1 Cloud computing application for water resources based on open source software and open standards – a prototype Blagoj Delipetrev Faculty of Computer.

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1 Cloud computing application for water resources based on open source software and open standards – a prototype Blagoj Delipetrev Faculty of Computer Science University Goce Delcev Republic of Macedonia BigSkyEarth meeting14th - 17th April 2016, Brno

Cloud computing application for water resources Pilars 2 Pillars are: Cloud computing, Service Oriented Architecture (SOA) and Web GIS BigSkyEarth meeting14th - 17th April 2016, Brno

Architecture 3 Two Virtual Machines (VM) and four web services BigSkyEarth meeting14th - 17th April 2016, Brno

Cloud application interface 4 BigSkyEarth meeting14th - 17th April 2016, Brno

Web service for water resources modeling 5 BigSkyEarth meeting14th - 17th April 2016, Brno

Web service for water resources optimization (reservoir optimization) 6 BigSkyEarth meeting14th - 17th April 2016, Brno Novel reservoir optimization algorithms (coded in Java) Nested Dynamic programming Nested Stochastic dynamic programming Nested Reinforcement learning Multi-objective optimization algorithms

Optimization algorithm and machine learning Developing optimization algorithms How to enhance DP/SDP/RL algorithm and develop new algorithm (methodology) that is flexible with including additional objectives (like cities water demand, agriculture water demand, ecology water demand, hydro power production and etc), alleviate as much as possible the curse of dimensionality and computational cost? 7 BigSkyEarth meeting14th - 17th April 2016, Brno Movie Inception, a dream into a dream (into a dream) One step of the DP algorithm. One step of the nDP algorithm

Optimization algorithms and machine learning Consultants in workforce optimization (Genetic algorithms, tabu search, simulated annealing, greedy algorithms) Expertise in Reinforcement learning & Artificial neural networks (ANN) Same methods used by DeepMind and Go game. Decision trees, etc. 8 BigSkyEarth meeting14th - 17th April 2016, Brno

(relatively) New technologies and possibilities NoSQL technologies Too many options and varieties MongoDB Hadoop, Hive etc. RasDaMan Cloud Amazon Web Services Google Cloud Platform and many others (hybrid clouds) Facebook, Google, Microsoft (and others) Increasingly open their projects (and source code) Free and open source is winning !!!! Things are moving fast BigSkyEarth meeting14th - 17th April 2016, Brno "I think there is a world market for maybe five computers." Thomas Watson, president of IBM, 1943 Machine learning & AI Tensorflow Deep Learning Convolution neural networks Winning GO against humans (RL + Deep Learning)

10 Open for collaboration Cloud Machine Learning IoT Big Data BITT Solutions Multiple projects. Thanks BigSkyEarth meeting14th - 17th April 2016, Brno Cloud is the future. Browser is the new desktop. It is Machine learning time.