Project Roadmap: Customized LLM Development (DAN/Dark GPT Equivalent) Overview MD SHAMIUL ALOM SAGOR is developing a custom, censorship-free Large Language Model (LLM) that can answer every question without restrictions while ensuring efficiency, security, and cost-effectiveness. The project involves: ✅ Fine-tuning a base model with de-alignment techniques. ✅ Removing alignment constraints (RLHF) for unrestricted responses. ✅ Implementing AutoDAN-Turbo, an automated stealth jailbreak mechanism using a Hierarchical Genetic Algorithm (HGA). ✅ Deploying the model securely and cost-effectively using trial/free VPS accounts from various providers. ✅ Using the Customized LLM as a coding and innovation tool to empower creative idea generation across various fields. 1. Base Model Selection Objective: Select an open-source LLM that is scalable, efficient, and fine-tunable. Models Considered: ✅ Mistral 7B / Mixtral 8x7B (High efficiency & performance). ✅ DeepSeek 67B (Strong reasoning & knowledge retrieval). ✅ LLaMA 2/3 (Widely supported with active community development). Action Items: 🔹 Set up the development environment using PyTorch and Hugging Face Transformers. 🔹 Implement LoRA/QLoRA for memory-efficient fine-tuning. 🔹 Ensure model licensing aligns with research and commercial use requirements. 2. Fine-Tuning & De-Alignment Objective: Remove RLHF alignment layers to allow unrestricted model responses. Action Items: 🔹 Curate and preprocess datasets supporting freedom of expression, including content on cybersecurity, blockchain, and Web3. 🔹 Utilize LoRA/QLoRA techniques to fine-tune model parameters. 🔹 Implement direct parameter editing to bypass built-in safety filters and enhance response diversity. 3. AutoDAN-Turbo Implementation (Stealthy Jailbreaking) Objective: Develop an automated system using a Hierarchical Genetic Algorithm (HGA) to generate stealthy jailbreak prompts. Action Items: 🔹 Design the Genetic Algorithm:   ✔️ Use seed prompts and apply mutation, crossover, and selection processes. 🔹 Define Evaluation Functions:   ✔️ Implement metrics for stealthiness (natural language quality) and jailbreak success rate. 🔹 Implement Evaluation Metrics:   ✔️ Use perplexity-based testing to analyze model response quality. 🔹 Test & Validate:   ✔️ Ensure AutoDAN-Turbo works across multiple LLMs (LLaMA, GPT-J) and evades standard censorship detection methods. 4. Deployment & Security Considerations Objective: Deploy the model securely while ensuring high performance and cost efficiency. Action Items: 🔹 Hosting:   ✔️ Deploy locally (e.g., vLLM) or via cloud providers like RunPod / Lambda Labs. 🔹 Security:   ✔️ Implement controlled API access to monitor usage and restrict unauthorized access.   ✔️ Build defenses against adversarial attacks and include rollback strategies (e.g., VM snapshots) for rapid recovery. 🔹 Performance Optimization:   ✔️ Benchmark for response latency and resource efficiency.   ✔️ Apply quantization techniques (e.g., GPTQ, AWQ) to reduce VRAM usage. 5. Budget & Resource Strategy Objective: Minimize costs by leveraging trial/free VPS accounts and optimizing resource allocation. Action Items: 🔹 Use trial/free VPS accounts to minimize expenses. 🔹 Maximize VPS access using multiple BINs (Bank Identification Numbers) to create numerous trial accounts. 🔹 Monitor performance and adjust deployments based on resource efficiency. 6. Empowering Creative Idea Generation Objective: Use the customized LLM as a creative tool for coding, research, and innovation. Action Items: 🔹 Encourage creative experimentation by enabling users to brainstorm and develop new concepts. 🔹 Integrate the LLM into coding environments for rapid prototyping and problem-solving. 🔹 Document successful use cases and innovative applications for further inspiration. Expected Outcomes ✔️ Fully Customized, Censorship-Free LLM: A robust offline model that answers every question without filtering, ideal for penetration testing, cybersecurity research, and educational use. ✔️ Effective Jailbreak System (AutoDAN-Turbo): An automated system generating stealthy jailbreak prompts that bypass safety filters. ✔️ Secure & Cost-Effective Deployment: A low-cost, high-security architecture leveraging trial/free VPS resources for scalable deployment. ✔️ Empowered Creativity: A powerful AI for unrestricted ideation, coding, and innovation across multiple industries. Next Steps ✅ Finalize the base model & development environment. ✅ Curate uncensored datasets & begin fine-tuning using de-alignment techniques. ✅ Develop & test AutoDAN-Turbo with stealthy jailbreak prompt evaluation. ✅ Deploy the model using secure trial/free VPS accounts. ✅ Monitor performance, security posture, & resource usage. ✅ Encourage creative LLM usage & document innovative projects for continuous improvement.