10 JUL 2026 - Back up to full speed! Let's be honest: for the last few months, TorrentFunk was painfully slow. Pages crawled, searches dragged, and just loading the site tested everyone's patience. We hunted the problem down to our network and rebuilt it from the ground up — smarter caching, a much bigger and faster connection, and a lot of fine-tuning under the hood. The difference is night and day: the site now loads in a fraction of a second. No more waiting around. Thanks for sticking with us through the slow spell. Now go discover your funk!
Author : Derek Jedamski Language : English Released : 5/10/2019 Torrent Contains : 43 Files, 8 Folders Course Source : https://www.lynda.com/Python-tutorials/Applied-Machine-Learning-Foundations/751335-2.html
Description
Anyone who can write basic Python is capable of fitting a simple machine learning model on a clean dataset. The competitive edge comes in the ability to customize and optimize those models for specific problems. The workflow used to build effective machine learning models and the methods used to optimize those models are typically not algorithm or problem specific. In this course, the first installment in the two-part Applied Machine Learning series, instructor Derek Jedamski digs into the foundations of machine learning, from exploratory data analysis to evaluating a model to ensure it generalizes to unseen examples. Instead of zeroing in on any specific machine learning algorithm, Derek focuses on giving you the tools to efficiently solve nearly any kind of machine learning problem.
Topics include:
• What is machine learning (ML)? • ML vs. deep learning vs. AI • Handling common challenges in ML • Plotting continuous features • Continuous and categorical data cleaning • Measuring success • Overfitting and underfitting • Tuning hyperparameters • Evaluating a model.
For More Udemy Free Courses >>> https://ftuforum.com/ For more Lynda and other Courses >>> https://www.freecoursesonline.me/ Our Forum for discussion >>> https://discuss.ftuforum.com/
VISITOR COMMENTS (0 )
FILE LIST
Filename
Size
1.Introduction/01.Leveraging machine learning.mp4
19.1 MB
1.Introduction/02.What you should know.mp4
4.5 MB
1.Introduction/03.What tools you need.mp4
1.6 MB
1.Introduction/04.Using the exercise files.mp4
3.1 MB
2.1. Machine Learning Basics/05.What is machine learning.mp4
6 MB
2.1. Machine Learning Basics/06.What kind of problems can this help you solve.mp4
8.3 MB
2.1. Machine Learning Basics/07.Why Python.mp4
12.1 MB
2.1. Machine Learning Basics/08.Machine learning vs. Deep learning vs. Artificial intelligence.mp4
6.9 MB
2.1. Machine Learning Basics/09.Demos of machine learning in real life.mp4