
Sign up to save your podcasts
Or
Today we continue our Data-Centric AI Series joined by Audrey Smith, the COO at MLtwist, and a recent participant in our panel on DCAI. In our conversation, we do a deep dive into data labeling for ML, exploring the typical journey for an organization to get started with labeling, her experience when making decisions around in-house vs outsourced labeling, and what commitments need to be made to achieve high-quality labels. We discuss how organizations that have made significant investments in labelops typically function, how someone working on an in-house labeling team approaches new projects, the ethical considerations that need to be taken for remote labeling workforces, and much more!
The complete show notes for this episode can be found at twimlai.com/go/583
4.7
414414 ratings
Today we continue our Data-Centric AI Series joined by Audrey Smith, the COO at MLtwist, and a recent participant in our panel on DCAI. In our conversation, we do a deep dive into data labeling for ML, exploring the typical journey for an organization to get started with labeling, her experience when making decisions around in-house vs outsourced labeling, and what commitments need to be made to achieve high-quality labels. We discuss how organizations that have made significant investments in labelops typically function, how someone working on an in-house labeling team approaches new projects, the ethical considerations that need to be taken for remote labeling workforces, and much more!
The complete show notes for this episode can be found at twimlai.com/go/583
161 Listeners
481 Listeners
299 Listeners
323 Listeners
147 Listeners
265 Listeners
189 Listeners
290 Listeners
88 Listeners
122 Listeners
197 Listeners
76 Listeners
442 Listeners
30 Listeners
36 Listeners