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EruditeMath.pck.st
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EruditeMath.pck.st
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'From Cuis7.1 [latest update: #6715] on 12 September 2024 at 12:39:34 pm'!
'Description '!
!provides: 'EruditeMath' 1 46!
!requires: 'Erudite' 1 203 nil!
!requires: 'Cryptography-DigitalSignatures' 1 14 nil!
!requires: 'OSProcess' 1 23 nil!
SystemOrganization addCategory: #EruditeMath!
SystemOrganization addCategory: #'EruditeMath-Parser'!
SystemOrganization addCategory: #'EruditeMath-Books'!
SystemOrganization addCategory: #'EruditeMath-Exceptions'!
SystemOrganization addCategory: #'EruditeMath-Latex'!
!classDefinition: #DocMath category: #'EruditeMath-Parser'!
ProtoObject subclass: #DocMath
instanceVariableNames: 'formula'
classVariableNames: ''
poolDictionaries: ''
category: 'EruditeMath-Parser'!
!classDefinition: 'DocMath class' category: #'EruditeMath-Parser'!
DocMath class
instanceVariableNames: ''!
!classDefinition: #DocPlot category: #'EruditeMath-Parser'!
ProtoObject subclass: #DocPlot
instanceVariableNames: 'script'
classVariableNames: ''
poolDictionaries: ''
category: 'EruditeMath-Parser'!
!classDefinition: 'DocPlot class' category: #'EruditeMath-Parser'!
DocPlot class
instanceVariableNames: ''!
!classDefinition: #EruditeMathManual category: #'EruditeMath-Books'!
EruditeBook subclass: #EruditeMathManual
instanceVariableNames: ''
classVariableNames: ''
poolDictionaries: ''
category: 'EruditeMath-Books'!
!classDefinition: 'EruditeMathManual class' category: #'EruditeMath-Books'!
EruditeMathManual class
instanceVariableNames: ''!
!classDefinition: #LatexEruditeMathBookRenderer category: #'EruditeMath-Latex'!
LatexEruditeBookRenderer subclass: #LatexEruditeMathBookRenderer
instanceVariableNames: ''
classVariableNames: ''
poolDictionaries: ''
category: 'EruditeMath-Latex'!
!classDefinition: 'LatexEruditeMathBookRenderer class' category: #'EruditeMath-Latex'!
LatexEruditeMathBookRenderer class
instanceVariableNames: ''!
!classDefinition: #EnvironmentVariableNotDefinedError category: #'EruditeMath-Exceptions'!
Error subclass: #EnvironmentVariableNotDefinedError
instanceVariableNames: ''
classVariableNames: ''
poolDictionaries: ''
category: 'EruditeMath-Exceptions'!
!classDefinition: 'EnvironmentVariableNotDefinedError class' category: #'EruditeMath-Exceptions'!
EnvironmentVariableNotDefinedError class
instanceVariableNames: ''!
!classDefinition: #EruditeMathMarkupGrammar category: #'EruditeMath-Parser'!
EruditeMarkupParser subclass: #EruditeMathMarkupGrammar
instanceVariableNames: 'plot math'
classVariableNames: ''
poolDictionaries: ''
category: 'EruditeMath-Parser'!
!classDefinition: 'EruditeMathMarkupGrammar class' category: #'EruditeMath-Parser'!
EruditeMathMarkupGrammar class
instanceVariableNames: ''!
!classDefinition: #EruditeMathMarkupParser category: #'EruditeMath-Parser'!
EruditeMathMarkupGrammar subclass: #EruditeMathMarkupParser
instanceVariableNames: ''
classVariableNames: ''
poolDictionaries: ''
category: 'EruditeMath-Parser'!
!classDefinition: 'EruditeMathMarkupParser class' category: #'EruditeMath-Parser'!
EruditeMathMarkupParser class
instanceVariableNames: ''!
!DocMath methodsFor: 'accessing' stamp: 'MM 6/12/2022 10:11:51'!
formula
"Answer the value of formula"
^ formula! !
!DocMath methodsFor: 'accessing' stamp: 'MM 6/12/2022 10:11:51'!
formula: anObject
"Set the value of formula"
formula := anObject! !
!DocMath methodsFor: 'as yet unclassified' stamp: 'MM 6/12/2022 10:16:32'!
accept: aVisitor
^ aVisitor visitMath: self! !
