Day 8: Haunted Wasteland
Megathread guidelines
- Keep top level comments as only solutions, if you want to say something other than a solution put it in a new post. (replies to comments can be whatever)
- Code block support is not fully rolled out yet but likely will be in the middle of the event. Try to share solutions as both code blocks and using something such as https://topaz.github.io/paste/ , pastebin, or github (code blocks to future proof it for when 0.19 comes out and since code blocks currently function in some apps and some instances as well if they are running a 0.19 beta)
FAQ
- What is this?: Here is a post with a large amount of details: https://programming.dev/post/6637268
- Where do I participate?: https://adventofcode.com/
- Is there a leaderboard for the community?: We have a programming.dev leaderboard with the info on how to join in this post: https://programming.dev/post/6631465
This assumption doesn’t hold in general, however you can construct an efficient algorithm, even if it doesn’t hold.
First, let’s show that a cycle always exists. Let
I
be the size of the instruction string, andN
be the number of nodes. Since the number of states for each ghost is at mostI*N
, after a finite number of steps, the ghost will go into one of the previous states and cycle forever. Let’s say that the cycle length isc
, and aftera+c
steps the ghost has entered the same state it was aftera
steps.Let’s assume[^1] that during the first
a+c
steps the ghost has only once encounter an end state (a node ending with ‘Z’), specifically aftere
states. Ife >= a
, this means that the ghost will encounter the end state also aftere + c
ande + 2c
and so on, or for every number of stepss > e
such thats = e (mod c)
. The assumption you formulated meanse = 0 (mod c)
, ore = c
.Now, consider the
K
ghosts that are travelling simultaneously. If aftern
steps all ghosts have reached the end state, this means thatn = e_i (mod c_i)
for all ghostsi
(1 <= i <= K
). According to the Chinese remainder theorem, there is a solution if and only ife_1 = e_2 = ... = e_K (mod gcd(c_1, c_2, ... c_K))
. If the assumption you formulated holds, thene_i = 0 (mod c_i)
, solcm(c_1, ... c_K)
works as a solution. If it doesn’t, you can still findn
, but it will be a bit more tricky (which is probably why the authors of the challenge madee = c
always).[^1] – this is another assumption you’ve implicitly made, and that happens to hold for all the inputs. However, if this assumption doesn’t hold, we can check all possible combination of end state positions.
re [^1]: yeah, but that may explode the runtime again. Do you have any idea if this is possible to solve without brute forcing the combinations?
I don’t think it will explode the runtime. If you have multiple feasible values for
e
per ghost, you just need to find a combination ofe_i
such thate_1 = e_2 = ... = e_K (mod gcd(c_1, c_2, ... c_K))
, which is just an intersection ofK
sets of at mostI*N
elements.