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Certified Data Analysis Professional - Online Course

  • Training

  • 40 Hours
  • The KPI Institute Pty. Ltd.
  • ID: 5693483
The course provides you the knowledge required for understanding distinct methods used in analyzing data, statistical interpretation of quantitative and qualitative data, and becoming proficient in using key Microsoft Excel features, by building frequency and conditional tables, creating different types of charts, finding correlations and relationships between variables, hypothesis testing and statistical modeling.

The Data Analysis Certification is an accreditation that endorses you both for the knowledge and practical application of best practices used in analyzing statistical data.

The certification is the result of a complex, experiential learning program that has 3 sections: pre-course activities, core-course exercises and post-course assignments.

You will acquire the tools and skills needed to develop complex data analysis, useful for the processing and interpretation of data and relevant for your company's profile.

Validate your expertise!

Benefits:

  • Obtaining the most relevant data, by setting up a customized data analysis process
  • Understanding the data analysis process, its methodology, and logical framework
  • Obtaining the necessary knowledge to analyze complex data and to interpret results
  • Improving the organization’s decision-making process, by gaining knowledge on data analysis and interpretation
  • Receiving the management team’s buy-in, by sharing with them the utility of implementing a customized data analysis methodology in daily business activities.
  • Access a free learning module on Performance Measurement Maturity Assessment.

Course Content

Module 1 - Business Understanding
  • What Is Data Analysis?
  • Types of Data Analysis
  • Data Analysis Process
  • Data Governance
  • Data Analysis and its Benefits in Business.
  • Module 1 Review
Module 2 - Data Collection
  • Types of Data
  • How to Collect Data?
  • Primary Data Collection Methods
  • Secondary Data Collection Methods
  • Module 2 Review
Module 3 - Data Preparation
  • Types of Data Sets
  • Data Quality
  • Data Cleaning
  • Data Aggregation
  • Module 3 Review
Module 4 - Data Exploration
  • Frequency Tables
  • Quantitative Charts
  • Qualitative Charts
  • Structure Charts
  • Module 4 review
Module 5 - Descriptive Statistics
  • Univariate Analysis
  • Bivariate Analysis
  • Module 5 Review
Module 6 - Sampling
  • Population and sample
  • Why to Sample?
  • Sampling techniques
  • Sample Size Determination
  • Module 6 Review
Module 7 - Estimation of Population
  • Sampling Distribution
  • Central Limit Theorem
  • Normal Distribution and T-Distributions
  • One-Tailed vs Two Tailed
  • Interval Estimation
  • Module 7 Review
Module 8 - Hypothesis Testing
  • Hypothesis Testing Procedure
  • Types of Errors
  • Level of Significance
  • Test Statistic
  • Types of Hypothesis Testing
  • Module 8 Review
Module 9 - Z-Test and T-test
  • Z-Test Statistics and T-Test Statistic
  • One Sample Hypothesis Testing
  • Two Independent Samples Hypothesis Testing
  • Paired Samples Hypothesis Testing
  • Module 9 Review
Module 10 - ANOVA Test
  • When to perform ANOVA Test
  • F-Distribution
  • Three or more Independent Samples Hypothesis Testing
  • F-Statistic
  • Module 10 Review
Module 11 - Chi-Square Tests
  • Chi-Square Test
  • Chi-Square Distribution
  • Goodness of Fit Test
  • Test of Independence
  • Module 11 Review
Module 12 - Regression Analysis
  • Least Squares Method
  • Simple Linear Regression Model
  • Coefficient of determination and Correlation
  • Standardization
  • Homogeneity
  • Outliers
  • Module 12 Review
Module 13 - Multiple Regression
  • Multiple Regression
  • Multiple Coefficient of Determination
  • Testing for Significance
  • Multicollinearity
  • Variance Inflation Factor
  • Module 13 Review
Module 14 - Time Series
  • Trend Analysis
  • Cyclical Component
  • Seasonal Component
  • Irregular Component
  • Moving Average
  • Module 14 Review
Module 15 - Revision
  • Business Understanding
  • Data Collection and Preparation
  • Data Exploration
  • Statistical Analysis
  • Regression Analysis
  • Time Series

Speakers

Ágnes Ilyés
Subject Matter Expert

Ágnes holds valuable experience in data analysis, as during both her university and working years she had participated in numerous marketing related research projects where survey based primary researches were conducted and a lot of data were evaluated.

She mainly uses SPSS statistical program to analyze data. She has experience with the following analyses: Chi2 analysis, Variance analysis, Correlation analysis, t-test, factor- and cluster analysis.

Ágnes also deepened her knowledge by teaching interferential statistics as an external lecturer on the university, on economics and business administration faculty, marketing specialization.

As a Business Research Analyst at the KPI Institute she also has numerous possibilities to capitalize her experience in this field.

Who Should Attend

Professionals interested in Data Analysis
The course is designed for anyone who has basic mathematical training and basic competences in using Microsoft Excel. Statistical knowledge, intermediate or advanced knowledge of Excel, practical experience with data analysis and related duties are not necessary.

Management Representatives
The course is addressed to Managers, HR Representatives, Analysts, Auditors or Logistics and Acquisitions Experts, as well as to professionals from other business areas, who deal with data analysis.

Data Analysis Experts
The course is ideal for those interested in pursuing career opportunities in data analysis, data modelling and related activities (e.g. campaign management, data mining, statistics, risk management, reporting, data processing for survey analysis etc.)