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A fourth way to the digital transformation: The data republic as a fair data ecosystem

Published online by Cambridge University Press:  12 June 2023

Stefano Calzati*
Affiliation:
Urban Data Science Group, Department of Urbanism, TU Delft, Delft, the Netherlands
Bastiaan van Loenen
Affiliation:
Urban Data Science Group, Department of Urbanism, TU Delft, Delft, the Netherlands
*
Corresponding author: Stefano Calzati; Email: [email protected]

Abstract

To harness the promises of digital transformation, different players take different paths. Departing from corporate-driven (e.g., the United States) and state-led (e.g., China) approaches, in various documents, the European Union states its goal to establish a citizen-centric data ecosystem. However, it remains contentious the extent to which the envisioned digital single market can enable the creation of public value and empower citizens. As an alternative, in this article, we argue in favor of a fair data ecosystem, defined as an approach capable of representing and keep in balance the data interests of all actors, while maintain a collective outlook. We build such ecosystem around data commons—as a third path to market and state approaches to the managing of resources—coupled with open data (OD) frameworks and spatial data infrastructures (SDIs). Indeed, based on literature, we claim that these three regimes complement each other, with OD and SDIs supplying infrastructures and institutionalization to data commons’ limited replicability and scalability. This creates the preconditions for designing the main roles, rules, and mechanisms of a data republic, as a possible enactment of a fair data ecosystem. While outlining here its main traits, the testing of the data republic model is open for further research.

Type
Research Article
Creative Commons
Creative Common License - CCCreative Common License - BY
This is an Open Access article, distributed under the terms of the Creative Commons Attribution licence (http://creativecommons.org/licenses/by/4.0), which permits unrestricted re-use, distribution and reproduction, provided the original article is properly cited.
Copyright
© The Author(s), 2023. Published by Cambridge University Press

Policy Significance Statement

Today’s European Union digital strategy over-emphasizes the defense of individual rights, overlooking the societal-level impact of data. It is necessary to calibrate data governance at local and (supra)national levels striking a balance between individual and collective rights, principles, and values. To preserve democracy and the rule of law before digital transformation, data republicanism is a viable path as it devises checks and balances to account for the distribution of data power. This implies to design mechanisms to connect local and (supra)national data actors and practices, as well as to establish the processes of data stewardship and data arbitration able, the former, to build technological and legal capabilities in the public sector as well as data literacies in the citizenry, and, the latter, to adjudicate contentious cases whenever tensions among different data interests arise.

1. Introduction

Data have become the key enabler of the fourth industrial revolution (Jasperneite, Reference Jasperneite2012). In fact, data are considered as a pivotal asset of the digital transformation which impacts in all sectors, boosting innovation (European Commission, 2013) and creating economic value (European Commission, 2014). However, how such innovation and value can be best achieved is a matter of data governance (Micheli et al., Reference Micheli, Ponti, Craglia and Berti Suman2020) and subject to different approaches.

At present, it is possible to identify three major visions when it comes to governing digital transformation (Calzada and Amarall, Reference Calzada and Almirall2020; Schneider, Reference Schneider2020; Calzati, Reference Calzati2023): (a) a corporate-driven approach (e.g., United States) based on market deregulation and favoring economic competitiveness among tech stakeholders and platforms (Turner, Reference Turner2017; Martin et al., Reference Martin, Evans and Karvonen2018); (b) a state-led approach (e.g., China) depending on authority-defined plans and striving for global techno-economic leadership in strategic sectors while maintaining state control over social and moral behaviors (Au and Kuuskemaa, Reference Au and Kuuskemaa2019; Roberts et al., Reference Roberts, Cowls, Morley, Taddeo, Wang and Floridi2021); (c) a citizen-centric approach (e.g., European Union [EU]) aiming to achieve digital transformation by safeguarding human rights and balancing economic competitiveness with social inclusiveness, democratic participation, and environmental sustainability (von der Leyen, Reference von der Leyen2019; European Commission, 2022).

While the corporate-driven and state-led approaches have shown limitations concerning, in the former case, the lack of contextual adaptability of technology (Kummitha, Reference Kummitha2020) and limited social inclusiveness (Kingston and Viitanen, Reference Viitanen and Kingston2014; Sanfilippo and Frischmann, Reference Sanfilippo, Frischmann, Frischmann, Madison and Sanfilippo2023) and, in the latter case, the stiffing of technological innovation by encumbering bureaucracy (Sun, Reference Sun2007; Fu et al., Reference Fu, Woo and Hou2016) and the hindering of R&D diversification due to lack of incentives (Han et al., Reference Han, Liu and Lin2019; Genin et al., Reference Genin, Tan and Song2021), the European path too faces shortcomings. On the one hand, the envisioned digital single market (European Commission, 2021) puts private actors at the center of the stage, questioning both how the creation of public value can be accounted (Taylor, Reference Taylor2021), as well as the role of citizens and democratic participation in this scenario (Cardullo and Kitchin, Reference Cardullo and Kitchin2019). On the other hand, the focus on citizens as individuals risks overlooking the impact of data at collective level (Smuha, Reference Smuha2021; Viljoen, Reference Viljoen2021), leaving unsolved the issue of how to comply with values, such as democratic participation or environmental sustainability, that pertain to society in its entirety.

This is why these tensions within the European context demand a paradigmatic shift in the way to govern data (Micheli et al., Reference Micheli, Ponti, Craglia and Berti Suman2020). In this regard, scholars have called for the design of a comprehensive framework (Kozminski et al., Reference Kozminski, Zoboli and Nemitz2021) which moves away from an understanding of data governance as either targeting certain actors over others—for example, citizens, public actors, and private actors—or prioritizing one value over others—oftentimes economic competitiveness over social inclusiveness or environmental sustainability. To do so, such comprehensive framework must first consider the data landscape as an ecosystem (van Loenen et al., Reference van Loenen, Zuiderwijk, Vancauwenberghe, Lopez-Pellicer, Mulder, Alexopoulos, Magnussen, Saddiqa, Dulong de Rosnay, Crompvoets, Polini, Re and Casiano Flores2021) that, by definition, is irreducible to any of its actors or values for its sustainable working; and secondly design strategies to keep the whole ecosystem in balance by redressing possible power asymmetries arising among actors or conflicts among values. At stake is the reconsideration of data governance from an actor-network approach (cf. Latour, Reference Latour and Porter2004) to a systemic-procedural one.

