Collaborating Authors

Neural Networks

A guide to the field of Deep Learning


Since the list has gotten rather long, I have included an excerpt above; the full list is at the bottom of this post. At the entry level, the datasets used are small. Often, they easily fit into the main memory. If they don't already come pre-processed then it's only a few lines of code to apply such operations. Mainly you'll do so for the major domains Audio, Image, Time-series, and Text. Before diving into the large field of Deep Learning it's a good choice to study the basic techniques.

DeepMind scientist calls for ethical AI as Google faces ongoing backlash


Where does your enterprise stand on the AI adoption curve? Take our AI survey to find out. Raia Hadsell, a research scientist at Google DeepMind, believes "responsible AI is a job for all." That was her thesis during a talk today at the virtual Lesbians Who Tech Pride Summit, where she dove into the issues currently plaguing the field and the actions she feels are required to ensure AI is ethically developed and deployed. "AI is going to change our world in the years to come. But because it is such a powerful technology, we have to be aware of the inherent risks that will come with those benefits, especially those that can lead to bias, harm, or widening social inequity," she said.



This course will teach you foundations of deep learning and TensorFlow as well as prepare you to pass the TensorFlow Developer Certification exam (optional). Videos going through the rest of the notebooks (03 - 10) are available in the full course. New You can now read the full course as an online book! (note: this is a work in progress, but 95% of it should run fine) Check out the livestream Q&A celebrating the course launch on YouTube. Otherwise, many of them might be answered below. This table is the ground truth for course materials.

Using Conditional Deep Convolutional GANs to generate custom faces from text descriptions


GANs (Generative Adversarial Networks) are a subset of unsupervised learning models that utilize two networks along with adversarial training to output "novel" data which resembles the input data. More specifically, GANs typically involve "a generative model G that captures the data distribution, and a discriminative model D that estimates the probability that a sample came from the training data rather than G [1]." Conditional GANs are a modification of the original GAN model, later proposed by Mehdi Mirza and Simon Osindero in the paper, "Conditional Generative Adversarial Nets" (2014). In a cGAN (conditional GAN), the discriminator is given data/label pairs instead of just data, and the generator is given a label in addition to the noise vector, indicating which class the image should belong to. The addition of labels forces the generator to learn multiple representations of different training data classes, allowing for the ability to explicitly control the output of the generator. When training the model, the label is usually combined with the data sample for both the generator and discriminator.

Face Recognition System using DEEPFACE(With Python Codes)


Recognition of the face as an identity is a critical aspect in today's world. Facial identification and recognition find its use in many real-life contexts, whether your identity card, passport, or any other credential of significant importance. It has become quite a popular tool these days to authenticate the identity of an individual. This technology is also being used in various sectors and industries to prevent ID fraud and identity theft. Your smartphone also has a face recognition feature to unlock it.



This article will dive you into the built-in string methods that are used in various text processing tasks in machine learning projects. String methods help to implement sequence operations with the help of these methods. Let's see all the string methods used in the string class of python. First, assign a string to a variable and that variable will be an instance or object of the string class. In this method, the string is return with a first letter capital.

Unsupervised machine learning application in ACL


De-Sheng Chen,* Tong-Fu Wang,* Jia-Wang Zhu, Bo Zhu, Zeng-Liang Wang, Jian-Gang Cao, Cai-Hong Feng, Jun-Wei Zhao Department of Sports Medicine and Arthroscopy, Tianjin Hospital of Tianjin University, Tianjin, People's Republic of China *These authors contributed equally to this work Correspondence: Jia-Wang Zhu Department of Sports Medicine and Arthroscopy, Tianjin Hospital of Tianjin University, Tianjin, People's Republic of China Email [email protected] Purpose: We aim to present an unsupervised machine learning application in anterior cruciate ligament (ACL) rupture and evaluate whether supervised machine learning-derived radiomics features enable prediction of ACL rupture accurately. Patients and Methods: Sixty-eight patients were reviewed. Their demographic features were recorded, radiomics features were extracted, and the input dataset was defined as a collection of demographic features and radiomics features. The input dataset was automatically classified by the unsupervised machine learning algorithm. Then, we used a supervised machine learning algorithm to construct a radiomics model.

Tesla Launches World's Fifth Most Powerful Computer For AI Training Ahead Of Dojo Project

International Business Times

Tesla just launched the world's fifth most powerful computer responsible for neural network AI training ahead of the anticipated Dojo supercomputer debut. Tesla seemingly does not run out of new features to unveil for its followers. As the public patiently awaits the Dojo supercomputer launch, the company surprisingly unveiled another breakthrough in technology. The company launched the supercomputer to train the neural nets that power the Tesla autopilot. It is also intended for training the upcoming self-driving Artificial Intelligence, Electrek reported.

Why Python is Best for AI, ML, and Deep Learning - RTInsights


The Python programming language has been in the game for so long, and it is here to stay. Artificial intelligence projects are different from traditional software projects. The difference lies in the technology stack, the skills required for AI-based projects, and the need for in-depth research. To implement AI aspirations, you need to use a programming language that is stable, flexible, and has available tools. Python provides all of these, which is why we see many Python AI projects today.