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einfaches perceptron (schöne skizzen): https://github.com/nature-of-code/NOC-S17-2-Intelligence-Learning/blob/master/week4-neural-networks/perceptron.pdf  
einfaches perceptron (schöne skizzen): https://github.com/nature-of-code/NOC-S17-2-Intelligence-Learning/blob/master/week4-neural-networks/perceptron.pdf  
=adversarial attacks=
=ADVERSARIAL ATTACKS=
KNN's sind extrem anfällig für...
KNN's sind extrem anfällig für...


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* https://en.wikipedia.org/wiki/Deep_learning#Cyberthreat
* https://en.wikipedia.org/wiki/Deep_learning#Cyberthreat
   
   
=White Box Attacks=
=WHITE BOX ATTACKS=
* https://cv-tricks.com/how-to/breaking-deep-learning-with-adversarial-examples-using-tensorflow/
* https://cv-tricks.com/how-to/breaking-deep-learning-with-adversarial-examples-using-tensorflow/
** Paper »ADVERSARIAL EXAMPLES IN THE PHYSICAL WORLD«: https://arxiv.org/pdf/1607.02533.pdf
** Paper »ADVERSARIAL EXAMPLES IN THE PHYSICAL WORLD«: https://arxiv.org/pdf/1607.02533.pdf
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* https://boingboing.net/2019/03/31/mote-in-cars-eye.html
* https://boingboing.net/2019/03/31/mote-in-cars-eye.html
** Paper vom Forschungsteam: https://keenlab.tencent.com/en/whitepapers/Experimental_Security_Research_of_Tesla_Autopilot.pdf
** Paper vom Forschungsteam: https://keenlab.tencent.com/en/whitepapers/Experimental_Security_Research_of_Tesla_Autopilot.pdf


==on voice (ASR)==
==on voice (ASR)==
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* https://github.com/tensorflow/cleverhans
* https://github.com/tensorflow/cleverhans


==XAI==
=XAI=
[[XAI/NLG]]
[[XAI/NLG]]
* https://de.m.wikipedia.org/wiki/Explainable_Artificial_Intelligence
* https://de.m.wikipedia.org/wiki/Explainable_Artificial_Intelligence
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* DARPA: https://www.darpa.mil/program/explainable-artificial-intelligence
* DARPA: https://www.darpa.mil/program/explainable-artificial-intelligence


==ethics==
=ethics=
* https://www.economist.com/science-and-technology/2018/02/15/computer-programs-recognise-white-men-better-than-black-women
* https://www.economist.com/science-and-technology/2018/02/15/computer-programs-recognise-white-men-better-than-black-women
* https://books.google.de/books?id=rLsyDwAAQBAJ&pg=PA95&redir_esc=y#v=onepage&q&f=false
* https://books.google.de/books?id=rLsyDwAAQBAJ&pg=PA95&redir_esc=y#v=onepage&q&f=false
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* https://bdtechtalks.com/2018/03/26/racist-sexist-ai-deep-learning-algorithms/
* https://bdtechtalks.com/2018/03/26/racist-sexist-ai-deep-learning-algorithms/


==esotheric neural net==
=LANGUAGE=
==esotheric neural net (programming language)==
* Forscher suchen eigene Programmiersprache: https://t3n.de/news/machine-learning-facebooks-ki-chef-sucht-sprache-1144900/
* Forscher suchen eigene Programmiersprache: https://t3n.de/news/machine-learning-facebooks-ki-chef-sucht-sprache-1144900/
* esoterische programmiersprachen http://kryptografie.de/kryptografie/chiffre/index-sprachen.htm
* esoterische programmiersprachen http://kryptografie.de/kryptografie/chiffre/index-sprachen.htm
===KI-generierte Sprache===
* Google: https://motherboard.vice.com/de/article/mg7md8/eine-kuenstliche-intelligenz-von-google-hat-gerade-seine-eigene-sprache-erfunden
** veröffentlichtes Paper: https://arxiv.org/pdf/1611.04558v1.pdf
* FB Bots: https://code.fb.com/ml-applications/deal-or-no-deal-training-ai-bots-to-negotiate/
** https://www.fastcompany.com/90132632/ai-is-inventing-its-own-perfect-languages-should-we-let-it
===NLP / NLG / NLU / NLI===


NLP:
==NLU / NLI==
* https://www.informatik-aktuell.de/betrieb/kuenstliche-intelligenz/natural-language-understanding-nlu.html
* https://en.wikipedia.org/wiki/Natural-language_understanding
 
==NLP==
* https://de.wikipedia.org/wiki/Computerlinguistik
* https://de.wikipedia.org/wiki/Computerlinguistik


NLU:
===Speech recognition===
* https://www.informatik-aktuell.de/betrieb/kuenstliche-intelligenz/natural-language-understanding-nlu.html
https://de.wikipedia.org/wiki/Spracherkennung
* https://en.wikipedia.org/wiki/Natural-language_understanding


NLG:
==NLG==
* https://de.wikipedia.org/wiki/Textgenerierung
* https://de.wikipedia.org/wiki/Textgenerierung
* http://www.thealit.de/lab/serialitaet/teil/nieberle/nieberle.html
* http://www.thealit.de/lab/serialitaet/teil/nieberle/nieberle.html


https://github.com/dangeng/Simple_Adversarial_Examples
* https://bdtechtalks.com/2018/02/20/ai-machine-learning-nlg-nlp/
* https://bdtechtalks.com/2018/02/20/ai-machine-learning-nlg-nlp/
** https://www.wired.com/2016/03/google-inbox-auto-answers-emails/
** https://www.wired.com/2016/03/google-inbox-auto-answers-emails/
** http://www.wireless-earth.de/oldstuff/oldstuff.html
** http://www.wireless-earth.de/oldstuff/oldstuff.html
====Speech recognition====
https://de.wikipedia.org/wiki/Spracherkennung