From these premises, in this article, we elaborate the idea of a fair data ecosystem as a governance model where the “data interests” (Hasselbalch, Reference Hasselbalch2021) of all actors are systemically taken into account and disentangled based on rules and mechanisms that adjudicate which values and actors are to be prioritized on a case-by-case basis—indeed, a data republic. To operationalize the data republic, we propose to couple a data commons (DC) approach with Open data (OD) frameworks and spatial data infrastructures (SDIs). On the one hand, DC is regarded as a viable third path to market and/or state approaches to the managing of data (Morozov and Bria, Reference Morozov and Bria2018; Bangratz and Förster, Reference Bangratz and Förster2021), with the intent to reappropriate data by citizens and repurpose these data by keeping a societal outlook in sight. So far, however, DC initiatives remain affected by limited replicability (de Lange and de Waal, Reference de Lange and de Waal2019) and scalability (Calzada and Almirall, Reference Calzada and Almirall2020). On the other hand, OD and SDIs initiatives have consolidated over the last three decades backed up at both institutional and infrastructural levels (Welle Donker and van Loenen, Reference Welle Donker and van Loenen2017; Mulder et al., Reference Mulder, Wiersma and van Loenen2020; Raymond and Kouper, Reference Raymond, Kouper, Frischmann, Madison and Sanfilippo2023). And yet, these initiatives miss the needed context-flexibility to respond to locals’ data needs and involve them in the provision of indigenous data (Lupi et al., Reference Lupi, Antonini, De Liddo and Motta2020; Verhulst et al., Reference Verhulst, Young, Zahuranec, Aaronson, Calderon and Gee2020; Valli Buttow and Weerts, Reference Valli Buttow and Weerts2022). Hence, taken together, these three regimes provide mutually complementary features, enabling “institutioning” (Huybrechts et al., Reference Huybrechts, Benesch and Geib2017) and “infrastructuring” (Ludwig et al., Reference Ludwig, Pipek and Tolmie2018) processes, intended as the dynamic interplay between top-down and bottom-up stances and values. This creates the preconditions for designing the main roles, rules, and mechanisms of the data republic as a fair data ecosystem. At this stage, the envisioned data republic remains at a high level of abstraction, whose testing will be the focus of further research. In other words, the data republic outlined here is a theoretical setup: we do not claim that the model as such will fix data governance problems; instead, we advance that, based on the limitations of current approaches to digital transformation (the United States, China, and the EU) and regimes (OD, SDIs, and DC), the data republic constitutes a possible setup to overcome these limitations.

The article is organized as follows: In Section 2, we outline the three approaches to digital transformation—corporate-driven, state-led, and citizen-centric—discussing their goals and main limits. In Section 3, we define systemic fairness in the context of data ecosystems. Section 4 reviews OD, SDIs, and DC, highlighting strengths and weaknesses of each regime and Section 5 advances the coupling of these regimes based on their complementarity. In Section 6, we operationalize such coupling by detailing the main features of the data republic. Section 7 provides concluding remarks and outlines research ahead.

2. Three Approaches to Digital Transformation

When it comes to the governing of digital transformation, it is possible to identify three major competing visions. Schneider (Reference Schneider2020) notes that, while the United States and China are often regarded as the two dominant governance models, leading some scholars to advance the idea of a new cold war (Lippert and Perthes, Reference Lippert and Perthes2020), the EU has strived to carve for itself a “third way” (Bendiek and Schallbruch, Reference Bendiek and Schallbruch2019), intended as a form of digital self-determination. At stake is not only a matter of technological advancement, but also, more radically, of economic and geopolitical supremacy (Pohle and Thiel, Reference Pohle and Thiel2020; Voss and Pernot-Leplay, Reference Voss and Pernot-Leplay2023). To achieve this, major actors contribute to shape the digital transformation across scales and in different socio-political contexts (Calzati, Reference Calzati2021), often negotiating between fundamental rights (e.g., in the EU), economic competitiveness (e.g., in the United States) and societal “harmony” (e.g., in China).Footnote 1

2.1. The United States corporate-driven approach

Calzada and Amarall (Reference Calzada and Almirall2020) write that in the United States the so-called GAFA (Google, Amazon, Facebook—now Meta—and Apple) are the symbol of a paradigm “driven by large technological private multinationals who collect massive amounts of data from global citizens without any informed consent.” This is a corporate-driven approach to digital transformation in which the public sector tends to either play a facilitating role or become de facto the client/recipient of tech solutions developed, controlled, and owned by private corporations. In this scenario, the blossoming of big tech corporations “is seen as positive both for innovation and economic growth and hence is fostered,” leading to “extremely high revenues [that] allow these companies also the power to lobby governments” (Schneider, Reference Schneider2020). While favoring a competitive landscape where innovation and economic success go hand in hand, this approach shows drawbacks especially due to the lack of contextual adaptability of the developed technologies, as well as their limited social inclusiveness.

Concerning the first kind of drawbacks, Kummitha (Reference Kummitha2020) notes that because “corporate firms (…) sell the very same technologies they developed for different cities (…) technologies often ignore place-based differences and the local cultural and community context.” The lack of attention to contingent needs produces discrepancies along the socio-technical axis which is then up to the public sector to tackle, if it has the capacity to do so. Kalpokas (Reference Kalpokas, Bobic and Haghighi2022) warns, in this regard, that the enduring gap between the technical and the social, if not adequately tamed, produces increasing inequalities and forms of discrimination. This links to the second kind of drawbacks, notably the limited social inclusiveness following the implementation of data-driven technologies. On this point, Viitanen and Kingston (Reference Viitanen and Kingston2014) argue that “inequality and poverty do not often feature in debates, but the technological fixes will have distributional consequences under which there are winners and losers.” When put in context, a corporate-driven approach risks overlooking group-level unwanted social effects of digital transformation, especially toward socio-economically disadvantaged people. As a Pew report (Pew Research Center, 2020) puts it, technology tends to further empower the already powerful and to further “diminish” those who are already disempowered. This is so especially in the United States where the corporate-driven approach inevitably keeps economic competitiveness and profit as main principles, not only granting to private actors wide and discretional power over which (social) issues to address and which (technical) solutions to deliver, but, more problematically, “without considering the full range of consequences” (Sanfilippo and Frischmann, Reference Sanfilippo, Frischmann, Frischmann, Madison and Sanfilippo2023) of their own innovations.

