Lobe AI is a resource that provides tools and resources for machine learning, particularly focused on image classification. It offers a desktop application that allows users to label examples, train models, evaluate training results, and export models for use in various applications. Lobe AI supports a range of export options, including no-code apps on Microsoft’s Power Platform, calling a local API, adapting starter projects, or working with model files directly. The platform also provides a Python SDK and .NET SDK for running exported models. Lobe AI is free and runs on your computer, with all images and models staying private on your device.
⚡Top 5 Lobe AI Features:
- Image-based datasets: Leverage tools for creating image-based datasets for machine learning, allowing users to label and train models on their own images.
- Python toolset: Use Python toolset for working with Lobe AI models, enabling users to interact with their models using Python code.
- iOS starter project: Start with an iOS starter project to bootstrap your machine learning model, making it easier to integrate machine learning into iOS applications.
- Web starter project: Lobe AI offers a web starter project to bootstrap your machine learning model, allowing users to integrate machine learning into web applications.
- Android project: Boilerplate Android project to bootstrap your machine learning model, enabling users to integrate machine learning into Android applications.
⚡Top 5 Lobe AI Use Cases:
- Personal trainer: Use this repository to train a model that recognizes different workout positions, creating an automated personal trainer that counts reps.
- Emotional reactions: Lobe AIcan be used to analyze emotional reactions in videos, such as detecting happiness, sadness, or anger.
- Bird identification: Identify different bird species based on images, helping users learn about the birds in their environment.
- Push-up counter: Count the number of push-ups a user performs during a workout, providing feedback and tracking progress.
- Shelf monitoring: Visually monitor shelves and alert users when an item is running low, helping users keep track of their inventory.