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Paco Nathan

Evil Mad Scientist
Sebastopol, CA, United States
https://derwen.ai/ pacoid ceteri
Last active on Stack Overflow yesterday
  • accomplished “player-coach” engineering director; expert in Cloud Computing, Big Data, Data Science, Machine Learning, NLP, AI applications

  • co-chair, JupyterCon

  • O’Reilly author, popular speaker, award-winning instructor

  • innovator in business development and community organization

  • accomplished “player-coach” engineering director; expert in Cloud Computing, Big Data, Data Science, Machine Learning, NLP, AI applications

  • co-chair, JupyterCon

  • O’Reilly author, popular speaker, award-winning instructor

  • innovator in business development and community organization

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Position Jun 2018 → Current (6 months)
Open Source Evangelist at Computable Labs

Open source evangelism, developer relations, consulting on distributed systems

Open source evangelism, developer relations, consulting on distributed systems

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Position Feb 2018 → Current (10 months)
program co-chair at JupyterCon

In-house program co-chair for the JupyterCon conference and related regional events, through O'Reilly Media

In-house program co-chair for the JupyterCon conference and related regional events, through O'Reilly Media

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Position Feb 2012 → Current (6 years, 10 months)
Evil Mad Scientist at Derwen, Inc

Managing partner, lead committer

Managing partner, lead committer

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Open source Oct 2016 → Current (2 years, 2 months)
Last commit on Sep 15, 17
57 Commits / 21,608 ++ / 19,569 --

Python implementation of TextRank for text document NLP parsing and summarization

Python implementation of TextRank for text document NLP parsing and summarization

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Open source Mar 2014 → Current (4 years, 9 months)
Last commit on Oct 02, 17
26 Commits / 1,125 ++ / 588 --

A companion wiki + code repository for the O'Reilly Media video "Just Enough Math". This site provides additional links, sample code, and other addenda.

A companion wiki + code repository for the O'Reilly Media video "Just Enough Math". This site provides additional links, sample code, and other addenda.

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Blogs or videos Aug 2018

Paco Nathan shares a few unexpected things that emerged in Jupyter in 2018.

Paco Nathan shares a few unexpected things that emerged in Jupyter in 2018.

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Blogs or videos Aug 2018

Here are some introductory notes about smart contracts and related technology leading toward decentralized data markets. Introductory, as…

Here are some introductory notes about smart contracts and related technology leading toward decentralized data markets. Introductory, as…

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Position Jun 2015 → Jun 2018 (3 years, 1 month)
Director, Learning Group at O'Reilly Media

Leading internal projects for AI applications in Media: ML for metadata repair across M&A business units, video search/summarization, content discovery (search, recommendations, etc.), content acquisition gap analysis, customer-usage topic trend analysis, etc. See https://www.slideshare.net/pacoid/ai-within-oreilly-media

Leading internal projects for AI applications in Media: ML for metadata repair across M&A business units, video search/summarization, content discovery (search, recommendations, etc.), content acquisition gap analysis, customer-usage topic trend analysis, etc. See https://www.slideshare.net/pacoid/ai-within-oreilly-media

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Blogs or videos Nov 2017

Session presented at Big Data Spain 2017 Conference 16th Nov 2017 Kinépolis Madrid https://www.bigdataspain.org/2017/talk/human-in-the-loop-a-design-pattern-...

Session presented at Big Data Spain 2017 Conference 16th Nov 2017 Kinépolis Madrid https://www.bigdataspain.org/2017/talk/human-in-the-loop-a-design-pattern-...

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Blogs or videos Nov 2017

lo que se conoce como active learning, que combina lo mejor del hombre y las máquinas. Aunque habrá sectores donde muchos trabajadores sean desplazados por las máquinas, el escenario no es tan catastrófico.

lo que se conoce como active learning, que combina lo mejor del hombre y las máquinas. Aunque habrá sectores donde muchos trabajadores sean desplazados por las máquinas, el escenario no es tan catastrófico.

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Open source May 2017 → Aug 2017 (4 months)
Last commit on Aug 24, 17
9 Commits / 935 ++ / 251 --

Machines and people collaborating together through Jupyter notebooks.

Machines and people collaborating together through Jupyter notebooks.

