Difference between revisions of "Analytica Optimizer Guide"

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__NOTOC__
 
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== Sections ==
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== Chapters ==
 
* [[Introduction to Optimizer]]
 
* [[Introduction to Optimizer]]
 
<!--#* Using the Analytica Optimizer Guide
 
<!--#* Using the Analytica Optimizer Guide
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* [[Optimizing with Arrays]]
 
* [[Optimizing with Arrays]]
 
* [[Optimizer key concepts: Airline Example]]
 
* [[Optimizer key concepts: Airline Example]]
* [[Optimizer Attribute Reference]]
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* [[Optimizer Attributes]]
* [[Primary Optimization Functions]]
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* [[Optimizer Functions]]
* [[Optimization Status Functions]]
 
 
* [[Optimizer control settings]]
 
* [[Optimizer control settings]]
  
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==== If you're new to Analytica ====
 
==== If you're new to Analytica ====
You will find it easier if you first learn the essentials of Analytica before learning the Analytica Optimizer described here. Start with the [http://wiki.analytica.com/index.php?title=Analytica_Tutorial Analytica Tutorial] to learn the basics of interacting with Analytica and its modeling language, especially [http://wiki.analytica.com/index.php?title=Analytica_Tutorial#Working_with_Arrays_.28Tables.29 Working with Arrays]. It's important to have a good understanding of Intelligent Arrays to make good use of the Optimizer.
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You will find it easier if you first learn the essentials of Analytica before learning the Analytica Optimizer described here. Start with the [[Analytica Tutorial]] to learn the basics of interacting with Analytica and its modeling language, especially [[Analytica_Tutorial#Working_with_Arrays_.28Tables.29|Working with Arrays]]. It's important to have a good understanding of [[Intelligent Arrays]] to make good use of the Optimizer.
  
 
==== If you're new to the Analytica Optimizer ====
 
==== If you're new to the Analytica Optimizer ====
We recommend you to start with the [http://wiki.analytica.com/index.php?title=Quick_Start Quick Start], an introductory tutorial that takes you through the key steps to create a simple optimization, including  [http://wiki.analytica.com/index.php?title=Quick_Start#Introduction_to_Structured_Optimization Structured Optimization], and [http://wiki.analytica.com/index.php?title=Optimizing_with_Arrays Optimizing with Arrays]. The section on [http://wiki.analytica.com/index.php?title=Optimization_Characteristics Optimization Characteristics] explains the general principles of optimization and the types of optimization, including Linear Programming (LP), Quadratic Programming (QP), and Non-Linear Programming (NLP). We also recommend reading [http://wiki.analytica.com/index.php?title=Optimizing_with_Arrays Optimizing with Arrays] to understand optimization with parametric analysis. [http://wiki.analytica.com/index.php?title=Key_Concepts%3A_The_Airline_NLP_Example Key Concepts: The Airline NLP Example] explains dynamic and stochastic optimization with models that are [[dynamic]] (changing over time) and/or [[Probabilistic calculation|uncertain]] using Monte Carlo.
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We recommend you to start with the [[Quick Start]], an introductory tutorial that takes you through the key steps to create a simple optimization, including  [[Quick_Start#Introduction_to_Structured_Optimization|Structured Optimization]], and [[Optimizing with Arrays]]. The section on [[Optimization Characteristics]] explains the general principles of optimization and the types of optimization, including Linear Programming (LP), Quadratic Programming (QP), and Non-Linear Programming (NLP). We also recommend reading [[Optimizing with Arrays]] to understand optimization with [[Parametric Analysis|parametric analysis]]. [[Key Concepts: The Airline NLP Example]] explains dynamic and stochastic optimization with models that are [[dynamic]] (changing over time) and/or [[Probabilistic calculation|uncertain]] using Monte Carlo.
  
 
== Conventions Used in this Guide ==
 
== Conventions Used in this Guide ==
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==See Also==
 
==See Also==
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* [[Analytica Tutorial]]
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* [[Analytica User Guide]]
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* [[About_Analytica#Conventions_used_in_this_tutorial|Conventions used in  Analytica Tutorial]]
 
* [[Typographic conventions in this guide|Conventions used in  Analytica User Guide]]
 
* [[Typographic conventions in this guide|Conventions used in  Analytica User Guide]]
* [[About_Analytica#Conventions_used_in_this_tutorial|Conventions used in  Analytica Tutorial]]
 
 
* [[Expression Syntax]]
 
* [[Expression Syntax]]
 
* [[Expression Assist]]
 
* [[Expression Assist]]
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<footer>Analytica Wiki / {{PAGENAME}} / Introduction to Optimizer</footer>

Revision as of 17:40, 7 June 2016


This Guide explains how to use the Analytica Optimizer. It provides a Quick Start Tutorial and an introduction to the basic concepts of optimization, including linear, quadratic, and nonlinear programming (NLP), as well as special topics in NLP. However, it is not a complete textbook on optimization. For more challenging applications, you might find it useful to consult one of the many good textbooks on optimization.


Chapters

Using this Guide

If you're new to Analytica

You will find it easier if you first learn the essentials of Analytica before learning the Analytica Optimizer described here. Start with the Analytica Tutorial to learn the basics of interacting with Analytica and its modeling language, especially Working with Arrays. It's important to have a good understanding of Intelligent Arrays to make good use of the Optimizer.

If you're new to the Analytica Optimizer

We recommend you to start with the Quick Start, an introductory tutorial that takes you through the key steps to create a simple optimization, including Structured Optimization, and Optimizing with Arrays. The section on Optimization Characteristics explains the general principles of optimization and the types of optimization, including Linear Programming (LP), Quadratic Programming (QP), and Non-Linear Programming (NLP). We also recommend reading Optimizing with Arrays to understand optimization with parametric analysis. Key Concepts: The Airline NLP Example explains dynamic and stochastic optimization with models that are dynamic (changing over time) and/or uncertain using Monte Carlo.

Conventions Used in this Guide

You can read the pages in this guide in any order. But, if you want to go through them sequentially, you can use the links to the previous and next pages at the bottom of each page.

This guide uses a simple shorthand to show the definition of a variable or function. It lists the class of the object (Variable, Decision, Constraint, Objective, etc), its identifier, followed by :=, and its definition:

1-1-new.png

In this example, a Constraint with identifier Volume_Constraint has the Definition Volume >= Required Volume.

See Also


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