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1、Hands-on RAG WorkshopJeff FriedPatrick SulinSuprateem BanerjeeInterSystemsInterSystems Corporation.All Rights Reserved.Over 40%of agentic AI projects will be canceled by the end of 202752%of generative AI(GenAI)projects will be retired after the proof-of-concept(POC)stage through 2026Results demonst

2、rate that RAG is essential:Without retrieval,exact match accuracy is 0%across all tasks,whereas retrieval yields substantial gains in execution accuracy(up to 79.30%)and component match accuracy(up to 78.86%)arXiv:2602.07086 cs.SE 6 Feb 2026AgendaIntroductionsRAG Why and WhatFramework(7 steps to suc

3、cessful RAG)RAG Hands-on TutorialRAG RecipesAgentic AI&Context EngineeringResearch&Industry DirectionsTakeawaysYour Instructors TodayJeff FriedPatrick SulinSuprateem BanerjeeFounding SponsorContact coordinates:Handle 60%of NYStock Exchange trafficManage over 1 BillionPatient Records WorldwideTrack 2

4、0 Million Shipping ContainersInterSystems Impact in Healthcare,Financial Services,and Supply ChainUnparalleled performance,scalability,interoperability,and reliabilityHands-on -primary resourcesDO Why and WhatFramework(7 steps to successful RAG)RAG Hands-on TutorialRAG RecipesAgentic AI&Context Engi

5、neeringResearch&Industry DirectionsTakeawaysThe core idea of RAGA model by itself=static knowledge+pattern prediction RAG=model+real-time information retrieval That combination changes a lot.1.Keeps answers up to dateModels have a knowledge cutoff.RAG lets them pull in current data(docs,databases,th

6、e web),so answers dont get stuck in the past.2.Reduces hallucinationsWithout grounding,models may confidently invent details.RAG forces the model to base its response on retrieved sources,which makes answers more factual and traceable.3.Makes responses domain-specificA base model doesnt know your co

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1. **RAG核心价值**:解决AI项目高失败率(40% agentic AI项目将取消,52% GenAI项目POC阶段退役),通过检索将执行准确率提升至79.30%,组件匹配准确率提升至78.86%。 2. **7步实施框架**:理解问题→准备AI就绪数据→分块嵌入→多检索技术→提示与护栏→评估改进→部署监控。 3. **数据挑战**:65%组织缺乏AI就绪数据,40%将数据不足列为AI主要挑战,仅10%-30%企业数据为结构化。 4. **技术优化**:需平衡成本/延迟/准确率,采用混合检索(BM25+向量)、重排序、多步RAG等,并依赖向量数据库(如Pinecone、InterSystems IRIS)。 5. **行业应用**:医疗(UCHealth PAMChat)、金融(NYSE)等领域验证RAG能提升效率(如AXIOM查询速度提升8.1x),强调人机协作与伦理治理。
RAG为何关键? 数据如何准备? 如何防幻觉?
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