
Sign up to save your podcasts
Or


In the attempt of democratizing machine learning, data scientists should have the possibility to train their models on data they do not necessarily own, nor see. A model that is privately trained should be verified and uniquely identified across its entire life cycle, from its random initialization to setting the optimal values of its parameters.
By Francesco Gadaleta4.2
7272 ratings
In the attempt of democratizing machine learning, data scientists should have the possibility to train their models on data they do not necessarily own, nor see. A model that is privately trained should be verified and uniquely identified across its entire life cycle, from its random initialization to setting the optimal values of its parameters.

32,214 Listeners

4,005 Listeners

624 Listeners

303 Listeners

112,858 Listeners

56,917 Listeners

8,669 Listeners

2,255 Listeners

198 Listeners

5,817 Listeners

5,535 Listeners

29,275 Listeners

16,173 Listeners

4,569 Listeners

638 Listeners