Software Engineering Institute | Carnegie Mellon University
Software Engineering Institute | Carnegie Mellon University

Digital Library

Javascript is currently disabled for your browser. For an optimal search experience, please enable javascript.

Advanced Search

Basic Search

Content Type

Topics

Publication Date

Serhiy Haziyev (SoftServe, Inc.)
May 2016 - Presentation Strategic Prototyping for Developing Big-Data Systems

Authors: Rick Kazman, Serhiy Haziyev (SoftServe, Inc.), Hong-Mei Chen (University of Hawaii), Olha Hrytsay (SoftServe, Inc.)

This session presents RASP (Risk-based, Architecture-centric Strategic Prototyping), a model for cost-effective risk management in Agile and Big Data development.

May 2016 - Presentation IoT Reference Architectures and Case Studies

Authors: Serhiy Haziyev (SoftServe, Inc.), Yulian Slobodyan (SoftServe, Inc.)

This session uses real-world case studies to share a vision of the current state of standardization for the Internet of Things and describes several reference architectures.

April 2015 - Presentation Locating the Architectural Roots of Technical Debt

Authors: Rick Kazman (University of Hawaii), Yuanfang Cai (Drexel University), Serhiy Haziyev (SoftServe, Inc.), Volodymyr Fedak (Softserve, Inc.)

This talk presents a case study of identifying architecture debts in a large-scale industrial software project by modeling software architecture as design rule spaces.

April 2015 - Presentation Smart Decisions: An Architecture Design Game

Authors: Serhiy Haziyev (SoftServe, Inc.), Olha Hrytsay (SoftServe, Inc.), Rick Kazman (University of Hawaii), Humberto Cervantes (Universidad Autonoma Metropolitana–Iztapalapa)

This presentation teaches the challenging process of designing an architecture for a Big Data Analytics System using a game called Smart Decisions.

May 2014 - Presentation BI/Big Data Reference Architectures and Case Studies

Authors: Serhiy Haziyev (SoftServe, Inc.), Olha Hrytsay (SoftServe, Inc.)

Presentation at SATURN 2014. Presenters explore reference architectures that address the challenges of Big Data.