mirror of
https://github.com/huggingface/lerobot.git
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fd18beb3a1
- name the three modules everywhere (plan / interjections / vqa) instead of module_1/2/3 — config classes, config fields, executor params, staging keys and phase names now carry the module name - rename examples/annotation -> examples/annotations; add the Apache header to run_hf_job.py - drop the unused GeneralVqaModule._generate_one - remove "PR 1" references from comments/docstrings - frames.py: rely on the always-defined LeRobotDatasetMetadata.camera_keys - executor.py: read/write meta/info.json via load_info / write_info - reader.py: load meta/tasks.parquet via io_utils.load_tasks - make --push_to_hub a bool; push the annotated dataset back to --repo_id - move the on-disk test dataset builder into tests/fixtures (build_annotation_dataset); run_e2e_smoke reuses it - clarify in the docs that the vqa module grounds each pair on a single frame (K = per-tick anchor count) - hoist stdlib dynamic imports to module scope Co-Authored-By: Claude Opus 4.7 (1M context) <noreply@anthropic.com>
176 lines
6.8 KiB
Python
176 lines
6.8 KiB
Python
#!/usr/bin/env python
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# Copyright 2026 The HuggingFace Inc. team. All rights reserved.
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#
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# Licensed under the Apache License, Version 2.0 (the "License");
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# you may not use this file except in compliance with the License.
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# You may obtain a copy of the License at
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#
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# http://www.apache.org/licenses/LICENSE-2.0
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#
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# Unless required by applicable law or agreed to in writing, software
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# distributed under the License is distributed on an "AS IS" BASIS,
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# WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
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# See the License for the specific language governing permissions and
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# limitations under the License.
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"""End-to-end smoke: pipeline output → PR 1 canonical recipe rendering."""
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from __future__ import annotations
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from pathlib import Path
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import pyarrow.parquet as pq
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from lerobot.annotations.steerable_pipeline.config import (
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AnnotationPipelineConfig,
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InterjectionsConfig,
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PlanConfig,
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VqaConfig,
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)
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from lerobot.annotations.steerable_pipeline.executor import Executor
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from lerobot.annotations.steerable_pipeline.modules import (
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GeneralVqaModule,
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InterjectionsAndSpeechModule,
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PlanSubtasksMemoryModule,
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)
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from lerobot.annotations.steerable_pipeline.validator import StagingValidator
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from lerobot.annotations.steerable_pipeline.writer import LanguageColumnsWriter
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from lerobot.configs.recipe import MessageTurn, TrainingRecipe
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from lerobot.datasets.language_render import render_sample
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from ._helpers import make_canned_responder
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def _build_pr1_style_blend_recipe() -> TrainingRecipe:
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"""Inline blend recipe that consumes every style this pipeline produces.
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PR 1 used to ship ``src/lerobot/configs/recipes/pi05_hirobot.yaml`` as
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a canonical example, but that file was dropped during PR 1 review. The
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cross-PR contract this test guards is "the recipe DSL can render
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non-empty messages from pipeline output", which doesn't require a
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specific YAML — so we build the equivalent blend in code.
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"""
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return TrainingRecipe(
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blend={
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"low_level_execution": TrainingRecipe(
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weight=0.35,
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messages=[
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MessageTurn(
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role="user",
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content="${task}\nPlan: ${plan}\nMemory: ${memory}",
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stream="high_level",
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),
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MessageTurn(role="assistant", content="${subtask}", stream="low_level", target=True),
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],
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),
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"user_interjection_response": TrainingRecipe(
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weight=0.16,
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bindings={
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"speech": "emitted_at(t, role=assistant, tool_name=say)",
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"interjection": "emitted_at(t, style=interjection)",
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},
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messages=[
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MessageTurn(role="user", content="${task}", stream="high_level"),
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MessageTurn(
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role="user",
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content="${interjection}",
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stream="high_level",
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if_present="interjection",
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),
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MessageTurn(
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role="assistant",
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content="${plan}",
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stream="high_level",
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target=True,
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if_present="plan",
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tool_calls_from="speech",
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),
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],
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),
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}
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)
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def _build_executor() -> Executor:
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vlm = make_canned_responder(
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{
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"atomic subtasks": {
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"subtasks": [
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{"text": "grasp the bottle", "start": 0.0, "end": 0.5},
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{"text": "pour into the cup", "start": 0.5, "end": 1.0},
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{"text": "place the bottle down", "start": 1.0, "end": 1.5},
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]
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},
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"concise hierarchical PLAN": {"plan": "1. grasp\n2. pour\n3. place"},
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"Update the memory": {"memory": "poured once"},
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"acknowledgement the robot": {"text": "Sure."},
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"ONE realistic interruption": {
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"interjection": "use less water",
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"speech": "Using less water.",
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},
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"frame-grounded visual question": {
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"question": "How many cups?",
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"answer": {"label": "cup", "count": 1},
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},
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},
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)
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config = AnnotationPipelineConfig(
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plan=PlanConfig(),
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interjections=InterjectionsConfig(max_interjections_per_episode=1, interjection_min_t=0.5),
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vqa=VqaConfig(vqa_emission_hz=1.0, K=2),
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)
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return Executor(
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config=config,
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plan=PlanSubtasksMemoryModule(vlm=vlm, config=config.plan),
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interjections=InterjectionsAndSpeechModule(vlm=vlm, config=config.interjections, seed=config.seed),
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vqa=GeneralVqaModule(vlm=vlm, config=config.vqa, seed=config.seed),
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writer=LanguageColumnsWriter(),
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validator=StagingValidator(),
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)
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def test_pr1_canonical_recipe_renders_nonempty_from_pipeline_output(
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single_episode_root: Path,
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) -> None:
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executor = _build_executor()
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summary = executor.run(single_episode_root)
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# validator may emit warnings but no errors for the synthetic fixture
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assert summary.validation_report.ok, summary.validation_report.summary()
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table = pq.read_table(single_episode_root / "data" / "chunk-000" / "file-000.parquet")
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persistent_lists = table.column("language_persistent").to_pylist()
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events_lists = table.column("language_events").to_pylist()
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timestamps = table.column("timestamp").to_pylist()
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recipe = _build_pr1_style_blend_recipe()
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rendered_any = False
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for ts, persistent, events in zip(timestamps, persistent_lists, events_lists, strict=True):
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result = render_sample(
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recipe=recipe,
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persistent=persistent,
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events=events,
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t=float(ts),
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sample_idx=0,
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dataset_ctx={"task": "Pour water from the bottle into the cup."},
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)
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if result is None:
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continue
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if result["messages"]:
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rendered_any = True
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assert result["target_message_indices"]
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break
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assert rendered_any, "PR 1 recipe rendered no messages from pipeline output"
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# Sanity: speech atom appears in events column intact
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flat_events = [r for ev in events_lists for r in ev]
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speech_rows = [r for r in flat_events if r.get("style") is None and r.get("role") == "assistant"]
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assert speech_rows
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say = speech_rows[0]["tool_calls"][0]
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assert say["function"]["name"] == "say"
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assert isinstance(say["function"]["arguments"]["text"], str)
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# PR 2 no longer writes a ``tools`` column — the say schema lives as a
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# constant (``SAY_TOOL_SCHEMA``) so PR 1's row struct is the single
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# source of truth for the v3.1 schema.
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assert "tools" not in table.column_names
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