Role : MLOPS Engineer
Location : Concord CA (100% Onsite)
Qualifications
- 10 Years of professional experience in Software Engineering & 3 Years in AIML
- Machine Learning Model Operations.
- Strong proficiency in Java and Python SQL and ML libraries (e.g. scikit-learn XGBoost TensorFlow PyTorch).
- Experience with cloud platforms and containerization (Docker Kubernetes).
- Familiarity with data engineering tools (e.g. Airflow Spark) and ML Ops frameworks.
- Solid understanding of software engineering principles and DevOps practices.
- Ability to communicate complex technical concepts to non-technical stakeholders.
Key Responsibilities
- Develop and maintain ML pipelines using tools like MLflow Kubeflow or Vertex AI.
- Automate model training testing deployment and monitoring in cloud environments (e.g. GCP AWS Azure).
- Implement CI/CD workflows for model lifecycle management including versioning monitoring and retraining.
- Monitor model performance using observability tools and ensure compliance with
- model governance frameworks (MRM documentation explainability)
- Collaborate with engineering teams to provision containerized environments and support model scoring via low-latency APIs
- Leverage AutoML tools (e.g. Vertex AI AutoML H2O Driverless AI) for low-code/no code model development documentation automation and rapid deployment
Role : MLOPS Engineer Location : Concord CA (100% Onsite) Qualifications 10 Years of professional experience in Software Engineering & 3 Years in AIML Machine Learning Model Operations. Strong proficiency in Java and Python SQL and ML libraries (e.g. scikit-learn XGBoost TensorFlow PyTorc...
Role : MLOPS Engineer
Location : Concord CA (100% Onsite)
Qualifications
- 10 Years of professional experience in Software Engineering & 3 Years in AIML
- Machine Learning Model Operations.
- Strong proficiency in Java and Python SQL and ML libraries (e.g. scikit-learn XGBoost TensorFlow PyTorch).
- Experience with cloud platforms and containerization (Docker Kubernetes).
- Familiarity with data engineering tools (e.g. Airflow Spark) and ML Ops frameworks.
- Solid understanding of software engineering principles and DevOps practices.
- Ability to communicate complex technical concepts to non-technical stakeholders.
Key Responsibilities
- Develop and maintain ML pipelines using tools like MLflow Kubeflow or Vertex AI.
- Automate model training testing deployment and monitoring in cloud environments (e.g. GCP AWS Azure).
- Implement CI/CD workflows for model lifecycle management including versioning monitoring and retraining.
- Monitor model performance using observability tools and ensure compliance with
- model governance frameworks (MRM documentation explainability)
- Collaborate with engineering teams to provision containerized environments and support model scoring via low-latency APIs
- Leverage AutoML tools (e.g. Vertex AI AutoML H2O Driverless AI) for low-code/no code model development documentation automation and rapid deployment
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