Tom Petrocelli to Appear on DM Radio to Discuss Containers and Hybrid Cloud

On January 24, 2019 at 3 PM Eastern, Amalgam Insights’ DevOps and Open Source Research Fellow, Tom Petrocelli will be sharing his perspectives on the importance of containers in multi-cloud management on the DM Radio episode Contain Yourself? The Key to Hybrid Cloud

This episode will be hosted by Eric Kavanagh, CEO of The Bloor Group and Petrocelli will be accompanied by Samuel Holcman of the Pinnacle Business Group and Pakshi Rajan of Paxata.

Don’t miss this opportunity to get Tom Petrocelli’s guidance and wisdom on the current state of containers and cloud management!

Data and Analytic Strategies for Developing Ethical IT: a BrightTALK webinar

BI to AI on Trusted Data - An Amalgam Insights Research Theme
BI to AI on Trusted Data – An Amalgam Insights Research Theme

Recommended Audience: CIOs, Enterprise Architects, Data Managers, Analytics Managers, Data Scientists, IT Managers

Vendors Mentioned: Trifacta, Paxata, Datameer, Datawatch, Lavastorm, Alation, Tamr, Unifi, 1010Data, Podium Data, IBM, Domo, Microsoft, Information Builders, Board, Microstrategy, Cloudera, H20.ai, RapidMiner, Domino Data Lab, Dataiku, TIBCO, SAS, Amazon Web Services, Google, DataRobot.

In case you missed it, I just finished up my webinar on Data and Analytic Strategies for Developing Ethical IT. We are headed into a new algorithmic, statistical, and heterogenous data-defined model of IT where IT ethics and relevance are being challenged. In this webinar, we discussed:

  • Why IT is broken from a support and business perspective
  • The aspects of IT that can be fixed
  • What we can do as IT managers to fix IT
  • Data Prep, Data Unification, Business Intelligence, Data Science, and Machine Learning vendors that can help unlock the Black Boxes and Opt-Out disasters in IT
  • Key Recommendations

This webinar provides context to my ongoing research tracks of “BI to AI on Shared Data” and “IT Management at Scale.” To attend the webinar, please check the embedded view below or click to watch on BrightTALK


28 Hours as an Industry Analyst at Strata Data 2017

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Companies Mentioned: Aberdeen Group, Actian, Alation, Arcadia Data, Attunity, BMC, Cambridge Semantics, Cloudera, Databricks, Dataiku, DataKitchen, Datameer, Datarobot, Domino Data Lab, EMA, HPE, Hurwitz and Associates, IBM, Informatica, Kogentix, LogTrust, Looker, < MesoSphere, Micro Focus, Microstrategy, Ovum, Paxata, Podium Data, Qubole, SAP, Snowflake, Strata Data, Tableau, Tamr, Tellius, Trifacta.

Last week, I attended Strata Data Conference at the Javitz Center in New York City to catch up with a wide variety of data science and machine learning users, enablers, and thought leaders. In the process, I had the opportunity to listen to some fantastic keynotes and to chat with 30+ companies looking for solutions, 30+ vendors presenting at the show, and attend with a number of luminary industry analysts and thought leaders including Ovum’s Tony Baer, EMA’s John Myers, Aberdeen Group’s Mike Lock, and Hurwitz & Associates’ Judith Hurwitz.

From this whirwind tour of executives, I took a lot of takeaways from the keynotes and vendors that I can share and from end users that I unfortunately have to keep confidential. To give you an idea of what an industry analyst notes, following are a short summary of takeaways I took from the keynotes and from each vendor that I spoke to:

Keynotes: The key themes that really got my attention is the idea that AI requires ethics, brought up by Joanna Bryson, and that all data is biased, which danah boyd discussed. This idea that data and machine learning have their own weaknesses that require human intervention, training, and guidance is incredibly important. Over the past decade, technologists have put their trust in Big Data and the idea that data will provide answers, only to find that a naive and “unbiased” analysis of data has its own biases. Context and human perspective are inherent to translating data into value: this does not change just because our analytic and data training tools are increasingly nuanced and intelligent in nature.

Behind the hype of data science, Big Data, analytic modeling, robotic process automation, DevOps, DataOps, and artifical intelligence is this fundamental need to understand that data, algorithms, and technology all have inherent biases as the following tweet shows:

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