PyQt6 configuration in yaml format providing the most simple script.

Overview

PyamlQt(ぴゃむるきゅーと)

PyPI version

PyQt6 configuration in yaml format providing the most simple script.

Requirements

  • yaml
  • PyQt6, ( PyQt5 )

Installation

pip install PyamlQt

Demo

python3 examples/chaos.py

Template

See examples/simple_gui.py.

import sys
import os

from pyamlqt.create_widgets import create_widgets
import pyamlqt.qt6_switch as qt6_switch

qt6_mode = qt6_switch.qt6

if qt6_mode:
    from PyQt6.QtWidgets import QApplication, QMainWindow
else:
    from PyQt5.QtWidgets import QApplication, QMainWindow

YAML = os.path.join(os.path.dirname(__file__), "../yaml/chaos.yaml")

class MainWindow(QMainWindow):
    def __init__(self):
        self.number = 0
        super().__init__()

        # geometry setting ---
        self.setWindowTitle("Simple GUI")
        self.setGeometry(0, 0, 800, 720)
        
        # Template ==========================================
        self.widgets, self.stylesheet = self.create_all_widgets(YAML)
        for key in self.widgets.keys():
            self.widgets[key].setStyleSheet(self.stylesheet[key])
        # ==============================================

        # --- Your code ----
        # -*-*-*-*-*-*-*-*-*
        # -----------------
        
        self.show()

    # Template ==========================================
    def create_all_widgets(self, yaml_path: str) -> dict:
        import yaml
        widgets, stylesheet_str = dict(), dict()
        with open(yaml_path, 'r') as f:
            self.yaml_data = yaml.load(f, Loader=yaml.FullLoader)
        
            for key in self.yaml_data:
                data = create_widgets.create(self, yaml_path, key, os.path.abspath(os.path.dirname(__file__)) + "/../")
                widgets[key], stylesheet_str[key] = data[0], data[1]

        return widgets, stylesheet_str
    # ==============================================

if __name__ == '__main__':
    app = QApplication(sys.argv)
    window = MainWindow()
    # sys.exit(app.exec_())
    sys.exit(app.exec())

Elements (dev)

In yaml, you can add the following elements defined in PyQt.Widgets This may be added in the future.

  • pushbutton : definition of QPushButton
  • qlabel : definition of QLabel
  • qlcdnumber : definition of QLCDNumber
  • qprogressbar : definition of QProgressBar
  • qlineedit : definition of QLineEdit
  • qcheckbox : definition of QCheckbox
  • qslider : definition of QSlider
  • qspinbox : definition of QSpinBox
  • qcombobox : definition of QCombobox
  • image : definition of QLabel (using image path)
  • stylesheet : definition of Stylesheet (define as QLabel and setHidden=True)

YAML format

PyamlQt defines common elements for simplicity. Not all values need to be defined, but if not set, default values will be applied

key: # key name (Required for your scripts)
  type: slider # QWidgets
  x_center: 500 # x center point
  y_center: 550 # y center point
  width: 200 # QWidgets width
  height: 50 # QWidgets height
  max: 100 # QObject max value
  min: 0 # QObject min value
  default: 70 # QObject set default value
  text: "Slider" # Text
  font_size: 30 # Text size [px]
  font_color: "#ff0000" # Text color
  font: "Ubuntu" # Text font
  font_bold: false # bold-text option
  items: # Selectable items( Combobox's option )
    - a
    - b
    - c

PyQt5 Mode

If you want to use PyQt5, you have to change the qt6_switch.py file.

  • Open the file and change the qt6_mode variable to False.
  • pip3 install PyQt5
  • pip3 install -v -e .
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Releases(v0.3.0)
  • v0.3.0(Apr 28, 2022)

    Japanese

    PyamlQtはGUIデザイン初心者のためのGUI定義フォーマットです。コントリビューション大歓迎です!

    しばらくはAPIの破壊的変更が行われる可能性があります。

    変更点

    • 新しいモジュールPyamlQtWindow
      • 初期化には引数が必要です。(README.mdを読んでください)
      • デモプログラムがとてもシンプルになりました。

    English

    PyamlQt is a GUI definition format for GUI design beginners. Contributions are welcome!

    There is a possibility of destructive changes to the API for the time being.

    Changes

    • New module PyamlQtWindow.
      • Arguments are required for initialization. (Please read README.md)
      • The demo program is now very simple.

    import sys
    import os
    
    from pyamlqt.mainwindow import PyamlQtWindow
    from PyQt6.QtWidgets import QApplication
    
    YAML = os.path.join(os.path.dirname(__file__), ". /yaml/chaos.yaml")
    
    class MainWindow(PyamlQtWindow):
        def __init__(self):
            self.number = 0
            super(). __init__("title", 0, 0, 800, 720, YAML)
            self.show()
    
    if __name__ == '__main__':
        app = QApplication(sys.argv)
        window = MainWindow()
        sys.exit(app.exec())
    
    Source code(tar.gz)
    Source code(zip)
  • v0.2.0(Apr 13, 2022)

    Japanese

    PyamlQtはGUIデザイン初心者のためのGUI定義フォーマットです。コントリビューション大歓迎です!

    しばらくはAPIの破壊的変更が行われる可能性があります。

    変更点

    • rect要素とstyle要素を追加し、stylesheetの仕様が大きく変更されました。
    • 複数のyamlからのロードをサポートします。パスは絶対パスを指定するか、GitHubなどのソースコードへのURL(raw.githubusercontent.com に続くURL)を指定してください。
      • URL指定する場合は~/.cache/pyamlqt/yaml以下にyamlがダウンロードされます。
      • ロード先のyamlファイルで同じファイル名・同じキー名を指定しないでください。再帰的にロードされてメモリを消費し続けます。

    English

    PyamlQt is a GUI definition format for GUI design beginners. Contributions are welcome!

    The API may undergo destructive changes for a while.

    Changes

    • The specification of stylesheet has been significantly changed with the addition of the rect and style elements.
    • Support for loading from multiple yaml files. Paths should be absolute paths or URLs to source code such as GitHub (URLs following raw.githubusercontent.com).
      • If you specify a URL, the yaml will be downloaded under ~/.cache/pyamlqt/yaml.
      • Do not specify the same file name and the same key name in the yaml file to be loaded. They will be loaded recursively and continue to consume memory.
    Source code(tar.gz)
    Source code(zip)
Owner
Ar-Ray
1st grade of National Institute of Technology(=Kosen) student. Associate degree, Hatena Blogger
Ar-Ray
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