| """Deep Q learning graph |
| |
| The functions in this file can are used to create the following functions: |
| |
| ======= act ======== |
| |
| Function to chose an action given an observation |
| |
| Parameters |
| ---------- |
| observation: object |
| Observation that can be feed into the output of make_obs_ph |
| stochastic: bool |
| if set to False all the actions are always deterministic (default False) |
| update_eps_ph: float |
| update epsilon a new value, if negative no update happens |
| (default: no update) |
| |
| Returns |
| ------- |
| Tensor of dtype tf.int64 and shape (BATCH_SIZE,) with an action to be performed for |
| every element of the batch. |
| |
| |
| ======= act (in case of parameter noise) ======== |
| |
| Function to chose an action given an observation |
| |
| Parameters |
| ---------- |
| observation: object |
| Observation that can be feed into the output of make_obs_ph |
| stochastic: bool |
| if set to False all the actions are always deterministic (default False) |
| update_eps_ph: float |
| update epsilon to a new value, if negative no update happens |
| (default: no update) |
| reset_ph: bool |
| reset the perturbed policy by sampling a new perturbation |
| update_param_noise_threshold_ph: float |
| the desired threshold for the difference between non-perturbed and perturbed policy |
| update_param_noise_scale_ph: bool |
| whether or not to update the scale of the noise for the next time it is re-perturbed |
| |
| Returns |
| ------- |
| Tensor of dtype tf.int64 and shape (BATCH_SIZE,) with an action to be performed for |
| every element of the batch. |
| |
| |
| ======= train ======= |
| |
| Function that takes a transition (s,a,r,s') and optimizes Bellman equation's error: |
| |
| td_error = Q(s,a) - (r + gamma * max_a' Q(s', a')) |
| loss = huber_loss[td_error] |
| |
| Parameters |
| ---------- |
| obs_t: object |
| a batch of observations |
| action: np.array |
| actions that were selected upon seeing obs_t. |
| dtype must be int32 and shape must be (batch_size,) |
| reward: np.array |
| immediate reward attained after executing those actions |
| dtype must be float32 and shape must be (batch_size,) |
| obs_tp1: object |
| observations that followed obs_t |
| done: np.array |
| 1 if obs_t was the last observation in the episode and 0 otherwise |
| obs_tp1 gets ignored, but must be of the valid shape. |
| dtype must be float32 and shape must be (batch_size,) |
| weight: np.array |
| imporance weights for every element of the batch (gradient is multiplied |
| by the importance weight) dtype must be float32 and shape must be (batch_size,) |
| |
| Returns |
| ------- |
| td_error: np.array |
| a list of differences between Q(s,a) and the target in Bellman's equation. |
| dtype is float32 and shape is (batch_size,) |
| |
| ======= update_target ======== |
| |
| copy the parameters from optimized Q function to the target Q function. |
| In Q learning we actually optimize the following error: |
| |
| Q(s,a) - (r + gamma * max_a' Q'(s', a')) |
| |
| Where Q' is lagging behind Q to stablize the learning. For example for Atari |
| |
| Q' is set to Q once every 10000 updates training steps. |
| |
| """ |
| import tensorflow as tf |
| import baselines.common.tf_util as U |
|
|
|
|
| def scope_vars(scope, trainable_only=False): |
| """ |
| Get variables inside a scope |
| The scope can be specified as a string |
| Parameters |
| ---------- |
| scope: str or VariableScope |
| scope in which the variables reside. |
| trainable_only: bool |
| whether or not to return only the variables that were marked as trainable. |
| Returns |
| ------- |
| vars: [tf.Variable] |
| list of variables in `scope`. |
