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DataBubble·

Model Detail

lukealonso logo

GLM-5.2-NVFP4

▲ 6.7%
Provider: lukealonsoCategory: llmPipeline: text-generation
DB Score
2.0
Downloads
49K
Likes
26
Day
+6.7%
Week
+0.0%
Month
+0.0%
Overview

GLM-5.2-NVFP4 is a large language model with 216.0B parameters released by lukealonso. The model is registered under the text-generation pipeline tag on Hugging Face, distributed under the permissive mit license.

Technical

GLM-5.2-NVFP4 ships with 216.0B parameters. Total weight footprint is approximately 432.0 GB, which is the relevant figure when planning local-inference VRAM. The mit license is permissive, allowing commercial deployment and derivative work without per-seat fees, though attribution requirements still apply.

Trending Signal

Downloads of GLM-5.2-NVFP4 have moved +6.7% over the past 24 hours. That is a slight downtrend, consistent with normal cooling as newer models compete for the same workloads. These numbers are signal, not guarantee — week-over-week download counts on Hugging Face also reflect mirror traffic, CI scrapes, and one-off benchmarking runs.

Read about databubble_score →
Use Cases

GLM-5.2-NVFP4 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.

Download History
Model Info
Licensemit
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