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Automated Retraining of Machine Learning Models
Author(s) -
Akanksha Kavikondala,
Vivek Muppalla,
Krishna Prakasha K*,
Vasundhara Acharya
Publication year - 2019
Publication title -
international journal of innovative technology and exploring engineering
Language(s) - English
Resource type - Journals
ISSN - 2278-3075
DOI - 10.35940/ijitee.l3322.1081219
Subject(s) - retraining , computer science , machine learning , outcome (game theory) , artificial intelligence , component (thermodynamics) , mechanism (biology) , philosophy , physics , mathematics , mathematical economics , epistemology , international trade , business , thermodynamics
Data is the most crucial component of a successful ML system. Once a machine learning model is developed, it gets obsolete over time due to presence of new input data being generated every second. In order to keep our predictions accurate we need to find a way to keep our models up to date. Our research work involves finding a mechanism which can retrain the model with new data automatically. This research also involves exploring the possibilities of automating machine learning processes. We started this project by training and testing our model using conventional machine learning methods. The outcome was then compared with the outcome of those experiments conducted using the AutoML methods like TPOT. This helped us in finding an efficient technique to retrain our models. These techniques can be used in areas where people do not deal with the actual working of a ML model but only require the outputs of ML processes

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