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Tarsier Ltd. (TAER )- formerly Huayue Electronics, Inc., is a publicly traded Delaware Corporation with headquarters in New York City. Tarsier`s mission is to provide "focused solutions for a brighter planet" in the form of energy, Energy Savings, Smart City and Big Data management technologies. Tarsier is currently in the process of acquiring the assets of a number of companies in the energy sector. Once completed, these acquisitions will give Tarsier access to millions of commercial and residential energy customers that are currently purchasing electric and/or natural gas from various other energy re-sellers and utilities.
Volterra is a startup focused on Edge Computing and funded by leading venture firms - Mayfield and Khosla Ventures.
Government Acquisitions is a Cincinnati, OH-based company in the Computers and Electronics sector.
DELTA G TECHNOLOGIES, INC is a Idaho Falls, ID-based company in the Computers & Electronics sector.
Lattice is a data intelligence company transforming “Dark Data”, such as unstructured text, into high quality structured data for use by traditional data analysis tools. Lattice was founded by Chris Re (Stanford, MacArthur Genius Award winner) and Mike Cafarella (co-creator of Hadoop). Lattice is commercializing DeepDive, which was developed at Stanford by our founder Chris Re for over 6 years with $20M in funding from DARPA and others. Our product has already been successfully deployed in the fight against human trafficking (as featured on CBS News 60 Minutes) as part of the DARPA/Memex project. Our platform reads unstructured media and converts it into structured data that can be used by traditional data analysis tools. We use advanced machine learning techniques, coupled with a rigorous engineering approach, to outperform human readers in many fields including scientific, insurance and government applications. We’re hiring! Please check out our engineering jobs at https://jobs.lever.co/lattice to learn more. We are looking for people excited to learn more about machine learning, be part of the initial team in a startup environment and wanting to work hard to solve really interesting and important real world problems.