!DocMath methodsFor: 'as yet unclassified' stamp: 'AS 6/16/2022 12:13:01'!
data
| dataDict darkPngPath formulaId lightGifPath lightPngPath |
dataDict := Dictionary new.
formulaId := self dataKey.
darkPngPath := DirectoryEntry tempDirectory //
(formulaId, Theme darkModeId, '.png').
lightGifPath := DirectoryEntry tempDirectory //
(formulaId, Theme lightModeId, '.gif').
lightPngPath := DirectoryEntry tempDirectory //
(formulaId, Theme lightModeId, '.png').
lightGifPath exists ifFalse: [
OSProcess mimetex: '-e ', lightGifPath pathName, ' "', self formula, '"'
].
lightPngPath exists ifFalse: [
OSProcess imConvert: lightGifPath pathName,' ', lightPngPath pathName
].
dataDict at: Theme lightModeId put:
(EruditeForm fromFileNamed: lightPngPath pathName).
darkPngPath exists ifFalse: [
OSProcess convertLightImage: lightPngPath pathName
toDarkImage: darkPngPath pathName
].
dataDict at: Theme darkModeId put:
(EruditeForm fromFileNamed: darkPngPath pathName).
^ dataDict! !
!DocMath methodsFor: 'as yet unclassified' stamp: 'AS 6/15/2022 11:24:53'!
dataKey
^ 'erudite-formula-', (((SecureHashAlgorithm new)
initialize;
hashMessage: self formula)
printStringBase: 16) asLowercase! !
!DocPlot methodsFor: 'as yet unclassified' stamp: 'AS 6/13/2022 21:30:31'!
accept: aVisitor
^ aVisitor visitPlot: self! !
!DocPlot methodsFor: 'as yet unclassified' stamp: 'AS 6/15/2022 22:39:00'!
data
| dataDict |
dataDict := Dictionary new.
self putMorphicData: dataDict.
^ dataDict! !
!DocPlot methodsFor: 'as yet unclassified' stamp: 'AS 6/15/2022 10:57:14'!
dataKey
^ 'erudite-plot-', (((SecureHashAlgorithm new)
initialize;
hashMessage: self script)
printStringBase: 16) asLowercase! !
!DocPlot methodsFor: 'as yet unclassified' stamp: 'AS 6/16/2022 12:13:56'!
putMorphicData: aDictionary
| darkImagePath gpPath lightImagePath plotId |
plotId := self dataKey.
darkImagePath := DirectoryEntry tempDirectory //
(plotId, Theme darkModeId, '.png').
lightImagePath := DirectoryEntry tempDirectory //
(plotId, Theme lightModeId, '.png').
gpPath := (lightImagePath pathName, '.gp') asFileEntry.
gpPath exists ifFalse: [
| gpScript |
gpScript := 'set term png \', String lf,
String tab, 'transparent truecolor', String lf,
'set output ''', lightImagePath pathName, '''', String lf,
self script.
gpPath fileContents: gpScript
].
lightImagePath exists ifFalse: [
OSProcess gnuplot: gpPath pathName
].
aDictionary at: Theme lightModeId put:
(EruditeForm fromFileNamed: lightImagePath pathName).
darkImagePath exists ifFalse: [
OSProcess convertLightImage: lightImagePath pathName
toDarkImage: darkImagePath pathName
].
aDictionary at: Theme darkModeId put:
(EruditeForm fromFileNamed: darkImagePath pathName)! !
!DocPlot methodsFor: 'accessing' stamp: 'AS 6/13/2022 21:40:10'!
script
^ script! !
!DocPlot methodsFor: 'accessing' stamp: 'AS 6/13/2022 21:40:23'!
script: aString
script _ aString! !
!EruditeMathManual methodsFor: 'rendering' stamp: 'AS 6/16/2022 16:33:29'!
latexRendererClass
^ LatexEruditeMathBookRenderer! !
!EruditeMathManual methodsFor: 'as yet unclassified' stamp: 'AS 7/24/2022 09:50:48'!
initialize
super initialize.
title _ 'EruditeMath Manual'.
self addSection: self section_Requirements.
self addSection: self section_NewBook.
self addSection: self section_LatexMath.
self addSection: self section_Plots.
! !
!EruditeMathManual methodsFor: 'as yet unclassified' stamp: 'AS 7/24/2022 09:50:48'!
section_LatexMath
^(EruditeBookSection basicNew title: 'Latex Math'; document: ((EruditeDocument contents: '!!!! Latex Math
Latex math is enclosed between dollar signs:
```$x^2 + y^2$```
The formulas are converted to images and then displayed.
