Issues found running the system end-to-end on the NIST CFReDS Hacking Case
disk image (SCHARDT.001, Mr. Evil). Four interconnected fixes:
1. HypothesisAgent boundary leak (two layers)
B.1 Tool set: BaseAgent._register_graph_tools was registering
add_phenomenon / add_lead / link_to_entity for every agent. With
an empty graph in Phase 2, HypothesisAgent "compensated" by
inventing phenomena, dispatching leads, and linking entities.
B.2 Prompt leak: BaseAgent's shared system prompt hard-coded "Call
investigation tools (list_directory, parse_registry_key, etc.)".
HypothesisAgent hallucinated list_directory and wasted 2 LLM
rounds on 'unknown tool' errors before backing off.
Fix:
- Split _register_graph_tools into _register_graph_read_tools +
_register_graph_write_tools.
- HypothesisAgent, ReportAgent, TimelineAgent override
_register_graph_tools to skip write tools.
- HypothesisAgent and TimelineAgent override _build_system_prompt
with focused, role-specific workflows (no Phase A-D investigation
boilerplate).
2. JSON parse failures in Phase 3 lead generation (5/6 hypotheses lost)
DeepSeek emits JSON with stray backslashes (Windows path references)
and occasional minor syntax slips. Old single-stage sanitize couldn't
recover; per-hypothesis fallback silently swallowed each failure.
Fix:
- _safe_json_loads: progressive — stage 0 as-is, stage 1 escape stray
\X (anything not in valid JSON escape set), log raw input on final
failure for diagnosis.
- New _call_llm_for_json helper: on parse failure, append the error
to the prompt and re-call LLM (self-correcting retry, up to 2).
- All 4 LLM-JSON callsites in orchestrator refactored to use it.
3. Phase 1 sometimes skipped add_phenomenon (LLM treated <answer> as deliverable)
Strengthen BaseAgent's RECORDING REQUIREMENT — explicit "your <answer>
is DISCARDED; only graph mutations propagate" plus a new rule:
negative findings (searched X, found nothing) MUST also be recorded
as phenomena, since they constrain the hypothesis space.
4. Phase 4 Timeline was a no-op
TimelineAgent inherited BaseAgent's Phase A-D prompt and never called
add_temporal_edge — produced 0 temporal edges. Override the prompt
with concrete workflow (build_filesystem_timeline ->
get_timestamped_phenomena -> 15-40 add_temporal_edge calls) and
restrict tool set to read-only + its 3 temporal tools.
Verified end-to-end: HypothesisAgent now 8 tools (no writes), ReportAgent
13 (no graph writes), TimelineAgent 10 (read + temporal + timeline).
All 60 unit tests pass.
Co-Authored-By: Claude Opus 4.7 (1M context) <noreply@anthropic.com>
93 lines
4.0 KiB
Python
93 lines
4.0 KiB
Python
"""Hypothesis Agent — generates investigative hypotheses from phenomena.
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Generates hypotheses only. Phenomenon→Hypothesis linking is handled centrally
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by Orchestrator._judge_new_phenomena. Tool set is restricted to read-only
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graph queries + add_hypothesis to prevent the agent from creating phenomena,
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leads, or entity links.
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"""
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from __future__ import annotations
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import logging
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from base_agent import BaseAgent
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from evidence_graph import EvidenceGraph
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from llm_client import LLMClient
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logger = logging.getLogger(__name__)
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class HypothesisAgent(BaseAgent):
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name = "hypothesis"
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role = (
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"Hypothesis analyst. You review all phenomena discovered so far "
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"and formulate investigative hypotheses about what happened on this system. "
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"Your ultimate goal: build the most complete picture of events that occurred."
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)
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def __init__(self, llm: LLMClient, graph: EvidenceGraph) -> None:
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super().__init__(llm, graph)
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self._register_hypothesis_tools()
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def _register_graph_tools(self) -> None:
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"""Restrict to read-only graph tools. add_hypothesis is registered separately."""
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self._register_graph_read_tools()
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def _register_hypothesis_tools(self) -> None:
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self.register_tool(
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name="add_hypothesis",
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description=(
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"Create a new investigative hypothesis about what happened on the system. "
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"Each hypothesis should be a specific, testable claim."
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),
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input_schema={
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"type": "object",
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"properties": {
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"title": {
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"type": "string",
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"description": "Short title for the hypothesis.",
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},
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"description": {
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"type": "string",
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"description": "Detailed description of what this hypothesis claims.",
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},
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},
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"required": ["title", "description"],
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},
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executor=self._add_hypothesis,
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)
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def _build_system_prompt(self, task: str) -> str:
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"""Focused prompt — no INVESTIGATE/RECORD/LINK workflow."""
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return (
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f"You are {self.name}, a forensic hypothesis analyst.\n"
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f"Role: {self.role}\n\n"
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f"Image: {self.graph.image_path}\n"
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f"Current investigation state: {self.graph.stats_summary()}\n\n"
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f"Your task: {task}\n\n"
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f"WORKFLOW:\n"
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f"1. Call list_phenomena and search_graph to review existing findings.\n"
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f"2. For each hypothesis you want to record, call add_hypothesis (title + description).\n"
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f"3. Wrap a short summary in <answer> when you have generated 3-7 hypotheses.\n\n"
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f"STRICT BOUNDARIES:\n"
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f"- Your only mutation tool is add_hypothesis. Do NOT attempt list_directory, "
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f"parse_registry_key, extract_file, or any disk-image investigation tools — "
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f"they are not yours and you will get 'unknown tool' errors.\n"
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f"- You CANNOT create phenomena, leads, or entity links. The orchestrator handles "
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f"all phenomenon↔hypothesis linking after you finish.\n"
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f"- Each hypothesis must be specific and testable. Avoid generic templates like "
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f"'Unauthorized Remote Access' or 'Malware Deployment' unless concrete phenomena "
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f"in the graph already point to them.\n"
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f"- If the graph is empty, generate broad starting hypotheses and mark them "
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f"clearly as exploratory in their description so downstream agents know they "
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f"still need evidence."
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)
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async def _add_hypothesis(self, title: str, description: str) -> str:
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hid = await self.graph.add_hypothesis(
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title=title,
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description=description,
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created_by=self.name,
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)
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return f"Hypothesis created: {hid} — {title} (confidence: 0.50)"
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