Latest from IBM Developer : Detect environmental dangers using artificial intelligence

Summary In this code pattern, learn how to use IBM® Watson Knowledge Studio to train a custom machine learning model to drive a decision-making process of identifying dangerous situations. Description Want to develop an application or solution that can reduce the response time of first responders? This code pattern explains how to create a danger…

Latest from IBM Developer : Generate a Python notebook for pipeline models using AutoAI

Summary In this code pattern, learn how to use AutoAI to automatically generate a Jupyter Notebook that contains Python code of a machine learning model. Then, explore, modify, and retrain the model pipeline using Python before deploying the model in IBM Watson® Machine Learning using Watson Machine Learning APIs. Description AutoAI is a graphical tool…

Latest from IBM Developer : Build a framework that connects WhatsApp to Watson services

Summary To enable mobile users to leverage IBM Watson® services through a messenger app, complete this developer code pattern and build a framework that can act as an intermediator in connecting Watson services to WhatsApp Messenger. Description There are currently 2.4 billion users on WhatsApp, and the number keeps climbing. For medium and large businesses,…

Latest from IBM Developer : Ingest data from Apache Kafka

Summary In this developer code pattern, we walk you through the basics of creating a streaming application powered by Apache Kafka, one of the most popular open source distributed event-streaming platforms used for creating real-time data pipeline and streaming apps. The application will be built using IBM Streams on IBM Cloud Pak® for Data. Description…

Latest from MIT : An explorer in the sprawling universe of possible chemical combinations

The direct conversion of methane gas to liquid methanol at the site where it is extracted from the Earth holds enormous potential for addressing a number of significant environmental problems. Developing a catalyst for that conversion has been a critical focus for Associate Professor Heather Kulik and the lab she directs at MIT. As important…

UC Berkeley – imodels: leveraging the unreasonable effectiveness of rules

imodels: A python package with cutting-edge techniques for concise, transparent, and accurate predictive modeling. All sklearn-compatible and easy to use. Recent machine-learning advances have led to increasingly complex predictive models, often at the cost of interpretability. We often need interpretability, particularly in high-stakes applications such as medicine, biology, and political science (see here and here…

Latest from Google AI – Can Robots Follow Instructions for New Tasks?

Posted by Chelsea Finn, Research Adviser and Eric Jang, Senior Research Scientist, Robotics at Google People can flexibly maneuver objects in their physical surroundings to accomplish various goals. One of the grand challenges in robotics is to successfully train robots to do the same, i.e., to develop a general-purpose robot capable of performing a multitude…

Latest from MIT Tech Review – Turning AI into your customer experience ally

It’s one thing to know whether an individual customer is intrigued by a new mattress or considering a replacement for their sofa’s throw pillows; it’s another to know to how to move these people to go ahead and make a purchase. When deployed strategically, artificial intelligence (AI) can be a marketer’s trusted customer experience ally—transforming…

Latest from MIT : The downside of machine learning in health care

While working toward her dissertation in computer science at MIT, Marzyeh Ghassemi wrote several papers on how machine-learning techniques from artificial intelligence could be applied to clinical data in order to predict patient outcomes. “It wasn’t until the end of my PhD work that one of my committee members asked: ‘Did you ever check to…