Iris.ai Closer to Creating the World's First AI Science Assistant

Iris.ai, the artificial intelligence tool which helps researchers find relevant scientific papers and journals, today announced the launch of version 4.0. The launch adds the Focus tool, an intelligent mechanism to refine and collate a reading list of research literature cutting out a huge amount of manual effort.

In 2016, over 2.2 million science and engineering articles were published(1), 46% more than a decade earlier. However, the cumulative mass of information means that most of it will never be cited by future research and put to use. With Artificial Intelligence there is no limit to the volume of knowledge that can be consumed and no bias in how it processes information.

Iris.ai uses a neural network algorithm to understand context and document similarity. It semi-automates the arduous process of finding relevant scientific literature, a painstakingly manual process that is prone to error.

The previous generation of Iris.ai generated a research map, a visual representation of research literature tailored to a user’s area of interest that could be interactively explored before having to read any papers.

Iris.ai 4.0 adds to this by allowing the creation of intelligent filters to include or exclude topics of interest, retraining the algorithm as it goes. This significantly reduces the average time it takes for professional researchers to compile a full report of relevant papers to support their work. By doing the task completely manually it takes around three weeks to find, analyze and report on relevant research. Iris.ai reduces this to two days and increases the confidence level of results by 15%.

Anita Schjøll Brede, CEO of Iris.ai said: "We live in a world where more scientific research is publicly available to us than ever before and millions of new research papers are published every year. The world of academia has never been as productive as it is today.

"The problem with having such a huge volume of research is that most of it never gets used. It's estimated that half of research papers aren’t read by more than a handful of people(2) and as many as 90% of papers published are never cited.(3)

"With Iris.ai, we are using Artificial Intelligence to develop a machine that can read and digest all this knowledge. With such a machine, we can accelerate the progression of knowledge, advance humankind and solve a lot of problems by facilitating better dissemination of research.

"Our vision is to help the world's scientists and engineers work closer together and use each other’s research more efficiently. Today's 4.0 update is a significant step towards this vision, and will help scientists deal with information overload."

Iris.ai has the ultimate goal of creating an Artificial Intelligence-powered science assistant that will be able to autonomously search and extract useful knowledge, it will learn to ignore poor quality research as well as build new knowledge from its findings. The next step towards this goal will be to build Aiur, a community-governed Knowledge Validation Engine.

For further information, and to test out Iris for free, please visit:
https://the.iris.ai

About Iris.ai

Iris.ai, founded 2015, is an Artificial Intelligence tool which helps researchers in industry and academia to find the scientific knowledge they need. Sifting through scientific papers is difficult, often requiring researchers in university or corporate R&D labs to find what amounts to a needle in a haystack. Relevant data could be buried somewhere in millions of published articles, with thousands more publishing every day. Iris.ai semi-automates the process by using AI to help find those needles.

Since the launch of Iris.ai, 230,000 people have tried the service, with 8% becoming regular users. Studies show that Iris.ai significantly cuts the resources required to carry out scientific research compared to using traditional search tools. The more complex the task, the more time it saves. That's why Iris.ai has a growing number of universities, corporations, and research institutions adopting it.

In 2017, Iris.ai was selected as one of the world's ten "Most Innovative Companies" in AI by Fast Company, and in 2016, participated in TechCrunch's Disrupt as one of the 13 most promising early-stage companies from more than 600 applicants around the world. The company also featured in the $5M IBM Watson AI XPRIZE, advancing to the next stage of the competition, and has been featured in Science Magazine as one of the leading companies worldwide for the AI exploration of scientific literature.

1. https://www.nsf.gov/statistics/2018/nsb20181/assets/968/tables/tt05-22.pdf
2. https://www.smithsonianmag.com/smart-news/half-academic-studies-are-never-read-more-three-people-180950222/
3. https://pdfs.semanticscholar.org/58a7/c926fe0567e4284ccc37c2442b3367072ae0.pdf

Most Popular Now

Do Fitness Apps do More Harm than Good?

A study published in the British Journal of Health Psychology reveals the negative behavioral and psychological consequences of commercial fitness apps reported by users on social media. These impacts may...

AI Tool Beats Humans at Detecting Parasi…

Scientists at ARUP Laboratories have developed an artificial intelligence (AI) tool that detects intestinal parasites in stool samples more quickly and accurately than traditional methods, potentially transforming how labs diagnose...

Making Cancer Vaccines More Personal

In a new study, University of Arizona researchers created a model for cutaneous squamous cell carcinoma, a type of skin cancer, and identified two mutated tumor proteins, or neoantigens, that...

AI can Better Predict Future Risk for He…

A landmark study led by University' experts has shown that artificial intelligence can better predict how doctors should treat patients following a heart attack. The study, conducted by an international...

A New AI Model Improves the Prediction o…

Breast cancer is the most commonly diagnosed form of cancer in the world among women, with more than 2.3 million cases a year, and continues to be one of the...

AI System Finds Crucial Clues for Diagno…

Doctors often must make critical decisions in minutes, relying on incomplete information. While electronic health records contain vast amounts of patient data, much of it remains difficult to interpret quickly...

New AI Tool Makes Medical Imaging Proces…

When doctors analyze a medical scan of an organ or area in the body, each part of the image has to be assigned an anatomical label. If the brain is...