All those colored walls,
Mazes give Pacman the blues,
So teach him to search.
In this project, your Pacman agent will find paths through his maze world, both to reach a particular location and to collect food efficiently. You will build general search algorithms and apply them to Pacman scenarios.
This project includes an autograder for you to grade your answers on your machine. This can be run with the command:
python autograder.py
The code for this project consists of several Python files, some of which you will need to read and understand in order to complete the assignment, and some of which you can ignore. You can download all the code and supporting files via zip archive.
Files you'll edit: | |
search.py |
|
search_agents.py |
Where all of your search-based agents will reside. |
Files you might want to look at: | |
pacman.py |
The main file that runs Pacman games. This file describes a Pacman GameState type, which you use in this project. |
game.py |
The logic behind how the Pacman world works. This file describes several supporting types like AgentState, Agent, Direction, and Grid. |
util.py |
Useful data structures for implementing search algorithms. |
Supporting files you can ignore: | |
graphics_display.py |
Graphics for Pacman |
graphics_utils.py |
Support for Pacman graphics |
text_display.py |
ASCII graphics for Pacman |
ghost_agents.py |
Agents to control ghosts |
keyboard_agents.py |
Keyboard interfaces to control Pacman |
layout.py |
Code for reading layout files and storing their contents |
autograder.py |
Project autograder |
test_parser.py |
Parses autograder test and solution files |
test_classes.py |
General autograding test classes |
test_cases/ |
Directory containing the test cases for each question |
search_test_classes.py |
Project specific autograding test classes |
Files to Edit and Submit: You will fill in portions of search.py
and search_agents.py
during the assignment. You should submit these files with your code and comments. Please do not change the other files in this distribution.
Evaluation: Your code will be autograded for technical correctness. Please do not change the names of any provided functions or classes within the code, or you will wreak havoc on the autograder.
Academic Integrity: "An Aggie does not lie, cheat, or steal, or tolerate those who do." For additional information please visit: http://student-rules.tamu.edu/aggiecode
Getting Help: You are not alone! If you find yourself stuck on something, contact the TA for help. Office hours are there for your support; please use them. If you can't make our office hours, let us know and we will schedule more. We want these projects to be rewarding and instructional, not frustrating and demoralizing. But, we don't know when or how to help unless you ask.
After downloading the code (asgn1-main.zip
), unzipping it, and changing to the directory, you should be able to play a game of Pacman by typing the following at the command line:
python pacman.py
Look at Guidance and help for some installation tips.
Pacman lives in a shiny blue world of twisting corridors and tasty round treats. Navigating this world efficiently will be Pacman's first step in mastering his domain.
The simplest agent in search_agents.py
is called the GoWestAgent
, which always goes West (a trivial reflex agent). This agent can occasionally win:
python pacman.py --layout test_maze --pacman GoWestAgent
But, things get ugly for this agent when turning is required:
python pacman.py --layout tiny_maze --pacman GoWestAgent
If Pacman gets stuck, you can exit the game by typing CTRL-c into your terminal.
Soon, your agent will solve not only tiny_maze
, but any maze you want.
Note that pacman.py
supports a number of options that can each be expressed in a long way (e.g., --layout
) or a short way (e.g., -l
). You can see the list of all options and their default values via:
python pacman.py -h
Also, all of the commands that appear in this project also appear in commands.txt
, for easy copying and pasting. In UNIX/Mac OS X, you can even run all these commands in order with bash commands.txt
.
In search_agents.py
, you'll find a fully implemented SearchAgent
, which plans out a path through Pacman's world and then executes that path step-by-step. The search algorithms for formulating a plan are not implemented -- that's your job. As you work through the following questions, you might find it useful to refer to the Object Glossary.
First, test that the SearchAgent
is working correctly by running:
python pacman.py -l tiny_maze -p SearchAgent -a fn=tiny_maze_search
The command above tells the SearchAgent
to use tiny_maze_search
as its search algorithm, which is implemented in search.py
. Pacman should navigate the maze successfully.
Now it's time to write full-fledged generic search functions to help Pacman plan routes! Remember that a search node must contain not only a state but also the information necessary to reconstruct the path (plan) which gets to that state.
