Llama-Krikri-8B for Ancient Greek to Modern Greek (Full Fine-Tuning)

DOI

This model is a fully fine-tuned version of ilsp/Llama-Krikri-8B-Instruct for translating Ancient Greek to Modern Greek.

It was trained on the sentence-level AG-MG Parallel Corpus using Full Parameter Fine-Tuning.

This model was trained by Spyridon Mavromatis at the Institute for Language and Speech Processing (ILSP), "Athena" RC, and the National and Kapodistrian University of Athens (NKUA) as part of an M.Sc. thesis.

Built with Llama. This model is a derivative of Llama‑Krikri‑8B‑Instruct, which is itself built on Llama-3.1-8B. Use of this model is governed by the Llama 3.1 Community License Agreement.


Model Details

  • Base Model: ilsp/Llama-Krikri-8B-Instruct (Llama 3 architecture)

  • Method: Full Fine-Tuning

  • Training Data: ~130k sentence pairs from the AG-MG Corpus.


Usage

Since this is a full model, you load it directly with AutoModelForCausalLM. This model requires the exact system prompt used during training for optimal results.


import torch

from transformers import AutoTokenizer, AutoModelForCausalLM

model_id = "ilsp/llama-krikri-8b-ag-mg-full-ft"

# 1. Load Model & Tokenizer

tokenizer = AutoTokenizer.from_pretrained(model_id)

model = AutoModelForCausalLM.from_pretrained(

    model_id,

    torch_dtype=torch.bfloat16,

    device_map="auto"

)

# 2. Define Prompt

sys_prompt = "Είσαι ακριβές σύστημα μεταφράσεων. Μεταφράζεις από Αρχαία Ελληνικά (πολυτονικό) σε Νέα Ελληνικά. Δώσε μόνο τη μετάφραση."

text = "Ὦ ξεῖν', ἀγγέλλειν Λακεδαιμονίοις ὅτι τῇδε κείμεθα."

messages = [

    {"role": "system", "content": sys_prompt},

    {"role": "user", "content": f"Μετάφρασε στα Νέα Ελληνικά:\n{text}"}

]

prompt = tokenizer.apply_chat_template(messages, tokenize=False, add_generation_prompt=True)

inputs = tokenizer(prompt, return_tensors="pt").to(model.device)

# 3. Generate

with torch.no_grad():

    outputs = model.generate(

        **inputs,

        max_new_tokens=256,

        do_sample=False,

        temperature=0.0,

        repetition_penalty=1.05,

        eos_token_id=[tokenizer.eos_token_id, tokenizer.convert_tokens_to_ids("<|eot_id|>")]

    )

print(tokenizer.decode(outputs[0][inputs.input_ids.shape[1]:], skip_special_tokens=True).strip())

Performance

Main Test Set Results

Evaluated on the 2,000 sentence-pairs Test Set (Attic & Koine Hellenistic dialects).

Model Method BLEU ↑ chrF++ ↑ TER ↓ BERTScore F1 ↑ COMET ↑ ΔBLEU
NLLB-600M Base 1.55 16.86 106.80 0.880 0.539 -
LoRA 7.43 29.31 88.32 0.903 0.667 +5.88
NLLB-1.3B Base 2.15 17.78 106.41 0.885 0.573 -
LoRA 8.01 30.02 87.74 0.905 0.687 +5.86
M2M100-1.2B Base 0.62 10.70 100.50 0.858 0.475 -
QLoRA 10.96 33.09 82.99 0.911 0.710 +10.34
Full FT 9.60 31.16 83.43 0.908 0.692 +8.98
Krikri-8B-Instruct Base 8.29 29.87 88.13 0.895 0.695 -
QLoRA 11.90 34.07 84.16 0.906 0.713 +3.60
👉 Full FT 13.16 34.71 83.68 0.848 0.702 +4.45

Stress Set Results (Rare Dialects)

Evaluated on the 250 sentence-pairs Stress Set (Ionic, Doric, Homeric dialects).

Model Method BLEU ↑ chrF++ ↑ TER ↓ BERTScore F1 ↑ COMET ↑ ΔBLEU
NLLB-600M Base 0.77 14.40 118.13 0.866 0.484 -
LoRA 5.65 28.74 88.01 0.900 0.638 +4.89
NLLB-1.3B Base 1.25 16.15 107.03 0.873 0.525 -
LoRA 5.68 28.94 88.24 0.900 0.656 +4.43
M2M100-1.2B Base 0.07 9.37 100.34 0.840 0.427 -
QLoRA 9.52 33.30 81.95 0.911 0.691 +9.45
Full FT 8.16 31.12 83.11 0.907 0.664 +8.09
Krikri-8B-Instruct Base 6.55 28.98 87.38 0.900 0.675 -
QLoRA 10.37 34.09 82.28 0.911 0.717 +3.82
👉 Full FT 12.80 35.90 81.40 0.884 0.716 +6.11

Citation

If you use this model, please cite our LREC 2026 paper:

Mavromatis, S., Sofianopoulos, S., Prokopidis, P., & Giagkou, M. (2026). Ancient Greek to Modern Greek Machine Translation: A Novel Benchmark and Fine-Tuning Experiments on LLMs and NMT Models. In Proceedings of the Fifteenth Language Resources and Evaluation Conference (LREC 2026) (pp. 8685–8698). European Language Resources Association (ELRA). https://doi.org/10.63317/4cdk64dgm2w9

@inproceedings{mavromatis-etal-2026-ancient,
  title     = {Ancient Greek to Modern Greek Machine Translation: A Novel Benchmark and Fine-Tuning Experiments on LLMs and NMT Models},
  author    = {Mavromatis, Spyridon and Sofianopoulos, Sokratis and Prokopidis, Prokopis and Giagkou, Maria},
  booktitle = {Proceedings of the Fifteenth Language Resources and Evaluation Conference (LREC 2026)},
  month     = {May},
  year      = {2026},
  pages     = {8685--8698},
  address   = {Palma, Mallorca, Spain},
  publisher = {European Language Resources Association (ELRA)},
  editor    = {Piperidis, Stelios and Bel, Núria and van den Heuvel, Henk and Ide, Nancy and Krek, Simon and Toral, Antonio},
  doi       = {10.63317/4cdk64dgm2w9}
}

Note on resources: The fine-tuned models are publicly released. The accompanying AG-MG Parallel Corpus is not publicly distributed due to the complex and uncertain copyright status of the source materials.

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