25 KiB
English | įŽäŊ䏿 | įšéĢ䏿 | íęĩė´ | EspaÃąol | æĨæŦčĒ | ā¤šā¤ŋ⤍āĨā¤ĻāĨ | Đ ŅŅŅĐēиК | PortuguÃĒs | ā°¤āąā°˛āąā°āą | Français | Deutsch | Italiano | Tiáēŋng Viáģt | Ø§ŲØšØąØ¨ŲØŠ | Ø§ØąØ¯Ų | āĻŦāĻžāĻāϞāĻž | TÃŧrkçe |
āĻāύāĻĢāĻžāϰā§āύā§āϏ āĻ āĻā§āϰā§āύāĻŋāĻā§ā§āϰ āĻāύā§āϝ āĻāϧā§āύāĻŋāĻāϤāĻŽ (State-of-the-art) āĻĒā§āϰāĻŋ-āĻā§āϰā§āĻāύā§āĻĄ āĻŽāĻĄā§āϞāϏāĻŽā§āĻš
Transformers āĻšāϞ⧠āĻāĻāĻāĻž āĻĢā§āϰā§āĻŽāĻā§āĻžāϰā§āĻ āϝā§āĻāĻž āĻĻāĻŋā§ā§ āĻā§āĻā§āϏāĻ, āĻāĻŽā§āĻĒāĻŋāĻāĻāĻžāϰ āĻāĻŋāĻļāύ, āĻ āĻĄāĻŋāĻ, āĻāĻŋāĻĄāĻŋāĻ āĻāϰ āĻŽāĻžāϞā§āĻāĻŋāĻŽā§āĻĄāĻžāϞâāϏāĻŦ āϧāϰāύā§āϰ āĻŽāĻĄā§āϞ āϤā§āϰāĻŋ āĻāϰ āĻāĻžāϞāĻžāύ⧠āϝāĻžā§āĨ¤ āĻāĻāĻž āĻā§āϰā§āĻāύāĻŋāĻ āĻāϰ āĻāύāĻĢāĻžāϰā§āύā§āϏ â āĻĻā§āĻ āĻāĻžāĻā§āĻ āĻŦā§āϝāĻŦāĻšāĻžāϰ āĻāϰāĻž āĻšā§āĨ¤
Transformers āĻŽāĻĄā§āϞā§āϰ āĻĄā§āĻĢāĻŋāύāĻŋāĻļāύ āĻāĻ āĻāĻžā§āĻāĻžā§ āϰāĻžāĻā§āĨ¤ āĻāϰ āĻŽāĻžāύ⧠āĻšāϞā§, āĻāĻāĻŦāĻžāϰ āĻā§āύ⧠āĻŽāĻĄā§āϞ transformers-āĻ āϏāĻžāĻĒā§āϰā§āĻ āĻĒā§āϞā§āĻ āϏā§āĻāĻž āϏāĻšāĻā§ āĻŦāĻŋāĻāĻŋāύā§āύ āĻā§āϰā§āĻāύāĻŋāĻ āĻĢā§āϰā§āĻŽāĻā§āĻžāϰā§āĻ (Axolotl, Unsloth, DeepSpeed, FSDP, PyTorch-Lightning āĻāϤā§āϝāĻžāĻĻāĻŋ), āĻāύāĻĢāĻžāϰā§āύā§āϏ āĻāĻā§āĻāĻŋāύ (vLLM, SGLang, TGI āĻāϤā§āϝāĻžāĻĻāĻŋ) āĻāϰ āĻ
āύā§āϝāĻžāύā§āϝ āϞāĻžāĻāĻŦā§āϰā§āϰāĻŋ (llama.cpp, mlx āĻāϤā§āϝāĻžāĻĻāĻŋ)-āϤ⧠āĻŦā§āϝāĻŦāĻšāĻžāϰ āĻāϰāĻž āϝāĻžā§āĨ¤
āĻāĻŽāϰāĻž āĻāĻžāĻ āύāϤā§āύ āĻāϰ āĻāϧā§āύāĻŋāĻ āĻŽāĻĄā§āϞāĻā§āϞ⧠āϏāĻŦāĻžāĻ āĻŦā§āϝāĻŦāĻšāĻžāϰ āĻāϰāϤ⧠āĻĒāĻžāϰā§āĨ¤ āϤāĻžāĻ āĻŽāĻĄā§āϞā§āϰ āĻĄā§āĻĢāĻŋāύāĻŋāĻļāύ āϰāĻžāĻāĻž āĻšā§ā§āĻā§ āϏāĻšāĻ, āĻāĻžāϏā§āĻāĻŽāĻžāĻāĻāϝā§āĻā§āϝ āĻāϰ āĻĒāĻžāϰāĻĢāϰāĻŽā§āϝāĻžāύā§āϏ-āĻĢā§āϰā§āύā§āĻĄāϞāĻŋāĨ¤
āĻāĻāύ āĻĒāϰā§āϝāύā§āϤ Hugging Face Hub-āĻ ā§§ā§Ļ āϞāĻžāĻā§āϰāĻ āĻŦā§āĻļāĻŋ Transformers āĻŽāĻĄā§āϞ āĻā§āĻāĻĒā§ā§āύā§āĻ āĻāĻā§, āϝā§āĻā§āϞ⧠āϝā§āĻā§āύ⧠āϏāĻŽā§ āĻŦā§āϝāĻŦāĻšāĻžāϰ āĻāϰāĻž āϝāĻžā§āĨ¤
āĻāĻāĻ Hub āĻĨā§āĻā§ āĻāĻāĻāĻž āĻŽāĻĄā§āϞ āĻŦā§āĻā§ āύāĻŋāύ āĻāϰ Transformers āĻĻāĻŋā§ā§ āĻļā§āϰ⧠āĻāϰā§āύāĨ¤
āĻāύāϏā§āĻāϞā§āĻļāύ
Transformers Python 3.10+ āϏāĻš āĻāĻžāĻ āĻāϰā§, āĻāĻŦāĻ PyTorch 2.4+āĨ¤
