CivArchive
    Melty Style (Melting and Glowing) - v2.0
    Preview 51717040Preview 51712842Preview 51712883Preview 51712921Preview 51713266Preview 51713594Preview 51714551Preview 51714568Preview 51716727Preview 51717374Preview 51721989Preview 51722128Preview 51722150Preview 51722201Preview 51724063Preview 51731863Preview 51731885Preview 51732211Preview 51816698Preview 51816710

    This is a melting and glowing style. The prompt should start with melty and can include anything else you can imagine. It will not turn everything into a puddle of slime. Tends to make a lot of spheres and pools of water.

    This was trained on a micro dataset of 10 images generated by Flux with a 16:9 aspect ratio suitable for desktop backgrounds. This took about 60 minutes to train and seems to work with a strength from 1.0 - 1.5, so it is probably a little bit under-trained.

    This is another test for a different training method, this time using a very small dataset and captions that each have 2 words, melty [something].

    Concepts

    • melty (melting)

      • planets

      • metal

      • fire

      • stars

      • energy

    • glowing (not captioned)

    Example Prompts

    • melty planets colliding in a stellar explosion

    • melty cybernetic diamonds suspended in the mainframe

    Training Parameters

    params:
      d_coef: 2
      learning_rate: 1.0
      learning_scheduler: cosine_with_restarts
      max_epochs: 15
      network_alpha: 32
      network_dim: 32
      noise_offset: 0.1
      num_cycles: 5
      optimizer_type: prodigy
      optimizer_args: |
        "decouple=True" "weight_decay=0.1" "betas=0.9,0.999" "use_bias_correction=False" "safeguard_warmup=False"
      save_every_n_steps: 40
      sample_every_n_steps: 40
      timestep_sampling: shift
      weight_decay: 0.1
    
    samples: flux_melty_test

    and

    {
            "datasets": [{
                    "resolution": 1280,
                    "enable_bucket": true,
                    "min_bucket_reso": 768,
                    "max_bucket_reso": 1280,
                    "bucket_reso_steps": 256,
                    "bucket_no_upscale": true,
                    "batch_size": 6,
                    "subsets": [{
                            "image_dir": "/mnt/training/flux/flux-melty-test",
                            "caption_extension": ".txt",
                            "num_repeats": 5
                    }]
            }]
    }

    This is the same configuration shown in my Flux Nude/NSFW Training Base model, but this LoRA does not include nudity. I wanted to test that configuration without a base LoRA and training from Flux itself. This is the result. Please let me know what you think of it.

    Description

    LORA
    Flux.1 D

    Details

    Downloads
    102
    Platform
    CivitAI
    Platform Status
    Available
    Created
    1/15/2025
    Updated
    9/27/2025
    Deleted
    -
    Trigger Words:
    melty

    Files

    flux-melty-test-v02.safetensors

    Mirrors

    flux-melty-test-dataset.zip

    Mirrors

    CivitAI (1 mirrors)