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# coding=utf-8
# Copyright 2020 The HuggingFace Team Inc.
#
# Licensed under the Apache License, Version 2.0 (the "License");
# you may not use this file except in compliance with the License.
# You may obtain a clone of the License at
#
# http://www.apache.org/licenses/LICENSE-2.0
#
# Unless required by applicable law or agreed to in writing, software
# distributed under the License is distributed on an "AS IS" BASIS,
# WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
# See the License for the specific language governing permissions and
# limitations under the License.
import unittest
from typing import List, Union
from parameterized import parameterized
from transformers import is_torch_available
from transformers.testing_utils import require_torch, torch_device
from ..test_modeling_common import ids_tensor
if is_torch_available():
import torch
from torch import nn
from transformers.generation import (
EncoderNoRepeatNGramLogitsProcessor,
EncoderRepetitionPenaltyLogitsProcessor,
EpsilonLogitsWarper,
EtaLogitsWarper,
ExponentialDecayLengthPenalty,
ForcedBOSTokenLogitsProcessor,
ForcedEOSTokenLogitsProcessor,
HammingDiversityLogitsProcessor,
InfNanRemoveLogitsProcessor,
LogitNormalization,
LogitsProcessorList,
MinLengthLogitsProcessor,
MinNewTokensLengthLogitsProcessor,
NoBadWordsLogitsProcessor,
NoRepeatNGramLogitsProcessor,
PrefixConstrainedLogitsProcessor,
RepetitionPenaltyLogitsProcessor,
TemperatureLogitsWarper,
TopKLogitsWarper,
TopPLogitsWarper,
TypicalLogitsWarper,
)
@require_torch
class LogitsProcessorTest(unittest.TestCase):
def _get_uniform_logits(self, batch_size: int, length: int):
scores = torch.ones((batch_size, length), device=torch_device, dtype=torch.float) / length
return scores
def test_min_length_dist_processor(self):
vocab_size = 20
batch_size = 4
eos_token_id = 0
min_dist_processor = MinLengthLogitsProcessor(min_length=10, eos_token_id=eos_token_id)
# check that min length is applied at length 5
input_ids = ids_tensor((batch_size, 5), vocab_size=20)
scores = self._get_uniform_logits(batch_size, vocab_size)
scores_before_min_length = min_dist_processor(input_ids, scores)
self.assertListEqual(scores_before_min_length[:, eos_token_id].tolist(), 4 * [-float("inf")])
# check that min length is not applied anymore at length 15
input_ids = ids_tensor((batch_size, 15), vocab_size=20)
scores = self._get_uniform_logits(batch_size, vocab_size)
scores_before_min_length = min_dist_processor(input_ids, scores)
self.assertFalse(torch.isinf(scores_before_min_length).any())
@parameterized.expand([(0,), ([0, 18],)])
def test_new_min_length_dist_processor(self, eos_token_id: Union[int, List[int]]):
vocab_size = 20
batch_size = 4
# check that first input is skipped (min new length applying)
input_ids = ids_tensor((batch_size, 5), vocab_size=20)
new_min_dist_processor = MinNewTokensLengthLogitsProcessor(
prompt_length_to_skip=input_ids.shape[-1], min_new_tokens=3, eos_token_id=eos_token_id
)
expected_eos_scores_before_min_length = batch_size * [-float("inf")]
if isinstance(eos_token_id, list):
expected_eos_scores_before_min_length *= len(eos_token_id)
scores = self._get_uniform_logits(batch_size, vocab_size)
scores_before_min_length = new_min_dist_processor(input_ids, scores)
self.assertListEqual(
scores_before_min_length[:, eos_token_id].flatten().tolist(), expected_eos_scores_before_min_length
)
# check that, for skipping, now prompt length is 5, after that we expect first 5 tokens will be skipped
self.assertTrue(new_min_dist_processor.prompt_length_to_skip == 5)
