feat: add loop guard to halt repeated-identical tool call loops

Introduces `pallas.loop_guard` module that detects and halts agentic loops
where the same `(tool, args) → result` repeats consecutively, preventing
wasted LLM turns when upstream MCP servers return contradictory data.

- Add per-request `ToolRunnerHooks` tracking rolling tool-call signatures
- Halt loop after `loop_repeat_threshold` consecutive repeats (default 3)
- Collapse `max_iterations` on halt to terminate without further LLM call
- Append user-facing explanation to the turn with `stop_reason=endTurn`
- Expose `pallas_agent_loop_aborted_total{agent,reason}` counter
- Add per-agent `max_iterations` and `loop_repeat_threshold` config
- Document guard behavior, metric, and alerting query
This commit is contained in:
2026-06-16 08:27:07 -04:00
parent e29669304b
commit ea37ab38c1
8 changed files with 566 additions and 3 deletions

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@@ -193,6 +193,8 @@ agents:
| `agents.<name>.title` | no | Display name in registry. Default: `name.title()` |
| `agents.<name>.description` | no | Description in registry |
| `agents.<name>.depends_on` | no | List of agent names that must start and become ready before this agent |
| `agents.<name>.max_iterations` | no | Hard cap on agentic-loop turns per `send_message`. Default: `15`. fast-agent returns a partial answer once exceeded |
| `agents.<name>.loop_repeat_threshold` | no | Halt the loop after this many consecutive identical `(tool, args) → result` rounds. Default: `3`. `0` disables the guard |
### `fastagent.config.yaml` Extensions
@@ -530,6 +532,39 @@ Registered on each agent's MCP server. Checks:
---
## Loop Guard
A small model occasionally gets stuck emitting the *identical* tool call every
iteration — usually because an upstream MCP server returned a contradictory or
malformed result it keeps trying to reconcile. Left alone the loop burns LLM
turns and context until the client times out and the user sees
`empty_response`.
`pallas.loop_guard` installs per-request `ToolRunnerHooks` (composed on top of
the assistant-stream hooks) that track a rolling signature of
`(tool, normalized_args) → result_hash`. When the same signature repeats
`loop_repeat_threshold` times consecutively (default **3**), the loop is
**halted immediately** — the runtime does *not* ask the model to troubleshoot,
because the fault is almost always upstream and self-recovery is slow,
unpredictable, and token-hungry. On halt it:
- collapses the request's `max_iterations` to the current iteration, so
fast-agent's own `_iteration > max_iterations` check terminates the turn
after the current tool result with **no further LLM call**;
- appends an honest, user-facing explanation to the returned turn (and sets
`stop_reason = endTurn`) so the client gets a real message instead of an
empty/truncated one;
- logs the offending tool, arguments, and result at WARNING (`event=loop_halt`
in `pallas.loop_guard`) so the upstream bug can be fixed durably; and
- increments `pallas_agent_loop_aborted_total{reason="repeat"}`.
This fires well before the `max_iterations` cap (a 3-round repeat halts within
~3 turns regardless of the configured ceiling), which is the point: the cap is
a backstop, the guard is the fast path. Set `loop_repeat_threshold: 0` on an
agent to disable it.
---
## Metrics
Pallas exposes Prometheus metrics for scraping and alerting. One scrape target per Pallas deployment is sufficient — all agents run as coroutines in a single process under `asyncio.gather`, so metrics are process-global.
@@ -570,6 +605,7 @@ scrape_configs:
| `pallas_downstream_up` | gauge | `agent`, `server` | `1` when the named downstream MCP server passed the last `get_health` probe |
| `pallas_llm_provider_up` | gauge | `provider` | `1` when the active LLM provider passed its last preflight or runtime re-probe |
| `pallas_agent_health_status` | gauge | `agent` | Aggregate from the last `get_health`: `1`=ok, `0.5`=degraded, `0`=error |
| `pallas_agent_loop_aborted_total` | counter | `agent`, `reason` | Agentic loops force-stopped by a runtime guard. `reason``repeat` (identical-tool-call loop detected) |
Standard process metrics (RSS, CPU, GC, open FDs) are emitted by `prometheus-client`'s default collectors on the same endpoint.
@@ -616,6 +652,7 @@ pallas_llm_provider_up == 0
| Agent error rate elevated | `rate(pallas_send_message_total{outcome="error"}[10m]) > 0.1` | >10% errors over 10 min |
| Latency regression | `histogram_quantile(0.95, sum by (agent, le) (rate(pallas_send_message_duration_seconds_bucket[10m]))) > 60` | p95 over 60 s |
| Token burn | `sum(rate(pallas_llm_tokens_total{kind="output"}[1h])) > N` | Set N to your budget |
| Agent loop halted | `increase(pallas_agent_loop_aborted_total[15m]) > 0` | A repeated-tool-call loop was force-stopped — investigate the upstream tool/data |
---
@@ -645,6 +682,7 @@ This avoids the brittle pattern of inferring capabilities from model name substr
| `pallas.registry` | `registry.py` | Starlette app serving `GET /.well-known/mcp/server.json` — agent catalogue built from config |
| `pallas.multimodal_server` | `multimodal_server.py` | `MultimodalAgentMCPServer` — extends `AgentMCPServer` with image support, conversation history prompts, bearer token propagation |
| `pallas.health` | `health.py` | LLM provider preflight validation, downstream MCP server probing, `get_health` tool registration |
| `pallas.loop_guard` | `loop_guard.py` | Per-request `ToolRunnerHooks` that halt the agentic loop on repeated-identical tool calls |
| `pallas.log` | `log.py` | JSON log configuration, third-party traceback capture, Rich-TUI-safe handler attachment |
| `pallas._fastagent_patch` | `_fastagent_patch.py` | Monkey-patches fast-agent at import time: per-request bearer forwarding via `httpx.Auth`, diagnostic trace-capture wrappers around `send_request` / `session.call_tool` / `_execute_on_server` |

