fairseq/sequence_generator.py
Killed 0 out of 11 mutantsSurvived
Survived mutation testing. These mutants show holes in your test suite.Mutant 24
--- fairseq/sequence_generator.py
+++ fairseq/sequence_generator.py
@@ -93,7 +93,6 @@
self.model.cuda()
return self
- @torch.no_grad()
def forward(
self,
sample: Dict[str, Dict[str, Tensor]],
Mutant 25
--- fairseq/sequence_generator.py
+++ fairseq/sequence_generator.py
@@ -112,7 +112,7 @@
return self._generate(sample, prefix_tokens, bos_token)
# TODO(myleott): unused, deprecate after pytorch-translate migration
- def generate_batched_itr(self, data_itr, beam_size=None, cuda=False, timer=None):
+ def generate_batched_itr(self, data_itr, beam_size=None, cuda=True, timer=None):
"""Iterate over a batched dataset and yield individual translations.
Args:
cuda (bool, optional): use GPU for generation
Mutant 26
--- fairseq/sequence_generator.py
+++ fairseq/sequence_generator.py
@@ -144,7 +144,6 @@
)
yield id, src, ref, hypos[i]
- @torch.no_grad()
def generate(self, models, sample: Dict[str, Dict[str, Tensor]], **kwargs):
"""Generate translations. Match the api of other fairseq generators.
Mutant 27
--- fairseq/sequence_generator.py
+++ fairseq/sequence_generator.py
@@ -688,7 +688,6 @@
def max_decoder_positions(self):
return min([m.max_decoder_positions() for m in self.models])
- @torch.jit.export
def forward_encoder(self, net_input: Dict[str, Tensor]):
if not self.has_encoder():
return None
Mutant 28
--- fairseq/sequence_generator.py
+++ fairseq/sequence_generator.py
@@ -697,7 +697,6 @@
for model in self.models
]
- @torch.jit.export
def forward_decoder(
self,
tokens,
Mutant 29
--- fairseq/sequence_generator.py
+++ fairseq/sequence_generator.py
@@ -703,7 +703,7 @@
tokens,
encoder_outs: List[EncoderOut],
incremental_states: List[Dict[str, Dict[str, Optional[Tensor]]]],
- temperature: float = 1.0,
+ temperature: float = 2.0,
):
log_probs = []
avg_attn: Optional[Tensor] = None
Mutant 30
--- fairseq/sequence_generator.py
+++ fairseq/sequence_generator.py
@@ -760,7 +760,6 @@
avg_attn.div_(self.models_size)
return avg_probs, avg_attn
- @torch.jit.export
def reorder_encoder_out(self, encoder_outs: Optional[List[EncoderOut]], new_order):
"""
Reorder encoder output according to *new_order*.
Mutant 31
--- fairseq/sequence_generator.py
+++ fairseq/sequence_generator.py
@@ -782,7 +782,6 @@
)
return new_outs
- @torch.jit.export
def reorder_incremental_state(
self,
incremental_states: List[Dict[str, Dict[str, Optional[Tensor]]]],
Mutant 32
--- fairseq/sequence_generator.py
+++ fairseq/sequence_generator.py
@@ -797,7 +797,7 @@
class SequenceGeneratorWithAlignment(SequenceGenerator):
- def __init__(self, models, tgt_dict, left_pad_target=False, **kwargs):
+ def __init__(self, models, tgt_dict, left_pad_target=True, **kwargs):
"""Generates translations of a given source sentence.
Produces alignments following "Jointly Learning to Align and
Mutant 33
--- fairseq/sequence_generator.py
+++ fairseq/sequence_generator.py
@@ -811,7 +811,6 @@
super().__init__(EnsembleModelWithAlignment(models), tgt_dict, **kwargs)
self.left_pad_target = left_pad_target
- @torch.no_grad()
def generate(self, models, sample, **kwargs):
finalized = super()._generate(sample, **kwargs)
Mutant 34
--- fairseq/sequence_generator.py
+++ fairseq/sequence_generator.py
@@ -894,8 +894,6 @@
avg_attn.div_(len(self.models))
return avg_attn
-
-@torch.jit.script
class BeamContainer(object):
def __init__(self, score: float, elem: Dict[str, Tensor]):
self.score = score