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Data Science Certification Course using R

Original Price

₹ 14,999/-

 sale Price

₹ 14,999/-

Course length

30 Hours

About the course

Course Curriculum

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Cloudruha’s Data Science Training lets you gain expertise in Machine Learning Algorithms like K-Means Clustering, Decision Trees, Random Forest, and Naive Bayes using R. Data Science Training encompasses a conceptual understanding of Statistics, Time Series, Text Mining and an introduction to Deep Learning. Throughout this Data Science Course, you will implement real-life use-cases on Media, Healthcare, Social Media, Aviation and HR.


Introduction to Data Science


Topics:

  • What is Data Science?

  • What does Data Science involve?

  • Era of Data Science

  • Business Intelligence vs Data Science

  • Life cycle of Data Science

  • Tools of Data Science

  • Introduction to Big Data and Hadoop

  • Introduction to R

  • Introduction to Spark

  • Introduction to Machine Learning


Statistical Inference


Topics:

  • What is Statistical Inference?

  • Terminologies of Statistics

  • Measures of Centers

  • Measures of Spread

  • Probability

  • Normal Distribution

  • Binary Distribution


Data Extraction, Wrangling and Exploration


Topics:

  • Data Analysis Pipeline

  • What is Data Extraction

  • Types of Data

  • Raw and Processed Data

  • Data Wrangling

  • Exploratory Data Analysis

  • Visualization of Data


Introduction to Machine Learning


Topics:

  • What is Machine Learning?

  • Machine Learning Use-Cases

  • Machine Learning Process Flow

  • Machine Learning Categories

  • Supervised Learning algorithm: Linear Regression and Logistic Regression


Classification Techniques


Topics:

  • What are classification and its use cases?

  • What is Decision Tree?

  • Algorithm for Decision Tree Induction

  • Creating a Perfect Decision Tree

  • Confusion Matrix

  • What is Random Forest?

  • What is Navies Bayes?

  • Support Vector Machine: Classification


Unsupervised Learning


Topics:

  • What is Clustering & its use cases

  • What is K-means Clustering?

  • What is C-means Clustering?

  • What is Canopy Clustering?

  • What is Hierarchical Clustering?


Recommender Engines


Topics:

  • What is Association Rules & its use cases?

  • What is Recommendation Engine & it’s working?

  • Types of Recommendations

  • User-Based Recommendation

  • Item-Based Recommendation

  • Difference: User-Based and Item-Based Recommendation

  • Recommendation use cases


Text Mining


Topics:

  • The concepts of text-mining

  • Use cases

  • Text Mining Algorithms

  • Quantifying text

  • TF-IDF

  • Beyond TF-IDF


Time Series


Topics:

  • What is Time Series data?

  • Time Series variables

  • Different components of Time Series data

  • Visualize the data to identify Time Series Components

  • Implement ARIMA model for forecasting

  • Exponential smoothing models

  • Identifying different time series scenario based on which different Exponential Smoothing model can be applied

  • Implement respective ETS model for Forecasting


Deep Learning


Topics:

  • Reinforced Learning

  • Reinforcement learning Process Flow

  • Reinforced Learning Use cases

  • Deep Learning

  • Biological Neural Networks

  • Understand Artificial Neural Networks

  • Building an Artificial Neural Network

  • How ANN works

  • Important Terminologies of ANN’s


Project





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