📊 Full opportunity report: ALIA. The Spanish answer. on ThorstenMeyerAI.com — validation score, market gap, and execution plan.
TL;DR
Spain has launched ALIA, its largest publicly funded AI model, with €240 million in investment. It features 40 billion parameters and multilingual capabilities, but benchmark results show it lags behind Llama 2. The project emphasizes widespread Spanish adoption over top performance.
Spain’s ALIA project, a €240 million public-funded initiative to develop a multilingual large language model (LLM), has officially released the ALIA-40B model, marking the country’s most ambitious national AI effort to date. The project aims to promote widespread Spanish language adoption and co-official languages, emphasizing strategic positioning over raw performance benchmarks.
Funded entirely by Spanish public funds, ALIA was developed by the Barcelona Supercomputing Center (BSC-CNS) under the auspices of the Secretary of State for Digitalisation and Artificial Intelligence (SEDIA). The project leveraged the MareNostrum 5 supercomputer, with €90 million allocated for hardware upgrades, and an additional €150 million dedicated to integrating ALIA into industry and public administration.
The ALIA-40B model was trained on 9.37 trillion tokens across 35 European languages and 92 programming languages, and was released under the Apache License 2.0 on HuggingFace in April 2025. It is designed to serve as Spain’s institutional answer to European sovereignty questions regarding AI, focusing on multilingual coverage, especially Spanish, with the goal of fostering adoption across the Spanish-speaking world.
Benchmark results indicate that ALIA-40B performs below Llama 2, with 51.77% accuracy on XNLI in English compared to Llama 2’s 66%, and 81.53% on SQuAD in English versus Llama 2’s 93-94%. These results confirm a structural capability gap, aligning with prior analyses suggesting that larger, more performance-oriented models tend to outperform smaller, strategically positioned models.
ALIA.
The Spanish
answer.
€240M+ Spanish public funding · ALIA-40B + Salamandra family · 9.37T tokens · 35 European languages + 92 programming languages · MareNostrum 5 · Apache 2.0 release. The largest publicly funded European national-AI project by cumulative scope — and the empirical test case for the Position 1 vs Position 3 strategic-positioning argument.
This is the tenth standalone essay in the European sovereign-LLM track and the third Tier 2 expansion piece. ALIA is Spain’s institutional answer — the largest EU member state by GDP not yet documented in the track. The project markets itself as Position 1 + Position 2 simultaneously — “Europe’s first public multilingual foundational model.” The benchmark evidence (ALIA-40B 51.77% XNLI_en vs Llama 2 66%) confirms the structural capability gap from Finding 1 of the synthesis essay. The Position 3 framing — Martorell’s “most widely adopted in the Spanish-speaking world” — is operationally honest. €90M MareNostrum 5 upgrade + €150M company integration = €240M+ cumulative scope. Apache 2.0 open-source release + AESIA validation + co-official languages oversampling. Both can be true at once. The Spanish public discourse would benefit from explicit Position 3 strategic positioning.
Six models. Apache 2.0.
The ALIA family operates as a tiered model portfolio. ALIA-40B is the flagship at 40 billion parameters; the Salamandra family scales down to 7B, 2B and instruct-tuned variants; mRoBERTa provides the foundational multilingual baseline. All released under Apache License 2.0 on April 22, 2025 at the HispanIA 2040 event — “Public Code, Public Money” approach.
multilingual
MN5 LLM
edge
target
instruct
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Four official. Oversampled by factor of 2.
ALIA’s distinctive multilingual coverage strategy. The four co-official Spanish languages are oversampled by factor of 2 in the training corpus — structurally distinct from Apertus’s broad 1,811-language coverage approach. The strategy targets deep coverage of Spanish co-official languages rather than maximum language breadth.

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ALIA-40B vs Llama 2. 14-point gap.
The empirical evidence Finding 1 of the synthesis essay needed. ALIA-40B at 40 billion parameters with €240M+ public funding and 8+ months MareNostrum 5 training achieves performance below Llama 2 — a 2023 frontier model released approximately 18 months before ALIA-40B. The capability gap is real and consistent with six of seven prior national-project answers documented in the track.

