mirror of https://github.com/python/cpython.git
546 lines
23 KiB
ReStructuredText
546 lines
23 KiB
ReStructuredText
.. _remote-debugging:
|
||
|
||
Remote debugging attachment protocol
|
||
====================================
|
||
|
||
This section describes the low-level protocol that enables external tools to
|
||
inject and execute a Python script within a running CPython process.
|
||
|
||
This mechanism forms the basis of the :func:`sys.remote_exec` function, which
|
||
instructs a remote Python process to execute a ``.py`` file. However, this
|
||
section does not document the usage of that function. Instead, it provides a
|
||
detailed explanation of the underlying protocol, which takes as input the
|
||
``pid`` of a target Python process and the path to a Python source file to be
|
||
executed. This information supports independent reimplementation of the
|
||
protocol, regardless of programming language.
|
||
|
||
.. warning::
|
||
|
||
The execution of the injected script depends on the interpreter reaching a
|
||
safe evaluation point. As a result, execution may be delayed depending on
|
||
the runtime state of the target process.
|
||
|
||
Once injected, the script is executed by the interpreter within the target
|
||
process the next time a safe evaluation point is reached. This approach enables
|
||
remote execution capabilities without modifying the behavior or structure of
|
||
the running Python application.
|
||
|
||
Subsequent sections provide a step-by-step description of the protocol,
|
||
including techniques for locating interpreter structures in memory, safely
|
||
accessing internal fields, and triggering code execution. Platform-specific
|
||
variations are noted where applicable, and example implementations are included
|
||
to clarify each operation.
|
||
|
||
Locating the PyRuntime structure
|
||
================================
|
||
|
||
CPython places the ``PyRuntime`` structure in a dedicated binary section to
|
||
help external tools find it at runtime. The name and format of this section
|
||
vary by platform. For example, ``.PyRuntime`` is used on ELF systems, and
|
||
``__DATA,__PyRuntime`` is used on macOS. Tools can find the offset of this
|
||
structure by examining the binary on disk.
|
||
|
||
The ``PyRuntime`` structure contains CPython’s global interpreter state and
|
||
provides access to other internal data, including the list of interpreters,
|
||
thread states, and debugger support fields.
|
||
|
||
To work with a remote Python process, a debugger must first find the memory
|
||
address of the ``PyRuntime`` structure in the target process. This address
|
||
can’t be hardcoded or calculated from a symbol name, because it depends on
|
||
where the operating system loaded the binary.
|
||
|
||
The method for finding ``PyRuntime`` depends on the platform, but the steps are
|
||
the same in general:
|
||
|
||
1. Find the base address where the Python binary or shared library was loaded
|
||
in the target process.
|
||
2. Use the on-disk binary to locate the offset of the ``.PyRuntime`` section.
|
||
3. Add the section offset to the base address to compute the address in memory.
|
||
|
||
The sections below explain how to do this on each supported platform and
|
||
include example code.
|
||
|
||
.. rubric:: Linux (ELF)
|
||
|
||
To find the ``PyRuntime`` structure on Linux:
|
||
|
||
1. Read the process’s memory map (for example, ``/proc/<pid>/maps``) to find
|
||
the address where the Python executable or ``libpython`` was loaded.
|
||
2. Parse the ELF section headers in the binary to get the offset of the
|
||
``.PyRuntime`` section.
|
||
3. Add that offset to the base address from step 1 to get the memory address of
|
||
``PyRuntime``.
|
||
|
||
The following is an example implementation::
|
||
|
||
def find_py_runtime_linux(pid: int) -> int:
|
||
# Step 1: Try to find the Python executable in memory
|
||
binary_path, base_address = find_mapped_binary(
|
||
pid, name_contains="python"
|
||
)
|
||
|
||
# Step 2: Fallback to shared library if executable is not found
|
||
if binary_path is None:
|
||
binary_path, base_address = find_mapped_binary(
|
||
pid, name_contains="libpython"
|
||
)
|
||
|
||
# Step 3: Parse ELF headers to get .PyRuntime section offset
|
||
section_offset = parse_elf_section_offset(
|
||
binary_path, ".PyRuntime"
|
||
)
|
||
|
||
# Step 4: Compute PyRuntime address in memory
|
||
return base_address + section_offset
|
||
|
||
|
||
On Linux systems, there are two main approaches to read memory from another
|
||
process. The first is through the ``/proc`` filesystem, specifically by reading from
|
||
``/proc/[pid]/mem`` which provides direct access to the process's memory. This
|
||
requires appropriate permissions - either being the same user as the target
|
||
process or having root access. The second approach is using the
|
||
``process_vm_readv()`` system call which provides a more efficient way to copy
|
||
memory between processes. While ptrace's ``PTRACE_PEEKTEXT`` operation can also be
|
||
used to read memory, it is significantly slower as it only reads one word at a
|
||
time and requires multiple context switches between the tracer and tracee
|
||
processes.
