Data Science With Python

Data science is a multi-disciplinary field that uses scientific methods, processes, algorithms and systems to extract knowledge and insights from structured and unstructured data. And Python is an object-oriented, high-level programming language with integrated dynamic semantics primarily for web and app development. And we are also providing a data science certification which can be gateway towards your data science career.


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    Data Science Training Course Curriculum

    Module 1

    Introduction to Python Programming

    ✅ Introduction to Data Science

    ✅ Introduction to Python

    ✅ Basic Operations in Python

    ✅ Variable Assignment

    ✅ Functions: in-built functions, user defined functions

    ✅ Condition: if, if-else, nested if-else, else-if

     

     

     

     

     

     

     

     

     

     

     

     

     

     

     

     

     

     

    Module 2

    Data Structure - Introduction

     

    ✅ List: Different Data Types in a List, List in a List

    ✅ Operations on a list: Slicing, Splicing, Sub-

    ✅ Condition(true/false) on a List

    ✅ Applying functions on a List

    ✅ Dictionary: Index, Value

    ✅ Operation on a Dictionary: Slicing, Splicing, Sub-setting

    ✅ Condition(true/false) on a Dictionary

    ✅ Applying functions on a Dictionary

    ✅ Numpy Array: Data Types in an Array, Dimensions of an Array

    ✅ Operations on Array: Slicing, Splicing, Sub-setting

    ✅ Conditional(T/F) on an Array

    ✅ Loops: For, While

     

     

     

     

     

     

     

     

     

    Module 3

    Basics of Statistics

    ✅ Statistics & Plotting

    ✅ Seabourn & Matplotlib - Introduction

    ✅ Univariate Analysis on a Data

    ✅ Plot the Data - Histogram plot

    ✅ Find the distribution

    ✅ Find mean, median and mode of the Data

    ✅ Take multiple data with same mean but different sd, same mean and sd but different kurtosis: find mean, sd, plot

    ✅ Multiple data with different distributions

    ✅ Bootstrapping and sub-setting

    ✅ Making samples from the Data

    ✅ Making stratified samples - covered in bivariate analysis

    ✅ Find the mean of sample

    ✅ Central limit theorem

    ✅ Plotting

    ✅ Hypothesis testing + DOE

    ✅ Bivariate analysis

    ✅ Correlation

    ✅ Scatter plots

    ✅ Making stratified samples

    ✅ Categorical variables

    ✅ Class variable

    Module 4

    Use of Pandas

    ✅ File I/O

    ✅ Series: Data Types in series, Index

    ✅ Data Frame

    ✅ Series to Data Frame

    ✅ Re-indexing

    ✅ Operations on Data Frame: Slicing, Splicing (also Alternate), Sub-setting

    ✅ Pandas

    ✅ Stat operations on Data Frame

    ✅ Reading from different sources

    ✅ Missing data treatment

    ✅ Merge, join

    ✅ Options for look and feel of data frame

    ✅ Writing to file

    ✅ db operations

    Module 5

    Data Manipulation &

    Visualization

    ✅ Data Aggregation, Filtering and Transforming

    ✅ Lamda Functions

    ✅ Apply, Group-by

    ✅ Map, Filter and Reduce

    ✅ Visualization

    ✅ Matplotlib, pyplot

    ✅ Seaborn

    ✅ Scatter plot, histogram, density,
    heat-map, bar charts

     

     

     

     

    Module 6

    Linear Regression

     

    ✅ Regression - Introduction

    ✅ Linear Regression: Lasso, Ridge

    ✅ Variable Selection

    ✅ Forward & Backward Regression

     

     

     

     

     

     

     

     

     

     

    Module 7

    Logistic Regression

    ✅ Logistic Regression: Lasso, Ridge

    ✅ Naive Bayes

     

     

     

     

     

     

     

    Module 8

    Unsupervised Learning

    ✅ Unsupervised Learning

    ✅ Unsupervised Learning - Introduction

    ✅ Distance Concepts

    ✅ Classification

    ✅ k nearest

    ✅ Clustering

    ✅ k means

    ✅ Multidimensional Scaling

    ✅ PCA

    Module 9

    Random Forest

    ✅ Random Forest

    ✅ Decision trees

    ✅ Cart C4.5

    ✅ Random Forest

    ✅ Boosted Trees

    ✅ Gradient Boosting

     

     

     

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