CodeJail manages execution of untrusted code in secure sandboxes. It is designed primarily for Python execution, but can be used for other languages as well.
Security is enforced with AppArmor. If your operating system doesn't support AppArmor, then CodeJail won't protect the execution.
CodeJail is designed to be configurable, and will auto-configure itself for Python execution if you install it properly. The configuration is designed to be flexible: it can run in safe mode or unsafe mode. This helps support large development groups where only some of the developers are involved enough with secure execution to configure AppArmor on their development machines.
If CodeJail is not configured for safe execution, it will execution Python using the same API, but will not guard against malicious code. This allows the same code to be used on safe-configured or non-safe-configured developer's machines.
A CodeJail sandbox consists of several pieces:
- Sandbox environment. For a Python setup, this would be Python and associated core packages. This is denoted throughout this document as <SANDENV>. This is read-only.
- Sandbox packages. These are additional packages needed for a given run. For example, this might be a grader written by an instructor to run over a student's code, or data that a student's code might need to access. This is denoted throughout this document as <SANDPACK>. This is read-only.
- Untrusted packages. This is typically the code submitted by the student to be tested on the server, as well as any data the code may need to modify. This is denoted throughout this document as <UNTRUSTED_PACK>. This is currently read-only, but may need to be read-write for some applications.
- OS packages. These are standard system libraries needed to run Python (e.g. things in /lib). This is denoted throughout this document as <OSPACK>. This is read-only, and is specified by Ubuntu's AppArmor profile.
To run, CodeJail requires two user accounts. One account is the main account under which the code runs, which has access to create sandboxes. This will be referred to as <SANDBOX_CALLER>. The second account is the account under which the sandbox runs. This is typically the account 'sandbox.'
This library currently is tested to work with the following versions
Python:
- 3.11
Ubuntu:
- 20.04
- 22.04
These instructions detail how to configure your operating system so that CodeJail can execute Python code safely. You can run CodeJail without these steps, and you will have an unsafe CodeJail. This is fine for developers' machines who are unconcerned with security, and simplifies the integration of CodeJail into your project.
To secure Python execution, you'll be creating a new virtualenv. This means you'll have two: the main virtualenv for your project, and the new one for sandboxed Python code.
Choose a place for the new virtualenv, call it <SANDENV>. It will be
automatically detected and used if you put it right alongside your existing
virtualenv, but with -sandbox
appended. So if your existing virtualenv is in
/home/chris/ve/myproj
, make <SANDENV> be /home/chris/ve/myproj-sandbox
.
The user running the LMS is <SANDBOX_CALLER>, for example, you on
your dev machine, or www-data
on a server.
Other details here that depend on your configuration:
Create the new virtualenv, using
--copies
so that there's a distinct Python executable to limit:$ sudo python3.8 -m venv --copies <SANDENV>
By default, the virtualenv would just symlink against the system Python, and apparmor's default configuration on some operating systems may prevent confinement from being appled to that.
