A fast and lightweight streaming SQL engine, π powered by ClickHouse
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Why Use Timeplus Proton Β· How is it different from ClickHouse? . Demo Video Β· Deployment Β· What's Next Β· Integrations Β· Contributing Β· Need help?
Timeplus Proton is a stream processing engine and database. It is a fast and lightweight alternative to ksqlDB or Apache Flink, π powered by the libraries and engines in ClickHouse. It enables developers to solve streaming data processing, multi-stream JOINs, sophisticated incremental materialized views, routing and analytics challenges from Apache Kafka, Redpanda and more sources, and send aggregated data to the downstream streaming or database systems. Timeplus Proton is the core engine of Timeplus Enterprise.
- Apache Flink or ksqlDB alternative. Timeplus Proton provides powerful stream processing functionalities, such as streaming ETL, tumble/hop/session windows, watermarks, incremental materialized views maintenance, CDC and data revision processing. In contrast to pure stream processors, it also stores queryable analytical/row based materialized views within Proton itself for use in analytics dashboards and applications.
- Fast. Timeplus Proton is written in C++, with optimized performance through SIMD. For example, on an Apple MacBookPro with M2 Max, Timeplus Proton can deliver 90 million EPS, 4 millisecond end-to-end latency, and high cardinality aggregation with 1 million unique keys.
- Lightweight. Timeplus Proton is a single binary (<500MB). No JVM or any other dependencies. You can also run it with Docker, or on an AWS t2.nano instance (1 vCPU and 0.5 GiB memory).
- Powered by the fast, resource efficient and mature ClickHouse. Timeplus Proton extends the historical data, storage, and computing functionality of ClickHouse with stream processing. Thousands of SQL functions are available in Timeplus Proton. Billions of rows are queried in milliseconds.
- Best streaming SQL engine for Kafka or Redpanda. Query the live data in Kafka or other compatible streaming data platforms, with external streams.
See our architecture doc for technical details and our FAQ for more information.
ClickHouse is an extremely performant Data Warehouse built for fast analytical queries on large amounts of data. While it does support ingesting data from streaming sources such as Apache Kafka, it is itself not a stream processing engine which can transform and join streaming event data based on time-based semantics to detect patterns that need to be acted upon as soon as it happens. ClickHouse also has incremental materialized view capability but is limited to creating materialized view off of ingestion of blocks to a single table. Proton uses ClickHouse as a table store engine inside of each stream (alongside a Write Ahead Log and other data structures) and uses to unify real-time and historical data together to detect signals in the data. In addition, Proton can act as an advanced data pre-processor for ClickHouse (and similar systems) where the bulk of the data preparation and batching is done ahead of ingestion. See Timeplus and ClickHouse for more details on this.
2-minute short videoπ. Check out the full video at YouTube.
DataTalksProtonHandbrake.mp4
curl https://install.timeplus.com/oss | sh
Once the proton
binary is available, you can run Timeplus Proton in different modes:
- Local Mode. You run
proton local
to start it for fast processing on local and remote files using SQL without having to install a full server - Config-less Mode. You run
proton server
to start the server and put the config/logs/data in the current folderproton-data
. Then useproton client
in the other terminal to start the SQL client. - Server Mode. You run
sudo proton install
to install the server in predefined path and a default configuration file. Then you can runsudo proton server -C /etc/proton-server/config.yaml
to start the server and useproton client
in the other terminal to start the SQL client.
For Mac users, you can also use Homebrew to manage the install/upgrade/uninstall:
brew install timeplus-io/timeplus/proton
docker run -d --pull always -p 8123:8123 -p 8463:8463 --name proton d.timeplus.com/timeplus-io/proton:latest
Please check Server Ports to determine which ports to expose, so that other tools can connect to Timeplus, such as DBeaver.
The Docker Compose stack demonstrates how to read/write data in Kafka/Redpanda with external streams.
Don't want to setup by yourself? Try Timeplus in Cloud
SQL is the main interface. You can start a new terminal window with proton client
to start the SQL shell.
Note
You can also integrate Timeplus Proton with Python/Java/Go SDK, REST API, or BI plugins. Please check Integrations
In the proton client
, you can write SQL to create External Stream for Kafka or External Table for ClickHouse.
You can also run the following SQL to create a stream of random data:
-- Create a stream with random data
CREATE RANDOM STREAM devices(
device string default 'device'||to_string(rand()%4),
temperature float default rand()%1000/10);
-- Run the streaming SQL
SELECT device, count(*), min(temperature), max(temperature)
FROM devices GROUP BY device;
You should see data like the following:
ββdeviceβββ¬βcount()ββ¬βmin(temperature)ββ¬βmax(temperature)ββ
β device0 β 2256 β 0 β 99.6 β
β device1 β 2260 β 0.1 β 99.7 β
β device3 β 2259 β 0.3 β 99.9 β
β device2 β 2225 β 0.2 β 99.8 β
βββββββββββ΄ββββββββββ΄βββββββββββββββββββ΄βββββββββββββββββββ
To see more examples of using Timeplus Proton, check out the examples folder.
To access more features, such as sources, sinks, dashboards, alerts, and data lineage, try Timeplus Enterprise locally or create a workspace on Timeplus Cloud.
What features are available with Timeplus Proton versus Timeplus Enterprise?
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The following drivers are available:
- https://github.com/timeplus-io/proton-java-driver JDBC and other Java clients
- https://github.com/timeplus-io/proton-go-driver
- https://github.com/timeplus-io/proton-python-driver
Integrations with other systems:
- ClickHouse https://docs.timeplus.com/proton-clickhouse-external-table
- Docker and Testcontainers https://docs.timeplus.com/tutorial-testcontainers-java
- Sling https://docs.timeplus.com/sling
- Grafana https://github.com/timeplus-io/proton-grafana-source
- Metabase https://github.com/timeplus-io/metabase-proton-driver
- Pulse UI https://github.com/timeplus-io/pulseui/tree/proton
- Homebrew https://github.com/timeplus-io/homebrew-timeplus
- dbt https://github.com/timeplus-io/dbt-proton
We publish full documentation for Timeplus Proton at docs.timeplus.com alongside documentation for Timeplus Enterprise.
We also have a FAQ for detailing how we chose Apache License 2.0, how Timeplus Proton is related to ClickHouse, and more.
We welcome your contributions! If you are looking for issues to work on, try looking at the issue list.
Please see the wiki for more details, and BUILD.md to compile Timeplus Proton in different platforms.
Please use GitHub Discussions to share your feedbacks or questions for Timeplus Proton.
For filing bugs, suggesting improvements, or requesting new features, open GitHub Issues.
To connect with Timeplus engineers or inquire about Timeplus Enterprise, join our Timeplus Community Slack.
Proton uses Apache License 2.0. See details in the LICENSE.