from typing import List import pytest import aphrodite from aphrodite.lora.request import LoRARequest from .conftest import cleanup MODEL_PATH = "baichuan-inc/Baichuan-7B" PROMPT_TEMPLATE = """I want you to act as a SQL terminal in front of an example database, you need only to return the sql command to me.Below is an instruction that describes a task, Write a response that appropriately completes the request.\n"\n##Instruction:\nconcert_singer contains tables such as stadium, singer, concert, singer_in_concert. Table stadium has columns such as Stadium_ID, Location, Name, Capacity, Highest, Lowest, Average. Stadium_ID is the primary key.\nTable singer has columns such as Singer_ID, Name, Country, Song_Name, Song_release_year, Age, Is_male. Singer_ID is the primary key.\nTable concert has columns such as concert_ID, concert_Name, Theme, Stadium_ID, Year. concert_ID is the primary key.\nTable singer_in_concert has columns such as concert_ID, Singer_ID. concert_ID is the primary key.\nThe Stadium_ID of concert is the foreign key of Stadium_ID of stadium.\nThe Singer_ID of singer_in_concert is the foreign key of Singer_ID of singer.\nThe concert_ID of singer_in_concert is the foreign key of concert_ID of concert.\n\n###Input:\n{query}\n\n###Response:""" # noqa: E501 def do_sample(llm: aphrodite.LLM, lora_path: str, lora_id: int) -> List[str]: prompts = [ PROMPT_TEMPLATE.format(query="How many singers do we have?"), PROMPT_TEMPLATE.format( query= "What is the average, minimum, and maximum age of all singers from France?" # noqa: E501 ), PROMPT_TEMPLATE.format( query= "Show name, country, age for all singers ordered by age from the oldest to the youngest." # noqa: E501 ), ] print(prompts) sampling_params = aphrodite.SamplingParams(temperature=0, max_tokens=256) outputs = llm.generate( prompts, sampling_params, lora_request=LoRARequest(str(lora_id), lora_id, lora_path) if lora_id else None) # Print the outputs. generated_texts: List[str] = [] for output in outputs: prompt = output.prompt generated_text = output.outputs[0].text.strip() generated_texts.append(generated_text) print(f"Prompt: {prompt!r}, Generated text: {generated_text!r}") return generated_texts def test_baichuan_lora(baichuan_lora_files): llm = aphrodite.LLM(MODEL_PATH, max_model_len=1024, enable_lora=True, max_loras=4, max_lora_rank=64, trust_remote_code=True) expected_lora_output = [ "SELECT count(*) FROM singer", "SELECT avg(age) , min(age) , max(age) FROM singer WHERE Country = 'France'", # noqa: E501 "SELECT name , country , age FROM singer ORDER BY age ASC", ] output1 = do_sample(llm, baichuan_lora_files, lora_id=1) for i in range(len(expected_lora_output)): assert output1[i] == expected_lora_output[i] output2 = do_sample(llm, baichuan_lora_files, lora_id=2) for i in range(len(expected_lora_output)): assert output2[i] == expected_lora_output[i] @pytest.mark.skip("Requires multiple GPUs") @pytest.mark.parametrize("fully_sharded", [True, False]) def test_baichuan_tensor_parallel_equality(baichuan_lora_files, fully_sharded): # Cannot use as it will initialize torch.cuda too early... # if torch.cuda.device_count() < 4: # pytest.skip(f"Not enough GPUs for tensor parallelism {4}") llm_tp1 = aphrodite.LLM(MODEL_PATH, enable_lora=True, max_num_seqs=16, max_loras=4, max_lora_rank=64, tensor_parallel_size=1, trust_remote_code=True, fully_sharded_loras=fully_sharded) output_tp1 = do_sample(llm_tp1, baichuan_lora_files, lora_id=1) del llm_tp1 cleanup() llm_tp2 = aphrodite.LLM(MODEL_PATH, enable_lora=True, max_num_seqs=16, max_loras=4, max_lora_rank=64, tensor_parallel_size=2, trust_remote_code=True, fully_sharded_loras=fully_sharded) output_tp2 = do_sample(llm_tp2, baichuan_lora_files, lora_id=2) del llm_tp2 cleanup() assert output_tp1 == output_tp2 llm_tp4 = aphrodite.LLM(MODEL_PATH, enable_lora=True, max_num_seqs=16, max_loras=4, max_lora_rank=64, tensor_parallel_size=4, trust_remote_code=True, fully_sharded_loras=fully_sharded) output_tp4 = do_sample(llm_tp4, baichuan_lora_files, lora_id=2) del llm_tp4 cleanup() assert output_tp1 == output_tp4