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DEEP-BDB 2020 : The 2nd International Conference on Deep Learning, Big Data and Blockchain | |||||||||||||||
Link: http://www.ficloud.org/deep-bdb/ | |||||||||||||||
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Call For Papers | |||||||||||||||
Call for Papers:
Deep and machine learning are the state-of-the-art at providing models, methods, tools and techniques for developing autonomous and intelligent systems which can revolutionize industrial and commercial applications in various fields such as online commerce, intelligent transportation, healthcare and medicine, security, manufacturing, education, games, and various other industrial applications. All such fields produce and consume massive amount of big data, which include, for example, online commerce data (marketing data, customer reviews, customer relationship), transportation data (road sensors, cameras, GPS), and data about healthcare, social media, and various other applications. Deep learning techniques and big data techniques yield useful outputs in predicting, discovering and acquiring insights and deeper knowledge about events for better and efficient decision making. The groundbreaking technology of blockchain technology also enable decentralization, immutability, and transparency of data and applications. It has been exploited in modern research and industrial domains in order to achieve high level of trust, security and reliable execution of applications and data which are shared across a network of computers. The International Conference on Deep Learning, Big Data and Blockcain (DEEP-BDB) aims to enable synergy between these areas and to provide a leading forum for researchers, developers, practitioners, and professional from public sectors and industries in order to meet and share latest solutions and ideas in solving cutting edge problems in modern information society and economy. The conference focuses on specific challenges in deep (and machine) learning, big data and blockchain. Topics of interest include (but not limited to): Deep/Machine learning based models Statistical models and learning Data analysis, insights and hidden pattern Data analysis and decision making Data wrangling, munching and cleaning Data integration and fusion Data visualization Data and information quality Security threat detection Visualizing security threats Enhancing privacy and trust Data mining; Information extraction; Sentiment analysis Data classification and clustering Knowledge acquisition and learning Clustering, classification and regression Supervised and unsupervised learning Blockain security and trust Blockchain data management Data & application reliability Blockchain and data distribution Blockain and finacial transactions Blockchain and Bitcoin applications Blockain and NoSQL databases Protocols for blockchain Cryptography, Cryptocurrency Fraud detection and prevention Blockchain and Internet of Things Scalability of blockchains Application areas: Finance, business and retail Intelligent transportation Healthcare and clinical decision support Bioinformatics and biomedical informatics Computer vision Human activity recognition Cybersecurity Natural language processing Recommender systems Social media and networks |
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