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Alexis Seigneurin

Data Engineer

I love solving complex problems through engineering and a good use of technologies!

I love solving complex problems through engineering and a good use of technologies!

Favorite editor: Sublime • First computer: Amiga 500

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Position Jan 2016 → Current (6 years)
Data Engineer at Ippon USA
apache-spark scala java apache-kafka cassandra amazon-web-services

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Certification Sep 2017 → Current (4 years, 4 months)

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Open source May 2017 → Current (4 years, 8 months)
Last commit on Mar 29, 18
5 Commits / 351 ++ / 1 --

This is a thin Scala wrapper for the Kafka Streams API. It does not intend to provide a Scala-idiomatic API, but rather intends to make the original API simpler to use from Scala.

This is a thin Scala wrapper for the Kafka Streams API. It does not intend to provide a Scala-idiomatic API, but rather intends to make the original API simpler to use from Scala.

apache-kafka scala

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Certification Nov 2016 → Current (5 years, 2 months)
Certified Developer on Apache Spark
apache-spark

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Open source May 2016 → Current (5 years, 8 months)

Kafka stream for Spark with storage of the offsets in ZooKeeper

Kafka stream for Spark with storage of the offsets in ZooKeeper

apache-spark apache-kafka

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Open source Apr 2016 → Current (5 years, 9 months)
Last commit on Nov 10, 17
9 Commits / 142 ++ / 14 --

Lightweight proxy to expose the UI of an Apache Spark cluster that is behind a firewall

Lightweight proxy to expose the UI of an Apache Spark cluster that is behind a firewall

apache-spark

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Certification Dec 2015 → Current (6 years, 1 month)
machine-learning

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Certification Dec 2018 → Dec 2020 (2 years, 1 month)
AWS Certified Big Data - Specialty
amazon-web-services

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Certification Nov 2018 → Nov 2020 (2 years, 1 month)

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Certification May 2018 → May 2020 (2 years, 1 month)
AWS Solutions Architect Associate
amazon-web-services

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Blogs or videos May 2017

On our project, we built a great system to analyze customer records in real time. We pioneered a microservices architecture using Spark and Kafka and we ha

On our project, we built a great system to analyze customer records in real time. We pioneered a microservices architecture using Spark and Kafka and we ha

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Blogs or videos Oct 2016

Kafka Streams is a new component of the Kafka platform. It is a lightweight library designed to process data from and to Kafka. In this post, I’m not going to go through a full tutorial of Kafka Streams but, instead, see how it behaves as regards to scaling. By scaling, I mean the process of adding or removing nodes to increase or decrease the processing power.

Kafka Streams is a new component of the Kafka platform. It is a lightweight library designed to process data from and to Kafka. In this post, I’m not going to go through a full tutorial of Kafka Streams but, instead, see how it behaves as regards to scaling. By scaling, I mean the process of adding or removing nodes to increase or decrease the processing power.

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Blogs or videos Sep 2016

In a previous post, I demonstrated how to consume a Kafka topic using Spark in a resilient manner. The resiliency code was written in Scala. Now, I want to leverage that Scala code to connect Spark to Kafka in a PySpark application. We will see how we can call Scala code from Python code and what are the restrictions.

In a previous post, I demonstrated how to consume a Kafka topic using Spark in a resilient manner. The resiliency code was written in Scala. Now, I want to leverage that Scala code to connect Spark to Kafka in a PySpark application. We will see how we can call Scala code from Python code and what are the restrictions.

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Blogs or videos Aug 2016

On our project, we built a great system to analyze customer records in real time. We pioneered a microservices architecture using Spark and Kafka and we have a lot to share from this experience, from how this empowered Data Scientists and Data Engineers, to the technical challenges we had to address. In this talk, you will hear about the lessons we learned in this journey:

  • How this allowed Data Scientists and Data Engineers to contribute using the best suitable programming language for each part of the application.
  • What technical challenges we had to address with the proliferation of Spark jobs.
  • How this affected our ability to perform maintenance on the platform: releasing, debugging, etc.
  • How this affected resource usage and latency throughout the system.

