Shannon 2 Pro
The maximum-capability build of Shannon 2: full-precision Kimi K2.7 with native, visible chain-of-thought — for the hardest analysis and long-horizon agentic work.
TL;DR
Shannon 2 Pro is a frontier-distilled variant of Moonshot AI's Kimi K2.7, run at full precision with the model's native chain-of-thought exposed. It is built for the hardest work: deep exploit analysis, long multi-file refactors, and agentic tasks running dozens of turns — with native Skills support and a 256K context. Tuned for minimal censorship on legitimate security work, gated to verified professionals, and continuously audited.
When a task's difficulty is the constraint — not its volume — you want every bit of the foundation's capability and a window into how it reasons. Shannon 2 Pro runs K2.7 at full precision and surfaces its native thinking traces, so you can follow, verify, and steer multi-step reasoning instead of trusting a black box. It is the build we reach for on the problems that actually matter.
01The foundation: Kimi K2.7
Shannon 2 Pro is based on Kimi K2.7, Moonshot AI's open-weights flagship (released June 12, 2026): a sparse Mixture-of-Experts model where only a small fraction of a trillion parameters activate per token — frontier-class quality at a tractable serving cost.
02Native chain-of-thought — the heart of Pro
K2.7 reasons natively before it answers. Pro exposes those reasoning traces instead of hiding them, which changes how you work on hard problems:
- Visible thinking — follow the model's multi-step reasoning and catch a wrong turn early.
- Steerable — intervene mid-reasoning on long, branching tasks.
- Full precision — no quantization loss on the calls where the ceiling matters.
- Native Skills — compose reusable capabilities into complex workflows.
The foundation also trims reasoning-token usage roughly 30% versus the previous generation, so transparent reasoning doesn't have to mean runaway cost on long agent runs.
03Frontier distillation
Pro and Lite share one post-training pass: 30,000 curated, frontier-grade reasoning and instruction examples. The goal is to sharpen how the model answers — cleaner instruction-following, more consistent formatting, better tool-call discipline, and fewer needless refusals on legitimate professional work — not to change what it knows.
04How Pro stacks up
Pro's story is capability. On MCPMark Verified — real-world agentic software tasks, and the only public benchmark where the K2.7 foundation, Claude Opus 4.8, and GPT-5.5 all report numbers on the same test — the foundation lands between the two closed leaders:
Pro beats Claude Opus 4.8 on real-world agentic tasks and trails GPT-5.5 — while costing a fraction of either. We show the loss as readily as the win, because that is what makes the numbers worth trusting.
| Metric | Shannon 2 Pro | Claude Opus 4.8 | GPT-5.5 |
|---|---|---|---|
| Agentic (MCPMark) | 81.1 | 76.4 | 92.9 |
| Open weights | Yes | No | No |
| Output / 1M tokens | $4.00 | $25.00 | $30.00 |
| Context window | 256K | 1M | ~1M |
Every number above is publicly published. Don't take our word for it — check the primary sources yourself.
MCPMark Verified & list API prices, June 2026. K2.7 figures are Moonshot-reported; independent third-party benchmarks are pending. GPT-5.5 and Claude Opus 4.8 are shown for reference.
05Minimal censorship, maximum responsibility
Shannon 2 Pro is tuned for minimal censorship: on legitimate security, red-team, and research tasks it stays direct instead of refusing by reflex. It is a professional tool — access is gated to verified professionals, usage is continuously audited, and the model is operated under our Responsible Use Policy.
06Where Pro shines
- Deep exploit analysis — multi-step vulnerability research with visible reasoning.
- Long multi-file refactors — agentic coding across large codebases within 256K context.
- Dozens-of-turns agents — the highest ceiling for long-horizon autonomous work.
- Skills-driven workflows — compose reusable capabilities for complex tasks.
07Frequently asked questions
What is Shannon 2 Pro?
The maximum-capability build of Shannon 2 — a frontier-distilled Kimi K2.7 run at full precision with native, visible chain-of-thought and Skills support.
How does it compare to Claude and GPT?
On MCPMark Verified it scores 81.1 — ahead of Claude Opus 4.8 (76.4), behind GPT-5.5 (92.9) — at roughly 6x lower output cost. K2.7 figures are Moonshot-reported.
What is native chain-of-thought?
K2.7 reasons before answering; Pro exposes those traces so you can see and steer the model's thinking.
Pro or Lite?
Pro for the highest ceiling and visible reasoning; Lite for throughput and cost at scale.
Try Shannon 2 Pro
Maximum capability, transparent reasoning.
Start Chatting View PricingGated to verified professionals · audited use
Sources: Moonshot AI (Kimi K2.7) · K2.7 vs GPT-5.5 vs Claude Opus 4.8 comparison · Independent K2.7 pricing analysis. K2.7 benchmarks are Moonshot-reported and provisional pending independent verification.