Interworking technology of neural network and data among deep learning frameworks |
Park, Jaebok
(Artificial Intelligence Research Laboratory, Electronics and Telecommunications Research Institute)
Yoo, Seungmok (Artificial Intelligence Research Laboratory, Electronics and Telecommunications Research Institute) Yoon, Seokjin (Artificial Intelligence Research Laboratory, Electronics and Telecommunications Research Institute) Lee, Kyunghee (Artificial Intelligence Research Laboratory, Electronics and Telecommunications Research Institute) Cho, Changsik (Artificial Intelligence Research Laboratory, Electronics and Telecommunications Research Institute) |
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