Goverment
Empower government agencies with secure, cost-effective AI solutions through custom-trained language models that ensure data privacy, domain expertise, and multilingual efficiency for citizen services.
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Safe and Reliable Citizen-Facing Assistant
LLMs are at the core of AI assistants for citizens. Today, government agencies have concerns about the quality of training data in off-the-shelf LLMs and the potential for inappropriate outputs they might produce. By training a model from scratch, you gain full control and awareness of the training data, allowing your team to choose or create datasets directly on our platform. The LLM you train will become a critical component for the AI assistant or any other generative AI products you develop.
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Deep Understanding of Industry Terms
Government applications require domain-specific knowledge, such as legal terminology, regulatory frameworks, or procedural workflows. By training an LLM in-house, you ensure the model is tailored to the specific language and context of public sector tasks, such as drafting legislation, responding to citizen inquiries, managing compliance reporting, and more.
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Cheaper for Non-English Speaking Countries
General-purpose LLMs are optimised for English, meaning their tokenisers, tools that break text into smaller units, are designed around English language structure. When processing other languages, these tokenisers may break single words into multiple tokens, increasing API costs for customers, as pricing is based on token count. For example: • In German, a word like "Schulpflicht" (compulsory education) might be split into multiple tokens, such as "Schul" and "pflicht". • In Danish, a compound word like "arbejdstidsregler" (working time regulations) could be broken into smaller units like "arbejds", "tids", and "regler". These inefficiencies lead to higher costs for non-English languages. By training an LLM on our platform, you get a tokeniser custom-built for your language, ensuring words are treated as single tokens. This reduces token counts, making API calls significantly cheaper, especially at government usage volumes.
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Full Security and Data Privacy
Governments often manage sensitive and classified information that demands strict control over data sources. Training an LLM from scratch provides full data control, enabling government agencies to utilise proprietary or restricted datasets while ensuring compliance with data protection regulations, such as GDPR or SOC2.