Machine Learning Engineer (Canada)
Jobright.aiFull Description
Jobright is a next-generation AI job search platform built to make career navigation faster, smarter, and more personal. They are looking for a Machine Learning Engineer to design, train, and ship the models that power how our AI agents understand resumes, match jobs, and guide people through their careers.
Why Join Us
* Build models that directly shape the career outcomes of millions of job seekers, not abstract benchmarks on a leaderboard
* Take ownership of the full ML lifecycle, from data and training to deployment, monitoring, and iteration
* Work alongside engineers and researchers who care about model quality, system design, and shipping speed in equal measure
* Join a team that invests in serious ML infrastructure, so you can spend your time on modeling instead of glue code
Responsibilities
* Design, train, and deploy machine learning models that power core capabilities across the Jobright platform, including matching, ranking, and recommendation
* Build and maintain training pipelines, feature stores, and evaluation frameworks that make experimentation fast and results trustworthy
* Partner with product, engineering, and applied AI teammates to translate ambiguous product goals into well-defined modeling problems and shipped features
* Monitor model performance in production, diagnose regressions, and feed those learnings back into the next iteration
Qualifications
Required
* Early-career engineer with 1 to 3 years of experience in machine learning, data science, or a closely related technical field
* Clear communicator who can explain modeling choices, tradeoffs, and results to both technical teammates and non-technical stakeholders
* Solid grounding in classical ML and modern deep learning, including the fundamentals of training, evaluation, and deploying models at scale
Preferred
* Prior internship or industry experience in ML engineering, applied research, or data science at a tech or AI-focused organization
* Track record of shipping production ML systems in fast-moving environments where data, requirements, and priorities shift regularly
* Hands-on skills in Python, PyTorch or TensorFlow, distributed training and inference, MLOps tooling, and SQL-based data systems