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Blogs or videos Aug 2017

Interview discussion with Wes McKinney at JupyterCon NY 2017

Interview discussion with Wes McKinney at JupyterCon NY 2017

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Blogs or videos Aug 2017

This guest blog post from Paco Nathan dives into how people and machines collaborating together to perform work is real and not science fiction.

This guest blog post from Paco Nathan dives into how people and machines collaborating together to perform work is real and not science fiction.

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Blogs or videos 2016

Practical techniques for preparing text for custom search, content recommenders, AI applications, and more…

Practical techniques for preparing text for custom search, content recommenders, AI applications, and more…

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Blogs or videos 2016

Use approximations with error bounds to trade-off system resources, e.g., memory or compute time -- especially for large-scale analytics and streaming data.

Use approximations with error bounds to trade-off system resources, e.g., memory or compute time -- especially for large-scale analytics and streaming data.

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Blogs or videos Nov 2016

Keynote talk at Big Data Spain 2016 Conference - Kinépolis Madrid

Keynote talk at Big Data Spain 2016 Conference - Kinépolis Madrid

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Blogs or videos Sep 2016

Shared learning: It's what we do at O'Reilly, and it's what we’d like to share with you.

Shared learning: It's what we do at O'Reilly, and it's what we’d like to share with you.

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Blogs or videos Jul 2016

Logline and treatment. As the story gets told, the tech industry is on the verge of sweeping transformations based on AI.

Logline and treatment. As the story gets told, the tech industry is on the verge of sweeping transformations based on AI.

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Blogs or videos Mar 2016

Introducing Oriole Online Tutorials, a new medium that lets you see, hear, and experiment at the same time and in the same place.

Introducing Oriole Online Tutorials, a new medium that lets you see, hear, and experiment at the same time and in the same place.

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Blogs or videos 2015

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Open source May 2015 → Oct 2015 (5 months)
Last commit on Oct 16, 15
8 Commits / 15,660 ++ / 233 --

Code examples supporting the "Introduction to Apache Spark" video published by O'Reilly Media

Code examples supporting the "Introduction to Apache Spark" video published by O'Reilly Media

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Blogs or videos Oct 2015

Keynote talk at Big Data Spain 2015 Conference - Kinépolis Madrid

O'Reilly Media surveys the industry extensively each year. In addition we get a good birds-eye view of industry trends through our conference programs and publications, working closely with some of the best practitioners in Data Science.

Keynote talk at Big Data Spain 2015 Conference - Kinépolis Madrid

O'Reilly Media surveys the industry extensively each year. In addition we get a good birds-eye view of industry trends through our conference programs and publications, working closely with some of the best practitioners in Data Science.

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Blogs or videos Aug 2015

PyData Seattle 2015 Who's who in a developer community and what do they discuss? And with whom? This project, based on Apache Spark, provides Python pipeline...

PyData Seattle 2015 Who's who in a developer community and what do they discuss? And with whom? This project, based on Apache Spark, provides Python pipeline...

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Open source Jul 2015 → Jul 2015 (1 month)
Last commit on Jul 22, 15
6 Commits / 420 ++ / 157 --

Analyze the structure and dynamics of an open source project's developer community, using graph algorithms, etc.

Analyze the structure and dynamics of an open source project's developer community, using graph algorithms, etc.

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Open source Dec 2009 → Jun 2015 (5 years, 7 months)

Java implementation of the TextRank algorithm by Mihalcea, et al. http://web.eecs.umich.edu/~mihalcea/papers/mihalcea.emnlp04.pdf

Java implementation of the TextRank algorithm by Mihalcea, et al. http://web.eecs.umich.edu/~mihalcea/papers/mihalcea.emnlp04.pdf

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Open source Dec 2014 → Jun 2015 (6 months)
Last commit on Jun 04, 15
34 Commits / 10,300 ++ / 7,671 --

Coding exercises for Apache Spark

Coding exercises for Apache Spark

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Blogs or videos Jun 2015

Case study / demo of a large-scale graph analytics project, leveraging GraphX in Apache Space to surface insights about open source developer communities, based on data mining of their email forums. The project works with any Apache email archive, applying NLP and machine learning .

Case study / demo of a large-scale graph analytics project, leveraging GraphX in Apache Space to surface insights about open source developer communities, based on data mining of their email forums. The project works with any Apache email archive, applying NLP and machine learning .

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Position Aug 2014 → May 2015 (10 months)
Director, Community Evangelism at Databricks

Developer evangelism for Apache Spark and Databricks, teaching Spark, etc.

