Course Abstract
DIFFICULTY LEVEL: ADVANCED
Learning Objectives
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Learn about the emergence of MLOps and production-level data and ML pipelines
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Understanding of Kedro framework and basic functionalities
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How to build a data pipeline with a demo on Kedro
Instructor
Instructor Bio:
Software Engineer | QuantumBlack
Kiyohito Kunii
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Course Abstract
Module 1: The emergence of MLOps and production-level data and ML pipelines
- Learn about the trends driving interest in production-level code data science code
- Get exposure to software principles data engineers and data scientists should consider applying to their code to make it easier to deploy into the production environment
- You will need a basic understanding of data science, this module is geared to beginners
Module2: Overview of Kedro
- Learn what Kedro is by going through basic functionalities like the project template, configuration, data catalog and pipeline
- I'll show how it fits into the workflow for creating robust and reproducible data pipelines
Module 3: Short demo of building a data pipeline with Kedro
- A short demo for how to create a new Kedro project, build and visualize a data pipeline using an example dataset.
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Background knowledge
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This course is for current or aspiring Data Scientists, Machine Learning and MLOps Engineers, AI Product Managers
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Knowledge of following tools and concepts is useful:
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Basic knowledge of Python and some familiarity of Python data science libraries (e.g. Pandas, Jupyter notebook) is recommended.
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The course is aimed at data scientists and data engineers who are interested in building a production-ready data pipelines.
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