sft-qwen3 / args.json
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{
"output_dir": "/app/outputs/sft-qwen3/v3-20260317-133746",
"overwrite_output_dir": false,
"do_train": false,
"do_eval": false,
"do_predict": false,
"eval_strategy": "epoch",
"prediction_loss_only": false,
"per_device_train_batch_size": 1,
"per_device_eval_batch_size": 1,
"per_gpu_train_batch_size": null,
"per_gpu_eval_batch_size": null,
"gradient_accumulation_steps": 8,
"eval_accumulation_steps": null,
"eval_delay": 0,
"torch_empty_cache_steps": null,
"learning_rate": 1e-05,
"weight_decay": 0.1,
"adam_beta1": 0.9,
"adam_beta2": 0.95,
"adam_epsilon": 1e-08,
"max_grad_norm": 1.0,
"num_train_epochs": 1.0,
"max_steps": -1,
"lr_scheduler_type": "cosine",
"lr_scheduler_kwargs": null,
"warmup_ratio": 0.05,
"warmup_steps": 0,
"log_level": "passive",
"log_level_replica": "warning",
"log_on_each_node": true,
"logging_dir": "/app/outputs/sft-qwen3/v3-20260317-133746/runs",
"logging_strategy": "steps",
"logging_first_step": true,
"logging_steps": 10,
"logging_nan_inf_filter": true,
"save_strategy": "epoch",
"save_steps": 500,
"save_total_limit": null,
"save_safetensors": true,
"save_on_each_node": false,
"save_only_model": true,
"restore_callback_states_from_checkpoint": false,
"no_cuda": false,
"use_cpu": false,
"use_mps_device": false,
"seed": 42,
"data_seed": 42,
"jit_mode_eval": false,
"bf16": true,
"fp16": false,
"fp16_opt_level": "O1",
"half_precision_backend": "auto",
"bf16_full_eval": false,
"fp16_full_eval": false,
"tf32": null,
"local_rank": 0,
"ddp_backend": null,
"tpu_num_cores": null,
"tpu_metrics_debug": false,
"debug": null,
"dataloader_drop_last": false,
"eval_steps": null,
"dataloader_num_workers": 4,
"dataloader_prefetch_factor": null,
"past_index": -1,
"run_name": "/app/outputs/sft-qwen3/v3-20260317-133746",
"disable_tqdm": null,
"remove_unused_columns": true,
"label_names": null,
"load_best_model_at_end": false,
"metric_for_best_model": "loss",
"greater_is_better": false,
"ignore_data_skip": false,
"fsdp": [],
"fsdp_min_num_params": 0,
"fsdp_config": null,
"fsdp_transformer_layer_cls_to_wrap": null,
"accelerator_config": {
"dispatch_batches": false
},
"parallelism_config": null,
"deepspeed": {
"fp16": {
"enabled": "auto",
"loss_scale": 0,
"loss_scale_window": 1000,
"initial_scale_power": 16,
"hysteresis": 2,
"min_loss_scale": 1
},
"bf16": {
"enabled": "auto"
},
"zero_optimization": {
"stage": 3,
"offload_optimizer": {
"device": "none",
"pin_memory": true
},
"offload_param": {
"device": "none",
"pin_memory": true
},
"overlap_comm": false,
"contiguous_gradients": true,
"sub_group_size": 1000000000.0,
"reduce_bucket_size": "auto",
"zero_quantized_weights": false,
"zero_quantized_gradients": false,
"stage3_prefetch_bucket_size": "auto",
"stage3_param_persistence_threshold": "auto",
"stage3_max_live_parameters": 1000000000.0,
"stage3_max_reuse_distance": 1000000000.0,
"stage3_gather_16bit_weights_on_model_save": true
},
"gradient_accumulation_steps": "auto",
"gradient_clipping": "auto",
"steps_per_print": 2000,
"train_batch_size": "auto",
"train_micro_batch_size_per_gpu": "auto",
"wall_clock_breakdown": false
},
"label_smoothing_factor": 0.0,
"optim": "adamw_torch_fused",
"optim_args": null,
"adafactor": false,
"group_by_length": false,
"length_column_name": "length",
"report_to": [
"wandb"
],
"project": "huggingface",
"trackio_space_id": "trackio",
