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@@ -161,10 +161,9 @@ def fill_blanks(raw_text: str, model, tokenizer, strategy) -> Tuple[List[str], L
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return answers, answers_with_style, blanks
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-
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def generate_continually(func, raw_text):
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if not raw_text:
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- return 'Input should not be empty!'
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+ return "Input should not be empty!"
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try:
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start_time = time.time()
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answer = func(raw_text)
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@@ -173,10 +172,12 @@ def generate_continually(func, raw_text):
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return answer
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except (ValueError, FileNotFoundError) as e:
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print(e)
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- return 'Error!'
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+ return "Error!"
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+
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strategy = None
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+
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def main(args):
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model, tokenizer = initialize_model_and_tokenizer(args)
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@@ -195,16 +196,55 @@ def main(args):
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return answers[0]
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-
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- def predict(text, seed=1234, out_seq_length=200, min_gen_length=20, sampling_strategy='BaseStrategy',
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- num_beams=4, length_penalty=0.9, no_repeat_ngram_size=3,
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- temperature=1, topk=1, topp=1):
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+ def predict(
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+ text,
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+ seed=1234,
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+ out_seq_length=200,
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+ min_gen_length=20,
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+ sampling_strategy="BaseStrategy",
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+ num_beams=4,
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+ length_penalty=0.9,
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+ no_repeat_ngram_size=3,
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+ temperature=1,
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+ topk=1,
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+ topp=1,
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+ ):
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global strategy
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if torch.distributed.get_rank() == 0:
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- print('info', [text, seed, out_seq_length, min_gen_length, sampling_strategy, num_beams, length_penalty, no_repeat_ngram_size, temperature, topk, topp])
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- dist.broadcast_object_list([text, seed, out_seq_length, min_gen_length, sampling_strategy, num_beams, length_penalty, no_repeat_ngram_size, temperature, topk, topp], src=0)
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+ print(
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+ "info",
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+ [
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+ text,
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+ seed,
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+ out_seq_length,
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+ min_gen_length,
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+ sampling_strategy,
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+ num_beams,
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+ length_penalty,
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+ no_repeat_ngram_size,
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+ temperature,
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+ topk,
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+ topp,
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+ ],
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+ )
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+ dist.broadcast_object_list(
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+ [
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+ text,
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+ seed,
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+ out_seq_length,
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+ min_gen_length,
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+ sampling_strategy,
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+ num_beams,
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+ length_penalty,
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+ no_repeat_ngram_size,
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+ temperature,
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+ topk,
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+ topp,
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+ ],
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+ src=0,
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+ )
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args.seed = seed
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args.out_seq_length = out_seq_length
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@@ -237,11 +277,11 @@ def main(args):
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return generate_continually(process, text)
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if torch.distributed.get_rank() == 0:
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- en_fil = ['The Starry Night is an oil-on-canvas painting by [MASK] in June 1889.']
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- en_gen = ['Eight planets in solar system are [gMASK]']
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- 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。']
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- ch_gen = ['三亚位于海南岛的最南端,是中国最南部的热带滨海旅游城市 [gMASK]']
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- en_to_ch = ['Pencil in Chinese is [MASK].']
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+ en_fil = ["The Starry Night is an oil-on-canvas painting by [MASK] in June 1889."]
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+ en_gen = ["Eight planets in solar system are [gMASK]"]
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+ 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。"]
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+ ch_gen = ["三亚位于海南岛的最南端,是中国最南部的热带滨海旅游城市 [gMASK]"]
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+ en_to_ch = ["Pencil in Chinese is [MASK]."]
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ch_to_en = ['"我思故我在"的英文是"[MASK]"。']
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examples = [en_fil, en_gen, ch_fil, ch_gen, en_to_ch, ch_to_en]
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@@ -253,28 +293,36 @@ def main(args):
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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).
