I have spent weeks now trying to write a Python level Tensorflow code that could communicate with TPUs directly. How would it be possible to implement the system that could run on a TPU without the Estimator API?

Resources I tried:

Ways I tried:

  • Initialized a TPUClusterResolver and passed that as an argument for tf.Session() and it was just hanging without executing the session.run()

  • Also tried sess.run(tpu.initialize_system()) and it got stuck as well

  • Tried looking into the TPUEstimator API as there

def train_model(self, env, episodes=100, 
                    load_model = False,  # load model from checkpoint if available:?
                    model_dir = '/tmp/pgmodel/', log_freq=10 ) :

        # initialize variables and load model
        init_op = tf.global_variables_initializer()
        if load_model:
            ckpt = tf.train.get_checkpoint_state(model_dir)
            print tf.train.latest_checkpoint(model_dir)
            if ckpt and ckpt.model_checkpoint_path:
                savr = tf.train.import_meta_graph(ckpt.model_checkpoint_path+'.meta')
                out = savr.restore(self._sess, ckpt.model_checkpoint_path)
                print("Model restored from ",ckpt.model_checkpoint_path)
                print('No checkpoint found at: ',model_dir)
        if not os.path.exists(model_dir):

        episode = 0
        observation = env.reset()
        xs,rs,ys = [],[],[]    # environment info
        running_reward = 0    
        reward_sum = 0
        # training loop
        day = 0
        simrors = np.zeros(episodes)
        mktrors = np.zeros(episodes)
        alldf = None
        victory = False
        while episode < episodes and not victory:
            # stochastically sample a policy from the network
            x = observation
            feed = {self._tf_x: np.reshape(x, (1,-1))}
            aprob = self._sess.run(self._tf_aprob,feed)
            aprob = aprob[0,:] # we live in a batched world :/

            action = np.random.choice(self._num_actions, p=aprob)
            label = np.zeros_like(aprob) ; label[action] = 1 # make a training 'label'

            # step the environment and get new measurements
            observation, reward, done, info = env.step(action)
            #print observation, reward, done, info
            reward_sum += reward

            # record game history
            day += 1
            if done:
                running_reward = running_reward * 0.99 + reward_sum * 0.01
                epx = np.vstack(xs)
                epr = np.vstack(rs)
                epy = np.vstack(ys)
                xs,rs,ys = [],[],[] # reset game history
                df = env.env.sim.to_df()
                simrors[episode]=df.bod_nav.values[-1]-1 # compound returns

                alldf = df if alldf is None else pd.concat([alldf,df], axis=0)

                feed = {self._tf_x: epx, self._tf_epr: epr, self._tf_y: epy}
                _ = self._sess.run(self._train_op,feed) # parameter update

                if episode % log_freq == 0:
                    log.info('year #%6d, mean reward: %8.4f, sim ret: %8.4f, mkt ret: %8.4f, net: %8.4f', episode,
                             running_reward, simrors[episode],mktrors[episode], simrors[episode]-mktrors[episode])
                    save_path = self._saver.save(self._sess, model_dir+'model.ckpt',
                    if episode > 100:
                        vict = pd.DataFrame( { 'sim': simrors[episode-100:episode],
                                               'mkt': mktrors[episode-100:episode] } )
                        vict['net'] = vict.sim - vict.mkt
                        if vict.net.mean() > 0.0:
                            victory = True
                            log.info('Congratulations, Warren Buffet!  You won the trading game.')
                    #print("Model saved in file: {}".format(save_path))

                episode += 1
                observation = env.reset()
                reward_sum = 0
                day = 0

        return alldf, pd.DataFrame({'simror':simrors,'mktror':mktrors})

Problems I have with the Estimator API implementation:

  • I have a policy gradient based reinforcement learning code that contains a neural network
  • I have two session.run() during my execution. One is running on every step within the episode. The other is running at the end of the episode
  • tf.train.SessionRunHook is not a suitable implementation for my code

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

Browse other questions tagged or ask your own question.