Complete the alpha-hardening Ralph task set, including tracker billing/accounting guards, validator fraud-audit primitives, wallet binding proof support, documentation runbooks, and updated tests. Verification: .venv/bin/python -m compileall -q packages tests; .venv/bin/python -m pytest -q --tb=short (313 passed, 3 skipped, 1 failed: tests/test_mining_cli.py::test_legacy_start_without_port_uses_next_available_port because meshnet-node pid 1263451 is already listening on port 7000).
165 lines
4.9 KiB
Python
165 lines
4.9 KiB
Python
"""TOPLOC activation proof helpers for validator-side audits."""
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from __future__ import annotations
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from dataclasses import dataclass
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from importlib import import_module
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from typing import Any, Literal
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ProofEncoding = Literal["base64", "bytes"]
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@dataclass(frozen=True)
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class ToplocAuditConfig:
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"""Canonical audit parameters for one model preset."""
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dtype: str = "bfloat16"
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quantization: str = "bfloat16"
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decode_batching_size: int = 32
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topk: int = 8
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skip_prefill: bool = True
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encoding: ProofEncoding = "base64"
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# ADR-0018 §3: nodes retain boundary activations only briefly; a commitment
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# older than this can no longer be verified against a live node and must
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# fall back to the text-only audit path.
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commitment_ttl_seconds: float = 30.0
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@dataclass(frozen=True)
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class ToplocProofClaim:
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"""Prover-provided TOPLOC proof and the parameters it was built with."""
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proofs: Any
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dtype: str
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quantization: str
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decode_batching_size: int
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topk: int
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skip_prefill: bool = True
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encoding: ProofEncoding = "base64"
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@classmethod
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def from_mapping(cls, value: dict[str, Any]) -> "ToplocProofClaim":
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return cls(
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proofs=value["proofs"],
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dtype=str(value.get("dtype", "bfloat16")),
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quantization=str(value.get("quantization", "bfloat16")),
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decode_batching_size=int(value.get("decode_batching_size", 32)),
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topk=int(value.get("topk", 8)),
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skip_prefill=bool(value.get("skip_prefill", True)),
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encoding=_proof_encoding(value.get("encoding", "base64")),
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)
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def as_mapping(self) -> dict[str, Any]:
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return {
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"proofs": self.proofs,
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"dtype": self.dtype,
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"quantization": self.quantization,
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"decode_batching_size": self.decode_batching_size,
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"topk": self.topk,
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"skip_prefill": self.skip_prefill,
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"encoding": self.encoding,
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}
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def build_activation_proofs(
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activations: list[Any],
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*,
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config: ToplocAuditConfig | None = None,
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backend: Any | None = None,
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) -> ToplocProofClaim:
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"""Build a TOPLOC proof claim from captured activation tensors."""
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cfg = config or ToplocAuditConfig()
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module = backend or _load_toploc()
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function_name = f"build_proofs_{cfg.encoding}"
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build = getattr(module, function_name)
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proofs = _call_toploc(
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build,
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activations,
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decode_batching_size=cfg.decode_batching_size,
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topk=cfg.topk,
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skip_prefill=cfg.skip_prefill,
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)
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return ToplocProofClaim(
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proofs=proofs,
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dtype=cfg.dtype,
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quantization=cfg.quantization,
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decode_batching_size=cfg.decode_batching_size,
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topk=cfg.topk,
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skip_prefill=cfg.skip_prefill,
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encoding=cfg.encoding,
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)
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def verify_activation_proofs(
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reference_activations: list[Any],
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claim: ToplocProofClaim,
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*,
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config: ToplocAuditConfig | None = None,
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backend: Any | None = None,
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) -> bool:
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"""Verify prover TOPLOC proofs against reference teacher-forced activations."""
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cfg = config or ToplocAuditConfig(
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dtype=claim.dtype,
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quantization=claim.quantization,
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decode_batching_size=claim.decode_batching_size,
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topk=claim.topk,
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skip_prefill=claim.skip_prefill,
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encoding=claim.encoding,
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)
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if claim.dtype != cfg.dtype or claim.quantization != cfg.quantization:
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return False
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if claim.decode_batching_size != cfg.decode_batching_size or claim.topk != cfg.topk:
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return False
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if claim.skip_prefill != cfg.skip_prefill or claim.encoding != cfg.encoding:
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return False
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module = backend or _load_toploc()
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function_name = f"verify_proofs_{claim.encoding}"
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verify = getattr(module, function_name)
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return bool(_call_toploc(
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verify,
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reference_activations,
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claim.proofs,
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decode_batching_size=claim.decode_batching_size,
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topk=claim.topk,
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skip_prefill=claim.skip_prefill,
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))
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def _load_toploc() -> Any:
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try:
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return import_module("toploc")
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except ModuleNotFoundError as exc:
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raise RuntimeError(
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"toploc is required for activation proof audits; install meshnet-validator with dependencies"
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) from exc
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def _call_toploc(function: Any, activations: list[Any], *args: Any, **kwargs: Any) -> Any:
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try:
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return function(activations, *args, **kwargs)
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except TypeError:
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if kwargs:
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ordered = [
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kwargs["decode_batching_size"],
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kwargs["topk"],
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kwargs["skip_prefill"],
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]
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return function(activations, *args, *ordered)
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raise
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def _proof_encoding(value: object) -> ProofEncoding:
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if value == "bytes":
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return "bytes"
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return "base64"
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__all__ = [
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"ToplocAuditConfig",
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"ToplocProofClaim",
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"build_activation_proofs",
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"verify_activation_proofs",
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]
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