Integration mechanism for developers to build an extension (flow application) that can be hosted on the Next platform. This is for example used in the Port program for data donation, as described below.
More information about the Port program can be found here.
Data donation allows researchers to invite participants to share their data download packages (DDPs). However, DDPs potentially contain very sensitive data and often not all data is needed to answer a specific research question.
Feldspar enables researchers to:
- extract only the data of interest through local processing (on the participants device) using Python (Pyodide)
- prompt participants for questions about the data
- enable participants to inspect the extracted data before donation
- enable participants to delete table rows before donation
- consent or decline to donate the extracted data
Feldspar is open-source under the AGPL license and allows researchers to configure the frontend that guides participants through the data donation steps.
Note: Feldspar is only a frontend. In order for it to be used in a live study, it needs to be hosted on a server and connected to a storage to retrieve the donated data. To run a local instance see installation. To create a release for the Next platform or the self hosted version, see release.
In order to start a local instance of Feldspar follow these steps:
-
Prerequisites
- Fork or clone this repo
- Install Node.js
- Install Python
- Install Poetry
- Install Earthly CLI
-
Install dependencies & tools:
cd ./feldspar npm install npm run prepare
-
Start the local web server (with hot reloading enabled):
npm run start
-
You can now go to the browser:
http://localhost:3000
.
If the installation went correctly you should be greeted with a mock data donation study.
- Create release file:
npm run release
- Use release file:
The generated release.zip file can be installed on the Next platform or the self-hosted version, by adding a "Donate task" and at "Flow application" select the generated zip-file.
You can implement your own data donation flow by altering the Python script, which can be used to:
- customize the participant data donation flow in terms of screen content, type of screen (e.g. a file prompt) and screen order. You can use the Port API (
props.py
) for this. - extract specific data from the participant DDP that is required for the research question. You can use the data extraction methods that are available in Pyodide
A typical script includes the following steps:
- Prompt the participant to select the DDP file
- Extract the data of interest from the selected DDP file. Try to aggregate and anonymize as much as possible.
- Present the extracted data on screen in clear tables to allow the participant to investigate the data that they are about to donate and buttons to choose to either donate or not (consent screen). If a data storage is connected, the extracted data is stored only when participants agree to donate.
Example script: script.py
.
We recommend to use the example script as starting point for your own data donation study.
Assets needed in the script can be copied to: src/framework/processing/py/port/assets/
In your script you can access these assets as follows:
from port.api.assets import *
def process(sessionId):
path = asset_path("hello_world.txt")
file = open(path, "r")
txt = file.read()
from port.api.assets import *
def process(sessionId):
file = open_asset("hello_world.txt")
txt = file.read()
from port.api.assets import *
def process(sessionId):
txt = read_asset("hello_world.txt")
Below some examples on how to use the Port API in your script.py
Main function
Every `script.py` should have this function:def process(sessionId):
This function is a generator of commands by using yield
statements. No return
statements should be used.
def process(sessionId):
result1 = yield CommandUIRender(page1)
result2 = yield CommandUIRender(page2)
# last yield should not expect a result
yield CommandUIRender(page3)
ScriptWrapper
and py_worker using send
to iterate over the commands one by one. For more information on yield and Generators visit https://realpython.com/introduction-to-python-generators.
API imports
from port.api.props as props
from port.api.commands import (CommandUIRender, CommandUIDonate)
Create file input
platform = "Twitter"
progress = 25
file_input_description = props.Translatable({
"en": f"Please follow the download instructions and choose the file that you stored on your device.",
"nl": f"Volg de download instructies en kies het bestand dat u opgeslagen heeft op uw apparaat."
