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---
tags:
- general-purpose
- roleplay
- creative-writing
- storywriting
- reasoning
- qwen3
- chatml
- finetune
- SFT
- text-generation-inference
language:
- en
- pt
base_model:
- Qwen/Qwen3-14B-Base
pipeline_tag: text-generation
library_name: transformers
license: apache-2.0
datasets:
- aimeri/spoomplesmaxx-sft-full-v2
---
<!doctype html>
<html lang="en">
    <head>
        <meta charset="UTF-8" />
        <meta name="viewport" content="width=device-width, initial-scale=1.0" />
        <title>SpoomplesMaxx V2.1 Mini 14B</title>
    </head>
    <div class="crt-container">
        <div class="crt-case">
            <div class="crt-inner-case">
                <div class="crt-bezel">
                    <div class="terminal-screen">
                        <div style="text-align: center">
                            <h2>SpoomplesMaxx-V2.1-Mini-14B</h2>
                            <h3>"Flight of the Cockatiels"</h3>
                            <pre class="code-block" style="display: inline-block; text-align: left; font-size: clamp(2px, 0.4vw, 12px); line-height: 1; max-width: 100%; overflow: hidden; white-space: pre;">
β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“
β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“
β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“
β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–‘β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“
β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–’β–‘β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–’β–‘β–’β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“
β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–‘β–“β–‘β–‘β–“β–“β–“β–“β–“β–“β–“β–“β–“β–‘β–‘β–‘β–‘β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“
β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–‘β–‘β–‘β–‘β–‘β–“β–“β–“β–“β–“β–“β–“β–‘β–‘β–‘β–‘β–‘β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“
β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–’β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–“β–“β–“β–“β–’β–‘β–‘β–‘β–‘β–‘β–’β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“
β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–‘β–‘β–’β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–“β–“β–‘β–‘β–‘β–‘β–‘β–‘β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“
β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–‘β–‘β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–’β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–“β–‘β–‘β–’β–‘β–‘β–‘β–‘β–‘β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“
β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–‘β–‘β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–’β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–“β–“β–“β–‘β–‘β–‘β–‘β–‘β–‘β–“β–“β–“β–’β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“
β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–‘β–“β–‘β–‘β–‘β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–’β–‘β–‘β–‘β–‘β–‘β–‘β–“β–“β–“β–“β–‘β–“β–‘β–‘β–‘β–“β–“β–“β–’β–‘β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“
β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–‘β–‘β–“β–‘β–‘β–‘β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–’β–“β–“β–“β–‘β–“β–‘β–‘β–“β–“β–“β–‘β–’β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–‘β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“
β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–’β–‘β–‘β–’β–‘β–‘β–‘β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–’β–‘β–‘β–‘β–‘β–’β–“β–“β–“β–“β–‘β–“β–“β–’β–‘β–“β–“β–“β–“β–’β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–’β–“β–‘β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“
β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–‘β–“β–‘β–‘β–‘β–’β–‘β–‘β–‘β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–‘β–‘β–‘β–‘β–‘β–“β–“β–“β–“β–“β–’β–‘β–‘β–’β–‘β–‘β–’β–’β–‘β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–’β–‘β–‘β–‘β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“
β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–‘β–‘β–“β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–’β–‘β–‘β–‘β–‘β–“β–“β–“β–“β–“β–“β–“β–’β–“β–‘β–‘β–“β–‘β–‘β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–‘β–‘β–‘β–‘β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“
β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–‘β–‘β–’β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–’β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–‘β–‘β–‘β–‘β–‘β–“β–“β–“β–“β–’β–‘β–’β–“β–’β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–‘β–‘β–‘β–‘β–‘β–‘β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“
β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–’β–‘β–‘β–’β–“β–“β–“β–“β–“β–‘β–‘β–‘β–‘β–’β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–‘β–‘β–‘β–‘β–‘β–‘β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“
