Cockroach Labs is the creator of CockroachDB, the cloud-native, resilient, distributed SQL database enterprises worldwide trust to run mission-critical AI and other applications that scale fast, avert and survive disaster, and thrive everywhere. It runs on the Big 3 clouds, on prem, and in hybrid configurations powering Fortune 500, Forbes Global 2000, and Inc. 5000 brands, and game-changing innovators, including OpenAI, CoreWeave, Adobe, Netflix, Booking.com, DoorDash, FanDuel, Cisco, P&G, UiPath, Fortinet, Roblox, EA, BestBuy, SpaceX, Nvidia, the USVA, and HPE. Cockroach Labs has customers in 40+ countries across all world regions, 25+ verticals, and 50+ Use Cases. Cockroach Labs operates its own ISV Partner Ecosystem powering Payments, Identity Management (IDM/IAM), Banking & Wallet, Trading, and other high-demand use cases. Cockroach Labs is an AWS Partner of the Year finalist and has achieved AWS Competency Partner certifications in Data & Analytics and Financial Services (FSI). CockroachDB pricing is available at https://www.cockroachlabs.com/pricing/
Product | Market Share (%) |
---|---|
CockroachDB | 4.2% |
SQL Server | 15.5% |
Oracle Database | 12.6% |
Other | 67.7% |
Title | Rating | Mindshare | Recommending | |
---|---|---|---|---|
SQL Server | 4.2 | 15.5% | 93% | 270 interviewsAdd to research |
Teradata | 4.1 | 4.5% | 87% | 77 interviewsAdd to research |
Company Size | Count |
---|---|
Small Business | 6 |
Midsize Enterprise | 1 |
Large Enterprise | 4 |
Company Size | Count |
---|---|
Small Business | 84 |
Midsize Enterprise | 43 |
Large Enterprise | 253 |
Vector, RAG, and GenAI Workloads
CockroachDB includes native support for the VECTOR data type and pgvector API compatibility, enabling storage and retrieval of high-dimensional embeddings. These vector capabilities are critical for Retrieval-Augmented Generation (RAG) pipelines and GenAI workloads that rely on similarity search and contextual embeddings. By supporting distributed vector indexing within the database itself, CockroachDB removes the need for external vector stores and allows AI applications to operate against a single, consistent data layer.
C-SPANN Distributed Indexing
At the core of CockroachDB’s vector search capabilities is the C-SPANN indexing engine. C-SPANN provides scalable approximate nearest neighbor (ANN) search across billions of vectors while supporting incremental updates, real-time writes, and partitioned indexing. This ensures low-latency retrieval in the tens of milliseconds, even under high query throughput. The algorithm eliminates central coordinators, avoids large in-memory structures, and leverages CockroachDB’s sharding and replication to deliver scale, resilience, and global consistency.
Machine Learning and Apache Spark Integration
CockroachDB integrates with modern ML workflows by supporting embeddings generated through frameworks such as AWS Bedrock and Google Vertex AI. Its compatibility with the PostgreSQL JDBC driver allows seamless integration with Apache Spark, enabling distributed processing and advanced analytics on CockroachDB data.
PostgreSQL Compatibility and JSON Support
CockroachDB speaks the PostgreSQL wire protocol, so applications, drivers, and tools designed to work with Postgres can connect to CockroachDB without modification, enabling seamless use of familiar SQL features and integration with the wider Postgres ecosystem. This includes support for advanced data types such as JSON and JSONB, which allow developers to store and query semi-structured data natively.
Geospatial and Graph Capabilities
CockroachDB also provides first-class geospatial data support, allowing developers to store, query, and analyze spatial data directly in SQL. For graph workloads, CockroachDB employs JSON flexibility to represent relationships and delivers query capabilities for graph-like traversals. This combination enables hybrid applications that merge relational, geospatial, document, and graph data within a single platform.
