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EntrustEN

Applied Scientist II - Computer Vision

Entrust is a global leader in identity, payments, and data security solutions.

Entrust

Employee count: 1001-5000

United States only

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About the Team

You'll be joining the team leading Entrust's Identity portfolio, formerly known as Onfido (an AI- powered digital identity solution). Our technology helps businesses verify real identities using machine learning, ensuring secure remote customer onboarding. By assessing government- issued identity documents and facial biometrics using state-of-the-art machine learning, we provide companies with the assurance they need to operate securely while allowing people to access services quickly and safely. Our Applied Scientist team consists of about twenty machine learning scientists. The team is supported by an ML Ops team that provides state-of-the-art tooling (including AWS, Encord, Ray, PyTorch Lightning and Weights Biases). The Applied Science team works closely with product engineering to deploy models to serve our worldwide customer base.

Position Overview

We are looking for an Applied Scientist II to design and train cutting-edge machine learning solutions related to digital identities. Join our team and work on challenging problems in deepfake detection, bias mitigation, document understanding, anomaly detection and/or efficient ML.

What y ou will be doing

  • Push the frontier of research in areas such as deepfake detection, bias mitigation, fraud/anomaly detection, face matching, document understanding, and efficient on-device ML.
  • Publish research results in national and international conferences and scientific journals.
  • Work with product and engineering to improve our world-class identity-focused products.

Representative work

  • Implement bias-mitigation strategies to build fair face-matching and deepfake-detection models.
  • Train and benchmark large-scale vision-language models for document extraction.
  • Train a multi-modal document understanding model from scratch using synthetic data.
  • Optimise LoRA adapter latency in PEFT/Triton.
  • Profile, debug and improve model training speed on multiple GPUs.
  • Create a large-scale dataset for deepfake detection.
  • Experiment with multimodal models to detect fraud.

You may be a g ood fit if y ou

  • Have strong experience in machine learning and computer vision.
  • Have a strong record of successfully delivering high-performance ML-driven products.
  • Have a deep understanding of machine learning theory.
  • Have strong coding skills in Python and PyTorch.
  • Care about building fair and cutting-edge machine learning products.
  • Strong candidates may also have : Technical experience in one or more of the following areas: face matching, bias mitigation, anomaly detection, document understanding or on-device ML.
  • Published at top-level machine learning conferences.
  • Experience optimising (distributed) training code.

Where y ou will be

This role is based in our London, UK office and follows a hybrid model, requiring in-office presence three days per week.

Benefits

  • UK 25 days annual leave plus a day off for your Birthday.
  • Two paid volunteering days per year.*
  • Bupa Private Medical and Dental Insurance*
  • Pension with The People’s Pension (employer contribution 4% of base salary)*
  • Generous paid parental leave
  • Life enrichment allowance of up to £80 per month to use for services including gym, yoga, fitness classes, massages, childcare, and therapy
  • Dedicated learning opportunities including using tools like Linkedin Learning with availability to use for learning resources such as books, coaches, conferences, courses, podcasts, and more
  • Our open and transparent culture is reflected in our “Better Together” motto and we bring this to life by meeting once a week for our global weekly roundup (OnThursday); holding quarterly team socials, and other company-wide social events
  • Expense up to £300 (or local equivalent) to purchase workstation setup equipment
  • The opportunity to become a member of Entrust’s resource groups in order to learn different skills in our belonging groups

Ready to Make an Impact?

If youʼre excited by the prospect of working on cutting-edge machine learning for problems that matter, Entrust is the place for you. Join us in making a difference. Letʼs build a more secure world—together. Apply today! NO AGENCIES, NO RELOCATION LI-GR1 ENT123

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Full Time

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United States +/- 0 hours

About Entrust

Learn more about Entrust and their company culture.

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Entrust is a trusted global leader in identity, payments, and data security solutions. The company specializes in providing proactive solutions to enhance compliance and security across digital infrastructures. Founded in 1994, Entrust has established a prominent position in the market by focusing on innovative applications in identity and data security.

With a wide range of products and services, Entrust addresses the needs of enterprises and governments around the world. Their solutions cater to various needs such as user authentication, secure transactions, and protection of sensitive data. They remain dedicated to maintaining trust in every digital interaction, ensuring that customers can navigate the complexities of cybersecurity with confidence.

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