CompSci 100e 12.1 Is there a Science of Networks? l What kinds of networks are there? l From Bacon numbers to random graphs to Internet  From FOAF to.

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CompSci 100e 12.1 Is there a Science of Networks? l What kinds of networks are there? l From Bacon numbers to random graphs to Internet  From FOAF to Selfish Routing: apparent similarities between many human and technological systems & organization  Modeling, simulation, and hypotheses  Compelling concepts Metaphor of viral spread Properties of connectivity has qualitative and quantitative effects  Computer Science? l From the facebook to tomogravity  How do we model networks, measure them, and reason about them?  What mathematics is necessary?  Will the real-world intrude?

CompSci 100e 12.2 From subsets to graphs with bits l We’ll consider SequenceSync APT  What is a “vertex” in the graph? Where are arcs?  For state-0, we have {1,5,4,2} for transitions l We’ll consider a graph in which vertices are sets of states  Start with every possible state in our initial vertex

CompSci 100e 12.3 Six Degrees of Kevin Bacon l Background  Stanley Milgram’s Six Degrees of Separation?  Craig Fass, Mike Ginelli, and Brian Turtle invented it as a drinking game at Albright College  Brett Tjaden and Glenn Wasson put it on the web at UVA in 1995  Patrick Reynolds (Duke CS PhD) ran it since 1999 l Link people to Kevin Bacon based on movies they have been in together  Morgan Freeman was in Se7en with Brad Pitt  Brad Pitt was in Sleepers with Kevin Bacon l Morgan Freeman has a Bacon number of 2 l Who has a Bacon number of 4 or more?

The Oracle of Bacon Internet Movie Database Linking Engine Web server oracleofbacon.org Linking Engine: –Is written in C –Stores all movie data in memory –Answers link, number, and center queries –Doesn’t actually use Oracle™

Inside the Linking Engine All three types of queries use breadth-first search Kevin Bacon BN = 0 Mystic River Apollo 13 Footloose John Lithgow Sarah Jessica Parker Bill Paxton Tom Hanks Sean Penn Tim Robbins BN = 1

Inside the Linking Engine All three types of queries use breadth-first search Kevin Bacon Mystic River Apollo 13 Footloose John Lithgow Sarah Jessica Parker Bill Paxton Tom Hanks Sean Penn Tim Robbins BN = 0 BN = 1 Sweet and Lowdown Fast Times at Ridgemont High War of the Worlds The Shawshank Redemption Cast Away Forrest Gump Tombstone A Simple Plan Morgan Freeman Sally Field Helen Hunt Val Kilmer Miranda Otto Judge Reinhold Woody Allen Billy Bob Thornton BN = 2

Inside the Linking Engine Link Val Kilmer to Kevin Bacon Mystic River Footloose John Lithgow Sarah Jessica Parker Tom Hanks Sean Penn Tim Robbins BN = 0 BN = 1 Sweet and Lowdown Fast Times at Ridgemont High War of the Worlds The Shawshank Redemption Cast Away Forrest Gump A Simple Plan Morgan Freeman Sally Field Helen Hunt Miranda Otto Judge Reinhold Woody Allen Billy Bob Thornton BN = 2 Bill Paxton Tombstone Val Kilmer Apollo 13 Kevin Bacon

How good a center is Kevin Bacon? –Average everyone’s Bacon number –Currently 2.963, ranked 1222 nd Who is exactly 2 hops away from Kevin Bacon? –This whole column –Currently 163,002 people Inside the Linking Engine Mystic River Footloose John Lithgow Sarah Jessica Parker Tom Hanks Sean Penn Tim Robbins Sweet and Lowdown Fast Times at Ridgemont High War of the Worlds The Shawshank Redemption Cast Away Forrest Gump A Simple Plan Morgan Freeman Sally Field Helen Hunt Miranda Otto Judge Reinhold Woody Allen Billy Bob Thornton Bill Paxton Tombstone Val Kilmer Apollo 13 Kevin Bacon

Caching Keep whole BFS trees for common queries –Takes about 4MB of memory each Perform 75-85% fewer BFS calculations –Faster website response time