| """ |
| return tf.compat.v1.get_collection( |
| tf.compat.v1.GraphKeys.TRAINABLE_VARIABLES if trainable_only else tf.compat.v1.GraphKeys.GLOBAL_VARIABLES, |
| scope=scope if isinstance(scope, str) else scope.name |
| ) |
|
|
|
|
| def scope_name(): |
| """Returns the name of current scope as a string, e.g. deepq/q_func""" |
| return tf.compat.v1.get_variable_scope().name |
|
|
|
|
| def absolute_scope_name(relative_scope_name): |
| """Appends parent scope name to `relative_scope_name`""" |
| return scope_name() + "/" + relative_scope_name |
|
|
|
|
| def default_param_noise_filter(var): |
| if var not in tf.compat.v1.trainable_variables(): |
| |
| return False |
| if "fully_connected" in var.name: |
| |
| return True |
|
|
| |
| |
| |
| |
| return False |
|
|
|
|
| def build_act(make_obs_ph, q_func, num_actions, scope="deepq", reuse=None): |
| """Creates the act function: |
| |
| Parameters |
| ---------- |
| make_obs_ph: str -> tf.placeholder or TfInput |
| a function that take a name and creates a placeholder of input with that name |
| q_func: (tf.Variable, int, str, bool) -> tf.Variable |
| the model that takes the following inputs: |
| observation_in: object |
| the output of observation placeholder |
| num_actions: int |
| number of actions |
| scope: str |
| reuse: bool |
| should be passed to outer variable scope |
| and returns a tensor of shape (batch_size, num_actions) with values of every action. |
| num_actions: int |
| number of actions. |
| scope: str or VariableScope |
| optional scope for variable_scope. |
| reuse: bool or None |
| whether or not the variables should be reused. To be able to reuse the scope must be given. |
| |
| Returns |
| ------- |
| act: (tf.Variable, bool, float) -> tf.Variable |
| function to select and action given observation. |
| ` See the top of the file for details. |
| """ |
| with tf.compat.v1.variable_scope(scope, reuse=reuse): |
| observations_ph = make_obs_ph("observation") |
| stochastic_ph = tf.compat.v1.placeholder(tf.bool, (), name="stochastic") |
| update_eps_ph = tf.compat.v1.placeholder(tf.float32, (), name="update_eps") |
|
|
| eps = tf.compat.v1.get_variable("eps", (), initializer=tf.compat.v1.constant_initializer(0)) |
|
|
| q_values = q_func(observations_ph.get(), num_actions, scope="q_func") |
| deterministic_actions = tf.argmax(input=q_values, axis=1) |
|
|
| batch_size = tf.shape(input=observations_ph.get())[0] |
| random_actions = tf.random.uniform(tf.stack([batch_size]), minval=0, maxval=num_actions, dtype=tf.int64) |
| chose_random = tf.random.uniform(tf.stack([batch_size]), minval=0, maxval=1, dtype=tf.float32) < eps |
| stochastic_actions = tf.compat.v1.where(chose_random, random_actions, deterministic_actions) |
|
|
| output_actions = tf.cond(pred=stochastic_ph, true_fn=lambda: stochastic_actions, false_fn=lambda: deterministic_actions) |
| update_eps_expr = eps.assign(tf.cond(pred=update_eps_ph >= 0, true_fn=lambda: update_eps_ph, false_fn=lambda: eps)) |
| _act = U.function(inputs=[observations_ph, stochastic_ph, update_eps_ph], |
| outputs=output_actions, |
| givens={update_eps_ph: -1.0, stochastic_ph: True}, |
| updates=[update_eps_expr]) |
| def act(ob, stochastic=True, update_eps=-1): |
| return _act(ob, stochastic, update_eps) |
| return act |
|
|
|
|
| def build_act_with_param_noise(make_obs_ph, q_func, num_actions, scope="deepq", reuse=None, param_noise_filter_func=None): |
| """Creates the act function with support for parameter space noise exploration (https://arxiv.org/abs/1706.01905): |
| |
| Parameters |
| ---------- |
| make_obs_ph: str -> tf.placeholder or TfInput |
| a function that take a name and creates a placeholder of input with that name |