# check that min length is applied at length 2
input_ids = ids_tensor((batch_size, 2), vocab_size=20)
scores = self._get_uniform_logits(batch_size, vocab_size)
scores_before_min_length = new_min_dist_processor(input_ids, scores)
self.assertListEqual(
scores_before_min_length[:, eos_token_id].flatten().tolist(), expected_eos_scores_before_min_length
)
# check that min new length is applied at length 6 (because it has only 1 new token)
input_ids = ids_tensor((batch_size, 6), vocab_size=20)
scores = self._get_uniform_logits(batch_size, vocab_size)
scores_before_min_length = new_min_dist_processor(input_ids, scores)
self.assertListEqual(
scores_before_min_length[:, eos_token_id].flatten().tolist(), expected_eos_scores_before_min_length
)
# check that min new length is applied at length 7 (because it has only 2 new tokens)
input_ids = ids_tensor((batch_size, 7), vocab_size=20)
scores = self._get_uniform_logits(batch_size, vocab_size)
scores_before_min_length = new_min_dist_processor(input_ids, scores)
self.assertListEqual(
scores_before_min_length[:, eos_token_id].flatten().tolist(), expected_eos_scores_before_min_length
)
# check that min new length is not applied anymore at length 8
input_ids = ids_tensor((batch_size, 8), vocab_size=20)
scores = self._get_uniform_logits(batch_size, vocab_size)
scores_before_min_length = new_min_dist_processor(input_ids, scores)
self.assertFalse(torch.isinf(scores_before_min_length).any())
# check that min new length is not applied anymore at length 15
input_ids = ids_tensor((batch_size, 15), vocab_size=20)
scores = self._get_uniform_logits(batch_size, vocab_size)
scores_before_min_length = new_min_dist_processor(input_ids, scores)
self.assertFalse(torch.isinf(scores_before_min_length).any())
def test_temperature_dist_warper(self):
input_ids = None
length = 20
scores = self._get_uniform_logits(batch_size=2, length=length)
# tweak scores to not be uniform anymore
scores[1, 5] = (1 / length) + 0.1 # peak, 1st batch
scores[1, 10] = (1 / length) - 0.4 # valley, 1st batch
# compute softmax
probs = nn.functional.softmax(scores, dim=-1)
temp_dist_warper_sharper = TemperatureLogitsWarper(temperature=0.5)
temp_dist_warper_smoother = TemperatureLogitsWarper(temperature=1.3)
warped_prob_sharp = nn.functional.softmax(temp_dist_warper_sharper(input_ids, scores.clone()), dim=-1)
warped_prob_smooth = nn.functional.softmax(temp_dist_warper_smoother(input_ids, scores.clone()), dim=-1)
# uniform distribution stays uniform
self.assertTrue(torch.allclose(probs[0, :], warped_prob_sharp[0, :], atol=1e-3))
self.assertTrue(torch.allclose(probs[0, :], warped_prob_smooth[0, :], atol=1e-3))
# sharp peaks get higher, valleys get lower
self.assertLess(probs[1, :].max(), warped_prob_sharp[1, :].max())
self.assertGreater(probs[1, :].min(), warped_prob_sharp[1, :].min())
# smooth peaks get lower, valleys get higher
self.assertGreater(probs[1, :].max(), warped_prob_smooth[1, :].max())
self.assertLess(probs[1, :].min(), warped_prob_smooth[1, :].min())
def test_repetition_penalty_dist_process(self):
input_ids = torch.tensor([[0, 1], [5, 0]], device=torch_device, dtype=torch.long)
vocab_size = 10
scores = self._get_uniform_logits(batch_size=2, length=vocab_size)
# give values special values
scores[0, 0] = -(1 / vocab_size)
scores[1, 5] = 4 / vocab_size
rep_penalty_proc = RepetitionPenaltyLogitsProcessor(penalty=2.0)
scores = rep_penalty_proc(input_ids, scores.clone())
# check that values were correctly changed
self.assertAlmostEqual(scores[0, 0].item(), -(1 / vocab_size) * 2)