Important note: All of your search functions need to return a list of actions that will lead the agent from the start to the goal. These actions all have to be legal moves (valid directions, no moving through walls).
Important note: Make sure to use the Stack
, Queue
and PriorityQueue
data structures provided to you in util.py
! These data structure implementations have particular properties which are required for compatibility with the autograder.
Hint: Each algorithm is very similar. Algorithms for DFS, BFS, UCS, and A* differ only in the details of how the fringe is managed. So, concentrate on getting DFS right and the rest should be relatively straightforward. Indeed, one possible implementation requires only a single generic search method which is configured with an algorithm-specific queuing strategy. (Your implementation need not be of this form to receive full credit). Note that you may want to create additional helper functions that are not provided in the starter code.
Implement the depth-first search (DFS) algorithm in the depthFirstSearch
function in search.py
. To make your algorithm complete, write the graph search version of DFS, which avoids expanding any already visited states.
Your code should quickly find a solution for:
python pacman.py -l tiny_maze -p SearchAgent
python pacman.py -l medium_maze -p SearchAgent
python pacman.py -l big_maze -z .5 -p SearchAgent
The Pacman board will show an overlay of the states explored, and the order in which they were explored (brighter red means earlier exploration). Is the exploration order what you would have expected? Does Pacman actually go to all the explored squares on his way to the goal?
Hint: If you use a Stack
as your data structure, the solution found by your DFS algorithm for medium_maze
should have a length of 130 (provided you push successors onto the fringe in the order provided by getSuccessors; you might get 246 if you push them in the reverse order). Is this a least cost solution? If not, think about what depth-first search is doing wrong.
Implement the breadth-first search (BFS) algorithm in the breadthFirstSearch
function in search.py
. Again, write a graph search algorithm that avoids expanding any already visited states. Test your code the same way you did for depth-first search.
python pacman.py -l medium_maze -p SearchAgent -a fn=bfs
python pacman.py -l big_maze -p SearchAgent -a fn=bfs -z .5
Does BFS find a least cost solution? If not, check your implementation.
Hint: If Pacman moves too slowly for you, try the option --frame_time 0
.
Note: If you've written your search code generically, your code should work equally well for the eight-puzzle search problem without any changes.
python eightpuzzle.py
While BFS will find a fewest-actions path to the goal, we might want to find paths that are "best" in other senses. Consider medium_dotted_maze
and medium_scary_maze
.
By changing the cost function, we can encourage Pacman to find different paths. For example, we can charge more for dangerous steps in ghost-ridden areas or less for steps in food-rich areas, and a rational Pacman agent should adjust its behavior in response.
Implement the uniform-cost graph search algorithm in the uniformCostSearch
function in search.py
. We encourage you to look through util.py
for some data structures that may be useful in your implementation. You should now observe successful behavior in all three of the following layouts, where the agents below are all UCS agents that differ only in the cost function they use (the agents and cost functions are written for you):
python pacman.py -l medium_maze -p SearchAgent -a fn=ucs
python pacman.py -l medium_dotted_maze -p StayEastSearchAgent
python pacman.py -l medium_scary_maze -p StayWestSearchAgent
Note: You should get very low and very high path costs for the StayEastSearchAgent
and StayWestSearchAgent
respectively, due to their exponential cost functions (see search_agents.py
for details).
Implement A* graph search in the empty function a_star_search
in search.py
. A* takes a heuristic function as an argument. Heuristics take two arguments: a state in the search problem (the main argument), and the problem itself (for reference information). The null_heuristic
heuristic function in search.py
is a trivial example.
Note that you may need to change data structures like priority queue (in util.py) depending on your implementation. For example, if the priority queue is a queue of custom class objects, you might need to change the update function. However, it is not required that you implement the algorithm this way.
You can test your A* implementation on the original problem of finding a path through a maze to a fixed position using the Manhattan distance heuristic (implemented already as manhattan_heuristic
in search_agents.py
).
python pacman.py -l big_maze -z .5 -p SearchAgent -a fn=astar,heuristic=manhattan_heuristic
You should see that A* finds the optimal solution slightly faster than uniform cost search (about 549 vs. 620 search nodes expanded in our implementation, but ties in priority may make your numbers differ slightly). What happens on open_maze
for the various search strategies?