On our project, we built a great system to analyze customer records in real time. We pioneered a microservices architecture using Spark and Kafka and we have a lot to share from this experience, from how this empowered Data Scientists and Data Engineers, to the technical challenges we had to address. In this talk, you will hear about the lessons we learned in this journey:

  • How this allowed Data Scientists and Data Engineers to contribute using the best suitable programming language for each part of the application.
  • What technical challenges we had to address with the proliferation of Spark jobs.
  • How this affected our ability to perform maintenance on the platform: releasing, debugging, etc.
  • How this affected resource usage and latency throughout the system.

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Blogs or videos May 2016

Kafka and Spark Streaming are two technologies that fit well together. Both are distributed systems so as to handle heavy loads of data. Making sure you don’t lose data does not come out-of-the-box, though, and this post aims at helping you reach this goal.

Kafka and Spark Streaming are two technologies that fit well together. Both are distributed systems so as to handle heavy loads of data. Making sure you don’t lose data does not come out-of-the-box, though, and this post aims at helping you reach this goal.

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Blogs or videos Apr 2016

Record linkage is the process of finding records in a data set that represent the same entity. This process can be particularly complex when, as in our case, you have to work with anonymized data for an insurance company. Machine Learning to the rescue! Instead of using static rules, we were able to take advantage of Spark’s unique capabilities and implement a record linkage algorithm using Spark SQL (DataFrames) and Spark ML. In this talk, we will review the feature engineering process, explain why we had to extend Spark DataFrames to preserve metadata throughout the processing pipeline, and discuss how we used Machine Learning to match records. We will then show how we productionalized this application (versioning of the code, unit tests, etc.).

Record linkage is the process of finding records in a data set that represent the same entity. This process can be particularly complex when, as in our case, you have to work with anonymized data for an insurance company. Machine Learning to the rescue! Instead of using static rules, we were able to take advantage of Spark’s unique capabilities and implement a record linkage algorithm using Spark SQL (DataFrames) and Spark ML. In this talk, we will review the feature engineering process, explain why we had to extend Spark DataFrames to preserve metadata throughout the processing pipeline, and discuss how we used Machine Learning to match records. We will then show how we productionalized this application (versioning of the code, unit tests, etc.).

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Blogs or videos Mar 2016

This is a series of posts in which we will learn how to send messages in the Avro format into Kafka so that they can be consumed by Spark Streaming:

  1. Kafka 101: producing and consuming plain-text messages with standard Java code
  2. Kafka + Spark: consuming plain-text messages from Kafka with Spark Streaming
  3. Kafka + Spark + Avro: same as 2. with Avro-encoded messages

This is a series of posts in which we will learn how to send messages in the Avro format into Kafka so that they can be consumed by Spark Streaming:

  1. Kafka 101: producing and consuming plain-text messages with standard Java code
  2. Kafka + Spark: consuming plain-text messages from Kafka with Spark Streaming
  3. Kafka + Spark + Avro: same as 2. with Avro-encoded messages

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Position Jan 2014 → Dec 2015 (2 years)
Technical Manager / Big Data consultant at Ippon Technologies
apache-spark java cassandra

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Blogs or videos Aug 2015

I work in a Data Innovation Lab with a horde of Data Scientists. Data Scientists gather data, clean data, apply Machine Learning algorithms and produce results, all of that with specialized tools (Dataiku, Scikit-Learn, R...). These processes run on a single machine, on data that is fixed in time, and they have no constraint on execution speed.

With my fellow Developers, our goal is to bring these processes to production. Our constraints are very different: we want the code to be versioned, to be tested, to be deployed automatically and to produce logs. We also need it to run in production on distributed architectures (Spark, Hadoop), with fixed versions of languages and frameworks (Scala...), and with data that changes every day.

In this talk, I will explain how we, Developers, work hand-in-hand with Data Scientists to shorten the path to running data workflows in production.

I work in a Data Innovation Lab with a horde of Data Scientists. Data Scientists gather data, clean data, apply Machine Learning algorithms and produce results, all of that with specialized tools (Dataiku, Scikit-Learn, R...). These processes run on a single machine, on data that is fixed in time, and they have no constraint on execution speed.

