snapgate-surge-v2

A bilingual language model (Indonesian + English) trained from scratch โ€” no base model was used at any stage of training.

Model Specifications

Specification Detail
Parameters ~10 Million
Architecture GPT-style Transformer (CausalLM)
Vocab Size 8,000
Hidden Dim 384
Layers 8
Attention Heads 8
Context Length 512 tokens
Languages Bahasa Indonesia ๐Ÿ‡ฎ๐Ÿ‡ฉ, English ๐Ÿ‡บ๐Ÿ‡ธ
License MIT

Training Progress

This model was trained across multiple sessions due to interruptions. The chart below reflects the continued pre-training โ€” loss resumes from a checkpoint and continues to converge.

Checkpoint Train Loss Val Loss Notes
Step 0 ~8.5 ~8.5 Training start / resume
Step 5,000 ~3.6 ~3.6 Rapid descent phase
Step 10,000 ~3.2 ~3.2 Stabilizing
Step 15,000 ~3.1 ~3.1 Continued convergence
Step 20,000 ~3.05 ~3.0 Near plateau
Step 25,000 ~3.0 ~2.95 Val loss slightly below train
Step 30,000 ~3.0 ~2.95 Final checkpoint

Train and validation loss closely track each other throughout training, indicating no overfitting. The model converged smoothly from ~8.5 โ†’ ~3.0 over 30,000 steps across continued pre-training sessions.

Notes

This is a pure base model โ€” it has not been fine-tuned for instruction following or conversational tasks. It serves as the foundation for further supervised fine-tuning (SFT) within the Snapgate AI ecosystem.


Developed by the Snapgate AI team | snapgate.tech

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