haystack/test/modeling/test_modeling_processor.py
Sara Zan ff4303c51b
[CI refactoring] Categorize tests into folders (#2554)
* Categorize tests into folders

* Fix linux_ci.yml and an import

* Wrong path
2022-05-17 09:55:53 +01:00

307 lines
12 KiB
Python

import logging
from pathlib import Path
from transformers import AutoTokenizer
from haystack.modeling.data_handler.processor import SquadProcessor
from haystack.modeling.model.tokenization import Tokenizer
from ..conftest import SAMPLES_PATH
# during inference (parameter return_baskets = False) we do not convert labels
def test_dataset_from_dicts_qa_inference(caplog=None):
if caplog:
caplog.set_level(logging.CRITICAL)
models = [
"deepset/roberta-base-squad2",
"deepset/bert-base-cased-squad2",
"deepset/xlm-roberta-large-squad2",
"deepset/minilm-uncased-squad2",
"deepset/electra-base-squad2",
]
sample_types = ["answer-wrong", "answer-offset-wrong", "noanswer", "vanilla"]
for model in models:
tokenizer = Tokenizer.load(pretrained_model_name_or_path=model, use_fast=True)
processor = SquadProcessor(tokenizer, max_seq_len=256, data_dir=None)
for sample_type in sample_types:
dicts = processor.file_to_dicts(SAMPLES_PATH / "qa" / f"{sample_type}.json")
dataset, tensor_names, problematic_sample_ids, baskets = processor.dataset_from_dicts(
dicts, indices=[1], return_baskets=True
)
assert tensor_names == [
"input_ids",
"padding_mask",
"segment_ids",
"passage_start_t",
"start_of_word",
"labels",
"id",
"seq_2_start_t",
"span_mask",
], f"Processing for {model} has changed."
assert len(problematic_sample_ids) == 0, f"Processing for {model} has changed."
assert baskets[0].id_external == "5ad3d560604f3c001a3ff2c8", f"Processing for {model} has changed."
assert baskets[0].id_internal == "1-0", f"Processing for {model} has changed."
# roberta
if model == "deepset/roberta-base-squad2":
assert (
len(baskets[0].samples[0].tokenized["passage_tokens"]) == 6
), f"Processing for {model} has changed."
assert (
len(baskets[0].samples[0].tokenized["question_tokens"]) == 7
), f"Processing for {model} has changed."
if sample_type == "noanswer":
assert baskets[0].samples[0].features[0]["input_ids"][:13] == [
0,
6179,
171,
82,
697,
11,
2201,
116,
2,
2,
26795,
2614,
34,
], f"Processing for {model} and {sample_type}-testsample has changed."
else:
assert baskets[0].samples[0].features[0]["input_ids"][:13] == [
0,
6179,
171,
82,
697,
11,
5459,
116,
2,
2,
26795,
2614,
34,
], f"Processing for {model} and {sample_type}-testsample has changed."
# bert
if model == "deepset/bert-base-cased-squad2":
assert (
len(baskets[0].samples[0].tokenized["passage_tokens"]) == 5
), f"Processing for {model} has changed."
assert (
len(baskets[0].samples[0].tokenized["question_tokens"]) == 7
), f"Processing for {model} has changed."
if sample_type == "noanswer":
assert baskets[0].samples[0].features[0]["input_ids"][:10] == [
101,
1731,
1242,
1234,
1686,
1107,
2123,
136,
102,
3206,
], f"Processing for {model} and {sample_type}-testsample has changed."
else:
assert baskets[0].samples[0].features[0]["input_ids"][:10] == [
101,
1731,
1242,
1234,
1686,
1107,
3206,
136,
102,
3206,
], f"Processing for {model} and {sample_type}-testsample has changed."
# xlm-roberta
if model == "deepset/xlm-roberta-large-squad2":
assert (
len(baskets[0].samples[0].tokenized["passage_tokens"]) == 7
), f"Processing for {model} has changed."
assert (
len(baskets[0].samples[0].tokenized["question_tokens"]) == 7
), f"Processing for {model} has changed."
if sample_type == "noanswer":
assert baskets[0].samples[0].features[0]["input_ids"][:12] == [
0,
11249,
5941,
3395,
6867,
23,
7270,
32,
2,
2,
10271,
1556,
], f"Processing for {model} and {sample_type}-testsample has changed."
else:
assert baskets[0].samples[0].features[0]["input_ids"][:12] == [
0,
11249,
5941,
3395,
6867,
23,
10271,
32,
2,
2,
10271,
1556,
], f"Processing for {model} and {sample_type}-testsample has changed."
# minilm and electra have same vocab + tokenizer
if model == "deepset/minilm-uncased-squad2" or model == "deepset/electra-base-squad2":
assert (
