LangGraph: BaseCache Deserialization of Untrusted Data may lead to Remote Code Execution

Description

Context

A Remote Code Execution vulnerability exists in LangGraph's caching layer when applications enable cache backends that inherit from BaseCache and opt nodes into caching via CachePolicy. Prior to langgraph-checkpoint 4.0.0, BaseCache defaults to JsonPlusSerializer(pickle_fallback=True). When msgpack serialization fails, cached values can be deserialized via pickle.loads(...).

Who is affected?

Caching is not enabled by default. Applications are affected only when:

  • The application explicitly enables a cache backend (for example by passing cache=... to StateGraph.compile(...) or otherwise configuring a BaseCache implementation)
  • One or more nodes opt into caching via CachePolicy
  • The attacker can write to the cache backend (for example a network-accessible Redis instance with weak/no auth, shared cache infrastructure reachable by other tenants/services, or a writable SQLite cache file)

Example (enabling a cache backend and opting a node into caching):

from langgraph.cache.memory import InMemoryCache
from langgraph.graph import StateGraph
from langgraph.types import CachePolicy


def my_node(state: dict) -> dict:
    return {"value": state.get("value", 0) + 1}


builder = StateGraph(dict)
builder.add_node("my_node", my_node, cache_policy=CachePolicy(ttl=120))
builder.set_entry_point("my_node")

graph = builder.compile(cache=InMemoryCache())

result = graph.invoke({"value": 1})

With pickle_fallback=True, when msgpack serialization fails, JsonPlusSerializer can fall back to storing values as a ("pickle", <bytes>) tuple and later deserialize them via pickle.loads(...). If an attacker can place a malicious pickle payload into the cache backend such that the LangGraph process reads and deserializes it, this can lead to arbitrary code execution.

Exploitation requires attacker write access to the cache backend. The serializer is not exposed as a network-facing API.

This is fixed in langgraph-checkpoint>=4.0.0 by disabling pickle fallback by default (pickle_fallback=False).

Impact

Arbitrary code execution in the LangGraph process when attacker-controlled cache entries are deserialized.

Root Cause

  • BaseCache default serializer configuration inherited by cache implementations (InMemoryCache, RedisCache, SqliteCache):
  • libs/checkpoint/langgraph/cache/base/__init__.py (pre-fix default: JsonPlusSerializer(pickle_fallback=True))

  • JsonPlusSerializer deserialization sink:

  • libs/checkpoint/langgraph/checkpoint/serde/jsonplus.py
  • loads_typed(...) calls pickle.loads(data_) when type_ == "pickle" and pickle fallback is enabled

Attack preconditions

An attacker must be able to write attacker-controlled bytes into the cache backend such that the LangGraph process later reads and deserializes them.

This typically requires write access to a networked cache (for example a network-accessible Redis instance with weak/no auth or shared cache infrastructure reachable by other tenants/services) or write access to local cache storage (for example a writable SQLite cache file via permissive file permissions or a shared writable volume).

Because exploitation requires write access to the cache storage layer, this is a post-compromise / post-access escalation vector.

Remediation

  • Upgrade to langgraph-checkpoint>=4.0.0.

Resources

  • ZDI-CAN-28385
  • Patch: https://github.com/langchain-ai/langgraph/pull/6677
  • Patch diff: https://patch-diff.githubusercontent.com/raw/langchain-ai/langgraph/pull/6677.patch
  • Credit: Peter Girnus (@gothburz), Demeng Chen, and Brandon Niemczyk (Trend Micro Zero Day Initiative)

Basic information

Type
reviewed
Severity
medium
Advisory on GitHub
Open advisory ↗
Repository advisory
Open repository advisory ↗
Source code
Browse source ↗
Published (advisory)
2026-02-25 22:59:12 UTC
Updated
2026-02-25 22:59:14 UTC
GitHub reviewed
2026-02-25 22:59:12 UTC
NVD published
2026-02-25

EPSS Score

Score Percentile
0.35% 57.50%

CVSS Scores

Base score Version Severity Vector
6.6 3.1
CVSS:3.1/AV:N/AC:H/PR:H/UI:N/S:U/C:H/I:H/A:H Click to expand
Attack vector (AV:N)
Could be attacked over the internet or any normal routed network—not just someone sitting at the machine.
Attack complexity (AC:H)
Even with access, the exploit needs extra luck, timing, or a fussy environment to actually work.
Privileges required (PR:H)
They need powerful rights—admin, root, or similar—before this pays off.
User interaction (UI:N)
Nobody has to click “OK” or open a trap file; it can work without a victim helping.
Scope (S:U)
Damage stays in the same “trust bubble” as the broken component—no big spill into unrelated systems.
Confidentiality (C:H)
Serious risk that confidential data gets exposed in a big way.
Integrity (I:H)
They could widely tamper with or forge data—trust in the data is badly hurt.
Availability (A:H)
Could take the service down hard or make it unusable for people who depend on it.

Identifiers

CWEs

CWE id Name
CWE-502 Deserialization of Untrusted Data

Credits

  • zdi-disclosures (reporter)

Affected packages (1)

Vulnerable version ranges and first patched releases as published by GitHub.

Ecosystem Package Vulnerable range First patched Vulnerable functions
pip langgraph-checkpoint < 4.0.0 4.0.0

References

cvelogic Threat Intelligence