Conference:March 6-8, 2017
Workshops:March 9-10, 2017
Track: Data Engineering : Where the Rubber meets the Road in Data Science
Location:
- Windsor, 5th flr.
Day of week:
- Monday
Data Science is a discipline with brilliant minds and employing cutting edge research. However, science does not imply engineering. The Data Engineering: Where the Rubber Meets the Road in Data Science is all about advancing the engineering side of the profession. The track discusses the patterns and practices with core tooling like Jupiter Notebooks, big data cloud migrations, and lessons from Data Scientists who have been there.
by Katharine Jarmul
Python engineer, Founder @kjamistan
Creating automated, efficient and accurate data pipelines out of the (often) noisy, disparate and busy data flows used by today's enterprises is a difficult task. Data science teams and engineering teams may be asked to work together to create a management platform (or install one) that helps funnel these streams into the company's so-called data lake. But how are these pipelines managed? Who is in charge of maintaining services and reducing costs? How do we...
by Casey Stella
Committer and PMC member on the Apache Metron project
Any data scientist who works with real data will tell you that the hardest part of any data science task is the data preparation. Everything from cleaning dirty data to understanding where your data is missing and how your data is shaped, the care and feeding of your data is a prime task for the working data scientist.
I will describe my experiences in the field and present some useful open source software to automate some of...
by Sudhir Mallem
Staff Engineer @Uber
Uber's vision is to make transportation as reliable as running water everywhere, for everyone. Data is key for Uber's 24x7 global business operations and making data available for different use cases across the company in a reliable, scalable and performant way is often challenging.
In this talk, we will discuss the overall data analytics eco-system at Uber and learn on how Uber shapes its data from a raw form to a modeled form...
by Victor Hu
Head of Data Science @QBE
This talk will cover the challenges, both technical and cultural, of building a data science team and capability in a large, global company. It will discuss best practices, lessons learned, and rewards of leveraging data effectively in the next frontier of data science: commercial insurance.
by Marco Bonzanini
Data Scientist & Co-Organiser of PyData London Meetup
This talk discusses the process of building data pipelines, e.g. extraction, cleaning, integration, pre-processing of data, in general all the steps that are necessary to prepare your data for your data-driven product. In particular, the focus is on data plumbing and on the practice of going from prototype to production.
Starting from some common anti-patterns, we'll highlight the need for a workflow manager for any non-trivial...
Tracks
-
Architecting for Failure
Building fault tolerate systems that are truly resilient
-
Architectures You've Always Wondered about
QCon classic track. You know the names. Hear their lessons and challenges.
-
Modern Distributed Architectures
Migrating, deploying, and realizing modern cloud architecture.
-
Fast & Furious: Ad Serving, Finance, & Performance
Learn some of the tips and technicals of high speed, low latency systems in Ad Serving and Finance
-
Java - Performance, Patterns and Predictions
Skills embracing the evolution of Java (multi-core, cloud, modularity) and reenforcing core platform fundamentals (performance, concurrency, ubiquity).
-
Performance Mythbusting
Performance myths that need busting and the tools & techniques to get there
-
Dark Code: The Legacy/Tech Debt Dilemma
How do you evolve your code and modernize your architecture when you're stuck with part legacy code and technical debt? Lessons from the trenches.
-
Modern Learning Systems
Real world use of the latest machine learning technologies in production environments
-
Practical Cryptography & Blockchains: Beyond the Hype
Looking past the hype of blockchain technologies, alternate title: Weaselfree Cryptography & Blockchain
-
Applied JavaScript - Atomic Applications and APIs
Angular, React, Electron, Node: The hottest trends and techniques in the JavaScript space
-
Containers - State Of The Art
What is the state of the art, what's next, & other interesting questions on containers.
-
Observability Done Right: Automating Insight & Software Telemetry
Tools, practices, and methods to know what your system is doing
-
Data Engineering : Where the Rubber meets the Road in Data Science
Science does not imply engineering. Engineering tools and techniques for Data Scientists
-
Modern CS in the Real World
Applied, practical, & real-world dive into industry adoption of modern CS ideas
-
Workhorse Languages, Not Called Java
Workhorse languages not called Java.
-
Security: Lessons Learned From Being Pwned
How Attackers Think. Penetration testing techniques, exploits, toolsets, and skills of software hackers
-
Engineering Culture @{{cool_company}}
Culture, Organization Structure, Modern Agile War Stories
-
Softskills: Essential Skills for Developers
Skills for the developer in the workplace