2.2. China’s state-led approach

By contrast, China’s state-led approach is regarded as technological nationalism (Jiang and Fu, Reference Jiang and Fu2018) and is meant to foster harmony and social stability (Au and Kuuskemaa, Reference Au and Kuuskemaa2019). Within this approach, public authorities create new lanes for digital transformation via a top-down logic in which it is up to state authorities to broadly dictate the direction to follow. Heavy public backing through financial facilitations favors the achievement of mid- to long-term targets, all part of China’s goal to reach technological market supremacy by 2025 (Hausstein and Zheng, Reference Hausstein and Zheng2018). Yet, this approach too presents shortcomings. Bureaucracy tends to stiff innovation due, on the one hand, to the enduring “fragmentation of the state governance structure [and] the poor coordination within the bureaucracy” (Sun, Reference Sun2007) and, on the other hand, to a bottleneck disadvantaging innovation by small and medium enterprises compared to big state-owned firms (Fu et al., Reference Fu, Woo and Hou2016). Moreover, despite having transited from a manufacturing “copycat” model to an indigenous technological paradigm (Yu et al., Reference Yu, Yu, Pan and Stough2017; Lee, Reference Lee2019), China’s state-funded digital transformation still misses to foster a strong link between industry and research because of lack of incentives to experiment out of identified paths (Han et al., Reference Han, Liu and Lin2019). Specifically, Genin et al. (Reference Genin, Tan and Song2021) show that state-owned tech enterprises are more unlikely to adapt to market competition and experiment with innovation than other firms. This—scholars (Yu et al., Reference Yu, Yu, Pan and Stough2017) contend—has repercussions on enduring gaps, in terms of capacity and willingness to innovate, between China and other international players such as Japan, Germany, and the United States. In this respect, Zeng (Reference Zeng2017, p. 70) calls for “a legal and regulatory system that encourages (…) open and fair competition among private, state-owned, and foreign enterprises.” Currently, however, China’s state-led vision on digital transformation maintains public authorities in a near-monopolistic position concerning how to steer such process beyond or even against the interests of the various players involved.

2.3. The European Union citizen-centric approach

In the Declaration on Digital Rights and Principles (DDRP), the European Commission (2022) reaffirms the objective to “promote a European way for the digital transition, putting people at the center. It shall be based on European values and benefiting all individuals and businesses.” It is certainly not the first time that the EU claims to pursue a citizen-centric approach to digital transformation. Since 2014, the EU has taken steps in this direction, with initiatives such as the Cybersecurity Act (European Parliament and Council, 2013b), the General Data Protection Regulation (European Parliament and Council, 2016), the Regulation on the Free Flow of Non-personal Data (European Parliament and Council, 2018), the Ethics Guidelines on Trustworthy AI (High-Level Expert Group on Artificial Intelligence, 2019), and the Data Governance Act (European Parliament and Council, 2020b). These steps are part of a digital strategy that aims to keep the EU abreast of competitors (the United States and China) while preserving its core values, as pinned down in the DDRP: (1) preserve people’s rights; (2) support solidarity and inclusion; (3) ensure freedom of choice; (4) foster democratic participation; (5) increase safety, security, and empowerment of individuals; and (6) promote sustainability. Noteworthy is that these values equally split between a half (1, 3, 5) focusing on the individual and the other half (2, 4, 6) pertaining to the society. Hence, the DDRP does strive to strike a balance between subject-centric and collective-centric dimensions.

Based on these premises, the EU approach presents criticalities when turned into practice. On the one hand, recently released documents question the extent to which the EU is really pursuing a citizen-centric approach; on the other hand, it is the individualistic connotation of such approach to come under scrutiny, due to its inability to capture the societal dimension of digital transformation and to comply with values that applies to society as a whole.

For instance, the European strategy for data (European Parliament and Council, 2020a) is linked to the aim of “creating a single market for data that will ensure Europe’s global competitiveness and data sovereignty.” To speak of a “market” underpins the idea of data as a commodity, which is a very contentious idea to begin with for two reasons. On the one hand, it considers by default data as something to be seized, owned, and exchanged under an economic and proprietary rationale. On the other hand, the idea of market smoothly turns subjects—either physical or legal—into consumers. This has profound implications on the concrete enactment of those European values—for example, social inclusiveness, environmental sustainability, and democratic participation—which cannot be boiled down to an economic framing. Along the same line, in the 2021 Digital Europe Programme (European Commission, 2021), a “data ecosystem” is defined as “a platform that combines data from numerous providers and builds value through the usage of processed data.” Discussions on “platformization” (van Dijck et al., Reference van Dijck, Nieborg and Poell2019; Cristofari and Helmond, Reference Cristofari and Helmond2023) have widely unveiled the commodification of services and actors that such concept puts forth. In fact, the EU considers platformization as a default phenomenon, allowing to re-enact in the digital realm forms of private monopoly and abuse of market power. Not surprisingly, the same document specifies the goal of “building a thriving ecosystem of private actors to generate economic and societal value from data” (European Commission, 2021). This approach aligns more closely with a corporate-driven one, which—as discussed above—has been shown to present limitations. On this point, Taylor (Reference Taylor2021) warns against the notorious difficulty of “establishing meaningful accountability for the private sector” which de facto hinders an effective public scrutiny of how big tech giants operates, for which purposes, and with which results. Hence, a reconsideration of what citizen-centric really means for the EU becomes necessary, insofar as the way in which such approach is currently enacted raises concerns over the compliance with the European principles enshrined in the DDRP. In fact, it is safe to say that since its inception the EU’s data governance has been centered around the boosting of economic value and the preservation of individuals and their rights as consumers (Valli Buttow and Weerts, Reference Valli Buttow and Weerts2022). In this context, citizenship has by and large been coopted as a glamoring rather than a pivotal concept.

To purse a citizen-centric approach, on the one hand, it is necessary to move beyond a chiefly economic rationale. This can be achieved by rethinking democratic participation through and about digital transformation. As Cardullo and Kitchin (Reference Cardullo and Kitchin2019) note, we need to redesign participation toward “more extensive public consultation, collaboration and co-production” which are rooted in “a set of civil, social, political, symbolic and digital rights and entitlements,” rather than in market principles.

On the other hand, it is crucial to inscribe the EU’s right-based standpoint on data governance (Donahoe and Metzger, Reference Donahoe and Metzger2019)—that is, a standpoint that chiefly protects individual rights, such as privacy and freedom of choice—within a broader perspective that accounts for the collective-level dimension of digital transformation and related societal values, that is, a dimension that cannot be reduced to the sum of individuals and their rights. While a right-based standpoint might constitute the necessary baseline to individual autonomy, there is increasing evidence that this approach cannot be exhaustive (Smuha, Reference Smuha2021; Viljoen, Reference Viljoen2021). For instance, Viljoen (Reference Viljoen2021) notes that the individualistic vision behind the current EU approach does not account for the relational nature of data and the consequent trade-off effects that data reuse involving two subjects might have on unaware third parties. On this wave, Smuha (Reference Smuha2021) suggests taking inspiration from environmental law for tackling potential collective-level effects caused by digital transformation, such as the erosion of the functioning of the rule of law, which can be neither accounted for nor mitigated by current individualistic approaches to digital transformation. Hence, while a human right-based approach to digital transformation is fundamental to protect the individual’s autonomy, it is insufficient to protect Europeans as a whole.

