| import altair as alt |
| import fev |
| import pandas as pd |
| import pandas.io.formats.style |
|
|
| |
|
|
| COLORS = { |
| "dl_text": "#5A7FA5", |
| "st_text": "#A5795A", |
| |
| "bar_fill": "#8d5eb7", |
| "error_bar": "#222222", |
| "point": "#111111", |
| "text_white": "white", |
| "text_black": "black", |
| "text_default": "#111", |
| "gold": "#F7D36B", |
| "silver": "#E5E7EB", |
| "bronze": "#E6B089", |
| "leakage_impute": "#3B82A0", |
| "failure_impute": "#E07B39", |
| } |
| HEATMAP_COLOR_SCHEME = "purplegreen" |
|
|
| |
| MODEL_CONFIG = { |
| |
| "chronos_tiny": ("amazon/chronos-t5-tiny", "AWS", True, "DL"), |
| "chronos_mini": ("amazon/chronos-t5-mini", "AWS", True, "DL"), |
| "chronos_small": ("amazon/chronos-t5-small", "AWS", True, "DL"), |
| "chronos_base": ("amazon/chronos-t5-base", "AWS", True, "DL"), |
| "chronos_large": ("amazon/chronos-t5-large", "AWS", True, "DL"), |
| "chronos_bolt_tiny": ("amazon/chronos-bolt-tiny", "AWS", True, "DL"), |
| "chronos_bolt_mini": ("amazon/chronos-bolt-mini", "AWS", True, "DL"), |
| "chronos_bolt_small": ("amazon/chronos-bolt-small", "AWS", True, "DL"), |
| "chronos_bolt_base": ("amazon/chronos-bolt-base", "AWS", True, "DL"), |
| "chronos-bolt": ("amazon/chronos-bolt-base", "AWS", True, "DL"), |
| "chronos-2": ("amazon/chronos-2", "AWS", True, "DL"), |
| |
| "moirai_large": ("Salesforce/moirai-1.1-R-large", "Salesforce", True, "DL"), |
| "moirai_base": ("Salesforce/moirai-1.1-R-base", "Salesforce", True, "DL"), |
| "moirai_small": ("Salesforce/moirai-1.1-R-small", "Salesforce", True, "DL"), |
| "moirai-2.0": ("Salesforce/moirai-2.0-R-small", "Salesforce", True, "DL"), |
| |
| "timesfm": ("google/timesfm-1.0-200m-pytorch", "Google", True, "DL"), |
| "timesfm-2.0": ("google/timesfm-2.0-500m-pytorch", "Google", True, "DL"), |
| "timesfm-2.5": ("google/timesfm-2.5-200m-pytorch", "Google", True, "DL"), |
| |
| "toto-1.0": ("Datadog/Toto-Open-Base-1.0", "Datadog", True, "DL"), |
| |
| "tirex": ("NX-AI/TiRex", "NX-AI", True, "DL"), |
| "tabpfn-ts": ("Prior-Labs/TabPFN-v2-reg", "Prior Labs", True, "DL"), |
| "sundial-base": ("thuml/sundial-base-128m", "Tsinghua University", True, "DL"), |
| "ttm-r2": ("ibm-granite/granite-timeseries-ttm-r2", "IBM", True, "DL"), |
| |
| "stat. ensemble": ( |
| "https://nixtlaverse.nixtla.io/statsforecast/", |
| "—", |
| False, |
| "ST", |
| ), |
| "autoarima": ("https://nixtlaverse.nixtla.io/statsforecast/", "—", False, "ST"), |
| "autotheta": ("https://nixtlaverse.nixtla.io/statsforecast/", "—", False, "ST"), |
| "autoets": ("https://nixtlaverse.nixtla.io/statsforecast/", "—", False, "ST"), |
| "seasonalnaive": ("https://nixtlaverse.nixtla.io/statsforecast/", "—", False, "ST"), |
| "seasonal naive": ( |
| "https://nixtlaverse.nixtla.io/statsforecast/", |
| "—", |
| False, |
| "ST", |
| ), |
| "drift": ("https://nixtlaverse.nixtla.io/statsforecast/", "—", False, "ST"), |
| "naive": ("https://nixtlaverse.nixtla.io/statsforecast/", "—", False, "ST"), |
| } |
|
|
|
|
| ALL_METRICS = { |
| "SQL": ( |
| "SQL: Scaled Quantile Loss", |
