Purple Drive Technologies LLC
ML OPS ARCHITECT
Purple Drive Technologies LLC, Los Angeles, California, United States, 90079
Description
Architect and implement scalable AWS ML/AI cloud infrastructure in a multi-tenant SaaS environment. Collaborate with data scientists, data engineers, and IT teams to define requirements and best practices for ML model development, deployment, and monitoring. Evaluate and recommend tools, platforms, and cloud technologies for ML Ops, ensuring alignment with enterprise architecture standards. Oversee the integration of ML pipelines with existing enterprise data and application architectures. Familiarity with Guidewire integrations is highly desirable. Oversee ML/AI related Kubernetes cluster management and provide guidance on alternative ML/AI workflow orchestration options such as Argo vs Kubeflow, and ML/AI data pipeline creation, management and governance with tools like Airflow. Employ tools like Argo CD to automate infrastructure deployment and management. Mentor and guide technical teams on ML Ops architecture, tooling, and best practices. Required Experience
5 years: AI/ML Strategy & Roadmap Development. 4 years: MLOps Tools (Eg. AWS Sagemaker, Google Cloud Platform Vertex AI, Databricks). 3 years: ML & Data Pipeline Orchestration (Eg. Kubeflow, Apache Airflow). 2 years: ML Feature Store Tools (Eg. Tecton, Databricks, FeatureForm). 3 years: DevOps (Eg. Argo CD / Argo Workflows), Containerization (Kubernetes, ROSA). 3 years: Enterprise Application Integration (Eg. Guidewire, Salesforce). 4 years: Data Platforms (Eg. Snowflake, RedShift, BigQuery). 2 years: GenAI Tools / LLMs (Eg. OpenAI, Gemini, etc.). 1 year: Agentic AI Frameworks (Eg. LangGraph, Autogen, Google ADK). 3 years: API Orchestration (Eg. Mulesoft, Google Cloud API). Architecture Experience Required
3 years: Data Mesh Architecture & Data Product Design. 3 years: Event-Driven Architecture (EDA). 4 years: Scalable AWS ML/AI Cloud Infrastructure (Multi-tenant SaaS). 3 years: Data Architecture Guidelines Development. 3 years: Security in Distributed Systems. 4 years: Designing Scalable, Decoupled Systems. 5 years: Strategy & Roadmap Creation. 3 years: Influencing with Data-Driven Insights. Domain Experience Required
4 years: Functional Knowledge of Insurance Domains (Policy, Claims, Services Ops) – Preferred. 2 years: Legal & Compliance Regulations in Insurance – Preferred. 3 years: Data Product Development for Functional Domains. 2 years: AI-Driven Business Process Automation
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Architect and implement scalable AWS ML/AI cloud infrastructure in a multi-tenant SaaS environment. Collaborate with data scientists, data engineers, and IT teams to define requirements and best practices for ML model development, deployment, and monitoring. Evaluate and recommend tools, platforms, and cloud technologies for ML Ops, ensuring alignment with enterprise architecture standards. Oversee the integration of ML pipelines with existing enterprise data and application architectures. Familiarity with Guidewire integrations is highly desirable. Oversee ML/AI related Kubernetes cluster management and provide guidance on alternative ML/AI workflow orchestration options such as Argo vs Kubeflow, and ML/AI data pipeline creation, management and governance with tools like Airflow. Employ tools like Argo CD to automate infrastructure deployment and management. Mentor and guide technical teams on ML Ops architecture, tooling, and best practices. Required Experience
5 years: AI/ML Strategy & Roadmap Development. 4 years: MLOps Tools (Eg. AWS Sagemaker, Google Cloud Platform Vertex AI, Databricks). 3 years: ML & Data Pipeline Orchestration (Eg. Kubeflow, Apache Airflow). 2 years: ML Feature Store Tools (Eg. Tecton, Databricks, FeatureForm). 3 years: DevOps (Eg. Argo CD / Argo Workflows), Containerization (Kubernetes, ROSA). 3 years: Enterprise Application Integration (Eg. Guidewire, Salesforce). 4 years: Data Platforms (Eg. Snowflake, RedShift, BigQuery). 2 years: GenAI Tools / LLMs (Eg. OpenAI, Gemini, etc.). 1 year: Agentic AI Frameworks (Eg. LangGraph, Autogen, Google ADK). 3 years: API Orchestration (Eg. Mulesoft, Google Cloud API). Architecture Experience Required
3 years: Data Mesh Architecture & Data Product Design. 3 years: Event-Driven Architecture (EDA). 4 years: Scalable AWS ML/AI Cloud Infrastructure (Multi-tenant SaaS). 3 years: Data Architecture Guidelines Development. 3 years: Security in Distributed Systems. 4 years: Designing Scalable, Decoupled Systems. 5 years: Strategy & Roadmap Creation. 3 years: Influencing with Data-Driven Insights. Domain Experience Required
4 years: Functional Knowledge of Insurance Domains (Policy, Claims, Services Ops) – Preferred. 2 years: Legal & Compliance Regulations in Insurance – Preferred. 3 years: Data Product Development for Functional Domains. 2 years: AI-Driven Business Process Automation
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