|
||
|
||
For parsing ELF sections, the process involves reading and interpreting the ELF
|
||
file format structures from the binary file on disk. The ELF header contains a
|
||
pointer to the section header table. Each section header contains metadata about
|
||
a section including its name (stored in a separate string table), offset, and
|
||
size. To find a specific section like .PyRuntime, you need to walk through these
|
||
headers and match the section name. The section header then provides the offset
|
||
where that section exists in the file, which can be used to calculate its
|
||
runtime address when the binary is loaded into memory.
|
||
|
||
You can read more about the ELF file format in the `ELF specification
|
||
<https://en.wikipedia.org/wiki/Executable_and_Linkable_Format>`_.
|
||
|
||
|
||
.. rubric:: macOS (Mach-O)
|
||
|
||
To find the ``PyRuntime`` structure on macOS:
|
||
|
||
1. Call ``task_for_pid()`` to get the ``mach_port_t`` task port for the target
|
||
process. This handle is needed to read memory using APIs like
|
||
``mach_vm_read_overwrite`` and ``mach_vm_region``.
|
||
2. Scan the memory regions to find the one containing the Python executable or
|
||
``libpython``.
|
||
3. Load the binary file from disk and parse the Mach-O headers to find the
|
||
section named ``PyRuntime`` in the ``__DATA`` segment. On macOS, symbol
|
||
names are automatically prefixed with an underscore, so the ``PyRuntime``
|
||
symbol appears as ``_PyRuntime`` in the symbol table, but the section name
|
||
is not affected.
|
||
|
||
The following is an example implementation::
|
||
|
||
def find_py_runtime_macos(pid: int) -> int:
|
||
# Step 1: Get access to the process's memory
|
||
handle = get_memory_access_handle(pid)
|
||
|
||
# Step 2: Try to find the Python executable in memory
|
||
binary_path, base_address = find_mapped_binary(
|
||
handle, name_contains="python"
|
||
)
|
||
|
||
# Step 3: Fallback to libpython if the executable is not found
|
||
if binary_path is None:
|
||
binary_path, base_address = find_mapped_binary(
|
||
handle, name_contains="libpython"
|
||
)
|
||
|
||
# Step 4: Parse Mach-O headers to get __DATA,__PyRuntime section offset
|
||
section_offset = parse_macho_section_offset(
|
||
binary_path, "__DATA", "__PyRuntime"
|
||
)
|
||
|
||
# Step 5: Compute the PyRuntime address in memory
|
||
return base_address + section_offset
|
||
|
||
On macOS, accessing another process's memory requires using Mach-O specific APIs
|
||
and file formats. The first step is obtaining a ``task_port`` handle via
|
||
``task_for_pid()``, which provides access to the target process's memory space.
|
||
This handle enables memory operations through APIs like
|
||
``mach_vm_read_overwrite()``.
|
||
|
||
The process memory can be examined using ``mach_vm_region()`` to scan through the
|
||
virtual memory space, while ``proc_regionfilename()`` helps identify which binary
|
||
files are loaded at each memory region. When the Python binary or library is
|
||
found, its Mach-O headers need to be parsed to locate the ``PyRuntime`` structure.
|
||
|
||
The Mach-O format organizes code and data into segments and sections. The
|
||
``PyRuntime`` structure lives in a section named ``__PyRuntime`` within the
|
||
``__DATA`` segment. The actual runtime address calculation involves finding the
|
||
``__TEXT`` segment which serves as the binary's base address, then locating the
|
||
``__DATA`` segment containing our target section. The final address is computed by
|
||
combining the base address with the appropriate section offsets from the Mach-O
|
||
headers.