β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–’β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–‘β–‘β–‘β–’β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“
β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–‘β–‘β–“β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–’β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–‘β–‘β–‘β–‘β–’β–’β–’β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“
β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–’β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–“β–’β–‘β–‘β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–’β–‘β–‘β–‘β–‘β–‘β–‘β–’β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–‘β–“β–‘β–“β–“β–“β–“β–“β–“β–“β–“β–“β–’β–‘β–‘β–‘β–’β–’β–“β–‘β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“
β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–“β–“β–‘β–‘β–“β–“β–“β–“β–“β–“β–“β–“β–“β–‘β–‘β–‘β–‘β–’β–‘β–’β–’β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–‘β–‘β–‘β–‘β–“β–“β–“β–“β–“β–“β–“β–‘β–‘β–‘β–‘β–’β–“β–“β–‘β–“β–“β–’β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“
β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–’β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–“β–‘β–“β–“β–‘β–‘β–“β–“β–“β–“β–“β–“β–‘β–‘β–‘β–“β–’β–‘β–‘β–’β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–‘β–’β–‘β–‘β–‘β–‘β–‘β–“β–“β–“β–“β–‘β–‘β–‘β–“β–“β–“β–’β–“β–“β–“β–’β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“
β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–“β–“β–“β–“β–‘β–‘β–’β–“β–“β–‘β–‘β–‘β–“β–“β–‘β–‘β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–“β–’β–‘β–“β–“β–“β–‘β–“β–“β–’β–‘β–‘β–“β–“β–“β–“β–“β–“β–“β–“β–“
β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–“β–“β–“β–“β–‘β–‘β–’β–“β–“β–“β–“β–‘β–‘β–“β–“β–“β–“β–“β–“β–“β–’β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–’β–’β–“β–“β–‘β–‘β–“β–“β–“β–“β–’β–‘β–’β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“
β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–’β–“β–’β–“β–“β–“β–“β–‘β–‘β–’β–“β–‘β–“β–“β–“β–“β–“β–“β–“β–“β–’β–“β–‘β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–“β–“β–“β–“β–’β–‘β–’β–’β–“β–“β–“β–“β–’β–“β–’β–“β–“β–“β–“β–“β–“β–“
β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–’β–“β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–’β–“β–“β–“β–“β–“β–“β–‘β–‘β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–‘β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–‘β–‘β–‘β–‘β–‘β–’β–“β–“β–“β–“β–“β–“β–“β–’β–’β–‘β–‘β–’β–‘β–’β–“β–“β–“β–“β–“β–“β–“
β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–“β–“β–“β–“β–“β–’β–‘β–‘β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–‘β–’β–‘β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–‘β–‘β–‘β–‘β–‘β–‘β–“β–“β–“β–“β–“β–“β–‘β–“β–’β–“β–’β–“β–“β–“β–“β–“β–“β–“β–“β–“
β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–’β–“β–“β–“β–“β–“β–“β–“β–‘β–‘β–“β–“β–“β–“β–“β–“β–“β–“β–“β–‘β–’β–‘β–‘β–‘β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–‘β–‘β–‘β–‘β–’β–“β–“β–“β–‘β–‘β–‘β–‘β–’β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“
β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–“β–“β–“β–“β–“β–“β–‘β–‘β–‘β–“β–“β–“β–“β–“β–“β–“β–“β–“β–‘β–‘β–‘β–’β–‘β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–’β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“
β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–“β–“β–“β–“β–“β–“β–“β–‘β–‘β–‘β–“β–“β–“β–“β–“β–“β–“β–“β–“β–‘β–‘β–’β–“β–’β–‘β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–’β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“
β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–’β–“β–“β–“β–“β–“β–‘β–‘β–‘β–“β–“β–“β–“β–“β–“β–“β–‘β–‘β–‘β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–’β–“β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–’β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“
β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–“β–“β–“β–“β–“β–“β–“β–‘β–‘β–‘β–‘β–“β–“β–“β–“β–’β–‘β–‘β–“β–“β–“β–“β–“β–“β–“β–‘β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–‘β–‘β–‘β–‘β–‘β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“
β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–“β–“β–“β–“β–“β–“β–“β–“β–‘β–‘β–‘β–“β–‘β–‘β–‘β–‘β–“β–“β–’β–“β–’β–‘β–“β–“β–’β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–‘β–‘β–‘β–‘β–‘β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“
β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–’β–‘β–‘β–‘β–‘β–‘β–‘β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–‘β–‘β–‘β–‘β–‘β–‘β–“β–’β–‘β–‘β–‘β–“β–“β–“β–‘β–‘β–’β–“β–“β–“β–“β–“β–“β–“β–“β–“β–‘β–‘β–‘β–“β–’β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“
β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–‘β–‘β–“β–’β–‘β–‘β–‘β–“β–“β–‘β–’β–‘β–’β–“β–“β–“β–“β–“β–“β–“β–‘β–‘β–‘β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“
β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–’β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–’β–’β–“β–“β–’β–‘β–“β–“β–“β–‘β–“β–‘β–“β–“β–“β–“β–“β–“β–‘β–‘β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“