3. Characterizing a Data Ecosystem and Its Fairness

To the extent to which digital transformation is a process increasingly affecting all fields of life, a proper governance framework that is meant to regulate such process must abandon a targeted approach to either actors or values and adopt an ecosystemic standpoint instead.

An ecosystem is characterized by interacting biotic and non-biotic elements, so that its behavior cannot be studied by isolating either elements or interactions; rather, it must be studied in its entirety. Similarly, a data ecosystem is a concept framing the sociotechnical elements, actors and procedures contributing, all together, to create and manage data-based initiatives (Jarke et al., Reference Jarke, Otto and Ram2019). As for fairness, a general definition from the Cambridge Dictionary characterizes it as “the quality of treating people equally or in a way that is right or reasonable [by] considering everything that has an effect on a situation, so that a fair judgment can be made.” From these premises, a fair data ecosystem can be understood as one able to balance out the data interests (Hasselbalch, Reference Hasselbalch2021) of all the actors in play, based on shared values and in view of the sustainability of the whole data landscape (van Loenen et al., Reference van Loenen, Zuiderwijk, Vancauwenberghe, Lopez-Pellicer, Mulder, Alexopoulos, Magnussen, Saddiqa, Dulong de Rosnay, Crompvoets, Polini, Re and Casiano Flores2021). This is an ecosystemic characterization of fairness that underscores the trading off among different interests to seek to maintain an overall equilibrium.

This understanding of fairness moves away from both a reductionist and an essentialist definition of the term. Within the first group fall all those attempts, especially in computer science and software engineering, which seek to provide a mathematical definition of fairness, based on metrics against which algorithms can be tested on a pass/fail basis. Notwithstanding, the plethora of mutually exclusive characterizations of fairness this approach leads to (Kleinberg et al., 2016), its main limitation rests in the reduction of fairness to a computational matter which overlooks the contextual dimension of the term (Lee and Singh, Reference Lee and Singh2021). Far from being a purely quantitative affair, an evaluation of fairness cannot prescind from taking into account contingent factors, from individual to cultural values.

On the other hand, an essentialist understanding of fairness does account for the context-dependency of digital transformation, and yet it remains trapped within an understanding of fairness as a core quality of a technology or data process, so that it can be objectively assessed. For instance, Lee et al. (Reference Lee, Floridi and Singh2021) characterize fairness as an “evaluative judgement of whether a decision is morally right,” from which they proceed to identify key ethical indicators for enabling a “customized measurement of what ‘fair’ looks like” in each context. In so doing, however, fairness keeps attached to a specific scenario, falling short of producing a comprehensive approach to digital transformation.

To shift toward an ecosystemic understanding of fairness it is worth looking at how the EU defines this term in the context of the development and implementation of data-driven technologies. Notably, the High-Level Expert Group on Artificial Intelligence (2019) disentangles fairness as both a substantive and procedural affair: on the one hand, “individuals and groups are free from unfair bias”; on the other hand, it must be guaranteed “the ability to contest and seek effective redress” against tech-based decisional processes. This double-sided understanding implies not only the recognition of one’s own diversity and their inclusion by default into the collective, but the enforcing of mechanisms to reclaim such individual agency as part of a whole. On this point, Rochel (Reference Rochel2021) notes that as a structuring principle of the GDPR “fairness” is “linked to principles such as proportionality and other procedural dimensions of a balancing exercise involving rights and interests.” This highlights well the fact that, beyond the matching of certain requirements, fairness is an act of balance based upon the recognition and negotiation among different interests and rights on a flexible and rolling basis. A fair data ecosystem, then, shall be regarded not much as an arena where different players are connected, but as a process that constantly reshapes its own power relations.

A governance framework that aims to regulate a data ecosystem fairly identifies roles and rules to systemically represent the data interests of all actors involved, as well as mechanisms to adjudicate situations where conflicts among actors and/or values might arise. Hence, we introduce the idea of data republic as a concretization of such fair data ecosystem. “To be a republican,” Susskind (Reference Susskind2022) notes, “is to regard the central problem of politics as the concentration of unaccountable power.” Therefore, a data republic exists to the extent to which roles, rules, and mechanisms are envisioned to keep the whole ecosystem in balance, by adjudicating priorities in contentious cases.

In the following section, we will make a case for the coupling of a DC approach to the governing of data with OD frameworks and SDIs as one promising way to enable a fair data ecosystem.

4. Data Commons, Open Data, and Spatial Data Infrastructures

4.1. Data commons: Prospects and challenges

As a regime for the managing of resources, the concept of the commons can prove fruitful in the context of data governance.

Originally, the “commons” referred to common-pool resources (CPRs)—such as fisheries or forests—which are characterized by non-excludability and rivalry. These terms point to the fact that: (a) it is difficult to forbid access and use of CPRs to any potential beneficiary; and (b) the use of CPRs depletes them and reduces further use by others. Ostrom (Reference Ostrom1990) showed that the self-management of CPRs by communities can be more efficient and sustainable than market-driven or state-led approaches, provided that formal and informal principles, roles, and rules are designed and abided to.

By now, the commons has spilled over onto realms other than CPRs, coming to identify more broadly a system consisting of a resource, its users, the institutions binding them, and the associated mechanism processes (Feinberg et al., Reference Feinberg, Ghorbani and Herder2021). The trading mark of such system is to be non-appropriative by default (knowledge, technology, assets, and outputs are not owned, in the commercial sense of the term, but summoned up and recirculated); collaborative by design (it considers all actors and links within the ecosystem as integral and necessary to the system’s flourishing), and collectively sustainable in its goals (indeed, commons for the community). In other words, commoning practices enact an ecosystemic approach that strives to balance out individual and collective interests and values.

When it comes to data and technology, the spillover of the concept of the commons (Shkabatur, Reference Shkabatur2019) was favored by the consolidation of the Internet—an open infrastructure—supplying the basis for the proliferation of new forms of co-innovation, via freely accessible knowledge, design, and software (Kostakis et al., Reference Kostakis, Niaros, Dafermos and Bauwens2015). DC characterizes a regime in which actors join forces in the collection, pooling, and use of data (and digital infrastructures) subservient to the delivery of services for the whole community. DC initiatives (Morozov and Bria, Reference Morozov and Bria2018) aim to counteract and/or repurpose the centralized ownership and use of data—either by tech companies or states—by giving these back to citizens, with the goal to foster sustainable collective data practices. DC initiatives, then, truly reinserts citizens into the data ecosystem and allow them to have a say on or also co-develop tech solutions. At present, however, these initiatives fail to consolidate and achieve replicability (de Lange and de Waal, Reference de Lange and de Waal2019) and scalability (Calzada and Almirall, Reference Calzada and Almirall2020).

