Udemy | Complete Data Science Training with Python for Data Analysis [FTU]

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1. Introduction to the Data Science in Python Bootcamp
  • 1. What is Data Science.mp4 (17.4 MB)
  • 1. What is Data Science.vtt (4.0 KB)
  • 2. Introduction to the Course Instructor.m4v (55.6 MB)
  • 2. Introduction to the Course Instructor.vtt (13.5 KB)
  • 3. Data For the Course.html (0.1 KB)
  • 3.1 scriptsLecture.zip.zip (308.0 MB)
  • 4. Introduction to the Python Data Science Tool.mp4 (25.0 MB)
  • 4. Introduction to the Python Data Science Tool.vtt (10.1 KB)
  • 5. For Mac Users.mp4 (10.2 MB)
  • 5. For Mac Users.vtt (3.9 KB)
  • 6. Introduction to the Python Data Science Environment.mp4 (40.3 MB)
  • 6. Introduction to the Python Data Science Environment.vtt (17.2 KB)
  • 7. Some Miscellaneous IPython Usage Facts.mp4 (12.0 MB)
  • 7. Some Miscellaneous IPython Usage Facts.vtt (4.5 KB)
  • 8. Online iPython Interpreter.mp4 (7.7 MB)
  • 8. Online iPython Interpreter.vtt (3.4 KB)
  • 9. Conclusion to Section 1.mp4 (6.5 MB)
  • 9. Conclusion to Section 1.vtt (3.1 KB)
10. Unsupervised Learning in Python
  • 1. Unsupervised Classification- Some Basic Ideas.mp4 (6.2 MB)
  • 1. Unsupervised Classification- Some Basic Ideas.vtt (1.8 KB)
  • 10. Principal Component Analysis (PCA)-Practical Implementation.mp4 (9.1 MB)
  • 10. Principal Component Analysis (PCA)-Practical Implementation.vtt (4.2 KB)
  • 11. Conclusions to Section 10.mp4 (5.5 MB)
  • 11. Conclusions to Section 10.vtt (2.5 KB)
  • 2. KMeans-theory.mp4 (5.1 MB)
  • 2. KMeans-theory.vtt (2.5 KB)
  • 3. KMeans-implementation on the iris data.mp4 (19.5 MB)
  • 3. KMeans-implementation on the iris data.vtt (7.6 KB)
  • 4. Quantifying KMeans Clustering Performance.mp4 (9.6 MB)
  • 4. Quantifying KMeans Clustering Performance.vtt (4.4 KB)
  • 5. KMeans Clustering with Real Data.mp4 (12.1 MB)
  • 5. KMeans Clustering with Real Data.vtt (4.5 KB)
  • 6. How Do We Select the Number of Clusters.mp4 (19.0 MB)
  • 6. How Do We Select the Number of Clusters.vtt (4.2 KB)
  • 7. Hierarchical Clustering-theory.mp4 (10.2 MB)
  • 7. Hierarchical Clustering-theory.vtt (5.0 KB)
  • 8. Hierarchical Clustering-practical.mp4 (29.4 MB)
  • 8. Hierarchical Clustering-practical.vtt (9.5 KB)
  • 9. Principal Component Analysis (PCA)-Theory.mp4 (5.9 MB)
  • 9. Principal Component Analysis (PCA)-Theory.vtt (3.0 KB)
11. Supervised Learning
  • 1. What is This Section About.mp4 (24.9 MB)
  • 1. What is This Section About.vtt (11.5 KB)
  • 10. knn-Classification.mp4 (18.2 MB)
  • 10. knn-Classification.vtt (8.0 KB)
  • 11. knn-Regression.mp4 (8.4 MB)
  • 11. knn-Regression.vtt (4.0 KB)
  • 12. Gradient Boosting-classification.mp4 (15.0 MB)
  • 12. Gradient Boosting-classification.vtt (6.0 KB)
  • 13. Gradient Boosting-regression.mp4 (10.9 MB)
  • 13. Gradient Boosting-regression.vtt (3.7 KB)
  • 14. Voting Classifier.mp4 (9.5 MB)
  • 14. Voting Classifier.vtt (3.8 KB)
  • 15. Conclusions to Section 11.mp4 (7.2 MB)
  • 15. Conclusions to Section 11.vtt (2.9 KB)
  • 16. Section 11 Quiz.html (0.2 KB)
  • 2. Data Preparation for Supervised Learning.mp4 (28.3 MB)
  • 2. Data Preparation for Supervised Learning.vtt (10.1 KB)
  • 3. Pointers on Evaluating the Accuracy of Classification and Regression Modelling.mp4 (24.0 MB)
  • 3. Pointers on Evaluating the Accuracy of Classification and Regression Modelling.vtt (10.5 KB)
  • 4. Using Logistic Regression as a Classification Model.mp4 (20.6 MB)
  • 4. Using Logistic Regression as a Classification Model.vtt (8.7 KB)
  • 5. RF-Classification.mp4 (28.5 MB)
  • 5. RF-Classification.vtt (12.2 KB)
  • 6. RF-Regression.mp4 (23.6 MB)
  • 6. RF-Regression.vtt (9.7 KB)
  • 7. SVM- Linear Classification.mp4 (7.4 MB)
  • 7. SVM- Linear Classification.vtt (3.2 KB)
  • 8. SVM- Non Linear Classification.mp4 (5.1 MB)
  • 8. SVM- Non Linear Classification.vtt (2.3 KB)
  • 9. Support Vector Regression.mp4 (10.2 MB)
  • 9. Support Vector Regression.vtt (4.3 KB)
12. Artificial Neural Networks (ANN) and Deep Learning (DL)
  • 1. Theory Behind ANN and DNN.mp4 (22.6 MB)
  • 1. Theory Behind ANN and DNN.vtt (9.9 KB)
  • 10. Specify the Activation Function.mp4 (6.2 MB)
  • 10. Specify the Activation Function.vtt (2.2 KB)
  • 11. H2O Deep Learning For Predictions.mp4 (12.0 MB)
  • 11. H2O Deep Learning For Predictions.vtt (5.2 KB)
  • 12. Conclusions to Section 12.mp4 (5.2 MB)
  • 12. Conclusions to Section 12.vtt (2.1 KB)
  • 13. Section 12 Quiz.html (0.2 KB)
  • 2. Perceptrons for Binary Classification.mp4 (10.0 MB)
  • 2. Perceptrons for Binary Classification.vtt (4.7 KB)
  • 3. Getting Started with ANN-binary classification.mp4 (8.5 MB)
  • 3. Getting Started with ANN-binary classification.vtt (3.5 KB)
  • 4. Multi-label classification with MLP.mp4 (13.5 MB)
  • 4. Multi-label classification with MLP.vtt (4.8 KB)
  • 5. Regression with MLP.mp4 (9.0 MB)
  • 5. Regression with MLP.vtt (3.5 KB)
  • 6. MLP with PCA on a Large Dataset.mp4 (19.2 MB)
  • 6. MLP with PCA on a Large Dataset.vtt (7.6 KB)
  • 7. Start With Deep Neural Network (DNN).html (0.2 KB)
  • 8. Start with H20.mp4 (12.1 MB)
  • 8. Start with H20.vtt (4.3 KB)
  • 9. Default H2O Deep Learning Algorithm.mp4 (8.2 MB)

Description

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Complete Guide to Practical Data Science with Python: Learn Statistics, Visualization, Machine Learning & More

BESTSELLER

Created by : Minerva Singh
Last updated : 1/2019
Language : English
Caption (CC) : Included
Torrent Contains : 253 Files, 14 Folders
Course Source : https://www.udemy.com/complete-data-science-training-with-python-for-data-analysis/

What you'll learn

• Install Anaconda & Work Within The iPytjhon/Jupyter Environment, A Powerful Framework For Data Science Analysis
• Become Proficient In Using The Most Common Python Data Science Packages Including Numpy, Pandas, Scikit & Matplotlib
• Be Able To Read In Data From Different Sources (Including Webpage Data) & Clean The Data
• Carry Out Data Exploratory & Pre-processing Tasks Such As Tabulation, Pivoting & Data Summarizing In Python
• Become Proficient In Working With Real Life Data Collected From Different Sources
• Carry Out Data Visualization & Understand Which Techniques To Apply When
• Carry Out The Most Common Statistical Data Analysis Techniques In Python Including T-Tests & Linear Regression
• Understand The Difference Between Machine Learning & Statistical Data Analysis
• Implement Different Unsupervised Learning Techniques On Real Life Data
• Implement Supervised Learning (Both In The Form Of Classification & Regression) Techniques On Real Data
• Evaluate The Accuracy & Generality Of Machine Learning Models
• Build Basic Neural Networks & Deep Learning Algorithms
• Use The Powerful H2o Framework For Implementing Deep Neural Networks

Course content
all 124 lectures 12:56:56

Requirements

• Be Able To Use PC At A Beginner Level, Including Being Able To Install Programs
• A Desire To Learn Data Science
• Prior Knowledge Of Python Will Be Useful But NOT Necessary

Description

THIS IS A COMPLETE DATA SCIENCE TRAINING WITH PYTHON FOR DATA ANALYSIS :

It's A Full 12-Hour Python Data Science BootCamp To Help You Learn Statistical Modelling, Data Visualization, Machine Learning & Basic Deep Learning In Python!

HERE IS WHY YOU SHOULD TAKE THIS COURSE :

First of all, this course a complete guide to practical data science using Python...

That means, this course covers ALL the aspects of practical data science and if you take this course alone, you can do away with taking other courses or buying books on Python based data science.

In this age of big data, companies across the globe use Python to sift through the avalanche of information at their disposal. By storing, filtering, managing, and manipulating data in Python, you can give your company a competitive edge & boost your career to the next level!

