
Founded by Aditya Tewari & Ransika Liyanage
The founders have been working in the manufacturing industry for their entire professional career, and are extremely passionate about being on the cutting edge of manufacturing technology.
Ransika has worked at multiple manufacturing companies like GM, Tesla, and Rockwell Automation. During this time he has worked a variety of foundational manufacturing roles like manufacturing engineer, quality engineer, controls engineer, and production planner. He managed multiple projects building and implementing various digital manufacturing projects globally which resulted in millions of dollars in cost savings per year. For the last two years he has been working at Deloitte as a product lead for Deloitte’s Intelligent Ops platform.
Aditya worked at Palantir for three years, ending his career there as a technical lead. During this time he specialized in converting pilots in the manufacturing vertical with a 100% success rate and a TCV of over $15 million dollars. Aditya has had a passion for ML/AI in manufacturing since early college, first excelling in the space by building a predictive model for General Motors and winning first in a data challenge of over 50 teams of PhD and masters students.
The founders have over 10 years of experience working in the manufacturing industry between the two of them. During that time they have noticed that manufacturing engineers are constantly being pulled in every direction due to production issues popping up in multiple parts of the plant.
This reactive approach results in:
From unplanned downtimes alone, US manufacturers lose over $50 billion dollars per year.
Unfortunately, existing solutions are:
Praxis AI provides manufacturing engineers with an end-to-end solution for identifying and root-causing machine issues by following a 5-step reasoning process. This mimics exactly how an engineer would solve an issue in the real world. The platforms core competencies include:
The Praxis platform provides the tools needed for engineers to make changes on their shop-floor which can lead to reductions in unplanned downtimes, reduced scrap/waste, improvements on the efficiency of their machines, and so much more. They have built the platform in a way that as they continue to work with more customers, Praxis will be able to encompass more and more use cases. They’ve already begun preliminary work on adding production order optimization and maintenance backlog management to our solution suite.