Tag Archives: DL4J

The Year in Machine Learning (Part Four)

This is the fourth installment in a four-part review of 2016 in machine learning and deep learning. — Part One covered Top Trends in the field, including concerns about bias, interpretability, deep learning’s explosive growth, the democratization of supercomputing, and the emergence of cloud machine learning platforms. — Part Two surveyed significant developments in Open Source machine learning projects, such as R, Python, Spark, Flink,

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The Year in Machine Learning (Part Two)

This is the second installment in a four-part review of 2016 in machine learning and deep learning. Part One, here, covered general trends. In Part Two, we review the year in open source machine learning and deep learning projects. Parts Three and Four will cover commercial machine learning and deep learning software and services. There are thousands of open source projects

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Machine Learning Roundup (October 4, 2016)

Machine learning (ML) and deep learning (DL) content from the past 24 hours. Scroll to the bottom for job postings. In ValueWalk, Mark Melin reports on Deutsche Bank‘s deep dive into machine learning for investing. Just in time for the bailout. Events Thursday, October 6: LinkedIn’s Sunnyvale CA hosts BayLearn, an annual gathering of ML researchers and practitioners. NVIDIApalooza Dave Neal

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Big Analytics Roundup (July 25, 2016)

We have some more summer reading this week; plus, Splice Machine announces availability of its open source Community Edition, and Google launches two new machine learning APIs. There are so many Spark stories I’ve created a special section for them. Plus we have the usual explainers, perspectives, and news. Quant headhunter Linda Burtch repeats her survey of working analysts in her

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Big Analytics Roundup (May 23, 2016)

Google announces that it has designed an application-specific integrated circuit (ASIC) expressly for deep neural nets. Tech press goes bananas. The chips, branded Tensor Processing Units (TPUs) require fewer transistors per operation, so Google can fit more operations per second into the chip. In about a year of operation, Google has achieved an order of magnitude improvement in performance per watt for

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Big Analytics Roundup (February 29, 2016)

Happy Leap Day.  Tachyon’s rebranding as Alluxio, release of CaffeOnSpark and GA for Google Cloud Dataproc lead the hard news this week.  The Alluxio announcement has inspired big thinkers to share big thoughts.  And, we have a nice crop of explainers.  Scroll down to the bottom for another SQL on Hadoop benchmark. Explainers — In SearchDataManagement, Jack Vaughn explains Spark

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