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Editorial Calendar

This editorial calendar is based on the ongoing research being conducted by ‘D’ of Things within the data management industry. Publication dates are considered on a quarterly basis.

Please take into account this agenda may experience updates/changes according to changing conditions in the industry as well as input from user and software providers.

While we can't firmly commit or promise the delivery of each research project, it reflects the overall research plan and publication intention of ‘D’ of Things as well as our current research direction.

Please make sure to check this calendar on a frequent basis.


2018

Report TitlePublication DateNote
DoT Solution Overview: Zoomdata2018 Q3Under Dev.
DoT Industry Note:ML and Cognitive Systems Part 3 2018 Q3Under Dev.
DoT Industry Note: Hadoop Data Platforms2018 Q3DoT
DoT Industry Note: ML and Cognitive Systems Part 42018 Q4DoT
DoT Solution Overview: MapR2018 Q4DoT
DoT Solution Overview: Dundas BI2018 Q4DoT
DoT Solution Overview: DataRobot2019 Q1DoT
DoT Industry Note: ML and Cognitive Systems Part 52019 Q1DoT
DoT Solution Overview: Tableau2019 Q1DoT

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