Data Analytics Hands-on Online Training By Realtime It Experts | Ph:8500122107
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Louisiana » Lake Charles » Lake Charles
Published by: Sri Raja
200
USD
DATA ANALYTICS REALTIME ONLINE TRAINING,CORPORATE TRAINING,JOB SUPPORT AND INTERVIEW SUPPORT BY IT PROFESSIONALS
Big Data Analytics largely involves collecting data from different sources, munge it in a way that it becomes available to be consumed by analysts and finally deliver data products useful to the organization business. The process of converting large amounts of unstructured raw data, retrieved from different sources to a data product useful for organizations forms the core of Big Data Analytics..
FOR FREE DEMO contact :
Email : raj@apex-online-it-training.com
Phone/WhatsApp : +91-(850) 012-2107
USA Number : 214-628-3894
Gtalk : raavi.sriraja@gmail.com
Website : www.apex-online-it-trainings.com
Blog: http://apex-it-online-trainings.blogspot.in
Big Data Analytics Interview Questions and Answers, Recorded Video Sessions, Materials, Mock Interviews Assignments Will be provided
Big Data Analytics Agenda/Syllabus
(we can customize the course Curriculum as per your requirements)
DATA ANALYTICS Course Content
Introduction to Data Science and Statistical Analytics:
• Introduction to Data Science, Use cases
• Need of Business Analytics
• Data Science Life Cycle
• Different tools available for Data Science
Introduction to R:
• Installing R and R-Studio, R packages, R Operators, if statements and loops (for, while, repeat, break, next), switch case
Data Exploration, Data Wrangling and R Data Structure:
• Data exploratory analysis
• R Data Structure (Vector, Scalar, Matrices, Array, Data frame, List), Functions, Apply Functions
Data Visualization:
• Bar Graph (Simple, Grouped, Stacked)
• Histogram, Pi Chart
• Line Chart
• Box (Whisker) Plot, Scatter Plot
Introduction to Statistics:
Terminologies of Statistics
• Measures of Centers
• Measures of Spread
• Probability
• Normal Distribution
• Binary Distribution
• Hypothesis Testing
• Chi Square Test
• ANOVA
Predictive Modeling - 1:
• Supervised Learning - Linear Regression ,Bivariate Regression, Multiple Regression Analysis, Correlation( Positive, negative and neutral)
• Machine Learning Use-Cases, Machine Learning Process Flow, Machine Learning Categories
Predictive Modeling - 2:
• Logistic Regression
Decision Trees:
What is Classification and its use cases?
• What is Decision Tree?
• Algorithm for Decision Tree Induction
• Creating a Perfect Decision Tree
• Confusion Matrix
Random Forest:
• Random Forest
• What is Naive Bayes?
Unsupervised learning:
What is Clustering & its Use Cases?
• What is K-means Clustering?
• What is Hierarchical Clustering?
Association Analysis and Recommendation engine:
• Market Basket Analysis (MBA)
• Association Rules
• Apriori Algorithm for MBA
• Introduction of Recommendation Engine
• Types of Recommendation - User-Based and Item-Based
• Recommendation Use-case
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