Collaborating Authors

Pinaki Laskar on LinkedIn: #AI #machinelearning #algorithms


AI Researcher, Cognitive Technologist Inventor - AI Thinking, Think Chain Innovator - AIOT, XAI, Autonomous Cars, IIOT Founder Fisheyebox Spatial Computing Savant, Transformative Leader, Industry X.0 Practitioner How can a mathematically-oriented machine truly learn things? Mathematical machines are either formal logical systems, operationalized as symbolic rules-based AI or expert systems, or statistical learning machines, dubbed as narrow/Weak AI, ML, DL, ANNs. Such machines follow blind and mindless mathematical and statistical algorithms, codes, models, programs, and solutions, transforming input data (as independent variables) into the output data (as dependent variables), dubbed as predictions, recommendations, decisions, etc. They are unable to real knowing or learning, as having no interactions with the world, its various domains, rules, laws, objects, events, or processes. Learning is the "acquiring new understanding, knowledge, behaviors, skills, values, attitudes, and preferences" via senses, experience, trial and error, intuition, study and research.

Ethical AI Lapses Happen When No One Is Watching


Transparency often plays a key role in ethical business dilemmas -- the more information we have, the easier it is to determine what are acceptable and unacceptable outcomes. If financials are misaligned, who made an accounting error? If data is breached, who was responsible for securing it and were they acting properly? Click here to view original web page at

Artificial Intelligence (7 weeks)


This course explores the idea of artificial intelligence (A.I.) from three different perspectives: scientific, philosophical, and cultural. The scientific perspective provides insight as to how artificial intelligence technologies work, the current limitations, and supposed future potential. The philosophical perspective explores whether A.I. is good or bad, essential or dangerous, and what the future could hold. The cultural angle examines how society views A.I. and whether these views are accurate. Toward the end of the course deeper topics will be introduced including how A.I. compares to human intelligence, the singularity, and futurism.

Machine Learning in the Hiring Industry


"I just found what I was looking for in the recommendations section. How exactly did they know though?" There is one answer to this simple question: machine learning. Machine learning (ML) and artificial intelligence (AI) is rapidly becoming more utilized in our transition into the future age of technology, from predicting if one has cancer depending on various health factors, to identifying a person's handwriting and translating it into words. As innovative as it seems, there is no clear line drawn in what can be predicted from algorithms and what can not, but there are criteria and conditions to what machine learning models are considered successful.

Artificial Intelligence and Industry 4.0 - (Intelligent Data-Centric Systems) by Aboul Ella Hassanien & Jyotir Moy Chatterjee & Vishal Jain


Estimated ship dimensions: 1 inches length x 7.5 inches width x 9.25 inches height We regret that this item cannot be shipped to PO Boxes. This item cannot be shipped to the following locations: United States Minor Outlying Islands, American Samoa (see also separate entry under AS), Puerto Rico (see also separate entry under PR), Northern Mariana Islands, Virgin Islands, U.S., APO/FPO, Guam (see also separate entry under GU)

Why academic research in AI is a total waste of time


Jeremy Howard, a creator of and an ex-President of Kaggle says that most of the research in the deep learning world is a total waste of time. He explains why it is so and what is currently being under studied i.e. active learning and transfer learning. Active learning and transfer learning are further elaborated in this blog post. When asked a question "what's wrong with Artificial Intelligence?", However, when you literally dig into the question, the industry of AI is fighting its own demons.

RPA is not AI; Combine them for Superpowers


You can take a look at Facebook's AI Research to understand better. Here, the social media giant feeds the AI system with different images and the machine delivers exacts results. When a photo of a dog is shown to the machine, it not only recognised it as a dog but also recognised the breed. RPA is a technology that uses a specific set of rules and an algorithm and based on that it automates a task. While AI is focused more on doing a human-level task, RPA is practically a software that reduces human efforts -- it is about saving the business and white-collar workers' time.

I listen to podcasts while I game because there's only so much time


Some people get used to not having as much free time as they did when they were kids. I am not one of those people. As a working adult with an admittedly compromised social life (thanks, COVID!) and numerous other time-sucking obligations, finding time for both video games and podcasts has become a challenge. I truly, deeply adore both things; gaming is a lifelong passion and podcasts have been making me laugh on a daily basis for 15 years. I had to hear a lot of talk radio as a kid, so podcasts changed everything once I found out that the format could be funny and lively instead of dusty and decrepit.

Associate Machine Learning Engineer


Please note this role is eligible for remote working within Hungary. Black Swan Data is a fast-growing technology and data science business, with offices in the UK, South Africa, Hungary. We build high quality SaaS solutions which automate data science using advanced machine learning and deep learning techniques. We use some of the coolest technology on the planet so you will never get bored of doing the same thing. You'll be part of a dynamic and growing global team As we continue to grow across the world, you'll find every day brings with it fresh challenges and opportunities to try new things.

Northwestern University Researchers Used Machine Learning To Identify Speech Patterns In Children With Autism That Were Consistent Between English And Cantonese


According to observations, children with autism frequently speak more slowly than similarly developing kids. They differ in their speech in other ways, most notably in tone, intonation, and rhythm. It is very challenging to consistently and objectively describe these "prosodic" distinctions, and it has been decades since their roots have been identified. Researchers from Northwestern University and Hong Kong collaborated on a study to shed light on the causes and diagnoses of this illness. This method uses machine learning to find speech patterns in autistic children that are similar in Cantonese and English.