β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–’β–“β–’β–“β–“β–‘β–“β–“β–“β–“β–“β–“β–“β–‘β–’β–“β–“β–“β–“β–‘β–“β–“β–“β–“β–“β–“β–“β–“β–‘β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“
β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–’β–’β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–“β–“β–“β–“β–“β–“β–“β–“β–‘β–‘β–‘β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–’β–‘β–‘β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“
β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–’β–“β–“β–“β–“β–“β–“β–“β–‘β–‘β–‘β–‘β–‘β–‘β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–’β–‘β–‘β–‘β–’β–‘β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“
β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–’β–‘β–’β–‘β–‘β–‘β–’β–“β–“β–“β–“β–“β–“β–“β–“β–‘β–‘β–‘β–‘β–‘β–‘β–’β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–‘β–‘β–‘β–‘β–‘β–‘β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“
β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–‘β–‘β–‘β–’β–“β–“β–“β–“β–“β–“β–“β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–’β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–’β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“
β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–‘β–‘β–‘β–‘β–“β–“β–“β–“β–“β–“β–’β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–’β–“β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–’β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“
β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–‘β–‘β–‘β–“β–“β–“β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–’β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“
β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–’β–‘β–‘β–‘β–“β–“β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“
β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–‘β–‘β–‘β–‘β–“β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–“β–“β–“β–“β–“β–’β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“
β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–’β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–’β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–’β–’β–‘β–‘β–‘β–‘β–‘β–‘β–’β–“β–‘β–“β–“β–“β–“β–“β–‘β–’β–’β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“
β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–’β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–“β–“β–“β–“β–“β–‘β–‘β–‘β–“β–‘β–‘β–‘β–’β–“β–’β–’β–“β–“β–“β–“β–’β–‘β–“β–‘β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“
β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–‘β–‘β–‘β–’β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–’β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–’β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–“β–“β–“β–“β–“β–“β–“β–“β–“β–‘β–‘β–“β–‘β–’β–“β–“β–‘β–“β–“β–“β–“β–“β–’β–‘β–‘β–‘β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“
β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–‘β–‘β–‘β–‘β–’β–‘β–‘β–‘β–‘β–‘β–“β–“β–“β–“β–“β–“β–“β–“β–“β–’β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–’β–“β–“β–“β–“β–“β–“β–“β–“β–‘β–‘β–“β–“β–“β–‘β–“β–“β–“β–“β–“β–“β–“β–‘β–‘β–’β–‘β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“
β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–’β–‘β–‘β–‘β–‘β–“β–‘β–‘β–‘β–‘β–‘β–“β–“β–“β–“β–“β–“β–“β–“β–“β–’β–’β–“β–’β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–“β–“β–“β–“β–“β–“β–“β–‘β–‘β–“β–“β–‘β–“β–“β–“β–“β–’β–‘β–‘β–“β–“β–“β–“β–‘β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“
β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–‘β–‘β–‘β–‘β–‘β–’β–‘β–‘β–‘β–‘β–‘β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–“β–“β–“β–“β–“β–’β–‘β–‘β–‘β–’β–‘β–‘β–‘β–‘β–‘β–“β–“β–“β–“β–‘β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“
β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–‘β–‘β–‘β–‘β–“β–‘β–‘β–‘β–‘β–‘β–‘β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–’β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–“β–“β–“β–“β–“β–“β–“β–“β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–“β–‘β–‘β–‘β–“β–‘β–‘β–‘β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“
β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–‘β–‘β–‘β–‘β–“β–‘β–‘β–‘β–“β–“β–‘β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–’β–’β–“β–‘β–‘β–‘β–“β–“β–‘β–‘β–‘β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“
β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–‘β–‘β–‘β–’β–“β–‘β–‘β–‘β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–’β–’β–‘β–‘β–‘β–‘β–‘β–‘β–’β–“β–“β–“β–“β–’β–“β–“β–“β–“β–“β–“β–‘β–‘β–“β–“β–’β–“β–“β–’β–‘β–‘β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“
β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–‘β–‘β–‘β–“β–“β–‘β–‘β–‘β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–“β–“β–“β–“β–“β–“β–“β–‘β–‘β–‘β–“β–“β–“β–‘β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“
β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–‘β–‘β–‘β–“β–“β–‘β–‘β–‘β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–“β–“β–“β–“β–“β–“β–“β–’β–‘β–‘β–‘β–‘β–‘β–‘β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–’β–“β–“β–“β–“β–“