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Two pilots. Public administration deployment.
The operational deployment targets that validate the Position 3 + Position 4 framing. Public administration deployment is the structurally credible Position 3 + Position 4 strategic positioning — captive demand from Spanish public institutions where Spanish-language specialization is operationally distinctive.
The work is real across the Spanish ALIA case. €240M+ public funding committed. 40B parameter from-scratch model trained on 9.37 trillion tokens. Salamandra family released under Apache 2.0. AESIA validation aligned with EU AI Act transparency standards. Two pilot applications shipped — Tax Agency chatbot and primary care medicine heart failure diagnosis. The Position 1 framing is operationally misleading. ALIA-40B performance below Llama 2 confirms the structural capability gap. The Position 3 framing is operationally honest — Spanish-speaking world adoption, co-official languages oversampling, public administration deployment. Both can be true at once. The Spanish public discourse would benefit from explicit Position 3 strategic positioning.

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Strategic Positioning Over Performance Benchmarks
While ALIA’s benchmark results are below those of Llama 2, the project’s emphasis on multilingual coverage, Spanish language oversampling, and open-source availability aligns with Spain’s strategic aim to promote widespread adoption within the Spanish-speaking world. This approach prioritizes operational reach and political influence over top-tier performance, marking a shift in how national AI projects are evaluated and justified in Europe.
Furthermore, ALIA’s development underscores the broader debate within European AI policy about balancing national sovereignty, technological independence, and competitive performance. The project exemplifies a strategic choice to focus on language coverage and transparency, with potential implications for regional AI leadership and digital sovereignty.
Spain’s National AI Strategy and the European Sovereign-LLM Track
Spain’s ALIA project is part of a broader European effort to develop sovereign AI capabilities, with previous initiatives including Portugal’s AMÁLIA, Italy’s Minerva, and pan-European collaborations like OpenEuroLLM and Mistral. These projects aim to reduce dependence on US and Chinese AI providers, emphasizing transparency, multilingualism, and open-source models.
Funded through public investments, ALIA is the largest such project in Europe in terms of scope, surpassing previous efforts in scale and ambition. It is aligned with Spain’s national digital strategy, which emphasizes AI as a key driver for economic growth and technological independence. The project also reflects ongoing debates about the optimal strategic positioning—whether to prioritize top performance (Position 1) or operational multilingual reach (Position 3).
Historically, European projects have grappled with balancing performance benchmarks against strategic goals of language coverage and sovereignty, with ALIA exemplifying the latter approach.
“The goal is not to be the best-performing LLM in the world, but the most widely adopted in the Spanish-speaking world.”
— Josep M. Martorell, ALIA project lead
Unanswered Questions About ALIA’s Performance and Impact
While benchmark results confirm a capability gap compared to Llama 2, it remains unclear how ALIA will perform in real-world applications and industry deployments. The long-term impact of prioritizing language coverage over raw performance is also still to be seen, particularly regarding adoption and technological competitiveness.
Additionally, the extent to which ALIA’s open-source model will influence regional AI development and whether it can bridge the performance gap through future iterations remains uncertain. The strategic implications of this approach versus performance-driven models are still being debated within European policy circles.
Next Steps for ALIA and European AI Sovereignty
Further benchmarking and real-world testing will clarify ALIA’s operational effectiveness and adoption levels. The project team plans to continue scaling and refining the model, with potential updates aimed at improving performance without compromising multilingual coverage.
In parallel, policymakers and industry stakeholders will monitor ALIA’s influence on regional AI sovereignty and its role in shaping Europe’s strategic position in AI development. The project’s success may influence future public investments and strategic choices across Europe.
Key Questions
How does ALIA compare to other European AI models?
Benchmark results show ALIA-40B performs below models like Llama 2 in accuracy, but it emphasizes multilingual coverage and open-source transparency, aligning with Spain’s strategic goals.
What are ALIA’s main strategic goals?
ALIA aims to promote widespread Spanish and co-official language adoption, enhance transparency, and establish a sovereign AI infrastructure for Spain and the broader Spanish-speaking world.
Will ALIA replace commercial models like Llama 2?
Not necessarily; ALIA is designed more for strategic and regional influence rather than outperforming commercial models in benchmarks.
What does ALIA’s open-source release mean for Europe?
It sets a precedent for transparency and regional development, potentially fostering local innovation and reducing dependence on non-European AI providers.
Source: ThorstenMeyerAI.com