- Introducing Elasticsearch Service
- Adding data to Elasticsearch
- Migrating data
- Ingesting data from your application
- Ingest data with Node.js on Elasticsearch Service
- Ingest data with Python on Elasticsearch Service
- Ingest data from Beats to Elasticsearch Service with Logstash as a proxy
- Ingest data from a relational database into Elasticsearch Service
- Ingest logs from a Python application using Filebeat
- Ingest logs from a Node.js web application using Filebeat
- Configure Beats and Logstash with Cloud ID
- Best practices for managing your data
- Configure index management
- Enable cross-cluster search and cross-cluster replication
- Access other deployments of the same Elasticsearch Service organization
- Access deployments of another Elasticsearch Service organization
- Access deployments of an Elastic Cloud Enterprise environment
- Access clusters of a self-managed environment
- Enabling CCS/R between Elasticsearch Service and ECK
- Edit or remove a trusted environment
- Migrate the cross-cluster search deployment template
- Manage data from the command line
- Preparing a deployment for production
- Securing your deployment
- Monitoring your deployment
- Monitor with AutoOps
- Configure Stack monitoring alerts
- Access performance metrics
- Keep track of deployment activity
- Diagnose and resolve issues
- Diagnose unavailable nodes
- Why are my shards unavailable?
- Why is performance degrading over time?
- Is my cluster really highly available?
- How does high memory pressure affect performance?
- Why are my cluster response times suddenly so much worse?
- How do I resolve deployment health warnings?
- How do I resolve node bootlooping?
- Why did my node move to a different host?
- Snapshot and restore
- Managing your organization
- Your account and billing
- Billing Dimensions
- Billing models
- Using Elastic Consumption Units for billing
- Edit user account settings
- Monitor and analyze your account usage
- Check your subscription overview
- Add your billing details
- Choose a subscription level
- Check your billing history
- Update billing and operational contacts
- Stop charges for a deployment
- Billing FAQ
- Elasticsearch Service hardware
- Elasticsearch Service GCP instance configurations
- Elasticsearch Service GCP default provider instance configurations
- Elasticsearch Service AWS instance configurations
- Elasticsearch Service AWS default provider instance configurations
- Elasticsearch Service Azure instance configurations
- Elasticsearch Service Azure default provider instance configurations
- Change hardware for a specific resource
- Elasticsearch Service regions
- About Elasticsearch Service
- RESTful API
- Release notes
- March 25, 2025
- Enhancements and bug fixes - March 2025
- Enhancements and bug fixes - February 2025
- Enhancements and bug fixes - January 2025
- Enhancements and bug fixes - December 2024
- Enhancements and bug fixes - November 2024
- Enhancements and bug fixes - Late October 2024
- Enhancements and bug fixes - Early October 2024
- Enhancements and bug fixes - September 2024
- Enhancements and bug fixes - Late August 2024
- Enhancements and bug fixes - Early August 2024
- Enhancements and bug fixes - July 2024
- Enhancements and bug fixes - Late June 2024
- Enhancements and bug fixes - Early June 2024
- Enhancements and bug fixes - Early May 2024
- Bring your own key, and more
- AWS region EU Central 2 (Zurich) now available
- GCP region Middle East West 1 (Tel Aviv) now available
- Enhancements and bug fixes - March 2024
- Enhancements and bug fixes - January 2024
- Enhancements and bug fixes
- Enhancements and bug fixes
- Enhancements and bug fixes
- Enhancements and bug fixes
- AWS region EU North 1 (Stockholm) now available
- GCP regions Asia Southeast 2 (Indonesia) and Europe West 9 (Paris)
- Enhancements and bug fixes
- Enhancements and bug fixes
- Bug fixes
- Enhancements and bug fixes
- Role-based access control, and more
- Newly released deployment templates for Integrations Server, Master, and Coordinating
- Enhancements and bug fixes
- Enhancements and bug fixes
- Enhancements and bug fixes
- Enhancements and bug fixes
- Enhancements and bug fixes
- Enhancements and bug fixes
- Enhancements and bug fixes
- Enhancements and bug fixes
- Enhancements and bug fixes
- Enhancements and bug fixes
- Cross environment search and replication, and more
- Enhancements and bug fixes
- Enhancements and bug fixes
- Azure region Canada Central (Toronto) now available
- Azure region Brazil South (São Paulo) now available
- Azure region South Africa North (Johannesburg) now available
- Azure region Central India (Pune) now available
- Enhancements and bug fixes