})
allowed_extensions = "application/zip, text/plain"
file_input = props.PropsUIPromptFileInput(file_input_description, allowed_extensions)
Create consent tabels
import pandas as pd
table1_title = props.Translatable({
"en": "Title 1",
"de": "Titel 1",
"nl": "Titel 1"
})
table1_data = pd.DataFrame(data, columns=["columnX", "columnY", "columnZ"])
table1 = props.PropsUIPromptConsentFormTable("table_1", table1_title, table1_data)
table2_title = props.Translatable({
"en": "Title 2",
"de": "Titel 2",
"nl": "Titel 2"
})
table2_data = pd.DataFrame(data, columns=["columnA", "columnB", "columnC", "columnD"])
table2 = props.PropsUIPromptConsentFormTable("table_2", table2_title, table2_data)
tables = [table1, table1]
# Meta tables currently not supported
meta_tables = []
consent_form = props.PropsUIPromptConsentForm(tables, meta_tables)
Create donation screens
header = props.PropsUIHeader(title)
footer = props.PropsUIFooter(progress)
body = props.PropsUIPromptFileInput(file_input_description, allowed_extensions)
page = props.PropsUIPageDonation(platform, header, body, footer)
Create user input screen with radio buttons
header = props.PropsUIHeader(title)
footer = props.PropsUIFooter(progress)
body = props.PropsUIPromptRadioInput(title, description, [{"id": 0, "value": "Selection 1"}, {"id": 1, "value": "Selection 2"}])
page = props.PropsUIPageDonation(platform, header, body, footer)
Extract data from input file
page = props.PropsUIPageDonation(platform, header, file_input, footer)
result = yield CommandUIRender(page)
# Result is a dictionary (Payload)
if result.__type__ == "PayloadString":
# File selected
filename = result.value
zipfile = zipfile.ZipFile(filename)
# Extract the data of interest from the selected file
# Write your own functions for data extraction
...
else:
# No file selected
Handle user consent input
platform = "Twitter"
donation_key = f"{sessionId}-{platform}"
page = props.PropsUIPageDonation(platform, header, consent_form, footer)
result = yield CommandUIRender(page)
# Response is a dictionary (Payload)
if result.__type__ == "PayloadJSON":
# User gave consent
yield CommandSystemDonate(donation_key, result.value)
else:
# User declined
Track user behaviour
tracking_key = f"{sessionId}-tracking"
data = "any json string"
# Use the donate command to store tracking data
yield CommandSystemDonate(tracking_key, data)
Feldspar serves as the frontend, providing the application with which participants engage. It facilitates the flow and logic for data donation. To utilize Feldspar in a data donation study, it must be hosted on a server capable of storing the donated data.
You can host Feldspar on the Next platform or the self-hosted version as explained here.
Alternatively, you can host Feldspar by embedding it in an iframe. After the iframe loads, send a message that includes a channel. The Feldspar application will use this channel to relay messages with data ready for storage. Here's a JavaScript example:
// ... wait until the iframe is loaded
const channel = new MessageChannel();
channel.port1.onmessage = (e) => {
console.log("Message receive from Feldspar app", e);
};
// get the iframe via querySelector or another method
iframe.contentWindow.postMessage("init", "*", [this.channel.port2]);
Would you like to get support with setting up your data donation study or host your data donation study on the Next platform? Reach out to Eyra for custom pricing: [email protected].
If your study requires specific adjustments (new interactive elements etc.), you have the flexibility to modify the Feldspar functionalities. Leverage the following technical insights to suit your needs.
Feldspar uses the following data model (also see: src/framework/types)
-
Module Description ProcessingEngine Responsible for processing donation flows VisualizationEngine Responsible for presenting the UI and accepting user input CommandHandler Decoupling of ProcessingEngine and VisualizationEngine Bridge Callback interface for Bridge Commands (e.g. Donation) -
Page Description SplashScreen First page that is rendered before the Python script is loaded with GDPR consent logic Donation Page that uses several prompts to get a file from the user and consent to donate the extracted data End Final page with instructions on how to continue -
Prompt Description FileInput File selection RadioInput Multiple choice question ConsentForm Displays extracted data in tables and asks for user consent Confirm General dialog to ask for extra confirmation -
Command Description Render Render the page Donate Save the extracted data Commands can be send from the Python script using the
yield
keyword. -
Payload Description Void Command without user input as a response True Positive user input (e.g. Ok button in confirm prompt) False Negative user input (e.g. Cancel button in confirm prompt) Error Unexpected problem when handling command String String result File Only used in Javascript. This is intercepted in py_worker.js and translated into a String (filename), while the bytes of the file are written to the Pyodide file system JSON User input structured as JSON, used to return the consent data from the consent form Payloads are part of a Response back to the Python script after sending commands:
export interface Response { __type__: 'Response' command: Command payload: Payload }
Responses are intercepted in py_worker.js and only the payload is returned to the Python script. Payloads don't have a Python representation in the API yet. They are translated into a dictionary (default Pyodide behaviour).
