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I met a runtime error "double free or corruption" in my C++ program that calls a reliable library ANN and uses OpenMP to parallize a for loop.

*** glibc detected *** /home/tim/test/debug/test: double free or corruption (!prev): 0x0000000002527260 ***     

Does it mean that the memory at address 0x0000000002527260 is freed more than once?

The error happens at "_search_struct->annkSearch(queryPt, k_max, nnIdx, dists, _eps);" inside function classify_various_k(), which is in turn inside the OpenMP for-loop inside function tune_complexity().

Note that the error happens when there are more than one threads for OpenMP, and does not happen in single thread case. Not sure why.

Following is my code. If it is not enough for diagnose, just let me know. Thanks for your help!

  void KNNClassifier::train(int nb_examples, int dim, double **features, int * labels) {                         
      _nPts = nb_examples;  

      _labels = labels;  
      _dataPts = features;  

      setting_ANN(_dist_type,1);   

    delete _search_struct;  
    if(strcmp(_search_neighbors, "brutal") == 0) {                                                                 
      _search_struct = new ANNbruteForce(_dataPts, _nPts, dim);  
    }else if(strcmp(_search_neighbors, "kdtree") == 0) {  
      _search_struct = new ANNkd_tree(_dataPts, _nPts, dim);  
      }  

  }  


      void KNNClassifier::classify_various_k(int dim, double *feature, int label, int *ks, double * errors, int nb_ks, int k_max) {            
        ANNpoint      queryPt = 0;                                                                                                                
        ANNidxArray   nnIdx = 0;                                                                                                         
        ANNdistArray  dists = 0;                                                                                                         

        queryPt = feature;     
        nnIdx = new ANNidx[k_max];                                                               
        dists = new ANNdist[k_max];                                                                                

        if(strcmp(_search_neighbors, "brutal") == 0) {                                                                               
          _search_struct->annkSearch(queryPt, k_max,  nnIdx, dists, _eps);    
        }else if(strcmp(_search_neighbors, "kdtree") == 0) {    
          _search_struct->annkSearch(queryPt, k_max,  nnIdx, dists, _eps); // where error occurs    
        }    

        for (int j = 0; j < nb_ks; j++)    
        {    
          scalar_t result = 0.0;    
          for (int i = 0; i < ks[j]; i++) {                                                                                      
              result+=_labels[ nnIdx[i] ];    
          }    
          if (result*label<0) errors[j]++;    
        }    

        delete [] nnIdx;    
        delete [] dists;    

      }    

      void KNNClassifier::tune_complexity(int nb_examples, int dim, double **features, int *labels, int fold, char *method, int nb_examples_test, double **features_test, int *labels_test) {    
          int nb_try = (_k_max - _k_min) / scalar_t(_k_step);    
          scalar_t *error_validation = new scalar_t [nb_try];    
          int *ks = new int [nb_try];    

          for(int i=0; i < nb_try; i ++){    
            ks[i] = _k_min + _k_step * i;    
          }    

          if (strcmp(method, "ct")==0)                                                                                                                     
          {    

            train(nb_examples, dim, features, labels );// train once for all nb of nbs in ks                                                                                                

            for(int i=0; i < nb_try; i ++){    
              if (ks[i] > nb_examples){nb_try=i; break;}    
              error_validation[i] = 0;    
            }    

            int i = 0;    
      #pragma omp parallel shared(nb_examples_test, error_validation,features_test, labels_test, nb_try, ks) private(i)    
            {    
      #pragma omp for schedule(dynamic) nowait    
              for (i=0; i < nb_examples_test; i++)         
              {    
                classify_various_k(dim, features_test[i], labels_test[i], ks, error_validation, nb_try, ks[nb_try - 1]); // where error occurs    
              }    
            }    
            for (i=0; i < nb_try; i++)    
            {    
              error_validation[i]/=nb_examples_test;    
            }    
          }

          ......
     }

UPDATE:

Thanks! I am now trying to correct the conflict of writing to same memory problem in classify_various_k() by using "#pragma omp critical":

void KNNClassifier::classify_various_k(int dim, double *feature, int label, int *ks, double * errors, int nb_ks, int k_max) {   
  ANNpoint      queryPt = 0;    
  ANNidxArray   nnIdx = 0;      
  ANNdistArray  dists = 0;     

  queryPt = feature; //for (int i = 0; i < Vignette::size; i++){ queryPt[i] = vignette->content[i];}         
  nnIdx = new ANNidx[k_max];                
  dists = new ANNdist[k_max];               

  if(strcmp(_search_neighbors, "brutal") == 0) {// search  
    _search_struct->annkSearch(queryPt, k_max,  nnIdx, dists, _eps);  
  }else if(strcmp(_search_neighbors, "kdtree") == 0) {  
    _search_struct->annkSearch(queryPt, k_max,  nnIdx, dists, _eps);  
  }  

  for (int j = 0; j < nb_ks; j++)  
  {  
    scalar_t result = 0.0;  
    for (int i = 0; i < ks[j]; i++) {          
        result+=_labels[ nnIdx[i] ];  // Program received signal SIGSEGV, Segmentation fault
    }  
    if (result*label<0)  
    {  
    #pragma omp critical  
    {  
      errors[j]++;  
    }  
    }  

