# when to use bottom-up DP and when to use top-down DP

I have leant that two ways of DP, but I am confused now. How we choose in different condition? And I find that in most of time top-down is more natural for me. Can anyone tell me that how to make the choice.

PS: I have read this post older post but still get confused. Need help. Don't identify my questions as duplication. I have mentioned that they are different. I hope to know how to choose and when to consider problem from top-down or bottom-up way.

To make it simple, I will explain based on my summary from some sources

1. Top-down: something looks like: `a(n) = a(n-1) + a(n-2)`. With this equation, you can implement with about 4-5 lines of code by making the function `a` call itself. Its advantage, as you said, is quite intuitive to most developers but it costs more space (memory stack) to execute.
2. Bottom-up: you first calculate `a(0)` then `a(1)`, and save it to some array (for instance), then you continuously save`a(i) = a(i-1) + a(i-2)`. With this approach, you can significantly improve the performance of your code. And with big `n`, you can avoid stack overflow.

If you like the top-down natural then use it if you know you can implement it. bottom-up is faster than the top-down one. Sometimes Bottom-ups are easier and most of the times the bottom-up are easy. Depending on your situation make your decision.

Bottom-up and Top-down DP approaches are the same for many problems in terms of time and space complexity. Difference are that, bottom-up a little bit faster, because you don't need overhead for recursion and, yes, top-down more intuitive and natural.

But, real advantage of Top-bottom approach can be on some small sets of tasks, where you don't need to calculate answer for all smaller subtasks! And you can reduce time complexity in this cases.

For example you can use Top-down approach with memorization for finding N-th Fibonacci number, where the sequence is defined as a[n]=a[n-1]+a[n-2] So, you have both O(N) time for calculating it (I don't compare with O(logN) solution for finding this number). But look at the sequence a[n]=a[n/2]+a[n/2-1] with some edge cases for small N. In botton up approach you can't do it faster than O(N) where top-down algorithm will work with complexity O(logN) (or maybe some poly-logarithmic complexity, I am not sure)

• You can also use memoization in bottom-up approaches – nmat Mar 9 '18 at 17:55