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authorTinWoodman92 <chrhodgden@gmail.com>2023-12-14 17:32:01 -0600
committerTinWoodman92 <chrhodgden@gmail.com>2023-12-14 17:32:01 -0600
commitc2cd16e922cb8abe206a51e03ae4b711e2c0fba9 (patch)
treeca6a8e1787705e0282dd52e73fc8e47258bc7972 /projects_blog/NNetwork.html
parent02843201e8091f9cca4f72ced30eb65dc140b764 (diff)
cleaned up <p> element usage.
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diff --git a/projects_blog/NNetwork.html b/projects_blog/NNetwork.html
index 4cabed4..747eb85 100644
--- a/projects_blog/NNetwork.html
+++ b/projects_blog/NNetwork.html
@@ -3,7 +3,6 @@
<head>
<title>chrhodgden - NNetwork</title>
<link rel="stylesheet" href="../style.css"/>
- <script src="../app.js"></script>
</head>
<body>
@@ -23,16 +22,14 @@
After learning R from a few R tutorials, I decided it was time to learn what machine learning and data science truly was.
I had been putting off looking those up because I didn't feel like I was ready.
I watched a series on neural networks by 3Blue1Brown on YouTube linked below.
- <br>
- <br>
- <a href="https://youtu.be/aircAruvnKk" target="_blank">
- But what is a neural network? | Chapter 1, Deep learning
- </a>
- <br>
- <br>
+ </p>
+ <a href="https://youtu.be/aircAruvnKk" target="_blank">
+ But what is a neural network? | Chapter 1, Deep learning
+ </a>
+ <p>
<i>"Oh, I can do that."</i> I immediately thought to myself.
- <br>
- <br>
+ </p>
+ <p>
This video series applied old and familiar concepts of linear algebra and multivariable calculus that I had learned in college.
Knowing that there were applications of this with data and programming inspired me to try to write some libraries from scratch.
</p>
@@ -40,22 +37,20 @@
<p>
I chose R to do this rather than Python because I wanted to build experience with R.
This project would be a good demonstration of mixing higher mathmatics with programming, which is what R was built to do.
- <br>
- <br>
+ </p>
+ <p>
I did not follow any programming tutorials when developing this.
My primary intention was to familiarize myself with the math behind these concepts.
I wrote out as much of the program that made sense to me and then referenced YouTube for more detailed topics as I came to them.
I primariliy referenced a series by deeplizard on Neural Networks linked below.
- <br>
- <br>
- <a href="https://www.youtube.com/playlist?list=PLZbbT5o_s2xq7LwI2y8_QtvuXZedL6tQU" target="_blank">
- Deep Learning Fundamentals - Intro to Neural Networks
- </a>
- <br>
- <br>
+ </p>
+ <a href="https://www.youtube.com/playlist?list=PLZbbT5o_s2xq7LwI2y8_QtvuXZedL6tQU" target="_blank">
+ Deep Learning Fundamentals - Intro to Neural Networks
+ </a>
+ <p>
This series was helpful and taught me about weights and bias initialization, the learning rate, and walked the tedious math sequences in a way that I could follow with my code.
- <br>
- <br>
+ </p>
+ <p>
One idea I came up with myself was simple testing process to verify the project worked.
I decided to test the network by training it to read binary.
This way I would not have to find or build a database of training data, nor label the data.
@@ -75,6 +70,6 @@
| <a href="#">Top of Page</a>
<hr>
</nav>
- <script src="app.js"></script>
+ <script src="../app.js"></script>
</body>
</html> \ No newline at end of file