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IBM and business partner bring intelligent equipment maintenance to automotive company with IBM Maximo

IBM Big Data Hub

Founded in 2006, Shuto Technology is a leading asset management solution provider in China that focuses on helping industry-leading enterprises build asset operation and management platforms, and empower their core competitiveness through digitalization. of the client to optimize data sharing and business synergy.

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QlikView vs Qlik Sense vs FineReport, who is better BI tool in 2023?

FineReport

Introduction to Qlik Sense Qlik Sense is an interactive BI product released by QlikTech in 2014. Users can create visual reports according to their own wishes and achieve self-service analysis. FineReport is a very mature reporting tool launched by Fanruan Software in 2006. FineReport supports more types of charts.

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Towards optimal experimentation in online systems

The Unofficial Google Data Science Blog

If the relationship of $X$ to $Y$ can be approximated as quadratic (or any polynomial), the objective and constraints as linear in $Y$, then there is a way to express the optimization as a quadratically constrained quadratic program (QCQP). However, joint optimization is possible by increasing both $x_1$ and $x_2$ at the same time.

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Real-Real-World Programming with ChatGPT

O'Reilly on Data

To provide some coherence to the music, I decided to use Taylor Swift songs since her discography covers the time span of most papers that I typically read: Her main albums were released in 2006, 2008, 2010, 2012, 2014, 2017, 2019, 2020, and 2022. This choice also inspired me to call my project Swift Papers.

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Data Science, Past & Future

Domino Data Lab

He also really informed a lot of the early thinking about data visualization. It involved a lot of work with applied math, some depth in statistics and visualization, and also a lot of communication skills. The problems down in the mature bucket, those are optimizations, they aren’t showstoppers. I signed a lot of NDAs.

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Using random effects models in prediction problems

The Unofficial Google Data Science Blog

Often our data can be stored or visualized as a table like the one shown below. Column "a" is an advertiser id, "b" is a web site, and "c" is the 'interaction' of columns "a" and "b". $y$ Cambridge University Press, (2006). [2] In this example we have three features/columns named "a", "b", and "c". hi-fly-airlines 123.com