[Datasciencecentral] BigDataFr recommends: The Mathematics of Machine Learning

BigDataFr recommends: The Mathematics of Machine Learning […] In the last few months, I have had several people contact me about their enthusiasm for venturing into the world of data science and using Machine Learning (ML) techniques to probe statistical regularities and build impeccable data-driven products. However, I’ve observed that some actually lack the necessary mathematical […]

[Datasciencecentral – Tips] BigDataFr recommends: Difference between Machine Learning, Data Science, AI, Deep Learning, and Statistics

BigDataFr recommends: Difference between Machine Learning, Data Science, AI, Deep Learning, and Statistics […] In this article, Vincent Granville clarifies the various roles of the data scientist, and how data science compares and overlaps with related fields such as machine learning, deep learning, AI, statistics, IoT, operations research, and applied mathematics. As data science is […]

[arXiv] BigDataFr recommends: Distributed Real-Time Sentiment Analysis for Big Data Social Streams

BigDataFr recommends: Distributed Real-Time Sentiment Analysis for Big Data Social Streams […] ABSTRACT Big data trend has enforced the data-centric systems to have continuous fast data streams. In recent years, real-time analytics on stream data has formed into a new research field, which aims to answer queries about what-is-happening-now with a negligible delay. The real […]

[arXiv] BigDataFr recommends: Kissing Cuisines: Exploring Worldwide Culinary Habits on the Web

BigDataFr recommends: Kissing Cuisines: Exploring Worldwide Culinary Habits on the Web. […] ABSTRACT As food becomes an important part of modern life, recipes shared on the web are a great indicator of civilizations and culinary attitudes in different countries. Similarly, ingredients, flavors, and nutrition information are strong signals of the taste preferences of individuals from […]

[arXiv] BigDataFr recommends: Architecting Time-Critical Big-Data Systems

BigDataFr recommends: Architecting Time-Critical Big-Data Systems Subjects: Distributed, Parallel, and Cluster Computing (cs.DC) […] – Current infrastructures for developing big-data applications are able to process –via big-data analytics-huge amounts of data, using clusters of machines that collaborate to perform parallel computations. However, current infrastructures were not designed to work with the requirements of time-critical applications; […]

[arXiv] BigDataFr recommends: Big Data Analytics in Cloud environment using #Hadoop

BigDataFr recommends: Big Data Analytics in Cloud environment using Hadoop Subjects: Distributed, Parallel, and Cluster Computing (cs.DC) […] The Big Data management is a problem right now. The Big Data growth is very high. It is very difficult to manage due to various characteristics. This manuscript focuses on Big Data analytics in cloud environment using […]

[arXiv] BigDataFr recommends: Correct classification for big/smart/fast data machine learning

BigDataFr recommends: Correct classification for big/smart/fast data machine learning Subjects: Learning (cs.LG); Information Theory (cs.IT) […] Table (database) / Relational database Classification for big/smart/fast data machine learning is one of the most important tasks of predictive analytics and extracting valuable information from data. It is core applied technique for what now understood under data science […]

[Datasciencecentral] BigDataFr recommends: Beyond Deep Learning – 3rd Generation Neural Nets

BigDataFr recommends: Beyond Deep Learning – 3rd Generation Neural Nets […] “By far the fastest expanding frontier of data science is AI and specifically the rapid advances in Deep Learning.  Advances in Deep Learning have been dependent on artificial neural nets and especially Convolutional Neural Nets (CNNs).  In fact our use of the word “deep” […]