| q_func: (tf.Variable, int, str, bool) -> tf.Variable |
| the model that takes the following inputs: |
| observation_in: object |
| the output of observation placeholder |
| num_actions: int |
| number of actions |
| scope: str |
| reuse: bool |
| should be passed to outer variable scope |
| and returns a tensor of shape (batch_size, num_actions) with values of every action. |
| num_actions: int |
| number of actions. |
| scope: str or VariableScope |
| optional scope for variable_scope. |
| reuse: bool or None |
| whether or not the variables should be reused. To be able to reuse the scope must be given. |
| param_noise_filter_func: tf.Variable -> bool |
| function that decides whether or not a variable should be perturbed. Only applicable |
| if param_noise is True. If set to None, default_param_noise_filter is used by default. |
| |
| Returns |
| ------- |
| act: (tf.Variable, bool, float, bool, float, bool) -> tf.Variable |
| function to select and action given observation. |
| ` See the top of the file for details. |
| """ |
| if param_noise_filter_func is None: |
| param_noise_filter_func = default_param_noise_filter |
|
|
| with tf.compat.v1.variable_scope(scope, reuse=reuse): |
| observations_ph = make_obs_ph("observation") |
| stochastic_ph = tf.compat.v1.placeholder(tf.bool, (), name="stochastic") |
| update_eps_ph = tf.compat.v1.placeholder(tf.float32, (), name="update_eps") |
| update_param_noise_threshold_ph = tf.compat.v1.placeholder(tf.float32, (), name="update_param_noise_threshold") |
| update_param_noise_scale_ph = tf.compat.v1.placeholder(tf.bool, (), name="update_param_noise_scale") |
| reset_ph = tf.compat.v1.placeholder(tf.bool, (), name="reset") |
|
|
| eps = tf.compat.v1.get_variable("eps", (), initializer=tf.compat.v1.constant_initializer(0)) |
| param_noise_scale = tf.compat.v1.get_variable("param_noise_scale", (), initializer=tf.compat.v1.constant_initializer(0.01), trainable=False) |
| param_noise_threshold = tf.compat.v1.get_variable("param_noise_threshold", (), initializer=tf.compat.v1.constant_initializer(0.05), trainable=False) |
|
|
| |
| q_values = q_func(observations_ph.get(), num_actions, scope="q_func") |
|
|
| |
| q_values_perturbed = q_func(observations_ph.get(), num_actions, scope="perturbed_q_func") |
| |
| |
| |
| def perturb_vars(original_scope, perturbed_scope): |
| all_vars = scope_vars(absolute_scope_name(original_scope)) |
| all_perturbed_vars = scope_vars(absolute_scope_name(perturbed_scope)) |
| assert len(all_vars) == len(all_perturbed_vars) |
| perturb_ops = [] |
| for var, perturbed_var in zip(all_vars, all_perturbed_vars): |
| if param_noise_filter_func(perturbed_var): |
| |
| op = tf.compat.v1.assign(perturbed_var, var + tf.random.normal(shape=tf.shape(input=var), mean=0., stddev=param_noise_scale)) |
| else: |
| |
| op = tf.compat.v1.assign(perturbed_var, var) |
| perturb_ops.append(op) |
| assert len(perturb_ops) == len(all_vars) |
| return tf.group(*perturb_ops) |
|
|
| |
| |
| |
| q_values_adaptive = q_func(observations_ph.get(), num_actions, scope="adaptive_q_func") |
| perturb_for_adaption = perturb_vars(original_scope="q_func", perturbed_scope="adaptive_q_func") |
| kl = tf.reduce_sum(input_tensor=tf.nn.softmax(q_values) * (tf.math.log(tf.nn.softmax(q_values)) - tf.math.log(tf.nn.softmax(q_values_adaptive))), axis=-1) |
| mean_kl = tf.reduce_mean(input_tensor=kl) |
| def update_scale(): |
| with tf.control_dependencies([perturb_for_adaption]): |
| update_scale_expr = tf.cond(pred=mean_kl < param_noise_threshold, |
| true_fn=lambda: param_noise_scale.assign(param_noise_scale * 1.01), |
| false_fn=lambda: param_noise_scale.assign(param_noise_scale / 1.01), |
| ) |
