Crack the Code Contest

Crack the Code was tough this year!

Looks like we stretched the string so hard. None of more than 20 contestants was successful in the contest. Only one of you went behind the half of the coding and asked for the hint.

The winning password is: “QuBitChallenge2017”

If you would like to know how you should proceed, let us know and we will email it to you. The example will be shown at Cyber Lab demo during Ladislav Baco’s session at QuBit conference 2017.

We would like to thanks to Ladislav Baco, System engineer from CSIRT.sk who creates the contest. Ladislav, bit more mercy next time please :).

Your chance to win QuBit Conference Pass

Every year the cyber friends of QuBit engage in a “Crack the Code Contest” to flex their programming muscles and relive the glory (horror?) days of computer science homework. This year we prepared a great contest for you QuBit fans!

If you want to try the capture for yourself, here it is: Crack the Code Contest and your chance to win Conference Pass for QuBit Conference 2017


Contest Rules

Contestants must be at least 18 years of age.
The first proper solution is winning the Conference Pass for QuBit 2017.

Important dates:

Contest starts on Monday, March 13 at 2 PM CET.

Contest ends on Monday, March 20 at 11:59 PM CET.

The solutions have to be emailed to: info@qubitconference.com with the subject: "Crack the Code QuBit 2017"

Successful cracker will be announced in QuBit newsletter.

Contest solution will be provided at Cyber Lab demo at QuBit Conference (to those who won’t be able to participate, we will send an email with the solution).

To be included in the contest, enter your email and download the file below.

Crack the Code Contest Assignment

Enter your email to download the file:


Diamond Sponsor:


Platinum Sponsors:


Gold Sponsors:


Silver Sponsors:


Sponsors:


Media Partners:


Supporting Partners:


Supporting Professionals from:

© 2013-2017QuBit Conference, The Universe of Cyber Security and Digital Forensics   Privacy disclaimer

Web Analytics