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#9 DoK community: Geospatial Sensor Networks and Partitioning Data // Alex Miłowski

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Manage episode 283453644 series 2865115
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For our 9th installation of the Dokc data on k8s meetup, we will be talking with Alex Milowski from Redis Labs.

// Key takeaways:
How are data collection and consumption workloads fundamentally different?
What are the main challenges for sensor networks? How are those challenges address within the context of K8s?

// Abstract:
We use resources like weather reports or air quality measurements to navigate the world. These resources become especially important when faced by extreme events like the current wildfires in the Western USA. The data for the reports, predictions, and maps all start as realtime sensor networks.
In this talk, Alex will present some of his research into scientific data representation on the Web and how the key mechanism is the partitioning, annotation, and naming of data representations. We’ll take a look at a few examples, including some recent work on air quality data relating to the current wildfires in the western USA. We’ll explore the central question of how geospatial sensor network data can be collected and consumed within K8s deployments.

// Alex Bio
Dr. Milowski is a researcher, developer, entrepreneur, mathematician, and computer scientist. He has been involved in the development of Web and Semantics technologies since the early 1990's, primarily focusing on data representation, algorithms, and processing data at scale; also, an experienced developer skilled in a variety of functional and imperative languages.

He received his PhD in Informatics (Computer Science) from the renowned University of Edinburgh School of Informatics (Scotland) on large-scale computation over scientific data on the Web in 2014.

Various experience in scientific computing - geospatial and genome data pipelines - and big data platforms.

Recently, he has been working in telecommunications on various mobile financial applications and researching how to improve the productivity of machine learning systems and data scientists by utilizing Kubernetes as a platform. He has experience teaching, mentoring, and developing within various data science/ML domains including topics such as cloud computing, Kubernetes, Spark, Hadoop, text processing/NLP, deep learning, data acquisition, and a whole lot of Python.

▬▬▬▬▬▬ Connect with us 👋 ▬▬▬▬▬▬

Join our slack:
https://join.slack.com/t/dokcommunity/shared_invite/zt-g3ui5r0g-jDKz5dhh2W1ayElqwKYYAg
Follow us on Twitter: @dokcommunity

Connect with Demetrios on LinkedIn:
https://www.linkedin.com/in/dpbrinkm/

Connect with Alex on Linkedin:
https://www.linkedin.com/in/alexmilowski/

▬▬▬▬▬▬ Supporters of the DoKc ▬▬▬▬▬▬

This meetup is sponsored by MayaData, which helped start the DOK.community and remains an active supporter. MayaData sponsors two Cloud Native Computing Foundation (CNCF) projects, OpenEBS (http://www.openEBS.io) - the leading open-source container attached storage solution - and Litmus (https://litmuschaos.io/) - the leading Kubernetes native chaos engineering project, which was recently donated to the CNCF as a Sandbox project. As of August 2020, MayaData is the fifth-largest contributor to CNCF projects. Well-known users of MayaData software include the CNCF itself, Bloomberg, Comcast, Arista, Orange, Intuit, and others. Check out more info at https://mayadata.io/

  continue reading

243 episodes

Artwork
iconShare
 
Manage episode 283453644 series 2865115
Content provided by Data on Kubernetes Community. All podcast content including episodes, graphics, and podcast descriptions are uploaded and provided directly by Data on Kubernetes Community or their podcast platform partner. If you believe someone is using your copyrighted work without your permission, you can follow the process outlined here https://player.fm/legal.

For our 9th installation of the Dokc data on k8s meetup, we will be talking with Alex Milowski from Redis Labs.

// Key takeaways:
How are data collection and consumption workloads fundamentally different?
What are the main challenges for sensor networks? How are those challenges address within the context of K8s?

// Abstract:
We use resources like weather reports or air quality measurements to navigate the world. These resources become especially important when faced by extreme events like the current wildfires in the Western USA. The data for the reports, predictions, and maps all start as realtime sensor networks.
In this talk, Alex will present some of his research into scientific data representation on the Web and how the key mechanism is the partitioning, annotation, and naming of data representations. We’ll take a look at a few examples, including some recent work on air quality data relating to the current wildfires in the western USA. We’ll explore the central question of how geospatial sensor network data can be collected and consumed within K8s deployments.

// Alex Bio
Dr. Milowski is a researcher, developer, entrepreneur, mathematician, and computer scientist. He has been involved in the development of Web and Semantics technologies since the early 1990's, primarily focusing on data representation, algorithms, and processing data at scale; also, an experienced developer skilled in a variety of functional and imperative languages.

He received his PhD in Informatics (Computer Science) from the renowned University of Edinburgh School of Informatics (Scotland) on large-scale computation over scientific data on the Web in 2014.

Various experience in scientific computing - geospatial and genome data pipelines - and big data platforms.

Recently, he has been working in telecommunications on various mobile financial applications and researching how to improve the productivity of machine learning systems and data scientists by utilizing Kubernetes as a platform. He has experience teaching, mentoring, and developing within various data science/ML domains including topics such as cloud computing, Kubernetes, Spark, Hadoop, text processing/NLP, deep learning, data acquisition, and a whole lot of Python.

▬▬▬▬▬▬ Connect with us 👋 ▬▬▬▬▬▬

Join our slack:
https://join.slack.com/t/dokcommunity/shared_invite/zt-g3ui5r0g-jDKz5dhh2W1ayElqwKYYAg
Follow us on Twitter: @dokcommunity

Connect with Demetrios on LinkedIn:
https://www.linkedin.com/in/dpbrinkm/

Connect with Alex on Linkedin:
https://www.linkedin.com/in/alexmilowski/

▬▬▬▬▬▬ Supporters of the DoKc ▬▬▬▬▬▬

This meetup is sponsored by MayaData, which helped start the DOK.community and remains an active supporter. MayaData sponsors two Cloud Native Computing Foundation (CNCF) projects, OpenEBS (http://www.openEBS.io) - the leading open-source container attached storage solution - and Litmus (https://litmuschaos.io/) - the leading Kubernetes native chaos engineering project, which was recently donated to the CNCF as a Sandbox project. As of August 2020, MayaData is the fifth-largest contributor to CNCF projects. Well-known users of MayaData software include the CNCF itself, Bloomberg, Comcast, Arista, Orange, Intuit, and others. Check out more info at https://mayadata.io/

  continue reading

243 episodes

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