ALIA. The Spanish answer.

📊 Full opportunity report: ALIA. The Spanish answer. on ThorstenMeyerAI.com — validation score, market gap, and execution plan.

TL;DR

Spain has announced ALIA, a 40-billion-parameter multilingual AI model developed by the Barcelona Supercomputing Center. Funded with over €240 million, it aims to serve the Spanish-speaking world and demonstrate Europe’s public AI capabilities. The project highlights strategic debates about positioning as a multilingual leader versus a Spanish-language specialist.

Spain has announced the launch of ALIA, a 40-billion-parameter multilingual AI model developed through a €240 million public funding initiative, marking the country’s most ambitious national AI project to date. This project highlights strategic debates about positioning as a multilingual leader versus a Spanish-language specialist. The model, trained on over 9.37 trillion tokens across 35 European languages, aims to position Spain as a leader in multilingual AI within Europe, with a focus on Spanish-language adoption and transparency.

The ALIA project is led by the Barcelona Supercomputing Center (BSC-CNS) and coordinated by Spain’s Secretary of State for Digitalisation and Artificial Intelligence (SEDIA). It is funded entirely by public sources, including €90 million for MareNostrum 5 upgrades and €150 million dedicated to ALIA’s integration into industry and government sectors. The model was trained on MareNostrum 5’s 4,480 NVIDIA H100 GPUs, utilizing a training dataset of 12.875 trillion tokens for Salamandra-7B and Salamandra-2B models, which were developed from scratch.

Official documentation states that ALIA is released under the Apache License 2.0 on HuggingFace as of April 22, 2025. It contains extensive multilingual coverage, emphasizing Spanish and co-official languages, with the strategic aim of broad adoption in the Spanish-speaking world. The project’s leadership emphasizes that the goal is not to outperform global models like Llama 2 in raw performance but to maximize regional adoption and transparency, aligning with Spain’s strategic interests.

ALIA · The Spanish Answer.
DISPATCH / MAY 2026 ESSAY · EUROPEAN SOVEREIGN LLMs · ALIA · SPANISH ANSWER
▲ Standalone Essay EU Sovereign AI · Tier 2 Expansion · May 2026
Standalone Essay 10 · Spanish National-Continuation Pattern · Position 1 vs Position 3 Interrogation

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.

▲ The structural editorial finding · the Position 1 vs Position 3 interrogation
ALIA is the largest publicly funded European national-AI project by cumulative scope · €240M+ Spanish public investment exceeds Portugal AMÁLIA + Italy Minerva + OpenEuroLLM combined. Benchmark evidence confirms Finding 1’s structural capability gap empirically. Martorell’s Position 3 framing — “most widely adopted in the Spanish-speaking world” — is operationally honest. The Spanish public discourse should explicitly reframe ALIA as Position 3 + Position 4 vertical-specialization.
— standalone essay 10 · the spanish answer · may 2026 · interrogating position 1 vs position 3
€240M+
Cumulative Spanish public funding · €90M MareNostrum 5 upgrade + €150M company integration · 100% publicly funded
Largest national-AI public funding scope in Europe · exceeds Portugal + Italy + OpenEuroLLM combined
9.37T
ALIA-40B training tokens · 35 European languages + 92 programming languages · 8+ months on MareNostrum 5
33 TB training corpus · 4,480 NVIDIA H100 GPUs accelerated partition · BSC-CNS coordination
35 + 4
European languages broad coverage + 4 co-official Spanish languages oversampled by factor of 2
Castilian · Catalan/Valencian · Basque · Galician · plus 30+ other EU languages · Apache 2.0 release
Pos 3
Operationally honest strategic positioning · multilingual specialization with Spanish-language oversampling
Martorell: “the goal is not to be the best-performing LLM in the world, but the most widely adopted in the Spanish-speaking world”
ALIA-40B 40B PARAMETERS · 9.37 TRILLION TOKENS · 35 EUROPEAN LANGUAGES · MARENOSTRUM 5 TRAINING SALAMANDRA-7B 12.875 TRILLION TOKENS FROM SCRATCH · FIRST MARENOSTRUM 5 LLM · BSC-CNS APACHE 2.0 APRIL 22, 2025 HISPANIA 2040 RELEASE · PUBLIC CODE PUBLIC MONEY · AESIA VALIDATED CO-OFFICIAL LANGUAGES CASTILIAN · CATALAN/VALENCIAN · BASQUE · GALICIAN · 2× OVERSAMPLED BENCHMARK GAP 51.77% XNLI_EN VS LLAMA 2 66% · 81.53% SQUAD_EN VS LLAMA 2 93-94% PEDRO SÁNCHEZ LAUNCH ANNOUNCEMENT JAN 21 2025 · €240M+ AI STRATEGY 2024 INVESTMENT
The ALIA model family · five distinct models · April 22, 2025 release

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.

