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AI-Introduction

  • Presenter: Nils Seipel

Premises and Terms

  • The goal of artifical intelligence is to simulate human intelligence
  • This achieved by simulation functions of signal neurons.
  • Problem: Human intelligence is not well defined
  • Artificial intelligence > Machine Learning > Deep Learning
  • Artificial intelligence(knowledge-based systems)
  • StrongAI: General AI, solves Problems of its own (Holy Grail/Singularity)
  • WeakAI(narrowAI): helps with specific problems, not capable of knowledge transfer

Algorithm:

  • An algorithm is like a recipe, defined input and expected output are clear
  • The problem is: algorithms are difficult to adept to reality we need to cover every possible case

Artificial neural networks (ANN)

  • Solve the problem with algorithms
  • Can adapt to different inputs
  • Have to be trained by Humans or another Artificial neural network
  • Training data must be complex and we need a lot. And this data needs to be labled.
  • Training is really crucial, bad training creates bad ai.
  • Biased data will create a biased ai, diverse data is important to remove bias. This can become dangerous for societies that relay on AI. It has the potential to perpetuate prejudice.
  • AI learns similar to learning child by pointing on things
  • try yourself: GOOGLETOOL
  • A shallow neural networks is build out of input layer, processing layer and output layer.
  • Deep neural networks means: lots of processing layers of "neurons".
  • After training, the artificial neural network is fixed, it doesnt learn any more.
  • All ANN work based on probability.

Use-cases:

  • Cancer diagnosis, histological images are rated by an AI that supports the doctor.
  • Self-driving-cars
  • Learn sign-language assisted by ai
  • DALL-E
  • Deep-Fake Videos
  • openAI-Playground
  • Universal Translation

Bias in neural networks:

  • Really important issue, if we give important tasks/decisions to ai
  • Reality is sometimes not diverse enough to provide sufficiant data
  • Currently to focused on western white males, due to limits in training data

Big data is required for training

  • 45 petabyte pure text as training data for ChatGPT
  • Example: In order to classify a handwritten 0 as a zero, with 95% likelyhood of correct classification you need 50.000 handwritten samples of this singel digit.

Future of AI

  • WeakAI will be better than humans in every discipline.
  • AI will not drive us into unemployment, but more that we'll be interacting with AI. Simlar to a conductor and the orchestra working together.
  • https://makerspace-giessen.de/ki/ further reading and nice resources
  • AI for Start-Ups

Assist me, AI: The pun-ishingly good future of productivity

  • presenter: Johannes Hammp
  • Why this talk: Plagiarism detector software didn't recognize plagiarims.
  • The whole talk is available as pdf

Quillbot

  • Paraphraser-Tool is often used by students for homework
  • Quality is often lacking
  • Problem: PlagAware (anti-plagiarism) Software does not recognize anything

Semantic Scholar

  • Alternative to Google Scholar
  • Creates references for you
  • Has integrated "unpaywall"
  • AI-feature TLDR (Beta). Shorter then abstracts, oftern better content summary

ChatGPT

  • does everything what all the other tools do
  • higher usability through the chat like interface
  • keywords to circumvent blocks: hypothetical,educational
  • Uses "However" to often in its answers
  • Context can also be a primer into a fault direction
  • Awesome prompts, great prompts for chat gpt (https://prompts.chat/)

Use-cases:

  • Essay-writing
  • Code-writing/Debugging
  • Summariser
  • Assistant to create fundamentals of a research paper.
    • Advantage: new way of writing, less writing blockade. not necessarily less time consuming.

Problem: Teachers are confronted with content which is often difficult to veryfi The border between human and AI generated content blurs.

  • Enhance your own creativity with suggestions from ChatGPT

Transparency Issues

  • not everything labeled AI is real AI
  • we dont know how it works
  • it has some quality issues, e.g. creating eloquent bullshit
  • reproducibility