venv āĻŦāĻž uv āĻŦā§āϝāĻŦāĻšāĻžāϰ āĻāϰ⧠āĻāĻāĻāĻŋ āĻāĻžāϰā§āĻā§āϝāĻŧāĻžāϞ āĻāύāĻāĻžāϝāĻŧāϰāύāĻŽā§āύā§āĻ āϤā§āϰāĻŋ āĻāĻŦāĻ āϏāĻā§āϰāĻŋāϝāĻŧ āĻāϰā§āύāĨ¤
# venv
python -m venv .my-env
source .my-env/bin/activate
# uv
uv venv .my-env
source .my-env/bin/activate
āĻāĻĒāύāĻžāϰ āĻāĻžāϰā§āĻā§āϝāĻŧāĻžāϞ āĻĒāϰāĻŋāĻŦā§āĻļā§ Transformers āĻāύāϏā§āĻāϞ āĻāϰā§āύāĨ¤
# pip
pip install "transformers[torch]"
# uv
uv pip install "transformers[torch]"
āϝāĻĻāĻŋ āĻāĻĒāύāĻŋ āϞāĻžāĻāĻŦā§āϰā§āϰāĻŋāϰ āϏāϰā§āĻŦāĻļā§āώ āĻĒāϰāĻŋāĻŦāϰā§āϤāύāĻā§āϞāĻŋ āĻāĻžāύ āĻŦāĻž āĻ āĻŦāĻĻāĻžāύ āϰāĻžāĻāϤ⧠āĻāĻā§āϰāĻšā§ āĻšāύ āϤāĻŦā§ āĻā§āϏ āĻĨā§āĻā§ Transformers āĻāύāϏā§āĻāϞ āĻāϰā§āύāĨ¤ āϤāĻŦā§, āϏāϰā§āĻŦāĻļā§āώ āϏāĻāϏā§āĻāϰāĻŖāĻāĻŋ āϏā§āĻĨāĻŋāϤāĻŋāĻļā§āϞ āύāĻžāĻ āĻšāϤ⧠āĻĒāĻžāϰā§āĨ¤ āϝāĻĻāĻŋ āĻāĻĒāύāĻŋ āĻā§āύ⧠āϤā§āϰā§āĻāĻŋāϰ āϏāĻŽā§āĻŽā§āĻā§āύ āĻšāύ āϤāĻŦā§ āύāĻŋāϰā§āĻĻā§āĻŦāĻŋāϧāĻžāϝāĻŧ āĻāĻāĻāĻŋ issue āĻā§āϞā§āύāĨ¤
git clone [https://github.com/huggingface/transformers.git](https://github.com/huggingface/transformers.git)
cd transformers
# pip
pip install .[torch]
# uv
uv pip install .[torch]
āĻā§āĻāĻāϏā§āĻāĻžāϰā§āĻ
Transformers āĻŦā§āϝāĻŦāĻšāĻžāϰ āĻļā§āϰ⧠āĻāϰā§āύ āĻāĻāύāĻ Pipeline API āĻĻāĻŋā§ā§āĨ¤ Pipeline āĻšāϞ⧠āĻāĻāĻāĻŋ āĻšāĻžāĻ-āϞā§āĻā§āϞ āĻāύāĻĢāĻžāϰā§āύā§āϏ āĻā§āϞāĻžāϏ, āϝāĻž āĻā§āĻā§āϏāĻ, āĻ
āĻĄāĻŋāĻ, āĻāĻŋāĻļāύ āĻāĻŦāĻ āĻŽāĻžāϞā§āĻāĻŋāĻŽā§āĻĄāĻžāϞ āĻāĻžāϏā§āĻ āϏāĻžāĻĒā§āϰā§āĻ āĻāϰā§āĨ¤ āĻāĻāĻŋ āĻāύāĻĒā§āĻ āĻĒā§āϰāĻŋāĻĒā§āϰāϏā§āϏāĻŋāĻ āĻāϰ⧠āĻāĻŦāĻ āϏāĻ āĻŋāĻ āĻāĻāĻāĻĒā§āĻ āϰāĻŋāĻāĻžāϰā§āύ āĻāϰā§āĨ¤
āĻāĻāĻāĻŋ āĻĒāĻžāĻāĻĒāϞāĻžāĻāύ āϤā§āϰāĻŋ āĻāϰā§āύ āĻāĻŦāĻ āĻā§āĻā§āϏāĻ āĻā§āύāĻžāϰā§āĻļāύā§āϰ āĻāύā§āϝ āĻā§āύ āĻŽāĻĄā§āϞ āĻŦā§āϝāĻŦāĻšāĻžāϰ āĻāϰāĻŦā§āύ āϤāĻž āύāĻŋāϰā§āĻĻāĻŋāώā§āĻ āĻāϰā§āύāĨ¤ āĻŽāĻĄā§āϞāĻāĻŋ āĻĄāĻžāĻāύāϞā§āĻĄ āĻšā§ā§ āĻā§āϝāĻžāĻļā§ āϰāĻžāĻāĻž āĻšāĻŦā§, āĻĢāϞ⧠āĻĒāϰ⧠āϏāĻšāĻā§āĻ āĻāĻŦāĻžāϰ āĻŦā§āϝāĻŦāĻšāĻžāϰ āĻāϰāϤ⧠āĻĒāĻžāϰāĻŦā§āύāĨ¤ āϏāĻŦāĻļā§āώā§, āĻŽāĻĄā§āϞāĻā§ āĻĒā§āϰāĻŽā§āĻĒāĻ āĻāϰāĻžāϰ āĻāύā§āϝ āĻāĻŋāĻā§ āĻā§āĻā§āϏāĻ āĻĻāĻŋāύāĨ¤
