Files
sunnypilot/selfdrive/modeld/modeld.py
T
Armand du Parc Locmaria d81d66193f modeld: single jit (#37758)
* compile_modeld.py

* update estimates

* missing image=2?

* Revert "missing image=2?"

This reverts commit 2f5952eb63ba1e3f24cbf5769e6b5e9170d7f0a6.

* Revert "update estimates"

This reverts commit 1f72feef2ffdec6126e3c941e899b46ace7b4b65.

* Revert "compile_modeld.py"

This reverts commit f10541502efca02725f368deda2a21d1f786f57d.

* load warp in ModelState init

* dead code

* prep

* compile modeld

* update SConscript

* tmp save plot locally

* Revert "tmp save plot locally"

This reverts commit ec22f15161ad3b0241a097546b35860f989219f5.

* openpilot hacks?

* no float16

* tmp more chunks

* Revert "tmp more chunks"

This reverts commit 9e1d9b4d0dc36ff530d2a70b565fbfabd7afb00d.

* Revert "no float16"

This reverts commit 6204956e98e3c0818ed1985ede8eeccb810f63e3.

* realize boundaries

* Revert "realize boundaries"

This reverts commit ffaa19259eba70944e7793e8f51a0f87089531b3.

* prune=False?

* Reapply "tmp more chunks"

This reverts commit 2599c41cea93b4a6b4e946cdffc6a617663a7d23.

* tg bug?

* load first?

* Revert "load first?"

This reverts commit f643d082d76a424b23295e254179eb111e936e61.

* revert

* Reapply "tmp save plot locally"

This reverts commit 1b95b82ee58654bd908b1cb04ab0ddbcd1a5955d.

* 0 tol pc

* warp -> modeld

* rename

* bypass chunking?

* dont chunk

* Revert "dont chunk"

This reverts commit cc97fc67b3203456e123f02babe5c83b87c7e264.

* dont chunk

* debug

* Revert "debug"

This reverts commit b3c2f2e7a095fd32f8d8562a68fd1cca42357eac.

* Revert "dont chunk"

This reverts commit 42bd9b6f6ad0722c50348ba11ba7e2a64fdf997d.

* Revert "bypass chunking?"

This reverts commit ad5422a93483ffd8a59ba62e5fb72ced3b5d04d0.

* corrupt model outputs

* Revert "corrupt model outputs"

This reverts commit 245feb94480e02f83a20b65a9488652bcbfc88b0.

* image=0 for warp, match master

* dedupe enqueue

* pass traffic convention

* tg buffer for desire

* dedupe buffer creation

* compile_modeld: nuke stale cached pkl before compiling

The UNSAFE CI checkout keeps gitignored files (.pkl, .sconsign.dblite),
so stale pkl files from previous commits can persist and be reused
instead of being recompiled. Delete them explicitly before compiling.

Co-Authored-By: Claude Opus 4.6 (1M context) <noreply@anthropic.com>

* test vs compile

* all outputs need to be different on different inputs

* randomize numpy inputs

* randomize on every step

* SConscript: nuke stale pkl+chunks before compile_modeld

Move the stale artifact cleanup from compile_modeld.py into the
SConscript build command. This ensures stale gitignored pkl and chunk
files are deleted even if scons decides to skip the compile step
(due to a stale .sconsign.dblite from UNSAFE CI checkout).

Co-Authored-By: Claude Opus 4.6 (1M context) <noreply@anthropic.com>

* compile_modeld: restore Context(IMAGE=0) for warp

The warp operations must run under IMAGE=0 to avoid QCOM image texture
optimizations that corrupt the output buffer after ~33 frames.
This was accidentally commented out in a855173.

Co-Authored-By: Claude Opus 4.6 (1M context) <noreply@anthropic.com>

* modeld: create SubMaster before model loading

Move PubMaster/SubMaster creation before the model loading step.
During model loading (3.5s+), process_replay may send liveCalibration.
If SubMaster doesn't exist yet, the message is dropped and the warp
transform stays as zeros, producing garbage warped images.

