label-training-data
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Esta habilidad configura flujos de trabajo sistemáticos de etiquetado de datos utilizando herramientas como Label Studio, implementando controles de calidad y gestionando equipos de anotadores. Es útil al iniciar proyectos de aprendizaje supervisado, cuando el rendimiento del modelo está limitado por datos etiquetados insuficientes, o al implementar aprendizaje activo. Las capacidades clave incluyen medir el acuerdo entre anotadores e integrar los datos etiquetados en los pipelines de entrenamiento de aprendizaje automático.
Instalación rápida
Claude Code
Recomendadonpx skills add pjt222/agent-almanac -a claude-code/plugin add https://github.com/pjt222/agent-almanacgit clone https://github.com/pjt222/agent-almanac.git ~/.claude/skills/label-training-dataCopia y pega este comando en Claude Code para instalar esta habilidad
Documentación
Trainingsdaten labeln
See Extended Examples for complete configuration files and templates.
Systematically label data for supervised ML with quality controls and efficient workflows.
Wann verwenden
- Starting supervised ML project that requires labeled training data
- Current model performance limited by insufficient labeled examples
- Need to label text, images, audio, or video data
- Want to measure and improve annotation quality
- Managing team of annotators with different expertise levels
- Implementing active learning to prioritize valuable examples
- Need to track labeling progress and costs
- Ensuring consistent labels across multiple annotators
Eingaben
- Erforderlich: Unlabeled dataset (images, text, audio, video)
- Erforderlich: Label schema (classes, attributes, or annotation types)
- Erforderlich: Labeling guidelines document
- Optional: Pre-existing labels (for quality comparison)
- Optional: Modellieren predictions for pre-annotation
- Optional: Budget and timeline constraints
- Optional: Domain expert availability for difficult examples
Vorgehensweise
Schritt 1: Installieren and Konfigurieren Label Studio
Einrichten Label Studio as the labeling platform.
# Install Label Studio
pip install label-studio
# Or use Docker for production
docker pull heartexlabs/label-studio:latest
# Create project directory
mkdir -p labeling-project/{data,exports,config}
cd labeling-project
# Initialize Label Studio
label-studio init my_project
# Start Label Studio server
label-studio start my_project --port 8080
Access at http://localhost:8080 (default Zugangsdaten: create on first visit).
For production deployment with Docker:
# docker-compose.yml
version: '3.8'
services:
label-studio:
image: heartexlabs/label-studio:latest
ports:
- "8080:8080"
# ... (see EXAMPLES.md for complete implementation)
docker-compose up -d
Erwartet: Label Studio running and accessible, PostgreSQL database initialized for production use.
Bei Fehler: If port 8080 already in use, change port in config, if Docker fails check Docker daemon is running, ensure sufficient disk space for data volumes, check firewall allows port 8080.
Schritt 2: Entwerfen Labeling Interface and Schema
Erstellen labeling configuration for your task type.
# labeling-project/config/labeling_config.py
"""
Label Studio configuration templates for common tasks.
"""
# Text Classification (single label)
TEXT_CLASSIFICATION = """
<View>
# ... (see EXAMPLES.md for complete implementation)
Erwartet: Labeling interface configured with appropriate controls for task type, data imported erfolgreich, interface accessible to annotators.
Bei Fehler: Validieren XML config with Label Studio's config validator, check data file format (JSON or CSV), ensure image/audio URLs are accessible if using external storage, verify API key has correct Berechtigungs.
Schritt 3: Vorbereiten Data and Implementieren Sampling Strategy
Format data for import and prioritize examples for labeling.
# labeling-project/prepare_data.py
import pandas as pd
import json
import random
from typing import List, Dict
from sklearn.cluster import KMeans
import numpy as np
# ... (see EXAMPLES.md for complete implementation)
Erwartet: Data formatted korrekt for Label Studio import, sampling strategy prioritizes informative examples, tasks include metadata for tracking.
Bei Fehler: Verifizieren JSON format with jq or Python json.load(), check that URLs are accessible if using remote images, ensure no special characters break JSON encoding, validate column names match config.
Schritt 4: Implementieren Quality Control and IAA Measurement
Einrichten processes to measure and improve annotation quality.
# labeling-project/quality_control.py
import pandas as pd
import numpy as np
from sklearn.metrics import cohen_kappa_score, confusion_matrix
from typing import Dict, List, Tuple
import logging
logging.basicConfig(level=logging.INFO)
# ... (see EXAMPLES.md for complete implementation)
Erwartet: Inter-annotator agreement measured (Cohen's Kappa > 0.6 is moderate, >0.8 is good), difficult tasks identified for review, annotator performance tracked.
Bei Fehler: If Kappa very low (<0.4), review labeling guidelines for clarity, retrain annotators, simplify label schema, check for ambiguous examples, consider using expert annotators for gold standard.
Schritt 5: Exportieren and Integrieren Labeled Data
Exportieren labels and prepare for ML training.
# labeling-project/export_labels.py
import requests
import pandas as pd
import json
from typing import List, Dict
import logging
logger = logging.getLogger(__name__)
# ... (see EXAMPLES.md for complete implementation)
Erwartet: Annotations exported in training-ready format, label distribution balanced or documented, data quality validated vor training.
Bei Fehler: Verifizieren API key Berechtigungs, check export format compatibility with your ML framework, handle missing annotations gracefully, validate JSON structure matches expected format.
Schritt 6: Set Up Continuous Labeling Pipeline
Automate labeling workflow with active learning integration.
# labeling-project/active_learning_pipeline.py
import schedule
import time
import logging
from datetime import datetime
from prepare_data import DataSampler, prepare_label_studio_format
from export_labels import LabelStudioExporter, convert_to_training_format
import pandas as pd
# ... (see EXAMPLES.md for complete implementation)
Erwartet: Active learning selects informative examples automatisch, labeling batches prepared weekly, model retrained when sufficient new labels available.
Bei Fehler: If uncertainty sampling doesn't improve model, try diversity sampling, if annotators can't keep up reduce batch size, monitor labeling queue length, implement backpressure if queue grows too large.
Validierung
- Label Studio accessible and responsive
- Labeling interface intuitive (test with sample annotator)
- Data import successful with correct format
- Inter-annotator agreement (Cohen's Kappa) > 0.6
- Quality control identifies problematic tasks
- Labels export in training-ready format
- Label distribution matches expected (or intentionally imbalanced)
- Active learning pipeline runs ohne manual intervention
- Annotation durchput meets project timeline
Haeufige Stolperfallen
- Unclear guidelines: Ambiguous instructions cause inconsistent labels; invest in detailed guidelines with examples
- Insufficient overlap: Can't measure IAA ohne multiple annotators per task; use 10-20% overlap
- Ignoring difficult cases: Edge cases often skipped but critical for model robustness; flag for expert review
- Batch effects: Annotator fatigue or learning causes temporal inconsistency; randomize task order
- No quality feedback: Annotators don't improve ohne feedback; provide regular accuracy reports
- Wrong sampling strategy: Random sampling wastes budget on easy examples; use uncertainty or diversity sampling
- Labeling in isolation: Domain experts needed for complex tasks; pair novices with experts initially
- Not tracking costs: Labeling expensive; monitor time per task and total budget consumption
Verwandte Skills
version-ml-data- Version control for labeled datasetstrack-ml-experiments- Verfolgen model performance as labels added
Repositorio GitHub
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