
Explore resources related to AI & IoT.
To browse resources by type, select an option below.
-
- Select resource type
- 分析報告
- 洞察頁面
- 白皮書
- 白皮書
- 網路研討會
-
分析報告 SAS is a Leader in The Forrester Wave™: Anti-Money Laundering Solutions, Q2 2025SAS Anti-Money Laundering, which helps fight money laundering and terrorist financing with AI, machine learning, intelligent automation and advanced network visualization, is named a Leader in The Forrester Wave.
-
網路研討會 醫療保健中的 AI 技術:強化臨床和營運決策的制定AI 正在徹底改變醫療保健領域。加入 SAS 和 Microsoft 的行列,探索創新的 AI 解決方案,以獲得更完善的病患照護成果並有效提供護理服務。
-
分析報告 IDC MarketScape:2024 年全球決策情報
-
分析報告 SAS 獲評為《Forrester Wave™:2024 年第三季 AI/ML 平台領導者》
-
分析報告 ARC 觀點:《工業級 AI:將資料轉換為洞察和亮眼成果》本份 ARC 觀點報告說明各組織,如何不僅從其工業 AI 計劃中立即獲得回報,還能確保其投資適用於未來。
-
分析報告 SAS 在 Forrester Wave™ 2023 年第二季度 AI 決策平台報告中被評為領導者。The Forrester Wave™:2023 年第二季度 AI 決策平台報告肯定了 SAS 在無縫整合世界級分析工具於決策應用上的表現。
-
分析報告 2024 年 Gartner® 資料科學和機器學習魔力象限™
-
分析報告 IDC MarketScape: Worldwide Machine Learning Operations Platforms 2024
-
洞察頁面 Break stuff . . . servers, rules and the glass ceilingCarla Gentry knows what it’s like to be the only woman on the team and is happy to share her hard-won knowledge with an ever-growing number of female data scientists. She recently shared with us some sage advice for women entering or interested in advancing in the field.
-
網路研討會 Predictive Maintenance: A More Proactive and ROI-Driven Business ModelIncrease uptime and reduce unnecessary capital expenditures with predictive maintenance
-
網路研討會 Real-Time Predictive Analytics: Uncovering Opportunities and Barriers at the Speed of Data FlowJoin us as we discuss how SAS® Event Stream Processing can help organizations uncover data anomalies instantly, before trouble starts or opportunity passes
-
分析報告 ARC Advisory Group Smart Manufacturing – Factoring in Energy Efficiency Alongside Data and AILearn how SAS has been helping manufacturers meet challenges associated with increased complexity and more stringent competitive and regulatory constraints.
-
白皮書 IoT success depends on data governance, security and privacyThe IoT puts intense demands on the data management life cycle. Learn from 10 common mistakes organizations have made with IoT endeavors.
-
分析報告 Artificial Intelligence In Retail: What Now?This RSR Benchmark Report examines retailers’ attitudes about AI/ML technology and whether it can be used to turn data into insights and help retailers better understand the environments they operate in.
-
分析報告 AI in Manufacturing: Enabling Business-Driven Factory InnovationsDiscover how analytics solutions from SAS help manufacturing organizations address major business challenges on the shop floor and how to implement and scale AI-enabled process innovations in factories.
-
分析報告 Advanced Analytics Excellence In Discrete ManufacturingThis paper explains how advanced analytics helps discrete manufacturing achieve operational excellence, including potential benefits, the capabilities an organization needs, and how the organization can align with this approach.
-
分析報告 Maximizing Innovation in Digitally Maturing Process ManufacturingThis report outlines the roadmap that digitally maturing process manufacturers must follow to identify and build the core competencies needed to use transformation as a competitive advantage.
-
分析報告 Data-Driven Grid Reliability: IoT Sensing and Analytics to Enable Predictive Maintenance and Improve ResiliencyLearn how the emergence of artificial intelligence, IoT sensors, advanced analytics and predictive maintenance within utility distribution systems can significantly improve reliability and build resiliency in the power grid.
-
分析報告 SAS: Providing a Comprehensive Approach to the IoT Analytics Life CycleThis IDC Vendor Profile offers IDC's perspective on the IoT strategy of SAS.
-
網路研討會 How Do I Migrate SAS® Event Stream Processing Workloads to Microsoft Azure?Learn how SAS and Microsoft work together to seamlessly migrate SAS Event Stream Processing workloads to Microsoft Azure.
-
網路研討會 IoT Analytics: How to Make Your IoT Data Work for YouJoin Pinnacle Solutions and SAS to learn how you can use IoT analytics to make your IoT data work for you.