Beispiel #1
0
// Solve a series of relaxed problems for maximum flexibility solution
void solveStaged(size_t addMutex = 2) {

  // super-hack! just count...
  bool debug = false;
  SETDEBUG("DiscreteConditional::COUNT", true);
  SETDEBUG("DiscreteConditional::DiscreteConditional", debug); // progress

  // make a vector with slot availability, initially all 1
  // Reads file to get count :-)
  vector<double> slotsAvailable(largeExample(0).nrTimeSlots(), 1.0);

  // now, find optimal value for each student, using relaxed mutex constraints
  for (size_t s = 0; s < NRSTUDENTS; s++) {
    // add all students first time, then drop last one second time, etc...
    Scheduler scheduler = largeExample(NRSTUDENTS - s);
    //scheduler.print(str(boost::format("Scheduler %d") % (NRSTUDENTS-s)));

    // only allow slots not yet taken
    scheduler.setSlotsAvailable(slotsAvailable);

    // BUILD THE GRAPH !
    scheduler.buildGraph(addMutex);

    // Do EXACT INFERENCE
    gttic_(eliminate);
    DiscreteBayesNet::shared_ptr chordal = scheduler.eliminate();
    gttoc_(eliminate);

    // find root node
//    chordal->back()->print("back: ");
//    chordal->front()->print("front: ");
//    exit(0);
    DiscreteConditional::shared_ptr root = chordal->back();
    if (debug)
      root->print(""/*scheduler.studentName(s)*/);

    // solve root node only
    Scheduler::Values values;
    size_t bestSlot = root->solve(values);

    // get corresponding count
    DiscreteKey dkey = scheduler.studentKey(NRSTUDENTS - 1 - s);
    values[dkey.first] = bestSlot;
    size_t count = (*root)(values);

    // remove this slot from consideration
    slotsAvailable[bestSlot] = 0.0;
    cout << boost::format("%s = %d (%d), count = %d") % scheduler.studentName(NRSTUDENTS-1-s)
        % scheduler.slotName(bestSlot) % bestSlot % count << endl;
  }
  tictoc_print_();
}
/* ************************************************************************* */
void accomodateStudent() {

  // super-hack! just count...
  bool debug = false;
  //  SETDEBUG("DiscreteConditional::COUNT",true);
  SETDEBUG("DiscreteConditional::DiscreteConditional", debug); // progress

  Scheduler scheduler = largeExample(0);
  //  scheduler.addStudent("Victor E", "Autonomy", "HRI", "AI",
  //      "Henrik Christensen");
  scheduler.addStudent("Carlos N", "Perception", "AI", "Autonomy",
      "Henrik Christensen");
  scheduler.print("scheduler");

  // rule out all occupied slots
  vector<size_t> slots;
  slots += 16, 17, 11, 2, 0, 5, 9, 14;
  vector<double> slotsAvailable(scheduler.nrTimeSlots(), 1.0);
  BOOST_FOREACH(size_t s, slots)
  slotsAvailable[s] = 0;
  scheduler.setSlotsAvailable(slotsAvailable);

  // BUILD THE GRAPH !
  scheduler.buildGraph(1);

  // Do EXACT INFERENCE
  DiscreteBayesNet::shared_ptr chordal = scheduler.eliminate();

  // find root node
  DiscreteConditional::shared_ptr root = chordal->back();
  if (debug)
    root->print(""/*scheduler.studentName(s)*/);
  //  GTSAM_PRINT(*chordal);

  // solve root node only
  Scheduler::Values values;
  size_t bestSlot = root->solve(values);

  // get corresponding count
  DiscreteKey dkey = scheduler.studentKey(0);
  values[dkey.first] = bestSlot;
  size_t count = (*root)(values);
  cout << boost::format("%s = %d (%d), count = %d") % scheduler.studentName(0)
      % scheduler.slotName(bestSlot) % bestSlot % count << endl;