See: src/framework/processing/py/port
-
This object is used in main to wrap the
process
generator function in your script. It translates incoming Javascript and outgoing Python commands. -
- commands.py: Defines commands, pages and prompts that are used to communicate from the Python script to the
VisualisationEngine
andBridge
. - props.py: Defines property objects for pages and prompts
- commands.py: Defines commands, pages and prompts that are used to communicate from the Python script to the
These instructions give you some pointers on things you might like to change or add to Feldspar.
Change copy (texts shown on the web pages)
The app has two types of copy:
- Dynamic copy: part of the Python script
- Static copy: part of React components
Currently two languages are supported (Dutch and English). The Translatable object plays a central role and has a Python and a Typescript implementation
From Python code copy can be used as follows:
from port.api.props import Translatable
copy = Translatable({
"en": "English text",
"de": "Deutscher Text",
"nl": "Nederlandse tekst"
})
In React components copy is handled as follows:
import TextBundle from '../../../../text_bundle'
import { Translator } from '../../../../translator'
import { Translatable } from '../../../../types/elements'
interface Props {
dynamicCopy: Translatable // from Python script
locale: string
}
export const MyComponent = ({ dynamicCopy, locale }: Props): JSX.Element => {
const dynamicText = Translator.translate(dynamicCopy, locale)
const staticText = Translator.translate(staticCopy(), locale)
return (
<>
<div>{dynamicText}</div>
<div>{staticText}</div>
</>
)
}
const staticCopy = (): Translatable => {
return new TextBundle()
.add('en', 'English')
.add('de', 'Deutsch')
.add('nl', 'Nederlands')
}
Add new prompt
Add the properties of the prompt in [src/framework/types/prompts.ts](src/framework/types/prompts.ts) with the following template:
export type PropsUIPrompt =
PropsUIPromptNew |
...
export interface PropsUIPromptNew {
__type__: 'PropsUIPromptNew'
title: Text
description: Text
...
}
export function isPropsUIPromptNew (arg: any): arg is PropsUIPromptNew {
return isInstanceOf<PropsUIPromptNew>(arg, 'PropsUIPromptNew', ['title', 'description', ... ])
}
Add the prompt component to src/framework/visualisation/react/ui/prompts with the following template:
import { Weak } from '../../../../helpers'
import { ReactFactoryContext } from '../../factory'
import { PropsUIPromptNew } from '../../../../types/prompts'
import { Translator } from '../../../../translator'
import { Title2, BodyLarge } from '../elements/text'
import { PrimaryButton } from '../elements/button'
type Props = Weak<PropsUIPromptNew> & ReactFactoryContext
export const New = (props: Props): JSX.Element => {
const { resolve } = props
const { title, description, continueButton } = prepareCopy(props)
function handleContinue (): void {
// Send payload back to script
resolve?.({ __type__: 'PayloadTrue', value: true })
}
return (
<>
<Title2 text={title} />
<BodyLarge text={description} />
<PrimaryButton label={continueButton} onClick={handleContinue} />
</>
)
}
interface Copy {
title: string
description: string
continueButton: string
}
function prepareCopy ({ title, locale }: Props): Copy {
return {
title: Translator.translate(title, locale),
description: Translator.translate(description, locale),
continueButton: Translator.translate(continueButtonLabel(), locale),
}
}
const continueButtonLabel = (): Translatable => {
return new TextBundle()
.add('en', 'Continue')
.add('nl', 'Verder')
}
Use external Python libraries
Python packages are loaded using micropip:
await micropip.install("https://domain.com/path/to/python.whl", deps=False)
Add the above statement to the py_worker.js file as follows:
function installPortPackage() {
console.log('[ProcessingWorker] load port package')
return self.pyodide.runPythonAsync(`
import micropip
await micropip.install("https://domain.com/path/to/python.whl", deps=False)
await micropip.install("/port-0.0.0-py3-none-any.whl", deps=False)
import port
`);
}
The standard library is available by default. Please check The Pyodide docs for other packages you can use.
