Real-Time Analytics
Sub-second dashboards and data products on petabytes of data at any concurrency
Data Warehousing
Sub-second analytics on open lakehouse formats with no vendor lock-in
Observability in the AI Era
The most cost-effective alternative to Elasticsearch observability
Context Engineering
Hybrid search and fresh context for RAG, agents, and LLMs
Replaced a Grafana Loki stack with an Apache Doris–based logging system to store and query model training and inference logs at petabyte scale.
Consolidated Presto, Druid, Kudu, and Trino into a single Apache Doris + Paimon lakehouse running across 40+ clusters on petabytes of data.
Migrated from PostgreSQL to VeloDB Cloud to serve 10M+ users with real-time on-chain analytics spanning 190+ blockchains and 500+ DEXs.
Built hybrid search on Apache Doris 4.0 — combining filters, BM25, and vector similarity over 1B+ embeddings — on a single server.
10,000+ Enterprises Trust Apache Doris and VeloDB
Sub-second latency under concurrency, heavy updates, and complex joins — all at once.
Most databases benchmark on clean, single-table scans. Real workloads often face the following challenges: thousands of concurrent users, data that changes by the hour, and multi-table joins. VeloDB is engineered to hold sub-second latency through all these challenges, so dashboards, data products, and AI apps stay fast as the workloads scale.

One engine for multimodal data, queried in standard SQL.
Structured tables, semi-structured JSON, full-text, and vector embeddings are stored in one place and queried with a single engine and a single SQL statement. Reduce the number of databases you have to manage and maintain so you can focus on innovation.

Efficiency from the architecture and up.
Most analytics costs come from running and maintaining many separate systems. VeloDB lowers those costs by simplifying the stack. It replaces the search database, vector store, Redis cache, and surrounding ETL layers with built-in caching and materialized views. VeloDB Cloud separates storage and compute while integrating with open lakehouse, so compute scales elastically, and bursty agent workloads only cost you while they run. On top of that, Doris uses columnar ZSTD compression and tiered object storage to bring down storage costs.

Truly open, fully compatible with the open-source Apache Doris.
VeloDB is built on Apache Doris and stays fully compatible with it. You get the same SQL, the same MySQL wire protocol, and the same connectors as the open-source project, so anything you build on Apache Doris runs on VeloDB without changes and ports back just as easily. VeloDB also integrates with open catalogs like Polaris and Unity, and open table formats like Iceberg, Hudi, and Delta.

Sub-second dashboards and data products on petabytes of data at any concurrency.
Sub-second analytics on open lakehouse formats with no vendor lock-in.
The most cost-effective alternative to Elasticsearch observability.
Hybrid search and fresh context for RAG, agents, and LLMs.
Unify data ingestion, lakehouse access, analytics, search, and AI workloads in one engine.
Analytics, search, and AI retrieval in one engine — open source, MySQL-compatible, runs in your cloud.