Co-Authored-By: Claude Opus 4.6 (1M context) <noreply@anthropic.com>

* Revert "modeld: create SubMaster before model loading"

This reverts commit 968c987c2fbb3fce141c4e345d10ddea559b6c50.

* stale metadata?

* claude debug

* Revert "claude debug"

This reverts commit 49e754c6affa45a8ea8834588a00227b8090b17a.

* Revert "stale metadata?"

This reverts commit 870388513c0d4a67dcf970cd277b6db56cb2b478.

* modeld: realize jit outputs before parsing

* Update modeld.py

* modeld: fix NameError by removing redundant MODELS_DIR definition

* test buffers in test vs. compile

* 2x inputs before running

* fixup 2x inputs test

* realize onnx weights?

* Revert "realize onnx weights?"

This reverts commit 49c8b9a505db38ff22f342db011a3a6b6526d398.

* move openpilot_hacks flag to sconscript

* stricter test vs compile

* correct timings

* more run more fail?

* Revert "more run more fail?"

This reverts commit 9e94bb63940751ec29e81b634c42449113e1f2e5.

* numpy shenanigans

* correct shapes

* dont assert timings for now

* Revert "correct shapes"

This reverts commit 5b9ff6c84c0022327d21801d179e9e51c39e8f78.

* Revert "numpy shenanigans"

This reverts commit b4f6fb3078d7e9b09698895b88728fd8eea8c8a8.

* no need to nuke

* comment unused

* don't use NPY device

* copy instead of from_blob

* to device before jit

* Revert "to device before jit"

This reverts commit 7a59ed9b1ac88657b5a3917986b6ff92e59a2ee3.

* Revert "copy instead of from_blob"

This reverts commit 196c4892a06ffba89ef631876372cecf137cc1b4.

* Revert "don't use NPY device"

This reverts commit 18abf43bbac46ad47a60c03dd8d1ef40b3f59227.

* 3 runs is enough

* no_memory_planner=1

* lint

* restore model_replay.py

* on policy -> policy

* unused

* prepare only enqueues full images

* warp with image=2?

* unused args

* test vs compile, check different inputs different outputs

* avoid uop cache collision

* dont need realize here

* misc

* input queues diverged

* strict zip

* monkey patch for now

* memory planner

* prev desire correct order

* dedupe pkl paths / compile targets

* don't change behavior, warp and enqueue frames when skipping model eval

* actually prepare only

* warm up warp jit

* correct path

* oops

* explicit warmup

* need continuous + can't have dupplicate jit inputs

* whitespace

* bufs -> input_queues

* master tg

* /N_RUNS

* bump tg, remove uop cache patch

* more readable

* Revert "bump tg, remove uop cache patch"

This reverts commit 499acca2591becd389de4025943f9e776a5b337c.

* missing dep

---------

Co-authored-by: Bruce Wayne <harald.the.engineer@gmail.com>
Co-authored-by: Claude Opus 4.6 (1M context) <noreply@anthropic.com>
2026-04-17 12:37:56 -07:00

