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652 results for "uber estimate" across all locations

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New Year’s Eve Ride Guide

Bubbly is flowing, fireworks are sparkling, and you’re celebrating the end of the year with your friends and family. Follow these tips and the only thing you’ll have to worry about is keeping your resolutions in 2016!

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Flat Fares to Surathkal and Mangalore Airport

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UberSELECT is arriving now in the Twin Cities

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Enjoy 50% Paytm cashback on your next 3 rides

Enjoy 50% Paytm cashback on your next 3 rides

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Hammond – Your uberX is Arriving Now

Starting today, we’re bringing Uber to Hammond! You can now request a safe, reliable, and affordable ride at the touch of a button. Whether you are headed downtown, across the Northshore, to Ponchatoula or anywhere in between – simply request a ride from your phone and enjoy.

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Pay ₹70 or less for your rides in Vadodara

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Save 50% on your next 3 rides!

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Things to do in Nairobi on an Uber budget of KES 600

Looking for cheap things to do in Nairobi? We list some great free things to do in Nairobi on a travel budget of just KES 600 for the day.

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From Nodes to Networks: Evolving Recurrent Neural Networks

A. Rawal, R. Miikkulainen
Gated recurrent networks such as those composed of Long Short-Term Memory (LSTM) nodes have recently been used to improve state of the art in many sequential processing tasks such as speech recognition and machine translation. However, the basic structure of the LSTM node is essentially the same as when it was first conceived 25 years ago. Recently, evolutionary and reinforcement learning mechanisms have been employed to create new variations of this structure. This paper proposes a new method, evolution of a tree-based encoding of the gated memory nodes, and shows that it makes it possible to explore new variations more effectively than other methods. […] [PDF at arXiv]
Workshop on Meta-Learning at Conference on Neural Information Processing Systems (MetaLearn @ NeurIPS), 2018

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