  // sample schedules
  for (size_t n = 0; n < 10; n++) {
    Scheduler::sharedValues sample0 = chordal->sample();
    scheduler.printAssignment(sample0);
  }
}
Beispiel #3
0
  /** Find the best total assignment - can be expensive */
  Scheduler::sharedValues Scheduler::optimalAssignment() const {
    DiscreteBayesNet::shared_ptr chordal = eliminate();

    if (ISDEBUG("Scheduler::optimalAssignment")) {
      DiscreteBayesNet::const_iterator it = chordal->end()-1;
      const Student & student = students_.front();
      cout << endl;
      (*it)->print(student.name_);
    }

    gttic(my_optimize);
    sharedValues mpe = chordal->optimize();
    gttoc(my_optimize);
    return mpe;
  }
Beispiel #4
0
/* ************************************************************************* */
void runLargeExample() {

  Scheduler scheduler = largeExample();
  scheduler.print();

  // BUILD THE GRAPH !
  size_t addMutex = 3;
  // SETDEBUG("Scheduler::buildGraph", true);
  scheduler.buildGraph(addMutex);

  // Do brute force product and output that to file
  if (scheduler.nrStudents() == 1) { // otherwise too slow
    DecisionTreeFactor product = scheduler.product();
    product.dot("scheduling-large", false);
  }

  // Do exact inference
  //  SETDEBUG("timing-verbose", true);
  SETDEBUG("DiscreteConditional::DiscreteConditional", true);
#define SAMPLE
#ifdef SAMPLE
  gttic(large);
  DiscreteBayesNet::shared_ptr chordal = scheduler.eliminate();
  gttoc(large);
  tictoc_finishedIteration();
  tictoc_print();
  for (size_t i=0;i<100;i++) {
    DiscreteFactor::sharedValues assignment = chordal->sample();
    vector<size_t> stats(scheduler.nrFaculty());
    scheduler.accumulateStats(assignment, stats);
    size_t max = *max_element(stats.begin(), stats.end());
    size_t min = *min_element(stats.begin(), stats.end());
    size_t nz = count_if(stats.begin(), stats.end(), NonZero);
//    cout << min << ", " << max << ", "  << nz << endl;
    if (nz >= 13 && min >=1 && max <= 4) {
      cout << "======================================================\n";
      scheduler.printAssignment(assignment);
    }
  }
#else
  gttic(large);
  DiscreteFactor::sharedValues MPE = scheduler.optimalAssignment();
  gttoc(large);
  tictoc_finishedIteration();
  tictoc_print();
  scheduler.printAssignment(MPE);
#endif
}
Beispiel #5
0
/* ************************************************************************* */
TEST(DiscreteBayesNet, Asia)
{
  DiscreteBayesNet asia;
//  DiscreteKey A("Asia"), S("Smoking"), T("Tuberculosis"), L("LungCancer"), B(
//      "Bronchitis"), E("Either"), X("XRay"), D("Dyspnoea");
  DiscreteKey A(0,2), S(4,2), T(3,2), L(6,2), B(7,2), E(5,2), X(2,2), D(1,2);

  // TODO: make a version that doesn't use the parser
  asia.add(A % "99/1");
  asia.add(S % "50/50");

  asia.add(T | A = "99/1 95/5");
  asia.add(L | S = "99/1 90/10");
  asia.add(B | S = "70/30 40/60");

  asia.add((E | T, L) = "F T T T");

  asia.add(X | E = "95/5 2/98");
  // next lines are same as asia.add((D | E, B) = "9/1 2/8 3/7 1/9");
  DiscreteConditional::shared_ptr actual =
      boost::make_shared<DiscreteConditional>((D | E, B) = "9/1 2/8 3/7 1/9");
  asia.push_back(actual);
  //  GTSAM_PRINT(asia);

  // Convert to factor graph
  DiscreteFactorGraph fg(asia);
//    GTSAM_PRINT(fg);
  LONGS_EQUAL(3,fg.back()->size());
  Potentials::ADT expected(B & D & E, "0.9 0.3 0.1 0.7 0.2 0.1 0.8 0.9");
  CHECK(assert_equal(expected,(Potentials::ADT)*actual));

  // Create solver and eliminate
  Ordering ordering;
  ordering += Key(0),Key(1),Key(2),Key(3),Key(4),Key(5),Key(6),Key(7);
  DiscreteBayesNet::shared_ptr chordal = fg.eliminateSequential(ordering);
//    GTSAM_PRINT(*chordal);
  DiscreteConditional expected2(B % "11/9");
  CHECK(assert_equal(expected2,*chordal->back()));

