Agile Data Science 2.0

Full-Stack Analytics Application Development with Kafka and Spark


Agile Data Science 2.0 covers the theory and practice of an Agile development methodology created to enable analytics application development.

Students will learn the theory and application of Agile Data Science, a development methodology in which a Data Scientist uses Agile methods and a lightweight stack to perform full-stack analytics application development.

Students will learn how to define, implement and use a Big Data full stack, and how to roll their own Big Data applications from the ground up.

This will enable them to effectively present their findings as applications, helping them make change within technological organizations.

Students will emerge from this course with skills and a technological template from which to derive their own applications using their own datasets.

What you will learn

Participants will understand…

  • How to define “full-stacks” of Big Data tools
  • How to apply Agile methods to Data Science
  • Python/Flask Web development
  • Exploratory data analysis against Big Data

Participants will be able to…

  • Use full-stacks of Big Data tools
  • Work with some of the most popular Big Data tools: Python, Spark, Kafka, Elasticsearch, MongoDB
  • Build full-stack analytics applications
  • Build visualizations in d3.js
  • Build and deploy complete
  • Predictive Analytics applications and systems
  • Build Web applications using Python/Flask
  • Explore Big Data interactively

Main Topics

  • Lecture: Agile Data Science
  • Lecture: Introducing the Analytics Stack
  • Demo: Walking Through our Full Stack
  • Exercise: Data Processing in PySpark
  • Exercise: Querying Data in MongoDB
  • Exercise: Creating a Web Service
  • Demo: Hacking Charts in d3.js
  • Exercise: Hacking Charts in d3.js
  • Lecture/Demo: Predictive Modeling in PySpark
  • Exercise: Predictive Modeling in PySpark
  • Lecture/Demo: Deploying Spark Predictive Models
  • Exercise: Deploying Spark Predictive Models
  • Lecture/Demo: Predictions on the Web
  • Exercise: Predictions on the Web
  • Discussion: Lessons Learned

Russell Jurney




25 Oct 2021 - 29 Oct 2021

Timing: from 2 pm to 6 pm Italian time


Online event

Book Event

Standard - 1400€

Standard attendance fee

Available Places: 100
The Standard - 1400€ ticket is sold out. You can try another ticket or another date.
Registration 30 days before the seminar date: 5% discount - 1330€
Available Places: 0
The Registration 30 days before the seminar date: 5% discount - 1330€ ticket sales has stopped!
Share on:
Share on facebook
Share on twitter
Share on linkedin
Share on email
Share on whatsapp
Share on pocket
Share on reddit