"ddp_find_unused_parameters": null,
"ddp_bucket_cap_mb": null,
"ddp_broadcast_buffers": null,
"dataloader_pin_memory": true,
"dataloader_persistent_workers": false,
"skip_memory_metrics": true,
"use_legacy_prediction_loop": false,
"push_to_hub": true,
"resume_from_checkpoint": null,
"hub_model_id": null,
"hub_strategy": "every_save",
"hub_token": null,
"hub_private_repo": null,
"hub_always_push": false,
"hub_revision": null,
"gradient_checkpointing": true,
"gradient_checkpointing_kwargs": null,
"include_inputs_for_metrics": false,
"include_for_metrics": [],
"eval_do_concat_batches": true,
"fp16_backend": "auto",
"push_to_hub_model_id": null,
"push_to_hub_organization": null,
"push_to_hub_token": null,
"mp_parameters": "",
"auto_find_batch_size": false,
"full_determinism": false,
"torchdynamo": null,
"ray_scope": "last",
"ddp_timeout": 18000000,
"torch_compile": false,
"torch_compile_backend": null,
"torch_compile_mode": null,
"include_tokens_per_second": false,
"include_num_input_tokens_seen": false,
"neftune_noise_alpha": null,
"optim_target_modules": null,
"batch_eval_metrics": false,
"eval_on_start": false,
"use_liger_kernel": false,
"liger_kernel_config": null,
"eval_use_gather_object": false,
"average_tokens_across_devices": true,
"sortish_sampler": false,
"predict_with_generate": false,
"generation_max_length": null,
"generation_num_beams": null,
"generation_config": null,
"tuner_backend": "peft",
"vit_gradient_checkpointing": null,
"router_aux_loss_coef": 0.0,
"enable_dft_loss": false,
"enable_channel_loss": false,
"check_model": true,
"acc_strategy": "token",
"train_dataloader_shuffle": true,
"max_epochs": null,
"aligner_lr": null,
"vit_lr": null,
"use_logits_to_keep": null,
"ds3_gather_for_generation": true,
"resume_only_model": false,
"optimizer": null,
"loss_type": null,
"metric": null,
"eval_use_evalscope": false,
"eval_dataset": [],
"eval_dataset_args": null,
"eval_limit": null,
"eval_generation_config": null,
"extra_eval_args": null,
"use_flash_ckpt": false,
"use_ray": false,
"ray_exp_name": null,
"device_groups": null,
"model": "Qwen/Qwen3-8B",
"model_type": "qwen3",
"model_revision": null,
"task_type": "causal_lm",
"torch_dtype": "bfloat16",
"attn_impl": null,
"new_special_tokens": [],
"num_labels": null,
"problem_type": null,
"rope_scaling": null,
"device_map": null,
"max_memory": {},
"max_model_len": null,
"local_repo_path": null,
"init_strategy": null,
"template": "qwen3",
"system": "あなたはHTMLから、StudioDOM(デザイン情報が入ったjsonファイル)に変換するエキスパートです。\n\n# タスク\n与えられたHTMLソースコードを分析し、指定されたJSON形式に変換してください。\n\n# 入力\nHTMLソースコード: ウェブページの構造とスタイル情報\n\n# 出力\n以下の形式のStudioDOM(デザイン情報が入ったjsonファイル)\n\n# Studio DOM型定義\n\n## 基本型\n\n### DomBase\nすべてのDOM要素の基底インターフェース。\n```typescript\ninterface DomBase {\n tagName?: string; // HTMLタグ名\n name?: string; // 要素名\n id?: string; // HTML id属性\n renderIf?: RenderIfDto; // 条件付きレンダリング\n slot?: \"before\" | \"after\";\n}\n```\n\n### DomElement\nスタイルと属性を持つ要素の基底。\n```typescript\ninterface DomElement extends DomBase {\n style?: StudioDomStyle; // CSSスタイル定義\n attrs?: StudioAttrs; // HTML属性\n}\n```\n\n### DomLink\nリンク機能を持つ要素のミックスイン。