|
||
|
||
Note that accessing another process's memory on macOS typically requires
|
||
elevated privileges - either root access or special security entitlements
|
||
granted to the debugging process.
|
||
|
||
|
||
.. rubric:: Windows (PE)
|
||
|
||
To find the ``PyRuntime`` structure on Windows:
|
||
|
||
1. Use the ToolHelp API to enumerate all modules loaded in the target process.
|
||
This is done using functions such as `CreateToolhelp32Snapshot
|
||
<https://learn.microsoft.com/en-us/windows/win32/api/tlhelp32/nf-tlhelp32-createtoolhelp32snapshot>`_,
|
||
`Module32First
|
||
<https://learn.microsoft.com/en-us/windows/win32/api/tlhelp32/nf-tlhelp32-module32first>`_,
|
||
and `Module32Next
|
||
<https://learn.microsoft.com/en-us/windows/win32/api/tlhelp32/nf-tlhelp32-module32next>`_.
|
||
2. Identify the module corresponding to :file:`python.exe` or
|
||
:file:`python{XY}.dll`, where ``X`` and ``Y`` are the major and minor
|
||
version numbers of the Python version, and record its base address.
|
||
3. Locate the ``PyRuntim`` section. Due to the PE format's 8-character limit
|
||
on section names (defined as ``IMAGE_SIZEOF_SHORT_NAME``), the original
|
||
name ``PyRuntime`` is truncated. This section contains the ``PyRuntime``
|
||
structure.
|
||
4. Retrieve the section’s relative virtual address (RVA) and add it to the base
|
||
address of the module.
|
||
|
||
The following is an example implementation::
|
||
|
||
def find_py_runtime_windows(pid: int) -> int:
|
||
# Step 1: Try to find the Python executable in memory
|
||
binary_path, base_address = find_loaded_module(
|
||
pid, name_contains="python"
|
||
)
|
||
|
||
# Step 2: Fallback to shared pythonXY.dll if the executable is not
|
||
# found
|
||
if binary_path is None:
|
||
binary_path, base_address = find_loaded_module(
|
||
pid, name_contains="python3"
|
||
)
|
||
|
||
# Step 3: Parse PE section headers to get the RVA of the PyRuntime
|
||
# section. The section name appears as "PyRuntim" due to the
|
||
# 8-character limit defined by the PE format (IMAGE_SIZEOF_SHORT_NAME).
|
||
section_rva = parse_pe_section_offset(binary_path, "PyRuntim")
|
||
|
||
# Step 4: Compute PyRuntime address in memory
|
||
return base_address + section_rva
|
||
|
||
|
||
On Windows, accessing another process's memory requires using the Windows API
|
||
functions like ``CreateToolhelp32Snapshot()`` and ``Module32First()/Module32Next()``
|
||
to enumerate loaded modules. The ``OpenProcess()`` function provides a handle to
|
||
access the target process's memory space, enabling memory operations through
|
||
``ReadProcessMemory()``.
|
||
|
||
The process memory can be examined by enumerating loaded modules to find the
|
||
Python binary or DLL. When found, its PE headers need to be parsed to locate the
|
||
``PyRuntime`` structure.
|
||
|
||
The PE format organizes code and data into sections. The ``PyRuntime`` structure
|
||
lives in a section named "PyRuntim" (truncated from "PyRuntime" due to PE's
|
||
8-character name limit). The actual runtime address calculation involves finding
|
||
the module's base address from the module entry, then locating our target
|
||
section in the PE headers. The final address is computed by combining the base
|
||
address with the section's virtual address from the PE section headers.
|
||
|
||
Note that accessing another process's memory on Windows typically requires
|
||
appropriate privileges - either administrative access or the ``SeDebugPrivilege``
|
||
privilege granted to the debugging process.
|
||
|
||
|
||
Reading _Py_DebugOffsets
|
||
========================
|
||
|
||
Once the address of the ``PyRuntime`` structure has been determined, the next
|
||
step is to read the ``_Py_DebugOffsets`` structure located at the beginning of
|
||
the ``PyRuntime`` block.
|
||
|
||
This structure provides version-specific field offsets that are needed to
|
||
safely read interpreter and thread state memory. These offsets vary between
|
||
CPython versions and must be checked before use to ensure they are compatible.
