Datasets:
Languages:
English
Size:
1K - 10K
Tags:
procurement
government-contracts
alternative-data
finance
quantitative-finance
entity-resolution
License:
| """ | |
| Valan — sample loader (fin_awards schema) | |
| ========================================== | |
| Public evaluation sample · Feed snapshot 2026-05-30 | |
| Loads the Valan procurement sample and exposes its fields with the point-in-time | |
| (PIT) and compliance rules applied HONESTLY. Column reference: | |
| Valan_Data_Dictionary_TwoSigma.md -> the `fin_awards` table. | |
| This sample carries the full fin_awards identity + financial block: | |
| financial_quality_score, is_framework, ticker_confidence, ticker_exchange, | |
| ticker_mic, ultimate_parent_lei, linked_tender_id, linked_prime_id. | |
| SCOPE — investable-only slice | |
| Every row here has investable_flag=True. This is a curated *investable* showcase. | |
| In the full universe only ~17% (12.3M of 71.9M awards) are investable. Do NOT | |
| extrapolate coverage from this file. | |
| POINT-IN-TIME / forward-bias — read before backtesting | |
| * ticker_as_of WITH pit_confirmed=True -> the ticker AS OF award_date. BACKTEST-SAFE. | |
| * ultimate_parent_ticker (parent rollup) -> the CURRENT ownership link (who owns the | |
| supplier today), NOT as-of the award. Identity/screening info; NOT forward-bias-free. | |
| In this US-heavy slice ~772 / 1000 rows are pit_confirmed (backtest-grade); the remainder | |
| are investable only via current own-ticker or the parent rollup. `investable(use_pit=True)` | |
| returns the PIT set only. | |
| Caveats on rollup rows: some parents resolve to foreign/secondary lines | |
| (e.g. Fresenius -> 0OO9.LSE rather than FRE.DE). | |
| Requires: pip install pandas pyarrow (duckdb optional, used if present) | |
| Usage: python valan_sample_loader.py [path_to_parquet_or_csv] | |
| """ | |
| import os, sys, warnings | |
| import pandas as pd | |
| # explicit casts only (no silent-downcast surprises); guarded for pandas version drift | |
| try: | |
| with warnings.catch_warnings(): | |
| warnings.simplefilter("ignore") | |
| pd.set_option("future.no_silent_downcasting", True) | |
| except (KeyError, Exception): | |
| pass | |
| DEFAULT = "Valan_TwoSigma_sample_1k_fin_awards.parquet" | |
| def _as_bool(df: pd.DataFrame, col: str) -> pd.Series: | |
| """Coerce a column (native bool, or 'True'/'False' strings from CSV) to clean bool.""" | |
| if col not in df.columns: | |
| return pd.Series(False, index=df.index) | |
| s = df[col] | |
| if s.dtype == object: | |
| return s.map(lambda x: str(x).strip().lower() in ("true", "1", "t", "yes")).astype(bool) | |
| return s.fillna(False).astype(bool) | |
| def load(path: str = DEFAULT) -> pd.DataFrame: | |
| """Load the sample and add derived columns, keeping PIT and current strictly separate.""" | |
| if not os.path.isabs(path): | |
| path = os.path.join(os.path.dirname(os.path.abspath(__file__)), path) | |
| df = pd.read_parquet(path) if path.endswith(".parquet") else pd.read_csv(path) | |
| # fin_awards: award_value is DOUBLE, award_date is DATE — coerce defensively, keep originals. | |
| df["award_value_num"] = pd.to_numeric(df["award_value"], errors="coerce") | |
| df["award_date"] = pd.to_datetime(df["award_date"], errors="coerce") | |
| pit_ok = _as_bool(df, "pit_confirmed") | |
| # PIT-SAFE ticker — own listing, ONLY where pit_confirmed. Nothing else is forward-bias-free. | |
