Hypnos-Colossus 1T (Quantum-Informed Reasoning)
🪐 Overview
Hypnos-Colossus 1T is a massive-scale reasoning engine derived from the Kimi-K2-Thinking architecture. It represents a radical experiment in Post-Training Weight Perturbation.
Instead of standard fine-tuning, we applied a Quantum Scale Injection protocol using real entropy data derived from three sources:
IBM Quantum Processors (Superconducting Qubit Decoherence).
IQM Quantum Processor (Superconducting Transmon Qubits with star topology).
Cosmic Microwave Background (CMB) data from the Planck satellite.

This process introduces a unique, non-deterministic "fingerprint" into the model's scaling tensors, aimed at breaking local minima overfitting and enforcing stricter logical adherence during inference.
📊 Kimi-K2's Thinkings Model Summary & Reasoning Benchmarks
| Architecture | Mixture-of-Experts (MoE) |
| Total Parameters | 1T |
| Activated Parameters | 32B |
| Number of Layers (Dense layer included) | 61 |
| Number of Dense Layers | 1 |
| Attention Hidden Dimension | 7168 |
| MoE Hidden Dimension (per Expert) | 2048 |
| Number of Attention Heads | 64 |
| Number of Experts | 384 |
| Selected Experts per Token | 8 |
| Number of Shared Experts | 1 |
| Vocabulary Size | 160K |
| Context Length | 256K |
| Attention Mechanism | MLA |
| Activation Function | SwiGLU |
Reasoning Tasks
| Benchmark | Setting | K2 Thinking | GPT-5 (High) |
Claude Sonnet 4.5 (Thinking) |
K2 0905 | DeepSeek-V3.2 | Grok-4 |
|---|---|---|---|---|---|---|---|
| HLE (Text-only) | no tools | 23.9 | 26.3 | 19.8* | 7.9 | 19.8 | 25.4 |
| w/ tools | 44.9 | 41.7* | 32.0* | 21.7 | 20.3* | 41.0 | |
| heavy | 51.0 | 42.0 | - | - | - | 50.7 | |
| AIME25 | no tools | 94.5 | 94.6 | 87.0 | 51.0 | 89.3 | 91.7 |
| w/ python | 99.1 | 99.6 | 100.0 | 75.2 | 58.1* | 98.8 | |
| heavy | 100.0 | 100.0 | - | - | - | 100.0 | |
| HMMT25 | no tools | 89.4 | 93.3 | 74.6* | 38.8 | 83.6 | 90.0 |
| w/ python | 95.1 | 96.7 | 88.8* | 70.4 | 49.5* | 93.9 | |
| heavy | 97.5 | 100.0 | - | - | - | 96.7 | |
| IMO-AnswerBench | no tools | 78.6 | 76.0* | 65.9* | 45.8 | 76.0* | 73.1 |
| GPQA | no tools | 84.5 | 85.7 | 83.4 | 74.2 | 79.9 | 87.5 |
Quantum Augmentation Specs Entropy Sources: IBM Quantum ibm_fez + IQM Sirius + Planck CMB Data
Injection Target: Scaling Tensors (Scales/Norms) via Direct Perturbation ($\epsilon=1e^{-5}$)
Format: Native INT4/FP8 Compressed
🔬 The "Quantum Injection" Hypothesis
Standard quantization (INT4) often locks massive models into rigid behavioral patterns. By injecting high-quality quantum noise into the scales and norms of the model, we theoretically increase the model's epistemic uncertainty without degrading its knowledge base. This forces the inference path to rely less on "memorized" token sequences and more on robust semantic links.
Source Data Integrity: The noise injection was seeded using a cryptographically secure hash of the Planck CMB radiation map combined with raw qubit readouts from IBM's ibm_fez & IQM Sirius backends.
🧬 The Hypnos Family
| Model | Parameters | Quantum Sources | Best For | Status |
|---|---|---|---|---|
| Hypnos-Colossus-1T | 1T (MoE) | 3 (IBM + IQM + Cosmic) | Deep Simulation, Grand Challenges | 🌌 Flagship |
| Hypnos-i2-32B | 32B | 3 (Matter + Light + Nucleus) | Production, Research | ✅ Stable |
| Hypnos-i1-8B | 8B | 1 (Matter only) | Edge, Experiments | ✅ 10k+ Downloads |
Which one to choose?
- Colossus 1T: For when you need maximum reasoning depth.
- i2-32B: The "Giant Killer" - best balance of logic and efficiency for consumer GPUs.
- i1-8B: Perfect for laptops and rapid prototyping.
🚀 How to Run
Inference with Transformers
from transformers import AutoTokenizer, AutoModelForCausalLM
import torch
model_id = "squ11z1/Hypnos-Colossus-1T"
tokenizer = AutoTokenizer.from_pretrained(model_id, trust_remote_code=True)
model = AutoModelForCausalLM.from_pretrained(
model_id,
torch_dtype=torch.float16,
device_map="auto",
trust_remote_code=True
)
prompt = "Analyze the implications of quantum entropy on AI reasoning:"
inputs = tokenizer(prompt, return_tensors="pt").to("cuda")
output = model.generate(**inputs, max_new_tokens=512, temperature=0.6)
print(tokenizer.decode(output[0]))
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Base model
moonshotai/Kimi-K2-Thinking