I'm very excited to announce AdventJS 2024! Bigger, better than ever and with support for Python.
If you are a programming lover, you love solving problems or you simply want to improve your skills while having fun, this is your time.
Go to adventjs.dev to start participating, it's free.
What is AdventJS? ?
AdventJS is a series of daily programming challenges that are unlocked throughout December. From December 1 to 25, every day you will have a new challenge that will test your knowledge and creativity. This year, in addition to the languages ??you already know, JavaScript and TypeScript, we've added support for Python. ?
So whether you're a front-end lover, a back-end master, or a coding enthusiast, there's something for everyone!
Why should you participate? ?
- Improve your skills: Solving daily challenges is an amazing way to practice and improve your programming skills.
- Achievements and Score: Earn achievements and track your progress. It's like a video game, but instead of accumulating coins, you improve as a developer. ????
- A global community: AdventJS is available in Spanish ??, English ?? and Portuguese ??, which means you'll be participating along with thousands of programmers from around the world.
- Fun Guaranteed: Each challenge is designed to be entertaining and challenging. Nothing better than that feeling of victory when you find the right solution!
This year we have added challenges and trophies so you have more fun. ?
What do you need to get started? ??
- An AdventJS account (it's free!).
- Have basic knowledge of JavaScript, TypeScript or Python. It doesn't matter if you are a beginner or an expert, the challenges are designed for all levels.
- Want to learn and have fun!
How does it work? ??
- Daily Challenges: A new challenge is unlocked every day. You can solve them in any order you want, but you can't skip ahead.
- Solve in your favorite language: This year, with the addition of Python, you can choose the language that best suits you to solve each challenge.
- Share and Learn: Once you complete a challenge, you can see how other developers solved it. It is a unique opportunity to learn different approaches and improve your code.
Join me on this adventure! ?
In 2024, we want more programmers to join the challenge. This year we've put a lot of effort into making AdventJS more accessible and exciting. Also, you can find me on my networks sharing tips and solutions for some of the challenges (but no spoilers, eh!?).
Register now in AdventJS and be part of this unique experience. See you in the challenges!
Happy programming and let the magic of December begin! ??
If you have questions or just want to share your progress, join the conversation on X with the hashtag #AdventJS or stop by my Twitch channel. I'll be doing streams dedicated to AdventJS throughout December!
The above is the detailed content of JavaScript and Python Programming challenges: AdventJS. For more information, please follow other related articles on the PHP Chinese website!

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