apenab / react-dymo Goto Github PK
View Code? Open in Web Editor NEWCollections of react utilities to handle the Dymo LabelWriter web service
Collections of react utilities to handle the Dymo LabelWriter web service
We need to migrate all the project to TypeScript.
Hi there, I have installed the last version of the dymo web service on windows later on I have installed this package using the instructions on the Readme.md. I can't perform any operation with this library and I get errors in the requests. I'm using the latest version of the dymo web service and the latest version of this package
We need to replace the "axios" library for the native "fetch" api
Hello,
I like your work at react-dymo-hooks! It is very easy to read status and printers.
I do not see how I can print using one of the printers. Could you tell me how to do that?
Thank you!
Hi, there seems to be an issue with useDymoCheckService()
When trying to use it it throws an error.
`Uncaught Error: Invalid hook call. Hooks can only be called inside of the body of a function component. This could happen for one of the following reasons:
This is pretty simple to reproduce.
1.- Start a new react project
npx create-react-app dymo-demo
2.- cd dymo-demo/
3.- npm install react-dymo-hooks
4.- Open the code and in App.js simply call the useDymoCheckService() method like so...
5.- npm start
Result
Blank screen with the error in the console. Following the debugger is pointing at this part of the code..
My package.json looks like this...
{
"name": "dymo-demo",
"version": "0.1.0",
"private": true,
"dependencies": {
"@testing-library/jest-dom": "^5.16.5",
"@testing-library/react": "^13.4.0",
"@testing-library/user-event": "^13.5.0",
"react": "^18.2.0",
"react-dom": "^18.2.0",
"react-dymo-hooks": "^2.0.2",
"react-scripts": "5.0.1",
"web-vitals": "^2.1.4"
},
"scripts": {
"start": "react-scripts start",
"build": "react-scripts build",
"test": "react-scripts test",
"eject": "react-scripts eject"
},
"eslintConfig": {
"extends": [
"react-app",
"react-app/jest"
]
},
"browserslist": {
"production": [
">0.2%",
"not dead",
"not op_mini all"
],
"development": [
"last 1 chrome version",
"last 1 firefox version",
"last 1 safari version"
]
}
}
Hi, is there also any possibility to print multiple labels in one job. In the original documentation there is something like dymo.label.framework.LabelSetBuilder. How can I achieve this with the dymo-react-hooks?
Is there any way you can get this to render once instead of 4 times?
Hello, I came across your solution as I need to print dymo labels from my app.
When I implemented your sample code, I keep getting Connection Refused error from Chrome. It seems like a CORS issue.
Do you know what steps need to be take to resolve this?
I am using this library with great success in Chrome on a Mac but it is priting blanks on windows. I've confirmed that the xml I am creating to send to the print job is correct/the same as it is on mac but unable to successfully print on windows. I am able to print with the dymo software but not from the webpage.
Here is my xml for reference in case that is helpful
<LabelSet><LabelRecord>
<ObjectData Name="TEXT">
<StyledText>
<Element>
<String>Client: FooBar Client
ID: 123 Drury Lane
Due Date: 09/29/2021
Test: Foo</String>
<Attributes>
<Font Family="Helvetica" Size="13" Bold="False" Italic="False" Underline="False" Strikeout="False"/>
<ForeColor Alpha="255" Red="0" Green="0" Blue="0"/>
</Attributes>
</Element>
</StyledText>
</ObjectData>
<ObjectData Name="GRAPHIC">
<Image>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</Image>
</ObjectData>
<ObjectData Name="GRAPHIC_1">
<Image>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</Image>
</ObjectData>
</LabelRecord>
</LabelSet>
I am using this plugin in a mixed environment where I have both class components and function components.
Is there a way to import the dymoCheckService and dymoRequestBuilder into class components?
Thanks
It's only used by the example project and it has it's own package.json to it can have installed there and not in the hook.
Also you should think about moving react an axios to peerDependencies
A declarative, efficient, and flexible JavaScript library for building user interfaces.
๐ Vue.js is a progressive, incrementally-adoptable JavaScript framework for building UI on the web.
TypeScript is a superset of JavaScript that compiles to clean JavaScript output.
An Open Source Machine Learning Framework for Everyone
The Web framework for perfectionists with deadlines.
A PHP framework for web artisans
Bring data to life with SVG, Canvas and HTML. ๐๐๐
JavaScript (JS) is a lightweight interpreted programming language with first-class functions.
Some thing interesting about web. New door for the world.
A server is a program made to process requests and deliver data to clients.
Machine learning is a way of modeling and interpreting data that allows a piece of software to respond intelligently.
Some thing interesting about visualization, use data art
Some thing interesting about game, make everyone happy.
We are working to build community through open source technology. NB: members must have two-factor auth.
Open source projects and samples from Microsoft.
Google โค๏ธ Open Source for everyone.
Alibaba Open Source for everyone
Data-Driven Documents codes.
China tencent open source team.