Quantized GGUF version of Split LTX-2 checkpoint

Original model Link: https://huggingface.co/Lightricks/LTX-2

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LTX-2 Model Card

This model card focuses on the LTX-2 model, codebase available here.

LTX-2 is a DiT-based audio-video foundation model designed to generate synchronized video and audio within a single model. It brings together the core building blocks of modern video generation, with open weights and a focus on practical, local execution.

LTX-2 Open Source

Model Checkpoints

Name Notes
ltx-2-19b-dev The full model, flexible and trainable in bf16
ltx-2-19b-dev-fp8 The full model in fp8 quantization
ltx-2-19b-dev-fp4 The full model in nvfp4 quantization
ltx-2-19b-distilled The distilled version of the full model, 8 steps, CFG=1
ltx-2-19b-distilled-lora-384 A LoRA version of the distilled model applicable to the full model
ltx-2-spatial-upscaler-x2-1.0 An x2 spatial upscaler for the ltx-2 latents, used in multi stage (multiscale) pipelines for higher resolution
ltx-2-temporal-upscaler-x2-1.0 An x2 temporal upscaler for the ltx-2 latents, used in multi stage (multiscale) pipelines for higher FPS

Model Details

  • Developed by: Lightricks
  • Model type: Diffusion-based audio-video foundation model
  • Language(s): English

Online demo

LTX-2 is accessible right away via the following links:

Run locally

Direct use license

You can use the models - full, distilled, upscalers and any derivatives of the models - for purposes under the license.

ComfyUI

We recommend you use the built-in LTXVideo nodes that can be found in the ComfyUI Manager. For manual installation information, please refer to our documentation site.

PyTorch codebase

The LTX-2 codebase is a monorepo with several packages. From model definition in 'ltx-core' to pipelines in 'ltx-pipelines' and training capabilities in 'ltx-trainer'. The codebase was tested with Python >=3.12, CUDA version >12.7, and supports PyTorch ~= 2.7.

Diffusers 🧨

LTX-2 is supported in the Diffusers Python library for image-to-video generation.

General tips:

  • Width & height settings must be divisible by 32. Frame count must be divisible by 8 + 1.
  • In case the resolution or number of frames are not divisible by 32 or 8 + 1, the input should be padded with -1 and then cropped to the desired resolution and number of frames.
  • For tips on writing effective prompts, please visit our Prompting guide

Limitations

  • This model is not intended or able to provide factual information.
  • As a statistical model this checkpoint might amplify existing societal biases.
  • The model may fail to generate videos that matches the prompts perfectly.
  • Prompt following is heavily influenced by the prompting-style.
  • The model may generate content that is inappropriate or offensive.
  • When generating audio without speech, the audio may be of lower quality.

Train the model

The base (dev) model is fully trainable.

It's extremely easy to reproduce the LoRAs and IC-LoRAs we publish with the model by following the instructions on the LTX-2 Trainer Readme.

Training for motion, style or likeness (sound+appearance) can take less than an hour in many settings.

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