Project Title: Select Machine Learning Framework for Analyzing Data in order to Optimize HVAC Systems

Eco-Enterprise, Inc.

Details
Project Title Select Machine Learning Framework for Analyzing Data in order to Optimize HVAC Systems
Project Topics Data Management Research & Development Software Design & Development
Skills & Expertise
Project Synopsis: Challenge/Opportunity
Interns will have an opportunity to work on adding ML capabilities to our Industrial Internet of Things (IIOT) platform, and related toolsets and technology related to HVAC systems. Throughout the project, students will work with faculty mentors and Eco-Enterprise leadership to analyze data and further exploration of data analysis techniques for use in a machine learning application. Students will be responsible for getting up-to-speed on outcomes derived from the previous project completed over the summer. Next, students will be responsible for reviewing and cleaning data to better understand what is feasible to use within a machine learning framework. Lastly, students will be working on researching machine learning techniques that can apply to the data set in order to accomplish outcomes that align with the project goal. The ultimate goal is to help Eco-Enterprise develop machine learning technology that can optimize efficiency within HVAC systems, which are expensive and resource intensive to run.
Project Synopsis: Activities/Actions Required
Project Synopsis: Expected Results

Project Timeline

Touchpoints & Assignments Date Type

Program Kickoff

Sep 14 2021 Event

Official Project End

Jun 05 2022

Milestone #3 Deliverable Upload

Jun 05 2022 Submission Required

Temp Check #3 Due

Evaluation

Peer Evaluation Due

Evaluation

REMINDER OF CONFIDENTIALITY

Kickoff Meeting with Eco-Enterprise Leadership

Temp Check #1 Due

Evaluation

Milestone #1 Deliverable Upload

Submission Required

Milestone #2 Deliverable Upload

Submission Required

Self Evaluation Due

Evaluation

Kickoff Evaluation Due

Evaluation

Temp Check #2 Due

Evaluation

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