# Introduction

NeiryLab is a decentralized accelerator for projects in neuroscience, neurotechnology, and neural interfaces. We bridge the gap between scientific research and commercial applications through DeFi tools and tokenization on the Solana blockchain. Our platform provides comprehensive support — marketing, technical assistance, funding, and scientific expertise — making us unique among blockchain accelerators.

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> NeiryLab is a platform for launching tokenized research organizations.
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> **How it works**: Researchers submit scientific projects, and Pythia and Elvis token holders vote on which projects to launch and how to manage them.
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> **Main goal**: To help scientists transform their research into commercially successful products.

The **core idea of the platform** is to provide tools for **funding, developing, and launching neuroscience startups** through blockchain technology. NeiryLab connects innovative neuroscience research with investors seeking cutting-edge technologies. The platform also helps to launch **tokens** to increase project visibility and drive community engagement.

We aim to create a sustainable ecosystem where research in neurobiology, artificial intelligence, and neural interfaces receives financial support and broad distribution through decentralized mechanisms. NeiryLab creates a dedicated space for startups shaping the future of neuroscience.

The platform enables **third-party project launches**. System ensures that NeiryLab receive a **percentage of tokens** from each successful implementation.

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