With my fellow Developers, our goal is to bring these processes to production. Our constraints are very different: we want the code to be versioned, to be tested, to be deployed automatically and to produce logs. We also need it to run in production on distributed architectures (Spark, Hadoop), with fixed versions of languages and frameworks (Scala...), and with data that changes every day.

In this talk, I will explain how we, Developers, work hand-in-hand with Data Scientists to shorten the path to running data workflows in production.

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Blogs or videos Mar 2015

J’ai récemment mis en place un bot pour tweeter plusieurs fois les posts publiés sur le blog d’Ippon (Cf. fil Twitter d’Ippon). Cet outil (rss2twitter) repose sur deux containers Docker. Pour gérer ces containers, un outil d’orchestration est pratique. Rapide présentation de deux challengers : Docker Compose (anciennement Fig) et Crane.

J’ai récemment mis en place un bot pour tweeter plusieurs fois les posts publiés sur le blog d’Ippon (Cf. fil Twitter d’Ippon). Cet outil (rss2twitter) repose sur deux containers Docker. Pour gérer ces containers, un outil d’orchestration est pratique. Rapide présentation de deux challengers : Docker Compose (anciennement Fig) et Crane.

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Blogs or videos Jan 2015

Spark is the new generation of data processing frameworks. It leverages the Hadoop ecosystem while producing much shorter response times thanks to aggressively optimized I/Os. In this session, we will get to know the basics of the framework (the API and MapReduce basics) and review the options for setting up a cluster (Zookeeper, Mesos…). We will also explore the available modules and dig into Spark Streaming to process live streams of data. All of that while using ElasticSearch and Cassandra!

Spark is the new generation of data processing frameworks. It leverages the Hadoop ecosystem while producing much shorter response times thanks to aggressively optimized I/Os. In this session, we will get to know the basics of the framework (the API and MapReduce basics) and review the options for setting up a cluster (Zookeeper, Mesos…). We will also explore the available modules and dig into Spark Streaming to process live streams of data. All of that while using ElasticSearch and Cassandra!

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Blogs or videos Nov 2014

Ansible est un excellent outil de provisioning. L’outil n’est a priori pas prévu pour déployer des applications bien que l’on soit fortement tenté de l’utiliser dans ce but. Ce post traite des problèmes que cela pose et d’une manière de les résoudre.

Ansible est un excellent outil de provisioning. L’outil n’est a priori pas prévu pour déployer des applications bien que l’on soit fortement tenté de l’utiliser dans ce but. Ce post traite des problèmes que cela pose et d’une manière de les résoudre.

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Blogs or videos Oct 2014

Spark est un outil permettant de faire du traitement de larges volumes de données, et ce, de manière distribuée (cluster computing). Le framework offre un modèle de programmation plus simple que celui d’Hadoop et permet des temps d’exécution jusqu’à 100 fois plus courts.

Le framework a le vent en poupe (presque autant que Docker) et il est en train de remplacer Hadoop à vitesse grand V. Car, il faut l’admettre, Hadoop, dans son orientation stricte MapReduce, est en train de mourir.

Cet article est donc le premier d’une série visant à faire découvrir Spark, son modèle de programmation, ainsi que son écosystème. Le code présenté sera écrit en Java.

Spark est un outil permettant de faire du traitement de larges volumes de données, et ce, de manière distribuée (cluster computing). Le framework offre un modèle de programmation plus simple que celui d’Hadoop et permet des temps d’exécution jusqu’à 100 fois plus courts.

Le framework a le vent en poupe (presque autant que Docker) et il est en train de remplacer Hadoop à vitesse grand V. Car, il faut l’admettre, Hadoop, dans son orientation stricte MapReduce, est en train de mourir.

Cet article est donc le premier d’une série visant à faire découvrir Spark, son modèle de programmation, ainsi que son écosystème. Le code présenté sera écrit en Java.