|
||
|
||
To read and check the debug offsets, follow these steps:
|
||
|
||
1. Read memory from the target process starting at the ``PyRuntime`` address,
|
||
covering the same number of bytes as the ``_Py_DebugOffsets`` structure.
|
||
This structure is located at the very start of the ``PyRuntime`` memory
|
||
block. Its layout is defined in CPython’s internal headers and stays the
|
||
same within a given minor version, but may change in major versions.
|
||
|
||
2. Check that the structure contains valid data:
|
||
|
||
- The ``cookie`` field must match the expected debug marker.
|
||
- The ``version`` field must match the version of the Python interpreter
|
||
used by the debugger.
|
||
- If either the debugger or the target process is using a pre-release
|
||
version (for example, an alpha, beta, or release candidate), the versions
|
||
must match exactly.
|
||
- The ``free_threaded`` field must have the same value in both the debugger
|
||
and the target process.
|
||
|
||
3. If the structure is valid, the offsets it contains can be used to locate
|
||
fields in memory. If any check fails, the debugger should stop the operation
|
||
to avoid reading memory in the wrong format.
|
||
|
||
The following is an example implementation that reads and checks
|
||
``_Py_DebugOffsets``::
|
||
|
||
def read_debug_offsets(pid: int, py_runtime_addr: int) -> DebugOffsets:
|
||
# Step 1: Read memory from the target process at the PyRuntime address
|
||
data = read_process_memory(
|
||
pid, address=py_runtime_addr, size=DEBUG_OFFSETS_SIZE
|
||
)
|
||
|
||
# Step 2: Deserialize the raw bytes into a _Py_DebugOffsets structure
|
||
debug_offsets = parse_debug_offsets(data)
|
||
|
||
# Step 3: Validate the contents of the structure
|
||
if debug_offsets.cookie != EXPECTED_COOKIE:
|
||
raise RuntimeError("Invalid or missing debug cookie")
|
||
if debug_offsets.version != LOCAL_PYTHON_VERSION:
|
||
raise RuntimeError(
|
||
"Mismatch between caller and target Python versions"
|
||
)
|
||
if debug_offsets.free_threaded != LOCAL_FREE_THREADED:
|
||
raise RuntimeError("Mismatch in free-threaded configuration")
|
||
|
||
return debug_offsets
|
||
|
||
|
||
|
||
.. warning::
|
||
|
||
**Process suspension recommended**
|
||
|
||
To avoid race conditions and ensure memory consistency, it is strongly
|
||
recommended that the target process be suspended before performing any
|
||
operations that read or write internal interpreter state. The Python runtime
|
||
may concurrently mutate interpreter data structures—such as creating or
|
||
destroying threads—during normal execution. This can result in invalid
|
||
memory reads or writes.
|
||
|
||
A debugger may suspend execution by attaching to the process with ``ptrace``
|
||
or by sending a ``SIGSTOP`` signal. Execution should only be resumed after
|
||
debugger-side memory operations are complete.
|
||
|
||
.. note::
|
||
|
||
Some tools, such as profilers or sampling-based debuggers, may operate on
|
||
a running process without suspension. In such cases, tools must be
|
||
explicitly designed to handle partially updated or inconsistent memory.
|
||
For most debugger implementations, suspending the process remains the
|
||
safest and most robust approach.
|
||
|
||
|
||
Locating the interpreter and thread state
|
||
=========================================
|
||
|
||
Before code can be injected and executed in a remote Python process, the
|
||
debugger must choose a thread in which to schedule execution. This is necessary
|
||
because the control fields used to perform remote code injection are located in
|
||
the ``_PyRemoteDebuggerSupport`` structure, which is embedded in a
|
||
``PyThreadState`` object. These fields are modified by the debugger to request
|
||
execution of injected scripts.
|
||
|
||
The ``PyThreadState`` structure represents a thread running inside a Python
|
||
interpreter. It maintains the thread’s evaluation context and contains the
|
||
fields required for debugger coordination. Locating a valid ``PyThreadState``
|
||
is therefore a key prerequisite for triggering execution remotely.
|
||
|
||
A thread is typically selected based on its role or ID. In most cases, the main
|
||
thread is used, but some tools may target a specific thread by its native
|
||
thread ID. Once the target thread is chosen, the debugger must locate both the
|
||
interpreter and the associated thread state structures in memory.
