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Data science training in Hyderabad

NBITS is a best data science training institute in Hyderabad. It can provide data science course by real time experts. It can conduct real time projects and also provides job assistance in python and other courses like block chain, Mean stack, python, Hadoop, Sales force, sap.

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Data science training in Hyderabad

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  1. DATASCIENCE TRAINING

  2. INTRODUCTION • Data Science examples – -Netflix, Money ball, Amazon. • Introduction to Analytics, Types of Analytics. • Introduction to Analytics Methodology • Analytics Terminology, Analytics Tools • Introduction to Big Data • Introduction to Machine Learning

  3. R & R STUDIO SOFTWARE • Introduction to R Programming • The importance of R in analytics • Installing R and other packages • Perform basic R operations • R Studio – Install • R Data types • Vectors • Lists • Matrices • Arrays • Data Frames • R variables and operators

  4. Types of operators – arithmetic, relational, logical • Variable assignment • Deleting variables • Finding variables • R Decision Making & Loops • R- If statement • R- if….else statement • R- while loop • R- for loop • Basics, Data Understanding • Built-in functions in R • Subsetting methods • Summarize and structure of data • Head(), tail(), for inspecting data • Reading and Writing Data • R Vectors • Vector creation • Vector manipulation • R Arrays

  5. Naming columns and Rows • Accessing array elements • Calculations across arrays • R Factors • Factors in data frame • Changing order of Levels • Generating Factor Levels • Preprocessing of Data • Handling Missing Values • Changing Data types • Data Binning Techniques • Dummy Variables • Modeling & Validation • Splitting of data – Test & Train • Dependent & Independent variables • Machine learning Algorithm • Error terms calculation

  6. Accuracy & Precision • Data Visualization • Histograms • Bar plots • Line graphs • Customizing Graphical Parameters • Usage of ggplotpackage • DATA EXPLORATION USING STATISTICAL METHODS • Basic Statistical Concepts • Statistic Terminology • Measure of Central Tendencies • Measure of Dispersion • Central Limit Theorem Basic Probability • Probability Terminology • Probability Rules • Probability Types • Bayes Theorem

  7. Understanding Distributions • Binomial Distribution • Poisson Distribution • Exponential Distribution • Normal/Gaussian Distribution • t – Distribution • Confidence interval • Advanced Statistical Concepts • Hypothesis Testing • Chi square testing • ANNOVA • Z test • Correlation & Covariance • Multicollinearity • Model Validation/Performance evaluation • Confusion matrix • Calculation of accuracy, precision, recall • ROC and AUC • RMSE , MAE

  8. MACHINE LEARNING • Supervised Learning • Linear Regression • Logistic Regression • Nonlinear Regression • Naïve Bayes Classification • Neural Network • Decision Trees • Support Vector Machines(SVM) • K Nearest Neighbor(KNN) • Lasso & Rigid regression • Unsupervised Learning • Concept of Clustering • K means Clustering • Hierarchical Clustering • Time Series Analysis • Decomposition of Time Series

  9. Trend and Seasonality detection and forecasting • Smoothening Techniques • Understanding ACF & PCF plots • ARIMA Modeling • Holt – Winter Method • Optimization & Regularization • Gradient descent • Simulated Annealing • Genetic Algorithm – Basics • Dimensionality Reduction – SVD & PCA • Ensemble Method & Association rules • Market basket Analysis • Ensemble Modeling • Recommendation Engine • Developing recommendation engines

  10. TEST MINING • Introduction to Natural Language Processing • Sentimental Analysis • Text Classification • HADOOP ECOSYSTEMS • Introduction to Hadoop ecosystems • Map Reduce • Hive & Pig • NoSQL – Hbase • Kafka ,Flume ,Sqoop • Hadoop machine learning : Mahout • PYTHON PROGRAMMING • Data types and Data Structures • Concept of Modules • Introduction to pandas , scikit – learn , NumPy • Machine learning in Python

  11. Additional benefits from NBITS • Sample resumes and Fine tuning of Resume • Real time Live Project • Interview Questions • Mock Interviews by Real time Consultants • Certification Questions • Job Assistance

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