Senior Machine Learning Engineer
Toronto, Ontario
ShyftLabs
ShyftLabs is not just a software company; we're your partners in propelling digital transformation at unprecedented speed. As experts, we specialize in crafting end-to-end solutions through our collaborative approach. With a deep-rooted...ShyftLabs is a growing data product company founded in early 2020 and works primarily with Fortune 500 companies. We deliver digital solutions built to help accelerate the growth of businesses in various industries, by focusing on creating value through innovation.
Job Responsibilities:
- Design and implement MLOps infrastructure using MLflow, Databricks Unity Catalogue, and AWS managed services
- Build feature store implementations and ML model versioning strategies using Databricks and MLflow
- Assess AI readiness and design roadmaps for Agentic BI implementations supporting autonomous insights generation
- Design production ML systems supporting predictive analytics, classification, and optimization models
- Implement ML model deployment pipelines with automated training, validation, and deployment workflows
- Build model monitoring and performance management systems for production ML applications
- Evaluate generative AI infrastructure requirements including semantic layers and automated analytics workflows
- Design ML pipeline automation strategies integrating feature engineering, model training, and deployment processes
- Implement real-time ML inference patterns supporting business-critical applications
- Enterprise MLOps Expertise: Proven experience implementing ML infrastructure at Fortune 500 scale
- Agentic BI Assessment: Understanding of autonomous AI systems and ability to assess organizational readiness for AI-driven business intelligence
- Production ML Focus: Deep understanding of ML model deployment, monitoring, and lifecycle management in production environments
- Strategic Communication: Strong consulting skills to present ML strategies and AI readiness roadmaps to executive leadership
Basic Qualifications:
- Bachelor's or Master's degree in Computer Science, Machine Learning, Engineering, or related quantitative field
- 5+ years of experience in ML engineering with Fortune 500 enterprise-scale implementations
- Expert-level experience with MLflow for model lifecycle management and experimentation tracking
- Deep hands-on experience with Databricks ML platform including Unity Catalogue for ML governance
- Proven experience with AWS ML services including SageMaker, model deployment, and managed ML infrastructure
- Strong background in machine learning algorithms including supervised/unsupervised learning, ensemble methods, and deep learning
- Experience with generative AI and LLM integration for business intelligence applications and semantic data modeling requirements
- Knowledge of feature store architectures, ML data management patterns, and model versioning/automation workflows
Preferred Qualifications
- Experience with Agentic BI frameworks and autonomous analytics systems
- Knowledge of conversational AI and natural language interfaces for business intelligence
- Understanding of AI governance frameworks and enterprise AI readiness assessment
- Experience with real-time recommendation systems and live inference pipelines
- Familiarity with financial modeling or pricing optimization ML applications
- Understanding of A/B testing frameworks for ML model evaluation
- Knowledge of ML governance and regulatory compliance requirements
ShyftLabs is an equal-opportunity employer committed to creating a safe, diverse and inclusive environment. We encourage qualified applicants of all backgrounds including ethnicity, religion, disability status, gender identity, sexual orientation, family status, age, nationality, and education levels to apply. If you are contacted for an interview and require accommodation during the interviewing process, please let us know.
* Salary range is an estimate based on our AI, ML, Data Science Salary Index 💰
Tags: A/B testing AI governance Architecture AWS Business Intelligence Classification Computer Science Consulting Conversational AI Databricks Data management Deep Learning Engineering Feature engineering Generative AI LLMs Machine Learning MLFlow ML infrastructure MLOps Model deployment Model training Pipelines SageMaker Testing Unsupervised Learning
Perks/benefits: Career development Competitive pay Insurance
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