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Remote AI/ML Engineer

  • AI/ML Engineering
  • Fully Remote
  • 1 week ago
  • UK

Job Information

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    Salary Pound 90,000–100,000 / Yearly
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    Shift Flexible Hours
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    No. of Openings 1 opening
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    Job Level : Experienced
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    Job Experience : 3-5 Years
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    Job Qualifications Master’s Degree

Job Description

Role Overview

We’re seeking an AI/ML Engineer to design, develop, and deploy machine learning models and AI-driven solutions across multiple client platforms. You’ll collaborate with data engineers, software developers, and product teams to build intelligent systems that solve complex problems and drive business outcomes.

This is a fully remote role, with flexible working hours and async collaboration.

Key Responsibilities

  • Design, implement, and optimize machine learning models for production use
  • Work with NLP, computer vision, or predictive analytics pipelines
  • Build and maintain ETL pipelines and data preprocessing workflows
  • Collaborate with data engineers to integrate ML solutions into cloud-based applications
  • Conduct experiments, validate models, and perform A/B testing
  • Maintain code quality and follow best practices in CI/CD, version control, and containerization
  • Communicate findings and solutions effectively to cross-functional teams

Required Skills

Technical Skills

  • Python (ML libraries: TensorFlow, PyTorch, Scikit-learn)
  • Machine Learning & Artificial Intelligence
  • Natural Language Processing (NLP)
  • Data Analysis & Visualization (Pandas, Matplotlib, Seaborn, Tableau, Power BI)
  • SQL & database management
  • Git/GitHub
  • Docker & containerized workflows
  • AWS / Google Cloud for ML deployments
  • CI/CD pipelines

Soft Skills

  • Communication
  • Team Collaboration
  • Problem-Solving
  • Attention to Detail
  • Critical Thinking
  • Adaptability
  • Remote Tools (Slack, Zoom, Notion)

Nice to Have

  • Experience with reinforcement learning or advanced AI techniques
  • Background in cloud-native ML architectures

 

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