Analytics, BI, and Integration
To support high-performance analytics and BI, CockroachDB supports core analytical use cases and functions including Enterprise Data Warehouse, Lakehouse, and Event Analytics, and offers materialized views for precomputing complex joins and aggregations. Its PostgreSQL wire compatibility ensures direct connectivity with all relevant BI and analytics apps and tools including Amazon Redshift, Snowflake, Kafka, Google BigQuery, Salesforce Tableau, Databricks, Cognos, Looker, Grafana, Power BI, Qlik Sense, SAP, SAS, Sisense, and TIBCO Spotfire. Data scientists can interact with CockroachDB through Jupyter Notebooks, querying structured and semi-structured data and loading results for analysis. Change data capture (CDC) streams provide real-time updates to analytics pipelines and feature stores, keeping downstream systems fresh and reliable. Columnar vectorized execution accelerates query processing, optimizes transactional throughput, and minimizes latency for demanding distributed workloads.
MOLT AI-Powered Migration
Organizations often know their data infrastructure is not supporting the business, but find it too painful to change. CockroachDB’s MOLT (Migrate Off Legacy Technology) is designed to enable safe, minimal-downtime database migrations from legacy systems to CockroachDB. MOLT Fetch supports data migration from PostgreSQL, MySQL, SQL Server, and Oracle, with SQL Server and DB2 coming soon. CockroachDB also has a portfolio of data replication platform integrations including Precisely, Striim, Qlik, Confluent, IBM, etc.
Together, these capabilities ensure that CockroachDB supports both operational and analytical workloads, bridging traditional SQL applications with emerging Gen AI and ML use cases.
Baidu, Kindred, Tierion, Heroic Labs, Gorgias
Author info | Rating | Review Summary |
---|---|---|
Manager, Software Engineering at a tech vendor with 10,001+ employees | 4.0 | I've used CockroachDB for two years with Hasura, valuing its scalability, resilience, and SQL features. Setup was simple, support responsive, though UI and latency can improve. Overall, it effectively supports our moderate-scale, cloud-native application needs. |
Software Engineer at a consultancy with self employed | 5.0 | I evaluated CockroachDB on various setups, finding it compatible with PostgreSQL protocols, which allowed easy integration with existing applications. Its extensive documentation and open-source model are valuable, though the serverless pricing can be confusing. It provides good ROI and scalability. |
Student at Univerzita obrany | 4.0 | I am exploring CockroachDB and YugaByteDB for school applications, testing them alongside PostgreSQL. CockroachDB's distributed nature and geo-replication are valuable, though I wish for better PostgreSQL compatibility, especially concerning connection strings and technical integrations. |
Senior Principal Architect ,Technology Strategy at Discover Financial Services | 4.0 | I find CockroachDB valuable due to its resilience and geo-partitioning features, which are essential for my company's needs. However, the automatic failover capability needs improvement. We haven't used other solutions, nor have we considered alternate cloud providers. |
Chief Information Officer (CIO) at a tech services company with 51-200 employees | 4.0 | CockroachDB perfectly suits our legal and compliance needs, allowing us to keep EU and Singapore data isolated while maintaining global instances. Although it's not enterprise-level yet, its lower support costs and distributed nature make it valuable for us. |
Staff DBRE at SecurityScorecard | 4.0 | I value CockroachDB's ability to solve data residency issues with auto geo-partitioning, reducing costs and improving performance by keeping data close to users. The engine could improve with AI to optimize partition key usage, enhancing query efficiency. Overall, it's cost-effective. |
Co-Founder at Afriziki | 4.5 | I use CockroachDB for its ability to handle high-velocity data and its compatibility with Postgres. It offers valuable security features and automatic rebalancing, but it needs better extensibility and integration, particularly with tools like Kafka. |
Technology Lead at a tech vendor with 10,001+ employees | 4.0 | I found CockroachDB valuable for its node syncing feature, which is efficient at 0.54 milliseconds. However, improvements are needed in store processes. It effectively synced our nodes but had no return on investment or considerations of alternate solutions. |