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Artificial Intelligence Engineer
Role : AI Engineer - Machine Learning 1
Location : Remote ( Redmond or Seattle, WA )
Purpose of the Team:
• They are building platforms for computational chemistry. They have machine learned supplemented processes.
Key projects:
• Build models to test them and train them for these chemistry workflows / processes
• Typical task breakdown and operating rhythm:
• Mostly development work (collaborating / coding / testing, etc)
• 10% meetings for project updates
What makes this role interesting?
• High impact problem solving in chemistry areas
• Flexible work schedules (hybrid schedules)
Preferences:
• Someone in science
• Publications in resume would be a huge benefit
• Experience with biology and data science
Top 3 Hard Skills Required + Years of Experience
• 1. Proficiency with coding in Python – 1+ YOE
• 2. Experience with pytorch & tensorflow – 1+ YOE
• 3. Data Organization – 1+ YOE
Hard Skills Assessments
• Expected Dates that Hard Skills Assessments will be scheduled: ASAP
• Hard Skills Assessment Process: The assessment process will include standard process.
• Required Candidate Preparation: Candidates should have their resume prepared prior to the assessment.
Qualifications:
• Bachelor's degree in a technical field such as computer science, computer engineering or related field required
• 0-2 years experience required
• A solid foundation in computer science, with strong competencies in data structures, algorithms, and software design
• Large systems software design and development experience
• Experience performing in-depth troubleshooting and unit testing with both new and legacy production systems
• Experience in programming and experience with problem diagnosis and resolution
• Experience working in an Agile environment.
• Background in machine learning frameworks such as TensorFlow or PyTorch