211 lines
8.3 KiB
Python
211 lines
8.3 KiB
Python
import numpy as np
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from cereal import car
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from openpilot.common.conversions import Conversions as CV
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from openpilot.common.numpy_fast import interp
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from openpilot.common.params import Params
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# Constants
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PROBABILITY = 0.6 # 60% chance of condition being true
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THRESHOLD = 5 # Time threshold (0.25s)
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SPEED_LIMIT = 25 # Speed limit for turn signal check
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# Lookup table for stop sign / stop light detection
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SLOW_DOWN_BP = [0., 10., 20., 30., 40., 50., 55.]
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SLOW_DOWN_DISTANCE = [10, 30., 50., 70., 80., 90., 120.]
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TRAJECTORY_SIZE = 33
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class GenericMovingAverageCalculator:
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def __init__(self):
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self.data = []
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self.total = 0
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def add_data(self, value):
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if len(self.data) == THRESHOLD:
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self.total -= self.data.pop(0)
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self.data.append(value)
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self.total += value
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def get_moving_average(self):
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if len(self.data) == 0:
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return None
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return self.total / len(self.data)
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def reset_data(self):
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self.data = []
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self.total = 0
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class ConditionalExperimentalMode:
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def __init__(self):
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self.params_memory = Params("/dev/shm/params")
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self.curve_detected = False
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self.experimental_mode = False
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self.lead_detected = False
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self.lead_detected_previously = False
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self.lead_slowing_down = False
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self.red_light_detected = False
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self.slower_lead_detected = False
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self.slowing_down = False
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self.previous_status_value = 0
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self.previous_v_ego = 0
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self.previous_v_lead = 0
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self.status_value = 0
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self.curvature_gmac = GenericMovingAverageCalculator()
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self.lead_detection_gmac = GenericMovingAverageCalculator()
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self.lead_slowing_down_gmac = GenericMovingAverageCalculator()
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self.slow_down_gmac = GenericMovingAverageCalculator()
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self.slow_lead_gmac = GenericMovingAverageCalculator()
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self.slowing_down_gmac = GenericMovingAverageCalculator()
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def update(self, carState, frogpilotNavigation, modelData, mpc, radarState, standstill, v_ego):
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# Set the value of "overridden"
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if self.experimental_mode_via_press:
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overridden = self.params_memory.get_int("CEStatus")
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else:
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overridden = 0
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# Update Experimental Mode based on the current driving conditions
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condition_met = self.check_conditions(carState, frogpilotNavigation, modelData, standstill, v_ego)
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if (not self.experimental_mode and condition_met and overridden not in (1, 3)) or overridden in (2, 4):
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self.experimental_mode = True
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elif (self.experimental_mode and not condition_met and overridden not in (2, 4)) or overridden in (1, 3):
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self.experimental_mode = False
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self.status_value = 0
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# Update the onroad status bar
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self.status_value = overridden if overridden in (1, 2, 3, 4) else self.status_value
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if self.status_value != self.previous_status_value:
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self.previous_status_value = self.status_value
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self.params_memory.put_int("CEStatus", self.status_value)
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self.update_conditions(modelData, mpc, radarState, v_ego)
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# Check conditions for the appropriate state of Experimental Mode
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def check_conditions(self, carState, frogpilotNavigation, modelData, standstill, v_ego):
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if standstill:
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return self.experimental_mode
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# Keep Experimental Mode active if slowing down for a red light
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if self.slowing_down and self.status_value == 12 and not self.lead_slowing_down:
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return True
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# Navigation check
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if self.navigation and modelData.navEnabled and frogpilotNavigation.navigationConditionMet:
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self.status_value = 5
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return True
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# Speed Limit Controller check
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if self.params_memory.get_bool("SLCExperimentalMode"):
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self.status_value = 6
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return True
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# Speed check
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if (not self.lead_detected and v_ego < self.limit) or (self.lead_detected and v_ego < self.limit_lead):
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self.status_value = 7 if self.lead_detected else 8
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return True
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# Slower lead check
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if self.slower_lead and self.slower_lead_detected:
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self.status_value = 9
