Files
doc-exports/docs/css/umn/css_04_0002.html
zhengxiu 93d856d5c5 css umn 25.6.0 version
Reviewed-by: Pruthi, Vineet <vineet.pruthi@t-systems.com>
Co-authored-by: zhengxiu <zhengxiu@huawei.com>
Co-committed-by: zhengxiu <zhengxiu@huawei.com>
2025-11-25 11:34:43 +00:00

25 lines
5.0 KiB
HTML

<a name="EN-US_TOPIC_0000002473794364"></a><a name="EN-US_TOPIC_0000002473794364"></a>
<h1 class="topictitle1">Scenarios</h1>
<div id="body0000001426732772"><p id="EN-US_TOPIC_0000002473794364__p158937442224">CSS can be used to build search boxes for websites and apps to improve user experience. You can also build a log analysis platform with it, facilitating data-driven O&amp;M and business operations. CSS vector search can help you quickly build smart applications, such as AI-based image search, recommendation, and semantic search.</p>
<div class="section" id="EN-US_TOPIC_0000002473794364__section560182917278"><h4 class="sectiontitle">Site Search</h4><p id="EN-US_TOPIC_0000002473794364__p8614541101718">CSS can be used to search for website content by keyword as well as search for and recommend commodities on e-commerce sites.</p>
<ul id="EN-US_TOPIC_0000002473794364__ul18460205211179"><li id="EN-US_TOPIC_0000002473794364__li17460135201717">Real-time search: When site content is updated, you can find the updated content in your search within minutes, or even just seconds.</li><li id="EN-US_TOPIC_0000002473794364__li1146035216174">Categorized statistics: You can apply search filters to sort products by category.</li><li id="EN-US_TOPIC_0000002473794364__li246155216171">Custom highlight style: You can define how the search results are highlighted.</li></ul>
</div>
<div class="section" id="EN-US_TOPIC_0000002473794364__section11290124812317"><h4 class="sectiontitle">All-Scenario Log Analysis</h4><p id="EN-US_TOPIC_0000002473794364__p7566185043314">Analyze the logs of Elastic Load Balance (ELB), servers, containers, and applications. In CSS, the Kafka message buffer queue is used to balance loads in peak and off-peak hours. Logstash is used for data extract, transform and load (ETL). Elasticsearch retrieves and analyzes data. The analysis results are visualized by Kibana and presented to you.</p>
<ul id="EN-US_TOPIC_0000002473794364__ul55741333133419"><li id="EN-US_TOPIC_0000002473794364__li3574113318342">High cost-effectiveness: CSS separates cold and hot storage, and decouples computing and storage resources, achieving high performance and reducing costs by over 30%.</li><li id="EN-US_TOPIC_0000002473794364__li95745335346">Ease of use: Perform queries in a GUI editor. Easily create reports using drag-and-drop components.</li><li id="EN-US_TOPIC_0000002473794364__li55741133113416">Powerful processing capability: CSS can import hundreds of terabytes of data per day, and can process petabytes of data.</li></ul>
</div>
<div class="section" id="EN-US_TOPIC_0000002473794364__section16200161703510"><h4 class="sectiontitle">Database Query Acceleration</h4><p id="EN-US_TOPIC_0000002473794364__p53501844134914">CSS can be used to accelerate database queries. E-commerce and logistics companies have to respond to a huge number of concurrent order queries within a short period of time. Relational databases, although having good transaction atomicity, are weak in transaction processing, and can rely on CSS to enhance OLTP and OLAP capabilities.</p>
<ul id="EN-US_TOPIC_0000002473794364__ul1493361155717"><li id="EN-US_TOPIC_0000002473794364__li793312112578">High performance: Retrieve data from hundreds of millions of records within milliseconds. Text, time, numeric, and spatial data types are supported.</li><li id="EN-US_TOPIC_0000002473794364__li89331125718">High scalability: CSS can be scaled to have over 200 data nodes and over 1000 columns.</li><li id="EN-US_TOPIC_0000002473794364__li79335116575">Zero service interruption: The rolling restart and dual-copy mechanisms can avoid service interruption in case of specifications change or configuration update.</li></ul>
</div>
<div class="section" id="EN-US_TOPIC_0000002473794364__section9581045135715"><h4 class="sectiontitle">Vector Search</h4><p id="EN-US_TOPIC_0000002473794364__p20383118175817">When you search for unstructured data, such as images, videos, and corpuses, the nearest neighbors or approximate nearest neighbors are searched based on feature vectors. This has the following advantages:</p>
<ul id="EN-US_TOPIC_0000002473794364__ul1441916451405"><li id="EN-US_TOPIC_0000002473794364__li1831914221053">Efficiency and reliability: The vector search engine provides ultimate search performance and distributed disaster recovery capabilities.</li><li id="EN-US_TOPIC_0000002473794364__li24203451908">Abundant indexes: Multiple indexing algorithms and similarity measurement methods are available and can meet diverse needs.</li><li id="EN-US_TOPIC_0000002473794364__li204201845300">Easy learning: CSS is fully compatible with the open-source Elasticsearch ecosystem.</li></ul>
<div class="fignone" id="EN-US_TOPIC_0000002473794364__fig815013782116"><span class="figcap"><b>Figure 1 </b>Vector search</span><br><span><img id="EN-US_TOPIC_0000002473794364__image698165317224" src="figure/en-us_image_0000002506074335.png"></span></div>
</div>
</div>
<div>
<div class="familylinks">
<div class="parentlink"><strong>Parent topic:</strong> <a href="css_00_0001.html">Product Overview</a></div>
</div>
</div>