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| import ast | |
| import logging | |
| import re | |
| from typing import Dict, List, Optional, Tuple | |
| import gradio as gr | |
| import matplotlib.pyplot as plt | |
| import numpy as np | |
| import pandas as pd | |
| from datasets import load_dataset | |
| from sklearn.ensemble import HistGradientBoostingRegressor | |
| from sklearn.impute import SimpleImputer | |
| from sklearn.metrics import mean_absolute_error, mean_squared_error, r2_score | |
| from sklearn.model_selection import train_test_split | |
| from sklearn.multioutput import MultiOutputRegressor | |
| from sklearn.pipeline import Pipeline | |
| from sklearn.preprocessing import StandardScaler | |
| # Logging configuration | |
| logging.basicConfig(level=logging.INFO) | |
| logger = logging.getLogger(__name__) | |
| # ========================= CONFIG ========================= | |
| APP_TITLE = "Quantum Noise Robustness Benchmark" | |
| APP_SUBTITLE = ( | |
| "Predict noisy expectation values (Z/X/Y) and errors from ideal values " | |
| "and circuit structure β without expensive simulation." | |
| ) | |
| REPO_CONFIG = { | |
| "amplitude_damping": { | |
| "label": "amplitude_damping", | |
| "repo": "QSBench/QSBench-Amplitude-v1.0.0-demo", | |
| }, | |
| } | |
| TARGET_COLS = ["error_Z_global", "error_X_global", "error_Y_global"] | |
| IDEAL_COLS = ["ideal_expval_Z_global", "ideal_expval_X_global", "ideal_expval_Y_global"] | |
| NOISY_COLS = ["noisy_expval_Z_global", "noisy_expval_X_global", "noisy_expval_Y_global"] | |
| NON_FEATURE_COLS = { | |
| "sample_id", "sample_seed", "circuit_hash", "split", "circuit_qasm", | |
| "qasm_raw", "qasm_transpiled", "circuit_type_resolved", "circuit_type_requested", | |
| "noise_type", "noise_prob", "observable_bases", "observable_mode", "shots", | |
| "gpu_requested", "gpu_available", "backend_device", "precision_mode", | |
| "circuit_signature", "noise_label", | |
| *IDEAL_COLS, *NOISY_COLS, *TARGET_COLS, | |
| "sign_ideal_Z_global", "sign_noisy_Z_global", | |
| "sign_ideal_X_global", "sign_noisy_X_global", | |
| "sign_ideal_Y_global", "sign_noisy_Y_global", | |
| } | |
| SOFT_EXCLUDE_PATTERNS = ["ideal_", "noisy_", "sign_ideal_", "sign_noisy_"] | |
| _ASSET_CACHE: Dict[str, pd.DataFrame] = {} | |
| # ========================= HELPERS ========================= | |
| def load_guide_content() -> str: | |
| """Read the GUIDE.md file from the root directory.""" | |
| try: | |
| with open("GUIDE.md", "r", encoding="utf-8") as f: | |
| return f.read() | |
| except FileNotFoundError: | |
| return "### β οΈ GUIDE.md not found in the root directory." | |
| def safe_parse(value): | |
| """Safely parse stringified Python literals.""" | |
| if isinstance(value, str): | |
| try: | |
| return ast.literal_eval(value) | |
| except Exception: | |
| return value | |
| return value | |
| def adjacency_features(adj_value) -> Dict[str, float]: | |
| """Derive graph statistics from an adjacency matrix.""" | |
| parsed = safe_parse(adj_value) | |
| if not isinstance(parsed, list) or len(parsed) == 0: | |
| return { | |
| "adj_edge_count": np.nan, | |
| "adj_density": np.nan, | |
| "adj_degree_mean": np.nan, | |
| "adj_degree_std": np.nan, | |
| } | |
| try: | |
| arr = np.array(parsed, dtype=float) | |
| n = arr.shape[0] | |
