LTX Video
L
LTX Video
Developed by Lightricks
The first DiT-based video generation model capable of real-time generation of high-quality videos, supporting two scenarios: text-to-video and image + text-to-video.
Downloads 165.42k
Release Time : 10/31/2024
Model Overview
LTX-Video is the first DiT-based video generation model that can generate high-quality videos with a resolution of 1216Ã704 at a speed of 30 frames per second. This model is trained on a large-scale dataset of diverse videos and can generate high-resolution videos with realistic and diverse content.
Model Features
Real-time video generation
Capable of generating high-resolution videos at a speed of 30 frames per second, faster than the viewing speed.
High-quality output
Generate high-quality videos with a resolution of 1216Ã704, featuring realistic and diverse content.
Multi-scenario support
Supports two usage scenarios: text-to-video and image + text-to-video.
Diverse training data
Trained on a large-scale dataset of diverse videos, capable of generating diverse video content.
Model Capabilities
Text-to-video
Image + text-to-video
High-resolution video generation
Real-time video generation
Use Cases
Film and television production
Movie clip generation
Generate video clips in the style of movies or TV shows based on the script description.
Generate video clips with a cinematic feel, such as the prison guard scene and the scene of a woman with a sad expression in the examples.
Advertising creativity
Advertising video generation
Generate advertising videos based on product descriptions.
Generate high-quality product showcase videos, such as the cityscape and river scenes in the examples.
Education
Teaching video generation
Generate educational videos based on teaching content.
Generate clear and vivid teaching videos, such as the natural landscape and cityscape in the examples.
đ LTX-Video Model Card
This model card is centered around the LTX-Video model, and its codebase can be found here. LTX-Video is the first DiT-based video generation model that can generate high-quality videos in real-time. It can produce 30 FPS videos at a 1216Ã704 resolution faster than they can be watched. Trained on a large-scale dataset of diverse videos, the model can generate high-resolution videos with realistic and varied content. We offer models for both text-to-video and image+text-to-video use cases.
Video Examples
![]() A woman with long brown hair and light skin smiles at another woman...A woman with long brown hair and light skin smiles at another woman with long blonde hair. The woman with brown hair wears a black jacket and has a small, barely noticeable mole on her right cheek. The camera angle is a close-up, focused on the woman with brown hair's face. The lighting is warm and natural, likely from the setting sun, casting a soft glow on the scene. The scene appears to be real-life footage. |
![]() A woman walks away from a white Jeep parked on a city street at night...A woman walks away from a white Jeep parked on a city street at night, then ascends a staircase and knocks on a door. The woman, wearing a dark jacket and jeans, walks away from the Jeep parked on the left side of the street, her back to the camera; she walks at a steady pace, her arms swinging slightly by her sides; the street is dimly lit, with streetlights casting pools of light on the wet pavement; a man in a dark jacket and jeans walks past the Jeep in the opposite direction; the camera follows the woman from behind as she walks up a set of stairs towards a building with a green door; she reaches the top of the stairs and turns left, continuing to walk towards the building; she reaches the door and knocks on it with her right hand; the camera remains stationary, focused on the doorway; the scene is captured in real-life footage. |
![]() A woman with blonde hair styled up, wearing a black dress...A woman with blonde hair styled up, wearing a black dress with sequins and pearl earrings, looks down with a sad expression on her face. The camera remains stationary, focused on the woman's face. The lighting is dim, casting soft shadows on her face. The scene appears to be from a movie or TV show. |
![]() The camera pans over a snow-covered mountain range...The camera pans over a snow-covered mountain range, revealing a vast expanse of snow-capped peaks and valleys.The mountains are covered in a thick layer of snow, with some areas appearing almost white while others have a slightly darker, almost grayish hue. The peaks are jagged and irregular, with some rising sharply into the sky while others are more rounded. The valleys are deep and narrow, with steep slopes that are also covered in snow. The trees in the foreground are mostly bare, with only a few leaves remaining on their branches. The sky is overcast, with thick clouds obscuring the sun. The overall impression is one of peace and tranquility, with the snow-covered mountains standing as a testament to the power and beauty of nature. |
