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Commit 3d1219e3 authored by Erik Nygren's avatar Erik Nygren
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Commented functions for better understanding

parent 21dba5da
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......@@ -50,12 +50,19 @@ def norm_obs_clip(obs, clip_min=-1, clip_max=1):
def split_tree(tree, num_features_per_node=8, current_depth=0):
"""
:param tree:
:param num_features_per_node:
:param prompt:
:param current_depth:
:return:
Splits the tree observation into different sub groups that need the same normalization.
This is necessary because the tree observation includes two different distance:
1. Distance from the agent --> This is measured in cells from current agent location
2. Distance to targer --> This is measured as distance from cell to agent target
3. Binary data --> Contains information about presence of object --> No normalization necessary
Number 1. will depend on the depth and size of the tree search
Number 2. will depend on the size of the map and thus the max distance on the map
Number 3. Is independent of tree depth and map size and thus must be handled differently
Therefore we split the tree into these two classes for better normalization.
:param tree: Tree that needs to be split
:param num_features_per_node: Features per node ATTENTION! this parameter is vital to correct splitting of the tree.
:param current_depth: Keeping track of the current depth in the tree
:return: Returns the three different groups of distance and binary values.
"""
if len(tree) < num_features_per_node:
......@@ -69,9 +76,15 @@ def split_tree(tree, num_features_per_node=8, current_depth=0):
depth += 1
pow4 *= 4
child_size = (len(tree) - num_features_per_node) // 4
"""
Here we split the node features into the different classes of distances and binary values.
Pay close attention to this part if you modify any of the features in the tree observation.
"""
tree_data = tree[:4].tolist()
distance_data = [tree[4]]
agent_data = tree[5:num_features_per_node].tolist()
# Split each child of the current node and continue to next depth level
for children in range(4):
child_tree = tree[(num_features_per_node + children * child_size):
(num_features_per_node + (children + 1) * child_size)]
......
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