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A1Trainings best Online Training Institute provides best Data Science online training by our Highly Professional and certified Trainers Live projects in Hyderabad, Bangalore, Chennai, Pune @ 91-7680813158
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A1Trainings Data Science Online Training|Online Data Science Training in USA, UK, Canada, Australia, India
Data Science Introduction and Toolbox :Getting Started with Github • Introduction to Git • Introduction to Github • Creating a Github Repository • Basic Git Commands • Basic Markdown
Getting Started with R • Overview of R • R data types and Objects • Getting Data In and Out of R • Subsetting R Objects • Dates and Times
Getting Started with R • Control structures • Functions • Scoping rules of R • Coding Standards for R • Dates and times
Getting Started with R • Loop Functions • Vectorizing a Function • Debugging • Profiling R Code • Simulation
Data Extraction, Preparation and Manipulation ( R, MYSQL, HDFS, HIVE and SQOOP):Data Extraction • Downloading Files • Reading Local Files • Reading Excel Files • Reading JSON • Reading XML • Reading From WEB • Reading From API
Data Extraction • Reading From HDFS • Reading From MYSQL • SQOOP • Reading FROM HIVE • Saving and Transporting Object • Reading Complex Structure
Data Preparation • Subsetting and Sorting • Summarizing Data • Creating New Variable • Regular Expression • Working With Dates
Data Manipulation • Managing DataFrame with dplyr package • Reshaping Data • Merging Data
Descriptive Statistics • Univariate Data and Bivariate Data • Categorical and Numerical Data • Frequency Histogram and Bar Charts • Summarizing Statistical Data • Box Plot, Scatter Plot, Bar Plot, Pie Chart
Probability • Conditional Probability • Bayes Rule • Probability Distribution • Correlation vs Causation • Average • Variance • Outliers • Statistical Distribution • Binomial Distribution • Central Limit Theorem • Normal Distribution • 68-95-99.7 % Rule • Relationship Between Binomial and Normal Distribution
Hypothesis Testing • Hypothesis Testing • Case Studies
Inferential Statistics • Testing of Hypothesis • Level of Significance • Comparison Between Sample Mean and Population Mean • z- Test • t- Test
ANOVA (f- Test) • ANCOVA • MANOVA • MANCOVA
Regression and Correlation • Regression • Correlation • CHI-SQUARE
Principal Of Analytic Graph Introduction to ggvis • Exploratory and Explainatory • Design Principle • Load ggvis and start to explore • Plotting System in R • ggvis - graphics grammar
Lines and Syntax • Properties for Lines • Properties for Points • Display Model Fits
Transformations • ggvis and dplyr
HTMLWIDGET • Geo-Spatial Map • Time Series Chart • Network Node
Predictive Models and Machine Learning Algorithm - Supervised Regression RegressionAnalysis • Linear Regression • Non- Linear Regression • Polynomial Regression • Curvilinear Regression
Multiple Linear Regression • Collect Data • Explore and Prepare the data • Train a model on the data • Evaluate Model Performance • Improve Model Performance
Logistic Regression • Collect Data • Explore and Prepare the data • Train a model on the data • Evaluate Model Performance • Improve Model Performance
Time Series Forecast • Collect Data • Explore and Prepare the data • Train a model on the data • Evaluate Model Performance • Improve Model Performance
Predictive Models and Machine Learning Algorithm - Supervised ClassificationNaïve Bayes • Collect Data • Explore and Prepare the data • Train a model on the data • Evaluate Model Performance • Improve Model Performance
Support Vector Machine • Collect Data • Explore and Prepare the data • Train a model on the data • Evaluate Model Performance • Improve Model Performance
Random Forest • Collect Data • Explore and Prepare the data • Train a model on the data • Evaluate Model Performance • Improve Model Performance
K- Nearest Neighbors • Collect Data • Explore and Prepare the data • Train a model on the data • Evaluate Model Performance • Improve Model Performance
Classification and Regression Tree (CART) • Collect Data • Explore and Prepare the data • Train a model on the data • Evaluate Model Performance • Improve Model Performance
Predictive Models and Machine Learning Algorithm - UnsupervisedK Mean Cluster • Collect Data • Explore and Prepare the data • Train a model on the data • Evaluate Model Performance • Improve Model Performance
Apriori Algorithm • Collect Data • Explore and Prepare the data • Train a model on the data • Evaluate Model Performance • Improve Model Performance
Case Study : Customer Analytic - Customer Lifetime Value • Collect Data • Explore and Prepare the data • Train a model on the data • Evaluate Model Performance • Improve Model Performance
Text Mining, Natural Language Processing and Social Network AnalysisNatural Language Processing • Collect Data • Explore and Prepare the data • Train a model on the data • Evaluate Model Performance • Improve Model Performance
Social Network Analysis • Collect Data • Explore and Prepare the data • Train a model on the data • Evaluate Model Performance • Improve Model Performance
Capstone Project • Saving R Script • Scheduling R Script
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