How to Add a Scrollbar to a Grid of Tkinter Labels?
Adding a Scrollbar to a Group of Widgets in Tkinter
Overview
Tkinter provides scrollbars for widgets like List, Textbox, Canvas, and Entry. However, displaying a grid of label widgets with a scrollbar can be challenging since these widgets don't support scrollbars natively.
Solutions
1. Text Widget with window_create:
- Create a text widget and add label widgets using the window_create method.
- This method is simple but limits layout complexity.
2. Canvas with Embedded Frame:
- Create a canvas widget with scrollbars attached to it.
- Embed a frame within the canvas and place your label widgets inside the frame.
- Determine the width and height of the frame and set the scrollregion option of the canvas to match these dimensions.
3. Direct Drawing on Canvas:
- Create a custom class that inherits from tk.Frame to manage the scrollbar and canvas.
- Place your label widgets within the embedded frame.
- Bind events to adjust the scroll region based on the frame's configuration changes.
Object-Oriented Solution:
import tkinter as tk class Example(tk.Frame): def __init__(self, parent): tk.Frame.__init__(self, parent) self.canvas = tk.Canvas(self, borderwidth=0, background="#ffffff") self.frame = tk.Frame(self.canvas, background="#ffffff") self.vsb = tk.Scrollbar(self, orient="vertical", command=self.canvas.yview) self.canvas.configure(yscrollcommand=self.vsb.set) self.vsb.pack(side="right", fill="y") self.canvas.pack(side="left", fill="both", expand=True) self.canvas.create_window((4,4), window=self.frame, anchor="nw", tags="self.frame") self.frame.bind("<Configure>", self.onFrameConfigure) self.populate() def populate(self): for row in range(100): tk.Label(self.frame, text="%s" % row, width=3, borderwidth="1", relief="solid").grid(row=row, column=0) t = "this is the second column for row %s" % row tk.Label(self.frame, text=t).grid(row=row, column=1) def onFrameConfigure(self, event): self.canvas.configure(scrollregion=self.canvas.bbox("all")) if __name__ == "__main__": root = tk.Tk() example = Example(root) example.pack(side="top", fill="both", expand=True) root.mainloop()
Procedural Solution:
import tkinter as tk def populate(frame): for row in range(100): tk.Label(frame, text="%s" % row, width=3, borderwidth="1", relief="solid").grid(row=row, column=0) t = "this is the second column for row %s" % row tk.Label(frame, text=t).grid(row=row, column=1) def onFrameConfigure(canvas): canvas.configure(scrollregion=canvas.bbox("all")) root = tk.Tk() canvas = tk.Canvas(root, borderwidth=0, background="#ffffff") frame = tk.Frame(canvas, background="#ffffff") vsb = tk.Scrollbar(root, orient="vertical", command=canvas.yview) canvas.configure(yscrollcommand=vsb.set) vsb.pack(side="right", fill="y") canvas.pack(side="left", fill="both", expand=True) canvas.create_window((4,4), window=frame, anchor="nw") frame.bind("<Configure>", lambda event, canvas=canvas: onFrameConfigure(canvas)) populate(frame) root.mainloop()
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