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@@ -90,6 +90,16 @@ class _StaticFieldsFilter(logging.Filter):
return True
# Standard ``LogRecord`` attributes — everything else on ``record.__dict__`` is
# an ``extra={...}`` field a caller attached and wants serialized. ``message``
# and ``asctime`` are populated during formatting; ``taskName`` exists on 3.12+.
_STANDARD_LOGRECORD_KEYS = set(logging.makeLogRecord({}).__dict__) | {
"message",
"asctime",
"taskName",
}
class _JSONFormatter(logging.Formatter):
"""Single-line JSON formatter compatible with Alloy's ``| json`` pipeline.
@@ -123,6 +133,12 @@ class _JSONFormatter(logging.Formatter):
"project": getattr(record, "project", _PROJECT),
"component": getattr(record, "component", _COMPONENT_CTX.get()),
}
# Merge caller-supplied ``extra={...}`` fields (anything on the record
# that isn't a standard LogRecord attribute or already emitted above).
for key, value in record.__dict__.items():
if key in _STANDARD_LOGRECORD_KEYS or key in payload:
continue
payload[key] = value
if record.exc_info:
if not record.exc_text:
record.exc_text = self.formatException(record.exc_info)
@@ -131,7 +147,8 @@ class _JSONFormatter(logging.Formatter):
payload["traceback"] = record.exc_text
if record.stack_info:
payload["stack"] = self.formatStack(record.stack_info)
return json.dumps(payload)
# default=str keeps a non-serializable extra value from crashing logging.
return json.dumps(payload, default=str)
class _HealthAccessFilter(logging.Filter):

