Open Access
Subscription Access
Open Access
Subscription Access
Product Managers for Artificial Intelligence and Robotic World
Subscribe/Renew Journal
The role of the product manager is evolving drastically and expanding due to the exponential rate of change in Technology for some time now. With growing significance of cloud applications, artificial intelligence, machine learning, data insight, rapid prototyping, design thinking, and faster decision making, the product manager needs to be proactive in their analysis, decision making and building products to drive sustainable business growth. Today, basic physical, digital and biological technology are intersecting to create large scale system change in many industries and altering the very fabric of our social system. In short, the Product Manager are faced with designing the systems of future accommodating for technology and people.
Keywords
Cloud, Artificial Intelligence, Machine Learning, Ai Product Management, Data Insight, Design Thinking.
Subscription
Login to verify subscription
User
Font Size
Information
- [I] Ahmed, K.N. (2017). AL and the future of the machine design. Mechanical Engineering, 139(10), 38-43. (Oct 01, 2017) (6 pages) Paper No: ME-17-OCT2: doi: 10.1115/1.2017-Oct-2
- Ammar, H., Abdelmoez, W., &Hamdi, M.S. (2012). Software engineering using artificial intelligence techniques: Current state and open problems. Institute of Communication, Culture, Information, and Technology, University of Toronto Mississauga.
- Cho, J. (2009). A hybrid software development method for Large Scale projects: Rational unified process with scrum. Issues in Information Systems, 10, 340-348.
- Chandra, G., Martin, H., Shivam, S., & Yun, W. (2017). Product managers for the digital world. Digital McKinsey.
- Data Summer Submit (2018). Harvard's new data science program signals: A big shift for business. Retrieved from https://www.thedatasciencesummit.com/news/2018/5/17/harvards-new-data-science-program-signals-a-big-shift-for-businesses
- Jiang, L., & Eberlein, A. (2008). Towards a framework for understanding the relationships between classical software engineering and agile methodologies. International Conference on Software Engineering, Leipzig, Germany.
- Meziane, E, & Vadera, S. (2012). Artificial intelligence in software engineering: Current developments and future prospects. IGI Global Disseminator of Knowledge.
- Nuseibeh, B., & Easterbrook, S. (2000). Requirements engineering: A roadmap. ICSE '00 Proceedings of the Conference on the Future of Software Engineering. Limerick, NY, USA.
- Ortchanian, P. (2018, May 26). Tomorrow's product managers will need solid data, model and problem understanding [Blog post]. Retrieved fromhttps://medium.com/ pminsider/tomorrows-product-managers-will-need-solid-data-model-and-problem-understanding-96cdb5178f6e
- Pressman,R.S. (2001). Software Engineering. McGraw Hill, USA.
- [II] Pressman, R.S. (2010). Software Engineering. McGraw Hill, USA.
- Prasad, V. (2018, March 23). Moving towards managing ai products: Big data, artificial intelligence, agile framework, requirement engineering, data insight, rapid prototyping, A/B testing, AI business. [Blog post] Retrieved from https://blog.insightdatascience.com/moving-towards-managing-ai-products-5268c5e9ecf2
- Rech, J., & Althoff, K.D. (2004). Artificial intelligence and software engineering - status and future trends. Special Issue on Artificial Intelligence and Software Engineering, KI(3), 5-11.
Abstract Views: 587
PDF Views: 0