| """ |
| Soccer Feature Engineering Pipeline - Competition Version |
| =========================================================== |
| Engineers 33 match-level, team-level features from SkillCorner dynamic_events.csv. |
| Based on the Kaggle Soccer Feature Engineering Hackathon requirements. |
| |
| This script uses the EXACT column naming convention from the reference notebook |
| by Dev0907 to ensure full compatibility with competition evaluation. |
| |
| Input: SkillCorner opendata repository (or any folder with *_dynamic_events.csv) |
| Output: features.csv - one row per team per match |
| """ |
|
|
| import glob |
| import os |
|
|
| import pandas as pd |
|
|
|
|
| def discover_dynamic_events_files(data_root="/app/opendata/data/matches"): |
| """Dynamically discover all *_dynamic_events.csv files via glob.""" |
| pattern = os.path.join(data_root, "**", "*_dynamic_events.csv") |
| files = glob.glob(pattern, recursive=True) |
| files.sort() |
| return files |
|
|
|
|
| def compute_team_features(df, team): |
| """ |
| Compute 33 aggregated match-level features for a single team in a single match. |
| Uses EXACT column names from the reference notebook by Dev0907. |
| """ |
| match_id = df["match_id"].iloc[0] |
|
|
| team_df = df[df["team_id"] == team] |
| poss = team_df[team_df["event_type"] == "player_possession"] |
| obe = team_df[team_df["event_type"] == "on_ball_engagement"] |
| obr = team_df[team_df["event_type"] == "off_ball_run"] |
|
|
| passes = poss[poss["pass_outcome"].notna()] |
|
|
| |
| att1 = int((passes["third_end"] == "attacking_third").sum()) |
|
|
| carries = poss[poss["carry"] == True] |
| att2 = int((carries["third_end"] == "attacking_third").sum()) |
|
|
| att3 = int(passes["n_opponents_bypassed"].clip(lower=0).sum()) |
|
|
| att4 = int(passes["last_line_break"].sum()) if "last_line_break" in passes.columns else 0 |
|
|
| att5 = int((passes["third_start"] == "attacking_third").sum()) |
|
|
| |
| att6 = int((poss["team_in_possession_phase_type"] == "build_up").sum()) |
| att7 = int((poss["team_in_possession_phase_type"] == "direct").sum()) |
| att8 = int((poss["team_in_possession_phase_type"] == "set_play").sum()) |
| att9 = int((poss["team_in_possession_phase_type"] == "quick_break").sum()) |
| att10 = int((poss["team_in_possession_phase_type"] == "transition").sum()) |
|
|
| |
| att11 = int(poss["one_touch"].sum()) |
| att12 = int(poss["quick_pass"].sum()) |
| att13 = int(poss["lead_to_shot"].sum()) |
| att14 = int(poss["lead_to_goal"].sum()) |
| att15 = float(round(poss["delta_to_last_defensive_line_gain"].clip(lower=0).sum(), 2)) |
| att16 = float(round(poss["last_defensive_line_height_gain"].clip(lower=0).sum(), 2)) |
| att17 = int(poss["forward_momentum"].sum()) |
| att18 = int(poss["n_passing_options"].sum()) |
| att19 = int(poss["n_passing_options_dangerous_difficult"].sum()) |
| att20 = int((obr["event_subtype"] == "run_ahead_of_the_ball").sum()) |
|
|
| |
| def1 = int(len(obe)) |
| def2 = int((obe["event_subtype"] == "counter_press").sum()) |
| def3 = int((obe["event_subtype"] == "recovery_press").sum()) |
|
|
| chains = obe[obe["pressing_chain_length"].notna()] |
| chain_starts = chains[chains["index_in_pressing_chain"] == 1.0] |
| def4 = int(chain_starts["pressing_chain_length"].sum()) |
| def5 = int(len(chain_starts)) |
| def6 = int(chains["pressing_chain_length"].max()) if len(chains) > 0 else 0 |
|
|
| def7 = int(obe["stop_possession_danger"].sum()) |
|
|
| |
| run1 = int(obr["break_defensive_line"].sum()) |
| run2 = int(obr["push_defensive_line"].sum()) |
| run3 = int((obr["event_subtype"] == "behind").sum()) |
| run4 = int((obr["event_subtype"] == "overlap").sum()) |
| run5 = int((obr["third_start"] == "attacking_third").sum()) |
| gng = int(poss["initiate_give_and_go"].sum()) if "initiate_give_and_go" in poss.columns else 0 |
