
Free Download Udemy - No More Lucky Models - The Art & Science of Model Validation
Published: 4/2025
Created by: Maxwell Sarmento de Carvalho
MP4 | Video: h264, 1280x720 | Audio: AAC, 44.1 KHz, 2 Ch
Level: Intermediate | Genre: eLearning | Language: English | Duration: 75 Lectures ( 10h 19m ) | Size: 5.32 GB
A Model Validation Specialization - Course I - Applied Data Science, Machine Learning
What you'll learn
Master the fundamentals of model validation and understand why traditional approaches often fail in real-world applications.
Apply the four core validation principles: population representativeness, independence between sets, statistical significance, and structure preservation.
Develop expertise in cross-validation techniques from basic to advanced, selecting the right approach for different data types.
Recognize real-world validation failures through case studies (Google Flu Trends, Zillow, IBM Watson) and how to detect them before deployment.
Implement proper validation for special data structures including time series, geographic data, hierarchical data, and imbalanced datasets.
Design robust validation pipelines that accurately predict model performance in production environments.
Identify and correct common validation issues like data leakage, temporal mixing, and broken data relationships in your ML workflows.
Apply stratified, group-based, and time-aware validation techniques to ensure fair and realistic performance estimates.
Detect when validation results are too optimistic and implement statistical tests to verify performance differences between models.
Assess whether test sets are truly representative of the target population and make corrections when they aren't.
Create validation strategies that properly preserve important data structures like time order, groupings, and hierarchies.
Build comprehensive validation frameworks that transition smoothly from development to production, including drift detection.
Requirements
Basic Python programming skills (ability to work with libraries and understand code examples)
Experience building at least one ML model from start to finish
Understanding of basic statistics (mean, variance, distributions)
Basic knowledge of common ML metrics (accuracy, precision, recall, RMSE, etc.)
Familiarity with pandas for data manipulation and scikit-learn for model building
Foundational understanding of machine learning concepts (supervised learning, basic model types)
Description
No More Lucky Models: The Art & Science of Model ValidationStop relying on luck. Start building models that survive first contact with reality.Ever celebrated impressive validation metrics only to watch your model crumble in production? You're not alone. The gap between academic performance and real-world success isn't bridged with better algorithms or more data-it's mastered through rigorous validation.In this revolutionary course series, you'll uncover the validation principles that tech giants like Google, Zillow, and IBM learned through billion-dollar failures. Instead of repeating their costly mistakes, you'll master the four critical pillars of validation that transform hopeful models into reliable solutions
Who this course is for
Data scientists and ML practitioners looking to improve validation strategies
Analysts and engineers implementing ML workflows in real-world applications
Bootcamp graduates and self-taught ML learners who need structured model validation techniques
Practitioners who have trained models but lack deep validation understanding
Advanced learners transitioning from theoretical knowledge to real-world applications
Team leaders responsible for ML model governance and quality assurance
Software engineers integrating machine learning models in production
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