Last updated 4/2019MP4 | Video: h264, 1280x720 | Audio: AAC, 44.1 KHzLanguage: English | Size: 4.45 GB | Duration: 11h 22m
Practical solutions to Machine Learning problems, avoiding roadblocks while working with Python data science ecosystem. What you'll learn Use pre-written libraries in python to work with powerful algorithms. 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. Build your own recommendation ee and perform collaborative filtering. Eliminate common data wrangling problems in Pandas and scikit-learn. Troubleshoot advanced models such as Random Forests and SVMs. Wrangling with unsupervised learning and the curse of dimensionality. Solving prediction visualization issues with Matplotlib. Perform common natural language processing featuring eeering tasks. Requirements Prior Python programming experience is a requirement, whereas experience with Machine Learning concepts will be helpful. Description Machine learning is one of the most sought-after skills in the market giving you powerful insights into data. Today, implementations of Machine Learning are adopted throughout Industry and its concepts are many. Python makes this easier with its huge set of libraries that can be used for Machine Learning. The effective blend of Machine Learning with Python helps in implementing solutions to real-world problems as well as automating analytical model.This comprehensive 4-in-1 course follows a step-by-step practical approach to building powerful Machine Learning models using Python. Initially, you’ll use pre-written libraries in python to work with powerful algorithms and get an intuitive understanding of where to use which machine learning approach. You’ll explore Tips and tricks to speed up your modeling process and obtain better results. Moving further, you’ll learn modern techniques for solving supervised learning problems. Finally, you’ll eliminate common data wrangling problems in Pandas and scikit-learn as well as perform common natural language processing featuring eeering tasks.By the end of the course, you’ll explore practical and unique solutions to common Machine Learning problems to avoid any roadblocks while working with the Python data science ecosystem.Contents and OverviewThis training program includes 4 complete courses, carefully chosen to give you the most comprehensive training possible.The first course, Python Machine Learning in 7 Days, covers building powerful Machine Learning models using Python with hands-on practical examples in just a week. In this course, you will be introduced to a new machine learning aspect in each section followed by a practical assignment as homework to help you in efficiently implement the learnings in a practical manner. With the systematic and fast-paced approach to this course, learn machine learning using Python in the most practical and structured way to develop machine learning projects in Python in a week. This course is structured to unlock the potential of Python machine learning in the shortest amount of . If you are looking to upgrade your machine learning skills using Python in the quickest possible , then this course is for you!The second course, Python Machine Learning Projects, covers hands-on Supervised, unsupervised learning, and more. This video is a unique blend of projects that teach you what Machine Learning is all about and how you can implement machine learning concepts in practice. Six different independent projects will help you master machine learning in Python. The video will cover concepts such as classification, regression, clustering, and more, all the while working with different kinds of databases. By the end of the course, you will have learned to apply various machine learning algorithms and will have mastered Python's packages and libraries to facilitate computation. You will be able to implement your own machine learning models after taking this course.The third course, Python Machine Learning Tips, Tricks, and Techniques, covers transfog your simple machine learning model into a cutting edge powerful version. 