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d=\"M3 18h18\" stroke=\"currentColor\" stroke-width=\"2\" stroke-linecap=\"round\"/>\u003C/g>",{"id":24,"documentId":25,"metaTitle":26,"metaDescription":27,"slug":28,"heroTitle":29,"heroUnderTitle":30,"heroUnderTitle2":31,"heroUnderTitle3":31,"heroCTA":32,"heroVideoUrl":33,"blog":34,"createdAt":35,"updatedAt":35,"publishedAt":36,"locale":37,"sectionSecurity":31,"heroCtAlink":31,"localizations":38,"heroImage":51,"recommendedArticles":132,"contentType":133},7609,"uf78j32a9d50r19xtnwhvtli","Top 5 migliori LLM 2024","Scopri caratteristiche e prestazioni dei migliori LLM disponibili nel 2024","/it/tecnologia/ia-openai-azure-llm/top-5-migliori-llm/","Top 5 LLM nel 2024","Quale LLM dovrei usare?",null,"Scopri Leexi AI Note Taker gratis","false","Sin dall'avvento dell'intelligenza artificiale, gli LLM sono diventati parte integrante della nostra vita quotidiana. Se non ti suona familiare, potresti conoscere GPT, creato da Open AI, o Gemini di Google, ora presente in molti strumenti. Oggi molti LLM sono disponibili, permettendo agli sviluppatori di usarli su macchine o server privati.\n\n[Prova Leexi.ai, il Note Taker AI che rivoluzionerà il tuo modo di prendere appunti\n(https://www.leexi.ai/demo#cta)  \n\nIn questo articolo riassumiamo i 5 migliori LLM del 2024:\n\n## Cos'è un LLM?\n\nUn LLM, acronimo di Large Language Model, è un modello di intelligenza artificiale capace di generare testo usando grandi quantità di dati preesistenti. Questi modelli sono addestrati su vasti dataset di testi da internet, libri e altre fonti per imparare a prevedere la sequenza successiva di parole o completare frasi.\nGrazie alla loro dimensione e complessità, gli LLM generano testi spesso coerenti e naturali. Possono essere usati per generazione automatica di testi, assistenza alla scrittura, traduzione, risposta a domande o simulazione di conversazioni. Gli LLM possono anche comprendere e riassumere documenti lunghi, eseguire ricerche e fornire raccomandazioni basate sugli input ricevuti.\n\n## GPTo-4\n\n![GPTo-4](https://reliable-canvas-66698e1f5b.media.strapiapp.com/gpt_4o_1_7da944f66e.png)\n\nGPTo-4 è un LLM multimodale sviluppato da Open AI, rivolto principalmente alle imprese. L'LLM di Open AI è attualmente il più potente disponibile, con risposte estremamente rapide e accurate, ideale per applicazioni che richiedono comprensione contestuale.\nÈ capace di generare codice e testo, elaborare immagini e comprendere 26 lingue. In definitiva, GPT-4 può svolgere molte attività complesse grazie alla sua capacità di cogliere sfumature e all'enorme numero di parametri (il numero esatto non è stato confermato da OpenAI).\n\n## Mistral 8x7B\n\n![mistral](https://reliable-canvas-66698e1f5b.media.strapiapp.com/mistral_1_eb9a2d7342.png)\n\nL'LLM sviluppato da Mistral AI è uno dei migliori open source con una dimensione di circa 13B. È uno dei modelli più complessi con 8 esperti e utilizza 2 esperti per token. Questa complessità lo rende estremamente preciso e capace di gestire compiti complessi grazie ai miliardi di parametri che ne garantiscono accuratezza ed efficienza.\n\n## Llama 3 di Meta\n\n![llama 3](https://reliable-canvas-66698e1f5b.media.strapiapp.com/llama_3_1_a0f62585ed.png)\n\nQuesto è l'ultimo LLM open source di Meta. Progettato per una vasta gamma di compiti, questo assistente è stato addestrato su grandi quantità di dati. È capace di comprendere il contesto e rispondere in modo umano. A differenza di altre versioni di Llama, come Llama 2, questa versione è già addestrata.