Great Theoretical Ideas In Computer Science Steven RudichCS 15-251 Spring 2005 Lecture 9Feb 8 2005Carnegie Mellon University b b a b a a a b a b One Minute.

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Great Theoretical Ideas In Computer Science Steven RudichCS Spring 2005 Lecture 9Feb Carnegie Mellon University b b a b a a a b a b One Minute To Learn Programming: Finite Automata

Steven Rudich: rudich Let me teach you a programming language so simple that you can learn it in less than a minute.

Steven Rudich: rudich Meet “ABA” The Automaton! b b a b a a a b a b Input StringResult abaAccept aabbReject aabbaAccept 

Steven Rudich: rudich The Simplest Interesting Machine: Finite State Machine OR Finite Automaton

Steven Rudich: rudich Finite set of states A start state A set of accepting states A finite alphabet a b # x 1 State transition instructions Finite Automaton

Steven Rudich: rudich How Machine M operates. M “reads” one letter at a time from the input string (going from left to right) M starts in state q 0. If M is in state q i reads the letter a then If  (q i. a) is undefined then CRASH. Otherwise M moves to state  (q i,a)

Steven Rudich: rudich M accepts the string x if when M reads x it ends in an accepting state. M rejects the string x if when M reads x it ends in a non- accepting state. M crashes on x if M crashes while reading x. Let M=(Q, ,F,  ) be a finite automaton.

Steven Rudich: rudich The set (or language) accepted by M is: Notice that this is 

Steven Rudich: rudich What is the language accepted by this machine? L = {a,b}* = all finite strings of a’s and b’s a,b

Steven Rudich: rudich What is the language accepted by this machine? L = all even length strings of a’s and b’s a,b

Steven Rudich: rudich What machine accepts this language? L = all strings in {a,b}* that contain at least one a a a,b b

Steven Rudich: rudich What machine accepts this language? L = strings with an odd number of b’s and any number of a’s b a a b

Steven Rudich: rudich What is the language accepted by this machine? L = any string ending with a b b b a a

Steven Rudich: rudich What is the language accepted by this machine? L = any string with at least two a’s b b a,b a a

Steven Rudich: rudich What machine accepts this language? L = any string with an a and a b b b a,b a a b a

Steven Rudich: rudich What machine accepts this language? L = strings with an even number of ab pairs a b b a a b a b

Steven Rudich: rudich L = all strings containing ababb as a consecutive substring b a,b a a b b b b a a a a ab aba abab  Invariant: I am state s exactly when s is the longest suffix of the input (so far) that forms a prefix of ababb.

Steven Rudich: rudich Problem: Does the string S appear inside the text T ? The “grep” Problem Input: text T of length t string S of length n Cost: O(nt) comparisons Naïve method:

Steven Rudich: rudich Automata Solution Build a machine M that accepts any string with S as a consecutive substring. Feed the text to M. Cost: t comparisons + time to build M. As luck would have it, the Knuth, Morris, Pratt algorithm builds M quickly. By the way, it can be done with fewer than t comparisons in the worst case!

Steven Rudich: rudich Real-life uses of finite state machines grep coke machines thermostats (fridge) elevators train track switches lexical analyzers for parsers

Steven Rudich: rudich Any L    is defined to be a language. L is just a set of strings. It is called a language for historical reasons.

Steven Rudich: rudich Let L    be a language. L is called a regular language if there is some finite automaton that accepts L. In this lecture we have seen many regular languages.   even length strings strings containing ababb

Steven Rudich: rudich Theorem: Any finite langage is regular. Proof: Make a machine with a “path” for each string in the language. Example: L = {a, bcd, ac, bb} b d a c b c

Steven Rudich: rudich Are all languages regular?

Steven Rudich: rudich Consider the language i.e., a bunch of a’s followed by an equal number of b’s No finite automaton accepts this language. Can you prove this?

Steven Rudich: rudich a n b n is not regular. No machine has enough states to keep track of the number of a’s it might encounter.

Steven Rudich: rudich That is a fairly weak argument. Consider the following example…

Steven Rudich: rudich L = strings where the # of occurrences of the pattern ab is equal to the number of occurrences of the pattern ba Can’t be regular. No machine has enough states to keep track of the number of occurrences of ab.

Steven Rudich: rudich Remember “ABA”? b b a b a a a b a b ABA accepts only the strings with an equal number of ab’s and ba’s!

Steven Rudich: rudich Let me show you a professional strength proof that a n b n is not regular….

Steven Rudich: rudich Professional Strength Proof Theorem: a n b n is not regular. Proof: Assume that it is. Then  M with k states that accepts it. For each 0  i  k, let S i be the state M is in after reading a i.  i,j  k s.t. S i = S j, but i  j M will do the same thing on a i b i and a j b i. But a valid M must reject a j b i and accept a i b i. 

Steven Rudich: rudich MORAL: Finite automata can’t count.

Steven Rudich: rudich Advertisement You can learn much more about these creatures in the FLAC course. Formal Languages, Automata, and Computation There is a unique smallest automaton for any regular language It can be found by a fast algorithm.

Steven Rudich: rudich Cellular Automata Line up a bunch of identical finite automata in a straight line. Transitions are based on the states of the machine’s two neighbors or an indicator that a neighbor is missing. (There is no other input.) All cells move to their next states at the same time: synchronous transition

Steven Rudich: rudich The Firing Squad Problem Five “soldiers” all start in the sleep state. You change the one on the left to the wake state. All five must get to the fire state at the same time (for the first time). sleep wake fire sleep wake fire sleep wake fire sleep wake fire sleep wake fire sleep wake fire sleep wake fire sleep wake fire sleep wake fire sleep wake fire

Steven Rudich: rudich Shorthand Means use this transition when your left neighbor is in any state at all and your right neighbor is in state a,b, or d.

Steven Rudich: rudich sleep wake wake2 wake3 wake4 fire! {w2},Q {w},Q {w3},Q Q,Q {w4},Q {sleep,fire,end},Q Q,Q sleep

Steven Rudich: rudich sleep wake wake2 wake3 wake4 fire! {w2},Q {w},Q {w3},Q Q,Q {w4},Q {sleep,fire,end},Q Q,Q wakesleep

Steven Rudich: rudich sleep wake wake2 wake3 wake4 fire! {w2},Q {w},Q {w3},Q Q,Q {w4},Q {sleep,fire,end},Q Q,Q wakesleep wake2 sleep

Steven Rudich: rudich sleep wake wake2 wake3 wake4 fire! {w2},Q {w},Q {w3},Q Q,Q {w4},Q {sleep,fire,end},Q Q,Q wakesleep wake2 sleep wake3 sleep

Steven Rudich: rudich sleep wake wake2 wake3 wake4 fire! {w2},Q {w},Q {w3},Q Q,Q {w4},Q {sleep,fire,end},Q Q,Q wakesleep wake2 sleep wake3 sleep wake4 sleep

Steven Rudich: rudich sleep wake wake2 wake3 wake4 fire! {w2},Q {w},Q {w3},Q Q,Q {w4},Q {sleep,fire,end},Q Q,Q wakesleep wake2 sleep wake3 sleep wake4 sleep fire

Steven Rudich: rudich Question Can you build the soldier’s finite automaton brain before you know how many soldiers will be in the line? No. Finite automata can’t count!

Steven Rudich: rudich Don’t jump to conclusions! It is possible to design a single cellular automaton that works for any number of soldiers!