ANN-decompiler
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ANN-decompiler | 0xDeCA10B | |
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6 | 3 | |
20 | 548 | |
- | 1.6% | |
0.0 | 0.0 | |
over 2 years ago | 10 months ago | |
Python | Python | |
GNU General Public License v3.0 or later | MIT License |
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ANN-decompiler
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ChatGPT refuses to create a poem admiring Donald Trump but creates a poem and admires Joe Biden. ChatGPT is built in with political biases.
I can understand to why they would say that, as to what they refer as "woke" has massively invaded everything, but you are probably right that it was not done on purpose. Its not that easy to filter things like that out, especially not if humans have to do that manually. Also a friendly reminder that this is not real artificial intelligence, there is a good resource here https://github.com/Shamar/ANN-decompiler that explains this a bit better to why its mostly a magic trick, we have done models like that on paper in the 70's, not as large as those but its not exactly a new trick.
- “AI” Demystified: A Decompiler
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“AI” demystified: a decompiler for “artificial neural networks”
> Does this somehow smuggle the training dataset back into the VM?
Turns out you were right about this: http://www.tesio.it/2021/09/01/a_decompiler_for_artificial_n...
Obviously I was not aware of this, so the whole decompilation process was a waste of computation time, but it doesn't prove nor disprove anything about the "model"'s relation with the source dataset.
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[R] "AI" demystified: a decompiler
But I would be very happy to learn from you how to compute the whole source dataset from the output produced by compile.py without considering the "model".
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- A Better Mastodon Client
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Discussion Thread
Between this, their blockchain-based machine learning sharing system and their recent patent for a cryptocurrency mined using your brain activity, it seems like Microsoft is really going hard on crypto lately.
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Integration test: Complexity of privacy-preserving bird call bio-sensor for distributed ecological monitoring?
Some of the technologies which could be integrated include differential privacy, distributed online machine learning, misinformation resilience and multi-party computation, all within the context of smart contracts and bioinformatics.
What are some alternatives?
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