|  

[Packt] Hands-On Problem Solving for Machine Learning [FCO] GloDLS



Size :829.26 MB
Peers : Seeders : 0      Leechers : 0
Added : 5 years ago » by SaM » in Tutorials
Language : English
Last Updated :7 months ago
Info_Hash :69C4213C98BFB2A9EAF090D82CA930A3D131C0D4

Torrent File Contents

[Packt] Hands-On Problem Solving for Machine Learning [FCO] GloDLS
  1.Working with Machine Learning/01.The Course Overview.mp4
  -  24.23 MB

  1.Working with Machine Learning/02.Goals and Variations in Machine Learning.mp4
  -  108.52 MB

  1.Working with Machine Learning/03.Installing WinPython and Using Jupyter Notebooks.mp4
  -  34.58 MB

  1.Working with Machine Learning/04.Exploring Your Data Using Pandas.mp4
  -  30.94 MB

  2.Data Wrangling/05.Types of Messy Data and How to Clean Them.mp4
  -  30.57 MB

  2.Data Wrangling/06.Parsing Timestamps and Splitting Columns.mp4
  -  36.56 MB

  2.Data Wrangling/07.Loading Data from Excel, CSVs, and SQL.mp4
  -  30.95 MB

  3.Linear Regression — Predict Median Living Costs/08.Understanding Linear Regression.mp4
  -  31.56 MB

  3.Linear Regression — Predict Median Living Costs/09.Implementing Linear Regression with Scikit-learn.mp4
  -  31.75 MB

  3.Linear Regression — Predict Median Living Costs/10.Troubleshooting Linear Regression.mp4
  -  32.76 MB

  4.Logistic Regression Classify/11.Exploring and Cleaning the Plants Dataset.mp4
  -  38.33 MB

  4.Logistic Regression Classify/12.Understanding Logistic Regression.mp4
  -  23.99 MB

  4.Logistic Regression Classify/13.Implementing Train-Test-Splits and Logistic Regression.mp4
  -  36.94 MB

  5.Predicting the Future/14.Build a Robust Model with Cross Validation.mp4
  -  32.79 MB

  5.Predicting the Future/15.Create Complex Models with Scikit-learn Pipelines.mp4
  -  37.05 MB

  5.Predicting the Future/16.Find the Best Model with Hyperparameter Search.mp4
  -  38.99 MB

  6.Diagnosing Issues with Models/17.Understanding Our Accuracy in Predicting Numbers.mp4
  -  37.63 MB

  6.Diagnosing Issues with Models/18.Assessing Our Correctness in Predicting Labels.mp4
  -  29.95 MB

  6.Diagnosing Issues with Models/19.Dealing with Overfitting Using Regularization.mp4
  -  160.87 MB

  Exercise Files/code_37042.zip
  -  75.52 KB

  Discuss.FTUForum.com.html
  -  31.89 KB

  FreeCoursesOnline.Me.html
  -  108.3 KB

  FTUForum.com.html
  -  100.44 KB

  How you can help Team-FTU.txt
  -  235 Bytes

  [TGx]Downloaded from torrentgalaxy.org.txt
  -  524 Bytes

  Torrent Downloaded From GloDls.buzz.txt
  -  84 Bytes



Torrent Description

Description:


By: Rudy Lai
Released: Thursday, March 28, 2019 [New Release!]
Torrent Contains: 26 Files, 7 Folders
Course Source: https://www.packtpub.com/big-data-and-business-intelligence/hands-problem-solving-machine-learning-video

Intuitive strategies to deal with messy data, weak models, and leaky machine-learning pipelines

Video Details

ISBN 9781789530087
Course Length 2 hours 40 minutes

Table of Contents

• WORKING WITH MACHINE LEARNING
• DATA WRANGLING
• LINEAR REGRESSION — PREDICT MEDIAN LIVING COSTS
• LOGISTIC REGRESSION CLASSIFY
• PREDICTING THE FUTURE
• DIAGNOSING ISSUES WITH MODELS

Video Description

Machine learning is all the rage, and you have been tasked with creating models for your business. What looked simple on the surface quickly becomes a nightmare of messy data and non-performing models. What do you do?

Hands-On Problem Solving for Machine Learning is packed with intuitive explanations of how machine learning works so that you can fix your models when they break. It presents a wide array of practical solutions for your machine learning pipeline, whether you are working with images, text, or numbers. You'll get a real feel for how to tackle challenges posed during regression and classification tasks.

If you want to move past calling simple machine learning libraries, and start solving machine learning problems with real-world messy data, this course is for you!

All the code and supporting files for this course are available on GitHub at - https://github.com/PacktPublishing/Machine-Learning-Problems-Solved-V-

Style and Approach

This fast-paced, solution-focused course quickly brings you to the heart of any machine learning problem; it supplies streamlined explanations around what is wrong, how it is wrong, and what needs to be done to solve it, and also hands-on demonstrations of the solution implemented.

What You Will Learn

• Acquire a toolbox for machine learning in Python in just 30 minutes.
• Clean messy datasets from the real world and use them in Python
• Fix linear models that predicted wrong numbers
• Resolve issues with classification models that mislabel data points
• Deal with overfitting and making sure models generalize to the future
• Future-proof your machine-learning pipeline

Authors

Rudy Lai

Rudy Lai is the founder of QuantCopy, a sales acceleration start-up using AI to write sales emails to prospective customers. Prior to founding QuantCopy, Rudy ran HighDimension.IO, a machine learning consultancy, where he experienced first hand the frustrations of outbound sales and prospecting. Rudy has also spent more than 5 years in quantitative trading at leading investment banks such as Morgan Stanley. This valuable experience allowed him to witness the power of data, but also the pitfalls of automation using data science and machine learning. He holds a computer science degree from Imperial College London, where he was part of the Dean's list, and received awards including the Deutsche Bank Artificial Intelligence prize.

Colibri Digital is a technology consultancy company founded in 2015 by James Cross and Ingrid Funie. The company works to help its clients navigate the rapidly changing and complex world of emerging technologies, with deep expertise in areas such as big data, data science, machine learning, and cloud computing. Over the past few years, they have worked with some of the world's largest and most prestigious companies, including a tier 1 investment bank, a leading management consultancy group, and one of the world's most popular soft drinks companies, helping each of them to better make sense of their data, and process it in more intelligent ways. The company lives by its motto: Data -> Intelligence -> Action.