Submitting more applications increases your chances of landing a job.
Here’s how busy the average job seeker was last month:
Opportunities viewed
Applications submitted
Keep exploring and applying to maximize your chances!
Looking for employers with a proven track record of hiring women?
Click here to explore opportunities now!You are invited to participate in a survey designed to help researchers understand how best to match workers to the types of jobs they are searching for
Would You Be Likely to Participate?
If selected, we will contact you via email with further instructions and details about your participation.
You will receive a $7 payout for answering the survey.
Data Infrastructure & Operations
Offer flexible and secure data ingestion, streaming, transformation, analytics and data lake storage paired with self-service compute & ML workspaces so that In-house data teams can spin-up services and create pipelines as per their business requirements
Job description
· Looking for 4-6 years of hand-ons experience with production-level development and operations on AWS or Azure Cloud
· Develop and maintain infrastructure-as-code using Terraform to deploy and manage Kubernetes clusters (AKS) and Databricks environments
· Hands-on experience with data pipeline orchestration tools like Azure Data Factory, Amazon data Pipeline, Apache Spark, Databricks
· Hands-on experience with one or more of stream & batch processing systems: Kafka (Confluent cloud, open source), Apache Storm, Spark-Streaming, Apache Flink, Kappa architecture
· Experience in architecting right storage strategy for use-cases, keeping data processing, data accessibility, data availability and cloud cost considerations
· Proficiency in Data transformation using Kstreams App/KSQL/Processor Libraries
· Data ingestion and data distribution integration experience using managed connectors such as Event Hubs, kafka topics, ADLS2, REST APIs
· Proficiency to set-up & manage open-source stack, including Airflow, Druid, Kafka (open source) OpenSearch, and Superset
· Proficiency in Python scripting for automation and integration tasks
· Utilize FastAPI for building and deploying high-performance APIs
· Handling requirements of managed services, IAM, auto-scaling, High availability, elasticity, networking options
· Handle federated access to cloud computing resource (or set of resources) based on a user's role within the organization
· Proficiency with Git, including branching/merging strategies, Pull Requests, and basic command line functions
· Proficiency in DevSecOps practices throughout the product lifecycle including fully managed Day 2 Ops leveraging Datadog
· Shared access controls to support multi-tenancy and self-service tooling for customers
· Manage data catalog per topic or domain based on services & use-cases offered
· Research, investigate and bring new technologies to continually evolve data platform capabilities
· Experience in working under Agile scrum Methodologies
Data Infrastructure & Operations
Offer flexible and secure data ingestion, streaming, transformation, analytics and data lake storage paired with self-service compute & ML workspaces so that In-house data teams can spin-up services and create pipelines as per their business requirements
Job description
· Looking for 4-6 years of hand-ons experience with production-level development and operations on AWS or Azure Cloud
· Develop and maintain infrastructure-as-code using Terraform to deploy and manage Kubernetes clusters (AKS) and Databricks environments
· Hands-on experience with data pipeline orchestration tools like Azure Data Factory, Amazon data Pipeline, Apache Spark, Databricks
· Hands-on experience with one or more of stream & batch processing systems: Kafka (Confluent cloud, open source), Apache Storm, Spark-Streaming, Apache Flink, Kappa architecture
· Experience in architecting right storage strategy for use-cases, keeping data processing, data accessibility, data availability and cloud cost considerations
· Proficiency in Data transformation using Kstreams App/KSQL/Processor Libraries
· Data ingestion and data distribution integration experience using managed connectors such as Event Hubs, kafka topics, ADLS2, REST APIs
· Proficiency to set-up & manage open-source stack, including Airflow, Druid, Kafka (open source) OpenSearch, and Superset
· Proficiency in Python scripting for automation and integration tasks
· Utilize FastAPI for building and deploying high-performance APIs
· Handling requirements of managed services, IAM, auto-scaling, High availability, elasticity, networking options
· Handle federated access to cloud computing resource (or set of resources) based on a user's role within the organization
· Proficiency with Git, including branching/merging strategies, Pull Requests, and basic command line functions
· Proficiency in DevSecOps practices throughout the product lifecycle including fully managed Day 2 Ops leveraging Datadog
· Shared access controls to support multi-tenancy and self-service tooling for customers
· Manage data catalog per topic or domain based on services & use-cases offered
· Research, investigate and bring new technologies to continually evolve data platform capabilities
· Experience in working under Agile scrum Methodologies
You'll no longer be considered for this role and your application will be removed from the employer's inbox.