Difference between revisions of "Semantic MediaWiki"

From Freephile Wiki
Jump to navigation Jump to search
m (move image)
Line 22: Line 22:
  
 
===Fixing Wikidata===
 
===Fixing Wikidata===
Yaron Koren gave a great presentation ([https://commons.wikimedia.org/wiki/File:Fixing_Wikidata_-_SMWCon_2023.pdf slides]) called '''[http://wikiworks.com/enhanced-wikibase.html Enhanced Wikibase]''' on how [[Wikibase]] (and therefore Wikidata) are missing features. He showed how he implemented these missing features in a series of developments. One is showcased at [https://wikidatawalkabout.org/ Wikidata Walkabout] - a drill-down and query interface to Wikibase sites; powered by [https://github.com/sahajsk21/Anvesha Anvesha] - a JavaScript library.
+
Yaron Koren gave a great presentation ([https://commons.wikimedia.org/wiki/File:Fixing_Wikidata_-_SMWCon_2023.pdf slides]) called '''[http://wikiworks.com/enhanced-wikibase.html Enhanced Wikibase]''' on how [[Wikibase]] (and therefore Wikidata) are missing features. He showed how he implemented these missing features in a series of developments. One is showcased at [https://wikidatawalkabout.org/ Wikidata Walkabout] - a drill-down and query interface to Wikibase sites; powered by [https://github.com/sahajsk21/Anvesha Anvesha] - a JavaScript library. [https://www.youtube.com/live/lYpi08dqBPs?si=ci0swXD2e-e7qCwy&t=19983 Video presentation]
  
 
===Natural Language Queries to Wikidata: A Naive Prototype===
 
===Natural Language Queries to Wikidata: A Naive Prototype===
Line 37: Line 37:
  
 
{{Notice|The 'gpt' in ChatGPT stands for "Generative Pre-trained Transformer" - or a fancy way to say "guess". The '''artificial''' intelligence of large language model GPTs '''guess''' what you would say next based on the prompt given and the dataset they are trained on. In OpenAI's own words: "Generative AI models formulate responses by matching patterns or words, while RAG systems retrieve data based on similarity of meaning or semantic searches."}}
 
{{Notice|The 'gpt' in ChatGPT stands for "Generative Pre-trained Transformer" - or a fancy way to say "guess". The '''artificial''' intelligence of large language model GPTs '''guess''' what you would say next based on the prompt given and the dataset they are trained on. In OpenAI's own words: "Generative AI models formulate responses by matching patterns or words, while RAG systems retrieve data based on similarity of meaning or semantic searches."}}
 +
 +
=== Major changes on interfaces of MediaWiki RDBMS library ===
 +
https://www.mediawiki.org/wiki/Manual:Database_access
  
 
[[Category:MediaWiki]]
 
[[Category:MediaWiki]]
 
[[Category:Enterprise MediaWiki]]
 
[[Category:Enterprise MediaWiki]]

Revision as of 00:06, 21 December 2023

Semantic MediaWiki is one of the largest, and most complex extensions to MediaWiki - and also an indespensible one for enterprise use. The features it provides are partly described on the Metadata page.

This page exists to dive deeper into particulars.

SMWCon 2023[edit | edit source]

The 3-day program was fantastic!

One major advancement was the fact that Bernard Krabina opened ties with Open Collective so that individuals and organizations can donate money to the project.

Task tracking[edit | edit source]

HalloWelt! combines four extensions they created to make useful task tracking in (Semantic) MediaWiki

Miriam Schlindwein presented how it's possible to create tasks, assign them to someone, add due dates and how they can be controlled

Realtime integrations with GitLab[edit | edit source]

See GitLab operations

Fixing Wikidata[edit | edit source]

Yaron Koren gave a great presentation (slides) called Enhanced Wikibase on how Wikibase (and therefore Wikidata) are missing features. He showed how he implemented these missing features in a series of developments. One is showcased at Wikidata Walkabout - a drill-down and query interface to Wikibase sites; powered by Anvesha - a JavaScript library. Video presentation

Natural Language Queries to Wikidata: A Naive Prototype[edit | edit source]

Application architecture
architecture

Robert Timms - Sr. Software Engineer Wikibase Suite, Wikimedia Deutschland gave a talk (code slides try it) about querying Wikibase with an LLM. Slides 9-22 go from the application architecture to the 'tada' moment.


Not the goal of the talk, but he revealed some of the key drawbacks of using "AI" in the first place:

  1. Outdated information
  2. Prone to hallucinations
  3. No sources (AI doesn't tell you how or why it claims to be authoritative.)

This is supposed to be addressed in part by using the RAG technique.

Major changes on interfaces of MediaWiki RDBMS library[edit | edit source]

https://www.mediawiki.org/wiki/Manual:Database_access