Udemy
  •  
  •  
  •  
  •  
  •  
  •  
  •  
  •  
  •  
  •  
  •  
  •  
  •  
Development
Web Development Data Science Mobile Development Programming Languages Game Development Database Design & Development Software Testing Software Engineering Development Tools No-Code Development
Business
Entrepreneurship Communications Management Sales Business Strategy Operations Project Management Business Law Business Analytics & Intelligence Human Resources Industry E-Commerce Media Real Estate Other Business
Finance & Accounting
Accounting & Bookkeeping Compliance Cryptocurrency & Blockchain Economics Finance Finance Cert & Exam Prep Financial Modeling & Analysis Investing & Trading Money Management Tools Taxes Other Finance & Accounting
IT & Software
IT Certification Network & Security Hardware Operating Systems Other IT & Software
Office Productivity
Microsoft Apple Google SAP Oracle Other Office Productivity
Personal Development
Personal Transformation Personal Productivity Leadership Career Development Parenting & Relationships Happiness Esoteric Practices Religion & Spirituality Personal Brand Building Creativity Influence Self Esteem & Confidence Stress Management Memory & Study Skills Motivation Other Personal Development
Design
Web Design Graphic Design & Illustration Design Tools User Experience Design Game Design Design Thinking 3D & Animation Fashion Design Architectural Design Interior Design Other Design
Marketing
Digital Marketing Search Engine Optimization Social Media Marketing Branding Marketing Fundamentals Marketing Analytics & Automation Public Relations Advertising Video & Mobile Marketing Content Marketing Growth Hacking Affiliate Marketing Product Marketing Other Marketing
Lifestyle
Arts & Crafts Beauty & Makeup Esoteric Practices Food & Beverage Gaming Home Improvement Pet Care & Training Travel Other Lifestyle
Photography & Video
Digital Photography Photography Portrait Photography Photography Tools Commercial Photography Video Design Other Photography & Video
Health & Fitness
Fitness General Health Sports Nutrition Yoga Mental Health Dieting Self Defense Safety & First Aid Dance Meditation Other Health & Fitness
Music
Instruments Music Production Music Fundamentals Vocal Music Techniques Music Software Other Music
Teaching & Academics
Engineering Humanities Math Science Online Education Social Science Language Teacher Training Test Prep Other Teaching & Academics
AWS Certification Microsoft Certification AWS Certified Solutions Architect - Associate AWS Certified Cloud Practitioner CompTIA A+ Cisco CCNA Amazon AWS CompTIA Security+ AWS Certified Developer - Associate
Photoshop Graphic Design Adobe Illustrator Drawing Digital Painting InDesign Character Design Figure Drawing Canva
Life Coach Training Neuro-Linguistic Programming Mindfulness Personal Development Personal Transformation Meditation Life Purpose Emotional Intelligence CBT
Web Development JavaScript React CSS Angular PHP WordPress Node.Js Python
Google Flutter Android Development iOS Development Swift React Native Dart Programming Language Mobile Development Kotlin SwiftUI
Digital Marketing Google Ads (Adwords) Social Media Marketing Google Ads (AdWords) Certification Marketing Strategy Internet Marketing YouTube Marketing Email Marketing Retargeting
SQL Microsoft Power BI Tableau Business Analysis Business Intelligence MySQL Data Analysis Data Modeling Data Science
Business Fundamentals Entrepreneurship Fundamentals Business Strategy Online Business Business Plan Startup Freelancing Blogging Home Business
Unity Game Development Fundamentals Unreal Engine C# 3D Game Development C++ 2D Game Development Unreal Engine Blueprints Blender
30-Day Money-Back Guarantee
Development Data Science Machine Learning

Machine Learning and Data Science Hands-on with Python and R

Machine Learning, Statistics, Python, AI, Tensorflow, AWS, Deep Learning, R Programming, NLP, Bayesian, BI and much more
Rating: 3.8 out of 53.8 (1,276 ratings)
47,103 students
Created by EDU CBA
Last updated 8/2020
English
English [Auto]
30-Day Money-Back Guarantee

