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Machine Learning & AI Fundamentals: Practice Exams

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Ace data science interviews with 200 questions on TensorFlow, CNNs, Hyperparameter Tuning, and Evaluation Metrics.
1
1/5
(97) Ratings
67 students
Created by Himanshu Kaushik
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What you'll learn

  • Differentiate between Supervised, Unsupervised, and Reinforcement Learning algorithms to choose the right model for complex data problems.
  • Architect and evaluate deep learning networks using TensorFlow and Keras, configuring appropriate loss functions and activation layers.
  • Master Scikit-Learn pipelines to prevent data leakage and utilize RandomizedSearchCV for highly efficient hyperparameter tuning.
  • Calculate and apply the correct evaluation metrics (Precision, Recall, F1-Score, RMSE) based on the specific business context of the model.
This course includes:
200 questions on-demand video
0 articles
0 downloadable resources
0 lessons
Full lifetime access
Access on mobile and TV
Certificate of completion
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Course content

Requirements

  • A firm grasp of Python programming and fundamental mathematics (linear algebra and basic calculus). Familiarity with Jupyter Notebooks and basic data manipulation using Pandas and NumPy is highly recommended.

Description

We are living in the golden age of Artificial Intelligence. However, simply knowing how to import a library and call .fit() and .predict() is no longer enough to secure a high-paying job in data science. Companies are looking for engineers who understand the underlying mathematics of their models. They need professionals who know exactly why a neural network is overfitting, how to optimize a learning rate during gradient descent, and when to prioritize Recall over Precision in life-or-death classification models. Welcome to the Machine Learning & AI Fundamentals practice assessments!

This comprehensive practice test course provides you with 200 realistic, highly technical questions modeled directly after the grueling data science interviews conducted by FAANG companies and top-tier research institutions. Across these four rigorous practice exams, you will face direct, scenario-based challenges spanning a massive array of industries. You will be tested on your ability to deploy Keras-based house price regression models, build fraud detection pipelines for major banking clients, and architect transformer models for real-time social media sentiment analysis.

The questions in this course cut through the theoretical fluff and dive straight into practical application. You will be challenged on the nuances of categorical cross-entropy, the mathematical logic behind Gini Impurity in Decision Trees, and the architectural differences between CNNs and RNNs. If you are preparing to defend an academic submission, pivot your career into machine learning engineering, or prove that you can build models that actually scale in production environments, this is your ultimate testing ground. Enroll today and start optimizing your algorithms!

Course locale: English (US)

Course instructional level: Advanced Level

Course category: Development

Course subcategory: Data Science

Who this course is for:

  • Aspiring Data Scientists, Machine Learning Engineers, and Academic Researchers who want to validate their theoretical knowledge and pass rigorous technical screening interviews.
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