Нет описания

DTC 56852fdd57 Update release.yml 1 год назад
.gitee eb4f0a02de Initial commit 2 лет назад
.github 56852fdd57 Update release.yml 1 год назад
conf efdb1eb1d7 203 new format conf files (#205) 1 год назад
dockerfiles b4e5b00f08 207 supporting string key hash in dtc (#208) 1 год назад
docs 7fc26e168d async-conn: rename from async-connector. (#122) 1 год назад
script 97b538f7fa fix_date_sub_function_arg2_need_keyword_INTERVAL (#226) 1 год назад
src c9faaa09c5 remove_create_table_fail_return_logic (#227) 1 год назад
tests 3cfd02d45d 251 fix quote sentament (#223) 1 год назад
.clang-format 8bec0f37c1 update markdown. (#12) 2 лет назад
.gitignore 81b21677a6 V0.2.0 mysql protocol compatible (#29) 2 лет назад
.travis.yml f46d41664f dockerfile: fix bug. (#115) 1 год назад
CMakeLists.txt f55a6ad480 fix bigs (#18) 2 лет назад
LICENSE 222612cab3 license change. 2 лет назад
README.md f878825695 Update README.md 1 год назад
README.zh.md 645754e729 README: update CN readme file for github actions. (#59) 1 год назад

README.md

DTC

DTC - Distributed Table Cache

Overview

DTC is a high performance Distributed Table Cache system designed by JD.com that offering hotspot data cache for databases in order to reduce pressure of database and improve QPS.

The DTC system consists of the following components:

  • Agent - Provides key consistent hash routing in order to reduce connections and improve performance.
  • Dtcd - Provides hot data caching service.
  • Connector - Provides connection and communication between cache and persistent storage database such as MYSQL.

Feature

  • Database Protection
    • protection for null node, prevent cache breakdown.
    • provide long-term data caching, and prevent cache penetration.
    • data source thread available, protect the database with a limited number of connections.
    • Estimated timeout policy to reduce invalid database requests.
  • Data consistency
    • write-through policy, ensure cache and database data consistent.
    • barrier policy to prevent update requests lost while concurrcy.
  • Performance
    • integrated memroy allocation policy to avoid frequent system calls.
    • I/O multiplexing to handle concurrcy requests.
    • multiple data structure models to improve memory performance.
  • Scalability

    • cache node expands horizontally to enhance cache capacity.
    • cache node expands vertically, supports slave reading, and solve the bottleneck of hot keys.
    • provide sharding, supports for persistent storage scalable.

      Performance

  • DTC can process 90,000 QPS of query requests at single-core cpu & single dtc instance.

  • DTC can provide above 3,000,000 QPS query capability with above 99.9% hit rate and less than 200 μs response time in actual distributed scenarios.

    How to Build

    DTC provides docker images for quick start:

  • Start server docker:

    docker pull dtc8/server:latest
    docker run -i -t --name dtc-server -p 127.0.0.1:20015:20015 dtc8/server:latest
    

    Depending on 3rd-party sql parsing engine hsql . For more compile information, click Building.
    Trying a demo, visit QuickStart.

License

JD.com © Copyright 2022 JD.com, Inc.
Apache 2.0. Visit LICENSE for more details.