import requests
import os

def download_and_convert_video(video_id: str):
    """
    Downloads a video from boosty.to and converts it to mp4 format.

    This function takes a video ID from boosty.to and downloads the video using the
    requests library. It then converts the downloaded video to mp4 format using the
    ffmpeg library.

    Parameters:
    - video_id (str): The ID of the video from boosty.to.

    Raises:
    - requests.exceptions.RequestException: If there is an error while downloading the video.
    - FileNotFoundError: If the ffmpeg executable is not found.

    Returns:
    str: The path to the downloaded and converted video file.
    """

    # Define the URL of the video to download
    video_url = f"6410941835996{video_id}"

    # Send a GET request to the video URL and download the video
    response = requests.get(video_url)
    response.raise_for_status()  # Raise an exception if the request was unsuccessful

    # Create a directory to store the downloaded video
    os.makedirs("downloaded_videos", exist_ok=True)

    # Define the path to save the downloaded video
    video_path = f"downloaded_videos/{video_id}.mp4"

    # Save the downloaded video to the specified path
    with open(video_path, "wb") as file:
        file.write(response.content)

    # Check if the ffmpeg executable is available
    if not os.path.exists("ffmpeg"):
        raise FileNotFoundError("ffmpeg executable not found.")

    # Define the command to convert the video to mp4 format using ffmpeg
    convert_command = f"ffmpeg -i {video_path} {video_path[:-4]}.mp4"

    # Execute the command to convert the video to mp4 format
    os.system(convert_command)

    # Return the path to the converted video file
    return f"{video_path[:-4]}.mp4"

# Example usage of the download_and_convert_video function:

try:
    video_id = "469bbc71b40e1a7cc-cc8e162fff9c"
    converted_video_path = download_and_convert_video(video_id)
    print(f"Video downloaded and converted successfully. Converted video path: {converted_video_path}")
except requests.exceptions.RequestException as e:
    print(f"Error while downloading the video: {e}")
except FileNotFoundError as e:
    print(f"Error while converting the video: {e}") 

Python Online Compiler

Write, Run & Share Python code online using OneCompiler's Python online compiler for free. It's one of the robust, feature-rich online compilers for python language, supporting both the versions which are Python 3 and Python 2.7. Getting started with the OneCompiler's Python editor is easy and fast. The editor shows sample boilerplate code when you choose language as Python or Python2 and start coding.

Taking inputs (stdin)

OneCompiler's python online editor supports stdin and users can give inputs to programs using the STDIN textbox under the I/O tab. Following is a sample python program which takes name as input and print your name with hello.

import sys
name = sys.stdin.readline()
print("Hello "+ name)

About Python

Python is a very popular general-purpose programming language which was created by Guido van Rossum, and released in 1991. It is very popular for web development and you can build almost anything like mobile apps, web apps, tools, data analytics, machine learning etc. It is designed to be simple and easy like english language. It's is highly productive and efficient making it a very popular language.

Tutorial & Syntax help

Loops

1. If-Else:

When ever you want to perform a set of operations based on a condition IF-ELSE is used.

if conditional-expression
    #code
elif conditional-expression
    #code
else:
    #code

Note:

Indentation is very important in Python, make sure the indentation is followed correctly

2. For:

For loop is used to iterate over arrays(list, tuple, set, dictionary) or strings.

Example:

mylist=("Iphone","Pixel","Samsung")
for i in mylist:
    print(i)

3. While:

While is also used to iterate a set of statements based on a condition. Usually while is preferred when number of iterations are not known in advance.

while condition  
    #code 

Collections

There are four types of collections in Python.

1. List:

List is a collection which is ordered and can be changed. Lists are specified in square brackets.

Example:

mylist=["iPhone","Pixel","Samsung"]
print(mylist)

2. Tuple:

Tuple is a collection which is ordered and can not be changed. Tuples are specified in round brackets.

Example:

myTuple=("iPhone","Pixel","Samsung")
print(myTuple)

Below throws an error if you assign another value to tuple again.

myTuple=("iPhone","Pixel","Samsung")
print(myTuple)
myTuple[1]="onePlus"
print(myTuple)

3. Set:

Set is a collection which is unordered and unindexed. Sets are specified in curly brackets.

Example:

myset = {"iPhone","Pixel","Samsung"}
print(myset)

4. Dictionary:

Dictionary is a collection of key value pairs which is unordered, can be changed, and indexed. They are written in curly brackets with key - value pairs.

Example:

mydict = {
    "brand" :"iPhone",
    "model": "iPhone 11"
}
print(mydict)

Supported Libraries

Following are the libraries supported by OneCompiler's Python compiler

NameDescription
NumPyNumPy python library helps users to work on arrays with ease
SciPySciPy is a scientific computation library which depends on NumPy for convenient and fast N-dimensional array manipulation
SKLearn/Scikit-learnScikit-learn or Scikit-learn is the most useful library for machine learning in Python
PandasPandas is the most efficient Python library for data manipulation and analysis
DOcplexDOcplex is IBM Decision Optimization CPLEX Modeling for Python, is a library composed of Mathematical Programming Modeling and Constraint Programming Modeling