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import torch |
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from transformers import pipeline |
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device = 0 if torch.cuda.is_available() else -1 |
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multi_model_list = [ |
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{"id": "a", "model_id": "bytedance-research/UI-TARS-72B-DPO", "task": " image-text-to-text"}, |
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{"id": "b", "model_id": "bytedance-research/UI-TARS-72B-DPO", "task": " image-text-to-text"}, |
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{"id": "c", "model_id": "bytedance-research/UI-TARS-72B-DPO", "task": " image-text-to-text"}, |
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{"id": "d", "model_id": "bytedance-research/UI-TARS-72B-DPO", "task": " image-text-to-text"}, |
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{"id": "e", "model_id": "bytedance-research/UI-TARS-72B-DPO", "task": " image-text-to-text"}, |
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] |
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class EndpointHandler(): |
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def __init__(self, path=""): |
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self.multi_model={} |
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for model in multi_model_list: |
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self.multi_model[model["model_id"]] = pipeline(model["task"], model=model["model_id"], device=device) |
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def __call__(self, data): |
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inputs = data.pop("inputs", data) |
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parameters = data.pop("parameters", None) |
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model_id = data.pop("model_id", None) |
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if model_id is None or model_id not in self.multi_model: |
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raise ValueError(f"model_id: {model_id} is not valid. Available models are: {list(self.multi_model.keys())}") |
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if parameters is not None: |
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prediction = self.multi_model[model_id](inputs, **parameters) |
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else: |
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prediction = self.multi_model[model_id](inputs) |
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return prediction |