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Model Detail

Andycurrent logo

Gemma-3-1B-it-GLM-4.7-Flash-Heretic-Uncensored-Thinking_GGUF

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Provider: AndycurrentCategory: llmPipeline: text-generationParameters: 1B
DB Score
0.0
Downloads
2.4M
Likes
42
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Overview

Gemma-3-1B-it-GLM-4.7-Flash-Heretic-Uncensored-Thinking_GGUF is a large language model with 1B parameters released by Andycurrent. The model is registered under the text-generation pipeline tag on Hugging Face, released under the gemma license.

Technical

Gemma-3-1B-it-GLM-4.7-Flash-Heretic-Uncensored-Thinking_GGUF ships with 1B parameters, distributed as a quantized weight variant for lower-VRAM inference. Distribution is governed by the gemma license — review the exact terms before commercial deployment.

Use Cases

Gemma-3-1B-it-GLM-4.7-Flash-Heretic-Uncensored-Thinking_GGUF is best fit for general-purpose chat and instruction-following workloads. Treat this as a starting matrix rather than a benchmark verdict — the right deployment usually depends on the specific evaluation suite that mirrors your workload.

Model Info
Licensegemma
Recent newsView all news →
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