|
||
|
||
The relevant internal structures are defined as follows:
|
||
|
||
- ``PyInterpreterState`` represents an isolated Python interpreter instance.
|
||
Each interpreter maintains its own set of imported modules, built-in state,
|
||
and thread state list. Although most Python applications use a single
|
||
interpreter, CPython supports multiple interpreters in the same process.
|
||
|
||
- ``PyThreadState`` represents a thread running within an interpreter. It
|
||
contains execution state and the control fields used by the debugger.
|
||
|
||
To locate a thread:
|
||
|
||
1. Use the offset ``runtime_state.interpreters_head`` to obtain the address of
|
||
the first interpreter in the ``PyRuntime`` structure. This is the entry point
|
||
to the linked list of active interpreters.
|
||
|
||
2. Use the offset ``interpreter_state.threads_main`` to access the main thread
|
||
state associated with the selected interpreter. This is typically the most
|
||
reliable thread to target.
|
||
|
||
3. Optionally, use the offset ``interpreter_state.threads_head`` to iterate
|
||
through the linked list of all thread states. Each ``PyThreadState`` structure
|
||
contains a ``native_thread_id`` field, which may be compared to a target thread
|
||
ID to find a specific thread.
|
||
|
||
1. Once a valid ``PyThreadState`` has been found, its address can be used in
|
||
later steps of the protocol, such as writing debugger control fields and
|
||
scheduling execution.
|
||
|
||
The following is an example implementation that locates the main thread state::
|
||
|
||
def find_main_thread_state(
|
||
pid: int, py_runtime_addr: int, debug_offsets: DebugOffsets,
|
||
) -> int:
|
||
# Step 1: Read interpreters_head from PyRuntime
|
||
interp_head_ptr = (
|
||
py_runtime_addr + debug_offsets.runtime_state.interpreters_head
|
||
)
|
||
interp_addr = read_pointer(pid, interp_head_ptr)
|
||
if interp_addr == 0:
|
||
raise RuntimeError("No interpreter found in the target process")
|
||
|
||
# Step 2: Read the threads_main pointer from the interpreter
|
||
threads_main_ptr = (
|
||
interp_addr + debug_offsets.interpreter_state.threads_main
|
||
)
|
||
thread_state_addr = read_pointer(pid, threads_main_ptr)
|
||
if thread_state_addr == 0:
|
||
raise RuntimeError("Main thread state is not available")
|
||
|
||
return thread_state_addr
|
||
|
||
The following example demonstrates how to locate a thread by its native thread
|
||
ID::
|
||
|
||
def find_thread_by_id(
|
||
pid: int,
|
||
interp_addr: int,
|
||
debug_offsets: DebugOffsets,
|
||
target_tid: int,
|
||
) -> int:
|
||
# Start at threads_head and walk the linked list
|
||
thread_ptr = read_pointer(
|
||
pid,
|
||
interp_addr + debug_offsets.interpreter_state.threads_head
|
||
)
|
||
|
||
while thread_ptr:
|
||
native_tid_ptr = (
|
||
thread_ptr + debug_offsets.thread_state.native_thread_id
|
||
)
|
||
native_tid = read_int(pid, native_tid_ptr)
|
||
if native_tid == target_tid:
|
||
return thread_ptr
|
||
thread_ptr = read_pointer(
|
||
pid,
|
||
thread_ptr + debug_offsets.thread_state.next
|
||
)
|
||
|
||
raise RuntimeError("Thread with the given ID was not found")
|
||
|
||
|
||
Once a valid thread state has been located, the debugger can proceed with
|
||
modifying its control fields and scheduling execution, as described in the next
|
||
section.
|
||
|
||
Writing control information
|
||
===========================
|
||
|
||
Once a valid ``PyThreadState`` structure has been identified, the debugger may
|
||
modify control fields within it to schedule the execution of a specified Python
|
||
script. These control fields are checked periodically by the interpreter, and
|
||
when set correctly, they trigger the execution of remote code at a safe point
|
||
in the evaluation loop.
