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Remove grammar pass fix requests
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profvjreddi committed Jan 9, 2025
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2 changes: 0 additions & 2 deletions contents/core/data_engineering/data_engineering.qmd
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Expand Up @@ -10,8 +10,6 @@ Resources: [Slides](#sec-data-engineering-resource), [Videos](#sec-data-engineer

![_DALL·E 3 Prompt: Create a rectangular illustration visualizing the concept of data engineering. Include elements such as raw data sources, data processing pipelines, storage systems, and refined datasets. Show how raw data is transformed through cleaning, processing, and storage to become valuable information that can be analyzed and used for decision-making._](images/png/cover_data_engineering.png)

Let me refine this to strengthen the academic tone and remove direct reader references while maintaining the focus on data engineering principles:

## Purpose {.unnumbered}

_Why does data infrastructure form the foundation of AI system success, and how does its design influence system capabilities?_
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2 changes: 0 additions & 2 deletions contents/core/frameworks/frameworks.qmd
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Expand Up @@ -10,8 +10,6 @@ Resources: [Slides](#sec-ai-frameworks-resource), [Videos](#sec-ai-frameworks-re

![_DALL·E 3 Prompt: Illustration in a rectangular format, designed for a professional textbook, where the content spans the entire width. The vibrant chart represents training and inference frameworks for ML. Icons for TensorFlow, Keras, PyTorch, ONNX, and TensorRT are spread out, filling the entire horizontal space, and aligned vertically. Each icon is accompanied by brief annotations detailing their features. The lively colors like blues, greens, and oranges highlight the icons and sections against a soft gradient background. The distinction between training and inference frameworks is accentuated through color-coded sections, with clean lines and modern typography maintaining clarity and focus._](images/png/cover_ml_frameworks.png)

Let me refine this to maintain a textbook tone, remove the "By" construction, and strengthen the systems perspective:

## Purpose {.unnumbered}

_How do AI frameworks bridge the gap between theoretical design and practical implementation, and what role do they play in enabling scalable machine learning systems?_
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