JAVA WITH DSA BINARY BATCH & MERN FULL STACK DEVELOPMENT
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How to change computer IP

🔥Click on “Start” in the bottom left-hand corner of 𝘀𝗰𝗿𝗲𝗲𝗻

🔥Click on “Run”

🔥Type in “command” and hit ok

You should now be at an MSDOS prompt screen.

🔥Type “ipconfig /release” just like that, and hit “enter”

🔥Type “exit” and leave the prompt

• Right-click on “Network Places” or “My Network Places” on your desktop.

🔥Click on “properties” You should now be on a screen with something titled “Local Area Connection”, or something close to that, and, if you have a network hooked up, all of your other networks.

🔥Right click on “Local Area Connection” and click “properties”

🔥Double-click on the “Internet Protocol (TCP/IP)” from the list under the “General” 𝘁𝗮𝗯

🔥Click on “Use the following IP address” under the “General” 𝘁𝗮𝗯

🔥Create an IP address (It doesn’t matter what it is. I just type 1 and 2 until i fill the area up).

🔥Press “Tab” and it should automatically fill in the “Subnet Mask” section with default numbers.

🔥Hit the “Ok” button 𝗵𝗲𝗿𝗲

🔥Hit the “Ok” button again You should now be back to the “Local Area Connection” screen.
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🔥 Right-click back on “Local Area Connection” and go to properties again.
🔥Go back to the “TCP/IP” 𝘀𝗲𝘁𝘁𝗶𝗻𝗴𝘀

🔥 This time, select “Obtain an IP address automatically” tongue.gif

🔥18. Hit “Ok”

🔥Hit “Ok” 𝗮𝗴𝗮𝗶𝗻
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NumPy part 9: np.where()
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np.where() returns the indices where the condition is met (not the elements themselves) 👌
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👨‍💻#NumPy
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Part 10 🎉 of Intro to NumPy, what a journey guys, thanks for sticking around for these posts!! On to part 100 shall we??
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Follow u0040bigdataguru for tutorials and instructional posts on AI, machine learning and deep learning!
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👨‍💻#NumPy
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np.tile() is one of the most beautiful yet super useful functions there is in NumPy and Python! Happy weekend!! 🎉👌
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Typo alert: 4th slide should say np.array([[6], [7]]) for the picture to match!
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👨‍💻#NumPy
np.cumsum() is a useful function when it comes to doing big data cumulative sums. See it, learn it, and use it 💪
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👨‍💻#NumPy
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