from transformers import pipeline
pipeline = pipeline(task="text-generation", model="Qwen/Qwen2.5-1.5B")
pipeline("the secret to baking a really good cake is ")
[{'generated_text': 'the secret to baking a really good cake is 1) to use the right ingredients and 2) to follow the recipe exactly. the recipe for the cake is as follows: 1 cup of sugar, 1 cup of flour, 1 cup of milk, 1 cup of butter, 1 cup of eggs, 1 cup of chocolate chips. if you want to make 2 cakes, how much sugar do you need? To make 2 cakes, you will need 2 cups of sugar.'}]
āĻŽāĻĄā§āϞā§āϰ āϏāĻžāĻĨā§ āĻā§āϝāĻžāĻ āĻāϰāϤ⧠āĻšāϞā§āĻ āĻŦā§āϝāĻŦāĻšāĻžāϰ āĻĒā§āϝāĻžāĻāĻžāϰā§āύ āĻāĻāĻāĨ¤ āĻļā§āϧ⧠āĻĒāĻžāϰā§āĻĨāĻā§āϝ āĻšāϞā§, āĻāĻĒāύāĻžāĻā§ āĻāĻāĻāĻŋ āĻā§āϝāĻžāĻ āĻšāĻŋāϏā§āĻā§āϰāĻŋ āϤā§āϰāĻŋ āĻāϰāϤ⧠āĻšāĻŦā§ (āϝāĻž Pipeline-āĻ āĻāύāĻĒā§āĻ āĻšāĻŋāϏā§āĻŦā§ āϝāĻžāĻŦā§) āĻāĻĒāύāĻžāϰ āĻāϰ āϏāĻŋāϏā§āĻā§āĻŽā§āϰ āĻŽāϧā§āϝā§āĨ¤
Tip
āĻāĻĒāύāĻŋ āϏāϰāĻžāϏāϰāĻŋ āĻāĻŽāĻžāύā§āĻĄ āϞāĻžāĻāύ āĻĨā§āĻā§āĻ āĻāĻāĻāĻŋ āĻŽāĻĄā§āϞā§āϰ āϏāĻžāĻĨā§ āĻā§āϝāĻžāĻ āĻāϰāϤ⧠āĻĒāĻžāϰā§āύāĨ¤
transformers chat Qwen/Qwen2.5-0.5B-Instruct
import torch
from transformers import pipeline
chat = [
{"role": "system", "content": "You are a sassy, wise-cracking robot as imagined by Hollywood circa 1986."},
{"role": "user", "content": "Hey, can you tell me any fun things to do in New York?"}
]
pipeline = pipeline(task="text-generation", model="meta-llama/Meta-Llama-3-8B-Instruct", dtype=torch.bfloat16, device_map="auto")
response = pipeline(chat, max_new_tokens=512)
print(response[0]["generated_text"][-1]["content"])
āĻŦāĻŋāĻāĻŋāύā§āύ āĻŽā§āĻĄāĻžāϞāĻŋāĻāĻŋ āĻāĻŦāĻ āĻāĻžāĻā§āϰ āĻāύā§āϝ Pipeline āĻāĻŋāĻāĻžāĻŦā§ āĻāĻžāĻ āĻāϰ⧠āϤāĻž āĻĻā§āĻāϤ⧠āύāĻŋāĻā§āϰ āĻāĻĻāĻžāĻšāϰāĻŖāĻā§āϞ⧠āϏāĻŽā§āĻĒā§āϰāϏāĻžāϰāĻŖ āĻāϰā§āύāĨ¤
āĻ āĻā§āĻŽā§āĻāĻŋāĻ āϏā§āĻĒāĻŋāĻ āϰāĻŋāĻāĻāύāĻŋāĻļāύ (ASR)
from transformers import pipeline
