Skip to main content
Astra North Infoteck Inc. logo

MLPlatform Engineer – Google Cloud; GCP and Vertex AI

Astra North Infoteck Inc.
Full Timemid
Mississauga, Ontario, CAPosted March 21, 2026

Resume Keywords to Include

Make sure these keywords appear in your resume to improve ATS scoring

PythonScalaBashSQLGCPAzureDockerKubernetesJenkinsAirflowPyTorchscikit-learnCI/CD

Sign up free to auto-tailor your resume with all these keywords and get a higher ATS score

Job Description

Position: MLPlatform Engineer – Google Cloud (GCP) and Vertex AI

Job Description

Desirable

Skills

· Google Cloud

· Azure Machine Learning (ML)

Role Requirements:

· Expertise in cloud platforms, ML engineering, data pipelines and CI/CD for deploying and managing machine learning solutions.

Cloud Platforms Services (Google Cloud)

· Google Cloud Platform (GCP) services: AI Platform (Vertex AI), Cloud Storage, Big Query, Cloud Functions, Cloud Pub Sub, Cloud Build, Airflow, and Cloud Run.

· Element Platform visibility

ML Data Engineering

· Understanding of ML concepts and LLMs (training, validation, hyperparameter tuning, evaluation).

· Experience with Tensor Flow, Keras, PyTorch,and scikit-learn.

· Data preprocessing, ETL, and data pipelines using PySpark and Scala using serverless dataproc.

CI/CD for ML (MLOps)

· Knowledge of CI/CD tools like Looper Pro and Jenkins.

· Model versioning, continuous training, and deployment using Vertex AI pipelines.

Automation Scripting

· Strong programming skills in Python, Bash and SQL

· Automation of workflows and ML pipelines.

Dev Ops Containerization

· Kubernetes (GKE) and Docker for containerization and orchestration.

· Good to have Helm charts and YAML for Kubernetes deployments.

Monitoring Observability

· Cloud Monitoring, Cloud Logging, Prometheus and Grafana for monitoring and alerting.

· Model performance monitoring with Vertex AI Model Monitoring.

Security Compliance

· Understanding of VPC, firewall rules, and service accounts.

· Managing secrets using Secret Manager.

Data Science

· Must understand general data science methods and the development life cycle.

· An MLOps Engineer responsible for building, automating, and managing scalable machine learning pipelines and deployments on Google Cloud Platform.

Experience

Required:

6-8

Requirements

Android and iOS

Want AI-powered job matching?

Upload your resume and get every job scored, your resume tailored, and hiring manager emails found - automatically.

Get Started Free