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Stage 1: Data Foundation
Data &
Annotation
High-quality labeled data is the foundation of every successful Vision AI system. We build custom datasets and annotation pipelines tailored to your specific needs.
What We Build
Custom Dataset Creation
- â–¸Domain-specific data collection strategies
- â–¸Data augmentation pipelines
- â–¸Synthetic data generation
- â–¸Multi-modal dataset design
AI-Assisted Annotation
- â–¸Semi-automated labeling tools
- â–¸Active learning workflows
- â–¸Quality control systems
- â–¸Multi-annotator consensus
Annotation Types
- â–¸Bounding boxes, polygons, masks
- â–¸Semantic & instance segmentation
- â–¸Keypoint & pose annotation
- â–¸3D point cloud labeling
Data Management
- â–¸Version control for datasets
- â–¸Data pipeline automation
- â–¸Storage optimization
- â–¸HIPAA/GDPR compliance
Common Use Cases
Medical Imaging Datasets
Creating annotated datasets for diagnostic AI: organ segmentation, pathology detection, surgical planning with radiologist-verified labels.
Industrial Inspection
Defect detection datasets with pixel-perfect annotations for manufacturing quality control and automated inspection systems.
Autonomous Systems
Multi-sensor datasets (camera + LiDAR) with 3D bounding boxes, tracking IDs, and scene understanding labels for robotics.
Need High-Quality Training Data?
Let's discuss your data requirements and build a custom annotation pipeline.
Schedule Consultation →