Skip to main content

Next Steps Towards Strong Artificial Intelligence

What is Intelligence? Pathways to Synthetic Intelligence

If you follow current AI Research then it will be apparent to you that AI research, the deep learning type has stalled! This does not mean that new areas of application for existing techniques are not appearing but that the fundamentals have been solved and things have become pretty standardized.

So what is the way forward? Deeplearning and other machine learning methods will continually be applied in many areas and in new ways. Many researchers will come out with new tricks and hacks to squeeze out more performance from existing systems but the state of the art of deeplearning systems will not continue to bring out fantastic results like they once did and they will not lead us to the dream of strong AI (The kind of AI you see in movies).

We will see a lot of Human Centered AI applications in various domains but that is all we can hope for. All the advancement current AI techniques have brought us are good and well but they are far from that kind of intelligence that we humans can call a Strong AI. Voice assistants like those from Google, Amazon and Microsoft are all very cool products and have a lot of masterly software engineering behind them. But the thing is, they are based on stretching the capabilities of the current paradigm to the maximum and in order to make progress we need a new paradigm where we can start doing very complex stuff with as little plumbing and "engineering" as usual.

The AI community possesses some of the smartest people on earth and of course, they are not resting on the laurels of the achievements of deep learning. They are actively seeking new means and methods to help us go above the plateau of deep learning that we are currently stuck in.

This can be observed from the recent interest in the works of Alan Turing and most especially is B-Type neural networks published in 1948. This "openness" to new techniques indicates the trend that AI researchers are beginning to look elsewhere for the next thing that will take us out of the well standardized current paradigm of deeplearning.

To go on talking about what the next step towards Strong Artificial Intelligence should be would take an entire book and that is why I decided to do that with my new book: What is Intelligence? Pathways to Synthetic Intelligence. In this book, I open the mind of the researcher to the most promising directions AI research can take towards creating a future where we have a Strong Artificial Intelligence that will take up most of our intellectual burden the same way deep learning, modern computing and even the humble calculator has done in the past.

Yes! Networks are the way forward forever because networks, anything that can be modelled as nodes and edges are fundamental to the very nature of the universe. I push forward the idea that the success of deep learning, a techniques based on exploiting the structure of a network by modifying weighted connections, is only the first step on the pathway to discovery and that we will avail ourselves of much good if we research generalized network structures of all kinds until we discover systems that could replace our current paradigms.

Stephen Wolfram in his book A New Kind of Science explores the idea of Space as a Network which is very interesting because if one looks closely everything that sends information from one point to another can be modelled as a network.

The main purpose of my book: What is Intelligence? Pathways to Synthetic Intelligence is to announce to the research community and everyone interested that we should look at Networks in a more explicit manner than we have done. Thanks to the name "Neural Networks", at least we always have it at the back of our mind when we are doing deep learning that we are really dealing with a network. 

Without the title of Neural Networks, we would be lost in all the technicalities of matrix multiplication which is the representation that deep learning systems take on when running on some practical computer. If you were to be handed a deep learning system, it would be hard for you to know that you are dealing with a system that is modelled as a network with weighted connections, just like you see in the neural network diagrams. You will be so focused on the concrete implementation as matrix multiplication such that the abstract representation of the system as a network will elude you. 

If you look from above you could clearly see that almost any system can be modelled as a network: from systems of equations to blood flow in the circulatory system to hormone signalling, etc. But when you are in the mud of dealing with the practicalities of a system you would usually use models that are as close to the representation of the problem as possible rather than think in its most abstract representation as a network. 

My core argument in the book is that if you are able to find a suitable network representation for some system, then solving problems in that domain will be a matter of manipulating the structure of that network from a problem state to a solution state. This is a very abstract description of what is actually going on with our intelligence and that is why the brain is a very explicit network. I try my best to bring to light most of these ideas and the observant reader will be able to see a clear and deep picture of the whole scheme by the end of the book

We are on the right path with all the progress in deep learning, but like many have said, we have been trudging blindly towards our destination. With this book, I hope to clear our eyes and show us what exactly we have been doing and with this clarity comes more speed.

There is always the looming issue of AI ethics and while I am not an expert on this, there are many people working towards assuring humanity of a healthy outcome. Many advocate that we should slow AI progress but I do not agree with this view. AI progress is already slow because current techniques consume a lot of resources to produce their results. Slowing down AI research because we want to be more prepared for the arrival of Strong AI is akin to slowing down electric car development because we want to be prepared for the economic consequences of a world where the demand for oil is less, ignoring the fact that internal combustion is tearing our planet apart.

