--- library_name: peft base_model: Qwen/Qwen3-4B-Instruct-2507 tags: - code - lora - rocm - habbo - game-server-emulation - flash - shockwave - continued-pretraining language: - en license: apache-2.0 inference: false --- # FuseLLM-Instruct-4B-v1 A domain-specialist code model for the **Habbo Hotel ecosystem** — server emulators (Java, C#, PHP, Rust) and Flash/Shockwave client tooling (ActionScript, LiveScript, SWF/DIR reverse engineering). Built by continued pretraining of `Qwen3-4B-Instruct-2507` on a curated corpus of ~85K source files (~211M tokens) drawn from Habbo emulator projects, decompiled client code, and CMS/database dumps. --- ## tl;dr - **What it is:** a 4B-parameter instruction-tuned code model, LoRA-continued-pretrained on Habbo emulator + retro-client source code. - **Trained on:** a single consumer GPU — AMD Radeon RX 7900 XTX, 24 GB VRAM, ROCm 7.1.1. bf16 LoRA, no quantization. - **Runs on:** essentially *any* recent consumer GPU. At 4B params, a Q4_K_M GGUF is ~4.5 GB — it fits comfortably in 8 GB VRAM and will run on 6 GB with a smaller context. The full bf16 merged weights (~14.7 GB) fit in 16 GB. If your card was made in the last ~6 years and has ≥6 GB, it can run FuseLLM-Instruct-4B-v1. --- ## Inference — yes, your GPU can run this The point of shipping a 4B model is that you don't need a datacenter to use it. The training rig was a 24 GB consumer AMD card; **inference needs far less.** | Path | Size | Min. VRAM (comfortable) | Notes | |---|---|---|---| | **GGUF Q4_K_M (recommended)** | ~4.5 GB | 8 GB (runs on 6 GB, short ctx) | Via Ollama / llama.cpp / LM Studio / KoboldCpp. CPU-only also works — slow but functional. | | GGUF Q8_0 | ~4.9 GB | 8 GB | Near-lossless; only marginally bigger than Q4_K_M. | | bf16 merged (full precision) | ~14.7 GB + KV cache | 16 GB | The "no quantization" path. 24 GB leaves room for a long context. | Concrete examples of cards that run it fine: - **8 GB:** RTX 3060 / 4060 / 5060, RX 6600 / 7600, Arc A580 — Q4_K_M with 4–8K context. - **12 GB:** RTX 3060 12GB / 4070 / 5070, RX 6700 XT / 7700 XT — Q4_K_M with long context, or Q8_0 comfortably. - **16 GB:** RTX 4060 Ti 16GB / 4080 / 5070 Ti, RX 7800 XT / 9070 — bf16 merged fits. - **24 GB:** RTX 3090 / 4090 / 5090, RX 7900 XTX/XT — bf16 merged with a large context, or Q4 with room to spare. Linux, Windows, macOS (Metal) all supported through llama.cpp / Ollama. **AMD, NVIDIA, and Intel are all first-class** — the GGUF backend is vendor-agnostic. ### Quick start (Ollama) ```bash ollama run h4bbo/fusellm-instruct-4b-v1 # once uploaded # or load the local GGUF: ollama create fusellm-instruct-4b - Modelfile # FROM ./fusellm-instruct-4b-v1-Q4_K_M.gguf ollama run fusellm-instruct-4b ``` ### Quick start (transformers, bf16) ```python from transformers import AutoModelForCausalLM, AutoTokenizer import torch tok = AutoTokenizer.from_pretrained("h4bbo/FuseLLM-Instruct-4B-v1") model = AutoModelForCausalLM.from_pretrained( "h4bbo/FuseLLM-Instruct-4B-v1", torch_dtype=torch.bfloat16, device_map="auto", ) ``` --- ## Training details ### Hardware | | | |---|---| | GPU | AMD Radeon RX 7900 XTX, 24 GB VRAM (Navi 31) | | Stack | ROCm 7.1.1, PyTorch 2.13.0+rocm7.1 (`gfx1100` native) | | Why not CUDA | The rig is AMD-only — the whole recipe below is the ROCm path. No H100, no A100, no datacenter. | This is a **one-consumer-GPU** training run. The 4B base + bf16 LoRA + gradient checkpointing fits in 24 GB without any quantization (QLoRA was deliberately avoided — bitsandbytes-on-ROCm is still "preview" quality). If you have a single 24 GB card of either vendor, you can reproduce this run. ### Base model `Qwen/Qwen3-4B-Instruct-2507` — bf16 