Generated from architecture.dsl using the Structurizr → PlantUML rendering pipeline.
workspace "silly-kicks" "Football action classification (SPADL) and valuation (VAEP) library" {
model {
// --- Actors ---
analyst = person "Soccer Analytics Practitioner" "Data scientist or analyst who classifies and values football actions"
pipeline = person "Downstream Pipeline" "Production data pipeline that calls silly-kicks inside Spark UDFs"
maintainer = person "Library Maintainer" "Runs the TF-24 calibration sweep to recommend tuned tracking defaults"
// --- External Systems ---
kloppy = softwareSystem "kloppy" "PySport event/tracking data normalization library" "External"
mlLibs = softwareSystem "ML Libraries" "XGBoost, CatBoost, LightGBM gradient boosting frameworks" "External"
hfHub = softwareSystem "HuggingFace Hub" "Model artifact hosting for pre-trained Ghost-GK weights" "External"
accessibleSpace = softwareSystem "accessible-space" "DAS (Dangerous Accessible Space) surface computation" "External"
ruthless = softwareSystem "ruthless-efficiency" "Optuna/evolutionary optimization substrate (OptunaStrategy + CachedObjective)" "External"
pining = softwareSystem "pining-for-the-data" "Gated mock provider REST API (SkillCorner/IDSSE public, Gradient Sports owner-tier) over S3" "External"
databricks = softwareSystem "Databricks Lakehouse" "bronze.* SPADL/tracking tables + spadl_actions xT corpus" "External"
// --- The System ---
sillyKicks = softwareSystem "silly-kicks" "Classifies football actions into SPADL representation and values them via VAEP" {
spadl = container "silly_kicks.spadl" "SPADL event conversion (23 action types) from 7 providers + kloppy gateway. Post-conversion enrichments: possessions, game state, GK analytics, naming. Canonical LTR orientation with auto-detected input conventions." "Python" "Library"
vaep = container "silly_kicks.vaep" "VAEP action valuation: features, labels (action/possession/time windowing), model training. HybridVAEP removes result leakage. Goalscore-free xfn variants." "Python" "Library"
tracking = container "silly_kicks.tracking" "Per-frame tracking data: schema, provider adapters, event-frame linkage, preprocessing, pitch control, OBSO, DAS, space creation, ghost-GK positioning (selectable numpy/cpu-numba/fft/fft-cic KDE backends), shot-occurrence (xS), cross-attempt (xCross), and 23 action-coupled aggregators." "Python" "Library"
atomic = container "silly_kicks.atomic" "Atomic SPADL/VAEP: continuous 33-type action representation with full enrichment parity. Mirrors tracking.features for atomic-shaped columns." "Python" "Library"
xthreat = container "silly_kicks.xthreat" "Expected Threat model: pitch grid value surface via dynamic programming" "Python" "Library"
calibration = container "silly_kicks.calibration + scripts/" "TF-24 Optuna calibration harness: pure objectives/CV/gates + frozen exogenous xT artifact. scripts/ CLI + pining + Databricks loaders. Recommends infer_ball_carrier / LinkParams.k3 / off-ball-run defaults via carrier accuracy + held-out VAEP Brier. Does not change library constants." "Python (optional [calibration] extra)" "Library"
}
// --- Relationships: Context level ---
analyst -> sillyKicks "Converts event data and values actions using" "Python API"
pipeline -> sillyKicks "Calls inside Spark applyInPandas UDFs via" "Python import"
maintainer -> sillyKicks "Calibrates tracking defaults via the calibration CLI" "scripts/calibrate_tracking_defaults.py"
sillyKicks -> kloppy "Accepts EventDataset / TrackingDataset from" "kloppy bridge"
sillyKicks -> mlLibs "Trains and predicts with" "Python API"
sillyKicks -> hfHub "Downloads pre-trained Ghost-GK model from" "huggingface_hub"
sillyKicks -> accessibleSpace "Computes DAS surfaces via" "accessible-space API"
