MLPlatform Engineer – Google Cloud (GCP) and Vertex AI
Astra-North Infoteck Inc. ~ Conquering today’s challenges, achieving tomorrow’s vision!Resume Keywords to Include
Make sure these keywords appear in your resume to improve ATS scoring
Sign up free to auto-tailor your resume with all these keywords and get a higher ATS score
Job Description
Requirements
- Expertise in cloud platforms, ML engineering, data pipelines and CI/CD for deploying and managing machine learning solutions.
- Google Cloud Platform (GCP) services: AI Platform (Vertex AI), Cloud Storage, BigQuery, Cloud Functions, Cloud PubSub, Cloud Build, Airflow, and Cloud Run.
- Understanding of ML concepts and LLMs (training, validation, hyperparameter tuning, evaluation).
- Experience with TensorFlow, 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.
DevOps 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.
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.
#J-18808-Ljbffr
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