Dataproc is a fully managed and highly scalable service for running Apache Hadoop, Apache Spark, Apache Flink, Presto, and 30+ open source tools and frameworks. Use Dataproc for data lake modernization, ETL, and secure data science, at scale, integrated with Google Cloud, at a fraction of the cost.
Flexible: Use serverless, or manage clusters on Google Compute and Kubernetes. Deploy a Google-recommended solution that unifies data lakes and data warehouses for storing, processing, and analyzing both structured and unstructured data
Open: Run open source data analytics at scale, with enterprise grade security
Secure: Configure advanced security such as Kerberos, Apache Ranger and Personal Authentication
Cost-effective: Realize 54% lower TCO compared to on-prem data lakes with per-second pricing
Benefits
Modernize your open source data processing
Serverless deployment, logging, and monitoring let you focus on your data and analytics, not on your infrastructure. Reduce TCO of Apache Spark management by up to 54%. Build and train models 5X faster.
Enterprise security integrated with Google Cloud
Security features such as default at-rest encryption, OS Login, VPC Service Controls, and customer-managed encryption keys (CMEK). Enable Hadoop Secure Mode via Kerberos by adding a security configuration.
Key features
Serverless deployment, logging, and monitoring let you focus on your data and analytics, not on your infrastructure. Reduce TCO of Apache Spark management by up to 54%. Enable data scientists and engineers to build and train models 5X faster, compared to traditional notebooks, through integration with Vertex AI Workbench. The Dataproc Jobs API makes it easy to incorporate big data processing into custom applications, while Dataproc Metastore eliminates the need to run your own Hive metastore or catalog service.
Build your Apache Spark jobs using Dataproc on Kubernetes so you can use Dataproc with Google Kubernetes Engine (GKE) to provide job portability and isolation.
When you create a Dataproc cluster, you can enable Hadoop Secure Mode via Kerberos by adding a Security Configuration. Additionally, some of the most commonly used Google Cloud-specific security features used with Dataproc include default at-rest encryption, OS Login, VPC Service Controls, and customer-managed encryption keys (CMEK).
Dataproc lets you take the open source tools, algorithms, and programming languages that you use today, but makes it easy to apply them on cloud-scale datasets. At the same time, Dataproc has out-of-the-box integration with the rest of the Google Cloud analytics, database, and AI ecosystem. Data scientists and engineers can quickly access data and build data applications connecting Dataproc to BigQuery, Vertex AI, Spanner, Pub/Sub, or Data Fusion.
Customers
What's new
Serverless Spark is now Generally Available. Sign up for preview for other Spark on Google Cloud services.
Documentation
Submit Spark jobs which auto-provision and auto-scale. More details with the quickstart link below.
Add other OSS projects to your Dataproc clusters with pre-built initialization actions.
Libraries and tools for Apache Hadoop interoperability.
The Dataproc WorkflowTemplates API provides a flexible and easy-to-use mechanism for managing and executing workflows.
Use cases
Enterprises are migrating their existing on-premises Apache Hadoop and Spark clusters over to Dataproc to manage costs and unlock the power of elastic scale. With Dataproc, enterprises get a fully managed, purpose-built cluster that can autoscale to support any data or analytics processing job.
Create your ideal data science environment by spinning up a purpose-built Dataproc cluster. Integrate open source software like Apache Spark, NVIDIA RAPIDS, and Jupyter notebooks with Google Cloud AI services and GPUs to help accelerate your machine learning and AI development.
All features
Serverless Spark | Deploy Spark applications and pipelines that autoscale without any manual infrastructure provisioning or tuning. |
Resizable clusters | Create and scale clusters quickly with various virtual machine types, disk sizes, number of nodes, and networking options. |
Autoscaling clusters | Dataproc autoscaling provides a mechanism for automating cluster resource management and enables automatic addition and subtraction of cluster workers (nodes). |
Cloud integrated | Built-in integration with Cloud Storage, BigQuery, Dataplex, Vertex AI, Composer, Bigtable, Cloud Logging, and Cloud Monitoring, giving you a more complete and robust data platform. |
Automatic or manual configuration | Dataproc automatically configures hardware and software but also gives you manual control. |
Developer tools | Multiple ways to manage a cluster, including an easy-to-use web UI, the Cloud SDK, RESTful APIs, and SSH access. |
Initialization actions | Run initialization actions to install or customize the settings and libraries you need when your cluster is created. |
Optional components | Use optional components to install and configure additional components on the cluster. Optional components are integrated with Dataproc components and offer fully configured environments for Zeppelin, Presto, and other open source software components related to the Apache Hadoop and Apache Spark ecosystem. |
Custom containers and images | Dataproc serverless Spark can be provisioned with custom docker containers. Dataproc clusters can be provisioned with a custom image that includes your pre-installed Linux operating system packages. |
Flexible virtual machines | Clusters can use custom machine types and preemptible virtual machines to make them the perfect size for your needs. |
Workflow templates | Dataproc workflow templates provide a flexible and easy-to-use mechanism for managing and executing workflows. A workflow template is a reusable workflow configuration that defines a graph of jobs with information on where to run those jobs. |
Automated policy management | Standardize security, cost, and infrastructure policies across a fleet of clusters. You can create policies for resource management, security, or network at a project level. You can also make it easy for users to use the correct images, components, metastore, and other peripheral services, enabling you to manage your fleet of clusters and serverless Spark policies in the future. |
Smart alerts | Dataproc recommended alerts allow customers to adjust the thresholds for the pre-configured alerts to get alerts on idle, runaway clusters, jobs, overutilized clusters and more. Customers can further customize these alerts and even create advanced cluster and job management capabilities. These capabilities allow customers to manage their fleet at scale. |
Dataproc on Google Distributed Cloud (GDC) | Dataproc on GDC enables you to run Spark on the GDC Edge Appliance in your data center. Now you can use the same Spark applications on Google Cloud as well as on sensitive data in your data center. |
Multi-regional Dataproc Metastore | Dataproc Metastore is a fully managed, highly available Hive metastore (HMS) with fine-grained access control. Multi-regional Dataproc Metastore provides active-active DR and resilience against regional outages. |
Pricing
Dataproc pricing is based on the number of vCPU and the duration of time that they run. While pricing shows hourly rate, we charge down to the second, so you only pay for what you use.
Ex: A cluster with 6 nodes (1 main + 5 workers) of 4 CPUs each ran for 2 hours would cost $0.48. Dataproc charge = # of vCPUs * hours * Dataproc price = 24 * 2 * $0.01 = $0.48
Please see pricing page for details.
Partners
Dataproc integrates with key partners to complement your existing investments and skill sets.
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