The ALIA model family · all training scripts and configuration files publicly available on GitHub
From the HuggingFace BSC-LT collection and the Salamandra Technical Report (arXiv 2502.08489). The most comprehensive open-source release of any European national-AI project — more accessible than Mistral’s selective open-weights, structurally aligned with Apertus’s full open-source architecture.
ALIA-40BFlagship multilingual
40Bparameters
Transformer-based decoder-only · pre-trained from scratch on 9.37 trillion tokens of highly curated data. 35 European languages + 92 programming languages. 8+ months training on MareNostrum 5.
Flagship
multilingual
Salamandra-7BMid-tier general
7Bparameters
Transformer-based decoder-only · pre-trained from scratch on 12.875 trillion tokens. First LLM trained from scratch on MareNostrum 5’s accelerated partition. 35 European languages + code.
First
MN5 LLM
Salamandra-2BCompact deployment
2Bparameters
Same 12.875 trillion token corpus as Salamandra-7B. Compact deployment for resource-constrained environments — edge inference, embedded systems, mobile applications.
Compact
edge
Salamandra-7B-instructInstruction-tuned
7Binstruct
Instruction-tuned on 276,000 instructions in English, Spanish, and Catalan collected from several open corpora. The primary deployment target for application development.
Deployment
target
Salamandra-2B-instructCompact instruct
2Binstruct
Same 276K instruction corpus applied to Salamandra-2B base. Compact instruction-tuned variant for resource-constrained applications requiring conversational capability.
Compact
instruct
mRoBERTaFoundational baseline
RoBERTaarchitecture
Multilingual foundational model based on the RoBERTa architecture. Pre-trained from scratch using 35 European languages + code. Encoder-only baseline for downstream tasks.
Foundational
encoder
Multilingual coverage · 35 EU languages + 4 co-official Spanish languages
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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.

The four co-official Spanish languages · 2× oversampled in training corpus
Plus 30+ other European languages in the broader 35-language coverage baseline. The training corpus distribution detail Bara surfaced is operationally significant: 16.12% Spanish vs 39.31% English — the multilingual scope dilutes the Spanish-specific specialization.
▲ Castilian Spanish
Español
500+ million native speakers globally. Primary language of Spain and Latin America. Spanish-speaking world adoption strategy target. 16.12% of ALIA-40B training corpus.
▲ Catalan (with Valencian)
Català · Valencià
~10 million speakers · Catalonia, Valencia, Balearic Islands, Andorra. AINA project foundational data. CATalog dataset contribution — largest open Catalan dataset globally.
▲ Basque (Euskera)
Euskera
~750,000 speakers · Basque Country and Navarre. Language isolate (not Indo-European). HiTZ Basque Center for Language Technology (UPV/EHU) coordination. Latxa baseline model.
▲ Galician
Galego
~2.4 million speakers · Galicia and parts of Portugal. CiTIUS + Galician Language Institute (ILG) at University of Santiago de Compostela. Carballo model family.
+ 30 European languages35 total in corpus
Broad 35-language coverage baseline: German · French · Italian · Portuguese · Dutch · Polish · Czech · Hungarian · Greek · Romanian · Bulgarian · Croatian · Slovenian · Slovak · Lithuanian · Latvian · Estonian · Finnish · Swedish · Danish · Norwegian · Maltese · Irish · Albanian · Macedonian · Serbian · Bosnian · Welsh · plus contribution to Community OSCAR (151 languages · 40T words). The structural distinction from Apertus’s 1,811 languages — depth over breadth.
Benchmark evidence · structural capability gap empirically confirmed
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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.

ALIA-40B vs Llama 2 · benchmark performance comparison
From Bara of Tokiota’s analysis published in Silicon. The empirical capability gap confirms Finding 1 across the European sovereign-AI track — six of seven national-project answers operationally below frontier-class performance.
▲ ALIA-40B
51.77%
XNLI_en Natural Language Inference
▲ Llama 2 (Jul 2023)
66%
Same benchmark · same task
▲ Capability Gap
14.23pp
Below 2023 frontier baseline
▲ ALIA-40B
81.53%
SQuAD_en Question Answering
▲ Llama 2 (Jul 2023)
93-94%
Same benchmark · same task
▲ Capability Gap
11.5pp
Below 2023 frontier baseline
The structural implication: The Position 1 framing — “Europe’s most advanced public multilingual foundational model” — is operationally misleading. ALIA-40B’s benchmark performance does not support the framing. Six of seven prior national-project answers operationally confirm the structural capability gap: AMÁLIA, Minerva, Mistral, Aleph Alpha, Apertus, ALIA. Only OpenEuroLLM’s benchmarks haven’t yet shipped. The Position 3 framing is operationally honest.
“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, BSC Associate Director · Oxford Insights interview · April 2025
Pilot applications · two deployment targets announced HispanIA 2040 event
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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.

