No-Code Platform for Multimodal Models
Budget: $100.0
FIXED /
⭐ 0.00 (0)
India
machine-learning
I am building a no-code platform that enables non-technical users to convert small language models into multimodal vision-language models.
I already have a working Python-based training and inference pipeline that combines a language model with a vision encoder using PyTorch, PyTorch Lightning, Hugging Face, CLIP, LoRA, Gradio, MLflow, DVC, Docker, and GitHub Actions.
I need an experienced full-stack AI/ML engineer to help turn this existing pipeline into a user-friendly web product.
The MVP should allow users to:
Select a supported language model and vision encoder
Upload or select a training dataset
Configure basic training parameters
Start and stop GPU training jobs
Monitor training progress, logs, losses, and errors
Save and manage model checkpoints
Test the trained model through an image-and-text inference interface
Deploy or export the resulting model
Preferred technology stack:
React or Next.js frontend
Python and FastAPI backend
PyTorch, Hugging Face Transformers, and PyTorch Lightning
Docker and cloud GPU infrastructure
WebSockets or similar technology for live job updates
Experience with model training, inference, queues, storage, and MLOps
The first milestone will support one model architecture and one GPU provider. Please include relevant AI platform, MLOps, or model-training projects in your proposal.
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