Harness the Power of 'What-If' Analytics: Shaping Your Future with Simulation Training in Finland

  • Learn via: Classroom / Virtual Classroom / Online
  • Duration: 1 Day
  • Price: Please contact for booking options
We can host this training at your preferred location. Contact us!

It is feasible, practical, and prudent to explore new ideas, evaluate alternatives, and peek into the future using what-if analytics. Common analytics techniques focus on statistics, but business managers often need more decision-making guidance and fewer statistics. Simulation techniques help to identify, analyze, and compare various decision-making scenarios, and to evaluate a range of options by playing the what-if game.

A well-rounded analytics organization includes analysts who are skilled with simulation, and these people often become the most in-demand analysts.

Combining models, assumptions and decision variables yields insights helpful when choosing the best path into the future. Simulation models enhance understanding of key behavior patterns, leading to increased confidence and ability to define and achieve key business objectives. Implementing simulation as a core part of business analytics practice simply makes sense. Business questions starting with "why" and extending to "what if" can be answered with certainty and clarity.

This course provides an introduction to simulation analytics. Topics include definitions, general system concepts, modeling techniques, and application areas. Pragmatic examples are provided throughout the course. A framework to position simulation in the broader BI program is also provided.

There are no prerequisites for this course.

Business analytics leaders, BI program leaders; BI architects and project managers; business analytics team members; business managers and decision makers; functional analysts; operations managers; process improvement specialists.

  • Categories of simulation models
  • Domains of applicability
  • How to build and implement simulation models
  • Data management requirements for simulation
  • How business problems can be defined and solved
  • The role of experimental design
  • How insights can be generated
  • How to explore and discover routes to successful outcomes
  • How analytics, simulation, and BI are interconnected disciplines

1.0 Introduction

  • Basic Concepts
    • Business Intelligence
    • Analytics
    • Real and Virtual Domains
    • Systems and Interfaces
    • General System Structure
    • Properties of Systems
    • System Example 1
    • System Example 2
    • System Example 3
    • Variables and Relationships
    • Models and Simulation
    • Data and Information
    • Defining Insight
  • Capabilities of Simulation
    • Discovery and Experimentation
    • Learning
    • Monitoring and Surveillance
    • Generating Business Insights
  • Business Intelligence Framework
    • Description
    • Overview
    • Value Generation Components
    • Monitoring and Learning Components
    • Leadership Components
    • Putting the Pieces Together
  • Simulation Framework
    • Overview
    • The Context Component - Why
    • The Approach Component - How
    • The Basic Components - What
    • The Analytical Components - What
    • The Roles Component - Who
    • The Time Component - When
    • The Organization Component - Where
    • Review

2.0 Principles and Practices

  • Context and Opportunities
    • Pursuing Goals
    • Solving Problems
    • Generating Insights
    • Decision Support
    • Application Areas
    • Overview
    • Business Processes
    • Industrial Processes
    • Physical Processes
    • Economics
    • Queues and Discrete Events
  • System Models
    • Representing Reality
    • Model Categories
    • Defining the Structural Model
    • Defining the Functional Model
    • Defining the System Model
    • State Variables and Relationships
    • Properties of Systems
    • Components and Structure
    • Modeling Categories
  • Model Components
    • Description
    • Quantitative Data
    • Qualitative Data
    • Relationships
    • Interactions
    • Engine
  • System Simulation
    • Preparing to Use the Model

