Skip to content

Commit

Permalink
Fix references
Browse files Browse the repository at this point in the history
  • Loading branch information
profvjreddi committed Sep 17, 2024
1 parent 27ac2d2 commit 28781e5
Show file tree
Hide file tree
Showing 2 changed files with 2 additions and 5 deletions.
4 changes: 2 additions & 2 deletions contents/dl_primer/dl_primer.qmd
Original file line number Diff line number Diff line change
Expand Up @@ -233,7 +233,7 @@ These architectures serve specific purposes and excel in different domains, offe

### Traditional ML vs Deep Learning

Deep learning extends traditional machine learning by utilizing neural networks to discern patterns in data. In contrast, traditional machine learning relies on a set of established algorithms such as decision trees, k-nearest neighbors, and support vector machines, but does not involve neural networks. To briefly highlight the differences, @tbl-mlvsdl illustrates the contrasting characteristics between traditional ML and deep learning. @fig-ml-vs-dl further explains the differences between Machine Learning and Deep Learning.
Deep learning extends traditional machine learning by utilizing neural networks to discern patterns in data. In contrast, traditional machine learning relies on a set of established algorithms such as decision trees, k-nearest neighbors, and support vector machines, but does not involve neural networks. To briefly highlight the differences, @tbl-mlvsdl illustrates the contrasting characteristics between traditional ML and deep learning. @fig-ml-dl further explains the differences between Machine Learning and Deep Learning.

+-------------------------------+-----------------------------------------------------------+--------------------------------------------------------------+
| Aspect | Traditional ML | Deep Learning |
Expand All @@ -251,7 +251,7 @@ Deep learning extends traditional machine learning by utilizing neural networks
| Maintenance | Easier (simple to update and maintain) | Complex (requires more efforts in maintenance and updates) |
+-------------------------------+-----------------------------------------------------------+--------------------------------------------------------------+

![Comparing Machine Learning and Deep Learning. Source: [Medium](https://aoyilmaz.medium.com/understanding-the-differences-between-deep-learning-and-machine-learning-eb41d64f1732)](images/png/mlvsdl.png){#fig-ml-vs-dl}
![Comparing Machine Learning and Deep Learning. Source: [Medium](https://aoyilmaz.medium.com/understanding-the-differences-between-deep-learning-and-machine-learning-eb41d64f1732)](images/png/mlvsdl.png){#fig-ml-dl}

: Comparison of traditional machine learning and deep learning. {#tbl-mlvsdl .striped .hover}

Expand Down
3 changes: 0 additions & 3 deletions contents/ondevice_learning/ondevice_learning.qmd
Original file line number Diff line number Diff line change
Expand Up @@ -249,9 +249,6 @@ Transfer learning has revolutionized the way models are developed and deployed,

Implementation in production scenarios can be broadly categorized into two stages: pre-deployment and post-deployment.

![Training from scratch vs. transfer learning.](images/png/transfer_learning.jpeg){#transfer}


### Pre-Deployment Specialization

In the pre-deployment stage, transfer learning acts as a catalyst to expedite the development process. Here's how it typically works: Imagine we are creating a system to recognize different breeds of dogs. Rather than starting from scratch, we can use a pre-trained model that has already mastered the broader task of recognizing animals in images.
Expand Down

0 comments on commit 28781e5

Please sign in to comment.