Business Analytics using Python

Business Analytics using Python Online Training Course is design for professionals to understand analytics-based business decision making to drive the company's ROI.

  • 50000
  • 55000
  • Course Includes
  • Live Class Practical Oriented Training
  • 120 + Hrs Instructor LED Training
  • 60 + Hrs Practical Exercise
  • 35 + Hrs Project Work & Assignment
  • Timely Doubt Resolution
  • Dedicated Student Success Mentor
  • Certification & Job Assistance
  • Free Access to Workshop & Webinar
  • No Cost EMI Option


Have Query ?

What you will learn

  • Use basic statistical concepts on multiple types of data to prepare reports.
  • Solve complex problems with Python - the most essential tools for Finance and analytics-driven companies.
  • Optimize business situations that involve whole numbers, take decisions that involve multiple input variables to predict...
  • Model decisions under a variety of future uncertain states, depending on the decision maker’s proneness or aversion to r...
  • Compute correlation between data points in a time series.
  • Compute the regression model for time series data that has a correlation within itself.
  • Test hypothesis for experiments involving different treatments and Identify the source of differences to pinpoint which...

Requirements

  • basic understanding of Computer Programming Languages. A basic understanding of statistics

Description

|| About Business Analytics using Python Training Course

Python is the most popular language used in the field of Business Analytics. Even industry giants like Google and Netflix use it to generate insights and build better products. It can be quickly learnt and is versatile, making life easy for people who work with tonnes of data. BIT’s comprehensive Business Analytics using Python online training course is tailored to train you on all aspects of Business Analytics; starting from exploratory data analysis, statistical and quantitative analysis, testing analytics models and forecasting through predictive modelling using Python.

 

This Business Analytics course encompasses basic statistical concepts to advanced analytics and predictive modeling techniques. You will learn all the skills required for a promising career as a Business Analyst and solve real-world business problems. This certificate course will help you to develop comprehensive data science skills pertaining to data visualization descriptive and predictive analytics for driving smart business decisions. Objective of this course is to impart knowledge on use of text mining techniques for deriving business intelligence to achieve organizational goals. Use of Python based software platform to build, assess, and compare models based on real datasets and cases with an easy-to-follow learning curve. In this course data visualization and statistical methods implemented in Python for analyzing business data, whether sales, personnel, logistics, marketing, or financial. You'll explore the nature of business data, the application and interpretation of statistical and machine learning methods for gaining insight into your business, and how to present conclusions in tabular and graphical formats.

Course Content

Live Lecture

·      Business Analytics

·      Describe the evolution of analytics

·      Describe the differences between analytics and analysis

·      Explain the concept of insights

·      Describe the broad types of business analytics

·      Describe how organisations benefit from using analytics

·      Practical Exercise              

Live Lecture

·      Importance of data in business analytics

·      Differences between data, information and knowledge

·      The various stages that an organization goes through in terms of data maturity

·      Practical Exercise              

Live Lecture

·      Differences between Business Analytics and Business Intelligence

·      Describe the two major components within Business Analytics and Business Intelligence

·      Data Mining technique helps both Business Intelligence and Business Analytics

·      Analytical Decision-Making Process

·      Analysing Business Problems

·      Practical Exercise              

Live Lecture

·      Capabilities social media analytics

·      Common goals of social media analytics

·      Practical Exercise              

Live Lecture

·      Introduction to Python Installation

·      Jupyter Notebook Introduction

·      Practical Exercise              

Live Lecture

·      What is Python?

·      Progress of Python

·      Success of Python

·      Programming Model of Python

·      Python Programming Features

·      Commands for common tasks and control

·      Essential Python programming concepts & language mechanics

·      Python Installation

·      Introduction to Python using Jupyter Notebook

·      Simple Input/Output

·      Basic Data Types

·      Control Structures

·      Arithmetic Operators

·      Logical Operators

·      Practical Exercise              

Live Lecture

·      Strings,

·      Lists

·      Tuples

·      Dictionaries

·      Functions

·      Parameters

·      Arguments

·      Recursion

·      Data Processing using Pandas and Nampy

·      Introduction to Modules & Packages

·      Generators

·      Errors & Exception Handling

·      Practical Exercise              

Live Lecture

·      Path and Directory

·      File Operations

·      Reading and Writing to Files

·      Advance File I/O

·      Practical Exercise              

Live Lecture

·      Pandas Introduction

·      Series, Data Frames and csvs

·      Data from urls

·      Describing Data with Pandas

·      Selecting and Viewing Data with Pandas

·      Selecting and Viewing Data with Pandas Part 2

·      Manipulating Data

·      Manipulating Data 2

·      Manipulating Data 3

·      Practical Exercise              

Live Lecture

·      Mathematical Computing with Python (numpy)

