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artificial-intelligence
The branch of computer science dealing with the reproduction, or mimicking of human-level intelligence, self-awareness, knowledge, conscience, and thought in computer programs.
Here are 13,344 public repositories matching this topic...
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At this moment relu_layer op doesn't allow threshold configuration, and legacy RELU op allows that.
We should add configuration option to relu_layer.
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Add T9 decoder
Hey Hackers of this spoopy month!
Welcome to the Ciphey repo(s)!
This issue requires you to add a decoder.
This wiki section walks you through EVERYTHING you need to know, and we've added some more links at the bottom of this issue to detail more about the decoder.
https://github.com/Ciphey/Ciphey/wiki#adding-your-own-crackers--decoders
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May 26, 2022 - Python
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May 17, 2021 - Jupyter Notebook
Fedora & apt-get
Specs
- Leon version: latest
- OS (or browser) version: Fedora 30
- Node.js version: 10.16.3
- Complete "npm run check" output:
➡ Here is the diagnosis about your current setup
✔ Run
✔ Run modules
✔ Reply you by texting
❗ Amazon Polly text-to-speech
❗ Google Cloud text-to-speech
❗ Watson text-to-speech
❗ Offline text-to-speech
❗ Google Cloud speech-to-text
❗ Watson spee
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May 31, 2022
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Nov 21, 2018 - Shell
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The images for the Determining Body Fat Percentage tutorial are not loaded correctly. The correct path should be added.
Steps 🕵️♂️ 🕵️♀️
- Head over to https://github.com/mindsdb/mindsdb/blob/staging/docs/mindsdb-docs/docs/sql/tutorials/bodyfat.md
- Change the path to all images to have /sql path as:

Proposed refactor
The current import time for the pytorch_lightning package on my machine is several seconds. There are some opportunities to improve this.
Motivation
High import times have an impact on the development and debugging speed.
Benchmark
I benchmarked the import time in two environments: