638 lines
24 KiB
Python
638 lines
24 KiB
Python
# imports for guided decoding tests
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import json
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import re
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from typing import List
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import jsonschema
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import openai # use the official client for correctness check
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import pytest
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# downloading lora to test lora requests
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from huggingface_hub import snapshot_download
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from openai import BadRequestError
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from vllm.transformers_utils.tokenizer import get_tokenizer
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from ...utils import RemoteOpenAIServer
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# any model with a chat template should work here
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MODEL_NAME = "HuggingFaceH4/zephyr-7b-beta"
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# technically these adapters use a different base model,
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# but we're not testing generation quality here
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LORA_NAME = "typeof/zephyr-7b-beta-lora"
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PA_NAME = "swapnilbp/llama_tweet_ptune"
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# if PA_NAME changes, PA_NUM_VIRTUAL_TOKENS might also
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# need to change to match the prompt adapter
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PA_NUM_VIRTUAL_TOKENS = 8
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@pytest.fixture(scope="module")
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def zephyr_lora_files():
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return snapshot_download(repo_id=LORA_NAME)
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@pytest.fixture(scope="module")
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def zephyr_pa_files():
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return snapshot_download(repo_id=PA_NAME)
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@pytest.fixture(scope="module")
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def server(zephyr_lora_files, zephyr_pa_files):
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with RemoteOpenAIServer([
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"--model",
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MODEL_NAME,
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# use half precision for speed and memory savings in CI environment
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"--dtype",
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"bfloat16",
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"--max-model-len",
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"8192",
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"--max-num-seqs",
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"128",
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"--enforce-eager",
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# lora config
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"--enable-lora",
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"--lora-modules",
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f"zephyr-lora={zephyr_lora_files}",
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f"zephyr-lora2={zephyr_lora_files}",
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"--max-lora-rank",
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"64",
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"--max-cpu-loras",
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"2",
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# pa config
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"--enable-prompt-adapter",
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"--prompt-adapters",
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f"zephyr-pa={zephyr_pa_files}",
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f"zephyr-pa2={zephyr_pa_files}",
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"--max-prompt-adapters",
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"2",
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"--max-prompt-adapter-token",
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"128",
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]) as remote_server:
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yield remote_server
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@pytest.fixture(scope="module")
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def client(server):
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return server.get_async_client()
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@pytest.mark.asyncio
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@pytest.mark.parametrize(
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# first test base model, then test loras, then test prompt adapters
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"model_name,num_virtual_tokens",
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[(MODEL_NAME, 0), ("zephyr-lora", 0), ("zephyr-lora2", 0),
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("zephyr-pa", PA_NUM_VIRTUAL_TOKENS),
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("zephyr-pa2", PA_NUM_VIRTUAL_TOKENS)],
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)
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async def test_single_completion(client: openai.AsyncOpenAI, model_name: str,
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num_virtual_tokens: int):
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completion = await client.completions.create(model=model_name,
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prompt="Hello, my name is",
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max_tokens=5,
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temperature=0.0)
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assert completion.id is not None
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assert completion.choices is not None and len(completion.choices) == 1
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choice = completion.choices[0]
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assert len(choice.text) >= 5
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assert choice.finish_reason == "length"
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assert completion.usage == openai.types.CompletionUsage(
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completion_tokens=5,
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prompt_tokens=6 + num_virtual_tokens,
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total_tokens=11 + num_virtual_tokens)
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# test using token IDs
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completion = await client.completions.create(
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model=model_name,
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prompt=[0, 0, 0, 0, 0],
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max_tokens=5,
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temperature=0.0,
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)
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assert len(completion.choices[0].text) >= 1
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@pytest.mark.asyncio
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@pytest.mark.parametrize(
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# first test base model, then test loras, then test prompt adapters
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"model_name",
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[MODEL_NAME, "zephyr-lora", "zephyr-lora2", "zephyr-pa", "zephyr-pa2"],
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)
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async def test_no_logprobs(client: openai.AsyncOpenAI, model_name: str):
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# test using token IDs
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completion = await client.completions.create(
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model=model_name,
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prompt=[0, 0, 0, 0, 0],
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max_tokens=5,
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temperature=0.0,
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logprobs=None,
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)
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choice = completion.choices[0]
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assert choice.logprobs is None
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@pytest.mark.asyncio
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@pytest.mark.parametrize(
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# just test 1 lora and 1 pa hereafter
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"model_name",
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[MODEL_NAME, "zephyr-lora", "zephyr-pa"],
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)
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async def test_zero_logprobs(client: openai.AsyncOpenAI, model_name: str):
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# test using token IDs
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completion = await client.completions.create(
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model=model_name,
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prompt=[0, 0, 0, 0, 0],
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max_tokens=5,
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temperature=0.0,
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logprobs=0,
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)
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choice = completion.choices[0]
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assert choice.logprobs is not None
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assert choice.logprobs.token_logprobs is not None
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assert choice.logprobs.top_logprobs is not None
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assert len(choice.logprobs.top_logprobs[0]) == 1
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@pytest.mark.asyncio
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@pytest.mark.parametrize(
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"model_name",
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[MODEL_NAME, "zephyr-lora", "zephyr-pa"],
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)
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async def test_some_logprobs(client: openai.AsyncOpenAI, model_name: str):
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# test using token IDs
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completion = await client.completions.create(
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model=model_name,
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prompt=[0, 0, 0, 0, 0],
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max_tokens=5,
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temperature=0.0,
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logprobs=5,
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)
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choice = completion.choices[0]
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assert choice.logprobs is not None
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assert choice.logprobs.token_logprobs is not None
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assert choice.logprobs.top_logprobs is not None
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assert 5 <= len(choice.logprobs.top_logprobs[0]) <= 6
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@pytest.mark.asyncio
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@pytest.mark.parametrize(
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"model_name",
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[MODEL_NAME, "zephyr-lora", "zephyr-pa"],
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)
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async def test_too_many_completion_logprobs(client: openai.AsyncOpenAI,
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model_name: str):
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with pytest.raises(
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(openai.BadRequestError, openai.APIError)): # test using token IDs
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await client.completions.create(
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model=model_name,
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prompt=[0, 0, 0, 0, 0],
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max_tokens=5,
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temperature=0.0,
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# vLLM has higher default max_logprobs (20 instead of 5) to support
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# both Completion API and Chat Completion API
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logprobs=21,
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)
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...
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with pytest.raises(
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(openai.BadRequestError, openai.APIError)): # test using token IDs
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stream = await client.completions.create(
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model=model_name,
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prompt=[0, 0, 0, 0, 0],
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max_tokens=5,
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temperature=0.0,
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# vLLM has higher default max_logprobs (20 instead of 5) to support
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# both Completion API and Chat Completion API
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logprobs=30,
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stream=True,
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)
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async for chunk in stream:
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...
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# the server should still work afterwards
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completion = await client.completions.create(
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model=model_name,
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prompt=[0, 0, 0, 0, 0],
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max_tokens=5,
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temperature=0.0,
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)
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assert len(completion.choices[0].text) >= 0
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@pytest.mark.asyncio
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@pytest.mark.parametrize(
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"model_name",
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[MODEL_NAME, "zephyr-lora", "zephyr-pa"],
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)
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async def test_completion_streaming(client: openai.AsyncOpenAI,
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model_name: str):
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prompt = "What is an LLM?"
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single_completion = await client.completions.create(
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model=model_name,
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prompt=prompt,
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max_tokens=5,
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temperature=0.0,
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)
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single_output = single_completion.choices[0].text
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stream = await client.completions.create(model=model_name,
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prompt=prompt,
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max_tokens=5,
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temperature=0.0,
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stream=True)
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chunks: List[str] = []
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finish_reason_count = 0
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async for chunk in stream:
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chunks.append(chunk.choices[0].text)
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if chunk.choices[0].finish_reason is not None:
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finish_reason_count += 1
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# finish reason should only return in last block
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assert finish_reason_count == 1
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assert chunk.choices[0].finish_reason == "length"
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assert chunk.choices[0].text
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assert "".join(chunks) == single_output
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@pytest.mark.asyncio
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@pytest.mark.parametrize(
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"model_name",
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[MODEL_NAME, "zephyr-lora", "zephyr-pa"],
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)
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async def test_completion_stream_options(client: openai.AsyncOpenAI,
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model_name: str):
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prompt = "What is the capital of France?"
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# Test stream=True, stream_options=
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# {"include_usage": False, "continuous_usage_stats": False}
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stream = await client.completions.create(model=model_name,
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prompt=prompt,
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max_tokens=5,
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temperature=0.0,
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stream=True,
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stream_options={
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"include_usage": False,
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"continuous_usage_stats":
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False,
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})
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async for chunk in stream:
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assert chunk.usage is None
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# Test stream=True, stream_options=
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# {"include_usage": False, "continuous_usage_stats": True}
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stream = await client.completions.create(model=model_name,
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prompt=prompt,
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max_tokens=5,
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temperature=0.0,
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stream=True,
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stream_options={
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"include_usage": False,
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"continuous_usage_stats":
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True,
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})
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async for chunk in stream:
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assert chunk.usage is None
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# Test stream=True, stream_options=
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# {"include_usage": True, "continuous_usage_stats": False}
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stream = await client.completions.create(model=model_name,
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prompt=prompt,
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max_tokens=5,
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temperature=0.0,
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stream=True,
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stream_options={
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"include_usage": True,
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"continuous_usage_stats":
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False,
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})
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async for chunk in stream:
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if chunk.choices[0].finish_reason is None:
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assert chunk.usage is None
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else:
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assert chunk.usage is None
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final_chunk = await stream.__anext__()
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assert final_chunk.usage is not None
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assert final_chunk.usage.prompt_tokens > 0
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assert final_chunk.usage.completion_tokens > 0
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assert final_chunk.usage.total_tokens == (
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final_chunk.usage.prompt_tokens +
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final_chunk.usage.completion_tokens)
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assert final_chunk.choices == []
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# Test stream=True, stream_options=
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# {"include_usage": True, "continuous_usage_stats": True}
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stream = await client.completions.create(model=model_name,
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prompt=prompt,
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max_tokens=5,
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temperature=0.0,
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stream=True,
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stream_options={
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"include_usage": True,
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"continuous_usage_stats":
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True,
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})
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async for chunk in stream:
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assert chunk.usage is not None
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assert chunk.usage.prompt_tokens > 0
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assert chunk.usage.completion_tokens > 0
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assert chunk.usage.total_tokens == (chunk.usage.prompt_tokens +
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chunk.usage.completion_tokens)
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if chunk.choices[0].finish_reason is not None:
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final_chunk = await stream.__anext__()
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assert final_chunk.usage is not None
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assert final_chunk.usage.prompt_tokens > 0
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assert final_chunk.usage.completion_tokens > 0
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assert final_chunk.usage.total_tokens == (
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final_chunk.usage.prompt_tokens +
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final_chunk.usage.completion_tokens)
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assert final_chunk.choices == []
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# Test stream=False, stream_options=
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# {"include_usage": None}
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with pytest.raises(BadRequestError):
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await client.completions.create(model=model_name,
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prompt=prompt,
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max_tokens=5,
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temperature=0.0,
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stream=False,
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stream_options={"include_usage": None})
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# Test stream=False, stream_options=
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# {"include_usage": True}
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with pytest.raises(BadRequestError):
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await client.completions.create(model=model_name,
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prompt=prompt,
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max_tokens=5,
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temperature=0.0,
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stream=False,
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stream_options={"include_usage": True})
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# Test stream=False, stream_options=
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# {"continuous_usage_stats": None}
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with pytest.raises(BadRequestError):
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await client.completions.create(
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model=model_name,
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prompt=prompt,
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max_tokens=5,
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temperature=0.0,
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stream=False,
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stream_options={"continuous_usage_stats": None})
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# Test stream=False, stream_options=
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# {"continuous_usage_stats": True}
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with pytest.raises(BadRequestError):
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await client.completions.create(
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model=model_name,
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prompt=prompt,
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max_tokens=5,
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temperature=0.0,
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stream=False,
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stream_options={"continuous_usage_stats": True})
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@pytest.mark.asyncio
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@pytest.mark.parametrize(
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"model_name",
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[MODEL_NAME, "zephyr-lora", "zephyr-pa"],
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)
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async def test_batch_completions(client: openai.AsyncOpenAI, model_name: str):
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# test both text and token IDs
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for prompts in (["Hello, my name is"] * 2, [[0, 0, 0, 0, 0]] * 2):
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# test simple list
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batch = await client.completions.create(
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model=model_name,
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prompt=prompts,
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max_tokens=5,
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temperature=0.0,
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)
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assert len(batch.choices) == 2
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assert batch.choices[0].text == batch.choices[1].text
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# test n = 2
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batch = await client.completions.create(
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model=model_name,
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prompt=prompts,
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n=2,
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max_tokens=5,
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temperature=0.0,
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extra_body=dict(
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# NOTE: this has to be true for n > 1 in vLLM, but not necessary
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# for official client.
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use_beam_search=True),
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)
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assert len(batch.choices) == 4
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assert batch.choices[0].text != batch.choices[
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1].text, "beam search should be different"
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assert batch.choices[0].text == batch.choices[
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2].text, "two copies of the same prompt should be the same"
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assert batch.choices[1].text == batch.choices[
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3].text, "two copies of the same prompt should be the same"
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# test streaming
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batch = await client.completions.create(
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model=model_name,
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prompt=prompts,
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max_tokens=5,
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temperature=0.0,
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stream=True,
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)
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texts = [""] * 2
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async for chunk in batch:
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assert len(chunk.choices) == 1
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choice = chunk.choices[0]
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texts[choice.index] += choice.text
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assert texts[0] == texts[1]
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@pytest.mark.asyncio
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async def test_logits_bias(client: openai.AsyncOpenAI):
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prompt = "Hello, my name is"
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max_tokens = 5
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tokenizer = get_tokenizer(tokenizer_name=MODEL_NAME)
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# Test exclusive selection
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token_id = 1000
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completion = await client.completions.create(
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model=MODEL_NAME,
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prompt=prompt,
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max_tokens=max_tokens,
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temperature=0.0,
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logit_bias={str(token_id): 100},
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seed=42,
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)
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assert len(completion.choices[0].text) >= 5
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response_tokens = tokenizer(completion.choices[0].text,
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add_special_tokens=False)["input_ids"]
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expected_tokens = tokenizer(tokenizer.decode([token_id] * 5),
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add_special_tokens=False)["input_ids"]
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assert all([
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response == expected
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for response, expected in zip(response_tokens, expected_tokens)
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])
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# Test ban
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completion = await client.completions.create(
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model=MODEL_NAME,
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prompt=prompt,
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max_tokens=max_tokens,
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temperature=0.0,
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)
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response_tokens = tokenizer(completion.choices[0].text,
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add_special_tokens=False)["input_ids"]
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first_response = completion.choices[0].text
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completion = await client.completions.create(
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model=MODEL_NAME,
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prompt=prompt,
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max_tokens=max_tokens,
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temperature=0.0,
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logit_bias={str(token): -100
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for token in response_tokens},
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)
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assert first_response != completion.choices[0].text
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@pytest.mark.asyncio
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@pytest.mark.parametrize("guided_decoding_backend",
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["outlines", "lm-format-enforcer"])
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async def test_guided_json_completion(client: openai.AsyncOpenAI,