sillyKicks -> ruthless "Runs Optuna calibration studies via" "OptunaStrategy"
sillyKicks -> pining "Loads calibration match data from" "Bearer -> presigned S3"
sillyKicks -> databricks "Loads bronze tables + xT corpus from" "databricks-sql-connector"
// --- Relationships: Container level ---
analyst -> spadl "Converts raw events to SPADL actions and enriches via" "convert_to_actions() + add_*() helper family"
analyst -> tracking "Converts raw tracking data to long-form frames + enriches via" "convert_to_frames() + add_action_context()"
analyst -> vaep "Values actions via" "VAEP.fit() / VAEP.rate() / HybridVAEP (with optional frames=)"
analyst -> xthreat "Computes pitch value surface via" "ExpectedThreat.fit()"
maintainer -> calibration "Runs the two-stage Optuna sweep (carrier accuracy, then held-out Brier) via" "calibrate_tracking_defaults.py"
pipeline -> spadl "Passes per-game DataFrames to" "lazy import inside UDF"
pipeline -> tracking "Passes per-match tracking frames to" "lazy import inside UDF"
pipeline -> vaep "Scores actions with pre-trained models via" "VAEP.rate()"
spadl -> kloppy "Accepts kloppy EventDataset (derives game_id from dataset metadata) in kloppy converter" "kloppy bridge"
tracking -> kloppy "Accepts kloppy TrackingDataset in kloppy gateway" "kloppy bridge"
tracking -> hfHub "Lazy-downloads Ghost-GK model weights via" "huggingface_hub"
tracking -> accessibleSpace "Computes DAS via" "get_individual_das()"
vaep -> spadl "Reads SPADL config, schema constants, and action names from" "Python import"
vaep -> mlLibs "Delegates model training to" "fit() dispatch"
tracking -> vaep "Imports frame_aware decorator + Frames type alias from" "vaep.feature_framework"
vaep -> tracking "Lazy-imports play_left_to_right when frames= is supplied" "lazy import"
spadl -> tracking "Lazy-imports tracking GK features when frames= is supplied to add_pre_shot_gk_context" "lazy import"
atomic -> spadl "Extends SPADL with atomic action types via" "Python import"
atomic -> vaep "Inherits VAEP pipeline via AtomicVAEP subclass" "Python import"
atomic -> tracking "Reuses _kernels + lift_to_states from tracking namespace" "Python import"
xthreat -> spadl "Reads SPADL config and schema from" "Python import"
// --- Relationships: Calibration harness (TF-24) ---
calibration -> ruthless "Drives Optuna TPE studies (CachedObjective fast path) via" "OptunaStrategy"
calibration -> tracking "Enriches frames + infers ball carrier via" "add_* aggregators + infer_ball_carrier"
calibration -> vaep "Computes held-out scores/concedes labels via" "vaep.labels"
calibration -> xthreat "Fits the frozen exogenous xT grid via" "ExpectedThreat.fit() on a disjoint corpus"
calibration -> spadl "Converts provider events to SPADL via" "convert_to_actions()"
calibration -> mlLibs "Trains disposable XGBoost classifiers (deterministic) via" "XGBoost"
calibration -> kloppy "Parses SkillCorner/Sportec provider data via" "kloppy.skillcorner / kloppy.sportec"
calibration -> pining "Loads SkillCorner/IDSSE/Gradient-Sports matches from" "Bearer -> 302 -> presigned S3"
calibration -> databricks "Loads bronze tables + the spadl_actions xT corpus from" "databricks-sql-connector"
}
views {
systemContext sillyKicks "SystemContext" {
include *
autoLayout
}
container sillyKicks "Containers" {
include *
autoLayout
}
styles {
element "Person" {
shape Person
background #08427B
color #ffffff
}
element "Software System" {
background #1168BD
color #ffffff
}
element "External" {
background #999999
color #ffffff
}
element "Container" {
background #438DD5
color #ffffff
}
element "Library" {
shape RoundedBox
}
element "Database" {
shape Cylinder
}
element "Component" {
background #85BBF0
color #000000
}
relationship "Relationship" {
color #707070
}
}
}
}