Applied Scientist II - Computer Vision

Entrust
London
1 week ago
Applications closed

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Position Overview:

We are looking forApplied Scientist IIto play a key part in the design and deployment of cutting-edge AI-powered digital identity solutions. Join our team and collaborate with world class engineers, data scientists, and researchers to shape the future of secure authentication.


What you will be doing:

  • Participate in hands-on machine learning research and deliver the results of the research in the form of new products.
  • Communicate your results to the Science team, Engineering and Product teams
  • Participate in the machine learning life of the team (reading groups, etc.)
  • Learn best machine learning practices from a team of senior applied scientists


Essential Skills:

  • Formal training in machine learning and computer vision
  • Coding experience in python
  • Experience working with at least one deep learning framework (pytorch or tensorflow)
  • A strong willingness to learn
  • Highly collaborative mindset
  • A strong interest for a product-centric organization


Desirable Skills:

  • Working knowledge of cloud computing (preferably AWS) and tools and technologies such as docker and git


Where you will be:

At Entrust, we have a distributed workforce. This role will be based as advertised on the job description. We have a hybrid model, and you can choose to work fully remote, or come to our offices! We let all our employees choose what’s best for them.


Benefits:

We're committed to making Entrust a fantastic place to work, so we go to great lengths to give you what you need to succeed. You’ll receive:

  • 25 days annual leave plus a day off for your Birthday.
  • Two paid volunteering days per year. *
  • Bupa Private Medical and Dental Insurance*
  • Life Assurance (3x Annual Base Salary) *
  • Pension with The People’s Pension (employer contribution 4% of base salary) *
  • Generous paid parental leave
  • Free mental health coaching provided online
  • 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 Learnerbly 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 to learn different skills in our belonging groups



About Entrust

Entrust is an innovative leader in identity-centric security solutions, providing an integrated platform of scalable, AI-enabled security offerings. We enable organizations to safeguard their operations, evolve without compromise, and protect their interactions in an interconnected world – so they can transform their businesses with confidence. Entrust supports customers in 150+ countries and works with a global partner network, we are trusted by the world most trusted organizations.


For more information, visitwww.entrust.com. Follow us on,LinkedIn,Facebook,Instagram, andYouTube


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