| Dokumendiregister | Siseministeerium |
| Viit | 5-1/81-1 |
| Registreeritud | 22.12.2025 |
| Sünkroonitud | 23.12.2025 |
| Liik | Sissetulev kiri |
| Funktsioon | 5 EL otsustusprotsess ja rahvusvaheline koostöö |
| Sari | 5-1 Euroopa Liidu otsustusprotsessi dokumendid (AV) |
| Toimik | 5-1/2025 |
| Juurdepääsupiirang | Avalik |
| Juurdepääsupiirang | |
| Adressaat | Justiits- ja Digiministeerium |
| Saabumis/saatmisviis | Justiits- ja Digiministeerium |
| Vastutaja | Euroopa Liidu ja välissuhete osakond |
| Originaal | Ava uues aknas |
EN EN
EUROPEAN COMMISSION
Brussels, 19.11.2025
COM(2025) 835 final
COMMUNICATION FROM THE COMMISSION TO THE EUROPEAN
PARLIAMENT AND THE COUNCIL
DATA UNION STRATEGY
UNLOCKING DATA FOR AI
1
1. Introduction - Unlocking data for artificial intelligence
Artificial intelligence is transforming the global economy, and, the EU needs large volumes of
high-quality data to compete and drive innovation. Without such data, the EU cannot build
strong AI models, optimise healthcare or the energy system, or sustain industrial leadership.
For small-and medium enterprises in particular, better data access will be decisive for scaling
and remaining competitive.
The EU has laid strong foundations for the creation of a secure, interoperable single market for
data through key legislations such as the Data Act1, and investing in common European data
spaces2. At the same time, the AI Continent Action Plan3 and the Apply AI Strategy4 have
created the conditions for the EU to lead in AI development and uptake.
Yet, the EU is facing a scarcity of data for AI development, and growing geopolitical
competition where data is increasingly seen as a strategic asset. Much valuable data remains
siloed or underused, also due to a complex patchwork of data rules, while global competitors
move faster to exploit it for technological and industrial advantage.
To facilitate compliance and improve predictability, the digital omnibus proposes to simplify
the data regulatory landscape by merging four legal instruments into one single, coherent
data framework. Moreover, to support companies and ease compliance, the strategy will be
accompanied by a comprehensive support package under the Data Act. Model contractual
terms standard cloud clauses and a dedicated helpdesk will help SMEs in particular navigate
obligations, reduce legal complexity and focus on innovation. Model clauses will apply to both
B2G and B2B relations, supporting data creation, sharing and simpler contracts.5
The Data Union strategy shifts the focus from rules to results, To achieve this, the EU will act
in three priority areas:
• scaling up access to data for AI, with initiatives such as data labs that offer trusted
pseudonymisation services and pool data resources across public and private actors to
provide companies and researchers with high-quality datasets.
• streamlining data rules to make sharing data easier for businesses and researchers,
including reforming cookie consent to reduce fatigue while protecting rights.
• strengthening the EU’s global position on international data flows, by tackling
unjustified trade barriers so that European companies can compete on a level playing
field globally.
1 Regulation (EU) 2023/2854 of the European Parliament and of the Council of 13 December 2023 on harmonised rules on
fair access to and use of data and amending Regulation (EU) 2017/2394 and Directive (EU) 2020/1828 2 European Commission, Commission Staff Working Document on Common European Data Spaces, SWD(2024) 21 final, 24
January 2024. 3 European Commission (2025). AI Continent Action Plan. Communication from the Commission to the European Parliament,
the Council, the European Economic and Social Committee and the Committee of the Regions. COM(2025) 165 final.
Brussels: European Commission. 4 European Commission, Apply AI Strategy, COM(2025) 723 final, Brussels, 8 October 2025 5 Updated EU AI model contractual clauses | Public Buyers Community
2
2. Building on the European strategy for data (2020–2025)
With the 2020 European strategy for data6, the EU created the legal and institutional
foundations for a secure and fair single market for data. The goal was to unlock the potential
of data for innovation and growth while protecting rights. However, with generative AI and
rising geopolitical competition, it is clear that the EU needs to go beyond the foundations it has
built.
The European strategy for data was the driver of key legislation to build trust, promote data
sharing, and clarify rules across the data value chain. The Data Governance Act created
mechanisms for trustworthy data sharing, regulated intermediaries, introduced a framework for
voluntary sharing of data by companies for purposes of general interest (voluntary data
altruism), and opened up certain protected public-sector datasets. The Data Act unlocks data
from connected products and services by clarifying access and usage rights. Lastly, under the
Open Data Directive and its Implementing Act on high-value datasets (applicable since June
2024) certain public sector datasets had to be made freely and openly available in machine-
readable formats. However, inconsistent national implementation and uncertainties around
trade secrets are some of the remaining challenges of the existing legislative framework.
Supporting measures that were set up under the European strategy for data include working
with the European Data Innovation Board to coordinate Member States’ efforts and a
standardisation request to lay the groundwork for a European trusted data framework.7
To make the European single market for data a reality,
between 2021 and 2024 the Commission also invested €336
million in 14 strategic common European data spaces
spanning key economic sectors and areas of public interest,
complementing national and private-sector efforts. These
spaces provide secure infrastructure and governance
frameworks for voluntary data sharing under agreed
conditions. The main challenge now is scaling up these
efforts for EU-wide impact.
3. Three challenges the EU must address now
As AI technology and services reshape the global landscape, the EU must urgently confront
three new, strategic challenges: data scarcity, regulatory complexity, and rising global
competition.
6 The European data strategy – Shaping Europe’s digital future, Publications Office,
2020, https://data.europa.eu/doi/10.2775/645928 7 European Commission, Commission Implementing Decision C(2025) 4135 of 1 July 2025 on a standardisation request to
the European standardisation organisations as regards a European Trusted Data Framework in support of Regulation (EU)
2023/2854 of the European Parliament and of the Council, available at: https://ec.europa.eu/growth/tools-
databases/enorm/mandate/614_en (accessed on 27 October 2025)
The European Cancer Image
Data Space covers
anonymized images and
annotations. By 2027, it will
include more than 60
million cancer images.
3
Data Scarcity: A structural bottleneck for innovation
With the rise of generative AI, large language models (LLMs) and Agentic AI8, access to high-
volume, high-quality, unseen, and domain-specific datasets has become a defining factor of
global competitiveness. According to Epoch AI, the size of datasets used to train LLMs doubles
approximately every six months.9
LLMs and other kinds of foundation models demand massive, diverse sets of training data.
Studies suggest that, at current trends, the volume of publicly available training data could be
exhausted between 2026 and 2032.10
The EU’s challenge is twofold: (i) to make high-quality datasets, including also sector-specific
datasets, more widely available; and (ii), to ensure the computing infrastructure needed to
process these datasets is accessible at scale. Many European firms, especially SMEs and start-
ups, lack the data volume and diversity and the access to European compute capacities needed
to develop competitive AI solutions. Without urgent action, the EU risks being left behind.
