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Master's Dissertation
DOI
https://doi.org/10.11606/D.55.2022.tde-24112022-153525
Document
Author
Full name
Leonardo Claudio de Paula e Silva
E-mail
Institute/School/College
Knowledge Area
Date of Defense
Published
São Carlos, 2022
Supervisor
Committee
Osório, Fernando Santos (President)
Branco, Kalinka Regina Lucas Jaquie Castelo
Ferrari, Fabiano Cutigi
Toledo, Cláudio Fabiano Motta
Title in Portuguese
Flowi: uma plataforma para desenvolvimento e gerenciamento de modelos de aprendizado de máquina
Keywords in Portuguese
Aprendizado de máquina
ML lifecycle
MLOps
Plataforma
Abstract in Portuguese
Aprendizado de Máquina (Machine Learning - ML - em inglês) tem se tornado a principal tecnologia para automação de diversos casos de usos na indústria; desde detecção de caracteres (OCR - Optical Character Recognition) até veículos autônomos. Entretanto, desenvolver e gerenciar esses modelos de aprendizado de máquina em produção é complexo. Especialmente porque quem desenvolve os modelos não necessariamente tem as habilidades para colocá-los em produção e monitorá-los. Este trabalho propõe o Flowi: uma plataforma de gerenciamento do ciclo de vida de aprendizado de máquina. Ela é baseada em componentes para capacitar cientistas de dados a trazer seus conhecimentos aos modelos com escalabilidade, rastreio de experimentos, deploy, monitoramento e otimização de hiper-parâmetros por padrão.
Title in English
Flowi: a platform for ML development and management
Keywords in English
Machine learning
ML Lifecycle
MLOps
Platform
Abstract in English
Machine Learning (ML) is becoming a leading technology for several industry automation use cases, from optical character recognition (OCR) to autonomous vehicles. However, developing and managing these machine learning models in production is complex, specially because the one developing the model may not have the skills to deploy and monitor it. This work proposes Flowi as a component based ML lifecycle platform that empowers data scientists to bring their knowledge to the model with built-in scalability, experiment tracking, deploy, monitoring and parameter optimization.
 
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Publishing Date
2022-11-24
 
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