Effective Business Decisions Using Data Analysis
(1 WeeK)

Effective Business Decisions Using  Data Analysis ​

Introduction

In the world of modern business, data analytics is to be considered. Utilizing data analysis for making effective business decisions can transform the landscape of management practices. This specialized course segment will specifically hone how data analytics can improve decision-making, emphasizing the criticality of using data to make informed business decisions.
Using a data analysis course, participants in the business decisions will delve into the nuances of data analytics for business decision-making, understanding the methodologies and tools underpinning strategic business foresight.
This business decision using a data analysis course imparts knowledge and bolsters professionals\’ confidence in using data analytics for decision-making. It will effectively bridge the gap between data and decision, ensuring that professionals emerge as more data-savvy decision-makers capable of using data analytics to help make business decisions.
By engaging in this business decision-making training course, participants can elevate their competency in data analytics for the best business decision-making, learning to wield data as a powerful tool in the competitive business arena.

Targeted Groups

  • Professionals in management support roles
  • Analysts who typically encounter data/analytical information regularly in their work environment
  • Those who seek to derive more excellent decision-making value from data analytics

Course Objectives

At the end of this business decisions using data analysis course, the participants will be able to:

  • Appreciate the role of Data Analysis as a Decision Support tool
  • Explain the scope and structure of the discipline of Statistics
  • Understand the importance of data quality in data analysis
  • Select an appropriate Data Analysis methodology to apply to specific management situations
  • Apply a cross-section of Data Analysis tools and techniques
  • Meaningfully interpret statistical output to inform decision-making
  • Critically assess statistical findings with confidence
  • Interact meaningfully and with confidence with Data Analysts
  • Initiate with confidence in their Data Analysis projects
  • Learn techniques to support strategic initiatives

Targeted Competencies

  • Discussions on applications of data analytics in management
  • The importance of data in data analytics
  • Applying data analytical methods through worked examples
  • Focusing on management interpretation of statistical evidence
  • Integrating statistical thinking into the work domain

Course Outlines

Day 1

Setting the Scene and Observational Decision-Making

  • Setting the Quantitative Scene
  • The Decision Support Role of Quantitative Methods in Management
  • Thinking Statistically about Applications in Business Practice
  • The Elements and Scope of Quantitative Management
  • Data and the Importance of Data Quality

Day 2

Using Excel to Paint a Picture of Your Data

  • Summary Methods Using Tables and Graphs to Profile Data
  • One-way, Two-way, and Multi-way Pivot Tables
  • Graphic Displays and Breakdown Analysis
  • Numeric Descriptors
  • Central (and non-central) locations Dispersion Distribution Shapes
  • Graphical summary using Box plots

Day 3

Statistical (Inferential) Decision Making – Harnessing Uncertainty

  • Using sample evidence to address management issues through statistical inference
  • How to measure and quantify Uncertainty (using Probability Distributions)
  • The importance of Sampling
  • Statistical Decision-Making methods
  • Approaches: Confidence Intervals and Hypothesis Testing
  • Techniques: Z- and T-statistics, Analysis of Variance, Chi-Square
  • Addressing Practical Management Issues
  • Estimation Testing for Differences Multiple Sample Comparisons

Day 4

Predictive Decision Making – Using Models to Build Relationships

  • Statistical models exploit statistical relationships between measures to prepare forecasts and make predictions.
  • The Value of Statistical Modelling
  • Modeling Approaches
  • Regression Models, Time Series Analysis Autoregressive Models

Day5

Data Mining – A Brief Overview

  • An Overview of Data Mining
  • Definition of the Data Mining Process Data Preparation
  • Data Mining Functions
  • Prediction / Estimation / Classification / Descriptive
  • Purpose Methodology Interpretation Likely Applications
  • Cluster Analysis Discriminant Analysis
  • Logistic Regression Classification Trees Neural Networks
  • Market Basket Analysis Customer Relationship Management (CRM)
  • Overview of Selected Data Mining Techniques (analysis by NCSS)
  • Descriptive Modeling (Segmentation Strategies)
  • Predictive Modeling (Classification Estimation Prediction Strategies)
  • Typical Applications

Decision Analysis for Management Judgement

  • Using Decision Models to structure/evaluate complex decision scenarios
  • Multi-Criteria Decision Modelling (Illustrations of Two Practical Tools)
  • SMART (Simple Multi-Attribute Rating Technique)
  • AHP (Analytical Hierarchy Process)

DATES & LOCATIONS

AMSTERDAM

REF: DM-1101
4500
4000 Individual fee
  • COURSE DATES
  • 02 DEC - 06 DEC 2024
  • 16 DEC - 20 DEC 2024
  • 13 JAN - 17 JAN 2025
  • 20 JAN - 24 JAN 2025
  • 03 FEB - 07 FEB 2025
  • 17 FEB - 21 FEB 2025
  • 03 MAR - 07 MAR 2025
  • 17 MAR - 21 MAR 2025
  • 07 APR - 11 APR 2025
  • 12 APR - 16 APR 2025

ISTANBUL

REF: DM-1101
4000
3500 Individual fee
  • COURSE DATES
  • 02 DEC - 06 DEC 2024
  • 16 DEC - 20 DEC 2024
  • 13 JAN - 17 JAN 2025
  • 20 JAN - 24 JAN 2025
  • 03 FEB - 07 FEB 2025
  • 17 FEB - 21 FEB 2025
  • 03 MAR - 07 MAR 2025
  • 17 MAR - 21 MAR 2025
  • 07 APR - 11 APR 2025
  • 12 APR - 16 APR 2025

Special Price for Groups

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