!!!!!! Example
$x^2 + y^2$
!!!!!! Latex
When exporting to Latex, the formula source is copied to the Latex document.') data: ((Dictionary new) add: ('erudite-formula-ec88764d14d565e8c68aa2804ff42cfc08c65eea'->((Dictionary new) add: (#dark->(EruditeForm fromBase64String:'iVBORw0KGgoAAAANSUhEUgAAAEAAAAAVCAMAAADB9BioAAADAFBMVEUAAAAAAAD///9/f3/l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')); add: (#light->(EruditeForm fromBase64String:'iVBORw0KGgoAAAANSUhEUgAAAEAAAAAVCAYAAAD2KuiaAAABXklEQVR4XuVYQQ6EIAzkdb7A
D/gBn+TdV3j37nu6GRM2ikVaCspmD40RYRhGOhUdETkyxLZt5Jz7Bu7JiFk67jiagNd13QGX
ZdkBccU92ltZfIqjCXwYBur7/rTYcRwJ0YoAKY4mcL+luPZWBEhxfERxCcm3dkVxcABjgpYF
OHKsYjhaE3xSgJBjtFygg+98jFSpySmDGgGOHLVYHMfLQywapQIuGb7NGLhl8VoB0HeaJrUA
MY6ngX6xYe2UvJGTqsotrRXgbgzXfseRHegFkObTPM9kyWmtAJiPG8PxTnGMTiIxMvSDm4Y+
Eau7sei6ju6eS42Wa09xLJ7PtT1As81FWGKzqFiqSgiQew4RpYDUE94SAPywzXPOIKz7A8hX
AN9WMyVyBAj54etOUrUuWOFZmfsAqu0HWgFCzrGqkJ0Cb5zYLON9/v+lAOav0NZ+X0nECj3L
kqI/J0Dpf5AfEL+5pSfJ82wAAAAASUVORK5CYII=')); yourself)); yourself); yourself); subsections: (OrderedCollection new yourself); yourself)! !
!EruditeMathManual methodsFor: 'as yet unclassified' stamp: 'AS 7/24/2022 09:50:48'!
section_NewBook
^(EruditeBookSection basicNew title: 'New Book'; document: ((EruditeDocument contents: '!!!! Creating a New EruditeMath Book
To create a new EruditeMath book, execute the following code:
[[[EruditeMathManual newBook]]] doIt') data: ((Dictionary new)); yourself); subsections: (OrderedCollection new yourself); yourself)! !
!EruditeMathManual methodsFor: 'as yet unclassified' stamp: 'AS 7/24/2022 09:50:49'!
section_Plots
^(EruditeBookSection basicNew title: 'Plots'; document: ((EruditeDocument contents: '!!!! Plots
Plotting with gnuplot is supported. Insert the gnuplot script between ```@startplot and @endplot``` tags:
```@startplot
plot cos(x)
@endplot```
The plot is saved as a png file which is then inserted in the document as a regular image. If the reader of the book has gnuplot installed, they can also launch an interactive gnuplot window by clicking on the //[interact]// button.
!!!!!! Example
@startplot
plot cos(x)
@endplot
!!!!!! Latex
When exporting to Latex, the plot source is copied into a gnuplot environment.') data: ((Dictionary new) add: ('erudite-plot-2147160b73b9abd116eea12a564b0bd1bd690aa6'->((Dictionary new) add: (#dark->(EruditeForm fromBase64String:'iVBORw0KGgoAAAANSUhEUgAAAoAAAAHgCAYAAAA10dzkAABYC0lEQVR4XuWdC4xUZZq/O8YY
FULIBNddQ4g6O4SgEgKjITgSWAk6HVnIQBjDMHhhQMUN4ooGlIxBJKwXRFTQEeUiDn86ooAt
KyKgDCg0F7k00Nyam9k1m81kdtd1XZd1v//3G05LUV1VXVV9Lt/3PU/8In26qrrO+37ne3/n
O+/3fjV8+PDhw4cPHz58+PDhw4cPHz58+PDhw4cPHz58+PDhw4cPHz58+PDhw4cPHz58+PDh
w4cPHz58+PDhw4cPHz58+PDhw4cPHz58+PDhw4dPGRhjOto237bvbZvEtwgfPnz48OHDh0/Y
4u+ntn1p2xrbvuMLQD58+PDhw4cPn/AF4N22jYn+/S1fAPLhw4cPHz58+LDEIF8A8uHDhw8f
Pnz48AUgHz58+PDhw4cPH74A5MOHDx8+fPjw4cMXgHz48OHDhw8fPnz4ApAPHz58+PDhw4dP
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