From mboxrd@z Thu Jan 1 00:00:00 1970 X-Msuck: nntp://news.gmane.io/gmane.text.pandoc/32095 Path: news.gmane.io!.POSTED.blaine.gmane.org!not-for-mail From: bapt a Newsgroups: gmane.text.pandoc Subject: custom writer to Excalidraw? 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charset="UTF-8" Hi, I'd like to extract all math equations from my lecture notes (and potentially images too, at some stage) and produce a json file suitable for Excalidraw, so that students could reorganise them, sketch notes collaboratively, etc.: https://math.preview.excalidraw.com/ [image: Screenshot 2023-01-26 at 20.34.57.png] (note that this is using a user-contributed extension*; the plain version of Excalidraw does not support Mathjax or Asciimath). >From an equation like this in the source document (beamer tex): ``` \[\begin{aligned} \nabla\cdot\mathbf{D}&= \rho_f\\ \nabla\cdot\mathbf{B}&= 0\\ \nabla\times\mathbf{E}&= -\frac{\partial\mathbf{B}}{\partial t}\\ \nabla\times\mathbf{H}&= \frac{\partial\mathbf{D}}{\partial t} + \mathbf{J}_f \end{aligned}\] ``` the full json file suitable for import in Excalidraw looks like: ``` { "type": "excalidraw", "version": 2, "source": "https://math.preview.excalidraw.com", "elements": [ { "type": "text", "version": 104, "versionNonce": 669974443, "isDeleted": false, "id": "iL0y7olLhWzLKVTzIffR1", "fillStyle": "hachure", "strokeWidth": 1, "strokeStyle": "solid", "roughness": 1, "opacity": 100, "angle": 0, "x": 418, "y": -186, "strokeColor": "#000000", "backgroundColor": "transparent", "width": 202, "height": 169, "seed": 1021462275, "groupIds": [], "roundness": null, "boundElements": [], "updated": 1674718443076, "link": null, "locked": false, "subtype": "math", "customData": { "useTex": true, "mathOnly": true, "ariaLabel": "\\begin{aligned} \\nabla\\cdot\\mathbf{D}&= \\rho_f\\\\ \\ nabla\\cdot\\mathbf{B}&= 0\\\\ \\nabla\\times\\mathbf{E}&= -\\frac{\\partial \\mathbf{B}}{\\partial t}\\\\ \\nabla\\times\\mathbf{H}&= \\frac{\\partial\\ mathbf{D}}{\\partial t} + \\mathbf{J}_f \\end{aligned}" }, "fontSize": 20, "fontFamily": 2, "text": "\\begin{aligned}\n\\nabla\\cdot\\mathbf{D}&= \\rho_f\\\\\n\\nabla\\ cdot\\mathbf{B}&= 0\\\\\n\\nabla\\times\\mathbf{E}&= -\\frac{\\partial\\ mathbf{B}}{\\partial t}\\\\\n\\nabla\\times\\mathbf{H}&= \\frac{\\partial\\ mathbf{D}}{\\partial t} + \\mathbf{J}_f\n\\end{aligned}", "baseline": 91, "textAlign": "left", "verticalAlign": "top", "containerId": null, "originalText": "\\begin{aligned}\n\\nabla\\cdot\\mathbf{D}&= \\rho_f \\\\\n\\nabla\\cdot\\mathbf{B}&= 0\\\\\n\\nabla\\times\\mathbf{E}&= -\\frac{ \\partial\\mathbf{B}}{\\partial t}\\\\\n\\nabla\\times\\mathbf{H}&= \\frac{ \\partial\\mathbf{D}}{\\partial t} + \\mathbf{J}_f\n\\end{aligned}" }, { "type": "text", "version": 111, "versionNonce": 1291434347, "isDeleted": false, "id": "xzGehwC0igI1rh-jYddgb", "fillStyle": "hachure", "strokeWidth": 1, "strokeStyle": "solid", "roughness": 1, "opacity": 100, "angle": 0, "x": 754, "y": 32, "strokeColor": "#000000", "backgroundColor": "transparent", "width": 194, "height": 24, "seed": 315800227, "groupIds": [], "roundness": null, "boundElements": [], "updated": 1674718439209, "link": null, "locked": false, "subtype": "math", "customData": { "useTex": true, "mathOnly": true, "ariaLabel": "\\mathbf{F}= q\\left(\\mathbf{E}+ \\mathbf{v}\\times \\ mathbf{B}\\right)" }, "fontSize": 20, "fontFamily": 2, "text": "\\mathbf{F}= q\\left(\\mathbf{E}+ \\mathbf{v}\\times \\mathbf{B}\\ right)", "baseline": 18, "textAlign": "left", "verticalAlign": "top", "containerId": null, "originalText": "\\mathbf{F}= q\\left(\\mathbf{E}+ \\mathbf{v}\\times \\ mathbf{B}\\right)" } ], "appState": { "gridSize": null, "viewBackgroundColor": "#ffffff" }, "files": {} } ``` Obviously there isn't a one-to-one mapping between a typical input document and what's possible or even desirable in a whiteboard context, but for the limited scope of producing a bunch of equations automatically, it would be very nice to have a pandoc writer. At the moment I'm using a lua filter someone kindly contributed on this mailing list, to simply extract all maths from an input file, ``` _ENV = pandoc local math_elements = List{} return { -- first document pass {Math = function (m) local comment = "math start" math_elements:insert(comment) math_elements:insert(m) end}, -- second document pass {Pandoc = function (_) return Pandoc(math_elements:map(Plain)) end}, } ``` I then use a custom script (I wrote it in R since I'm more fluent in it) to produce suitable json (https://github.com/baptiste/minixcali/blob/main/R/elements.R#L227) It works, but I feel this last step should really be implemented as a custom Writer, especially if other people want to try this; unfortunately, my lua skills are currently very limited. Any pointers / starter / suggestions would be much appreciated! Best regards, baptiste *: fantastic work by user DanielJGeiger, https://github.com/excalidraw/excalidraw/pull/6037 -- You received this message because you are subscribed to the Google Groups "pandoc-discuss" group. To unsubscribe from this group and stop receiving emails from it, send an email to pandoc-discuss+unsubscribe-/JYPxA39Uh5TLH3MbocFF+G/Ez6ZCGd0@public.gmane.org To view this discussion on the web visit https://groups.google.com/d/msgid/pandoc-discuss/63e0951a-4e4c-45b9-8656-0b1d9bd069f6n%40googlegroups.com. ------=_Part_1169_372139571.1674719956899 Content-Type: text/html; charset="UTF-8" Content-Transfer-Encoding: quoted-printable
Hi,

