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update 2024 05
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liuhao-97 committed May 1, 2024
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url: https://www.kaust.edu.sa/en/

# Short bio (displayed in user profile at end of posts)
bio: I am a Ph.D student working on edge-cloudlet-cloud NN co-inference.
bio: I am a Ph.D candidate working on Near-Edge Assisted DNN Inference.

# Interests to show in About widget
interests:
- Split Computing
- Edge-Cloudlet-Cloud NN co-Inference
- Near-Edge Assisted DNN inference
- FPGA

# Education to show in About widget
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highlight_name: true
---

Hao Liu is a second year Ph.D student in the Accelerated Connected Computing Lab [ACCL](https://accl.kaust.edu.sa/) at KAUST. He mainly works on hardware-software co-design, especially for Neural Network co-inference across multiple devices. He also works on split computing, reconfigurable computing systems, and has explored machine learning model compression and physically unclonable functions.
Hao Liu is a third year Ph.D candidate in the Accelerated Connected Computing Lab [ACCL](https://accl.kaust.edu.sa/) at KAUST. He mainly works on Near-Edge Assisted DNN inference, which is to leverage near-edge accelerators to support offload from edge to optimize DNN inference. He also works on split computing, reconfigurable computing systems, and has explored machine learning model compression and physically unclonable functions.
He received his Bachelor's degree in Electronic and Information Engineering and Master's degree in Cyber Science and Technology from Beihang University, Beijing, China in 2019 and 2021, respectively.
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