Regulatory complexity: fragmentation hampers scale
Following the 2020 European strategy for data, the EU introduced landmark regulations
building on pre-existing rules - the Data Governance Act11, the Data Act, and various sectoral
laws such as the European Health Data Space Regulation12. Each of these initiatives focused
on specific issues, such as mechanisms for data sharing, fair distribution of value and tackling
burdensome localisation requirements. However, complex interplay between the General Data
Protection Regulation (GDPR)13 and sectoral laws, and uneven implementation across Member
States created a fragmented regulatory landscape, legal uncertainty, including for public
authorities, and raise compliance costs, especially for start-ups and SMEs.
For example, providers of data intermediation services – still an emerging field – are subject
to restrictive legal obligations that limit their ability to grow. There is a need to avoid burdening
early-stage ecosystems with disproportionate requirements that impede the uptake of data-
sharing models and the roll-out of data spaces. To unlock innovation, the EU must simplify the
rules on data access and use.
8 “Agentic AI are AI systems that can independently make decisions and take actions. This enables agents to understand
language, reason about tasks, take actions autonomously to achieve predefined objectives, and interact with the world around
them, orchestrating interactions including with humans 9 Robi Rahman and David Owen (2024), "The size of datasets used to train language models doubles approximately every six
months". Published online at epoch.ai. Retrieved from: 'https://epoch.ai/data-insights/dataset-size-trend' [online resource] 10 Villalobos, P., Ho, A., Sevilla, J., Besiroglu, T., Heim, L., & Hobbhahn, M. (2024). Position: Will we run out of data? Limits
of LLM scaling based on human-generated data. In K. Chaudhuri, S. Jegelka, L. Song, D. L. Silver, & Y. Ermon (Eds.),
Proceedings of the 41st International Conference on Machine Learning (Vol. 235, pp. 42085–42101). PMLR.
https://proceedings.mlr.press/v235/villalobos24a.html 11 Regulation (EU) 2022/868 of the European Parliament and of the Council of 30 May 2022 on European data governance
and amending Regulation (EU) 2018/1724 (OJ L 152, 3.6.2022, p. 1) 12 Regulation (EU) 2025/327 of the European Parliament and of the Council of 11 February 2025 on the European Health
Data Space and amending Directive 2011/24/EU and Regulation (EU) 2024/2847 13 Regulation (EU) 2016/679 of the European Parliament and of the Council of 27 April 2016 on the protection of natural
persons with regard to the processing of personal data and on the free movement of such data, and repealing Directive 95/46/EC
4
Global competition: data as a strategic asset
In the AI race, access to high-value data is a key strategic advantage. Globally, data has become
a geopolitical asset, with data access, localisation, and control increasingly used as instruments
of power. While the EU promotes open, secure, fair and trusted data flows, other jurisdictions
follow assertive or protectionist strategies. Localisation and restrictive access regimes abroad
limit the EU’s access to global resources and expose EU firms to economic and security risks.
To unlock the full potential of European AI, the Union must treat data as a core strategic
resource and invest in secure, high-quality, and interoperable datasets that reflect European
values and standards. Strengthening Europe’s ability to collect, curate, and use its own data is
both an economic and security imperative. The EU must secure beneficial flows, safeguard
sensitive non-personal data within the EU, and support digital sovereignty amid intensifying
technological rivalry.
4. The three pillars of the Data Union Strategy
Pillar I: Scaling up access to quality data
for AI and innovation
The EU’s competitiveness in AI and digital
innovation depends on access to high-quality
data and the infrastructure to share and use
data securely at scale. The EU has already laid
strong foundations with common European
data spaces, governance frameworks, and
major investments in cloud technology and
computing. The challenge now is to move
from pilot projects and fragmented initiatives
to a seamless, interoperable, and sustainable
data ecosystem, encouraging breakthrough
innovation and strengthening the EU’s digital
sovereignty.
To achieve this, the Commission will act along
two complementary tracks. First, it will launch
flagship initiatives that address the EU’s most
immediate bottlenecks: limited access to
critical datasets, insufficient infrastructure for
large-scale AI development, and the need for
trusted environments, including data labs that
connect data spaces with AI developers. These
data labs will serve as specialised service
facilities providing secure environments,
practical tools, and expert support for data pooling, curation, pseudonymisation, and
Data Spaces and Data Labs: The Building
Blocks of Europe’s AI Ecosystem
Common European Data Spaces are data-
sharing ecosystems built on cloud
infrastructure and clear governance rules
defining who can access, use, and share data.
They connect public and private actors around
trusted mechanisms for data exchange within
and across sectors.
Data Labs are data service providers that
link these data spaces with the AI
ecosystem. They give companies and
researchers secure, practical access to
high-quality datasets, the support they need
to ensure compliance with EU rules, and
offer tools, guidance, and trusted
environments for data pooling, curation,
labelling and pseudonymisation.
Data spaces provide the structured sources
of trustworthy data, while data labs turn
this data into usable resources for
innovation and AI development, ensuring a
seamless flow from availability to
application.
5
anonymisation. They will help companies, especially SMEs, turn data into usable resources for
AI training while preserving data control. These efforts will work hand in hand with the Apply
AI Strategy, ensuring that data availability directly supports AI deployment and innovation
across industries and public sectors. Second, it will reinforce these efforts with horizontal
enablers: legal clarity for data pooling, standards for data quality, and investment in synthetic
data14 capacities, ensuring scale, trust, and long-term sustainability across all sectors.
i. Scaling up the common European data spaces
The common European data spaces (CEDS) are central to building a single market for data.
The next phase will scale them up and link them to AI infrastructure through data labs and AI
factories, turning the EU’s data assets into fuel for trustworthy AI. In close synergy with the
Apply AI Strategy, these efforts will ensure that data spaces directly enable AI development
and deployment across sectors.
Simpl cloud middleware15 will enable interoperability across initiatives through an open-
source, modular, and secure set of components. This lowers barriers for SMEs and creates
faster links between ecosystems. The data spaces support centre will reinforce uptake,
especially among SMEs, by raising awareness and practical guidance.
Future EU funding for CEDS will prioritise sectors of public interest, such as health, mobility,
energy, public administrations and the environment, while mature domains like manufacturing
and finance transition to market-driven
models. The Commission will support this
transition by promoting standardisation,
interoperability, and co-investment
frameworks. End-user integration, AI
readiness, and financial sustainability will
remain key objectives.
Among the flagship actions under the
Apply AI Strategy, the EU will leverage
Common European Data Spaces to
accelerate AI deployment across key
sectors and support the development of
Frontier AI models through the Frontier AI
Initiative. These actions are closely linked
to other Apply AI flagships, such as
Foundational Models for Industry, AI-
powered Pharma Discovery, Autonomous Drive Ambition Cities, each drawing on sectoral
14 Synthetic data is artificially generated data that is not collected from real-world events but is engineered to statistically
mimic the properties, patterns, and relationships of a real dataset. 15 Simpl is an open source, secure middleware that supports data access and interoperability in European data initiatives. It
provides multiple compatible components, free to use, that adhere to a common standard of data quality and data sharing;
https://simpl-programme.ec.europa.eu/
Next Steps for European Health Data Space:
The EHDS will serve as a key bridge between
health data ecosystems and AI development,
allowing data labs and AI Factories to
leverage anonymised and synthetic datasets
within trusted processing environments.
