AcaRevival Initiative

Experienced academic misconduct or bullying? We're building a real weapon against it.

Read Manifesto →
QL

Qiaohao Liang

Massachusetts Institute of Technology

No ratings yetBe the first to rate
Loading...

About Qiaohao Liang at Massachusetts Institute of Technology (MIT)

Qiaohao Liang is a researcher based at Massachusetts Institute of Technology. They specialize in Machine Learning in Materials Science, Advancements in Battery Materials, and Advanced Battery Technologies Research, with ongoing contributions to these areas. Their research has drawn over 474 citations, marking them as an increasingly recognized voice in their field. A solid H-index of 8 speaks to the quality and reach of their work.

Research Areas

Machine Learning in Materials ScienceAdvancements in Battery MaterialsAdvanced Battery Technologies ResearchSpectroscopy and Chemometric AnalysesSpectroscopy Techniques in Biomedical and Chemical Research

Academic Impact Matrix

Research output metrics for Qiaohao Liang aggregated from public academic databases. Student lab experience data is pending.

Academic data verified · April 2026 · Next sync: May 2026

Research Output

Total Citations474

Emerging researcher

Publications19

Selective publication record

h-index8

Developing track record

i10-index8

Early-stage portfolio

Lab Environment

No lab data yet for Qiaohao Liang

+ Contribute First Review
  • Supervisionawaiting data
  • Responsivenessawaiting data
  • Fundingawaiting data
  • Communicationawaiting data
  • Work-Life Balanceawaiting data

Reviews (0)

No reviews yet for this supervisor.

Be the first to share your experience!

Is your PI driving you crazy?

Featured Article

The Sunday Night Dread: Surviving a Micromanaging PhD Supervisor

Real advice from PhD students on recognizing and navigating difficult supervisor relationships

Your experience matters. After reading the guide, share your review to help other PhD students.

Frequently Asked Questions

Not sure how to interpret mixed signals? A structured decision guide can help you think through high-risk supervision choices more clearly. Download the free guide.