Gay.Male.Model_LoRA_SDXL

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Intro

Please excuse my noobiness, this is my first LoRA. Gay.Male.Model.LoRA is a character model produced by OneShotLora. The model is a generated AI augmented version of my personal artwork turned into video thru Wondershare Filmora. For the source material, OneShotLoRA did a really great job. The OneShotLoRA process can take video and images to produce a LoRA safetensor file for image or video production.

The character is not based on anyone in real-life. It is based on artwork done by me where realistic attributes have been applied once made digital.


🎬 How I used OneShotLoRA’s Video‑to‑LoRA Process

Below is the full pipeline, from dropping in a video link or local video or images to receiving a trained LoRA.


1. Provide a Video URL

At the top of the tool, you’ll see:

  • Video URL field

  • A dropdown of model types (WAN 2.2, Hunyuan Video, Qwen Image, FLUX, SDXL, etc.)

  • Token cost indicators (e.g., 19 tokens, 14 tokens, 4 tokens) oneshotlora.com

Paste a link to:

  • YouTube

  • TikTok

  • Instagram

  • Direct MP4

  • Any publicly accessible video URL

The system will fetch the video and prepare it for frame extraction.

Optionally, you can choose to add local videos and images or to use an existing data set as input.


2. Configure Options (Optional but Important)

You’ll see toggles like:

• Generate sample images (+3 tokens)

Creates preview images from the extracted dataset so you can confirm quality before training.

• Make dataset NSFW (+50 tokens)

This tells the system to not filter frames during extraction.
If you leave this off, NSFW frames are removed automatically.

• Trigger

You can optionally define a trigger word for the LoRA.

These options directly affect dataset composition and training behavior.


3. Frame Extraction

OneShotLoRA automatically:

  • Extracts up to 500 frames from the video

  • Requires at least 25 images to proceed

  • If face detection is enabled, requires 20+ clear faces of the same person at ≥300px size oneshotlora.com

This step is fully automated.

If the video is long, it samples evenly across the timeline.


4. Dataset Filtering & Validation

The system will:

  • Detect faces (if applicable)

  • Remove blurry or low‑quality frames

  • Remove duplicates

  • Remove NSFW frames unless you enabled the NSFW option

  • Validate that the dataset meets minimum requirements

If the dataset fails validation, the job is automatically refunded or resubmitted.
This is stated directly on the page:

“Jobs that fail will be refunded or resubmitted automatically.” oneshotlora.com


5. Train the LoRA

Once the dataset is ready, you click:

Train LoRA

This consumes the token amount shown (e.g., 17 tokens for a standard run) oneshotlora.com.

Behind the scenes, OneShotLoRA:

  • Preprocesses the dataset

  • Generates captions

  • Runs LoRA training on their backend

  • Packages the final .safetensors LoRA file

You don’t need to configure epochs, learning rate, or resolution — it’s all automated.


6. Receive Your LoRA

When training completes, you get:

  • A downloadable LoRA file

  • Preview images (if you enabled sample generation)

  • A permalink to your job

  • The ability to use the LoRA in their “LoRA to Image” tool immediately


🧠 What makes this workflow unique

Compared to manual LoRA training, OneShotLoRA:

  • Handles dataset extraction

  • Handles captioning

  • Handles filtering

  • Handles training parameters

  • Requires no local GPU

  • Works from a single video link

It’s essentially a “hands‑off” LoRA generator.


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