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  • pdf文档 《Efficient Deep Learning Book》[EDL] Chapter 7 - Automation

    09846 (2017). searched with the techniques that we discussed in this section. However, to truly design a Neural Network from scratch, we need a different approach. The next section dives into the search output action from the previous time step as input to generate the next action and so on. We can design a recurrent model with a fixed or a variable number of time steps. Figure 7-5 shows a general architecture generated child networks performed at par with the SOTA networks at the time. However, this controller design had two main drawbacks. First, the architecture of the child network is tied closely to the controller
    0 码力 | 33 页 | 2.48 MB | 1 年前
    3
  • pdf文档 Lecture 1: Overview

    humans and other biological organisms Feng Li (SDU) Overview September 6, 2023 12 / 57 Steps to Design a Learning System Choose the training experience Choose exactly what is to be learned, i.e. the environment Learner can construct an arbitrary example and query an oracle for its label Learner can design and run experiments directly in the environment without any human guidance. Feng Li (SDU) Overview Sometimes we have missing data, that is, variables whose values are unknown, such that the corresponding design matrix will then have “holes” in it The goal of matrix completion is to infer plausible values for
    0 码力 | 57 页 | 2.41 MB | 1 年前
    3
  • pdf文档 《Efficient Deep Learning Book》[EDL] Chapter 2 - Compression Techniques

    which case uint8 leads to unnecessary space wastage. If that is indeed the case, you might have to design your own mechanism to pack in multiple quantized values in one of the supported data types (using (prediction mode), the typical value for the batch size is 1 because we predict one value at a time. The design of this model is arbitrary. You can experiment with different ideas such as stacking more convolutional
    0 码力 | 33 页 | 1.96 MB | 1 年前
    3
  • pdf文档 《Efficient Deep Learning Book》[EDL] Chapter 4 - Efficient Architectures

    and Gated Recurrent Unit20 (GRU) cells. However, RNNs are slow to train because of their sequential design such that the current timestamp execution depends on the results of previous timestep. Another drawback computer vision and pattern recognition. 2017. on mobile and edge devices. Let’s say you want to design a mobile application to highlight pets in a picture. A DSC model is a perfect choice for such an
    0 码力 | 53 页 | 3.92 MB | 1 年前
    3
  • pdf文档 《Efficient Deep Learning Book》[EDL] Chapter 3 - Learning Techniques

    substantial labor, time and money to collect more samples. In 2019, Kaggle1 opened a competition to design a model to identify humpback whales from the pictures of their flukes2. The primary challenge with hard ground-truth labels. This technique is called Distillation. Figure 3-17 shows the high level design of distillation technique. It shows a teacher network that learns from the training data as usual
    0 码力 | 56 页 | 18.93 MB | 1 年前
    3
  • pdf文档 《TensorFlow 快速入门与实战》8-TensorFlow社区参与指南

    �����/��������/��.�-�����.�-���� TensorFlow ��-Kubeflow ���� AI ���� Business Requirement Production Design Data Processing Model Training Model Visualization Model Serving Production Verification
    0 码力 | 46 页 | 38.88 MB | 1 年前
    3
  • pdf文档 全连接神经网络实战. pytorch 版

    prior written permission of the publisher. Art. No 0 ISBN 000–00–0000–00–0 Edition 0.0 Cover design by Dezeming Family Published by Dezeming Printed in China 目录 0.1 本书前言 5 1 准备章节 . . . . . .
    0 码力 | 29 页 | 1.40 MB | 1 年前
    3
  • pdf文档 《Efficient Deep Learning Book》[EDL] Chapter 5 - Advanced Compression Techniques

    help accelerate networks on a variety of web, mobile, and embedded devices, provided the user can design networks that match their constraints. One might wonder what are the drawbacks of structured sparsity
    0 码力 | 34 页 | 3.18 MB | 1 年前
    3
  • pdf文档 keras tutorial

    learning is one of the major subfield of machine learning framework. Machine learning is the study of design of algorithms, inspired from the model of human brain. Deep learning is becoming more popular in
    0 码力 | 98 页 | 1.57 MB | 1 年前
    3
  • pdf文档 Keras: 基于 Python 的深度学习库

    Google 文档插件,例如 有许 多可用的插件)。 • 将共享设置为「每个有链接的人都可以发表评论」。 • 将文档发给 keras-users@googlegroups.com,主题从 [API DESIGN REVIEW] (全大写) 开 始,这样我们才会注意到它。 – 等待评论,回复评论。必要时修改提案。 - 该提案最终将被批准或拒绝。一旦获得 批准,您可以发出合并请求或要求他人撰写合并请求。
    0 码力 | 257 页 | 1.19 MB | 1 年前
    3
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