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Position Jan 2009 → Dec 2013 (5 years)
CTO / Technical Team Manager at IDM
java spring git c#
  • Introduced Agile methodologies (Kanban / Scrum) in all the teams.

  • Applied efficient development methodologies: continuous integration (Jenkins CI), unit tests (JUnit / Nunit), application tests (Selenium), code reviews (Phabricator).

  • Initiated the migration from Mantis to JIRA, from SVN to Git, and from physical servers to virtual servers (VMware ESX clusters).

  • Introduced new software architectures: Rich client platforms built with Javascript frameworks (ExtJs, jQuery, Bootstrap), RESTful Web services, Cloud architectures.

  • Improved the communication with blogs and shared communication spaces.

  • Defined recruitment methods and participated to the recruitment of 10 developers and freelancers.

Key projects:

2013, DPS suite - IDM

  • An ambitious R&D program of 1200 man-days for which I’ve structured a team of 10 people in France (Paris, Nantes), Switzerland, Belgium, Denmark and the UK, and for which I’m now providing technical guidance on a day-to-day basis.
  • Technologies: Java EE, SkXML (proprietary XML database), Spring, Hibernate, ExtJS.

2012, MediaCell - Ipsos MediaCT

  • An audience measurement system for radio and TV, currently used in production in Italy, Kenya, UK and UAE (Emirates) for a revenue of 500 k€ per study each year. I’ve run a distributed team of 10 developers (France, Switzerland, Belgium, UK) over the course of 1500 man-days of work with very short deadlines.
  • Technologies: Microsoft .Net, SQL Server, ASP.Net MVC, ExtJS, Spring.Net, NHibernate, Git.

2010, PitchLeads - IDM

  • A framework for publishing dictionary content online. It is used in production for several dictionary publishers (Oxford, MacMillan, Longman) and generates ad revenues of more than 50 k€ per month. I’ve played a key role in the setup of the architecture of this platform, from the development to the operations.
  • Technologies: Java, Lucene, Spring, Memcached, Velocity, Tomcat, Amazon AWS.
  • Introduced Agile methodologies (Kanban / Scrum) in all the teams.

  • Applied efficient development methodologies: continuous integration (Jenkins CI), unit tests (JUnit / Nunit), application tests (Selenium), code reviews (Phabricator).

  • Initiated the migration from Mantis to JIRA, from SVN to Git, and from physical servers to virtual servers (VMware ESX clusters).

  • Introduced new software architectures: Rich client platforms built with Javascript frameworks (ExtJs, jQuery, Bootstrap), RESTful Web services, Cloud architectures.

  • Improved the communication with blogs and shared communication spaces.

  • Defined recruitment methods and participated to the recruitment of 10 developers and freelancers.

Key projects:

2013, DPS suite - IDM

  • An ambitious R&D program of 1200 man-days for which I’ve structured a team of 10 people in France (Paris, Nantes), Switzerland, Belgium, Denmark and the UK, and for which I’m now providing technical guidance on a day-to-day basis.
  • Technologies: Java EE, SkXML (proprietary XML database), Spring, Hibernate, ExtJS.

2012, MediaCell - Ipsos MediaCT

  • An audience measurement system for radio and TV, currently used in production in Italy, Kenya, UK and UAE (Emirates) for a revenue of 500 k€ per study each year. I’ve run a distributed team of 10 developers (France, Switzerland, Belgium, UK) over the course of 1500 man-days of work with very short deadlines.
  • Technologies: Microsoft .Net, SQL Server, ASP.Net MVC, ExtJS, Spring.Net, NHibernate, Git.

2010, PitchLeads - IDM

  • A framework for publishing dictionary content online. It is used in production for several dictionary publishers (Oxford, MacMillan, Longman) and generates ad revenues of more than 50 k€ per month. I’ve played a key role in the setup of the architecture of this platform, from the development to the operations.
  • Technologies: Java, Lucene, Spring, Memcached, Velocity, Tomcat, Amazon AWS.

Are you sure you want to do that?