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return True
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# Turn signal check
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if self.signal and v_ego < SPEED_LIMIT and (carState.leftBlinker or carState.rightBlinker):
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self.status_value = 10
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return True
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# Road curvature check
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if self.curves and self.curve_detected and (self.curves_lead or not self.lead_detected):
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self.status_value = 11
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return True
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# Stop sign and light check
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if self.stop_lights and self.red_light_detected and (self.stop_lights_lead or not self.lead_slowing_down):
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self.status_value = 12
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return True
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return False
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def update_conditions(self, modelData, mpc, radarState, v_ego):
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self.lead_detection(radarState)
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self.road_curvature(modelData, v_ego)
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self.slow_lead(mpc, radarState, v_ego)
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self.stop_sign_and_light(modelData, v_ego)
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self.v_ego_slowing_down(v_ego)
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self.v_lead_slowing_down(mpc, radarState)
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def v_ego_slowing_down(self, v_ego):
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self.slowing_down_gmac.add_data(v_ego < self.previous_v_ego)
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self.slowing_down = self.slowing_down_gmac.get_moving_average() >= PROBABILITY
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self.previous_v_ego = v_ego
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def v_lead_slowing_down(self, mpc, radarState):
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if self.lead_detected:
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v_lead = radarState.leadOne.vLead
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self.lead_slowing_down_gmac.add_data(v_lead < self.previous_v_lead or v_lead < 1 or radarState.leadOne.dRel <= v_lead * mpc.t_follow)
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self.lead_slowing_down = self.lead_slowing_down_gmac.get_moving_average() >= PROBABILITY
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self.previous_v_lead = v_lead
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else:
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self.lead_slowing_down_gmac.reset_data()
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self.lead_slowing_down = False
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self.previous_v_lead = 0
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# Lead detection
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def lead_detection(self, radarState):
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self.lead_detection_gmac.add_data(radarState.leadOne.status)
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self.lead_detected = self.lead_detection_gmac.get_moving_average() >= PROBABILITY
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# Determine the road curvature - Credit goes to to Pfeiferj!
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def road_curvature(self, modelData, v_ego):
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predicted_velocities = np.array(modelData.velocity.x)
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if predicted_velocities.size:
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curvature_ratios = np.abs(np.array(modelData.acceleration.y)) / (predicted_velocities**2)
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curvature = np.amax(curvature_ratios * (v_ego**2))
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# Setting an upper limit of "5.0" helps prevent it activating at stop lights
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if curvature > 5.0:
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self.curvature_gmac.reset_data()
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self.curve_detected = False
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else:
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self.curvature_gmac.add_data(curvature > 1.6 or self.curve_detected and curvature > 1.1)
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self.curve_detected = self.curvature_gmac.get_moving_average() >= PROBABILITY
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else:
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self.curvature_gmac.reset_data()
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# Slower lead detection - Credit goes to the DragonPilot team!
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def slow_lead(self, mpc, radarState, v_ego):
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if not self.lead_detected and self.lead_detected_previously:
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self.slow_lead_gmac.reset_data()
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self.slower_lead_detected = False
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if self.lead_detected and v_ego >= 0.01:
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self.slow_lead_gmac.add_data(radarState.leadOne.dRel < (v_ego - 1) * mpc.t_follow)
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self.slower_lead_detected = self.slow_lead_gmac.get_moving_average() >= PROBABILITY
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self.lead_detected_previously = self.lead_detected
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# Stop sign/stop light detection - Credit goes to the DragonPilot team!
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def stop_sign_and_light(self, modelData, v_ego):
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# Check if the model data is consistent and wants to stop
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model_check = len(modelData.orientation.x) == len(modelData.position.x) == TRAJECTORY_SIZE
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model_stopping = modelData.position.x[TRAJECTORY_SIZE - 1] < interp(v_ego * CV.MS_TO_KPH, SLOW_DOWN_BP, SLOW_DOWN_DISTANCE)
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self.slow_down_gmac.add_data(model_check and model_stopping and not self.curve_detected and not self.slower_lead_detected)
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self.red_light_detected = self.slow_down_gmac.get_moving_average() >= PROBABILITY
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def update_frogpilot_params(self, is_metric, params):
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self.curves = params.get_bool("CECurves")
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self.curves_lead = params.get_bool("CECurvesLead")
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self.experimental_mode_via_press = params.get_bool("ExperimentalModeActivation")
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self.limit = params.get_int("CESpeed") * (CV.KPH_TO_MS if is_metric else CV.MPH_TO_MS)
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self.limit_lead = params.get_int("CESpeedLead") * (CV.KPH_TO_MS if is_metric else CV.MPH_TO_MS)
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self.navigation = params.get_bool("CENavigation")
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self.signal = params.get_bool("CESignal")
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self.slower_lead = params.get_bool("CESlowerLead")
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self.stop_lights = params.get_bool("CEStopLights")
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self.stop_lights_lead = params.get_bool("CEStopLightsLead")
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