import gradio as gr import requests import json import os APIKEY = os.environ.get("APIKEY") APISECRET = os.environ.get("APISECRET") def predict(text, seed, out_seq_length, min_gen_length, sampling_strategy, num_beams, length_penalty, no_repeat_ngram_size, temperature, topk, topp): global APIKEY global APISECRET if text == '': return 'Input should not be empty!' url = 'https://models.aminer.cn/os/api/api/v2/completions_130B' payload = json.dumps({ "apikey": APIKEY, "apisecret": APISECRET , "model_name": "glm-130b-v1", "prompt": text, "length_penalty": length_penalty, "temperature": temperature, "top_k": topk, "top_p": topp, "min_gen_length": min_gen_length, "sampling_strategy": sampling_strategy, "num_beams": num_beams, "max_tokens": out_seq_length, "no_repeat_ngram": no_repeat_ngram_size, "quantization": "int4", "seed": seed }) headers = { 'Content-Type': 'application/json' } try: response = requests.request("POST", url, headers=headers, data=payload, timeout=(20, 100)).json() except Exception as e: return 'Timeout! Please wait a few minutes and retry' if response['status'] == 1: return response['message']['errmsg'] answer = response['result']['output']['raw'] if isinstance(answer, list): answer = answer[0] answer = answer.replace('[]', '') return answer if __name__ == "__main__": en_fil = ['The Starry Night is an oil-on-canvas painting by [MASK] in June 1889.'] en_gen = ['Question: What\'s the best winter resort city? User: A 10-year professional traveler. Answer: [gMASK]'] #['Eight planets in solar system are [gMASK]'] ch_fil = ['凯旋门位于意大利米兰市古城堡旁。1807年为纪念[MASK]而建,门高25米,顶上矗立两武士青铜古兵车铸像。'] ch_gen = ['三亚位于海南岛的最南端,是[gMASK]'] en_to_ch = ['Pencil in Chinese is [MASK].'] ch_to_en = ['"我思故我在"的英文是"[MASK]"。'] examples = [en_fil, en_gen, ch_fil, ch_gen, en_to_ch, ch_to_en] with gr.Blocks() as demo: gr.Markdown( """ Dear friends, Nice to meet you here! This is a toy demo of GLM-130B, an open bilingual pre-trained model from Tsinghua Univeristy. GLM-130B uses two different mask tokens: `[MASK]` for short blank filling and `[gMASK]` for left-to-right long text generation. When the input does not contain any MASK token, `[gMASK]` will be automatically appended to the end of the text. We recommend that you use `[MASK]` to try text fill-in-the-blank to reduce wait time (ideally within seconds without queuing). This demo is a raw language model **without** instruction fine-tuning (which is applied to FLAN-* series) and RLHF (which is applied to ChatGPT); its ability is roughly between OpenAI `davinci` and `text-davinci-001`. Thus, it is currently worse than ChatGPT and other instruction fine-tuned models :( However, we are sparing no effort to improve it, and its updated versions will meet you soon! If you find the open-source effort useful, please star our [GitHub repo](https://github.com/THUDM/GLM-130B) to encourage our following development :) """) with gr.Row(): with gr.Column(): model_input = gr.Textbox(lines=7, placeholder='Input something in English or Chinese', label='Input') with gr.Row(): gen = gr.Button("Generate") clr = gr.Button("Clear") outputs = gr.Textbox(lines=7, label='Output') gr.Markdown( """ Generation Parameter """) with gr.Row(): with gr.Column(): seed = gr.Slider(maximum=100000, value=1234, step=1, label='Seed') out_seq_length = gr.Slider(maximum=256, value=128, minimum=32, step=1, label='Output Sequence Length') with gr.Column(): min_gen_length = gr.Slider(maximum=64, value=0, step=1, label='Min Generate Length') sampling_strategy = gr.Radio(choices=['BeamSearchStrategy', 'BaseStrategy'], value='BaseStrategy', label='Search Strategy') with gr.Row(): with gr.Column(): # beam search gr.Markdown( """ BeamSearchStrategy """) num_beams = gr.Slider(maximum=4, value=2, minimum=1, step=1, label='Number of Beams') length_penalty = gr.Slider(maximum=1, value=1, minimum=0, label='Length Penalty') no_repeat_ngram_size = gr.Slider(maximum=5, value=3, minimum=1, step=1, label='No Repeat Ngram Size') with gr.Column(): # base search gr.Markdown( """ BaseStrategy """) temperature = gr.Slider(maximum=1, value=1.0, minimum=0, label='Temperature') topk = gr.Slider(maximum=40, value=0, minimum=0, step=1, label='Top K') topp = gr.Slider(maximum=1, value=0.7, minimum=0, label='Top P') inputs = [model_input, seed, out_seq_length, min_gen_length, sampling_strategy, num_beams, length_penalty, no_repeat_ngram_size, temperature, topk, topp] gen.click(fn=predict, inputs=inputs, outputs=outputs) clr.click(fn=lambda value: gr.update(value=""), inputs=clr, outputs=model_input) gr_examples = gr.Examples(examples=examples, inputs=model_input) gr.Markdown( """ Disclaimer inspired from [BLOOM](https://huggingface.co/spaces/bigscience/bloom-book) GLM-130B was trained on web-crawled data, so it's hard to predict how GLM-130B will respond to particular prompts; harmful or otherwise offensive content may occur without warning. We prohibit users from knowingly generating or allowing others to knowingly generate harmful content, including Hateful, Harassment, Violence, Adult, Political, Deception, etc. """) demo.launch()