Multimodal ML Engineer

White Circle
Charing Cross, United Kingdom
4 days ago

Role details

Contract type
Permanent contract
Employment type
Full-time (> 32 hours)
Working hours
Regular working hours
Languages
English
Experience level
Intermediate
Compensation
£ 250K

Job location

Charing Cross, United Kingdom

Tech stack

Clean Code Principles
Audio Signal Processing
Noise Reduction
Distributed Computing Environment
PyTorch
Large Language Models
Deep Learning
Machine Learning Operations
Software Version Control
Data Pipelines
Data Generation

Job description

  • Train and fine-tune large-scale multimodal models (vision-language, audio, speech) from scratch and from pretrained checkpoints
  • Extend models across modalities: image understanding, video temporal modeling, long-context processing, and streaming audio
  • Design and run experiments: architecture changes, data mixes, training recipes
  • Build and maintain multimodal data pipelines - from raw images, video, and audio recordings to training-ready datasets, including synthetic data generation
  • Train and optimize MoE architectures for efficient multimodal inference
  • Build alignment pipelines: SFT, DPO, GRPO, reward modeling - across modalities, not just text
  • Optimize models for production: quantization, distillation, batching, streaming and low-latency serving
  • Deploy models end-to-end: from research checkpoint to production serving
  • Define evaluation metrics and benchmarks that actually matter for the product: visual QA, spatial reasoning, video comprehension, speech and audio understanding

Requirements

  • 3+ years training large-scale deep learning models in multimodal domains (vision-language, audio, speech, or acoustic)
  • Strong PyTorch skills with hands-on distributed training experience (DeepSpeed, FSDP, or similar)
  • Deep experience with multimodal architectures - you understand how vision/audio encoders, projectors, and LLMs fit together (LLaVA, Qwen-VL, InternVL, Audio Flamingo, Omni Qwen, Audio Qwen, Whisper, HuBERT, Conformer, or similar)
  • Hands-on with RLHF/alignment for multimodal: GRPO, DPO, reward modeling - not just for text
  • Experience with video and/or audio sequence modeling: temporal modeling, long-context processing, efficient attention, streaming inference
  • Track record of shipping models to production: you've hit latency targets and optimized inference, not just reported benchmark scores
  • Comfortable with large-scale multimodal dataset curation: image-text pairs, video-instruction data, audio preprocessing, augmentation, synthetic data generation
  • Familiar with MoE architectures and their tradeoffs for multimodal workloads
  • Strong engineering fundamentals: clean code, version control, testing, documentation

A big plus:

  • Understanding of audio signal processing fundamentals (spectrograms, mel features, noise reduction) is a plus

Benefits & conditions

Why White Circle

  • 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 unable to provide relocation support for London-based roles)
  • Comprehensive medical insurance for our France-based team (please note that we are in the process of setting up our UK office and therefore cannot offer medical insurance for London-based roles yet)
  • 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

How we hire

  • 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

About the company

White Circle is an AI Safety company building the safety, reliability, and optimization layer for AI systems. At the core of our platform are policies - simple natural-language rules that define what an AI model should and shouldn't do. We automatically test, enforce, and continuously improve these policies at scale. * 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 We're a small, highly focused team. If you want to work deeply on hard problems, see your work ship to production quickly, and influence how AI safety is actually built - you're the one we need.

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