• A
  • A
  • A
  • ABC
  • ABC
  • ABC
  • А
  • А
  • А
  • А
  • А
Regular version of the site

‘We Need to Learn to Communicate with Artificial Intelligence Services’

‘We Need to Learn to Communicate with Artificial Intelligence Services’

© iStock

An online course 'What is Generative AI?’ has been launched on the Open Education platform, which will help students learn more about how to properly communicate with neural networks so that they can perform tasks better. Daria Kasyanenko, an expert at the Continuing Education Centre and senior lecturer at the Big Data and Information Retrieval School at the Faculty of Computer Science, spoke about how generative AI works and how to create content with its help.

Daria Kasyanenko

— What is generative artificial intelligence?

— Generative models (GenAI) are a type of artificial intelligence that creates text, code, images, music, and other content in response to prompts.

Such models are trained on large amounts of data, learning by observing and comparing patterns. For example, if we show a model millions of pictures of a traffic light, it will gradually begin to understand that a traffic light is a rectangular box with red, yellow, and green lights.

Generative AI is mainly used for content creation. School students write essays and marketers draw up promotion plans—there are many options. But, at the same time, our ideas about artificial intelligence are greatly distorted by popular culture. It seems to us that, at best, it will solve all our problems, and, at worst, it will enslave us. Neither of these will happen in the near future.

Learn more about working with neural networks and using artificial intelligence on the portal (in Russian). 

Existing models will not replace you at work (unfortunately or fortunately), but they can become a personal assistant in routine matters: for example, writing emails, proofreading a text, analysing tabular data, and summarising large texts or videos.

— How are texts generated? Why does AI, for example, produce false facts?

— Texts are created using language models. They learn from large volumes of text and can grasp the nuances of a language. The system receives a task (prompt), processes it and returns with a response. This model can be visualised as a kind of sage who has read all the books in the world and can reproduce the answer to any question from memory.

However, models have so-called hallucinations, and it is because of them that errors occur. For example, you ask a model to write an essay about the great writer Neuron Neuronovich Neuronov. The model will be happy to tell you what a brilliant writer he is, and even make a list of his books. This happens when AI lacks knowledge on a topic and, like a student who did not prepare for an exam, begins to lie. This can also happen due to random system failures.

— How are images generated? Why do images sometimes have artefacts?

— Images are generated from noise (empty image). Gradually, the model improves it using the prompt until it produces an image similar to what the user has requested.

Generated images usually have troubles while drawing people: extra arms and legs, complete facial symmetry (the uncanny valley effect), different eyes, strange smiles, and so on. The more detail the image has, the worse the model will cope with the task.

The simplest solution is to ask the model to draw a person in poses where arms and legs are not visible, or to draw a portrait.

— What is a human’s role in managing AI if we talk about an ordinary user?

— Now we need to learn to communicate with generative AI services. It may seem that asking questions in a chat and getting answers is quite simple. But to get a truly high-quality answer, you need to learn prompt engineering, that is, the art of correctly composing questions for a machine. An entire profession even exists called prompt engineer.

Currently, a great number of textbooks on prompts are available, where one can learn how to correctly compose queries in summary formats, positional formats, with context description and instructions description. This is a whole science.

During the course, we talk about how to use prompts and learn to better understand how they work.

See also:

Scientists Propose Star-Shaped Diffusion Model

Scientists at the AI Research Centre and the Faculty of Computer Science at HSE University, the Artificial Intelligence Research Institute (AIRI), and Sber AI have come up with novel architecture for diffusion neural networks, making it possible to configure eight distinct types of noise distribution. Instead of the classical Markov chain model with Gaussian distribution, the scientists propose a star-shaped model where the distribution type can be selected and preset. This can aid in solving problems across various geometric modalities. The results were presented at the NeurIPS 2023 conference.

