{R}R 開発ノート
合計 60 件の記事が見つかりました。
3.1 Norms and Why They Matter
A deep yet accessible exploration of vector and matrix norms, why they matter in numerical computation, and how they influence stability, conditioning, error growth, and algorithm design. Essential reading for AI, ML, and scientific computing engineers.
2025-09-13
Chapter 3 — Computation & Mathematical Systems
A clear, insightful introduction to numerical computation—covering norms, error measurement, conditioning vs stability, and the gap between mathematical algorithms and real implementations. Essential reading for anyone building AI, optimization, or scientific computing systems.
2025-09-12
2.3 Overflow, Underflow, Loss of Significance
A clear and practical guide to overflow, underflow, and loss of significance in floating-point arithmetic. Learn how numerical computations break, why these failures occur, and how they impact AI, optimization, and scientific computing.
2025-09-10
2.2 Machine Epsilon, Rounding, ULPs
A comprehensive, intuitive guide to machine epsilon, rounding behavior, and ULPs in floating-point arithmetic. Learn how precision limits shape numerical accuracy, how rounding errors arise, and why these concepts matter for AI, ML, and scientific computing.
2025-09-09
2.1 Floating-Point Numbers (IEEE 754)
A detailed, intuitive guide to floating-point numbers and the IEEE 754 standard. Learn how computers represent real numbers, why precision is limited, and how rounding, overflow, subnormals, and special values affect numerical algorithms in AI, ML, and scientific computing.
2025-09-08
1.4 A Brief Tour of Real-World Failures
A clear, accessible tour of real-world numerical failures in AI, ML, optimization, and simulation—showing how mathematically correct algorithms break inside real computers, and preparing the reader for Chapter 2 on floating-point reality.
2025-09-06
1.1 What Breaks Real AI Systems
Many AI failures come from numerical instability, not algorithms. This guide explains what actually breaks AI systems and why numerical linear algebra matters.
2025-09-03
1.0 Why Numerical Linear Algebra Matters
A deep, practical introduction to why numerical linear algebra matters in real AI, ML, and optimization systems. Learn how stability, conditioning, and floating-point behavior impact models.
2025-09-02
Numerical Linear Algebra: Understanding Matrices and Vectors Through Computation
Learn how linear algebra actually works inside real computers. A practical guide to LU, QR, SVD, stability, conditioning, and the numerical foundations behind modern AI and machine learning.
2025-09-01
Monitoring, Logging, and Telemetry|Mastering Microsoft Teams Bots 5.3
Learn how to monitor and support your Microsoft Teams bot in production using logging, Azure Application Insights, and alerts. This section shows how to track user events, diagnose failures, and create telemetry that makes your bot reliable and supportable.
2025-04-17
カテゴリー
タグ
検索ログ
Hello World bot 1008
Deploy Teams bot to Azure 948
IT assistant bot 932
Microsoft Bot Framework 910
Azure CLI webapp deploy 862
Teams production bot 826
Teams bot development 825
Adaptive Card Action.Submit 824
Bot Framework Adaptive Card 810
Microsoft Teams Task Modules 810
bot for sprint updates 809
Bot Framework example 807
C 806
Microsoft Graph 805
Teams app zip 804
Graph API token 797
Adaptive Cards 794
Bot Framework proactive messaging 792
Task Modules 792
Zendesk Teams integration 792
Teams chatbot 791
Teams bot packaging 790
Azure Bot Services 786
Teams bot tutorial 785
Azure App Service bot 782
Bot Framework CLI 780
Azure bot registration 772
Bot Framework prompts 769
ServiceNow bot 762
proactive messages 731
Development & Technical Consulting
Working on a new product or exploring a technical idea? We help teams with system design, architecture reviews, requirements definition, proof-of-concept development, and full implementation. Whether you need a quick technical assessment or end-to-end support, feel free to reach out.
Contact Us