Overview
Remote
$50 - $60
Contract - W2
Contract - Independent
Skills
Python
Terraform
Docker
GitLab
Bitbucket
TensorFlow
PyTorch
scikit-learn
MLflow
Kubeflow
Vertex AI
Vertex AI Pipelines
AI Platform
Google Compute Engine
Google Kubernetes Engine (GKE)
Kubeflow on GKE
Cloud Run
BigQuery
Cloud Storage
Cloud Composer
Dataproc
PySpark
Dataflow
Managed Airflow
ETL pipelines
Artifact Registry
Feature Store
Preemptible VMs
Cloud TPU
Cloud GPU
Cloud IAM
VPC Service Controls
Data Loss Prevention (DLP)
Cloud Endpoints
Cloud Functions
GenAI RAG applications
Google Cloud Monitoring
Google Cloud Logging
MLOps
Google Cloud Platform (GCP)
Containerization
CI/CD pipelines
Automation
Data ingestion
Model training
Model validation
Model deployment
Infrastructure management
Monitoring
Logging
Data drift detection
System health monitoring
Versioning
Reproducibility
Cost optimization
Performance optimization
Security compliance
GDPR
CCPA
DevOps
Data engineering
Data science
Job Details
MLOps Engineer (Google Cloud Platform Specialization) is responsible for designing, implementing, and maintaining infrastructure and processes on Google Cloud Platform (Google Cloud Platform) to enable the seamless development, deployment, and monitoring of machine learning models at scale. This role bridges data science and data engineering, Infrastructure, ensuring that machine learning systems are reliable, scalable, and optimized for Google Cloud Platform environments.
- Model Deployment: Design and implement pipelines for deploying machine learning models into production using Google Cloud Platform services such as AI Platform, Vertex AI, or Cloud Run, Cloud Composer ensuring high availability and performance.
- Infrastructure Management: Build and maintain scalable Google Cloud Platform-based infrastructure using services like Google Compute Engine, Google Kubernetes Engine (GKE), and Cloud Storage to support model training, deployment, and inference.
- Automation: Develop automated workflows for data ingestion, model training, validation, and deployment using Google Cloud Platform tools like Cloud Composer, and CI/CD pipelines integrated with GitLab and Bitbucket Repositories.
- Monitoring and Maintenance: Implement monitoring solutions using Google Cloud Monitoring and Logging to track model performance, data drift, and system health, and take corrective actions as needed.
- Collaboration: Work closely with data scientists, Data engineers, Infrastructure and DevOps teams to streamline the ML lifecycle and ensure alignment with business objectives.
- Versioning and Reproducibility: Manage versioning of datasets, models, and code using Google Cloud Platform tools like Artifact Registry or Cloud Storage to ensure reproducibility and traceability of machine learning experiments.
- Optimization: Optimize model performance and resource utilization on Google Cloud Platform, leveraging containerization with Docker and GKE, and utilizing cost-efficient resources like preemptible VMs or Cloud TPU/GPU.
- Security and Compliance: Ensure ML systems comply with data privacy regulations (e.g., GDPR, CCPA) using Google Cloud Platform s security tools like Cloud IAM, VPC Service Controls, and Data Loss Prevention (DLP).
- Tooling: Integrate Google Cloud Platform-native tools (e.g., Vertex AI, Cloud composer) and open-source MLOps frameworks (e.g., MLflow, Kubeflow) to support the ML lifecycle.
- Enable successful project delivery and customer satisfaction.
- Drive project and technology goals in compliance with organizational objectives.
Resume direct to kumar @ techpro-inc . com with Subject: Applying from Dice (only this line)
OR
click on Apply now
Employers have access to artificial intelligence language tools (“AI”) that help generate and enhance job descriptions and AI may have been used to create this description. The position description has been reviewed for accuracy and Dice believes it to correctly reflect the job opportunity.