Introduction to Metaflow Tutorial
In this tutorial you will learn how to write scalable, production-ready data science and machine learning code. By following along, you will implement a variety of patterns to help you build a machine learning stack to handle data, access compute, faciltate robust versioning, and more. At the end of this tutorial you will be able to:
- Design basic machine learning workflows.
- Version and track data in your machine learning systems.
- Train and track models in parallel.
Your First Flow
Try it out directly in your browser
from metaflow import FlowSpec, step
class MinimumFlow(FlowSpec):
@step
def start(self):
self.next(self.end)
@step
def end(self):
print("Flow is done!")
if __name__ == "__main__":
MinimumFlow()