One of the primary strategies to overcome bias in AI training data is to ensure that data collection encompasses a wide range of sources. By diversifying inputs, the data better reflects the diversity of the real world, reducing the risk of bias and exclusion in AI models.

- Log in or register to contribute
Contribute to three or more articles across any domain to qualify for the Contributor badge. Please check back tomorrow for updates on your progress.