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Position Sep 2005 → Dec 2008 (3 years, 4 months)
Technical manager of a development team at IDM
.net c# sql-server
  • Managed small development teams on highly technical subjects (statistical calculations, rich User Interfaces, etc.).
  • Participated to the elaboration of functional and technical specifications in relation with clients.
  • Introduced modern technologies: Microsoft .Net, NHibernate, Spring.Net.

Key projects:

2007, Poppy - Ipsos France

  • Complete rewrite of an application to study and elaborate ad campaigns in newspapers. Audience surveys are embedded in the application and are used as the base for complex statistical calculations. I made the choice of a modern stack and trained the team on the MVC and data-binding mechanisms (7 developers, 800 man-days).
  • Technologies: Microsoft .Net, Windows Forms, DevExpress, SK (proprietary database).

2006, Questionnaire Builder - Ipsos ASI

  • A client-server application part of the Sherpa platform aiming at rationalizing the setup of surveys for Ipsos. It is currently deployed worldwide (North and Latin America, Europe, India). I’ve been involved in this project since its inception, participating to the technical design and being a technical lead for 5 developers.
  • Technologies: Microsoft .Net, Windows Forms, Sqlite, NHibernate, Spring.Net.
  • Managed small development teams on highly technical subjects (statistical calculations, rich User Interfaces, etc.).
  • Participated to the elaboration of functional and technical specifications in relation with clients.
  • Introduced modern technologies: Microsoft .Net, NHibernate, Spring.Net.

Key projects:

2007, Poppy - Ipsos France

  • Complete rewrite of an application to study and elaborate ad campaigns in newspapers. Audience surveys are embedded in the application and are used as the base for complex statistical calculations. I made the choice of a modern stack and trained the team on the MVC and data-binding mechanisms (7 developers, 800 man-days).
  • Technologies: Microsoft .Net, Windows Forms, DevExpress, SK (proprietary database).

2006, Questionnaire Builder - Ipsos ASI

  • A client-server application part of the Sherpa platform aiming at rationalizing the setup of surveys for Ipsos. It is currently deployed worldwide (North and Latin America, Europe, India). I’ve been involved in this project since its inception, participating to the technical design and being a technical lead for 5 developers.
  • Technologies: Microsoft .Net, Windows Forms, Sqlite, NHibernate, Spring.Net.

Are you sure you want to do that?

Cancel Yes, delete it
Position Sep 2000 → Aug 2005 (5 years)
Developer, R&D department at IDM
perl java spring c++
  • Participated to large scale projects in various technical environments (Java, C++, Perl).
  • Learned and applied data manipulation techniques for dictionary content (support for diacritics, etc.).

Key projects:

2005, DPS suite - IDM

  • The software stack of our dictionary production system required to be modernized. I’ve participated to the introduction of the Hibernate and Spring frameworks, as well as the switch to Maven and to the Eclipse IDE.
  • Technologies: Java EE, Hibernate, Spring, Maven, PostgreSQL.

2003-2004, SkProd - IDM

  • SK was an embeddable database used in dictionary CD-ROMs and offline applications. I implemented the prototype of SkProd, a generic data compilation platform capable of indexing text material. I then participated to the re-implementation in C++ to handle larger volumes of data.
  • Technologies: Perl, C++.

2001, Dictionnaire Hachette Oxford En Ligne - Hachette

  • A bilingual dictionary for which I’ve implemented a data indexing chain using Perl and Berkeley DB. I’ve then implemented a search API so that other developers could build a Web front-end.
  • Technologies: Perl, Berkeley DB, XML.
  • Participated to large scale projects in various technical environments (Java, C++, Perl).
  • Learned and applied data manipulation techniques for dictionary content (support for diacritics, etc.).

Key projects:

2005, DPS suite - IDM

  • The software stack of our dictionary production system required to be modernized. I’ve participated to the introduction of the Hibernate and Spring frameworks, as well as the switch to Maven and to the Eclipse IDE.
  • Technologies: Java EE, Hibernate, Spring, Maven, PostgreSQL.

2003-2004, SkProd - IDM

  • SK was an embeddable database used in dictionary CD-ROMs and offline applications. I implemented the prototype of SkProd, a generic data compilation platform capable of indexing text material. I then participated to the re-implementation in C++ to handle larger volumes of data.
  • Technologies: Perl, C++.