\n```typescript\ntype DomLink = {\n link?: { newTab: boolean; path: string };\n action?: { type: \"link\" | \"modal\" | \"close\" | \"allowCookie\" | \"denyCookie\" | \"anchorLink\"; val?: string };\n}\n```\n\n## 要素型一覧\n\n### TextDom - テキスト要素\n```typescript\ninterface TextDom extends DomElement, DomLink {\n content: { type: \"text\"; data: string };\n classes?: string[];\n}\n```\n\n### ImgDom - 画像要素\n```typescript\ninterface ImgDom extends DomElement, DomLink {\n content: { type: \"img\"; src: string; alt?: string };\n}\n```\n\n### BoxDom - コンテナ要素\n```typescript\ntype BoxDom = DomElement & DomLink & {\n children: PublishedDom[]; // 子要素\n content?: StudioDomContent | { type: \"image\"; src: string };\n webComponents?: WebComponents;\n transition?: ModalTransitionStyle;\n}\n```\n\n### IconDom - アイコン要素\n```typescript\ninterface IconDom extends DomElement, DomLink {\n content: IconDomContent & { href?: string };\n}\ninterface IconDomContent {\n type: \"icon\" | \"icon-fa\" | \"icon-solid\" | \"icon-brands\";\n data: string; // アイコン名\n}\ninterface IconDomContentMaterialSymbol {\n type: \"icon-symbol\";\n data: string;\n fill: 0 | 1;\n weight: 100 | 200 | 300 | 400 | 500 | 600 | 700;\n}\n```\n\n### IframeDom - iframe要素\n```typescript\ninterface IframeDom extends DomElement {\n content: { type: \"iframe\" | \"sandbox\"; data: string };\n}\n```\n\n### InputDom - 入力フィールド\n```typescript\ninterface InputDom extends DomElement {\n content: { type: \"input\" | \"textarea\" };\n attrs: StudioAttrs & { placeholder?: string };\n}\n```\n\n### SelectDom - セレクトボックス\n```typescript\ninterface SelectDom extends DomElement {\n content: { type: \"select\"; options: { label: string; value: string }[] };\n attrs: StudioAttrs & { required: boolean; name: string };\n}\n```\n\n### ButtonDom - ボタン要素\n```typescript\ntype ButtonDom = DomElement & {\n content: { type: \"button\" };\n on?: { click?: string; blur?: string };\n children: PublishedDom[];\n}\n```\n\n### FormDom - フォーム要素\n```typescript\ninterface FormDom extends DomElement {\n content: { type: \"form\"; formSuccessPageId?: string };\n children: PublishedDom[];\n}\n```\n\n### VideoDom - 動画要素\n```typescript\ninterface VideoDom extends DomElement {\n content: {\n type: \"video\";\n src: string;\n video?: {\n autoplay?: boolean;\n loop?: boolean;\n controls?: boolean;\n muted?: boolean;\n poster?: string;\n playsinline?: boolean;\n };\n };\n}\n```\n\n### LottieDom - Lottieアニメーション\n```typescript\ninterface LottieDom extends DomElement {\n content: {\n type: \"lottie\";\n lottie?: {\n playType?: \"autoplay\" | \"hover\" | \"scroll\" | \"cursor\" | \"click\" | \"appear\";\n controls: boolean;\n loop?: boolean;\n speed?: number;\n src: string;\n };\n };\n}\n```\n\n### SectionDom - セクション要素\n```typescript\ninterface SectionDom extends BoxDom {\n type: \"section\";\n}\n```\n\n### RefDom - 参照要素(シンボル参照)\n```typescript\ninterface RefDom extends DomBase {\n type: \"ref\";\n refId: string; // 参照先のID\n state?: object;\n props?: Record<string, string>;\n}\n```\n\n## 動的コンテンツ要素\n\n### ListDom - リスト要素\n配列データをループ表示。4種類のデータソースに対応。\n```typescript\n// 共通構造\ninterface ListDomBase extends DomElement, DomLink {\n type: \"list\";\n defs: [{ key: \"list\"; type: \"array\" | \"cmsRequest\"; uid: string }];\n children: [ListItemDom] | [ListItemDom, BoxDom]; // アイテムテンプレート + ローディング表示\n}\n// データソース種別\n// - StateListDom: state.list に直接データを持つ\n// - PropsListDom: props.list でデータバインディング\n// - RSSListDom: props.list が \"$rss.{id}.items\" 形式\n// - CmsListDom: defs[0].type が \"cmsRequest\"\n```\n\n### CarouselDom - カルーセル要素\nスライド表示コンポーネント。