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Volume 7 (2020) | Issue 10
Volume 11 (2024) | Issue 5
Volume 11 (2024) | Issue 5
Volume 11 (2024) | Issue 5
Volume 11 (2024) | Issue 5
Abstract - Nowadays, the usage of internet based applications and services are widely used such as travelling, food ordering, shopping, shipping, etc. In this paper, we propose Deep queue learning method for predicting and ranking of online food ordering delivery applications. Online website and mobile applications are available commercially deliver the food and provides variety of discounts. In this work, we cluster the food and rank based on customer reviews, ordering/delivery time, user satisfaction and cost. Ranking is done by using Association rule mining for food items placing, repetitive orders and making places. The objective behind this how this platform is more useful for customer as well as suppliers. We take opinion poll from customers and suppliers that is also considered for comparison. The technology are growing rapidly some system is needed for monitoring online processing and applications. We use Google TensorFlow for analyzing and predicting the performance of online food ordering and delivery applications. Deep queue learning model is proposed for applying our input attributes and Python API code for testing accuracy. The trained and test dataset is collected from various applications. Reviews and opinion is also taken into account. For these inputs we create deep convolutationl neural network model for making effective decisions. The results and ranking are calculated by using TensforFlow and performance is compared.