85 lines
1.5 KiB
Python
85 lines
1.5 KiB
Python
import torch
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import numpy as np
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from pathlib import Path
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import matplotlib.pyplot as plt
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# All of the following are required to load
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# a pickled model.
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from celeste_ai.celeste import Celeste
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from celeste_ai.network import DQN
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from celeste_ai.network import Transition
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def predicted_reward(
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model_file: Path,
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out_filename: Path,
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*,
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device = torch.device("cpu")
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):
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if not model_file.is_file():
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raise Exception(f"Bad model file {model_file}")
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out_filename.parent.mkdir(exist_ok = True, parents = True)
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# Create and load model
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policy_net = DQN(
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len(Celeste.state_number_map),
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len(Celeste.action_space)
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).to(device)
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checkpoint = torch.load(
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model_file,
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map_location = device
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)
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policy_net.load_state_dict(checkpoint["policy_state_dict"])
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# Compute preditions
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p = np.zeros((128, 128, 9), dtype=np.float32)
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with torch.no_grad():
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for r in range(len(p)):
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for c in range(len(p[r])):
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x = c / 128.0
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y = r / 128.0
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k = np.asarray(policy_net(
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torch.tensor(
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[x, y, 0],
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dtype = torch.float32,
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device = device
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).unsqueeze(0)
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)[0])
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p[r][c] = k
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# Plot predictions
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fig, axs = plt.subplots(2, 5, figsize = (20, 10))
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for a in range(len(axs.ravel())):
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if a >= len(Celeste.action_space):
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continue
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ax = axs.ravel()[a]
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ax.set(
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adjustable = "box",
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aspect = "equal",
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title = Celeste.action_space[a]
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)
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plot = ax.pcolor(
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p[:,:,a],
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cmap = "Greens",
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vmin = 0,
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#vmax = 5
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)
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ax.invert_yaxis()
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fig.colorbar(plot)
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fig.savefig(out_filename)
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plt.close()
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