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Achievements

Overview

Objective Goal

Our core mission was to address the intricacies of reverse logistics recycling, especially in environments with sparse and noisy data. The goal was to craft robust algorithms that could seamlessly integrate diverse data types, ensuring both enhanced accuracy and efficient data processing, while also providing an interactive user experience.

1

🌟 Dual-Transfer Model

Developed a dual-transfer model that merged various data types, enhancing the accuracy of predictions. This model was pivotal in ensuring that diverse data sources were harmoniously integrated.

2

📊 Multi-Task Learning

Crafted an approach that combined multi-task learning with domain adaptation. This ensured efficient data processing, minimized errors, and made the model adaptable to different data domains.

3

🖥️ Interactive Dashboard

Utilized the Vue framework to develop an intuitive front-end interface, presenting an interactive dashboard that highlights real-time predictions on the recycling process. This user-friendly platform elevates user engagement by offering a dynamic overview, allowing users to witness the predictions unfold in real time. Feel free to explore the associated code on GitHub repository.