How do AI Engineers address bias in AI models?
The question is about ai
Answer:
AI Engineers assess bias in the sampling and pre-processing of activity data by ensuring that the data used in those activities is a mixed set and representative of various groups in society. The means or techniques to train the model are without bias: re-sampling, weighting, and adversarial training.
They will also conduct periodic model audits to identify and mitigate such bias arising over time. Through an insistence on fairness and transparency in model development, AI Engineers end up building AI systems resulting in fair outputs.
Related questions and answers
- What are the best practices for maintaining AI models in production?
- How do AI Engineers stay updated with the latest advancements in AI technology?
- What are the most important programming languages for AI Engineers?
- What role does AI Engineering play in the development of autonomous systems?
- How do AI Engineers collaborate with Data Scientists and other stakeholders?
Developers who got their wings at:
Testimonials
Gotta drop in here for some Kudos. I’m 2 weeks into working with a super legit dev on a
critical project, and he’s meeting every expectation so far 👏
Francis Harrington
Founder at ProCloud Consulting, US
I recommend Lemon to anyone looking for top-quality engineering talent. We previously
worked with TopTal and many others, but Lemon gives us consistently incredible
candidates.
Allie Fleder
Co-Founder & COO at SimplyWise, US
I've worked with some incredible devs in my career, but the experience I am having with
my dev through Lemon.io is so 🔥. I feel invincible as a founder. So thankful to you and
the team!
Michele Serro
Founder of Doorsteps.co.uk, UK