![]() A woman with light skin, wearing a blue jacket and a black hat...A woman with light skin, wearing a blue jacket and a black hat with a veil, looks down and to her right, then back up as she speaks; she has brown hair styled in an updo, light brown eyebrows, and is wearing a white collared shirt under her jacket; the camera remains stationary on her face as she speaks; the background is out of focus, but shows trees and people in period clothing; the scene is captured in real-life footage. |
![]() A man in a dimly lit room talks on a vintage telephone...A man in a dimly lit room talks on a vintage telephone, hangs up, and looks down with a sad expression. He holds the black rotary phone to his right ear with his right hand, his left hand holding a rocks glass with amber liquid. He wears a brown suit jacket over a white shirt, and a gold ring on his left ring finger. His short hair is neatly combed, and he has light skin with visible wrinkles around his eyes. The camera remains stationary, focused on his face and upper body. The room is dark, lit only by a warm light source off-screen to the left, casting shadows on the wall behind him. The scene appears to be from a movie. |
![]() A prison guard unlocks and opens a cell door...A prison guard unlocks and opens a cell door to reveal a young man sitting at a table with a woman. The guard, wearing a dark blue uniform with a badge on his left chest, unlocks the cell door with a key held in his right hand and pulls it open; he has short brown hair, light skin, and a neutral expression. The young man, wearing a black and white striped shirt, sits at a table covered with a white tablecloth, facing the woman; he has short brown hair, light skin, and a neutral expression. The woman, wearing a dark blue shirt, sits opposite the young man, her face turned towards him; she has short blonde hair and light skin. The camera remains stationary, capturing the scene from a medium distance, positioned slightly to the right of the guard. The room is dimly lit, with a single light fixture illuminating the table and the two figures. The walls are made of large, grey concrete blocks, and a metal door is visible in the background. The scene is captured in real-life footage. |
![]() A woman with blood on her face and a white tank top...A woman with blood on her face and a white tank top looks down and to her right, then back up as she speaks. She has dark hair pulled back, light skin, and her face and chest are covered in blood. The camera angle is a close-up, focused on the woman's face and upper torso. The lighting is dim and blue-toned, creating a somber and intense atmosphere. The scene appears to be from a movie or TV show. |
![]() A man with graying hair, a beard, and a gray shirt...A man with graying hair, a beard, and a gray shirt looks down and to his right, then turns his head to the left. The camera angle is a close-up, focused on the man's face. The lighting is dim, with a greenish tint. The scene appears to be real-life footage. Step |
![]() A clear, turquoise river flows through a rocky canyon...A clear, turquoise river flows through a rocky canyon, cascading over a small waterfall and forming a pool of water at the bottom.The river is the main focus of the scene, with its clear water reflecting the surrounding trees and rocks. The canyon walls are steep and rocky, with some vegetation growing on them. The trees are mostly pine trees, with their green needles contrasting with the brown and gray rocks. The overall tone of the scene is one of peace and tranquility. |
![]() A man in a suit enters a room and speaks to two women...A man in a suit enters a room and speaks to two women sitting on a couch. The man, wearing a dark suit with a gold tie, enters the room from the left and walks towards the center of the frame. He has short gray hair, light skin, and a serious expression. He places his right hand on the back of a chair as he approaches the couch. Two women are seated on a light-colored couch in the background. The woman on the left wears a light blue sweater and has short blonde hair. The woman on the right wears a white sweater and has short blonde hair. The camera remains stationary, focusing on the man as he enters the room. The room is brightly lit, with warm tones reflecting off the walls and furniture. The scene appears to be from a film or television show. |
![]() The waves crash against the jagged rocks of the shoreline...The waves crash against the jagged rocks of the shoreline, sending spray high into the air.The rocks are a dark gray color, with sharp edges and deep crevices. The water is a clear blue-green, with white foam where the waves break against the rocks. The sky is a light gray, with a few white clouds dotting the horizon. |
