Tutorial

How To Use ThreadPoolExecutor in Python 3

Published on June 23, 2020
Default avatar

By DavidMuller

Author of Intuitive Python

English
How To Use ThreadPoolExecutor in Python 3

The author selected the COVID-19 Relief Fund to receive a donation as part of the Write for DOnations program.

Introduction

Python threads are a form of parallelism that allow your program to run multiple procedures at once. Parallelism in Python can also be achieved using multiple processes, but threads are particularly well suited to speeding up applications that involve significant amounts of I/O (input/output).

Example I/O-bound operations include making web requests and reading data from files. In contrast to I/O-bound operations, CPU-bound operations (like performing math with the Python standard library) will not benefit much from Python threads.

Python 3 includes the ThreadPoolExecutor utility for executing code in a thread.

In this tutorial, we will use ThreadPoolExecutor to make network requests expediently. We’ll define a function well suited for invocation within threads, use ThreadPoolExecutor to execute that function, and process results from those executions.

For this tutorial, we’ll make network requests to check for the existence of Wikipedia pages.

Note: The fact that I/O-bound operations benefit more from threads than CPU-bound operations is caused by an idiosyncrasy in Python called the, global interpreter lock. If you’d like, you can learn more about Python’s global interpreter lock in the official Python documentation.

Prerequisites

To get the most out of this tutorial, it is recommended to have some familiarity with programming in Python and a local Python programming environment with requests installed.

You can review these tutorials for the necessary background information:

  1. pip install --user requests==2.23.0

Step 1 — Defining a Function to Execute in Threads

Let’s start by defining a function that we’d like to execute with the help of threads.

Using nano or your preferred text editor/development environment, you can open this file:

  1. nano wiki_page_function.py

For this tutorial, we’ll write a function that determines whether or not a Wikipedia page exists:

wiki_page_function.py
import requests

def get_wiki_page_existence(wiki_page_url, timeout=10):
    response = requests.get(url=wiki_page_url, timeout=timeout)

    page_status = "unknown"
    if response.status_code == 200:
        page_status = "exists"
    elif response.status_code == 404:
        page_status = "does not exist"

    return wiki_page_url + " - " + page_status

The get_wiki_page_existence function accepts two arguments: a URL to a Wikipedia page (wiki_page_url), and a timeout number of seconds to wait for a response from that URL.

get_wiki_page_existence uses the requests package to make a web request to that URL. Depending on the status code of the HTTP response, a string is returned that describes whether or not the page exists. Different status codes represent different outcomes of a HTTP request. This procedure assumes that a 200 “success” status code means the Wikipedia page exists, and a 404 “not found” status code means the Wikipedia page does not exist.

As described in the Prerequisites section, you’ll need the requests package installed to run this function.

Let’s try running the function by adding the url and function call following the get_wiki_page_existence function:

wiki_page_function.py
. . .
url = "https://en.wikipedia.org/wiki/Ocean"
print(get_wiki_page_existence(wiki_page_url=url))

Once you’ve added the code, save and close the file.

If we run this code:

  1. python wiki_page_function.py

We’ll see output like the following:

Output
https://en.wikipedia.org/wiki/Ocean - exists

Calling the get_wiki_page_existence function with a valid Wikipedia page returns a string that confirms the page does, in fact, exist.

Warning: In general, it is not safe to share Python objects or state between threads without taking special care to avoid concurrency bugs. When defining a function to execute in a thread, it is best to define a function that performs a single job and does not share or publish state to other threads. get_wiki_page_existence is an example of such a function.

Step 2 — Using ThreadPoolExecutor to Execute a Function in Threads

Now that we have a function well suited to invocation with threads, we can use ThreadPoolExecutor to perform multiple invocations of that function expediently.

