Browsing Summary: We talk a lot about data and model development for AI based tasks, and we also talk about 0:00 Presentation 2:50 Context and cloud data threads 5:15 Confidential Computing (CC) 7:12 Intel SGX 8:40 Enclave 12:19 ...
Privacy Preserving Machine Learning First Chapter Summary - Context Details That Matter
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Antti Honkela (University of Helsinki), responsible coordinator in FCAI's research program We talk a lot about data and model development for AI based tasks, and we also talk about 0:00 Presentation 2:50 Context and cloud data threads 5:15 Confidential Computing (CC) 7:12 Intel SGX 8:40 Enclave 12:19 ...
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0:00 Presentation 2:50 Context and cloud data threads 5:15 Confidential Computing (CC) 7:12 Intel SGX 8:40 Enclave 12:19 ... Speakers: Shruti Tople, Microsoft Research Cambridge Reza Shokri, National University of Singapore Divya Gupta, Microsoft ...
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- Speakers: Shruti Tople, Microsoft Research Cambridge Reza Shokri, National University of Singapore Divya Gupta, Microsoft ...
- Antti Honkela (University of Helsinki), responsible coordinator in FCAI's research program
- 0:00 Presentation 2:50 Context and cloud data threads 5:15 Confidential Computing (CC) 7:12 Intel SGX 8:40 Enclave 12:19 ...
- We talk a lot about data and model development for AI based tasks, and we also talk about
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