| "The [Scaled Quantile Loss (SQL)](https://auto.gluon.ai/dev/tutorials/timeseries/forecasting-metrics.html#autogluon.timeseries.metrics.SQL) is a **scale-invariant** metric for evaluating **probabilistic** forecasts.", |
| ), |
| "MASE": ( |
| "MASE: Mean Absolute Scaled Error", |
| "The [Mean Absolute Scaled Error (MASE)](https://auto.gluon.ai/dev/tutorials/timeseries/forecasting-metrics.html#autogluon.timeseries.metrics.MASE) is a **scale-invariant** metric for evaluating **point** forecasts.", |
| ), |
| "WQL": ( |
| "WQL: Weighted Quantile Loss", |
| "The [Weighted Quantile Loss (WQL)](https://auto.gluon.ai/dev/tutorials/timeseries/forecasting-metrics.html#autogluon.timeseries.metrics.WQL), is a **scale-dependent** metric for evaluating **probabilistic** forecasts.", |
| ), |
| "WAPE": ( |
| "WAPE: Weighted Absolute Percentage Error", |
| "The [Weighted Absolute Percentage Error (WAPE)](https://auto.gluon.ai/dev/tutorials/timeseries/forecasting-metrics.html#autogluon.timeseries.metrics.WAPE) is a **scale-dependent** metric for evaluating **point** forecasts.", |
| ), |
| } |
|
|
|
|
| def format_metric_name(metric_name: str): |
| return ALL_METRICS[metric_name][0] |
|
|
|
|
| def get_metric_description(metric_name: str): |
| return ALL_METRICS[metric_name][1] |
|
|
|
|
| def get_model_link(model_name): |
| config = MODEL_CONFIG.get(model_name.lower()) |
| if not config or not config[0]: |
| return "" |
| url = config[0] |
| return url if url.startswith("https:") else f"https://huggingface.co/{url}" |
|
|
|
|
| def get_model_organization(model_name): |
| config = MODEL_CONFIG.get(model_name.lower()) |
| return config[1] if config else "—" |
|
|
|
|
| def get_zero_shot_status(model_name): |
| config = MODEL_CONFIG.get(model_name.lower()) |
| return "✓" if config and config[2] else "×" |
|
|
|
|
| def get_model_type(model_name): |
| config = MODEL_CONFIG.get(model_name.lower()) |
| return config[3] if config else "—" |
|
|
|
|
| def highlight_model_type_color(cell): |
| config = MODEL_CONFIG.get(cell.lower()) |
| if config: |
| color = COLORS["dl_text"] if config[3] == "DL" else COLORS["st_text"] |
| return f"font-weight: bold; color: {color}" |
| return "font-weight: bold" |
|
|
|
|
| def format_leaderboard(df: pd.DataFrame): |
| df = df.copy() |
| df["skill_score"] = df["skill_score"].round(1) |
| df["win_rate"] = df["win_rate"].round(1) |
| df["zero_shot"] = df["model_name"].apply(get_zero_shot_status) |
| |
| df["training_corpus_overlap"] = df.apply( |
| lambda row: int(round(row["training_corpus_overlap"] * 100)) if row["zero_shot"] == "✓" else 0, |
| axis=1, |
| ) |
| df["link"] = df["model_name"].apply(get_model_link) |
| df["org"] = df["model_name"].apply(get_model_organization) |
| df = df[ |
| [ |
| "model_name", |
| "win_rate", |
| "skill_score", |
| "median_inference_time_s_per100", |
| "training_corpus_overlap", |
| "num_failures", |
| "zero_shot", |
| "org", |
| "link", |
| ] |
| ] |
| return ( |
| df.style.map(highlight_model_type_color, subset=["model_name"]) |
| .map(lambda x: "font-weight: bold", subset=["zero_shot"]) |
| .apply( |