CompSci 100e Center of the Hollywood Universe l 739,979 people can be connected to Bacon l Is he the center of the Hollywood Universe?  Who is?  Who are other good centers?  What makes them good centers? l Centrality  Closeness: the inverse average distance of a node to all other nodes Geodesic: shortest path between two vertices Closeness centrality: number of other vertices divided by the sum of all distances between the vertex and all others.  Degree: the degree of a node  Betweenness: a measure of how much a vertex is between other nodes

CompSci 100e Word ladder

CompSci 100e Vocabulary l Graphs are collections of vertices and edges (vertex also called node)  Edge connects two vertices Direction can be important, directed edge, directed graph Edge may have associated weight/cost l A vertex sequence v 0, v 1, …, v n-1 is a path where v k and v k+1 are connected by an edge.  If some vertex is repeated, the path is a cycle  A graph is connected if there is a path between any pair of vertices NYC Phil Boston Wash DC LGALAX ORD DCA $186 $412 $1701 $441

CompSci 100e Graph questions/algorithms l What vertices are reachable from a given vertex?  Two standard traversals: depth-first, breadth-first  Find connected components, groups of connected vertices l Shortest path between any two vertices (weighted graphs?)  Breadth first search is storage expensive  Dijkstra’s algorithm is efficient, uses a priority queue too! l Longest path in a graph  No known efficient algorithm l Visit all vertices without repeating? Visit all edges?  With minimal cost? Hard!

CompSci 100e Vocabulary/Traversals l Connected?  Connected components? Weakly connected (directionless)  Degree: # edges incident a vertex indegree (enter), outdegree (exit) l Starting at 7 where can we get?  Depth-first search, envision each vertex as a room, with doors leading out Go into a room, mark the room, choose an unused door, exit –Don’t go into a room you’ve already been in (see mark) Backtrack if all doors used (to room with unused door)  Rooms are stacked up, backtracking is really recursion  One alternative uses a queue: breadth-first search

CompSci 100e Breadth first search l In an unweighted graph this finds the shortest path between a start vertex and every vertex  Visit every node one away from start  Visit every node two away from start This is every node one away from a node one away  Visit every node three away from start, … l Put vertex on queue to start (initially just one)  Repeat: take vertex off queue, put all adjacent vertices on  Don’t put a vertex on that’s already been visited (why?)  When are 1-away vertices enqueued? 2-away? 3-away?  How many vertices on queue?

CompSci 100e General graph traversal COLLECTION_OF_VERTICES fringe; fringe = INITIAL_COLLECTION; while (!fringe.isEmpty()) { Vertex v = fringe.removeItem(QUEUE_FN); if (! MARKED(v)) { MARK(v); VISIT(v); for each edge (v,w) { if (NEEDS_PROCESSING(w)) Add w to fringe according to QUEUE_FN; }

CompSci 100e Breadth-first search l Visit each vertex reachable from some source in breadth-first order l Like level-order traversal Queue fringe; fringe = {v}; while (!fringe.isEmpty()) { Vertex v = fringe.dequeue(); if (! getMark(v)) { setMark(v); VISIT(v); for each edge (v,w) { if (MARKED(w)) fringe.enqueue(w); } l How do we change to make depth-first search?  How does the order visited change?

CompSci 100e How do we search in SequenceSync? l Given a vertex (collection of states) how do we determine what vertex it’s connected to?  Consider each transition from each state in our vertex (remember this is a set of states)  This yields a new set of states/vertex 1-away from vertex l What does the code look like for bfs? When do we stop? while (q.size() != 0){ TreeSet current = q.remove(); for(int k=0; k < 4; k++){ TreeSet next = new TreeSet (); for(int val : current){ next.add(matrix[val][k]); } q.add(next); // if not already seen }

CompSci 100e Problems with approach? l Creating sets and looking them up in map takes time  This solution times out, how to improve it?  l Don’t represent set of states explicitly, use sequence of bits  Similar to CodeBloat, advantages? Disadvantages?  How do we determine when we’re done?  How to store distances (how is array like a map?) l Rewrite solution to be efficient using int for set  Initial set is all ones, how to make this?