What you'll learn

  • Learn the use of Python for Data Science and Machine Learning
  • Master Machine Learning on Python & R
  • Master Machine Learning on Tensorflow
  • Learn Statistics, Python, Artificial Intelligence AI, Tensorflow, AWS.
  • Learn Deep Learning, R Programming, NLP, Bayesian Methods, A/B Testing, Business Intelligence BI, Regression.
  • Learn Hypothesis Testing, Algebra, Adaboost Regressor, Gaussian, Heuristic.
  • Learn Numpy, Pandas, Metplotlit, Seaborn.
  • Learn Forecasting, Distribution, Normalization, Trend Analysis, Predictive Modeling, Fraud Detection.
  • Learn Neural Network, Sequential Model, Data Visualization, Data Analysis, Data Manipulation, KNN Algorithm.
  • Learn Decision Tree, Random Forests, Kmeans Clustering, Vector Machine, Time Series Analysis, Market Basket Analysis

Course content

14 sections • 522 lectures • 72h 16m total length

  • Preview04:44
  • Preview03:44
  • Preview09:33
  • Big Data Machine Learning
    07:57
  • Emerging Trends Machine Learning
    08:45
  • Data Mining
    08:21
  • Data Mining Continues
    06:58
  • Supervised and Unsupervised
    07:52
  • Sampling Method in Machine Learning
    07:34
  • Technical Terminology
    11:25
  • Error of Observation and Non Observation
    07:05
  • Systematic Sampling
    08:26
  • Cluster Sampling
    10:52
  • Statistics Data Types
    05:10
  • Qualitative Data and Visualization
    07:52
  • Machine Learning
    08:25
  • Relative Frequency Probability
    09:13
  • Joint Probability
    10:26
  • Conditional Probability
    08:34
  • Concept of Independence
    06:32
  • Total Probability
    10:19
  • Random Variable
    08:58
  • Probability Distribution
    11:17
  • Cumulative Probability Distribution
    09:30
  • Bernoulli Distribution
    08:56
  • Gaussian Distribution
    08:18
  • Geometric Distribution
    08:03
  • Continuous and Normal Distribution
    10:11
  • Mathematical Expression and Computation
    08:56
  • Transpose of Matrix
    08:59
  • Properties of Matrix
    11:35
  • Determinants
    09:53
  • Error Types
    09:02
  • Critical Value Approach
    08:45
  • Right and Left Sided Critical Approach
    09:57
  • P-Value Approach
    10:44
  • P-Value Approach Continues
    09:16
  • Hypothesis Testing
    10:45
  • Left Tail Test
    05:30
  • Two Tail Test
    09:50
  • Confidence Interval
    08:49
  • Example of Confidence Interval
    11:09
  • Normal and Non Normal Distribution
    09:34
  • Normality Test
    09:30
  • Normality Test Continues
    10:12
  • Determining the Transformation
    06:14
  • T-Test
    11:17
  • T-Test Continue
    08:29
  • More on T-Test
    09:06
  • Test of Independence
    10:43
  • Example of Test of Independence
    09:39
  • Goodness of Fit Test
    06:42
  • Example of Goodness of Fit Test
    07:10
  • Co-Variance
    05:28
  • Co-Variance Continues
    07:40