Developer evangelism for Apache Spark and Databricks, teaching Spark, etc.

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Blogs or videos Apr 2015

Introductory course in Apache Spark, presented at Spark Summit NY 2015

Introductory course in Apache Spark, presented at Spark Summit NY 2015

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Blogs or videos Feb 2015

Innovation Enterprise top 30 list for individuals in big data that have had a large impact on the development or popularity of the industry in Big Data and Analytics

Innovation Enterprise top 30 list for individuals in big data that have had a large impact on the development or popularity of the industry in Big Data and Analytics

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Blogs or videos 2014

With the commercial successes of machine learning and cloud computing, many business people need just enough math to take advantage of open source frameworks for big data.

With the commercial successes of machine learning and cloud computing, many business people need just enough math to take advantage of open source frameworks for big data.

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Blogs or videos Mar 2014

KDnuggets talks with Paco Nathan, computer scientist, OSS developer, author, and advisor about Apache Mesos, Cascading, his books and Big Data trends.

KDnuggets talks with Paco Nathan, computer scientist, OSS developer, author, and advisor about Apache Mesos, Cascading, his books and Big Data trends.

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Open source Nov 2013 → Jan 2014 (3 months)
Last commit on Jan 17, 14
157 Commits / 25,925 ++ / 14,499 --

Exelixi is a distributed framework based on Apache Mesos, mostly implemented in Python using gevent for high-performance concurrency. It is intended to run cluster computing jobs (partitioned batch jobs, which include some messaging) in pure Python. By default, it runs genetic algorithms at scale.

Exelixi is a distributed framework based on Apache Mesos, mostly implemented in Python using gevent for high-performance concurrency. It is intended to run cluster computing jobs (partitioned batch jobs, which include some messaging) in pure Python. By default, it runs genetic algorithms at scale.

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Blogs or videos Aug 2013

KDD 2013 paper, using machine learning for predictive analytics with Chicago crime data.

KDD 2013 paper, using machine learning for predictive analytics with Chicago crime data.

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Open source Sep 2012 → Jun 2013 (10 months)

Cascading plus City of Palo Alto open data

Cascading plus City of Palo Alto open data

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Open source Jun 2012 → Jun 2013 (1 year, 1 month)

source examples to support the "Cascading for the Impatient" blog post series

source examples to support the "Cascading for the Impatient" blog post series

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Blogs or videos Jun 2013

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Open source May 2013 → May 2013 (1 month)
Last commit on May 29, 13
9 Commits / 6,146 ++ / 63 --

predictive modeling for crime rates in Chicago wards

predictive modeling for crime rates in Chicago wards

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Blogs or videos Feb 2013

Does it make sense to use a TDD approach in concert with big data? Paco Nathan explains how a combination of Cascading, which provides enterprise-level workflows for data, and Clojure, a functional programming DSL, allows developers to tap into TDD for big data applications.

Does it make sense to use a TDD approach in concert with big data? Paco Nathan explains how a combination of Cascading, which provides enterprise-level workflows for data, and Clojure, a functional programming DSL, allows developers to tap into TDD for big data applications.

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Joined Stack Overflow
on September 25, 2012

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Open source Jul 2010 → Nov 2011 (1 year, 5 months)
Last commit on Nov 18, 11
7 Commits / 525,657 ++ / 2 --

MapReduce examples

MapReduce examples

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Open source Jul 2010 → Jul 2010 (1 month)
Last commit on Jul 24, 10
2 Commits / 103,802 ++ / 0 --

Java implementation of "Data-Ink Ratio Analysis" metric described by Edward Tufte

Java implementation of "Data-Ink Ratio Analysis" metric described by Edward Tufte

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Blogs or videos Jun 2008

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Open source 2002 → 2004 (3 years)

An open source SIMS framework for sensor fusion, alerting, and visualization of perimeter network security, using risk metrics. Deployed at Capitol Hill, Wildwell, etc. Runner-up for Apple Design Award, 2004.

An open source SIMS framework for sensor fusion, alerting, and visualization of perimeter network security, using risk metrics. Deployed at Capitol Hill, Wildwell, etc. Runner-up for Apple Design Award, 2004.