====datenbanken===
* Google: https://motherboard.vice.com/de/article/mg7md8/eine-kuenstliche-intelligenz-von-google-hat-gerade-seine-eigene-sprache-erfunden
** veröffentlichtes Paper: https://arxiv.org/pdf/1611.04558v1.pdf
* FB Bots: https://code.fb.com/ml-applications/deal-or-no-deal-training-ai-bots-to-negotiate/
** https://www.fastcompany.com/90132632/ai-is-inventing-its-own-perfect-languages-should-we-let-it
 
===datenbanken===
deutsch:
deutsch:
* https://de.wikipedia.org/wiki/GermaNet
* https://de.wikipedia.org/wiki/GermaNet
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* http://www.macs.hw.ac.uk/InteractionLab/E2E/
* http://www.macs.hw.ac.uk/InteractionLab/E2E/


====chatbots====
===chatbots===
* https://bdtechtalks.com/2017/08/21/rob-high-ibm-watson-cto-artificial-intelligence-chatbots/
* https://bdtechtalks.com/2017/08/21/rob-high-ibm-watson-cto-artificial-intelligence-chatbots/
* https://chatbotsmagazine.com/contextual-chat-bots-with-tensorflow-4391749d0077
* https://chatbotsmagazine.com/contextual-chat-bots-with-tensorflow-4391749d0077
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** Jupyter Notebooks: https://github.com/suriyadeepan/practical_seq2seq
** Jupyter Notebooks: https://github.com/suriyadeepan/practical_seq2seq


====Toolkits/Librarys====
===Toolkits/Librarys===
* Natural Language Toolkit: http://www.nltk.org/
* Natural Language Toolkit: http://www.nltk.org/
* Poetry Generator: https://github.com/schollz/poetry-generator
* Poetry Generator: https://github.com/schollz/poetry-generator
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* https://github.com/shashank-bhatt-07/Natural-Language-Generation-using-LSTM-Keras
* https://github.com/shashank-bhatt-07/Natural-Language-Generation-using-LSTM-Keras


===(KI-generierte) Krypto===
==(KI-generierte) Krypto==
* https://motherboard.vice.com/de/article/8q8wkv/google-ki-entwickelt-verschluesselung-die-selbst-google-nicht-versteht
* https://motherboard.vice.com/de/article/8q8wkv/google-ki-entwickelt-verschluesselung-die-selbst-google-nicht-versteht
* http://kryptografie.de/kryptografie/index.htm
* http://kryptografie.de/kryptografie/index.htm
===Reproduktive KI===
 
==Reproduktive KI==
https://www.sir-apfelot.de/kuenstliche-intelligenz-erschafft-neue-ki-systeme-10436/
https://www.sir-apfelot.de/kuenstliche-intelligenz-erschafft-neue-ki-systeme-10436/
=last semester=
[[Datei:Neuronales-netz_am_eigenen-bild.ipynb]]

Version vom 16. April 2019, 12:50 Uhr

einfaches perceptron (schöne skizzen): https://github.com/nature-of-code/NOC-S17-2-Intelligence-Learning/blob/master/week4-neural-networks/perceptron.pdf

ADVERSARIAL ATTACKS

KNN's sind extrem anfällig für...

WHITE BOX ATTACKS

Untargeted Adversarial Attacks

Adversarial attacks that just want your model to be confused and predict a wrong class are called Untargeted Adversarial Attacks.

  • nicht zielgerichtet

Fast Gradient Sign Method(FGSM)

FGSM is a single step attack, ie.. the perturbation is added in a single step instead of adding it over a loop (Iterative attack).

Basic Iterative Method

Störung, anstatt in einem einzelnen Schritt in mehrere kleinen Schrittgrößen anwenden

Iterative Least-Likely Class Method

ein Bild erstellen, welches in der Vorhersage den niedrigsten Score trägt

Targeted Adversarial Attacks

Attacks which compel the model to predict a (wrong) desired output are called Targeted Adversarial attacks

  • zielgerichtet

(Un-)Targeted Adversarial Attacks

kann beides...

Projected Gradient Descent (PGD)

Eine Störung finden die den Verlust eines Modells bei einer bestimmten Eingabe maximiert:

BLACK BOX ATTACKS

on computer vision

propose zeroth order optimization (ZOO)

Black-Box Attacks using Adversarial Samples

  • a technique that uses the victim model as an oracle to label a synthetic training set for the substitute, so the attacker need not even collect a training set to mount the attack

new Tesla Hack

on voice (ASR)

hidden voice commands

Psychoacoustic Hiding (Attacking Speech Recognition)

on written text (NLP)

paraphrasing attacks

Anti Surveillance

http://dismagazine.com/dystopia/evolved-lifestyles/8115/anti-surveillance-how-to-hide-from-machines/

libraries

XAI

XAI/NLG

ethics

LANGUAGE

esotheric neural net (programming language)

NLU / NLI

NLP

Speech recognition

https://de.wikipedia.org/wiki/Spracherkennung

NLG

datenbanken

deutsch:

englisch:

E2E NLG Challenge:

chatbots

Toolkits/Librarys

tryouts:

(KI-generierte) Krypto

Reproduktive KI

https://www.sir-apfelot.de/kuenstliche-intelligenz-erschafft-neue-ki-systeme-10436/