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Note: We suspect that there is a bug in the current FasterTransformer INT4 implementation that leads to gaps in generations compared to the FP16 model (e.g. more repititions), which we are troubleshooting, and the current model output is **for reference only**
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- """)
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+ """
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+ )
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with gr.Row():
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with gr.Column():
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- model_input = gr.Textbox(lines=7, placeholder='Input something in English or Chinese', label='Input')
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+ model_input = gr.Textbox(
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+ lines=7, placeholder="Input something in English or Chinese", label="Input"
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+ )
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with gr.Row():
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gen = gr.Button("Generate")
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clr = gr.Button("Clear")
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-
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- outputs = gr.Textbox(lines=7, label='Output')
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-
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+
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+ outputs = gr.Textbox(lines=7, label="Output")
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+
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gr.Markdown(
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"""
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Generation Parameter
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- """)
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+ """
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+ )
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with gr.Row():
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with gr.Column():
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- seed = gr.Slider(maximum=100000, value=1234, step=1, label='Seed')
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- out_seq_length = gr.Slider(maximum=512, value=128, minimum=32, step=1, label='Output Sequence Length')
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+ seed = gr.Slider(maximum=100000, value=1234, step=1, label="Seed")
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+ out_seq_length = gr.Slider(
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+ maximum=512, value=128, minimum=32, step=1, label="Output Sequence Length"
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+ )
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with gr.Column():
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- min_gen_length = gr.Slider(maximum=64, value=0, step=1, label='Min Generate Length')
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- sampling_strategy = gr.Radio(choices=['BeamSearchStrategy', 'BaseStrategy'], value='BaseStrategy', label='Search Strategy')
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+ min_gen_length = gr.Slider(maximum=64, value=0, step=1, label="Min Generate Length")
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+ sampling_strategy = gr.Radio(
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+ choices=["BeamSearchStrategy", "BaseStrategy"], value="BaseStrategy", label="Search Strategy"
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+ )
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with gr.Row():
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with gr.Column():
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@@ -282,32 +330,49 @@ def main(args):
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gr.Markdown(
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"""
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BeamSearchStrategy
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- """)
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- num_beams = gr.Slider(maximum=4, value=2, minimum=1, step=1, label='Number of Beams')
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- length_penalty = gr.Slider(maximum=1, value=1, minimum=0, label='Length Penalty')
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- no_repeat_ngram_size = gr.Slider(maximum=5, value=3, minimum=1, step=1, label='No Repeat Ngram Size')
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+ """
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+ )
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+ num_beams = gr.Slider(maximum=4, value=2, minimum=1, step=1, label="Number of Beams")
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+ length_penalty = gr.Slider(maximum=1, value=1, minimum=0, label="Length Penalty")
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+ no_repeat_ngram_size = gr.Slider(
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+ maximum=5, value=3, minimum=1, step=1, label="No Repeat Ngram Size"
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+ )
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with gr.Column():
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# base search
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gr.Markdown(
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"""
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BaseStrategy
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- """)
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- temperature = gr.Slider(maximum=1, value=0.7, minimum=0, label='Temperature')
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- topk = gr.Slider(maximum=40, value=0, minimum=0, step=1, label='Top K')
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- topp = gr.Slider(maximum=1, value=0.7, minimum=0, label='Top P')
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-
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- inputs = [model_input, seed, out_seq_length, min_gen_length, sampling_strategy, num_beams, length_penalty, no_repeat_ngram_size, temperature, topk, topp]
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+ """
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+ )
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+ temperature = gr.Slider(maximum=1, value=0.7, minimum=0, label="Temperature")
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+ topk = gr.Slider(maximum=40, value=0, minimum=0, step=1, label="Top K")
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+ topp = gr.Slider(maximum=1, value=0.7, minimum=0, label="Top P")
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+
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+ inputs = [
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+ model_input,
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+ seed,
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+ out_seq_length,
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+ min_gen_length,
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+ sampling_strategy,
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+ num_beams,
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+ length_penalty,
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+ no_repeat_ngram_size,
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+ temperature,
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+ topk,
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+ topp,
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+ ]
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gen.click(fn=predict, inputs=inputs, outputs=outputs)
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clr.click(fn=lambda value: gr.update(value=""), inputs=clr, outputs=model_input)
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-
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+
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gr_examples = gr.Examples(examples=examples, inputs=model_input)
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-
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+
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gr.Markdown(
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"""
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Disclaimer inspired from [BLOOM](https://huggingface.co/spaces/bigscience/bloom-book)
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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.
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- """)
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+ """
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+ )
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demo.launch(share=True)
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else:
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@@ -315,11 +380,33 @@ def main(args):
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info = [None, None, None, None, None, None, None, None, None, None, None]
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dist.broadcast_object_list(info, src=0)
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- text, seed, out_seq_length, min_gen_length, sampling_strategy, num_beams, length_penalty, no_repeat_ngram_size, temperature, topk, topp = info
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-
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- predict(text, seed, out_seq_length, min_gen_length, sampling_strategy,
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- num_beams, length_penalty, no_repeat_ngram_size,
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- temperature, topk, topp)
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+ (
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+ text,
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+ seed,
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+ out_seq_length,
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+ min_gen_length,
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+ sampling_strategy,
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+ num_beams,
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+ length_penalty,
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+ no_repeat_ngram_size,
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+ temperature,
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+ topk,
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+ topp,
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+ ) = info
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+
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+ predict(
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+ text,
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+ seed,
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+ out_seq_length,
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+ min_gen_length,
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+ sampling_strategy,
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+ num_beams,
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+ length_penalty,
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+ no_repeat_ngram_size,
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+ temperature,
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+ topk,
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+ topp,
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+ )
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if __name__ == "__main__":
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