Chat with us, powered by LiveChat
Cut Your Kafka Cloud Cost by 10X
Read More

Cloud-Native Streaming Data Platform for AI

Fully compatible with Apache Kafka®
All data stored on S3, making the Broker stateless
Iceberg data-ready, poised for Lakehouse
Built-in 300+ Kafka connectors
Ultimate cost optimization for the most efficient Kafka cloud billing
Product definition of AutoMQ.
60
%+
Largest automotive companies
6
/10
6 out of 10 Internet titans
50
+ GiB/s
Data ingestion and fanout
130
+
Cloud provider regions available

Unified Cloud-Native Streaming Data Platform

AutoMQ offers a comprehensive Kafka®-compatible streaming data platform, featuring built-in developer tools, a rapidly expanding connector ecosystem, seamless integration, effortless scalability, and robust security for any environment.

Unified Cloud-Native Streaming Data Platform
Driving Data Streaming Excellence

Superior to Other Kafka Solutions

Cost-Effective Advanced Architecture

Storage costs reduced by up to 90%
Elastic scalability reduces idle costs
Completely eliminates cross-AZ traffic fees

Complete Separation of Resources Such as Memory, IOPS, and Storage.

Compute-storage separation for independent scaling
Read-write separation for performance assurance
Hot-cold data separation for stable cold read performance without PageCache pollution and zero-copy

Extreme Elasticity & Auto-Scaling

No partition data migration, safe expansion even at high watermarks
No over-provisioning, avoid idle resources
Auto-scaling, pay-as-you-go

Superior Performance to Kafka

30% less P99 send latency
5x higher throughput in catch-up read
Partition reassignment 800x faster than Kafka

Minimized Downtime

Offload storage complexity to EBS and S3
50+ self-healing rules for network, OS, disk, and
JVM anomalies
Partitions are automatically reassigned in seconds for rapid recovery

100% Apache Kafka Compatibility

Supports versions 0.9 to 3.9
Fully compatible with Kafka Client API/SDK/CLI/Connectors
One-click Kafka Linking migration tool

Table Topic: Unifying Streaming and Analytics

AutoMQ's shared storage architecture natively supports streaming data ingestion into data lakes, enabling real-time writing of Topic data into Iceberg tables. With built-in Schema Registry and Auto-Scaling capabilities, there's no need for traditional ETL tasks or manual schema management.

Trusted by Enterprises

400+ Billion
Events Processed Weekly
Grab is the leading superapp in Southeast Asia, offering a suite of services consisting of deliveries, mobility, financial services and others. Grab's streaming platform fluctuates with user activity, time, weather, and events,  resources are over-provisioned for peak times. This leads to waste and operational burdens.

AutoMQ eliminates the need for Grab to reserve capacity as it previously did, and significantly enhancing resource utilization.
Yongliang
Grab Lead Site Realiability Engineer
100+ Million
MAU
TB Level
Peak Outbound Bandwidth
By leveraging cloud-native architecture and tiered storage, Kafka accommodates vast amounts of real-time data. However, the challenge lies in flexible scaling and cost optimization. AutoMQ, with its new architecture based on EBS shared storage and object storage, provides significant elasticity improvements for scaling. Its feature of separating storage and computing aligns well with current operational requirements based on Kubernetes. When combined with RedNote's current messaging engine architecture, it can lead to greater cost savings and efficiency gains.
Yihao Zhang
Storage Expert of RedNote
6000+
Nodes
1 TB/s
Peak Outbound Bandwidth
JD initially used Kafka, but the double triple-replication strategy led to nine times data redundancy, resulting in six copies being stored. By adopting AutoMQ, which directly relies on the underlying cloud storage CubeFS, the need for upper-layer replication is eliminated.

The architecture is expected to save two-thirds of storage costs when fully implemented. AutoMQ's stateless computing layer perfectly meets the requirements for containerization transformation, significantly enhancing system flexibility.
Hou Zhong
Architect of JD
10+ Million
Cars Sold Worldwide
PB Level
Storing Data
Geely Auto Group originally used Apache Kafka, the constraints of its architecture made it difficult to scale the cluster storage. Therefore, the only way to avoid expanding the cluster storage was to reduce the data retention time, which had a certain impact on the business.

AutoMQ completely solved the pain point of Kafka's elastic scaling, allowing the cluster to scale up and down quickly, safely, and automatically, greatly reducing the complexity of Kafka's scaling operations.
Hong Lvhang
Chief Engineer of Digital Infrastructure
100+ Million
Serving Customers Worldwide
40+ GB/s
Cluster Maximum Throughput
Poizon used to rely on Kafka to build the observability platform, requiring a team to spend several days each quarter on scaling operations. Since adopting AutoMQ, data storage has been moved to object storage, making the compute layer stateless and fully compatible with Kafka.

This has enabled automatic elastic scaling without manual intervention, significantly reducing cloud resource costs by up to 85%.
Hao
Head of Stability, Poizon
400 Million
Registered Users
20+ GB/s
Peak Throughtput
Asia's Quora, Zhihu (NYSE: ZH), has significantly reduced operational complexity and saved a lot of costs by using AutoMQ instead of Kafka. Through this strategic implementation, Zhihu has not only streamlined its data operations but also embraced technical innovations that AutoMQ offers over traditional Apache Kafka, ensuring enhanced performance, scalability, and efficiency. Check out this customer case to see how AutoMQ leverages technical innovations on Kafka to help Zhihu build a modern data infrastructure.

Start Your AutoMQ Journey Today

Contact us to schedule an online meeting to learn more, request PoC assistance, or arrange a demo.
扫码加微信咨询