- Azure new virtual machine types available
- Billing Costs Analysis API, and more
- Organization and billing API updates, and more
- Integrations Server, and more
- Trust across organizations, and more
- Organizations, and more
- Elastic Consumption Units, and more
- AWS region Africa (Cape Town) available
- AWS region Europe (Milan) available
- AWS region Middle East (Bahrain) available
- Enhancements and bug fixes
- Enhancements and bug fixes
- GCP Private Link, and more
- Enhancements and bug fixes
- GCP region Asia Northeast 3 (Seoul) available
- Enhancements and bug fixes
- Enhancements and bug fixes
- Native Azure integration, and more
- Frozen data tier and more
- Enhancements and bug fixes
- Azure region Southcentral US (Texas) available
- Azure region East US (Virginia) available
- Custom endpoint aliases, and more
- Autoscaling, and more
- Cross-region and cross-provider support, warm and cold data tiers, and more
- Better feature usage tracking, new cost and usage analysis page, and more
- New features, enhancements, and bug fixes
- AWS region Asia Pacific (Hong Kong)
- Enterprise subscription self service, log in with Microsoft, bug fixes, and more
- SSO for Enterprise Search, support for more settings
- Azure region Australia East (New South Wales)
- New logging features, better GCP marketplace self service
- Azure region US Central (Iowa)
- AWS region Asia Pacific (Mumbai)
- Elastic solutions and Microsoft Azure Marketplace integration
- AWS region Pacific (Seoul)
- AWS region EU West 3 (Paris)
- Traffic management and improved network security
- AWS region Canada (Central)
- Enterprise Search
- New security setting, in-place configuration changes, new hardware support, and signup with Google
- Azure region France Central (Paris)
- Regions AWS US East 2 (Ohio) and Azure North Europe (Ireland)
- Our Elasticsearch Service API is generally available
- GCP regions Asia East 1 (Taiwan), Europe North 1 (Finland), and Europe West 4 (Netherlands)
- Azure region UK South (London)
- GCP region US East 1 (South Carolina)
- GCP regions Asia Southeast 1 (Singapore) and South America East 1 (Sao Paulo)
- Snapshot lifecycle management, index lifecycle management migration, and more
- Azure region Japan East (Tokyo)
- App Search
- GCP region Asia Pacific South 1 (Mumbai)
- GCP region North America Northeast 1 (Montreal)
- New Elastic Cloud home page and other improvements
- Azure regions US West 2 (Washington) and Southeast Asia (Singapore)
- GCP regions US East 4 (N. Virginia) and Europe West 2 (London)
- Better plugin and bundle support, improved pricing calculator, bug fixes, and more
- GCP region Asia Pacific Southeast 1 (Sydney)
- Elasticsearch Service on Microsoft Azure
- Cross-cluster search, OIDC and Kerberos authentication
- AWS region EU (London)
- GCP region Asia Pacific Northeast 1 (Tokyo)
- Usability improvements and Kibana bug fix
- GCS support and private subscription
- Elastic Stack 6.8 and 7.1
- ILM and hot-warm architecture
- Elasticsearch keystore and more
- Trial capacity and more
- APM Servers and more
- Snapshot retention period and more
- Improvements and snapshot intervals
- SAML and multi-factor authentication
- Next generation of Elasticsearch Service
- Branding update
- Minor Console updates
- New Cloud Console and bug fixes
- What’s new with the Elastic Stack
VM configurations
editVM configurations
editFor the Google Cloud infrastructure upgrade, rather than using default baseline configurations, custom machine types unique to Google Cloud are used so individual parameters of each VM can be fine tuned to fit the right blend of RAM:CPU:Disk. To accommodate the custom configuration, a new common nomenclature is introduced to help you easily identify each VM type. This will apply eventually to AWS and Azure instances as well, as we roll out newer versions of VMs for these providers.
For example, Instance ID / SKU: gcp.es.datahot.n2.68x10x45
|
Denotes the cloud provider, GCP in this case or AWS/Azure in future cases. |
|
Denotes that this configuration is an Elasticsearch ( |
|
Denotes that this configuration is running on the GCP N2 family. |
|
Denotes the resource configuration, delimited by “x”. * The first argument ( * The second argument ( * The third argument denotes the ratio of RAM to storage capacity as in 1:X. In this case, for each 1GB of RAM, you will have 45 GB of disk to store Elasticsearch data. |
The new configuration naming convention aligns with the data tiers intended for each configuration type, replacing prior naming conventions of “highio”, “highcpu”, and so on. The following table details the new configurations for data nodes and compares them with prior naming conventions where applicable.