Let’s add the following highlighted code to your program in wiki_page_function.py:

wiki_page_function.py
import requests
import concurrent.futures

def get_wiki_page_existence(wiki_page_url, timeout=10):
    response = requests.get(url=wiki_page_url, timeout=timeout)

    page_status = "unknown"
    if response.status_code == 200:
        page_status = "exists"
    elif response.status_code == 404:
        page_status = "does not exist"

    return wiki_page_url + " - " + page_status

wiki_page_urls = [
    "https://en.wikipedia.org/wiki/Ocean",
    "https://en.wikipedia.org/wiki/Island",
    "https://en.wikipedia.org/wiki/this_page_does_not_exist",
    "https://en.wikipedia.org/wiki/Shark",
]
with concurrent.futures.ThreadPoolExecutor() as executor:
    futures = []
    for url in wiki_page_urls:
        futures.append(executor.submit(get_wiki_page_existence, wiki_page_url=url))
    for future in concurrent.futures.as_completed(futures):
        print(future.result())

Let’s take a look at how this code works:

  • concurrent.futures is imported to give us access to ThreadPoolExecutor.
  • A with statement is used to create a ThreadPoolExecutor instance executor that will promptly clean up threads upon completion.
  • Four jobs are submitted to the executor: one for each of the URLs in the wiki_page_urls list.
  • Each call to submit returns a Future instance that is stored in the futures list.
  • The as_completed function waits for each Future get_wiki_page_existence call to complete so we can print its result.

If we run this program again, with the following command:

  1. python wiki_page_function.py

We’ll see output like the following:

Output
https://en.wikipedia.org/wiki/Island - exists https://en.wikipedia.org/wiki/Ocean - exists https://en.wikipedia.org/wiki/this_page_does_not_exist - does not exist https://en.wikipedia.org/wiki/Shark - exists

This output makes sense: 3 of the URLs are valid Wikipedia pages, and one of them this_page_does_not_exist is not. Note that your output may be ordered differently than this output. The concurrent.futures.as_completed function in this example returns results as soon as they are available, regardless of what order the jobs were submitted in.

Step 3 — Processing Exceptions From Functions Run in Threads

In the previous step, get_wiki_page_existence successfully returned a value for all of our invocations. In this step, we’ll see that ThreadPoolExecutor can also raise exceptions generated in threaded function invocations.

Let’s consider the following example code block:

wiki_page_function.py
import requests
import concurrent.futures


def get_wiki_page_existence(wiki_page_url, timeout=10):
    response = requests.get(url=wiki_page_url, timeout=timeout)

    page_status = "unknown"
    if response.status_code == 200:
        page_status = "exists"
    elif response.status_code == 404:
        page_status = "does not exist"

    return wiki_page_url + " - " + page_status


wiki_page_urls = [
    "https://en.wikipedia.org/wiki/Ocean",
    "https://en.wikipedia.org/wiki/Island",
    "https://en.wikipedia.org/wiki/this_page_does_not_exist",
    "https://en.wikipedia.org/wiki/Shark",
]
with concurrent.futures.ThreadPoolExecutor() as executor:
    futures = []
    for url in wiki_page_urls:
        futures.append(
            executor.submit(
                get_wiki_page_existence, wiki_page_url=url, timeout=0.00001
            )
        )
    for future in concurrent.futures.as_completed(futures):
        try:
            print(future.result())
        except requests.ConnectTimeout:
            print("ConnectTimeout.")

This code block is nearly identical to the one we used in Step 2, but it has two key differences:

  • We now pass timeout=0.00001 to get_wiki_page_existence. Since the requests package won’t be able to complete its web request to Wikipedia in 0.00001 seconds, it will raise a ConnectTimeout exception.
  • We catch ConnectTimeout exceptions raised by future.result() and print out a string each time we do so.

If we run the program again, we’ll see the following output:

Output
ConnectTimeout. ConnectTimeout. ConnectTimeout. ConnectTimeout.

Four ConnectTimeout messages are printed—one for each of our four wiki_page_urls, since none of them were able to complete in 0.00001 seconds and each of the four get_wiki_page_existence calls raised the ConnectTimeout exception.

You’ve now seen that if a function call submitted to a ThreadPoolExecutor raises an exception, then that exception can get raised normally by calling Future.result. Calling Future.result on all your submitted invocations ensures that your program won’t miss any exceptions raised from your threaded function.

