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监控 PgVector RAG 代理应用程序.pdf

上传人: 茫然 编号:731608 2025-07-14 23页 1.97MB

1、Monitoring Monitoring PgVectorPgVector RAG Agentic RAG Agentic ApplicationsApplicationsJayita Bhattacharyya,Jayita Bhattacharyya,Data ScientistData ScientistHOW2025 PostgreSQL&IvorySQL Eco ConferenceRAG&RAG&friendsfriendsCONTENTSCONTENTSHOW2025 PostgreSQL&IvorySQL Eco ConferencePostgres to Postgres

2、to pgvectorpgvectorAgents&Agents&ObservabilityObservabilityBonus-Bonus-PgaiPgai pgvectorscalepgvectorscaleDemoDemoNext Steps ResourcesNext Steps ResourcesTraditional DB vs Vector DB Traditional DB vs Vector DB RAG WorkflowRAG WorkflowPgevctorPgevctor-pgvectorisaPostgreSQLextensionthataddsthevectorda

3、tatypeandfunctionsforvectoroperationstoaPostgreSQLdatabase.Its key features include:Vector Data TypeVector Similarity Search,Distance Metrics,Indexing Language AgnosticHOW2025 PostgreSQL&IvorySQL Eco Conferencepgvector-pythonisaPythonlibraryforpgvector.ItallowsyoutousepgvectorwithSQLAlchemy,makingit

4、easytointegratepgvectorintoyourexistingPythonapplicationsWhatareAIAgentsHas AGI been achieved?Has AGI been achieved?Yes&NoIve been having hard time vibe“debugging”!LocaltoProduction-MLModelsScalability:Deployed models should handle high volumes of requests efficiently.Scalability ensures smooth oper

5、ation even under heavy loads.Performance:Models must provide accurate and timely predictions.Throughput&Latency:Optimize for low latency and high throughput.MLSystemMonitoringMonitoring involves systematically collecting and analyzing data to assess the performance of a system,process,or device over

6、 time.Purpose:It helps track predefined metrics and alerts when thresholds are crossed.Monitoring is proactive and aims to prevent issues.Data Focus:Monitoring tools work with predetermined data sets,narrowing the analytical frame.Example:Setting up alerts for CPU usage exceeding a certain threshold

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本文主要介绍了PostgreSQL的向量扩展pgvector及其在AI应用中的监控和可观测性。关键点如下: 1. **pgvector特性**:包括向量数据类型、相似度搜索、距离度量、索引等。 2. **AI应用的挑战**:讨论了从本地到生产环境部署ML模型时的可扩展性、性能和监控问题。 3. **监控和可观测性**:强调了监测系统性能、跟踪预定义指标和预警的重要性,以及通过日志、指标和追踪来理解系统内部状态。 4. **LangFuse平台**:介绍了一个开源的LLM工程平台,支持提示管理、评估和多种部署选项。 5. **pgai和pgvectorscale**:分别是基于pgvector的AI应用开发框架和扩展,提供自动化嵌入生成、高性能索引等。 文章还提到了资源链接和作者Jayita Bhattacharyya的相关信息,表明了对开源贡献的开放态度。
"如何高效使用pgvector?" "AI应用监控怎么做?" "LangFuse有哪些关键特性?"
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