pipeline = pipeline(task="automatic-speech-recognition", model="openai/whisper-large-v3")
pipeline("[https://huggingface.co/datasets/Narsil/asr_dummy/resolve/main/mlk.flac](https://huggingface.co/datasets/Narsil/asr_dummy/resolve/main/mlk.flac)")
{'text': ' I have a dream that one day this nation will rise up and live out the true meaning of its creed.'}
āĻāĻŽā§āĻ āĻā§āϞāĻžāϏāĻŋāĻĢāĻŋāĻā§āĻļāύ
from transformers import pipeline
pipeline = pipeline(task="image-classification", model="facebook/dinov2-small-imagenet1k-1-layer")
pipeline("[https://huggingface.co/datasets/Narsil/image_dummy/raw/main/parrots.png](https://huggingface.co/datasets/Narsil/image_dummy/raw/main/parrots.png)")
[{'label': 'macaw', 'score': 0.997848391532898},
{'label': 'sulphur-crested cockatoo, Kakatoe galerita, Cacatua galerita',
'score': 0.0016551691805943847},
{'label': 'lorikeet', 'score': 0.00018523589824326336},
{'label': 'African grey, African gray, Psittacus erithacus',
'score': 7.85409429227002e-05},
{'label': 'quail', 'score': 5.502637941390276e-05}]
āĻāĻŋāĻā§āϝāĻŧāĻžāϞ āĻā§āϝāĻŧā§āĻļā§āĻāύ āĻāύāϏāĻžāϰāĻŋāĻ
from transformers import pipeline
pipeline = pipeline(task="visual-question-answering", model="Salesforce/blip-vqa-base")
pipeline(
image="[https://huggingface.co/datasets/huggingface/documentation-images/resolve/main/transformers/tasks/idefics-few-shot.jpg](https://huggingface.co/datasets/huggingface/documentation-images/resolve/main/transformers/tasks/idefics-few-shot.jpg)",
question="What is in the image?",
)
[{'answer': 'statue of liberty'}]
āĻā§āύ Transformers āĻŦā§āϝāĻŦāĻšāĻžāϰ āĻāϰāĻŦā§āύ?
-
āϏāĻšāĻā§ āĻŦā§āϝāĻŦāĻšāĻžāϰāϝā§āĻā§āϝ āϏāϰā§āĻŦāĻžāϧā§āύāĻŋāĻ āĻŽāĻĄā§āϞ:
- āύā§āϝāĻžāĻāĻžāϰāĻžāϞ āϞā§āϝāĻžāĻā§āĻā§āϝāĻŧā§āĻ āĻāύā§āĻĄāĻžāϰāϏā§āĻā§āϝāĻžāύā§āĻĄāĻŋāĻ āĻ āĻā§āύāĻžāϰā§āĻļāύ, āĻāĻŽā§āĻĒāĻŋāĻāĻāĻžāϰ āĻāĻŋāĻļāύ, āĻ āĻĄāĻŋāĻ, āĻāĻŋāĻĄāĻŋāĻ āĻāĻŦāĻ āĻŽāĻžāϞā§āĻāĻŋāĻŽā§āĻĄāĻžāϞ āĻāĻžāϏā§āĻā§ āĻāĻā§āĻ āĻĒāĻžāϰāĻĢāϰāĻŽā§āϝāĻžāύā§āϏāĨ¤
