I am currently trying to use the Python multiprocessing package to make a CPU-bound process run more quickly. I have a very large numpy matrix, and would like to split the work using Pool and apply_async to calculate the values that go in the matrix. However, when I run the unit test on the function to test whether it works, I get the error "NameError: global name 'self' is not defined". I couldn't find anything on Google or StackOverflow that helps, either. Any idea why this might be happening?
Pytest output:
_____________________ TestBuildEMMatrix.test_build_em_matrix_simple _____________________
self = <mixemt_master.mixemt2.preprocess_test.TestBuildEMMatrix testMethod=test_build_em_matrix_simple>
def test_build_em_matrix_simple(self):
reads = ["1:A,2:C", "1:T,2:C", "3:T,4:T", "2:A,4:T"]
in_mat = preprocess.build_em_matrix(self.ref, self.phy,
> reads, self.haps, self.args)
preprocess_test.py:272:
_ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _
preprocess.py:239: in build_em_matrix
results[i] = results[i].get()
_ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _
self = <multiprocessing.pool.ApplyResult object at 0x7f4218ea07d0>, timeout = None
def get(self, timeout=None):
self.wait(timeout)
if not self._ready:
raise TimeoutError
if self._success:
return self._value
else:
> raise self._value
E NameError: global name 'self' is not defined
/vol/hpc/apps/python-anaconda2-4.3.1-abat/install/lib/python2.7/multiprocessing/pool.py:567: NameError
--------------------------------- Captured stdout call ----------------------------------
False
And the relevant Python functions:
def build_em_matrix_process(markers, haplogroups, pos_obs, mut_prob, column_length, start_index, end_index):
columns = [[prob_for_vars(markers, haplogroups[j], pos_obs, mut_prob) for j in xrange(column_length)]
for i in xrange(start_index, end_index)]
return columns
def build_em_matrix(refseq, phylo, reads, haplogroups, args):
"""
Returns the matrix that describes the probabiliy of each read
originating in each haplotype.
"""
hvb_mat = HapVarBaseMatrix(refseq, phylo)
read_hap_mat = numpy.empty((len(reads), len(haplogroups)))
if args.verbose:
sys.stderr.write('Building EM input matrix...\n')
num_processors = args.p
pool = Pool(processes = num_processors);
results = []
partition_size = int(math.ceil(len(reads) / float(num_processors)))
for i in xrange(num_processors):
start_index = i * partition_size
end_index = (i + 1) * partition_size
pos_obs = pos_obs_from_sig(reads[i])
results.append(pool.apply_async(build_em_matrix_process, (hvb_mat.markers, haplogroups, pos_obs, hvb_mat.mut_prob, len(haplogroups), start_index, end_index)))
column = 0
for i in xrange(num_processors):
results[i].wait()
print results[i].successful()
results[i] = results[i].get()
for j in xrange[len(results)]:
read_hap_mat[column] = results[i][j]
column += 1
if args.verbose:
sys.stderr.write('Done.\n\n')
return read_hap_mat
After calling 'results[i].wait()] added a statement 'print results[I].successful()', which prints False to stdout. I'm not sure why that's not returning true, as I can't find any errors in build_em_matrix_process.
TestBuildEMMatrix.test_build_em_matrix_simple
, not in the code being tested.