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DeepQ - Deep Learning Application Engineer / 應用深度學習工程師 - J01482

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职缺将近 4 年前更新

职缺描述

Join the creative thinkers at HTC Healthcare. At this innovation center we are looking for brilliant talents to join our team. We help create the exciting future of AI-powered services. Our work is creative, stimulating, and fun. Our atmosphere is open, friendly, and inspiring.

DeepQ: https://Deepq.com

Job Duty:

1. Design of state-of-the-art deep neural networks to solve medical imaging problems

2. Code implementation, parallel computation and optimization

3. Test and evaluate algorithms on large medical datasets to prove robustness

4. Iterate with user feedback, and deliver production-ready code

5. Cooperation with team members

Requirements:

- Deep learning such as CNN, RNN and GAN

- Object detection such as Faster RCNN and YOLO

- Image segmentation such as U-Net

- Numerical optimization or statistical learning

It would be appreciated to have good skills in paper reading and presentation.

职务需求

Requirements:

- BS or MS degree in CS or related fields

- familiar with python/C/C++ programming

- familiar with PyTorch or TensorFlow

- familiar with CNN training for image classification, detection, or segmentation

- experience in verifying and testing deep modules

- experience in conducting performance evaluation and benchmarking

- multi-GPU training and data parallelism

- strong communication skill

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40,000+ TWD / 月
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HTC 致力於將智慧融入生活之中,為全球智慧行動裝置與科技的創新先驅。我們創造的 VIVE Reality,結合 VR、AR、AI、5G、Blockchain 尖端科技,除了持續打造再進化的硬體及軟體,創造出具有絕佳體驗與革命性效能的產品外,也推出對企業、文化、藝術、教育、醫療及娛樂具有深刻意義的內容,呈現令世界耳目一新的成果。 2022 年我們向世界揭示了 VIVERSE 願景,發表 HTC 包羅萬象的產品策略,未來各項創新融合將應用於 VIVERSE 世界中!





团队

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职缺

全职
中高阶
1
70万 ~ 180万 TWD / 年
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全职
中高阶
1
100万 ~ 150万 TWD / 年
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实习生
实习
1
176 ~ 300 TWD / 小时
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