Machine Learning, Data Science and Deep Learning with Python Complete hands-on machine learning tutorial with data science, Tensorflow, artificial intelligence, and neural networks
What you'll learn
• Build artificial neural networks with Tensorflow and Keras
• Classify images, data, and sentiments using deep learning
• Make predictions using linear regression, polynomial regression, and multivariate regression
• Data Visualization with MatPlotLib and Seaborn
• Implement machine learning at massive scale with Apache Spark's MLLib
• Understand reinforcement learning - and how to build a Pac-Man bot
• Classify data using K-Means clustering, Support Vector Machines (SVM), KNN, Decision Trees, Naive Bayes, and PCA
• Use train/test and K-Fold cross validation to choose and tune your models
• Build a movie recommender system using item-based and user-based collaborative filtering
• Clean your input data to remove outliers
• Design and evaluate A/B tests using T-Tests and P-Values
Requirements
• You'll need a desktop computer (Windows, Mac, or Linux) capable of running Anaconda 3 or newer. The course will walk you through installing the necessary free software.
• Some prior coding or scripting experience is required.
• At least high school level math skills will be required.
Description
New! Updated for Winter 2019 with extra content on feature engineering, regularization techniques, and tuning neural networks - as well as Tensorflow 2.0!
Machine Learning and artificial intelligence (AI) is everywhere; if you want to know how companies like Google, Amazon, and even Udemy extract meaning and insights from massive data sets, this data science course will give you the fundamentals you need. Data Scientists enjoy one of the top-paying jobs, with an average salary of $120,000 according to Glassdoor and Indeed. That's just the average! And it's not just about money - it's interesting work too!
If you've got some programming or scripting experience, this course will teach you the techniques used by real data scientists and machine learning practitioners in the tech industry - and prepare you for a move into this hot career path. This comprehensive machine learning tutorial includes over 100 lectures spanning 14 hours of video, and most topics include hands-on Python code examples you can use for reference and for practice. I’ll draw on my 9 years of experience at Amazon and IMDb to guide you through what matters, and what doesn’t.
Each concept is introduced in plain English, avoiding confusing mathematical notation and jargon. It’s then demonstrated using Python code you can experiment with and build upon, along with notes you can keep for future reference. You won't find academic, deeply mathematical coverage of these algorithms in this course - the focus is on practical understanding and application of them. At the end, you'll be given a final project to apply what you've learned!
The topics in this course come from an analysis of real requirements in data scientist job listings from the biggest tech employers. We'll cover the machine learning, AI, and data mining techniques real employers are looking for, including:
• Deep Learning / Neural Networks (MLP's, CNN's, RNN's) with TensorFlow and Keras
• Data Visualization in Python with MatPlotLib and Seaborn
• Transfer Learning
• Sentiment analysis
• Image recognition and classification
• Regression analysis
• K-Means Clustering
• Principal Component Analysis
• Train/Test and cross validation
• Bayesian Methods
• Decision Trees and Random Forests
• Multiple Regression
• Multi-Level Models
• Support Vector Machines
• Reinforcement Learning
• Collaborative Filtering
• K-Nearest Neighbor
• Bias/Variance Tradeoff
• Ensemble Learning
• Term Frequency / Inverse Document Frequency
• Experimental Design and A/B Tests
• Feature Engineering
• Hyperparameter Tuning
...and much more! There's also an entire section on machine learning with Apache Spark, which lets you scale up these techniques to "big data" analyzed on a computing cluster. And you'll also get access to this course's Facebook Group, where you can stay in touch with your classmates.
If you're new to Python, don't worry - the course starts with a crash course. If you've done some programming before, you should pick it up quickly. This course shows you how to get set up on Microsoft Windows-based PC's, Linux desktops, and Macs.
If you’re a programmer looking to switch into an exciting new career track, or a data analyst looking to make the transition into the tech industry – this course will teach you the basic techniques used by real-world industry data scientists. These are topics any successful technologist absolutely needs to know about, so what are you waiting for? Enroll now!