New config name | Notes |
---|---|
gcp.es.datahot.n2.68x10x45 |
This configuration replaces “highio”, which is based on N1 with 1:30 RAM:disk and similar RAM:CPU ratios. |
gcp.es.datahot.n2.68x10x95 |
This is a new configuration that is similar to the first, but with more disk space to allow for longer retention in ingest use cases, or larger catalog in search use cases. |
gcp.es.datahot.n2.68x16x45 |
This configuration replaces “highcpu”, which is based on N1 with 1:8 RAM:disk and similar RAM:CPU ratios. |
gcp.es.datahot.n2.68x32x45 |
This is a new configuration that provides double the CPU capacity compared to “highcpu” or [68-16-1:45] configuration. It is intended for high throughput ingest use cases or intensive search use cases. |
gcp.es.datahot.n2d.64x8x11 |
This is a new configuration powered by AMD processors which offers a better price-performance compared to Intel processors. |
gcp.es.datawarm.n2.68x10x190, gcp.es.datacold.n2.68x10x190 |
These configurations replace “highstorage”, which is based on N1 with 1:160 RAM:disk and similar RAM:CPU ratios. |
gcp.es.datafrozen.n2.68x10x95 |
This configuration replaces the (short lived) gcp.es.datafrozen.n2d.64x8x95 configuration we used for the frozen cache tier. n2d was based on the AMC epyc processor but we found that the Intel-based configuration provides a slightly better cost/performance ratio. We also tweaked the RAM/CPU ratios to align to other configurations and benchmarks. |
For a detailed price list, check the Elastic Cloud deployment pricing table. For a detailed specification of the new configurations, check Elasticsearch Service default GCP instance configurations.
The benefits of the new configurations are multifold:
- By using newer generations of N2 machines, there is a general boost of performance related to new chipsets and faster hardware. On average the boost we witnessed in select benchmarks can reach up to 15%, however, different workloads may exhibit different improvements.
- The existing family types have been extended in terms of disk capacity which translates to a more cost effective infrastructure which in some cases can save up to 80% when calculating cost by disk capacity.
- There are now more instance types to choose from in the hot tier. Rather than the traditional “highio” and “highcpu”, there are now four options to cover the hot data tier which allows to optimize cost/performance further.
In addition to data nodes for storage and search, Elasticsearch nodes also have machine learning nodes, master nodes, and coordinating nodes. These auxiliary node types along with application nodes such as APM servers, Kibana, and Enterprise search have also been upgraded to the new N2 instance types. Both auxiliary node and application node configurations are based on Elasticsearch data node configuration types shown in the previous table.
New config name | Notes |
---|---|
gcp.es.master.n2.68x32x45 |
Master nodes will now be based on the highest CPU rich configuration (68:32). In the past, master nodes were based on a configuration that had ¼ of the CPU for each unit of RAM (was called “highmem”). This will help boost the overall performance and stability of clusters, as master nodes have a critical role in maintaining cluster state and controlling workloads. |
gcp.es.ml.n2.68x16x45 |
ML nodes will maintain the same type of VM configuration as in the past, but will have a new name (and billing SKU) that is consistent with the rest of the naming. |
gcp.es.ml.n2.68x32x45 |
This is a new configuration that is similar to the “gcp.es.ml.n2.68x16x45” config but with 2x more CPU per unit of RAM and similar storage ratio. |
gcp.es.coordinating.n2.68x16x45 |
Same as ML nodes - no configuration change, just a new name. |
gcp.kibana.n2.68x32x45 |
Kibana nodes have been upgraded two steps up as well, to use 4x the CPU as they had when based on “highmem”. This ensures a more performant Kibana and helps with some client side aggregation, as well as responsive UI. |
gcp.apm.n2.68x32x45 |
Same upgrade for APM. Will now use 4x the CPU. |
gcp.integrationsserver.n2.68x32x45 |
Same upgrade for Integrations Server. Will now use 4x the CPU. |
gcp.enterprisesearch.n2.68x32x45 |
Same upgrade for Enterprise Search application servers. Will now use 4x the CPU. |