Rather AI ethics people should accelerate their own activities because if the ideas in a book like mine and other similar ideas should be adopted the progress of AI development will start another exponential race to the top. 

Current AI ethics work is mostly centred on malicious use of AI technologies by humans on other humans but the future of AI ethics will be more like trying to control nuclear proliferation. Malicious? yes, but far more potent than today's deepfakes. 

If one observes the outflow of AI papers it has become mostly one hackery after another, it is clear that the forward direction is not very clear anymore like it was in the very early days where deeplearning started besting humans in image recognition. But we should not despair, the next wave is just around the corner if we are able to look ahead rather than get stuck meddling with techniques that are only examples of much greater things to come. 

Comments

  1. You have shared a nice article here about the Artificial Intelligence. Your article is very informative and useful to know more about the artificial intelligence and machine learning. Thanks for sharing this article here.

    ReplyDelete



  2. Really useful information.

    Artificial Intelligence Training in Mumbai

    Thank You Very Much For Sharing These Nice Tips.

    ReplyDelete
  3. It is one such field which has applications in almost all the fields, right from social media to healthcare and to product sales. Most of the companies are hiring data scientists to analyze and predict their sales machine learning and artificial intelligence courses in hyderabad

    ReplyDelete
  4. the students are awarded with a certificate which will qualify them as data scientists and help them seek jobs in desired companies. After getting an appropriate data science training, students can get lucrative job profiles like big data engineer, program or project manager. artificial intelligence certification

    ReplyDelete
  5. Hi
    Such an amazing article.
    It's very interesting to read more about how AI can be used in the industry.
    You would love to see my advanced python Programming online classes in Pune site as well.
    Thanks once again.

    ReplyDelete
  6. Thanks for Sharing This Article.It is very so much valuable content. I hope these Commenting lists will help to my website
    data science courses in noida

    ReplyDelete
  7. It is Such a good article
    Keep Motivating us on giving these nice articles... Wolfram Mathematica

    ReplyDelete
  8. It is Such a good article
    Keep Motivating us on giving these nice articles... Wolfram Mathematica

    ReplyDelete
  9. This is really very nice post you shared, i like the post, thanks for sharing..
    full stack developer course with placement

    ReplyDelete
  10. Excellent effort to make this blog more wonderful and attractive.
    data analytics courses aurangabad

    ReplyDelete
  11. This comment has been removed by the author.

    ReplyDelete
  12. Data Science is emerging as a top job domain in the IT industry. If you are looking forward to starting your career in Data Science, then 360DigiTMG is your go-to place with the best placement success for Data Science Certification Training.

    Business Analytics Course in Jodhpur

    ReplyDelete
  13. Logistic regression is used to predict a data value based on previous observations of a data set. It is a vital tool in the ML. It allows an algorithm to be used in an ML application to classify new data based on historical data. It gets better at classification with new data incoming. Logistic regression plays an active role in data preparation activities.

    Best Data Science Training institute in Bangalore

    ReplyDelete
  14. A very delightful article that you have shared here. Your blog is a valuable and engaging article for us, and also I will share it with my companions who need this info, Identity Theft Protection Software Thankful to you for sharing an article like this.

    ReplyDelete
  15. Going to graduate school was a positive decision for me. I enjoyed the coursework, the presentations, the fellow students, and the professors.
    And since my company reimbursed 100% of the tuition, the only cost that I had to pay on my own was for books and supplies.
    Otherwise, I received a free master’s degree. All that I had to invest was my time.
    data analytics course in hyderabad

    ReplyDelete
  16. Pakistan Independence Day Quotes With Name and Photo. Write your name on Pakistan independence day wishes and wish your friends with some creativity Happy Independence Day Pakistan Wishes SMS In English

    ReplyDelete
  17. Your work is very good and I appreciate you and hopping for some more informative posts
    full stack developer course with placement

    ReplyDelete

Post a Comment

Popular posts from this blog

What is Intelligence: Software writing Software

Sometimes I wonder why programmers are hell-bent on writing programs that can communicate in natural language and not even putting adequate effort into writing programs that write other programs. Maybe is because of the natural tendency to protect one's source of livelihood by not attempting to automate it away or maybe because writing programs is hard enough such that contemplating of writing some program that writes programs might be even harder.

Virtual Reality is the next platform

VR Headset. Source: theverge.com It's been a while now since we started trying to develop Virtual Reality systems but so far we have not witnessed the explosion of use that inspired the development of such systems. Although there are always going to be some diehard fans of Virtual Reality who will stick to improving the medium and trying out stuff with the hopes of building a killer app, for the rest of us Virtual Reality still seems like a medium that promises to arrive soon but never really hits the spot.