ECONOMIC DATA MANAGEMENT AND ANALYTICS

2 years ago Posted By : User Ref No: WURUR110684 0
  • Image
  • TypeTraining or Development Class
  • Image
  • Location Nairobi, Nairobi County,Nairobi,Kenya
  • Price
  • Date 14-11-2022 - 25-11-2022
ECONOMIC DATA MANAGEMENT AND ANALYTICS, Nairobi, Nairobi County,Nairobi,Kenya
Training or Development Class Title
ECONOMIC DATA MANAGEMENT AND ANALYTICS
Event Type
Training or Development Class
Training or Development Class Date
14-11-2022 to 25-11-2022
Last Date for Applying
14-11-2022
Location
Nairobi, Nairobi County,Nairobi,Kenya
Organization Name / Organize By
Global King Project Management
Organizing/Related Departments
Training department
Organization Type
Education Institution
Training or Development ClassCategory
Both (Technical & Non Technical)
Training or Development ClassLevel
All (State/Province/Region, National & International)
Related Industries

Education/Teaching/Training/Development

Administration/Management

Location
Nairobi, Nairobi County,Nairobi,Kenya

 

ECONOMIC DATA MANAGEMENT AND ANALYTICS on 14th to 25th November 2022

Course calendar

INTRODUCTION

In today's world, good decision making relies on data and data analysis. This course helps participants develop the understanding that they will need to make informed decisions using data, and to communicate the results effectively. The course is an introduction to the essential concepts, tools and methods of statistics for participants in business, economics and similar disciplines. The focus is on concepts, reasoning, interpretation and thinking rather than computation, formulae and theory. Much of the work will require participants to write effectively and communicate their ideas with clarity.

The course covers two main branches of statistics: descriptive statistics and inferential statistics. Descriptive statistics includes collecting data and summarising and interpreting them through numerical and graphical techniques. Inferential statistics includes selecting and applying the correct statistical technique in order to make estimates or test claims about a population based on a sample. Topics covered may include descriptive statistics, correlation and simple regression, probability, point and interval estimation, hypothesis testing, multiple regression, time series analysis and index numbers. By the end of this course, participants should understand and know how to use statistics. Participants will also develop some understanding of the limitations of statistical inference and of the ethics of data analysis and statistics. Participants will work in small groups in this course. Software like SPSS, STATA,SAS,POWER BI,EXCEL,R AND PYTHON will be used as per the participants preferences

Course Objectives

Upon completing this Economic Analysis and Data Analytics course successfully, participants will be able to:

  • Apply economic models to business problems
  • Identify contexts and applications of data in specific industries and in organisational settings
  • Implement conventional data analysis techniques and customising them for exceptional circumstances
  • How to utilise different types of data in different scenarios
  • Analyse data with advanced statistical and econometric techniques
  • Learn and employ techniques of data analysis to form business strategies
  • Apply computer programming and computing software to analysis of data
  • Learn how to build a career in economics or data analysis

 

DURATION

·         10 Days

 

Who Should Attend?

Professionals in the following fields will benefit from this Economic Analysis and Data Analytics Training Program:

  • Management, Economics, and Consumer Studies
  • International Development Studies
  • Environmental Sciences
  • Professionals who wish to specialise in economics
  • Professionals who wish to specialise in data analytics
  • New MSc Biobased Sciences for students with a specialisation in economics
  • PhD candidates in the field of economics
  • C-level executives who need to understand economic strategies
  • Decision-makers
  • Government employees who form regulations
  • Customer representatives

Course Outline

MODULE 1: THE BASICS

  • Basics of economic analysis
  • Sources of economic data
  • Microeconomic data
  • Macroeconomic data
  • Economic forecasting methods
  • Regression analysis in economics

 MODULE 2: ECONOMIC CYCLES

  • Trend analysis in forecasting
  • Case study – real estate
  • Coefficients
  • Significance
  • Standard errors
  • Serial correlation in data
  • Analysing results

 MODULE 3: FORECASTING ECONOMIC TRENDS

  • Fixed effects regressions
  • Omitted variables bias
  • Binary outcome
  • Binary regressions
  • Logit models
  • Probit models
  • Advanced regression applications
  • Federal Reserve Economic Database (FRED)
  • Difference-in-differences analysis
  • Difference-in-differences estimator

 MODULE 4: USE ECONOMIC FORECASTS

  • Understanding economic output
  • Long-term capital gains rate
  • Forecast accuracy
  • Scenario analysis
  • Using macro and microeconomic data in forecasts

 MODULE 5: MICROECONOMIC ANALYSIS

  • Understanding microeconomic analysis
  • Corporate strategic decisions
  • Market and industrial organisation
  • Game theory
  • Econometrics

 MODULE 6: CORPORATE FINANCE

  • Understanding the role of corporate finance in economic analysis
  • Analysis of a firm’s financial decisions
  • Use of financial models in economics
  • Quantitative case studies

 MODULE 7: DATA ANALYTICS

  • Data Analysis in Context
  • Data Analysis for Business
  • Data Analysis for Education
  • Data Analysis for Healthcare
  • Data Analysis for Government

 MODULE 8: FORECASTING METHODS

  • Forecasting demand and regression
  • Causal methods
  • Time-series methods
  • Qualitative methods
  • Predicting values with regressions

 MODULE 9: DATA AND ANALYSIS IN THE REAL WORLD

  • Thinking about Analytical Problems
  • Conceptual Business Models
  • The information-Action Value Chain
  • The information-Action Value Chain
  • Real-World Events and Characteristics
  • Data Capture by Source Systems

 MODULE 10: ANALYTICAL TOOLS

  • Data Storage and Databases
  • Big Data & the Cloud
  • Virtualisation, Federation, and In-Memory Computing
  • The Relational Database
  • Data Tools Landscape
  • The Tools of the Data Analyst

 MODULE 11: PERFORM PREDICTIVE ANALYTICS TASKS

  • Cross-Validation and Confusion Matrix
  • Assessing Predictive Accuracy Using Cross-Validation
  • Building Logistic Regression Models using XLMiner
  • How to Build a Model using XLMiner

 MODULE 12: DECISION ANALYTICS

  • Business Problems with Yes/No Decisions
  • Formulation and Solution of Binary Optimisation Problems
  • Metaheuristic Optimisation
  • Chance Constraints and Value at Risk
  • Simulation Optimization
Registration Fees
Available
Registration Fees Details
USD 2400
Registration Ways
Website
Address/Venue
Transnational Plaza  Nairobi 
Contact
   +254 114830889