self.assertAlmostEqual(scores[0, 1].item(), (1 / vocab_size) / 2)
self.assertAlmostEqual(scores[1, 0].item(), (1 / vocab_size) / 2)
self.assertAlmostEqual(scores[1, 5].item(), (4 / vocab_size) / 2)
def test_encoder_repetition_penalty_dist_process(self):
input_ids = torch.tensor([[0, 1], [5, 0]], device=torch_device, dtype=torch.long)
vocab_size = 10
scores = self._get_uniform_logits(batch_size=2, length=vocab_size)
# give values special values
scores[0, 0] = -(1 / vocab_size)
scores[1, 5] = 4 / vocab_size
rep_penalty_proc = EncoderRepetitionPenaltyLogitsProcessor(penalty=2.0, encoder_input_ids=input_ids)
scores = rep_penalty_proc(input_ids, scores.clone())
# check that values were correctly changed
self.assertAlmostEqual(scores[0, 0].item(), -(1 / vocab_size) / 2)
self.assertAlmostEqual(scores[0, 1].item(), (1 / vocab_size) * 2)
self.assertAlmostEqual(scores[1, 0].item(), (1 / vocab_size) * 2)
self.assertAlmostEqual(scores[1, 5].item(), (4 / vocab_size) * 2)
# check that values not in the encoder ids were NOT changed
self.assertAlmostEqual(scores[0, 2].item(), (1 / vocab_size))
self.assertAlmostEqual(scores[1, 2].item(), (1 / vocab_size))
def test_top_k_dist_warper(self):
input_ids = None
vocab_size = 10
batch_size = 2
# create ramp distribution
ramp_logits = (
torch.arange(vocab_size, device=torch_device, dtype=torch.float).unsqueeze(0).repeat(batch_size, 1)
)
ramp_logits[1:, : vocab_size // 2] = ramp_logits[1:, : vocab_size // 2] + vocab_size
top_k_warp = TopKLogitsWarper(3)
scores = top_k_warp(input_ids, ramp_logits)
# check that correct tokens are filtered
self.assertListEqual(torch.isinf(scores[0]).tolist(), 7 * [True] + 3 * [False])
self.assertListEqual(torch.isinf(scores[1]).tolist(), 2 * [True] + 3 * [False] + 5 * [True])
# check special cases
length = 5
logits = self._get_uniform_logits(batch_size=batch_size, length=length)
top_k_warp_safety_check = TopKLogitsWarper(top_k=1, filter_value=0.0, min_tokens_to_keep=3)
scores = top_k_warp_safety_check(input_ids, logits)
# uniform dist is not changed
self.assertListEqual((scores == 0.0).to(torch.long).sum(dim=-1).tolist(), [0, 0])
ramp_logits = torch.arange(length, device=torch_device, dtype=torch.float).unsqueeze(0).repeat(batch_size, 1)
scores = top_k_warp_safety_check(input_ids, ramp_logits)
# min_tokens overwrites k: 3 tokens are kept => 2 tokens are nullified
self.assertListEqual((scores == 0.0).to(torch.long).sum(dim=-1).tolist(), [2, 2])
def test_top_p_dist_warper(self):
input_ids = None
vocab_size = 10
batch_size = 2
# create distribution and take log (inverse to Softmax as taken in TopPLogitsWarper)
dist = torch.log(
torch.tensor([[0.3, 0.1, 0.1, 0.5], [0.15, 0.3, 0.3, 0.25]], device=torch_device, dtype=torch.float)
)
top_p_warp = TopPLogitsWarper(0.8)
filtered_dist = torch.exp(top_p_warp(input_ids, dist))
# dist should be filtered to keep min num values so that sum is >= top_p
# exp (-inf) => 0
EXPECTED_FILTERED_DIST = torch.tensor(
[[0.3, 0.0, 0.0, 0.5], [0.0, 0.3, 0.3, 0.25]], device=torch_device, dtype=torch.float
)
self.assertTrue(torch.allclose(filtered_dist, EXPECTED_FILTERED_DIST, atol=1e-3))
# check edge cases with negative and extreme logits
ramp_logits = torch.arange(vocab_size, device=torch_device, dtype=torch.float).unsqueeze(0).repeat(
batch_size, 1
) - (vocab_size // 2)
# make ramp_logits more extreme
ramp_logits[1] = ramp_logits[1] * 100.0
# make sure at least 2 tokens are kept
top_p_warp = TopPLogitsWarper(0.9, min_tokens_to_keep=2, filter_value=0.0)
filtered_dist = top_p_warp(input_ids, ramp_logits)