\n```typescript\ninterface CarouselDom extends DomElement {\n type: \"carousel\";\n state: {\n pageIndex: number;\n maxLength: number;\n playing: boolean;\n autoDuration: number;\n list: object[];\n };\n children: [CarouselTrackDom] | [CarouselTrackDom, CarouselControlDom];\n on: { touchstart: string; touchmove: string; touchend: string };\n}\n```\n\n### SwitchDom - タブ/スイッチ要素\n複数コンテンツの切り替え表示。\n```typescript\ninterface SwitchDom extends DomElement, DomLink {\n type: \"switch\";\n defs: [{ key: \"option\"; type: \"option\"; options: { key: string; label: string }[] }];\n state: { option: string }; // 選択中のオプションキー\n children: [SwitchTabsDom, ...SwitchContentDom[]];\n}\n```\n\n### ToggleDom - トグル/アコーディオン要素\n開閉可能なコンテンツ。\n```typescript\ninterface ToggleDom extends DomElement, DomLink {\n type: \"toggle\";\n state: { isClose: boolean };\n children: [ToggleLabelDom, ToggleContentDom];\n}\n```\n\n## 条件付きレンダリング (RenderIf)\n要素の表示条件を定義。\n```typescript\ntype RenderIfQuery =\n | { fieldPath: string } // フィールドの存在確認\n | { fieldPath: string; opStr: \"!\" } // 否定\n | { fieldPath: string; opStr: \"===\"; value: string } // 等価比較\n | { fieldPath: string; opStr: \"!==\"; value: string } // 不等価比較\n | { fieldPath: string; opStr: \"relativeToToday\"; value: { amount: number; unit: \"year\" | \"month\" | \"week\" | \"day\" } };\n```\n\n## PublishedDom 統合型\nすべてのDOM型のユニオン。\n```typescript\ntype PublishedDom =\n | IframeDom | TextDom | ImgDom | BoxDom | IconDom\n | InputDom | SelectDom | ButtonDom | FormDom\n | VideoDom | LottieDom | SectionDom | RefDom\n | ListDom | CarouselDom | SwitchDom | ToggleDom\n // ... その他の型\n```\n\n## 型判定ユーティリティ\n`$PublishedDom`オブジェクトで型判定可能。\n```typescript\n$PublishedDom.isTextDom(dom) // TextDomか判定\n$PublishedDom.isImgDom(dom) // ImgDomか判定\n$PublishedDom.isListDom(dom) // ListDomか判定\n$PublishedDom.hasChildren(dom) // 子要素を持つか判定\n$PublishedDom.hasStyle(dom) // スタイルを持つか判定\n```\n\n# Examples\n\n## Example 1\n\n### Input\n```html\n<!DOCTYPE html>\n<html lang=\"\">\n<head>\n\n<meta charset=\"UTF-8\">\n<meta name=\"viewport\" content=\"width=device-width, initial-scale=1.0\">\n<title></title>\n<meta name=\"description\" content=\"\">\n<link rel=\"icon\" type=\"image/png\" href=\"https://storage.googleapis.com/studio-preview/favicon.svg\">\n<link rel=\"canonical\" href=\"https://template-preview.studio.design/8XKOkrRW4v/latest/\">\n<link rel=\"apple-touch-icon\" type=\"image/png\" href=\"https://storage.googleapis.com/studio-preview/favicon.svg\">\n<meta name=\"robots\" content=\"all\">\n<meta property=\"og:site_name\" content=\"\">\n<meta property=\"og:title\" content=\"\">\n<meta property=\"og:image\" content=\"\">\n<meta property=\"og:description\" content=\"\">\n<meta property=\"og:type\" content=\"website\">\n<meta property=\"twitter:card\" content=\"summary_large_image\">\n<meta property=\"twitter:image\" content=\"\">\n<meta name=\"apple-mobile-web-app-title\" content=\"\">\n<meta name=\"format-detection\" content=\"telephone=no,email=no,address=no\">\n<meta name=\"chrome\" content=\"nointentdetection\">\n<meta property=\"og:url\" content=\"https://template-preview.studio.design/8XKOkrRW4v/latest/\">\n\n\n<meta name=\"date\" content=\"2026-02-18T16:15:29+09:00\">\n<meta name=\"generator\" content=\"Studio.Design.HRC\">\n\n\n\n<!