User and Professional Aspects for Sustainable Computing Based on the Internet of Things in Europe
Abstract
:1. Introduction
- The connection with customers for IoT adoption considering their attitude and fears toward this technology is also complemented by the culture of users: employees that will apply IoT solutions in their daily work. This aspect has been also identified, sometimes embedded in the culture of the organization, in additional studies such as [22,23,24];
2. Methodology
- RQ1: what are the key factors perceived by users and customers in Europe, within their scope of action, for effective IoT deployment?
- RQ2: which is the most recommended qualification profile for ICT professionals in Europe for an effective IoT implementation?
2.1. Survey on Factors That Influence IoT Implementation from the Point of View of Non-Technical Professionals
Design of the Survey
- Business models, marketing, and customer service: the transformation of business processes and new business models;
- Security, data privacy and protection, and IPR: the types, amount, and specificity of data gathered by billions of devices create concerns among individuals about their privacy and among organizations about the confidentiality and integrity of their data;
- Employment and qualifications: IoT would imply the need for upskilling and reskilling non-ICT professionals after a careful analysis of profiles and the requested hard and soft skills;
- Social and environmental aspects: IoT opens an opportunity to decrease the environmental impact of activities by avoiding physical presence and trips, reducing carbon footprint, and fostering more social balance.
- (S1) The adaptation to the impact and changes which IoT may bring to people, society, and businesses deserve the highest priority in all European countries;
- (S2) The impact and the implementation of IoT may differ from one to another country due to specific market conditions, legislation, etc.;
- (S3) Study and training of the adaptation to the impact of IoT recommend an international perspective for addressing different national views;
- (S4) Training all types of professionals in IoT literacy is essential for a successful and beneficial implementation of IoT in all sectors.
- (S5) In business models and market competition;
- (S6) In employment, occupation profiles, skills, and qualifications;
- (S7) In privacy, security, and legal consequences;
- (S8) In social aspects and transformations.
2.2. Survey on the Qualification of the Technical Team for the Successful Implementation of IoT
2.2.1. Survey on Qualification Profile for Professionals Who Implement IoT Solutions
- The normative part of EN16234 is focused on the description of the 41 e-competences in terms of the main functions and activities developed in each one;
- It also includes descriptions of levels of proficiency and examples of skills and knowledge items, but they are only illustrative.
3. Analysis of Results and Discussion on Users’ Perception of Factors for IoT Implementation
3.1. Sample
3.2. Analysis of Survey Results
- S1—IoT impact and changes in people, society, and businesses: most of the respondents agree (51%), while 31.4% totally agree, and 11.8% neither agree nor disagree;
- S2—Differences among countries in conditions for IoT implementation: 56.9% agreed and 33.3% showed total agreement, while the other available options were below 6%;
- S3—Transnational approach when analyzing IoT implementation: almost half of the respondents totally agree (49%) and another 45.1% also agree;
- S4—Training of all types of professionals in IoT literacy is essential: again, half of the respondents totally agree (49%), another 43.1% agree, and only 3.9% disagree;
- S5—IoT changes and challenges in business models and market competition: 39.2% totally agree and 47.1% agree but only 3.9% disagree;
- S6—IoT impact on employment, occupation profiles, skills, and qualifications: 47.1% totally agree and 43.1% agree. Neither agree nor disagree represented 9.8% of respondents;
- S7—IoT impact on privacy, security, and legal consequences: total agreement 47.1%, agreement 39.2%, and the rest of the options represented less than 6%;
- S8—IoT impact in social aspects: total agreement reached 51%, agreement 35.3%, while the option of neither agree nor disagree obtained 11.8%.