|
||
|
||
Each ``PyThreadState`` contains a ``_PyRemoteDebuggerSupport`` structure used
|
||
for communication between the debugger and the interpreter. The locations of
|
||
its fields are defined by the ``_Py_DebugOffsets`` structure and include the
|
||
following:
|
||
|
||
- ``debugger_script_path``: A fixed-size buffer that holds the full path to a
|
||
Python source file (``.py``). This file must be accessible and readable by
|
||
the target process when execution is triggered.
|
||
|
||
- ``debugger_pending_call``: An integer flag. Setting this to ``1`` tells the
|
||
interpreter that a script is ready to be executed.
|
||
|
||
- ``eval_breaker``: A field checked by the interpreter during execution.
|
||
Setting bit 5 (``_PY_EVAL_PLEASE_STOP_BIT``, value ``1U << 5``) in this
|
||
field causes the interpreter to pause and check for debugger activity.
|
||
|
||
To complete the injection, the debugger must perform the following steps:
|
||
|
||
1. Write the full script path into the ``debugger_script_path`` buffer.
|
||
2. Set ``debugger_pending_call`` to ``1``.
|
||
3. Read the current value of ``eval_breaker``, set bit 5
|
||
(``_PY_EVAL_PLEASE_STOP_BIT``), and write the updated value back. This
|
||
signals the interpreter to check for debugger activity.
|
||
|
||
The following is an example implementation::
|
||
|
||
def inject_script(
|
||
pid: int,
|
||
thread_state_addr: int,
|
||
debug_offsets: DebugOffsets,
|
||
script_path: str
|
||
) -> None:
|
||
# Compute the base offset of _PyRemoteDebuggerSupport
|
||
support_base = (
|
||
thread_state_addr +
|
||
debug_offsets.debugger_support.remote_debugger_support
|
||
)
|
||
|
||
# Step 1: Write the script path into debugger_script_path
|
||
script_path_ptr = (
|
||
support_base +
|
||
debug_offsets.debugger_support.debugger_script_path
|
||
)
|
||
write_string(pid, script_path_ptr, script_path)
|
||
|
||
# Step 2: Set debugger_pending_call to 1
|
||
pending_ptr = (
|
||
support_base +
|
||
debug_offsets.debugger_support.debugger_pending_call
|
||
)
|
||
write_int(pid, pending_ptr, 1)
|
||
|
||
# Step 3: Set _PY_EVAL_PLEASE_STOP_BIT (bit 5, value 1 << 5) in
|
||
# eval_breaker
|
||
eval_breaker_ptr = (
|
||
thread_state_addr +
|
||
debug_offsets.debugger_support.eval_breaker
|
||
)
|
||
breaker = read_int(pid, eval_breaker_ptr)
|
||
breaker |= (1 << 5)
|
||
write_int(pid, eval_breaker_ptr, breaker)
|
||
|
||
|
||
Once these fields are set, the debugger may resume the process (if it was
|
||
suspended). The interpreter will process the request at the next safe
|
||
evaluation point, load the script from disk, and execute it.
|
||
|
||
It is the responsibility of the debugger to ensure that the script file remains
|
||
present and accessible to the target process during execution.
|
||
|
||
.. note::
|
||
|
||
Script execution is asynchronous. The script file cannot be deleted
|
||
immediately after injection. The debugger should wait until the injected
|
||
script has produced an observable effect before removing the file.
|
||
This effect depends on what the script is designed to do. For example,
|
||
a debugger might wait until the remote process connects back to a socket
|
||
before removing the script. Once such an effect is observed, it is safe to
|
||
assume the file is no longer needed.
|
||
|
||
Summary
|
||
=======
|
||
|
||
To inject and execute a Python script in a remote process:
|
||
|
||
1. Locate the ``PyRuntime`` structure in the target process’s memory.
|
||
2. Read and validate the ``_Py_DebugOffsets`` structure at the beginning of
|
||
``PyRuntime``.
|
||
3. Use the offsets to locate a valid ``PyThreadState``.
|
||
4. Write the path to a Python script into ``debugger_script_path``.
|
||
5. Set the ``debugger_pending_call`` flag to ``1``.
|
||
6. Set ``_PY_EVAL_PLEASE_STOP_BIT`` in the ``eval_breaker`` field.
|
||
7. Resume the process (if suspended). The script will execute at the next safe
|
||
evaluation point.
|
||
|