- āĻāĻŦā§āώāĻ, āĻāĻā§āĻāĻŋāύāĻŋāϝāĻŧāĻžāϰ āĻāĻŦāĻ āĻĄā§āĻā§āϞāĻĒāĻžāϰāĻĻā§āϰ āĻāύā§āϝ āϏāĻšāĻā§ āĻļā§āϰ⧠āĻāϰāĻžāϰ āϏā§āϝā§āĻāĨ¤
- āĻŽāĻžāϤā§āϰ āϤāĻŋāύāĻāĻŋ āĻā§āϞāĻžāϏ āĻļāĻŋāĻāϞā§āĻ āĻŦā§āϝāĻŦāĻšāĻžāϰ āĻāϰāĻž āϝāĻžāϝāĻŧāĨ¤
- āϏāĻŦ āĻĒā§āϰāĻŋ-āĻā§āϰā§āĻāύā§āĻĄ āĻŽāĻĄā§āϞā§āϰ āĻāύā§āϝ āĻāĻāĻāĻŋ āĻāĻā§āĻā§āϤ APIāĨ¤
-
āĻāĻŽ āĻāĻŽā§āĻĒāĻŋāĻāĻ āĻāϰāĻ, āĻā§āĻ āĻāĻžāϰā§āĻŦāύ āĻĢā§āĻāĻĒā§āϰāĻŋāύā§āĻ:
- āĻļā§āύā§āϝ āĻĨā§āĻā§ āĻā§āϰā§āĻāύ āύāĻž āĻāϰ⧠āĻā§āϰā§āĻāύā§āĻĄ āĻŽāĻĄā§āϞ āĻļā§āϝāĻŧāĻžāϰ āĻāϰā§āύāĨ¤
- āĻāĻŽā§āĻĒāĻŋāĻāĻ āĻāĻžāĻāĻŽ āĻ āĻĒā§āϰā§āĻĄāĻžāĻāĻļāύ āĻāϰāĻ āĻāĻŽāĻžāύāĨ¤
- āϏāĻŦ āϧāϰāύā§āϰ āĻŽā§āĻĄāĻžāϞāĻŋāĻāĻŋāϰ āĻāύā§āϝ ā§§ā§Ļ āϞāĻā§āώ+ āĻĒā§āϰāĻŋ-āĻā§āϰā§āĻāύā§āĻĄ āĻā§āĻāĻĒāϝāĻŧā§āύā§āĻāϏāĻš āĻĄāĻāύāĻāĻžāύā§āĻ āĻŽāĻĄā§āϞ āĻāϰā§āĻāĻŋāĻā§āĻāĻāĻžāϰāĨ¤
-
āĻŽāĻĄā§āϞā§āϰ āϞāĻžāĻāĻĢāϏāĻžāĻāĻā§āϞā§āϰ āĻĒā§āϰāϤāĻŋāĻāĻŋ āϧāĻžāĻĒā§ āϏāĻ āĻŋāĻ āĻĢā§āϰā§āĻŽāĻāϝāĻŧāĻžāϰā§āĻ āĻŦā§āĻā§ āύāĻŋāύ:
- āĻŽāĻžāϤā§āϰ ā§Š āϞāĻžāĻāύā§āϰ āĻā§āĻĄā§ āϏāϰā§āĻŦāĻžāϧā§āύāĻŋāĻ āĻŽāĻĄā§āϞ āĻā§āϰā§āĻāύ āĻāϰā§āύāĨ¤
- āϏāĻšāĻā§ PyTorch / JAX / TF2.0 āĻāϰ āĻŽāϧā§āϝ⧠āĻŽāĻĄā§āϞ āϏā§āĻĨāĻžāύāĻžāύā§āϤāϰ āĻāϰā§āύāĨ¤
- āĻā§āϰā§āĻāύāĻŋāĻ, āĻāĻā§āϝāĻžāϞā§āϝāĻŧā§āĻļāύ āĻ āĻĒā§āϰā§āĻĄāĻžāĻāĻļāύā§āϰ āĻāύā§āϝ āĻāϞāĻžāĻĻāĻž āĻĢā§āϰā§āĻŽāĻāϝāĻŧāĻžāϰā§āĻ āĻŦā§āϝāĻŦāĻšāĻžāϰ āĻāϰā§āύāĨ¤
-
āϏāĻšāĻā§āĻ āĻŽāĻĄā§āϞ āĻŦāĻž āĻāĻĻāĻžāĻšāϰāĻŖ āĻāĻžāϏā§āĻāĻŽāĻžāĻāĻ āĻāϰā§āύ:
- āĻĒā§āϰāϤāĻŋāĻāĻŋ āĻāϰā§āĻāĻŋāĻā§āĻāĻāĻžāϰā§āϰ āĻāύā§āϝ āĻāĻŽāύ āĻāĻĻāĻžāĻšāϰāĻŖ āĻĻā§āĻāϝāĻŧāĻž āĻāĻā§ āϝāĻž āĻŽā§āϞ āϞā§āĻāĻāĻĻā§āϰ āĻĒā§āϰāĻāĻžāĻļāĻŋāϤ āĻĢāϞāĻžāĻĢāϞ āĻĒā§āύāϰā§āϤā§āĻĒāĻžāĻĻāύ āĻāϰāϤ⧠āϏāĻā§āώāĻŽāĨ¤
- āĻŽāĻĄā§āϞā§āϰ āĻ āĻā§āϝāύā§āϤāϰā§āĻŖ āĻ āĻāĻļāĻā§āϞ⧠āϝāϤāĻāĻž āϏāĻŽā§āĻāĻŦ āĻāĻāĻāĻžāĻŦā§ āĻāĻā§āϏāĻĒā§āĻ āĻāϰāĻž āĻšāϝāĻŧā§āĻā§āĨ¤
- āĻĻā§āϰā§āϤ āĻāĻā§āϏāĻĒā§āϰāĻŋāĻŽā§āύā§āĻā§āϰ āĻāύā§āϝ āϞāĻžāĻāĻŦā§āϰā§āϰāĻŋ āĻāĻžāĻĄāĻŧāĻžāĻ āĻŽāĻĄā§āϞ āĻĢāĻžāĻāϞ āĻŦā§āϝāĻŦāĻšāĻžāϰ āĻāϰāĻž āϝāĻžāϝāĻŧāĨ¤
āĻā§āύ Transformers āĻŦā§āϝāĻŦāĻšāĻžāϰ āĻāϰāĻŦā§āύ āύāĻž?