-- BASE_CSS_REMOVED -->\n<style>:root { --s-color-3d94ef4a: undefined; }</style>\n\n<style>.sd-1 { align-content:center; align-items:center; background:var(--s-color-3d94ef4a); height:100%; padding:0px; width:100%; max-width:100%; }</style>\n\n\n<script>\n(()=>{var Z=[[\"windows nt\",\"windows\"],[\"android\",\"android\"],[\"iphone\",\"iphone\"],[\"ipad\",\"iphone\"],[\"mac os x\",\"mac\"]],$=[[(q)=>q.includes(\"msie\")||q.includes(\"trident\"),\"IE\"],[(q)=>q.includes(\"edge\")||q.includes(\"edg\"),\"Edge\"],[(q)=>q.includes(\"opr\")||q.includes(\"opera\"),\"opera\"],[(q)=>q.includes(\"firefox\"),\"firefox\"],[(q)=>q.includes(\"chrome\")&&!q.includes(\"edg\"),\"chrome\"],[(q)=>q.includes(\"safari\")&&!q.includes(\"chrome\"),\"safari\"]];function Q(q=8){let G=new Uint8Array(q);crypto.getRandomValues(G);let J=\"\";for(let K=0;K<q;K++)J+=\"abcdefghijklmnopqrstuvwxyzABCDEFGHIJKLMNOPQRSTUVWXYZ_0123456789\"[G[K]%63];return J}function v(){let q=sessionStorage.getItem(\"studio_analytics_session_id\");if(q)return q;let G=Q();return sessionStorage.setItem(\"studio_analytics_session_id\",G),G}function z(q){return!q||q===\"\"?\"none\":q}function C(q){let G=new URL(q);return{url:q,domain:G.hostname,path:G.pathname}}function D(q){let G=q.toLowerCase(),J=Z.find(([K])=>G.includes(K));if(J)return J[1];return\"etc\"}function F(q){let G=q.toLowerCase(),J=$.find(([K])=>K(G));if(J)return J[1];return\"other\"}function P(q,G,J,K,M=v){let{url:N,domain:X,path:Y}=C(q);return{url:N,domain:X,path:Y,session_id:M(),user_agent:J,referrer:z(G),os:D(J),browser:F(J),project_id:K}}function W(){try{return sessionStorage.setItem(\"__sas_test__\",\"1\"),sessionStorage.removeItem(\"__sas_test__\"),!0}catch{return!1}}function T(q){if(!q)return null;try{return new URL(q).hostname}catch{return null}}function B(q,G){let J=T(q),K=T(G);if(!K)return!0;if(!J)return!0;return J!==K}function L(q,G){if(!W())return Q();let J=B(q,G),K=sessionStorage.getItem(\"studio_analytics_session_id\");if(J){let N=Q();return sessionStorage.setItem(\"studio_analytics_session_id\",N),N}if(K)return K;let M=Q();return sessionStorage.setItem(\"studio_analytics_session_id\",M),M}function _(q){try{let G=window.location.href,J=document.referrer||void 0,K=navigator.userAgent,M=L(G,J),N=P(G,J,K,q,()=>M);setTimeout(()=>{fetch(\"https://analytics.studiodesignapp.com/event\",{method:\"POST\",headers:{\"Content-Type\":\"application/json\"},body:JSON.stringify(N),keepalive:!0}).catch(()=>{})},0)}catch{}}Object.assign(window,{sendAnalytics:_});})();\n\n</script>\n\n</head>\n<body>\n<div class=\"box sd-1\"></div>\n\n\n\n<script>\nfunction initModules() {\n sendAnalytics(\"8XKOkrRW4v\");\n}\nwindow.addEventListener('load', initModules, { once: true });\n</script>\n\n\n</body>\n</html>\n```\n\n### Output\n```json\n{\n \"breakPoints\": [\n {\n \"maxWidth\": 540,\n \"name\": \"mobile\"\n },\n {\n \"maxWidth\": 840,\n \"name\": \"tablet\"\n },\n {\n \"maxWidth\": 1140,\n \"name\": \"small\"\n }\n ],\n \"classes\": {\n \"typography\": [\n {\n \"key\": \"63bf421e\",\n \"name\": \"本文\",\n \"style\": {\n \"@mini\": {\n \"fontSize\": \"0.7rem\"\n },\n \"@mobile\": {\n \"fontSize\": \"0.8rem\"\n },\n \"fontFamily\": \"var(--s-font-f98ee9ba)\",\n \"fontSize\": \"0.9rem\",\n \"fontWeight\": \"500\",\n \"in:hover\": {\n \"fontWeight\": \"700\"\n },\n \"letterSpacing\": \"0.05em\",\n \"lineHeight\": \"2\",\n \"writingMode\": \"horizontal-tb\"\n }\n },\n {\n \"key\": \"4caeee0d\",\n \"name\": \"小さい文字\",\n \"style\": {\n \"@mobile\": {\n \"fontSize\": \"0.75rem\",\n \"letterSpacing\": \"0.04em\"\n },\n \"@small\": {\n \"fontSize\": \"0.8rem\"\n },\n \"fontFamily\": \"var(--s-font-f98ee9ba)\",\n \"fontSize\": \"0.85rem\",\n \"fontWeight\": \"500\",\n \"letterSpacing\": \"0.05em\",\n \"lineHeight\": \"2\",\n \"writingMode\": \"horizontal-tb\"\n }\n },\n {\n \"key\": \"df801922\",\n \"name\": \"大きい文字\",\n \"style\": {\n \"@mini\": {\n \"fontSize\": \"1rem\"\n },\n \"@mobile\": {\n \"letterSpacing\": \"0.1em\"\n },\n \"@tablet\": {\n \"fontSize\": \"0.9rem\"\n },\n \"fontFamily\": \"var(--s-font-f98ee9ba)\",\n \"fontSize\": \"1.2rem\",\n \"fontStyle\": \"normal\",\n \"fontWeight\": \"700\",\n \"letterSpacing\": \"0.04em\",\n \"lineHeight\": \"1.6\",\n \"writingMode\": \"horizontal-tb\"\n }\n },\n {\n \"key\": \"3fa01083\",\n \"name\": \"カテゴリバッジ\",\n \"style\": {\n \"@mobile\": {\n \"fontSize\": \"0.7rem\",\n \"letterSpacing\": \"0.02em\"\n },\n \"fontFamily\": \"var(--s-font-f98ee9ba)\",\n \"fontSize\": \"0.8rem\",\n \"fontWeight\": \"600\",\n \"letterSpacing\": \"0.05em\",\n \"lineHeight\": \"1.8\",\n \"writingMode\": \"horizontal-tb\"\n }\n },\n {\n \"key\": \"b6a880dd\",\n \"name\": \"ボタン\",\n \"style\": {\n \"@mini\": {\n \"fontSize\": \"11px\"\n },\n \"@small\": {\n \"fontSize\": \"0.8rem\"\n },\n \"@tablet\": {\n \"fontSize\": \"0.85rem\"\n },\n \"fontFamily\": \"var(--s-font-f98ee9ba)\",\n \"fontSize\": \"0.9rem\",\n \"fontWeight\": \"500\",\n \"in:hover\": {\n \"fontWeight\": \"700\"\n },\n \"lineHeight\": \"1.4\"\n }\n },\n {\n \"key\": \"ee91d7a0\",\n \"name\": \"下層英字タイトル\",\n \"style\": {\n \"@mobile\": {\n \"fontSize\": \"1.8rem\"\n },\n \"fontFamily\": \"var(--s-font-5ebf6bcc)\",\n \"fontSize\": \"2.2rem\",\n \"fontWeight\": \"400\",\n \"lineHeight\": \"1.6\"\n }\n },\n {\n \"key\": \"1c827502\",\n \"name\": \"英字小見出し\",\n \"style\": {\n \"@mini\": {\n \"fontSize\": \"1rem\"\n },\n \"fontFamily\": \"var(--s-font-2ca5ec02)\",\n \"fontSize\": \"1.2rem\",\n \"fontStyle\": \"normal\",\n \"fontWeight\": \"600\",\n \"lineHeight\": \"1.8\",\n \"writingMode\": \"horizontal-tb\"\n }\n },\n {\n \"key\": \"c289a958\",\n \"name\": \"パンクズリスト\",\n \"style\": {\n \":hover\": {\n \"fontWeight\": \"700\"\n },\n \"@mobile\": {\n \"fontSize\": \"10px\",\n \"lineHeight\": \"2\"\n },\n \"@tablet\": {\n \"fontSize\": \"12px\"\n },\n \"fontFamily\": \"var(--s-font-f98ee9ba)\",\n \"fontSize\": \"0.7rem\",\n \"fontWeight\": \"600\",\n \"lineHeight\": \"1.4\"\n }\n }\n ]\n },\n \"colors\": [\n {\n \"color\": \"rgba(0,0,0,0.0)\",\n \"name\": \"transparent\"\n },\n {\n \"color\": \"#FFFFFF\",\n \"name\": \"white\"\n },\n {\n \"color\": \"#1e1e1e\",\n \"name\": \"color\"\n },\n {\n \"color\": 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\"alignItems\": \"center\",\n \"background\": \"var(--s-color-3d94ef4a)\",\n \"height\": \"100%\",\n \"padding\": \"0px 0px 0px 0px\",\n \"width\": \"100%\"\n }\n }\n }\n ],\n \"resources\": {\n \"cmsProjectId\": \"88062beec5d441069502\"\n },\n \"styleVars\": {\n \"color\": [\n {\n \"key\": \"3d94ef4a\",\n \"name\": \"白\",\n \"value\": \"#ffffffff\"\n }\n ],\n \"fontFamily\": []\n },\n \"symbols\": [\n {\n \"defaultSize\": {\n \"height\": 233.78125,\n \"width\": 1280\n },\n \"name\": \"フッター\",\n \"view\": {\n \"children\": [\n {\n \"children\": [\n {\n \"name\": \"\",\n \"refId\": \"ab196fa9-0972-4673-a9c0-b7d258ce4727\",\n \"tagName\": \"\",\n \"type\": \"ref\"\n },\n {\n \"children\": [\n {\n \"classes\": [\n \"4caeee0d\"\n ],\n \"content\": {\n \"data\": \"採用情報\",\n \"type\": \"text\"\n },\n \"link\": {\n \"newTab\": false,\n \"path\": \"/recruit\"\n },\n \"name\": \"採用情報\",\n \"style\": {\n \":hover\": {\n \"transform\": \"translate(3px, 3px)\"\n },\n \"@tablet\": {\n 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\"right\"\n },\n \"color\": \"var(--s-color-25a50242)\",\n \"flex\": \"none\",\n \"height\": \"auto\",\n \"textAlign\": \"left\",\n \"width\": \"auto\"\n },\n \"tagName\": \"\"\n }\n ],\n \"name\": \"メニュー\",\n \"style\": {\n \"@mobile\": {\n \"flexDirection\": \"column\",\n \"margin\": \"40px 0px 0px 0px\"\n },\n \"@tablet\": {\n \"margin\": \"50px 0px 0px 0px\"\n },\n \"alignContent\": \"flex-start\",\n \"alignItems\": \"flex-start\",\n \"flexDirection\": \"row\",\n \"flexWrap\": \"nowrap\",\n \"gap\": \"25px\",\n \"justifyContent\": \"flex-start\",\n \"margin\": \"0px 0px 0px 50px\",\n \"padding\": \"0px\"\n },\n \"tagName\": \"div\"\n }\n ],\n \"name\": \"ロゴ+メニュー\",\n \"style\": {\n \"@mobile\": {\n \"flexDirection\": \"column\"\n },\n \"@tablet\": {\n \"alignContent\": \"flex-start\",\n \"alignItems\": \"flex-start\",\n \"flex\": \"none\",\n \"flexDirection\": \"column\",\n \"flexWrap\": \"nowrap\",\n \"justifyContent\": \"space-between\",\n \"width\": \"100%\"\n },\n 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\"tagName\": \"\",\n \"type\": \"ref\"\n }\n ],\n \"name\": \"フッター\",\n \"style\": {\n \"@mobile\": {\n \"alignContent\": \"flex-end\",\n \"alignItems\": \"flex-end\",\n \"flexDirection\": \"column\",\n \"flexWrap\": \"nowrap\",\n \"justifyContent\": \"flex-start\",\n \"padding\": \"70px 40px 100px 40px\"\n },\n \"alignContent\": \"flex-start\",\n \"alignItems\": \"flex-start\",\n \"background\": \"var(--s-color-b8b1cba5)\",\n \"flex\": \"none\",\n \"flexDirection\": \"column\",\n \"flexWrap\": \"nowrap\",\n \"height\": \"auto\",\n \"justifyContent\": \"space-between\",\n \"margin\": \"0px 0px 0px 0px\",\n \"padding\": \"100px 40px 100px 40px\",\n \"width\": \"100%\",\n \"zIndex\": \"0\"\n },\n \"tagName\": \"footer\",\n \"type\": \"component\"\n }\n }\n ]\n}\n```\n\n## Example 2\n\n### Input\n```html\n<!DOCTYPE html>\n<html lang=\"\">\n<head>\n\n<meta charset=\"UTF-8\">\n<meta name=\"viewport\" content=\"width=device-width, initial-scale=1.0\">\n<title></title>\n<meta name=\"description\" content=\"\">\n<link rel=\"icon\" type=\"image/png\" href=\"https://storage.googleapis.com/studio-preview/favicon.svg\">\n<link rel=\"canonical\" href=\"https://template-preview.studio.design/ZmoWvRAW6y/latest/\">\n<link rel=\"apple-touch-icon\" type=\"image/png\" href=\"https://storage.googleapis.com/studio-preview/favicon.svg\">\n<meta name=\"robots\" content=\"noindex\">\n<meta property=\"og:site_name\" content=\"\">\n<meta property=\"og:title\" content=\"\">\n<meta property=\"og:image\" content=\"\">\n<meta property=\"og:description\" content=\"\">\n<meta property=\"og:type\" content=\"website\">\n<meta property=\"twitter:card\" content=\"summary_large_image\">\n<meta property=\"twitter:image\" content=\"\">\n<meta name=\"apple-mobile-web-app-title\" content=\"\">\n<meta name=\"format-detection\" content=\"telephone=no,email=no,address=no\">\n<meta name=\"chrome\" content=\"nointentdetection\">\n<meta property=\"og:url\" content=\"https://template-preview.studio.design/ZmoWvRAW6y/latest/\">\n\n\n<meta name=\"date\" content=\"2026-02-18T16:22:07+09:00\">\n<meta name=\"generator\" content=\"Studio.Design.HRC\">\n\n\n\n<!