# first batch should keep three tokens, second batch would keep only 1, but due to `min_tokens_to_keep=2` keeps 2.
self.assertListEqual((filtered_dist != 0.0).to(torch.long).sum(dim=-1).tolist(), [3, 2])
def test_typical_dist_warper(self):
input_ids = None
vocab_size = 10
batch_size = 2
# create distribution and take log (inverse to Softmax as taken in TopPLogitsWarper)
dist = torch.log(
torch.tensor([[0.97, 0.01, 0.01, 0.01], [0.4, 0.2, 0.2, 0.2]], device=torch_device, dtype=torch.float)
)
typical_warp = TypicalLogitsWarper(0.5)
filtered_dist = torch.exp(typical_warp(input_ids, dist))
# dist should be filtered to keep min num values so that sum is >= 0.7
# exp (-inf) => 0
EXPECTED_FILTERED_DIST = torch.tensor(
[[0.97, 0.0, 0.0, 0.0], [0.0, 0.2, 0.2, 0.2]], device=torch_device, dtype=torch.float
)
self.assertTrue(torch.allclose(filtered_dist, EXPECTED_FILTERED_DIST, atol=1e-3))
# check special cases
length = 5
logits = self._get_uniform_logits(batch_size=batch_size, length=length)
typical_warp_safety_check = TypicalLogitsWarper(mass=0.5, filter_value=0.0, min_tokens_to_keep=3)
scores = typical_warp_safety_check(input_ids, logits)
# uniform dist is not changed
self.assertListEqual((scores == 0.0).to(torch.long).sum(dim=-1).tolist(), [0, 0])
# check edge cases with negative and extreme logits
ramp_logits = torch.arange(vocab_size, device=torch_device, dtype=torch.float).unsqueeze(0).repeat(
batch_size, 1
) - (vocab_size // 2)
# make ramp_logits more extreme
ramp_logits[1] = ramp_logits[1] * 100.0
# make sure at least 2 tokens are kept
typical_warp = TypicalLogitsWarper(0.7, min_tokens_to_keep=2, filter_value=0.0)
filtered_dist = typical_warp(input_ids, ramp_logits)
# first batch should keep two tokens, second batch would keep only 1, but due to `min_tokens_to_keep=2` keeps 2.
self.assertListEqual((filtered_dist != 0.0).to(torch.long).sum(dim=-1).tolist(), [2, 2])
def test_epsilon_dist_warper(self):
input_ids = None
vocab_size = 10
batch_size = 2
# create distribution and take log (inverse to Softmax as taken in TopPLogitsWarper)
dist = torch.log(
torch.tensor(
[[0.87, 0.099, 0.001, 0.03], [0.4, 0.299, 0.101, 0.2]], device=torch_device, dtype=torch.float
)
)
epsilon_warp = EpsilonLogitsWarper(0.1)
filtered_dist = torch.exp(epsilon_warp(input_ids, dist))
# dist should be filtered to only keep values with proba >= 0.1
# exp (-inf) => 0
EXPECTED_FILTERED_DIST = torch.tensor(
[[0.87, 0, 0, 0], [0.4, 0.299, 0.101, 0.2]], device=torch_device, dtype=torch.float
)
self.assertTrue(torch.allclose(filtered_dist, EXPECTED_FILTERED_DIST, atol=1e-3))
# check edge cases with negative and extreme logits
ramp_logits = torch.arange(vocab_size, device=torch_device, dtype=torch.float).unsqueeze(0).repeat(
batch_size, 1
) - (vocab_size // 2)
# make ramp_logits more extreme
ramp_logits[1] = ramp_logits[1] * 100.0
# make sure at least 2 tokens are kept
epsilon_warp = EpsilonLogitsWarper(5e-2, min_tokens_to_keep=2, filter_value=0.0)
filtered_dist = epsilon_warp(input_ids, ramp_logits)
