Careertail
About UsCoursesCareer PathsBlogOpportunities
Log In
Courses>Data Science>Beyond Jupyter Notebooks
DevelopmentBeyond Jupyter Notebooks
Price:Free
Length:1.5 hours
Content type:video
level:all levels
Updated:04 March 2024
Published:21 August 2022
Similar courses
Opportunities
Courses>Data Science>Beyond Jupyter Notebooks
Beyond Jupyter Notebooks
4.9 (3.1k)
1.5 hours
3146 students
What you will learn
1Docker
2Data Science
3Jupyter
4Python
5Data Analysis
6Data Visualization
7Open Source
Target audiences
1Any level of data scientists that want to accelerate their capabilities
2Open Source Lover ❤️
3Pythonistas interested in Docker
Requirements
1Minimal Python Knowledge
2Running Docker Installation
3Fun exploring new topics
FAQ
You can view and review the lecture materials indefinitely, like an on-demand channel.
Definitely! If you have an internet connection, courses on Udemy are available on any device at any time. If you don't have an internet connection, some instructors also let their students download course lectures. That's up to the instructor though, so make sure you get on their good side!
Description

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.

Similar courses
Opportunities
Make the most out of your online education
Careertail
Copyright © 2021 Careertail.
All rights reserved
Quick Links
Get StartedLog InAbout UsCourses
Company
BlogContactsPrivacy PolicyCookie PolicyTerms and Conditions
Stay up to date
Trustpilot
Careertail
Courses>Data Science>Beyond Jupyter Notebooks
DevelopmentBeyond Jupyter Notebooks
Price:Free
Length:1.5 hours
Content type:video
level:all levels
Updated:04 March 2024
Published:21 August 2022
Similar courses
Opportunities
Courses>Data Science>Beyond Jupyter Notebooks
Beyond Jupyter Notebooks
4.9 (3.1k)
1.5 hours
3146 students
What you will learn
1Docker
2Data Science
3Jupyter
4Python
5Data Analysis
6Data Visualization
7Open Source
Target audiences
1Any level of data scientists that want to accelerate their capabilities
2Open Source Lover ❤️
3Pythonistas interested in Docker
Requirements
1Minimal Python Knowledge
2Running Docker Installation
3Fun exploring new topics
FAQ
You can view and review the lecture materials indefinitely, like an on-demand channel.
Definitely! If you have an internet connection, courses on Udemy are available on any device at any time. If you don't have an internet connection, some instructors also let their students download course lectures. That's up to the instructor though, so make sure you get on their good side!
Description

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.

Similar courses
Opportunities
Make the most out of your online education
Careertail
Copyright © 2021 Careertail.
All rights reserved
Quick Links
Get StartedLog InAbout UsCourses
Company
BlogContactsPrivacy PolicyCookie PolicyTerms and Conditions
Stay up to date
Trustpilot