From March 2029, patient summaries and
ePrescriptions will be exchanged across all
Member States, alongside secondary use of
most health data. By March 2031, this will
extend to medical images, lab results and
discharge reports, with genomic and other
data added for secondary use.
6
data made available through the Common European Data Spaces. This approach translates into
concrete applications: AI-powered screening centres in healthcare that validate diagnostic tools
using the European Health Data Space16; trusted data pooling in manufacturing through the
Data Space for Manufacturing to train specialised and frontier AI models; and an Agri-Food
AI Platform that supports the uptake of AI-enabled farming tools using the Common European
Agricultural Data Space.
As of 2026, the roll-out of data spaces across priority sectors will continue, supported by
ongoing EU investment of around EUR 100 million enabling trusted and large-scale data use
for AI applications. The European Health Data Space will support AI-based diagnostics and
personalised medicine and serve as a key bridge between health data ecosystems and AI
development, allowing Data Labs and AI Factories to leverage anonymised and synthetic
datasets within trusted processing environments; the common European Mobility Data Space
will enable the connection vehicles, infrastructure, and logistics for safer, greener transport; the
Energy Data Space will facilitate smart and flexible energy services; and the Media Data
Space will boost creative industries through AI-driven cultural innovation. Data labs will act
as practical entry points to these data spaces, helping organisations access, prepare and use the
data effectively for AI. Within this framework, the European legal data space will expand
access to legal and judicial data through common identifiers and metadata for case law and
legislation, enabling LegalTech to use this data. The need for a contract terms data pool for
automated contracting will be explored in this context.
The Commission will fast-track environmental digitalisation through the Green Deal Data
Space, enabling the DigitalGreenTech community to scale cross-sector solutions using
reusable components and high-quality datasets. Priority actions include data-driven services
for the European Water Resilience Strategy, digitisation of permitting processes, pilots on
textile traceability and nature credits, and advanced forest monitoring with machine learning
on open and confidential data.
A European Defence Data Space will create a trusted environment for pooling operational,
industrial, and research data to develop next-generation defence systems, boost industrial
capabilities, and strengthen EU technological sovereignty by reducing reliance on third-
country providers. Drawing on Ukraine’s experience in data-driven defence, the Commission
will explore cooperation and knowledge exchange. The initiative will be developed with
Member States and relevant stakeholders, including businesses. 17
ii. Data labs
As outlined in the AI Continent Action Plan, data labs will be specialised facilities, linking data
holders, common European data spaces, domain-specific data ecosystems, and the EU AI
16It will also build on Europe’s Beating Cancer Plan, the Life Sciences Strategy, and the EU Cardiovascular Health Plan 17 This initiative will be guided by the European Defence Agency’s feasibility study due by end-2025
7
ecosystem. Data labs18 will provide hands-on services – such as data pooling19, curation20,
labelling and pseudonymisation21 – to help organisations, in particular start-ups and scale-ups,
share and use data safely, facilitate cooperative AI training and support the development of AI
models in key sectors and covering different governance and licensing models. In line with the
Apply AI Strategy, data labs will translate the availability of high-quality data into concrete AI
deployment, serving as practical enablers that accelerate experimentation, adoption and
scaling.They can also be used to carry out tasks that require advanced AI resources on behalf
of Data Spaces and other Data infrastructures, for example producing synthetic data, or
carrying out advance privacy and business secrecy preserving, to help organisations to share
and use data safely.
By pooling public and private resources, data labs will help overcome a key market failure:
limited availability of diverse, high-quality data and reluctance to share privately held data for
AI training. They will operate through existing access channels and frameworks without
requiring direct data transfer. In doing so, data spaces remain the trusted infrastructures where
data is governed and made available, while data labs can act as the operational interface that
enables its safe, value-adding use for AI.
Participation will be voluntary, and data holders decide how, when, and by whom data can be
used. No data will be transferred without explicit consent. All activities will be protected by
strict confidentiality safeguards and supported by privacy-preserving and decentralised
techniques such as federated learning, homomorphic encryption, and secure multi-party
computation. Data can be processed locally or across nodes without being merged into a single
repository, ensuring that it remains under the control of the original holder. This model –
particularly beneficial for SMEs – supports compliance with EU data protection rules,
safeguards confidentiality, and builds trust while expanding data use for AI.
The EU’s compute capacity has evolved from science-oriented high-performance computing
(HPC) under EuroHPC to AI Factories, which expand this concept to support AI development,
linking compute infrastructure with data access and experimentation. The upcoming AI
Gigafactories will further scale AI compute facilities.
Within this framework, the first data labs will be established under the AI Factories initiative
through EuroHPC, providing secure environments and data services to connect AI developers
with common European data spaces in areas such as healthcare, manufacturing, energy and
climate, and expanded to languages, cybersecurity, and cultural heritage. To ensure their
services reach companies and public administrations, data labs will work in close coordination
18 In some contexts, the term “data containers” is used to refer to similar facilities that enable structured, secure, and trusted
data use across different settings. Together with the broader concept of “data containerisation,” they reflect a complementary
approach to organising and governing data exchange, promoting interoperability and consistency across the EU AI ecosystem. 19 Combining and sharing of data from multiple sources into a single, centralized repository or shared environment. 20 Organising, integrating, validating, and maintaining data including its labelling for improving access and use. 21 Art 4(5) of the Regulation (EU) 2016/679: “The processing of personal data in such a manner that the personal data can no
longer be attributed to a specific data subject without the use of additional information, provided that such additional
information is kept separately and is subject to technical and organisational measures to ensure that the personal data are not
attributed to an identified or identifiable natural person.”
8
with the European Digital Innovation Hubs (EDIHs), which act as user-facing contact points
and help match data needs with concrete applications.
Further Data Labs will be set up independently in other domains to address specific sectoral or
research needs, such as the energy sector. The upcoming AI Gigafactories will further scale AI
compute facilities and prepare the Data Lab model for commercial rollout across the EU,
turning it into a self-sustaining service ecosystem that connects compute, data, and AI
innovation.
Data labs will provide services specifically across nine key areas:
• Bridge between data spaces and AI ecosystems: practical linkage that enables
companies to access high-quality, interoperable data by connecting common European
data spaces with AI developers, infrastructures and sectoral ecosystems.
• Technical infrastructure and tools: data containers will enable efficient storage and
organisation of data complemented by secure environments for the on-site processing
of sensitive data, along with ready-to-use tools for data preparation and privacy-
preserving techniques to achieve anonymisation and synthetic data generation. A high
standard of usability, speed, and scalability will be ensured so that tools are simple,
reliable, and easy to adopt.
