feat: complete NOT_FOUND but always 50:50
- Notice: comment out RL - Notice: always 50:50, seems there exist some bugs
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@ -35,12 +35,12 @@ class BaseAgent(object):
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self.losses = [] # For learning agents
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def write_results(self):
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output = [{'instr_id':k, 'trajectory': v} for k,v in self.results.items()]
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output = [{'instr_id':k, 'trajectory': v[0], 'found': v[1]} for k,v in self.results.items()]
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with open(self.results_path, 'w') as f:
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json.dump(output, f)
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def get_results(self):
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output = [{'instr_id': k, 'trajectory': v} for k, v in self.results.items()]
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output = [{'instr_id': k, 'trajectory': v[0], 'found': v[1]} for k, v in self.results.items()]
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return output
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def rollout(self, **args):
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@ -61,17 +61,19 @@ class BaseAgent(object):
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if iters is not None:
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# For each time, it will run the first 'iters' iterations. (It was shuffled before)
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for i in range(iters):
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for traj in self.rollout(**kwargs):
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traj, found = self.rollout(**kwargs)
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for index, traj in enumerate(traj):
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self.loss = 0
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self.results[traj['instr_id']] = traj['path']
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self.results[traj['instr_id']] = (traj['path'], found[index])
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else: # Do a full round
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while True:
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for traj in self.rollout(**kwargs):
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traj, found = self.rollout(**kwargs)
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for index, traj in enumerate(traj):
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if traj['instr_id'] in self.results:
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looped = True
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else:
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self.loss = 0
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self.results[traj['instr_id']] = traj['path']
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self.results[traj['instr_id']] = (traj['path'], found[index])
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if looped:
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break
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@ -344,8 +346,6 @@ class Seq2SeqAgent(BaseAgent):
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# Supervised training
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target = self._teacher_action(perm_obs, ended)
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for i in perm_obs:
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print(i['found'], end=' ')
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ml_loss += self.criterion(logit, target)
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@ -390,14 +390,21 @@ class Seq2SeqAgent(BaseAgent):
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cpu_a_t[i] = -2
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print(cpu_a_t)
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# Make action and get the new state
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self.make_equiv_action(cpu_a_t, perm_obs, perm_idx, traj, found)
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print(self.feedback, found)
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'''
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print(self.feedback, end=' ')
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print(cpu_a_t, end=' ')
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for i in perm_obs:
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print(i['found'], end=' ')
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print(found)
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print()
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'''
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obs = np.array(self.env._get_obs())
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perm_obs = obs[perm_idx] # Perm the obs for the resu
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'''
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if train_rl:
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# Calculate the mask and reward
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dist = np.zeros(batch_size, np.float32)
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@ -451,6 +458,7 @@ class Seq2SeqAgent(BaseAgent):
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masks.append(mask)
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last_dist[:] = dist
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last_ndtw[:] = ndtw_score
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'''
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# Update the finished actions
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# -1 means ended or ignored (already ended)
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@ -461,7 +469,7 @@ class Seq2SeqAgent(BaseAgent):
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if ended.all():
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break
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'''
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if train_rl:
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# Last action in A2C
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input_a_t, candidate_feat, candidate_leng = self.get_input_feat(perm_obs)
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@ -472,7 +480,6 @@ class Seq2SeqAgent(BaseAgent):
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visual_attention_mask = torch.cat((language_attention_mask, visual_temp_mask), dim=-1)
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self.vln_bert.vln_bert.config.directions = max(candidate_leng)
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''' Visual BERT '''
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visual_inputs = {'mode': 'visual',
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'sentence': language_features,
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'attention_mask': visual_attention_mask,
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@ -523,6 +530,7 @@ class Seq2SeqAgent(BaseAgent):
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self.loss += rl_loss
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self.logs['RL_loss'].append(rl_loss.item())
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'''
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if train_ml is not None:
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self.loss += ml_loss * train_ml / batch_size
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@ -533,8 +541,7 @@ class Seq2SeqAgent(BaseAgent):
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else:
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self.losses.append(self.loss.item() / self.episode_len) # This argument is useless.