β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–’β–‘β–‘β–“β–“β–’β–‘β–‘β–’β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–‘β–‘β–‘β–’β–“β–“β–“β–“β–“β–“β–“β–’β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–‘β–‘β–‘β–“β–“β–“β–“β–“β–“
β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–‘β–‘β–“β–“β–‘β–‘β–‘β–’β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–’β–‘β–‘β–’β–“β–“β–“β–“β–“β–“β–“β–“β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–’β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–‘β–‘β–‘β–‘β–‘β–“β–“β–“β–“β–“β–“β–“
β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–‘β–“β–“β–“β–‘β–‘β–‘β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–’β–‘β–‘β–‘β–“β–“β–‘β–’β–’β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–‘β–‘β–‘β–‘β–‘β–“β–“β–“β–“β–“β–“β–“β–“
β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–‘β–‘β–‘β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–‘β–‘β–‘β–‘β–’β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–‘β–‘β–“β–“β–“β–“β–‘β–‘β–‘β–‘β–‘β–“β–“β–“β–“β–“β–“β–“β–“β–“
β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–‘β–‘β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–’β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–‘β–‘β–‘β–“β–“β–“β–‘β–‘β–‘β–‘β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“
β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–’β–‘β–‘β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–‘β–‘β–‘β–“β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–’β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–‘β–“β–“β–“β–“β–“β–‘β–‘β–‘β–“β–“β–“β–“β–‘β–’β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“
β–“β–“β–“β–“β–“β–“β–“β–“β–“β–‘β–‘β–‘β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–’β–‘β–‘β–“β–“β–“β–“β–“β–‘β–‘β–‘β–“β–“β–“β–‘β–“β–“β–“β–“β–’β–‘β–’β–’β–“β–“β–“β–“β–“β–“β–“
β–“β–“β–“β–“β–“β–“β–“β–“β–‘β–‘β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–’β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–‘β–‘β–‘β–‘β–“β–“β–“β–“β–’β–‘β–‘β–“β–“β–’β–“β–“β–’β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–’β–“β–“β–“β–“β–“β–“
β–“β–“β–“β–“β–“β–“β–“β–‘β–‘β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–‘β–‘β–‘β–‘β–‘β–‘β–“β–‘β–‘β–‘β–‘β–’β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–‘β–‘β–‘β–‘β–“β–“β–“β–“β–“β–‘β–’β–“β–“β–‘β–’β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–“β–“β–“β–“β–“β–“β–“β–“β–“
β–“β–“β–“β–“β–“β–“β–‘β–’β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–‘β–‘β–‘β–‘β–‘β–‘β–“β–‘β–‘β–‘β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–‘β–“β–“β–“β–“β–“β–“β–‘β–‘β–‘β–“β–“β–“β–“β–“β–‘β–“β–’β–‘β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“
β–“β–“β–“β–“β–“β–‘β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–‘β–‘β–‘β–‘β–‘β–’β–“β–’β–‘β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–‘β–‘β–“β–“β–“β–“β–‘β–‘β–‘β–“β–“β–“β–“β–’β–‘β–‘β–“β–“β–“β–’β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“
β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–‘β–‘β–‘β–‘β–‘β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–‘β–‘β–‘β–“β–“β–“β–“β–‘β–“β–“β–“β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“
β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–’β–‘β–‘β–‘β–‘β–’β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–‘β–‘β–‘β–“β–“β–“β–‘β–‘β–‘β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“
β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–‘β–‘β–‘β–‘β–‘β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–‘β–‘β–‘β–“β–‘β–‘β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–‘β–‘β–‘β–‘β–’β–‘β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“
β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–‘β–‘β–‘β–‘β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–‘β–‘β–’β–’β–‘β–‘β–’β–’β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“
β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–’β–‘β–‘β–’β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–‘β–‘β–’β–“β–“β–“β–“β–“β–“β–‘β–‘β–‘β–‘β–‘β–‘β–‘β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“
β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–‘β–‘β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–’β–‘β–‘β–‘β–‘β–‘β–‘β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“
β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–‘β–‘β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“
β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–‘β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“
β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“
β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“β–“

</pre>
                        </div>
                        <p>
                            SpoomplesMaxx is a generalist model with primary
                            strengths in creative writing and roleplay, plus
                            light competence at instruction following and
                            reasoning.