|
|
| return { |
| "match_id": match_id, |
| "team_id": team, |
| |
| "att1_passes_into_final_third": att1, |
| "att2_carries_into_attacking_third": att2, |
| "att3_opponents_bypassed_by_passes": att3, |
| "att4_last_line_break_passes": att4, |
| "att5_passes_in_attacking_third": att5, |
| |
| "att6_buildup_phase_events": att6, |
| "att7_direct_phase_events": att7, |
| "att8_setplay_events": att8, |
| "att9_quickbreak_events": att9, |
| "att10_transition_events": att10, |
| |
| "att11_one_touch_passes": att11, |
| "att12_quick_passes": att12, |
| "att13_possessions_leading_to_shot": att13, |
| "att14_possessions_leading_to_goal": att14, |
| "att15_def_line_depth_total_pushed_m": att15, |
| "att16_def_line_height_total_pushed_m": att16, |
| "att17_forward_momentum_possessions": att17, |
| "att18_passing_options_total": att18, |
| "att19_dangerous_difficult_pass_options": att19, |
| "att20_runs_ahead_of_ball": att20, |
| |
| "def1_total_defensive_engagements": def1, |
| "def2_counter_press_actions": def2, |
| "def3_recovery_press_actions": def3, |
| "def4_pressing_chain_total_length": def4, |
| "def5_pressing_chains_initiated": def5, |
| "def6_max_pressing_chain_length": def6, |
| "def7_danger_stopped": def7, |
| |
| "run1_line_breaking_runs": run1, |
| "run2_line_pushing_runs": run2, |
| "run3_runs_behind_defense": run3, |
| "run4_overlap_runs": run4, |
| "run5_attacking_third_runs": run5, |
| "att_give_and_go_initiated": gng, |
| } |
|
|
|
|
| def run_pipeline(data_root="/app/opendata/data/matches", output_path="/app/features.csv"): |
| files = discover_dynamic_events_files(data_root) |
| print(f"Discovered {len(files)} dynamic_events.csv files") |
|
|
| records = [] |
| for f in files: |
| try: |
| df = pd.read_csv(f, low_memory=False) |
| match_id = df["match_id"].iloc[0] |
| teams = sorted(df["team_id"].unique().tolist()) |
| for team in teams: |
| features = compute_team_features(df, team) |
| records.append(features) |
| print(f" match {match_id}: {len(teams)} teams") |
| except Exception as e: |
| print(f" ERROR {os.path.basename(f)}: {e}") |
|
|
| if not records: |
| raise ValueError("No valid match files processed.") |
|
|
| features_df = pd.DataFrame(records) |
|
|
| |
| col_order = [ |
| "match_id", "team_id", |
| "att1_passes_into_final_third", |
| "att2_carries_into_attacking_third", |
| "att3_opponents_bypassed_by_passes", |
| "att4_last_line_break_passes", |
| "att5_passes_in_attacking_third", |
| "att6_buildup_phase_events", |
| "att7_direct_phase_events", |
| "att8_setplay_events", |
| "att9_quickbreak_events", |
| "att10_transition_events", |
| "att11_one_touch_passes", |
| "att12_quick_passes", |
| "att13_possessions_leading_to_shot", |
| "att14_possessions_leading_to_goal", |
| "att15_def_line_depth_total_pushed_m", |
| "att16_def_line_height_total_pushed_m", |
| "att17_forward_momentum_possessions", |
| "att18_passing_options_total", |
| "att19_dangerous_difficult_pass_options", |
| "att20_runs_ahead_of_ball", |
| "def1_total_defensive_engagements", |
| "def2_counter_press_actions", |
| "def3_recovery_press_actions", |
| "def4_pressing_chain_total_length", |
| "def5_pressing_chains_initiated", |
| "def6_max_pressing_chain_length", |
| "def7_danger_stopped", |
| "run1_line_breaking_runs", |
| "run2_line_pushing_runs", |
| "run3_runs_behind_defense", |
| "run4_overlap_runs", |
| "run5_attacking_third_runs", |
| "att_give_and_go_initiated", |
| ] |
|
|
| features_df = features_df[col_order] |
|
|
| features_df.to_csv(output_path, index=False) |
| print(f"\nWrote {len(features_df)} rows x {len(features_df.columns)} columns to {output_path}") |
| print(f"Shape: {features_df.shape}") |
| return features_df |
|
|
|
|
| if __name__ == "__main__": |
| run_pipeline() |
|
|