范斌-加速AI推理与检索生成:在PB级数据【Alluxio-范斌】湖上实现Parquet查询1000倍性能提升.pdf

编号:724351 PDF 29页 3.26MB 下载积分:VIP专享
下载报告请您先登录!

范斌-加速AI推理与检索生成:在PB级数据【Alluxio-范斌】湖上实现Parquet查询1000倍性能提升.pdf

1、加速AI推理与检索生成:在PB级数据湖上实现Parquet查询1000倍性能提升Bin Fan,VP of Technology A01The HookThe Challenge:Sub-Millisecond Point Lookups on Petabyte Data Lakes?Executing point lookup queries like“SELECT ID,DATA FROM TABLE WHERE ID=123”over partitioned Iceberg data lake(Parquet)of tens or even hundreds of PBon object

2、 stores(e.g.,S3)within sub-millisecondData Lake AppsWhy This Matters-Agentic Memory:-AI Agents require instant recall of vast historical knowledge and context.-Online Feature Store:-Real-time inference demands immediate access to fresh,relevant features.-Real-time Personalization&Recommendation:-Del

3、ivering personalized experiences in milliseconds is key to user engagement and conversion.These use cases are driving the need for extreme low-latency access to large-scale data.Common Approaches&Their Limitations:OLAP EnginesHow it works:Executing point lookup queries directly against S3 Parquet vi

4、a an OLAP engine.Pros:-Mature ecosystem,well-supported.-Handles complex analytics.Cons:-Overkill:Heavyweight for simple key-value lookups.-High Latency&Concurrency:Query planning,scheduling,and full Parquet scan overheads make sub-millisecond unachievable.Data Lake Agentic AppsQuery EngineCommon App

5、roaches&Their Limitations:In-Memory KV StoresHow it works:Exporting tables or relevant data portions into an In-Memory KV Stores.Pros:-Low Latency:Fast key-value access.Cons:-Prohibitive Cost at Scale:Extremely expensive to fit Petabytes of data into memory.-Data Sync Complexity&Staleness:Requires E

6、TL pipelines,leading to data lag and consistency issues(the Dual-Store Problem).-Operational Overhead:Managing two separate data systems.In-memory KV StoreData Lake Data CopyAgentic AppsImportParquet on S3:Why Its Not Natively Sub-Millisecond?Data Lake AppsHow it works:Parquet files are self-indexed

友情提示

1、下载报告失败解决办法
2、PDF文件下载后,可能会被浏览器默认打开,此种情况可以点击浏览器菜单,保存网页到桌面,就可以正常下载了。
3、本站不支持迅雷下载,请使用电脑自带的IE浏览器,或者360浏览器、谷歌浏览器下载即可。
4、本站报告下载后的文档和图纸-无水印,预览文档经过压缩,下载后原文更清晰。

本文(范斌-加速AI推理与检索生成:在PB级数据【Alluxio-范斌】湖上实现Parquet查询1000倍性能提升.pdf)为本站 (Flechazo) 主动上传,三个皮匠报告文库仅提供信息存储空间,仅对用户上传内容的表现方式做保护处理,对上载内容本身不做任何修改或编辑。 若此文所含内容侵犯了您的版权或隐私,请立即通知三个皮匠报告文库(点击联系客服),我们立即给予删除!

温馨提示:如果因为网速或其他原因下载失败请重新下载,重复下载不扣分。
客服
商务合作
小程序
服务号
折叠