  • Introduction to Machine Learning with Tensorflow
    04:02
  • Understanding Machine Learning
    06:30
  • How do Machines Learns
    11:03
  • Uses of Machine Learning
    07:49
  • Examples with tensorflow by Google
    08:32
  • Setting up the Workstation
    03:06
  • Understanding program languages
    03:16
  • Understanding and Functions of Jupyter
    08:28
  • Learning of Jupyter installation
    02:27
  • Understanding what Anaconda cloud is
    08:06
  • Installation of Anaconda for Windows
    07:14
  • Installation of Anaconda in Linux
    03:22
  • Using the Jupyter notebook
    03:27
  • Getting started with Anaconda
    11:28
  • Determining options for Cloudberry
    04:03
  • Introduction to Third Party Libraries
    03:05
  • Numpy-Array
    12:03
  • Numpy-Array Continue
    09:46
  • Arrays
    11:55
  • Arrays Continue
    06:14
  • Indexing
    07:15
  • Indexing Continue
    09:30
  • Universal Functions
    11:52
  • Introoduction to Pandas
    04:51
  • Pandas Series
    05:36
  • Pandas Series Continue
    05:47
  • Import Randin
    09:13
  • Import Randin Continue
    09:34
  • Paratmeters
    11:10
  • Indexing and Database
    04:22
  • Missing Data
    05:16
  • Missing Data-Groupby
    03:10
  • Missing Data-Groupby Continue
    03:27
  • Concat-Merge-Join
    11:08
  • Operations
    06:23
  • Import-Export
    11:17
  • Python Visualisation
    04:42
  • Mat Plotting
    09:55
  • Multiple Plot Subsections
    06:56
  • API Functionality
    08:05
  • Title of the Plot
    11:18
  • Change Size of Articles
    07:33
  • Two Different Crops
    07:53
  • Mat Plotting Label
    06:12
  • Marker Color
    09:29
  • Create a New Dataframe
    04:20
  • Change the Style
    05:40
  • Index and Value
    04:43
  • Seaborn-Statistical Data Visualization
    06:51
  • seaborn library
    10:50
  • Jointplot
    08:34
  • Pairplot
    10:23
  • Barplot
    10:47
  • Boxplot
    05:58
  • Stripplot
    07:42
  • Matrix
    10:02
  • Matrix Continue
    03:21
  • Grid
    09:40
  • Grid Continue
    05:47
  • Style
    01:32
  • Python Libraries Conclusion
    01:31
  • Introduction To Conda Envirement
    03:41
  • Scikit Learn
    05:10
  • Scikit Learn Continue
    08:11
  • Datasets
    07:49
  • California Dataset
    07:58
  • Data Visualization
    09:12
  • Datavisualization Continue
    08:10
  • Downloading a Test Data
    10:34
  • Population Parameter
    09:05
  • Processing
    11:20
  • Null Values with Median Value
    09:33
  • Replace Missing Values
    03:55
  • Label Enconder
    03:36
  • Import Labelencoder
    08:55
  • Custom Transformation
    02:47
  • Transformer Custom Transformer
    05:35
  • Housing with Custom Colums
    04:58
  • Numeric Hosing Data
    10:32
  • Liner Regression
    07:56
  • Fine Tuning Model
    04:55
  • Fine Tuning Model Continue
    06:27
  • Quick-Recap
    01:35
  • Tensorflow
    07:30
  • Tensorflow-Hello-World
    09:19
  • Basic Ops
    11:11
  • Basic Ops Continue
    10:43
  • More on Basic Ops
    08:54
  • Eager-Mode
    06:30
  • Concept
    09:25
  • Linear-Regression
    04:56
  • Linear-Model
    07:40
  • Matrix Multiplication Function
    11:04
  • Practice for a Simple Linear Model
    04:10
  • Cost Function
    04:00
  • Creative Optimizer
    05:41
  • RR Input and Output Value
    03:31
  • Logistic-Regression
    06:28
  • Global Variabales Initializer
    04:54
  • Run Optimizer
    02:07
  • Create a Range
    06:15
  • Introduction to Neural Networks
    01:22
  • Basic-Concepts
    11:03
  • Activative Functions
    09:17
  • Activative Functions Input to Output
    05:32
  • Classification Functions
    06:53
  • Tensorflow-Playground
    11:52
  • Mnist-Dataset
    10:47
  • Mnist-Dataset Continue
    11:50
  • More on Mnist-Dataset
    08:20

  • Introduction to Shipping and pricing
    03:50
  • Inventory Status
    08:44
  • Defining Data Type
    11:43
  • Data for Validation
    10:35
  • Finding the Corelation
    10:06
  • Density for Numeric Attribute
    10:19
  • Method for Train Control
    04:57
  • Assigning a Training Set
    10:51
  • Mean Absolute Error
    07:28
  • Demand Forecasting
    10:59
  • Distribution of Attributes
    09:34
  • Spending Distribution
    09:21
  • Normalization and Discretization
    12:11

  • Introduction to Supply Chain
    09:15
  • G Plot of Heatmap
    07:33
  • Checking the Function Argument
    09:32
  • Heatmap for Discretized Dataset
    11:11
  • Distinguished Methods with Single
    05:50
  • Analyzing both the Plots
    08:27
  • Defining the Lengths
    09:06
  • Using Different Clusters
    05:36

