TensorFlow Transform is a hybrid of which two technologies?

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Study for the Google Cloud Professional Machine Learning Engineer Test. Study with flashcards and multiple choice questions, each question has hints and explanations. Get ready for your exam!

TensorFlow Transform is actually a hybrid of TensorFlow and Apache Beam, which allows for preprocessing of data for machine learning models. The correct choice would generally indicate the integration between these two frameworks. TensorFlow is a powerful library for building machine learning models, while Apache Beam provides a unified model for defining both batch and streaming data-parallel processing pipelines. This combination enables data scientists and engineers to efficiently preprocess large datasets before feeding them into TensorFlow models, ensuring that transformations are applied consistently across training and serving scenarios.

The other options do not accurately reflect the technologies involved in TensorFlow Transform. For instance, while Kubernetes and Apache may be relevant in the broader context of deploying machine learning systems, they are not directly linked with TensorFlow Transform. Similarly, Python is a programming language that is often used alongside TensorFlow, but it does not represent the core hybrid nature of TensorFlow Transform. Lastly, the incorrect pairing with Spark does not relate to TensorFlow Transform, which focuses on Apache Beam for its pipeline management.

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