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Learn to Choose the Right ML Model

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Coursera

Learn to Choose the Right ML Model

Hurix Digital

Instructor: Hurix Digital

Included with Coursera Plus

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

Recommended experience

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

Recommended experience

2 hours to complete
Flexible schedule
Learn at your own pace

See how employees at top companies are mastering in-demand skills

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There are 3 modules in this course

In this opening lesson, learners see how correctly typing a machine-learning problem and inspecting data traits set the stage for every modeling decision. Guided by the Zillow Offers collapse (Problem: mis-priced homes from data drift; Why It Matters: $420 M loss), you'll practise spotting regression vs classification tasks, gauging feature quality, and flagging distribution shifts before they derail a project. Videos, a data-profiling lab, and a peer discussion build the analytical eye needed to choose the right model family with confidence.

What's included

3 videos3 readings1 assignment

In this lesson, learners will analyze the strengths and limitations of the most widely used machine learning model families—linear models, tree-based ensembles, clustering, and deep learning—to understand when and why each is best applied. The lesson focuses on why simply “trying every algorithm” leads to wasted effort, and how matching problem type and data structure to the right family enables smarter, faster, and more defensible results.Real-world failures, such as the Amazon recruiting engine bias, illustrate the pitfalls of poorly chosen models. Through scenario-based videos, guided readings, peer discussions, and hands-on labs, learners will practice comparing algorithms for fairness, performance, and interpretability—shifting from a toolbox mindset to strategic model selection.

What's included

2 videos2 readings1 assignment

In this lesson, learners discover how wiring continuous evaluation into every training and deployment step transforms model delivery from a sprint of experiments into a reliable, data-driven decision engine. A midnight release scenario—where an unmonitored metric drifted and customer limits halved unexpectedly—shows why automated checks must begin with the very first cross-validation split and extend into live A/B tests.Learners investigate practical tooling—MLflow for experiment tracking, Optuna for automated hyper-parameter tuning, Evidently for production drift alerts, and GitHub Actions workflows for reproducible evaluation—to ensure issues surface before a model reaches end users. Case studies of metric blindness and data drift (e.g., Apple Card’s gender-bias probe and Google Flu Trends’ over-forecasting) demonstrate how small oversights in monitoring or retraining cadence can spiral into reputational or financial damage, reinforcing the need for continuous oversight.Hands-on demonstrations guide participants through:• setting quantitative success criteria that mix accuracy, fairness, and cost• configuring gates that fail a training run when key metrics regress• running a live A/B test and interpreting uplift with statistical rigor—all without slowing delivery velocity.By the end of the lesson, learners will know both how to embed metric-driven workflows into real pipelines and why treating evaluation as an afterthought is no longer acceptable—validation must be continuous, integrated, and owned by every stakeholder in the ML lifecycle.

What's included

4 videos1 reading3 assignments

Instructor

Hurix Digital
Coursera
56 Courses1,978 learners

Offered by

Coursera

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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.