DEEP: Docker-based Execution and Evaluation Platform
Sergio G\'omez Gonz\'alez, Miguel Domingo, Francisco Casacuberta

TL;DR
DEEP is a Docker-based platform that automates the evaluation of machine translation and OCR models, providing statistical analysis and visualization tools to interpret performance differences effectively.
Contribution
It introduces a flexible, extensible system for automated model evaluation using Docker containers, with integrated statistical clustering and visualization features.
Findings
Automates evaluation and scoring of models
Uses clustering to identify performance groups
Includes a web-based visualization tool
Abstract
Comparative evaluation of several systems is a recurrent task in researching. It is a key step before deciding which system to use for our work, or, once our research has been conducted, to demonstrate the potential of the resulting model. Furthermore, it is the main task of competitive, public challenges evaluation. Our proposed software (DEEP) automates both the execution and scoring of machine translation and optical character recognition models. Furthermore, it is easily extensible to other tasks. DEEP is prepared to receive dockerized systems, run them (extracting information at that same time), and assess hypothesis against some references. With this approach, evaluators can achieve a better understanding of the performance of each model. Moreover, the software uses a clustering algorithm based on a statistical analysis of the significance of the results yielded by each model,…
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Taxonomy
TopicsMachine Learning and Data Classification · Software Testing and Debugging Techniques · Web Application Security Vulnerabilities
