Physical AI Data Solutions

Power robots, autonomous systems, and embodied AI with high-quality multimodal datasets, human demonstrations, and interaction data designed for training, fine-tuning, and evaluation.

5000
+
Projects
1000
M
Data Units
500
+
Languages
100
Countries

End-to-end Embodied AI Data Services

Large-scale real-world data collection, annotation, and validation solutions for physical AI reasoning, world simulation and action generation.

Physical AI Data Collection

LQA builds high-quality datasets for Physical AI, Robotics, and Vision-Language-Action (VLA) models through multimodal data collection, egocentric and conversational dataset collection, teleoperation, kinematic, and trajectory data collection, motion capture (MOCAP) data collection.

Physical AI Annotation Services

LQA delivers precise annotations to train robot perception, manipulation, and decision-making systems, including 3D LiDAR labeling, object tracking, grasp point annotation, pose estimation, action segmentation, and temporal behavior understanding.

Physical AI Evaluation & Validation

LQA evaluates and validates Physical AI datasets and model outputs through human-in-the-loop review, quality assurance workflows, edge-case analysis, and sequence-level validation to ensure reliability, consistency, and deployment readiness.

Physical AI Data Types

Essential data modalities for robotics and embodied AI.
LiDAR Point Clouds & Radar

LiDAR Point Clouds & Radar

HD Maps

HD Maps

GPS/IMU

GPS/IMU

Spatial IoT Data & Geospatial Data

Spatial IoT Data & Geospatial Data

Multi-camera RGB Video

Multi-camera RGB Video

Multispectral & Thermal Imaging

Multispectral & Thermal Imaging

Teleoperation & Egocentric Recordings

Teleoperation & Egocentric Recordings

UMI Multimodal Data

UMI Multimodal Data

Force & Tactile Sequences

Force & Tactile Sequences

Simulation Outputs & Multimodal Embeddings

Simulation Outputs & Multimodal Embeddings

Physical AI Data Environments

Capture complex interactions across diverse operational scenarios.
Residential
Residential
Food & Beverage
Retail
Commercial & Hospitality
Manufacturing & Industrial
Logistics & Warehousing
Agriculture & Outdoor Operations
Healthcare
01
Residential
02
Food & Beverage
03
Retail
04
Commercial & Hospitality
05
Manufacturing & Industrial
06
Logistics & Warehousing
07
Agriculture & Outdoor Operations
08
Healthcare

Residential

Everyday living spaces for training embodied AI and humanoid robots in perception, navigation, and household tasks.

Food & Beverage

Fast-paced environments for learning manipulation, task execution, and human-centered service operations.

Retail

Retail environments for inventory handling, shelf interaction, product organization, and autonomous navigation.

Commercial & Hospitality

Service-oriented environments that combine navigation, human interaction, and operational workflows.

Manufacturing & Industrial

Complex production environments for robotic manipulation, inspection, assembly, and automation tasks.

Logistics & Warehousing

High-volume operational environments for picking, sorting, transportation, and autonomous navigation.

Agriculture & Outdoor Operations

Real-world outdoor environments for autonomous mobility, monitoring, and field operations.

Healthcare

Precision-focused environments requiring reliable perception, task execution, and human-robot interaction.

Real Environments. Real Data

Protocol-driven data capture for perception, manipulation, and robot learning.
Play Video

Multi-step Manipulation Tasks

Capture structured human demonstrations involving object manipulation, task sequencing, and instruction following for humanoid robot training.

Our Physical AI Data Workflow

A streamlined process for building reliable datasets for robotics and embodied AI.

LQA defines data requirements, task scenarios, environment conditions, and quality metrics based on your robotics and Physical AI objectives.

Specialized teams are assembled and trained on collection protocols, annotation guidelines, and validation standards to ensure project consistency.

We validate workflows through pilot tasks, refining instructions, quality criteria, and edge-case handling before scaling production.

LQA delivers multimodal data collection, annotation, and validation services with continuous quality control throughout the production lifecycle.

Our experts evaluate dataset quality and coverage, providing ongoing improvements to maximize model performance and deployment readiness.

Requirement Analysis Team Setup Pilot & Validation Data Collection & Annotation Evaluation & Optimization

Physical AI Data Capture Equipment

Specialized hardware for capturing multimodal robotics and embodied AI datasets.

Egocentric VR Headset

Motion Capture Suit

IR Marker & Camera

Data Glove

EMG Armband

360° Camera Rig

Tools and Technologies We Use

A robust technology stack for scalable Physical AI & Robotics data operations.

Our Experts

Dedicated teams with expertise in robotics, data annotation, and validation deliver datasets you can trust.
Ryan Le
Gen AI Manager
Coding, STEM & Engineering, Physical AI & Robotics
Elly Tran
Project Manager
Physical AI & Robotics, Healthcare & Life Sciences
Andy Nguyen
Advisor
Coding, STEM & Engineering, BFSI
Bach Le
Expert
Physical AI & Robotics, Computer Science
Christina Vu
Expert
STEM & Engineering, Physical AI & Robotics, BFSI
Chloe Tran
Expert
Legal & Social Sciences, Education & Languages
Lucas Pham
Expert
Coding, STEM & Engineering
Daniel Nguyen
Expert
Coding, BFSI, Physical AI & Robotics
Felix Vu
Expert
Arts & Creative, Physical AI & Robotics
Adrian Tran
Expert
Healthcare & Life Sciences, STEM & Engineering

Our Case Studies

Explore how we support AI teams with high-quality Physical AI data solutions.
eCommerce Education Construction Healthcare BFSI

Why Choose LQA's Physical AI Data Solutions?

Trusted data services for next-generation robotics and Physical AI systems.

Quality-first Approach

Every dataset undergoes rigorous validation and multi-level quality control to ensure reliable training data for Physical AI applications.

Domain Expertise

Our trained workforce supports complex annotation, motion capture, teleoperation, and evaluation tasks requiring human judgment and domain understanding.

Large-scale Data Capabilities

We enable large-scale data collection across diverse environments, scenarios, and participant groups to improve model robustness and generalization.

Flexible & Cost-efficient Delivery

Scale data operations quickly with dedicated teams, customized workflows, and transparent project management tailored to your requirements.

FAQs about Data for Physical AI and Robotics

Physical AI enables robots and autonomous systems to perceive, reason, and act in the physical world. Unlike traditional AI models that operate primarily on text, images, or digital environments, Physical AI combines perception, decision-making, and actions through robotics, embodied AI, and VLA models.

Physical AI systems rely on multimodal datasets, including visual data, motion capture data, teleoperation recordings, trajectory data, sensor fusion data, human demonstrations, and environmental interactions. These datasets help robots learn perception, manipulation, navigation, and task execution.

Motion capture (MOCAP) data captures human movements and interactions that can be used for robot learning, imitation learning, locomotion, and manipulation training. Common methods include IMU-based motion capture, markerless tracking, and IR marker systems.

3D LiDAR annotation involves labeling objects and environments within point cloud data to help robots and autonomous systems understand spatial relationships. It is widely used for robot perception, autonomous navigation, obstacle detection, and sensor fusion applications.

Teleoperation and human demonstrations provide robots with examples of task execution, object manipulation, and decision-making behaviors. These datasets help train Physical AI models to perform complex actions more efficiently and improve task success rates.

Looking for a Trusted Physical AI Data Partner?