![]() The camera pans across a cityscape of tall buildings...The camera pans across a cityscape of tall buildings with a circular building in the center. The camera moves from left to right, showing the tops of the buildings and the circular building in the center. The buildings are various shades of gray and white, and the circular building has a green roof. The camera angle is high, looking down at the city. The lighting is bright, with the sun shining from the upper left, casting shadows from the buildings. The scene is computer-generated imagery. |
![]() A man walks towards a window, looks out, and then turns around...A man walks towards a window, looks out, and then turns around. He has short, dark hair, dark skin, and is wearing a brown coat over a red and gray scarf. He walks from left to right towards a window, his gaze fixed on something outside. The camera follows him from behind at a medium distance. The room is brightly lit, with white walls and a large window covered by a white curtain. As he approaches the window, he turns his head slightly to the left, then back to the right. He then turns his entire body to the right, facing the window. The camera remains stationary as he stands in front of the window. The scene is captured in real-life footage. |
![]() Two police officers in dark blue uniforms and matching hats...Two police officers in dark blue uniforms and matching hats enter a dimly lit room through a doorway on the left side of the frame. The first officer, with short brown hair and a mustache, steps inside first, followed by his partner, who has a shaved head and a goatee. Both officers have serious expressions and maintain a steady pace as they move deeper into the room. The camera remains stationary, capturing them from a slightly low angle as they enter. The room has exposed brick walls and a corrugated metal ceiling, with a barred window visible in the background. The lighting is low-key, casting shadows on the officers' faces and emphasizing the grim atmosphere. The scene appears to be from a film or television show. |
![]() A woman with short brown hair, wearing a maroon sleeveless top...A woman with short brown hair, wearing a maroon sleeveless top and a silver necklace, walks through a room while talking, then a woman with pink hair and a white shirt appears in the doorway and yells. The first woman walks from left to right, her expression serious; she has light skin and her eyebrows are slightly furrowed. The second woman stands in the doorway, her mouth open in a yell; she has light skin and her eyes are wide. The room is dimly lit, with a bookshelf visible in the background. The camera follows the first woman as she walks, then cuts to a close-up of the second woman's face. The scene is captured in real-life footage. |
đ Models & Workflows
Name | Notes | Inference.py Config | ComfyUI Workflow (Recommended) |
---|---|---|---|
ltxv-13b-0.9.7-dev | Highest quality, requires more VRAM | ltxv-13b-0.9.7-dev.yaml | ltxv-13b-i2v-base.json |
ltxv-13b-0.9.7-mix | Mix ltxv-13b-dev and ltxv-13b-distilled in the same multi-scale rendering workflow for balanced speed-quality | N/A | ltxv-13b-i2v-mixed-multiscale.json |
ltxv-13b-0.9.7-distilled | Faster, less VRAM usage, slight quality reduction compared to 13b. Ideal for rapid iterations | ltxv-13b-0.9.7-distilled.yaml | ltxv-13b-dist-i2v-base.json |
ltxv-13b-0.9.7-distilled-lora128 | LoRA to make ltxv-13b-dev behave like the distilled model | N/A | N/A |
ltxv-13b-0.9.7-fp8 | Quantized version of ltxv-13b | Coming soon | ltxv-13b-i2v-base-fp8.json |
ltxv-13b-0.9.7-distilled-fp8 | Quantized version of ltxv-13b-distilled | Coming soon | ltxv-13b-dist-i2v-base-fp8.json |
ltxv-2b-0.9.6 | Good quality, lower VRAM requirement than ltxv-13b | ltxv-2b-0.9.6-dev.yaml | ltxvideo-i2v.json |
ltxv-2b-0.9.6-distilled | 15Ã faster, real-time capable, fewer steps needed, no STG/CFG required | ltxv-2b-0.9.6-distilled.yaml | ltxvideo-i2v-distilled.json |
đ§ Model Details
Property | Details |
---|---|
Developed by | Lightricks |
Model Type | Diffusion-based text-to-video and image-to-video generation model |
Language(s) | English |
đģ Usage
Direct use
You can use the model for purposes under the license:
- 2B version 0.9: license
- 2B version 0.9.1 license
- 2B version 0.9.5 license
- 2B version 0.9.6-dev license
- 2B version 0.9.6-distilled license
- 13B version 0.9.7-dev license
- 13B version 0.9.7-dev-fp8 license
- 13B version 0.9.7-distilled license
- 13B version 0.9.7-distilled-fp8 license
- 13B version 0.9.7-distilled-lora128 license
- Temporal upscaler version 0.9.7 license
đ License
The model is released under different licenses for different versions. Please refer to the links provided in the Usage section for detailed license information.
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