‘Like Electricity, AI Can Bring Incredible Benefits’

Developments in the field of artificial intelligence are gradually taking over the world. AI has the potential to bring incredible benefits to the global economy and our quality of life, but it also creates new challenges. Panos Pardalos, Professor at the University of Florida, Academic Supervisor of the Laboratory of Algorithms and Technologies for Networks Analysis (Nizhny Novgorod), covered these issues, along with other related topics, in his recent report.

‘You Need to Know a Lot of Ideas and Algorithms, Come Up with Something Unconventional’

A student of the HSE Faculty of Computer Science, Andrey Kuznetsov, has become the winner of the 2024 Data Fusion Contest. He took first place in solving geoanalytics tasks, and also won the special ‘Companion’ category. The competition took place as part of the 2024 Data Fusion conference on big data and AI technologies. Researchers from HSE University presented the results of their work and demonstrated applied developments at the conference.

Artificial Intelligence Tested by Kant Philosophy

The Baltic Federal University (Kaliningrad) recently hosted an International Congress entitled ‘The World Concept of Philosophy’ in honour of the 300th anniversary of the birth of the philosopher and thinker Immanuel Kant. The event brought together about 500 scientists and experts from 23 countries. HSE Rector Nikita Anisimov took part in the opening plenary session of the congress titled ‘Critique of Artificial Intelligence: Being and Cognition in the Context of Artificial Intelligence Development.’

HSE University to Reward Students Who Write Their Thesis Using AI

HSE University has launched a competition for solutions using artificial intelligence technology in theses work. The goal of the competition is to evaluate how students use tools based on generative models in their 2024 graduation theses (GT).

Production of the Future: AI Research Centre Presents Its Developments in Manual Operations Control Systems

Researchers from the HSE AI Research Centre have built a system for the automated control of manual operations, which finds application in industrial production. The system facilitates the process of monitoring objects and actions, as well as controlling the quality of their execution.

HSE and Yandex to Expand Collaboration in Training AI Specialists

Over the next ten years, the partnership between Yandex and the HSE Faculty of Computer Science (FCS) will broaden across three key areas: launching new educational programmes, advancing AI research, and exploring the application of generative neural networks in the educational process. Established by HSE University and Yandex a decade ago, the Faculty of Computer Science has since emerged as a frontrunner in training developers and experts in AI and machine learning, with a total of 3,385 graduates from the faculty over this period.

‘The Goal of the Spring into ML School Is to Unite Young Scientists Engaged in Mathematics of AI’

The AI and Digital Science Institute at the HSE Faculty of Computer Science and Innopolis University organised a week-long programme for students, doctoral students, and young scientists on the application of mathematics in machine learning and artificial intelligence. Fifty participants of Spring into ML attended 24 lectures on machine learning, took part in specific pitch sessions, and completed two mini-courses on diffusion models—a developing area of AI for data generation.

Researchers ‘Personalise’ the Selection of a Neural Network for Face Recognition on Smartphones

Researchers from HSE University in Nizhny Novgorod, MISIS and the Artificial Intelligence Research Institute (AIRI) have developed an algorithm that selects the best available neural network for facial recognition, taking into account the features of a mobile device. This new approach accelerates the selection of the most suitable neural network and allows the identification of people with an accuracy rate of up to 99%. The study was published in the IEEE Access journal. The source code is available on GitHub.

‘Bots Are Simply Imitators, not Artists’: How to Distinguish Artificial Intellect from a Real Author

Today, text bots like ChatGPT are doing many tasks that were originally human work. In our place, they can rewrite ‘War and Peace’ in a Shakespearean style, write a thesis on Ancient Mesopotamia, or create a Valentine’s Day card. But is there any way to identify an AI-generated text and distinguish it from works done by a human being? Can we catch out a robot? The Deputy Head of the HSE School of Data Analysis and Artificial Intelligence, Professor of the HSE Faculty of Computer Science Vasilii Gromov explained the answer in his lecture ‘Catch out a Bot, or the Large-Scale Structure of Natural Intelligence’ for Znanie intellectual society.