SEARCH David Kauchak CS30 – Spring 2015. Admin Assignment 7 due tomorrow Assignment 8 out soon Talk today 4:15 in Rose Hills Theatre.

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SEARCH David Kauchak CS30 – Spring 2015

Admin Assignment 7 due tomorrow Assignment 8 out soon Talk today 4:15 in Rose Hills Theatre

A few last things about classes Look at rectangle3.py code  Taking objects of the same type as parameters (e.g. equals)  Calling methods inside the class  Instance variables do NOT have to be the same thing as the parameters for the constructor

Assignment 7 comments Think about how you want to use the objects (i.e. your program) and let that motivate the class design, i.e. the methods, etc. Class names should be capitalized  CamelCase class names that are multiple words class PomonaStudent class WalkieTalkie class StarWarsCreature “pass”

Assignment 7 comments If your program requires a file to work (i.e. to read data from):  create a folder: first-last-assign7  put both the.py file and the.txt file in there  zip of the folder and submit that Be careful about filenames!  files have extensions (that are sometimes hidden by the OS). On mac, you can do CMD+i to get information about the file, including the full filename  We’re only reading.txt file (other files have formatting information!) Wing saves files just as text files automatically (though you’ll need to make sure to include the.txt extension) TextEdit: Format -> Make Plain Text Windows: Use notepad (or in Word, “Save as…” and select.txt

Other ways of reading from a file reader = open(“myfile.txt”, “r”) Read the whole file: next_line = reader.readline() Read one line of the file: for line in reader: # do something with each line of the file Do dictionary example!

Think like a human Cognitive Modeling Think rationally Logic-based Systems Act like a human Turing Test Act rationally Rational Agents What is AI? Rest of the semester

Think like a human Cognitive Modeling Think rationally Logic-based Systems Act like a human Turing Test Act rationally Rational Agents What is AI? Next couple of weeks

Solve the maze!

How did you figure it out?

One approach What now?

One approach Three choices

One approach What now? Pick one!

One approach Still three options! Which would you explore/pick?

One approach Most people go down a single path until they realize that it’s wrong

One approach Keep exploring

One approach Keep exploring

One approach What now?

One approach Are we stuck? No. Red positions are just possible options we haven’t explored

One approach How do we know not to go left?

One approach Have to be careful and keep track of where we’ve been if we can loop

One approach Now what?

One approach Now what?

One approach Now what?

One approach

Search problems What information do we need to know to figure out a solution?

Search problems Where to start Where to finish (goal) What the “world” (in this case a maze) looks like  We’ll define the world as a collection of discrete states  States are connected if we can get from one state to another by taking a particular action  This is called the “state space”

State space example

… … …

For a given problem, still could have different state-spaces How many more states are there?

State space example

Solving the maze

How what?

Solving the maze

How what?

Solving the maze How what?

Solving the maze Could we have found it any other way?

Search algorithm Keep track of a list of states that we could visit, we’ll call it “to_visit” General idea:  take a state off the to_visit list  if it’s the goal state we’re done!  if it’s not the goal state Add all of the successive states to the to_visit list repeat

to_visit take a state off the to_visit list - if it’s the goal state we’re done! - if it’s not the goal state Add all of the successive states to the to_visit list repeat How do we start?

to_visit take a state off the to_visit list - if it’s the goal state we’re done! - if it’s not the goal state Add all of the successive states to the to_visit list repeat Add start not to to_visit 1

to_visit take a state off the to_visit list - if it’s the goal state we’re done! - if it’s not the goal state Add all of the successive states to the to_visit list repeat Add start not to to_visit

to_visit take a state off the to_visit list - if it’s the goal state we’re done! - if it’s not the goal state Add all of the successive states to the to_visit list repeat Is it a goal state?

to_visit take a state off the to_visit list - if it’s the goal state we’re done! - if it’s not the goal state Add all of the successive states to the to_visit list repeat

to_visit take a state off the to_visit list - if it’s the goal state we’re done! - if it’s not the goal state Add all of the successive states to the to_visit list repeat Which one?

to_visit take a state off the to_visit list - if it’s the goal state we’re done! - if it’s not the goal state Add all of the successive states to the to_visit list repeat 3434 Is it a goal state?

to_visit take a state off the to_visit list - if it’s the goal state we’re done! - if it’s not the goal state Add all of the successive states to the to_visit list repeat 3434 Where should we add them in the list?

to_visit take a state off the to_visit list - if it’s the goal state we’re done! - if it’s not the goal state Add all of the successive states to the to_visit list repeat Let’s add them to the front

to_visit take a state off the to_visit list - if it’s the goal state we’re done! - if it’s not the goal state Add all of the successive states to the to_visit list repeat 3434

to_visit take a state off the to_visit list - if it’s the goal state we’re done! - if it’s not the goal state Add all of the successive states to the to_visit list repeat 3434 What do we do here?

to_visit take a state off the to_visit list - if it’s the goal state we’re done! - if it’s not the goal state Add all of the successive states to the to_visit list repeat 3434 list keeps track of where to go next (and the states we know about but haven’t explored

to_visit take a state off the to_visit list - if it’s the goal state we’re done! - if it’s not the goal state Add all of the successive states to the to_visit list repeat 4

to_visit take a state off the to_visit list - if it’s the goal state we’re done! - if it’s not the goal state Add all of the successive states to the to_visit list repeat

to_visit take a state off the to_visit list - if it’s the goal state we’re done! - if it’s not the goal state Add all of the successive states to the to_visit list repeat 7474

to_visit take a state off the to_visit list - if it’s the goal state we’re done! - if it’s not the goal state Add all of the successive states to the to_visit list repeat 4

to_visit take a state off the to_visit list - if it’s the goal state we’re done! - if it’s not the goal state Add all of the successive states to the to_visit list repeat What type of structure/list is the to_visit list? It’s a stack!!! (LIFO)

to_visit take a state off the to_visit list - if it’s the goal state we’re done! - if it’s not the goal state Add all of the successive states to the to_visit list repeat What would happen if it was a queue? 1

Search algorithm add the start state to to_visit Repeat  take a state off the to_visit list  if it’s the goal state we’re done!  if it’s not the goal state Add all of the successive states to the to_visit list

Search algorithms add the start state to to_visit Repeat  take a state off the to_visit list  if it’s the goal state we’re done!  if it’s not the goal state Add all of the successive states to the to_visit list Depth first search (DFS): to_visit is a stack Breadth first search (BFS): to_visit is a queue