| lambda x: ["background-color: #f8f9fa" if i % 2 == 1 else "" for i in range(len(x))], |
| axis=0, |
| ) |
| ) |
|
|
|
|
| def construct_bar_chart(df: pd.DataFrame, col: str, metric_name: str): |
| label = "Skill Score" if col == "skill_score" else "Win Rate" |
|
|
| tooltip = [ |
| alt.Tooltip("model_name:N"), |
| alt.Tooltip(f"{col}:Q", format=".2f"), |
| alt.Tooltip(f"{col}_lower:Q", title="95% CI Lower", format=".2f"), |
| alt.Tooltip(f"{col}_upper:Q", title="95% CI Upper", format=".2f"), |
| ] |
|
|
| base_encode = { |
| "y": alt.Y("model_name:N", title="Forecasting Model", sort=None), |
| "tooltip": tooltip, |
| } |
|
|
| bars = ( |
| alt.Chart(df) |
| .mark_bar(color=COLORS["bar_fill"], cornerRadius=4) |
| .encode( |
| x=alt.X(f"{col}:Q", title=f"{label} (%)", scale=alt.Scale(zero=False)), |
| **base_encode, |
| ) |
| ) |
|
|
| error_bars = ( |
| alt.Chart(df) |
| .mark_errorbar(ticks={"height": 5}, color=COLORS["error_bar"]) |
| .encode( |
| y=alt.Y("model_name:N", title=None, sort=None), |
| x=alt.X(f"{col}_lower:Q", title=f"{label} (%)"), |
| x2=alt.X2(f"{col}_upper:Q"), |
| tooltip=tooltip, |
| ) |
| ) |
|
|
| points = ( |
| alt.Chart(df) |
| .mark_point(filled=True, color=COLORS["point"]) |
| .encode(x=alt.X(f"{col}:Q", title=f"{label} (%)"), **base_encode) |
| ) |
|
|
| return ( |
| (bars + error_bars + points) |
| .properties(height=500, title=f"{label} ({metric_name}) with 95% CIs") |
| .configure_title(fontSize=16) |
| ) |
|
|
|
|
| def construct_pairwise_chart(df: pd.DataFrame, col: str, metric_name: str): |
| config = { |
| "win_rate": ("Win Rate", [0, 100], 50, f"abs(datum.{col} - 50) > 30"), |
| "skill_score": ("Skill Score", [-15, 15], 0, f"abs(datum.{col}) > 10"), |
| } |
| cbar_label, domain, domain_mid, text_condition = config[col] |
|
|
| df = df.copy() |
| for c in [col, f"{col}_lower", f"{col}_upper"]: |
| df[c] *= 100 |
|
|
| model_order = df.groupby("model_1")[col].mean().sort_values(ascending=False).index.tolist() |
|
|
| tooltip = [ |
| alt.Tooltip("model_1:N", title="Model 1"), |
| alt.Tooltip("model_2:N", title="Model 2"), |
| alt.Tooltip(f"{col}:Q", title=cbar_label.split(" ")[0], format=".1f"), |
| alt.Tooltip(f"{col}_lower:Q", title="95% CI Lower", format=".1f"), |
| alt.Tooltip(f"{col}_upper:Q", title="95% CI Upper", format=".1f"), |
| ] |
|
|
| base = alt.Chart(df).encode( |
| x=alt.X( |
| "model_2:N", |
| sort=model_order, |
| title="Model 2", |
| axis=alt.Axis(orient="top", labelAngle=-90), |
| ), |
| y=alt.Y("model_1:N", sort=model_order, title="Model 1"), |
| ) |
|
|
| heatmap = base.mark_rect().encode( |
| color=alt.Color( |
| f"{col}:Q", |
| legend=None, |
| scale=alt.Scale( |
| scheme=HEATMAP_COLOR_SCHEME, |
| domain=domain, |
| domainMid=domain_mid, |
| clamp=True, |
| ), |
| ), |
| tooltip=tooltip, |
| ) |
|
|
| text_main = base.mark_text(dy=-8, fontSize=8, baseline="top", yOffset=5).encode( |
| text=alt.Text(f"{col}:Q", format=".1f"), |
| color=alt.condition( |
| text_condition, |
| alt.value(COLORS["text_white"]), |
| alt.value(COLORS["text_black"]), |
| ), |
| tooltip=tooltip, |
| ) |
|
|
| return ( |
| (heatmap + text_main) |
