Machine Learning Engineer - Platform

Coinbase is a company focused on increasing economic freedom around the world through cryptocurrency and Web3 technologies.
$147,900 - $174,000
Machine Learning
Mid-Level Software Engineer
Remote
1,000 - 5,000 Employees
2+ years of experience

Description For Machine Learning Engineer - Platform

At Coinbase, we're looking for an aspiring Machine Learning Engineer to join our team. Our mission is to increase economic freedom around the world, and we're building the future of finance and Web3 for users across the globe. The Machine Learning team develops sophisticated ML models to enhance platform security, expand usage through personalized recommendations, and improve user experience.

As a Machine Learning Engineer, you'll be:

  • Developing, productionizing, and operating Machine Learning models and pipelines at scale
  • Contributing to ML models for Risk, working at the intersection of Blockchain and AI technologies
  • Collaborating with senior engineers and product partners to identify and solve new use cases for ML on blockchain

We're looking for someone with:

  • 2+ years of industry experience as a Machine Learning Engineer
  • Solid software engineering skills
  • Experience with ML platforms (e.g., Tensorflow, PyTorch)
  • Experience with basic ML techniques (supervised and unsupervised learning)
  • Willingness to learn and adapt to new technologies and challenges

Nice to have:

  • Master's degree or PhD in Machine Learning, Computer Science or related field
  • Interest in DNNs, GANS, GNNs and Time Series modeling

We offer a competitive salary range of $147,900 - $174,000 USD, along with benefits including medical, dental, vision, 401(k), wellness stipend, remote-first stipend, and more. Join us in building scalable, adaptive, blockchain-aware ML systems that help our users explore and discover new use cases for Crypto on Coinbase and on the blockchain.

Last updated 6 months ago

Responsibilities For Machine Learning Engineer - Platform

  • Hands-on develop, productionize, and operate Machine Learning models and pipelines at scale
  • Contribute to ML models for Risk, work at the intersection of Blockchain and AI technologies
  • Work with senior engineers and collaborate with product partners to identify and solve new use cases for ML on blockchain

Requirements For Machine Learning Engineer - Platform

Python
  • 2+ years of industry experience as a Machine Learning Engineer
  • Solid software engineering skills
  • Experience with coding on ML platforms (e.g., Tensorflow, PyTorch)
  • Experience with basic ML techniques (e.g., supervised and unsupervised learning)
  • Willingness to learn and adapt to new technologies and challenges

Benefits For Machine Learning Engineer - Platform

Medical Insurance
Dental Insurance
Vision Insurance
401k
  • Medical Plan
  • Dental Plan
  • Vision Plan
  • Health Savings Account
  • Disability Insurance
  • Life Insurance
  • 401(k) plan with company match
  • Wellness Stipend
  • Mobile/Internet Reimbursement
  • Remote-First Stipend
  • Connections Stipend
  • Volunteer Time Off
  • Fertility Counseling and Benefits
  • 18 weeks paid Parental Leave
  • Option of getting paid in digital currency

Interested in this job?

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