Over the last few years, various initiatives (Balestrini et al., Reference Balestrini, Rogers, Hassan, Creus, King and Marshall2017; Ajuntament de Barcelona, 2019; de Lange and de Waal, Reference de Lange and de Waal2019) have emerged around Europe attempting to enact a commons-inspired approach to data (and digital infrastructures) usually at city scale. For instance, Wolff et al. (Reference Wolff, Gooch, Cavero, Rashid, Kortuem, de Lange and de Waal2019) explored ways of creating more awareness in Milton Keynes’s citizenry about what can be done with and through data. Their research shows that digital platforms can help urban communities gather around shared concerns and proactively advance solutions. However, data literacy is still limited in the population, requiring initiatives to tackle such scarcity through the institution of facilitating roles for connecting governing bodies with communities. Mulder and Kun (Reference Mulder, Kun, de Lange and de Waal2019), instead, investigated the extent to which the pooling of communities via co-creative partnerships can lead to sustainable initiatives that integrate and/or rework institutional processes in the long run. They show that these initiatives are largely effective to boost collaboration at local level and on a temporary basis, but they fail to put forth a systemic change. Similarly, the “Bristol approach” (Balestrini et al., Reference Balestrini, Rogers, Hassan, Creus, King and Marshall2017) takes a participatory stance, prefiguring ways-of-doing which put citizens’ needs at the center of data-driven solutions. While enabling co-design, this approach falls short of identifying a proper governance framework which can sustain or replicate these initiatives. Overall, while much effort goes into the repurposing of data and infrastructures, this effort is still hardly reconciled with the fluid, self-organizing drives of communities (de Lange and de Waal, Reference de Lange and de Waal2019).

Institutionally speaking, one of the most consistent examples from the perspective of a fair data ecosystem comes from Barcelona (Ajuntament de Barcelona, 2019). In 2016, the Catalan municipality launched a “new social pact on data” composed of various initiatives, among which the establishment of DC regimes allowing citizens to own and keep control over their data. In the words of Morozov and Bria (Reference Morozov and Bria2018), the goal was to make good use of the power of data through “an ethical and responsible innovation strategy, preserving citizens’ fundamental rights and information self-determination.” Despite the echo produced by Barcelona’s initiative, several barriers are still in place (Monge et al., Reference Monge, Barns, Kattel and Bria2022), most of which resonate with those identified above, especially the difficulty of implementing long-term sustainability due to the lack of institutionalization and the needed infrastructures. Overall, Barcelona’s case reveals that a commons approach can be fruitfully applied to data only to the extent a broader ecosystem is taken into account.

4.2. Open data

To achieve the economic benefits of digital transformation, OD constitute a crucial asset (European Commission, 2014). Data are considered open when they are not personal and they can be freely used, re-used, and re-distributed by anyone, at most restricted by the obligation to name sources and “share-alike” (Open Knowledge Foundation, 2013). After over a decade of political and technological pooling, the push toward OD has acquired an institutional status in many countries.

In 2003 (and in an updated form in 2013), the European Parliament and Council (2003, 2013a) released the directive on the reuse of public sector information (PSI directive), with the main goal to boost economic value through the reuse of such information. Subsequently, in 2019, the EU enacted the OD directive (European Parliament and Council, 2019), which enlarges the scope of the PSI directive to involve, for instance, research data, as well as identifies priority sector data to be released as OD (e.g., geospatial, statistics, and mobility). Recently, the Data Governance Act (European Parliament and Council, 2020b) and the Data Act (European Parliament and Council, 2022) were proposed as policy pillars to further boost data sharing, fostering a trustworthy European digital single market. In fact, the Data Governance Act establishes (a) measures to facilitate the (re)use of sensitive public sector data; (b) mechanisms for citizens and businesses to make their data available; and (c) cross-border and cross-sector data sharing. The Data Act specifies the actual rights on the access to and (re)use of data, notably granting users to gain access to and make use of data generated by them, as well as identifying avenues for public sector bodies to access and use private sector data in exceptional circumstances (such as a public emergency). While these directives signal an increasing drive toward OD and the fostering of a data-inclusive ecosystem in terms of both actors involved and types of data pooled, limitations remain not only concerning the ethos surrounding such directives (as discussed in Section 2) but also their implementation.

Retracing the evolution of OD directives, Verhulst et al. (Reference Verhulst, Young, Zahuranec, Aaronson, Calderon and Gee2020) identify three waves. The first wave consisted mainly of making national data available upon request to an audience of experts, such as lawyers, journalists, and researchers. In the second wave, open government data (OGD) were made open by default to anyone. Yet, aware that data supply alone does not lead to more (re)use, nor by default to the creation of public value, the (expected) third wave embraces a more purpose-driven approach, putting equal emphasis on data supply and the broader context in which data are meant to be (re)used. Indeed, as Welle Donker and van Loenen (Reference Welle Donker and van Loenen2017) stress, it is important to be in touch with societal issues, while matching demand and supply of data. According to the authors, preconditions are for data to be: (a) known to the user; (b) attainable by the user; and (c) usable for the intended purpose of the user. Clearly, at stake is a matter of knowing which data are needed and for which (re)use purposes. On this point, Lupi et al. (Reference Lupi, Antonini, De Liddo and Motta2020) note that we need “appropriate data” rather than simply OD, insofar as today’s enduring under-exploitation of OD seems mainly due to a misalignment between “the provision of data and the actual information needs of local actors.”

To this, it must be added that OD initiatives have so far chiefly focused on the national and supranational levels, while much data reside at local level (Verhulst et al., Reference Verhulst, Young, Zahuranec, Aaronson, Calderon and Gee2020). This is also why scholars have called to actions to mobilize authorities at various levels for not only making datasets available, but also engaging citizens and foster stakeholder communities around OD (Mergel et al., Reference Mergel, Kleibrink and Srvik2018). Hence, while OD represent a key and by now institutionalized enabler to boost digital transformation, what is still missing are mechanisms and practices connecting (supra)nation and local levels favoring the matching between provision and demand of data across scales.

