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Python bindings for the Rocket League replay processing library subtr-actor.

Project description

subtr-actor-py

Python bindings for subtr-actor, a Rocket League replay processing library.

Installation

pip install subtr-actor-py

Usage

import subtr_actor

replay_path = "path/to/replay.replay"

# Parse raw replay bytes into the full replay structure.
with open(replay_path, "rb") as replay_file:
    replay = subtr_actor.parse_replay(replay_file.read())

# Build a numpy ndarray plus metadata.
meta, ndarray = subtr_actor.get_ndarray_with_info_from_replay_filepath(
    replay_path,
    global_feature_adders=["BallRigidBody", "SecondsRemaining"],
    player_feature_adders=["PlayerRigidBody", "PlayerBoost", "PlayerAnyJump"],
    fps=10.0,
    dtype="float32",
)

headers = subtr_actor.get_column_headers(
    global_feature_adders=["BallRigidBody", "SecondsRemaining"],
    player_feature_adders=["PlayerRigidBody", "PlayerBoost"],
)

replay_meta = subtr_actor.get_replay_meta(replay_path)
frames_data = subtr_actor.get_replay_frames_data(replay_path)
stats_events = subtr_actor.get_stats_events(replay_path)
summed_stats = subtr_actor.get_summed_stats(
    replay_path,
    module_names=["core", "boost", "movement"],
)
stats_module_names = subtr_actor.get_stats_module_names()
stats_snapshot_data = subtr_actor.get_stats_snapshot_data(
    replay_path,
    module_names=["core", "boost"],
    frame_step_seconds=1.0,
)
stats_timeline = subtr_actor.get_stats_timeline(
    replay_path,
    frame_step_seconds=1.0,
)
legacy_stats_timeline = subtr_actor.get_legacy_stats_timeline(
    replay_path,
    module_names=["core", "boost", "movement"],
    frame_step_seconds=1.0,
)

print(ndarray.shape)
print(headers["player_headers"][:5])
print(replay_meta["map_name"])
print(stats_events["boost_ledger"][-1])
print(summed_stats["modules"]["boost"]["team_zero"]["amount_collected"])
print(stats_module_names)
print(stats_snapshot_data["frames"][-1]["modules"]["boost"]["team_zero"]["amount_collected"])
print(stats_timeline["events"]["boost_ledger"][-1])
print(legacy_stats_timeline["frames"][-1]["team_zero"]["boost"]["amount_collected"])

get_stats_timeline is the compact event-backed timeline. Its frames contain timing, gameplay state, and player identity scaffolding only; stat deltas live under events. Use get_legacy_stats_timeline only for compatibility code that still needs serialized per-frame team/player snapshots.

API Surface

parse_replay(data: bytes) -> dict

Parse raw replay bytes and return the full replay structure as Python data.

get_ndarray_with_info_from_replay_filepath(filepath, global_feature_adders=None, player_feature_adders=None, fps=None, dtype=None) -> tuple[dict, numpy.ndarray]

Process a replay file and return metadata plus a numpy.ndarray.

Parameters:

  • filepath: path to the replay file
  • global_feature_adders: list of global feature names, default ["BallRigidBody"]
  • player_feature_adders: list of player feature names, default ["PlayerRigidBody", "PlayerBoost", "PlayerAnyJump"]
  • fps: target FPS for resampling, default 10.0
  • dtype: output dtype string. Supported values are float16/f16/half, float32/f32, and float64/f64/double

get_replay_meta(filepath, global_feature_adders=None, player_feature_adders=None) -> dict

Get replay metadata and ndarray headers without materializing the full ndarray.

get_column_headers(global_feature_adders=None, player_feature_adders=None) -> dict

Get header information for the configured ndarray layout.

get_replay_frames_data(filepath) -> dict

Get structured frame-by-frame game state data with no FPS resampling.

get_stats_events(filepath, frame_step_seconds=None) -> dict

Get the compact modern stats event streams for a replay.

Parameters:

  • filepath: path to the replay file
  • frame_step_seconds: optional positive sampling interval in seconds for the accompanying timeline collector. Events are still emitted as compact stat change streams.

get_summed_stats(filepath, module_names=None) -> dict

Get aggregate summed stats for the selected builtin modules.

Parameters:

  • filepath: path to the replay file
  • module_names: optional list of builtin stats module names. By default all builtin modules are included.

get_stats_module_names() -> list[str]

List the builtin stats modules that can be selected in get_summed_stats, get_stats_snapshot_data, and get_legacy_stats_timeline.

get_stats_snapshot_data(filepath, module_names=None, frame_step_seconds=None) -> dict

Get the raw stats snapshot payload produced by StatsCollector, including:

  • config: module configuration emitted by the selected stats modules
  • modules: aggregate module outputs
  • frames: per-sample module snapshots keyed by module name

Parameters:

  • filepath: path to the replay file
  • module_names: optional list of builtin stats module names. By default all builtin modules are included.
  • frame_step_seconds: optional positive sampling interval in seconds. By default every replay frame is captured.

get_stats_timeline(filepath, frame_step_seconds=None) -> dict

Get the compact event-backed stats timeline for each replay sample.

Frames contain timing, gameplay state, and player identity scaffolding only; stat state changes are transferred through events, and full team/player snapshots can be derived by clients that need them.

Parameters:

  • filepath: path to the replay file
  • frame_step_seconds: optional positive sampling interval in seconds. By default every replay frame is captured.

module_names filtering is not supported for compact event timelines. Passing it raises ValueError; use get_legacy_stats_timeline if filtered full snapshot timelines are needed.

get_legacy_stats_timeline(filepath, module_names=None, frame_step_seconds=None) -> dict

Get cumulative typed stats snapshots for each replay sample.

This preserves the pre-compact timeline behavior for compatibility and for explicit parity checks, but it serializes the full team/player partial sums.

Parameters:

  • filepath: path to the replay file
  • module_names: optional list of builtin stats module names. By default all builtin modules are included.
  • frame_step_seconds: optional positive sampling interval in seconds. By default every replay frame is captured.

Feature Adders

See the subtr-actor ndarray docs for the full list of feature-adder names.

Common global features:

  • BallRigidBody
  • CurrentTime
  • SecondsRemaining

Common player features:

  • PlayerRigidBody
  • PlayerBallDistance
  • PlayerBoost
  • PlayerAnyJump
  • PlayerJump
  • PlayerDodgeRefreshed
  • PlayerEvent:touch

PlayerBoost is exposed in raw replay units (0-255), not 0-100 percent. Analysis-backed player event indicators use PlayerEvent:<event_name> and emit 1 for a sampled frame when that player has a new event, otherwise 0.

Development

Repository-level compile check:

just build-python

For an importable local Python environment, use maturin develop from the python/ directory:

cd python
uv sync --group dev
uv run maturin develop
uv run pytest

If you are using the repo flake, nix develop now provides the pinned CPython 3.11 toolchain and Python dev dependencies via uv2nix. Create a writable virtual environment from that interpreter, then install the local extension into it:

nix develop
uv venv /tmp/subtr-actor-venv
source /tmp/subtr-actor-venv/bin/activate
cd python
maturin develop
pytest

If you are not using uv or Nix, install maturin, pytest, and numpy in a virtual environment and run maturin develop directly.

Publishing Notes

This binding depends on the workspace crate via:

[dependencies.subtr-actor]
path = ".."
version = "0.12.0"

That keeps local development wired to the workspace crate while still pinning the published dependency version. Use just bump <version> to update the workspace and binding versions together.

License

MIT

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