hf_text-generation-inference/server/tests/models/test_seq2seq_lm.py

365 lines
13 KiB
Python

import pytest
import torch
from copy import copy
from transformers import AutoTokenizer
from text_generation_server.pb import generate_pb2
from text_generation_server.models.seq2seq_lm import Seq2SeqLM, Seq2SeqLMBatch
@pytest.fixture(scope="session")
def mt0_small_tokenizer():
tokenizer = AutoTokenizer.from_pretrained(
"bigscience/mt0-small", padding_side="left"
)
tokenizer.bos_token_id = 0
return tokenizer
@pytest.fixture(scope="session")
def default_seq2seq_lm():
return Seq2SeqLM("bigscience/mt0-small")
@pytest.fixture
def default_pb_request(default_pb_parameters, default_pb_stop_parameters):
return generate_pb2.Request(
id=0,
inputs="Test",
prefill_logprobs=True,
truncate=100,
parameters=default_pb_parameters,
stopping_parameters=default_pb_stop_parameters,
)
@pytest.fixture
def default_pb_batch(default_pb_request):
return generate_pb2.Batch(id=0, requests=[default_pb_request], size=1)
@pytest.fixture
def default_seq2seq_lm_batch(default_pb_batch, mt0_small_tokenizer):
return Seq2SeqLMBatch.from_pb(
default_pb_batch, mt0_small_tokenizer, torch.float32, torch.device("cpu")
)
@pytest.fixture
def default_multi_requests_seq2seq_lm_batch(default_pb_request, mt0_small_tokenizer):
req_0 = copy(default_pb_request)
req_0.id = 1
req_1 = default_pb_request
req_1.id = 2
req_1.stopping_parameters.max_new_tokens = 5
batch_pb = generate_pb2.Batch(id=0, requests=[req_0, req_1], size=2)
return Seq2SeqLMBatch.from_pb(
batch_pb, mt0_small_tokenizer, torch.float32, torch.device("cpu")
)
def test_batch_from_pb(default_pb_batch, default_seq2seq_lm_batch):
batch = default_seq2seq_lm_batch
sequence_length = len(default_seq2seq_lm_batch.input_ids[0])
assert batch.batch_id == default_pb_batch.id
assert batch.requests == default_pb_batch.requests
assert batch.input_ids.shape == (default_pb_batch.size, sequence_length)
assert batch.input_ids[0][-2] == 4268
assert batch.input_ids[0][-1] == 1
assert torch.all(batch.input_ids[0][:-2] == 0)
assert torch.all(batch.attention_mask[0][-2:] == 1)
assert torch.all(batch.attention_mask[0][:-2] == 0)
assert len(batch.decoder_input_ids) == default_pb_batch.size
assert batch.decoder_attention_mask is None
assert batch.encoder_last_hidden_state is None
assert batch.past_key_values is None
assert batch.input_lengths == [2]
assert batch.decoder_input_lengths == [1]
assert len(batch) == default_pb_batch.size
assert len(batch.next_token_choosers) == len(batch.stopping_criterias) == len(batch)
assert batch.max_input_length == batch.input_lengths[0]
assert batch.max_decoder_input_length == batch.decoder_input_lengths[0]
def test_batch_concatenate_no_prefill(default_seq2seq_lm_batch):
with pytest.raises(ValueError):
Seq2SeqLMBatch.concatenate([default_seq2seq_lm_batch, default_seq2seq_lm_batch])
def test_seq2seq_lm_batch_type(default_seq2seq_lm):
assert default_seq2seq_lm.batch_type == Seq2SeqLMBatch
def test_seq2seq_lm_generate_token(default_seq2seq_lm, default_seq2seq_lm_batch):
sequence_length = len(default_seq2seq_lm_batch.input_ids[0])
generations, next_batch, _ = default_seq2seq_lm.generate_token(
default_seq2seq_lm_batch
)
assert len(generations) == len(next_batch)
assert isinstance(next_batch, Seq2SeqLMBatch)
assert next_batch.input_ids is None
assert torch.equal(
next_batch.attention_mask, default_seq2seq_lm_batch.attention_mask
)
assert next_batch.input_lengths == default_seq2seq_lm_batch.input_lengths
assert next_batch.max_input_length == default_seq2seq_lm_batch.max_input_length
assert (
next_batch.next_token_choosers == default_seq2seq_lm_batch.next_token_choosers
)
assert next_batch.stopping_criterias == default_seq2seq_lm_batch.stopping_criterias
assert len(next_batch.decoder_input_ids) == len(next_batch)
assert next_batch.all_decoder_input_ids[0][0] == 0
assert next_batch.all_decoder_input_ids[0][1] == 259