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.The fourth course, Troubleshooting Python Machine Learning, covers quick fixes for all your Python Machine Learning frustrations. We have systematically researched common ML problems documented online around data wrangling, debugging models such as Random Forests and SVMs, and visualizing tricky results. We leverage statistics from Stack Overflow, Medium, and GitHub to get a cross-section of what data scientists struggle with. We have collated for you the top issues, such as retrieving the most important regression features and explaining your results after clustering, and their corresponding solutions. We present these case studies in a problem-solution format, making it very easy for you to incorporate this into your knowledge. Taking this course will help you to precisely debug your models and research pipelines, so you can focus on pitching new ideas and not fixing old bugs.By the end of the course, you’ll explore practical and unique solutions to common Machine Learning problems to avoid any roadblocks while working with the Python data science ecosystem.About the AuthorsArish Ali started his machine learning journey 5 years ago by winning an all India machine learning competition conducted by the Indian Institute of Science and Microsoft. He was a data scientist at Mu Sigma, one of the biggest analytics firms in India. He has also worked on some of the cutting edge problems of Multi-Touch Attribution Modelling, Market Mix Modelling, and Deep Neural Networks. He has also been an Adjunct faculty for Predictive Business Analytics at Bridge School of Management, which offers its course in Predictive Business Analytics along with North-western University (SPS). Currently, he is working at a mental health startup called Bemo as an AI developer where his role is to help automate the therapy provided to users and make it more personalized.Alexander T. Combs is an experienced data scientist, strategist, and developer with a background in financial data extraction, natural language processing, and generation, and quantitative and statistical modeling. He is currently a full- lead instructor for a data science immersive program in New York City.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 ee 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. He was also a Head of Data Science at Monetha. Monetha is creating a universal, transferable, immutable trust, and reputation system combined with a payment solution. Finally, he is decentralized and empowered by the Ethereum Blockchain.Rudy Lai is the founder of QuantCopy, a sales acceleration startup using AI to write sales emails to prospects. By taking in leads from your pipelines, QuantCopy researches them online and generates sales emails from that data. It also has a suite of email automation tools to schedule, send, and track email performance - key analytics that all feedback into how our AI generated content. Prior to founding QuantCopy, Rudy ran High Dimension.IO, a machine learning consultancy, where he experienced firsthand the frustrations of outbound sales and prospecting. As a founding partner, he helped startups and enterprises with High Dimension.IO's Machine-Learning-as-a-Service, allowing them to scale up data expertise in the blink of an eye. In the first part of his career, Rudy spent 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. Quantitative trading was also a great platform to learn deeply about reinforcement learning and supervised learning topics in a commercial setting. Rudy holds a Computer Science degree from Imperial College London, where he was part of the Dean's List, and received awards such as the Deutsche Bank Artificial Intelligence prize. Overview Section 1: Python Machine Learning in 7 Days Lecture 1 The Course Overview Lecture 2 Setting Up Your Machine Learning Environment Lecture 3 Exploring Types of Machine Learning Lecture 4 Using Scikit-learn for Machine Learning Lecture 5 Assignment – Train Your First Pre-built Machine Learning Model Lecture 6 Supervised Learning Algorithm Lecture 7 Architecture of a Machine Learning System Lecture 8 Machine Learning Model and Its Components Lecture 9 Linear Regression Lecture 10 Predicting Weight Using Linear Regression Lecture 11 Assignment – Predicting Energy Output of a Power Plant Lecture 12 Review of Predicting Energy Output of a Power Plant Lecture 13 Logistic Regression Lecture 14 Classifying Images Using Logistic Regression Lecture 15 Support Vector Machines Lecture 16 Kernels in a SVM Lecture 17 Classifying Images Using Support Vector Machines Lecture 18 Assignment – Start Image Classifying Using Support Vector Machines Lecture 19 Review of Classifying Images Using Support Vector Machines Lecture 20 Model Evaluation Lecture 21 Better Measures than Accuracy Lecture 22 Understanding the Results Lecture 23 Improving the Models Lecture 24 Assignment – Getting Better Test Sample Results by Measuring Model Performance Lecture 25 Review of Getting Better Test Sample Results by Measuring Model Performance Lecture 26 Unsupervised Learning Lecture 27 Clustering Lecture 28 K-means Clustering Lecture 29 Deteing the Number of Clusters Lecture 