#17 AI for Good Specialization [Course 1, Week 2, Lesson 1] | Summary and Q&A

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July 27, 2023
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#17 AI for Good Specialization [Course 1, Week 2, Lesson 1]

TL;DR

Implementing AI for Good projects can be challenging, as highlighted by a failed project in maternal health. User experience, collaboration between humans and AI, and the potential for harm are crucial considerations.

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Key Insights

  • 👋 Measuring the impact of AI for Good projects requires considering both qualitative and quantitative factors.
  • 👤 User experience and human-computer interaction are as important as the technical aspects of AI models.
  • 👤 Collaboration between humans and AI is crucial but can present challenges in terms of user experience and workload.
  • 📽️ Prioritizing the principle of "Do no harm" is essential to avoid negative consequences and ensure project success.
  • 👋 AI for Good projects often require significant time, effort, and iteration before achieving meaningful impact.
  • 👨‍🔬 Research papers and projects may declare success but may not translate into practical solutions or address real-world needs.
  • 🥺 Building on failed projects and learning from past experiences can lead to improvements in future AI for Good initiatives.
  • 👋 The majority of AI projects, including those focused on social good, are likely to fail, emphasizing the need for realistic expectations and perseverance.

Transcript

foreign deployed your system you'll move into the evaluation phase of your project in this phase you'll attempt to measure how successful your project was or continues to be and communicate results to all the relevant stakeholders measuring the impact of your project can be tricky but if you've been following this framework then all the way back in... Read More

Questions & Answers

Q: Why is measuring the impact of an AI for Good project challenging?

Measuring impact in AI for Good projects is tricky because success is not solely dependent on the technical performance of the AI model. Factors like user experience and stakeholder satisfaction also contribute to project success.

Q: What role does user experience play in AI for Good projects?

User experience is crucial in AI for Good projects as it can determine the success or failure of the project. In the case of the maternal health project, healthcare providers found the system to be a poor user experience, leading to discontinuation.

Q: How does collaboration between humans and AI impact project outcomes?

Collaboration between humans and AI is an essential aspect of many AI for Good projects. In this case, human annotation was necessary for the system to be useful, highlighting the importance of human involvement in AI projects.

Q: Why is it important to consider the potential for harm in AI for Good projects?

The principle of "Do no harm" is vital in AI for Good projects. Compromising on privacy or neglecting the health and safety of users can result in negative outcomes and negate any positive impact the project may have.

Summary & Key Takeaways

  • Measuring the success of an AI for Good project and communicating the results to stakeholders is important, but challenging.

  • User experience and human-computer interaction play a critical role in the success of AI systems.

  • In the case of a maternal health project, although the AI model performed well, healthcare providers found it to be a poor user experience, resulting in discontinuation.

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