THIS IS MY PROMISE TO YOU:

COMPLETE THIS ONE COURSE & BECOME A PRO IN PRACTICAL PYTHON BASED DATA SCIENCE!


But, first things first, My name is MINERVA SINGH and I am an Oxford University MPhil (Geography and Environment) graduate. I recently finished a PhD at Cambridge University (Tropical Ecology and Conservation).

I have several years of experience in analyzing real life data from different sources using data science related techniques and producing publications for international peer reviewed journals.

Over the course of my research I realized almost all the Python data science courses and books out there do not account for the multidimensional nature of the topic and use data science interchangeably with machine learning...

This gives student an incomplete knowledge of the subject. This course will give you a robust grounding in all aspects of data science, from statistical modeling to visualization to machine learning.

Unlike other Python instructors, I dig deep into the statistical modeling features of Python and gives you a one-of-a-kind grounding in Python Data Science!

You will go all the way from carrying out simple visualizations and data explorations to statistical analysis to machine learning to finally implementing simple deep learning based models using Python

DISCOVER 12 COMPLETE SECTIONS ADDRESSING EVERY ASPECT OF PYTHON DATA SCIENCE (INCLUDING) :

• A full introduction to Python Data Science and powerful Python driven framework for data science, Anaconda
• Getting started with Jupyter notebooks for implementing data science techniques in Python
• A comprehensive presentation about basic analytical tools- Numpy Arrays, Operations, Arithmetic, Equation-solving, Matrices, Vectors, Broadcasting, etc.
• Data Structures and Reading in Pandas, including CSV, Excel, JSON, HTML data
• How to Pre-Process and “Wrangle” your Python data by removing NAs/No data, handling conditional data, grouping by attributes, etc.
• Creating data visualizations like histograms, boxplots, scatterplots, barplots, pie/line charts, and more!
• Statistical analysis, statistical inference, and the relationships between variables
• Machine Learning, Supervised Learning, Unsupervised Learning in Python
• You’ll even discover how to create artificial neural networks and deep learning structures...& MUCH MORE!

With this course, you’ll have the keys to the entire Python Data Science kingdom!

NO PRIOR PYTHON OR STATISTICS/MACHINE LEARNING KNOWLEDGE IS REQUIRED :

You’ll start by absorbing the most valuable Python Data Science basics and techniques...

I use easy-to-understand, hands-on methods to simplify and address even the most difficult concepts in Python.

My course will help you implement the methods using real data obtained from different sources. Many courses use made-up data that does not empower students to implement Python based data science in real life.

After taking this course, you’ll easily use packages like Numpy, Pandas, and Matplotlib to work with real data in Python.

You’ll even understand deep concepts like statistical modeling in Python’s Statsmodels package and the difference between statistics and machine learning (including hands-on techniques).

I will even introduce you to deep learning and neural networks using the powerful H2o framework!

With this Powerful All-In-One Python Data Science course, you’ll know it all: visualization, stats, machine learning, data mining, and deep learning!

The underlying motivation for the course is to ensure you can apply Python based data science on real data and put into practice today. Start analyzing data for your own projects, whatever your skill level and IMPRESS your potential employers with actual examples of your data science abilities.

HERE IS WHAT THIS COURSE WILL DO FOR YOU :

This course is your one shot way of acquiring the knowledge of statistical data analysis skills that I acquired from the rigorous training received at two of the best universities in the world, perusal of numerous books and publishing statistically rich papers in renowned international journal like PLOS One.

This course will:

(a) Take students without a prior Python and/or statistics background background from a basic level to performing some of the most common advanced data science techniques using the powerful Python based Jupyter notebooks.

(b) Equip students to use Python for performing different statistical data analysis and visualization tasks for data modelling.

(c) Introduce some of the most important statistical and machine learning concepts to students in a practical manner such that students can apply these concepts for practical data analysis and interpretation.

(d) Students will get a strong background in some of the most important data science techniques.

(e) Students will be able to decide which data science techniques are best suited to answer their research questions and applicable to their data and interpret the results.

It is a practical, hands-on course, i.e. we will spend some time dealing with some of the theoretical concepts related to data science. However, majority of the course will focus on implementing different techniques on real data and interpret the results. After each video you will learn a new concept or technique which you may apply to your own projects.

JOIN THE COURSE NOW!

Who this course is for :

• Anyone Who Wishes To Learn Practical Data Science Using Python
• Anyone Interested In Learning How To Implement Machine Learning Algorithms Using Python
• People Looking To Get Started In Deep Learning Using Python
• People Looking To Work With Real Life Data In Python
• Anyone With A Prior Knowledge Of Python Looking To Branch Out Into Data Analysis
• Anyone Looking To Become Proficient In Exploratory Data Analysis, Statistical Modelling & Visualizations Using iPython.





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Udemy | Complete Data Science Training with Python for Data Analysis [FTU]


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