kl3m-003-1.7b
kl3m-003-1.7b is a small language model (SLM) trained on clean, legally-permissible data. Originally developed by 273 Ventures and donated to the ALEA Institute, kl3m-003-1.7b was part of the first LLM family to obtain the Fairly Trained L-Certification for its ethical training data and practices. The model is designed for legal, regulatory, and financial workflows, with a focus on low toxicity and high efficiency.
Given its small size and lack of training data for instruction alignment, kl3m-003-1.7b is best suited for use either in SLM fine-tuning or as part of training larger models without using unethical data or models.
Model Details
- Architecture: GPT-NeoX (i.e., ~GPT-3 architecture)
- Size: 1.7 billion parameters
- Hidden Size: 2048
- Layers: 32
- Attention Heads: 32
- Intermediate Size: 8192
- Max Position Embeddings: 8192
- Context Window: 8,192 tokens (true size, no sliding window)
- Tokenizer: kl3m-001-32k BPE tokenizer (32,768 vocabulary size with unorthodox whitespace handling)
- Language(s): Primarily English
- Training Objective: Next token prediction
- Developed by: Originally by 273 Ventures LLC, donated to ALEA Institute
- License: CC-BY 4.0
- Hardware Requirements: Runs real-time in bf16 on consumer NV/AMD GPUs
Use Cases
kl3m-003-1.7b is particularly effective for:
- Basic regulatory question answering
- Contract provision drafting
- Structured JSON information extraction
- Foundation for downstream optimization
- Base model for domain-specific fine-tuning
Performance
Perplexity Scores
Dataset | Score |
---|---|
Wiki | 18.25 |
CNN/Daily Mail | 9.61 |
Legal Domain | 2.00 |
The model demonstrates particularly strong per-parameter performance on legal domain content, outperforming many larger models as of its training data.
Key Features
- Clean Training Data: Built on what was originally referred to as the Kelvin Legal DataPack, ensuring all training data is ethically sourced and legally permissible.
- Low Toxicity: Empirically lower toxicity and bias
- Enterprise Focus: Specifically designed for legal, regulatory, and financial workflows.
- Efficient Deployment: Optimized for real-time inference on consumer hardware.
Usage
Basic usage for text generation:
import json
from transformers import pipeline
# Load the model and tokenizer
p = pipeline('text-generation', 'alea-institute/kl3m-003-1.7b', device='cuda')
# Example usage on GPU
text = "Under this"
print(
json.dumps(
[
r.get("generated_text")
for r in p(text, do_sample=True, temperature=0.5, num_return_sequences=3, max_new_tokens=32)
],
indent=2
)
)
[
"Under this section, any person who is a party to the proceeding may be required to file ",
"Under this subsection, the term **eligible entity** means a State, a political subdivision of ",
"Under this section, the Secretary shall— (1)\nmake a grant to the National Academy of Sc"
]
Contract Example
text = "Governing Law. "
print(
json.dumps(
[
r.get("generated_text")
for r in p(text, do_sample=True, temperature=0.5, num_return_sequences=3, max_new_tokens=32)
],
indent=2
)
)
[
"Governing Law. The validity, construction, enforcement and interpretation of this Agreement and of the War",
"Governing Law. This Agreement shall be governed by and construed in accordance with the laws of",
"Governing Law. This Agreement shall be governed by and construed and enforced in accordance"
]
Generation Parameters
The model supports various parameters to control the generation process:
temperature
: Controls randomness (lower = more deterministic)top_p
: Nucleus sampling parameter (lower = more focused)top_k
: Limits vocabulary selection to top k tokensmax_new_tokens
: Maximum number of tokens to generatedo_sample
: Whether to use sampling vs. greedy decodingnum_return_sequences
: Number of different sequences to generate
Training
The model was originally trained between January-February 2024 on an 8xA100-80G node in DDP. A similar model is
being provided with complete source and data replication as part of the kl3m-004
family to be released in Q4 2024.
The model implements several techniques during training:
- Hybrid NTP and SFT cotraining
- Dynamic, document-aware segmentation
- Randomized padding
- Traditional fixed-attention mechanisms
Training Data
While the original training data collection and training infrastructure relies on software that was not donated by 273 Ventures, ALEA Institute is open-sourcing an improved dataset, including both replication and an API.
https://github.com/alea-institute/kl3m-data
Data is available upon request at this time via S3 under a Requester Pays model. We are actively working on a zero-cost distribution model as soon as we can obtain additional support.
This model, the original kl3m-003-1.7b
model, was trained on a US-only subset of the Kelvin Legal DataPack that
we believe is 100% public domain material. However, so as to enforce maximum transparency to all
downstream users in the event of any future determination otherwise, we are licensing this model under CC-BY 4.0.
Intended Usage
This model is intended for use in:
- Legal and regulatory document processing systems
- Contract drafting assistance
- Financial and enterprise document workflows
- Educational contexts for learning about domain-specific language models
- Research on efficient language models for domain-specific applications
Special Tokens
kl3m-003-1.7b uses standard special tokens from the GPT-NeoX architecture.
Limitations
- As a small language model (1.7B parameters), it has limited general knowledge
- Not instruction-tuned or aligned with human preferences
- May generate plausible-sounding but incorrect legal or regulatory text
- Not a substitute for professional legal advice or domain expertise
- Performance is optimized for legal and financial domains; general performance may be lower
Ethical Considerations
- This model should not be used to generate legal advice without human expert review
- The model may reflect biases present in the training data despite efforts to use clean data
- Generated text should be reviewed by qualified professionals before use in formal legal contexts
- While trained on ethically sourced data, users should verify outputs for accuracy and appropriateness
Source
https://github.com/alea-institute/kl3m-model-research
References
- KL3M Tokenizers: A Family of Domain-Specific and Character-Level Tokenizers for Legal, Financial, and Preprocessing Applications
- Additional tokenizer, dataset, and model publications are pending.
Citation
@misc{kl3m-003-1.7b,
author = {ALEA Institute},
title = {kl3m-003-1.7b: A Small Language Model for Legal and Regulatory Text},
year = {2024},
publisher = {Hugging Face},
howpublished = {\url{https://huggingface.co/alea-institute/kl3m-003-1.7b}}
}
@article{bommarito2025kl3m,
title={KL3M Tokenizers: A Family of Domain-Specific and Character-Level Tokenizers for Legal, Financial, and Preprocessing Applications},
author={Bommarito, Michael J and Katz, Daniel Martin and Bommarito, Jillian},
journal={arXiv preprint arXiv:2503.17247},
year={2025}
}
License
This model was originally developed by 273 Ventures and has been donated to the ALEA Institute.
The model weights are released under the CC-BY 4.0 License.
Contact
The KL3M model family is now maintained by the ALEA Institute. For technical support, collaboration opportunities, or general inquiries:
- GitHub: https://github.com/alea-institute/kl3m-model-research
- Email: hello@aleainstitute.ai
- Website: https://aleainstitute.ai
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