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4 changes: 2 additions & 2 deletions _config.yml
@@ -1,5 +1,5 @@
title: Minimal theme
logo: /assets/img/logo.png
title: <p align="center"> Siva Saravanan </p>
logo: /assets/img/logo.jpg
description: Minimal is a theme for GitHub Pages.
show_downloads: true
google_analytics:
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122 changes: 6 additions & 116 deletions index.md
@@ -1,123 +1,13 @@
---
layout: default
---

Text can be **bold**, _italic_, or ~~strikethrough~~.

[Link to another page](./another-page.html).
# This is Siva's Project on Fraud Detection

There should be whitespace between paragraphs.
## Fraud Detection

There should be whitespace between paragraphs. We recommend including a README, or a file with information about your project.
Fraud Detection Using Machine Learning deploys a machine learning (ML) model and an example dataset of credit card transactions to train the model to recognize fraud patterns. The model is self-learning which enables it to adapt to new, unknown fraud patterns.

# Header 1
Use this Guidance to automate the detection of potentially fraudulent activity, and the flagging of that activity for review. Fraud Detection Using Machine Learning is easy to deploy and includes an example dataset but you can modify the code to work with any dataset.

This is a normal paragraph following a header. GitHub is a code hosting platform for version control and collaboration. It lets you and others work together on projects from anywhere.
Overview
Fraud Detection Using Machine Learning allows you to run automated transaction processing on an example dataset or your own dataset. The included ML model detects potentially fraudulent activity and flags that activity for review. The diagram below presents the architecture you can build using the example code on GitHub.

## Header 2

> This is a blockquote following a header.
>
> When something is important enough, you do it even if the odds are not in your favor.

### Header 3

```js
// Javascript code with syntax highlighting.
var fun = function lang(l) {
dateformat.i18n = require('./lang/' + l)
return true;
}
```

```ruby
# Ruby code with syntax highlighting
GitHubPages::Dependencies.gems.each do |gem, version|
s.add_dependency(gem, "= #{version}")
end
```

#### Header 4

* This is an unordered list following a header.
* This is an unordered list following a header.
* This is an unordered list following a header.

##### Header 5

1. This is an ordered list following a header.
2. This is an ordered list following a header.
3. This is an ordered list following a header.

###### Header 6

| head1 | head two | three |
|:-------------|:------------------|:------|
| ok | good swedish fish | nice |
| out of stock | good and plenty | nice |
| ok | good `oreos` | hmm |
| ok | good `zoute` drop | yumm |

### There's a horizontal rule below this.

* * *

### Here is an unordered list:

* Item foo
* Item bar
* Item baz
* Item zip

### And an ordered list:

1. Item one
1. Item two
1. Item three
1. Item four

### And a nested list:

- level 1 item
- level 2 item
- level 2 item
- level 3 item
- level 3 item
- level 1 item
- level 2 item
- level 2 item
- level 2 item
- level 1 item
- level 2 item
- level 2 item
- level 1 item

### Small image

![Octocat](https://github.githubassets.com/images/icons/emoji/octocat.png)

### Large image

![Branching](https://guides.github.com/activities/hello-world/branching.png)


### Definition lists can be used with HTML syntax.

<dl>
<dt>Name</dt>
<dd>Godzilla</dd>
<dt>Born</dt>
<dd>1952</dd>
<dt>Birthplace</dt>
<dd>Japan</dd>
<dt>Color</dt>
<dd>Green</dd>
</dl>

```
Long, single-line code blocks should not wrap. They should horizontally scroll if they are too long. This line should be long enough to demonstrate this.
```

```
The final element.
```