  • Introduction to Predicting Prices Using Regression
    10:21
  • Proximity to Various Conditions
    09:28
  • Number of Fire Places
    04:27
  • Adding the Test Value
    10:17
  • Index to the ID Column
    08:45
  • Model on Data Set
    10:45
  • Missing Value Imputation
    07:51
  • Substituting Features with Value
    11:43
  • Imputing a Row using at Command
    08:50
  • Replacing Features with Values
    10:38
  • Assigning Quantatative Variables
    06:24
  • Converting Columns to Cordinal Forms
    06:31
  • Evaluating the Garage Finish Colummn
    09:09
  • Checking Shape of Data Frame
    02:27
  • Spliting Data to Train and Test
    11:02
  • Algorithm for Predicting Test Values
    04:03

  • Introduction to Banking System
    06:16
  • Laon Status Grade
    10:19
  • Logistic Regression and Logistic Question
    07:14
  • Beta Value
    05:13
  • Predict Value
    07:13
  • Performance Value
    06:05
  • Fals Positive Rate
    04:04

  • Introduction to Fraud Detection in Credit Payments
    06:06
  • Installation of Packages
    09:35
  • Risk Analytics
    11:09
  • Trading Companies and Stocks
    11:02
  • DEA with Input or Profit and Loss
    09:53
  • Efficiency Profit and Loss
    06:18
  • Rank Functions
    06:31
  • RHS Constaints
    10:38
  • Profit and Loss Report
    08:02
  • VRS
    11:40
  • CRS Efficiency and Efficiency
    05:04

  • Introduction to Amazon Machine Learning (AML)
    08:21
  • Lifecycle of AML
    11:33
  • Connecting to Data Source in AML
    03:50
  • Creating Data Scheme in AML
    06:22
  • Invaild Value and Varible Target in AML
    01:01
  • ML Models in AML
    12:06
  • Manging ML Object in AML
    02:39
  • Creating DataSource Handson
    11:48
  • Creating DataSource Handson Continues
    08:26
  • Example of Data Insight In AML
    10:30
  • More on Data Insight In AML
    08:02
  • ML Model Example in Data Sources
    11:52
  • Creating ML Model Evaluating
    08:50
  • Advanced Setting In ML Model
    04:54
  • Creating ML Model for Batch Prediction
    10:37
  • Batch Prediction Result
    06:37
  • Overvies of ML Model Handson
    08:13
  • ML objects Handson in ML
    05:04

  • Introduction to Deep Learning
    04:53
  • Structure of Neural Network
    05:04
  • Moving Through Neural Network
    06:16
  • Types of Activation Functions
    03:41
  • Optimizing Back Propagation
    07:14
  • Briefing on Tensor Flow
    05:33
  • Installation of Tensor Flow
    02:56
  • Implementatiion on Neural Package
    09:15
  • Implementatiion on Neural Package Continues
    11:04
  • Data for Classifier
    07:25
  • Implementing with Keras
    05:25
  • Values in Data Set
    10:56
  • Components in Data Set
    10:51
  • Models in Data Set
    07:17

  • Intoroduction to NLP
    07:00
  • Text Preprocessing
    06:39
  • Feature Extraction
    01:32
  • NLP Installation
    10:23
  • NLP - Demo
    10:34
  • Replacing Contractions
    10:40
  • Tokenize Dataset
    05:58
  • Remove Stopwords
    06:47
  • Stemming and Lemmatization
    10:42
  • Stemming and Lemmatization Continues
    08:11
  • Convert Token No Stopwords
    06:49
  • Machine Learning Algorithms
    07:42

Requirements

  • No prior knowledge of machine learning required
  • Basic knowledge of R tool is an added advantage
  • Basic Python and Mathematics (Linear Algebra Basics) is an added advantage
  • Computer Access

Description

Learn from well designed, well-crafted study materials on Machine Learning ML, Statistics, Python, Artificial Intelligence AI, Tensorflow, AWS, Deep Learning, R Programming, NLP, Bayesian Methods, A/B Testing, Face Detection, Business Intelligence BI, Regression, Hypothesis Testing, Algebra, Adaboost Regressor, Gaussian, Heuristic, Numpy, Pandas, Metplotlit, Seaborn, Forecasting, Distribution, Normalization, Trend Analysis, Predictive Modeling, Fraud Detection, Neural Network, Sequential Model, Data Visualization, Data Analysis, Data Manipulation, KNN Algorithm, Decision Tree, Random Forests, Kmeans Clustering, Vector Machine, Time Series Analysis, Market Basket Analysis. Learn by doing. Full Lifetime Access.

