搜索
首页后端开发Python教程Streamlit 部分写入和文本元素

Streamlit Part Write and Text Elements

Getting Started with Streamlit: A Beginner's Guide

Code can be found here: GitHub - jamesbmour/blog_tutorials:

Video version of blog can be found here: https://youtu.be/EQcqNW7Nw7M

Introduction

Streamlit is an open-source app framework that allows you to create beautiful, interactive web applications with minimal effort. If you’re a data scientist, machine learning engineer, or anyone working with data, Streamlit is the perfect tool to turn your Python scripts into interactive apps quickly. In this tutorial, we will dive into the basics of Streamlit by exploring some of its powerful features, such as st.write(), magic commands, and text elements.

Let’s get started by building a simple app to demonstrate these functionalities!

Setting Up Your Streamlit Environment

Before we jump into the code, make sure you have Streamlit installed. If you haven't installed it yet, you can do so with the following command:

pip install streamlit

Now, let’s start coding our first Streamlit app.

Building Your First Streamlit App

1. Adding a Title to Your App

Streamlit makes it incredibly easy to add titles and headings to your app. The st.title() function allows you to display a large title at the top of your application, which serves as the main heading.

import streamlit as st

st.title("Introduction to Streamlit: Part 1")

This will display a large, bold title at the top of your app.

Streamlit Write Elements

Using st.write() for Versatile Output

The st.write() function is one of the most versatile functions in Streamlit. You can use it to display almost anything, including text, data frames, charts, and more—all with a single line of code.

Displaying a DataFrame

Let's start by displaying a simple DataFrame using st.write().

import pandas as pd

df = pd.DataFrame({
    "Column 1": [1, 2, 3, 4],
    "Column 2": [10, 20, 30, 40]
})

st.write("DataFrame using st.write() function")
st.write(df)

This code creates a DataFrame with two columns and displays it directly in your app. The beauty of st.write() is that it automatically formats the DataFrame into a neat table, complete with scroll bars if needed.

Displaying Markdown Text

Another cool feature of st.write() is its ability to render Markdown text. This allows you to add formatted text, such as headers, subheaders, and paragraphs, with ease.

markdown_txt = (
    "### This is a Markdown Header\\n"
    "#### This is a Markdown Subheader\\n"
    "This is a Markdown paragraph.\\n"
)
st.write(markdown_txt)

With just a few lines of code, you can add rich text to your app.

Streaming Data with st.write_stream()

Streamlit also allows you to stream data to your app in real-time using the st.write_stream() function. This is particularly useful for displaying data that updates over time, such as sensor readings or live analytics.

import time

st.write("## Streaming Data using st.write_stream() function")
stream_btn = st.button("Click Button to Stream Data")

TEXT = """
# Stream a generator, iterable, or stream-like sequence to the app.
"""

def stream_data(txt="Hello, World!"):
    for word in txt.split(" "):
        yield word + " "
        time.sleep(0.01)

if stream_btn:
    st.write_stream(stream_data(TEXT))

In this example, when the button is clicked, the app will start streaming data word by word from the TEXT string, simulating real-time data updates.

Streamlit Text Elements

In addition to data streaming, Streamlit provides several text elements to enhance the presentation of your app.

Headers and Subheaders

You can easily add headers and subheaders using st.header() and st.subheader():

st.header("This is a Header")
st.subheader("This is a Subheader")

These functions help structure your content, making your app more organized and visually appealing.

Captions

Captions are useful for adding small notes or explanations. You can add them using st.caption():

st.caption("This is a caption")

Displaying Code

If you want to display code snippets in your app, you can use st.code():

code_txt = """
import pandas as pd
import streamlit as st

st.title("Streamlit Tutorials")
for i in range(10):
    st.write(i)
"""
st.code(code_txt)

This will display the code in a nicely formatted, syntax-highlighted block.

Displaying Mathematical Expressions

For those who need to include mathematical equations, Streamlit supports LaTeX:

st.latex(r"e = mc^2")
st.latex(r"\\int_a^b x^2 dx")

These commands will render LaTeX equations directly in your app.

Adding Dividers

To separate different sections of your app, you can use st.divider():

st.write("This is some text below the divider.")
st.divider()
st.write("This is some other text below the divider.")

Dividers add a horizontal line between sections, helping to break up the content visually.

Conclusion

In this introductory tutorial, we covered the basics of Streamlit, including how to use st.write() to display data and text, and how to stream data using st.write_stream(). We also explored various text elements to enhance the structure and readability of your app.

Streamlit makes it incredibly easy to create interactive web applications with just a few lines of code. Whether you're building dashboards, data exploration tools, or any other data-driven app, Streamlit provides the tools you need to get started quickly.

In the next tutorial, we’ll dive deeper into widgets and interactivity features in Streamlit. Stay tuned!