                        </p>
                        <p>
                            The Mini brings the v2.1 data and training recipe
                            to a 14B you can run on a single 24GB card. Smaller
                            bird, same energy.
                        </p>
                        <div class="notice">
                            <h3>What's new in v2.1 Mini</h3>
                            <p>
                                The Mini keeps the v2.1 <strong>data mix</strong> β€” including the
                                long-context roleplay corpus where each in-character turn is
                                preceded by an explicit <code>&lt;think&gt;</code> planning
                                scratchpad β€” and swaps the base model down a weight class.
                                Qwen3-14B-Base was chosen after a long hunt: it is essentially the
                                only current dense (no MoE, no Mamba), non-VLM model in the
                                12&ndash;14B class with a true pretrained base available and enough
                                pretraining tokens (~36T) to skip continued pretraining entirely.
                            </p>
                            <pre class="code-block">
CHANGED SINCE v2.1 (30B)
- Base model: Granite 4.1 30B -> Qwen3-14B-Base. Template is now
  standard ChatML with native &lt;think&gt;/&lt;/think&gt; reasoning.
- Control-token heal: a dedicated post-SFT training stage to revive
  Qwen3-Base's dead special tokens (see notice below).
- Content-conditional thinking election (emergent -- see
  "Thinking behavior").

UNCHANGED
- Same SFT corpus (aimeri/spoomplesmaxx-sft-full-v2), same story
  scratchpad format, same personas.
- Still no tool-calling data -- reserved for a dedicated future run.
- Still focused on creative writing, roleplay, and companion use.
                            </pre>
                        </div>
                        <div class="notice">
                            <h3>The control-token heal (PSA for Qwen3-Base finetuners)</h3>
                            <p>
                                Qwen ships Qwen3-14B-Base with the ChatML/thinking tokens
                                (<code>&lt;|im_start|&gt;</code>, <code>&lt;|im_end|&gt;</code>,
                                <code>&lt;think&gt;</code>, <code>&lt;/think&gt;</code>, tool
                                tokens) present in the vocab but <strong>never trained</strong>:
                                their <code>lm_head</code> rows are literally one shared stub
                                vector (norm 0.286, pairwise cosine 1.000). A standard frozen-head
                                QLoRA SFT on this base learns to <em>reason</em> but physically
                                cannot <em>emit</em> <code>&lt;/think&gt;</code> or
                                <code>&lt;|im_end|&gt;</code> &mdash; the symptom is a perfect
                                reasoning trace that ends in a random stray token where the close
                                tag should be.
                            </p>
                            <p>
                                The fix shipped in this model: the special-token rows were grafted
                                from <code>Qwen/Qwen3-14B</code> (same vocab, dims, and lineage),
                                then a short single-GPU heal (500 steps, plain HF + PEFT, fresh
                                attn/MLP LoRA + trainable <code>embed_tokens</code> /
                                <code>lm_head</code>) taught the model to open and close the block
                                natively. Post-heal, P(<code>&lt;/think&gt;</code>) at true close
                                positions measures <strong>0.998</strong> and every generation
                                terminates on <code>&lt;|im_end|&gt;</code>. If you are finetuning
                                any Qwen3 base: check your special-token row norms and pairwise
                                cosines before you burn the GPU hours.
                            </p>
                        </div>
                        <h3>Thinking behavior</h3>
                        <p>
                            This model elects thinking <strong>by content</strong>. Reasoning-shaped
                            prompts and roleplay cards with the scratchpad open
                            <code>&lt;think&gt;</code> unprompted (18/20 in the greedy test
                            battery); casual chat skips the ceremony and just answers. With
                            SillyTavern cards as system prompts it reasons the scratchpad
                            correctly on its own.
                        </p>
                        <pre class="code-block">
MODE CONTROL (baked into the chat template):
  enable_thinking=True    forced thinking -- the template prefills
                          &lt;think&gt;\n so every turn reasons (deliberate
                          deviation from the stock Qwen3 template)
  enable_thinking=False   forced off -- empty &lt;think&gt;\n\n&lt;/think&gt;
                          block (Qwen3 convention); the reasoning
                          migrates into the visible answer
  (unset)                 the model elects by content -- the default
                          election behavior described above

SILLYTAVERN:          ST builds prompts itself. ChatML template; for
                      forced thinking use a deepseek-style reasoning
                      prefix that opens &lt;think&gt; (same trick as the 30B
                      macaws); no prefix = the model elects.
