Hands-On Data Science Project Using CRISP-DM
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In this hands-on course, you’ll learn how to execute a full data science project using the CRISP-DM framework, an industry-standard approach that guides you from understanding business needs to deploying your final model. Whether you’re new to data science or seeking to expand your skill set, this course provides a practical, end-to-end experience that mirrors real-world project workflows.
Throughout this mini-course, we’ll cover each stage of CRISP-DM in detail, using Python to demonstrate essential techniques in data exploration, feature engineering, model training, and deployment. Starting with Business Understanding, you’ll learn to translate business challenges into actionable data science objectives. Then, we’ll dive into data preparation, exploring methods to clean and analyze data effectively, preparing it for modeling. You’ll work with real datasets and apply feature engineering techniques to make your model more accurate and insightful.
In the Modeling phase, we’ll select, train, and evaluate machine learning algorithms, optimizing them to create a robust solution. You’ll learn validation techniques to ensure your model’s performance and reliability, even in production environments. Finally, in the Deployment phase, we’ll cover how to prepare and deploy your model, so it’s ready for real-world use.
By the end of this course, you’ll have a solid foundation in CRISP-DM and the hands-on experience to confidently approach data science projects in a structured, methodical way. Join us to build real-world data science skills and make an impact with your analyses!
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6Describing the ProjectText lesson
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7Business UnderstandingVideo lesson
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8Data Understanding (1)Video lesson
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9Data Understanding (2)Video lesson
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10Quiz 2Quiz
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11Data PreparationVideo lesson
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12Quiz 3Quiz
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13Modeling (1)Video lesson
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14Modeling (2)Video lesson
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15Quiz 4Quiz
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16EvaluationVideo lesson
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17Test Set & PredictionsVideo lesson
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18Quiz 5Quiz
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19DeploymentVideo lesson
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20Introduction to Our Model DeploymentVideo lesson
This lecture shows the preview of our final App that will be deployed.
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21Training Models with MLFlowVideo lesson
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22Registering the Final Model in MLFlowVideo lesson
In this lecture, learn how to register a model in MLFlow for deployment.
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23Creating the Streamlit App for PredictionsVideo lesson
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24Creating a Docker Container for the ApplicationVideo lesson
Learn how to add the application to a Docker container.
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25Deploying the Model on Azure CloudVideo lesson
Learn how to push the Docker container created into the cloud.

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