The real power of A* will only be apparent with a more challenging search problem. Now, it's time to formulate a new problem and design a heuristic for it.
In corner mazes, there are four dots, one in each corner. Our new search problem is to find the shortest path through the maze that touches all four corners (whether the maze actually has food there or not). Note that for some mazes like tinyCorners
, the shortest path does not always go to the closest food first! Hint: the shortest path through tinyCorners
takes 28 steps.
Note: Make sure to complete Question 2 before working on Question 5, because Question 5 builds upon your answer for Question 2.
Implement the CornersProblem
search problem in search_agents.py
. You will need to choose a state representation that encodes all the information necessary to detect whether all four corners have been reached. Now, your search agent should solve:
python pacman.py -l tiny_corners -p SearchAgent -a fn=bfs,prob=CornersProblem
python pacman.py -l medium_corners -p SearchAgent -a fn=bfs,prob=CornersProblem
To receive full credit, you need to define an abstract state representation that does not encode irrelevant information (like the position of ghosts, where extra food is, etc.). In particular, do not use a Pacman GameState
as a search state. Your code will be very, very slow if you do (and also wrong).
Hint: The only parts of the game state you need to reference in your implementation are the starting Pacman position and the location of the four corners.
Our implementation of breadthFirstSearch
expands just under 2000 search nodes on mediumCorners
. However, heuristics (used with A* search) can reduce the amount of searching required.
Note: Make sure to complete Question 4 before working on Question 6, because Question 6 builds upon your answer for Question 4.
Implement a non-trivial, consistent heuristic for the CornersProblem
in corners_heuristic
.
python pacman.py -l medium_corners -p AStarCornersAgent -z 0.5
Note: AStarCornersAgent
is a shortcut for
-p SearchAgent -a fn=a_star_search,prob=CornersProblem,heuristic=corners_heuristic
.
Admissibility vs. Consistency: Remember, heuristics are just functions that take search states and return numbers that estimate the cost to a nearest goal. More effective heuristics will return values closer to the actual goal costs. To be admissible, the heuristic values must be lower bounds on the actual shortest path cost to the nearest goal (and non-negative). To be consistent, it must additionally hold that if an action has cost c, then taking that action can only cause a drop in heuristic of at most c.
Remember that admissibility isn't enough to guarantee correctness in graph search -- you need the stronger condition of consistency. However, admissible heuristics are usually also consistent, especially if they are derived from problem relaxations. Therefore it is usually easiest to start out by brainstorming admissible heuristics. Once you have an admissible heuristic that works well, you can check whether it is indeed consistent, too. The only way to guarantee consistency is with a proof. However, inconsistency can often be detected by verifying that for each node you expand, its successor nodes are equal or higher in in f-value. Moreover, if UCS and A* ever return paths of different lengths, your heuristic is inconsistent. This stuff is tricky!
Non-Trivial Heuristics: The trivial heuristics are the ones that return zero everywhere (UCS) and the heuristic which computes the true completion cost. The former won't save you any time, while the latter will timeout the autograder. You want a heuristic which reduces total compute time, though for this assignment the autograder will only check node counts (aside from enforcing a reasonable time limit).
Grading: Your heuristic must be a non-trivial non-negative consistent heuristic to receive any points. Make sure that your heuristic returns 0 at every goal state and never returns a negative value. Depending on how few nodes your heuristic expands, you'll be graded:
Number of nodes expanded | Grade |
---|---|
more than 2000 | 0/3 |
at most 2000 | 1/3 |
at most 1600 | 2/3 |
at most 1200 | 3/3 |
Remember: If your heuristic is inconsistent, you will receive no credit, so be careful!
