当前位置:网站首页>Behind every piece of information you collect, you can't live without TA
Behind every piece of information you collect, you can't live without TA
2022-07-25 20:22:00 【Hua Weiyun】
With the development of Internet Information Technology
Personalized recommendation has already been integrated into our life
All kinds of information collected in mobile phones
There is... Behind it TA
As a leading content ecosystem service platform in China , Shanghai Yueke Information Technology Co., Ltd ( abbreviation “ Reading guests ”) Drive operations through data analysis , Provide content ecosystem services on a large scale , And provide advertising technology services based on content scenes , Accurately match content and users with technology , Maximize content revenue .
Readers have strong content services and advertising capabilities , More than ten thousand content updates and hundreds of millions of exposures every day , Huge data volume and massive high concurrency , It challenges the database that supports the business application of reading customers .

Storage problems under the surge of data
Database as the cornerstone of carrying massive data , Bear the heavy responsibility of guarding enterprise data assets , It also plays a key role in the digital transformation of enterprises .
Data volume surges , What readers use is based on ECS self-built Redis Databases are under great pressure in terms of high concurrency and stability , The cost also rises :
▌ Performance issues
Slow queries often occur , There are a lot of alarms every day .
Professional analysis : In the configuration cache scenario , The reader used Redis Store configuration policy information . There are usually some big key, Big key Open source Redis There are often performance problems in blocking requests .
▌ Massive data with high concurrent access
Access timeouts often occur in businesses , You even need to restart self built Redis. Again , There are also a lot of warnings every day .
Professional analysis : Because the business adopts distributed deployment , Yes Redis There are a lot of concurrent requests , build by oneself sentinel sentry Redis The number of connections is maintained at 3 ten thousand , Open source Redis Unbearable .
▌ Data storage is expensive
The amount of data is surging , Bring pressure to business operation , The cost goes up .
Professional analysis : Bron filters protobuf More and more serialized data , increased TB level . And open source Redis Memory cost pain points 、 Stability pain points begin to appear .
▌ Relocation compatibility concerns
If you choose to go to the cloud , Readers must modify their business code , Then reissue the version 、 go online , The burden of business transformation is large .
Professional analysis : At the beginning, Yueke built two different architectures Redis colony , Namely Cluster Clusters and Sentinel colony . Each cluster corresponds to the corresponding client code , And do not support each other .
Personalized recommendations in the cloud native era
The age of cloud Nativity , Cloud native database based on unified cloud infrastructure , Become the first choice for enterprises to go to the cloud . Yueke follows the development trend of the times , I chose Huawei cloud native database GaussDB(for Redis) As the data base of enterprise digital transformation , It completely replaces the original self built Redis database , Business development has reached a new level .
▌ Performance is remarkable , Content recommendation is faster
Aiming at the performance problems in reader configuration cache business ,GaussDB(for Redis) Adopt a combination of distributed architecture and multithreading , Provides excellent performance , Ensure the continuous and efficient operation of the business . Compared to open source Redis The single thread architecture of , GaussDB(for Redis) The multi-threaded architecture of has more advantages , Even if there is a big key, It will not cause global performance damage .
After successful relocation , Readers' own response timeout alarms are greatly reduced , Configure cache service response in a timely and efficient manner , Content recommendations reach the client faster .
▌ Mass storage , Content recommendation is more stable
GaussDB(for Redis) Provide exclusive connection resources , Customers will build their own sentinels Redis Move to 4 node GaussDB(for Redis) After the instance , Business is really exclusive 4 ten thousand Connect several resources , And are within the appropriate threshold , Very stable operation , It completely solves the problem of connection number of customer reading business , Under the 100 million level flood peak scenario, you can also calmly face , Content recommendation is more stable .
▌ Blum filter business cost savings 80%
GaussDB(for Redis) Adopt the architecture of separation of storage and calculation , You can buy and calculate independently 、 Storage resources , Avoid open source Redis The frequent waste of computing power costs ; It has strong data compression capability , Especially for the... In the bloom filtering scene protobuf Serializing data works wonders , Realized TB Level data to GB Effective compression of level , The release of the 80% The cost of storage , Completely beyond the customer's imagination , It also paves the way for customers' future business growth .
▌ There is no need to transform the application , One click relocation
GaussDB(for Redis) Provide “Proxy Universal ” Instance type , Compatible with StandAlone client 、Cluster Client and Sentinel client , There is no need to modify the client business code , And it did “ One architecture is fully compatible ”、“ Business relocation 0 reform ”, Completely dispel the concerns of readers about relocation compatibility . Supported by the R & D team , All dozens of self built units were completed in one week Redis, It realizes efficient and smooth senseless migration .
Cloud native database GaussDB(for Redis) It not only improves the service efficiency of reading customers , Make personalized recommendation faster and more stable , It also reduces storage and transformation costs , It has laid a cloud foundation for the future development of the enterprise , Help readers achieve higher quality information touch .
【 Special offers for new users 】
GaussDB(for Redis)8GB
The first purchase of new users 1 year 1530 element
And RDS for MySQL Combined order
Enjoy the fold up (765 element )
More special offers
“ code ” Learn more about
▼

