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import matplotlib.pyplot as plt
import matplotlib.colors as mcolors
import numpy as np
import json
import os
import os.path as osp

# LOAD FINAL RESULTS:
datasets = ["x_div_y", "x_minus_y", "x_plus_y", "permutation"]
folders = os.listdir("./")
final_results = {}
results_info = {}
for folder in folders:
    if folder.startswith("run") and osp.isdir(folder):
        with open(osp.join(folder, "final_info.json"), "r") as f:
            final_results[folder] = json.load(f)
        results_dict = np.load(
            osp.join(folder, "all_results.npy"), allow_pickle=True
        ).item()
        print(results_dict.keys())
        run_info = {}
        for dataset in datasets:
            run_info[dataset] = {}
            val_losses = []
            train_losses = []
            val_accs = []
            train_accs = []
            for k in results_dict.keys():
                if dataset in k and "val_info" in k:
                    run_info[dataset]["step"] = [
                        info["step"] for info in results_dict[k]
                    ]
                    val_losses.append([info["val_loss"] for info in results_dict[k]])
                    val_accs.append([info["val_accuracy"] for info in results_dict[k]])
                if dataset in k and "train_info" in k:
                    train_losses.append(
                        [info["train_loss"] for info in results_dict[k]]
                    )
                    train_accs.append(
                        [info["train_accuracy"] for info in results_dict[k]]
                    )
                mean_val_losses = np.mean(val_losses, axis=0)
                mean_train_losses = np.mean(train_losses, axis=0)
                mean_val_accs = np.mean(val_accs, axis=0)
                mean_train_accs = np.mean(train_accs, axis=0)
                if len(val_losses) > 0:
                    sterr_val_losses = np.std(val_losses, axis=0) / np.sqrt(
                        len(val_losses)
                    )
                    stderr_train_losses = np.std(train_losses, axis=0) / np.sqrt(
                        len(train_losses)
                    )
                    sterr_val_accs = np.std(val_accs, axis=0) / np.sqrt(len(val_accs))
                    stderr_train_accs = np.std(train_accs, axis=0) / np.sqrt(
                        len(train_accs)
                    )
                else:
                    sterr_val_losses = np.zeros_like(mean_val_losses)
                    stderr_train_losses = np.zeros_like(mean_train_losses)
                    sterr_val_accs = np.zeros_like(mean_val_accs)
                    stderr_train_accs = np.zeros_like(mean_train_accs)
                run_info[dataset]["val_loss"] = mean_val_losses
                run_info[dataset]["train_loss"] = mean_train_losses
                run_info[dataset]["val_loss_sterr"] = sterr_val_losses
                run_info[dataset]["train_loss_sterr"] = stderr_train_losses
                run_info[dataset]["val_acc"] = mean_val_accs
                run_info[dataset]["train_acc"] = mean_train_accs
                run_info[dataset]["val_acc_sterr"] = sterr_val_accs
                run_info[dataset]["train_acc_sterr"] = stderr_train_accs
        results_info[folder] = run_info

# CREATE LEGEND -- ADD RUNS HERE THAT WILL BE PLOTTED
labels = {
    "run_0": "Baseline",
    "run_1": "Initial Layer-wise LR",
    "run_2": "Adjusted Layer-wise LR",
    "run_3": "Optimized Layer-wise LR",
    "run_4": "Fine-tuned Layer-wise LR"
}


# Create a programmatic color palette
def generate_color_palette(n):
    cmap = plt.get_cmap("tab20")
    return [mcolors.rgb2hex(cmap(i)) for i in np.linspace(0, 1, n)]


# Get the list of runs and generate the color palette
runs = list(labels.keys())
colors = generate_color_palette(len(runs))

# Plot 1: Line plot of training loss for each dataset across the runs with labels
for dataset in datasets:
    plt.figure(figsize=(10, 6))
    for i, run in enumerate(runs):
        iters = results_info[run][dataset]["step"]
        mean = results_info[run][dataset]["train_loss"]
        sterr = results_info[run][dataset]["train_loss_sterr"]
        plt.plot(iters, mean, label=labels[run], color=colors[i])
        plt.fill_between(iters, mean - sterr, mean + sterr, color=colors[i], alpha=0.2)

    plt.title(f"Training Loss Across Runs for {dataset} Dataset")
    plt.xlabel("Update Steps")
    plt.ylabel("Training Loss")
    plt.legend()
    plt.grid(True, which="both", ls="-", alpha=0.2)
    plt.tight_layout()
    plt.savefig(f"train_loss_{dataset}.png")
    plt.close()

# Plot 2: Line plot of validation loss for each dataset across the runs with labels
for dataset in datasets:
    plt.figure(figsize=(10, 6))
    for i, run in enumerate(runs):
        iters = results_info[run][dataset]["step"]
        mean = results_info[run][dataset]["val_loss"]
        sterr = results_info[run][dataset]["val_loss_sterr"]
        plt.plot(iters, mean, label=labels[run], color=colors[i])
        plt.fill_between(iters, mean - sterr, mean + sterr, color=colors[i], alpha=0.2)

    plt.title(f"Validation Loss Across Runs for {dataset} Dataset")
    plt.xlabel("Update Steps")
    plt.ylabel("Validation Loss")
    plt.legend()
    plt.grid(True, which="both", ls="-", alpha=0.2)
    plt.tight_layout()
    plt.savefig(f"val_loss_{dataset}.png")
    plt.close()


# Plot 3: Line plot of training acc for each dataset across the runs with labels
for dataset in datasets:
    plt.figure(figsize=(10, 6))
    for i, run in enumerate(runs):
        iters = results_info[run][dataset]["step"]
        mean = results_info[run][dataset]["train_acc"]
        sterr = results_info[run][dataset]["train_acc_sterr"]
        plt.plot(iters, mean, label=labels[run], color=colors[i])
        plt.fill_between(iters, mean - sterr, mean + sterr, color=colors[i], alpha=0.2)

    plt.title(f"Training Accuracy Across Runs for {dataset} Dataset")
    plt.xlabel("Update Steps")
    plt.ylabel("Training Acc")
    plt.legend()
    plt.grid(True, which="both", ls="-", alpha=0.2)
    plt.tight_layout()
    plt.savefig(f"train_acc_{dataset}.png")
    plt.close()

# Plot 2: Line plot of validation acc for each dataset across the runs with labels
for dataset in datasets:
    plt.figure(figsize=(10, 6))
    for i, run in enumerate(runs):
        iters = results_info[run][dataset]["step"]
        mean = results_info[run][dataset]["val_acc"]
        sterr = results_info[run][dataset]["val_acc_sterr"]
        plt.plot(iters, mean, label=labels[run], color=colors[i])
        plt.fill_between(iters, mean - sterr, mean + sterr, color=colors[i], alpha=0.2)

    plt.title(f"Validation Loss Across Runs for {dataset} Dataset")
    plt.xlabel("Update Steps")
    plt.ylabel("Validation Acc")
    plt.legend()
    plt.grid(True, which="both", ls="-", alpha=0.2)
    plt.tight_layout()
    plt.savefig(f"val_acc_{dataset}.png")
    plt.close()