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Langflow EUVDEUVD-2026-38520

| CVE-2026-48520 MEDIUM
External Control of File Name or Path (CWE-73)
2026-06-16 https://github.com/langflow-ai/langflow GHSA-rcjh-r59h-gq37
6.1
CVSS 3.1 · Vendor: https://github.com/langflow-ai/langflow
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Severity by source

Vendor (https://github.com/langflow-ai/langflow) PRIMARY
6.1 MEDIUM
AV:N/AC:H/PR:N/UI:R/S:C/C:H/I:N/A:N
vuln.today AI
6.8 MEDIUM

AC:H captures the public-flow prerequisite; UI:N preferred over vendor's UI:R since the attacker needs no victim interaction once a flow is shared; S:C reflects cross-boundary filesystem access; no integrity or availability impact.

3.1 AV:N/AC:H/PR:N/UI:N/S:C/C:H/I:N/A:N
4.0 AV:N/AC:L/AT:P/PR:N/UI:N/VC:H/VI:N/VA:N/SC:N/SI:N/SA:N

Primary rating from Vendor (https://github.com/langflow-ai/langflow).

CVSS VectorVendor: https://github.com/langflow-ai/langflow

CVSS:3.1/AV:N/AC:H/PR:N/UI:R/S:C/C:H/I:N/A:N
Attack Vector
Network
Attack Complexity
High
Privileges Required
None
User Interaction
Required
Scope
Changed
Confidentiality
High
Integrity
None
Availability
None

Lifecycle Timeline

2
Source Code Evidence Fetched
Jun 16, 2026 - 18:25 vuln.today
Analysis Generated
Jun 16, 2026 - 18:25 vuln.today

DescriptionCVE.org

Summary

The "Shareable Playground" (or "Public Flows" in code) contains a potential arbitrary file-read vulnerability, depending on the exact flow configuration used.

By making a flow public, public execution of the flow is allowed. The execution request can contain a list of files that gets read by Langflow and fed into the LLM. The files path can be any path supported by the storage - it can be either a local file or *S3 path* if supported by the local configuration

Details

Shareable Playground feature works by enabling the execution of workflows by unauthenticated users, by accessing a link. Specifically, it enables the route /api/v1/build_public_tmp to execute any public flow, given a public flow ID. This request contains a files field that can contain a list of files. The files get read in LCModelComponent._get_chat_result in a call to to_lc_message. A detailed stacktrace:

...
  File "/Users/ori/Work/research/langchain/langflow/src/backend/base/langflow/api/build.py", line 466, in build_vertices
    vertex_build_response: VertexBuildResponse = await _build_vertex(vertex_id, graph, event_manager)
  File "/Users/ori/Work/research/langchain/langflow/src/backend/base/langflow/api/build.py", line 324, in _build_vertex
    vertex_build_result = await graph.build_vertex(
  File "/Users/ori/Work/research/langchain/langflow/src/lfx/src/lfx/graph/graph/base.py", line 1563, in build_vertex
    await vertex.build(
  File "/Users/ori/Work/research/langchain/langflow/src/lfx/src/lfx/graph/vertex/base.py", line 770, in build
    await step(user_id=user_id, event_manager=event_manager, **kwargs)
  File "/Users/ori/Work/research/langchain/langflow/src/lfx/src/lfx/events/observability/lifecycle_events.py", line 95, in wrapper
    result = await observed_method(self, *args, **kwargs)
  File "/Users/ori/Work/research/langchain/langflow/src/lfx/src/lfx/graph/vertex/base.py", line 411, in _build
    await self._build_results(
  File "/Users/ori/Work/research/langchain/langflow/src/lfx/src/lfx/graph/vertex/base.py", line 640, in _build_results
    result = await initialize.loading.get_instance_results(
  File "/Users/ori/Work/research/langchain/langflow/src/lfx/src/lfx/interface/initialize/loading.py", line 76, in get_instance_results
    return await build_component(params=custom_params, custom_component=custom_component)
  File "/Users/ori/Work/research/langchain/langflow/src/lfx/src/lfx/interface/initialize/loading.py", line 299, in build_component
    build_results, artifacts = await custom_component.build_results()
  File "/Users/ori/Work/research/langchain/langflow/src/lfx/src/lfx/custom/custom_component/component.py", line 1136, in build_results
    return await self._build_with_tracing()
  File "/Users/ori/Work/research/langchain/langflow/src/lfx/src/lfx/custom/custom_component/component.py", line 1118, in _build_with_tracing
    results, artifacts = await self._build_results()
  File "/Users/ori/Work/research/langchain/langflow/src/lfx/src/lfx/custom/custom_component/component.py", line 1163, in _build_results
    result = await self._get_output_result(output)
  File "/Users/ori/Work/research/langchain/langflow/src/lfx/src/lfx/custom/custom_component/component.py", line 1238, in _get_output_result
    result = await method() if inspect.iscoroutinefunction(method) else await asyncio.to_thread(method)
  File "/Users/ori/Work/research/langchain/langflow/src/lfx/src/lfx/base/models/model.py", line 88, in text_response
    result = await self.get_chat_result(
  File "/Users/ori/Work/research/langchain/langflow/src/lfx/src/lfx/base/models/model.py", line 180, in get_chat_result
    return await self._get_chat_result(
  File "/Users/ori/Work/research/langchain/langflow/src/lfx/src/lfx/base/models/model.py", line 232, in _get_chat_result
    messages.append(input_value.to_lc_message(self.name))
  File "/Users/ori/Work/research/langchain/langflow/src/lfx/src/lfx/schema/message.py", line 184, in to_lc_message
    file_contents = self.get_file_content_dicts(model_name)
  File "/Users/ori/Work/research/langchain/langflow/src/lfx/src/lfx/schema/message.py", line 256, in get_file_content_dicts
    content_dicts.append(create_image_content_dict(file, None, model_name))
  File "/Users/ori/Work/research/langchain/langflow/src/lfx/src/lfx/utils/image.py", line 96, in create_image_content_dict
    ...