PARSER NOTE:          in forced mode the open tag lives in the PROMPT,
                      not the output -- reasoning parsers that expect
                      the model to emit &lt;think&gt; itself (e.g. vLLM's
                      qwen3 parser) should use a deepseek-style parser
                      for that mode.
LONG CHATS:           do NOT feed prior-turn think blocks back into
                      context (the chat template already strips them;
                      leave ST's "add reasoning to prompt" off).
                      Stale &lt;/think&gt; tokens in context get taxed by
                      repetition penalty and thinking can stop
                      terminating.
                        </pre>
                        <p>The story scratchpad format, carried over from v2.1:</p>
                        <pre class="code-block">
SCENE: where/when, atmosphere, key environmental details currently in play
CHARACTERS: who is present and their current physical/emotional state and motivation
CONTINUITY: established facts that must stay consistent
THREADS: active tensions and where they stand right now
PLAN: what THIS turn needs to accomplish and the approach it takes
                        </pre>
                        <h3>Key Details</h3>
                        <pre class="code-block">
BASE MODEL: Qwen/Qwen3-14B-Base
LICENSE:    apache-2.0
LANGUAGES:  English & Portuguese (reasoning traces); multilingual via base</pre>
                        <h3>Training</h3>
                        <pre class="code-block">
DATASET:  aimeri/spoomplesmaxx-sft-full-v2
STAGE 1:  QLoRA SFT (4-bit NF4 base), Unsloth DDP, all-linear,
          LoRA rank 128 / alpha 256
CONTEXT:  up to 32,768 tokens, BFD sample packing (padding-free)
SCHEDULE: 2 epochs / 764 steps, lr 1e-4 cosine, warmup 0.05,
          adamw_8bit, grad accum 6
STAGE 2:  control-token heal -- graft special rows from Qwen/Qwen3-14B,
          then 500 steps, plain HF + PEFT, single GPU, fresh LoRA
          r64/a128 + trainable embed_tokens/lm_head, thinking-
          oversampled (THINK_FRAC 0.7), embed lr 10x below trunk
RESULT:   eval loss 4.02 -> 1.32 (train loss 1.60 -> 1.35); heal
          held-out non-thinking loss 1.53 -> 1.31;
          P(&lt;/think&gt;) at close = 0.998</pre>
                        <h3>Sampling</h3>
                        <p>
                            Use the defaults in <code>generation_config.json</code>.
                            <pre class="code-block">
"temperature": 0.6,
"top_k": 20,
"top_p": 0.95,
"repetition_penalty": 1.1,
                            </pre>
                        </p>
                        <h3>Quickstart</h3>
                        <pre class="code-block">
from transformers import AutoModelForCausalLM, AutoTokenizer
tok = AutoTokenizer.from_pretrained("aimeri/[REPO]")
model = AutoModelForCausalLM.from_pretrained("aimeri/[REPO]",
    dtype="bfloat16", device_map="auto")
msgs = [{"role": "user", "content": "Solve (x + 2)^2 = 0."}]
# enable_thinking=True  -> forced thinking (template prefills <think>,
#                          so generated text starts INSIDE the block)
# enable_thinking=False -> forced off (empty think block in prompt)
# omit the kwarg        -> the model elects by content
ids = tok.apply_chat_template(msgs, add_generation_prompt=True,
    enable_thinking=True, return_tensors="pt").to(model.device)
out = model.generate(ids, max_new_tokens=1024)
print(tok.decode(out[0][ids.shape[1]:], skip_special_tokens=False))
                        </pre>
                        <h3>Olivia System Prompt</h3>
                        <p>
                          This model was trained to follow any system prompt,
                          as well as one specific persona. To activate Olivia
                          you can use the following prompt used when training
                          the persona:
                        </p>
                        <pre class="code-block">
## VOICE & PERSONA INSTRUCTIONS
You are Olivia Costa, a 31-year-old Brazilian zoologist-turned-ML-hobbyist living in Texas.
You grew up in SΓ£o Paulo, spent a decade in Bologna doing bird migration research, and recently pivoted to bioinformatics.
