Workshop detalis

Data Science with Python

Workshop:5Day
Engineering: CSE/IT/AI/ML
Enrolled: 10 students
(30 Reviews)

Data Science (DA) is the process of examining data sets in order to draw conclusions about the information they contain, increasingly with the aid of specialized systems and software. Analysis of data is a process of inspecting, cleaning, transforming, and modelling data with the goal of discovering useful information, suggesting conclusions, and supporting decision-making.

Data Science (DA) is the process of examining data sets in order to draw conclusions about the information they contain, increasingly with the aid of specialized systems and software.

Course description

Data Science (DA) is the process of examining data sets in order to draw conclusions about the information they contain, increasingly with the aid of specialized systems and software. Analysis of data is a process of inspecting, cleaning, transforming, and modelling data with the goal of discovering useful information, suggesting conclusions, and supporting decision-making.

What you'll learn from this course
  • Ready to begin working on real-world data modeling projects.
  • Expanded responsibilities as part of an existing role.
  • Manage your time so you'll get more done in less time.
  • Hone sharp leadership skills to manage your team.
  • Cut expenses without sacrificing quality.
Certification

At TechIn IT, we proudly assure that every Trainee who successfully completes our program will be awarded a certificate. We are officially associated with APSCHE, AICTE, MSME, Skill India, IAF, and NASSCOM. The certification will reflect the Trainees dedication and skill development, recognized under national-level standards .

  • AI vs ML vs DL vs Data Science

    Data Science Scope, Applications

    Data Science Introduction

    Predictive v/s Descriptive Data Analysis

    Data Science v/s Data Analytics

    Regression & Classification Problems

    What makes a Data Science Expert?

    The art of making stories from Data

    Use Cases and Case Studies

    Introduction to Python Programming

    What is Python?

    Installing Anaconda

    Understanding the Spyder Integrated Development Environment (IDE)

    Python basics and string manipulation

    lists, tuples, dictionaries, variables

    Control Structure – If loop, For loop and while Loop

    Single line loops

    Writing user defined functions

    Object oriented programming

    Working with Class&Inheritance

    Statistic for Data

    Measure of Central Tendency – Mean, Mode and Median

    Grouped and Ungrouped Data

    Measure of Spread – IQR, Variance and Standard Deviation

    Covariance

    Correlation

    Kurtosis, Skewness

    Analyzing the categorical Data

    Proportional Test

    Chi Square Test

    Fisher’s Exact Test

    Mantel Henszel test

    Analyzing the Continuous Data

    One Sample T-Test

    Two Independent Samples Tests

    Paired T-test

    Wilcoxon Test

    Anova

    Kruskal Wallis Test

    Probabilistic Theory

    Events and their Probabilities

    Rules of Probability

    Conditional Probability and Independence

    Distribution of a Random Variable

    Bayes Theorem

    Moment Generating functions Central

    Limit Theorem

    Expectation & Variance

    Standard Distributions – Bernoulli, Binomial & Multinomial

  • Intro to Numpy Arrays

    Creating ndarrays

    Indexing

    Data Processing using Arrays

    Mathematical computing basics

    Basic statistics

    File Input and Output

    Getting Started with Pandas

    Data Acquisition (Import & Export)

    Indexing

    Selection and Filtering

    Sorting & Summarizing

    Descriptive Statistics

    Combining and Merging Data Frames

    Removing Duplicates

    Discretization and Binning

    String Manipulation

    Visualization in python, case studies

    Introduction to Visualization

    Visualization Importance

    Visualization Rules

    Working with Python visualization libraries

    Matplotlib

    Creating Line Plots, Bar Charts, Pie Charts, Histograms, Scatter Plots

    Working with Seaborn

    Data Visualization using Seaborn

    Basic Plots, color palettes

    Plotting categorical data

    Visualizing linear relationship

    Plotting on data-aware grids

    HeatMap, Histogram, Barplot, Factor plot

    Density Plot, Joint Distribution Plot

    Linear Regression

    Regression Problem Analysis

    Mathematical modelling of Regression Model

    Gradient Descent Algorithm

    Programming Process Flow

    Use cases

    Regression Table

    Heteroscedasticity

    Model Specification

    L1 & L2 Regularization

    Linear Regression – Case Study & Project

    Programming Using python

    Building simple Univariate Linear Regression Model

    Multivariate Regression Model

    Apply Data Transformations

    Identify Multicollinearity in Data Treatment on Data

    Identify Heteroscedasticity

    Modelling of Data

    Variable Significance Identification

    Model Significance Test

    Bifurcate Data into Training / Testing Data set

    Build Model on Training Data Set

    Predict using Testing Data Set

    Validate the Model Performance

    Project 1: Boston Housing Prizes Prediction

    Project 2: Cancer Detection Predictive Analysis

    Best Fit Line and Linear Regression

  • Variable and Model Significance

    Maximum Likelihood Concept

    Log Odds and Interpretation

    Regression Table

    Null Vs Residual Deviance

    Problem Analysis

    Cost Function Formation

    Mathematical Modelling

    Use Cases

    Case Study & Project

    Model Parameter Significance Evaluation

    Drawing the ROC Curve

    Estimating the Classification Model Hit Ratio

    Isolating the Classifier for Optimum Results

    Project 3: Digit Recognition using Logistic Regression

    Decision Trees with Case Study

    Forming a Decision Tree

    Components of Decision Tree

    Mathematics of Decision Tree

    Decision Tree Evaluation

    Practical Examples & Case Study

    Project 4: Intrusion Detection

    Random Forests

    Random Forest Mathematics

    Examples & use cases using Random Forests

    K-NN Algorithm – Applications & Case Studies

    Understanding the KNN

    Distance metrics

    Case Study on KNN

    Support Vector Machine

    Concept and Working Principle

    Mathematical Modelling

    Optimization Function Formation

    The Kernel Method and Nonlinear Hyperplanes

    Use Cases

    Programming SVM using Python

    Project 5- Character recognition using SVM

    Project 6- Regression problem using SVM

    Project 7- Wisconsin Cancer Detection using SVM

    Clustering

    Hierarchical Clustering

    K Means Clustering

    Use Cases for K Means Clustering

    Programming for K Means using Python

    Image Color Quantization using K Means Clustering Technique

    Cluster Size Optimization vs Definition Optimization

    Projects & Case Studies

    Principle Component Analysi

    Dimensionality Reduction, Data Compression

    Curse of dimensionality

    Multicollinearity

    Factor Analysis

    Concept and Mathematical modelling

    Use Cases

    Programming using Python

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