{ "cells": [ { "cell_type": "markdown", "metadata": {}, "source": [ "\n", "\n", "# Welcome to Young Driver - level 2 of the McLaren Maze Race!\n", "\n", "In this level, things take a serious step up from the Learner Driver level. Firstly the mazes are a lot larger and more complex than those you have encoutnered so far. In particular, they contain choices of direction at certain turns; one direction is correct and one leads to a dead end. Let's take a look at one:" ] }, { "cell_type": "code", "execution_count": 1, "metadata": { "pycharm": { "is_executing": true }, "scrolled": false }, "outputs": [ { "data": { "application/vnd.jupyter.widget-view+json": { "model_id": "5b242713aeba4a20979886cb03047c5d", "version_major": 2, "version_minor": 0 }, "text/plain": [ "Canvas(toolbar=Toolbar(toolitems=[('Home', 'Reset original view', 'home', 'home'), ('Back', 'Back to previous …" ] }, "metadata": {}, "output_type": "display_data" } ], "source": [ "%matplotlib widget\n", "from imports import * \n", "\n", "track = TrackStore.load_track(level=Level.Young, index=1) # provide the level and, optionally, an index. If no index\n", " # is provided a random track will be loaded.\n", "track.plot_track(); # a useful method to display the track" ] }, { "cell_type": "markdown", "metadata": {}, "source": [ "We can see that some of the turns have only one way to go but several of them have two. A simple starting strategy would be to just choose a direction randomly. If we get it wrong then the driver will need to learn to brake to a halt then turn around and head back in the other direction. To build a true race-winning AI, however, we will need to figure out a way of choosing the right direction - more on this later!\n", "\n", "### Safety Car\n", "Now let's consider the second challenge of level 2: safety cars. No driver is allowed out on track without understanding the rules of the safety car. In our Maze Race, the rules are as follows:\n", "- A safety car can be deployed by Race Control at any point\n", "- Drivers will be notified that a safety car is active via the `TrackState.safety_car_active` variable passed to the `Driver.make_a_move` method\n", "- When the safety car is active no driver may exceed the safety car speed\n", "- Any driver who does exceed this speed will be given a penalty that increases in severity each turn the driver breaks the speed limit\n", "- The safety car will be withdrawn after a certain number of moves\n", "- Feedback on whether the current car speed is acceptable will be given to the driver via the `ActionResult.safety_car_speed_exceeded` field passed to the driver after each move\n", "- Critically, **the driver is not told what the safety car speed is!** The AI must work out what this is by itself.\n", "- Furthermore, **the safety car speed will be different each time it is deployed**. Driver's which can quickly figure out the right speed to drive at will gain a benefit- The current penalty level a driver is at is reported to the driver in the `ActionResult.safety_car_penalty_level` field. A wise driver will adapt their behaviour depending on the current penalty level.\n", "\n", "The safety car rules need to be taken seriously. The penalties will quickly build up and ruin our driver's chances if our AI doesn't adapt to the deployment of a safety car. A simple way of handling the safety car would be to add the deployment status to our state vector, i.e.,\n", "
state = [rounded speed, distance ahead, safety car deployed]
\n", "\n", "However, this has some big downsides. Firstly, it increases the size of the state space: the Q table will now have 3 dimensions and the driver has to learn what to do in every state with and without the safety car deployed. Secondly, as the safety car speed changes each time it is deployed our Q table would be incorrect for a new safety car and we would need to learn everything again. This won't give us the rapid adaptation that we need.\n", "\n", "Instead, let's introduce a single new variable that our AI needs to learn: `safety_car_speed`. Then in `make_a_move`, if the safety car is deployed and we are going above this speed, we know we need to brake. \n", "\n", " def make_a_move(self, car_state: CarState, track_state: TrackState):\n", " if track_state.safety_car_active:\n", " if car_state.speed > self.safety_car_speed: # safety car active and we are above speed\n", " return Action.LightBrake # ignore everything else and LightBrake\n", "\n", " # Safety car not active, or we are under the speed already - use Q table to determine action\n", " return super().make_a_move(car_state, track_state)\n", "\n", "But how can we learn what the speed is? Well the simplest approach is to start with it set to an arbitrary value, then, if we receive a safety car penalty we can decrease the learnt `safety_car_speed` to the speed we were travelling when we were penalised. Conversely, if we didn't receive any penalty then we know that this is a safe speed.