231
pallas/loop_guard.py Normal file
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@@ -0,0 +1,231 @@
"""Runaway-loop detection for the agentic tool loop.
A small model occasionally gets stuck emitting the *identical* tool call
every iteration — typically because an upstream MCP server returned a
contradictory or malformed result the model keeps trying to reconcile.
Left alone the loop burns LLM turns and context until the client times
out and the user sees ``empty_response``.
This guard installs ``ToolRunnerHooks`` on the request-scoped agent that
track a per-turn signature of ``(tool, normalized_args) -> result_hash``.
When the same signature repeats ``threshold`` times consecutively the
loop is halted **immediately** — we don't ask the model to troubleshoot,
because the fault is almost always upstream and self-recovery is slow,
unpredictable, and token-hungry. Instead we:
* force fast-agent's own ``max_iterations`` termination path so the turn
ends after the current tool result with a partial answer rather than a
client timeout;
* replace the dangling turn with an honest, user-facing explanation;
* log the offending tool, arguments, and result with full detail so the
real (upstream) bug can be fixed durably; and
* increment ``pallas_agent_loop_aborted_total`` for alerting.
The hooks compose after any already-installed hooks (e.g. the assistant
stream) via the same merge strategy ``assistant_stream`` uses.
"""
from __future__ import annotations
import hashlib
import json
import logging
from typing import Any
from fast_agent.agents.tool_runner import ToolRunnerHooks
from fast_agent.types import PromptMessageExtended
from fast_agent.types.llm_stop_reason import LlmStopReason
from mcp.types import TextContent
from pallas import metrics as _pallas_metrics
from pallas.assistant_stream import _merge_hooks, _split_server
from pallas.progress import format_args_preview, format_result_preview
logger = logging.getLogger("pallas.loop_guard")
DEFAULT_THRESHOLD = 3
def _normalize_args(arguments: Any) -> str:
"""Deterministically serialize tool arguments for signature comparison."""
try:
return json.dumps(arguments, sort_keys=True, default=str, ensure_ascii=False)
except (TypeError, ValueError):
return repr(arguments)
def _result_hash(result: Any) -> str:
"""Stable hash of a tool result's content for repeat detection."""
parts: list[str] = []
for block in getattr(result, "content", None) or []:
text = getattr(block, "text", None)
parts.append(text if isinstance(text, str) else repr(block))
parts.append(f"isError={bool(getattr(result, 'isError', False))}")
digest = hashlib.sha256("\x00".join(parts).encode("utf-8", "replace"))
return digest.hexdigest()
class LoopGuard:
"""Per-request consecutive-identical-tool-call detector."""
def __init__(
self, *, agent_name: str, conversation_id: str | None, threshold: int
) -> None:
self._agent_name = agent_name
self._conversation_id = conversation_id
self._threshold = threshold
# call_id -> (tool_name, normalized_args, raw_arguments), staged by
# before_tool_call and consumed by the matching after_tool_call.
self._pending: dict[str, tuple[str | None, str, Any]] = {}
self._last_signature: str | None = None
self._repeat_count = 0
self._halted = False
def as_before_tool_call_hook(self):
async def _hook(_runner: Any, message: PromptMessageExtended) -> None:
for call_id, call in (message.tool_calls or {}).items():
params = getattr(call, "params", None)
name = getattr(params, "name", None)
arguments = getattr(params, "arguments", None)
self._pending[call_id] = (name, _normalize_args(arguments), arguments)
return _hook
def as_after_tool_call_hook(self):
async def _hook(runner: Any, message: PromptMessageExtended) -> None:
if self._halted:
return
try:
self._evaluate(runner, message)
except Exception: # never let the guard break a live turn
logger.warning(
"loop_guard evaluation failed",
exc_info=True,
extra={
"agent": self._agent_name,
"conversation_id": self._conversation_id,
},
)
return _hook
def _evaluate(self, runner: Any, message: PromptMessageExtended) -> None:
results = message.tool_results or {}
if not results:
return
components: list[tuple[str, str, str]] = []
names: list[str] = []
raw_args: list[Any] = []
for call_id, result in results.items():
name, args_sig, arguments = self._pending.pop(call_id, (None, "null", None))
components.append((name or "", args_sig, _result_hash(result)))
if name:
names.append(name)
raw_args.append(arguments)
components.sort()
signature = "|".join(f"{n}:{a}:{r}" for n, a, r in components)
if signature == self._last_signature:
self._repeat_count += 1
else:
self._last_signature = signature
self._repeat_count = 1
if self._repeat_count >= self._threshold:
tool_label = ", ".join(dict.fromkeys(names)) or "unknown"
args_preview = format_args_preview(raw_args[0]) if raw_args else ""
self._halt(runner, results, tool_label, args_preview)
def _halt(
self,
runner: Any,
results: dict[str, Any],
tool_label: str,
args_preview: str,
) -> None:
self._halted = True
first = next(iter(results.values()), None)
result_preview = (
format_result_preview(list(getattr(first, "content", []) or []))
if first is not None
else ""
)
# Force fast-agent's own termination check (tool_runner: `_iteration >
# max_iterations`) to fire after this tool result — no further LLM
# call, partial answer returned instead of a client timeout.
params = getattr(runner, "request_params", None)
iteration = getattr(runner, "iteration", 0)
if params is not None:
params.max_iterations = iteration
# Replace the dangling tool-use turn with an honest final message so
# the client gets an explanation rather than an empty/truncated turn.
note = (
f"Halted: the '{tool_label}' tool returned an identical result "
f"{self._repeat_count} times in a row, so the agent was looping "
"without making progress. This is usually an upstream data or "
"tool-server issue rather than a problem with the request. "
"Stopping early to avoid a runaway loop."
)
last = getattr(runner, "last_message", None)
if last is not None:
if last.content is None:
last.content = []
last.content.append(TextContent(type="text", text=note))
last.stop_reason = LlmStopReason.END_TURN
logger.warning(
"agentic loop halted: identical tool call repeated",
extra={
"event": "loop_halt",
"agent": self._agent_name,
"conversation_id": self._conversation_id,
"tool": tool_label,
"server": _split_server(tool_label),
"repeat_count": self._repeat_count,
"threshold": self._threshold,
"iteration": iteration,
"arguments_preview": args_preview,
"result_preview": result_preview,
},
)
_pallas_metrics.record_loop_abort(self._agent_name, "repeat")
def install_for_request(
agent: Any,
*,
agent_name: str,
conversation_id: str | None,
threshold: int = DEFAULT_THRESHOLD,
):
"""Install the loop guard on a request-scoped agent instance.
Returns a no-arg ``restore`` callable that reinstates the agent's prior
``tool_runner_hooks`` — call it in a ``finally``. A non-positive
``threshold`` disables the guard (returns a no-op restore).
"""
if threshold is None or threshold < 1:
return lambda: None
guard = LoopGuard(
agent_name=agent_name,
conversation_id=conversation_id,
threshold=threshold,
)
extra = ToolRunnerHooks(
before_tool_call=guard.as_before_tool_call_hook(),
after_tool_call=guard.as_after_tool_call_hook(),
)
previous = getattr(agent, "tool_runner_hooks", None)
agent.tool_runner_hooks = _merge_hooks(previous, extra)
def restore() -> None:
agent.tool_runner_hooks = previous
return restore

