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.
AI Models
GLM-5.1
The first open-source model to beat GPT-5.4 and Claude Opus on real-world coding
50%
Panel ship
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Community
Paid
Entry
GLM-5.1 is a 754-billion parameter open-weights language model released by Z.ai (formerly Zhipu AI) under the MIT license on April 7, 2026. It topped the global SWE-Bench Pro leaderboard with a score of 58.4 — surpassing GPT-5.4 (57.7), Claude Opus 4.6 (57.3), and Gemini 3.1 Pro (54.2) — marking the first time an open-source model has outperformed all leading closed-source models on a widely-cited real-world code repair benchmark. Built on a Mixture-of-Experts architecture and trained entirely on Huawei Ascend 910B chips with zero Nvidia involvement, GLM-5.1 was designed for long-horizon agentic coding. Internal demos showed the model sustaining autonomous task execution for over 8 hours across complex multi-file codebases. The full weights weigh in at 1.51TB on Hugging Face, making self-hosting a serious infrastructure undertaking — but the Z.ai API provides accessible access for teams that can't run the model locally. The significance here is hard to overstate: open-source has spent two years chasing the frontier on coding benchmarks, and GLM-5.1 just crossed it. MIT licensing means commercial use without royalties, and training on non-Nvidia hardware is a notable signal that the hardware moat around frontier AI is cracking. Expect rapid community fine-tunes and distillations in the weeks ahead.
AI Models
Tencent Hy3 Preview
295B MoE open weights — China's most efficient frontier model yet
75%
Panel ship
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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.
Reviewer scorecard
“A 754B MIT-licensed model that actually beats GPT-5.4 on SWE-Bench Pro is the kind of release you stop what you're doing for. The API is live today and the weights are on Hugging Face. If you're building coding tools, agentic pipelines, or anything touching code generation, this is a must-benchmark immediately.”
“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.”
“1.51TB to self-host is not practical for 99% of teams, and SWE-Bench Pro captures one narrow slice of what makes a model useful in production. The 8-hour autonomous demo sounds impressive until you realize that's a cherry-picked task — real enterprise coding pipelines are messier. The API pricing will matter more than the benchmark.”
“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.”
“The first open-source model to beat all closed frontier models on a meaningful coding benchmark is an inflection point. The story of sovereign AI, non-Nvidia training stacks, and MIT-licensed weights converging in one model release is the geopolitical tech story of 2026. Distillations will bring this capability to consumer hardware within months.”
“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.”
“This is a tools-for-engineers release with zero direct value for creators right now. The downstream effect — better open-source coding agents that help build creative tools — will matter eventually. Wait for the apps built on top of it.”
“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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