4.3. Spatial data infrastructures (SDIs)

A SDI is a dynamic and multi-disciplinary architecture that allows for access, reuse, and sharing of spatial data (Crompvoets et al., Reference Crompvoets, Rajabifard, van Loenen and Delgado Fernandez2008). Originally, SDIs consolidated following the proliferation of geospatial information systems which allowed governments for an increasing amount of spatial data to be collected for analytical and policy purposes (Scott and Rajabifard, Reference Scott and Rajabifard2017). SDIs, then, tend to have a national dimension by design with public authorities responsible for coordinating ready access to and interoperable use of these data.

As complex architectures, SDIs consists of seven core elements (van Loenen, Reference van Loenen2006): (1) (georeferenced) data; (2) people (actors who collect, create, process, and/or use data); (3) policies (for the allocation, use, and circulation of data); (4) institutional frameworks (political support and institutional arrangements to enact the use of data and pool actors into collaboration); (5) technology (methods and instruments, for the collection, gathering, storing, use, and circulation of data); (6) standards (the specifications, quality, and requirements for a smooth circulation of data and the interoperability across different services and actors); and (7) financial resources (the systematic allocation of fundings to keep SDI operations going). Today, by leveraging on over three decades of development, SDIs represent a robust backbone for (supra)national data-driven initiatives.

The three waves of OD echo the phases identified by Vancauwenberghe et al. (Reference Vancauwenberghe, Valečkaitė, van Loenen and Welle Donker2018) concerning SDIs’ evolution. In the 1990s, SDIs were producer-driven, with the focus exclusively on the supply of public georeferenced data (Masser, Reference Masser1999) by national bodies; in the early 2000s, some SDIs have become process-driven transiting from the provision of data to the provision of web-based services (Budhathoki et al., Reference Budhathoki, Bruce and Nedovic-Budic2008); today, a user-centric approach is advocated for in the attempt to not only match users’ needs with the right kind of data (and how these data can be best delivered), but also to involve users in the collection and release of data.

It is especially in this latest regard that OD play a crucial role, leading to the idea of open SDIs (SPIDER Consortium, 2021), whereby “open” refers as much to data from the public sector, private sector, and citizens (Vancauwenberghe and van Loenen, Reference Vancauwenberghe, van Loenen, Saeed, Ramayah and Mahmood2018), as to the infrastructure itself (Vancauwenberghe et al., Reference Vancauwenberghe, Valečkaitė, van Loenen and Welle Donker2018). Hence, an open SDI can be conceptualized as a data ecosystem where “all stakeholders commonly govern, share, and use open geodata” (SPIDER Consortium, 2021). While at the core of open SDIs are spatial data, in principle, the concept can be extended to other data—such as energy data or health data—provided that they are georeferenced. Welle Donker et al. (Reference Welle Donker, van Loenen and Bregt2016) show, for instance, that energy data belonging to a private energy distributor endowed with a public task were successfully released in an open manner while preserving users’ anonymity by setting different scales of granularity. Beyond such pilot improvements, however, at present issues remain concerning how to concretely operationalize such openness of SDIs, especially with regard to the systemic attuning to and harnessing of the local scale.

Pivotal to the consolidation of SDIs in the EU is the Infrastructure for Spatial Information in the European Community (INSPIRE) directive (European Parliament and Council, 2007) which aims to establish shared requirements for European SDIs in view of environment-related policies and activities. The directive sets standards and duties for public bodies to produce, receive, manage, or update spatial datasets, with the goal of facilitating the access to and sharing of spatial data across Europe and favor cross-boundary policymaking. In this respect, INSPIRE is a model of replicability—insofar as it is implemented by each member state—as well as scalability, insofar as its data-related specifications apply at all levels. However, 15 years after the approval of the directive, the number of users making use of INSPIRE-compliant spatial data for public tasks is still marginal, raising questions over the possible mismatch between the product (i.e., data) and the process (i.e., their use). In this regard, combining open SDIs with a DC approach that puts by default people and the community at the center of data practices constitute a matching worth exploring.

5. Coupling Open Data and Spatial Data Infrastructures with the Commons

Table 1 summaries strengths and weakness of DC, OD, and SDIs, and related values (keeping the DDRP as a benchmark). Their complementarity is key to fostering a fair data ecosystem. On the one hand, literature underscores how DC initiatives put communities at the center of their practices, showing a constitutive granularity which gives agency to local issues and actors. As a regime for managing data, the commons embodies an ecosystemic approach that tries to balance out the data interests of the community, in view of common(ing) goals. At the same time, however, these initiatives present limited replicability and scalability, because, being confined to a micro-scale dimension, they have limited institutionalization and infrastructures.

Table 1. Strengths and weaknesses of open data, spatial data infrastructures, and data commons and related values

On the other hand, an increasing amount of OD has been released since late 2000s, backed up by a series of directives, policy documents, and organs. This institutional framing mirrors the development of SDIs, which have consolidated, since early 1990s, as a backbone for the collection and dissemination of georeferenced data. At present, however, open SDIs remains at a conceptual level of development still seeking an operational approach capable of attuning to context-based demand and use of data, as well as linking (supra)national policies and infrastructures to the local dimension.

Here, we argue that the coupling of these three regimes does enable their mutual “institutioning” (Huybrechts et al., Reference Huybrechts, Benesch and Geib2017) and “infrastructuring” (Ludwig et al., Reference Ludwig, Pipek and Tolmie2018), intended as dynamic processes merging top-down and bottom-up stances and values. This is what makes sure to foster a fair data ecosystem. In other words, to think ecosystemically implies to establish the conditions—for example, links between institutional and noninstitutional initiatives; data literacies and techno-legal capacities; trust across actors—to turn data governance into a systemically fair process.

Far from being “monolithic” organizations, institutions are highly dynamic, with change being continuously exerted from both the outside and inside (Streeck and Thelen, Reference Streeck and Thelen2005). In this respect, Huybrechts et al. (Reference Huybrechts, Benesch and Geib2017) coin the gerund “institutioning” for accounting for such dynamic interplay and the negotiation of competing (non)institutional stances. Indeed, research (Cazacu et al., Reference Cazacu, Hansen and Schouten2020) shows that the process of institutionalization (e.g., of new ideas, expertise, instances, and roles) occurs at best when top-down and bottom-up dynamics not only are juxtaposed, but enter in dialogue at various scales, allowing to decrease power distances and guarantee more agency to all actors in play.