\n", "\n", " if previous_track_state.safety_car_active:\n", " if result.safety_car_speed_exceeded: # we ended up going too fast so safe speed must be below current speed\n", " self.safety_car_speed = min(self.safety_car_speed, new_car_state.speed - 1)\n", " else: # our current speed is safe so safe speed must be higher\n", " self.safety_car_speed = max(self.safety_car_speed, new_car_state.speed + 1)\n", "\n", "This approach can definitely be improved though. For example, if we are currently under the safe speed then we ignore the safety car and take an action as normal, an action that could easily push us back over the speed limit. It also doesn't allow the AI to choose whether to apply heavy or light braking, something that can make a big difference depending on the driver's current speed. This approach doesn't take the penalty level into account. Whilst the penalty is low, it might be worthwhile for the driver to try and push the speed higher to try and find the limit whereas if the penalty level is high it would probably be better for the driver to play it safe and decrease speed significantly. It is up to you to take up this challenge and build a better AI!\n", "\n", "For now, let's try it out by making use of the `safety_car_sim`. This trains the driver on a simple straight and then turns the safety car on to see how the driver reacts." ] }, { "cell_type": "code", "execution_count": 4, "metadata": { "pycharm": { "is_executing": true, "name": "#%%\n" }, "scrolled": false }, "outputs": [], "source": [ "from drivers.youngdriver import YoungDriver\n", "\n", "driver_name = 'Laniel'\n", "set_seed(0)\n", "car = Car.get_car_for_level(Level.Young) # do this explicitly now for random seed control" ] }, { "cell_type": "code", "execution_count": 5, "metadata": { "scrolled": false }, "outputs": [ { "name": "stdout", "output_type": "stream", "text": [ "Running safety car sim...\n", "Safety car deployed for 50 turns at 100 speed\n", "\tDecreasing estimate of safety car speed to 109.0\n", "\tCar speed of 118.97572783105288 above current safety car estimate of 108.97572783105288 so applying the brakes.\n", "\tDecreasing estimate of safety car speed to 96.6\n", "\tCar speed of 106.64583009627147 above current safety car estimate of 96.64583009627147 so applying the brakes.\n", "Safety car speed estimate of 96.6 already below car speed of 125.7\n", "\tCar speed of 125.73448547481658 above current safety car estimate of 96.64583009627147 so applying the brakes.\n", "Safety car speed estimate of 96.6 already below car speed of 112.7\n", "\tCar speed of 112.7041525161371 above current safety car estimate of 96.64583009627147 so applying the brakes.\n", "\tDecreasing estimate of safety car speed to 91.0\n", "\tCar speed of 101.02420148627266 above current safety car estimate of 91.02420148627266 so applying the brakes.\n", "\tIncreasing estimate of safety car speed to 91.6\n", "Safety car speed estimate of 91.6 already below car speed of 108.6\n", "\tCar speed of 108.63763992227742 above current safety car estimate of 91.55468727718551 so applying the brakes.\n", "\tIncreasing estimate of safety car speed to 98.4\n", "Safety car speed estimate of 98.4 already below car speed of 127.3\n", "\tCar speed of 127.25661149257263 above current safety car estimate of 98.37911673600381 so applying the brakes.\n", "Safety car speed estimate of 98.4 already below car speed of 114.1\n", "\tCar speed of 114.06853494635207 above current safety car estimate of 98.37911673600381 so applying the brakes.\n", "\tDecreasing estimate of safety car speed to 92.2\n", "\tCar speed of 102.24718788435264 above current safety car estimate of 92.24718788435264 so applying the brakes.\n", "\tIncreasing estimate of safety car speed to 92.7\n", "Safety car speed estimate of 92.7 already below car speed of 122.4\n", "\tCar speed of 122.37307633517632 above current safety car estimate of 92.65093104049238 so applying the brakes.\n", "Safety car speed estimate of 92.7 already below car speed of 109.7\n", "\tCar speed of 109.69109872335699 above current safety car estimate of 92.65093104049238 so applying the brakes.\n", "\tIncreasing estimate of safety car speed to 99.3\n", "Safety car speed estimate of 99.3 already below car speed of 128.1\n", "\tCar speed of 128.061656747808 above current safety car estimate of 99.3234016784997 so applying the brakes.\n", "Safety car speed estimate of 99.3 already below car speed of 114.8\n", "\tCar speed of 114.7901503638392 above current safety car estimate of 99.3234016784997 so applying the brakes.\n", "\tDecreasing estimate of safety car speed to 92.9\n", "\tCar speed of 102.89401960886592 above current safety car estimate of 92.89401960886592 so applying the brakes.\n", "\tIncreasing estimate of safety car speed to 93.2\n", "Safety car speed estimate of 93.2 already below car speed of 122.9\n", "\tCar speed of 122.8673802512113 above current safety car estimate of 93.23072918462542 so applying the brakes.