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Blogs or videos 2004

O'Reilly Media: network security countermeasures

O'Reilly Media: network security countermeasures

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Open source 1997 → 1999 (3 years)

An early chat bot in Java, used in eCRM at FringeWare, Loebner Prize, BBC Tomorrow World live televised turning test, etc.

An early chat bot in Java, used in eCRM at FringeWare, Loebner Prize, BBC Tomorrow World live televised turning test, etc.

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Education 1983 → 1986
MS, Stanford University

Roble Hall, Residential Computing, "Dr Quantum and the Operators" (local band, keyboards/vocals)

Roble Hall, Residential Computing, "Dr Quantum and the Operators" (local band, keyboards/vocals)

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Education 1982 → 1986
BS, Stanford University

(see grad school listing)

(see grad school listing)

Paco Nathan

Sebastopol, CA, United States https://derwen.ai/
  • accomplished “player-coach” engineering director; expert in Cloud Computing, Big Data, Data Science, Machine Learning, NLP, AI applications

  • co-chair, JupyterCon

  • O’Reilly author, popular speaker, award-winning instructor

  • innovator in business development and community organization

Technical Skills

Likes: python machine-learning nlp summarization apache-spark jupyter graph-algorithm cloud functional-programming data-science probabilistic-data-structures distributed-system amazon-web-services gcp artificial-intelligence active-learning

Experience

Jun 2018 → Current Open Source Evangelist Computable Labs
decentralized-applications, blockchain, smartcontracts, machine-learning, distributed-system

Open source evangelism, developer relations, consulting on distributed systems

Feb 2018 → Current program co-chair JupyterCon
jupyter, jupyterhub, jupyter-lab, jupyter-notebook

In-house program co-chair for the JupyterCon conference and related regional events, through O'Reilly Media

Feb 2012 → Current Evil Mad Scientist Derwen, Inc
nlp, artificial-intelligence, machine-learning

Managing partner, lead committer

Jun 2015 → Jun 2018 Director, Learning Group O'Reilly Media
python, nlp, apache-spark, machine-learning, summarization

Leading internal projects for AI applications in Media: ML for metadata repair across M&A business units, video search/summarization, content discovery (search, recommendations, etc.), content acquisition gap analysis, customer-usage topic trend analysis, etc. See https://www.slideshare.net/pacoid/ai-within-oreilly-media

Aug 2014 → May 2015 Director, Community Evangelism Databricks
apache-spark, scala, java, python, pyspark, machine-learning, graph-algorithm, spark-graphx, apache-spark-mllib

Developer evangelism for Apache Spark and Databricks, teaching Spark, etc.

Education

1983 → 1986 MS Stanford University

Roble Hall, Residential Computing, "Dr Quantum and the Operators" (local band, keyboards/vocals)

1982 → 1986 BS Stanford University

(see grad school listing)

Projects & Interests

Oct 2016 → Current ceteri/pytextrank https://github.com/ceteri/pytextrank
python, nlp, summarization, textrank, machine-learning, spacy

Python implementation of TextRank for text document NLP parsing and summarization

Mar 2014 → Current ceteri/jem-video https://github.com/ceteri/jem-video

A companion wiki + code repository for the O'Reilly Media video "Just Enough Math". This site provides additional links, sample code, and other addenda.

May 2017 → Aug 2017 ceteri/nbtransom https://github.com/ceteri/nbtransom

Machines and people collaborating together through Jupyter notebooks.

May 2015 → Oct 2015 ceteri/intro_spark https://github.com/ceteri/intro_spark

Code examples supporting the "Introduction to Apache Spark" video published by O'Reilly Media

Jul 2015 → Jul 2015 ceteri/exsto https://github.com/ceteri/exsto

Analyze the structure and dynamics of an open source project's developer community, using graph algorithms, etc.

Dec 2009 → Jun 2015 ceteri/textrank https://github.com/ceteri/textrank

Java implementation of the TextRank algorithm by Mihalcea, et al. http://web.eecs.umich.edu/~mihalcea/papers/mihalcea.emnlp04.pdf

Dec 2014 → Jun 2015 ceteri/spark-exercises https://github.com/ceteri/spark-exercises

Coding exercises for Apache Spark

Nov 2013 → Jan 2014 ceteri/exelixi https://github.com/ceteri/exelixi

Exelixi is a distributed framework based on Apache Mesos, mostly implemented in Python using gevent for high-performance concurrency. It is intended to run cluster computing jobs (partitioned batch jobs, which include some messaging) in pure Python. By default, it runs genetic algorithms at scale.