Implement support for alternative web framework
Create a new folder in [src/framework/visualisation](src/framework/visualisation) with a file inside called `engine.ts` to add support for your web framework of choice.
import { VisualisationEngine } from '../../types/modules'
import { Response, CommandUIRender } from '../../types/commands'
export default class MyEngine implements VisualisationEngine {
locale!: string
root!: HTMLElement
start (root: HTMLElement, locale: string): void {
this.root = root
this.locale = locale
}
async render (command: CommandUIRender): Promise<Response> {
// Render page and return user input as a response
...
}
terminate (): void {
...
}
}
Change implementation of assembly.ts to support your new VisualisationEngine:
import MyEngine from './visualisation/my/engine'
import WorkerProcessingEngine from './processing/worker_engine'
import { VisualisationEngine, ProcessingEngine, Bridge } from './types/modules'
import CommandRouter from './command_router'
export default class Assembly {
visualisationEngine: VisualisationEngine
processingEngine: ProcessingEngine
router: CommandRouter
constructor (worker: Worker, bridge: Bridge) {
const sessionId = String(Date.now())
this.visualisationEngine = new MyEngine()
this.router = new CommandRouter(system, this.visualisationEngine)
this.processingEngine = new WorkerProcessingEngine(sessionId, worker, this.router)
}
}
Implement support for alternative script language
To support an alternative for Python scripts, create a Javascript file (eg: `my_worker.js`) in [src/framework/processing](src/framework/processing) with the following template:
onmessage = (event) => {
const { eventType } = event.data
switch (eventType) {
case 'initialise':
// Insert initialisation code here
self.postMessage({ eventType: 'initialiseDone' })
break
case 'firstRunCycle':
runCycle(null)
break
case 'nextRunCycle':
const { response } = event.data
runCycle(response.payload)
break
default:
console.log('[ProcessingWorker] Received unsupported event: ', eventType)
}
}
function runCycle (payload) {
console.log('[ProcessingWorker] runCycle ' + JSON.stringify(payload))
// Insert script code here:
// 1. Handle the payload
// 2. Create next command, eg:
nextCommand = new CommandUIRender(new PropsUIPageDonation(...))
self.postMessage({
eventType: 'runCycleDone',
scriptEvent: nextCommand
})
}
Change the implementation of index.tsx to support your new worker file:
const workerFile = new URL('./framework/processing/my_worker.js', import.meta.url)
Make sure to add the worker to the ts-standard
ignore list in package.json:
"ts-standard": {
"ignore": [
"src/framework/processing/my_worker.js"
]
}
Note: don't forget to import this new worker file in your server code
-
Automatic
Jest is used as a testing framework. Tests can be found here: src/test.
Run all unit tests:
npm run dev:test
-
Manual
Start the local web server (with hotloading enabled):
npm run dev:start
-
Integration with Next
To run the Port app on top of Next locally see: https://github.com/eyra/mono/blob/d3i/latest/PORT.md
Code in Javascript types and Python api are currently created by hand. Since both of them are implementions of the same model we will seek the opportunity in the future to define this model in a more abstract way and generate the needed Javascript and Python code accordingly.
The project is a react app created by create-react-app. This is not set in stone for the future but it was a nice way to speed up the development process in the beginning. Using this strongly opinionated setup hides most of the configuration. It uses webpack to bundle and serve the app.
The project uses ts-standard for managing the code style. This is a TypeScript Style Guide, with linter and automatic code fixer based on StandardJS.
Before committing to github Husky runs all the necessary scripts to make sure the code conforms to ts-standard
, all the tests run green, and the dist
folder is up-to-date.
Feldspar is part of the Port program for data donation and has been funded by the UU, PDI-SSH (D3i project), and Eyra.
We want to make contributing to this project as easy and transparent as possible, whether it's:
- Reporting a bug
- Discussing the current state of the code
- Submitting a fix
- Proposing new features
If you have any questions, find any bugs, or have any ideas, read how to contribute here.