当前位置:首页 >英文主页 >中英对照 > 中译版报告详情

Snowflake:2025湖仓分析与人工智能必备指南:为AI新时代设计企业分析体系(中译版)(14页).pdf

上传人: 1****1 编号:939020 2025-10-21 14页 6.31MB

下载:

1、LAKEHOUSE ANALYTICS AND AIDesigning enterprise analytics for the new era of AIESSENTIAL GUIDETABLE OF CONTENTSThe Imperative of Lakehouse Analytics in the Age of AI .3The Open Lakehouse:Storage,Catalog and Compute .4Architecting a Resilient Lakehouse Analytics and AI Practice .6Common Pitfalls of Tr

2、aditional Lakehouse Solutions .8Snowflake for Lakehouse Analytics and AI .10Charting Your Course:A Practical Transition Strategy .12Conclusion:From Data to Impact .13Table of Contents|2 ESSENTIAL GUIDE TO LAKEHOUSE ANALYTICS AND AITHE IMPERATIVE OF LAKEHOUSE ANALYTICS IN THE AGE OF AIFor data leader

3、s responsible for shaping their organizations future architects,CIOs and CDOs the strategic challenge is no longer just about managing data.Its about unifying a vast and varied data estate to power todays business intelligence and AI-driven innovation.The answer for many forward-thinking organizatio

4、ns with an in-house data engineering team is the open lakehouse.This modern architectural approach promises to deliver the best of two worlds:the performance and governance of a traditional data warehouse combined with the flexibility and scale of a data lake.A lakehouse architecture untangles stora

5、ge,catalog and compute,providing the flexibility to choose the right tools for each team.A lakehouse architecture untangles storage,catalog and compute,providing the flexibility to choose the right tools for each team.The emergence of Apache Iceberg as the leading vendor-neutral and interoperable op

6、en table format has accelerated this trend by making it easier to bring tools to your data,rather than data to your tools.The result is greater data democratization by empowering organizations to rapidly adopt new tools,drive faster innovation,and scale analytics and AI initiatives all via a single

word格式文档无特别注明外均可编辑修改,预览文件经过压缩,下载原文更清晰!
三个皮匠报告文库所有资源均是客户上传分享,仅供网友学习交流,未经上传用户书面授权,请勿作商用。
根据《Lakehouse Analytics and AI Essential Guide》的内容,以下是全文关键点的概括: 1. **湖仓架构的重要性**:湖仓架构结合了传统数据仓库的性能和治理能力,以及数据湖的灵活性和可扩展性,是应对AI时代数据分析需求的理想选择。 2. **湖仓架构的核心组件**:包括存储层(使用云对象存储)、目录层(如Apache Iceberg)和计算层(多种计算引擎)。 3. **构建弹性湖仓架构**:需关注可扩展性、可访问性、安全性和协作性,确保数据平台支持多样化的技能和工作负载。 4. **传统湖仓解决方案的常见问题**:包括性能瓶颈、迁移成本高、安全模型碎片化、跨云障碍、数据共享复杂性以及缺乏对智能AI工作流程的支持。 5. **Snowflake湖仓解决方案**:提供单一引擎、统一安全治理、无数据移动的数据统一、易于共享的AI数据产品等功能,助力企业快速创新并从数据中获得更多价值。
"湖仓一体,AI时代新引擎?" AI时代数据新策略?" "Snowflake助力湖仓,AI创新加速器?"
客服
商务合作
小程序
服务号
折叠