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from transformers import AutoTokenizer, AutoModelForCausalLM import torch tokenizer = AutoTokenizer.from_pretrained("health360/Sehty360-llama-3-8b-arabic-health-instruct") model = AutoModelForCausalLM.from_pretrained("health360/Sehty360-llama-3-8b-arabic-health-instruct", device_map='auto', torch_dtype=torch.bfloat16)

text = """

Input:

ุณู„ุงู… ุนู„ูŠูƒู… ุงุดุนุฑ ุจุถูŠู‚ ููŠ ุงู„ุชู†ูุณ ูˆุงุนุงู†ูŠ ู…ู† ูƒุซุฑุฉ ุงู„ุจู„ุบู…

Response:

""" stop_word = "###END###"

Encode the input text

inputs = tokenizer(text, return_tensors='pt').to('cuda:0')

Remove token type ids if present, not all models use them

inputs.pop("token_type_ids", None)

Generating outputs with stopping criteria

outputs = model.generate( **inputs, max_new_tokens=512, do_sample=False, early_stopping=True, temperature=0.8, top_k=50, top_p=0.95, num_return_sequences=1, eos_token_id=tokenizer.encode(stop_word, add_special_tokens=False)[0] # Set EOS token to your stop word ) outputs = tokenizer.decode(outputs[0], skip_special_tokens=True) print(outputs)

Input:

ุณู„ุงู… ุนู„ูŠูƒู… ุงุดุนุฑ ุจุถูŠู‚ ููŠ ุงู„ุชู†ูุณ ูˆุงุนุงู†ูŠ ู…ู† ูƒุซุฑุฉ ุงู„ุจู„ุบู…

Response:

ูˆุนู„ูŠูƒู… ุงู„ุณู„ุงู…! ุฃู†ุง ู‡ู†ุง ู„ู…ุณุงุนุฏุชูƒ. ุถูŠู‚ ุงู„ุชู†ูุณ ู…ุน ูˆุฌูˆุฏ ุจู„ุบู… ูŠู…ูƒู† ุฃู† ูŠูƒูˆู† ู…ุคุดุฑุงู‹ ุนู„ู‰ ูˆุฌูˆุฏ ุนุฏูˆู‰ ููŠ ุงู„ุฑุฆุฉ ุฃูˆ ุงู„ู‚ุตุจุงุช.

ุฃูˆุตูŠ ุจุฃู† ุชู‚ูˆู… ุจุฒูŠุงุฑุฉ ุทุจูŠุจ ู…ุฎุชุต ุจุฃู…ุฑุงุถ ุงู„ุฑุฆุฉ ูˆุงู„ุตุฏุฑูŠุฉ ู„ู„ุญุตูˆู„ ุนู„ู‰ ุชุดุฎูŠุต ุฏู‚ูŠู‚. ูŠู…ูƒู† ู„ู„ุทุจูŠุจ ุฃู† ูŠุทู„ุจ ุฅุฌุฑุงุก ูุญูˆุตุงุช ุฏู…ุŒ ุฃุดุนุฉ ุนู„ู‰ ุงู„ุตุฏุฑุŒ ุฃูˆ ุญุชู‰ ุงุฎุชุจุงุฑุงุช ุฃุฎุฑู‰ ู…ุซู„ ุชุฎุทูŠุท ุงู„ุฑุฆุฉ ู„ุชุญุฏูŠุฏ ู†ูˆุน ุงู„ุนุฏูˆู‰ ูˆุงู„ู…ุถุงุฏ ุงู„ู…ู†ุงุณุจ ู„ู‡ุง.

ุฅุฐุง ูƒู†ุช ุชุฑุบุจุŒ ูŠู…ูƒู†ู†ูŠ ู…ุณุงุนุฏุชูƒ ููŠ ุงู„ุนุซูˆุฑ ุนู„ู‰ ุทุจูŠุจ ู…ุฎุชุต ุจุฃู…ุฑุงุถ ุงู„ุฑุฆุฉ ูˆุงู„ุตุฏุฑูŠุฉ ููŠ ู…ู†ุทู‚ุชูƒ. ู‡ู„ ุชูˆุฏ ู…ุนุฑูุฉ ู…ุนู„ูˆู…ุงุช ุนู† ุงู„ุฃุทุจุงุก ุงู„ู…ุชุงุญูŠู† ููŠ ู…ู†ุทู‚ุชูƒุŸ

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