\nEsistono 2 versioni di Llama 3 molto adatte come chatbot:\n- Llama 3 8b con 8 miliardi di parametri\n- Llama 3 7b con circa 7 miliardi di parametri\n\n## Claude 3\n\n![Claude 3](https://reliable-canvas-66698e1f5b.media.strapiapp.com/claude_1_2061533392.png)\n\nClaude 3 è un LLM creato dalla società americana Anthropic e disponibile in 3 versioni: Claude 3 Haiku, Claude 3 Sonnet e Claude 3 Opus. Claude è capace di ragionamenti avanzati, analisi e trascrizione di immagini statiche, note scritte a mano e grafici, generazione di codice e traduzione, oltre a creare contenuti in diverse lingue.\nLe 3 versioni corrispondono a 3 livelli di potenza. La versione Claude 3 Haiku è il modello più veloce e leggero, mentre Sonnet combina prestazioni e velocità per compiti più complessi. Opus è la versione più potente, in grado di gestire analisi complesse, compiti lunghi e attività matematiche e di programmazione avanzate.\n\n## Bloom\n\n![Bloom](https://reliable-canvas-66698e1f5b.media.strapiapp.com/bloom_1_22ea737775.png)\n\nSviluppato da Big Science, BLOOM è un modello open source addestrato su 176B parametri. Offre capacità avanzate per comprendere e generare linguaggio naturale. È un modello autoregressivo e multilingue, addestrato sulla piattaforma NVIDIA AI, capace di generare testo in 46 lingue diverse. L'obiettivo di Bloom, creato nel 2022, è democratizzare l'accesso agli strumenti AI e creare uno strumento veramente multilingue per includere il maggior numero possibile di utenti.\n\n[Approfondisci la tua scoperta dell'AI e prova Leexi\n(https://www.leexi.ai/demo#cta)  ","2026-06-03T18:07:14.508Z","2026-06-03T18:07:14.560Z","it",[39,42,45,48],{"locale":40,"slug":41,"documentId":25},"en","/en/technology/openai-azure-llm/top-5-best-llms/",{"locale":43,"slug":44,"documentId":25},"fr","/fr/technologie/ia-openai-azure-llm/top-5-meilleurs-llm/",{"locale":46,"slug":47,"documentId":25},"de","/de/technologie/ia-openai-azure-llm/top-5-beste-llm/",{"locale":49,"slug":50,"documentId":25},"nl","/nl/technologie/ia-openai-azure-llm/top-5-beste-llm/",{"id":52,"documentId":53,"name":54,"alternativeText":55,"caption":31,"width":56,"height":57,"formats":58,"hash":93,"ext":60,"mime":63,"size":94,"url":95,"previewUrl":31,"createdAt":96,"updatedAt":96,"publishedAt":96,"focalPoint":31,"related":97},830,"zc1wl2sjrywjt8kvy1nso0ol","EN TOP5.png","TOP 5 Best LLM in 20024",1920,1080,{"large":59,"small":69,"medium":77,"thumbnail":85},{"ext":60,"url":61,"hash":62,"mime":63,"name":64,"path":31,"size":65,"width":66,"height":67,"sizeInBytes":68},".png","https://reliable-canvas-66698e1f5b.media.strapiapp.com/large_EN_TOP_5_887d1091b6.png","large_EN_TOP_5_887d1091b6","image/png","large_EN TOP5.png",300.59,1000,563,300590,{"ext":60,"url":70,"hash":71,"mime":63,"name":72,"path":31,"size":73,"width":74,"height":75,"sizeInBytes":76},"https://reliable-canvas-66698e1f5b.media.strapiapp.com/small_EN_TOP_5_887d1091b6.png","small_EN_TOP_5_887d1091b6","small_EN TOP5.png",87.72,500,281,87718,{"ext":60,"url":78,"hash":79,"mime":63,"name":80,"path":31,"size":81,"width":82,"height":83,"sizeInBytes":84},"https://reliable-canvas-66698e1f5b.media.strapiapp.com/medium_EN_TOP_5_887d1091b6.png","medium_EN_TOP_5_887d1091b6","medium_EN TOP5.png",172.81,750,422,172813,{"ext":60,"url":86,"hash":87,"mime":63,"name":88,"path":31,"size":89,"width":90,"height":91,"sizeInBytes":92},"https://reliable-canvas-66698e1f5b.media.strapiapp.com/thumbnail_EN_TOP_5_887d1091b6.png","thumbnail_EN_TOP_5_887d1091b6","thumbnail_EN TOP5.png",32.92,245,138,32923,"EN_TOP_5_887d1091b6",214.54,"https://reliable-canvas-66698e1f5b.media.strapiapp.com/EN_TOP_5_887d1091b6.png","2025-11-04T14:16:23.640Z",[98,110,120,131],{"id":99,"documentId":25,"metaTitle":100,"metaDescription":101,"slug":41,"heroTitle":102,"heroUnderTitle":103,"heroUnderTitle2":31,"heroUnderTitle3":31,"heroCTA":104,"heroVideoUrl":33,"blog":105,"createdAt":106,"updatedAt":107,"publishedAt":108,"locale":40,"__type":109},2667,"Top 