In turn, the process of institutionalization is based upon and brings with itself infrastructures. An infrastructure can be considered as the basic system for enabling certain operations. Research (Star and Ruhleder, Reference Star and Ruhleder1996) has unveiled the sociotechnical nature of infrastructures, as backbones comprising of both hardware and software arrangements—from cables, networks, and devices to protocols, services, and expertise—which allows for the reiteration of shared practices. In this case too, the noun can metamorphose into a verb, whereby “infrastructuring” (Ludwig et al., Reference Ludwig, Pipek and Tolmie2018) comes to characterize people’s active (re)design of hardware and software components fostering, de facto, an ongoing co-development of the social and technological sides of infrastructures.

Having said this, if on a theoretical level OD, SDIs, and DC are complementary, on a practical level their coupling occurs at the nexus where the local–global axis and the individual-collective axis intersect. This demands forms of “collectual” governance (Calzati, Reference Calzati2023) that synthesize subject-centric and collective-centric tensions across various scales. To make sure that OD, SDIs, and DC can constitute the pillars of a fair data ecosystem, it is necessary to contextualize their coupling, as we will do in the section unpacking the concept of “community” and “general interest.”

6. Toward the Data Republic

6.1. Community and (general) interest(s)

Beckwith et al. (Reference Beckwith, Sherry, Prendergast, de Lange and de Waal2019) consider OD and the commons as two mutually exclusive regimes, arguing that “data are ‘about’ locals” and discussing how “making data available as OD would lead to community impacts that were most unwelcome,” to the extent to which the very fact of opening data might have (un)intended consequences for both who is given access to and who remains excluded. On a closer inspection, however, such position rests on a thin conceptual basis. When speaking of (open) data and communities—and more generally of data ecosystem—one should always ask: Who is in play? According to which rules and values? Over which timeframe? At stake is an issue not of ownership, but control: the latter is open—much more than the former—to modulation. As Hummels et al. (Reference Hummels, Braun and Dabrock2021) note “in the end, mitigation mechanisms are necessary for both those who incur damages due to their inclusion, and those who incur damages from being excluded.”

This leads to discuss two key terms at the basis of a fair data ecosystem: “community” and “general interest.” A (data) community is a fractal concept (Tannier and Thomas, Reference Tannier and Thomas2013) as far as its scale is concerned in that it depends on the interplay among three components: infrastructures (e.g., ICTs), law (e.g., national policies, regional directives, and city’s orders), and locals’ knowledge (e.g., people’s practices and relations relevant to and framed within a given place). As long as these three components are ideally co-extensive (i.e., they overlap), then authority and territoriality are fully legitimate, and the exercise of power coincides with (and can be scrutinized in) the interest of the whole community. Whenever the co-extensiveness of the three is not guaranteed, as it often happens—for example, a community’s infrastructure extends well beyond the human relations bound to the territory or an international actor comes in play in a small community under international market laws—then we have a weakening of legitimacy because of a discrepancy between authority (who takes the decision) and territoriality (reduced or no community’s agency). Here is when self-organization fades, being substituted by top-down-only or global-market approaches.

This, in turn, implies that the general interest of a community is inevitably subjected to ongoing (re)negotiation. Already today, national, and supranational legal frameworks are in place for disentangling individual and collective interests concerning the access and (re)use of (personal) data. This is so because “general interest” is an entangled concept that demands constant contextualization. From an empirical perspective, the concept reflects the diversity of interests of all actors involved in a given situation (Healey, Reference Healey1997); from an ethical perspective, it constitutes the synthesis (not necessarily the sum) of all actors’ interests (Innes and Booher, Reference Innes and Booher2015). In fact, such synthesis is never given once and for all; it is based on discontinuities across the community. Concretely, this demands the design of a participatory approach able to identify, negotiate, and adjudicate among such discontinuities. But what kind of participation? And involving who? According to Arnstein (Reference Arnstein2000), it is only when citizens get effective and direct accountability and deliberative powers over the decisions to be taken that participation is valuable. To have successful participation, then, it is crucial to “manage the system as a process of continuous innovation, learning and adaptation” (Toots, Reference Toots2019), whereby new competences and skills are constantly acquired and put to use.

As far as the “who” is concerned, the quadruple helix—public sector, private sector, academia, and citizens—shall be regarded as the baseline instead of the optimum. In fact, a whole galaxy of (non)institutional actors does contribute to inform any data ecosystem: NGOs, nonprofit organizations, data intermediaries, data stewards, etc. (including free riders). This heterogeneous galaxy is increasingly acknowledged—yet, not operationalized—by the EU. For instance, the Data Governance Act (European Parliament and Council, 2020b) specifies the need to “designate one or more competent bodies to support the public sector bodies which grant access to the re-use of the categories of data.” Similarly, the Act identifies strategic areas of policy intervention, among which (a) a certification or labeling framework for data intermediaries, and (b) measures facilitating data altruism. Yet, how to systemically manage fairly such emerging ecosystem of diverse actors remains an open issue.

6.2. The data republic

Based on the strengths and weaknesses of commons-inspired initiatives as detailed in Section 4.1 (Figure 1) envisions the articulation of a two-tier model aimed at guaranteeing locals’ representativeness backed up by sufficient institutional and infrastructural support. Specifically, the two-tier model is composed of a Public Data Trust (PDT) with community-based Data Communes. This two-tier model allows for an institutional (i.e., public-led) and infrastructural (i.e., supported by consolidated SDIs, data policies, and practices) setup to be coupled with grassroots initiatives attentive to the local dimension. A PDT (Micheli et al., Reference Micheli, Ponti, Craglia and Berti Suman2020) “refer[s] to a model of data governance in which a public actor accesses, aggregates and uses data about its citizens, including data held by commercial entities, with which it establishes a relationship of trust.” Hence, a PDT is a public-led organ which creates the conditions, under certain rules, for the commoning of data—including access, reuse, and managing—provided by a diverse array of actors: public, private, academics, citizens, and noninstitutional ones. The constitution of the PDT as an institutional organ allows avoiding the limits of most DC initiatives, which fail to scale or replicate. In fact, the PDT is an organ endowed with allocated public funding, whose actions are independent from political turnouts, and which has deliberative power concerning data management. The PDT is composed by a directorate (Lupi, Reference Lupi2019) composed of one representative for each data stakeholder and the directorate is renewed on a periodic basis.

Figure 1. Model of data republic.

As an institutional public organ, the PDT taps directly into existing infrastructures and legal frameworks and leaves room for granular data practices. Hence, the PDT works as a catalyzer for all the actors who want to contribute to the data ecosystem; as an enabler for funding and tech/legal capabilities; and a guarantor of the complying, by all actors, to the rules for the commoning of data (an OD policy should be preferred whenever possible, but this optimum can be renegotiated, via collectively agreed decisions). At the same time, however, in order to avoid the locking up of the PDT into a form of self-referentiality, which might prevent an effective participation of citizens, data communes are also envisioned.

