Intro to AI for GLAM is for staff working in the GLAM (Galleries,
Libraries, Archives, and Museums) sector.
The lesson is a high-level conceptual introduction to AI and machine
learning that will empower GLAM staff to apply those technologies within
their own institutions and collections.
This lesson will not cover coding, statistics or maths.
Bias occurs when a dataset is not representative of the population,
it is incomplete or skewed.
The presence of bias in the classifications and predictions of
machine learning may have far reaching consequences for society,
amplifying inequality and unfairness.
There are abundant opportunities for bias to enter ML systems at all
stages of the pipeline including when datasets are constructed, when a
models learning is refined and reinforced, and when predictions made by
a model are interpreted by humans and applied to real world
scenarios
There are a range of strategies available today to help mitigate
bias.
Machine learning projects involve many considerations beyond
training a model.
The predictions made by the same machine learning model can be
‘translated’ into actions in different ways. The extent to which you
‘automate’ decisions versus keeping a ‘human-in-the-loop’ will depend on
the problem you are tackling, your organization and your model’s
performance.
The use of Machine learning by GLAMs is relatively new. Sharing
results and lessons learned will likely help GLAMS realize the potential
benefits of machine learning.