5 best LLM","Discover the features and performance of the best LLMs available in 2024","Top 5 LLM in 2024","Which LLM should I use ?","Discover Leexi AI Note Taker for free","Since the advent of artificial intelligence, LLMs have become an omnipresent part of our daily lives. If that doesn't ring a bell, you may be familiar with GPT, created by Open AI, or Google's Gemini, which is now found in many tools. Many LLMs are now available, enabling developers to deploy them on machines or even private servers. \n\n[Try Leexi.ai, the Note Taker AI that will transform your note-taking\n(https://www.leexi.ai/demo#cta)  \n\nIn this article, we summarise the 5 best LLMs of 2024:\n\n## What is an LLM?\n\nAn LLM, an acronym for Large Language Model, is an artificial intelligence-based model that is capable of generating text using a large quantity of pre-existing data. These models are trained on large datasets of text from the internet, books and other sources to learn how to predict the next sequence of words or complete sentences.\nBecause of their size and complexity, LLMs are able to generate text that often looks coherent and natural. They can be used in a variety of applications such as automatic text generation, writing assistance, translation, question answering or conversation simulation. LLMs can also be used to understand and summarise large documents, perform search tasks and provide recommendations based on the input provided.\n\n## GPTo-4\n\n![GPTo-4](https://reliable-canvas-66698e1f5b.media.strapiapp.com/gpt_4o_1_7da944f66e.png)\n\nGPTo-4 is a multimodal LLM developed by Open AI aimed primarily at enterprises. Open AI's LLM is currently the most powerful available, with extremely fast and accurate responses, ideal for applications requiring contextual understanding. \nIt is capable of generating code and text, processing images and understanding 26 languages. Ultimately, GPT-4 can perform a large number of complex tasks because it more easily grasps nuances and the very large number of parameters (the exact number has not been confirmed by OpenAI). \n\n## Mistral 8x7B\n\n![mistral](https://reliable-canvas-66698e1f5b.media.strapiapp.com/mistral_1_eb9a2d7342.png)\n\nThe LLM developed by Mistral AI is one of the best open sources with an approximate size of 13B. It is one of the most complex models with 8 experts and uses 2 experts per token. This complexity allows it to be extremely accurate and it is capable of handling complex tasks thanks to billions of parameters that guarantee its accuracy and efficiency. \n\n## Llama 3 from Meta\n\n![llama 3](https://reliable-canvas-66698e1f5b.media.strapiapp.com/llama_3_1_a0f62585ed.png)\n\nThis is Meta's latest open source LLM. Designed for a wide range of tasks, this assistant has been trained on a large quantity of training data. It is capable of understanding the context and responding humanely according to it. Unlike other versions of Llama, such as Llama 2, this version has already been trained. \nThere are 2 versions of Llama 3 that are highly suitable as chatbots: \n- Llama 3 8b with 8 billion parameters\n- Llama 3 7b with about 7 billion parameters\n\n## Claude 3\n\n![Claude 3](https://reliable-canvas-66698e1f5b.media.strapiapp.com/claude_1_2061533392.png)\n\nClaude 3 is an LLM created by the American company Anthropic and exists in 3 versions: Claude 3 Haiku, Claude 3 Sonnet and Claude 3 Opus. Claude is capable of providing advanced reasoning, analysing and transcribing static images, handwritten notes and graphics, generating code and translating as well as generating content in several languages. \nThe 3 versions correspond to 3 levels of power. The Claude 3 Haiku version is the fastest and lightest model, while the Sonnet version is a combination of performance and speed for more complex tasks. The Opus version is the most powerful and can handle complex analyses and longer tasks as well as higher-level mathematical and coding tasks.