当前位置:首页 >英文主页 >中英对照 > 报告详情

Gartner:2026年数据分析和人工智能规划指南(英文版)(13页).pdf

上传人: 1****1 编号:1091606 2026-01-28 13页 522.78KB

下载:

1、Sumit Agarwal,Georgia OCallaghan,Christopher Long,Wilco van Ginkel,Maryam Hassanlou,Zain Khan,Cuneyd Kaya,Ral Arrabales2026 Planning Guide for Analytics and Artificial IntelligenceGartner InsightsGartner,Inc.|G00837539Page 1 of 282026 Planning Guide for Analytics and ArtificialIntelligence13 October

2、 2025-ID G00837539-30 min readBy:Sumit Agarwal,Georgia OCallaghan,Christopher Long,Wilco van Ginkel,Maryam Hassanlou,Zain Khan,Cuneyd Kaya,Ral ArrabalesInitiatives:Analytics and Artificial Intelligence for Technical Professionals;Architect,Implement and Scale Data and Analytics Solutions;Generative

3、AI Resource Center In 2026,organizations must maximize business value whileaccelerating AI and analytics implementations.To achieve this,data and analytics technical professionals should utilize allavailable data,design modular and flexible architectures,andimplement robust governance to ensure trus

4、t.OverviewKey FindingsThe convergence of analytics and AI enables organizations to analyze structuredand unstructured data through conversational interfaces.While this approach istransformative,it depends on the maturity of AI agents,large language model(LLM)technologies and semantic architectures t

5、o deliver reliable analytical outcomes.More organizations are deploying generative AI(GenAI)use cases in production.Most implementations focus on productivity gains,but face challenges with useradoption and achieving measurable returns on investment.Heightened risk perception and regulatory scrutiny

6、 around GenAI have increasedorganizational concerns and delayed approvals and implementations.Risks stemfrom the technologys black-box nature and concerns around safety,data privacyand reliability.The pressure to leverage data for competitive advantage and better decision making,alongside rapidly ev

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。
1. **核心趋势**:2026年组织需加速AI与分析实施以最大化业务价值,关键趋势包括整合结构化与非结构化数据、从AI助手转向AI工作流、加强AI治理与技能提升。 2. **数据洞察**:82%的CIO认为组织变革加速;仅32%的 analytics 团队采用集中式管理,多数为分布式协作。 3. **技术方向**:需通过语义层(如知识图谱)、RAG、文本转SQL等技术实现多结构化数据分析;采用分析网格(Analytics Mesh)平衡联邦化架构与治理。 4. **风险与挑战**:GenAI面临黑箱问题、安全隐私风险及用户采用障碍,需通过安全设计、零信任架构及AI素养计划应对。 5. **技能需求**:数据工程师需向分析工程师转型,掌握业务语义映射、指标存储及CI/CD实践。
**AI如何改变分析?** **数据如何整合?** **AI治理怎么做?**
客服
商务合作
小程序
服务号
折叠