Скачать книгу

href="#ulink_2ad0df55-354c-5978-90c4-ff07345665b9">Figure 1.9: Multivariate time series as supervised learning problemFigure 1.10: Univariate time series as multi-step supervised learning

      2 Chapter 2Figure 2.1: Time series forecasting templateFigure 2.2: Time series batch data processing architectureFigure 2.3: Real-time and streaming data processing architectureFigure 2.4: Understanding time series featuresFigure 2.5: A representation of data set splitsFigure 2.6: Machine learning model workflowFigure 2.7: Energy demand forecast end-to-end solution

      3 Chapter 3Figure 3.1: Overview of Python libraries for time series dataFigure 3.2: Time series decomposition plot for the load data set (time range...Figure 3.3: Time series load value and trend decomposition plot

      4 Chapter 4Figure 4.1: First order autoregression approachFigure 4.2: Second order autoregression approachFigure 4.3: Lag plot results from ts_data_load setFigure 4.4: Autocorrelation plot results from ts_data_load setFigure 4.5: Autocorrelation plot results from ts_data_load_subsetFigure 4.6: Autocorrelation plot results from ts_data_load set with plot_acf ...Figure 4.7: Autocorrelation plot results from ts_data_load_subset with plot_...Figure 4.8: Autocorrelation plot results from ts_data set with plot_pacf() f...Figure 4.9: Autocorrelation plot results from ts_data_load_subset with plot_...Figure 4.10: Forecast plot generated from ts_data set with plot_predict() fu...Figure 4.11: Visualizations generated from ts_data set with plot_diagnositcs...

      5 Chapter 5Figure 5.1: Representation of a recurrent neural network unitFigure 5.2: Recurrent neural network architectureFigure 5.3: Back propagation process in recurrent neural networks to compute...Figure 5.4: Backpropagation process in recurrent neural networks to compute ...Figure 5.5: Transforming time series data into two tensorsFigure 5.6: Transforming time series data into two tensors for a univariate ...Figure 5.7: Ts_data_load train, validation, and test data sets plotFigure 5.8: Data preparation steps for the ts_data_load train data setFigure 5.9: Development of deep learning models in KerasFigure 5.10: Structure of a simple RNN model to be implemented with KerasFigure 5.11: Structure of a simple RNN model to be implemented with KerasFigure 5.12: Structure of a simple RNN model to be implemented with Keras fo...

      6 Chapter 6Figure 6.1: The machine learning model workflowFigure 6.2: The modeling and scoring processFigure 6.3: First few rows of the energy data setFigure 6.4: Load data set plotFigure 6.5: Load data set plot of the first week of July 2014Figure 6.6: Web service deployment and consumptionFigure 6.7: Energy demand forecast end-to-end data flow

      Guide

      1  Cover Page

      2  Table of Contents

      3  Begin Reading

      Pages

      1  i

      2  xv

      3  xvi

      4 xvii

      5  xviii

      6  1

      7 2

      8 3

      9  4

      10  5

      11  6

      12 7

      13  8

      14 9

      15 10

      16 11

      17 12

      18 13

      19 14

      20 15

      21 16

      22 17

      23 18

      24  19

      25  20

      26  21

      27  22

      28 23

      29 24

      30 25

      31 26

      32 27

      33  29

      34 30

      35 31

      36 32

      37 33

      38  34

      39 35

      40 36

      41 37

      42 38

      43  39

      44  40

      45  41

      46 42

      47  43

      48  44

      49 45

      50  46

      51  47

      52 48

      53  49

      54  50

      55 51

      56  52

      57  53

      58  54

      59  55

      60  56

      61  57

      62  58

      63 59

      64  61

      65 62

      66  63

      67  64

      68  65

      69  66

      70  67

      71  68

      72  69

      73  70

      74 

Скачать книгу