Files
lerobot/tests/annotations/test_modules.py
T
Pepijn a635a32290 feat: language annotation pipeline (PR 2/3)
Adds the steerable annotation pipeline (`lerobot-annotate`) that populates
the `language_persistent` and `language_events` columns introduced in
PR 1 directly into `data/chunk-*/file-*.parquet`. No flavor namespace,
no sidecar tree.

Modules produced:
- Module 1 (plan_subtasks_memory): Pi0.7-style subtasks, plan (init +
  refresh on interjection), MEM-style memory at subtask boundaries.
- Module 2 (interjections_and_speech): t=0 speech-only acknowledgement,
  mid-episode paired interjection + speech tool-call atom.
- Module 3 (general_vqa): bbox/keypoint/count/attribute/spatial pairs at
  configurable cadence with one-retry JSON validation.

Writer enforces: per-episode persistent identity, exact-frame event
timestamps, column routing per `column_for_style`, dataset-level `tools`
column with the `say` schema, drops legacy `subtask_index`. Validator
runs against staged JSONL artifacts before the writer rewrites parquet.

Adds `lerobot-annotate` console script, `annotations` extra (datatrove +
optional vllm), `make annotation-e2e` opt-in smoke target, and
`docs/source/annotation_pipeline.mdx`.

Branched from PR 1 (`feat/language-columns`).

Co-Authored-By: Claude Opus 4.7 (1M context) <noreply@anthropic.com>
2026-04-27 16:22:51 +02:00

