Oodles AI delivers production-ready MediaPipe solutions to build real-time, cross-platform perception systems. Using Google’s open-source MediaPipe framework, we engineer low-latency pipelines for face, hand, pose, object, and audio understanding—optimized for web, mobile, and edge devices.
MediaPipe is Google’s open-source framework for building real-time, cross-platform machine learning pipelines. It provides APIs, pre-trained models, and graph-based tools to deploy perception tasks such as face landmarking, hand tracking, pose estimation, object detection, and audio classification directly on-device with low latency.
We package MediaPipe Tasks, Model Maker, and custom graphs into deployable accelerators tailored to specific industries.
Combine MediaPipe face, hand, pose, and audio tasks into real-time perception-driven applications for interactive and assistive systems.
MediaPipe Face Landmarker, Hand Landmarker, and segmentation graphs for real-time AR mirrors and virtual try-on experiences.
Touchless assistants built using MediaPipe audio classification and hand-gesture recognition pipelines.
On-device pose tracking and movement analysis using MediaPipe for privacy-preserving fitness and wellness monitoring.
MediaPipe-powered face, hand, and object tracking to personalize kiosk interactions and measure engagement in real time.
Deploy MediaPipe graphs on ARM, Android, and Linux edge devices with telemetry and remote update support.
Deploy MediaPipe Tasks across Android, Web, Python, and iOS using unified APIs backed by TensorFlow Lite acceleration.
Use MediaPipe’s pre-trained landmarkers and fine-tune them with Model Maker for domain-specific perception accuracy.
Use MediaPipe’s pre-trained landmarkers and fine-tune them with Model Maker for domain-specific perception accuracy.
Validate latency and throughput using MediaPipe Studio and benchmark edge deployments with Google AI Edge Portal.
Build portable, real-time ML solutions through Google's streamlined framework.
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Assess: Identify MediaPipe Tasks such as face, hand, pose, or audio classification based on real-time perception requirements.
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Design: Architect pipelines using MediaPipe Tasks, graphs, and multimodal fusion for cross-platform compatibility.
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Develop: Implement MediaPipe graphs and APIs, fine-tuning models with Model Maker for vision or audio tasks.
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Test: Validate using MediaPipe Studio for real-time evaluation and accuracy on diverse platforms.
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Deploy & Optimize: Ship MediaPipe solutions to mobile, web, and edge devices with performance benchmarking via Google AI Edge Portal.
MediaPipe Tasks for Android, Web, Python, and iOS deployment with unified interfaces.
Ready-to-run models for vision (e.g., object detection), text, and audio classification tasks.
MediaPipe Model Maker for fine-tuning with user data to enhance accuracy in specific domains.
Optimized graphs for fusing vision, text, and audio in real-time perception applications.
Browser-based tool for visualizing, evaluating, and benchmarking ML solutions in real-time.
Integration with Google AI Edge Portal for scalable benchmarking and upgraded legacy solutions like Hand Landmarker.
Experience Google's real-time ML capabilities with our advanced MediaPipe implementations
Google's MediaPipe powers cross-platform AI solutions, from vision tasks to audio classification, enabling real-time deployment and customization for 2025's Edge AI demands.
Face Landmarker and Hand Landmarker for immersive AR experiences and virtual interactions.
Pose Landmarker for real-time body tracking in workout apps and telemedicine vital monitoring.
Hand gesture recognition for gaming controls, accessibility tools, and smart device interactions.
Real-time object detection and tracking using MediaPipe vision tasks for retail, security, and edge AI systems.
Analyze engagement using MediaPipe face, pose, and hand landmarks to understand user interactions at kiosks and touchpoints.
MediaPipe-based monitoring of operator gestures and equipment states with on-device inference for IoT environments.
Decrease time-to-value with pre-built graph templates, evaluation harnesses, and DevSecOps plumbing.
Battle-tested tooling for MediaPipe builds across cloud and edge environments.