# first batch should keep 3 tokens, second batch would keep only 1, but due to `min_tokens_to_keep=2` keeps 2.
self.assertListEqual((filtered_dist != 0.0).to(torch.long).sum(dim=-1).tolist(), [3, 2])
def test_eta_dist_warper(self):
input_ids = None
vocab_size = 10
batch_size = 2
# create distribution and take log (inverse to Softmax as taken in TopPLogitsWarper)
dist = torch.log(
torch.tensor([[0.0, 0.1, 0.8, 0.1], [0.01, 0.04, 0.9, 0.05]], device=torch_device, dtype=torch.float)
)
eta_warp = EtaLogitsWarper(0.0625)
filtered_dist = torch.exp(eta_warp(input_ids, dist))
# dist should be filtered to only keep values with proba >= min(0.0625, sqrt(0.0625) * e^-H(p))
# min(0.0625, 0.1320) is the cutoff for the first row and min(0.0625, 0.1644) is for the second
# where H is the entropy function and p is the probability vector.
# exp (-inf) => 0
EXPECTED_FILTERED_DIST = torch.tensor(
[[0.0, 0.1, 0.8, 0.1], [0.0, 0.0, 0.9, 0.0]], device=torch_device, dtype=torch.float
)
self.assertTrue(torch.allclose(filtered_dist, EXPECTED_FILTERED_DIST, atol=1e-3))
# check edge cases with negative and extreme logits
ramp_logits = torch.arange(vocab_size, device=torch_device, dtype=torch.float).unsqueeze(0).repeat(
batch_size, 1
) - (vocab_size // 2)
# make ramp_logits more extreme
ramp_logits[1] = ramp_logits[1] * 100.0
# make sure at least 2 tokens are kept
eta_warp = EtaLogitsWarper(0.1, min_tokens_to_keep=2, filter_value=0.0)
filtered_dist = eta_warp(input_ids, ramp_logits)
# first batch should keep 2 tokens, second batch would keep only 1, but due to `min_tokens_to_keep=2` keeps 2.
self.assertListEqual((filtered_dist != 0.0).to(torch.long).sum(dim=-1).tolist(), [2, 2])
def test_no_repeat_ngram_dist_processor(self):
vocab_size = 3
batch_size = 2
input_ids = torch.tensor([[1, 1, 2, 1], [0, 1, 0, 1]], device=torch_device, dtype=torch.long)
scores = self._get_uniform_logits(batch_size, vocab_size)
no_repeat_proc_2_gram = NoRepeatNGramLogitsProcessor(2)
no_repeat_proc_3_gram = NoRepeatNGramLogitsProcessor(3)
filtered_scores_2_gram = no_repeat_proc_2_gram(input_ids, scores.clone())
filtered_scores_3_gram = no_repeat_proc_3_gram(input_ids, scores.clone())
# 2-gram would forbid 2nd and 3rd token (1,2) at 1st batch and 1st token (0) at 2nd batch
self.assertListEqual(torch.isinf(filtered_scores_2_gram).tolist(), [[False, True, True], [True, False, False]])
# 3-gram would forbid no token at 1st batch and 1st token (0) at 2nd batch
self.assertListEqual(
torch.isinf(filtered_scores_3_gram).tolist(), [[False, False, False], [True, False, False]]
)
def test_encoder_no_repeat_ngram_dist_processor(self):
vocab_size = 3
num_beams = 2
batch_size = 1
encoder_input_ids = torch.tensor([1, 2, 1, 1], device=torch_device, dtype=torch.long)
input_ids = torch.tensor([[1, 2, 1], [8, 0, 2]], device=torch_device, dtype=torch.long)
scores = self._get_uniform_logits(batch_size * num_beams, vocab_size)
no_repeat_proc_2_gram = EncoderNoRepeatNGramLogitsProcessor(2, encoder_input_ids=encoder_input_ids)
no_repeat_proc_3_gram = EncoderNoRepeatNGramLogitsProcessor(3, encoder_input_ids=encoder_input_ids)
filtered_scores_2_gram = no_repeat_proc_2_gram(input_ids, scores.clone())
filtered_scores_3_gram = no_repeat_proc_3_gram(input_ids, scores.clone())