339 lines
16 KiB
Python
Executable File

#!/usr/bin/env python3
import os
from openpilot.selfdrive.modeld.tinygrad_helpers import MODELS_DIR, set_tinygrad_backend_from_compiled_flags
set_tinygrad_backend_from_compiled_flags()
USBGPU = "USBGPU" in os.environ
if USBGPU:
os.environ['DEV'] = 'AMD'
os.environ['AMD_IFACE'] = 'USB'
from tinygrad.tensor import Tensor
import time
import pickle
import numpy as np
import cereal.messaging as messaging
from cereal import car, log
from cereal.messaging import PubMaster, SubMaster
from msgq.visionipc import VisionIpcClient, VisionStreamType, VisionBuf
from opendbc.car.car_helpers import get_demo_car_params
from openpilot.common.swaglog import cloudlog
from openpilot.common.params import Params
from openpilot.common.filter_simple import FirstOrderFilter
from openpilot.common.realtime import config_realtime_process, DT_MDL
from openpilot.common.transformations.camera import DEVICE_CAMERAS
from openpilot.system.camerad.cameras.nv12_info import get_nv12_info
from openpilot.common.transformations.model import get_warp_matrix
from openpilot.selfdrive.controls.lib.desire_helper import DesireHelper
from openpilot.selfdrive.controls.lib.drive_helpers import get_accel_from_plan, smooth_value, get_curvature_from_plan
from openpilot.selfdrive.modeld.parse_model_outputs import Parser
from openpilot.selfdrive.modeld.compile_modeld import CompileConfig, make_input_queues
from openpilot.selfdrive.modeld.fill_model_msg import fill_model_msg, fill_pose_msg, PublishState
from openpilot.common.file_chunker import read_file_chunked
from openpilot.selfdrive.modeld.constants import ModelConstants, Plan
PROCESS_NAME = "selfdrive.modeld.modeld"
SEND_RAW_PRED = os.getenv('SEND_RAW_PRED')
VISION_METADATA_PATH = MODELS_DIR / 'driving_vision_metadata.pkl'
POLICY_METADATA_PATH = MODELS_DIR / 'driving_policy_metadata.pkl'
LAT_SMOOTH_SECONDS = 0.0
LONG_SMOOTH_SECONDS = 0.3
MIN_LAT_CONTROL_SPEED = 0.3
def get_action_from_model(model_output: dict[str, np.ndarray], prev_action: log.ModelDataV2.Action,
lat_action_t: float, long_action_t: float, v_ego: float) -> log.ModelDataV2.Action:
plan = model_output['plan'][0]
desired_accel, should_stop = get_accel_from_plan(plan[:,Plan.VELOCITY][:,0],
plan[:,Plan.ACCELERATION][:,0],
ModelConstants.T_IDXS,
action_t=long_action_t)
desired_accel = smooth_value(desired_accel, prev_action.desiredAcceleration, LONG_SMOOTH_SECONDS)
desired_curvature = get_curvature_from_plan(plan[:,Plan.T_FROM_CURRENT_EULER][:,2],
plan[:,Plan.ORIENTATION_RATE][:,2],
ModelConstants.T_IDXS,
v_ego,
lat_action_t)
if v_ego > MIN_LAT_CONTROL_SPEED:
desired_curvature = smooth_value(desired_curvature, prev_action.desiredCurvature, LAT_SMOOTH_SECONDS)
else:
desired_curvature = prev_action.desiredCurvature
return log.ModelDataV2.Action(desiredCurvature=float(desired_curvature),
desiredAcceleration=float(desired_accel),
shouldStop=bool(should_stop))
class FrameMeta:
frame_id: int = 0
timestamp_sof: int = 0
timestamp_eof: int = 0
def __init__(self, vipc=None):
if vipc is not None:
self.frame_id, self.timestamp_sof, self.timestamp_eof = vipc.frame_id, vipc.timestamp_sof, vipc.timestamp_eof
class ModelState:
prev_desire: np.ndarray # for tracking the rising edge of the pulse
def __init__(self, cam_w: int, cam_h: int):
with open(VISION_METADATA_PATH, 'rb') as f:
vision_metadata = pickle.load(f)
self.vision_input_shapes = vision_metadata['input_shapes']
self.vision_input_names = list(self.vision_input_shapes.keys())
self.vision_output_slices = vision_metadata['output_slices']
with open(POLICY_METADATA_PATH, 'rb') as f:
