Compare/GLM-5.1 vs GLM-5V-Turbo

AI tool comparison

GLM-5.1 vs GLM-5V-Turbo

Which one should you ship with? Here is the side-by-side panel verdict, pricing read, reviewer split, and community vote comparison.

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AI Models

GLM-5.1

First open-source model to top SWE-bench Pro — 744B MoE, MIT, zero Nvidia

Mixed

50%

Panel ship

Community

Paid

Entry

GLM-5.1 is Z.ai's (formerly Zhipu AI) open-weight model released April 7, 2026 under the MIT license. It's a 744-billion-parameter Mixture-of-Experts architecture with 40 billion active parameters per token, a 200K-token context window, and a 131K maximum output length — and it became the first open-source model ever to lead SWE-bench Pro, scoring 58.4% versus Claude Opus 4.6's 57.3%. The training story is almost as remarkable as the performance. GLM-5.1 was trained entirely on approximately 100,000 Huawei Ascend 910B chips using the MindSpore framework — no Nvidia hardware was used at any point. That makes it one of the first frontier-tier models to demonstrate that the CUDA monoculture isn't technically mandatory for training state-of-the-art models. Z.ai became the first publicly traded foundation model company via a Hong Kong IPO in January 2026 (~$558M raised). The model is free to download from HuggingFace and also available via API at $0.95 per million input tokens. In agentic demonstrations, it has run autonomously for eight hours straight — 655 planning and execution iterations — without human checkpoints.

G

AI Models

GLM-5V-Turbo

The first natively multimodal vision-coding model built for agentic workflows

Ship

75%

Panel ship

Community

Paid

Entry

GLM-5V-Turbo is Z.ai's (the international brand of Zhipu AI) latest model — and the first in the GLM family built as a native multimodal agent from the ground up. Released April 1, 2026, it combines vision, video, and text input with agentic output: tool calling, task decomposition, and GUI interaction, all in a single model without vision bolted on as an afterthought. The architecture is built around a new visual encoder called CogViT, trained with reinforcement learning across 30+ task types, and supports a 200K context window with INT8 quantization for fast inference. The practical sweet spot is the "visual artifact → code" pipeline: screenshot-to-HTML, UI component extraction from design mockups, screen recording analysis, and front-end scaffolding from design assets. In early benchmarks, GLM-5V-Turbo outperforms Claude Opus 4.6 on several multimodal benchmarks. It integrates seamlessly with OpenClaw and Claude Code for the full loop — "understand the environment → plan actions → execute tasks" — and is available via the Z.ai API and OpenRouter. For developers building agentic pipelines that start with visual input, this may be the most capable model to benchmark in 2026.

Decision
GLM-5.1
GLM-5V-Turbo
Panel verdict
Mixed · 2 ship / 2 skip
Ship · 3 ship / 1 skip
Community
No community votes yet
No community votes yet
Pricing
Open Source (MIT) / API $0.95/M input tokens
API pricing (via OpenRouter / Z.ai)
Best for
First open-source model to top SWE-bench Pro — 744B MoE, MIT, zero Nvidia
The first natively multimodal vision-coding model built for agentic workflows
Category
AI Models
AI Models

Reviewer scorecard

Builder
80/100 · ship

MIT license, top SWE-bench Pro score, $0.95/M via API. If your use case is agentic coding and you're not evaluating GLM-5.1, you're leaving real performance on the table. The 8-hour autonomous run capability is compelling for long-horizon task pipelines.

80/100 · ship

Screenshot-to-production-code is the workflow I've been waiting for. GLM-5V-Turbo's native multimodal architecture means it doesn't lose fidelity when switching between seeing the design and writing the implementation. The OpenClaw integration makes it plug into existing pipelines immediately.

Skeptic
45/100 · skip

SWE-bench Pro is one benchmark. The broader coding composite (Terminal-Bench 2.0 + NL2Repo) still has Claude Opus 4.6 ahead at 57.5 vs GLM-5.1's 54.9. Running 744B locally requires hardware most teams don't own, and the API's Chinese jurisdiction will trigger compliance blockers for many organizations.

45/100 · skip

Benchmark claims from model providers deserve serious scrutiny. 'Beats Opus 4.6 on multimodal benchmarks' is a cherry-picked comparison — we need independent evaluations across diverse real-world tasks before making architectural decisions. Also, the Z.ai data residency story for enterprise is unclear.

Futurist
80/100 · ship

The Huawei chip training story matters more than the benchmark ranking. If GLM-5.1 proves you can train frontier models without Nvidia at scale, it fractures the GPU supply chain narrative that's been shaping geopolitics and AI policy discussions for years. This is a proof of concept with enormous implications.

80/100 · ship

The model arms race is increasingly about multimodal-native architectures, not just bigger text models. GLM-5V-Turbo signals that Chinese frontier labs are now genuinely competing on architecture innovation, not just scale. Expect this to pressure OpenAI and Anthropic to ship stronger native vision-coding models.

Creator
45/100 · skip

For creative workflows, the 744B MoE overhead is overkill and local deployment requires datacenter-grade hardware that's nowhere near indie studio territory. The MIT license is great, but the gap between 'free to download' and 'free to actually run' is vast at this parameter count.

80/100 · ship

The GUI interaction capability is huge for creative tooling — a model that can look at a Figma file and generate the component code directly eliminates the translation layer that kills creative momentum. This is the most exciting vision-to-code model I've seen since GPT-4V.

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