Senior ML Engineer
from šØš¦ Canada
Job Title: Senior ML Engineer
Location: Toronto, CA
Duration: Full-time
Role Summary
We are looking for a Senior ML Engineer to design, build, and productionize ML pipelines for a Trust Scoring platform, with a strong focus on replayability, determinism, explainability, and MLOps best practices.
This role is handsāon and platformāfocused, working across batch inference, realātime scoring, feature engineering, and model monitoring, within an AWSānative architecture.
Key Responsibilities
ML Engineering & Model Productionization
- Productionize PoC ML models into reproducible, governed pipelines
- Implement deterministic preprocessing for train vs serve parity
- Develop batch and nearārealātime inference workflows
- Generate explainability artifacts (reason codes, score attribution)
MLOps Foundations
- Implement and maintain:
- MLflow (experiments, model registry)
- CI/CD pipelines for ML
- Champion/Challenger model frameworks
- Enable:
- Controlled rollouts (shadow, advisory, active scoring)
- Versioned feature and model deployments
Feature & Data Engineering Collaboration
- Design and consume features from:
- Batch and lowālatency feature stores
- Canonical entity models (subscriber, device, SIM)
- Collaborate on:
- Data quality validation
- Schema contracts
- Drift detection (feature + score)
Monitoring & Platform Reliability
- Implement:
- Feature drift detection
- Model performance monitoring
- SLA and freshness validation
- Support replay and recovery using idempotent design patterns
Required Skills & Experience
Core Experience
- 3ā5 years handsāon experience as a Machine Learning Engineer
- Strong experience taking ML models from development to production
Technical Skills (MustāHave)
- Programming: Python, PySpark
- ML/MLOps:
- MLflow
- Model versioning and promotion
- Drift detection and monitoring
- Data:
- Feature engineering
- Batch and streaming concepts
- Largeāscale datasets
Cloud & Platform
- AWS experience (preferred):
- S3, Spark/EMR, IAM, basic networking
- Familiarity with:
- Feature stores
- APIābased inference patterns
Nice to Have
- Experience with fraud, trust scoring, or risk modeling
- Exposure to PIIāsensitive systems
- Experience migrating batch ML pipelines to realātime scoring
- Knowledge of explainable ML techniques










