Seguridad Mania.com - España y América Latina
Portal sobre tecnologías para la seguridad física
- Destacamos »
- software Anti Blanqueo
SAN FRANCISCO, CA -- (Marketwired) -- 05/01/14 -- Today, Data Elite, Silicon Valley's first venture lab for big data startups, is announcing its first of class of participants. These companies are nearing the completion of the three month program and are developing into must have solutions for the enterprise. Big Data continues to disrupt all industries and verticals, and these companies are creating products that will transform the way business is conducted in every sector.
Data Elite is backed by prestigious Silicon Valley's entrepreneurs including The Social+Capital Partnership, Andreessen-Horowitz, Ron Conway, Formation 8 and Anand Rajaraman. The entity has also recruited a board of advisors that include top data scientists from Amazon, Facebook, LinkedIn and Netflix. The venture lab operates as part fund, and part early stage accelerator with a laser focus on finding the best entrepreneurs that were looking for something more than a traditional incubator.
Data Elite selected only seven companies for their first class, from over 200 applicants, whom they believed would change the way data is used. They focused on finding elite entrepreneurs with at least one of these criteria: more than five years of experience, a PhD or a previous successful exit.
Data Elite's inaugural group of portfolio companies includes:
Unlike other funds and incubators Data Elite has formed a board of top Fortune 500 customers to give founders a corporate viewpoint and feedback on their product. This symbiotic relationship has led to beta testing of two portfolio companies by a few large publicly traded technology companies.
"Big Data is a large but relatively new space and not everyone understands it well. Traditional incubators didn't have the advice and expertise we needed to be able to grow our solution," say professor Shivnath Babu of Duke University and Kunal Agarwal, Co-Founders of Unravel Data. "Data Elite provided us with access to the best advisors, investors and potential customers that helped us determine the best growth path for Unravel."
"These companies are poised to lead the next wave of billion dollar big data businesses because they're building solutions that will make every aspect of business smarter by using analytics to improve package delivery, SEO and social media," says Stamos Venios, Managing Partner of Data Elite. "We've already seen tremendous development with these companies since joining the program and we believe our model sets them up for success because of the guidance they receive from our elite investors, advisors and corporate partners that are unlike any others."
For more information about Data Elite, please visit: http://www.dataeliteventures.com/
About Data Elite
Data Elite is the Silicon Valley's first venture lab and early-stage fund focused on data sciences. Data Elite was founded by Tasso Argyros, founder of Aster Data which was sold to Teradata for $300M in 2011, as well as Stamos Venios, who has held M&A and investment positions with companies in Europe and Israel. The fund is backed by some of Silicon Valley's most prominent investors such as The Social+Capital Partnership, Andreessen Horowitz, Formation8, Ron Conway, and Anand Rajaraman. Data Elite's six-month program provides top scientists and repeat entrepreneurs with the financial resources, customer network, and technical counsel to build and grow world-class big data businesses.
Publicamos interesante Informe de más de 48 págs y varios videos demostrativos sobre los posibles ataques a los robots de montaje de las fábricas. ... Leer más ►
Publicado el 22-Jun-2017 • 10.48hs
Publicado el 20-Jun-2017 • 20.22hs
Dirigido tanto a los principiantes, como a los expertos en seguridad informática y sistemas de control industrial (ICS), este libro ayudará a los lectores a comprender mejor la protección de normas de control interno de las amenazas electrónicas. ... Leer más ►
Publicado el 3-Ene-2012 • 20.16hs
Publicado el 25-Set-2009 • 01.26hs
Publicado el 17-Dic-2008 • 08.32hs
Publicado el 11-Oct-2016 • 12.48hs
Publicado el 15-Mar-2016 • 11.59hs
Publicado el 2-Feb-2017 • 11.38hs
Publicado el 20-Jun-2014 • 17.17hs
Publicado el 31-May-2011 • 05.13hs
Publicado el 25-Set-2008 • 17.54hs
Publicado el 1-Set-2016 • 16.11hs
Publicado el 31-Ago-2016 • 18.53hs
Publicado el 19-Ene-2017 • 15.47hs
Publicado el 4-Jul-2016 • 18.51hs