Friday, March 29, 2024

best Data Science with R training in marathahalli, bangalore

Course Duration: 45 hours
Attend 3 Free Classes to Check Training Quality
100% Real Time Practical Training with Placement Assistance
(Trained by 15+ years experienced working professionals )

Data Science with R Training Course Content

Introduction to MVC

Statistical Analysis & Data Manipulation - Session 1

  • The Information age
  • Data in every domain
  • The Big Data Problem
  • Enablers
  • What is Data Science
  • Qualities and Responsibilities
  • Application of Data Science
  • Types of Analytics
  • Analytics Life Cycle

Statistical Analysis & Data Manipulation - Session 2

  • Population vs Sample
  • Type of Data Variable
  • Discrete
  • Continuous
  • Binary
  • Nominal
  • Ordinal
  • Random Variable
  • Probability Distribution: Discrete and Continuous

Statistical Analysis & Data Manipulation - Session 3

  • The Measures of Central Tendency
  • The Measure of Spread
  • Summarizing Data
  • Frequency Distribution, Histogram, Cumulative plot, BoxPlot
  • Data Cleansing
  • Missing Value Imputation
  • Outlier Treatment
  • Data Preprocessing
  • Data Standardization
  • Data Normalization

Statistical Analysis & Data Manipulation - Session 4

  • Characteristics of Normal Distribution
  • Application with example
  • Standard Normal Distribution
  • Z-Score Table
  • Application of Z Score
  • Identifying Normal Distribution
  • Skewness and Kurtosis
  • Q-Q Plot

Statistical Analysis & Data Manipulation - Session 5

  • Sampling
  • Sample statistics and population parameters
  • Central Limit Theorem
  • Examples
  • Point Estimate & Confidence Interval
  • Confidence Interval Quiz

Statistical Analysis & Data Manipulation - Session 6

  • Hypothesis Testing
  • Key steps in Hypothesis Testing
  • Criteria for Decision Making
  • Test Statistics
  • P Value/Significance test
  • Two- Tailed Test

Introduction to R

Introduction to R - Session 1

  • Introduction to R
  • Why R
  • Tips and Reminders
  • R Studio
  • R Syntax
  • Data Structures
  • Flow Control
  • Functions

Introduction to R - Session 2

  • Data Analysis with R

Introduction to R - Session 3

  • Data Processing with R

Introduction to Machine Learning- Supervised

Introduction to Machine Learning- Supervised - Session 1

  • Introduction to Machine Learning
  • Parametric Vs Non Parametric
  • Supervised, Unsupervised and Semi-supervised
  • Bias Vs Variance
  • Overfitting and Underfitting
  • Training Validation and Prediction
  • Introduction to regression analysis
  • Types of regression models

Introduction to Machine Learning- Supervised - Session 2

  • Introduction to Linear Regression
  • Types of Regression Model
  • Regression Function
  • The Error Term-Residual
  • OLS Regression Properties
  • Interpretation of the Slope and the Intercept
  • Assumption in Regression Analysis
  • General Multiple Linear Regression Model
  • Strengths and Weakness
  • Quality of Fit- R2

Introduction to Machine Learning- Supervised - Session 3

  • Introduction to Logistic Regression
  • Logistic Function
  • Preparing Data for Logistic Regression
  • Strengths and Weakness of Logistic Regression
  • Summary

Introduction to Machine Learning- Supervised - Session 4

  • Implementation of Linear and Logistic Regression in R

Introduction to Machine Learning- Supervised - Session 5

  • Introduction to K Nearest Neighbour
  • Curse of Dimensionality
  • Working of KNN
  • Preparing Data for KNN
  • Strengths and Weakness of KNN
  • Summary

Introduction to Machine Learning- Supervised - Session 6

  • Implementation of KNN in R

Introduction to Machine Learning- Supervised - Session 7

  • Introduction to CART
  • Example of Decision Tree
  • Basic Algorithm
  • Stopping Criteria
  • Pruning
  • Strengths and Weakness
  • Summary

Introduction to Machine Learning- Supervised - Session 8

  • Implementation of CART in R

Introduction to Machine Learning- Supervised - Session 9

  • Introduction to Random Forest
  • Bootstrapping
  • Bagging
  • Random Forest Classifier
  • Estimate Performance
  • Variable Importance
  • Strength and Weakness
  • Summary

Introduction to Machine Learning- Supervised - Session 10

  • Implementation of Random Forest in R

Introduction to Machine Learning- Supervised - Session 11

  • Introduction to SVM
  • Working of SVM
  • Margin Classifier
  • Classification with Hyperplanes-Linearly and non-Linearly separable data
  • Preparing Data for SVM
  • Strengths and Weakness of SVM
  • Summary

Introduction to Machine Learning- Supervised - Session 12

  • Implementation of SVM in R

Introduction to Machine Learning- Supervised - Session 13

  • Introduction to Naïve Bayes
  • Working of Naïve Bayes
  • Preparing Data for Naïve Bayes
  • Strengths and Weakness of Naïve Bayes
  • Summary

Introduction to Machine Learning- Supervised - Session 14

  • Implementation of Naïve Bayes in R

Introduction to Machine Learning- Supervised - Session 15

  • Introduction to Gradient Descent
  • Working of Gradient Descent
  • Batch Gradient Descent
  • Stochastic Gradient Descent
  • Preparing Data for Gradient Descent
  • Strengths and Weakness of Gradient Descent
  • Summary