• Data pooling: support for companies in aggregating data from public and restricted
sources - particularly data used for innovative purposes -, using the trusted data sharing
mechanisms of the common European data spaces. Data Labs will support businesses
to comply with EU competition law when exchanging or pooling data. Building on and
complementing the Horizontal Guidelines, which provide companies with practical
guidance on collaboration and shared resources, the Commission will further support
Data Labs in this role with dedicated guidance on best practices in data exchange and
pooling. In addition, tailored guidance for individual data labs following a request under
the Informal Guidance Notice will be available.
• Pseudonymisation and anonymisation services: provision of advanced tools and
expertise to remove or mask personal identifiers. These services will include techniques
such as pseudonymisation, anonymisation, and differential privacy, enabling safe data
reuse while maintaining analytical utility.
• Synthetic data generation: support for creating high-quality synthetic datasets that
replicate the statistical properties of real data without exposing sensitive or confidential
information. Data labs will provide tools and expertise to generate, validate, and
benchmark synthetic data for AI model training and testing, complementing
anonymisation efforts and improving data availability in sensitive domains.
• Data curation, labelling, and vectorisation: comprehensive support for cleaning,
labelling, annotating, enriching, and vectorising datasets to make them reliable,
representative, and usable for AI training. This includes quality assurance processes,
transparent documentation, and collaboration with expert communities for domain-
specific labelling.
9
• Regulatory guidance and training: tailored advice to help businesses comply with
EU law combined with training for AI developers on data use and legal obligations,
such as AI regulations, copyright, trade secrets and competition law, combined with
training for AI developers on data use and legal obligations.
• Bridge between data spaces and AI ecosystems: practical linkage that enables
companies to access high-quality, interoperable data by connecting common European
data spaces with AI developers, infrastructures and sectoral ecosystems.
Data access facilitation: a demand-driven service where start-ups and SMEs can signal
their data needs, with data labs helping them find relevant datasets and overcome
market, legal or administrative barriers.
iii. The Cloud and AI Development Act
Sustainable data centre capacity and sovereign cloud and AI services are a prerequisite for the
EU to achieve the objectives laid down in this strategy. As increasing amounts of data are
generated, there is a growing need to collect, store, combine and process this data. To minimise
How would a data lab work in practice?
A company in Member State X develops AI-based predictive maintenance systems for
electric vehicles but struggles to access enough high-quality sensor data from different car
models and charging infrastructures. Individual manufacturers are hesitant to share this
data due to trade secrets, privacy, and competition concerns. AI Factories will provide the
computing resources and, through their integrated data labs, data management services
needed to overcome these barriers.
Through the data lab, the company would access trusted, anonymised, and aggregated
datasets coming from different sources, such as public charging operators, participating
Original Equipment Manufacturers (OEMs) and other data discovered via the European
mobility data space.
As a component of the AI Factory, the data lab would offer:
• Secure environments to analyse real-time sensor data through federated learning
without the data leaving OEM systems.
• Anonymisation services ensuring privacy-compliant use of driver and vehicle data.
• Regulatory guidance on applying the Data Act’s data access provisions and
managing trade secret protection.
• Data curation tools that harmonise different sensor formats and quality standards.
The lab thus would act as a bridge between the mobility data space and the AI ecosystem,
allowing the company to train robust AI models while safeguarding manufacturers’
confidentiality.
10
latency22 and decrease reliance on infrastructure located in other parts of the world, the EU
needs to house sufficient data centre capacity.
To ensure the availability of sustainable data centre infrastructure and sovereign cloud and AI
services for EU businesses and public administrations, the Commission will propose a Cloud
and AI Development Act in Q1 2026. This initiative will support innovation across the entire
cloud and AI value chain, from the integration of cutting-edge processors to sustainable cooling
technologies and AI hardware and software. It will also accelerate the roll-out of sustainable
data centre capacity, ensuring that the EU has the infrastructure needed for secure and
sovereign cloud and AI services.
iv. Strategic data assets: public sector, scientific, cultural and linguistic resources
The EU’s competitiveness in AI depends on access to high-quality, structured, and trustworthy
data. Scientific, cultural, and linguistic datasets are critical enablers for robust AI models,
research breakthroughs, and technological sovereignty.
Public-sector reference datasets under the Open Data Directive will be scaled up. The high-
value datasets23 have to be made available free of charge, through application programming
interfaces (APIs), in a machine-readable format and, where relevant, provided as a bulk
download. In 2026, the Commission will propose to expand the list of high-value datasets to
cover legal, judicial, administrative and other data. This will be beneficial for start-ups and
SMEs. The Commission will also monitor whether further datasets should be added.
Scientific data has already proven transformative, as seen with AlphaFold.24 Well-structured
databases reduce research and development (R&D) costs, accelerate innovation, and open up
new frontiers in materials, pharmaceuticals, energy, and biotech. To build on this, the
Commission will continue to map existing databases, to set priorities with experts, secure usage
rights, and fund new digital infrastructures according to the European strategy on research and
technology infrastructure. In this regard, the European Open Science Cloud (EOSC), the
common European data space for R&D, is developing a federation of data repositories with a
trusted platform for sharing and reusing high-quality, findable, accessible, interoperable and
reusable (FAIR) research data, tools and services across disciplines and borders in Europe. This
will support the scientific activities with AI in RAISE.25 In parallel, the forthcoming proposal
22 Latency is the time it takes for data to pass from one point of a network to another. 23 In line with Annex I of the Open Data Directive these high value datasets come from the following categories: geospatial,
earth observation and environment; meteorological; statistics, companies and company ownership, mobility. New categories
can be added. 24 AlphaFold is an Artificial Intelligence system developed by Deep Mind, which uses deep learning and large amounts of data
to predict protein structures. This helps accelerating breakthrough research in many fields of biology. 25 European Commission (2025). Communication from the Commission to the European Parliament and the Council – A
European Strategy for Artificial Intelligence in Science: Paving the way for the Resource for AI Science in Europe (RAISE).
Brussels, 8 October 2025, COM(2025) 724 final
11
for a European Research Area (ERA) Act26 will strengthen legal conditions to share, access
and reuse publicly funded research results, publications and data for scientific purposes.
The EU’s cultural and linguistic resources will also be scaled up. More than 30 million digitised
works from Europe’s cultural institutions will be made available for AI development, building
on the Europeana initiative.27 The Commission will explore how to strengthen cooperation and
encourage licensing between public broadcasters and AI providers, in order to make their
audiovisual archives accessible for AI training, taking into account the remuneration of
rightsholders.
Pilot projects under the European common language data space and the Alliance for
Language Technologies (ALT-EDIC) will crowdsource domain-specific datasets including
from smaller languages, adding to the 477 billion tokens already available - comparable to
leading AI training datasets. This will also help to ensure that rare languages are included in
AI Large Language Models (LLM) development, which will have an impact on the quality of
the results of AI systems in these languages.
v. Horizontal enablers: synthetic data, data pooling, and standards
Alongside flagship initiatives, the EU also needs horizontal measures that cut across sectors
and give scale to the entire data economy.
Synthetic data as a driver of AI leadership
Synthetic data28 can unlock AI training in areas where data is scarce or sensitive, from rare
disease research through to robotics or autonomous driving edge cases. It enables AI model
development without exposing personal or proprietary information, strengthening both
competitiveness and privacy-preserving innovation.