\n\n## Bloom\n\n![Bloom](https://reliable-canvas-66698e1f5b.media.strapiapp.com/bloom_1_22ea737775.png)\n\nDeveloped by Big Science, BLOOM is an open-source model that has been trained on 176B parameters. It offers advanced capabilities for understanding and generating natural language.  It is an autoregressive, multilingual model that has been trained using the NVIDIA AI platform and can generate text in 46 different languages. Bloom's aim when it was created in 2022 was to democratise access to AI tools and create a truly multilingual tool to include as many users as possible. \n\n[Go further in your discovery of AI and try Leexi\n(https://www.leexi.ai/demo#cta)  ","2025-11-05T15:29:56.407Z","2026-02-11T10:52:54.670Z","2026-02-11T10:52:54.770Z","api::child-page.child-page",{"id":111,"documentId":25,"metaTitle":112,"metaDescription":113,"slug":47,"heroTitle":114,"heroUnderTitle":115,"heroUnderTitle2":31,"heroUnderTitle3":31,"heroCTA":116,"heroVideoUrl":33,"blog":117,"createdAt":118,"updatedAt":118,"publishedAt":119,"locale":46,"__type":109},6556,"Top 5 beste LLM 2024","Entdecken Sie die Funktionen und Leistung der besten LLMs im Jahr 2024","Top 5 LLM im Jahr 2024","Welches LLM sollte ich nutzen?","Entdecken Sie Leexi AI Note Taker kostenlos","Seit dem Aufkommen der künstlichen Intelligenz sind LLMs ein allgegenwärtiger Teil unseres Alltags. Falls Ihnen das nichts sagt, kennen Sie vielleicht GPT von Open AI oder Googles Gemini, das in vielen Tools integriert ist. Viele LLMs sind jetzt verfügbar und ermöglichen Entwicklern, sie auf Maschinen oder privaten Servern einzusetzen.\n\n[Probieren Sie Leexi.ai, den Note Taker AI, der Ihre Notizen revolutioniert\n(https://www.leexi.ai/demo#cta)  \n\nIn diesem Artikel fassen wir die 5 besten LLMs 2024 zusammen:\n\n## Was ist ein LLM?\n\nEin LLM (Large Language Model) ist ein KI-basiertes Modell, das Texte anhand großer Datenmengen generiert. Diese Modelle werden mit umfangreichen Textdaten aus dem Internet, Büchern und anderen Quellen trainiert, um die nächsten Wortfolgen oder Sätze vorherzusagen.\nDank ihrer Größe und Komplexität erzeugen LLMs oft kohärente und natürliche Texte. Sie werden für automatische Textgenerierung, Schreibassistenz, Übersetzung, Beantwortung von Fragen oder Gesprächssimulation eingesetzt. LLMs helfen auch beim Verstehen und Zusammenfassen großer Dokumente, bei Suchaufgaben und geben Empfehlungen basierend auf Eingaben.\n\n## GPTo-4\n\n![GPTo-4](https://reliable-canvas-66698e1f5b.media.strapiapp.com/gpt_4o_1_7da944f66e.png)\n\nGPTo-4 ist ein multimodales LLM von Open AI, vor allem für Unternehmen. Open AIs LLM ist derzeit das leistungsstärkste mit schnellen und präzisen Antworten, ideal für kontextabhängige Anwendungen.\nEs kann Code und Texte generieren, Bilder verarbeiten und 26 Sprachen verstehen. GPT-4 bewältigt viele komplexe Aufgaben, da es Nuancen besser erfasst und über sehr viele Parameter verfügt (exakte Zahl nicht bestätigt).\n\n## Mistral 8x7B\n\n![mistral](https://reliable-canvas-66698e1f5b.media.strapiapp.com/mistral_1_eb9a2d7342.png)\n\nDas von Mistral AI entwickelte LLM ist eines der besten Open-Source-Modelle mit ca. 13B Parametern. Es ist sehr komplex mit 8 Experten und nutzt 2 Experten pro Token. Diese Komplexität sorgt für hohe Genauigkeit und ermöglicht komplexe Aufgaben dank Milliarden von Parametern.