test_gritlm.py 7.71 KB
Newer Older
1
# SPDX-License-Identifier: Apache-2.0
2
# SPDX-FileCopyrightText: Copyright contributors to the vLLM project
3
from __future__ import annotations
4

5
6
7
8
9
10
11
import importlib.util
from array import array

import openai
import pytest
from scipy.spatial.distance import cosine

12
13
from vllm import LLM, SamplingParams
from vllm.config import ModelConfig
14
15
16
17

from ....utils import RemoteOpenAIServer

# GritLM embedding implementation is only supported by XFormers backend.
18
19
pytestmark = pytest.mark.skipif(not importlib.util.find_spec("xformers"),
                                reason="GritLM requires XFormers")
20
21
22
23
24
25
26
27
28
29
30
31

MODEL_NAME = "parasail-ai/GritLM-7B-vllm"
MAX_MODEL_LEN = 4000


def _arr(arr):
    """
    Convert a list of integers to an array of integers.
    """
    return array("i", arr)


32
33
def test_find_array():
    from vllm.model_executor.models.gritlm import GritLMPooler
34

35
36
37
38
39
40
41
42
43
44
    model_config = ModelConfig(
        MODEL_NAME,
        task="embed",
        tokenizer=MODEL_NAME,
        tokenizer_mode="auto",
        trust_remote_code=False,
        dtype="bfloat16",
        seed=0,
    )
    pooler = GritLMPooler(model_config=model_config)
45

46
    arr = _arr([0, 1, 2, 3, 4, 5, 6, 7, 8, 9])
47

48
49
50
51
    assert pooler._find_array(arr, _arr([3, 4, 5]), start_idx=0) == 3
    assert pooler._find_array(arr, _arr([3, 4, 5]), start_idx=1) == 3
    assert pooler._find_array(arr, _arr([3, 4, 5]), start_idx=5) == -1
    assert pooler._find_array(arr, _arr([3, 5]), start_idx=0) == -1
52

53
54
    with pytest.raises(ValueError):
        pooler._find_array(arr, _arr([3, 4, 5]), start_idx=-1)
55
56


57
def run_llm_encode(
58
    llm: LLM,
59
60
    queries: list[str],
    instruction: str,
61
62
) -> list[list[float]]:
    outputs = llm.embed([instruction + q for q in queries])
63
64
65
    return [output.outputs.embedding for output in outputs]


66
async def run_client_embeddings(
67
    client: openai.AsyncOpenAI,
68
69
    queries: list[str],
    instruction: str,
70
) -> list[list[float]]:
71
72
73
74
75
76
77
78
79
80
81
82
83
84
85
86
87
88
    outputs = await client.embeddings.create(
        model=MODEL_NAME,
        input=[instruction + q for q in queries],
    )
    return [data.embedding for data in outputs.data]


def gritlm_instruction(instruction):
    return ("<|user|>\n" + instruction +
            "\n<|embed|>\n" if instruction else "<|embed|>\n")


def get_test_data():
    """
    Grabbed this test data and the expected values from
    README.md in https://github.com/ContextualAI/gritlm
    """
    q_instruction = gritlm_instruction(
89
        "Given a scientific paper title, retrieve the paper's abstract", )
90
91
92
93
94
95
96
97
98
99
100
101
102
103
104
    queries = [
        "Bitcoin: A Peer-to-Peer Electronic Cash System",
        "Generative Representational Instruction Tuning",
    ]

    d_instruction = gritlm_instruction("")
    documents = [
        # ruff: noqa: E501
        "A purely peer-to-peer version of electronic cash would allow online payments to be sent directly from one party to another without going through a financial institution. Digital signatures provide part of the solution, but the main benefits are lost if a trusted third party is still required to prevent double-spending. We propose a solution to the double-spending problem using a peer-to-peer network. The network timestamps transactions by hashing them into an ongoing chain of hash-based proof-of-work, forming a record that cannot be changed without redoing the proof-of-work. The longest chain not only serves as proof of the sequence of events witnessed, but proof that it came from the largest pool of CPU power. As long as a majority of CPU power is controlled by nodes that are not cooperating to attack the network, they'll generate the longest chain and outpace attackers. The network itself requires minimal structure. Messages are broadcast on a best effort basis, and nodes can leave and rejoin the network at will, accepting the longest proof-of-work chain as proof of what happened while they were gone.",
        "All text-based language problems can be reduced to either generation or embedding. Current models only perform well at one or the other. We introduce generative representational instruction tuning (GRIT) whereby a large language model is trained to handle both generative and embedding tasks by distinguishing between them through instructions. Compared to other open models, our resulting GritLM 7B sets a new state of the art on the Massive Text Embedding Benchmark (MTEB) and outperforms all models up to its size on a range of generative tasks. By scaling up further, GritLM 8X7B outperforms all open generative language models that we tried while still being among the best embedding models. Notably, we find that GRIT matches training on only generative or embedding data, thus we can unify both at no performance loss. Among other benefits, the unification via GRIT speeds up Retrieval-Augmented Generation (RAG) by > 60% for long documents, by no longer requiring separate retrieval and generation models. Models, code, etc. are freely available at https://github.com/ContextualAI/gritlm.",
    ]