I'd like to extract all math equations = from my lecture notes (and potentially images too, at some stage) and produ= ce a json file suitable for Excalidraw, so that students could reorganise t= hem, sketch notes collaboratively, etc.:

h= ttps://math.preview.excalidraw.com/

3D"=

(note that this is using a user-contributed extension*; the plain ve= rsion of Excalidraw does not support Mathjax or Asciimath).=C2=A0

From an equation like this in the source document (beamer= tex):

```
\[\begin{<= span>aligned}
\nabla\cdot\= mathbf{D}&=3D \rho_= f\\
\nabla\cdot\mathbf{B}<= /span>&=3D 0\\
\nabla\times\mathbf{E}&=3D -\frac{\partial\mathbf{B}}{\p= artial t}\\
\nabla\times\mathbf{H}&=3D \frac{= \partial\mathbf{D}}{\partial t} + \m= athbf{J}_f
\end{aligned}\]
```

the full json file suitable for impor= t in Excalidraw looks like:

= ```
{=
"type": "e= xcalidraw",
"version": 2,
"source": "https://math.preview.excalidraw.co= m",
"elements": [
{
"type": "text",
= "version": 104,
"versionNonce":= 669974443,
<= span>"isDeleted": false,
"id": "iL0y7olLhWz= LKVTzIffR1",
"fillSt= yle": "hachure",
"strokeWidth": 1,
"strokeStyle": = "solid",
"roughness": 1,
<= span> "opacity": 100,
"angle": = 0,
"x"<= span>: 418,
<= span>"y": -186,
"strokeColor": "#000000",
"backgroundColor": "transparent",
= "width": 202,
"height": = 169,
"seed": 1021462275,
"groupIds": [],
"roundness": null,
"boundElements": [],
"updated": 16747= 18443076,
"link": null,
"locked": false,
"subtype": "math= ",
"customData": {
"useTex": true,
<= span>"mathOnly": true,
<= div> "ariaLabel": "\\begin{aligned} \\nabla\\cdot\\mathbf{D}&=3D = \\rho_f\\\\ \\nabla\\cdot\\mathbf{B}&=3D 0\\\\ \\nabla\\times\\mathbf{E}&=3D -\\frac{\\= partial\\mathbf{B}}{\\<= span>partial t}\\\\ \\n= abla\\times\\mathbf{H}&= amp;=3D \\frac{\\partia= l\\mathbf{D}}{\\partial= t} + \\mathbf{J}_f \\e= nd{aligned}"
},
<= /span>"fontSize": 20,
"fontFamily": 2= ,
"text": "\\begin{aligned}\n\= \nabla\\cdot\\mathbf{D}&=3D \\rho_f\\\\\n\= \nabla\\cdot\\mathbf{B}&=3D 0\\\\\n\\nabla= \\times\\mathbf{E}&=3D -<= span>\\frac{\\partial\\= mathbf{B}}{\\partial t}= \\\\\n\\nabla\\times\\<= /span>mathbf{H}&=3D \\frac{\\partial\\mathbf{D}}{= \\partial t} + \\mathbf{J}_f<= span>\n\\end{aligned}",
= "baseline": 91,
"textAlign": "left",
"vertical= Align": "top",
"containerId": null,
"originalText"= : "\\begin{aligned}\n\\= nabla\\cdot\\mathbf{D}&=3D \\rho_f\\\\\n\\= nabla\\cdot\\mathbf{B}&=3D 0\\\\\n\\nabla\= \times\\mathbf{E}&=3D -\\frac{\\partial\\<= /span>mathbf{B}}{\\partial t}\= \\\\n\\nabla\\times\\mathbf{H}&=3D \\frac{= \\partial\\mathbf{D}}{\= \partial t} + \\mathbf{J}_f\n\\end{aligned}"
},
{
"type"<= span>: "text",
"version": 111,
=
"versionNonce": 129= 1434347,
"isDeleted"= : false,
= "id": "xzGehwC0igI1rh-jYddgb",
