Advanced Data Analysis

RegisterInquiry
Advanced Data Analysis
Loading...

G2622

Madrid (Spain)

30 Mar 2026 -03 Apr 2026

5850

Overview

Introduction:

Data analysis is a critical process for transforming raw data into meaningful insights that drive decision making. It involves examining and interpreting data to identify patterns, trends, and solutions that support strategic objectives. The training program is designed to provide participants with comprehensive knowledge and skills in advanced data analysis methods. It covers a wide range of topics, from data preprocessing and exploration to sophisticated modeling techniques and interpretation of results.

Program Objectives:

At the end of this program, participants will be able to:

  • Effectively clean, prepare, and explore datasets for advanced analysis.

  • Utilize advanced statistical techniques such as regression, time series, and multivariate analysis.

  • Explore machine learning models using supervised and unsupervised learning algorithms.

  • Gain the skills to create and interpret advanced and custom data visualizations, including geospatial visualizations.

  • Use Big Data tools and techniques to process and analyze large-scale datasets.

Target Audience:

  • Data Analysts and Scientists.

  • Business Analysts.

  • Research Scientists.

  • Statisticians.

  • Professionals in fields requiring data analysis expertise.

Program Outlines:

Unit 1:

Data Preprocessing and Exploration:

  • Methods for data cleaning and structuring.

  • Techniques for transforming datasets for analysis.

  • Structures for exploratory data analysis (EDA).

  • Models for integrating heterogeneous data sources.

  • Systems for identifying data quality issues.

Unit 2:

Advanced Statistical Techniques:

  • Frameworks for hypothesis formulation and statistical inference.

  • Structures for regression and correlation analysis.

  • Models for analyzing time-dependent datasets.

  • Techniques for multivariate statistical analysis.

  • Approaches to statistical pattern identification.

Unit 3:

Machine Learning and Predictive Modeling:

  • Classification of supervised learning algorithm types.

  • Grouping and structure of unsupervised learning methods.

  • Models for evaluating and validating predictions.

  • Structures for combining models using ensemble strategies.

  • Methods for enhancing prediction consistency.

Unit 4:

Advanced Data Visualization:

  • Principles guiding data visualization and interpretation.

  • Formats for creating interactive visual dashboards.

  • Systems for mapping and visualizing geospatial datasets.

  • Techniques for developing custom data visualizations.

  • Structures for aligning visuals with analytical objectives.

Unit 5:

Big Data Analytics and Applications:

  • Concepts and components defining Big Data systems.

  • Methods for distributed data processing.

  • Frameworks for managing Big Data storage solutions.

  • Structures addressing scalability and data integrity.

  • Emerging trends for Big Data analytics.