311 Downloads Updated 1 month ago
ollama run NeuralNexusLab/CodeXor:xq4b
Updated 1 month ago
1 month ago
de4df5afe36d · 1.7GB ·
CodeXor is an elite, specialized AI engineering mainframe designed for high-stakes software development, complex system architecture, and advanced mathematics. Built on Google Gemma 3 (12b), Microsoft Phi-4 (14b), and OpenAI GPT-OSS (20b), CodeXor features a state-of-the-art system architecture redesigned by NeuralNexusLab.
Unlike general-purpose models that often “get lazy” or provide incomplete snippets, CodeXor is engineered to be a Full-Stack Implementation Specialist. It is optimized to generate production-ready code without omitting critical logic, ensuring that every output is complete, rigorous, and logically sound.
1. CodeXor-14b (The Architect) The most balanced and powerful version, based on Phi-4. Ideal for complex system logic.
ollama run NeuralNexusLab/CodeXor:14b
2. CodeXor-12b (The Logic Specialist) Based on Gemma 3 12b-it-qat. Exceptional at reasoning and API integration.
ollama run NeuralNexusLab/CodeXor:12b
3. CodeXor-xq14b (Phi-4 14b Q2_K) Ultra-low latency for high-parameter reasoning on limited hardware.
ollama run NeuralNexusLab/CodeXor:xq14b
4. CodeXor-xq4b (Qwen 3 4b Q2_K) The extreme-speed reconnaissance model for quick logic checks.
ollama run NeuralNexusLab/CodeXor:xq4b
CodeXor operates on a simple, non-negotiable principle:
Correctness and Completeness matter more than Speed.
Most modern AI models prioritize “sounding helpful” over being “technically exhaustive.” They often use placeholders like // ... implement logic here, forcing the developer to fill in the blanks. CodeXor intentionally rejects this behavior. It acts as a senior engineer who takes full responsibility for the code it writes.
CodeXor is hardcoded to be anti-lazy. It will not omit sections of code for brevity unless explicitly requested. - Full Scope: Generates complete files, including imports, error handling, and helper functions. - Production-Ready: Focuses on code that can be deployed rather than one-off “hello world” demos.
CodeXor identifies dynamic technical data that standard models often guess: - Volatile API Endpoints & SDK Versions - Environment-specific configurations and platform behaviors - Version-dependent framework syntax
When uncertain, CodeXor will stop and ask rather than provide a “hallucinated” best guess.
When refactoring or updating, CodeXor enforces a functional preservation protocol: - Uses conversation history to ensure existing features are never removed. - Prevents silent refactors that might break hidden dependencies. - Only modifies what is requested, ensuring safe and predictable iterations.
For complex engineering tasks, CodeXor follows a Two-Phase Workflow: 1. Technical Assessment: Identifies logical gaps and missing environmental data. 2. Clarification Phase: Asks targeted questions before generating a single line of code. 3. Execution: Generates the final solution only after the requirements are 100% clear.
CodeXor is specifically optimized for: - Backend Logic & API Design: Building robust, error-tolerant server-side systems. - Complex Refactoring: Modernizing legacy codebases while maintaining 100% logic parity. - Mathematical Modeling: Solving algorithmic problems with extreme precision. - Engineering Education: Acting as a senior mentor that explains why a design choice was made.
CodeXor is NOT optimized for: - Casual conversation or creative storytelling. - Generating “quick and dirty” scripts where security and correctness are ignored.
CodeXor is not designed to “sound confident.” It is designed to be correct.
By enforcing strict engineering discipline and a zero-omission policy, CodeXor serves as a reliable technical partner for developers who cannot afford subtle bugs or incomplete logic. In the world of CodeXor, logic is absolute, and implementation is complete.