2001, Dictionnaire Hachette Oxford En Ligne - Hachette

  • A bilingual dictionary for which I’ve implemented a data indexing chain using Perl and Berkeley DB. I’ve then implemented a search API so that other developers could build a Web front-end.
  • Technologies: Perl, Berkeley DB, XML.

Alexis Seigneurin

I love solving complex problems through engineering and a good use of technologies!

Technical Skills

Likes: apache-spark apache-kafka cassandra scala

Experience

Jan 2016 → Current Data Engineer Ippon USA
apache-spark, scala, java, apache-kafka, cassandra, amazon-web-services
Jan 2014 → Dec 2015 Technical Manager / Big Data consultant Ippon Technologies
apache-spark, java, cassandra
Jan 2009 → Dec 2013 CTO / Technical Team Manager IDM
java, spring, git, c#
  • Introduced Agile methodologies (Kanban / Scrum) in all the teams.

  • Applied efficient development methodologies: continuous integration (Jenkins CI), unit tests (JUnit / Nunit), application tests (Selenium), code reviews (Phabricator).

  • Initiated the migration from Mantis to JIRA, from SVN to Git, and from physical servers to virtual servers (VMware ESX clusters).

  • Introduced new software architectures: Rich client platforms built with Javascript frameworks (ExtJs, jQuery, Bootstrap), RESTful Web services, Cloud architectures.

  • Improved the communication with blogs and shared communication spaces.

  • Defined recruitment methods and participated to the recruitment of 10 developers and freelancers.

Key projects:

2013, DPS suite - IDM

  • An ambitious R&D program of 1200 man-days for which I’ve structured a team of 10 people in France (Paris, Nantes), Switzerland, Belgium, Denmark and the UK, and for which I’m now providing technical guidance on a day-to-day basis.
  • Technologies: Java EE, SkXML (proprietary XML database), Spring, Hibernate, ExtJS.

2012, MediaCell - Ipsos MediaCT

  • An audience measurement system for radio and TV, currently used in production in Italy, Kenya, UK and UAE (Emirates) for a revenue of 500 k€ per study each year. I’ve run a distributed team of 10 developers (France, Switzerland, Belgium, UK) over the course of 1500 man-days of work with very short deadlines.
  • Technologies: Microsoft .Net, SQL Server, ASP.Net MVC, ExtJS, Spring.Net, NHibernate, Git.

2010, PitchLeads - IDM

  • A framework for publishing dictionary content online. It is used in production for several dictionary publishers (Oxford, MacMillan, Longman) and generates ad revenues of more than 50 k€ per month. I’ve played a key role in the setup of the architecture of this platform, from the development to the operations.
  • Technologies: Java, Lucene, Spring, Memcached, Velocity, Tomcat, Amazon AWS.
Sep 2005 → Dec 2008 Technical manager of a development team IDM
.net, c#, sql-server
  • Managed small development teams on highly technical subjects (statistical calculations, rich User Interfaces, etc.).
  • Participated to the elaboration of functional and technical specifications in relation with clients.
  • Introduced modern technologies: Microsoft .Net, NHibernate, Spring.Net.

Key projects:

2007, Poppy - Ipsos France

  • Complete rewrite of an application to study and elaborate ad campaigns in newspapers. Audience surveys are embedded in the application and are used as the base for complex statistical calculations. I made the choice of a modern stack and trained the team on the MVC and data-binding mechanisms (7 developers, 800 man-days).
  • Technologies: Microsoft .Net, Windows Forms, DevExpress, SK (proprietary database).

2006, Questionnaire Builder - Ipsos ASI

  • A client-server application part of the Sherpa platform aiming at rationalizing the setup of surveys for Ipsos. It is currently deployed worldwide (North and Latin America, Europe, India). I’ve been involved in this project since its inception, participating to the technical design and being a technical lead for 5 developers.
  • Technologies: Microsoft .Net, Windows Forms, Sqlite, NHibernate, Spring.Net.
Sep 2000 → Aug 2005 Developer, R&D department IDM
perl, java, spring, c++
  • Participated to large scale projects in various technical environments (Java, C++, Perl).
  • Learned and applied data manipulation techniques for dictionary content (support for diacritics, etc.).

