Updated thesis
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@@ -2,7 +2,7 @@ from src.utils.clearml import ClearMLHelper
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#### ClearML ####
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clearml_helper = ClearMLHelper(project_name="Thesis/NrvForecast")
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task = clearml_helper.get_task(task_name="AQR: Linear + Load + Wind + PV + QE + NP")
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task = clearml_helper.get_task(task_name="AQR: Non Linear + Load + Wind + PV + QE + NP")
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task.execute_remotely(queue_name="default", exit_process=True)
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from src.policies.PolicyEvaluator import PolicyEvaluator
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@@ -68,9 +68,9 @@ else:
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model_parameters = {
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"learning_rate": 0.0001,
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"hidden_size": 256,
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"num_layers": 16,
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"num_layers": 8,
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"dropout": 0.2,
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"time_feature_embedding": 2,
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"time_feature_embedding": 5,
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}
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model_parameters = task.connect(model_parameters, name="model_parameters")
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@@ -89,17 +89,17 @@ time_embedding = TimeEmbedding(
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# dropout=model_parameters["dropout"],
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# )
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# non_linear_model = NonLinearRegression(
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# time_embedding.output_dim(inputDim),
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# len(quantiles),
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# hiddenSize=model_parameters["hidden_size"],
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# numLayers=model_parameters["num_layers"],
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# dropout=model_parameters["dropout"],
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# )
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non_linear_model = NonLinearRegression(
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time_embedding.output_dim(inputDim),
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len(quantiles),
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hiddenSize=model_parameters["hidden_size"],
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numLayers=model_parameters["num_layers"],
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dropout=model_parameters["dropout"],
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)
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linear_model = LinearRegression(time_embedding.output_dim(inputDim), len(quantiles))
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# linear_model = LinearRegression(time_embedding.output_dim(inputDim), len(quantiles))
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model = nn.Sequential(time_embedding, linear_model)
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model = nn.Sequential(time_embedding, non_linear_model)
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model.output_size = 1
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optimizer = torch.optim.Adam(model.parameters(), lr=model_parameters["learning_rate"])
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@@ -2,7 +2,7 @@ from src.utils.clearml import ClearMLHelper
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clearml_helper = ClearMLHelper(project_name="Thesis/NrvForecast")
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task = clearml_helper.get_task(
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task_name="Diffusion Training: hidden_sizes=[2048, 2048, 2048, 2048] (300 steps), lr=0.0001, time_dim=8"
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task_name="Diffusion Training: hidden_sizes=[2048, 2048, 2048] (300 steps), lr=0.0001, time_dim=8"
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)
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task.execute_remotely(queue_name="default", exit_process=True)
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@@ -42,7 +42,7 @@ print("Input dim: ", inputDim)
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model_parameters = {
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"epochs": 15000,
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"learning_rate": 0.0001,
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"hidden_sizes": [2048, 2048, 2048, 2048],
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"hidden_sizes": [2048, 2048, 2048],
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"time_dim": 8,
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}
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