Get the skills to work with implementations and develop capabilities that you can use to deliver results in a machine learning project. This program will help you build the foundation for a solid career in Machine learning Tools. Machine learning is a scientific discipline that explores the construction and study of algorithms that can learn from data. Such algorithms operate by building a model from example inputs and using that to make predictions or decisions, rather than following strictly static program instructions.

Machine learning is closely related to and often overlaps with computational statistics; a discipline that also specializes in prediction-making. Artificial intelligence is the simulation of human intelligence through machines and mostly through computer systems. Artificial intelligence is a sub field of computer. It enables computers to do things which are normally done by human beings. This program is a comprehensive understanding of AI concepts and its application using Python and iPython.

Machine learning is a scientific discipline that explores the construction and study of algorithms that can learn from data. Such algorithms operate by building a model from example inputs and using that to make predictions or decisions, rather than following strictly static program instructions. Machine learning is closely related to and often overlaps with computational statistics; a discipline that also specializes in prediction-making.

Machine learning is a subfield of computer science stemming from research into artificial intelligence. It has strong ties to statistics and mathematical optimization, which deliver methods, theory and application domains to the field. Machine learning is employed in a range of computing tasks where designing and programming explicit, rule-based algorithms is infeasible. Example applications include spam filtering, optical character recognition (OCR), search engines and computer vision. Machine learning is sometimes conflated with data mining,] although that focuses more on exploratory data analysis. Machine learning and pattern recognition “can be viewed as two facets of the same field.

Machine learning is the science of getting computers to act without being explicitly programmed. In the past decade, machine learning has given us self-driving cars, practical speech recognition, effective web search, and a vastly improved understanding of the human genome. Machine learning is so pervasive today that you probably use it dozens of times a day without knowing it. Many researchers also think it is the best way to make progress towards human-level AI. In this class, you will learn about the most effective machine learning techniques, and gain practice implementing them and getting them to work for yourself. More importantly, you’ll learn about not only the theoretical underpinnings of learning, but also gain the practical know-how needed to quickly and powerfully apply these techniques to new problems.

Machine learning has proven to be a fruitful area of research, spawning a number of different problems and algorithms for their solution. This algorithm vary in their goals,in the available training data, and in the learning strategies. The ability to learn must be part of any system that would claim to possess general intelligence.

Who this course is for:

  • Anyone who wants to learn about Machine Learning.
  • Data Engineers, Software Engineers, Technical managers, Analysts, Architects, IT operations etc.
  • Data scientists, Researchers and Students
  • This course can be taken by anyone. It starts from scratch and has taken care of all concepts required.
  • Any students in college who want to start a career in Data Science.

Instructor

EDU CBA
Learn real world skills online
EDU CBA
  • 3.6 Instructor Rating
  • 5,929 Reviews
  • 183,722 Students
  • 29 Courses

EDUCBA is a leading global provider of skill based education addressing the needs of members across 100+ Countries. We are the LARGEST edu-tech firm in Asia with a portfolio of 5498+ online courses, 205+ Learning Paths, 150+ Job Oriented Programs (JOPs) and 50+ Career based Course Bundles prepared by top notch professionals from the Industry. Our training programs are Job oriented skill based programs demanded by the Industry across Finance, Technology, Business, Design, Data and new and upcoming technology.

  • Udemy for Business
  • Teach on Udemy
  • Get the app
  • About us
  • Contact us
  • Careers
  • Blog
  • Help and Support
  • Affiliate
  • Impressum Kontakt
  • Terms
  • Privacy policy
  • Cookie settings
  • Sitemap
  • Featured courses
Udemy
© 2021 Udemy, Inc.