awsdocs /
aws-doc-sdk-examples
Welcome to the AWS Code Examples Repository. This repo contains code examples used in the AWS documentation, AWS SDK Developer Guides, and more. For more information, see the Readme.md file below.
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cipher387 / repository
In this repository you will find sample code files for each day of the course "Python for OSINT. A 21-day course for beginners".
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Also you can use Notion template
This course was written back in the good old days when Gitpod offered users 50 hours of free work per month. But that was a long time ago, and now this service has become paid.
Fortunately, you can still execute the commands from this course in Github Codespace.
To do this:
There may be some limitations, but this is sufficient for a general introduction to the course. And remember that you can always just use any Ubuntu-based Linux VM on your computer to take the course.
I'm primarily doing a course for followers of my Twitter account (https://twitter.com/cyb_detective), in which I post tweets about OSINT (Open Source Intelligence). For those who are professionally involved or just interested in open data investigations and research.
If you use (or plan to use) OSINT tools written in Python, but you're not satisfied with the standard functionality and would like to modify them a bit, this course will help you learn how to do that as quickly as possible.
Also, this course will help you to automate various routine tasks related to investigations: processing data from API, collecting data from websites, collecting search results, working with Internet archives, creating reports and data visualization.
The main goal of the course is not to teach you how to write Python code, but to teach you to spend less time on routine OSINT tasks. So, in addition to code examples, I will also give you links to different services that will help you solve different problems.
This course will also be useful for those who are far from Computer Science and want to raise their technical level a little, try to use Linux, learn to work with the command line and understand different popular IT terms like "JSON", "API", "WHOIS" etc.
For those who have never done OSINT and are going to do OSINT. This course consists for the most part of specialized topics related to investigation and data collection.
For those who want to learn Python in order to:
This course omits VERY many important things and sometimes even recommends what could have been called bad practice. There are things that don't matter when writing small automations for everyday OSINT tasks, but are extremely important when creating serious team projects.
The first thing I advise you to do is to look at the table of contents, flip through the pages of the book, and clearly decide if this course will be useful to you.
If you've made a clear decision, read one lesson each day thoughtfully and try every day to think about how you could apply what you have learned to your investigations. If you happen to miss a day or even a week, please don't scold yourself for it, but just continue the course day by day.
I also recommend that you try to run all the sample code and try to change something in it.
All the code samples in the book are available in this repository - https://github.com/cipher387/python-for-OSINT-21-days.
This course is distributed completely free of charge. In the beginning I thought about selling it, but since my subscribers are spread all over the planet and have very different income levels, I decided to distribute it without restrictions.
But to strengthen your discipline and motivate you to take it to the end, I recommend you make a small donation.
Free courses people often don't finish until the end, and paying will help you take learning seriously. Also, every donation will motivate me to make new OSINT courses and make them available to people all over the world.
The amount of donation you determine yourself.
For example, if you smoke, then for you the price of the course may be equal to the price of a pack of your favorite cigarettes.
If you drink alcohol, then the cost of a can of beer in the nearest supermarket or a small glass of wine in a restaurant on the next street. If you like fast food, go with the price of a small burger or package of fries.
You can send a donation via bank card or PayPal: https://boosty.to/cyb_detective
If for some reason you don't want to send a donation, I would still be very happy if you took this course.
You can download book with lessons here: Python for OSINT. 21 day course for beginners.pdf
My second book:
Linux for OSINT. 21-day course for beginners
Thank you for following me! https://cybdetective.com
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