policy_metadata = pickle.load(f)
self.policy_input_shapes = policy_metadata['input_shapes']
self.policy_output_slices = policy_metadata['output_slices']
self.prev_desire = np.zeros(ModelConstants.DESIRE_LEN, dtype=np.float32)
self.frame_skip = ModelConstants.MODEL_RUN_FREQ // ModelConstants.MODEL_CONTEXT_FREQ
self.input_queues, self.npy = make_input_queues(self.vision_input_shapes, self.policy_input_shapes, self.frame_skip)
self.full_frames : dict[str, Tensor] = {}
self._blob_cache : dict[int, Tensor] = {}
self.parser = Parser()
self.frame_buf_params = {k: get_nv12_info(cam_w, cam_h) for k in ('img', 'big_img')}
self.run_policy = pickle.loads(read_file_chunked(CompileConfig(cam_w, cam_h, prefix='driving_', prepare_only=False).pkl_path))
self.warp_enqueue = pickle.loads(read_file_chunked(CompileConfig(cam_w, cam_h, prefix='driving_', prepare_only=True).pkl_path))
self.warp_enqueue(
**self.input_queues,
frame=Tensor.zeros(self.frame_buf_params['img'][3], dtype='uint8').contiguous().realize(),
big_frame=Tensor.zeros(self.frame_buf_params['big_img'][3], dtype='uint8').contiguous().realize())
def slice_outputs(self, model_outputs: np.ndarray, output_slices: dict[str, slice]) -> dict[str, np.ndarray]:
parsed_model_outputs = {k: model_outputs[np.newaxis, v] for k,v in output_slices.items()}
return parsed_model_outputs
def run(self, bufs: dict[str, VisionBuf], transforms: dict[str, np.ndarray],
inputs: dict[str, np.ndarray], prepare_only: bool) -> dict[str, np.ndarray] | None:
for key in bufs.keys():
ptr = bufs[key].data.ctypes.data
yuv_size = self.frame_buf_params[key][3]
# There is a ringbuffer of imgs, just cache tensors pointing to all of them
cache_key = (key, ptr)
if cache_key not in self._blob_cache:
self._blob_cache[cache_key] = Tensor.from_blob(ptr, (yuv_size,), dtype='uint8')
self.full_frames[key] = self._blob_cache[cache_key]
# Model decides when action is completed, so desire input is just a pulse triggered on rising edge
inputs['desire_pulse'][0] = 0
self.npy['desire'][:] = np.where(inputs['desire_pulse'] - self.prev_desire > .99, inputs['desire_pulse'], 0)
self.prev_desire[:] = inputs['desire_pulse']
self.npy['traffic_convention'][:] = inputs['traffic_convention']
self.npy['tfm'][:,:] = transforms['img'][:,:]
self.npy['big_tfm'][:,:] = transforms['big_img'][:,:]
if prepare_only:
self.warp_enqueue(**self.input_queues, frame=self.full_frames['img'], big_frame=self.full_frames['big_img'])
return None
vision_output, policy_output = self.run_policy(
**self.input_queues, frame=self.full_frames['img'], big_frame=self.full_frames['big_img']
)
vision_output = vision_output.numpy().flatten()
policy_output = policy_output.numpy().flatten()
vision_outputs_dict = self.parser.parse_vision_outputs(self.slice_outputs(vision_output, self.vision_output_slices))
policy_outputs_dict = self.parser.parse_policy_outputs(self.slice_outputs(policy_output, self.policy_output_slices))
combined_outputs_dict = {**vision_outputs_dict, **policy_outputs_dict}
if SEND_RAW_PRED:
combined_outputs_dict['raw_pred'] = np.concatenate([vision_output.copy(), policy_output.copy()])
return combined_outputs_dict
def main(demo=False):
cloudlog.warning("modeld init")
if not USBGPU:
# USB GPU currently saturates a core so can't do this yet,
# also need to move the aux USB interrupts for good timings
config_realtime_process(7, 54)
# visionipc clients
while True:
available_streams = VisionIpcClient.available_streams("camerad", block=False)
if available_streams:
use_extra_client = VisionStreamType.VISION_STREAM_WIDE_ROAD in available_streams and VisionStreamType.VISION_STREAM_ROAD in available_streams
