Machine Learning Engineer II
🇨🇦 Canada
Redshift
AWS
Terraform
Snowflake
Machine Learning
Design
SaaS
Data Science
Devops
Analyst
Testing
$101,000 - $113,000
Machine Learning Engineer II
from 🇨🇦 Canada
$101,000 - $113,000
Here's How You Make an Impact:
Design & Execute:Take ownership of the design and implementation of modern AI stack components, including data ingestion for AI/ML workloads and end-to-end model training and serving pipelines.
Scale & Optimize:Build and manage fault-tolerant AI platforms that scale economically. You will balance the maintenance of legacy models with the rapid development of advanced, scalable solutions.
Mentor & Collaborate:Provide technical mentorship to junior engineers and foster a collaborative environment. You will act as a bridge between data science and production engineering.
Drive Technical Excellence:Promote best practices in coding, testing, and MLOps. You thrive in ambiguous conditions by independently identifying opportunities to optimize model pipelines and improve AI workflows.
Cross-Functional Integration:Partner with data scientists, product managers, and software engineers to translate business needs into technical requirements and integrate AI solutions into production applications.
Implement Governance: Enforce model quality standards, integrity, and reliability. You will be responsible for implementing model lineage, fairness, and privacy controls within the automated pipelines.
Monitor & Measure:Build monitoring frameworks to track model performance and system KPIs, ensuring our AI initiatives drive measurable business outcomes.
You Thrive Here By Possessing the Following:
Experience:Minimum of 4–6 years of professional experience in machine learning engineering, with a proven track record of deploying models into production environments.
- Education:Degree/Diploma in Computer Science, Engineering, Data Science, Applied AI, Machine Learning, or some combination.
Technical Depth:Deep understanding of the modern AI stack, including data ingestion workflows and experience working with curated data warehouses like Snowflake, Databricks, or Redshift.
Cloud Proficiency:At least 3 years of hands-on experience with AWS infrastructure, specifically SageMaker, Spark/AWS Glue, and Infrastructure as Code (IaC) using Terraform.
Orchestration Expert: High proficiency in managing multi-stage workflows using Airflow or similar orchestration systems to automate training and deployment cycles.
MLOps Toolkit: Practical experience with MLflow, Kubeflow, or SageMaker Feature Store to support the end-to-end machine learning lifecycle.
Governance Mindset:Familiarity with model governance practices (lineage, fairness, and privacy) and experience using data cataloging tools for compliance.
Communication:Strong ability to communicate complex technical concepts to non-technical stakeholders and influence project direction.
Industry Context:Experience in FinTech or SaaS environments is a significant advantage.
- Bonus Structure
- Employer-paid Benefits Plan
- Health & Wellness Flex Account
- Professional Development Account
- Wellness Days
- Paid Holiday Shutdown
- Wave Days (extra vacation days in the summer)
- Get A-Wave Program (work from anywhere in the world up to 90 days)