4. Analysis of Results and Discussion on Recommended Profiles of the Technical Team for Successful IoT Implementation
4.1. Sample
4.2. Analysis of Results on Qualification of the Technical Team
4.2.1. Functions for Engineers and Technicians
4.2.2. Knowledge, Skills, and Soft Skills
- Accountability (customer focus, diligence, reliability, efficiency);
- Communication (networking, negotiation, teamwork);
- Creativity (critical thinking, problem-solving, decision-making, initiative);
- Ethical behavior (respect diversity, respect environment, respect privacy);
- Leadership (coaching, conflict resolution, entrepreneurship, strategic thinking, motivating others, managing quality);
- Self-management (adaptability, organization, positive attitude, self-control, personal development);
- Tenacity (goal orientation, patience, motivation, resilience).
- Development of survey:
- ○
- A total of 15 reference occupations selected from the 3008 existing in the version 1.1 of ESCO;
- ○
- A total of 89 skills and knowledge items, connected to the 15 occupations, were selected from the total catalog of 13,890 in ESCO;
- ○
- A total of nine e-competences from EN16234 linked to 11 functions for the profiles through 14 pairs of competencies and proficiency levels.
- Recommended profiles:
- ○
- Engineer profile: linked to 28 knowledge items and 35 skills from ESCO and seven e-competences from EN16234;
- ○
- Technician Profile: linked to 20 knowledge items and 19 skills from ESCO and seven e-competences from EN16234.
5. Conclusions and Future Lines
- In the case of the users’ side, we addressed a specific survey to non-technical managers and professionals in SMEs (as these organizations have fewer resources to work with disrupting technology such as IoT) and educators of future non-technical professionals;
- In the case of the qualification of ICT professionals for IoT solutions, we preferred to have a broad spectrum of opinions, covering the clients’ side (municipality managers and professionals), the providers’ side (technical managers and professionals), and the users’ side. The survey explored the specific details of the recommended qualifications for professionals working in teams where the implementation of IoT (and connected aspects of security and data management) are intensive such as in SC projects. We have shown that SC projects could be representative of the case of general IoT implementations.
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
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Main Sector (in Bold) and Subsectors | % |
---|---|
Public sector and authorities (client side) | 18.52% |
Policy authority or decision maker | 5.19% |
Municipal city planner or urbanism expert | 0% |
Municipal technical manager | 3.70% |
Municipal technician | 1.48% |
Other | 8.15% |
Business sector and providers (supply side) | 54.81% |
Business manager in IT solutions provider | 20% |
ICT project manager in solutions provider | 14.81% |
ICT engineer in solutions provider | 9.63% |
ICT technician in solutions provider | 2.96% |
Other | 7.41% |
Civil society (user side) | 26.67% |
Expert in smart cities (academia, research, education, etc.: out-of-solution providers) | 13.33% |
Representative of citizens’ association | 2.96% |
Sociologists or similar specialists in urban life | 1.48% |
Other | 8.89 |
Category | ESCO Reference for Inspiration and Extraction of Items | Description for Survey |
---|---|---|
IoT | Smart home engineer (2151.2) | FE1. Design, integration, and acceptance testing of automation systems integrating connected devices and smart appliances within residential facilities. Work with key stakeholders to ensure the desired project outcome including wire design, layout, appearance, and component programming. |
Cybersecurity | ICT security engineer (252.9) | FE2. Advise and implement solutions to control access to data and programs and ensure the protection of processes. Responsible for the protection and security of systems and networks and design, plan, and execute the system’s security architecture, with models and security policies and procedures. |
Data analytics | Data analyst (2511.3) and data scientist (2511.4) | FE3. Collect and interpret rich data sources, manage large amounts of data, merge sources, ensure consistency, and create visualizations to aid in understanding data using mathematical models and communicate insights and findings to the team and, if required, to non-experts, as well as recommend ways to apply data. |
