Presentations, code and links to videos for the PyData London Conference 2015 that was held at Bloomberg near Moorgate in London.
Title | Author(s) | Video | Presentation | Code |
---|---|---|---|---|
Accelerating Scientific Code with Numba | Graham Markall | Youtube | Website | |
Analysis and transformation of geospatial data using Python | Demeter Sztanko | |||
Getting started with Bokeh / Let's build an interactive data visualization for the web..in Python! | Sarah Bird, Bryan Van de Ven | Youtube | iPython Notebook, Github | iPython Notebook |
Getting Started with Cloud Foundry for Data Science | Ian Huston | Youtube | SpeakerDeck | Github |
How “good” is your model, and how can you make it better? | Chih-Chun Chen, Dimitry Foures, Elena Chatzimichali, Giuseppe Vettigli, Raoul-Gabriel Urma | Youtube | iPython Notebook, Github | iPython Notebook, Github |
Open Source Tools for Financial Time Series Analysis and Visualization | Yves Hilpisch | |||
Probabilistic programming in sports analytics | Peadar Coyle | |||
Spark. A View from the Trenches | Sahan Bulathwela, Maria Mestre | Youtube | iPython Notebook, Nbviewer | iPython Notebook, Nbviewer |
Title | Authors | Video | Presentation | Code |
---|---|---|---|---|
A Beginner's Guide to Building Data Pipelines with Luigi | Dylan Barth, Stuart Coleman | |||
A Fast, Offline Reverse Geocoder in Python | Ajay Thampi | |||
A practical guide to conquering social network data | Benjamin Chamberlain, Davide Donato, Josh Levy-Kramer | |||
A Tube Story: How can Python help us understand London's most important transportation network? | Camilla Montonen | |||
Agent-Based Modelling, the London riots, and Python | Thomas French, Fred Farrell | |||
Collect and Visualise Metrics With InfluxDB and Grafana | Marek Mroz | |||
Constructing protein structural features for Machine Learning | Ricardo Corral Corral | |||
Data-visualisation with Python and Javascript: crafting a data-viz toolchain for the web | Kyran Dale | |||
Defining Degrees of Separation in Data Classifications Using Predictive Modelling | Yiannis Pavlosoglou, Adam Reviczky, Neri Van Otten | |||
Deploying a Model to Production | Alex Chamberlain | |||
Financial Risk Management: Analytics and Aggregation with the PyData stack | Miguel Vaz | |||
Getting Meaning from Scientific Articles | Éléonore Mayola | |||
Hacking Human Language | Hendrik Heuer | |||
Hierarchical Data Clustering in Python | Frank Kelly | |||
How DataKind UK helped Citizens Advice get more from their data | Emma Prest, Billy Wong | |||
How We Turned Everyone at Our Company into Analysts with Python and SQL | Arik Fraimovich | |||
Hyperparameter Optimisation for Machine Learning in Python: Building an automatic scientist | Thomas Greg Corcoran | |||
If It Weighs the Same as a Duck: Detecting Fraud with Python and Machine Learning | Ryan Wang | |||
Information Surprise or How to Find Data | Oleksandr Pryymak | |||
Integration with the Vernacular | James Powell | |||
Jointly Embedding knowledge from large graph databases with textual data using deep learning | Armando Vieira | |||
Jupyter (IPython): how a notebook is changing science | Juan Luis Cano | |||
Keynote - How to Find Stories in Data | Helena Bengtsson | |||
Keynote - What's it Like to be a Bot? | Eric Drass | |||
Keynote: CRISP-DM: The Dominant Process for Data Mining | Meta S. Brown | |||
Localising Organs of the Fetus in MRI Data Using Python | Kevin Keraudren | |||
Machine Learning with Imbalanced Data Sets | Natalie Hockham | |||
Making Computations Execute Very Quickly | Russel Winder | |||
NLP on a Billion Documents: Scalable machine learning with Spark | Martin Goodson | |||
Our Data, Ourselves | Giles Greenway | |||
Performance Pandas | Jeff Reback | |||
Political risk event extraction using Python and Apache Storm | Aeneas Wiener | |||
PyPy, The Python Scientific Community and C extensions | Romain Guillebert | |||
Python and scikit-learn based open research SDK for collaborative data management and exchange | Grigori Fursin, Anton Lokhmotov | |||
Python for Image and Text Understanding: One Model to rule them all! | Roelof Pieters | |||
Rescuing and Exploring Complex Life Science Data | Paul Agapow | |||
Ship It! | Ian Ozsvald | |||
Simulating Quantum Physics in Less Than 20 Lines of Pure Python | Katie Barr | |||
Smart Cars of Tomorrow: Real-Time Driving Patterns | Ronert Obst | |||
Sudo Make me a (London) Map | Linda Uruchurtu | |||
The Dark Art of Search Relevancy | Eddie Bell | |||
The London Air Quality API | Andrew Grieve | |||
Using the SALib Library for Conducting Sensitivity Analyses of Models | Will Usher | |||
Veni, Vidi, Voronoi: Attacking Viruses using spherical Voronoi diagrams in Python | Tyler Reddy |