eTeam
AWS DevOps/MLOps Engineer
eTeam, Plano, Texas, us, 75086
Overview:We are seeking a talented AWS DevOps/MLOps Lead to develop platforms for big data and data science on AWS. As models, apps, and data pipelines are created and operationalized, the bigdata and data science team requires engineers with understanding of cloud native technology to develop, manage, automate, and facilitate the operational capabilities of the big data and data science team.
Required Skills:
Experience in AWS system and network architecture design, with specific focus on AWS Sagemaker and AWS ECSExperience developing and maintaining ML systems built with open source toolsExperience developing with containers and Kubernetes in cloud computing environmentsExperience with one or more data-oriented workflow orchestration frameworks (KubeFlow, Airflow, Argo)Design the data pipelines and engineering infrastructure to support our clients' enterprise machine learning systems at scaleDevelop and deploy scalable tools and services for our clients to handle machine learning training and inferenceSupport model development, with an Client on auditability, versioning, and data securityExperience with data security and privacy solutions such as Denodo, Protegrity, and synthetic data generation.Ability to develop applications using Python and deploy to AWS Lambda and API GatewayAbility to develop Jenkins pipelines using the groovy scripting.. Good understanding in testing frameworks like Py/Test.Ability to work with AWS services like S3, DynamoDB, Glue, Redshift and RDSProficient understanding of Git and version control systemsFamiliarity with continuous integration and continuous deployment.Develop the terraform modules to deploy the standard infrastructure.Ability to develop the deployment pipelines using the Jenkins, XL ReleaseExperience in Python boto3 to automate the cloud operations.Experience in documenting technical solutions and solution diagramsGood understanding of the simple python applications which can be deployed as a docker container.Experiencing in creating workflows using AWS step functionsCreate the docker images using the custom python libraries.
Required Skills:
AWS (experience mandatory): S3, KMS, IAM, EC2, ECS, BATCH, ECR, Lambda, Data Sync, EFS, IAM Roles, Policies, Cloud Trail, Cost Explorer, ACM, AWS Route53, SNS, SQS, ELB, CloudWatch, Lambda and VPC, Service CatalogAutomation (experience mandatory): Terraform, Python (boto3), serverless, Jenkins (Groovy), NodeJsBigdata (Knowledge): Redshift, DynamoDB, Databricks, Glue, and Athena.Data science (Experience): Sagemaker, Athena, Glue, DynamoDB, Databricks, MWAA (Airflow),DevOps (experience mandatory): Python, Terraform, Jenkins, GitHub, Make files, and Shell scripting.Data Virtualization (Knowledge) : DenodoData Security (Knowledge): Protegrity
Qualifications:
Bachelor's degree from a reputed institution/university.14+ years of building end-to-end systems as a Platform Engineer, ML DevOps Engineer, or Data Engineer.4+ Years of experience in python, groovy, and java programming.Experience working in the SCRUM Environment.
Required Skills:
Experience in AWS system and network architecture design, with specific focus on AWS Sagemaker and AWS ECSExperience developing and maintaining ML systems built with open source toolsExperience developing with containers and Kubernetes in cloud computing environmentsExperience with one or more data-oriented workflow orchestration frameworks (KubeFlow, Airflow, Argo)Design the data pipelines and engineering infrastructure to support our clients' enterprise machine learning systems at scaleDevelop and deploy scalable tools and services for our clients to handle machine learning training and inferenceSupport model development, with an Client on auditability, versioning, and data securityExperience with data security and privacy solutions such as Denodo, Protegrity, and synthetic data generation.Ability to develop applications using Python and deploy to AWS Lambda and API GatewayAbility to develop Jenkins pipelines using the groovy scripting.. Good understanding in testing frameworks like Py/Test.Ability to work with AWS services like S3, DynamoDB, Glue, Redshift and RDSProficient understanding of Git and version control systemsFamiliarity with continuous integration and continuous deployment.Develop the terraform modules to deploy the standard infrastructure.Ability to develop the deployment pipelines using the Jenkins, XL ReleaseExperience in Python boto3 to automate the cloud operations.Experience in documenting technical solutions and solution diagramsGood understanding of the simple python applications which can be deployed as a docker container.Experiencing in creating workflows using AWS step functionsCreate the docker images using the custom python libraries.
Required Skills:
AWS (experience mandatory): S3, KMS, IAM, EC2, ECS, BATCH, ECR, Lambda, Data Sync, EFS, IAM Roles, Policies, Cloud Trail, Cost Explorer, ACM, AWS Route53, SNS, SQS, ELB, CloudWatch, Lambda and VPC, Service CatalogAutomation (experience mandatory): Terraform, Python (boto3), serverless, Jenkins (Groovy), NodeJsBigdata (Knowledge): Redshift, DynamoDB, Databricks, Glue, and Athena.Data science (Experience): Sagemaker, Athena, Glue, DynamoDB, Databricks, MWAA (Airflow),DevOps (experience mandatory): Python, Terraform, Jenkins, GitHub, Make files, and Shell scripting.Data Virtualization (Knowledge) : DenodoData Security (Knowledge): Protegrity
Qualifications:
Bachelor's degree from a reputed institution/university.14+ years of building end-to-end systems as a Platform Engineer, ML DevOps Engineer, or Data Engineer.4+ Years of experience in python, groovy, and java programming.Experience working in the SCRUM Environment.