| 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 |
|
|
|