Role: MLOPS Architect (Machine Learning / AI Architect)
Location: Remote
Duration: 06+ Months
Client:-HCL
Job Description
1.Designing Cloud Architecture:
oAs an AWS Cloud Architect, you’ll be responsible for designing cloud architectures, preferably on AWS, Azure, or multi-cloud environments.
oYour architecture design should enable seamless scalability, flexibility, and efficient resource utilization for MLOps implementations.
2.Data Pipeline Design:
oDevelop data taxonomy and data pipeline designs to ensure efficient data management, processing, and utilization across the AI/ML platform.
oThese pipelines are critical for ingesting, transforming, and serving data to machine learning models.
3.MLOps Implementation:
oCollaborate with data scientists, engineers, and DevOps teams to implement MLOps best practices.
oThis involves setting up continuous integration and continuous deployment (CI/CD) pipelines for model training, deployment, and monitoring.
4.Infrastructure as Code (IaC):
oUse tools like AWS CloudFormation or Terraform to define and provision infrastructure resources.
oInfrastructure as Code allows you to manage your cloud resources programmatically, ensuring consistency and reproducibility.
5.Security and Compliance:
oEnsure that the MLOps architecture adheres to security best practices and compliance requirements.
oImplement access controls, encryption, and monitoring to protect sensitive data and models.
6.Performance Optimization:
oOptimize cloud resources for cost-effectiveness and performance.
oConsider factors like auto-scaling, load balancing, and efficient use of compute resources.
7.Monitoring and Troubleshooting:
oSet up monitoring and alerting for the MLOps infrastructure.
oBe prepared to troubleshoot issues related to infrastructure, data pipelines, and model deployments.
8.Collaboration and Communication:
oWork closely with cross-functional teams, including data scientists, software engineers, and business stakeholders.
oEffective communication is essential to align technical decisions with business goals.
Activities –
Strong experience in Python
• Experience in data product development, analytical models, and model governance
• Experience with AI workflow management tools such as Airflow, Kedro, or Luigi
• Exposure statistical modeling, machine learning algorithms, and predictive analytics.
• Highly structured and organized work planning skills
• Strong understanding of the AI development lifecycle and Agile practices
• Proficiency in big data technologies like Hadoop, Spark, or similar frameworks. Experience with graph databases a plus.
• Extensive Experience in working with cloud computing platforms – AWS
• Proven track record of delivering data products in environments with strict adherence to security and model governance standards.
Location: Remote
Duration: 06+ Months
Client:-HCL
Job Description
1.Designing Cloud Architecture:
oAs an AWS Cloud Architect, you’ll be responsible for designing cloud architectures, preferably on AWS, Azure, or multi-cloud environments.
oYour architecture design should enable seamless scalability, flexibility, and efficient resource utilization for MLOps implementations.
2.Data Pipeline Design:
oDevelop data taxonomy and data pipeline designs to ensure efficient data management, processing, and utilization across the AI/ML platform.
oThese pipelines are critical for ingesting, transforming, and serving data to machine learning models.
3.MLOps Implementation:
oCollaborate with data scientists, engineers, and DevOps teams to implement MLOps best practices.
oThis involves setting up continuous integration and continuous deployment (CI/CD) pipelines for model training, deployment, and monitoring.
4.Infrastructure as Code (IaC):
oUse tools like AWS CloudFormation or Terraform to define and provision infrastructure resources.
oInfrastructure as Code allows you to manage your cloud resources programmatically, ensuring consistency and reproducibility.
5.Security and Compliance:
oEnsure that the MLOps architecture adheres to security best practices and compliance requirements.
oImplement access controls, encryption, and monitoring to protect sensitive data and models.
6.Performance Optimization:
oOptimize cloud resources for cost-effectiveness and performance.
oConsider factors like auto-scaling, load balancing, and efficient use of compute resources.
7.Monitoring and Troubleshooting:
oSet up monitoring and alerting for the MLOps infrastructure.
oBe prepared to troubleshoot issues related to infrastructure, data pipelines, and model deployments.
8.Collaboration and Communication:
oWork closely with cross-functional teams, including data scientists, software engineers, and business stakeholders.
oEffective communication is essential to align technical decisions with business goals.
Activities –
Strong experience in Python
• Experience in data product development, analytical models, and model governance
• Experience with AI workflow management tools such as Airflow, Kedro, or Luigi
• Exposure statistical modeling, machine learning algorithms, and predictive analytics.
• Highly structured and organized work planning skills
• Strong understanding of the AI development lifecycle and Agile practices
• Proficiency in big data technologies like Hadoop, Spark, or similar frameworks. Experience with graph databases a plus.
• Extensive Experience in working with cloud computing platforms – AWS
• Proven track record of delivering data products in environments with strict adherence to security and model governance standards.
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