\n", "Safety car speed estimate of 93.2 already below car speed of 110.1\n", "\tCar speed of 110.13417608381025 above current safety car estimate of 93.23072918462542 so applying the brakes.\n", "\tIncreasing estimate of safety car speed to 99.7\n", "Safety car speed estimate of 99.7 already below car speed of 128.4\n", "\tCar speed of 128.40025311851522 above current safety car estimate of 99.72056128209131 so applying the brakes.\n", "Safety car speed estimate of 99.7 already below car speed of 115.1\n", "\tCar speed of 115.09365673173411 above current safety car estimate of 99.72056128209131 so applying the brakes.\n", "\tDecreasing estimate of safety car speed to 93.2\n", "\tCar speed of 103.16607248161338 above current safety car estimate of 93.16607248161338 so applying the brakes.\n", "\tIncreasing estimate of safety car speed to 93.5\n", "Safety car speed estimate of 93.5 already below car speed of 123.1\n", "\tCar speed of 123.0752810007746 above current safety car estimate of 93.4745882050588 so applying the brakes.\n", "Safety car speed estimate of 93.5 already below car speed of 110.3\n", "\tCar speed of 110.32053130448432 above current safety car estimate of 93.4745882050588 so applying the brakes.\n", "\tIncreasing estimate of safety car speed to 99.9\n", "Safety car speed estimate of 99.9 already below car speed of 128.5\n", "\tCar speed of 128.54266436994553 above current safety car estimate of 99.88760381726942 so applying the brakes.\n", "Safety car speed estimate of 99.9 already below car speed of 115.2\n", "\tCar speed of 115.22130937484633 above current safety car estimate of 99.88760381726942 so applying the brakes.\n", "\tDecreasing estimate of safety car speed to 93.3\n", "\tCar speed of 103.28049600594782 above current safety car estimate of 93.28049600594782 so applying the brakes.\n", "\tIncreasing estimate of safety car speed to 93.6\n", "Safety car speed estimate of 93.6 already below car speed of 123.2\n", "\tCar speed of 123.16272259342004 above current safety car estimate of 93.57715359345899 so applying the brakes.\n", "Safety car speed estimate of 93.6 already below car speed of 110.4\n", "\tCar speed of 110.3989109992558 above current safety car estimate of 93.57715359345899 so applying the brakes.\n", "\tIncreasing estimate of safety car speed to 100.0\n", "Safety car speed estimate of 100.0 already below car speed of 128.6\n", "\tCar speed of 128.60256154040718 above current safety car estimate of 99.95786073238968 so applying the brakes.\n", "Safety car speed estimate of 100.0 already below car speed of 115.3\n", "\tCar speed of 115.27499917847898 above current safety car estimate of 99.95786073238968 so applying the brakes.\n", "\tDecreasing estimate of safety car speed to 93.3\n", "\tCar speed of 103.32862173529189 above current safety car estimate of 93.32862173529189 so applying the brakes.\n", "\tIncreasing estimate of safety car speed to 93.6\n", "Safety car speed estimate of 93.6 already below car speed of 123.2\n", "\tCar speed of 123.19949991211868 above current safety car estimate of 93.62029187425333 so applying the brakes.\n", "Safety car speed estimate of 93.6 already below car speed of 110.4\n" ] }, { "data": { "application/vnd.jupyter.widget-view+json": { "model_id": "4824c68102594762a13c8a0cb7916f1e", "version_major": 2, "version_minor": 0 }, "text/plain": [ "Canvas(toolbar=Toolbar(toolitems=[('Home', 'Reset original view', 'home', 'home'), ('Back', 'Back to previous …" ] }, "metadata": {}, "output_type": "display_data" }, { "name": "stdout", "output_type": "stream", "text": [ "Complete\n" ] } ], "source": [ "driver = YoungDriver(driver_name, random_action_probability=1, random_action_decay=0.99, max_distance=1, batch_learn=False)\n", "\n", "# Run the safety car sim\n", "set_seed(0)\n", "car_speed, safety_car_estimate, safety_car_true, safety_car_penalty = safety_car_sim(driver, level=Level.Young)" ] }, { "cell_type": "markdown", "metadata": {}, "source": [ "We can see that the driver is able to estimate the safety car speed to a reasonable accuracy quite quickly. The AI will slow the car down if it is travelling faster than the estimated safety car speed, however, as soon as the driver is below the required speed it accelerates again and so keeps incurring a penalty. To improve this we need some way of predicting whether we are going to break the speed cap next turn if we apply an action - we will introduce this at the next level. For the moment, we could add a margin to the safety car limit and prevent the driver from acelerating within this; or perhaps you can think of something better? We leave this in your hands!\n", "\n", "### Learning to navigate\n", "Now we have some sort of strategy in place for the safety car, let's return to the problem of figuring out which way to turn at a branch point. Making a wrong turn and ending up in a dead end isn't a race ending mistake because, once we have turned around, we will be facing the right direction and will be swiftly back on track. Still, the time lost taking a dead end route might cost you victory.