• "I started doing your course in 2015... Eventually I got interested and never thought that I will be working for corporate before a friend offered me this job. I am learning a lot which was impossible to learn in academia and enjoying it thoroughly. To me, your course is the one that helped me understand how to work with corporate problems. How to think to be a success in corporate AI research. I find you the most impressive instructor in ML, simple yet convincing." - Kanad Basu, PhD
Who this course is for:
• Software developers or programmers who want to transition into the lucrative data science and machine learning career path will learn a lot from this course.
• Technologists curious about how deep learning really works
• Data analysts in the finance or other non-tech industries who want to transition into the tech industry can use this course to learn how to analyze data using code instead of tools. But, you'll need some prior experience in coding or scripting to be successful.
• If you have no prior coding or scripting experience, you should NOT take this course - yet. Go take an introductory Python course first. |
Machine Learning Data Science and Deep Learning with Python
Machine Learning, Data Science and Deep Learning with Python
8. Apache Spark Machine Learning on Big Data
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7. [Activity] Decision Trees in Spark.mp4 (193.2 MB)
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1. Warning about Java 10!.html (0.4 KB)
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2. [Activity] Installing Spark - Part 1.mp4 (87.4 MB)
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2. [Activity] Installing Spark - Part 1.vtt (15.1 KB)
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2.1 winutils.exe.html (0.1 KB)
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3. [Activity] Installing Spark - Part 2.mp4 (172.3 MB)
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3. [Activity] Installing Spark - Part 2.vtt (25.6 KB)
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3.1 winutils.exe.html (0.1 KB)
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4. Spark Introduction.mp4 (89.9 MB)
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4. Spark Introduction.vtt (19.2 KB)
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5. Spark and the Resilient Distributed Dataset (RDD).mp4 (98.5 MB)
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5. Spark and the Resilient Distributed Dataset (RDD).vtt (22.2 KB)
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6. Introducing MLLib.mp4 (54.7 MB)
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6. Introducing MLLib.vtt (10.4 KB)
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7. [Activity] Decision Trees in Spark.mp4.jpg (118.3 KB)
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7. [Activity] Decision Trees in Spark.txt (0.2 KB)
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7. [Activity] Decision Trees in Spark.vtt (29.4 KB)
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8. [Activity] K-Means Clustering in Spark.mp4 (133.8 MB)
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8. [Activity] K-Means Clustering in Spark.vtt (20.2 KB)
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9. TF IDF.mp4 (68.8 MB)
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9. TF IDF.vtt (12.7 KB)
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10. [Activity] Searching Wikipedia with Spark.mp4 (111.5 MB)
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10. [Activity] Searching Wikipedia with Spark.vtt (14.0 KB)
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11. [Activity] Using the Spark 2.0 DataFrame API for MLLib.mp4 (113.8 MB)
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11. [Activity] Using the Spark 2.0 DataFrame API for MLLib.vtt (15.8 KB)
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ReadMe.txt (0.4 KB)
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Visit Coursedrive.net.url (0.1 KB)
1. Getting Started
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1. Introduction.mp4 (59.6 MB)
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1. Introduction.vtt (4.2 KB)
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2. Udemy 101 Getting the Most From This Course.mp4 (19.8 MB)
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2. Udemy 101 Getting the Most From This Course.vtt (3.6 KB)
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3. [Activity] Getting What You Need.mp4 (28.1 MB)
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3. [Activity] Getting What You Need.vtt (4.2 KB)
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3.1 Course Facebook Group.html (0.1 KB)
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3.2 Course materials and setup steps.html (0.1 KB)
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4. [Activity] Installing Enthought Canopy.mp4 (109.0 MB)
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4. [Activity] Installing Enthought Canopy.vtt (12.4 KB)
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4.1 Enthought Canopy website.html (0.1 KB)
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5. Python Basics, Part 1 [Optional].mp4 (133.8 MB)
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5. Python Basics, Part 1 [Optional].vtt (32.1 KB)
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6. [Activity] Python Basics, Part 2 [Optional].mp4 (77.2 MB)
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6. [Activity] Python Basics, Part 2 [Optional].vtt (18.9 KB)
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7. Running Python Scripts [Optional].mp4 (44.7 MB)
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7. Running Python Scripts [Optional].vtt (8.2 KB)
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8. Introducing the Pandas Library [Optional].mp4 (127.9 MB)