·      Numpy Introduction

·      Numpy datatypes and Attributes

·      Creating numpy Arrays

·      Numpy Random Seed

·      Viewing Arrays and Matrices

·      Manipulating Arrays

·      Standard Deviation and Variance

·      Reshape and Transpose

·      Dot Product vs Element Wise

·      Comparison Operators

·      Sorting Arrays

·      Turn Images Into numpy Arrays

·      Practical Exercise              

Live Lecture

·      Statistics and its use in business

·      Types of data

·      Basic statistical concepts

·      Various techniques for sampling

·      Frequency distributions

·      Various measures of central tendency

·      Different measures of dispersion

·      Different measures of shape

·      Practical Exercise              

Live Lecture

·      Explain the concept of ANOVA

·      Calculate ANOVA using Python

·      Test a hypothesis using ANOVA

·      Practical Exercise              

Live Lecture

·      Statistical relationships

·      Understand the measure of correlation

·      Correlation between two datasets using Python

·      Concepts of correlation versus causation

·      Practical Exercise              

Live Lecture

·      Two data series using linear regression

·      To forecast values using linear regression in Python

·      K-Means Clustering

·      What is clustering?

·      K-Means Clustering using python

·      NbClust

·      Practical Exercise              

Live Lecture

·      Introduction to time series data

·      Time series forecasting using Moving Average

·      Time series forecasting using Naïve forecasting

·      Practical Exercise              

Live Lecture

·      Explain the concept of linearity

·      Describe linear programming

·      Formulate a linear programming problem

·      Linear Programming – Allocation Models

·      Describe allocation models in linear programming

·      Solve allocation model problems in linear programming using Python

·      Practical Exercise              

Live Lecture

·      Describe covering models in linear programming

·      Solve covering model problems in linear programming using Python

·      Practical Exercise              

Live Lecture

·      The concepts of text-mining

·      Use cases

·      Text Mining Algorithms

·      Quantifying text

·      TF-IDF

·      Beyond TF-IDF

·      Data Mining vs. Text Mining

·      Text Mining and Text Characteristics

·      Predictive Text Analytics

·      Text Mining Problems

·      Prediction & Evaluation

·      Python as a Data Science Platform

·      Practical Exercise              

Live Lecture

·      Text Corpus

·      Sentence Tokenization

·      Word Tokenization

·      Removing special Characters

·      Expanding contractions

·      Removing Stopwords

·      Correcting words: repeated characters

·      Stemming & lemmatization

·      Part of Speech Tagging

·      Feature Extraction

·      Bag of words model

·      TF-IDF model

·      Text classification problem

·      Building a classifier using support vector machine

·      Practical Exercise              

Case Studies

Fees

Offline Training @ Vadodara

  • Classroom Based Training
  • Practical Based Training
  • No Cost EMI Option
60000 55000

Online Training preferred

  • Live Virtual Classroom Training
  • 1:1 Doubt Resolution Sessions
  • Recorded Live Lectures*
  • Flexible Schedule
55000 50000

Corporate Training

  • Customized Learning
  • Onsite Based Corporate Training
  • Online Corporate Training
  • Certified Corporate Training

Certification

  • Upon the completion of the Classroom training, you will have an Offline exam that will help you prepare for the Professional certification exam and score top marks. The BIT Certification is awarded upon successfully completing an offline exam after reviewed by experts
  • Upon the completion of the training, you will have an online exam that will help you prepare for the Professional certification exam and score top marks. BIT Certification is awarded upon successfully completing an online exam after reviewed by experts.
  • This course is designed to solve different Business Analytics Case studies on various Domains using Python. This certificate is very well recognized over 80 top MNCs from around the world and some of the Fortune 500 companies.