View File

@@ -131,10 +131,22 @@ agent_health_status = Gauge(
registry=REGISTRY,
)
agent_loop_aborted_total = Counter(
"pallas_agent_loop_aborted_total",
"Agentic loops force-stopped by a runtime guard",
labelnames=["agent", "reason"], # reason: repeat
registry=REGISTRY,
)
# ── Helpers ──────────────────────────────────────────────────────────────────
def record_loop_abort(agent: str, reason: str) -> None:
"""Record one agentic loop aborted by a runtime guard."""
agent_loop_aborted_total.labels(agent=agent, reason=reason).inc()
def set_agent_info(agents: dict[str, dict]) -> None:
"""Record the deployment's configured agents (called once at startup)."""
for name, agent in agents.items():

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@@ -29,6 +29,7 @@ from fast_agent.mcp.server import AgentMCPServer
from fast_agent.types import PromptMessageExtended, RequestParams
from pallas.assistant_stream import install_for_request as _install_assistant_stream
from pallas.loop_guard import install_for_request as _install_loop_guard
from pallas.progress import EnrichedMCPToolProgressManager
from pallas import metrics as _pallas_metrics
from fastmcp import Context as MCPContext
@@ -229,12 +230,25 @@ class MultimodalAgentMCPServer(AgentMCPServer):
# in earlier loop iterations stays trapped inside fast-agent's
# ``message_history`` and the user sees a spinner that ends with
# a thin wrap-up sentence.
restore_hooks = _install_assistant_stream(
restore_stream = _install_assistant_stream(
agent,
ctx=ctx,
agent_name=agent_name,
conversation_id=conversation_id,
)
# Compose the loop guard on top: it halts the agentic loop the
# moment a tool call repeats with an identical result, before
# the turn runs to the iteration cap or client timeout.
restore_guard = _install_loop_guard(
agent,
agent_name=agent_name,
conversation_id=conversation_id,
threshold=self._request_limits.get("loop_repeat_threshold", 3),
)
def restore_hooks() -> None:
restore_guard()
restore_stream()
try:
# Seed the freshly-created instance's message_history from the
# caller-supplied history so the agent sees the full