3.0 Modeling Techniques

  • Overview
    • Approaches and Techniques
    • Classifying Models by System Properties
    • Selecting a Modeling Method
    • Approaches and Techniques Review
    • Combining Techniques
  • Continuous Physical Models
    • Description and Purpose
    • Modeling Approach
    • Identifying Relationships
    • Example - Scenario
    • Example - Variables and Equations
    • Example - Simulated Results
    • Application Areas
  • Business Process Models
    • Description and Purpose
    • Modeling Approach
    • Structural Model Example
    • Adding the Behavioral Model Components
    • Application Areas
  • Stock and Flow Models
    • Description and Purpose
    • Modeling Approach
    • Example Scenario
    • Example Model Structure
    • Example Model Equations
    • Example Results
    • Application Areas
  • Monte Carlo Models
    • Description
    • Modeling Approach
    • Defining the Structure
    • Defining the Model Behavior
    • Example Scenario
    • Example Application
    • Example Results
    • Application Areas
  • Discrete Event Models
    • Purpose and Structure
    • Approach
    • The Poisson Probability Distribution
    • Example - Base Case
    • Example - Off Peak Period
    • Example - Peak Period
    • Example - Solution Options
    • Example - Solution Option 1
    • Example - Solution Option 2
    • Application Areas
  • Empirical Models
    • Description and Purpose
    • Approach
    • Example Scenario
    • Data Preparation
    • Word of Caution
    • Model Generation 1
    • Model Generation 2
    • Model Evaluation
    • Review Approaches and Techniques

4.0 Simulation

  • Opportunities and Techniques
    • Overview
    • Operational Decisions
    • Planning and Design
    • Surveillance
    • Virtual Measurements


Contact us for more detail about our trainings and for all other enquiries!

Upcoming Trainings

Join our public courses in our Finland facilities. Private class trainings will be organized at the location of your preference, according to your schedule.

Classroom / Virtual Classroom
24 kesäkuuta 2024
Helsinki, Espoo
1 Day
Classroom / Virtual Classroom
23 kesäkuuta 2024
Helsinki, Espoo
1 Day
Classroom / Virtual Classroom
02 heinäkuuta 2024
Helsinki, Espoo
1 Day
Classroom / Virtual Classroom
03 heinäkuuta 2024
Helsinki, Espoo
1 Day
Classroom / Virtual Classroom
02 heinäkuuta 2024
Helsinki, Espoo
1 Day
Classroom / Virtual Classroom
07 heinäkuuta 2024
Helsinki, Espoo
1 Day
Classroom / Virtual Classroom
07 heinäkuuta 2024
Helsinki, Espoo
1 Day
Classroom / Virtual Classroom
14 heinäkuuta 2024
Helsinki, Espoo
1 Day
Harness the Power of 'What-If' Analytics: Shaping Your Future with Simulation Training Course in Finland

Finland is a country located in northern Europe. Helsinki is the capital and largest city of the country. The majority of the people are Finns but there is also a small Lapp population in Lapland, where the country is famous for the Northern Lights. Finland's national languages are Finnish and Swedish.

Known for its vast forests, lakes, and natural beauty, Finland is one of the world's largest producers of forest products, such as paper, pulp, and lumber. One of the world's largest sea fortresses Suomenlinna, Rovaniemi with the "White Nights", dogsled safaris and of course the Northern Lights are what makes Finland so popular for tourists. Finland is one of the best places in the world to see the Northern Lights and attracts millions of tourists during its seasons.

Finland is home to a thriving technology industry and is widely recognized as one of the world's leading technology hubs. Companies such as Nokia and Rovio (creator of the popular game Angry Birds) are based in Finland. Some of the key factors that have contributed to Finland's success in technology include; strong investment in research and development, a highly educated workforce and fundings.

Finland has a strong educational system, and is widely regarded as one of the world's most literate countries. In fact, Finland's literacy rate is one of the highest in the world, and its students consistently perform well in international tests of math and reading ability.

Also, as a pioneer in environmental sustainability, Finland is known for its efforts to reduce its carbon footprint and promote clean energy. This Nordic country is also famous for its unique and distinctive cultural heritage, including its traditional folk music and its elaborate traditional costumes.

Helsinki, Finland's capital city, is the country's business center. Helsinki is Finland's largest city, and it is home to many of the country's major corporations and organizations, including many of the country's leading technology firms. The city is also a commercial, trade, and financial center, as well as one of the busiest ports in the Nordic region.

Take advantage of our diverse IT course offerings, spanning programming, software development, business skills, data science, cybersecurity, cloud computing and virtualization. Our knowledgeable instructors will provide you with practical training and industry insights, delivered directly to your chosen venue in Finland.
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