Now we'll solve a hard search problem: eating all the Pacman food in as few steps as possible. For this, we'll need a new search problem definition which formalizes the food-clearing problem: FoodSearchProblem
in search_agents.py
(implemented for you). A solution is defined to be a path that collects all of the food in the Pacman world. For the present project, solutions do not take into account any ghosts or power pellets; solutions only depend on the placement of walls, regular food and Pacman. (Of course ghosts can ruin the execution of a solution! We'll get to that in the next project.) If you have written your general search methods correctly, A*
with a null heuristic (equivalent to uniform-cost search) should quickly find an optimal solution to test_search
with no code change on your part (total cost of 7).
python pacman.py -l test_search -p AStarFoodSearchAgent
Note: AStarFoodSearchAgent
is a shortcut for -p SearchAgent -a fn=astar,prob=FoodSearchProblem,heuristic=food_heuristic
.
You should find that UCS starts to slow down even for the seemingly simple tinySearch
. As a reference, our implementation takes 2.5 seconds to find a path of length 27 after expanding 5057 search nodes.
Note: Make sure to complete Question 4 before working on Question 7, because Question 7 builds upon your answer for Question 4.
Fill in food_heuristic
in search_agents.py
with a FoodSearchProblem
. Try your agent on the trickySearch
board:
python pacman.py -l tricky_search -p AStarFoodSearchAgent
Our UCS agent finds the optimal solution in about 13 seconds, exploring over 16,000 nodes.
Any non-trivial non-negative consistent heuristic will receive 1 point. Make sure that your heuristic returns 0 at every goal state and never returns a negative value. Depending on how few nodes your heuristic expands, you'll get additional points:
Number of nodes expanded | Grade |
---|---|
more than 15000 | 1/4 |
at most 15000 | 2/4 |
at most 12000 | 3/4 |
at most 9000 | 4/4 (full credit; medium) |
at most 7000 | 5/4 (optional extra credit; hard) |
Remember: If your heuristic is inconsistent, you will receive no credit, so be careful! Can you solve mediumSearch
in a short time? If so, we're either very, very impressed, or your heuristic is inconsistent.
Sometimes, even with A* and a good heuristic, finding the optimal path through all the dots is hard. In these cases, we'd still like to find a reasonably good path, quickly. In this section, you'll write an agent that always greedily eats the closest dot. ClosestDotSearchAgent
is implemented for you in search_agents.py
, but it's missing a key function that finds a path to the closest dot.
Implement the function find_path_to_closest_dot
in search_agents.py
. Our agent solves this maze (suboptimally!) in under a second with a path cost of 350:
python pacman.py -l big_search -p ClosestDotSearchAgent -z .5
Hint: The quickest way to complete find_path_to_closest_dot
is to fill in the AnyFoodSearchProblem
, which is missing its goal test. Then, solve that problem with an appropriate search function. The solution should be very short!
Your ClosestDotSearchAgent
won't always find the shortest possible path through the maze. Make sure you understand why and try to come up with a small example where repeatedly going to the closest dot does not result in finding the shortest path for eating all the dots.
Here's a glossary of the key objects in the code base related to search problems, for your reference:
SearchProblem (search.py)
search.py
PositionSearchProblem (search_agents.py)
CornersProblem (search_agents.py)
FoodSearchProblem (search_agents.py)
SearchFunction
depth_first_search
and breadth_first_search
,
which you have to write. You are provided tiny_maze_search
which is a very bad search function that only works correctly on
tiny_maze
SearchAgent
SearchAgent
is is a class which implements an
Agent (an object that interacts with the world) and does its
planning through a search function. The SearchAgent
first uses the search function provided to make a plan of
actions to take to reach the goal state, and then executes the
actions one at a time.Below are several tips to get the code running:
imp
.future
. The command pip install future
should do the job. If you get error while installing the package try adding --use-pep517
at the end.Please try to use Campuswire to ask and answer questions.
The deadline for submission is 9 Feb 2024.
Please follow these submission instructions.
Acknowledgements: The Pacman AI projects were developed at UC Berkeley. The core projects and autograders were primarily created by John DeNero (denero@cs.berkeley.edu) and Dan Klein (klein@cs.berkeley.edu). Student side autograding was added by Brad Miller, Nick Hay, and Pieter Abbeel (pabbeel@cs.berkeley.edu). We thank them for their permission to use it as a part of this course.