CompSci 100e Greedy Algorithms l A greedy algorithm makes a locally optimal decision that leads to a globally optimal solution  Huffman: choose two nodes with minimal weight, combine Leads to optimal coding, optimal Huffman tree  Making change with American coins: choose largest coin possible as many times as possible Change for $0.63, change for $0.32 What if we’re out of nickels, change for $0.32? l Greedy doesn’t always work, but it does sometimes l Weighted shortest path algorithm is Dijkstra’s algorithm, greedy and uses priority queue

CompSci 100e Dijkstra’s Shortest Path Algorithm l Similar to breadth first search, but uses a priority queue instead of a queue. Code below is for breadth first search q.dequeue(vertex w) foreach (vertex v adjacent to w) if (distance[v] == INT_MAX) // not visited { distance[v] = distance[w] + 1; q.enqueue(v); } l Dijkstra: Find minimal unvisited node, recalculate costs through node q.deletemin(vertex w) foreach (vertex v adjacent to w) if (distance[w] + weight(w,v) < distance[v]) { distance[v] = distance[w] + weight(w,v); q.insert(vertex(v, distance[v])); }

CompSci 100e Shortest paths, more details l Single-source shortest path  Start at some vertex S  Find shortest path to every reachable vertex from S l A set of vertices is processed  Initially just S is processed  Each pass processes a vertex After each pass, shortest path from S to any vertex using just vertices from processed set (except for last vertex) is always known l Next processed vertex is closest to S still needing processing SAB CE process B SAB CE E 7 7 S A B C process C E 7 7 S A B C

CompSci 100e A Rose by any other name…C or Java? l Why do we use Java in our courses (royal we?)  Object oriented  Large collection of libraries  Safe for advanced programming and beginners  Harder to shoot ourselves in the foot l Why don't we use C++ (or C)?  Standard libraries weak or non-existant (comparatively)  Easy to make mistakes when beginning  No GUIs, complicated compilation model

CompSci 100e Why do we learn other languages? l Perl, Python, PHP, mySQL, C, C++, Java, Scheme, ML, …  Can we do something different in one language? Depends on what different means. In theory: no; in practice: yes  What languages do you know? All of them.  In what languages are you fluent? None of them l In later courses why do we use C or C++?  Closer to the machine, we want to understand the machine at many levels, from the abstract to the ridiculous Or at all levels of hardware and software  Some problems are better suited to one language What about writing an operating system? Linux?

CompSci 100e C++ on two slides l Classes are similar to Java, compilation model is different  Classes have public and private sections/areas  Typically declaration in.h file and implementation in.cpp Separate interface from actual implementation Good in theory, hard to get right in practice  One.cpp file compiles to one.o file To create an executable, we link.o files with libraries Hopefully someone else takes care of the details l We #include rather than import, this is a preprocessing step  Literally sucks in an entire header file, can take a while for standard libraries like iostream, string, etc.  No abbreviation similar to java.util.*;

CompSci 100e C++ on a second slide l We don't have to call new to create objects, they can be created "on the stack"  Using new creates memory "on the heap"  In C++ we need to do our own garbage collection, or avoid and run out of memory (is this an issue?) l Vectors are similar to ArrayLists, pointers are similar to arrays  Unfortunately, C/C++ equate array with memory allocation  To access via a pointer, we don't use. we use -> l Streams are used for IO, iterators are used to access begin/end of collection  ifstream, cout correspond to Readers and System.out

CompSci 100e How do we read a file in C++ and Java? Scanner s = new Scanner(new File(“data.txt”)); TreeSet set = new TreeSet (); while (s.hasNext()){ String str = s.next(); set.add(str); } myWordsAsList = new ArrayList (set); string word; set unique; ifstream input(“data.txt”); while (input >> word){ unique.insert(word); } myWordsAsVector = vector (unique.begin(), unique.end()); l What are similarities? Differences?

CompSci 100e How do we read a file in C? FILE * file = fopen("/u/ola/data/poe.txt","r"); char buf[1024]; char ** words = (char **) malloc(5000*sizeof(char **)); int count = 0; int k; while (fscanf(file,"%s",buf) != EOF){ int found = 0; // look for word just read for(k=0; k < count; k++){ if (strcmp(buf,words[k]) == 0){ found = 1; break; } if (!found){ // not found, add to list words[count] = (char *) malloc(strlen(buf)+1); strcpy(words[count],buf); count++; } l What if more than 5000 words? What if string length > 1024? What if?  What is complexity of this code?