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print('\n')
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return traj
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return traj, found
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def test(self, use_dropout=False, feedback='argmax', allow_cheat=False, iters=None):
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''' Evaluate once on each instruction in the current environment '''
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@ -55,11 +55,16 @@ class Evaluation(object):
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near_d = d
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return near_id
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def _score_item(self, instr_id, path):
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def _score_item(self, instr_id, path, predict_found):
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''' Calculate error based on the final position in trajectory, and also
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the closest position (oracle stopping rule).
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The path contains [view_id, angle, vofv] '''
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gt = self.gt[instr_id.split('_')[-2]]
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index = int(instr_id.split('_')[-1])
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gt_instruction = gt['instructions'][index]
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gt_found = gt['found'][index]
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start = gt['path'][0]
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assert start == path[0][0], 'Result trajectories should include the start position'
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goal = gt['path'][-1]
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@ -68,6 +73,19 @@ class Evaluation(object):
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self.scores['nav_errors'].append(self.distances[gt['scan']][final_position][goal])
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self.scores['oracle_errors'].append(self.distances[gt['scan']][nearest_position][goal])
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self.scores['trajectory_steps'].append(len(path)-1)
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# <STOP> <NOT_FOUND> score
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score = 0
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if gt_found == True:
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if predict_found == -1:
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score = 1
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else:
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if predict_found == -2:
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score = 1
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self.scores['found_count'] += score
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distance = 0 # length of the path in meters
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prev = path[0]
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for curr in path[1:]:
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@ -81,6 +99,7 @@ class Evaluation(object):
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def score(self, output_file):
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''' Evaluate each agent trajectory based on how close it got to the goal location '''
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self.scores = defaultdict(list)
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self.scores['found_count'] = 0
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instr_ids = set(self.instr_ids)
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if type(output_file) is str:
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with open(output_file) as f:
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@ -90,12 +109,14 @@ class Evaluation(object):
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# print('result length', len(results))
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# print("RESULT:", results)
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path_counter = 0
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for item in results:
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# Check against expected ids
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if item['instr_id'] in instr_ids:
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# print("{} exist".format(item['instr_id']))
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instr_ids.remove(item['instr_id'])
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self._score_item(item['instr_id'], item['trajectory'])
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self._score_item(item['instr_id'], item['trajectory'], item['found'])
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path_counter += 1
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else:
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print("{} not exist".format(item['instr_id']))
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print(item)
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@ -108,7 +129,8 @@ class Evaluation(object):
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'nav_error': np.average(self.scores['nav_errors']),
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'oracle_error': np.average(self.scores['oracle_errors']),
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'steps': np.average(self.scores['trajectory_steps']),
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'lengths': np.average(self.scores['trajectory_lengths'])
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'lengths': np.average(self.scores['trajectory_lengths']),
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'found_score': self.scores['found_count'] / path_counter
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}
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num_successes = len([i for i in self.scores['nav_errors'] if i < self.error_margin])
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score_summary['success_rate'] = float(num_successes)/float(len(self.scores['nav_errors']))
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@ -105,6 +105,9 @@ def train(train_env, tok, n_iters, log_every=2000, val_envs={}, aug_env=None):
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# Run validation
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loss_str = "iter {}".format(iter)
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save_results = []
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for env_name, (env, evaluator) in val_envs.items():
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listner.env = env
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@ -112,6 +115,8 @@ def train(train_env, tok, n_iters, log_every=2000, val_envs={}, aug_env=None):
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listner.test(use_dropout=False, feedback='argmax', iters=None)
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result = listner.get_results()
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score_summary, _ = evaluator.score(result)
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print(score_summary)
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loss_str += ", %s " % env_name
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for metric, val in score_summary.items():
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if metric in ['spl']:
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@ -199,7 +204,7 @@ def train_val(test_only=False):
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else:
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featurized_scans = set([key.split("_")[0] for key in list(feat_dict.keys())])
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# val_env_names = ['val_train_seen', 'val_seen', 'val_unseen']
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val_env_names = ['val_unseen']
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val_env_names = ['train','val_unseen']
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train_env = R2RBatch(feat_dict, batch_size=args.batchSize, splits=['train'], tokenizer=tok)
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from collections import OrderedDict
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