main_wide_camera = VisionStreamType.VISION_STREAM_ROAD not in available_streams
break
time.sleep(.1)
vipc_client_main_stream = VisionStreamType.VISION_STREAM_WIDE_ROAD if main_wide_camera else VisionStreamType.VISION_STREAM_ROAD
vipc_client_main = VisionIpcClient("camerad", vipc_client_main_stream, True)
vipc_client_extra = VisionIpcClient("camerad", VisionStreamType.VISION_STREAM_WIDE_ROAD, False)
cloudlog.warning(f"vision stream set up, main_wide_camera: {main_wide_camera}, use_extra_client: {use_extra_client}")
while not vipc_client_main.connect(False):
time.sleep(0.1)
while use_extra_client and not vipc_client_extra.connect(False):
time.sleep(0.1)
cloudlog.warning(f"connected main cam with buffer size: {vipc_client_main.buffer_len} ({vipc_client_main.width} x {vipc_client_main.height})")
if use_extra_client:
cloudlog.warning(f"connected extra cam with buffer size: {vipc_client_extra.buffer_len} ({vipc_client_extra.width} x {vipc_client_extra.height})")
st = time.monotonic()
cloudlog.warning("loading model")
model = ModelState(vipc_client_main.width, vipc_client_main.height)
cloudlog.warning(f"models loaded in {time.monotonic() - st:.1f}s, modeld starting")
# messaging
pm = PubMaster(["modelV2", "drivingModelData", "cameraOdometry"])
sm = SubMaster(["deviceState", "carState", "roadCameraState", "liveCalibration", "driverMonitoringState", "carControl", "liveDelay"])
publish_state = PublishState()
params = Params()
# setup filter to track dropped frames
frame_dropped_filter = FirstOrderFilter(0., 10., 1. / ModelConstants.MODEL_RUN_FREQ)
frame_id = 0
last_vipc_frame_id = 0
run_count = 0
model_transform_main = np.zeros((3, 3), dtype=np.float32)
model_transform_extra = np.zeros((3, 3), dtype=np.float32)
live_calib_seen = False
buf_main, buf_extra = None, None
meta_main = FrameMeta()
meta_extra = FrameMeta()
if demo:
CP = get_demo_car_params()
else:
CP = messaging.log_from_bytes(params.get("CarParams", block=True), car.CarParams)
cloudlog.info("modeld got CarParams: %s", CP.brand)
# TODO this needs more thought, use .2s extra for now to estimate other delays
# TODO Move smooth seconds to action function
long_delay = CP.longitudinalActuatorDelay + LONG_SMOOTH_SECONDS
prev_action = log.ModelDataV2.Action()
DH = DesireHelper()
while True:
# Keep receiving frames until we are at least 1 frame ahead of previous extra frame
while meta_main.timestamp_sof < meta_extra.timestamp_sof + 25000000:
buf_main = vipc_client_main.recv()
meta_main = FrameMeta(vipc_client_main)
if buf_main is None:
break
if buf_main is None:
cloudlog.debug("vipc_client_main no frame")
continue
if use_extra_client:
# Keep receiving extra frames until frame id matches main camera
while True:
buf_extra = vipc_client_extra.recv()
meta_extra = FrameMeta(vipc_client_extra)
if buf_extra is None or meta_main.timestamp_sof < meta_extra.timestamp_sof + 25000000:
break
if buf_extra is None:
cloudlog.debug("vipc_client_extra no frame")
continue
if abs(meta_main.timestamp_sof - meta_extra.timestamp_sof) > 10000000:
cloudlog.error(f"frames out of sync! main: {meta_main.frame_id} ({meta_main.timestamp_sof / 1e9:.5f}),\
extra: {meta_extra.frame_id} ({meta_extra.timestamp_sof / 1e9:.5f})")
else:
# Use single camera
buf_extra = buf_main
meta_extra = meta_main
sm.update(0)
desire = DH.desire
is_rhd = sm["driverMonitoringState"].isRHD
frame_id = sm["roadCameraState"].frameId
v_ego = max(sm["carState"].vEgo, 0.)
lat_delay = sm["liveDelay"].lateralDelay + LAT_SMOOTH_SECONDS
if sm.updated["liveCalibration"] and sm.seen['roadCameraState'] and sm.seen['deviceState']:
