55 lines
2.7 KiB
Markdown
55 lines
2.7 KiB
Markdown
---
|
||
title: "Public Cloud Learning Sessions (OpenText) - Generative AI & Prompt Engineering - 20241112"
|
||
type: source
|
||
tags:
|
||
- Generative-AI
|
||
- Prompt-Engineering
|
||
- AWS
|
||
- OpenText
|
||
date: 2024-11-12
|
||
---
|
||
|
||
## Source File
|
||
- [[raw/Cloud & DevOps/Public-Cloud-Learning-Sessions/09_Serverless_AI/public-cloud-learning-sessions-opentext-generative-ai-prompt-engineering-2024111.md]]
|
||
|
||
## Summary
|
||
- 核心主题:AWS 生成式 AI 服务与提示词工程基础
|
||
- 问题域:企业如何利用生成式 AI 创造业务价值
|
||
- 方法/机制:检索增强生成(RAG)、微调(Fine-tuning)、持续重训练;提示词工程组件与技巧
|
||
- 结论/价值:数据是企业差异化的关键,通过 RAG/微调/重训练技术,结合提示词工程,可构建特定领域的生成式 AI 应用
|
||
|
||
## Key Claims
|
||
- 生成式 AI 通过创造新体验、提升员工生产力、提取洞察和促进创造力来创造价值
|
||
- 你的数据是通用应用与能够带来业务价值的特定应用之间的差异点
|
||
- RAG 是最便宜和最简单的技术,连接多个数据源无需重训练模型
|
||
- 提示词工程是创建、设计和优化提示词以引导 LLM 响应的过程
|
||
- 提示词由指令、上下文、用户输入和输出指示器组成
|
||
|
||
## Key Quotes
|
||
> "Your data is your differentiator and it is what makes the difference between generic application to a specific application that can actually bring business to your value."
|
||
|
||
> "None of your data nor the prompts, not the data that you are using for customizing the model is being shared with the model providers."
|
||
|
||
## Key Concepts
|
||
- [[生成式 AI]]:能够创造新内容(文本、图像、音频)的 AI 技术
|
||
- [[RAG]]:检索增强生成,连接多个数据源无需重训练模型
|
||
- [[Fine-Tuning]]:使用标记示例重新训练模型
|
||
- [[Prompt Engineering]]:创建、设计和优化提示词的过程
|
||
- [[Amazon Bedrock]]:全托管服务,提供对多种基础模型的访问
|
||
- [[Amazon SageMaker]]:用于构建、训练和部署模型的托管服务
|
||
- [[Amazon Q]]:AI 助手,面向业务和开发者
|
||
- [[Foundation Model]]:基础模型,具有数十亿参数的大规模预训练模型
|
||
|
||
## Key Entities
|
||
- [[Shikad Holtzman]]:AWS 技术客户经理(以色列),本次分享讲师
|
||
- [[OpenText]]:主办 Public Cloud Learning Sessions 的企业内容管理公司
|
||
- [[Amazon]]:云服务提供商,提供 AWS 生成式 AI 堆栈
|
||
|
||
## Connections
|
||
- [[Public Cloud Learning Sessions]] ← hosts ← [[生成式 AI]]
|
||
- [[Amazon Bedrock]] ← provides_access_to ← [[Foundation Model]]
|
||
- [[RAG]] ← cheaper_than ← [[Fine-Tuning]]
|
||
- [[Amazon Q for Business]] ← connects_to ← multiple_data_sources
|
||
- [[Amazon Q Developer]] ← focuses_on ← code_generation
|
||
|
||
## Contradictions |