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This lesson explores key topics on the responsible application of machine learning. The lesson is presented as a series of case studies that illustrate real world examples. Sections cover a broad range of topics, including reproducibility, bias, and interpretability. Broadly the topics are ordered chronologically, appearing as they would when thinking through a research study.
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All figures are also described in image alternative text or elsewhere in the lesson body.
The lesson uses appropriate heading levels:
h2 is used for sections within a page.
no "jumps" are present between heading levels e.g. h2->h4.
no page contains more than one h1 element i.e. none of the source files include first-level headings.
The contrast ratio of text in all figures is at least 4.5:1.
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Content
The lesson teaches data and/or computational skills that could promote efficient, open, and reproducible research.
All exercises have solutions.
Opportunities for formative assessments are included and distributed throughout the lesson sufficiently to track learner progress. (We aim for at least one formative assessment every 10-15 minutes.)
Any data sets used in the lesson are published under a permissive open license i.e. CC0 or equivalent.
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Design
Learning objectives are defined for the lesson and every episode.
The target audience of the lesson is identified specifically and in sufficient detail.
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Repository
The lesson repository includes:
a CC-BY or CC0 license.
a CODE_OF_CONDUCT.md file that links to The Carpentries Code of Conduct.
a list of lesson maintainers.
tabs to display Issues and Pull Requests for the project.
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Structure
Estimated times are included in every episode for teaching and completing exercises.
Episodes lengths are appropriate for the management of cognitive load throughout the lesson.
Supporting information
The lesson includes:
a list of required prior skills and/or knowledge.
setup and installation instructions.
a glossary of key terms or links out to definitions in an external glossary e.g. Glosario.
Lesson Title
Responsible machine learning in Python
Lesson Repository URL
https://github.com/carpentries-incubator/machine-learning-responsible-python
Lesson Website URL
https://carpentries-incubator.github.io/machine-learning-responsible-python/
Lesson Description
This lesson explores key topics on the responsible application of machine learning. The lesson is presented as a series of case studies that illustrate real world examples. Sections cover a broad range of topics, including reproducibility, bias, and interpretability. Broadly the topics are ordered chronologically, appearing as they would when thinking through a research study.
Author Usernames
@tompollard
Zenodo DOI
No response
Differences From Existing Lessons
No response
Confirmation of Lesson Requirements
JOSE Submission Requirements
paper.md
andpaper.bib
files as described in the JOSE submission guide for learning modulesPotential Reviewers
No response
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