Post
797
We are super happy to contribute to the GLiNER ecosystem by optimizing training code and releasing a multi-task, prompt-tunable model.
The model can be used for the following tasks:
* Named entity recognition (NER);
* Open information extraction;
* Question answering;
* Relation extraction;
* Summarization;
Model: knowledgator/gliner-multitask-large-v0.5
Demo: knowledgator/GLiNER_HandyLab
Repo: 👨💻 https://github.com/urchade/GLiNER
**How to use**
First of all, install gliner package.
Then try the following code:
The model can be used for the following tasks:
* Named entity recognition (NER);
* Open information extraction;
* Question answering;
* Relation extraction;
* Summarization;
Model: knowledgator/gliner-multitask-large-v0.5
Demo: knowledgator/GLiNER_HandyLab
Repo: 👨💻 https://github.com/urchade/GLiNER
**How to use**
First of all, install gliner package.
pip install gliner
Then try the following code:
from gliner import GLiNER
model = GLiNER.from_pretrained("knowledgator/gliner_small-v2.1")
prompt = """Find all positive aspects about the product:\n"""
text = """
I recently purchased the Sony WH-1000XM4 Wireless Noise-Canceling Headphones from Amazon and I must say, I'm thoroughly impressed. The package arrived in New York within 2 days, thanks to Amazon Prime's expedited shipping.
The headphones themselves are remarkable. The noise-canceling feature works like a charm in the bustling city environment, and the 30-hour battery life means I don't have to charge them every day. Connecting them to my Samsung Galaxy S21 was a breeze, and the sound quality is second to none.
I also appreciated the customer service from Amazon when I had a question about the warranty. They responded within an hour and provided all the information I needed.
However, the headphones did not come with a hard case, which was listed in the product description. I contacted Amazon, and they offered a 10% discount on my next purchase as an apology.
Overall, I'd give these headphones a 4.5/5 rating and highly recommend them to anyone looking for top-notch quality in both product and service.
"""
input_ = prompt+text
labels = ["match"]
matches = model.predict_entities(input_, labels)
for match in matches:
print(match["text"], "=>", match["score"])