    return queries, q_instruction, documents, d_instruction


105
def validate_embed_output(q_rep: list[list[float]], d_rep: list[list[float]]):
106
    cosine_sim_q0_d0 = 1 - cosine(q_rep[0], d_rep[0])
107
    assert cosine_sim_q0_d0 == pytest.approx(0.609, abs=0.001)
108
109

    cosine_sim_q0_d1 = 1 - cosine(q_rep[0], d_rep[1])
110
    assert cosine_sim_q0_d1 == pytest.approx(0.101, abs=0.001)
111
112

    cosine_sim_q1_d0 = 1 - cosine(q_rep[1], d_rep[0])
113
    assert cosine_sim_q1_d0 == pytest.approx(0.120, abs=0.001)
114
115

    cosine_sim_q1_d1 = 1 - cosine(q_rep[1], d_rep[1])
116
    assert cosine_sim_q1_d1 == pytest.approx(0.534, abs=0.001)
117
118


119
120
def test_gritlm_offline_embedding(vllm_runner):
    queries, q_instruction, documents, d_instruction = get_test_data()
121

122
123
124
125
126
127
    with vllm_runner(
            MODEL_NAME,
            task="embed",
            max_model_len=MAX_MODEL_LEN,
    ) as vllm_model:
        llm = vllm_model.model
128

129
130
131
132
133
134
135
136
137
138
        d_rep = run_llm_encode(
            llm,
            documents,
            d_instruction,
        )
        q_rep = run_llm_encode(
            llm,
            queries,
            q_instruction,
        )
139

140
    validate_embed_output(q_rep, d_rep)
141
142
143
144
145
146
147
148


@pytest.mark.asyncio
async def test_gritlm_api_server_embedding():
    queries, q_instruction, documents, d_instruction = get_test_data()

    args = ["--task", "embed", "--max_model_len", str(MAX_MODEL_LEN)]

149
    with RemoteOpenAIServer(MODEL_NAME, args) as server:
150
        client_embedding = server.get_async_client()
151

152
153
        d_rep = await run_client_embeddings(
            client_embedding,
154
155
156
            documents,
            d_instruction,
        )
157
158
        q_rep = await run_client_embeddings(
            client_embedding,
159
160
161
            queries,
            q_instruction,
        )
162

163
    validate_embed_output(q_rep, d_rep)
164
165


166
def test_gritlm_offline_generate(monkeypatch: pytest.MonkeyPatch, vllm_runner):
167
    input = "<|user|>\nWhat is the capital of France?\n<|assistant|>\n"
168

169
170
171
172
173
174
    with vllm_runner(
            MODEL_NAME,
            task="generate",
            max_model_len=MAX_MODEL_LEN,
    ) as vllm_model:
        llm = vllm_model.model
175

176
177
        sampling_params = SamplingParams(temperature=0.0, max_tokens=256)
        outputs = llm.generate(input, sampling_params=sampling_params)
178

179
    assert outputs[0].outputs[0].text == "The capital of France is Paris."
180
181
182


@pytest.mark.asyncio
183
async def test_gritlm_api_server_generate():
184
185
    input = "<|user|>\nWhat is the capital of France?\n<|assistant|>\n"

186
187
    args = ["--task", "generate", "--max_model_len", str(MAX_MODEL_LEN)]

188
    with RemoteOpenAIServer(MODEL_NAME, args) as server:
189
190
191
192
193
194
195
196
        client_generate = server.get_async_client()

        outputs = await client_generate.completions.create(
            model=MODEL_NAME,
            prompt=input,
            max_tokens=256,
            temperature=0.0,
        )
197
198

    assert outputs.choices[0].text == "The capital of France is Paris."