Sep 2012 → Jun 2013 CoPA https://github.com/ceteri/CoPA
java, cascalog, clojure, cascading, hadoop, machine-learning, opendata

Cascading plus City of Palo Alto open data

Jun 2012 → Jun 2013 Impatient https://github.com/Cascading/Impatient
java, cascading, hadoop, bigdata, machine-learning, scala, scalding, clojure, cascalog

source examples to support the "Cascading for the Impatient" blog post series

May 2013 → May 2013 ceteri/ChicagoCrime https://github.com/ceteri/ChicagoCrime

predictive modeling for crime rates in Chicago wards

Jul 2010 → Nov 2011 ceteri/ceteri-mapred https://github.com/ceteri/ceteri-mapred

MapReduce examples

Jul 2010 → Jul 2010 ceteri/dataink https://github.com/ceteri/dataink

Java implementation of "Data-Ink Ratio Analysis" metric described by Edward Tufte

2002 → 2004 OpenSIMS http://opensims.sourceforge.net/
java, flash

An open source SIMS framework for sensor fusion, alerting, and visualization of perimeter network security, using risk metrics. Deployed at Capitol Hill, Wildwell, etc. Runner-up for Apple Design Award, 2004.

1997 → 1999 JFRED http://www.robitron.com/JFRED.php
java, nlp

An early chat bot in Java, used in eCRM at FringeWare, Loebner Prize, BBC Tomorrow World live televised turning test, etc.

Public Artifacts

Aug 2018 Jupyter trends in 2018 https://www.oreilly.com/ideas/jupyter-trends-in-2018
jupyter, enterprise, data-science, machine-learning

Paco Nathan shares a few unexpected things that emerged in Jupyter in 2018.

Aug 2018 In search of decentralized data markets – Computable Blog – Medium https://medium.com/computable-blog/in-search-of-decentralized-data-markets-8dafec56f395
blockchain, smartcontracts

Here are some introductory notes about smart contracts and related technology leading toward decentralized data markets. Introductory, as…

Nov 2017 Human-in-the-loop: a design pattern for managing teams which leverage ML by Paco Nathan https://www.youtube.com/watch?v=I9gNK6E0ROk
artificial-intelligence, machine-learning, ontology, summarization, annotations, jupyter, apache-spark, python, scikit-learn

Session presented at Big Data Spain 2017 Conference 16th Nov 2017 Kinépolis Madrid https://www.bigdataspain.org/2017/talk/human-in-the-loop-a-design-pattern-...

Nov 2017 «Estoy a favor de una renta cubierta por las tasas de las empresas» https://www.lavozdegalicia.es/noticia/mercados/2017/11/19/favor-renta-cubierta-tasas-empresas/0003_201711SM19P2993.htm
artificial-intelligence

lo que se conoce como active learning, que combina lo mejor del hombre y las máquinas. Aunque habrá sectores donde muchos trabajadores sean desplazados por las máquinas, el escenario no es tan catastrófico.

Aug 2017 Wes McKinney interviewed at JupyterCon https://youtu.be/Q7y9l-L8yiU
arrow, pandas, python, distributed-system

Interview discussion with Wes McKinney at JupyterCon NY 2017

Aug 2017 Humans in the Loop https://blog.dominodatalab.com/humans-in-the-loop/
jupyter-notebook, machine-learning, active-learning, human-in-the-loop, artificial-intelligence, nlp

This guest blog post from Paco Nathan dives into how people and machines collaborating together to perform work is real and not science fiction.

2016 Natural Language Processing in Python https://synecdoche.liber118.com/natural-language-processing-in-python-832b0a99791b
python, nlp, spacy, networkx, datasketch, pytextrank, deep-learning, beautifulsoup

Practical techniques for preparing text for custom search, content recommenders, AI applications, and more…

2016 Probabilistic data structures in Python https://www.oreilly.com/learning/probabilistic-data-structures-in-python-new

Use approximations with error bounds to trade-off system resources, e.g., memory or compute time -- especially for large-scale analytics and streaming data.

Nov 2016 Has AI Arrived? https://www.youtube.com/watch?v=v0t7ZO8Ah4A

Keynote talk at Big Data Spain 2016 Conference - Kinépolis Madrid

Sep 2016 How do you learn? https://www.oreilly.com/learning/how-do-you-learn

Shared learning: It's what we do at O'Reilly, and it's what we’d like to share with you.