30 Assignment – Write Your Own Clustering Implementation for Customer Sntation Lecture 31 Review of Clustering Customers Together Lecture 32 Why Neural Network Lecture 33 Parts of a Neural Network Lecture 34 Working of a Neural Network Lecture 35 Improving the Network Lecture 36 Assignment – Build a Sennt Analyzer Based on Social Network Using ANN Lecture 37 Review of Building a Sennt Analyser ANN Lecture 38 Decision Trees Lecture 39 Working of a Decision Tree Lecture 40 Techniques to Further Improve a Model Lecture 41 Random Forest as an Improved Machine Learning Approach Lecture 42 Weekend Task – Solving Titanic Problem Using Random Forest Section 2: Python Machine Learning Projects Lecture 43 The Course Overview Lecture 44 Sourcing Airfare Pricing Data Lecture 45 Retrieving the Fare Data with Advanced Web Scraping Techniques Lecture 46 Parsing the DOM to Extract Pricing Data Lecture 47 Sending Real- Alerts Using IFTTT Lecture 48 Putting It All Together Lecture 49 The IPO Market Lecture 50 Feature Eeering Lecture 51 Binary Classification Lecture 52 Feature Importance Lecture 53 Creating a Supervised Training Set with the Pocket App Lecture 54 Using the embed.ly API to Story Bodies Lecture 55 Natural Language Processing Basics Lecture 56 Support Vector Machines Lecture 57 IFTTT Integration with Feeds, Google Sheets, and E-mail Lecture 58 Setting Up Your Daily Personal Newsletter Lecture 59 What Does Research Tell Us about the Stock Market? Lecture 60 Developing a Trading Strategy Lecture 61 Building a Model and Evaluating Its Performance Lecture 62 Modeling with Dynamic Warping Lecture 63 Machine Learning on Images Lecture 64 Working with Images Lecture 65 Finding Similar Images Lecture 66 Building an Image Similarity Ee Lecture 67 The Design of Chatbots Lecture 68 Building a Chatbot Section 3: Python Machine Learning Tips, Tricks, and Techniques Lecture 69 The Course Overview Lecture 70 Using Feature Scaling to Standardize Data Lecture 71 Implementing Feature Eeering with Logistic Regression Lecture 72 Extracting Data with Feature Selection and Interaction Lecture 73 Combining All Together Lecture 74 Build Model Based on Real-World Problems Lecture 75 Support Vector Machines Lecture 76 Implementing kNN on the Data Set Lecture 77 Decision Tree as Predictive Model Lecture 78 Tricks with Dimensionality Reduction Lecture 79 Combining All Together Lecture 80 Random Forest for Classification Lecture 81 Gradient Boosting Trees and Bayes Optimization Lecture 82 CatBoost to Handle Categorical Data Lecture 83 Implement Blending Lecture 84 Implement Stacking Lecture 85 Memory-Based Collaborative Filtering Lecture 86 Item-to-Item Recommendation with kNN Lecture 87 Applying Matrix Factorization on Datasets Lecture 88 Wordbatch for Real-World Problem Lecture 89 Validation Dataset Tuning Lecture 90 Regularizing Model to Avoid Overfitting Lecture 91 Adversarial Validation Lecture 92 Perform Metric Selection on Real Data Section 4: Troubleshooting Python Machine Learning Lecture 93 The Course Overview Lecture 94 Splitting Your Datasets for Train, Test, and Validate Lecture 95 Persist Your Hard Earned Models by Saving Them to Disk Lecture 96 Calculate Word Frequencies Efficiently in Good ol' Python Lecture 97 Transform Your Variable Length Features into One-Hot Vectors Lecture 98 Finding the Most Important Features in Your Classifier Lecture 99 Predicting Multiple Targets with the Same Dataset Lecture 100 Retrieving the Best Estimators after Grid Search Lecture 101 Regress on Your Pandas Data Frame with Simple Statsmodels OLS Lecture 102 Extracting Decision Tree Rules from scikit-learn Lecture 103 Finding Out Which Features Are Important in a Random Forest Model Lecture 104 Classifying with SVMs When Your Data Has Unbalanced Classes Lecture 105 Computing True/False Positives/Negatives after in scikit-learn Lecture 106 Labelling Dimensions with Original Feature Names after PCA Lecture 107 Clustering Text Documents with scikit-learn K-means Lecture 108 Listing Word Frequency in a Corpus Using Only scikit-learn Lecture 109 Polynomial Kernel Regression Using Pipelines Lecture 110 Visualize Outputs Over Two-Dimensions Using NumPy's Meshgrid Lecture 111 Drawing Out a Decision Tree Trained in scikit-learn Lecture 112 Clarify Your Histogram by Labelling Each Bin Lecture 113 Centralizing Your Color Legend When You Have Multiple Subplots This course is perfect for:,Data Scientists, Developers who are familiar with basic Python programming and want to build efficient, faster, and progressive Machine Learning models to tackle real data. 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