To harness this potential, the Commission will develop guidance and standards for trusted
synthetic data use, examine the related legal questions, consult on a voluntary European
certification scheme, and explore the possibility of setting-up a ‘synthetic data factory’ to
provide access to high-performance computing for large-scale dataset generation. Horizon
Europe will also fund cutting-edge R&D in synthetic data generation techniques.
26 European Commission, Forthcoming proposal for a European Research Area (ERA) Act, announced in the Commission
Work Programme 2025, Brussels, 11 February 2025, available at: https://commission.europa.eu/strategy-and-policy/strategy-
documents/commission-work-programme/commission-work-programme-2025 27 Europeana, The European digital platform for cultural heritage, available at: https://www.europeana.eu/en (accessed on 27
October 2025) 28 See definition above
12
Clearing the path for strategic data pooling
Many companies for example in health, mobility, energy, agriculture, and manufacturing lack
the large, diverse datasets needed to train advanced AI models. Pooling of data related to early
stages of the production cycle of products and services
could unlock shared benefits, but legal uncertainty and
fear of breaching competition law hold back collaboration.
The Commission will continue to act to provide legal
clarity for companies, in line with the call to turn rules into
results in the report on the future of European
competitiveness by Mario Draghi. The 2023 Horizontal
Guidelines on cooperation agreements between
competitors already explain when data pooling is
compatible with EU competition law, with practical
examples and safeguards.
To further facilitate lawful and effective data
collaboration through Data Labs, the Commission will
issue dedicated guidance on best practices in data exchange and pooling.
In addition, competition law guidance can be provided by the Commission upon request under
the Informal Guidance Notice for specific data-related multi-country projects and initiatives
that foster cross-border innovation, industrial resilience, and AI development. By making data
pooling a trusted and legally secure option, the EU can unlock efficiencies and accelerate
breakthroughs in key sectors.
Raising the bar on data quality and data capturing
Without reliable standards, even the most ambitious data-sharing efforts risk fragmentation and
low uptake. The European trusted data framework29 already sets rules for sharing, metadata,
and governance, but further work is needed to address emerging issues.
The Commission will launch a standardisation request for a European data quality standard
covering completeness, consistency, provenance, semantic clarity, and governance, giving
businesses, regulators, and researchers shared benchmarks for reliable datasets. This work will
complement the ongoing standardisation efforts on data quality and documentation under the
AI Act, ensuring coherence between data management and AI development requirements.
A dedicated initiative will aim to standardise annotation and labelling practices, making data
easier to find, combine, and reuse while ensuring trust in its origin and conditions of use, which
is critical for scaling AI training and cross-sector reuse. A multi-stakeholder workshop will
also investigate standards for data capture from connected products, sensors, and cameras -
29 See also European Commission, Implementing Decision C(2025) 4135 on the European Trusted Data Framework
Draghi report: “In particular,
to overcome the EU’s lack of
large data sets, model training
should be fed with data freely
contributed by multiple EU
companies within a certain
sector. It should be supported
within open-source
frameworks, safeguarded from
antitrust enforcement by
competition authorities.”
13
including sampling, metadata, timestamping, calibration, and integrity - addressing a key
barrier to effective data pooling and reuse.
Flagship actions
• Launch first data labs to scale data availability and link to AI ecosystems (Q4 2025). They
will also offer trusted pseudonymisation services.
• Launching the quality data for AI initiative: expanding high-value datasets under the
Open Data Directive (Q4 2026); setting up a stakeholder forum with public broadcasters
and AI developers (Q2 2026); making 30 million digitised cultural objects available for AI
training (Q4 2026); and launching a crowdsourcing initiative for domain-specific data and
language data in smaller European languages (Q2 2026).
Pillar II: Streamlining data rules
The EU’s data framework must remain clear, practical, and innovation friendly. To reduce
burdens and boost competitiveness, the Commission is presenting a legislative proposal,
known as the Digital Omnibus, aiming, amongst other things, to modernise and consolidate
the EU’s horizontal data acquis. In addition, the Commission will also announce work on one-
click compliance to enable automated regulatory reporting, and a support package for the Data
Act, including model contracts, standard clauses, guidance on compensation and trade secrets,
and a legal helpdesk for SMEs.
i. Simplifying the EU’s data acquis
The EU’s regulatory data framework has grown rapidly, creating new rights but also increasing
complexity and fragmentation. Simplification is needed to reduce compliance costs, make rules
easier to apply, and better support innovation.
To this end, the Commission is presenting the above-mentioned Digital Omnibus. It will update
the acquis, removing unnecessary burdens while safeguarding the core principles of the EU’s
data economy. The Omnibus will focus on the following priority reforms:
• Deleting outdated rules. The Omnibus will repeal the Free Flow of Non-Personal Data
Regulation,30 as its functions are already covered by the Data Act, while explicitly
preserving the principle of free movement of non-personal data and the ban on
unjustified localisation.
• Streamlining data-sharing rules. The Omnibus will repeal the Data Governance Act
(DGA) and migrate its essential provisions into the Data Act. Obligations for data
intermediaries will be clearer, lighter and voluntary to enable viable models and wider
uptake.
• Consolidating public-sector data-sharing. Rules now split between the DGA and the
Open Data Directive will be kept and merged into one Data Act chapter. This simplifies
obligations while preserving openness, transparency, and fair access. The new
30 Regulation (EU) 2018/1807 of the European Parliament and of the Council of 14 November 2018 on a framework for the
free flow of non-personal data in the European Union
14
framework will furthermore tackle power imbalances in data sharing, ensuring fair
conditions and tangible benefits for SMEs. Data labs will flag promising new public
sector datasets not yet covered.
• Modernising rules for cookies and similar
technologies. The Omnibus will reform the
rules on cookies currently in the ePrivacy
Directive and bring them into the GDPR
framework. It will propose practical solutions:
cookies and similar technologies for certain
low-risk purposes should be considered
lawful, while other purposes, the operators
should rely on one of the legal bases under the
GDPR. It will also simplify banners with one-
click options. It will oblige websites to respect
users’ preferences, also through their browsers. Beyond the Digital Omnibus, the
ePrivacy framework will be reformed to ensure that current rules meet today’s needs
and allow for effective protection of people and business,without compromising
fundamental rights and preserving independent journalism. The relevant provisions will
be integrated into other legal instruments, allowing the Directive to be ultimately
withdrawn.
• Developing an innovation-friendly privacy framework. Targeted GDPR
amendments will, in particular, clarify the notion of personal data, harmonise at EU
level when data protection impact assessments should be conducted, simplify data
breach notifications to supervisory authorities, streamline breach notifications via a
single EU entry-point, simplify information obligations where there are reasonable
grounds to expect that individuals already have the information and the risk to the data
subject is low; clarify that legitimate interest can be a legal basis for training AI,
including the incidental processing of special categories of data; clarify the provisions
on automated individual decision-making.
