Tom Drabas – NVIDIA Technical Blog News and tutorials for developers, data scientists, and IT admins 2024-05-15T16:09:08Z http://www.open-lab.net/blog/feed/ Tom Drabas <![CDATA[Cybersecurity Analysis �C Beginner��s Guide to Processing Security Logs in Python]]> http://www.open-lab.net/blog/?p=25367 2024-05-07T19:27:35Z 2021-05-26T17:00:00Z This is the last installment of the series of articles on the RAPIDS ecosystem. The series explores and discusses various aspects of RAPIDS that allow its users...]]>

This is the last installment of the series of articles on the RAPIDS ecosystem. The series explores and discusses various aspects of RAPIDS that allow its users solve ETL (Extract, Transform, Load) problems, build ML (Machine Learning) and DL (Deep Learning) models, explore expansive graphs, process signal and system log, or use SQL language via BlazingSQL to process data.

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Tom Drabas <![CDATA[How to Accelerate Signal Processing in Python]]> http://www.open-lab.net/blog/?p=25502 2022-10-10T19:01:35Z 2021-03-31T21:40:00Z This post is the seventh installment of the series of articles on the RAPIDS ecosystem. The series explores and discusses various aspects of RAPIDS that allow...]]>

This post is the seventh installment of the series of articles on the RAPIDS ecosystem. The series explores and discusses various aspects of RAPIDS that allow its users solve ETL (Extract, Transform, Load) problems, build ML (Machine Learning) and DL (Deep Learning) models, explore expansive graphs, process signal and system log, or use SQL language via BlazingSQL to process data.

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Tom Drabas <![CDATA[Beginner��s Guide to GPU-Accelerated Event Stream Processing in Python]]> http://www.open-lab.net/blog/?p=25234 2022-10-10T19:01:34Z 2021-03-26T00:13:12Z This tutorial is the six installment of introductions to the RAPIDS ecosystem. The series explores and discusses various aspects of RAPIDS that allow its users...]]>

This tutorial is the six installment of introductions to the RAPIDS ecosystem. The series explores and discusses various aspects of RAPIDS that allow its users solve ETL (Extract, Transform, Load) problems, build ML (Machine Learning) and DL (Deep Learning) models, explore expansive graphs, process geospatial, signal, and system log data, or use SQL language via BlazingSQL to process data.

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Tom Drabas <![CDATA[Beginner��s Guide to GPU Accelerated Graph Analytics in Python]]> http://www.open-lab.net/blog/?p=25071 2022-10-10T19:01:33Z 2021-03-24T17:30:00Z This tutorial is the fifth installment of introductions to the RAPIDS ecosystem. The series explores and discusses various aspects of RAPIDS that allow its...]]>

This tutorial is the fifth installment of introductions to the RAPIDS ecosystem. The series explores and discusses various aspects of RAPIDS that allow its users solve ETL (Extract, Transform, Load) problems, build ML (Machine Learning) and DL (Deep Learning) models, explore expansive graphs, process geospatial, signal, and system log data, or use SQL language via BlazingSQL to process data.

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Tom Drabas <![CDATA[Scikit-learn Tutorial �C Beginner��s Guide to GPU Accelerated ML Pipelines]]> http://www.open-lab.net/blog/?p=24790 2022-08-21T23:41:09Z 2021-03-22T18:09:29Z This tutorial is the fourth installment of the series of articles on the RAPIDS ecosystem. The series explores and discusses various aspects of RAPIDS that...]]>

This tutorial is the fourth installment of the series of articles on the RAPIDS ecosystem. The series explores and discusses various aspects of RAPIDS that allow its users solve ETL (Extract, Transform, Load) problems, build ML (Machine Learning) and DL (Deep Learning) models, explore expansive graphs, process signal and system log, or use SQL language via BlazingSQL to process data.

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Tom Drabas <![CDATA[Dask Tutorial �C Beginner��s Guide to Distributed Computing with GPUs in Python]]> http://www.open-lab.net/blog/?p=24732 2022-08-21T23:41:08Z 2021-03-18T23:45:22Z This is the third installment of the series of introductions to the RAPIDS ecosystem. The series explores and discusses various aspects of RAPIDS that allow its...]]>

This is the third installment of the series of introductions to the RAPIDS ecosystem. The series explores and discusses various aspects of RAPIDS that allow its users solve ETL (Extract, Transform, Load) problems, build ML (Machine Learning) and DL (Deep Learning) models, explore expansive graphs, process geospatial, signal, and system log data, or use SQL language via BlazingSQL to process data.

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Tom Drabas <![CDATA[Beginner��s Guide to Querying Data Using SQL on GPUs in Python]]> http://www.open-lab.net/blog/?p=24067 2022-08-21T23:41:04Z 2021-03-15T19:51:03Z Historically speaking, processing large amounts of structured data has been the domain of relational databases. Databases, consisting of tables that can be...]]>

Historically speaking, processing large amounts of structured data has been the domain of relational databases. Databases, consisting of tables that can be joined together or aggregated, have been the staple of data processing and are fundamental to the existence of many companies. And just like databases are almost synonymous with storing and processing data, Structured Query Language (SQL) has…

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Tom Drabas <![CDATA[Python Pandas Tutorial: A Beginner��s Guide to GPU Accelerated DataFrames for Pandas Users]]> http://www.open-lab.net/blog/?p=24011 2024-05-15T16:09:08Z 2021-03-11T18:19:17Z This series on the RAPIDS ecosystem explores the various aspects that enable you to solve extract, transform, load (ETL) problems, build machine learning (ML)...]]>

This series on the RAPIDS ecosystem explores the various aspects that enable you to solve extract, transform, load (ETL) problems, build machine learning (ML) and deep learning (DL) models, explore expansive graphs, process signal and system logs, or use the SQL language through BlazingSQL to process data. For part 1, see Pandas DataFrame Tutorial: A Beginner’s Guide to GPU Accelerated DataFrames…

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Tom Drabas <![CDATA[Pandas DataFrame Tutorial �C Beginner��s Guide to GPU Accelerated DataFrames in Python]]> http://www.open-lab.net/blog/?p=23974 2024-05-15T16:07:38Z 2021-03-03T18:22:21Z This post is the first installment of the series of introductions to the RAPIDS ecosystem. The series explores and discusses various aspects of RAPIDS that...]]>

This post is the first installment of the series of introductions to the RAPIDS ecosystem. The series explores and discusses various aspects of RAPIDS that allow its users solve ETL (Extract, Transform, Load) problems, build ML (Machine Learning) and DL (Deep Learning) models, explore expansive graphs, process geospatial, signal, and system log data, or use SQL language via BlazingSQL to process…

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