Machine learning and Big Data | No reference occupations: selection of skills and knowledge | Not included in the survey. Preliminary analysis from case studies considers this area as optional in terms of responsibilities. |
Category | ESCO Reference for Inspiration and Extraction of Items | Description for Survey |
---|---|---|
IoT | Smart home installer (7421.7) | FT1. Install and maintain automation systems, connected devices, and smart appliances at customer sites. Also, act as a user educator and resource for product and service recommendations for customers’ needs for comfort, convenience, security, and safety. |
Cybersecurity | ICT security technician (3512.3) | FT2. Propose and implement necessary security updates and measures whenever required. In addition, advice, support, inform, and provide training and security awareness. |
Data analytics | Data analyst (2511.3) and data scientist (2511.4) | FT3. Import, clean, validate, model, or interpret collections of data for business goals and given criteria. Also, ensure consistent and reliable data from sources and repositories and prepare reports with visualizations such as graphs, charts, and dashboards. |
Machine learning and Big Data | No reference occupations: selection of skills and knowledge | Not included in the survey. Preliminary analysis from case studies considers this area as optional in terms of responsibilities. |
Role | e-Competence | Level |
---|---|---|
Engineer | B.6 (ICT systems engineering) | 4 |
Engineer | E.2 (project and portfolio management) | 4 |
Engineer | A.6 (application design) | 3 |
Engineer | B.4 (solution deployment) | 3 |
Engineer | E.8 (information security management) | 4 |
Engineer | D.7 (data science and analytics) | 3 |
Engineer | B.3 (testing) | 3 |
Technician | E.2 (project and portfolio management) | 2 |
Technician | B.1 (application development) | 2 |
Technician | B.4 (solution deployment) | 2 |
Technician | E.8 (information security management) | 3 |
Technician | D.7 (data science and analytics) | 2 |
Technician | B.4 (solution deployment) | 1 |
Technician | C.1 (user support) | 1 |
Category | ESCO Reference for Inspiration and Extraction of Items | Description for Survey |
---|---|---|
IoT skills | ESCO skill: “design smart grids” | SE1. Design and calculate smart systems, based on grid load, duration curves, energy simulations, etc. |
IoT knowledge | Three ESCO knowledge items: skills “internet of things”, “smart grids systems”, and “building automation” | KE1. Principles, requirements, limitations, and vulnerabilities of smart connected devices and automatic control systems for digital control, distribution saving, and use of energy and information management. |
Cybersecurity skills | Nine ESCO skills: “verify formal ICT specifications”, “analyze ICT system”, “identify ICT security risks”, “develop information security strategy”, “ensure information security”, “perform risk analysis”, “define security policies”, “manage disaster recovery plans”, and “implement ICT risk management” | SE2. Create a strategy for safety and security, with a set of rules and policies. Analyze systems to identify risks and implement procedures for identifying, assessing, and mitigating them and prepare recovery plans. |
Cybersecurity knowledge | Four ESCO knowledge items: “cyber security”, “ICT security standards”, “risk management”, and “cloud security and compliance” | KE2. Methods and standards to protect ICT systems, resources, and users against illegal or unauthorized use, identifying, assessing, and dealing with all types of risks, including from cloud computing. |
Data analytics skills | Five ESCO skills: “Interpret current data”, “apply statistical analysis techniques”, “manage data”, “define data quality criteria”, and “perform data analysis” | SE 3. Define data quality criteria and perform data analysis with statistical techniques to interpret data to assess development and innovation. |
Data analytics knowledge | Five ESCO knowledge items: “manage cloud data and storage”, “statistics”, “data models”, “visual presentation techniques”, “unstructured data” | SE4. Statistical methods, practices, and data techniques for collection, organization, the structure of data elements, analysis, interpretation, and presentation of data (local and cloud) to reinforce human understanding. |
