Search Results for author: Josh Beal

Found 4 papers, 1 papers with code

Billion-Scale Pretraining with Vision Transformers for Multi-Task Visual Representations

no code implementations12 Aug 2021 Josh Beal, Hao-Yu Wu, Dong Huk Park, Andrew Zhai, Dmitry Kislyuk

Large-scale pretraining of visual representations has led to state-of-the-art performance on a range of benchmark computer vision tasks, yet the benefits of these techniques at extreme scale in complex production systems has been relatively unexplored.

Ranked #26 on Image Classification on ObjectNet (using extra training data)

Image Classification Multi-Task Learning +2

Toward Transformer-Based Object Detection

no code implementations17 Dec 2020 Josh Beal, Eric Kim, Eric Tzeng, Dong Huk Park, Andrew Zhai, Dmitry Kislyuk

The Vision Transformer was the first major attempt to apply a pure transformer model directly to images as input, demonstrating that as compared to convolutional networks, transformer-based architectures can achieve competitive results on benchmark classification tasks.

Object object-detection +1

Bootstrapping Complete The Look at Pinterest

1 code implementation18 Jun 2020 Eileen Li, Eric Kim, Andrew Zhai, Josh Beal, Kunlong Gu

In this paper, we will describe how we bootstrapped the Complete The Look (CTL) system at Pinterest.

Faster CryptoNets: Leveraging Sparsity for Real-World Encrypted Inference

no code implementations25 Nov 2018 Edward Chou, Josh Beal, Daniel Levy, Serena Yeung, Albert Haque, Li Fei-Fei

Homomorphic encryption enables arbitrary computation over data while it remains encrypted.

Cryptography and Security

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