ToMMeR-pythia-14m_L3_R64
ToMMeR is a lightweight probing model extracting emergent mention detection capabilities from early layers representations of any LLM backbone, achieving high Zero Shot recall across a wide set of 13 NER benchmarks.
Model Details
This model can be plugged at layer 3 of EleutherAI/pythia-14m, with a computational overhead not greater than an additional attention head.
| Property | Value |
|---|---|
| Base LLM | EleutherAI/pythia-14m |
| Layer | 3 |
| #Params | 16.5K |
Usage
Installation
To use ToMMeR, you need to install its codebase first.
pip install git+https://github.com/VictorMorand/llm2ner.git
Raw inference
By default, ToMMeR outputs span probabilities, but we also propose built-in options for decoding entities.
- Inputs:
- tokens (batch, seq): tokens to process,
- model: LLM to extract representation from.
- Outputs: (batch, seq, seq) matrix (masked outside valid spans)
from xpm_torch.huggingface import TorchHFHub
from llm2ner import ToMMeR, utils
tommer: ToMMeR = TorchHFHub.from_pretrained("llm2ner/ToMMeR-pythia-14m_L3_R64")
# load Backbone llm, optionnally cut the unused layer to save GPU space.
llm = utils.load_llm( tommer.llm_name, cut_to_layer=tommer.layer,)
tommer.to(llm.device)
#### Raw Inference
text = ["Large language models are awesome"]
print(f"Input text: {text[0]}")
#tokenize in shape (1, seq_len)
tokens = llm.tokenizer(text, return_tensors="pt")["input_ids"].to(llm.device)
# Output raw scores
output = tommer.forward(tokens, llm) # (batch_size, seq_len, seq_len)
print(f"Raw Output shape: {output.shape}")
#use given decoding strategy to infer entities
entities = tommer.infer_entities(tokens=tokens, model=llm, threshold=0.5, decoding_strategy="greedy")
str_entities = [ llm.tokenizer.decode(tokens[0,b:e+1]) for b, e in entities[0]]
print(f"Predicted entities: {str_entities}")
>>>INFO:root:Cut LlamaModel with 16 layers to 7 layers
>>> Input text: Large language models are awesome
>>> Raw Output shape: torch.Size([1, 6, 6])
>>> Predicted entities: ['Large language models']
Fancy Outputs
We also provide inference and plotting utils in llm2ner.plotting.
from xpm_torch.huggingface import TorchHFHub
from llm2ner import ToMMeR, utils, plotting
tommer: ToMMeR = TorchHFHub.from_pretrained("llm2ner/ToMMeR-pythia-14m_L3_R64")
# load Backbone llm, optionnally cut the unused layer to save GPU space.
llm = utils.load_llm( tommer.llm_name, cut_to_layer=tommer.layer,)
tommer.to(llm.device)
text = "Large language models are awesome. While trained on language modeling, they exhibit emergent Zero Shot abilities that make them suitable for a wide range of tasks, including Named Entity Recognition (NER). "
#fancy interactive output
outputs = plotting.demo_inference( text, tommer, llm,
decoding_strategy="threshold", # or "greedy" for flat segmentation
threshold=0.5, # default 50%
show_attn=True,
)
Please visit the repository for more details and a demo notebook.
Evaluation Results
| dataset | precision | recall | f1 | n_samples |
|---|---|---|---|---|
| MultiNERD | 0.1042 | 0.9525 | 0.1879 | 154144 |
| CoNLL 2003 | 0.1351 | 0.698 | 0.2264 | 16493 |
| CrossNER_politics | 0.1356 | 0.9448 | 0.2372 | 1389 |
| CrossNER_AI | 0.1584 | 0.9233 | 0.2704 | 879 |
| CrossNER_literature | 0.1512 | 0.8993 | 0.2589 | 916 |
| CrossNER_science | 0.1498 | 0.9311 | 0.258 | 1193 |
| CrossNER_music | 0.1563 | 0.9235 | 0.2673 | 945 |
| ncbi | 0.0731 | 0.8698 | 0.1348 | 3952 |
| FabNER | 0.2017 | 0.8154 | 0.3233 | 13681 |
| WikiNeural | 0.0981 | 0.9354 | 0.1776 | 92672 |
| GENIA_NER | 0.1441 | 0.9277 | 0.2494 | 16563 |
| ACE 2005 | 0.145 | 0.4226 | 0.2159 | 8230 |
| Ontonotes | 0.1274 | 0.7321 | 0.2171 | 42193 |
| Aggregated | 0.1137 | 0.8897 | 0.2017 | 353250 |
| Mean | 0.1369 | 0.8443 | 0.2326 | 353250 |
Citation
If using this model or the approach, please cite the associated paper:
@misc{morand2025tommerefficiententity,
title={ToMMeR -- Efficient Entity Mention Detection from Large Language Models},
author={Victor Morand and Nadi Tomeh and Josiane Mothe and Benjamin Piwowarski},
year={2025},
eprint={2510.19410},
archivePrefix={arXiv},
primaryClass={cs.CL},
url={https://arxiv.org/abs/2510.19410},
}
License
Apache-2.0 (see repository for full text).
Model tree for llm2ner/ToMMeR-pythia-14m_L3_R64
Base model
EleutherAI/pythia-14m