Llama-3.2-OctoThinker-iNano-1B-GGUF
Model Summary
Llama-3.2-OctoThinker-iNano-1B-GGUF is a compact GGUF release published by gss1147 for local text generation and on-device inference workflows. The repository is currently listed on Hugging Face as a GGUF model with 1B parameters and llama architecture, and includes three downloadable variants:
- Q4_K_M — 955 MB
- Q5_K_M — 1.09 GB
- F16 — 3 GB
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This packaging is intended for users who want a lightweight local model that can be run with GGUF-compatible runtimes such as llama.cpp, LM Studio, and related tooling. GGUF is the format used by llama.cpp for efficient local inference, and llama.cpp documentation recommends Q4_K_M as a good balance for most users, Q5_K_M for somewhat higher quality, and F16 when you want full-precision weights. :contentReference[oaicite:2]{index=2}
Available Files
Llama-3.2-OctoThinker-iNano-1B.Q4_K_M.ggufLlama-3.2-OctoThinker-iNano-1B.Q5_K_M.ggufLlama-3.2-OctoThinker-iNano-1B.f16.gguf
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Intended Use
This model is suited for:
- local text generation
- lightweight assistant/chat experiments
- offline inference
- CPU-friendly or lower-memory setups compared with larger models
- GGUF-based desktop applications and local inference stacks
Because this repo is distributed in GGUF format, it is aimed at inference, not at further full-precision training from these files directly. GGUF is primarily used for efficient deployment and local execution. :contentReference[oaicite:4]{index=4}
Quantization Options
Q4_K_M
A compact option intended to give a strong size-to-quality balance for everyday local inference. llama.cpp documentation describes Q4_K_M as a good balance and recommends it for most users. :contentReference[oaicite:5]{index=5}
Q5_K_M
A larger quantization that typically preserves more quality than 4-bit options while still remaining much smaller than full precision. llama.cpp documentation describes Q5_K_M as a higher-quality choice. :contentReference[oaicite:6]{index=6}
F16
A full-precision GGUF export for users who want the least quantization loss and have enough memory/storage to run it. llama.cpp documentation lists f16.gguf as full precision. :contentReference[oaicite:7]{index=7}
Suggested Runtime Compatibility
This model should be appropriate for GGUF-compatible runtimes, including:
- llama.cpp
- LM Studio
- GPT4All
- other GGUF-capable local inference tools
The GGUF format is the standard format used by llama.cpp for local inference workflows. :contentReference[oaicite:8]{index=8}
Example Usage with llama.cpp
llama-cli -m /path/to/Llama-3.2-OctoThinker-iNano-1B.Q4_K_M.gguf -p "Write a short Python function that reverses a string."
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Model tree for gss1147/IBM-Grok4-UltraFast-Coder-1B-GGUF
Base model
ibm-granite/granite-4.0-1b-base