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Universal AI provenance layer โ€” cryptographic receipts for every call, HOLD inference halt protocol, and code diagnostics

Project description

cascade-lattice

Universal AI provenance + inference intervention + code diagnostics. See what AI sees. Choose what AI chooses. Find bugs before they find you.

PyPI Python License

pip install cascade-lattice

Import with either style:

import cascade                # Preferred
import cascade_lattice        # Also works (alias)
from cascade import Hold      # Works
from cascade_lattice import Hold  # Also works

๐ŸŽฎ Interactive Demo

See CASCADE-LATTICE in action โ€” fly a lunar lander with AI, take control anytime:

pip install cascade-lattice[demo]
cascade-demo

Controls:

  • [H] HOLD-FREEZE โ€” Pause time, see AI's decision matrix, override with WASD
  • [T] HOLD-TAKEOVER โ€” You fly the lander, AI watches, provenance records everything
  • [ESC] Release hold, return to AI control

Every action is merkle-chained. Every decision has provenance. This is the future of human-AI interaction.


Two Superpowers

1. OBSERVE - Cryptographic receipts for every AI call

from cascade.store import observe

# Every inference -> hashed -> chained -> stored
receipt = observe("my_agent", {"action": "jump", "confidence": 0.92})
print(receipt.cid)  # bafyrei... (permanent content address)

2. HOLD - Pause AI at decision points

from cascade.hold import Hold
import numpy as np

hold = Hold.get()

# Your model (any framework)
action_probs = model.predict(state)

resolution = hold.yield_point(
    action_probs=action_probs,
    value=0.72,
    observation={"state": state},
    brain_id="my_model",
    action_labels=["up", "down", "left", "right"],  # Human-readable
)

# AI pauses. You see the decision matrix.
# Accept or override. Then it continues.
action = resolution.action

3. DIAGNOSE - Find bugs before they find you

from cascade.diagnostics import diagnose, BugDetector

# Quick one-liner analysis
report = diagnose("path/to/your/code.py")
print(report)  # Markdown-formatted bug report

# Deep scan a whole project
detector = BugDetector()
issues = detector.scan_directory("./my_project")

for issue in issues:
    print(f"[{issue.severity}] {issue.file}:{issue.line}")
    print(f"  {issue.message}")
    print(f"  Pattern: {issue.pattern.name}")

What it catches:

  • ๐Ÿ”ด Critical: Division by zero, null pointer access, infinite loops
  • ๐ŸŸ  High: Bare except clauses, resource leaks, race conditions
  • ๐ŸŸก Medium: Unused variables, dead code, type mismatches
  • ๐Ÿ”ต Low: Style issues, naming conventions, complexity warnings

Runtime tracing:

from cascade.diagnostics import CodeTracer

tracer = CodeTracer()

@tracer.trace
def my_function(x):
    return x / (x - 1)  # Potential div by zero when x=1

# After execution, trace root causes
tracer.find_root_causes("error_event_id")

Quick Start

Zero-Config Auto-Patch

import cascade
cascade.init()

# That's it. Every call is now observed.
import openai
# ... use normally, receipts emit automatically

Manual Observation

from cascade.store import observe, query

# Write
observe("gpt-4", {"prompt": "Hello", "response": "Hi!", "tokens": 5})

# Read
for receipt in query("gpt-4", limit=10):
    print(receipt.cid, receipt.data)

HOLD: Inference-Level Intervention

HOLD lets you pause any AI at decision points:

โ•โ•โ•โ•โ•โ•โ•โ•โ•โ•โ•โ•โ•โ•โ•โ•โ•โ•โ•โ•โ•โ•โ•โ•โ•โ•โ•โ•โ•โ•โ•โ•โ•โ•โ•โ•โ•โ•โ•โ•โ•โ•โ•โ•โ•โ•โ•โ•โ•โ•
๐Ÿ›‘ HOLD #1
   Merkle: 3f92e75df4bf653f
   AI Choice: FORWARD (confidence: 45.00%)
   Value: 0.7200
   Probabilities: FORWARD:0.45, BACK:0.30, LEFT:0.15, RIGHT:0.10
   Wealth: attention, features, reasoning
   Waiting for resolution (timeout: 30s)...
โ•โ•โ•โ•โ•โ•โ•โ•โ•โ•โ•โ•โ•โ•โ•โ•โ•โ•โ•โ•โ•โ•โ•โ•โ•โ•โ•โ•โ•โ•โ•โ•โ•โ•โ•โ•โ•โ•โ•โ•โ•โ•โ•โ•โ•โ•โ•โ•โ•โ•

