🦙 Liyama-3B

Liyama-3B is a fine-tuned version of Meta’s LLaMA-3B (3.2) model, built to understand and respond fluently in Tagalog. It was trained on the AnoNa dataset over 3 epochs, aiming for natural, context-aware instruction-following in Filipino.


🔤 Origin of the Name

The name Liyama is a Tagalified version of llama, reflecting both its LLaMA base and its Tagalog-focused language capabilities. It mirrors how Filipino often adapts foreign terms into familiar, phonetic forms—like camera → kamera, lion → leon, and now, llama → liyama.


🧠 Training Data: The AnoNa Dataset

Liyama-3B was trained solely on response completions from the AnoNa dataset — a self-instruct corpus generated using Gemini 1.5 and 2.0.

Inspired by SimpleQnA, the dataset contains short, helpful instruction-response pairs. But AnoNa introduces several improvements:

  • Less English, More Tagalog prompts
  • Less IFEVAL-style formatting
  • No overuse of modifiers in instructions
  • Balanced task types to avoid dominant categories
  • Complex tasks favored (65% complex / 35% simple)
  • Reduced sycophancy and generic praise
  • Improved follow-up handling
  • AI self-intro appears only when relevant
  • Implicit chain-of-thought reasoning, not labeled
  • Extra task types added to increase variety

This focus creates a model that's practical, straightforward, and tuned for realistic conversational use in Filipino, without excessive formatting or irrelevant disclaimers.


🗣️ Use Case

Liyama-3B is ideal for:

  • Answering questions in Tagalog
  • Writing essays, reflections, and letters in Filipino
  • Following natural instructions, even when mixed with English
  • Chat-based tasks where fluency and tone matter
  • Educational or community apps centered around local language use

📦 Model Details

Feature Value
Base Model LLaMA-3B v3.2
Fine-tuned Dataset AnoNa
Epochs 3
Language Focus Tagalog (with some English)
Prompt Format Responses only

Liyama-3B is part of a broader effort to create open, practical Filipino-language models for real use—not just benchmarks. Expect follow-ups tuned for multi-turn chat, reasoning, and creative tasks.

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