People

L. Burak Kara is a professor in the Department of Mechanical Engineering, with a courtesy appointment in the Robotics Institute. His research develops new computational analysis, design, and manufacturing technologies with wide-ranging applications in the space of mechanical CAD, topology optimization, additive manufacturing, electronics design, and bio-engineering. To this end, his research combines principles of machine learning, optimization, and geometric modeling to develop new knowledge and computational software for use in next-generation design systems.

Some of his recent projects show how machine learning can aid in many of the conventionally tedious and expensive design steps. Examples include deep learned physics to replace expensive structural simulations, learning from past designs to automatically generate novel products, robust sampling to reduce the cost in combinatorial design optimization scenarios, the use of deep reinforcement learning for electronic chip design, and crowdsourcing to learn semantic maps between human preferred language and 3D computer models.

Kara is the recipient of National Science Foundation Career award and American Society of Mechanical Engineers Design Automation Society Young Investigator Award. At CMU, he teaches courses in AI and Machine learning, Engineering Design, and Linear Algebra and Vector Calculus. He earned his B.S. in Mechanical Engineering from the Middle East Technical University (1998), and his Ph.D. in Mechanical Engineering from Carnegie Mellon University (2005).

Office
343 Scaife Hall
Phone
412.268.2509
Email
lkara@cmu.edu
Google Scholar
Levent Burak Kara
Websites
Visual Design and Engineering Laboratory website

Generating 3-D Models Using Simple Interaction Techniques

Faculty Insights

Education

2004 Ph.D., Mechanical Engineering, Carnegie Mellon University

2000 MS, Mechanical Engineering, Carnegie Mellon University

1998 BS, Mechanical Engineering, Middle East Technical University

Media mentions


Mechanical Engineering

Deep learning alternative to monitoring LPBF

Novel deep learning pipeline provides a low-cost, scalable alternative for manufacturers looking to monitor LPBF melt pools.

Three new professorships in Mechanical Engineering

Three new professorships were announced in the Department of Mechanical Engineering.

CMU Engineering

Automating consistent product design

Researchers develop AI-driven method to automate the discovery of brand related features in product design.

CMU College of Engineering

2023 Engineering Faculty Awards announced

The 2023 Engineering Faculty Awards highlight faculty members who have shown outstanding educational, research, and service efforts. Congratulations to all of this year’s awardees!

MechE professors recognized as Impact Scholars

MechE’s Burak Kara and Conrad Tucker have been recognized as Impact Scholars and awarded $10,000 as part of Google’s AI for Social Good program. Their proposal aims to use machine learning and artificial intelligence to improve screening for oral cancers.

CMU Engineering

CMU and CCDC ARL announce new cooperative agreement

Carnegie Mellon University (CMU) and the U.S. Army Combat Capabilities Development Command’s Army Research Laboratory (ARL) have entered into a $3.5 million cooperative agreement that supports machine learning-enabled additive manufacturing.

Mechanical Engineering

There’s no stopping MechE

When life throws lemons to mechanical engineers, they make lemonade... and dynamic systems, geometric models, and thermal fluids experiments. There's no stopping mechanical engineers. See what we're planning for the fall semester.

CMU Engineering

Air Force partnership to fuse AI and materials research

CMU and Air Force Research Laboratory establish 5-year, $7.5M Center of Excellence in data-driven materials research.

Mechanical Engineering

Polymers, printing, and pathways

A novel approach to 3D printing using a support bath can greatly expand the types of polymers that can be printed, enable chemical reactions of the printed materials to gain novel material properties, and increase the mechanical strength and reduce the print time of mechanical parts through design optimization.

Mechanical Engineering

Smarter electronics design through machine learning

Burak Kara is collaborating with Cadence Design Systems, Inc. and NVIDIA on applying advanced machine learning techniques to develop integrated and intelligent design system flows.

Design Automation Conference

Kara speaks on DAC panel, collaborates with Cadence

MechE’s Burak Kara was a panelist at the Design Automation Conference earlier this month, discussing how innovations in machine learning, deep learning, and artificial intelligence impact electronic design automation (EDA). The panel was sponsored by Cadence Design Systems, a company Kara is collaborating with on a new project to automate the design process of electronic circuits and chips.

CMU Engineering

Lightening the load

Kate Whitefoot and Burak Kara are developing methods allowing manufacturers to redesign multiple parts into one continuous part using 3-D printing.