\n", "\n", "Our problem is that the state doesn't give us enough information to work out which is the correct direction - we only get the length of the straight to the left and the right. If we are to be able to do better than random guessing there needs to be some structure in the distribution of correct turn directions that we can learn and exploit. A common approach in this situation is to create some exploratory plots to see if we can find any relationshio that we can use. " ] }, { "cell_type": "code", "execution_count": 6, "metadata": { "pycharm": { "is_executing": true }, "scrolled": false }, "outputs": [ { "data": { "application/vnd.jupyter.widget-view+json": { "model_id": "50435abf4e824340a4305c2e0bf690da", "version_major": 2, "version_minor": 0 }, "text/plain": [ "Canvas(toolbar=Toolbar(toolitems=[('Home', 'Reset original view', 'home', 'home'), ('Back', 'Back to previous …" ] }, "metadata": {}, "output_type": "display_data" } ], "source": [ "left_turn_positions = []\n", "right_turn_positions = []\n", "for track in TrackStore.load_all_tracks(level=Level.Young):\n", " for position, turn_action in track.correct_turns.items():\n", " if Action.TurnLeft == turn_action:\n", " left_turn_positions.append((position.row, position.column))\n", " else:\n", " right_turn_positions.append((position.row, position.column))\n", "left_turn_positions = np.array(left_turn_positions)\n", "right_turn_positions = np.array(right_turn_positions)\n", " \n", "fig = plt.figure()\n", "plt.plot(left_turn_positions[:, 1], left_turn_positions[:, 0], 'r+')\n", "plt.plot(right_turn_positions[:, 1], right_turn_positions[:, 0], 'g+')\n", "plt.legend(['Left turns', 'Right turns'], fontsize=14);\n", "fig.gca().invert_yaxis()\n" ] }, { "cell_type": "markdown", "metadata": {}, "source": [ "We can see that the correct direction to turn is stongly clustered across all the tracks - the turns in one area of the maze are always in the the same direction. We can't guarantee that the exact mapping from position to turn direction will be the same at different levels and in the Challenge (hint - it won't) so we need our AI driver to be able to learn and adapt as it sees where the correct turns are. The easiest way of implementing this is to use a *nearest neighbour* model. For this, we need to record the position of each correct turn. Helpfully, after each race our driver is given the positions of all the correct turns to learn from, so we can implement our learning like this,\n", "\n", " def update_after_race(self, correct_turns: Dict[Position, Action]):\n", " # Called after the race by RaceControl\n", " self.correct_turns.update(correct_turns) # dictionary mapping Position -> TurnLeft or TurnRight\n", "\n", "\n", "Then when we have to make a decision we will look for the closest turn we have previously recorded and choose the same action as that:\n", "\n", " def _choose_turn_direction(self, track_state: TrackState):\n", " # Check if we need to make a decision about which way to turn\n", " if track_state.distance_left > 0 and track_state.distance_right > 0: # both options available, need to decide\n", " if len(self.correct_turns) > 0:\n", " # Find the closest turn we have seen previously and turn in the same direction\n", " distances = np.array([track_state.position.distance_to(turn_position)\n", " for turn_position in self.correct_turns]) # Euclidean distance\n", " i_closest = np.argmin(distances)\n", " return list(self.correct_turns.values())[i_closest]\n", " else: # First race, no data yet so choose randomly\n", " return np.random.choice([Action.TurnLeft, Action.TurnRight])\n", "\n", "Let's test this out by running our driver over a number of tracks to populate our correct turns list, and then watching the driver over a final track." ] }, { "cell_type": "code", "execution_count": 7, "metadata": { "pycharm": { "is_executing": true } }, "outputs": [ { "data": { "image/png": "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\n", "text/plain": [ "Q value = learning rate * new Q value + ( 1 - learning rate ) * old Q value
\n", "\n", "For example, if the learning rate is set to 0.5 the new Q value for a state and action pair will be set to a 50/50 combination of the old value and the new value. Thus, a small learning rate value gives the AI a long 'memory' but makes it slow to adapt to new situations, whereas a learning rate close to 1 means the AI adapts very quickly by forgetting previous rewards.\n", "\n", "Let's create a driver with a higher speed rounding, distance saturation, and a lower learning rate and test it out:" ] }, { "cell_type": "code", "execution_count": 10, "metadata": { "scrolled": false }, "outputs": [ { "data": { "image/png": "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\n", "text/plain": [ "