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Machine Learning Scientist

Machine Learning EngineerMachine Learning EngineerFull TimeRemoteSeniorTeam 11-50H1B No SponsorCompany SiteLinkedIn

Location

United States

Posted

87 days ago

Salary

0

Seniority

Senior

Postgraduate DegreeEnglish

Job Description

Machine Learning Scientist

GTO Wizard

• Improve the performance of our machine learning models • Continuously oversee the performance of models in production and develop monitoring tools to gain deeper insights into areas for model performance enhancement • Collaborate with a team of researchers and engineers to design, implement and maintain innovative solutions to complex problems. • Reduce the training and inference time of our ML pipeline • Drive projects and lead new initiatives in MLOps

Job Requirements

  • Masters or PhD degree in Computer Science, a related field, or equivalent practical experience
  • Applied research experience with a successful track record of delivering quality results
  • Extensive expertise in machine learning, with in-depth, hands-on experience in reinforcement learning or game theory
  • Exceptional communication, cross discipline collaboration and leadership skills
  • Passion for games and how intelligent systems can teach humans problem solving skills.

Benefits

  • Impactful Work: Be part of a company that's transforming how poker is studied and played worldwide.
  • Innovative Environment: Work with cutting-edge technology and contribute to a platform that's pushing the boundaries of poker strategy.
  • Professional Growth: We support your personal and professional development with opportunities to learn new skills and take on exciting challenges.
  • Collaborative Culture: Join a team where your ideas are valued, and you can make a real impact in a supportive, inclusive environment.
  • Flexible Work Arrangements: Enjoy the benefits of remote work while collaborating with a global team.
  • Passionate Community: Engage with a vibrant community of poker enthusiasts and professionals who are passionate about the game.

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