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Zigsaw

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Machine Learning Engineer II, Applied Research Science

Machine Learning EngineerMachine Learning EngineerOtherRemoteJuniorTeam 11-50Since 2016H1B No SponsorCompany SiteLinkedIn

Location

California

Posted

93 days ago

Salary

$138.9K - $286.0K / year

Seniority

Junior

Postgraduate Degree1 yr expEnglishJavaPythonPyTorchTensorFlow

Job Description

Machine Learning Engineer II, Applied Research Science

Zigsaw

• Contribute to cutting-edge research in machine learning and artificial intelligence that can be applied to Pinterest problems • Collect, analyze, and synthesize findings from data and build intelligent data-driven model • Write clean, efficient, and sustainable code • Use machine learning, natural language processing, and graph analysis to solve modeling and ranking problems across growth, discovery, ads and search • Scope and independently solve moderately complex problems

Job Requirements

  • MS/PhD in Computer Science, ML, NLP, Statistics, Information Sciences or related field
  • 1-2 years of internship or professional experience
  • Experience in machine learning/information retrieval
  • Mastery of at least one systems languages (Java, C++, Python) or one ML framework (Tensorflow, Pytorch, MLFlow)
  • Experience in research and in solving analytical problems
  • Cross-functional collaborator and strong communicator
  • Comfortable solving ambiguous problems and adapting to a dynamic environment

Benefits

  • Information regarding the culture at Pinterest and benefits available for this position can be found here.

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E SOURCE logo

AI / ML Engineer

E SOURCE

E Source is a research, data/analytics, and technology focused professional services firm focused exclusively on the utility industry in the US and Canada. We help utilities target and serve their customers more effectively, enhance and optimize their grid, and leverage operating best practices and technologies to manage their business more effectively. Headquartered in Texas, we have 450+ employees across the US and Canada.

Full TimeRemoteTeam 201-500

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Replicant logo

Senior Machine Learning Engineer

Replicant

The Leader in Contact Center Automation.

OtherRemoteTeam 51-200H1B Sponsor

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United States
Job Closed