import requests requests.packages.urllib3.disable_warnings() from vlmeval.smp import * from vlmeval.api.base import BaseAPI from vlmeval.dataset import DATASET_TYPE from vlmeval.smp.vlm import encode_image_file_to_base64 class GLMVisionWrapper(BaseAPI): is_api: bool = True def __init__(self, model: str, retry: int = 5, wait: int = 5, key: str = None, verbose: bool = True, system_prompt: str = None, max_tokens: int = 4096, proxy: str = None, **kwargs): from zhipuai import ZhipuAI self.model = model self.fail_msg = 'Failed to obtain answer via API. ' if key is None: key = os.environ.get('GLMV_API_KEY', None) assert key is not None, ( 'Please set the API Key (obtain it here: ' 'https://bigmodel.cn)' ) self.client = ZhipuAI(api_key=key) super().__init__(wait=wait, retry=retry, system_prompt=system_prompt, verbose=verbose, **kwargs) def build_msgs(self, msgs_raw, system_prompt=None, dataset=None): msgs = cp.deepcopy(msgs_raw) content = [] for i, msg in enumerate(msgs): if msg['type'] == 'text': content.append(dict(type='text', text=msg['value'])) elif msg['type'] == 'image': content.append(dict(type='image_url', image_url=dict(url=encode_image_file_to_base64(msg['value'])))) if dataset in {'HallusionBench', 'POPE'}: content.append(dict(type="text", text="Please answer yes or no.")) ret = [dict(role='user', content=content)] return ret def generate_inner(self, inputs, **kwargs) -> str: assert isinstance(inputs, str) or isinstance(inputs, list) inputs = [inputs] if isinstance(inputs, str) else inputs messages = self.build_msgs(msgs_raw=inputs, dataset=kwargs.get('dataset', None)) response = self.client.chat.completions.create( model=self.model, messages=messages, do_sample=False, max_tokens=2048 ) try: answer = response.choices[0].message.content.strip() if self.verbose: self.logger.info(f'inputs: {inputs}\nanswer: {answer}') return 0, answer, 'Succeeded!' except Exception as err: if self.verbose: self.logger.error(f'{type(err)}: {err}') self.logger.error(f'The input messages are {inputs}.') return -1, self.fail_msg, '' class GLMVisionAPI(GLMVisionWrapper): def generate(self, message, dataset=None): return super(GLMVisionAPI, self).generate(message, dataset=dataset)