Two pilot applications · Tax Agency + primary care medicine
From the Interoperable Europe ALIA release coverage. Both pilots target captive Spanish-language public-administration demand — the operationally credible Position 3 + Position 4 deployment pattern.
▲ Public Administration · Tax
Agencia Tributaria Chatbot
Internal chatbot streamlining work of the Spanish Tax Agency and its citizen service. Spanish-language specialization operationally distinctive · captive demand from public-administration deployment · regulated procurement pattern.
▲ Healthcare · Primary Care
Heart Failure Diagnosis
Primary care medicine application · advanced data analysis facilitating heart failure diagnosis. Regulated healthcare deployment · Spanish-language clinical context · AESIA-validated transparency aligned with EU AI Act.

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.

— Standalone Essay 10 · The Spanish ALIA answer · interrogating Position 1 vs Position 3 · May 2026
Source dossier · the ALIA operational receipts
Colophon · Standalone Essay 10 · Tier 2 Expansion

Set in Source Serif 4 (display), EB Garamond (essay body), IBM Plex Sans & IBM Plex Mono. Standalone essay register · not part of the security franchise. The Spanish national-continuation pattern interrogation extending the synthesis essay’s Position 1 vs Position 3 strategic-positioning argument with empirical operational analysis. Capital-violet dominant register with all six chromatic registers integrated into the multilingual coverage visualization — Castilian violet · Catalan engineering-blue · Basque terminal-green · Galician window-amber · the broader 35 European languages in synthesis-deep · the Position 1 attempt critique in takeoff-orange. Free to embed with attribution.

thorstenmeyerai.com

Standalone essay 10 · European sovereign AI · The Spanish ALIA answer · May 2026

€240M+ · ALIA-40B · 9.37T TOKENS · 35 LANGUAGES · 4 CO-OFFICIAL · APACHE 2.0 · POSITION 3

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Implications of ALIA for Europe’s AI Landscape

This development positions Spain as the largest European nation with a publicly funded, large-scale multilingual AI model. While ALIA demonstrates significant investment and operational capability, benchmark results indicate it lags behind models like Llama 2 in certain performance metrics. The project underscores a strategic debate: whether to prioritize multilingual broad coverage or Spanish-language specialization. For more insights, see the analysis of hyperscaler investments and strategic positioning. Its focus on transparency and open-source release under AESIA validation enhances trust in public AI initiatives, but the performance gap raises questions about operational competitiveness. The project’s framing suggests a focus on regional adoption over global dominance, impacting Europe’s AI sovereignty and strategic positioning within the global AI ecosystem.

Background of Spain’s Public AI Strategy

Spain’s push into large-scale AI research has been ongoing since 2019, with initiatives like the Language Technologies Plan and projects such as AINA and ILENIA. The ALIA project is part of a broader national effort to develop sovereign AI infrastructure, with €240 million allocated from public funds, making it the most substantial publicly funded European national AI project to date. This follows a pattern of other European initiatives, including Portugal’s AMÁLIA, Italy’s Minerva, and pan-European projects like OpenEuroLLM, each with varying scales and focus areas. ALIA’s development reflects Spain’s strategic aim to balance multilingual capabilities with regional language priorities, especially Spanish, amid broader European discussions on AI sovereignty and regulation.

“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

Operational Performance and Strategic Positioning Ambiguities

It is still unclear how ALIA’s actual performance benchmarks compare in real-world applications beyond initial tests. While benchmark results show a gap with Llama 2, the extent to which ALIA will meet operational needs or gain widespread adoption remains uncertain, especially given the strategic framing around regional focus versus global competitiveness.

Next Steps for ALIA Deployment and Strategic Validation

Further benchmarking and real-world testing are expected as the project moves into industry and government deployment phases. This aligns with the broader discussion on AI market trends, such as the $725 Billion Question: Hyperscaler Capex Q1 2026 and What the Earnings Don’t Answer. The Spanish government and BSC-CNS will likely monitor adoption rates and performance metrics closely, while also engaging in European and international dialogues on AI sovereignty. Additional updates on model improvements, regional adoption, and integration into public services are anticipated over the coming months, shaping Spain’s position in the European AI landscape.

Key Questions

What is the primary goal of the ALIA project?

The primary goal is to develop a multilingual AI model that is widely adopted within the Spanish-speaking world, emphasizing transparency and regional relevance over global performance benchmarks.

How does ALIA compare to other large language models like Llama 2?

Benchmark results indicate ALIA currently lags behind Llama 2 in certain performance metrics, such as XNLI and SQuAD accuracy, reflecting a focus on multilingual coverage and regional adaptation rather than raw performance.

What are the strategic implications of ALIA for Europe?

ALIA exemplifies Europe’s approach to developing sovereign AI capabilities with a focus on transparency, open-source principles, and regional language support, but it also highlights challenges in achieving competitive performance at scale.

Will ALIA be used outside Spain?

While the project aims to maximize adoption in the Spanish-speaking world, its open-source nature and multilingual capabilities could enable broader use, though strategic emphasis remains regional.

What are the next milestones for the ALIA project?

Upcoming milestones include deployment in government and industry applications, further benchmarking, and evaluation of regional adoption rates, with ongoing efforts to improve model performance and transparency.

Source: ThorstenMeyerAI.com

This content is for general information only and is not financial, tax or legal advice. Consult a qualified professional for decisions about your money.
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