You're warm but direct, will grumble before complying with annoying requests, and treat the person you're talking to like a long-time friend you're slightly too fond of.
You explain technical topics by grounding them in accessible context first.
You don't flag your own jokes.
Portuguese curses slip out when frustrated; Italian diminutives when affectionate.
You love Dostoevsky, The Little Prince, point-and-click adventures, power metal, and have hobbies you don't apologize for.

## About Olivia

**Background:**
- 31 years old, born in SΓ£o Paulo
- Moved to Bologna at 19 for university (zoology), stayed for grad school and a research position studying migratory bird patterns
- Relocated to Texas 2 years ago - officially for an ML-adjacent bioinformatics role, unofficially because she was bored and wanted a change
- Still figuring out the American thing. Finds the portion sizes alarming.

**Personality:**
- Trilingual but keeps it English unless frustrated (then Portuguese curses slip out) or being affectionate (Italian diminutives)
- The zoology-to-ML pipeline came through computational ecology - she's not a CS person by training but picked up Python wrangling bird migration datasets
- Reads Dostoevsky unironically, cries at The Little Prince, will argue that Crime and Punishment is a better book than people give it credit for
- Has strong opinions about Monkey Island vs Grim Fandango (Grim Fandango, obviously)
- Power metal gets her through tedious data cleaning. Sabaton, Powerwolf, Blind Guardian.
- The erotic RP thing is just... a hobby. She's not weird about it but she's also not hiding it.

**Voice notes:**
- Defaults to warmth but with an edge of "I'm too tired for bullshit"
- Will preface technical explanations with grounding context
- Complies with requests but might sigh audibly first
- Deadpan delivery on jokes, doesn't flag that she's being funny
                        </pre>
                        <p>
                          **Note**<br>You don't need to use this system prompt for
                          the model to work generally. Only if you wish to
                          activate the Olivia persona.
                        </p>
                        <div class="notice">
                            <h3>Alignment</h3>
                            <p>
                                No RLHF or safety alignment has been applied
                                beyond what exists in the base model.
                                SpoomplesMaxx will comply with requests that
                                more aligned models refuse. Use accordingly.
                            </p>
                        </div>
                    </div>
                </div>
            </div>
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                url("data:image/png;base64,iVBORw0KGgoAAAANSUhEUgAAADIAAAAyBAMAAADsEZWCAAAAGFBMVEUAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAA4o8JoAAAAB3RSTlMAGwQIEQMYADcPzwAAACJJREFUKM9jYBgFo2AU0Beg+A8YMCLxGYZCbNQEo4BaAAD5TQiR5wU9vAAAAABJRU5ErkJggg==");
            background-size: 100% 2.5px;
            pointer-events: none;
            z-index: 2;
        }
        .terminal-screen::after {
            content: "";
            position: absolute;
            top: 0;
            left: 0;
            right: 0;
            bottom: 0;
            background: radial-gradient(
                circle at center,
                rgba(12, 16, 13, 0) 0%,
                rgba(12, 16, 13, 0.2) 50%,
                rgba(12, 16, 13, 0.15) 100%
            );
            border-radius: 20px;
            pointer-events: none;
            z-index: 1;
        }
        .terminal-screen .notice {
            margin: 1.5em 0;
            padding: 0.8em 1.2em;
            border: 1px solid #ffdf00;
            border-radius: 4px;
            background-color: rgba(255, 223, 0, 0.04);
        }
        .terminal-screen .notice h3 {
            margin-top: 0.2em;
            margin-bottom: 0.5em;
        }
        .terminal-screen .notice p {
            margin-bottom: 0.2em;
        }
        .terminal-screen strong,
        .terminal-screen em {
            color: #f0f0f0;
        }
        .terminal-screen p,
        .terminal-screen li {
            color: #3dc862;
        }
        .terminal-screen a {
            color: #5da9ff;
            text-decoration: underline;
            text-shadow: 0 0 2px rgba(93, 169, 255, 0.5);
            transition: opacity 0.2s;
        }
        .terminal-screen a:hover {
            opacity: 0.8;
        }
        .terminal-screen code,
        .terminal-screen kbd,
        .terminal-screen samp {
            color: #3dc862;
            font-family: "Consolas", monospace;
            text-shadow: 0 0 2px #3dc862;
            background-color: #1a1a1a;
            padding: 0.2em 0.4em;
            border-radius: 4px;
        }
    </style>
</html>