# 2-gram would forbid 1st and 2nd token at 1st beam and 1st token (0) at 2nd beam
self.assertListEqual(torch.isinf(filtered_scores_2_gram).tolist(), [[False, True, True], [False, True, False]])
# 3-gram would forbid 1st token at 1st beam and no token at 2nd beam
self.assertListEqual(
torch.isinf(filtered_scores_3_gram).tolist(), [[False, True, False], [False, False, False]]
)
# Batched input
vocab_size = 3
num_beams = 2
batch_size = 2
encoder_input_ids = torch.tensor([[1, 2, 1, 1], [0, 0, 2, 1]], device=torch_device, dtype=torch.long)
input_ids = torch.tensor([[1, 2, 1], [1, 0, 2], [0, 0, 0], [0, 2, 2]], device=torch_device, dtype=torch.long)
scores = self._get_uniform_logits(batch_size * num_beams, vocab_size)
no_repeat_proc_2_gram = EncoderNoRepeatNGramLogitsProcessor(2, encoder_input_ids=encoder_input_ids)
no_repeat_proc_3_gram = EncoderNoRepeatNGramLogitsProcessor(3, encoder_input_ids=encoder_input_ids)
filtered_scores_2_gram = no_repeat_proc_2_gram(input_ids, scores.clone())
filtered_scores_3_gram = no_repeat_proc_3_gram(input_ids, scores.clone())
# 2gram
# Batch 1
# - Beam 1: tokens (1, 2) forbidden
# - Beam 2: tokens (1) forbidden
# Batch 2
# - Beam 1: tokens (0, 2) forbidden
# - Beam 2: tokens (1) forbidden
self.assertListEqual(
torch.isinf(filtered_scores_2_gram).tolist(),
[[False, True, True], [False, True, False], [True, False, True], [False, True, False]],
)
# Batch 1
# - Beam 1: tokens (1) forbidden
# - Beam 2: tokens () forbidden
# Batch 2
# - Beam 1: tokens (2) forbidden
# - Beam 2: tokens () forbidden
self.assertListEqual(
torch.isinf(filtered_scores_3_gram).tolist(),
[[False, True, False], [False, False, False], [False, False, True], [False, False, False]],
)
def test_no_bad_words_dist_processor(self):
vocab_size = 5
batch_size = 2
eos_token_id = 4
input_ids = torch.tensor([[0, 1, 3, 1], [0, 1, 0, 1]], device=torch_device, dtype=torch.long)
bad_word_tokens = [[1], [4], [1, 0], [0, 1, 2], [1, 3, 1, 3]]
scores = self._get_uniform_logits(batch_size, vocab_size)
no_bad_words_dist_proc = NoBadWordsLogitsProcessor(bad_words_ids=bad_word_tokens, eos_token_id=eos_token_id)
filtered_scores = no_bad_words_dist_proc(input_ids, scores.clone())
# batch 1: 1st, 2nd, and 4th (0, 1, 3) token are forbidden
# batch 2: 1st, 2nd, and 3rd (0, 1, 2) token are forbidden
# Note that 5th element cannot be forbidden as it is EOS token
self.assertListEqual(
torch.isinf(filtered_scores).tolist(), [[True, True, False, True, False], [True, True, True, False, False]]
)
# check edge case
no_bad_words_dist_proc = NoBadWordsLogitsProcessor(bad_words_ids=[[4]], eos_token_id=eos_token_id)
filtered_scores = no_bad_words_dist_proc(input_ids, scores.clone())
self.assertTrue(torch.allclose(scores, filtered_scores, atol=1e-3))
def test_processor_list(self):
batch_size = 4
sequence_length = 10
vocab_size = 15
eos_token_id = 0
# dummy input_ids and scores
input_ids = ids_tensor((batch_size, sequence_length), vocab_size)
input_ids_comp = input_ids.clone()
scores = self._get_uniform_logits(batch_size, vocab_size)
scores_comp = scores.clone()
# instantiate all dist processors
min_dist_proc = MinLengthLogitsProcessor(min_length=10, eos_token_id=eos_token_id)
