Showing posts with label AIED. Show all posts
Showing posts with label AIED. Show all posts

Wednesday, 27 November 2019

Why is #AI useful to pro-actively prepare #learners in a changing world? #skills

Preparing for my talk today at Online Educa Berlin, after a great workshop-filled day yesterday (one of the workshops was on preparing for the 4th industrial revolution guided by Gilly Salmonhttps://www.gillysalmon.com/presentations.html ) and a wonderfully inspiring and ideas provoking workshop with Bryan Alexander looking at methods to predict parts of the future).

Below you can find my slides for the session at Online Educa Berlin looking at ways that Artificial Intelligence can be used to pro-actively prepare learners for the skills of the future.

It covers the steps we have tackled at InnoEnergy with the skills engine. In the talk I will share our approach, and how this differs from what was previously done. The slides are rather minimal, but if you download the talk, you can look at the notes in the slides to get the full picture.



Tuesday, 17 September 2019

#Ectel2019 Covadonga Rodrigo from #UNED @cova_rodrigo #gender #AI #bias


From here a couple of cases and projects (slides will follow)

Great presentation by UNED Covadonga Rodrigo: will AI be sexist? @cova_rodrigo (liveblog)
Referring to male/female recruitment of Amazon. AI had a biased in favor of men. Why?
Because the AI was trained with historical data, so more males, which made the system think male candidates were preferable.
Microsoft (2016) had the same result with their AI system: automated bots on twitter, this bot was getting sexist in the end due to AI learning.

So who is programming the AI systems: up to 90 % are men (2015), it changes gradually, but at the moment women are only 16 to 19% of the programmers. This results in differences in terms of bias. By 2023 it will probably be 27,7% (= number of software developers in the world) this is not the critical threshold of 33% that we know is critical from social sciences in order for a group to get their voices heard).

Some issues Glass ceiling, identity of what engineers are, school atmosphere, more female references in the curricula. It is not only in engineering, also in other areas.
The AI assistants are also mostly female-voice based => the female secretary, not female leads.

Ethics: curricula are biased, ethical subjects in curricula. Lack of humanistic studies in education, we need to transform this.

Mentions that she is 50+ and she was an engineer from early on, so there were women engineers, so no problem with entry of women. So we have male domination, which results in biases in terms of gender, and differences that exist in society.

Sources of sexism (slides will follow)