assert next_batch.decoder_attention_mask is None
assert next_batch.encoder_last_hidden_state.shape == (1, sequence_length, 512)
assert next_batch.decoder_input_lengths == [2]
assert next_batch.max_decoder_input_length == 2
assert next_batch.past_key_values is not None
assert all(
[p[0].shape == (len(next_batch), 6, 1, 64) for p in next_batch.past_key_values]
)
assert all(
[p[1].shape == (len(next_batch), 6, 1, 64) for p in next_batch.past_key_values]
)
assert all(
[
p[2].shape == (len(next_batch), 6, sequence_length, 64)
for p in next_batch.past_key_values
]
)
assert all(
[
p[3].shape == (len(next_batch), 6, sequence_length, 64)
for p in next_batch.past_key_values
]
)
assert all([generation.generated_text is None for generation in generations])
assert all([len(generation.prefill_tokens) == 1 for generation in generations])
assert all(
[
token_id.item() == 259
for generation in generations
for token_id in generation.tokens.token_ids
]
)
assert all(
[
token_text == " "
for generation in generations
for token_text in generation.tokens.texts
]
)
assert generations[0].request_id == 0
def test_seq2seq_lm_generate_token_completion(
default_seq2seq_lm, default_seq2seq_lm_batch
):
next_batch = default_seq2seq_lm_batch
for _ in range(6):
generations, next_batch, _ = default_seq2seq_lm.generate_token(next_batch)
assert len(generations) == len(next_batch)
generations, next_batch, _ = default_seq2seq_lm.generate_token(next_batch)
assert next_batch is None
assert len(generations) == 1
assert generations[0].generated_text.text == "a few weeks"
assert generations[0].request_id == default_seq2seq_lm_batch.requests[0].id
assert generations[0].generated_text.generated_tokens == 7
def test_seq2seq_lm_generate_token_completion_multi(
default_seq2seq_lm, default_multi_requests_seq2seq_lm_batch
):
next_batch = default_multi_requests_seq2seq_lm_batch
for i in range(4):
generations, next_batch, _ = default_seq2seq_lm.generate_token(next_batch)
assert len(generations) == len(next_batch)
generations, next_batch, _ = default_seq2seq_lm.generate_token(next_batch)
assert next_batch is not None
assert len(generations) == 2
assert generations[1].generated_text.text == "a few "
assert (
generations[1].request_id
== default_multi_requests_seq2seq_lm_batch.requests[1].id
)
assert generations[1].generated_text.generated_tokens == 5
next_batch = next_batch.filter([next_batch.requests[0].id])
generations, next_batch, _ = default_seq2seq_lm.generate_token(next_batch)
assert len(generations) == len(next_batch)
generations, next_batch, _ = default_seq2seq_lm.generate_token(next_batch)
assert next_batch is None
assert len(generations) == 1
assert generations[0].generated_text.text == "a few weeks"
assert (
generations[0].request_id
== default_multi_requests_seq2seq_lm_batch.requests[0].id
)
assert generations[0].generated_text.generated_tokens == 7
def test_batch_concatenate(
default_seq2seq_lm,
default_seq2seq_lm_batch,
default_multi_requests_seq2seq_lm_batch,
):
next_batch_0 = default_seq2seq_lm_batch
_, next_batch_0, _ = default_seq2seq_lm.generate_token(next_batch_0)
_, next_batch_0, _ = default_seq2seq_lm.generate_token(next_batch_0)
next_batch_1 = default_multi_requests_seq2seq_lm_batch
_, next_batch_1, _ = default_seq2seq_lm.generate_token(next_batch_1)
# Copy hidden state because it is removed from the concatenated branches
next_batch_0_encoder_last_hidden_state = next_batch_0.encoder_last_hidden_state
next_batch_1_encoder_last_hidden_state = next_batch_1.encoder_last_hidden_state
# Clone past_key_values before concatenating to compare after,
# because they are removed from the concatenated batches
next_batch_0_past_key_values = [
[t.clone() for t in layer] for layer in next_batch_0.past_key_values
]
next_batch_1_past_key_values = [
[t.clone() for t in layer] for layer in next_batch_1.past_key_values
]
next_batch = Seq2SeqLMBatch.concatenate([next_batch_0, next_batch_1])