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guided_decoding_backend: str,
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sample_json_schema):
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completion = await client.completions.create(
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model=MODEL_NAME,
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prompt=f"Give an example JSON for an employee profile "
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f"that fits this schema: {sample_json_schema}",
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n=3,
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temperature=1.0,
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max_tokens=500,
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extra_body=dict(guided_json=sample_json_schema,
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guided_decoding_backend=guided_decoding_backend))
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assert completion.id is not None
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assert len(completion.choices) == 3
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for i in range(3):
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output_json = json.loads(completion.choices[i].text)
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jsonschema.validate(instance=output_json, schema=sample_json_schema)
|
|
|
|
|
|
@pytest.mark.asyncio
|
|
@pytest.mark.parametrize("guided_decoding_backend",
|
|
["outlines", "lm-format-enforcer"])
|
|
async def test_guided_regex_completion(client: openai.AsyncOpenAI,
|
|
guided_decoding_backend: str,
|
|
sample_regex):
|
|
completion = await client.completions.create(
|
|
model=MODEL_NAME,
|
|
prompt=f"Give an example IPv4 address with this regex: {sample_regex}",
|
|
n=3,
|
|
temperature=1.0,
|
|
max_tokens=20,
|
|
extra_body=dict(guided_regex=sample_regex,
|
|
guided_decoding_backend=guided_decoding_backend))
|
|
|
|
assert completion.id is not None
|
|
assert len(completion.choices) == 3
|
|
for i in range(3):
|
|
assert re.fullmatch(sample_regex,
|
|
completion.choices[i].text) is not None
|
|
|
|
|
|
@pytest.mark.asyncio
|
|
@pytest.mark.parametrize("guided_decoding_backend",
|
|
["outlines", "lm-format-enforcer"])
|
|
async def test_guided_choice_completion(client: openai.AsyncOpenAI,
|
|
guided_decoding_backend: str,
|
|
sample_guided_choice):
|
|
completion = await client.completions.create(
|
|
model=MODEL_NAME,
|
|
prompt="The best language for type-safe systems programming is ",
|
|
n=2,
|
|
temperature=1.0,
|
|
max_tokens=10,
|
|
extra_body=dict(guided_choice=sample_guided_choice,
|
|
guided_decoding_backend=guided_decoding_backend))
|
|
|
|
assert completion.id is not None
|
|
assert len(completion.choices) == 2
|
|
for i in range(2):
|
|
assert completion.choices[i].text in sample_guided_choice
|
|
|
|
|
|
@pytest.mark.asyncio
|
|
async def test_guided_grammar(client: openai.AsyncOpenAI,
|
|
sample_sql_statements):
|
|
|
|
completion = await client.completions.create(
|
|
model=MODEL_NAME,
|
|
prompt=("Generate a sql state that select col_1 from "
|
|
"table_1 where it is equals to 1"),
|
|
temperature=1.0,
|
|
max_tokens=500,
|
|
extra_body=dict(guided_grammar=sample_sql_statements))
|
|
|
|
content = completion.choices[0].text
|
|
|
|
# use Lark to parse the output, and make sure it's a valid parse tree
|
|
from lark import Lark
|
|
parser = Lark(sample_sql_statements)
|
|
parser.parse(content)
|
|
|
|
# remove spaces for comparison b/c we removed them in the grammar
|
|
ground_truth = "SELECT col_1 from table_1 where col_1 = 1".replace(" ", "")
|
|
|
|
assert content.strip() == ground_truth
|
|
|
|
|
|
@pytest.mark.asyncio
|
|
@pytest.mark.parametrize(
|
|
# first test base model, then test loras
|
|
"model_name",
|
|
[MODEL_NAME, "zephyr-lora", "zephyr-lora2"],
|
|
)
|
|
@pytest.mark.parametrize("logprobs_arg", [1, 0])
|
|
async def test_echo_logprob_completion(client: openai.AsyncOpenAI,
|
|
model_name: str, logprobs_arg: int):
|
|
tokenizer = get_tokenizer(tokenizer_name=MODEL_NAME)
|
|
# test using text and token IDs
|
|
for prompt in ("Hello, my name is", [0, 0, 0, 0, 0]):
|
|
completion = await client.completions.create(model=model_name,
|
|
prompt=prompt,
|
|
max_tokens=5,
|
|
temperature=0.0,
|
|
echo=True,
|
|
logprobs=logprobs_arg)
|
|
|
|
prompt_text = tokenizer.decode(prompt) if isinstance(prompt,
|
|
list) else prompt
|
|
assert re.search(r"^" + prompt_text, completion.choices[0].text)
|
|
logprobs = completion.choices[0].logprobs
|
|
assert logprobs is not None
|
|
assert len(logprobs.text_offset) > 5
|
|
assert (len(logprobs.token_logprobs) > 5
|
|
and logprobs.token_logprobs[0] is None)
|
|
assert (len(logprobs.top_logprobs) > 5
|
|
and logprobs.top_logprobs[0] is None)
|
|
for top_logprobs in logprobs.top_logprobs[1:]:
|
|
assert max(logprobs_arg,
|
|
1) <= len(top_logprobs) <= logprobs_arg + 1
|
|
assert len(logprobs.tokens) > 5
|
|
|
|
|
|
@pytest.mark.asyncio
|
|
@pytest.mark.parametrize("guided_decoding_backend",
|
|
["outlines", "lm-format-enforcer"])
|
|
async def test_guided_decoding_type_error(client: openai.AsyncOpenAI,
|
|
guided_decoding_backend: str,
|
|
sample_json_schema, sample_regex):
|
|
with pytest.raises(openai.BadRequestError):
|
|
_ = await client.completions.create(
|
|
model=MODEL_NAME,
|
|
prompt="Give an example JSON that fits this schema: 42",
|
|
extra_body=dict(guided_json=42,
|
|
guided_decoding_backend=guided_decoding_backend))
|
|
|
|
with pytest.raises(openai.BadRequestError):
|
|
_ = await client.completions.create(
|
|
model=MODEL_NAME,
|
|
prompt="Give an example string that fits this regex",
|
|
extra_body=dict(guided_regex=sample_regex,
|
|
guided_json=sample_json_schema))
|