(Optional) If you have particular packages you want available to your sandboxed code, install them by activating the sandbox virtual env, and using pip to install them:
$ <SANDENV>/bin/pip install -r requirements/sandbox.txt
Add a sandbox user:
$ sudo addgroup sandbox $ sudo adduser --disabled-login sandbox --ingroup sandbox
Let the web server run the sandboxed Python as sandbox. Create the file
/etc/sudoers.d/01-sandbox
:$ sudo visudo -f /etc/sudoers.d/01-sandbox <SANDBOX_CALLER> ALL=(sandbox) SETENV:NOPASSWD:<SANDENV>/bin/python <SANDBOX_CALLER> ALL=(sandbox) SETENV:NOPASSWD:/usr/bin/find <SANDBOX_CALLER> ALL=(ALL) NOPASSWD:/usr/bin/pkill
(Note that the
find
binary can run arbitrary code, so this is not a safe sudoers file for non-codejail purposes.)Edit an AppArmor profile. This is a text file specifying the limits on the sandboxed Python executable. The file must be in
/etc/apparmor.d
and must be named based on the executable, with slashes replaced by dots. For example, if your sandboxed Python is at/home/chris/ve/myproj-sandbox/bin/python
, then your AppArmor profile must be/etc/apparmor.d/home.chris.ve.myproj-sandbox.bin.python
:$ sudo vim /etc/apparmor.d/home.chris.ve.myproj-sandbox.bin.python #include <tunables/global> <SANDENV>/bin/python { #include <abstractions/base> #include <abstractions/python> <CODEJAIL_CHECKOUT>/** mr, <SANDENV>/** mr, # If you have code that the sandbox must be able to access, add lines # pointing to those directories: /the/path/to/your/sandbox-packages/** r, /tmp/codejail-*/ rix, /tmp/codejail-*/** wrix, }
Parse the profiles:
$ sudo apparmor_parser <APPARMOR_FILE>
Reactivate your project's main virtualenv again.
Disable using PAM to set rlimits:
sed -i '/pam_limits.so/d' /etc/pam.d/sudo
If your CodeJail is properly configured to use safe_exec, try these commands at your Python terminal:
import codejail.jail_code codejail.jail_code.configure('python', '<SANDENV>/bin/python', user='sandbox') import codejail.safe_exec jailed_globals = {} codejail.safe_exec.safe_exec("output=open('/etc/passwd').read()", jailed_globals) print(jailed_globals) # should be unreachable if codejail is working properly
This should fail with an exception.
If you need to change the packages installed into your sandbox's virtualenv, you'll need to disable AppArmor, because your sandboxed Python doesn't have the rights to modify the files in its site-packages directory.
Disable AppArmor for your sandbox:
$ sudo apt-get install apparmor-utils # if you haven't already $ sudo aa-complain /etc/apparmor.d/home.chris.ve.myproj-sandbox.bin.python
Install or otherwise change the packages installed:
$ pip install -r requirements/sandbox.txt
Re-enable AppArmor for your sandbox:
$ sudo aa-enforce /etc/apparmor.d/home.chris.ve.myproj-sandbox.bin.python
In order to target the sandboxed Python environment(s) you have created on your system, you must set the following environment variables for testing:
$ export CODEJAIL_TEST_USER=<owner of sandbox (usually 'sandbox')> $ export CODEJAIL_TEST_VENV=<SANDENV>
Run the tests with the Makefile:
$ make tests
If CodeJail is running unsafely, many of the tests will be automatically skipped, or will fail, depending on whether CodeJail thinks it should be in safe mode or not.
CodeJail is general-purpose enough that it can be used in a variety of projects to run untrusted code. It provides two layers:
jail_code.py
offers secure execution of subprocesses. It does this by running the program in a subprocess managed by AppArmor.safe_exec.py
offers specialized handling of Python execution, using jail_code to provide the semantics of Python's exec statement.
CodeJail runs programs under AppArmor. AppArmor is an OS-provided feature to limit the resources programs can access. To run Python code with limited access to resources, we make a new virtualenv, then name that Python executable in an AppArmor profile, and restrict resources in that profile. CodeJail will execute the provided Python program with that executable, and AppArmor will automatically limit the resources it can access. CodeJail also uses setrlimit to limit the amount of CPU time and/or memory available to the process.
CodeJail.jail_code
takes a program to run, files to copy into its
environment, command-line arguments, and a stdin stream. It creates a
temporary directory, creates or copies the needed files, spawns a subprocess to
run the code, and returns the output and exit status of the process.
CodeJail.safe_exec
emulates Python's exec statement. It takes a chunk of
Python code, and runs it using jail_code, modifying the globals dictionary as a
side-effect. safe_exec does this by serializing the globals into and out of
the subprocess as JSON.
Please do not report security issues in public. Please email [email protected].