TensorFlow TFLite Debugger vs ML Trainer: Make Training Data Usage & Stats

The TFLite Debugger app is an essential tool for iOS developers and machine learning enthusiasts who want to streamline their TensorFlow Lite model debugging and testing processes on iOS devices. This powerful and intuitive app empowers you to effortlessly evaluate, validate, and optimize TensorFlow Lite models, ensuring their seamless integration into your iOS applications. Key Features: 1. Model Evaluation: With the TensorFlow Lite Debug and Test App, you can easily load and evaluate your TensorFlow Lite models directly on your iOS device. This allows you to quickly assess the performance of your models in a real-world environment. 2. Model Testing: Debugging TensorFlow Lite models becomes effortless with the app's interactive testing capabilities. Seamlessly import models from local storage or the Files app, simplifying integration and allowing you to identify and resolve issues effectively. 3. Performance Analysis: Assess the performance of your TensorFlow Lite models using detailed metrics provided by the app. Measure parameters like inference time, disk and memory usage to optimize your models and ensure optimal performance on iOS devices. 4. User-Friendly Interface: The app provides an intuitive and user-friendly interface, making it easy for both beginners and experienced developers to navigate and utilize its powerful features. 5. Offline Capability: Enjoy the convenience of using the app even in offline environments. No constant internet connection is required, ensuring uninterrupted development and testing. Whether you're a professional iOS developer working on machine learning projects or a hobbyist exploring the possibilities of TensorFlow Lite, the TFLite Debugger App is an indispensable companion. Streamline your debugging and testing process, enhance model performance, and deliver cutting-edge machine learning experiences on iOS devices. Download the app now and unlock the full potential of TFLite Debugger on iOS!
  • Apple App Store
  • Paid
  • Developer Tools

Store Rank

- -

Creating original training data for Image Classification machine learning models just got a little easier! ML Trainer allows developers to quickly capture and export thousands of images to the Photos app, allowing every image to be imported with iCloud or the built in Image Capture app on Mac. Press the Scan button to capture a preset amount of images as you move closer to or pivot around your subject, or Tap the Camera button to capture a single picture. Toggle the Flashlight to improve results in low light conditions, and tap the Save button to export any captured images to the Photos app. While each image is always captured at a speed of 3 Frames Per Second, you can adjust the Frame Count of each Scan in the Settings Menu. A larger Frame Count will save you time, while a lower Frame Count will help improve accuracy across different angles. Enabling Crosshairs and Guides in the Settings Menu can also help improve accuracy. This app was specifically designed to speed up the process of importing data into the Xcode Developer Tool named CreateML. Exported images should also be compatible with other platforms like TensorFlow and Azure Machine Learning. A wired connection to a macOS device with the Image Capture app open will always be the fastest way to import your data to desktop.
  • Apple App Store
  • Free
  • Developer Tools

Store Rank

- -

TensorFlow TFLite Debugger vs. ML Trainer: Make Training Data ranking comparison

Compare TensorFlow TFLite Debugger ranking trend in the past 28 days vs. ML Trainer: Make Training Data

TensorFlow TFLite DebuggerTensorFlow TFLite Debugger#99

Rank

TensorFlow TFLite Debugger vs. ML Trainer: Make Training Data ranking by country comparison

Compare TensorFlow TFLite Debugger ranking trend in the past 28 days vs. ML Trainer: Make Training Data

All categories

No Data Available

Compare to any site with our free trial

Get started
TensorFlow TFLite Debugger VS.
ML Trainer: Make Training Data

December 2, 2024