Introduction to Machine Learning- Supervised - Session 16

  • Implementation of Gradient Descent in R

Introduction to Machine Learning- UnSupervised

Introduction to Machine Learning- UnSupervised - Session 1

  • Introduction to Unsupervised Learning
  • Introduction to K-Means Clustering
  • Working of K-Means
  • Choosing appropriate value of K
  • Strengths and Weakness of K-Means
  • Summary

Introduction to Machine Learning- UnSupervised - Session 2

  • Introduction to Hierarchical Clustering
  • Preparing Data for Hierarchical Clustering
  • Strengths and Weakness of Hierarchical Clustering
  • Implementation of K-Means and Hierarchical clustering in R

Introduction to Machine Learning- UnSupervised - Session 3

  • Introduction to Principal Component Analysis
  • Working of PCA
  • Preparing Data for PCA
  • Strengths and Weakness of PCA
  • Summary

Introduction to Machine Learning- UnSupervised - Session 4

  • Implementation of PCA in R

Introduction to Machine Learning- UnSupervised - Session 5

  • Introduction to Apriori
  • Working of Apriori
  • Preparing Data for Apriori
  • Strengths and Weakness of Apriori
  • Summary

Introduction to Machine Learning- UnSupervised - Session 6

  • Implementation of Apriori in R

Deep Learning

Deep Learning - Session 1

  • Introduction to Neural Networks
  • Working of Neural Networks
  • Preparing Data for Neural Networks
  • Strengths and Weakness of Neural Networks
  • Summary

Learning - Session 2

  • Implementation of Neural Network in R
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Steps To Build A Successful Career at SDLC

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Google Reviews

  • good trainers, good enviroment to study. i have completed AWS, the trainer is friendly and teaches things in the simplest way so that any one can understand easily. also they provide jobs after completion of the course. so, go for this institute .

    Rajesh kumar Biswal Avatar Rajesh kumar Biswal
    June 29, 2020

    Really helpful tutors and best training institute for beginners from different field, to start the career in AWS Trainning .Including theory and practical classes ,helped to develop indepth knowledge in front end and Cloud architecture.Manav sir always help us for clearing doubt any time and by giving various example and videos.I learnt many things during these period.DEMO Classes available for various domain which is also very intresting.

    sagar nayak Avatar sagar nayak
    June 29, 2020
  • very good trainer available for sap fico at SDLC Real-time Trainer with Good price for online

    sunita das Avatar sunita das
    June 24, 2020

    Very good training institute for beginner as well as professional and give very strong platform both career wise and knowledge wise.

    Kumar Pankaj Avatar Kumar Pankaj
    June 24, 2020
  • I enjoyed the course and I feel satisfied talking the course .The procedure was perfectly organised .The tutor was extremely kind of supportive .The trainer were also helpful & friendly..

    Santosh Sahoo Avatar Santosh Sahoo
    June 24, 2020

    The quality is good and environment is friendly. The timings are manipulative as per ones convenience that is a plus point. Faculty here is also good.Good communication between student and Faculty. I can ask whatever question I have regarding the subject I’m getting trained for at any working hour directly to the faculty.

    Shaah Rukh Mansoori Avatar Shaah Rukh Mansoori
    June 23, 2020
  • my personal experience is very good with with tutors and support staffs, they are very helpful throughout the the learning and other aspects. Growth of every student is there motive, thnak you SIR and Santosh Sir

    Ashish Raj Avatar Ashish Raj
    June 15, 2020

    We gain plenty of knowledge from each class, friendly environment , Serenity. Also want to add Nikhil Sir who is taking class for Java and Selenium truely knowledgeable person. He clears all concept in easy way.

    preeti das Avatar preeti das
    April 25, 2020

Best Data Science with R Training in Bangalore

Data Science is a discipline that lets you transform raw data into proper knowledge, understanding, and insights. R is a programming language that is mainly used by data scientists.

This course will give an understanding of how to use R language to access databases, clean, analyze, and visualize data with R. Data Science with R deals with handling big data, machine learning algorithms and R deployment.

SDLC training institute providing the Data Science with R real-time online training classes, classroom training classes for the weekend and regular batches. Get JOB with our free Placement Assistance Program.

There are various sectors where you can g too.

  • Next generation mobile apps
  • Business functions
  • Gaming
  • Communication

How we will start the course?

  • Learn from basics
  • Practice coding
  • Set your algorithm carefully
  • Trace your codes on paper
  • Read sources on Data Science with R regularly

At the end of the course?

  • Trainees will understand the core concepts of Data Science with R.
  • Participants will have an understanding of how to create and implement algorithms.
  • Candidates will have detailed knowledge about Data Science with R.
  • Real-time project experience.
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    Features of SDLC​

    • Limit the batch size so we can provide personal attention to everyone in the session
    • Real-time practice
    • Live projects
    • 24/7 interact access with faculties
    • Experienced and passionate trainers
    • After course engagement
    • We give topics wise ppt, case studies, assignments and doubt solving
    • 100% job assistance
    • 24/7 support
    • Classroom training, Online training and Corporate training
    • Student can attend their missed classes
    • Soft skill training, interview skills workshop, resume preparation assistance
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