| edge_count = float(np.triu(arr, k=1).sum()) | |
| possible_edges = float(n * (n - 1) / 2) | |
| density = edge_count / possible_edges if possible_edges > 0 else np.nan | |
| degrees = arr.sum(axis=1) | |
| return { | |
| "adj_edge_count": edge_count, | |
| "adj_density": density, | |
| "adj_degree_mean": float(np.mean(degrees)), | |
| "adj_degree_std": float(np.std(degrees)), | |
| } | |
| except Exception: | |
| return { | |
| "adj_edge_count": np.nan, | |
| "adj_density": np.nan, | |
| "adj_degree_mean": np.nan, | |
| "adj_degree_std": np.nan, | |
| } | |
| def qasm_features(qasm_value) -> Dict[str, float]: | |
| """Extract lightweight text statistics from QASM.""" | |
| if not isinstance(qasm_value, str) or not qasm_value.strip(): | |
| return { | |
| "qasm_length": np.nan, | |
| "qasm_line_count": np.nan, | |
| "qasm_gate_keyword_count": np.nan, | |
| "qasm_measure_count": np.nan, | |
| } | |
| text = qasm_value | |
| lines = [line for line in text.splitlines() if line.strip()] | |
| gate_keywords = re.findall( | |
| r"\b(cx|h|x|y|z|rx|ry|rz|u1|u2|u3|u|swap|cz|ccx|rxx|ryy|rzz)\b", | |
| text, | |
| flags=re.IGNORECASE, | |
| ) | |
| measure_count = len(re.findall(r"\bmeasure\b", text, flags=re.IGNORECASE)) | |
| return { | |
| "qasm_length": float(len(text)), | |
| "qasm_line_count": float(len(lines)), | |
| "qasm_gate_keyword_count": float(len(gate_keywords)), | |
| "qasm_measure_count": float(measure_count), | |
| } | |
| def enrich_dataframe(df: pd.DataFrame) -> pd.DataFrame: | |
| """Add derived numeric features and compute error targets.""" | |
| df = df.copy() | |
| if "adjacency" in df.columns: | |
| adj_df = df["adjacency"].apply(adjacency_features).apply(pd.Series) | |
| df = pd.concat([df, adj_df], axis=1) | |
| qasm_source = "qasm_transpiled" if "qasm_transpiled" in df.columns else "qasm_raw" | |
| if qasm_source in df.columns: | |
| qasm_df = df[qasm_source].apply(qasm_features).apply(pd.Series) | |
| df = pd.concat([df, qasm_df], axis=1) | |
| for basis in ["Z", "X", "Y"]: | |
| ideal_col = f"ideal_expval_{basis}_global" | |
| noisy_col = f"noisy_expval_{basis}_global" | |
| error_col = f"error_{basis}_global" | |
| if ideal_col in df.columns and noisy_col in df.columns: | |
| df[error_col] = df[noisy_col] - df[ideal_col] | |
| return df | |
| def load_single_dataset() -> pd.DataFrame: | |
| """Fetch and cache the dataset.""" | |
| key = "amplitude_damping" | |
| if key not in _ASSET_CACHE: | |
| logger.info("Loading dataset: %s", key) | |
| ds = load_dataset(REPO_CONFIG[key]["repo"]) | |
| df = pd.DataFrame(ds["train"]) | |
| df = enrich_dataframe(df) | |
| _ASSET_CACHE[key] = df | |
| return _ASSET_CACHE[key] | |
| def get_available_feature_columns(df: pd.DataFrame) -> List[str]: | |
| """Retrieve filtered list of numerical feature columns.""" | |
| numeric_cols = df.select_dtypes(include=[np.number]).columns.tolist() | |
| features = [] | |
| for col in numeric_cols: | |
| if col in NON_FEATURE_COLS: | |
| continue | |
| if any(pattern in col for pattern in SOFT_EXCLUDE_PATTERNS): | |
| continue | |
| features.append(col) | |
| return sorted(features) | |
| def default_feature_selection(features: List[str]) -> List[str]: | |
| """Provide a curated list of default structural features.""" | |
| preferred = [ | |