Key projects:

2005, DPS suite - IDM

  • The software stack of our dictionary production system required to be modernized. I’ve participated to the introduction of the Hibernate and Spring frameworks, as well as the switch to Maven and to the Eclipse IDE.
  • Technologies: Java EE, Hibernate, Spring, Maven, PostgreSQL.

2003-2004, SkProd - IDM

  • SK was an embeddable database used in dictionary CD-ROMs and offline applications. I implemented the prototype of SkProd, a generic data compilation platform capable of indexing text material. I then participated to the re-implementation in C++ to handle larger volumes of data.
  • Technologies: Perl, C++.

2001, Dictionnaire Hachette Oxford En Ligne - Hachette

  • A bilingual dictionary for which I’ve implemented a data indexing chain using Perl and Berkeley DB. I’ve then implemented a search API so that other developers could build a Web front-end.
  • Technologies: Perl, Berkeley DB, XML.

Certifications

Sep 2017 → Current Neural Networks and Deep Learning https://www.coursera.org/account/accomplishments/verify/D6UETJDZW7UV
deep-learning
Nov 2016 → Current Certified Developer on Apache Spark
apache-spark
Dec 2015 → Current Machine Learning https://www.coursera.org/account/accomplishments/verify/NLT4T95DCHEB
machine-learning
Dec 2018 → Dec 2020 AWS Certified Big Data - Specialty
amazon-web-services
Nov 2018 → Nov 2020 Confluent Certified Developer for Apache Kafka https://www.credential.net/17duewep
apache-kafka
May 2018 → May 2020 AWS Solutions Architect Associate
amazon-web-services

Projects & Interests

May 2017 → Current Kafka Streams Scala https://github.com/aseigneurin/kafka-streams-scala
apache-kafka, scala

This is a thin Scala wrapper for the Kafka Streams API. It does not intend to provide a Scala-idiomatic API, but rather intends to make the original API simpler to use from Scala.

May 2016 → Current Spark Kafka source https://github.com/ippontech/spark-kafka-source
apache-spark, apache-kafka

Kafka stream for Spark with storage of the offsets in ZooKeeper

Apr 2016 → Current Spark UI Proxy https://github.com/aseigneurin/spark-ui-proxy
apache-spark

Lightweight proxy to expose the UI of an Apache Spark cluster that is behind a firewall

Public Artifacts

May 2017 Microservices with Kafka: An Introduction to Kafka Streams with a Real-Life Example – Kafka Summit https://kafka-summit.org/sessions/microservices-kafka-introduction-kafka-streams-real-life-example/

On our project, we built a great system to analyze customer records in real time. We pioneered a microservices architecture using Spark and Kafka and we ha

Kafka Streams is a new component of the Kafka platform. It is a lightweight library designed to process data from and to Kafka. In this post, I’m not going to go through a full tutorial of Kafka Streams but, instead, see how it behaves as regards to scaling. By scaling, I mean the process of adding or removing nodes to increase or decrease the processing power.

In a previous post, I demonstrated how to consume a Kafka topic using Spark in a resilient manner. The resiliency code was written in Scala. Now, I want to leverage that Scala code to connect Spark to Kafka in a PySpark application. We will see how we can call Scala code from Python code and what are the restrictions.

Aug 2016 Lessons Learned: Using Spark and Microservices https://speakerdeck.com/aseigneurin/lessons-learned-using-spark-and-microservices

On our project, we built a great system to analyze customer records in real time. We pioneered a microservices architecture using Spark and Kafka and we have a lot to share from this experience, from how this empowered Data Scientists and Data Engineers, to the technical challenges we had to address. In this talk, you will hear about the lessons we learned in this journey:

  • How this allowed Data Scientists and Data Engineers to contribute using the best suitable programming language for each part of the application.
  • What technical challenges we had to address with the proliferation of Spark jobs.
  • How this affected our ability to perform maintenance on the platform: releasing, debugging, etc.
  • How this affected resource usage and latency throughout the system.