167 lines
6.5 KiB
Python

#!/usr/bin/env python
# Copyright 2026 The HuggingFace Inc. team. All rights reserved.
#
# Licensed under the Apache License, Version 2.0 (the "License");
# you may not use this file except in compliance with the License.
# You may obtain a copy of the License at
#
# http://www.apache.org/licenses/LICENSE-2.0
#
# Unless required by applicable law or agreed to in writing, software
# distributed under the License is distributed on an "AS IS" BASIS,
# WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
# See the License for the specific language governing permissions and
# limitations under the License.
"""Module 1/2/3 unit tests with stubbed VLMs."""
from __future__ import annotations
import json
from pathlib import Path
from lerobot.annotations.steerable_pipeline.config import (
Module1Config,
Module2Config,
Module3Config,
)
from lerobot.annotations.steerable_pipeline.modules import (
GeneralVqaModule,
InterjectionsAndSpeechModule,
PlanSubtasksMemoryModule,
)
from lerobot.annotations.steerable_pipeline.reader import iter_episodes
from lerobot.annotations.steerable_pipeline.staging import EpisodeStaging
from ._helpers import make_canned_responder
def test_module1_plan_memory_subtask_smoke(fixture_dataset_root: Path, tmp_path: Path) -> None:
vlm = make_canned_responder(
{
"Decompose the demonstration": {
"subtasks": [
{"text": "grasp the handle of the sponge", "start": 0.0, "end": 0.4},
{"text": "wipe the counter from left to right", "start": 0.4, "end": 0.8},
{"text": "place the sponge into the sink", "start": 0.8, "end": 1.1},
]
},
"write a concise hierarchical PLAN": {"plan": "1. grasp\n2. wipe\n3. place"},
"Update the memory": {"memory": "wiped the counter once"},
},
)
module = PlanSubtasksMemoryModule(vlm=vlm, config=Module1Config())
record = next(iter_episodes(fixture_dataset_root))
staging = EpisodeStaging(tmp_path / "stage", record.episode_index)
module.run_episode(record, staging)
rows = staging.read("module_1")
styles = {r["style"] for r in rows}
assert {"subtask", "plan", "memory"}.issubset(styles)
# subtask timestamps must be exact frame timestamps
frame_set = set(record.frame_timestamps)
for row in rows:
assert row["timestamp"] in frame_set
# exactly one plan row at t0
plan_rows = [r for r in rows if r["style"] == "plan"]
assert len(plan_rows) == 1
assert plan_rows[0]["timestamp"] == record.frame_timestamps[0]
def test_module2_at_t0_emits_speech_only_no_interjection(fixture_dataset_root: Path, tmp_path: Path) -> None:
vlm = make_canned_responder(
{"acknowledgement the robot": {"text": "Sure, on it."}},
)
module = InterjectionsAndSpeechModule(
vlm=vlm,
config=Module2Config(max_interjections_per_episode=0),
)
record = next(iter_episodes(fixture_dataset_root))
staging = EpisodeStaging(tmp_path / "stage", record.episode_index)
module.run_episode(record, staging)
rows = staging.read("module_2")
assert len(rows) == 1
only = rows[0]
assert only["role"] == "assistant"
assert only["style"] is None
assert only["content"] is None
assert only["timestamp"] == record.frame_timestamps[0]
assert only["tool_calls"][0]["function"]["name"] == "say"
def test_module2_mid_episode_emits_paired_interjection_and_speech(
fixture_dataset_root: Path, tmp_path: Path
) -> None:
vlm = make_canned_responder(
{
"acknowledgement the robot": {"text": "OK."},
"ONE realistic interruption": {
"interjection": "actually skip the dishes",
"speech": "Skipping the dishes.",
},
},
)
module = InterjectionsAndSpeechModule(
vlm=vlm,
config=Module2Config(max_interjections_per_episode=1, interjection_min_t=0.2),
seed=7,
)
record = next(iter_episodes(fixture_dataset_root))
staging = EpisodeStaging(tmp_path / "stage", record.episode_index)
module.run_episode(record, staging)
rows = staging.read("module_2")
interjections = [r for r in rows if r["style"] == "interjection"]
speeches = [r for r in rows if r["style"] is None and r["role"] == "assistant"]
assert len(interjections) == 1
assert len(speeches) >= 2 # initial t=0 + one paired with the interjection
inter_t = interjections[0]["timestamp"]
assert any(abs(s["timestamp"] - inter_t) < 1e-9 for s in speeches)
def test_module3_vqa_unique_per_frame(single_episode_root: Path, tmp_path: Path) -> None:
payload = {
"question": "How many cups?",
"answer": {"label": "cup", "count": 2, "note": "white & blue"},
}
vlm = make_canned_responder({"frame-grounded visual question": payload})
module = GeneralVqaModule(
vlm=vlm,
config=Module3Config(vqa_emission_hz=1.0, K=3),
seed=1,
)
record = next(iter_episodes(single_episode_root))
staging = EpisodeStaging(tmp_path / "stage", record.episode_index)
module.run_episode(record, staging)
rows = staging.read("module_3")
user_ts = [r["timestamp"] for r in rows if r["role"] == "user" and r["style"] == "vqa"]
assistant_ts = [r["timestamp"] for r in rows if r["role"] == "assistant" and r["style"] == "vqa"]
# at most one user (vqa) per frame; same for assistant
assert len(user_ts) == len(set(user_ts))
assert len(assistant_ts) == len(set(assistant_ts))
# every emitted timestamp must be an exact source frame timestamp
frame_set = set(record.frame_timestamps)
for ts in user_ts + assistant_ts:
assert ts in frame_set
def test_module3_assistant_content_is_valid_json(single_episode_root: Path, tmp_path: Path) -> None:
payload = {
"question": "Where is the cup?",
"answer": {"detections": [{"label": "cup", "bbox_format": "xyxy", "bbox": [10, 20, 50, 80]}]},
}
vlm = make_canned_responder({"frame-grounded visual question": payload})
module = GeneralVqaModule(
vlm=vlm,
config=Module3Config(vqa_emission_hz=1.0, K=2),
seed=2,
)
record = next(iter_episodes(single_episode_root))
staging = EpisodeStaging(tmp_path / "stage", record.episode_index)
module.run_episode(record, staging)
rows = staging.read("module_3")
for row in rows:
if row["role"] == "assistant" and row["style"] == "vqa":
decoded = json.loads(row["content"])
assert "detections" in decoded