PyCon.DE 2018: Building Your Own Data Science Platform With Python & Docker - Joshua Görner
Interactive notebooks like Jupyter have become more and more popular in the recent past and build the core of many data scientist's workplace. Being accessed via web browser they allow scientists to easily structure their work by combining code and documentation.
Yet notebooks often lead to isolated and disposable analysis artefacts. Keeping the computation inside those notebooks does not allow for convenient concurrent model training, model exposure or scheduled model retraining.
Those issues can be addressed by taking advantage of recent developments in the discipline of software engineering. Over the past years containerization became the technology of choice for crafting and deploying applications. Building a data science platform that allows for easy access (via notebooks), flexibility and reproducibility (via containerization) combines the best of both worlds and addresses Data Scientist's hidden needs.
Видео PyCon.DE 2018: Building Your Own Data Science Platform With Python & Docker - Joshua Görner канала PyConDE
Yet notebooks often lead to isolated and disposable analysis artefacts. Keeping the computation inside those notebooks does not allow for convenient concurrent model training, model exposure or scheduled model retraining.
Those issues can be addressed by taking advantage of recent developments in the discipline of software engineering. Over the past years containerization became the technology of choice for crafting and deploying applications. Building a data science platform that allows for easy access (via notebooks), flexibility and reproducibility (via containerization) combines the best of both worlds and addresses Data Scientist's hidden needs.
Видео PyCon.DE 2018: Building Your Own Data Science Platform With Python & Docker - Joshua Görner канала PyConDE
Показать
Комментарии отсутствуют
Информация о видео
Другие видео канала
Data Science Workflows using Docker ContainersKyle Knapp - Automating Code Quality - PyCon 2018Rootless Containers from Scratch - Liz Rice, Aqua SecurityPyCon.DE 2018: Python With And Without Pants - Stephan ErbThe Science of ThinkingJustin Crown - "WHAT IS THIS MESS?" - Writing tests for pre-existing code bases - PyCon 20185 Front-end Development Skills to Land Your First JobSoftware Developer vs Web Developer | Difference Web Developer & Software Developer | SimplilearnDocker Nuggets - S1E1: Remote Control with Docker ContextAccelerometer (Raspberry Pi)Carl Meyer - Type-checked Python in the real world - PyCon 2018Data Engineering Principles - Build frameworks not pipelines - Gatis Sejayou need to learn Docker RIGHT NOW!! // Docker Containers 101Raymond Hettinger - Dataclasses: The code generator to end all code generators - PyCon 2018Building a Bank with GoDocker for Data Science: Reproducibility and Deployment - Hareem NaveedSanofi & Cognizant: Crawl. Walk. Run. Making Real-Time Digital Analytics Work for Big PharmaWhy Every Data Scientist Needs a YouTube Channel and How to Start“Containerizing” Angular with Docker - Dan WahlinCreating your first Dockerfile, image and container