  // solve
  DiscreteFactor::sharedValues actualMPE = chordal->optimize();
  DiscreteFactor::Values expectedMPE;
  insert(expectedMPE)(A.first, 0)(D.first, 0)(X.first, 0)(T.first, 0)(S.first,
      0)(E.first, 0)(L.first, 0)(B.first, 0);
  EXPECT(assert_equal(expectedMPE, *actualMPE));

  // add evidence, we were in Asia and we have Dispnoea
  fg.add(A, "0 1");
  fg.add(D, "0 1");
//  fg.product().dot("fg");

  // solve again, now with evidence
  DiscreteBayesNet::shared_ptr chordal2 = fg.eliminateSequential(ordering);
//  GTSAM_PRINT(*chordal2);
  DiscreteFactor::sharedValues actualMPE2 = chordal2->optimize();
  DiscreteFactor::Values expectedMPE2;
  insert(expectedMPE2)(A.first, 1)(D.first, 1)(X.first, 0)(T.first, 0)(S.first,
      1)(E.first, 0)(L.first, 0)(B.first, 1);
  EXPECT(assert_equal(expectedMPE2, *actualMPE2));

  // now sample from it
  DiscreteFactor::Values expectedSample;
  SETDEBUG("DiscreteConditional::sample", false);
  insert(expectedSample)(A.first, 1)(D.first, 1)(X.first, 0)(T.first, 0)(
      S.first, 1)(E.first, 0)(L.first, 0)(B.first, 1);
  DiscreteFactor::sharedValues actualSample = chordal2->sample();
  EXPECT(assert_equal(expectedSample, *actualSample));
}
// Solve a series of relaxed problems for maximum flexibility solution
void solveStaged(size_t addMutex = 2) {

  // super-hack! just count...
  bool debug = false;
  SETDEBUG("DiscreteConditional::COUNT", true);
  SETDEBUG("DiscreteConditional::DiscreteConditional", debug); // progress

  // make a vector with slot availability, initially all 1
  // Reads file to get count :-)
  vector<double> slotsAvailable(largeExample(0).nrTimeSlots(), 1.0);

  // now, find optimal value for each student, using relaxed mutex constraints
  for (size_t s = 0; s < 7; s++) {
    // add all students first time, then drop last one second time, etc...
    Scheduler scheduler = largeExample(7 - s);
    //scheduler.print(str(boost::format("Scheduler %d") % (7-s)));

    // only allow slots not yet taken
    scheduler.setSlotsAvailable(slotsAvailable);

    // BUILD THE GRAPH !
    scheduler.buildGraph(addMutex);

    // Do EXACT INFERENCE
    gttic_(eliminate);
    DiscreteBayesNet::shared_ptr chordal = scheduler.eliminate();
    gttoc_(eliminate);

    // find root node
    DiscreteConditional::shared_ptr root = chordal->back();
    if (debug)
      root->print(""/*scheduler.studentName(s)*/);

    // solve root node only
    Scheduler::Values values;
    size_t bestSlot = root->solve(values);

    // get corresponding count
    DiscreteKey dkey = scheduler.studentKey(6 - s);
    values[dkey.first] = bestSlot;
    size_t count = (*root)(values);

    // remove this slot from consideration
    slotsAvailable[bestSlot] = 0.0;
    cout << boost::format("%s = %d (%d), count = %d") % scheduler.studentName(6-s)
        % scheduler.slotName(bestSlot) % bestSlot % count << endl;
  }
  tictoc_print_();

  // Solution with addMutex = 2: (20 secs)
  //  TC = Wed 2 (9), count = 96375041778
  //  AC = Tue 2 (5), count = 4076088090
  //  SJ = Mon 1 (0), count = 29596704
  //  TK = Mon 3 (2), count = 755370
  //  JH = Wed 4 (11), count = 12000
  //  TH = Fri 2 (17), count = 220
  //  MN = Fri 1 (16), count = 5
  //
  // Mutex does make a difference !!

}