assert next_batch.batch_id == 0
assert torch.equal(
next_batch.decoder_input_ids[0], next_batch_0.decoder_input_ids[0]
)
assert next_batch.all_decoder_input_ids[1][0] == 0
assert next_batch.all_decoder_input_ids[2][0] == 0
assert torch.equal(
next_batch.decoder_input_ids[1:, -2:], next_batch_1.decoder_input_ids
)
assert torch.all(next_batch.decoder_attention_mask[0, :3] == 1)
assert torch.all(next_batch.decoder_attention_mask[0, 3:] == 0)
assert torch.all(next_batch.decoder_attention_mask[1:, 0] == 0)
assert torch.all(next_batch.decoder_attention_mask[1:, 1:3] == 1)
assert torch.equal(
next_batch.encoder_last_hidden_state[0],
next_batch_0_encoder_last_hidden_state[0, -2:],
)
assert torch.equal(
next_batch.encoder_last_hidden_state[1:],
next_batch_1_encoder_last_hidden_state[:, -2:],
)
assert next_batch.input_lengths == [2, 2, 2]
assert next_batch.decoder_input_lengths == [3, 2, 2]
assert next_batch.max_input_length == 2
assert next_batch.max_decoder_input_length == 3
assert next_batch.requests[0] == next_batch_0.requests[0]
assert next_batch.requests[1:] == next_batch_1.requests
assert next_batch.next_token_choosers[0] == next_batch_0.next_token_choosers[0]
assert next_batch.next_token_choosers[1:] == next_batch_1.next_token_choosers
assert next_batch.stopping_criterias[0] == next_batch_0.stopping_criterias[0]
assert next_batch.stopping_criterias[1:] == next_batch_1.stopping_criterias
assert next_batch.past_key_values is not None
assert all(
[p[0].shape == (len(next_batch), 6, 2, 64) for p in next_batch.past_key_values]
)
assert all(
[p[1].shape == (len(next_batch), 6, 2, 64) for p in next_batch.past_key_values]
)
assert all(
[p[2].shape == (len(next_batch), 6, 2, 64) for p in next_batch.past_key_values]
)
assert all(
[p[3].shape == (len(next_batch), 6, 2, 64) for p in next_batch.past_key_values]
)
for i, past in enumerate(next_batch.past_key_values):
assert torch.equal(next_batch_0_past_key_values[i][0][0, :, -2:, :], past[0][0])
assert torch.equal(
next_batch_1_past_key_values[i][0][:, :, -1:, :], past[0][1:, :, -1:, :]
)
assert torch.equal(next_batch_0_past_key_values[i][1][0, :, -2:, :], past[1][0])
assert torch.equal(
next_batch_1_past_key_values[i][1][:, :, -1:, :], past[1][1:, :, -1:, :]
)
assert torch.equal(next_batch_0_past_key_values[i][2][0, :, -2:, :], past[2][0])
assert torch.equal(
next_batch_1_past_key_values[i][2][:, :, -2:, :], past[2][1:]
)
assert torch.equal(next_batch_0_past_key_values[i][3][0, :, -2:, :], past[3][0])
assert torch.equal(
next_batch_1_past_key_values[i][3][:, :, -2:, :], past[3][1:]
)
for _ in range(3):
generations, next_batch, _ = default_seq2seq_lm.generate_token(next_batch)
assert len(generations) == len(next_batch)
generations, next_batch, _ = default_seq2seq_lm.generate_token(next_batch)
assert next_batch is not None
assert len(generations) == 3
assert generations[2].generated_text.text == "a few "
assert (
generations[2].request_id
== default_multi_requests_seq2seq_lm_batch.requests[1].id
)
assert generations[2].generated_text.generated_tokens == 5
next_batch = next_batch.filter(
[next_batch.requests[0].id, next_batch.requests[1].id]
)
generations, next_batch, _ = default_seq2seq_lm.generate_token(next_batch)
assert next_batch is not None
assert len(generations) == 2
assert generations[0].generated_text.text == "a few weeks"
assert generations[0].request_id == default_seq2seq_lm_batch.requests[0].id
assert generations[0].generated_text.generated_tokens == 7
next_batch = next_batch.filter([next_batch.requests[1].id])
generations, next_batch, _ = default_seq2seq_lm.generate_token(next_batch)
assert next_batch is None
assert len(generations) == 1
assert generations[0].generated_text.text == "a few weeks"
assert (
generations[0].request_id
== default_multi_requests_seq2seq_lm_batch.requests[0].id
)
assert generations[0].generated_text.generated_tokens == 7