Close Menu
Şevket Ayaksız

    Subscribe to Updates

    Get the latest creative news from FooBar about art, design and business.

    What's Hot

    Windows 10 Users Encouraged to Transition to Copilot+ PCs

    Mayıs 1, 2025

    The Cot framework simplifies web development in Rust

    Nisan 29, 2025

    IBM Acquires DataStax to Enhance WatsonX’s Generative AI Strength

    Nisan 29, 2025
    Facebook X (Twitter) Instagram
    • software
    • Gadgets
    Facebook X (Twitter) Instagram
    Şevket AyaksızŞevket Ayaksız
    Subscribe
    • Home
    • Technology

      Ryzen 8000 HX Series Brings Affordable Power to Gaming Laptops

      Nisan 10, 2025

      Today only: Asus OLED laptop with 16GB RAM drops to $550

      Nisan 6, 2025

      Panther Lake: Intel’s Upcoming Hybrid Hero for PCs

      Nisan 5, 2025

      A new Xbox gaming handheld? Asus’ teaser video sparks speculation

      Nisan 2, 2025

      Now available—Coolify’s ‘holographic’ PC fans bring a unique visual effect

      Nisan 2, 2025
    • Adobe
    • Microsoft
    • java
    • Oracle
    Şevket Ayaksız
    Anasayfa » Deep Learning Toolkit Empowers Java Developers
    java

    Deep Learning Toolkit Empowers Java Developers

    By mustafa efeAğustos 2, 2024Yorum yapılmamış3 Mins Read
    Facebook Twitter Pinterest LinkedIn Tumblr Email
    Share
    Facebook Twitter LinkedIn Pinterest Email

    Amazon’s Deep Java Library Simplifies Machine Learning and Deep Learning Model Creation for Java Developers

    I recently had the opportunity to explore Amazon’s Deep Java Library (DJL) by developing a footwear classification model, and I was thoroughly impressed with how intuitive and user-friendly the toolkit is. It’s clear that significant thought was invested in designing DJL to cater specifically to Java developers. The library’s APIs abstract away many of the commonly used functions required for model development and infrastructure management. I found that using DJL’s high-level APIs for training, testing, and running inference enabled me to leverage my existing Java skills and knowledge of the machine learning lifecycle to build a functional model in less than an hour, with minimal code.

    Footwear Classification Model

    The project I worked on was a multiclass classification computer vision (CV) model designed to classify footwear into one of four categories: boots, sandals, shoes, or slippers. This task falls under supervised learning, where the model is trained using labeled data to recognize patterns and make predictions. The clear and structured approach provided by DJL made it straightforward to develop this model and integrate it into my application.

    About the Data

    For developing an accurate ML model, using high-quality and reputable data is crucial. For this footwear classification model, I utilized the UTZappos50k dataset, which is provided by The University of Texas at Austin. This dataset is freely available for academic and non-commercial purposes and includes 50,025 labeled catalog images sourced from Zappos.com. Having a robust dataset like this ensures that the model can learn effectively and provide accurate classifications.

     

     

    Training the Footwear Classification Model

    The training process is central to creating a machine learning model. It involves feeding a learning algorithm with training data so that it can learn patterns and generate a model artifact. This model, once trained, contains the knowledge derived from the data and is used for making predictions or inferences. To begin the training process with DJL, I first set up my local development environment. This setup required JDK 8 or later, IntelliJ IDEA, an ML engine like Apache MXNet, and the necessary environment variables and build dependencies for DJL.

    Local Development Setup

    Setting up the development environment was straightforward. Ensuring that the JDK, IntelliJ, and ML engine were properly configured allowed me to seamlessly integrate DJL into my workflow. By setting environment variables and including the appropriate build dependencies, I was able to start training my model with minimal fuss. DJL’s documentation and support further streamlined this setup process, making it accessible even for those who might be new to machine learning.

    Conclusion

    In summary, Amazon’s Deep Java Library provides a powerful and user-friendly toolkit for Java developers interested in machine learning and deep learning. Its design and high-level APIs facilitate a smooth development experience, allowing users to build and deploy models efficiently. My experience with DJL in developing the footwear classification model highlighted its effectiveness and ease of use, showcasing its potential to empower Java developers to integrate sophisticated machine learning capabilities into their applications.

    Post Views: 85
    java Programming Languages Software Development
    Share. Facebook Twitter Pinterest LinkedIn Tumblr Email
    mustafa efe
    • Website

    Related Posts

    The Cot framework simplifies web development in Rust

    Nisan 29, 2025

    IBM Acquires DataStax to Enhance WatsonX’s Generative AI Strength

    Nisan 29, 2025

    Google Launches Free Version of Gemini Code Assist for Individual Developers

    Nisan 29, 2025
    Add A Comment

    Comments are closed.

    Editors Picks
    8.5

    Apple Planning Big Mac Redesign and Half-Sized Old Mac

    Ocak 5, 2021

    Autonomous Driving Startup Attracts Chinese Investor

    Ocak 5, 2021

    Onboard Cameras Allow Disabled Quadcopters to Fly

    Ocak 5, 2021
    Top Reviews
    9.1

    Review: T-Mobile Winning 5G Race Around the World

    By sevketayaksiz
    8.9

    Samsung Galaxy S21 Ultra Review: the New King of Android Phones

    By sevketayaksiz
    8.9

    Xiaomi Mi 10: New Variant with Snapdragon 870 Review

    By sevketayaksiz
    Advertisement
    Demo
    Şevket Ayaksız
    Facebook X (Twitter) Instagram YouTube
    • Home
    • Adobe
    • microsoft
    • java
    • Oracle
    • Contact
    © 2025 Theme Designed by Şevket Ayaksız.

    Type above and press Enter to search. Press Esc to cancel.