| return update_scale_expr |
|
|
| |
| update_param_noise_threshold_expr = param_noise_threshold.assign(tf.cond(pred=update_param_noise_threshold_ph >= 0, |
| true_fn=lambda: update_param_noise_threshold_ph, false_fn=lambda: param_noise_threshold)) |
|
|
| |
| deterministic_actions = tf.argmax(input=q_values_perturbed, axis=1) |
| batch_size = tf.shape(input=observations_ph.get())[0] |
| random_actions = tf.random.uniform(tf.stack([batch_size]), minval=0, maxval=num_actions, dtype=tf.int64) |
| chose_random = tf.random.uniform(tf.stack([batch_size]), minval=0, maxval=1, dtype=tf.float32) < eps |
| stochastic_actions = tf.compat.v1.where(chose_random, random_actions, deterministic_actions) |
|
|
| output_actions = tf.cond(pred=stochastic_ph, true_fn=lambda: stochastic_actions, false_fn=lambda: deterministic_actions) |
| update_eps_expr = eps.assign(tf.cond(pred=update_eps_ph >= 0, true_fn=lambda: update_eps_ph, false_fn=lambda: eps)) |
| updates = [ |
| update_eps_expr, |
| tf.cond(pred=reset_ph, true_fn=lambda: perturb_vars(original_scope="q_func", perturbed_scope="perturbed_q_func"), false_fn=lambda: tf.group(*[])), |
| tf.cond(pred=update_param_noise_scale_ph, true_fn=lambda: update_scale(), false_fn=lambda: tf.Variable(0., trainable=False)), |
| update_param_noise_threshold_expr, |
| ] |
| _act = U.function(inputs=[observations_ph, stochastic_ph, update_eps_ph, reset_ph, update_param_noise_threshold_ph, update_param_noise_scale_ph], |
| outputs=output_actions, |
| givens={update_eps_ph: -1.0, stochastic_ph: True, reset_ph: False, update_param_noise_threshold_ph: False, update_param_noise_scale_ph: False}, |
| updates=updates) |
| def act(ob, reset=False, update_param_noise_threshold=False, update_param_noise_scale=False, stochastic=True, update_eps=-1): |
| return _act(ob, stochastic, update_eps, reset, update_param_noise_threshold, update_param_noise_scale) |
| return act |
|
|
|
|
| def build_train(make_obs_ph, q_func, num_actions, optimizer, grad_norm_clipping=None, gamma=1.0, |
| double_q=True, scope="deepq", reuse=None, param_noise=False, param_noise_filter_func=None): |
| """Creates the train function: |
| |
| Parameters |
| ---------- |
| make_obs_ph: str -> tf.placeholder or TfInput |
| a function that takes a name and creates a placeholder of input with that name |
| q_func: (tf.Variable, int, str, bool) -> tf.Variable |
| the model that takes the following inputs: |
| observation_in: object |
| the output of observation placeholder |
| num_actions: int |
| number of actions |
| scope: str |
| reuse: bool |
| should be passed to outer variable scope |
| and returns a tensor of shape (batch_size, num_actions) with values of every action. |
| num_actions: int |
| number of actions |
| reuse: bool |
| whether or not to reuse the graph variables |
| optimizer: tf.train.Optimizer |
| optimizer to use for the Q-learning objective. |
| grad_norm_clipping: float or None |
| clip gradient norms to this value. If None no clipping is performed. |
| gamma: float |
| discount rate. |
| double_q: bool |
| if true will use Double Q Learning (https://arxiv.org/abs/1509.06461). |
| In general it is a good idea to keep it enabled. |
| scope: str or VariableScope |
| optional scope for variable_scope. |
| reuse: bool or None |
| whether or not the variables should be reused. To be able to reuse the scope must be given. |
| param_noise: bool |
| whether or not to use parameter space noise (https://arxiv.org/abs/1706.01905) |
| param_noise_filter_func: tf.Variable -> bool |
| function that decides whether or not a variable should be perturbed. Only applicable |
| if param_noise is True. If set to None, default_param_noise_filter is used by default. |