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@@ -65,6 +65,7 @@ def _build_agents_table(config: dict) -> dict[str, dict]:
"max_iterations": agent.get("max_iterations"),
"streaming_timeout": agent.get("streaming_timeout"),
"turn_timeout": agent.get("turn_timeout"),
"loop_repeat_threshold": agent.get("loop_repeat_threshold"),
}
for name, agent in config["agents"].items()
}
@@ -264,7 +265,12 @@ async def _start_agent(name: str, agents: dict[str, dict]) -> None:
# and the LLM sees exactly what Daedalus asks it to see.
request_limits = {
k: entry[k]
for k in ("max_iterations", "streaming_timeout", "turn_timeout")
for k in (
"max_iterations",
"streaming_timeout",
"turn_timeout",
"loop_repeat_threshold",
)
if entry.get(k) is not None
}

55
tests/test_log.py Normal file
View File

@@ -0,0 +1,55 @@
"""Tests for ``pallas.log._JSONFormatter``.
The formatter must serialize caller-supplied ``extra={...}`` fields (the
loop guard and other diagnostics rely on this) while never emitting the
internal ``LogRecord`` bookkeeping attributes.
"""
from __future__ import annotations
import json
import logging
from pallas.log import _JSONFormatter
def _format(msg: str, **extra) -> dict:
record = logging.LogRecord(
name="pallas.test",
level=logging.WARNING,
pathname=__file__,
lineno=1,
msg=msg,
args=(),
exc_info=None,
)
for key, value in extra.items():
setattr(record, key, value)
return json.loads(_JSONFormatter().format(record))
def test_extra_fields_are_serialized():
out = _format(
"agentic loop halted",
event="loop_halt",
tool="kairos-update_task",
repeat_count=3,
result_preview="COMPLETED but 0%",
)
assert out["message"] == "agentic loop halted"
assert out["event"] == "loop_halt"
assert out["tool"] == "kairos-update_task"
assert out["repeat_count"] == 3
assert out["result_preview"] == "COMPLETED but 0%"
def test_standard_attributes_are_not_leaked():
out = _format("plain message")
for noise in ("msg", "args", "levelno", "pathname", "lineno", "funcName"):
assert noise not in out
assert out["level"] == "WARNING"
assert out["logger"] == "pallas.test"
def test_non_serializable_extra_does_not_crash():
out = _format("with object", obj=object())
assert "obj" in out # coerced via default=str, not dropped or raised

