Core detection, scoring, and healing engine for Pisama agent forensics
Project description
pisama-core
Detection, scoring, and healing engine for AI agent systems. Detect failure modes like infinite loops, hallucinations, cost overruns, and coordination breakdowns in your LLM agents -- entirely offline, no API keys required.
Part of the Pisama platform for multi-agent failure detection.
Install
pip install pisama-core
Quick Start
import asyncio
from pisama_core import Trace, SpanKind, DetectionOrchestrator
# Build a trace from your agent's execution
trace = Trace()
for i in range(8):
trace.create_span(name="Read", kind=SpanKind.TOOL)
# Run all built-in detectors
orchestrator = DetectionOrchestrator()
result = asyncio.run(orchestrator.analyze(trace))
for detection in result.detections:
print(f"[{detection.detector_name}] {detection.summary}")
print(f" Severity: {detection.severity}/100")
print(f" Fix: {detection.fix_recommendation.instruction}")
Output:
[loop] Tool 'Read' repeated 8x consecutively
Severity: 45/100
Fix: Stop the current loop. Try a different approach or ask the user for guidance.
No API key. No network calls. Runs completely locally.
Built-in Detectors
| Detector | What it catches |
|---|---|
| Loop | Consecutive repetitions, cyclic patterns (A->B->A->B), low tool diversity |
| Repetition | Similar actions with slight variations, tool dominance |
| Cost | Token budget overruns, excessive LLM/tool calls |
| Hallucination | Failed file operations, error rate spikes |
| Coordination | Message storms, agent imbalance, handoff loops |
All detectors support both batch analysis (full trace) and real-time hooks (per-span).
Use Individual Detectors
import asyncio
from pisama_core import Trace, SpanKind
from pisama_core.detection.detectors.loop import LoopDetector
from pisama_core.detection.detectors.cost import CostDetector
trace = Trace()
# ... add spans representing your agent's execution
loop = LoopDetector()
cost = CostDetector()
loop_result = asyncio.run(loop.detect(trace))
cost_result = asyncio.run(cost.detect(trace))
if loop_result.detected:
print(f"Loop detected: {loop_result.summary}")
Write Your Own Detector
from pisama_core import BaseDetector, DetectionResult, Trace
from pisama_core.detection.result import FixType
class MyDetector(BaseDetector):
name = "my_detector"
description = "Detects my custom failure pattern"
version = "0.1.0"
async def detect(self, trace: Trace) -> DetectionResult:
# Your detection logic here
tool_names = trace.get_tool_sequence()
if len(set(tool_names)) == 1 and len(tool_names) > 5:
return DetectionResult.issue_found(
detector_name=self.name,
severity=50,
summary="Agent is stuck using a single tool",
fix_type=FixType.SWITCH_STRATEGY,
fix_instruction="Try a different approach",
)
return DetectionResult.no_issue(self.name)
Register it so the orchestrator picks it up:
from pisama_core import registry
registry.register(MyDetector())
Core Concepts
- Trace -- A complete agent execution session containing multiple spans
- Span -- A single unit of work (tool call, LLM inference, agent turn) with
kind, timing, and optional I/O data - DetectionResult -- Detector output: issue found (yes/no), severity (0-100), evidence, fix recommendation
- DetectorRegistry -- Plugin system for registering detectors (built-ins auto-register on import)
- DetectionOrchestrator -- Runs all registered detectors and aggregates results
Platform Support
Traces are framework-agnostic. Set platform for platform-aware threshold tuning:
from pisama_core import Trace, TraceMetadata, Platform
trace = Trace(metadata=TraceMetadata(platform=Platform.LANGGRAPH))
Works with Claude Agent SDK, LangGraph, AutoGen, CrewAI, n8n, Dify, and custom agents.
Pisama Platform
For production monitoring with 25+ calibrated detectors, ML-based detection, LLM-as-judge verification, and a dashboard, see pisama.ai.
License
MIT
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