# Llama 4 70B vs GLM 4.7 FP8

Llama 4 70B is not currently in the Allocate serving catalog, so this page lists no prices for it: every price on this site comes from the live catalog.

## Specifications

| | Llama 4 70B | GLM 4.7 FP8 |
| --- | --- | --- |
| Lab | Meta | Zai Org |
| Access | Not served on Allocate | Open weights |
| Context window | n/a | 198K tokens |
| List price, input | Not served | $0.45 / M tokens |
| List price, output | Not served | $2 / M tokens |
| Cached input | n/a | n/a |
| License | Not listed | MIT |
| Fine-tunable | Yes | Yes |

Specifications and provider list prices from the Allocate catalog, checked 2026-07-08. Billed price is list plus the 7% transaction fee.

## Choose Llama 4 70B for

- First private fine-tunes
- Classification and extraction
- On-boundary deployments

## Choose GLM 4.7 FP8 for

- Fine-tuning under a permissive license (MIT)

## Common questions

### Which has the bigger context window?

GLM 4.7 FP8: 202,752 tokens (198K) against an unlisted window for Llama 4 70B.

### Can I fine-tune Llama 4 70B or GLM 4.7 FP8?

Both publish open weights (Llama 4 70B: Not listed; GLM 4.7 FP8: MIT), so both can be fine-tuned. On Allocate the trained weights stay inside your boundary and belong to you.

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[HTML page](https://allocate.network/compare/llama-4-70b-vs-z-ai-glm-4-7) · [Llama 4 70B](https://allocate.network/models/llama-4-70b.md) · [GLM 4.7 FP8](https://allocate.network/models/z-ai-glm-4-7.md) · [Machine-readable catalog](https://allocate.network/catalog.json)
