Daily Archives: June 16, 2020
Andrew Ng: Enterprise AI Strategy (with Landing AI) — CxO Talk
A comprehensive guide to the state-of-art in how AI is transforming the visual effects (VFX) industry
New machine learning techniques being pioneered at the major visual effects studios promise to transform the visual effects industry in a way not seen since the CGI revolution.
It’s over twenty five years since the ground-breaking CGI effects of Jurassic Park usurped 100 years of visual effects tradition. When Steven Spielberg showed the first rushes of computer-generated dinosaurs to acclaimed traditional stop-motion animator Phil Tippett (who had been hired to create the dinosaurs in the same way they had been done since the 1920s) he announced “I think I’m extinct.” It’s a line so significant that it made it into the movie itself, in reference to a paleontologist envisaging a world where no-one would need him to theorize about dinosaurs any longer. Read More
Extracting Structured Data from Templatic Documents
Templatic documents, such as receipts, bills, insurance quotes, and others, are extremely common and critical in a diverse range of business workflows. Currently, processing these documents is largely a manual effort, and automated systems that do exist are based on brittle and error-prone heuristics. Consider a document type like invoices, which can be laid out in thousands of different ways — invoices from different companies, or even different departments within the same company, may have slightly different formatting. However, there is a common understanding of the structured information that an invoice should contain, such as an invoice number, an invoice date, the amount due, the pay-by date, and the list of items for which the invoice was sent. A system that can automatically extract all this data has the potential to dramatically improve the efficiency of many business workflows by avoiding error-prone, manual work.
In “Representation Learning for Information Extraction from Form-like Documents”, accepted to ACL 2020, we present an approach to automatically extract structured data from templatic documents. In contrast to previous work on extraction from plain-text documents, we propose an approach that uses knowledge of target field types to identify candidate fields. These are then scored using a neural network that learns a dense representation of each candidate using the words in its neighborhood. Experiments on two corpora (invoices and receipts) show that we’re able to generalize well to unseen layouts. Read More
Local Motion Phases for Learning Multi-Contact Character Movements
A Comprehensive Beginner’s Guide To Machine Learning As A Service
Machine learning as a service (MLaaS) refers to a number of services that offer machine learning tools as a part of cloud computing services. The main benefit of this solution is that customers can get started with machine learning applications quickly without installing specific software or provisioning their own servers. All the actual computations are handled by the provider’s own data centers.
MLaaS providers offer services for data transformation, predictive analytics, data visualization, and advanced machine learning algorithms. Currently, the major MLaaS platforms suggest ready-made solutions for the majority of popular machine learning applications, including recommender systems, forecasting, image and video analysis, advanced text analytics, machine translation, automated transcription, speech generation, and conversational agents. Read More
Apple is building an operating system for health
When people think about Apple and health, the first thing that comes to mind is the Watch.
But the real lynchpin of Apple’s health strategy is the OS it is building for Health.
Specifically, they’re building a system to aggregate data from modern connected devices (like watches, scales, fitness equipment, mattresses, etc) and integrate it with traditional health records (lab results, conditions, medications, procedures) in order to unlock a new, comprehensive view of your body’s health. Read More
18 Handy Resources for Machine Learning Practitioners
Machine Learning is a diverse field covering a wide territory and has impacted many verticals. It is able to tackle tasks in language and image processing, anomaly detection, credit scoring sentiment analysis, forecasting alongside dozens of other downstream tasks. A proficient developer, in this line of work; has to be able to draw, borrow, and steal from many adjacent fields such as mathematics, statistics, programming, and most importantly common sense. I for one have drawn tremendous benefits from myriad of tools available to break down complex tasks into smaller more manageable components. It turns out that developing and training a model only takes a small fraction of the project duration. The bulk of the time and resources are spent on data acquisition, preparation, hyperparameter tuning, optimization, and model deployment. I have been successful in building a systematic knowledge base that has helped my team to tackle some common yet tough challenges. Read More
Democratizing artificial intelligence is a double-edged sword
When company leaders talk about democratizing artificial intelligence (AI), it’s easy to imagine what they have in mind. The more people with access to the raw materials of the knowledge, tools, and data required to build an AI system, the more innovations are bound to emerge. Efficiency improves and engagement increases. Faced with a shortage of technical talent? Microsoft, Amazon, and Google have all released premade drag-and-drop or no-code AI tools that allow people to integrate AI into applications without needing to know how to build machine learning (ML) models. Read More