| "gate_entropy", "adj_density", "adj_degree_mean", "adj_degree_std", | |
| "depth", "total_gates", "cx_count", "two_qubit_gates", | |
| "qasm_length", "qasm_line_count", "qasm_gate_keyword_count", | |
| ] | |
| selected = [f for f in preferred if f in features] | |
| return selected[:10] if selected else features[:10] | |
| def make_regression_figure( | |
| y_true: np.ndarray, | |
| y_pred: np.ndarray, | |
| ideal_vals: np.ndarray, | |
| noisy_vals: np.ndarray, | |
| basis: str | |
| ) -> plt.Figure: | |
| """Generate diagnostic regression plots including physics emulation.""" | |
| fig, axs = plt.subplots(1, 3, figsize=(20, 6)) | |
| # 1. Error Prediction (Predicted vs True) | |
| axs[0].scatter(y_true, y_pred, alpha=0.6, s=15, color='#3498db') | |
| min_v, max_v = min(y_true.min(), y_pred.min()), max(y_true.max(), y_pred.max()) | |
| axs[0].plot([min_v, max_v], [min_v, max_v], 'r--', lw=2) | |
| axs[0].set_xlabel("True Error") | |
| axs[0].set_ylabel("Predicted Error") | |
| axs[0].set_title(f"{basis} Error: Predicted vs True") | |
| axs[0].grid(True, alpha=0.3) | |
| # 2. Residual Distribution | |
| residuals = y_true - y_pred | |
| axs[1].hist(residuals, bins=50, alpha=0.7, color="#2ecc71", edgecolor="black") | |
| axs[1].axvline(0, color="red", linestyle="--") | |
| axs[1].set_xlabel("Residual") | |
| axs[1].set_ylabel("Count") | |
| axs[1].set_title(f"{basis} Error Residuals") | |
| axs[1].grid(True, alpha=0.3) | |
| # 3. Physics Emulation (Ideal vs Noisy Expectation Values) | |
| pred_noisy_vals = ideal_vals + y_pred | |
| axs[2].scatter(ideal_vals, noisy_vals, alpha=0.4, s=15, label="Actual Noisy (Simulated)", color="#95a5a6") | |
| axs[2].scatter(ideal_vals, pred_noisy_vals, alpha=0.6, s=15, label="Predicted Noisy (ML)", color="#e74c3c") | |
| axs[2].plot([-1, 1], [-1, 1], 'k--', lw=1, alpha=0.7, label="No Noise Limit") | |
| axs[2].set_xlabel("Ideal Expectation Value") | |
| axs[2].set_ylabel("Noisy Expectation Value") | |
| axs[2].set_title(f"Physics Emulation: {basis} Basis Shift") | |
| axs[2].legend() | |
| axs[2].grid(True, alpha=0.3) | |
| fig.tight_layout() | |
| return fig | |
| def train_regressor( | |
| feature_columns: List[str], | |
| test_size: float, | |
| max_iter: int, | |
| max_depth: float, | |
| random_state: float, | |
| ) -> Tuple[Optional[plt.Figure], str, Optional[plt.Figure], Optional[plt.Figure]]: | |
| """Train multi-output regressor and return metrics with plots.""" | |
| if not feature_columns: | |
| return None, "### β Please select at least one feature.", None, None | |
| df = load_single_dataset() | |
| required_cols = feature_columns + TARGET_COLS + IDEAL_COLS + NOISY_COLS | |
| train_df = df.dropna(subset=required_cols).copy() | |
| if len(train_df) < 50: | |
| return None, "### β Not enough rows after filtering missing values.", None, None | |
| X = train_df[feature_columns] | |
| y = train_df[TARGET_COLS] | |
| seed = int(random_state) | |
| depth = int(max_depth) if max_depth and int(max_depth) > 0 else None | |
| # Track indices to extract ideal and noisy arrays for the test set later | |
| indices = np.arange(len(train_df)) | |
| idx_train, idx_test = train_test_split(indices, test_size=test_size, random_state=seed) | |
| X_train, X_test = X.iloc[idx_train], X.iloc[idx_test] | |