One key change concerns liberating data for AI through trusted anonymisation. Today,
uncertainty about sufficient anonymisation of personal data is a core concern, often
discouraging data sharing. Businesses struggle in particular to determine when
pseudonymised data no longer constitutes personal data for certain entities. This
uncertainty makes data sharing more complex where the GDPR requirements are
complied with out of precaution. The Commission will support businesses by
specifying the means and criteria to determine whether data resulting from
pseudonymisation constitutes personal data for certain entities.
This will include an assessment of the state of the art of available techniques and the
development of criteria to assess the risk of re-identification. While businesses remain
fully responsible for compliance with the GDPR, they can use the implementation of
those means and criteria to demonstrate that data cannot lead to the reidentification.
The amendments will also facilitate AI model training, with the appropriate safeguards.
Participant in the Data Union
public consultation: “ePrivacy
rules need to be urgently updated.
The rules set in place were designed
against a totally different
technological background and do
not reflect the current market
needs.”
15
The goal of these changes is to provide legal clarity for AI development, including cases
of incidental processing of sensitive data where developers have made genuine efforts
to remove such data. while protecting individuals’ rights and competitiveness of
businesses.
• Refining the Data Act for practical implementation. The essential features of the
Data Act will remain unchanged. At the same time, business-to-government data
sharing will be limited to emergencies, easing burdens while safeguarding crisis
response. Targeted additional adjustments will prevent data ‘leakage’ to outside the EU,
introduce tailored regimes for custom-made cloud services and remove the provisions
on smart contracts.
• Reducing burdens for scaling companies. A new category of small mid-caps (250–
749 employees) will extend SME-type provisions under the Data Act, the Open Data
Directive, and integrated DGA rules.
ii. Building a future-proof data framework
As part of the Digital Fitness Check, the Commission will continue reviewing the EU’s data
acquis to keep it coherent, proportionate, and innovation friendly. With particular attention to
SMEs, it will identify overlaps, gaps, and unclear interactions, including with sectoral data
laws, to create a more predictable cross-sectoral framework.
In addition, we will modernise digital legislation and data protection.31 Targeted adjustments
may ease compliance and strenghten enforcement, supporting the development of robust and
trustworthy innovations.
Data brokerage has become a growing concern, with certain companies collecting, aggregating,
and trading personal data without individuals’ awareness, meaningful consent, or control. Such
opaque practices undermine core principles of data protection law, privacy, distort competition,
and erode public trust in digital markets. A strengthened enforcement of the existing rules is
needed. The Commission will assess whether additional safeguards are needed to curb these
practices, enhance transparency in data trading, and ensure that individuals and businesses can
trust how data is accessed and exchanged across the Union.
iii. One-click compliance
Today, companies spend significant time and money on compliance. Even data already in
digital form must often be reformatted and resubmitted to multiple authorities, where it is
checked manually. This duplication creates fragmented oversight and diverts resources from
innovation.
Beyond simplifying rules, the EU is investing in technologies to automate compliance.
Through Horizon Europe and the Digital Europe Programme, it supports common data models,
interoperability frameworks, and automated analysis. Pilot projects already show how real-
31 Commission work programme EUR-Lex - 52025DC0870 - EN - EUR-Lex.
16
time, automated compliance checks can work in practice. The Digital Product Passport (DPP)
is an early example of this approach in product legislation.
Building on these experiences, “one-click compliance” would make regulatory requirements
machine-verifiable, turning company data into standardised digital compliance certificates -
much like the DPP enables automatic product compliance.
One-click compliance could be particularly valuable in areas like cybersecurity, where
companies face requirements under NIS232, the Cyber Resilience Act33, and other frameworks.
The European Business Wallet Regulation will be a key enabler of this approach. It will
provide a trusted and interoperable digital environment for storing, managing, and sharing
verifiable credentials, including compliance certificates. Companies could use European
business wallets to digitally identify themselves, identify and validate users of the ecosystem
and demonstrate conformity with multiple EU rules through the submission of compliance
certificates, while public sector bodies regulators are provided with secure, immediate access
to validated information. Over time, the European business wallet will become a common
infrastructure supporting administrative processes such as licensing, public procurement, and
access to funding, enabling seamless digital interactions between businesses and authorities
across the Single Market.
Determining who is accountable in case of errors, misuse, or system failures - whether the
company, the certifier, or the regulator - will be essential to ensure trust and legal certainty.
The Commission will therefore explore these issues in an upcoming public consultation,
assessing both the opportunities and the safeguards needed to build a reliable and accountable
automated compliance ecosystem.
Beyond cutting costs for SMEs and mid-caps, such a system would also give policymakers
insights into how rules work in practice, strengthening evidence-based regulation. One-click
compliance could become a cornerstone of the EU’s digital simplification agenda, aligning
competitiveness with trust and accountability.
iv. Helping businesses comply with the Data Act
The Data Act constitutes the key set of rules for using and sharing data. To ensure that
companies, especially SMEs and small mid-caps, can fully use its potential and focus on
innovation rather than red tape, the Commission has already issued a FAQ document34 and
32 Directive (EU) 2022/2555 of the European Parliament and of the Council of 14 December 2022 on measures for a high
common level of cybersecurity across the Union, amending Regulation (EU) No 910/2014 and Directive (EU) 2018/1972, and
repealing Directive (EU) 2016/1148 (NIS 2 Directive), OJ L 333, 27.12.2022, p. 80–152 33 Regulation (EU) 2024/2847 of the European Parliament and of the Council of 23 October 2024 on horizontal
cybersecurity requirements for products with digital elements and amending Regulations (EU) No 168/2013 and (EU) No
2019/1020 and Directive (EU) 2020/1828 (Cyber Resilience Act), OJ L [2847], 20 November 2024 34 European Commission, Frequently Asked Questions – Data Act, version 1.3, Brussels, 12 September 2025, available at:
https://digital-strategy.ec.europa.eu/en/library/commission-publishes-frequently-asked-questions-about-data-act
(accessed on 27 October 2025)
17
guidance on in-vehicle data35, and will further complement these with a broader package of
support measures.
Immediate measures include:
• model contractual terms for data sharing to reduce legal complexity, cut transaction
costs, and give businesses confidence when entering into new partnerships;
• standard contractual clauses for cloud services to make switching easier and contracts
fairer, supporting competition and innovation in the European cloud market.
Further measures, to be phased in, will include:
• Guidelines on reasonable compensation to clarify what can be charged for data sharing,
providing legal certainty to both data holders and data recipients (Q1 2026);
• New guidance on selected definitions in the Data Act (Q1 2026);
• A Data Act legal helpdesk to provide direct assistance for companies with concrete
questions on how to apply the new rules, giving priority to SMEs to ensure their queries
are addressed swiftly and with dedicated attention (Q4 2025).
Together, these measures will make the Data Act easier to navigate, reduce unnecessary costs,
and give companies the clarity and confidence they need to seize new opportunities in the EU’s
data economy. The Commission will closely monitor the uptake of the contractual tools, in
particular the model contractual terms and standard contractual clauses, and will review,
complement or adapt them as needed in line with international developments in data sharing.
