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HelloSky Case Studies

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    4.7 / 5.0
    Customer References3 total
    About

    Auxia is an Agentic Marketing Platform that combines advanced infrastructure with AI agents to seamlessly orchestrate hyper-personalized customer journeys. The platform empowers enterprises to unlock hidden signals from first-party data, fueling a flexible suite of intelligent growth models that automate months of data science and engineering work. With Auxia, marketers can deploy AI agents to deliver dynamic, personalized content across their most critical customer surfaces (e.g. web, app, email, SMS), uncover nuanced insights, and autonomously optimize each customer’s journey in real time.

  • Reference Rating
    4.7 / 5.0
    Customer References6 total
    About

    DeepIP is your trusted AI patent assistant. They unleash Gen AI so patent practitioners draft better patents faster and get more results. They believe a revolution has started. The status quo is no longer an option. The day-to-day work of tomorrow's IP practitioners will be radically different. It will involve close collaboration with AI, which will handle the heavy work, propelling them towards excellence.

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    4.7 / 5.0
    Customer References3 total
    About

    Nace.AI is an Enterprise AI company, building Metamodel for real-time LLM customization. Their first product NAVI - AI Agent for Audit, Compliance and Operational Intelligence. Nace.AI system generates small, task-specific AI models, offering enterprises alternative to traditional large language models. They shared a singular vision inspired by a challenge they’d encountered time and again: the difficulty enterprises face in adapting mainstream language models to meet their specific business needs. As machine learning researchers and engineers with years of experience, they knew this wasn’t just a technical and research hurdle but an AI trustworthiness problem.