What's new
Heroturko

This is a sample guest message. Register a free account today to become a member! Once signed in, you'll be able to participate on this site by adding your own topics and posts, as well as connect with other members through your own private inbox!

XAI Explainable AI with InterpretML | Notebooks | Python

ad-team

Trusted Editor
Trusted Editor
06297865f36b5beb8bb02d9f8725133b.jpg

XAI Explainable AI with InterpretML | Notebooks | Python
Published 4/2025
MP4 | Video: h264, 1280x720 | Audio: AAC, 44.1 KHz, 2 Ch
Language: English | Duration: 4h 54m | Size: 2.13 GB

Harnessing Explainable AI with InterpretML: Key Techniques in Model Interpretation, Feature Importance

What you'll learn
XAI Explainable AI
InterpretML Microsoft Library to do XAI
Linear Regression, Logistic Regression, APLR, Decision Tree, EBR, Random Forest, Shap Kernel, Lime Tabular, Partial Dependence, Morries Sensitivity Method
Shap Tree

Requirements
Basics of Python and Data Science

Description
Dive into the world of Explainable AI (XAI) with this comprehensive course, "XAI Explainable AI with InterpretML | Notebooks | Python." Designed for data enthusiasts and practitioners, this course introduces the fundamentals of XAI, emphasizing the critical importance of transparency and interpretability in machine learning models. Our key objectives include equipping you with practical skills to demystify complex models and enhance decision-making processes effectively.Through hands-on examples, you'll explore real-world applications of XAI using Python in Google Colab, with step-by-step guidance on installing and leveraging InterpretML. The course covers a wide range of techniques, starting with Linear Models and advancing to Additive Poisson Linear Regression (APLR) and Tree-based Models. You'll master powerful interpretability tools such as Explainable Boosting Regression (EBR), ShapKernel, and LimeTabular for deep tabular data insights. Additionally, we'll delve into Partial Dependence Plots, Morris Sensitivity Method, and SHAP Tree for robust feature analysis and comprehensive model behavior understanding.By the end, you'll be proficient in interpreting model predictions, identifying feature importance, and ensuring transparency in AI systems. Whether you're a beginner or an experienced data scientist, this course provides the practical tools and advanced techniques to make AI explainable, actionable, and trustworthy using InterpretML in Python. Join us to unlock the transformative power of XAI!

Who this course is for
Who wants to learn XAI Explainable AI using InterpretML Library

XSQcCfZb_o.jpg


AusFile
RapidGator
 

Feel free to post your XAI Explainable AI with InterpretML | Notebooks | Python Free Download, torrent, subtitles, free download, quality, NFO, Dangerous XAI Explainable AI with InterpretML | Notebooks | Python Torrent Download, free premium downloads movie, game, mp3 download, crack, serial, keygen.

Top