AI video platform for business, used by over 90% of the Fortune 100. Founded in 2017, the company is headquartered in London, with offices and teams across Europe and the US.

As AI continues to shape the way we live and work, Synthesia develops products to enhance visual communication and enterprise skill development, helping people work better and stay at the center of successful organizations.

Following our recent Series E funding round, where we raised $200 million, our valuation stands at $4 billion. Our total funding exceeds $530 million from premier investors including Accel, NVentures (Nvidia's VC arm), Kleiner Perkins, GV, and Evantic Capital, alongside the founders and operators of Stripe, Datadog, Miro, and Webflow.

About the role

Synthesia's long-term vision is to build the best human-interactive models: systems that don't just talk to people, but perceive and respond to them, reacting to a user's actions and emotions, not only their words. Today over 60,000 businesses rely on our platform, and the next leap in what we can offer them depends on models that combine text, audio, and video into a single real-time interactive experience.

As a Staff Research Engineer, you'll join the Voice team within our 40+ person R&D department, but your scope will extend well beyond voice. You'll help define and drive that broader vision across teams, proposing ambitious research directions and taking direct ownership of the design and implementation of its most critical components. You'll work directly with our voice lead and collaborate tightly with our video teams and other senior members of the org.
Concretely, you'll work on voice to voice models that produce text and voice simultaneously. Models that can reason, interrupt the user with back channeling and talk. Models that feel like you are having a natural conversation with, without the feeling of turn taking that is dominant in current speech to speech models. Your role would be to partner in defining a roadmap, implementing it and shipping the outcomes to product.
What you'll do

  • Shape our roadmap to create new model capabilities and unlock new functionality for our customer base, on both short and long time horizons.

  • Propose novel multi-modal system architectures (especially text and voice).

  • Develop and evaluate streaming and conversational systems for low-latency, interactive voice-video synthesis.

  • Design solutions that reinforce emotional expressiveness and natural interaction.

  • Implement and bring designs to life, from pretraining through post-training.

  • Integrate and test novel architectures (neural codecs, diffusion, flow-matching) to enhance realism and responsiveness.

  • Define new evaluation metrics for conversational systems, including latency-aware and interaction-based measurements.

  • Track the latest research in audio-visual diffusion, autoregressive models, neural codecs, and multimodal LLMs.

  • Curate new datasets to complement existing data.

  • Lead post-training initiatives like DPO, fine-tuning, and distillation to bring models to shipping quality.

  • Ship models to production with optimised runtime to serve customers, and address their feedback thereafter.

You'll thrive in this role if you have
  • The 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.

  • A solid grasp of time-series modeling and tokenization, preferably in the context of audio, speech, or video.

  • A 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.

Particularly relevant experience
  • 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.

  • Working on LLMs with large scale trainings leadings to models with decent reasoning capabilities

  • Owning a research problem end to end: from architecture proposal through pretraining, post-training, and production deployment.

  • Collaborating across modalities or teams (e.g. audio and video, or research and product) to ship a unified system.

Bonus points for
  • 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).

Skills Required

  • Strong understanding of generative modelling, ideally for sequential or multimodal data.
  • Hands-on experience with large language models or transformer-based architectures.
  • High proficiency in PyTorch, including distributed training and model optimization.
  • Solid grasp of time-series modeling and tokenization, preferably for audio, speech, or video.
  • Proven experience training deep learning models end-to-end, from data preparation through evaluation.
  • Ability to prototype quickly, test hypotheses, and iterate efficiently.
  • Strong general software engineering skills to contribute to shared research infrastructure.
  • Experience shipping a generative model into a live product at meaningful scale.
  • Experience on conversational or interactive systems with latency and responsiveness constraints.
  • Experience owning research end-to-end: architecture, pretraining, post-training, and production deployment.
  • Experience with real-time or streaming architectures.
  • Familiarity with diffusion models, neural codecs, flow-matching models, or autoregressive decoders.
  • Excellence in one or more modalities: voice, text, video.
  • Evidence of original research contributions or open-source work (NeurIPS, CVPR, ICML, ICLR, Interspeech).

Synthesia Compensation & Benefits Highlights

The following summarizes recurring compensation and benefits themes identified from responses generated by popular LLMs to common candidate questions about Synthesia and has not been reviewed or approved by Synthesia.

  • Leave & Time Off Breadth Leave benefits are positioned as generous, including substantial annual leave plus public holidays and an additional long-tenure sabbatical with a cash award. Flexible working hours and hybrid/remote arrangements further strengthen perceived time-off and flexibility value.
  • Healthcare Strength Health coverage is described as robust, including private medical insurance with mental health support and dental/vision coverage. Added features like cashback options and gym discounts extend the package beyond basic medical coverage.
  • Equity Value & Accessibility Equity is framed as a meaningful part of total rewards through a generous stock options plan and a recent employee liquidity event tied to a major funding round. This can materially improve the perceived value and accessibility of long-term incentives versus options that remain purely paper value.

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The Company
HQ: London
428 Employees
Year Founded: 2017

What We Do

Synthesia is the #1 rated AI video communications platform. Thousands of companies use it to create videos in 140 languages, saving up to 80% of their time and budget. 👉 Trusted by Zoom, Xerox, Teleperformance, Amazon and mor

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