len(baskets[0].samples[0].tokenized["passage_tokens"]) == 5
), f"Processing for {model} has changed."
assert (
len(baskets[0].samples[0].tokenized["question_tokens"]) == 7
), f"Processing for {model} has changed."
if sample_type == "noanswer":
assert baskets[0].samples[0].features[0]["input_ids"][:10] == [
101,
2129,
2116,
2111,
2444,
1999,
3000,
1029,
102,
4068,
], f"Processing for {model} and {sample_type}-testsample has changed."
else:
assert baskets[0].samples[0].features[0]["input_ids"][:10] == [
101,
2129,
2116,
2111,
2444,
1999,
4068,
1029,
102,
4068,
], f"Processing for {model} and {sample_type}-testsample has changed."
def test_batch_encoding_flatten_rename():
from haystack.modeling.data_handler.dataset import flatten_rename
tokenizer = AutoTokenizer.from_pretrained("bert-base-uncased")
batch_sentences = ["Hello I'm a single sentence", "And another sentence", "And the very very last one"]
encoded_inputs = tokenizer(batch_sentences, padding=True, truncation=True)
keys = ["input_ids", "token_type_ids", "attention_mask"]
rename_keys = ["input_ids", "segment_ids", "padding_mask"]
features_flat = flatten_rename(encoded_inputs, keys, rename_keys)
assert len(features_flat) == 3, "should have three elements in the feature dict list"
for e in features_flat:
for k in rename_keys:
assert k in e, f"feature dict list item {e} in a list should have a key {k}"
# rename no keys/rename keys
features_flat = flatten_rename(encoded_inputs)
assert len(features_flat) == 3, "should have three elements in the feature dict list"
for e in features_flat:
for k in keys:
assert k in e, f"feature dict list item {e} in a list should have a key {k}"
# empty input keys
flatten_rename(encoded_inputs, [])
# empty keys and rename keys
flatten_rename(encoded_inputs, [], [])
# no encoding_batch provided
flatten_rename(None, [], [])
# keys and renamed_keys have different sizes
try:
flatten_rename(encoded_inputs, [], ["blah"])
except AssertionError:
pass
def test_dataset_from_dicts_qa_labelconversion(caplog=None):
if caplog:
caplog.set_level(logging.CRITICAL)
models = [
"deepset/roberta-base-squad2",
"deepset/bert-base-cased-squad2",
"deepset/xlm-roberta-large-squad2",
"deepset/minilm-uncased-squad2",
"deepset/electra-base-squad2",
]
sample_types = ["answer-wrong", "answer-offset-wrong", "noanswer", "vanilla"]
for model in models:
tokenizer = Tokenizer.load(pretrained_model_name_or_path=model, use_fast=True)
processor = SquadProcessor(tokenizer, max_seq_len=256, data_dir=None)
for sample_type in sample_types:
dicts = processor.file_to_dicts(SAMPLES_PATH / "qa" / f"{sample_type}.json")
dataset, tensor_names, problematic_sample_ids = processor.dataset_from_dicts(
dicts, indices=[1], return_baskets=False
)
if sample_type == "answer-wrong" or sample_type == "answer-offset-wrong":
assert len(problematic_sample_ids) == 1, f"Processing labels for {model} has changed."
if sample_type == "noanswer":
assert list(dataset.tensors[tensor_names.index("labels")].numpy()[0, 0, :]) == [
0,
0,
], f"Processing labels for {model} has changed."
assert list(dataset.tensors[tensor_names.index("labels")].numpy()[0, 1, :]) == [
-1,
-1,
], f"Processing labels for {model} has changed."
if sample_type == "vanilla":
# roberta
if model == "deepset/roberta-base-squad2":
assert list(dataset.tensors[tensor_names.index("labels")].numpy()[0, 0, :]) == [
13,
13,
], f"Processing labels for {model} has changed."
assert list(dataset.tensors[tensor_names.index("labels")].numpy()[0, 1, :]) == [
13,
14,
], f"Processing labels for {model} has changed."
# bert, minilm, electra
if (
model == "deepset/bert-base-cased-squad2"
or model == "deepset/minilm-uncased-squad2"
or model == "deepset/electra-base-squad2"
):
assert list(dataset.tensors[tensor_names.index("labels")].numpy()[0, 0, :]) == [
11,
11,
], f"Processing labels for {model} has changed."
# xlm-roberta
if model == "deepset/xlm-roberta-large-squad2":
assert list(dataset.tensors[tensor_names.index("labels")].numpy()[0, 0, :]) == [
12,
12,
], f"Processing labels for {model} has changed."
if __name__ == "__main__":
test_dataset_from_dicts_qa_labelconversion()