Jul 2016 Beyond the AI Winter – Synecdoche https://synecdoche.liber118.com/beyond-the-ai-winter-941c0a66b4f5

Logline and treatment. As the story gets told, the tech industry is on the verge of sweeping transformations based on AI.

Mar 2016 Learn alongside innovators, thought-by-thought, in context https://www.oreilly.com/ideas/oreilly-oriole-learn-alongside-innovators-thought-by-thought-in-context
jupyter-notebook, docker, mesos

Introducing Oriole Online Tutorials, a new medium that lets you see, hear, and experiment at the same time and in the same place.

2015 Building Data Science Teams https://www.safaribooksonline.com/library/view/building-data-science/9781491940983/video230566.html
Oct 2015 Data Science in 2016: Moving up https://youtu.be/XdMa-6MnrxA

Keynote talk at Big Data Spain 2015 Conference - Kinépolis Madrid

O'Reilly Media surveys the industry extensively each year. In addition we get a good birds-eye view of industry trends through our conference programs and publications, working closely with some of the best practitioners in Data Science.

Aug 2015 NLP and text analytics at scale with PySpark and notebooks https://youtu.be/iVbTFIdZ1Io
pyspark, nlp, machine-learning, apache-spark, python, jupyter-notebook

PyData Seattle 2015 Who's who in a developer community and what do they discuss? And with whom? This project, based on Apache Spark, provides Python pipeline...

Jun 2015 Graph Analytics in Spark https://youtu.be/P_V71n-gtDs
apache-spark, scala, sssp, graph-algorithm, spark-graphx, nlp, machine-learning

Case study / demo of a large-scale graph analytics project, leveraging GraphX in Apache Space to surface insights about open source developer communities, based on data mining of their email forums. The project works with any Apache email archive, applying NLP and machine learning .

Apr 2015 Intro to Apache Spark https://youtu.be/EuWDz2Vb1Io
apache-spark, machine-learning, nlp, scala, amazon-web-services, java, python

Introductory course in Apache Spark, presented at Spark Summit NY 2015

Feb 2015 Top 30 people in Big Data and Analytics http://www.kdnuggets.com/2015/02/top-30-people-big-data-analytics.html
bigdata, cloud, data-science, machine-learning

Innovation Enterprise top 30 list for individuals in big data that have had a large impact on the development or popularity of the industry in Big Data and Analytics

2014 Just Enough Math https://www.safaribooksonline.com/library/view/just-enough-math/9781491904077/

With the commercial successes of machine learning and cloud computing, many business people need just enough math to take advantage of open source frameworks for big data.

Mar 2014 KDnuggets Exclusive: Interview with Paco Nathan, Chief Scientist at Mesosphere http://www.kdnuggets.com/2014/03/exclusive-paco-nathan-mesosphere-big-data-player.html

KDnuggets talks with Paco Nathan, computer scientist, OSS developer, author, and advisor about Apache Mesos, Cascading, his books and Big Data trends.

Aug 2013 Pattern: PMML for Cascading and Hadoop https://kdd13pmml.files.wordpress.com/2013/07/pattern.pdf
hadoop, cascading, pmml, machine-learning

KDD 2013 paper, using machine learning for predictive analytics with Chicago crime data.

Jun 2013 Enterprise Data Workflows with Cascading http://www.amazon.com/Enterprise-Data-Workflows-Cascading-Nathan/dp/1449358721
scala, java, hadoop, casacading, clojure, scalding, cascalog
Feb 2013 Test-Driven Development for Big Data https://youtu.be/wB5BPM6eNIs
cascading, java, scala, python, clojure, scalding, cascalog, tdd

Does it make sense to use a TDD approach in concert with big data? Paco Nathan explains how a combination of Cascading, which provides enterprise-level workflows for data, and Clojure, a functional programming DSL, allows developers to tap into TDD for big data applications.

Jun 2008 a methodology for cloud computing architecture http://ceteri.blogspot.com/2008/06/methodology-for-cloud-computing.html
hadoop, amazon-web-services
2004 What "Countermeasures" Really Means http://archive.oreilly.com/pub/a/security/2004/08/03/symbiot.html

O'Reilly Media: network security countermeasures