Building Artistic Intelligence β where research, systems, and creativity converge.
π€ Rahul Chaube (he/him)
π§ AI Researcher β’ LLM Architect β’ Startup Founder
π¨ Creative Technologist β’ Systems Thinker
I donβt build tools.
I build intelligence systems.
My work lives at the intersection of:
- Foundational AI research
- Production-grade systems
- Creative & artistic intelligence
Old-school engineering discipline Γ forward-looking AI vision.
Artistic Intelligence is not βAI artβ.
It is:
- Intelligence that understands context
- Systems that reason, adapt, and create
- AI that respects human aesthetics & intent
- Research that turns into real products
ποΈ AI Research Lab:
π https://www.artisticimpression.org/
π§© Large Language Models
- From-scratch training pipelines
- Tokenization & long-context scaling
- SFT β’ RFT β’ Preference Learning
- Hallucination control & evaluation
ποΈ Multimodal Intelligence
- VisionβLanguage reasoning
- Text β Image generation
- Context-aware perception
π€ Agentic AI
- Tool-using agents
- Memory-driven reasoning loops
- Autonomous task execution
ποΈ Applied Intelligence
- Industrial AI
- Education AI
- Agriculture AI
- HumanβAI interaction systems
Nepalβs first fully self-developed LLM
- Trained from scratch on open data
- Custom tokenizer & training infra
- Multi-phase roadmap β Phase 4 (2025)
- Research-first, deployment-ready
Universal open-source intelligence system
- Multimodal reasoning
- Voice-driven interaction
- Contextual memory
- Designed for accessibility & scale
Realistic text-to-image generation models
- Diffusion pipelines
- Prompt control & realism tuning
- Open research & reproducibility
- Kotlin β β primary language for system design & apps
- Python β AI research & experimentation
- Java β backend & structured systems
- JavaScript β product & frontend logic
- C / C++ β performance-critical components
- PyTorch β research & custom training loops
- TensorFlow β production ML pipelines
- CUDA β GPU-level experimentation (research usage)
- HuggingFace β internals, tokenizers, datasets (not wrappers)
- Docker β reproducible environments
- Linux (Ubuntu) β primary dev OS
- GitHub Actions β CI/CD & automation
- Google Colab / DGX A100 β large-scale training
- React β AI product interfaces
- Web APIs β system communication
- ποΈ Voice Interfaces β speech-driven AI UX
- π CAVI-X β Context-Aware Visual Inspector
- π Flick AI β AI-powered learning platform
- π± AgroSathi β Agriculture intelligence
- π« CampusConnect β Smart campus ecosystem
- π€ Recono β Voice & speech recognition system
π
ICPC (LLM Training Problem)
β‘ HackAI by NVIDIA
π Red Bull Basement β Top 15
π IEEE International Conference (Deep Learning)
- Research before hype
- Open systems over black boxes
- Design matters
- Intelligence should feel human
I collaborate on:
- LLM research
- Creative AI systems
- Deep-tech startups
- Open-source intelligence infra
If youβre serious about building intelligence, welcome.
Your support directly funds:
- GPUs
- Training experiments
- Infrastructure
- Open publications
β https://buymeacoffee.com/rahulchaube
Creative Intelligence β’ Research Systems β’ Build the Future