SBIR-STTR Award

Actionable Learning Analytics for the Classroom
Award last edited on: 1/16/2022

Sponsored Program
SBIR
Awarding Agency
NSF
Total Award Amount
$1,169,859
Award Phase
2
Solicitation Topic Code
EA
Principal Investigator
Douglas Lare

Company Information

Learnics LLC

3720 Southwood Drive
Easton, PA 18045
   (484) 550-2662
   N/A
   www.learnics.com
Location: Single
Congr. District: 07
County: Northampton

Phase I

Contract Number: 1913555
Start Date: 7/1/2019    Completed: 6/30/2020
Phase I year
2019
Phase I Amount
$224,700
This SBIR Phase I project is funding research that will lead to the development of software and processes that are aimed at helping teachers to improve their instruction by providing them with actionable analytics about how their students are learning. Using targeted learning analytics, this project will bring to individual teachers in the classroom useful information about how their students are learning on the web. Rather on focusing on large-scale, state- or nationwide- analytics as is currently common in the research, the focus of this high-risk research is to develop analytics about individual students for use by individual teachers in the classroom. Armed with these analytics, teachers will be able to better understand the strengths and limitations of their individual students, especially as compared to their classroom. The project will create software and algorithms that will exploit the strengths of both teachers and computers by allowing teachers to focus on students, while computers to focus on information and analytics. The result: better, more useful information for teachers to help their students achieve their full potential. This research will help to fill a void that exists in the way teacher receive formative information about their students? online activity. Teachers are often blind to the actual online learning experience that is taking place, leading to missed educational opportunities and suboptimal education. This project will bridge this gap and create instructional methods and online activities that finally realize the promise offered by technology. This SBIR Phase I project is funding high-risk research that will lead to the development of software and algorithms that help teachers improve their instruction by providing them with actionable analytics about how their students are learning. Through the use of targeted online learning analytics, this project will bring to individual teachers in the classroom useful information about how their individual students are learning. Current research focuses on large-scale, state- or nationwide- analytics, which comes years too late and is too broad to be usable by individual teachers to help students. The focus of this high-risk research is to develop analytics about individual students for use by individual teachers in the classroom in real-time, and monitor progress of these analytics throughout the school year. Armed with these analytics, teachers will be able to better understand the strengths and limitations of their individual students, especially as compared to their classroom. Using machine learning and NLP, these new algorithms and processes will be able to better ascertain learning analytics such as student engagement, digital literacy, and off-task behavior, to list a few. The result: automatic, actionable analytics for teachers to assist students in achieving their full potential. This high-risk research will help to fill a void that exists in the ways teachers receive formative information about their students' online activity. Teachers are often blind to the actual online learning experience that is taking place. This project will bridge this gap and create instructional methods, online activities, and curriculum that finally realize the promise offered by technology. This award reflects NSF's statutory mission and has been deemed worthy of support through evaluation using the Foundation's intellectual merit and broader impacts review criteria.

Phase II

Contract Number: 2054629
Start Date: 9/1/2021    Completed: 8/31/2023
Phase II year
2021
Phase II Amount
$945,159
The broader impact/commercial potential of this Small Business Innovation Research (SBIR) Phase II project is the development of practical methods of collecting, analyzing and utilizing student online learning activity data to improve teaching and learning. COVID-19 caused an accelerated adoption of educational technologies. The new normal of education may be much more infused with technology. This project provides the analytic tools for educators to get the data insights necessary to design effective digital learning experiences and fully support students. Data analytics provide immense value to many online commercial organizations and businesses. These commercial analytics are used to better understand customers, promote desired customer behavior, predict future interactions and support many organizational decisions. This project seeks to make these insights available to educators and students. There are over three million teachers in the United States who currently have no practical way of reaping the value of analytics to gain insight into the online experiences that they are designing for their own students. The objective of this project is to provide teachers with the analytics and insights necessary to hold students accountable, provide instructional support, and design effective digital lessons. This Small Business Innovation Research (SBIR) Phase II project will explore ways to create automated processes that extract key data from student online learning activity records. In turn, the project seeks to translate this data into useful analytics that will offer teachers insights into students’ online learning experience. This project may improve the collection and display of targeted online learning analytics that provide educators with critical information about how students interact with online content. These advances will be coupled with doctoral research studies at East Stroudsburg University to collect and analyze student online learning data in order to create automated “Key Learning Indicators” and “Learning Experience Scores.” This project will work toward creating an industry standard for how student online learning data should be ethically collected, analyzed, and presented to educators. This award reflects NSF's statutory mission and has been deemed worthy of support through evaluation using the Foundation's intellectual merit and broader impacts review criteria.