LLMs用於商業智能培訓
Large Language Models (LLMs) 是深度神經網路模型,可以根據給定的輸入或上下文生成自然語言文本。LLM for Business Intelligence 是對 LLM 對業務數據分析的變革性影響的探索。
這種以講師為主導的現場培訓(在線或遠端)面向希望利用 LLM 的力量來提取業務見解的中級業務專業人員和數據分析師。
在培訓結束時,參與者將能夠:
- 瞭解 LLM 在商業智慧環境中的基礎知識和應用。
- 應用 LLM 來分析大型數據集並提取有意義的見解。
- 將 LLM 驅動的分析整合到戰略業務決策流程中。
- 評估在業務中使用 LLM 的道德考慮和最佳實踐。
- 預測 AI 的未來趨勢,並為不斷發展的商業智慧環境做好準備。
課程形式
- 互動講座和討論。
- 大量的練習和練習。
- 在現場實驗室環境中動手實施。
課程自定義選項
- 如需申請本課程的定製培訓,請聯繫我們進行安排。
課程簡介
LLM 和 Business Intelligence 簡介
- 業務分析上下文中的 LLM 概述
- LLM 在數據驅動決策中的作用
- 瞭解 LLM 的功能和局限性
Data Analysis 使用 LLM
- 準備用於 LLM 分析的數據集
- 使用 LLM 進行數據提取和處理的技術
- 使用 LLM 產生報告和視覺化
使用 LLM 進行市場分析
- 情緒分析和客戶反饋解釋
- 使用LLM收集競爭情報
- 市場趨勢預測建模
Strategic Planning 與 LLM
- 將 LLM 見解整合到業務戰略中
- LLM的場景規劃和風險評估
- 制定以數據為依據的商業計劃
案例研究和行業應用
- 回顧各行各業成功的法學碩士應用
- 關於LLM對業務成果的影響的討論
- 對實際業務問題的分組分析
倫理考量和數據 Governance
- 解決使用 LLM 進行商業智慧的道德問題
- 確保 LLM 應用程式中的數據隱私和合規性
- 使用 LLM 進行數據治理的最佳實踐
實踐專案
- 將 LLM 應用於商業智慧挑戰
- 同行評審和協作解決問題的會議
摘要和後續步驟
最低要求
- 瞭解商業智慧概念
- 具有數據分析和基本程式設計技能的經驗
- 熟悉機器學習原理
觀眾
- Business 分析師
- 數據科學家
- 戰略規劃師
Open Training Courses require 5+ participants.
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Course Customization Options
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