边栏推荐
- QQ是32位还是64位软件(在哪看电脑是32位还是64位)
- 网络协议:TCP Part2
- Network RTK UAV test [easy to understand]
- Stock software development
- Proxy实现mysql读写分离
- PMP adopts the latest exam outline, here is [agile project management]
- How to set tiktok mobile network environment? How can tiktok break the playback volume?
- 飞行器pid控制(旋翼飞控)
- [today in history] June 28: musk was born; Microsoft launched office 365; The inventor of Chua's circuit was born
- 毕业从事弱电3个月,我为什么会选择转行网络工程师
猜你喜欢

9.< tag-动态规划和子序列, 子数组>lt.718. 最长重复子数组 + lt.1143. 最长公共子序列
![[cloud native | learn kubernetes from scratch] VIII. Namespace resource quotas and labels](/img/7e/2bdead512ba5bf5ccd0830b0f9b0f2.png)
[cloud native | learn kubernetes from scratch] VIII. Namespace resource quotas and labels

Volcanic engine Xiang Liang: machine learning and intelligent recommendation platform multi cloud deployment solution officially released

推荐系统专题 | MiNet:跨域CTR预测

Introduction and construction of consul Registration Center

【高等数学】【4】不定积分

MySQL 日期【加号/+】条件筛选问题

Vivo official website app full model UI adaptation scheme

wallys//IPQ5018/IPQ6010/PD-60 802.3AT Input Output 10/100/1000M
![Partial interpretation of yolov7 paper [including my own understanding]](/img/80/95d00565c4ec89a388ae4386801a02.png)
Partial interpretation of yolov7 paper [including my own understanding]
随机推荐
导电滑环在机械设备方面的应用
JVM (XXIII) -- JVM runtime parameters
"Share" devaxpress asp Net v22.1 latest version system environment configuration requirements
Myormframeworkjdbc review and problem analysis of user-defined persistence layer framework, and thought analysis of user-defined persistence layer framework
网络爬虫原理解析「建议收藏」
[today in history] July 2: BitTorrent came out; The commercial system linspire was acquired; Sony deploys Playstation now
Three skills of interface request merging, and the performance is directly exploded!
Sentinel simple current limiting and degradation demo problem record
FormatDateTime说解[通俗易懂]
4. Server startup of source code analysis of Nacos configuration center
Apache Mina framework "suggestions collection"
RF, gbdt, xgboost feature selection methods "recommended collection"
【高等数学】【8】微分方程
[today in history] July 15: Mozilla foundation was officially established; The first operation of Enigma cipher machine; Nintendo launches FC game console
从底层结构开始学习FPGA(16)----PLL/MMCM IP的定制与测试
移动web布局方法
PMP adopts the latest exam outline, here is [agile project management]
使用cookie登录百度网盘(网站使用cookie)
2022.7.24-----leetcode.1184
Array of sword finger offer question bank summary (I) (C language version)