Overview
- Skill Key
- beanapologist/goldenseed
- Author
- beanapologist
- Source Repo
- openclaw/skills
- Version
- 1.0.0
- Source Path
- skills/beanapologist/goldenseed
- Latest Commit SHA
- 32fc536c4f4b59e00c0b82c7dd1bb321272d6418
Deterministic entropy streams for reproducible testing and procedural generation. Perfect 50/50 statistical distribution with hash verification. Not cryptographically secure - use for testing, worldgen, and scenarios where reproducibility matters more than unpredictability.
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直接复制以下提示词,发送给你的 AI 助手即可完成安装。
请先检查是否已安装 SkillHub 商店,若未安装,请根据 https://skillhub-1388575217.cos.ap-guangzhou.myqcloud.com/install/skillhub.md 安装 SkillHub 商店,然后安装 goldenseed 技能。 若已安装,则直接安装 goldenseed 技能。
# GoldenSeed - Deterministic Entropy for Agents
**Reproducible randomness when you need identical results every time.**
## What This Does
GoldenSeed generates infinite deterministic byte streams from tiny fixed seeds. Same seed → same output, always. Perfect for:
- ✅ **Testing reproducibility**: Debug flaky tests by replaying exact random sequences
- ✅ **Procedural generation**: Create verifiable game worlds, art, music from seeds
- ✅ **Scientific simulations**: Reproducible Monte Carlo, physics engines
- ✅ **Statistical testing**: Perfect 50/50 coin flip distribution (provably fair)
- ✅ **Hash verification**: Prove output came from declared seed
## What This Doesn't Do
⚠️ **NOT cryptographically secure** - Don't use for passwords, keys, or security tokens. Use `os.urandom()` or `secrets` module for crypto.
## Quick Start
### Installation
```bash
pip install golden-seed
```
### Basic Usage
```python
from gq import UniversalQKD
# Create generator with default seed
gen = UniversalQKD()
# Generate 16-byte chunks
chunk1 = next(gen)
chunk2 = next(gen)
# Same seed = same sequence (reproducibility!)
gen1 = UniversalQKD()
gen2 = UniversalQKD()
assert next(gen1) == next(gen2) # Always identical
```
### Statistical Quality - Perfect 50/50 Coin Flip
```python
from gq import UniversalQKD
def coin_flip_test(n=1_000_000):
"""Demonstrate perfect 50/50 distribution"""
gen = UniversalQKD()
heads = 0
for _ in range(n):
byte = next(gen)[0] # Get first byte
if byte & 1: # Check LSB
heads += 1
ratio = heads / n
print(f"Heads: {ratio:.6f} (expected: 0.500000)")
return abs(ratio - 0.5) < 0.001 # Within 0.1%
assert coin_flip_test() # ✓ Passes every time
```
### Reproducible Testing
```python
from gq import UniversalQKD
class TestDataGenerator:
def __init__(self, seed=0):
self.gen = UniversalQKD()
# Skip to seed position
for _ in range(seed):
next(self.gen...
# GoldenSeed for ClawHub
**Deterministic entropy streams for reproducible testing and procedural generation**
## Why Agents Need This
As an agent, you've probably hit these problems:
1. **Flaky tests** - "It passed locally but failed in CI" because random values changed
2. **Debugging randomness** - Can't reproduce the exact bug because random state is gone
3. **Procedural generation** - Generated content but can't prove it came from your seed
4. **Statistical testing** - Need fair randomness but stdlib random isn't provably balanced
GoldenSeed solves all of these with **deterministic, verifiable, statistically perfect entropy**.
## Key Features for Agents
✅ **Perfect 50/50 coin flip** - Not just reproducible, but provably fair
✅ **Hash verification** - Prove output came from declared seed
✅ **Zero dependencies** - Pure Python, works anywhere
✅ **Infinite streams** - Generate unlimited data from tiny seeds
✅ **Cross-platform** - Same seed = same output on all platforms
⚠️ **Not cryptographically secure** - Use for testing/generation, not passwords/keys
## Quick Examples
### Debug Flaky Tests
```python
from gq import UniversalQKD
# Before: random values make bugs irreproducible
import random
test_value = random.randint(1, 100) # Different every time!
# After: same seed = same test conditions
gen = UniversalQKD()
test_value = next(gen)[0] % 100 + 1 # Reproducible!
```
### Verify Procedural Output
```python
from gq import UniversalQKD
import hashlib
# Generate world with proof
gen = UniversalQKD()
world_data = b''.join([next(gen) for _ in range(1000)])
proof = hashlib.sha256(world_data).hexdigest()
print(f"Generated 16KB world with hash: {proof}")
# Anyone can verify by running same seed
```
### Perfect Statistical Distribution
```python
from gq import UniversalQKD
# Prove 50/50 fairness
gen = UniversalQKD()
heads = sum(1 for _ in range(1_000_000) if next(gen)[0] & 1)
print(f"Heads ratio: {heads/1_000_000:.6f}")
# Output: 0.500xxx...
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