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Full Stack Academy

We aim to transform fresh graduates into software professionals while also helping professionals upgrade their skills.

Instructor, AI/Machine Learning – NLP & Audio Analytics

Machine Learning EngineerMachine Learning EngineerOtherRemoteLeadTeam 11-50Since 2012H1B No SponsorCompany SiteLinkedIn

Location

United States

Posted

95 days ago

Salary

$50 - $55 / hour

Seniority

Lead

10 yrs expEnglishPython

Job Description

Instructor, AI/Machine Learning – NLP & Audio Analytics

Full Stack Academy

• Conduct live, instructor-led online classes • Deliver coding demos, assisted practices, and projects • Address learner queries and ensure engagement

Job Requirements

  • 10+ years of hands-on experience in NLP and/or Audio Analytics
  • Strong Python and ML/DL skills
  • Prior online/classroom training experience

Benefits

  • Compensation:**
  • The expected compensation for this role for candidates from United States is $50 -$55 per hour for candidates who fulfill the qualifications for the role. Candidates whose qualifications are above those listed are encouraged to apply as well. All final offers to candidates will be based on that candidate's unique experience and skillset, and not all candidates will qualify for the top of the salary range.

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