| y_train, y_test = y.iloc[idx_train], y.iloc[idx_test] | |
| ideal_test = train_df[IDEAL_COLS].iloc[idx_test].values | |
| noisy_test = train_df[NOISY_COLS].iloc[idx_test].values | |
| model = Pipeline([ | |
| ("imputer", SimpleImputer(strategy="median")), | |
| ("scaler", StandardScaler()), | |
| ("regressor", MultiOutputRegressor( | |
| HistGradientBoostingRegressor( | |
| max_iter=int(max_iter), | |
| max_depth=depth, | |
| random_state=seed, | |
| learning_rate=0.1, | |
| min_samples_leaf=1, | |
| ) | |
| )) | |
| ]) | |
| model.fit(X_train, y_train) | |
| y_pred = model.predict(X_test) | |
| mae = mean_absolute_error(y_test, y_pred, multioutput="raw_values") | |
| rmse = np.sqrt(mean_squared_error(y_test, y_pred, multioutput="raw_values")) | |
| r2 = r2_score(y_test, y_pred, multioutput="raw_values") | |
| metrics_text = ( | |
| "### Regression Results\n\n" | |
| f"**Rows used:** {len(train_df):,}\n" | |
| f"**Test size:** {test_size:.0%}\n\n" | |
| f"**Z-error** β MAE: {mae[0]:.5f} | RMSE: {rmse[0]:.5f} | RΒ²: {r2[0]:.4f}\n" | |
| f"**X-error** β MAE: {mae[1]:.5f} | RMSE: {rmse[1]:.5f} | RΒ²: {r2[1]:.4f}\n" | |
| f"**Y-error** β MAE: {mae[2]:.5f} | RMSE: {rmse[2]:.5f} | RΒ²: {r2[2]:.4f}\n" | |
| ) | |
| # Generate figures passing ideal and true noisy data | |
| fig_z = make_regression_figure(y_test.iloc[:, 0].values, y_pred[:, 0], ideal_test[:, 0], noisy_test[:, 0], "Z") | |
| fig_x = make_regression_figure(y_test.iloc[:, 1].values, y_pred[:, 1], ideal_test[:, 1], noisy_test[:, 1], "X") | |
| fig_y = make_regression_figure(y_test.iloc[:, 2].values, y_pred[:, 2], ideal_test[:, 2], noisy_test[:, 2], "Y") | |
| return fig_z, metrics_text, fig_x, fig_y | |
| # ======================= EXPLORER FUNCTIONS ======================= | |
| def build_dataset_profile(df: pd.DataFrame) -> str: | |
| """Generate Markdown summary of the loaded dataset.""" | |
| return ( | |
| f"### Dataset profile\n\n" | |
| f"**Rows:** {len(df):,} \n" | |
| f"**Columns:** {len(df.columns):,} \n" | |
| f"**Classes / Noise:** amplitude_damping" | |
| ) | |
| def refresh_explorer(dataset_key: str, split_name: str): | |
| """Update Explorer tab components.""" | |
| df = load_single_dataset() | |
| splits = df["split"].dropna().unique().tolist() if "split" in df.columns else ["train"] | |
| if not splits: | |
| splits = ["train"] | |
| if split_name not in splits: | |
| split_name = splits[0] | |
| filtered = df[df["split"] == split_name] if "split" in df.columns else df | |
| display_df = filtered.head(12).copy() | |
| raw_qasm = display_df["qasm_raw"].iloc[0] if not display_df.empty and "qasm_raw" in display_df.columns else "// N/A" | |
| transpiled_qasm = display_df["qasm_transpiled"].iloc[0] if not display_df.empty and "qasm_transpiled" in display_df.columns else "// N/A" | |
| profile_box = build_dataset_profile(df) | |
| summary_box = ( | |
| f"### Split summary\n\n" | |
| f"**Dataset:** `{dataset_key}` \n" | |
| f"**Label:** `amplitude_damping` \n" | |
| f"**Available splits:** {', '.join(splits)} \n" | |
| f"**Preview rows:** {len(display_df)}" | |
| ) | |
| return ( | |
| gr.update(choices=splits, value=split_name), | |
| display_df, | |
| raw_qasm, | |
| transpiled_qasm, | |
| profile_box, | |
| summary_box, | |
| ) | |
| # ========================= INTERFACE ========================= | |
