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Data Engineering & Pipeline Reliability for Machine Learning

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Coursera

Data Engineering & Pipeline Reliability for Machine Learning

Included with Coursera Plus

Gain insight into a topic and learn the fundamentals.
Intermediate level

Recommended experience

9 hours to complete
Flexible schedule
Learn at your own pace
Gain insight into a topic and learn the fundamentals.
Intermediate level

Recommended experience

9 hours to complete
Flexible schedule
Learn at your own pace

What you'll learn

  • Transform and validate data for machine learning using encoding, cleansing, and data quality techniques

  • Design and orchestrate ML data pipelines that ensure reliability, freshness, and pipeline performance

  • Manage reproducible ML development using version control and environment management tools

Details to know

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Recently updated!

March 2026

Assessments

13 assignments¹

AI Graded see disclaimer
Taught in English

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Build your subject-matter expertise

This course is part of the Machine Learning Made Easy for Software Engineers Specialization
When you enroll in this course, you'll also be enrolled in this Specialization.
  • Learn new concepts from industry experts
  • Gain a foundational understanding of a subject or tool
  • Develop job-relevant skills with hands-on projects
  • Earn a shareable career certificate

There are 10 modules in this course

You will analyze categorical features to determine the optimal encoding strategy based on cardinality and model fit considerations.

What's included

2 videos2 readings1 assignment

You will evaluate data quality metrics and document data transformation lineage to ensure transparency and reliability.

What's included

1 video1 reading1 assignment

You will apply techniques to impute, flag, and validate missing or null values to produce consistent, model-ready datasets.

What's included

1 video1 reading2 assignments

You will apply ETL and ELT pipelines to ingest data from various sources into a feature store using structured transformation workflows.

What's included

2 videos1 reading1 assignment

You will analyze upstream schema changes and implement safeguards to maintain data pipeline resilience and downstream compatibility.

What's included

2 videos1 reading

You will evaluate data freshness, lag, and pipeline success rates against service level agreements to assess operational reliability.

What's included

1 video1 reading3 assignments

You will apply version control branching strategies to manage code, experiments, and project artifacts effectively.

What's included

3 videos1 reading2 assignments

You will apply virtual environment tools to configure reproducible project environments with stable dependencies.

What's included

2 videos1 reading1 ungraded lab

You will analyze resource utilization across CPU, GPU, and memory usage to optimize compute costs during experimentation.

What's included

2 videos1 reading2 assignments

In this project, you will design and implement a production-style machine learning data pipeline for a financial services risk modeling scenario. The raw dataset contains missing values, inconsistent categorical entries, potential outliers, and simulated schema drift. Your task is to transform this dataset into a validated, model-ready feature store. You will clean and preprocess structured tabular data, select encoding strategies based on feature cardinality, implement data validation using Great Expectations, detect schema changes between pipeline runs, generate SLA metrics to assess reliability, and save processed features in parquet format. Beyond the core pipeline, you will also apply professional development practices that are standard in production ML teams: setting up a virtual environment for reproducibility, using version control branching strategies to manage your work, and analyzing resource utilization to understand compute costs. Your final deliverable is a modular Python script and a structured written engineering explanation that demonstrates your ability to design reliable, production-aligned ML data infrastructure.

What's included

2 readings1 assignment

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Instructor

Professionals from the Industry
307 Courses 44,329 learners

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¹ Some assignments in this course are AI-graded. For these assignments, your data will be used in accordance with Coursera's Privacy Notice.