Open in app

Sign In

Write

Sign In

Mercury Data Science
Mercury Data Science

9 Followers

Home

About

Published in Mercury Data Science

·Oct 21, 2022

Extract Intelligence from the Biomedical Black Hole to Accelerate Discovery

Trying to extract usable insights from the world’s biomedical knowledge can be like trying to escape from a black hole — how can we unlock the potential? Authored by: Sam Regenbogen OVERVIEW Integrating public and proprietary data into a Knowledge Graph — including knowledge extracted from research texts with Natural Language…

Data Science

4 min read

Extract Intelligence from the Biomedical Black Hole to Accelerate Discovery
Extract Intelligence from the Biomedical Black Hole to Accelerate Discovery
Data Science

4 min read


Published in Mercury Data Science

·Aug 5, 2022

Natural Language Processing in Life Sciences and Healthcare: Create more predictive ML models

Many organizations have valuable unstructured data that they fail to utilize effectively. Using NLP, hidden meaning can be extracted from fragments of text to provide order to your data, uncover relationships in the data that were previously hidden, and create more predictive ML models. Leveraging text based data within machine…

Life Sciences

5 min read

Natural Language Processing in Life Sciences and Healthcare: Create more predictive ML models
Natural Language Processing in Life Sciences and Healthcare: Create more predictive ML models
Life Sciences

5 min read


Published in Mercury Data Science

·Apr 25, 2022

The Case for Video AI in Telemedicine

Read our top three use cases on the integration of AI video analytics to significantly raise the value of both Telemedicine-based care and Distributed Clinical Trials. Authored by: Dan Park & Michael Bell Telehealth is quickly becoming a critical channel for doctor-patient interactions. In less than two years, utilization of…

5 min read

The Case for Video AI in Telemedicine
The Case for Video AI in Telemedicine

5 min read


Published in Mercury Data Science

·Feb 10, 2022

Designing Novel Proteins with Deep Hallucination

Newly published research provides a valuable method that may be useful for designing unique, functional proteins for therapeutic and diagnostic applications. Author: Jayvee Abella The Baker Lab at the University of Washington recently published a very interesting approach for finding novel proteins using an iterative, inverted technique (sometimes called hallucination)…

Protein Folding

4 min read

Designing Novel Proteins with Deep Hallucination
Designing Novel Proteins with Deep Hallucination
Protein Folding

4 min read


Published in Mercury Data Science

·Feb 8, 2022

AI/ML for Health Tech and Medical Devices: Invest Early in Data Science Infrastructure to Create Competitive Advantage

Harnessing the power of AI/ML has the potential to transform health tech and medical device companies by providing better outcomes, better patient and provider satisfaction and engagement, and better insight into product performance and real world evidence. Authored by: Dan Watkins, Michael Bell, and Angela Holmes Increasingly health tech and…

Data Science

5 min read

AI/ML for Health Tech and Medical Devices: Invest Early in Data Science Infrastructure to Create…
AI/ML for Health Tech and Medical Devices: Invest Early in Data Science Infrastructure to Create…
Data Science

5 min read


Published in Mercury Data Science

·Jan 6, 2022

A Better Facial Emotion Recognition Model

Predicting emotion from video is increasingly a part of applications spanning healthcare and the life sciences. Major cloud service providers offer off-the-shelf emotion prediction APIs, but accuracy and interpretability often fail to meet the needs of our clients. Read how our team developed a new approach to predict emotions from…

Video Analytics

6 min read

A Better Facial Emotion Recognition Model
A Better Facial Emotion Recognition Model
Video Analytics

6 min read


Published in Mercury Data Science

·Jul 16, 2021

Eliminating Racial Bias in AI/ML: Solving the Training Data Problem

Learn about the approach and impact of the model we built to predict skin tone from face images and videos using a unique combination of computer vision and machine learning to help organizations monitor for racial biases in large datasets. Written by: Michael Bell, Daniel Chen, Jenna Cicardo, Maya Waterland …

AI

5 min read

Eliminating Racial Bias in AI/ML: Solving the Training Data Problem
Eliminating Racial Bias in AI/ML: Solving the Training Data Problem
AI

5 min read


Published in Mercury Data Science

·Jul 6, 2021

7 Emerging Trends in AI for Life Sciences and Healthcare in 2021

Here is what we see as the most valuable high impact trends in AI/ML for life sciences and healthcare Authors: Angela Holmes & Dan Watkins As a Full Stack AI/ML consultancy, focused on helping life science and healthcare clients develop new AI-based products and tools, we spend a lot of time thinking about new AI/ML applications. …

Data Science

6 min read

7 Emerging Trends in AI for Life Sciences and Healthcare in 2021
7 Emerging Trends in AI for Life Sciences and Healthcare in 2021
Data Science

6 min read


Published in Mercury Data Science

·Jun 10, 2021

The 5 Data Challenges Every Life Sciences and Healthcare Organization Must Solve to Build a Successful Data Science Mission

Authors: Angela Holmes & John Aven Five challenges and solutions critical to the success of Data Science in Healthcare and Life Sciences Data is supremely important in life sciences and healthcare. Multi-omic analyses yield clues to biomarkers of disease and possible drug targets. In the ag biotech world, genome wide association studies (GWAS) provide paths to gene editing targets for more nutritious and sustainable food crops…

6 min read

The 5 Data Challenges Every Life Sciences and Healthcare Organization Must Solve to Build a…
The 5 Data Challenges Every Life Sciences and Healthcare Organization Must Solve to Build a…

6 min read


Published in Mercury Data Science

·Feb 2, 2021

A Working Model is Only the Start of the ML Life Cycle

Why companies need to think ahead about infrastructure for data science Authors: Michael Bell & Dan Watkins After months of hard, careful work exploring data and training models, your data team is finally ready to push their best model to production; you may think the ML project is done but the fact is that deploying an ML model is just the…

Data Science

6 min read

A Working Model is Only the Start of the ML Life Cycle
A Working Model is Only the Start of the ML Life Cycle
Data Science

6 min read

Mercury Data Science

Mercury Data Science

9 Followers

AI to solve the world’s life sciences challenges.

Following
  • Jonathan Gallion

    Jonathan Gallion

  • Michael Bell

    Michael Bell

  • Dan Watkins

    Dan Watkins

  • Julie Mocko

    Julie Mocko

Help

Status

Writers

Blog

Careers

Privacy

Terms

About

Text to speech