190
tests/test_loop_guard.py Normal file
View File

@@ -0,0 +1,190 @@
"""Tests for ``pallas.loop_guard``.
Drives the ``before_tool_call`` / ``after_tool_call`` hooks with handcrafted
``PromptMessageExtended`` objects against a fake ToolRunner and asserts the
halt behaviour: the runner's ``max_iterations`` is collapsed to the current
iteration (so fast-agent terminates on its next check), the dangling turn is
annotated with an explanation, and the abort metric is incremented.
No fast-agent runtime is involved — the hooks are pure async functions.
Uses ``asyncio.run`` directly to match the convention in the other test
modules (pallas has no pytest-asyncio dependency).
"""
from __future__ import annotations
import asyncio
from types import SimpleNamespace
from typing import Any
from fast_agent.types import PromptMessageExtended
from fast_agent.types.llm_stop_reason import LlmStopReason
from mcp.types import (
CallToolRequest,
CallToolRequestParams,
CallToolResult,
TextContent,
)
from pallas import metrics as _pallas_metrics
from pallas.loop_guard import LoopGuard, install_for_request
def _run(coro):
return asyncio.run(coro)
def _tool_call(name: str, arguments: dict | None = None) -> CallToolRequest:
return CallToolRequest(
method="tools/call",
params=CallToolRequestParams(name=name, arguments=arguments or {}),
)
def _tool_result(text: str = "ok", *, is_error: bool = False) -> CallToolResult:
return CallToolResult(
content=[TextContent(type="text", text=text)], isError=is_error
)
def _request(name: str, arguments: dict, call_id: str = "toolu_1"):
return PromptMessageExtended(
role="assistant",
content=[],
tool_calls={call_id: _tool_call(name, arguments)},
)
def _result(text: str, call_id: str = "toolu_1"):
return PromptMessageExtended(
role="user", content=[], tool_results={call_id: _tool_result(text)}
)
class _FakeRunner:
def __init__(self, *, iteration: int = 5, max_iterations: int = 30) -> None:
self.request_params = SimpleNamespace(max_iterations=max_iterations)
self.iteration = iteration
self.last_message = PromptMessageExtended(
role="assistant",
content=[],
stop_reason=LlmStopReason.TOOL_USE,
)
async def _drive(guard: LoopGuard, runner: _FakeRunner, name, args, result) -> None:
"""Run one tool round through the guard's hooks."""
before = guard.as_before_tool_call_hook()
after = guard.as_after_tool_call_hook()
await before(runner, _request(name, args))
await after(runner, _result(result))
def _abort_count(agent: str) -> float:
return (
_pallas_metrics.agent_loop_aborted_total.labels(agent=agent, reason="repeat")
._value.get()
)
def _last_text(runner: _FakeRunner) -> str:
return "".join(
b.text for b in (runner.last_message.content or []) if hasattr(b, "text")
)
def test_halts_on_third_identical_round():
guard = LoopGuard(agent_name="shawn", conversation_id="c1", threshold=3)
runner = _FakeRunner(iteration=12, max_iterations=30)
before = _abort_count("shawn")
async def go():
for _ in range(2):
await _drive(guard, runner, "kairos-update_task", {"task_id": 494}, "same")
# not yet halted after rounds 1 and 2
assert runner.request_params.max_iterations == 30
assert runner.last_message.stop_reason == LlmStopReason.TOOL_USE
# third identical round trips the guard
await _drive(guard, runner, "kairos-update_task", {"task_id": 494}, "same")
_run(go())
# max_iterations collapsed to the current iteration -> fast-agent stops
# on its next `_iteration > max_iterations` check, no further LLM call.
assert runner.request_params.max_iterations == 12
assert runner.last_message.stop_reason == LlmStopReason.END_TURN
assert "Halted" in _last_text(runner)
assert "kairos-update_task" in _last_text(runner)
assert _abort_count("shawn") == before + 1
def test_no_halt_when_result_changes():
guard = LoopGuard(agent_name="a1", conversation_id=None, threshold=3)
runner = _FakeRunner()
async def go():
for i in range(6):
await _drive(
guard, runner, "kairos-update_task", {"task_id": 494}, f"r{i}"
)
_run(go())
assert runner.request_params.max_iterations == 30
assert runner.last_message.stop_reason == LlmStopReason.TOOL_USE
def test_no_halt_when_args_change():
guard = LoopGuard(agent_name="a2", conversation_id=None, threshold=3)
runner = _FakeRunner()
async def go():
for i in range(6):
await _drive(guard, runner, "kairos-update_task", {"task_id": i}, "same")
_run(go())
assert runner.request_params.max_iterations == 30
def test_threshold_respected():
guard = LoopGuard(agent_name="a3", conversation_id=None, threshold=5)
runner = _FakeRunner()
async def go():
for _ in range(4):
await _drive(guard, runner, "t", {"x": 1}, "same")
_run(go())
# 4 identical rounds, threshold 5 -> still running
assert runner.request_params.max_iterations == 30
def test_halt_fires_once():
guard = LoopGuard(agent_name="a4", conversation_id=None, threshold=3)
runner = _FakeRunner()
before = _abort_count("a4")
async def go():
for _ in range(6):
await _drive(guard, runner, "t", {"x": 1}, "same")
_run(go())
assert _abort_count("a4") == before + 1
def test_install_disabled_with_nonpositive_threshold():
agent = SimpleNamespace(tool_runner_hooks="sentinel")
restore = install_for_request(
agent, agent_name="a", conversation_id=None, threshold=0
)
assert agent.tool_runner_hooks == "sentinel" # untouched
restore() # no-op, must not raise
def test_install_merges_and_restores():
agent = SimpleNamespace(tool_runner_hooks=None)
restore = install_for_request(
agent, agent_name="a", conversation_id=None, threshold=3
)
assert agent.tool_runner_hooks is not None
assert agent.tool_runner_hooks.after_tool_call is not None
restore()
assert agent.tool_runner_hooks is None