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Gen AI/ML Developer - Python, LLM, MLOps, Cloud

Toronto, Ontario, Canada
Full-time
Posted 1 week ago
Mid-Senior level
On-site
AIMLData SciencePrompt EngineeringLLM OpsEngineeringIT Services and IT Consulting

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Job Description


Role Overview


We are seeking a talented GenAI ML Engineer to develop and deploy cutting-edge generative AI solutions. This role focuses on building innovative applications, fine-tuning LLMs, and implementing robust machine learning pipelines to solve complex business problems using state-of-the-art advances in artificial intelligence.

Key Responsibilities


  • Generative AI & LLM Engineering: Design, fine-tune, and optimize large language models (GPT, Claude, Llama) for text, code, and multimodal applications.

  • Model Training & Evaluation: Develop custom training pipelines for foundation model adaptation and implement frameworks to ensure model performance and safety.

  • Application Development: Build robust ML applications, APIs, and services using Python and frameworks like LangChain or LlamaIndex.

  • Prompt Engineering: Create and optimize sophisticated prompts to drive various LLM use cases.

  • Production Deployment (MLOps): Deploy and monitor models in production environments, ensuring proper scaling and GPU utilization.

  • Innovation: Stay current with GenAI research to implement state-of-the-art techniques and feature engineering workflows.

  • Cross-functional Collaboration: Work with product and data science teams to bridge the gap between AI research and business solutions.


Technical Skills & Qualifications


Core Requirements
  • Education: Master’s or PhD in Computer Science, Machine Learning, AI, or a related quantitative field.

  • GenAI Expertise: Hands-on experience with Transformer architectures, Diffusion models, GANs, and VAEs.

  • Python Mastery: Expert-level Python with deep knowledge of PyTorch, TensorFlow, and Hugging Face.

  • LLM Frameworks: Proficiency in model versioning, fine-tuning strategies, and deployment using LangChain.

Infrastructure & Math
  • Cloud & MLOps: Knowledge of AWS/Azure/GCP ML services and experience with model monitoring and production scaling.

  • Mathematics: Strong foundation in statistics, linear algebra, and optimization.

  • Problem Solving: Proven ability to deploy models in production and navigate ambiguous project requirements.

Source: LinkedIn
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