| CUSTOM_CSS = """ | |
| .gradio-container { | |
| max-width: 1400px !important; | |
| } | |
| footer { | |
| margin-top: 1rem; | |
| } | |
| """ | |
| with gr.Blocks(title=APP_TITLE) as demo: | |
| gr.Markdown(f"# π {APP_TITLE}") | |
| gr.Markdown(APP_SUBTITLE) | |
| with gr.Tabs(): | |
| with gr.TabItem("π Explorer"): | |
| dataset_dropdown = gr.Dropdown( | |
| list(REPO_CONFIG.keys()), | |
| value="amplitude_damping", | |
| label="Dataset", | |
| ) | |
| split_dropdown = gr.Dropdown( | |
| ["train"], | |
| value="train", | |
| label="Split", | |
| ) | |
| profile_box = gr.Markdown(value="### Loading dataset...") | |
| summary_box = gr.Markdown(value="### Loading split summary...") | |
| explorer_df = gr.Dataframe(label="Preview", interactive=False) | |
| with gr.Row(): | |
| raw_qasm = gr.Code(label="Raw QASM", language=None) | |
| transpiled_qasm = gr.Code(label="Transpiled QASM", language="python") | |
| with gr.TabItem("π§ Regression Training"): | |
| feature_picker = gr.CheckboxGroup( | |
| label="Input features (circuit structure + topology)", | |
| choices=[], | |
| value=[], | |
| ) | |
| test_size = gr.Slider(0.1, 0.4, value=0.25, step=0.05, label="Test Split") | |
| max_iter = gr.Slider(100, 800, value=400, step=50, label="Max Iterations") | |
| max_depth = gr.Slider(3, 25, value=12, step=1, label="Max Depth") | |
| seed = gr.Number(value=42, precision=0, label="Random Seed") | |
| run_btn = gr.Button("π Train Multi-Output Regressor", variant="primary") | |
| with gr.Row(): | |
| plot_z = gr.Plot(label="Z Error Metrics") | |
| plot_x = gr.Plot(label="X Error Metrics") | |
| plot_y = gr.Plot(label="Y Error Metrics") | |
| metrics = gr.Markdown() | |
| with gr.TabItem("π Guide"): | |
| gr.Markdown(load_guide_content()) | |
| gr.Markdown("---") | |
| gr.Markdown( | |
| "### π Links\n" | |
| "[Website](https://qsbench.github.io) | " | |
| "[Hugging Face](https://huggingface.co/QSBench) | " | |
| "[GitHub](https://github.com/QSBench)" | |
| ) | |
| # ======================= CALLBACKS ======================= | |
| def sync_features(dataset_key): | |
| """Update available feature choices when dataset changes.""" | |
| df = load_single_dataset() | |
| features = get_available_feature_columns(df) | |
| defaults = default_feature_selection(features) | |
| return gr.update(choices=features, value=defaults) | |
| dataset_dropdown.change( | |
| refresh_explorer, | |
| [dataset_dropdown, split_dropdown], | |
| [split_dropdown, explorer_df, raw_qasm, transpiled_qasm, profile_box, summary_box], | |
| ) | |
| split_dropdown.change( | |
| refresh_explorer, | |
| [dataset_dropdown, split_dropdown], | |
| [split_dropdown, explorer_df, raw_qasm, transpiled_qasm, profile_box, summary_box], | |
| ) | |
| dataset_dropdown.change(sync_features, [dataset_dropdown], [feature_picker]) | |
| run_btn.click( | |
| train_regressor, | |
| [feature_picker, test_size, max_iter, max_depth, seed], | |
| [plot_z, metrics, plot_x, plot_y], | |
| ) | |
| demo.load( | |
| refresh_explorer, | |
| [dataset_dropdown, split_dropdown], | |
| [split_dropdown, explorer_df, raw_qasm, transpiled_qasm, profile_box, summary_box], | |
| ) | |
| demo.load(sync_features, [dataset_dropdown], [feature_picker]) | |
| if __name__ == "__main__": | |
| demo.launch(theme=gr.themes.Soft(), css=CUSTOM_CSS) |