{R}R Dev Notes
Found total of 66 articles.
Art of Coding, Chapter 5: Consistency and Style
Consistency is kindness. How coding standards, formatters, and idiomatic style shape code that teams can actually live with.
2025-12-29
Art of Coding, Part I: Why Code is an Art
Introducing the Art of Coding blog series: a 26-week exploration of what makes code beautiful, maintainable, and enduring in the age of AI.
2025-12-23
8.3 The QR Algorithm (High-Level Intuition)
A clear, intuitive, and comprehensive explanation of the QR algorithm—how repeated QR factorizations reveal eigenvalues, why orthogonal transformations provide stability, and how shifts and Hessenberg reductions make the method efficient. Ends with a smooth bridge to PCA and spectral methods.
2025-10-09
8.1 Power Method and Inverse Iteration
A clear, practical, and intuitive explanation of the power method and inverse iteration for computing eigenvalues. Covers dominance, repeated multiplication, shifted inverse iteration, and real applications in ML, PCA, and large-scale systems. Smoothly introduces the Rayleigh quotient.
2025-10-07
Chapter 8 — Eigenvalues and Eigenvectors
A deep, intuitive introduction to eigenvalues and eigenvectors for engineers and practitioners. Explains why spectral methods matter, where they appear in real systems, and how modern numerical algorithms compute eigenvalues efficiently. Leads naturally into the power method and inverse iteration.
2025-10-06
7.2 Householder Reflections
A clear, intuitive, book-length explanation of Householder reflections and why they form the foundation of modern QR decomposition. Learn how reflections overcome the numerical instability of Gram–Schmidt and enable stable least-squares solutions across ML, statistics, and scientific computing.
2025-10-03
5.4 Practical Examples
Hands-on LU decomposition examples using NumPy and LAPACK. Learn how pivoting, numerical stability, singular matrices, and performance optimization work in real systems, with clear Python code and practical insights.
2025-09-26
5.3 LU in NumPy and LAPACK
A practical, in-depth guide to how LU decomposition is implemented in NumPy and LAPACK. Learn about partial pivoting, blocked algorithms, BLAS optimization, error handling, and how modern numerical libraries achieve both speed and stability.
2025-09-25
Chapter 5 — LU Decomposition
An in-depth, accessible introduction to LU decomposition—why it matters, how it improves on Gaussian elimination, where pivoting fits in, and what modern numerical libraries like NumPy and LAPACK do under the hood. Includes a guide to stability, practical applications, and a smooth transition into LU with and without pivoting.
2025-09-22
4.2 Row Operations and Elementary Matrices
A deep but intuitive explanation of row operations and elementary matrices, showing how Gaussian elimination is built from structured matrix transformations and how these transformations form the foundation of LU decomposition and numerical stability.
2025-09-19
3.3 Conditioning of Problems vs Stability of Algorithms
Learn the critical difference between problem conditioning and algorithmic stability in numerical computing. Understand why some systems fail even with correct code, and how sensitivity, condition numbers, and numerical stability determine the reliability of AI, ML, and scientific algorithms.
2025-09-15
2.4 Vector and Matrix Storage in Memory
A clear, practical guide to how vectors and matrices are stored in computer memory. Learn row-major vs column-major layout, strides, contiguity, tiling, cache behavior, and why memory layout affects both speed and numerical stability in real systems.
2025-09-11
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
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
Bot Authentication and Identity|Mastering Microsoft Teams Bots 2.3
Learn how Microsoft Teams bots authenticate users and access secure data. This section covers SSO, OAuth 2.0, and the Microsoft Graph API, giving your bot the ability to understand identity and act on behalf of users—safely and seamlessly.
2025-04-07
Categories
Tags
Search Logs
Hello World bot 1227
IT assistant bot 1201
Deploy Teams bot to Azure 1199
Microsoft Bot Framework 1098
Teams bot development 1079
Teams production bot 1070
bot for sprint updates 1053
Zendesk Teams integration 1040
Teams app zip 1037
Microsoft Teams Task Modules 1021
Teams chatbot 1015
Bot Framework Adaptive Card 1011
Teams bot tutorial 1003
Bot Framework example 1000
Task Modules 999
Teams bot packaging 993
Bot Framework proactive messaging 989
C 988
Graph API token 982
Azure CLI webapp deploy 975
Bot Framework CLI 969
Bot Framework prompts 960
Adaptive Card Action.Submit 957
Azure App Service bot 948
Microsoft Graph 930
Azure Bot Services 925
Adaptive Cards 902
Azure bot registration 898
ServiceNow bot 898
identity in Teams 864
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