Software Engineer - AI (3 month contract)

Unitary
London
10 months ago
Applications closed

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Software Engineer (AI & Machine Learning Focus)

Software Engineer - AI (3 month contract)

Be among the first 25 applicants

Core Responsibilities:

  • Design and build performance reporting systems for content moderation tools
  • Develop features to enhance moderation capabilities
  • Collaborate with teams to customize solutions for new customer onboarding

Key Skills:

  • Python development expertise
  • Experience with data engineering and analysis
  • Knowledge of containerized microservices and Kubernetes
  • Understanding of machine learning fundamentals
  • Commitment to software engineering best practices

Requirements:

  • Python development expertise
  • Experience with data engineering and analysis
  • Knowledge of containerized microservices and Kubernetes
  • Understanding of machine learning fundamentals
  • Commitment to software engineering best practices

Nice to Have:

  • Startup experience
  • MLOps and platform engineering background
  • Experience with AI-assisted development tools

Benefits:

  • Work in an agile, fast-paced environment
  • Build state-of-the-art AI
  • Work from home, with occasional visits to the London office (must be UK based)
  • Flexible hours
  • Competitive compensation

Seniority level:

Mid-Senior level

Employment type:

Contract

Job function:

Engineering and Information Technology

Industries:

IT Services and IT Consulting

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