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Silly Kicks

The Modern SPADL Analyst vs The Chief SPADL Evaluator & Classifier Comic by NanoBanana — inspired by Monty Python's Ministry of Silly Walks

CI

The Ministry requires that all football actions be properly classified and valued.

silly-kicks is a Python library for objectively quantifying the impact of individual actions performed by football players using event stream data.

It is an independently maintained successor to socceraction, originally developed by Tom Decroos and Pieter Robberechts at KU Leuven. Built under the MIT license with full attribution preserved.

Features

  • SPADL -- Soccer Player Action Description Language: a unified schema for on-ball actions with dedicated DataFrame converters for StatsBomb, Wyscout, Opta, Sportec / IDSSE Bundesliga, Metrica Sports, and Gradient Sports — plus a kloppy gateway for raw-provider-data consumers (StatsBomb, Sportec, Metrica)
  • Tracking -- 20-column long-form per-frame schema parallel to SPADL, with native adapters for Sportec / IDSSE Bundesliga and Gradient Sports plus a kloppy gateway for Metrica + SkillCorner. Key capabilities: action-to-frame linkage, frame preprocessing (smoothing, interpolation, velocities), GK identification, defensive-line geometry, ball-carrier inference, and 40+ tracking-aware action-context features for HybridVAEP integration including pitch control (Spearman / Fernández-Bornn / Voronoi), GK influence primitives (GKDV Layer 1), pressure (three published methods), pre-shot GK position/angles, pre-action movement, off-ball runs, line-break detection (threshold + Ward clustering), and team shape envelope. Full feature inventory in the CHANGELOG.
  • VAEP -- Valuing Actions by Estimating Probabilities: a framework for quantifying the value of individual actions
  • Atomic SPADL -- continuous (non-discretized) action representation

Installation

pip install silly-kicks

Requires Python 3.10 or later.

With optional provider support:

pip install "silly-kicks[kloppy,xgboost]"

Quick Start

import silly_kicks.spadl as spadl

# Convert StatsBomb events to SPADL actions
actions, report = spadl.statsbomb.convert_to_actions(events, home_team_id=123)

# Add human-readable names
actions = spadl.add_names(actions)

VAEP Workflow

The full pipeline: convert provider events to SPADL, train a VAEP model, and rate individual actions.

from silly_kicks.spadl import statsbomb
from silly_kicks.vaep import VAEP

# 1. Convert provider events to SPADL
actions, report = statsbomb.convert_to_actions(
    events_df, home_team_id=home_team_id,
    xy_fidelity_version=2, shot_fidelity_version=2,
)

# 2. Train a VAEP model
model = VAEP(nb_prev_actions=3)
features = model.compute_features(game, actions)
labels = model.compute_labels(game, actions)
model.fit(features, labels, learner="xgboost", random_state=42)

# 3. Rate actions
ratings = model.rate(game, actions)
# Returns DataFrame with offensive_value, defensive_value, vaep_value

Hybrid-VAEP

Standard VAEP includes the action's result (success/fail) as a feature, which creates information leakage. HybridVAEP removes result information from the current action while preserving it for previous actions.

from silly_kicks.vaep import HybridVAEP

# HybridVAEP removes result leakage from current-action features
model = HybridVAEP(nb_prev_actions=3)
# Same fit/rate API as standard VAEP

Multi-Provider Support

All converters share the same output schema, so downstream code works identically regardless of the data provider.

from silly_kicks.spadl import opta, wyscout

actions_opta, _ = opta.convert_to_actions(opta_events, home_team_id)
actions_wyscout, _ = wyscout.convert_to_actions(wyscout_events, home_team_id)

Architecture

Open docs/c4/architecture.html in a browser to explore the C4 architecture diagrams (System Context, Containers).

Attribution

This project incorporates academic methodologies from the soccer-analytics literature. See NOTICE for full bibliographic citations and third-party library acknowledgements.

silly-kicks builds on the foundational research by the KU Leuven Machine Learning Research Group. If you use this library in academic work, please cite the original papers:

@inproceedings{Decroos2019VAEP,
  title     = {Actions Speak Louder than Goals: Valuing Player Actions in Soccer},
  author    = {Tom Decroos and Lotte Bransen and Jan Van Haaren and Jesse Davis},
  booktitle = {Proceedings of the 25th ACM SIGKDD International Conference
               on Knowledge Discovery \& Data Mining},
  pages     = {1851--1861},
  year      = {2019},
  doi       = {10.1145/3292500.3330758}
}

@inproceedings{Decroos2020AtomicSPADL,
  title     = {Interpretable Prediction of Goals in Soccer},
  author    = {Tom Decroos and Jesse Davis},
  booktitle = {Proceedings of the AAAI-20 Workshop on Artificial Intelligence
               in Team Sports},
  year      = {2020}
}

Contributing

See CONTRIBUTING.md for development setup, coding standards, and PR process. Open items and planned work are tracked in TODO.md.

License

MIT License. See LICENSE for details.

About

Maintained fork of socceraction — SPADL event conversion + VAEP action valuation for soccer analytics

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