Packt | Python Machine Learning Tips, Tricks, and Techniques [FCO]

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Packt | Python Machine Learning Tips, Tricks, and Techniques [FCO] (Size: 758.37 MB)
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  01 - The Course Overview.mp4 27.02 MB
  02 - Using Feature Scaling to Standardize Data.mp4 37.45 MB
  03 - Implementing Feature Engineering with Logistic Regression.mp4 11.62 MB
  04 - Extracting Data with Feature Selection and Interaction.mp4 21.92 MB
  05 - Combining All Together.mp4 13.06 MB
  06 - Build Model Based on Real-World Problems.mp4 14.56 MB
  07 - Support Vector Machines.mp4 23.28 MB
  08 - Implementing kNN on the Data Set.mp4 34.24 MB
  09 - Decision Tree as Predictive Model.mp4 27.09 MB
  10 - Tricks with Dimensionality Reduction.mp4 20.5 MB
  11 - Combining All Together.mp4 21.3 MB
  12 - Random Forest for Classification.mp4 23.87 MB
  13 - Gradient Boosting Trees and Bayes Optimization.en.ttml 17.83 KB
  13 - Gradient Boosting Trees and Bayes Optimization.mp4 33.36 MB
  14 - CatBoost to Handle Categorical Data.en.ttml 10.45 KB
  14 - CatBoost to Handle Categorical Data.mp4 20.1 MB
  15 - Implement Blending.en.ttml 14.92 KB
  15 - Implement Blending.mp4 27.4 MB
  16 - Implement Stacking.en.ttml 13.56 KB
  16 - Implement Stacking.mp4 31.2 MB
  17 - Memory-Based Collaborative Filtering.en.ttml 12.31 KB
  17 - Memory-Based Collaborative Filtering.mp4 21.33 MB
  18 - Item-to-Item Recommendation with kNN.en.ttml 12.54 KB
  18 - Item-to-Item Recommendation with kNN.mp4 21.22 MB
  19 - Applying Matrix Factorization on Datasets.en.ttml 15.2 KB
  19 - Applying Matrix Factorization on Datasets.mp4 27.5 MB
  20 - Wordbatch for Real-World Problem.en.ttml 9.69 KB
  20 - Wordbatch for Real-World Problem.mp4 23.25 MB
  21 - Validation Dataset Tuning.en.ttml 10.8 KB
  21 - Validation Dataset Tuning.mp4 22.12 MB
  22 - Regularizing Model to Avoid Overfitting.en.ttml 8.6 KB
  22 - Regularizing Model to Avoid Overfitting.mp4 14.6 MB
  23 - Adversarial Validation.en.ttml 9.74 KB
  23 - Adversarial Validation.mp4 19.97 MB
  24 - Perform Metric Selection on Real Data.en.ttml 28.57 KB
  24 - Perform Metric Selection on Real Data.mp4 220.23 MB
  ▲ 42 total files

Description


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By : Valeriy Babushkin
Released : June 28, 2018
Torrent Contains : 42 Files, 1 Folders
Course Source : https://www.packtpub.com/in/big-data-and-business-intelligence/python-machine-learning-tips-tricks-and-techniques-video

Transform your simple machine learning model into a cutting edge powerful version

Video Details

ISBN 9781789135817
Course Length 2 hour 46 minutes

Table of Contents

• Improving Your Models Using Feature Engineering
• Feature Improvement with Non Linear Classification Techniques
• Power of Ensemble Learning with Python
• Recommender Systems
• Boost Your Overall Model Robustness

Learn

• Tips and tricks to speed up your modeling process and obtain better results
• Make predictions using advanced regression analysis with Python
• Modern techniques for solving supervised learning problems
• Various ways to use ensemble learning with Python to derive optimum results
• Build your own recommendation engine and perform collaborative filtering
• Give your production machine learning system improved reliability

About

Machine learning allows us to interpret data structures and fit that data into models to identify patterns and make predictions. Python makes this easier with its huge set of libraries that can be easily used for machine learning. In this course, you will learn from a top Kaggle master to upgrade your Python skills with the latest advancements in Python.

It is essential to keep upgrading your machine learning skills as there are immense advancements taking place every day. In this course, you will get hands-on experience of solving real problems by implementing cutting-edge techniques to significantly boost your Python Machine Learning skills and, as a consequence, achieve optimized results in almost any project you are working on.

Each technique we cover is itself enough to improve your results. However; combining them together is where the real magic is. Throughout the course, you will work on real datasets to increase your expertise and keep adding new tools to your machine learning toolbox.

By the end of this course, you will know various tips, tricks, and techniques to upgrade your machine learning algorithms to reduce common problems, all the while building efficient machine learning models.

All the code and supporting files for this course are available on GitHub at: https://github.com/PacktPublishing/Python-Machine-Learning-Tips-Tricks-and-Techniques

Style and Approach

We practice real datasets from different fields, progressively increasing our expertise and putting new tools at our disposal. With a combination of these tools, almost any machine learning problem can be solved much faster and with far better overall results.

Features:

• Learn from a Kaggle competition master and a Team Lead at the largest search engine company in Russia—a great mixture of competition experience and Industrial knowledge
• Learn the techniques currently used among Kaggle top-tier competitors and best practices in real-life projects to upgrade your skills
• We guide you through supervised learning from basic linear to ensemble models, by extending the capabilities of your ML system to build high-performance models

Author

Valeriy Babushkin

Valeriy Babushkin has done an M. Sc. and has 5+ years' experience in industrial data science and academia. He is a Kaggle competition master and a 2018 IEEE SP Cup finalist. He has been a Data Science Team Lead at Yandex (the largest search engine in Russia; it outperforms Google) and runs an online taxi service (he acquired Uber in Russia and 15 other countries) and the biggest e-commerce platform in Russia.



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