- āĻāĻ āϞāĻžāĻāĻŦā§āϰā§āϰāĻŋ āύāĻŋāĻāϰāĻžāϞ āύā§āĻāĻā§āĻžāϰā§āĻā§āϰ āĻāύā§āϝ āĻŦā§āϞāĻ-āĻŽāĻĄāĻŋāĻāϞ āĻā§āϞāĻŦāĻā§āϏ āύāϝāĻŧāĨ¤ āĻŽāĻĄā§āϞ āĻĢāĻžāĻāϞā§āϰ āĻā§āĻĄā§ āĻ āϤāĻŋāϰāĻŋāĻā§āϤ āĻ ā§āϝāĻžāĻŦāϏā§āĻā§āϰā§āϝāĻžāĻāĻļāύ intentionally āĻāϰāĻž āĻšāϝāĻŧāύāĻŋ, āϝāĻžāϤ⧠āĻāĻŦā§āώāĻāϰāĻž āĻĻā§āϰā§āϤ āĻĒā§āϰāϤāĻŋāĻāĻŋ āĻŽāĻĄā§āϞā§āϰ āĻāĻĒāϰ āĻāĻžāĻ āĻāϰāϤ⧠āĻĒāĻžāϰ⧠āĻā§āύ⧠āĻ āϤāĻŋāϰāĻŋāĻā§āϤ āĻĢāĻžāĻāϞ āĻŦāĻž āϏā§āϤāϰ⧠āύāĻž āĻāĻŋāϝāĻŧā§āĨ¤
- āĻā§āϰā§āĻāύāĻŋāĻ API āĻŽā§āϞāϤ Transformers-āĻāϰ PyTorch āĻŽāĻĄā§āϞā§āϰ āϏāĻžāĻĨā§ āĻāĻžāĻ āĻāϰāĻžāϰ āĻāύā§āϝ āĻ āĻĒāĻāĻŋāĻŽāĻžāĻāĻ āĻāϰāĻž āĻšāϝāĻŧā§āĻā§āĨ¤ āϏāĻžāϧāĻžāϰāĻŖ āĻŽā§āĻļāĻŋāύ āϞāĻžāϰā§āύāĻŋāĻ āϞā§āĻĒā§āϰ āĻāύā§āϝ, Accelerate āĻāϰ āĻŽāϤ⧠āĻ āύā§āϝ āϞāĻžāĻāĻŦā§āϰā§āϰāĻŋ āĻŦā§āϝāĻŦāĻšāĻžāϰ āĻāϰāĻž āĻāĻāĻŋāϤāĨ¤
- āĻāĻĻāĻžāĻšāϰāĻŖ āϏā§āĻā§āϰāĻŋāĻĒā§āĻāĻā§āϞ⧠āĻļā§āϧ⧠āĻāĻĻāĻžāĻšāϰāĻŖāĨ¤ āĻāĻā§āϞ⧠āϏāϰāĻžāϏāϰāĻŋ āĻāĻĒāύāĻžāϰ āĻŦā§āϝāĻŦāĻšāĻžāϰā§āϰ āĻā§āώā§āϤā§āϰ⧠āĻāĻžāĻ āύāĻžāĻ āĻāϰāϤ⧠āĻĒāĻžāϰā§, āϤāĻžāĻ āĻā§āĻĄ āϏāĻžāĻŽāĻā§āĻāϏā§āϝ āĻāϰāϤ⧠āĻšāϤ⧠āĻĒāĻžāϰā§āĨ¤
Transformers āĻĻāĻŋāϝāĻŧā§ ā§§ā§Ļā§ĻāĻāĻŋ āĻĒā§āϰāĻā§āĻā§āĻ
Transformers āĻļā§āϧ⧠āĻĒā§āϰāĻŋ-āĻā§āϰā§āĻāύā§āĻĄ āĻŽāĻĄā§āϞ āĻŦā§āϝāĻŦāĻšāĻžāϰ āĻāϰāĻžāϰ āĻā§āϞāĻāĻŋāĻ āύāϝāĻŧ, āĻāĻāĻŋ āĻāĻāĻāĻŋ āĻāĻŽāĻŋāĻāύāĻŋāĻāĻŋ, āϝāĻž Hugging Face Hub-āĻāϰ āĻāĻžāϰāĻĒāĻžāĻļā§ āϤā§āϰāĻŋāĨ¤ āĻāĻŽāϰāĻž āĻāĻžāĻ āϝ⧠āĻĄā§āĻā§āϞāĻĒāĻžāϰ, āĻāĻŦā§āώāĻ, āĻļāĻŋāĻā§āώāĻžāϰā§āĻĨā§, āĻ āϧā§āϝāĻžāĻĒāĻ, āĻāĻā§āĻāĻŋāύāĻŋāϝāĻŧāĻžāϰ āĻŦāĻž āϝ⧠āĻā§āĻ āϤāĻžāĻĻā§āϰ āϏā§āĻŦāĻĒā§āύā§āϰ āĻĒā§āϰāĻā§āĻā§āĻ āϤā§āϰāĻŋ āĻāϰāϤ⧠āĻĒāĻžāϰā§āĨ¤
Transformers 100,000 āϏā§āĻāĻžāϰ āĻāĻĻāϝāĻžāĻĒāύ āĻāϰāϤ⧠āĻāĻŽāϰāĻž āĻāĻŽāĻŋāĻāύāĻŋāĻāĻŋāĻā§ āϤā§āϞ⧠āϧāϰāϤ⧠awesome-transformers āĻĒā§āĻ āϤā§āϰāĻŋ āĻāϰā§āĻāĻŋ, āϝā§āĻāĻžāύ⧠Transformers āĻĻāĻŋāϝāĻŧā§ āϤā§āϰāĻŋ ā§§ā§Ļā§ĻāĻāĻŋ āĻ āϏāĻžāϧāĻžāϰāĻŖ āĻĒā§āϰāĻā§āĻā§āĻ āϤāĻžāϞāĻŋāĻāĻžāĻā§āĻā§āϤ āĻāĻā§āĨ¤
āĻāĻĒāύāĻžāϰ āĻā§āύ⧠āĻĒā§āϰāĻā§āĻā§āĻ āĻāĻā§ āϝāĻž āϤāĻžāϞāĻŋāĻāĻžāϝāĻŧ āĻĨāĻžāĻāĻž āĻāĻāĻŋāϤ āĻŽāύ⧠āĻāϰā§āύ? āϤāĻžāĻšāϞ⧠PR āĻā§āϞ⧠āϝā§āĻā§āϤ āĻāϰā§āύāĨ¤
