And now with the companion book: Leanpub + search( cleanmachinelearningcode )
Machine Learning (ML) pipelines are software pipelines after all.
This course will you apply practical software engineering principles to prevent failures in your machine learning software craftsmanship journey.
There is no useful Machine Learning (ML) without extensive software.
Building complex software comes with many challenges.
ML software is explicitly full of needless complexity and repetition. Thick opacity, rigidity, and viscosity of design magnify this brew of complexity. With these issues, ML failures are growing in importance at an unprecedented pace.
It does not have to be this way.
As a global data science community, the autonomous systems we build can be costly, dangerous, and even deadly. Adding to the problem is the inexperienced workforce of this 5 to 10 years old craft. As of 2019–2020, 40% of data scientists in the USA have less than 5 years of experience.
The software industry is experiencing a boom in ML development and usage. This is not unlike previous software engineering booms in the early 2000s. The current boom manifests itself with a menagerie of constructs, abstractions, frameworks, and workflows. This multitude of integration challenges remind us of old and classical software problems. Some of the issues present in the ML software engineering practice are new. But the majority of the software engineering concerns have a historical smell. Going back to the early days of software engineering can help with today’s ML problems.
Specification: Clean Machine Learning Code
|
User Reviews
Be the first to review “Clean Machine Learning Code” Cancel reply
This site uses Akismet to reduce spam. Learn how your comment data is processed.
Price | $9.99 |
---|---|
Provider | |
Duration | 5 hours |
Year | 2021 |
Level | Expert |
Language | English |
Certificate | Yes |
Quizzes | No |
There are no reviews yet.