This triggers Langflow to feed the file into the LLM as an Image. Reading the files back depends on the specific LLM configuration.

PoC

Reproduction:

  1. Create a new flow and add a Chat Input node to it
  2. Share the flow ("Shareable Playground")
  3. Access the public link with the browser developers tools open and execute the flow.
  4. Find the /api/v1/build_public_tmp route and copy as cURL
  5. Edit the files JSON field to point to any file.

Impact

Potential file read (local or S3) if shareable playground feature is used.

Ori Lahav Security Researcher @ Rubrik Inc.

AnalysisAI

Arbitrary file read in Langflow's Shareable Playground feature exposes local filesystem and S3 paths to unauthenticated attackers on instances where at least one public flow exists. The /api/v1/build_public_tmp endpoint accepts a user-controlled files field without path validation, causing Langflow to read attacker-specified files and pass their contents to the configured LLM. A proof-of-concept is publicly documented in the GitHub Security Advisory GHSA-rcjh-r59h-gq37; no active exploitation (CISA KEV) has been confirmed. Note: the 'RCE' tag associated with this CVE in source data is inconsistent with the described impact, which is limited to information disclosure via file read.

Technical ContextAI

CWE-73 (External Control of File Name or Path) describes the root cause: Langflow's public flow execution API at /api/v1/build_public_tmp passes the caller-supplied files list directly into LCModelComponent._get_chat_result, which forwards it to to_lc_messageget_file_content_dictscreate_image_content_dict in langflow/utils/image.py. No path sanitization, allowlist, or sandbox is applied before reading. The affected package is pkg:pip/langflow versions prior to 1.10.0. The Shareable Playground feature is a deliberate design capability in Langflow - an open-source AI workflow platform built atop LangChain - that enables unauthenticated users to execute shared flows via a public link. The vulnerability arises because the execution payload's files parameter was never restricted to pre-approved upload paths, allowing references to arbitrary local paths (e.g., /etc/passwd, /root/.ssh/id_rsa) or S3 URIs accessible under the server's cloud identity.

RemediationAI

Upgrade Langflow to version 1.10.0 or later, which is the vendor-confirmed fix per GHSA-rcjh-r59h-gq37 (https://github.com/langflow-ai/langflow/security/advisories/GHSA-rcjh-r59h-gq37); run pip install --upgrade langflow==1.10.0 or higher. If immediate upgrade is not possible, disable the Shareable Playground / Public Flows feature entirely to remove unauthenticated access to /api/v1/build_public_tmp - this is the most effective compensating control and eliminates the attack surface at the cost of losing the public-sharing capability. As a secondary control, restrict network access to the Langflow API via firewall or reverse proxy to trusted IP ranges, which reduces exposure but does not protect against insider threats or compromised internal hosts. If S3 integration is not required, revoke or restrict the server's cloud IAM permissions to minimize the blast radius of any file read exploitation. No vendor-documented workaround short of disabling the feature has been confirmed.

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EUVD-2026-38520 vulnerability details – vuln.today

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