Qode

Computer Software

SeniorMLEngineer

CA$135–195k ~AI est. Toronto, Ontario, Canada FULL TIME
Market Sentiment
HIGH DEMAND

Neural analysis suggests this role is
optimal for Senior candidates.

The Brief

“Senior ML Engineer at Qode. Skills: ML Engineering, MLOps, Productionization, AWS. Productionize ML pipelines. Implement deterministic preprocessing”

Industry & Context.

Computer Software
Problems you'll solve

Idempotent design patterns

What They're Looking For.

Must Have

3-5 years ML Engineer experience, ML models from development to production

Nice to Have

AWS experience, Fraud scoring experience, Trust scoring experience, Risk modeling experience, PII-sensitive systems exposure, Migrating batch ML to real-time, Explainable ML techniques knowledge

What You'll Do.

Productionize ML pipelines

Implement deterministic preprocessing

Develop inference workflows

Generate explainability artifacts

Implement CI/CD pipelines

Implement champion/challenger frameworks

Enable controlled rollouts

Enable versioned deployments

Collaborate on data quality

Collaborate on schema contracts

Collaborate on drift detection

Implement feature drift detection

Implement model performance monitoring

Implement SLA validation

Implement freshness validation

How You'll Work.

Team & Collaboration

Feature engineering collaboration; Data engineering collaboration

Full Job Description

**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 hands‑on and platform‑focused, working across batch inference, real‑time scoring, feature engineering, and model monitoring, within an AWS‑native 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 near‑real‑time 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 low‑latency 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 * 3–5 years hands‑on experience as a Machine Learning Engineer * Strong experience taking ML models from development to production Technical Skills (Must‑Have) * Programming: Python, PySpark * ML/MLOps: * MLflow * Model versioning and promotion * Drift detection and monitoring * Data: * Feature engineering * Batch and streaming concepts * Large‑scale datasets Cloud & Platform * AWS experience (preferred): * S3, Spark/EMR, IA

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