PyVideo.org · PyCon DE 2023 (
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5 Things about fastAPI I wish we had known beforehand
Accelerate Python with Julia
Accelerating Python Code
An unbiased evaluation of environment management and packaging tools
Aspect-oriented Programming - Diving deep into Decorators
Behind the Scenes of tox - The Journey of Rewriting a Python Tool
BLE and Python - How to build a simple BLE project on Linux with Python
Bringing NLP to Production (an end to end story about some multi-language NLP services)
Building Hexagonal Python Services
Cloud Infrastructure From Python Code: How Far Could We Go?
Code Cleanup - A Data Scientist's Guide to Sparkling Code
Data-driven design for the Dask scheduler
Data Kata: Ensemble programming with Pydantic PT 1
Data Kata: Ensemble programming with Pydantic PT 2
FastAPI and Celery - Building Reliable Web Applications with TDD
Fear the mutants. Love the mutants.
From notebook to pipeline in no time with LineaPy
Giving and Receiving Great Feedback through PRs
Great Security Is One Question Away
How to connect your application to the world (and avoid sleepless nights)
How to increase diversity in open source communities
Introducing FastKafka
Introduction to Async programming
Machine Learning Lifecycle for NLP Classification in E-Commerce
Maps with Django
Maximizing Efficiency and Scalability in Open-Source MLOps - A Step-by-Step Approach
MLOps in practice - our journey from batch to real-time inference
Modern typed python - dive into a mature ecosystem from web dev to machine learning
Monorepos with Python
Practical Session - Learning on Heterogeneous Graphs with PyG
Rethinking codes of conduct
Rusty Python - A Case Study
Software Design Pattern for Data Science
Specifying behavior with Protocols, Typeclasses or Traits. Who wears it better?
Staying Alert - How to Implement Continuous Testing for Machine Learning Models
Streamlit meets WebAssembly - stlite
The CPU in your browser - WebAssembly demystified
The State of Production Machine Learning in 2023
Thou Shall Judge But With Fairness: Methods to Ensure an Unbiased Model
What are you yield from?
What could possibly go wrong? - An incomplete guide on how to prevent, detect & mitigate biases in data products