Quantitative Data Analysis and Visualization with Python Training

$ 900.00

Course Overview:

This course offered by Relan Training provides a hands-on guide to using Python for data analysis, visualization, and machine learning. Ideal for beginners with basic programming skills or experienced developers transitioning to data science and big data analysis. Learn to harness Python’s power to analyze complex datasets and create insightful visualizations.

SKU: PYT

Description

Quantitative Data Analysis with Python

Duration:
5 Days


Course Level:
Intermediate


Target Audience

  • Data Analysts
  • Data Scientists
  • Business Intelligence Professionals
  • Market Researchers
  • Financial Analysts
  • Researchers with some programming experience
  • Individuals interested in advancing their Python and data analysis skills

Course Objectives

  • Understand how to manage and manipulate large datasets using Python in Quantitative Data Analysis with Python
  • Apply statistical analysis techniques for data interpretation
  • Create and customize data visualizations using Matplotlib, Seaborn, and Plotly
  • Conduct advanced quantitative data analysis, including regression modeling and hypothesis testing
  • Integrate Python analysis with business intelligence tools for automated reporting and dashboard creation
  • Develop practical skills through hands-on case studies and real-world data projects

Module 1: Introduction to Python for Data Management

  • Introduction to Python programming for data management
  • Key Python libraries for data analysis (Pandas, NumPy)
  • Techniques for importing and exporting data
  • Data cleaning and preprocessing methods
  • Case Study: Import, clean, and perform initial exploratory analysis on a dataset using Python.

Module 2: Advanced Data Analysis Techniques

  • Statistical analysis in Python
  • Implementing descriptive and inferential statistics
  • Advanced data manipulation using Pandas
  • Time series analysis and forecasting
  • Case Study: Analyze a financial dataset to identify trends and forecast future values. Al these in Quantitative Data Analysis with Python

Module 3: Data Visualization with Python

  • Creating visualizations with Matplotlib and Seaborn
  • Customizing charts and graphs
  • Visualizing complex data relationships
  • Interactive visualizations with Plotly
  • Case Study: Develop interactive visualizations to present insights from a market research dataset.

Module 4: Quantitative Data Analysis

  • Regression analysis and predictive modeling
  • Hypothesis testing and significance analysis
  • Implementing machine learning algorithms for quantitative data
  • Model evaluation and validation
  • Case Study: Build and validate a regression model to predict customer behavior using historical data.

Module 5: Integrating Data Analysis and Reporting

  • Automating reports and dashboards with Python
  • Integrating Python analysis with business intelligence tools in Quantitative Data Analysis with Python
  • Generating comprehensive reports and summaries
  • Presenting data-driven insights effectively
  • Case Study: Create a detailed report and dashboard summarizing the results of a data analysis project, integrating Python with visualization tools.