Step 4 — Comparing Execution Time With and Without Threads

Now let’s verify that using ThreadPoolExecutor actually makes your program faster.

First, let’s time get_wiki_page_existence if we run it without threads:

wiki_page_function.py
import time
import requests
import concurrent.futures


def get_wiki_page_existence(wiki_page_url, timeout=10):
    response = requests.get(url=wiki_page_url, timeout=timeout)

    page_status = "unknown"
    if response.status_code == 200:
        page_status = "exists"
    elif response.status_code == 404:
        page_status = "does not exist"

    return wiki_page_url + " - " + page_status

wiki_page_urls = ["https://en.wikipedia.org/wiki/" + str(i) for i in range(50)]

print("Running without threads:")
without_threads_start = time.time()
for url in wiki_page_urls:
    print(get_wiki_page_existence(wiki_page_url=url))
print("Without threads time:", time.time() - without_threads_start)

In the code example we call our get_wiki_page_existence function with fifty different Wikipedia page URLs one by one. We use the time.time() function to print out the number of seconds it takes to run our program.

If we run this code again as before, we’ll see output like the following:

Output
Running without threads: https://en.wikipedia.org/wiki/0 - exists https://en.wikipedia.org/wiki/1 - exists . . . https://en.wikipedia.org/wiki/48 - exists https://en.wikipedia.org/wiki/49 - exists Without threads time: 5.803015232086182

Entries 2–47 in this output have been omitted for brevity.

The number of seconds printed after Without threads time will be different when you run it on your machine—that’s OK, you are just getting a baseline number to compare with a solution that uses ThreadPoolExecutor. In this case, it was ~5.803 seconds.

Let’s run the same fifty Wikipedia URLs through get_wiki_page_existence, but this time using ThreadPoolExecutor:

wiki_page_function.py
import time
import requests
import concurrent.futures


def get_wiki_page_existence(wiki_page_url, timeout=10):
    response = requests.get(url=wiki_page_url, timeout=timeout)

    page_status = "unknown"
    if response.status_code == 200:
        page_status = "exists"
    elif response.status_code == 404:
        page_status = "does not exist"

    return wiki_page_url + " - " + page_status
wiki_page_urls = ["https://en.wikipedia.org/wiki/" + str(i) for i in range(50)]

print("Running threaded:")
threaded_start = time.time()
with concurrent.futures.ThreadPoolExecutor() as executor:
    futures = []
    for url in wiki_page_urls:
        futures.append(executor.submit(get_wiki_page_existence, wiki_page_url=url))
    for future in concurrent.futures.as_completed(futures):
        print(future.result())
print("Threaded time:", time.time() - threaded_start)

The code is the same code we created in Step 2, only with the addition of some print statements that show us the number of seconds it takes to execute our code.

If we run the program again, we’ll see the following:

Output
Running threaded: https://en.wikipedia.org/wiki/1 - exists https://en.wikipedia.org/wiki/0 - exists . . . https://en.wikipedia.org/wiki/48 - exists https://en.wikipedia.org/wiki/49 - exists Threaded time: 1.2201685905456543

Again, the number of seconds printed after Threaded time will be different on your computer (as will the order of your output).

You can now compare the execution time for fetching the fifty Wikipedia page URLs with and without threads.

On the machine used in this tutorial, without threads took ~5.803 seconds, and with threads took ~1.220 seconds. Our program ran significantly faster with threads.

Conclusion

In this tutorial, you have learned how to use the ThreadPoolExecutor utility in Python 3 to efficiently run code that is I/O bound. You created a function well suited to invocation within threads, learned how to retrieve both output and exceptions from threaded executions of that function, and observed the performance boost gained by using threads.

From here you can learn more about other concurrency functions offered by the concurrent.futures module.

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About the authors
Default avatar

Author of Intuitive Python

Check out Intuitive Python: Productive Development for Projects that Last

https://pragprog.com/titles/dmpython/intuitive-python/



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This was very helpful, thanks.

Why would one use ThreadPoolExecutor instead of ThreadPool (from the multiprocessing.pool) or does it do the same thing?

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