  }  

  delete [] nnIdx;  
  delete [] dists;  

}

However, there is a new segment fault error at "result+=_labels[ nnIdx[i] ];". Some idea? Thanks!

share|improve this question
    
Try it without openmp -- does it work correctly? –  Kornel Kisielewicz Feb 2 '10 at 5:14
1  
I recommend compiling with -g and running through valgrind if you're on OSX or Linux. That should pinpoint the error for you. –  Michael Anderson Feb 2 '10 at 5:14
    
@Kornel: It works correctly for single-thread case. –  Tim Feb 2 '10 at 5:22

3 Answers 3

up vote 3 down vote accepted

Okay, since you've stated that it works correctly on a single-thread case, then "normal" methods won't work. You need to do the following:

  • find all variables that are accessed in parallel
  • especially take a look at those that are modified
  • don't call delete on a shared resource
  • take a look at all library functions that operate on shared resources - check if they don't do allocation/deallocation

This is the list of candidates that are double deleted:

shared(nb_examples_test, error_validation,features_test, labels_test, nb_try, ks)

Also, this code might not be thread safe:

      for (int i = 0; i < ks[j]; i++) {
         result+=_labels[ nnIdx[i] ]; 
      }    
      if (result*label<0) errors[j]++;  

Because two or more processes may try to do a write to errors array.

And a big advice -- try not to access (especially modify!) anything while in the threaded mode, that is not a parameter to the function!

share|improve this answer
    
Thanks! The shared variable are not deallocated in the parallel region. Inside the parallel region, only local variables are allocated and dealocated. –  Tim Feb 2 '10 at 5:38
    
@Tim, your problem may be corruption, and not double allocation -- corruption may occur if two processors try to write to the same point in memory. –  Kornel Kisielewicz Feb 2 '10 at 5:40
    
Thanks for point that out! It makes sense. How to synchronize the writing into shared errors between threads? –  Tim Feb 2 '10 at 5:46

I don't know if this is your problem, but:

void KNNClassifier::train(int nb_examples, int dim, double **features, int * labels) {
  ...
  delete _search_struct;
  if(strcmp(_search_neighbors, "brutal") == 0) {
    _search_struct = new ANNbruteForce(_dataPts, _nPts, dim);
  }else if(strcmp(_search_neighbors, "kdtree") == 0) {  
    _search_struct = new ANNkd_tree(_dataPts, _nPts, dim);
  }
}  

What happens if you don't fall into either the if or the else if clauses? You've deleted _search_struct and left it pointing to garbage. You should set it to NULL afterward.

If this isn't the problem, you could try replacing:

delete p;

with:

assert(p != NULL);
delete p;
p = NULL;

(or similarly for delete[] sites). (This probably would pose a problem for the first invocation of KNNClassifier::train, however.)

Also, obligatory: do you really need to do all of these manual allocations and deallocations? Why aren't you at least using std::vector instead of new[]/delete[] (which are almost always bad)?

share|improve this answer
    
Thanks. But delete a null pointer is possible. Also assigning 0 to the pointer after deleting it does not solve my problem. –  Tim Feb 2 '10 at 5:48
    
@Tim: Right, delete NULL is a no-op (that's why I suggested using an assert). I didn't see your later edit mentioning that this didn't happen in a single-threaded scenario. –  jamesdlin Feb 2 '10 at 5:54

Your train method deletes _search_struct before allocating new memory to it. So the first time train is called, it is deleted. Is there code to allocate it before that call to train? You could end up trying to delete junk memory (we don't have the code to tell, though).

share|improve this answer
    
You know you can call delete 0; right? –  Kornel Kisielewicz Feb 2 '10 at 5:21
    
Yes, train() first deallocate it and then immediately allocate it. –  Tim Feb 2 '10 at 5:21
    
@Kornel, yes delete 0 is allowed. Do you know that it is 0 the first time it is deleted from the code given? @Tim. Yes, that is what I say too. The first time train is called, what is the value of _search_struct? –  Aryabhatta Feb 2 '10 at 5:24

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