Kafka and Spark Streaming are two technologies that fit well together. Both are distributed systems so as to handle heavy loads of data. Making sure you don’t lose data does not come out-of-the-box, though, and this post aims at helping you reach this goal.

Apr 2016 Record Linkage - A real use case with Spark ML https://speakerdeck.com/aseigneurin/record-linkage-a-real-use-case-with-spark-ml-1

Record linkage is the process of finding records in a data set that represent the same entity. This process can be particularly complex when, as in our case, you have to work with anonymized data for an insurance company. Machine Learning to the rescue! Instead of using static rules, we were able to take advantage of Spark’s unique capabilities and implement a record linkage algorithm using Spark SQL (DataFrames) and Spark ML. In this talk, we will review the feature engineering process, explain why we had to extend Spark DataFrames to preserve metadata throughout the processing pipeline, and discuss how we used Machine Learning to match records. We will then show how we productionalized this application (versioning of the code, unit tests, etc.).

This is a series of posts in which we will learn how to send messages in the Avro format into Kafka so that they can be consumed by Spark Streaming:

  1. Kafka 101: producing and consuming plain-text messages with standard Java code
  2. Kafka + Spark: consuming plain-text messages from Kafka with Spark Streaming
  3. Kafka + Spark + Avro: same as 2. with Avro-encoded messages
Aug 2015 Data Science meets Software Development https://speakerdeck.com/aseigneurin/data-science-meets-software-development

I work in a Data Innovation Lab with a horde of Data Scientists. Data Scientists gather data, clean data, apply Machine Learning algorithms and produce results, all of that with specialized tools (Dataiku, Scikit-Learn, R...). These processes run on a single machine, on data that is fixed in time, and they have no constraint on execution speed.

With my fellow Developers, our goal is to bring these processes to production. Our constraints are very different: we want the code to be versioned, to be tested, to be deployed automatically and to produce logs. We also need it to run in production on distributed architectures (Spark, Hadoop), with fixed versions of languages and frameworks (Scala...), and with data that changes every day.

In this talk, I will explain how we, Developers, work hand-in-hand with Data Scientists to shorten the path to running data workflows in production.

J’ai récemment mis en place un bot pour tweeter plusieurs fois les posts publiés sur le blog d’Ippon (Cf. fil Twitter d’Ippon). Cet outil (rss2twitter) repose sur deux containers Docker. Pour gérer ces containers, un outil d’orchestration est pratique. Rapide présentation de deux challengers : Docker Compose (anciennement Fig) et Crane.

Spark is the new generation of data processing frameworks. It leverages the Hadoop ecosystem while producing much shorter response times thanks to aggressively optimized I/Os. In this session, we will get to know the basics of the framework (the API and MapReduce basics) and review the options for setting up a cluster (Zookeeper, Mesos…). We will also explore the available modules and dig into Spark Streaming to process live streams of data. All of that while using ElasticSearch and Cassandra!

Ansible est un excellent outil de provisioning. L’outil n’est a priori pas prévu pour déployer des applications bien que l’on soit fortement tenté de l’utiliser dans ce but. Ce post traite des problèmes que cela pose et d’une manière de les résoudre.

Spark est un outil permettant de faire du traitement de larges volumes de données, et ce, de manière distribuée (cluster computing). Le framework offre un modèle de programmation plus simple que celui d’Hadoop et permet des temps d’exécution jusqu’à 100 fois plus courts.

Le framework a le vent en poupe (presque autant que Docker) et il est en train de remplacer Hadoop à vitesse grand V. Car, il faut l’admettre, Hadoop, dans son orientation stricte MapReduce, est en train de mourir.

Cet article est donc le premier d’une série visant à faire découvrir Spark, son modèle de programmation, ainsi que son écosystème. Le code présenté sera écrit en Java.

Tools

First Computer: Amiga 500
Favorite Editor: Sublime