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Neural Inverse x Campus Fund |
Efficiency &  Security layer in workflow

Neural Inverse x gradCapital | To Build the First Enterprise On-Chain IDE

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The Secure, Accelerated Workflow
This demo shows our Efficiency Layer (Harvey)accelerating development with intelligent automation, seamlessly integrated with our Security Layer (AIR) to provide enforced, real-time threat protection .
What it does:

Single problemfrom User and Customer

AIR: Live Time Threat Engine  

AIR is our live threat intelligence engine. It continuously scans a developer's active code against real-world data from GitHub, Stack Overflow, and on-chain activity to identify complex vulnerabilities, logic flaws, and business-risk loopholes that traditional static analyzers cannot detect.

Harvey:  On Chain Copilot

Harvey is an intelligent co-pilot for on-chain development. It goes beyond simple code suggestion to orchestrate developer tools, automate complex multi-step tasks like writing and running tests, and assist with project-wide refactoring, acting as a true automated assistant.

AIR (Security) & Harvey (Efficiency) Integrated in VS Code

How it does:

Single problemfrom User and Customer

AIR: Security Layer

AIR's dynamic multi-model architecture works by having a lightweight routing model evaluate code via token embeddings to score task categories (e.g., logic, security, gas optimization), then compute cosine similarity against specialist profiles to select and activate the best match for real-time inference against live external feeds like Chainlink oracles and internal sources like commit histories, yielding annotated outputs with confidence scores.

Harvey:  Efficiency Layer

Harvey is a specialized GPT-4o model, fine-tuned within Azure using a $5,000 compute budget. We trained it on a proprietary, curated dataset of 25 million tokens focused on secure on-chain development patterns and orchestration, via the Reasoning Trace Method over 4 epochs. This equips Harvey with domain-specific expertise to assist with complex, practical tasks with zero hallucination in domain-specific tasks.

Try AIR and Harvey via an Interface

Campus One pageDemo