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Machine Learning

Posted 2 months agoViewed

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πŸ’Ž Seniority level: Senior, 5 years in web applications, 5 years in development, 3 years in Machine Learning Engineering

πŸ“ Location: Argentina, Colombia, Chile, Mexico

πŸ” Industry: Software Development

🏒 Company: Austin Software

πŸ—£οΈ Languages: English

⏳ Experience: 5 years in web applications, 5 years in development, 3 years in Machine Learning Engineering

πŸͺ„ Skills: Backend DevelopmentPythonSoftware DevelopmentETLMachine LearningReact.jsRubyRuby on RailsGoReact

Requirements:
  • English at an advanced level.
  • 5+ years of experience building modern web applications.
  • 5+ years of experience developing with Python, Ruby on Rails, and/or Golang.
  • 3+ years of experience in Machine Learning Engineering with a focus on NLU/NLP and LLMs.
  • Strong experience in data-centric backend development, ETL processes, and RAG models.
Responsibilities:
  • Develop machine learning solutions with a recent emphasis on NLU/NLP and LLMs.
  • Engage in data-centric backend development.
  • Handle ETL processes and RAG models.
  • Support team alignment to the company's vision and mission.
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