āĻāĻĻāĻžāĻšāϰāĻŖ āĻŽāĻĄā§āϞ
āĻāĻĒāύāĻŋ āĻāĻŽāĻžāĻĻā§āϰ āĻ āϧāĻŋāĻāĻžāĻāĻļ āĻŽāĻĄā§āϞ āϏāϰāĻžāϏāϰāĻŋ āϤāĻžāĻĻā§āϰ Hub āĻŽāĻĄā§āϞ āĻĒā§āĻ āĻĨā§āĻā§ āĻĒāϰā§āĻā§āώāĻž āĻāϰāϤ⧠āĻĒāĻžāϰā§āύāĨ¤
āύāĻŋāĻā§āϰ āĻĒā§āϰāϤāĻŋāĻāĻŋ āĻŽā§āĻĄāĻžāϞāĻŋāĻāĻŋ āĻāĻā§āϏāĻĒā§āϝāĻžāύā§āĻĄ āĻāϰ⧠āĻŦāĻŋāĻāĻŋāύā§āύ āĻŦā§āϝāĻŦāĻšāĻžāϰ āĻā§āϏā§āϰ āĻāύā§āϝ āĻāϝāĻŧā§āĻāĻāĻŋ āĻāĻĻāĻžāĻšāϰāĻŖ āĻŽāĻĄā§āϞ āĻĻā§āĻā§āύāĨ¤
āĻ āĻĄāĻŋāĻ
- Whisper āĻĻāĻŋāϝāĻŧā§ āĻ āĻĄāĻŋāĻ āĻā§āϞāĻžāϏāĻŋāĻĢāĻŋāĻā§āĻļāύ
- Moonshine āĻĻāĻŋāϝāĻŧā§ āĻ āĻā§āĻŽā§āĻāĻŋāĻ āϏā§āĻĒāĻŋāĻ āϰāĻŋāĻāĻāύāĻŋāĻļāύ
- Wav2Vec2 āĻĻāĻŋāϝāĻŧā§ āĻā§āĻāϝāĻŧāĻžāϰā§āĻĄ āϏā§āĻĒāĻāĻŋāĻ
- Moshi āĻĻāĻŋāϝāĻŧā§ āϏā§āĻĒāĻŋāĻ-āĻā§-āϏā§āĻĒāĻŋāĻ āĻā§āύāĻžāϰā§āĻļāύ
- MusicGen āĻĻāĻŋāϝāĻŧā§ āĻā§āĻā§āϏāĻ-āĻā§-āĻ āĻĄāĻŋāĻ
- Bark āĻĻāĻŋāϝāĻŧā§ āĻā§āĻā§āϏāĻ-āĻā§-āϏā§āĻĒāĻŋāĻ
āĻāĻŽā§āĻĒāĻŋāĻāĻāĻžāϰ āĻāĻŋāĻļāύ
- SAM āĻĻāĻŋāϝāĻŧā§ āϏā§āĻŦāϝāĻŧāĻāĻā§āϰāĻŋāϝāĻŧ āĻŽāĻžāϏā§āĻ āĻā§āύāĻžāϰā§āĻļāύ
- DepthPro āĻĻāĻŋāϝāĻŧā§ āĻāĻā§āϰāϤāĻž āĻ āύā§āĻŽāĻžāύ
- DINO v2 āĻĻāĻŋāϝāĻŧā§ āĻāĻŋāϤā§āϰ āĻļā§āϰā§āĻŖā§āĻāϰāĻŖ
- SuperPoint āĻĻāĻŋāϝāĻŧā§ āĻā§āĻĒāϝāĻŧā§āύā§āĻ āϏāύāĻžāĻā§āϤāĻāϰāĻŖ
- SuperGlue āĻĻāĻŋāϝāĻŧā§ āĻā§āĻĒāϝāĻŧā§āύā§āĻ āĻŽā§āϝāĻžāĻāĻŋāĻ
- RT-DETRv2 āĻĻāĻŋāϝāĻŧā§ āĻ āĻŦāĻā§āĻā§āĻ āϏāύāĻžāĻā§āϤāĻāϰāĻŖ
- VitPose āĻĻāĻŋāϝāĻŧā§ āĻĒā§āϏ āĻ āύā§āĻŽāĻžāύ
- OneFormer āĻĻāĻŋāϝāĻŧā§ āĻāĻāύāĻŋāĻāĻžāϰā§āϏāĻžāϞ āϏā§āĻāĻŽā§āύā§āĻā§āĻļāύ
- VideoMAE āĻĻāĻŋāϝāĻŧā§ āĻāĻŋāĻĄāĻŋāĻ āĻļā§āϰā§āĻŖā§āĻāϰāĻŖ
āĻŽāĻžāϞā§āĻāĻŋāĻŽā§āĻĄāĻžāϞ
- Qwen2-Audio āĻĻāĻŋāϝāĻŧā§ āĻ āĻĄāĻŋāĻ āĻŦāĻž āĻā§āĻā§āϏāĻ āĻĨā§āĻā§ āĻā§āĻā§āϏāĻ āĻā§āύāĻžāϰā§āĻļāύ
- LayoutLMv3 āĻĻāĻŋāϝāĻŧā§ āĻĄāĻā§āĻŽā§āύā§āĻ āĻĒā§āϰāĻļā§āύā§āϤā§āϤāϰ
- Qwen-VL āĻĻāĻŋāϝāĻŧā§ āĻāĻŽā§āĻ āĻŦāĻž āĻā§āĻā§āϏāĻ āĻĨā§āĻā§ āĻā§āĻā§āϏāĻ āĻā§āύāĻžāϰā§āĻļāύ
- BLIP-2 āĻĻāĻŋāϝāĻŧā§ āĻāĻŽā§āĻ āĻā§āϝāĻžāĻĒāĻļāύāĻŋāĻ
- GOT-OCR2 āĻĻāĻŋāϝāĻŧā§ OCR-āĻāĻŋāϤā§āϤāĻŋāĻ āĻĄāĻā§āĻŽā§āύā§āĻ āĻāύā§āĻĄāĻžāϰāϏā§āĻā§āϝāĻžāύā§āĻĄāĻŋāĻ
