Compare/GLM-5.1 vs Tencent Hy3 Preview

AI tool comparison

GLM-5.1 vs Tencent Hy3 Preview

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

G

AI Models

GLM-5.1

#1 on SWE-Bench Pro — Zhipu's open 754B MoE beats GPT-5 on coding

Mixed

50%

Panel ship

Community

Paid

Entry

Z.ai (formerly Zhipu AI) has released GLM-5.1, a 754B-parameter Mixture-of-Experts model that's currently sitting at #1 on SWE-Bench Pro with a score of 58.4 — outperforming GPT-5.4 and Claude Opus 4.6 on long-horizon software engineering tasks. The model ships under MIT license with full weights on HuggingFace. GLM-5.1 was specifically designed for agentic software engineering workflows: multi-file reasoning, autonomous test-run-fix loops, and extended coding sessions that span hundreds of tool calls. It's not just a capability leap — at 754B active parameters via sparse MoE, it can be run more efficiently than a dense model of equivalent capability on a sufficiently provisioned cluster. The SWE-Bench Pro result is significant because that benchmark is harder to game than vanilla SWE-Bench Verified. It tests whether a model can resolve real GitHub issues with correct tests, proper diffs, and no regressions — the things that actually matter in production. For anyone running self-hosted coding agents or building on open models, GLM-5.1 just became the new baseline to beat.

T

AI Models

Tencent Hy3 Preview

295B MoE open weights — China's most efficient frontier model yet

Ship

75%

Panel ship

Community

Paid

Entry

Tencent open-sourced Hy3 Preview on April 23, 2026 — the first model to emerge from the company's rebuilt AI infrastructure, and its most credible challenge to frontier closed models to date. With 295 billion total parameters but only 21 billion active at inference time (plus 3.8B MTP layer parameters), it's a Mixture-of-Experts architecture that punches far above its compute weight. The model supports up to 256K context and is available via Hugging Face, ModelScope, and GitCode under the Tencent Hy Community License. On coding benchmarks, Hy3 scores 74.4% on SWE-bench Verified, 54.4% on Terminal-Bench 2.0, and 67.1% on BrowseComp — placing it firmly in the same tier as top models from Anthropic and OpenAI. Tencent claims a 40% efficiency improvement over its predecessor Hunyuan models, and pricing through Tencent Cloud TokenHub is aggressive: RMB 1.2 per million input tokens. A free two-week window at launch via OpenRouter made it widely accessible immediately. The model was led by a team that includes former OpenAI researchers and has already been deployed across Tencent's core products — WeChat, Yuanbao, and QQ. That production integration is a meaningful signal: this isn't a benchmark vanity release. For developers who need a powerful, cost-efficient reasoning and agentic model with actual open weights, Hy3 Preview is one of the most interesting drops of April 2026.

Decision
GLM-5.1
Tencent Hy3 Preview
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
Open Weights (Tencent Hy Community License); API from RMB 1.2/M tokens
Best for
#1 on SWE-Bench Pro — Zhipu's open 754B MoE beats GPT-5 on coding
295B MoE open weights — China's most efficient frontier model yet
Category
AI Models
AI Models

Reviewer scorecard

Builder
80/100 · ship

If the SWE-Bench Pro numbers hold up under independent replication, this is the first open model that can genuinely replace a proprietary API for serious agentic coding work. MIT license means you can fine-tune and deploy on your own infra. This is a big deal.

80/100 · ship

21B active params with 295B total — this is genuinely practical to deploy on reasonable hardware while matching models 10x the inference cost. The 256K context and strong SWE-bench score make it a legitimate option for agentic coding pipelines. I'd use this today.

Skeptic
45/100 · skip

754B parameters is not something 99% of developers can run locally. You need a multi-GPU cluster or serious cloud spend. The benchmark numbers are from Z.ai's own evaluations, and Zhipu has a history of optimistic benchmarking. Wait for independent replications.

45/100 · skip

The Tencent Hy Community License is not Apache 2.0 or MIT — read it carefully before using this in production. There are usage restrictions that could bite commercial deployments. Also, benchmark scores look great, but independent evals of Chinese labs' models have historically diverged from self-reported numbers.

Futurist
80/100 · ship

A Chinese lab shipping an MIT-licensed model that tops global coding benchmarks is a watershed moment for open-source AI. The geopolitical implications are real — this is the model that makes US export controls look strategically shortsighted.

80/100 · ship

The MoE efficiency race is the actual story here — we're getting frontier-class capability at a fraction of the activation cost. Hy3 is proof that the compute-vs-capability Pareto frontier keeps moving. Open weights with real deployment signals (WeChat at scale) is a combination that matters.

Creator
45/100 · skip

Unless you're building coding tools or agent infrastructure, a 754B MoE model doesn't move the needle for creative applications. The energy and infra overhead for creative use cases doesn't pencil out versus smaller, cheaper models.

80/100 · ship

Strong visual coding capabilities and multimodal understanding make this genuinely useful for design-to-code workflows. The health image analysis and product comparison use cases already deployed in Yuanbao show real-world creative utility beyond pure benchmark games.

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