| .properties( |
| height=550, |
| title={ |
| "text": f"Pairwise {cbar_label} ({metric_name}) with 95% CIs", |
| "fontSize": 16, |
| }, |
| ) |
| .configure_axis(labelFontSize=11, titleFontSize=13, titleFontWeight="bold") |
| .resolve_scale(color="independent") |
| ) |
|
|
|
|
| def construct_pivot_table_from_df(errors: pd.DataFrame, metric_name: str) -> pd.io.formats.style.Styler: |
| """Construct styled pivot table from precomputed DataFrame.""" |
|
|
| def highlight_by_position(styler): |
| rank_colors = {1: COLORS["gold"], 2: COLORS["silver"], 3: COLORS["bronze"]} |
|
|
| for row_idx in errors.index: |
| row_ranks = errors.loc[row_idx].rank(method="min") |
| for col_idx in errors.columns: |
| rank = row_ranks[col_idx] |
| style_parts = [] |
|
|
| |
| if rank <= 3: |
| style_parts.append(f"background-color: {rank_colors[rank]}") |
| else: |
| style_parts.append(f"color: {COLORS['text_default']}") |
|
|
| if style_parts: |
| styler = styler.map( |
| lambda x, s="; ".join(style_parts): s, |
| subset=pd.IndexSlice[row_idx:row_idx, col_idx:col_idx], |
| ) |
| return styler |
|
|
| return highlight_by_position(errors.style).format(precision=3) |
|
|
|
|
| def construct_pivot_table( |
| summaries: pd.DataFrame, |
| metric_name: str, |
| baseline_model: str, |
| leakage_imputation_model: str, |
| ) -> pd.io.formats.style.Styler: |
| errors = fev.pivot_table(summaries=summaries, metric_column=metric_name, task_columns=["task_name"]) |
| train_overlap = ( |
| fev.pivot_table( |
| summaries=summaries, |
| metric_column="trained_on_this_dataset", |
| task_columns=["task_name"], |
| ) |
| .fillna(False) |
| .astype(bool) |
| ) |
|
|
| is_imputed_baseline = errors.isna() |
| is_leakage_imputed = train_overlap |
|
|
| |
| errors = errors.mask(train_overlap, errors[leakage_imputation_model], axis=0) |
| for col in errors.columns: |
| if col != baseline_model: |
| errors[col] = errors[col].fillna(errors[baseline_model]) |
|
|
| errors = errors[errors.rank(axis=1).mean().sort_values().index] |
| errors.index.rename("Task name", inplace=True) |
|
|
| def highlight_by_position(styler): |
| rank_colors = {1: COLORS["gold"], 2: COLORS["silver"], 3: COLORS["bronze"]} |
|
|
| for row_idx in errors.index: |
| row_ranks = errors.loc[row_idx].rank(method="min") |
| for col_idx in errors.columns: |
| rank = row_ranks[col_idx] |
| style_parts = [] |
|
|
| |
| if rank <= 3: |
| style_parts.append(f"background-color: {rank_colors[rank]}") |
|
|
| |
| if is_leakage_imputed.loc[row_idx, col_idx]: |
| style_parts.append(f"color: {COLORS['leakage_impute']}") |
| elif is_imputed_baseline.loc[row_idx, col_idx]: |
| style_parts.append(f"color: {COLORS['failure_impute']}") |
| elif not style_parts or (len(style_parts) == 1 and "font-weight" in style_parts[0]): |
| style_parts.append(f"color: {COLORS['text_default']}") |
|
|
| if style_parts: |
| styler = styler.map( |
| lambda x, s="; ".join(style_parts): s, |
| subset=pd.IndexSlice[row_idx:row_idx, col_idx:col_idx], |
| ) |
| return styler |
|
|
| return highlight_by_position(errors.style).format(precision=3) |
|
|