filmov
tv
TALK / Itamar Turner-Trauring / 0 to production-ready: a best-practices process for Docker packaging
Показать описание
You know the basics of packaging your Python application for Docker, but do you know enough to run that image in production? Bad packaging can result in security and production problems, not to mention wasted time try to debug unreproducible errors.
And even if you figure out the best practices, there's still a huge number of details to get right, many of which interact with each other in unexpected ways. My personal list includes over 60 Docker packaging best practices, and it keeps growing. So where do you start? What should you do first?
To help you quickly package your application in a production-ready way, this talk will give you a process to help you prioritize and iteratively implement these best practices, by starting with the highest priority best practices (security, automation), moving on the correctness and reproducibility, and finally focusing on optimization.
And even if you figure out the best practices, there's still a huge number of details to get right, many of which interact with each other in unexpected ways. My personal list includes over 60 Docker packaging best practices, and it keeps growing. So where do you start? What should you do first?
To help you quickly package your application in a production-ready way, this talk will give you a process to help you prioritize and iteratively implement these best practices, by starting with the highest priority best practices (security, automation), moving on the correctness and reproducibility, and finally focusing on optimization.
TALK / Itamar Turner-Trauring / 0 to production-ready: a best-practices process for Docker packaging
Talk: Itamar Turner-Trauring - Small Big Data: using NumPy and Pandas when your data doesn't fi...
Itamar Turner-Trauring - Optimize first, parallelize second: a better path to faster data processing
Itamar Turner-Trauring - Speed up Python data processing with vectorization | PyData Global 2022
Itamar Turner-Trauring about his talk 'Small Big Data: using NumPy and Pandas'
Itamar Turner-Trauring - Fil: A Python Memory Profiler - Pyninsula #27
Itamar Turner-Trauring: Small Big Data: using NumPy and Pandas when your data... | PyData NYC 2019
Itamar Turner-Trauring - Best practices for production-ready Docker packaging
Itamar Turner-Trauring - Measuring memory: Python memory profilers and when to use them
Zero to Production-Ready: A Best-Practices Process for Docker Packaging by Itamar Turner-Trauring
Logging for Scientific Computing: Debugging, Performance, Trust | Itamar Turner-Trauring
Lightning Talk: Sciagraph: always-on profiling for production batch jobs by Itamar Turner-Trauring
Season 2 Episode 10: Itamar Turner-Trauring
Itamar Turner Trauring - Zero to production ready: a best practices process for Docker packaging
Beyond cProfile: performance optimization with sampling profilers and logging
Best-Practices for Docker Packaging - Talk Python to Me Ep.323
PyData Montreal #20 with Itamar Turner-Trauring
Zero to production-ready: a best-practices process for Docker packaging
Eliot: Effective Logging with Itamar Turner-Trauring
Logging for Scientific Computing: Reproducibility, Debugging, Optimization - PyCon 2019
Eliot: Effective Logging with Itamar Turner-Trauring
Why Columnar data views matter in 30 seconds - GR-OSS OUT Podcast
#274: Profiling Data Science Code with FIL
Starting from Scratch in a World Where Data is Everything | Instrumental
Комментарии