\n\n## Llama 3 von Meta\n\n![llama 3](https://reliable-canvas-66698e1f5b.media.strapiapp.com/llama_3_1_a0f62585ed.png)\n\nDas neueste Open-Source-LLM von Meta, trainiert auf großen Datenmengen. Es versteht den Kontext und reagiert menschlich. Im Gegensatz zu früheren Versionen wie Llama 2 ist diese Version bereits trainiert.\nEs gibt 2 Versionen, die sich gut als Chatbots eignen:\n- Llama 3 8b mit 8 Milliarden Parametern\n- Llama 3 7b mit ca. 7 Milliarden Parametern\n\n## Claude 3\n\n![Claude 3](https://reliable-canvas-66698e1f5b.media.strapiapp.com/claude_1_2061533392.png)\n\nClaude 3 ist ein LLM der US-Firma Anthropic in 3 Versionen: Claude 3 Haiku, Claude 3 Sonnet und Claude 3 Opus. Claude bietet fortgeschrittenes Denken, Analyse und Transkription von Bildern, handschriftlichen Notizen und Grafiken, Codegenerierung, Übersetzung und mehrsprachige Inhaltserstellung.\nDie Versionen stehen für unterschiedliche Leistungsstufen: Haiku ist schnell und leicht, Sonnet kombiniert Leistung und Geschwindigkeit für komplexe Aufgaben, Opus ist am leistungsstärksten für komplexe Analysen, längere Aufgaben und höhere Mathematik und Programmierung.\n\n## Bloom\n\n![Bloom](https://reliable-canvas-66698e1f5b.media.strapiapp.com/bloom_1_22ea737775.png)\n\nEntwickelt von Big Science, ist BLOOM ein Open-Source-Modell mit 176B Parametern. Es bietet fortschrittliche Fähigkeiten für das Verstehen und Generieren natürlicher Sprache. Es ist ein autoregressives, mehrsprachiges Modell, trainiert mit NVIDIA AI, das Texte in 46 Sprachen erzeugen kann. Bloom wurde 2022 geschaffen, um den Zugang zu KI-Tools zu demokratisieren und ein wirklich mehrsprachiges Tool für möglichst viele Nutzer zu bieten.\n\n[Vertiefen Sie Ihre KI-Entdeckung und probieren Sie Leexi\n(https://www.leexi.ai/demo#cta)  ","2026-06-03T16:16:50.753Z","2026-06-03T16:16:50.798Z",{"id":121,"documentId":25,"metaTitle":122,"metaDescription":123,"slug":50,"heroTitle":124,"heroUnderTitle":125,"heroUnderTitle2":31,"heroUnderTitle3":31,"heroCTA":126,"heroVideoUrl":33,"blog":127,"createdAt":128,"updatedAt":129,"publishedAt":130,"locale":49,"__type":109},6994,"Top 5 beste LLM's 2024","Ontdek de functies en prestaties van de beste LLM's in 2024","Top 5 LLM's in 2024","Welke LLM moet ik gebruiken?","Ontdek Leexi AI Note Taker gratis","Sinds de opkomst van kunstmatige intelligentie zijn LLM's een alomtegenwoordig onderdeel van ons dagelijks leven geworden. Als dat je niets zegt, ken je misschien GPT van Open AI of Google's Gemini, dat nu in veel tools zit. Er zijn nu veel LLM's beschikbaar, waarmee ontwikkelaars ze op machines of privéservers kunnen inzetten.\n\n[Probeer Leexi.ai, de Note Taker AI die je notities zal transformeren\n(https://www.leexi.ai/demo#cta)  \n\nIn dit artikel vatten we de 5 beste LLM's van 2024 samen:\n\n## Wat is een LLM?\n\nEen LLM, afkorting van Large Language Model, is een AI-model dat tekst kan genereren met behulp van grote hoeveelheden vooraf bestaande data. Deze modellen zijn getraind op grote datasets van teksten van internet, boeken en andere bronnen om te leren de volgende woordvolgorde of zinnen te voorspellen.\nDoor hun omvang en complexiteit kunnen LLM's tekst genereren die vaak coherent en natuurlijk lijkt. Ze worden gebruikt voor automatische tekstgeneratie, schrijfondersteuning, vertaling, vraagbeantwoording of gesimuleerde gesprekken. LLM's kunnen ook grote documenten begrijpen en samenvatten, zoekopdrachten uitvoeren en aanbevelingen doen op basis van input.