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GLM 5 vs Llama 4 Scout

How do these models stack up? Below is an expert side-by-side comparison of specifications, context window capacity, live pricing per million tokens, and standardized benchmark scores for GLM 5 and Llama 4 Scout.

Zhipu AI

GLM 5

GLM-5 is Z.aiโ€™s flagship open-source foundation model engineered for complex systems design and long-horizon agent workflows. Built for expert developers, it delivers production-grade performance on large-scale programming tasks, rivaling leading...

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Meta

Llama 4 Scout

Llama 4 Scout 17B Instruct (16E) is a mixture-of-experts (MoE) language model developed by Meta, activating 17 billion parameters out of a total of 109B. It supports native multimodal input...

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Technical Specifications

SpecificationGLM 5Llama 4 Scout
ProviderZhipu AIMeta
Context Window202,752 tokens10,000,000 tokens
Agent SuitabilityN/A82/100
Time to First Token (TTFT)N/A350 ms
Deployment Modelmanaged apiself hostable
Production Stabilitystablebeta
API AvailableYesYes
Released Date2026-02-112025-04-05

API Pricing Comparison

Input Price per Million Tokens

GLM 5

$0.60

Llama 4 Scout

$0.10

Output Price per Million Tokens

GLM 5

$1.92

Llama 4 Scout

$0.30

Want to test both models live?

Run side-by-side prompt prompts in our dynamic Sandbox. Check execution speeds, latency metrics, and compute actual costs in real-time.

Benchmark Performance Metrics

Scores show the raw performance percentages verified across key evaluation suites. Higher bars indicate superior accuracy and capability in that domain.

MMLUGeneral knowledge & multi-task understanding
8650.0%vs8720.0%
GLM 5
Llama 4 Scout
HumanEvalPython coding & logic synthesis
8700.0%vs8950.0%
GLM 5
Llama 4 Scout
MATHComplex mathematical problem solving
7400.0%vs8100.0%
GLM 5
Llama 4 Scout
GPQAGraduate-level expert reasoning
4800.0%vs6680.0%
GLM 5
Llama 4 Scout
HellaSwagCommonsense reasoning and inference
8700.0%vs9450.0%
GLM 5
Llama 4 Scout
MT-BenchMulti-turn conversation flow quality
910.0%vs910.0%
GLM 5
Llama 4 Scout

GLM 5 Quirks & Gotchas

No developer gotchas reported.

Llama 4 Scout Quirks & Gotchas

  • โ–ธ10M context causes significant VRAM pressure โ€” recommend 4-bit quantization
  • โ–ธPrimarily designed for RAG, not agentic tool calling