temp_dist_warp = TemperatureLogitsWarper(temperature=0.5)
rep_penalty_proc = RepetitionPenaltyLogitsProcessor(penalty=2.0)
top_k_warp = TopKLogitsWarper(3)
top_p_warp = TopPLogitsWarper(0.8)
no_repeat_proc = NoRepeatNGramLogitsProcessor(2)
no_bad_words_dist_proc = NoBadWordsLogitsProcessor(bad_words_ids=[[1]], eos_token_id=eos_token_id)
# no processor list
scores = min_dist_proc(input_ids, scores)
scores = temp_dist_warp(input_ids, scores)
scores = rep_penalty_proc(input_ids, scores)
scores = top_k_warp(input_ids, scores)
scores = top_p_warp(input_ids, scores)
scores = no_repeat_proc(input_ids, scores)
scores = no_bad_words_dist_proc(input_ids, scores)
# with processor list
processor = LogitsProcessorList(
[
min_dist_proc,
temp_dist_warp,
rep_penalty_proc,
top_k_warp,
top_p_warp,
no_repeat_proc,
no_bad_words_dist_proc,
]
)
scores_comp = processor(input_ids, scores_comp)
# scores should be equal
self.assertTrue(torch.allclose(scores, scores_comp, atol=1e-3))
# input_ids should never be changed
self.assertListEqual(input_ids.tolist(), input_ids_comp.tolist())
def test_prefix_constrained_logits_processor(self):
vocab_size = 5
batch_size = 2
input_ids = torch.tensor([[0, 1, 3, 1], [0, 1, 0, 1]], device=torch_device, dtype=torch.long)
scores = self._get_uniform_logits(batch_size, vocab_size)
def prefix_allowed_tokens_fn(batch_id, inputs_ids):
return [[0, 1], [2, 3]][batch_id]
prefix_constrained_logits_proc = PrefixConstrainedLogitsProcessor(prefix_allowed_tokens_fn, 1)
filtered_scores = prefix_constrained_logits_proc(input_ids, scores.clone())
# batch 1: 1st, 2nd (0, 1) token are allowed
# batch 2: 3rd, 4th (2, 3) token are allowed
self.assertListEqual(
torch.isinf(filtered_scores).tolist(), [[False, False, True, True, True], [True, True, False, False, True]]
)
def test_hamming_diversity(self):
vocab_size = 4
num_beams = 2
num_beam_groups = 2
scores = self._get_uniform_logits(num_beams, vocab_size)
# batch_idx = 0 -> index batch_idx * num_beam_groups -> idx = 0 * 2 = 0 -> penalises tokens 1
# batch_idx = 1 -> index batch_idx * num_beam_groups -> idx = 1 * 2 = 2 -> penalises tokens 1
current_tokens = torch.tensor([0, 3, 1, 2], device=torch_device, dtype=torch.long)
diversity_logits_processor = HammingDiversityLogitsProcessor(
diversity_penalty=1.0, num_beams=num_beams, num_beam_groups=num_beam_groups
)
processed_scores = diversity_logits_processor(None, scores, current_tokens, 1)
self.assertTrue(
torch.allclose(
processed_scores[0], torch.tensor([-0.7500, 0.2500, 0.2500, 0.2500], device=torch_device), atol=1e-3
)
)
self.assertTrue(
torch.allclose(
processed_scores[1], torch.tensor([0.2500, -0.7500, 0.2500, 0.2500], device=torch_device), atol=1e-3
)
)
def test_forced_bos_token_logits_processor(self):
vocab_size = 20
batch_size = 4
bos_token_id = 0
logits_processor = ForcedBOSTokenLogitsProcessor(bos_token_id=bos_token_id)
# check that all scores are -inf except the bos_token_id score
input_ids = ids_tensor((batch_size, 1), vocab_size=20)
scores = self._get_uniform_logits(batch_size, vocab_size)
scores = logits_processor(input_ids, scores)
self.assertTrue(torch.isneginf(scores[:, bos_token_id + 1 :]).all())
self.assertListEqual(scores[:, bos_token_id].tolist(), 4 * [0]) # score for bos_token_id shold be zero
