03/01/2020                    
AllRead MLT, a success story originated from the PRUAB’s Ideas Generation Program
        AllRead MLT, a success story originated from the PRUAB’s Ideas Generation Program
                                        The AllRead MLT (AllRead Machine Learning Technologies) project started in 2016 from the Ideas Generation Program carried out by PRUAB, the UAB university research park, and sponsored by the Barcelona Synchrotron Park (BSP). This annual program is based on the collection of local companies’ technological challenges that are submitted to the UAB scientific community: every year, this program aims at offering companies the benefit of the UAB researchers’ wealth of creativity to get proposals for their innovation projects.
 
AllRead MLT is now a spin-off company from the Computer Vision Centre (CVC-UAB) located at the UAB university campus (CVC-UAB). This company is specialized in detecting text in images and digitizing them. Its objective is to bring to the market its own technology, based on deep learning, which speeds up, for example, the identification and monitoring of containers in ports and airports.
 
Jointly to Erudito, AllRead MLT was one of the two finalist start-up companies of the last Bbooster Week held in Valencia on December 2-4. During this investment event organized by Bbooster Ventures to select and invest in start-ups, a € 100,000 convertible loan was awarded to AllRead MLT.
 
The goal of the startup is to close new rounds of funding during 2020 and to go on developing its product already successfully tested during different pilot tests with the Port of Barcelona and other companies from different sectors, such as Suez, Comsa and International Airlines Group.
 
Good luck!
                 
                    
                                
                 
            AllRead MLT is now a spin-off company from the Computer Vision Centre (CVC-UAB) located at the UAB university campus (CVC-UAB). This company is specialized in detecting text in images and digitizing them. Its objective is to bring to the market its own technology, based on deep learning, which speeds up, for example, the identification and monitoring of containers in ports and airports.
Jointly to Erudito, AllRead MLT was one of the two finalist start-up companies of the last Bbooster Week held in Valencia on December 2-4. During this investment event organized by Bbooster Ventures to select and invest in start-ups, a € 100,000 convertible loan was awarded to AllRead MLT.
The goal of the startup is to close new rounds of funding during 2020 and to go on developing its product already successfully tested during different pilot tests with the Port of Barcelona and other companies from different sectors, such as Suez, Comsa and International Airlines Group.
Good luck!
More news
        		        	
            	
                	14/12/2018                 
                The Open Innovation Forum matches business challenges to academic solutions            
                	
            	
                	07/12/2018                 
                2017 BioCat report: The best of the Bioregion of Catalonia            
                	
            	
                	30/11/2018                 
                Barcelona Synchrotron Park’s Commitment to Sustainable Growth            
                	
            	
                	23/11/2018                 
                Astronomers led by IEEC reveal a cold super-Earth around Barnard’s star            
                	
            	
                	16/11/2018                 
                CRAG’s Researchers discover how to generate plants with enhanced drought resistance             
                	
            	
                	08/11/2018                 
                The Barcelona manifesto: for a city-led science and technology diplomacy            
                    
        
        
        
    
 
                                     
                            		
                             
                                     
                            		
                             
                                     
                            		
                             
                
 
     home
home