The Commission will seek synergies between the public buyers community and the European
Data Spaces to enhance public-sector efficiency, drawing on the blueprint established between
the European Health Data Space and the Big Buyers Working Group on Healthcare
Efficiency.36
Flagship actions
• Proposal to consolidate data legislation (Q4 2025)
• Proposal to update ePrivacy rules on cookies and similar technologies (Q4 2025)
• Proposal for targeted GDPR adjustments (Q4 2025)
• Launching a one-click compliance initiative (from Q4 2025 onwards)
• Rolling out support measures for the implementation of the Data Act (from Q4
2025 onwards)
35 European Commission, Guidance on vehicle data, accompanying Regulation (EU) 2023/2854 (Data Act), C(2025) 6119
final, Brussels, 12 September 2025 36Can the European Health Data Space enable better procurement? – Big Buyers are investigating | Public Buyers
Community
18
Pillar III: Safeguarding the EU’s data sovereignty through a strategic international data
policy
Data sovereignty is at the core of the EU’s digital future. It means that the EU must retain
control over how data is accessed, used, and protected – both within its territory and abroad.
Sovereignty requires openness to trusted partners, including exchange of data across borders,
but on terms that are fair, secure, and consistent with EU values and interests. A situation in
which foreign actors enjoy unfettered access to the EU market while European companies face
unjustified barriers abroad cannot be sustained.
Safeguarding sovereignty also means protecting the EU’s resilience. Cyberattacks, technology
leakage, surveillance, and coercive dependencies put critical data at risk. The EU must ensure
the availability, integrity, and security of sensitive datasets, preventing their misuse or
exploitation, in particular by actors outside the EU.
To this end, the Commission will pursue a strategy that
combines openness with strength: making fair conditions for
data access and cross-border transfer a pillar of digital trade,
protecting sensitive EU non-personal data through clear
safeguards, and deepening cooperation with trusted partners. It
will also work to shape global governance models that reflect
EU interests and values and prevent fragmentation into rival
spheres. This strategy will complement the long-lasting EU
approach to safe personal data flows developed through the EU data protection acquis.
While the EU has built a robust legal framework and promoted “data free flow with trust”
internationally, new unjustified data localisation requirements, export controls, and
discriminatory rules abroad threaten to undermine sovereignty. The Commission will therefore
act more assertively to defend EU interests and regulatory autonomy, with proportionate
measures where openness is abused or vulnerabilities weaponised.
i. Fair cross-border data flows and safeguards for EU sensitive non-personal data
The Commission will embed fair conditions and effective control of cross-border data flows
into international digital trade. Structured exchanges, e.g. in the framework of the EU’s digital
partnerships and dialogues will address existing imbalances where EU data flows abroad
without adequate safeguards.
If gaps persist, and on the basis of objective criteria, the Commission will take proportionate
action in full respect of the Union’s international commitments. It will issue guidelines in Q2-
2026 to assess the treatment of EU entities by third countries and develop an anti-data-leakage
toolbox in Q1 2026 to address localisation demands, market exclusion, or insufficient
safeguards or any other unjustified treatment. This toolbox may draw on or be inspired by
In a stakeholder poll, 75%
of participants supported
a more assertive EU
approach to international
non-personal data flows.
19
instruments such as the Trade Enforcement Regulation37, the Anti-Coercion Instrument38, and
economic security considerations, as applicable, and will focus on technologies and best
practices to strengthen the EU’s resilience. Should structural distortions or persistent
discriminatory practices remain unaddressed, the Commission will, where necessary, consider
additional measures to ensure fair conditions for data access and use.
In parallel, the Commission will better protect EU sensitive non-personal data, complementing
the protection of personal data guaranteed through the GDPR and adequacy decisions. Working
with stakeholders, and following the results of in-depth risk assessments, it will adopt a first
package of targeted measures by Q3 2026.
ii. Linking EU data-sharing ecosystems with those of like-minded third countries
The EU’s legal framework for data protection, cybersecurity, enforcement, and judicial redress
is a reliable basis for foreign data holders. The Commission will foster secure, convergent and
interoperable links between EU data ecosystems and those of like-minded partners to attract
more data flows to the EU.
Planned measures include (i) supporting services and infrastructure such as the CEDS to enable
seamless cross-border sharing; (ii) providing tools like standard contractual clauses to help
businesses ensure lawful exchanges; (iii) and embedding commitments on cross-border data
sharing in bilateral and plurilateral international agreements.
To strengthen convergence and interoperability, the Commission will promote the European
Trusted Data Framework in international dialogues and the Digital Partnership Network. It will
also explore creating a trust label, potentially linked to the data spaces maturity model – a
standardised framework designed to assess the capabilities of data space initiatives - to support
cooperation with governments and businesses abroad.
iii. Boosting the EU’s voice in global data governance
Competing models of data governance are fragmenting the global landscape. The Commission
will intensify the promotion of EU approaches internationally, in particular in emerging
frameworks, and strengthen coalitions with like-minded partners.
By 2026, in line with the International Digital Strategy39, the Commission and the European
External Action Service (EEAS) will deepen and connect digital partnerships on data
governance, aligning with partners that share common objectives and further develop digital
trade agreements and digital chapters within traditional trade agreements. It will continue to
37 Regulation (EU) No 654/2014 of the European Parliament and of the Council of 15 May 2014 concerning the exercise of
the Union’s rights for the application and enforcement of international trade rules and amending Council Regulation (EC) No
3286/94, OJ L 189, 27 June 2014, p. 50–58 38 Regulation (EU) 2023/2675 of the European Parliament and of the Council of 22 November 2023 on the protection of the
Union and its Member States from economic coercion by third countries (Anti-Coercion Instrument), OJ L 322, 27 November
2023 39 European Commission and High Representative of the Union for Foreign Affairs and Security Policy, Joint Communication
to the European Parliament and the Council — An International Digital Strategy for the European Union, JOIN(2025) 140
final, Brussels, 5 June 2025
20
engage actively in fora such as the G7, the G20, the OECD and the UN, using instruments like
the OECD ‘Declaration on Government Access to Personal Data.’
Particular attention will be paid to promoting EU approaches and mutually beneficial
collaboration with candidate countries, potential candidate and closest neighbours. The EU
will also work with partners to explore setting up a shared platform for selected high-value
public data (e.g. cultural heritage) and pursue trusted arrangements on sensitive data flows,
government access, and sector-specific rules. a shared platform for selected high-value public
data (e.g. cultural heritage) and pursue trusted arrangements on sensitive data flows,
government access, and sector-specific rules.
Flagship actions
• Issuing guidelines to assess fair treatment of EU data abroad (Q2 2026)
• Creating a toolbox to counter unjustified localisation, exclusion, weak safeguards,
and data leakage (Q2 2026) and adopting measures to protect sensitive non-
personal data (Q3 2026)
5. The Data Union strategy: unlocking data for AI
To ensure competitiveness in the age of AI, the Data Union strategy shifts gears from setting
rules to delivering results. Building on the foundations in place since 2020, it tackles data
scarcity, regulatory complexity, and global competition.