| |
| Returns |
| ------- |
| act: (tf.Variable, bool, float) -> tf.Variable |
| function to select and action given observation. |
| ` See the top of the file for details. |
| train: (object, np.array, np.array, object, np.array, np.array) -> np.array |
| optimize the error in Bellman's equation. |
| ` See the top of the file for details. |
| update_target: () -> () |
| copy the parameters from optimized Q function to the target Q function. |
| ` See the top of the file for details. |
| debug: {str: function} |
| a bunch of functions to print debug data like q_values. |
| """ |
| if param_noise: |
| act_f = build_act_with_param_noise(make_obs_ph, q_func, num_actions, scope=scope, reuse=reuse, |
| param_noise_filter_func=param_noise_filter_func) |
| else: |
| act_f = build_act(make_obs_ph, q_func, num_actions, scope=scope, reuse=reuse) |
|
|
| with tf.compat.v1.variable_scope(scope, reuse=reuse): |
| |
| obs_t_input = make_obs_ph("obs_t") |
| act_t_ph = tf.compat.v1.placeholder(tf.int32, [None], name="action") |
| rew_t_ph = tf.compat.v1.placeholder(tf.float32, [None], name="reward") |
| obs_tp1_input = make_obs_ph("obs_tp1") |
| done_mask_ph = tf.compat.v1.placeholder(tf.float32, [None], name="done") |
| importance_weights_ph = tf.compat.v1.placeholder(tf.float32, [None], name="weight") |
|
|
| |
| q_t = q_func(obs_t_input.get(), num_actions, scope="q_func", reuse=True) |
| q_func_vars = tf.compat.v1.get_collection(tf.compat.v1.GraphKeys.GLOBAL_VARIABLES, scope=tf.compat.v1.get_variable_scope().name + "/q_func") |
|
|
| |
| q_tp1 = q_func(obs_tp1_input.get(), num_actions, scope="target_q_func") |
| target_q_func_vars = tf.compat.v1.get_collection(tf.compat.v1.GraphKeys.GLOBAL_VARIABLES, scope=tf.compat.v1.get_variable_scope().name + "/target_q_func") |
|
|
| |
| q_t_selected = tf.reduce_sum(input_tensor=q_t * tf.one_hot(act_t_ph, num_actions), axis=1) |
|
|
| |
| if double_q: |
| q_tp1_using_online_net = q_func(obs_tp1_input.get(), num_actions, scope="q_func", reuse=True) |
| q_tp1_best_using_online_net = tf.argmax(input=q_tp1_using_online_net, axis=1) |
| q_tp1_best = tf.reduce_sum(input_tensor=q_tp1 * tf.one_hot(q_tp1_best_using_online_net, num_actions), axis=1) |
| else: |
| q_tp1_best = tf.reduce_max(input_tensor=q_tp1, axis=1) |
| q_tp1_best_masked = (1.0 - done_mask_ph) * q_tp1_best |
|
|
| |
| q_t_selected_target = rew_t_ph + gamma * q_tp1_best_masked |
|
|
| |
| td_error = q_t_selected - tf.stop_gradient(q_t_selected_target) |
| errors = U.huber_loss(td_error) |
| weighted_error = tf.reduce_mean(input_tensor=importance_weights_ph * errors) |
|
|
| |
| if grad_norm_clipping is not None: |
| gradients = optimizer.compute_gradients(weighted_error, var_list=q_func_vars) |
| for i, (grad, var) in enumerate(gradients): |
| if grad is not None: |
| gradients[i] = (tf.clip_by_norm(grad, grad_norm_clipping), var) |
| optimize_expr = optimizer.apply_gradients(gradients) |
| else: |
| optimize_expr = optimizer.minimize(weighted_error, var_list=q_func_vars) |
|
|
| |
| update_target_expr = [] |
| for var, var_target in zip(sorted(q_func_vars, key=lambda v: v.name), |
| sorted(target_q_func_vars, key=lambda v: v.name)): |
| update_target_expr.append(var_target.assign(var)) |
| update_target_expr = tf.group(*update_target_expr) |
|
|
| |
| train = U.function( |
| inputs=[ |
| obs_t_input, |
| act_t_ph, |
| rew_t_ph, |
| obs_tp1_input, |
| done_mask_ph, |
| importance_weights_ph |
| ], |
| outputs=td_error, |
| updates=[optimize_expr] |
| ) |
| update_target = U.function([], [], updates=[update_target_expr]) |
|
|
| q_values = U.function([obs_t_input], q_t) |
|
|
| return act_f, train, update_target, {'q_values': q_values} |
|
|