Machine learning and Big Data skills | Two ESCO skills: “perform data mining” and “analyze big data” | SE4. Explore large datasets to reveal patterns using statistics, databases, or AI and present information in a comprehensible way. |
Machine learning and Big Data knowledge | Three ESCO knowledge items: “machine learning”, “data mining”, and “smart city features” | KE4. Big Data technologies (machine learning, data mining, etc.) for smart cities to develop novel software ecosystems upon which advanced mobility functionalities emerge. |
Category | ESCO Reference for Inspiration and Extraction of Items | Description for Survey |
---|---|---|
IoT skills | ESCO skill: “install smart devices” | ST1. Install connected devices, (sensors, light switches, plugs, energy meters, cameras, etc.) and interconnect these devices to the system and to relevant sensors. |
IoT knowledge | Three ESCO knowledge items: skills “internet of things”, “smart grids systems”, and “building automation” (same as in KE1) | KT1. Categories, requirements, limitations, and vulnerabilities of smart connected devices and automatic control systems for digital control, distribution, saving, and use of energy and information management (adapted to the technician role). |
Cybersecurity skills | Four ESCO skills: “analyze ICT system”, “identify ICT system weaknesses”, “solve ICT system problems”, and “define firewall rules” | ST2. Analyze the functioning and performance of systems to identify and categorize weaknesses and vulnerabilities to intrusions or attacks. Deploy diagnostic tools and resources to solve them, including firewall configuration. |
Cybersecurity knowledge | Three ESCO knowledge items: “cyber-attack counter-measures”, “attack vectors”, and “cyber security” (this is common to KE2) | KT2. Methods or pathways deployed by hackers to penetrate or target systems illegally and techniques and tools to detect and avert malicious attacks and protect ICT systems, resources, and users. |
Data analytics skills | Four ESCO skills: “perform data cleansing”, “collect ICT data”, “normalize data”, and “manage data” (this is common to SE3) | SE 3. Collect data from connected devices, detect and correct corrupt records from datasets (according to defined quality criteria), and normalize data to minimize dependency, eliminate redundancy, and increase consistency. |
Data analytics knowledge | Five ESCO knowledge items: “manage cloud data and storage”, “statistics”, “data models”, “visual presentation techniques”, and “unstructured data” (all the same as in KE3) | KE3. Understanding statistical methods, practices, and data techniques for collection, organization, structuring data elements, analysis, interpretation, and presentation of data (local and cloud) to reinforce the human understanding of information (adapted to the technician role). |
Machine learning and Big Data skills | Two ESCO skills: “perform data mining” and “analyze big data” (the same as in SE4) | SE4. Explore large datasets identifying patterns according to predefined methods with statistics, databases, or AI and generate reports of information in a comprehensible way (adapted to the technician role). |
Machine learning and Big Data knowledge | Three ESCO knowledge items: “machine learning”, “data mining”, and “smart city features” (the same as in ST4) | KE4. Principles, methods, and algorithms of machine learning, statistics, and data mining (adapted to the technician role). |
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Pospelova, V.; López-Baldominos, I.; Fernández-Sanz, L.; Castillo-Martínez, A.; Misra, S. User and Professional Aspects for Sustainable Computing Based on the Internet of Things in Europe. Sensors 2023, 23, 529. https://doi.org/10.3390/s23010529
Pospelova V, López-Baldominos I, Fernández-Sanz L, Castillo-Martínez A, Misra S. User and Professional Aspects for Sustainable Computing Based on the Internet of Things in Europe. Sensors. 2023; 23(1):529. https://doi.org/10.3390/s23010529
Chicago/Turabian StylePospelova, Vera, Inés López-Baldominos, Luis Fernández-Sanz, Ana Castillo-Martínez, and Sanjay Misra. 2023. "User and Professional Aspects for Sustainable Computing Based on the Internet of Things in Europe" Sensors 23, no. 1: 529. https://doi.org/10.3390/s23010529
APA StylePospelova, V., López-Baldominos, I., Fernández-Sanz, L., Castillo-Martínez, A., & Misra, S. (2023). User and Professional Aspects for Sustainable Computing Based on the Internet of Things in Europe. Sensors, 23(1), 529. https://doi.org/10.3390/s23010529