"fillStyle": "hachure",
"strokeWidth": 1,
"strokeStyle": "so= lid",
"roughness": 1,
"opacity": 100,
=
"angle": 0,
"x": 754,
"y"<= span>: 32,
"strokeColor": "#000000",=
"backgroundColor": = "transparent",
"width": 194,
"height": 24,
"seed": = 315800227,
"groupIds= ": [],
"roundness": null,
<= /span>"boundElements": [],
= "updated": 1674718439209,
"link": null,
"locked": false,
= "subtype": "math",
"customData": {
"useTex": tru= e,
"mathOnly": true,
"ariaLabel": "\\mathbf{F}=3D q\\left(\\mathbf{E}+ \\mathbf{v}\\<= span>times \\mathbf{B}\\right)"
},
"fontSize": 20,
=
"fontFamily": 2,
"text": <= /span>"\\mathbf{F}=3D q\\left(\\mathbf{E}+ \\<= span>mathbf{v}\\times \\mathbf{B}\\right)",
"baseline": 18<= span>,
"textAlign": = "left",
"verticalAlign": "top",
"containerId": nul= l,
"originalText": "\\mathbf{F}=3D q= \\left(\\mathbf{E}+ \\mathbf{v}\\times \= \mathbf{B}\\right)"
}
],
"appState": {
"gri= dSize": null,
"viewBackgroundColor": "#ffffff= "
},
"files"= : {}
}
<= /div>
```

Obviously there isn't a one-to-one mapping between a typical input docu= ment and what's possible or even desirable in a whiteboard context, but for= the limited scope of producing a bunch of equations automatically, it woul= d be very nice to have a pandoc writer.

At the moment I'm using a lua filter someone kindl= y contributed on this mailing list, to simply extract all maths from an inp= ut file,

```
_ENV =3D pandoc
local math_elements =3D List{}
return {
-- first = document pass
{Math =3D function (m)
local comment =3D "math start"
math_elements:insert(<= span>comment)
math_ele= ments:insert(m)
end},
<= div>-- second document pass
{Pand= oc =3D function (_) return Pandoc= (math_elements:map(Plain)) end},
<= div>}
```

I then use a custom script (I wr= ote it in R since I'm more fluent in it) to produce suitable json (https://= github.com/baptiste/minixcali/blob/main/R/elements.R#L227)

I= t works, but I feel this last step should really be implemented as a custom= Writer, especially if other people want to try this; unfortunately, my lua= skills are currently very limited. Any pointers / starter / suggestions wo= uld be much appreciated!

Best regards,

baptiste=



= *: fantastic work by user DanielJGeiger, https://github.com/excalidraw/exca= lidraw/pull/6037

--
You received this message because you are subscribed to the Google Groups &= quot;pandoc-discuss" group.
To unsubscribe from this group and stop receiving emails from it, send an e= mail to pand= oc-discuss+unsubscribe-/JYPxA39Uh5TLH3MbocFFw@public.gmane.org.
To view this discussion on the web visit https://groups.google.com/d= /msgid/pandoc-discuss/63e0951a-4e4c-45b9-8656-0b1d9bd069f6n%40googlegroups.= com.
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