PennyWise automatically reads transaction SMS messages and transforms them into organized financial data with on-device AI assistance. No manual entry, no cloud processing, complete privacy.
-
Updated
Dec 14, 2025 - Kotlin
PennyWise automatically reads transaction SMS messages and transforms them into organized financial data with on-device AI assistance. No manual entry, no cloud processing, complete privacy.
On-device customizable face recognition in Android with FaceNet and an embedded vector database
🔮 Obtain the power of touchless interaction with display screens
AI Android application crafted with Kotlin that harnesses the power of MediaPipe Pose Landmark Detection to deliver real-time feedback on exercise form while accurately counting repetitions
An Android App recreating the Simon Says game. Uses MediaPipe to run an LLM on device
Implementing various ML usecases in Jetpack Compose
An open-source Android AI voice assistant built with Kotlin, Jetpack Compose, and on-device ML (BERT + TFLite, MediaPipe, ML Kit).
This repository for learn About Mobile Development at Bangkit Academy || course "Learn to Implement Machine Learning for Android" at Dicoding .
Image Classification, Image Captioning and LLM inference with LiteRT
Action count detection system which has web and android side
Demo GenAI project with KMP, Gemini and Gemma
RepDetect is an android mobile application for workout enthusiast which uses Google MediaPipe Pose landmark detection using MLKit to create a basic fitness application.
MediaPipe-based face and hand tracker app for vtubers
Get started with the new Gemma 3 model for on-device inference. Giving you the simplest steps to get started with AI on Android.
Android application running Large Language Model (LLM) inference using MediaPipe GenAI on Mobile Device.
First open-source real-time face filter app using MediaPipe FaceMesh for high-performance, GPU-accelerated effects.
This project demonstrates how to run Large Language Model \(LLM\) inference locally on Android devices using MediaPipe. It provides a foundation for building applications that leverage the power of LLMs without relying on cloud-based APIs, ensuring privacy and enabling offline functionality.
Add a description, image, and links to the mediapipe topic page so that developers can more easily learn about it.
To associate your repository with the mediapipe topic, visit your repo's landing page and select "manage topics."