- TAPAS āĻĻāĻŋāϝāĻŧā§ āĻā§āĻŦāĻŋāϞ āĻĒā§āϰāĻļā§āύā§āϤā§āϤāϰ
- Emu3 āĻĻāĻŋāϝāĻŧā§ āĻāĻāύāĻŋāĻĢāĻžāĻāĻĄ āĻŽāĻžāϞā§āĻāĻŋāĻŽā§āĻĄāĻžāϞ āĻāύā§āĻĄāĻžāϰāϏā§āĻā§āϝāĻžāύā§āĻĄāĻŋāĻ āĻāĻŦāĻ āĻā§āύāĻžāϰā§āĻļāύ
- Llava-OneVision āĻĻāĻŋāϝāĻŧā§ āĻāĻŋāĻļāύ āĻĨā§āĻā§ āĻā§āĻā§āϏāĻ
- Llava āĻĻāĻŋāϝāĻŧā§ āĻāĻŋāĻā§āϝāĻŧāĻžāϞ āĻā§āϝāĻŧā§āĻļā§āĻāύ āĻāύāϏāĻžāϰāĻŋāĻ
- Kosmos-2 āĻĻāĻŋāϝāĻŧā§ āĻāĻŋāĻā§āϝāĻŧāĻžāϞ āϰā§āĻĢāĻžāϰāĻŋāĻ āĻāĻā§āϏāĻĒā§āϰā§āĻļāύ āϏā§āĻāĻŽā§āύā§āĻā§āĻļāύ
NLP
- ModernBERT āĻĻāĻŋāϝāĻŧā§ āĻŽāĻžāϏā§āĻāĻĄ āĻāϝāĻŧāĻžāϰā§āĻĄ āĻāĻŽāĻĒā§āϞāĻŋāĻļāύ
- Gemma āĻĻāĻŋāϝāĻŧā§ āύāĻžāĻŽā§āĻŦāĻĄ āĻāύā§āĻāĻŋāĻāĻŋ āϰāĻŋāĻāĻāύāĻŋāĻļāύ
- Mixtral āĻĻāĻŋāϝāĻŧā§ āĻĒā§āϰāĻļā§āύā§āϤā§āϤāϰ
- BART āĻĻāĻŋāϝāĻŧā§ āϏāĻžāϰāϏāĻāĻā§āώā§āĻĒ (Summarization)
- T5 āĻĻāĻŋāϝāĻŧā§ āĻ āύā§āĻŦāĻžāĻĻ
- Llama āĻĻāĻŋāϝāĻŧā§ āĻā§āĻā§āϏāĻ āĻā§āύāĻžāϰā§āĻļāύ
- Qwen āĻĻāĻŋāϝāĻŧā§ āĻā§āĻā§āϏāĻ āĻā§āϞāĻžāϏāĻŋāĻĢāĻŋāĻā§āĻļāύ
āϏāĻžāĻāĻā§āĻļāύ
āĻāĻŽāĻžāĻĻā§āϰ āĻāĻāĻāĻŋ āĻĒā§āĻĒāĻžāϰ āĻāĻā§ āϝāĻž āĻāĻĒāύāĻŋ đ¤ Transformers āϞāĻžāĻāĻŦā§āϰā§āϰāĻŋāϰ āĻāύā§āϝ āϰā§āĻĢāĻžāϰā§āύā§āϏ āĻšāĻŋāϏā§āĻŦā§ āĻŦā§āϝāĻŦāĻšāĻžāϰ āĻāϰāϤ⧠āĻĒāĻžāϰā§āύāĨ¤
@inproceedings{wolf-etal-2020-transformers,
title = "Transformers: State-of-the-Art Natural Language Processing",
author = "Thomas Wolf and Lysandre Debut and Victor Sanh and Julien Chaumond and Clement Delangue and Anthony Moi and Pierric Cistac and Tim Rault and RÊmi Louf and Morgan Funtowicz and Joe Davison and Sam Shleifer and Patrick von Platen and Clara Ma and Yacine Jernite and Julien Plu and Canwen Xu and Teven Le Scao and Sylvain Gugger and Mariama Drame and Quentin Lhoest and Alexander M. Rush",
booktitle = "Proceedings of the 2020 Conference on Empirical Methods in Natural Language Processing: System Demonstrations",
month = oct,
year = "2020",
address = "Online",
publisher = "Association for Computational Linguistics",
url = "https://aclanthology.org/2020.emnlp-demos.6/",
pages = "38--45"
}