# check that bos_token_id is not forced if current length is greater than 1
input_ids = ids_tensor((batch_size, 4), vocab_size=20)
scores = self._get_uniform_logits(batch_size, vocab_size)
scores = logits_processor(input_ids, scores)
self.assertFalse(torch.isinf(scores).any())
def test_forced_eos_token_logits_processor(self):
vocab_size = 20
batch_size = 4
eos_token_id = 0
max_length = 5
logits_processor = ForcedEOSTokenLogitsProcessor(max_length=max_length, eos_token_id=eos_token_id)
# check that all scores are -inf except the eos_token_id when max_length-1 is reached
input_ids = ids_tensor((batch_size, 4), vocab_size=20)
scores = self._get_uniform_logits(batch_size, vocab_size)
scores = logits_processor(input_ids, scores)
self.assertTrue(torch.isneginf(scores[:, eos_token_id + 1 :]).all())
self.assertListEqual(scores[:, eos_token_id].tolist(), 4 * [0]) # score for eos_token_id should be zero
# check that eos_token_id is not forced if max_length-1 is not reached
input_ids = ids_tensor((batch_size, 3), vocab_size=20)
scores = self._get_uniform_logits(batch_size, vocab_size)
scores = logits_processor(input_ids, scores)
self.assertFalse(torch.isinf(scores).any())
def test_remove_nan_inf_logits_processor(self):
scores = torch.tensor(
[[0.0, 0.7, 0.8, float("nan")], [0.1, float("inf"), 0.3, float("-inf")]], device=torch_device
)
input_ids = ids_tensor((2, 4), vocab_size=20)
logits_processor = InfNanRemoveLogitsProcessor()
scores = logits_processor(input_ids, scores)
self.assertTrue(
torch.allclose(
scores,
torch.tensor(
[[0.0, 0.7, 0.8, 0.0], [0.1, torch.finfo(scores.dtype).max, 0.3, float("-inf")]],
device=torch_device,
),
atol=1e-6,
)
)
def test_exponential_decay_length_penalty(self):
vocab_size = 20
batch_size = 4
eos_token_id = 0
penalty_start = 5
penalty_factor = 1.1
input_ids = ids_tensor((batch_size, 2), vocab_size=vocab_size)
input_ids_seq_length = input_ids.shape[-1]
length_decay_processor = ExponentialDecayLengthPenalty(
exponential_decay_length_penalty=(penalty_start, penalty_factor),
eos_token_id=eos_token_id,
input_ids_seq_length=input_ids_seq_length,
)
# check that penalty is not applied before start
scores = self._get_uniform_logits(batch_size, vocab_size)
scores_before_start = length_decay_processor(input_ids, scores)
self.assertListEqual(scores_before_start[:, eos_token_id].tolist(), scores[:, eos_token_id].tolist())
# check that penalty is applied after start
input_ids = ids_tensor((batch_size, 20), vocab_size=vocab_size)
scores = self._get_uniform_logits(batch_size, vocab_size)
scores_after_start = length_decay_processor(input_ids, scores)
self.assertTrue(
torch.gt(
scores_after_start[penalty_start + 1 :, eos_token_id], scores[penalty_start + 1 :, eos_token_id]
).all()
)
def test_normalization(self):
input_ids = None
scores = torch.tensor(
[[-23.18, -29.96, -43.54, 47.77], [-33.58, -26.87, -32.96, 22.51]], device=torch_device, dtype=torch.float
)
logit_normalization = LogitNormalization()
normalized_scores = logit_normalization(input_ids, scores).exp()
ones = torch.ones(scores.shape[0], device=torch_device, dtype=torch.float)
self.assertTrue(normalized_scores.sum(dim=-1).allclose(ones))
self.assertTrue(normalized_scores.allclose(scores.softmax(dim=-1)))