| df["ticker_pit"] = df["ticker_as_of"].where(pit_ok & df["ticker_as_of"].notna()) | |
| # CURRENT, NON-PIT exposure (screening only — has look-ahead): | |
| df["parent_rollup_ticker_current"] = df.get("ultimate_parent_ticker") # current ownership link | |
| df["ticker_current_or_rollup"] = df["ticker_current"].where( | |
| df["ticker_current"].notna(), df.get("ultimate_parent_ticker")) | |
| # primes carry tier_level 0 per the dictionary; coerce non-subcontract/missing -> 0 | |
| if "tier_level" in df.columns: | |
| df["tier_level"] = pd.to_numeric(df["tier_level"], errors="coerce").where( | |
| _as_bool(df, "is_subcontract"), 0).fillna(0).astype(int) | |
| return df | |
| def obligated_awards(df: pd.DataFrame) -> pd.DataFrame: | |
| """Real obligated awards: value>0, exclude framework/IDIQ ceilings and de-obligations.""" | |
| return df[(df.get("value_type", "award") == "award") | |
| & (~_as_bool(df, "value_is_ceiling")) | |
| & (df["award_value_num"] > 0)] | |
| def investable(df: pd.DataFrame, use_pit: bool = True) -> pd.DataFrame: | |
| """Tradeable rows. | |
| use_pit=True -> ONLY pit_confirmed rows (forward-bias-free; ~772 here). USE FOR BACKTESTS. | |
| use_pit=False -> current tradeable incl. parent rollup (~1000). SCREENING ONLY — has look-ahead. | |
| """ | |
| col = "ticker_pit" if use_pit else "ticker_current_or_rollup" | |
| return df[df[col].notna()] | |
| if __name__ == "__main__": | |
| path = sys.argv[1] if len(sys.argv) > 1 else DEFAULT | |
| df = load(path) | |
| print(f"loaded {len(df):,} rows × {df.shape[1]} cols from {os.path.basename(path)}") | |
| print( " SCOPE: investable-only slice (full universe is ~17% investable) — do not extrapolate coverage") | |
| print(f" date range: {df['award_date'].min().date()} .. {df['award_date'].max().date()}") | |
| print(f" currencies (local, never sum across): {sorted(df['currency'].dropna().unique())}") | |
| print(f" PIT-SAFE rows (pit_confirmed): {investable(df, use_pit=True).shape[0]:,} <- backtest-safe") | |
| print(f" current tradeable (incl parent rollup): {investable(df, use_pit=False).shape[0]:,} <- screening only (look-ahead)") | |
| print(f" obligated awards (ceilings excluded): {obligated_awards(df).shape[0]:,}") | |
| print(f" distinct PIT tickers: {df['ticker_pit'].nunique()} | distinct current tickers: {df['ticker_current_or_rollup'].nunique()}") | |
| print(f" buyer countries: {df['buyer_country'].value_counts().head(6).to_dict()}") | |
| print("\n top CURRENT tradeable tickers by obligated-award count (screening view, NOT a backtest):") | |
| g = (obligated_awards(investable(df, use_pit=False)) | |
| .groupby('ticker_current_or_rollup') | |
| .agg(awards=('award_value_num', 'count'), | |
| currencies=('currency', lambda s: ','.join(sorted(s.dropna().unique()))), | |
| pit_rows=('ticker_pit', lambda s: int(s.notna().sum()))) | |
| .sort_values('awards', ascending=False).head(8)) | |
| for tk, r in g.iterrows(): | |
| print(f" {tk:<10} {int(r['awards']):>4} awards pit-safe:{int(r['pit_rows']):>3} [{r['currencies']}]") | |
| print("\n ^ 'pit-safe' = how many of those rows are forward-bias-free. Backtest only those.") | |
| try: | |
| import duckdb | |
| con = duckdb.connect(); con.register("awards", df) | |
| print("\n duckdb view 'awards' registered. PIT-safe backtest set:") | |
| print(" SELECT * FROM awards WHERE ticker_pit IS NOT NULL") | |
| except ImportError: | |
| pass | |