The European Data Innovation Board will remain the central governance forum, reformed for
deeper technical debates and strategic dialogue with Member States and industry. In parallel,
the Apply AI Alliance will become the main channel for sectoral feedback, ensuring that
companies, researchers, and public actors shape implementation. The AI Observatory will track
emerging trends and translate them into policy insights.
Targeted actions will scale up high-quality data, simplify the regulatory landscape, and
strengthen the EU’s role in global data flows. For SMEs and innovators, this means cheaper
compliance, easier access to data, and a more conducive international environment.
Only what gets measured, gets done. This is why the Commission has announced a single
market roadmap to increase the pace and speed up the processes. The Data Union strategy can
contribute as appropriate to the roadmap to help guide policymakers and industry, in particular
SMEs, in removing barriers and completing the single market for data.
Working hand in hand with the Apply AI Strategy, the Data Union Strategy ensures that the
EU’s data foundations directly power the development, deployment, and uptake of AI across
all sectors.
The long-term vision is clear: a sovereign European data economy where data flows securely
and responsibly, powering AI, fuelling innovation, and reinforcing competitiveness.
Euroopa Komisjoni teatised ELi andmeliidu strateegia (COM(2025)835) ja tehisaru rakendamise strateegia kohta
(COM(2025)723)
Otsuse ettepanek koordinatsioonikogule
Kujundada seisukoht
Kaasvastutaja sisendi tähtpäev 21.01.2026
KOKi esitamise tähtpäev 04.02.2026
VV esitamise tähtpäev 12.02.2026
Peavastutaja Justiits- ja Digiministeerium.
kaasvastutajad Majandus- ja kommunikatsiooniministeerium, Rahandusministeerium, Kliimaministeerium, Sotsiaalministeerium, Välisministeerium, Kaitseministeerium, Kultuuriministeerium, Haridus- ja teadusministeerium, Regionaal- ja põllumajandusministeerium, Siseministeerium.
Seisukoha valitsusse toomise alus ja põhjendus
Algatuse vastuvõtmisega kaasneks oluline majanduslik või sotsiaalne mõju (RKKTS § 152¹ lg 1 p 2);
Sisukokkuvõte
1) ELi andmeliidu strateegia (Data Union Strategy) seab eesmärgiks konkurentsivõimelise andmete ökosüsteemi loomise, mis toetab tehisaru arendamist ning tugevdab ELi tehnoloogilist konkurentsivõimet. Strateegia keskendub tehisaru arendamiseks vajalike andmete kättesaadavuse parandamisele, õigusraamistiku lihtsustamisele ning rahvusvahelistele andmevoogudele. Strateegias määratakse kindlaks kolm prioriteetset tegevusvaldkonda:
1. Tehisaru andmetele juurdepääsu laiendamine, et tagada ettevõtetele juurdepääs innovatsiooniks vajalikele kvaliteetsetele andmetele.
2. Andme-eeskirjade ühtlustamine, et tagada ettevõtjatele õiguskindlus ja vähendada nõuete täitmisega seotud kulusid.
3. ELi andmesuveräänsuse kaitsmine, et tugevdada ülemaailmset positsiooni rahvusvahelistes andmevoogudes.
2) Tehisaru rakendamise strateegia (Apply AI Strategy) on ELi üldine tehisaru käsitlev valdkondlik strateegia, mille eesmärk on suurendada strateegiliste sektorite
2
konkurentsivõimet ja tugevdada ELi tehnoloogilist suveräänsust. Selle eesmärk on edendada tehisaru kasutuselevõttu ja innovatsiooni kogu Euroopas, eelkõige väikeste ja keskmise suurusega ettevõtjate (VKEd) seas. Strateegias julgustatakse rakendama tehisaru esmast poliitikat, mille puhul tehisaru peetakse võimalikuks lahenduseks alati, kui organisatsioonid teevad strateegilisi või poliitilisi otsuseid, võttes hoolikalt arvesse tehnoloogia eeliseid ja riske.
Mõju ja sihtrühm
Mõju valdkonnad
Majandus
Ettevõtlus
Sihtrühm: ettevõtjad, avalik sektor, teadusasutused
Halduskoormus
Kas lahendusega kaasneb mõju halduskoormusele? Ei
Teatised otseselt halduskoormust kaasa ei too, küll aga nendest tulenevad konkreetsed ELi õigusaktid, mistõttu tuleks hinnata mõju avaliku sektori ja ettevõtete halduskoormusele.
Riigieelarve
Kas lahendusega kaasneb mõju riigieelarvele? Ei
Teatised otseselt riigieelarvelist mõju kaasa ei too, küll aga tuleb hinnata teatistest tulenevate ELi õigusaktide mõju riigieelarvele.
Kaasamine
Kaasata algatustega seotud huvigrupid.
Resolutsiooni liik: Riigikantselei resolutsioon Viide: Justiits- ja Digiministeerium / / ; Riigikantselei / / 2-5/25-02368
Resolutsiooni teema: Euroopa Komisjoni teatised ELi andmeliidu strateegia ja tehisaru rakendamise strateegia kohta
Adressaat: Justiits- ja Digiministeerium Ülesanne: Tulenevalt Riigikogu kodu- ja töökorra seaduse § 152` lg 1 p 2 ning Vabariigi Valitsuse reglemendi § 3 lg 4 palun valmistada ette Vabariigi Valitsuse seisukoha ja otsuse eelnõu järgneva algatuste kohta, kaasates seejuures olulisi huvigruppe ja osapooli:
- COMMUNICATION FROM THE COMMISSION TO THE EUROPEAN PARLIAMENT AND THE COUNCIL DATA UNION STRATEGY UNLOCKING DATA FOR AI, COM(2025)835
-COMMUNICATION FROM THE COMMISSION TO THE EUROPEAN PARLIAMENT AND THE COUNCIL Apply AI Strategy,COM(2025)723
EISi toimiku nr: 25-0593 Tähtaeg: 30.01.2026
Adressaat: Haridus- ja Teadusministeerium, Kaitseministeerium, Kliimaministeerium, Kultuuriministeerium, Majandus- ja Kommunikatsiooniministeerium, Rahandusministeerium, Regionaal- ja Põllumajandusministeerium, Siseministeerium, Sotsiaalministeerium, Välisministeerium Ülesanne: Palun esitada oma sisend Justiits- ja Digiministeeriumile seisukohtade kujundamiseks antud eelnõude kohta (eelnõude infosüsteemi (EIS) kaudu). Tähtaeg: 21.01.2026
Lisainfo: Eelnõusi on kavas arutada valitsuse 12.02.2026 istungil ja Vabariigi Valitsuse reglemendi § 6 lg 6 kohaselt sellele eelneval nädalal (04.02.2026) EL koordinatsioonikogus. Esialgsed materjalid EL koordinatsioonikoguks palume esitada hiljemalt 31.01.2026.
Kinnitaja: Merli Vahar, Euroopa Liidu asjade direktori asetäitja Kinnitamise kuupäev: 19.12.2025 Resolutsiooni koostaja: Sandra Metste [email protected],
.