Tutorials
And also:
Our partner, Openeering publishes lots of turorials on Scilab and Xcos.
Do not hesitate to have a look on http://www.openeering.com/scilab_tutorials
Scilab for very beginners |
| 02/2013 |
| The purpose of this document is to guide you step by step in exploring the various basic features of Scilab for a user who has never used numerical computation software.
Scilab_beginners.pdf 4.63 MB
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Introduction to Scilab |
| Updated 11/2010 |
| The goal of this document is to present Scilab features and the core of skills necessary to start with Scilab and get familiar with its environment.
introscilab.pdf 1.19 MB
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Scilab for mathematics teaching Booklet |
| 2013 edition – only available in French |
| This booklet, realized with the support of Inria and co-written by Scilab Enterprises and teachers is a practical introduction to Scilab with examples based on French high school mathematics programs.
livret_maths_2013.pdf 1.67 MB
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Introduction to discrete probabilities with Scilab |
| 01/2010 |
| In this document, we present an introduction to discrete probabilities with Scilab (discrete random variables and conditional probabilities, combinations problems, tree diagrams and Bernoulli trials, simulation of random processes with Scilab...).
introdiscreteprobas.pdf 1.42 MB
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Scilab is not naive |
| Updated 12/2010 |
| Most of the time, the mathematical formula is directly used in the Scilab source code. But, in many algorithms, some additional work is performed, which takes into account the fact that the computer does not process mathematical real values, but performs computations with their floating point representation. The goal of this article is to show that, in many situations, Scilab is not naive and use algorithms which have been specifically tailored for floating point computers. In each example, we show that the naive algorithm is not sufficiently accurate, while Scilab implementation is much more robust.
scilabisnotnaive.pdf 453.54 kB
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Optimization in Scilab |
| 07/2010 |
| This document presents all existing and non-existing optimization features in Scilab (examples of nonlinear optimization, available algorithms to solve quadratic problems, non-linear least squares problems, semidefinite programming, genetic algorithms, simulated annealing and linear matrix inequalities...)
optimization_in_scilab.pdf 876.91 kB
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Our partner, Openeering publishes lots of turorials on Scilab and Xcos.
Do not hesitate to have a look on http://www.openeering.com/scilab_tutorials