|  | The Seventh International Conference onCreative Content Technologies
 CONTENT 2015 March 22 - 27, 2015 - Nice, France | 
     
     
     
     T1. 
       Applications of Machine Learning to Software Testing
Marcelo De Barros, Microsoft Corporation, USA
     T2. 
       Modern Engineering Principles for Large Scale Teams and Services
       Marcelo De Barros, Microsoft Corporation, USA
     T3. 
       Artificial Intelligence of Humor: On Computational Humor
       Victor Raskin, Purdue University - W. Lafayette, USA 
       Julia M. Taylor, Purdue University - W. Lafayette, USA 
      
     Detailed Description
     T1. 
       Applications of Machine Learning to Software Testing
       Marcelo De Barros, Microsoft Corporation, USA
     Software Testing is evolving. Long gone are the days when to test a   software all that was needed was an input and an expected output.   Software Testing is shifting towards anomalies detection, quantification   and prevention at large-scale and highly dynamic environments. In this   tutorial Marcelo De Barros will talk about how to identify software   testing scenarios in which Machine Learning can be successfully applied.   Marcelo will describe real stories of how well-established and novel   Machine Learning algorithms such as Clustering, Neural Networks and   Markov Chains were applied towards detection, quantification and   prevention of software anomalies, saving lots of time (and money) to the   company. 
      
     T2. 
       Modern Engineering Principles for Large Scale Teams and Services
       Marcelo De Barros, Microsoft Corporation, USA
     In the online world, velocity becomes imperative for success. At Bing,   we ship our code to production multiple times a day. Since we're always   trying different experiments, we need to ensure that every build meets   the desired quality level. Hence we have these two variables that are   inversely proportional: time to ship an experiment (minimized) versus   time to validate an experiment across multiple platforms (maximized). To   achieve the goal of shipping the entire code base daily maintaining high   quality several concepts had to be introduced and/or redefined such as   high reliability of automation, distribution of test automation,   scalability of test automation to multiple platforms, shift to test in   production, utilization of production traffic (forking) for validation   purposes, and so on. Cultural changes were also at the center of this   transformation. In this talk, well go into the details of this   transformation that allowed our team to become a   super-agile-high-quality organization. 
      
     T3. 
       Artificial Intelligence of Humor: On Computational Humor
       Victor Raskin, Purdue University - W. Lafayette, USA 
       Julia M. Taylor, Purdue University - W. Lafayette, USA
     Goal
       As the role of humor in social computing and the need for  the computer to detect and generate humor is increasing in robotic and agent  intelligence becomes evident, it is important to understand that verbal humor  intelligence is part of AI, and as such, is formalizable and computable. The  formal linguistic theory of humor, while offering an insight into humor structure,  provides a basis for formalizing and computing jokes in meaning-based AI  applications. The target audience at IARIA 2015 is those AI, CS, and related  areas researchers who are interested in the seemingly unformalizable phenomena  and willing to overcome their “fear of semantics.”
     History
       This tutorial has been preceded by several (2005-2012)  tutorials at the International Conferences in Humor Research for a  multidisciplinary but largely non-technical audience and at WorldComp 2012-2014  for a largely non-humor-oriented advanced technical audiences.  The proposed tutorial has had no exact precedent in this form, but we did  organize a 2012 AAAI Fall Symposium under the same title. 
     Content
       The tutorial will follow the outline below but will be quite  open to the audience’s questions which may lead to various extensions:
     
       - Introduction  into a formal study of humor
- Theories of humor
- Linguistic theories of humor
- Formal theories of humor
- Computational  humor
- Semantic approach
- Statistical approach
- Hybrid approach
- Humor intelligence as part of AI
- With-Humor  Applications
- Companion dialog applications
- Social media analysis (including real “sentiment  analysis”)
- Humor-based stylometry
Description
       The tutorial will review the theoretical and computational  humor research to date and introduce a number of simple to advanced AI  applications. It is intended for 4 hours, including 1+ hours for questions and  discussion.
     Prerequisite
       An interest in and some preparation in AI and/or its  contributing disciplines is desirable but the tutorial is planned as largely  self-explanatory.
     Credentials
       Victor  Raskin
       Linguistics/CERIAS/Computer  Science
       Purdue  University
       500 Oval  Drive
       W. Lafayette, IN 47907-2038
       765-409-0675
     Julia M.  Taylor
       Computer and  Information Technology/CERIAS
       Purdue  University
       401 N. Grant  Street
       W.  Lafayette, IN 47907-2011
       765-494-9525