A data commune (Susskind [Reference Susskind2022] speaks of “mini-publics”) can aggregate on a voluntary basis for having its voice heard about a specific (data-related) issue. A data commune, then, is the magnifying lens at local level of data-related issues that institutional actors do not have the flexibility to attune to. To have a data commune, the (self)identified community gathers, collects data relevant to the issue to be solved, and then asks to be formally recognized by the PDT (the data commune can also have a limited temporal existence, while the PDT ensure the durability of the data pooled). The recognition of the data commune, based on the provision of quality data, allows the data commune to become part of the PDT, with one representative. In this way, the data commune can be involved in the city’s data governance—through the PDT directorate—in exchange for the contribution to the data lake of the PDT with its own indigenous data. Foreseeing that one of the barriers to data communes is the data literacies in the citizenry, their constitution is supported by pools of data stewards. This means that a data commune, even before being recognized as such, can asks the help of such figures.

Data stewards are public servant-data experts, whose role is that of mediators between the PDT and data communes. Moving beyond the corporate sector, Verhulst (Reference Verhulst2021) identifies data stewards as experts “identifying opportunities for productive cross-sector collaboration and responding pro-actively to external requests for functional access to data, insights or expertise.” In this respect, data stewards are key enablers for the merging of OD frameworks and SDIs with local communities. Among data stewards’ main tasks are: (a) advise the PDT, data communes, as well as other actors on data-related matters; (b) support data capability building within the public sector, as well as coordinate data literacy programs for the communities; and (c) counsel lawyers on tech-legal related matters. Data stewards should become an increasingly stabilized figure in the data republic context, and this might also mean to enforce programs for their recruitment and formation.

Lastly, representatives of the data communes, members of the PDT, and a selected number of data stewards come to constitute the board of data arbitration (renewed on a regular basis). To the extent to which the data republic enacts a fair data ecosystem where the concentration of power is to be avoided by balancing out the interests of all stakeholders involved, the board of data arbitration is meant to preserve the equilibrium of the whole data ecosystem and pursue its general interest. The board, then, works in the spirit of a jury and is responsible for adjudicating contentious issues, which can happen at various scale, based on conflicting values (e.g., individual and collective), or across various actors (e.g., between data communes or involving private and public actors). The decision of the board shall be legally binding or only consultative depending on the nature of the issue at stake. The board of arbitration shall not sanction the working of the PDT, although it can have a consultative (nonbinding) role to the PDT.

7. Conclusion

In this article, we introduced the concept of fair data ecosystem as an alternative to corporate-driven, state-led, and citizen-centric approaches to digital transformation. These approaches show limitations especially in terms of socio-economic inclusiveness, R&D diversification, and the balancing of individual and collective values. Based upon an ecosystemic understanding of fairness, a fair data ecosystem comprises roles, rules, and mechanisms to systemically take into account and, when needed, adjudicate among the data interests and values of the actors involved—beyond the quadruple helix—in order to keep the ecosystem in balance in view of common goals.

As a concretization of such fair data ecosystem, we proposed the design of a data republic. A republic is, by definition, a system that, through checks and balances, prevents the accumulation of too much unaccountable power in any actor’s hands. To enable the emergence of the data republic, we advanced the coupling of a DC approach with OD frameworks and SDIs. We showed that these three regimes present complementarity features, with DC enacting participation and socio-economic inclusiveness at micro level, but lacking scalability and replicability, while OD and SDIs promote economic benefits and are consolidated at institutional and infrastructural levels, but lack the needed granularity to respond to locals’ contextual needs with a collective outlook in mind.

While such coupling allows enticing institutioning and infrastructuring as the dynamic interplay of top-down and bottom-up stances, in practice this requires to disentangle on a rolling basis what the “community” and the “general interest” of a given data ecosystem are. From here, we design the data republic model as consisting of a two-tier articulation of a public-led PDT with voluntary “data communes”; a “board of data arbitration” for disentangling contentious issues on data management, and “data stewards” as public servants responsible to provide a bridge between PDT and data communes. The model emerges at the intersections of the limitations shown by OD, SDIs, and DC regimes; however, we do not claim here that the model will fix these limitations; instead, we propose to look at these regimes complementarily to move away from an understanding of data governance as targeting certain actors over others and prioritizing economic, individualistic performance over the social and collective dimensions. At stake is, above all, the ability of the model to foster systemic links between institutional and noninstitutional actors, as well as to negotiate between top-down and bottom-up processes. Although, in principle, a data community and general interest are fractal concepts, from a practical point of view the city is a privileged locus for testing the data republic model not only because the city is a meso-dimension linking local and (supra)national levels, but also because the city is at once a unique place of tech innovation (Jacobs, Reference Jacobs1969) and a major target of this same innovation.

We are aware that, at present, the model of the data republic is still at a high-level of abstraction and demands not only a more fine-grained operationalization at legal and technical levels, but also a cognizant design of long-term strategies for tackling organizational issues. In fact, the model designed here needs to move beyond the page and find a practical enactment, ideally via action research, in order to test its robustness (as well as un/foreseen barriers). At this stage, however, it is already possible to indicate some policy-oriented steps to favor the enactment of such model. Notably policy efforts that maintain the city as a pivotal dimension are necessary to build (a) long-term tech-legal capacity in the public sector; (b) data literacy in citizenry; and (c) trust across institutional and noninstitutional actors. It is a whole process that needs to be fostered, and this requires mobilization of educational programs, conjoint public-private funding, and ongoing political support.

Competing interest

The authors declare no competing interests exist.

Author contribution

S.C. and B.v.L. designed the rationale of the article. S.C. wrote the article. B.v.L. provided comments and revised the article.

Data availability statement

Data availability is not applicable to this article as no new data were created or analyzed in this study.

Funding statement

This work received no specific grant from any funding agency, commercial or not-for-profit sectors.

Footnotes

1 From a normative standpoint, here, the focus is on the United States, China, and the EU. For a discussion that unpacks the techno-geopolitical tensions between big tech corporations and states across a transnational axis, see Wen (Reference Wen2021) and Glasze et al. (Reference Glasze, Cattaruzza, Douzet, Dammann, Bertran, Bômont, Braun, Danet, Desforges, Géry, Grumbach, Hummel, Limonier, Münßinger, Nicolai, Pétiniaud, Winkler and Zanin202 Reference Au and Kuuskemaa3).

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Figure 0

Table 1. Strengths and weaknesses of open data, spatial data infrastructures, and data commons and related values

Figure 1

Figure 1. Model of data republic.

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