GSOC/2024 ideas list: Difference between revisions
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*Skills required: Flutter (Dart), ML | *Skills required: Flutter (Dart), ML | ||
*Difficulty rating: Medium<span id="improve-our-producer-platform-to-the-next-level"></span> | *Difficulty rating: Medium<span id="improve-our-producer-platform-to-the-next-level"></span> | ||
=== Personal dashboards from scans === | |||
====Description==== | |||
We want users to be able to scan several products (e.g. their shopping list) and then generate reports (health, environment, etc.). | |||
====Expected outcomes==== | |||
This project is the 1st step of future projects (that you may start during the internship). The aim is to build solid, but flexible foundations. | |||
*Scan multiple products and link them to a list automatically | |||
*Compute stats from one or more lists (locally) | |||
*Display statistics to the user with personal dashboards (locally) | |||
====Project information==== | |||
*repository: https://github.com/openfoodfacts/smooth-app | |||
* Slack channels: #mobile-app | |||
*Potential mentors: Edouard, Pierre | |||
*Project duration: 350 hours | |||
*Skills required: Flutter (Dart) | |||
*Difficulty rating: Medium<span id="improve-our-producer-platform-to-the-next-level"></span> | |||
* | |||
== Tools == | == Tools == | ||
Revision as of 10:43, 2 February 2024
Here are ideas for GSOC There are just ideas, and are non limitative.
IMPORTANT:
- for an introduction on how to candidate, read https://world.openfoodfacts.org/google-summer-of-code
- take also the time to visit our website to understand the project more in depth
Server-side
Make the API re-user centric
Mobile-side
Scan products without barcodes
Description
The Open Food Facts mobile application can only scan products using barcodes. We would like to be able to identify products that do not have barcodes (e.g. fruit and vegetables).
Expected outcomes
This project will initially involve testing/benchmarking several solutions, before determining the best one.
- Research models (YOLO, MLKit, MediaPipe, etc.)
- Test and benchmark
- Implement the selected model in the application
Project information
- repository: https://github.com/openfoodfacts/smooth-app
- Slack channels: #mobile-app
- Potential mentors: Edouard, Pierre
- Project duration: 350 hours
- Skills required: Flutter (Dart), ML
- Difficulty rating: Medium
Personal dashboards from scans
Description
We want users to be able to scan several products (e.g. their shopping list) and then generate reports (health, environment, etc.).
Expected outcomes
This project is the 1st step of future projects (that you may start during the internship). The aim is to build solid, but flexible foundations.
- Scan multiple products and link them to a list automatically
- Compute stats from one or more lists (locally)
- Display statistics to the user with personal dashboards (locally)
Project information
- repository: https://github.com/openfoodfacts/smooth-app
- Slack channels: #mobile-app
- Potential mentors: Edouard, Pierre
- Project duration: 350 hours
- Skills required: Flutter (Dart)
- Difficulty rating: Medium
Tools
Help boost taxonomy contributions
Description
Taxonomies are at the heart of Open Food Facts in many aspects. It helps identify components (ingredients, labels, brands,…) and link them to useful properties, at the base of nutri-score, eco-score, allergens identification and some other properties. It is a less known but very important contribution area for the project.
Up to now contributors who wants to contribute to the taxonomy would have to edit in a cumbersome flat file and open a pull request. That's not easy.
Taxonomy editor comes to the rescue. While still in alpha stage, it should rapidly be deployed to production. Now it's time t add a lot of features to really help taxonomy grow rapidly in many languages.
Expected outcomes
The project will develop features that will help taxonomy contributors to adapt and edit the taxonomy.
- a lot of checks: missing translations, duplicated synonyms, entries with a lot of children
- enriching the search engine with useful filters
- helpers to enrich taxonomy properties: links to wikidata, ciqual codes, etc.
- dashboards at taxonomy level
- exploration of the graph
- suggestions or consistency checks by LLMs
- tracking modifications of nodes to enable comparison with raw taxonomy
It will leverage the graph database as well as external APIs. You will develop iteratively (continuous deployment is already there) getting immediate feedback from the community.
Project information
- repository: https://github.com/openfoodfacts/taxonomy-editor/
- Slack channels: #taxonomy-editor #taxonomy
- Potential mentors: Pierre, Alex
- Project duration: 350 hours
- Skills required: Reactjs / Python / Neo4j
- Difficulty rating: Medium
Your idea
You are a candidate and have a specific project idea, that's really welcome.
But to maximize your chances, please:
- Contribute to the project none the less in the bounding period
- Check with us that your idea is a good fit and align with our priorities
Project template (TO REMOVE)
<DESCRIPTIVE TITLE>
Description
Explain what, why.
Expected outcomes
Deliverables and KPI / benefits
Project information
- repository:
- Slack channels:
- Potential mentors:
- Project duration:
- Skills required:
- Difficulty rating: