This article mainly introduces the method of implementing histogram in python3 PyQt5 in detail. It has certain reference value. Interested friends can refer to it.
This article implements python Qt GUI through Python3 pyqt5 Excise examples of Chapter 16 of Rapid Programming.
#!/usr/bin/env python3 import random import sys from PyQt5.QtCore import (QAbstractListModel, QAbstractTableModel, QModelIndex, QSize, QTimer, QVariant, Qt,pyqtSignal) from PyQt5.QtWidgets import (QApplication, QDialog, QHBoxLayout, QListView, QSpinBox, QStyledItemDelegate,QStyleOptionViewItem, QWidget) from PyQt5.QtGui import QColor,QPainter,QPixmap class BarGraphModel(QAbstractListModel): dataChanged=pyqtSignal(QModelIndex,QModelIndex) def __init__(self): super(BarGraphModel, self).__init__() self.__data = [] self.__colors = {} self.minValue = 0 self.maxValue = 0 def rowCount(self, index=QModelIndex()): return len(self.__data) def insertRows(self, row, count): extra = row + count if extra >= len(self.__data): self.beginInsertRows(QModelIndex(), row, row + count - 1) self.__data.extend([0] * (extra - len(self.__data) + 1)) self.endInsertRows() return True return False def flags(self, index): #return (QAbstractTableModel.flags(self, index)|Qt.ItemIsEditable) return (QAbstractListModel.flags(self, index)|Qt.ItemIsEditable) def setData(self, index, value, role=Qt.DisplayRole): row = index.row() if not index.isValid() or 0 > row >= len(self.__data): return False changed = False if role == Qt.DisplayRole: value = value self.__data[row] = value if self.minValue > value: self.minValue = value if self.maxValue < value: self.maxValue = value changed = True elif role == Qt.UserRole: self.__colors[row] = value #self.emit(SIGNAL("dataChanged(QModelIndex,QModelIndex)"), # index, index) self.dataChanged[QModelIndex,QModelIndex].emit(index, index) changed = True if changed: #self.emit(SIGNAL("dataChanged(QModelIndex,QModelIndex)"), # index, index) self.dataChanged[QModelIndex,QModelIndex].emit(index, index) return changed def data(self, index, role=Qt.DisplayRole): row = index.row() if not index.isValid() or 0 > row >= len(self.__data): return QVariant() if role == Qt.DisplayRole: return self.__data[row] if role == Qt.UserRole: return QVariant(self.__colors.get(row, QColor(Qt.red))) if role == Qt.DecorationRole: color = QColor(self.__colors.get(row, QColor(Qt.red))) pixmap = QPixmap(20, 20) pixmap.fill(color) return QVariant(pixmap) return QVariant() class BarGraphDelegate(QStyledItemDelegate): def __init__(self, minimum=0, maximum=100, parent=None): super(BarGraphDelegate, self).__init__(parent) self.minimum = minimum self.maximum = maximum def paint(self, painter, option, index): myoption = QStyleOptionViewItem(option) myoption.displayAlignment |= (Qt.AlignRight|Qt.AlignVCenter) QStyledItemDelegate.paint(self, painter, myoption, index) def createEditor(self, parent, option, index): spinbox = QSpinBox(parent) spinbox.setRange(self.minimum, self.maximum) spinbox.setAlignment(Qt.AlignRight|Qt.AlignVCenter) return spinbox def setEditorData(self, editor, index): value = index.model().data(index, Qt.DisplayRole) editor.setValue(value) def setModelData(self, editor, model, index): editor.interpretText() model.setData(index, editor.value()) class BarGraphView(QWidget): WIDTH = 20 def __init__(self, parent=None): super(BarGraphView, self).__init__(parent) self.model = None def setModel(self, model): self.model = model #self.connect(self.model, # SIGNAL("dataChanged(QModelIndex,QModelIndex)"), # self.update) self.model.dataChanged[QModelIndex,QModelIndex].connect(self.update) #self.connect(self.model, SIGNAL("modelReset()"), self.update) self.model.modelReset.connect(self.update) def sizeHint(self): return self.minimumSizeHint() def minimumSizeHint(self): if self.model is None: return QSize(BarGraphView.WIDTH * 10, 100) return QSize(BarGraphView.WIDTH * self.model.rowCount(), 100) def paintEvent(self, event): if self.model is None: return painter = QPainter(self) painter.setRenderHint(QPainter.Antialiasing) span = self.model.maxValue - self.model.minValue painter.setWindow(0, 0, BarGraphView.WIDTH * self.model.rowCount(), span) for row in range(self.model.rowCount()): x = row * BarGraphView.WIDTH index = self.model.index(row) color = QColor(self.model.data(index, Qt.UserRole)) y = self.model.data(index) painter.fillRect(x, span - y, BarGraphView.WIDTH, y, color) class MainForm(QDialog): def __init__(self, parent=None): super(MainForm, self).__init__(parent) self.model = BarGraphModel() self.barGraphView = BarGraphView() self.barGraphView.setModel(self.model) self.listView = QListView() self.listView.setModel(self.model) self.listView.setItemDelegate(BarGraphDelegate(0, 1000, self)) self.listView.setMaximumWidth(100) self.listView.setEditTriggers(QListView.DoubleClicked| QListView.EditKeyPressed) layout = QHBoxLayout() layout.addWidget(self.listView) layout.addWidget(self.barGraphView, 1) self.setLayout(layout) self.setWindowTitle("Bar Grapher") QTimer.singleShot(0, self.initialLoad) def initialLoad(self): # Generate fake data count = 20 self.model.insertRows(0, count - 1) for row in range(count): value = random.randint(1, 150) color = QColor(random.randint(0, 255), random.randint(0, 255), random.randint(0, 255)) index = self.model.index(row) self.model.setData(index, value) self.model.setData(index, QVariant(color), Qt.UserRole) app = QApplication(sys.argv) form = MainForm() form.resize(600, 400) form.show() app.exec_()
Run results:
python3 PyQt5 implements document printing function
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