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Lead AI Inference Engineer at Thomson Reuters
Thomson Reuters
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toronto, Canada
Location
toronto
Posted
June 03, 2026
Commute
Local Area
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Job Description
Join Thomson Reuters as a Lead AI Inference Engineer in a flexible hybrid setting. Enhance AI workloads and contribute to high-performance deployments across cloud environments.
This senior role involves optimizing and scaling inference models for various applications. You will work closely with cross-functional teams to ensure efficiency and reliability in our AI-driven products. Your expertise will directly impact the integration of cutting-edge models into our systems while upholding strict enterprise standards.
Key Responsibilities: β’ Optimize AI models for efficient inference β’ Ensure reliability of workloads across multi-cloud platforms β’ Deploy and scale inference operations on GPUs β’ Collaborate on model integration into APIs β’ Implement monitoring strategies for performance bottlenecks
Requirements: β’ 5+ years of relevant AI or machine learning experience β’ Strong grasp of ML optimization techniques β’ Experience with Kubernetes and cloud deployments ...
This senior role involves optimizing and scaling inference models for various applications. You will work closely with cross-functional teams to ensure efficiency and reliability in our AI-driven products. Your expertise will directly impact the integration of cutting-edge models into our systems while upholding strict enterprise standards.
Key Responsibilities: β’ Optimize AI models for efficient inference β’ Ensure reliability of workloads across multi-cloud platforms β’ Deploy and scale inference operations on GPUs β’ Collaborate on model integration into APIs β’ Implement monitoring strategies for performance bottlenecks
Requirements: β’ 5+ years of relevant AI or machine learning experience β’ Strong grasp of ML optimization techniques β’ Experience with Kubernetes and cloud deployments ...