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Senior Research Engineer - Computer Vision

InstaDeep Ltd
City of London
1 week ago
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Innovation is at the heart of what we do. We work as a cohesive team that collectively develops real-life decision-making and technology products across various industries. We are always on the lookout for talented minds to join our dynamic team and contribute their unique insights. Be part of a stimulating and collaborative environment where your ideas can make an impact and ignite transformative change worldwide.

InstaDeep, founded in 2014, is a pioneering AI company at the forefront of innovation. With strategic offices in major cities worldwide, including London, Paris, Berlin, Tunis, Kigali, Cape Town, New York, and San Francisco, InstaDeep collaborates with giants like Google DeepMind and prestigious educational institutions like MIT, Stanford, Oxford, UCL, and Imperial College London. We are a Google Cloud Partner and a select NVIDIA Elite Service Delivery Partner. We have been listed among notable players in AI, fast-growing companies, and Europe's 1000 fastest-growing companies in 2022 by Statista and the Financial Times. Our recent acquisition by BioNTech has further solidified our commitment to leading the industry.

Join us to be a part of the AI revolution!

The Team:

Our Computer Vision team builds and deploys cutting‑edge models that power state‑of‑the‑art perception and analysis across multiple domains. From biomedical imaging and robotics to satellite vision and digital twins, we develop algorithms and scalable pipelines that transform raw data into meaningful insight. Working closely with research and product teams, we translate foundational research into robust, high‑impact applications.

The Role:

We seek an experienced and highly skilled Senior Research Engineer in Computer Vision for Biology with a passion for designing and optimising advanced visual intelligence systems that unlock insights from complex biological data. You’ll lead projects that combine deep learning, efficient architectures, and large‑scale training to solve perception problems in microscopy, histopathology, and other biomedical imaging domains. If you love transforming the latest computer vision research into powerful tools for scientific discovery and translational biology, this role is for you.

As a senior member of the Vision team, you will lead technical development, mentor junior engineers, and help shape the strategic direction of bio‑vision AI initiatives at InstaDeep.

TL;DR: Develop and optimise next‑generation biological vision systems — from foundation models for microscopy and whole‑slide imaging to multimodal bioimaging pipelines — with maximum efficiency, scalability, and scientific impact.

Responsibilities
  • Model Development: Research, design, and implement state‑of‑the‑art computer vision models (e.g. Vision Transformers, SAM, MambaVision, Segment Anything, Diffusion Models).
  • Algorithmic Optimisation: Translate the latest deep learning research into performant, production‑ready systems.
  • Scalable Vision Systems: Build distributed training and inference pipelines optimised for large‑scale datasets (e.g. WSI, medical, industrial, or satellite imagery).
  • Multi‑Modal Learning: Integrate vision with other modalities (e.g. text, genomics, spatial omics, or language) to build cross‑domain AI systems.
  • Performance Engineering: Profile training workloads, optimise GPU utilisation, and accelerate inference through efficient data pipelines, caching, and mixed‑precision training.
  • Collaboration & Mentorship: Partner with ML researchers, engineers, and domain experts to deliver high‑impact solutions and guide junior engineers.
  • Project Leadership & Client Engagement: Lead and manage end‑to‑end machine learning projects, coordinate cross‑functional teams, and act as the primary technical point of contact with clients to ensure successful delivery and alignment with project goals.
Required Skills
  • Strong experience in computer vision and deep learning (classification, segmentation, detection, representation learning, or generative models).
  • Expertise with deep learning frameworks (PyTorch, JAX, TensorFlow).
  • Proficiency in Python and familiarity with C++ or CUDA for performance‑critical components.
  • Experience with distributed training and large‑scale data processing frameworks (e.g. Ray, PyTorch Lightning, Dask, or Horovod).
  • Solid understanding of visual data pipelines, pre‑processing, augmentation, and evaluation metrics.
  • Experience deploying and optimising CV models on GPUs/TPUs.
  • Familiarity with Linux environments, Git, Docker, and cloud/HPC platforms.
Highly desirable
  • Experience training or fine‑tuning vision foundation models (CLIP, SAM, DINOv2, ViT, Mamba, Diffusion Models).
  • Understanding of 3D vision, multi‑view geometry, or spatiotemporal data.
  • Experience with high‑throughput image data systems (e.g. for medical or satellite imagery).
  • Knowledge of MLOps and efficient model serving frameworks (ONNX, TensorRT, TorchScript).
  • Strong publication or open‑source contributions in computer vision research.
Example Projects
  • Train and optimise foundation models for high‑resolution image analysis (e.g. gigapixel WSIs, aerial imagery).
  • Develop active learning and segmentation systems for large‑scale annotation workflows.
  • Integrate Mamba‑based or transformer‑based architectures for multimodal vision‑language models.
  • Build efficient real‑time inference pipelines using CUDA/XLA and distributed systems.
  • Deploy scalable visual search and embedding‑based retrieval systems.
What We Offer

Real‑World Impact: Work on projects that redefine AI applications in vision, healthcare, robotics, and beyond.

Cutting‑Edge Challenges: Build systems that push the boundaries of perception, efficiency, and multimodal learning.

Collaborative Environment: Join a team of world‑class researchers and engineers passionate about advancing AI.

Growth‑Oriented Culture: Continuous learning, mentorship, and opportunities to publish or contribute to open research.

Join us to build the next generation of computer vision intelligence — scalable, efficient, and impactful.

Our commitment to our people

We empower individuals to celebrate their uniqueness here at InstaDeep. Our team comes from all walks of life, and we’re proud to continue encouraging and supporting applicants from underrepresented groups across the globe. Our commitment to creating an authentic environment comes from our ability to learn and grow from our diversity, and how better to experience this than by joining our team? We operate on a hybrid work model with guidance to work at the office 3 days per week to encourage close collaboration and innovation. We are continuing to review the situation with the well‑being of InstaDeepers at the forefront of our minds.

Right to work

Please note that you will require the legal right to work without visa sponsorship in the location you are applying for. We do not sponsor work visas.

Ready to take the next step? Check out our FAQs and discover what makes us tick!

Can I apply to multiple jobs?I was interviewed/applied last year and wasn't selected. May I reapply?I don't live where the job opportunity is. Can I still apply?


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