Algorithms: Animation Display

Visual Debug Problems!

Published by: 森 林
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Description

Did you pass the interview algorithm question? Learning algorithm questions takes too much time? Not your problem! Before this, no algorithmic learning method could be so simple and efficient.
It only takes three steps to become an algorithm master:
The first step is to read the question;
The second step is to play the animation, refer to the subtitles, and understand the ideas and codes;
The third step is to read, analyze and summarize;
Why do you make an algorithm animation diagram app?
Like many programmers, I have to prepare a lot of time to brush up the algorithm every time I change jobs. Very good, in the process of brushing the questions, you must first read the solution. I also read a lot of problem solutions from big guys on the Internet, and I especially like to read algorithm analysis with moving pictures or schematic diagrams, which is faster than reading text. In the process, several problems were also found, such as: the animation is not interactive and cannot be paused; the data is dead and cannot be changed; it is not convenient to study on the mobile phone, etc.
I saw some good animations at the beginning, and I had a strong urge to implement them in the app with native code several times. This time I finally made up my mind and made 70 animations in one go.
I understand that the positioning of this app is a tool that can help us quickly understand algorithm ideas and codes, help memory, and improve learning efficiency. But here you can't submit, you can't execute the code, and the code still needs to be typed on the computer to make it feel better.
Why is it not arranged in the order of the leetcode number?
At present, the algorithm questions are classified into three major blocks:
- linked list, string, array, binary tree;
- Backtracking, greedy, dynamic programming, divide and conquer;
- Sort and classify separately.
Under each category, the difficulty is divided into easy, medium and hard.
First classify data structures and algorithms separately, and learn according to knowledge points. For example, you can concentrate on learning binary tree structures or dynamic programming algorithms, so that concentrated saturation training can help improve learning efficiency. The data structure comes first, and the algorithm follows, which is also arranged in the order in which we learn theoretical knowledge.
In terms of algorithms, four types are currently arranged: backtracking, greedy, dynamic programming, and divide-and-conquer.
When I learned data structures and algorithms many years ago, I first came into contact with various sorting algorithms. At that time, I felt that sorting was too difficult, and I was very impressed, so I made a separate sorting classification for beginners.
Thinking on how to combine animation and code and other interactive issues
- In the process of learning algorithms by myself, I often understand the ideas, but I can't understand the codes, and many codes in the text explanations have no comments. Seeing this is a big headache. Therefore, when thinking about App interaction, the code highlighting function is specially designed, which means that each line of code will be highlighted as the animation progresses. In this way, the animation is executing, the code is highlighted, and it looks cool.
- Although the animation is easy to understand, it still needs some short explanations, so the "subtitle" function is designed below the animation. Every time the corresponding step is executed, the corresponding explanation will be displayed.
- Animation playback and reset, each algorithm page has a playback function, so how to prepare test cases? To simplify the concept of test cases, a "reset" button is designed, which means that the test cases are random. When you want to change a set of data, just click reset.
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In-Apps

Unlock all problems
1,990.00 ₸
Unlock easy problems
999.00 ₸
Unlock medium & hard problems
1,490.00 ₸

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Algorithms FAQ

  • Is Algorithms free?

    Yes, Algorithms is free to download, however it contains in-app purchases or subscription offerings.

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  • How much does Algorithms cost?

    Algorithms has several in-app purchases/subscriptions, the average in-app price is 1,493.00 ₸.

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User Rating
App is not rated in Kazakhstan yet.
Ratings History

Algorithms Reviews

通俗易懂。缺点就是算法太少了 数据结构里面的算法比如kmp啥的没有

88sxxx4 on

China

通俗易懂。缺点就是算法太少了 数据结构里面的算法比如kmp啥的没有

恢复内购一直转圈圈

挽风-H on

China

前段时间限免搞的,应该算内购了吧。现在恢复内购一直转圈圈

做得不错,继续加油

违规昵称??! on

China

动图很易懂

不能购买,有bug!!!

羊驼的睡衣 on

China

内购买点击没反应,购买不了!!!

题目文字不显示,只有加框的符号,望修复!

夜读务韧 on

China

rt

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Category
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Top Grossing
9
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32
Top Free
37
Top Free
44
Top Grossing
45

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