safetensors, Apache-2.0, ~8 GB. Downloaded from HF Hub (requires `HF_TOKEN`). ### Method — bf16 LoRA continued pretraining Raw-code continued pretraining (full-sequence causal-LM loss, no instruction pairs). - **LoRA:** r=32, alpha=64, dropout=0.05, all 7 Qwen3 projections (`q/k/v/o/gate/up/down_proj`), `task_type=CAUSAL_LM`. - **Optimizer/schedule:** `adamw_torch`, lr=1e-4, cosine, warmup_ratio=0.03, max_grad_norm=1.0, 1 epoch. - **Batching:** per-device batch 2 × grad-accum 16 = effective 32, `max_length=2048` with `packing_strategy="wrapped"` (~65K tokens/step), ~3,050 steps, ~3–5 h. - **Precision/memory:** `bf16=True`, `gradient_checkpointing=True` (`use_reentrant=False`), `attn_implementation="sdpa"` (FlashAttention-2 is broken on ROCm), `optim="adamw_torch"` (no bitsandbytes). `PYTORCH_HIP_ALLOC_CONF=expandable_segments:True,garbage_collection_threshold:0.8`, `HSA_OVERRIDE_GFX_VERSION=11.0.0`. - **Loss:** `completion_only_loss` unset — full-sequence causal-LM on packed raw code (correct for continued pretraining, since there are no instruction/response pairs to mask). - **Merge:** `merge_and_unload(safe_merge=True)` into the bf16 base → standalone safetensors. `save_peft_format=False` (critical — otherwise the adapter re-attaches on reload). ### Training data | | | |---|---| | Files | 84,925 unique (sha256-deduped; 206,707 duplicates removed; 2.07M minified files skipped) | | Size | 803.2 MB | | Tokens | ~211M (est. chars/4) | | Format | `{"text": }` — TRL `dataset_text_field="text"` | By language (files): Java 26,335 · C# 19,048 · PHP 10,969 · LiveScript 7,457 · ActionScript 3,801 · Python 3,023 · JavaScript 2,646 · XML 2,569 · HTML 2,023 · CSS 1,470 · Rust 1,442 · C 1,103 · TypeScript 644 · C++ 517 · SQL 494 · VB 362 · JSON 351 · + Markdown/Gradle/YAML/Scala/Lua. Sources: 123 Quackster Habbo emulator/tooling repos (incl. private: HorusClient, Kurkku, Aleeda, Icarus variants, cappo-emu, …), `ntuative/RELEASE63…`, `deklol/Shockless`, plus deeply-nested Beta-archive extractions (Debbo, BloodLine, Chocohotel, uberEmu, etc.) — 497 archives / 30 GB unpacked. `.sql` DB dumps (148 MB) are included for now and may be dropped in a later revision. --- ## Intended use & limitations **Intended:** code completion / Q&A for Habbo server-emulator and retro-client development — packet handling, room/item state, CMS schemas, SWF/DIR reverse engineering, Shockwave Lingo, ActionScript 3 client internals. **Not intended:** general-purpose chat, math, or non-Habbo code generation. This is a *continued-pretraining* of an instruct model on domain code; it is not a general assistant and was not aligned for safety/RLHF beyond what the base instruct model already had. **Limitations:** - 4B parameters — strong on domain pattern-completion, weaker than larger models on multi-file reasoning. --- ## License & data provenance - **Base model:** `Qwen3-4B-Instruct-2507` — **Apache-2.0**. Fine-tuning and redistribution permitted with attribution. ✅ - **This fine-tune (weights):** released under **Apache-2.0** *conditional on the data licensing below*. The LoRA adapter is small and derivative; the merged model inherits both base and data obligations. - **Training data:** mixed provenance — - Author's own repos (fine). - **GPL / various third-party emulators** (PHPRetro/Yifan Lu, uberEmu/Meth0d, Holograph, Icarus, etc.) — GPL-derivative debate applies; a model trained on GPL source is arguably a derivative work. ## Citation If this model is useful, cite the base and this fine-tune: ```bibtex @misc{fusellm-instruct-4b-v1, title = {FuseLLM-Instruct-4B-v1: a Habbo ecosystem code model}, note = {bf16 LoRA continued pretraining of Qwen3-4B-Instruct-2507}, year = {2026}, } ```