Wenn Sie dieses Tutorial hilfreich fanden, vergessen Sie nicht, es zu teilen und sich für weitere Inhalte zu abonnieren. Wir sehen uns im nächsten Beitrag!

Wenn Sie mein Schreiben unterstützen oder mich mit einem Bier verwöhnen möchten: https://buymeacoffee.com/bmours

以上是Streamlit 部分写入和文本元素的详细内容。更多信息请关注PHP中文网其他相关文章!

声明
本文内容由网友自发贡献,版权归原作者所有,本站不承担相应法律责任。如您发现有涉嫌抄袭侵权的内容,请联系admin@php.cn
Python中的合并列表:选择正确的方法Python中的合并列表:选择正确的方法May 14, 2025 am 12:11 AM

Tomergelistsinpython,YouCanusethe操作员,estextMethod,ListComprehension,Oritertools

如何在Python 3中加入两个列表?如何在Python 3中加入两个列表?May 14, 2025 am 12:09 AM

在Python3中,可以通过多种方法连接两个列表:1)使用 运算符,适用于小列表,但对大列表效率低;2)使用extend方法,适用于大列表,内存效率高,但会修改原列表;3)使用*运算符,适用于合并多个列表,不修改原列表;4)使用itertools.chain,适用于大数据集,内存效率高。

Python串联列表字符串Python串联列表字符串May 14, 2025 am 12:08 AM

使用join()方法是Python中从列表连接字符串最有效的方法。1)使用join()方法高效且易读。2)循环使用 运算符对大列表效率低。3)列表推导式与join()结合适用于需要转换的场景。4)reduce()方法适用于其他类型归约,但对字符串连接效率低。完整句子结束。

Python执行,那是什么?Python执行,那是什么?May 14, 2025 am 12:06 AM

pythonexecutionistheprocessoftransformingpypythoncodeintoExecutablestructions.1)InternterPreterReadSthecode,ConvertingTingitIntObyTecode,whepythonvirtualmachine(pvm)theglobalinterpreterpreterpreterpreterlock(gil)the thepythonvirtualmachine(pvm)

Python:关键功能是什么Python:关键功能是什么May 14, 2025 am 12:02 AM

Python的关键特性包括:1.语法简洁易懂,适合初学者;2.动态类型系统,提高开发速度;3.丰富的标准库,支持多种任务;4.强大的社区和生态系统,提供广泛支持;5.解释性,适合脚本和快速原型开发;6.多范式支持,适用于各种编程风格。

Python:编译器还是解释器?Python:编译器还是解释器?May 13, 2025 am 12:10 AM

Python是解释型语言,但也包含编译过程。1)Python代码先编译成字节码。2)字节码由Python虚拟机解释执行。3)这种混合机制使Python既灵活又高效,但执行速度不如完全编译型语言。

python用于循环与循环时:何时使用哪个?python用于循环与循环时:何时使用哪个?May 13, 2025 am 12:07 AM

useeAforloopWheniteratingOveraseQuenceOrforAspecificnumberoftimes; useAwhiLeLoopWhenconTinuingUntilAcIntiment.ForloopSareIdeAlforkNownsences,而WhileLeleLeleLeleLoopSituationSituationSituationsItuationSuationSituationswithUndEtermentersitations。

Python循环:最常见的错误Python循环:最常见的错误May 13, 2025 am 12:07 AM

pythonloopscanleadtoerrorslikeinfiniteloops,modifyingListsDuringteritation,逐个偏置,零indexingissues,andnestedloopineflinefficiencies

See all articles

热AI工具

Undresser.AI Undress

Undresser.AI Undress

人工智能驱动的应用程序,用于创建逼真的裸体照片

AI Clothes Remover

AI Clothes Remover

用于从照片中去除衣服的在线人工智能工具。

Undress AI Tool

Undress AI Tool

免费脱衣服图片

Clothoff.io

Clothoff.io

AI脱衣机

Video Face Swap

Video Face Swap

使用我们完全免费的人工智能换脸工具轻松在任何视频中换脸!

热门文章

热工具

SublimeText3 英文版

SublimeText3 英文版

推荐:为Win版本,支持代码提示!

DVWA

DVWA

Damn Vulnerable Web App (DVWA) 是一个PHP/MySQL的Web应用程序,非常容易受到攻击。它的主要目标是成为安全专业人员在合法环境中测试自己的技能和工具的辅助工具,帮助Web开发人员更好地理解保护Web应用程序的过程,并帮助教师/学生在课堂环境中教授/学习Web应用程序安全。DVWA的目标是通过简单直接的界面练习一些最常见的Web漏洞,难度各不相同。请注意,该软件中

Dreamweaver Mac版

Dreamweaver Mac版

视觉化网页开发工具

禅工作室 13.0.1

禅工作室 13.0.1

功能强大的PHP集成开发环境

Dreamweaver CS6

Dreamweaver CS6

视觉化网页开发工具