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Measuring Emerging ICT Trends
Johannes M. Bauer
Michigan State University
Plenary Session 6
15th World Telecommunication/ICT Indicators Symposium (WTIS-17)
Hammamet, Tunisia, 14-16 November 2017
Transforming emerging technologies into economic and societal opportunities Document the new ICT value system 1 Inform policy and governance 2 Develop next generation of ICT indicators 3
Digital transformations
- Four key technologies o Internet of Things (IoT) o Big data (analytics) o New computing architectures o Artificial Intelligence (AI)
- Tremendous opportunities to contribute to the 17 Sustainable Development Goals
- New challenges to establish supportive policy and governance frameworks
Internet of Things (IoT) Big Data Public Cloud Artificial Intelligence (AI)
Global Market for Emerging Technologies
(2015-2025*, US$ billion)
Source: MISR 2017; * … estimated
Technological and economic forces
- Exponential performance increases of ICTs (e.g. Moore’s Law, Cooper’s Law)
- Rapidly improving fixed and wireless connectivity (speeds, QoS)
- Ubiquitous, distributed computing power in smart devices and objects
- Massive growth of user- and machine- generated data (“Zettabyte Era”)
- Transition from “pipeline” to “platform” economy accelerates value generation 0 500 1, 1, 2, 2, 3, 3, 4, 2016 2017 2018 2019 2020 2021
Global IP Traffic in Exabytes per year 2016- 2021
Latin America Middle East & Africa Central & Eastern Europe Western Europe North America Asia Pacific Source: Cisco, VPI, 2017 CAGR 26% 20% 22% 22% 42% 21%
Non-linear, dynamic value generation Content, applications, service Networks Devices Development platforms
Fixed Wireless
Voice, data SS7, SONET, SDH Copper, fiber GSM, LTE, CDMA Voice, data Antenna towers, spectrum
A fast-paced digital innovation system Policy and governance
NGN
connectivity
Applications,
services
Internet of
Things
Cloud
computing
Big data
analytics
Artificial
Intelligence
- Innovation unfolds among many interdependent players
- Rapid experimentation, real-time feedback, market selection, replication of successful solutions
- Disruption of existing industries and new “Blue Ocean” opportunities
- Requires adaptive policy making and regulation (both too little and too much regulation is bad)
ICTs are neither good nor bad …
- Effects of unfolding digital transformations are not yet fully known
- Advanced ICTs promise enormous benefits for Sustainable Development Goals (SDGs) and human rights, including o Smart agriculture, smart cities, environmental stewardship o Individual empowerment, better government, improved education
- They also bring new challenges and potential risks o Replacement of human labor by robots and artificial intelligence o Next-generation digital divides, ambiguous effects on income inequality o Surveillance and control by supposed “technologies of freedom”
- Policy appropriate to national conditions is critical (there is no single “best model”) and dependent on reliable indicators
… they need the right policy conditions
- Network infrastructure o Availability of fixed and mobile broadband, smart devices o National and international bandwidth, data centers o Differentiated infrastructure quality of service (speed, latency, jitter)
- All-IP seamless connectivity o Fixed and mobile broadband, LPWANs, NB-IoT, LTE-M
- Complementary user skills o Digitally literate workforce, data scientists, computer scientists o Increasingly powerful software empowers users with appropriate skills and mindset
- Policy responses that enable digital entrepreneurship and innovation o Differentiated based on assessment of national strengths and deficits o Based on good statistical evidence and models (stimulation, foresight)
Knowledge for sustainable development
- The power of emerging technologies is best harnessed using a human-centered design approach
- Requires reliable and continuously updated information o Agreed conventions on data definitions and measurement o Improved accessibility of data to users and entrepreneurs
- Machine-generated data collection and processing o Harvesting of data directly form the digital infrastructure and services o Networks or sensors and devices could generate trusted database
- Roles for the public sector and intergovernmental organizations o Collector of critical, standardized information that is of broad importance o Facilitator of data collection (open algorithms) and availability (open data) o Curator and archiver of data and analytical models (open repositories)
Indicators and models
- Focus on objectives (SDGs, other economic and social goals)
- Development of an enhanced system of indicators o Direct indicators of emerging technologies - Hardware (e.g. # of devices, % of installed base with certain capabilities, revenues) - Basic services and software (e.g. M2M, big data analysis software) - Applications and services (e.g. % of businesses using cloud solutions, AI) o Indicators for enabling conditions - Network infrastructure (e.g. % coverage, quality) - Skills (e.g. % digital literacy, # of data scientists) - Policy arrangements (e.g. % unlicensed spectrum, open data policies) o Effects on outcomes (e.g. income, employment, equality)
- Descriptive, explanatory, predictive, and prescriptive uses/models
Recommendations
- Short-term: use existing processes and data collection (e.g. EGTI, Partnership on ICT for Development) to develop an enhanced system of ICT indicators for IoT, big data analytics, cloud computing, and AI
- Medium-term: develop a “System of Digital National Accounts” in which publicly collected and curated, machine-generated, crowdsourced, and case-specific big data complement each other in a coherent framework
Thank you!