\n\n## GPTo-4\n\n![GPTo-4](https://reliable-canvas-66698e1f5b.media.strapiapp.com/gpt_4o_1_7da944f66e.png)\n\nGPTo-4 is een multimodale LLM ontwikkeld door Open AI, vooral gericht op bedrijven. Open AI's LLM is momenteel de krachtigste, met zeer snelle en nauwkeurige antwoorden, ideaal voor toepassingen die contextueel begrip vereisen.\nHet kan code en tekst genereren, afbeeldingen verwerken en 26 talen begrijpen. GPT-4 kan veel complexe taken uitvoeren omdat het nuances beter begrijpt en beschikt over een zeer groot aantal parameters (exact aantal niet bevestigd door OpenAI).\n\n## Mistral 8x7B\n\n![mistral](https://reliable-canvas-66698e1f5b.media.strapiapp.com/mistral_1_eb9a2d7342.png)\n\nDe LLM van Mistral AI is een van de beste open source modellen met ongeveer 13B parameters. Het is een van de meest complexe modellen met 8 experts en gebruikt 2 experts per token. Deze complexiteit maakt het zeer nauwkeurig en geschikt voor complexe taken dankzij miljarden parameters die nauwkeurigheid en efficiëntie garanderen.\n\n## Llama 3 van Meta\n\n![llama 3](https://reliable-canvas-66698e1f5b.media.strapiapp.com/llama_3_1_a0f62585ed.png)\n\nDit is Meta's nieuwste open source LLM. Ontworpen voor diverse taken, is deze assistent getraind op veel data. Het kan context begrijpen en menselijk reageren. In tegenstelling tot eerdere versies zoals Llama 2, is deze versie al getraind.\nEr zijn 2 versies van Llama 3 die geschikt zijn als chatbots:\n- Llama 3 8b met 8 miljard parameters\n- Llama 3 7b met ongeveer 7 miljard parameters\n\n## Claude 3\n\n![Claude 3](https://reliable-canvas-66698e1f5b.media.strapiapp.com/claude_1_2061533392.png)\n\nClaude 3 is een LLM van het Amerikaanse bedrijf Anthropic en bestaat in 3 versies: Claude 3 Haiku, Claude 3 Sonnet en Claude 3 Opus. Claude kan geavanceerd redeneren, statische beelden, handgeschreven notities en grafieken analyseren en transcriberen, code genereren, vertalen en content maken in meerdere talen.\nDe 3 versies staan voor 3 prestatieniveaus. Claude 3 Haiku is het snelste en lichtste model, Sonnet combineert prestaties en snelheid voor complexere taken, en Opus is het krachtigst, geschikt voor complexe analyses, langere taken en geavanceerde wiskunde en codering.\n\n## Bloom\n\n![Bloom](https://reliable-canvas-66698e1f5b.media.strapiapp.com/bloom_1_22ea737775.png)\n\nOntwikkeld door Big Science, is BLOOM een open source model met 176B parameters. Het biedt geavanceerde mogelijkheden voor begrip en generatie van natuurlijke taal. Het is een autoregressief, meertalig model getraind met het NVIDIA AI-platform en kan tekst genereren in 46 talen. Bloom's doel bij de creatie in 2022 was AI-tools te democratiseren en een echt meertalig hulpmiddel te maken om zoveel mogelijk gebruikers te bereiken.\n\n[Ga verder in je AI-ontdekking en probeer Leexi\n(https://www.leexi.ai/demo#cta)  ","2026-06-03T14:23:40.025Z","2026-06-03T17:27:15.823Z","2026-06-03T17:27:15.905Z",{"id":24,"documentId":25,"metaTitle":26,"metaDescription":27,"slug":28,"heroTitle":29,"heroUnderTitle":30,"heroUnderTitle2":31,"heroUnderTitle3":31,"heroCTA":32,"heroVideoUrl":33,"blog":34,"createdAt":35,"updatedAt":35,"publishedAt":36,"locale":37,"__type":109},[],"child-pages",{"left":4,"top":4,"width":135,"height":10,"rotate":4,"vFlip":6,"hFlip":6,"body":136},330,"\u003Cg fill=\"none\">\u003Cpath d=\"M325.378 65.7492V50.0301H329.083V65.7492H325.378ZM327.241 47.7992C326.654 47.7992 326.149 47.6047 325.726 47.2158C325.303 46.8201 325.092 46.346 325.092 45.7933C325.092 45.2339 325.303 44.7597 325.726 44.3708C326.149 43.9751 326.654 43.7773 327.241 43.7773C327.835 43.7773 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