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8. Introducing the Pandas Library [Optional].vtt (15.7 KB)
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Visit DazX Blog on SAnet.ST for more.url (0.1 KB)
2. Statistics and Probability Refresher, and Python Practise
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1. Types of Data.mp4 (77.2 MB)
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1. Types of Data.vtt (14.7 KB)
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2. Mean, Median, Mode.mp4 (56.1 MB)
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2. Mean, Median, Mode.vtt (11.7 KB)
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3. [Activity] Using mean, median, and mode in Python.mp4 (92.7 MB)
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3. [Activity] Using mean, median, and mode in Python.vtt (16.5 KB)
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4. [Activity] Variation and Standard Deviation.mp4 (110.8 MB)
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4. [Activity] Variation and Standard Deviation.vtt (23.3 KB)
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5. Probability Density Function; Probability Mass Function.mp4 (30.1 MB)
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5. Probability Density Function; Probability Mass Function.vtt (6.9 KB)
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6. Common Data Distributions.mp4 (75.4 MB)
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6. Common Data Distributions.vtt (14.6 KB)
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7. [Activity] Percentiles and Moments.mp4 (114.0 MB)
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7. [Activity] Percentiles and Moments.vtt (25.5 KB)
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8. [Activity] A Crash Course in matplotlib.mp4 (129.3 MB)
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8. [Activity] A Crash Course in matplotlib.vtt (25.8 KB)
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9. [Activity] Covariance and Correlation.mp4 (116.7 MB)
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9. [Activity] Covariance and Correlation.vtt (23.4 KB)
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10. [Exercise] Conditional Probability.mp4 (130.4 MB)
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10. [Exercise] Conditional Probability.mp4.jpg (104.3 KB)
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10. [Exercise] Conditional Probability.txt (0.2 KB)
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10. [Exercise] Conditional Probability.vtt (23.3 KB)
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11. Exercise Solution Conditional Probability of Purchase by Age.mp4 (28.7 MB)
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11. Exercise Solution Conditional Probability of Purchase by Age.vtt (4.5 KB)
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12. Bayes' Theorem.mp4 (58.9 MB)
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12. Bayes' Theorem.vtt (10.4 KB)
3. Predictive Models
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1. [Activity] Linear Regression.mp4 (100.5 MB)
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1. [Activity] Linear Regression.vtt (23.1 KB)
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2. [Activity] Polynomial Regression.mp4 (66.8 MB)
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2. [Activity] Polynomial Regression.vtt (15.9 KB)
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3. [Activity] Multivariate Regression, and Predicting Car Prices.mp4 (123.8 MB)
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3. [Activity] Multivariate Regression, and Predicting Car Prices.vtt (22.6 KB)
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4. Multi-Level Models.mp4 (47.5 MB)
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4. Multi-Level Models.vtt (9.7 KB)
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Visit DazX Blog on SAnet.ST for more.url (0.1 KB)
4. Machine Learning with Python
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1. Supervised vs. Unsupervised Learning, and TrainTest.mp4 (98.6 MB)
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1. Supervised vs. Unsupervised Learning, and TrainTest.vtt (18.9 KB)
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2. [Activity] Using TrainTest to Prevent Overfitting a Polynomial Regression.mp4 (58.1 MB)
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2. [Activity] Using TrainTest to Prevent Overfitting a Polynomial Regression.vtt (11.9 KB)
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3. Bayesian Methods Concepts.mp4 (40.7 MB)
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3. Bayesian Methods Concepts.vtt (8.0 KB)
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4. [Activity] Implementing a Spam Classifier with Naive Bayes.mp4 (89.1 MB)
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4. [Activity] Implementing a Spam Classifier with Naive Bayes.vtt (15.8 KB)
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5. K-Means Clustering.mp4 (71.9 MB)
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5. K-Means Clustering.vtt (15.6 KB)
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6. [Activity] Clustering people based on income and age.mp4 (57.3 MB)
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6. [Activity] Clustering people based on income and age.vtt (10.5 KB)
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7. Measuring Entropy.mp4 (35.0 MB)
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7. Measuring Entropy.vtt (6.3 KB)
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8. [Activity] Install GraphViz.html (1.5 KB)
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9. De
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