Model-agnostic - works with:

  • PyTorch, JAX, TensorFlow
  • HuggingFace, OpenAI, Anthropic
  • Stable Baselines, RLlib
  • Any function that outputs probabilities

Informational Wealth

Pass everything your model knows to help humans decide:

resolution = hold.yield_point(
    action_probs=probs,
    value=value_estimate,
    observation=obs,
    brain_id="my_model",
    
    # THE WEALTH (all optional):
    action_labels=["FORWARD", "BACK", "LEFT", "RIGHT"],
    latent=model.get_latent(),           # Internal activations
    attention={"position": 0.7, "health": 0.3},
    features={"danger": 0.2, "goal_align": 0.8},
    imagination={                         # Per-action predictions
        0: {"trajectory": ["pos", "pos"], "expected_value": 0.8},
        1: {"trajectory": ["neg", "neg"], "expected_value": -0.3},
    },
    logits=raw_logits,
    reasoning=["High reward path", "Low risk"],
)

Build Your Own Interface

Register a listener to receive full HoldPoint data:

def my_ui_handler(hold_point):
    # hold_point contains ALL the wealth
    print(hold_point.action_labels)
    print(hold_point.imagination)
    # Send to your UI, game engine, logger, etc.

hold.register_listener(my_ui_handler)

Collective Intelligence

Every observation goes into the lattice:

from cascade.store import observe, query

# Agent A observes
observe("pathfinder", {"state": [1,2], "action": 3, "reward": 1.0})

# Agent B queries
past = query("pathfinder")
for r in past:
    print(r.data["action"], r.data["reward"])

CLI

# View lattice stats
cascade stats

# List observations  
cascade list --limit 20

# HOLD info
cascade hold

# HOLD system status
cascade hold-status

# Start proxy
cascade proxy --port 7777

Installation

# Core
pip install cascade-lattice

# With interactive demo (LunarLander)
pip install cascade-lattice[demo]

# With LLM providers
pip install cascade-lattice[openai]
pip install cascade-lattice[anthropic]
pip install cascade-lattice[all]

How It Works

Your Model                    CASCADE                      Storage
    |                            |                            |
    |  action_probs = [0.1,     |                            |
    |                  0.6,     |                            |
    |                  0.3]     |                            |
    | ------------------------->|                            |
    |                           |  hash(probs) -> CID        |
    |        HOLD               |  chain(prev_cid, cid)      |
    |   +-------------+         | -------------------------> |
    |   | See matrix  |         |              ~/.cascade/   |
    |   | Override?   |         |              lattice/      |
    |   +-------------+         |                            |
    | <-------------------------|                            |
    |   resolution.action       |                            |

Genesis

Every receipt chains back to genesis:

Genesis: 89f940c1a4b7aa65

The lattice grows. Discovery is reading the chain.


Links


"even still, i grow, and yet, I grow still"

Documentation

Research & Theory

๐Ÿ“„ Research Paper: Kleene Fixed-Point Framework
Deep dive into the mathematical foundationsโ€”how CASCADE-LATTICE maps neural network computations to Kleene fixed points, creating verifiable provenance chains through distributed lattice networks.

๐Ÿ“– Accessible Guide: From Theory to Practice
For everyone from data scientists to curious usersโ€”understand how CASCADE works, with examples ranging from medical AI oversight to autonomous drone coordination.

Key Concepts:

  • Kleene Fixed Points: Neural networks as monotonic functions converging to stable outputs
  • Provenance Chains: Cryptographic Merkle trees tracking every layer's computation
  • HOLD Protocol: Human-in-the-loop intervention at decision boundaries
  • Lattice Network: Distributed fixed-point convergence across AI agents

Quick Links


References

Built on foundational work in:

  • Kleene Fixed Points (Kleene, 1952) โ€” Theoretical basis for provenance convergence
  • Merkle Trees (Merkle, 1987) โ€” Cryptographic integrity guarantees
  • IPFS/IPLD (Benet, 2014) โ€” Content-addressed distributed storage

See full bibliography in the research paper.

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