关于“使用 TensorFlow Privacy 在机器学习中应用差分隐私”的评价

25529 条评价

Devi R. · 已于 27 days前审核

Ameya G. · 已于 27 days前审核

Swami . · 已于 27 days前审核

Akhil P. · 已于 27 days前审核

Ángel G. · 已于 27 days前审核

Great!!!!

Cássius P. · 已于 28 days前审核

Gabriel G. · 已于 28 days前审核

Jorge M. · 已于 28 days前审核

Omm Jitesh M. · 已于 28 days前审核

매우 알참

seokhyun o. · 已于 28 days前审核

Kavya G. · 已于 28 days前审核

Arin P. · 已于 28 days前审核

가현 전. · 已于 28 days前审核

지민 홍. · 已于 28 days前审核

수은 정. · 已于 28 days前审核

선희 김. · 已于 28 days前审核

Ramu S. · 已于 29 days前审核

Sahil Kishor L. · 已于 29 days前审核

The lab environment experienced several library dependency conflicts and encountered issues locating the installation path for the TensorFlow kernel. Despite successfully completing the tasks, the system fails to flag the lab as 'complete' regardless of multiple attempts. Could you please manually mark this as completed in the system? Kind regards and thank you in advance. Output: DP-SGD performed over 60000 examples with 32 examples per iteration, noise multiplier 0.5 for 1 epochs without microbatching, and no bound on number of examples per user. This privacy guarantee protects the release of all model checkpoints in addition to the final model. Example-level DP with add-or-remove-one adjacency at delta = 1e-05 computed with RDP accounting: Epsilon with each example occurring once per epoch: 10.726 Epsilon assuming Poisson sampling (*): 3.800 No user-level privacy guarantee is possible without a bound on the number of examples per user. (*) Poisson sampling is not usually done in training pipelines, but assuming that the data was randomly shuffled, it is believed the actual epsilon should be closer to this value than the conservative assumption of an arbitrary data order..

Enrique Á. · 已于 29 days前审核

venkata sai sumanth o. · 已于 29 days前审核

Pradeep V. · 已于 29 days前审核

Saie P. · 已于 29 days前审核

Good. Satisfied. Best. Better

Vijay M. · 已于 29 days前审核

MCA-P_87_TruptiSathe G. · 已于 29 days前审核

Ankita K. · 已于 29 days前审核

我们无法确保发布的评价来自已购买或已使用产品的消费者。评价未经 Google 核实。