device_from_calib_euler = np.array(sm["liveCalibration"].rpyCalib, dtype=np.float32)
dc = DEVICE_CAMERAS[(str(sm['deviceState'].deviceType), str(sm['roadCameraState'].sensor))]
model_transform_main = get_warp_matrix(device_from_calib_euler, dc.ecam.intrinsics if main_wide_camera else dc.fcam.intrinsics, False).astype(np.float32)
model_transform_extra = get_warp_matrix(device_from_calib_euler, dc.ecam.intrinsics, True).astype(np.float32)
live_calib_seen = True
traffic_convention = np.zeros(2)
traffic_convention[int(is_rhd)] = 1
vec_desire = np.zeros(ModelConstants.DESIRE_LEN, dtype=np.float32)
if desire >= 0 and desire < ModelConstants.DESIRE_LEN:
vec_desire[desire] = 1
# tracked dropped frames
vipc_dropped_frames = max(0, meta_main.frame_id - last_vipc_frame_id - 1)
frames_dropped = frame_dropped_filter.update(min(vipc_dropped_frames, 10))
if run_count < 10: # let frame drops warm up
frame_dropped_filter.x = 0.
frames_dropped = 0.
run_count = run_count + 1
frame_drop_ratio = frames_dropped / (1 + frames_dropped)
prepare_only = vipc_dropped_frames > 0
if prepare_only:
cloudlog.error(f"skipping model eval. Dropped {vipc_dropped_frames} frames")
bufs = {name: buf_extra if 'big' in name else buf_main for name in model.vision_input_names}
transforms = {name: model_transform_extra if 'big' in name else model_transform_main for name in model.vision_input_names}
inputs:dict[str, np.ndarray] = {
'desire_pulse': vec_desire,
'traffic_convention': traffic_convention,
}
mt1 = time.perf_counter()
model_output = model.run(bufs, transforms, inputs, prepare_only)
mt2 = time.perf_counter()
model_execution_time = mt2 - mt1
if model_output is not None:
modelv2_send = messaging.new_message('modelV2')
drivingdata_send = messaging.new_message('drivingModelData')
posenet_send = messaging.new_message('cameraOdometry')
frame_delay = DT_MDL # compensate for time passed since the frame was captured: current_time - timestamp_eof is 50ms on average
action_delay = DT_MDL / 2 # middle of the interval between model output (current state) and next frame (expected state)
action = get_action_from_model(model_output, prev_action, lat_delay + frame_delay + action_delay, long_delay + frame_delay + action_delay, v_ego)
prev_action = action
fill_model_msg(drivingdata_send, modelv2_send, model_output, action,
publish_state, meta_main.frame_id, meta_extra.frame_id, frame_id,
frame_drop_ratio, meta_main.timestamp_eof, model_execution_time, live_calib_seen)
desire_state = modelv2_send.modelV2.meta.desireState
l_lane_change_prob = desire_state[log.Desire.laneChangeLeft]
r_lane_change_prob = desire_state[log.Desire.laneChangeRight]
lane_change_prob = l_lane_change_prob + r_lane_change_prob
DH.update(sm['carState'], sm['carControl'].latActive, lane_change_prob)
modelv2_send.modelV2.meta.laneChangeState = DH.lane_change_state
modelv2_send.modelV2.meta.laneChangeDirection = DH.lane_change_direction
drivingdata_send.drivingModelData.meta.laneChangeState = DH.lane_change_state
drivingdata_send.drivingModelData.meta.laneChangeDirection = DH.lane_change_direction
fill_pose_msg(posenet_send, model_output, meta_main.frame_id, vipc_dropped_frames, meta_main.timestamp_eof, live_calib_seen)
pm.send('modelV2', modelv2_send)
pm.send('drivingModelData', drivingdata_send)
pm.send('cameraOdometry', posenet_send)
last_vipc_frame_id = meta_main.frame_id
if __name__ == "__main__":
try:
import argparse
parser = argparse.ArgumentParser()
parser.add_argument('--demo', action='store_true', help='A boolean for demo mode.')
args = parser.parse_args()
main(demo=args.demo)
except KeyboardInterrupt:
cloudlog.warning("got SIGINT")