-- BASE_CSS_REMOVED -->\n\n\n<style>.sd-1 { background:var(--s-color-1bbe02c8); border-radius:0; height:100%; margin:0; opacity:1; padding:0; width:100%; max-width:100%; }</style>\n<style media=\"(max-width: 690px)\">.sd-1 { padding:56px 0px 0px; }</style>\n\n\n<script>\n(()=>{var Z=[[\"windows nt\",\"windows\"],[\"android\",\"android\"],[\"iphone\",\"iphone\"],[\"ipad\",\"iphone\"],[\"mac os x\",\"mac\"]],$=[[(q)=>q.includes(\"msie\")||q.includes(\"trident\"),\"IE\"],[(q)=>q.includes(\"edge\")||q.includes(\"edg\"),\"Edge\"],[(q)=>q.includes(\"opr\")||q.includes(\"opera\"),\"opera\"],[(q)=>q.includes(\"firefox\"),\"firefox\"],[(q)=>q.includes(\"chrome\")&&!q.includes(\"edg\"),\"chrome\"],[(q)=>q.includes(\"safari\")&&!q.includes(\"chrome\"),\"safari\"]];function Q(q=8){let G=new Uint8Array(q);crypto.getRandomValues(G);let J=\"\";for(let K=0;K<q;K++)J+=\"abcdefghijklmnopqrstuvwxyzABCDEFGHIJKLMNOPQRSTUVWXYZ_0123456789\"[G[K]%63];return J}function v(){let q=sessionStorage.getItem(\"studio_analytics_session_id\");if(q)return q;let G=Q();return sessionStorage.setItem(\"studio_analytics_session_id\",G),G}function z(q){return!q||q===\"\"?\"none\":q}function C(q){let G=new URL(q);return{url:q,domain:G.hostname,path:G.pathname}}function D(q){let G=q.toLowerCase(),J=Z.find(([K])=>G.includes(K));if(J)return J[1];return\"etc\"}function F(q){let G=q.toLowerCase(),J=$.find(([K])=>K(G));if(J)return J[1];return\"other\"}function P(q,G,J,K,M=v){let{url:N,domain:X,path:Y}=C(q);return{url:N,domain:X,path:Y,session_id:M(),user_agent:J,referrer:z(G),os:D(J),browser:F(J),project_id:K}}function W(){try{return sessionStorage.setItem(\"__sas_test__\",\"1\"),sessionStorage.removeItem(\"__sas_test__\"),!0}catch{return!1}}function T(q){if(!q)return null;try{return new URL(q).hostname}catch{return null}}function B(q,G){let J=T(q),K=T(G);if(!K)return!0;if(!J)return!0;return J!==K}function L(q,G){if(!W())return Q();let J=B(q,G),K=sessionStorage.getItem(\"studio_analytics_session_id\");if(J){let N=Q();return sessionStorage.setItem(\"studio_analytics_session_id\",N),N}if(K)return K;let M=Q();return sessionStorage.setItem(\"studio_analytics_session_id\",M),M}function _(q){try{let G=window.location.href,J=document.referrer||void 0,K=navigator.userAgent,M=L(G,J),N=P(G,J,K,q,()=>M);setTimeout(()=>{fetch(\"https://analytics.studiodesignapp.com/event\",{method:\"POST\",headers:{\"Content-Type\":\"application/json\"},body:JSON.stringify(N),keepalive:!0}).catch(()=>{})},0)}catch{}}Object.assign(window,{sendAnalytics:_});})();\n\n</script>\n\n</head>\n<body>\n<div class=\"box sd-1\"></div>\n\n\n\n<script>\nfunction initModules() {\n sendAnalytics(\"ZmoWvRAW6y\");\n}\nwindow.addEventListener('load', initModules, { once: true });\n</script>\n\n\n</body>\n</html>\n```\n\n### Output\n```json\n{\n \"breakPoints\": [\n {\n \"maxWidth\": 690,\n \"name\": \"mobile\"\n },\n {\n \"maxWidth\": 840,\n \"name\": \"tablet\"\n },\n {\n \"maxWidth\": 1140,\n \"name\": \"small\"\n },\n {\n \"maxWidth\": 360,\n \"name\": \"mini\"\n }\n ],\n \"colors\": [\n {\n \"color\": \"rgba(0,0,0,0.0)\",\n \"name\": \"transparent\"\n },\n {\n \"color\": \"#FFFFFF\",\n \"name\": \"white\"\n },\n {\n \"color\": \"#483628\",\n \"name\": \"color\"\n },\n {\n \"color\": \"#ee6801\",\n \"name\": \"color\"\n }\n ],\n \"fonts\": [],\n \"info\": {\n \"baseWidth\": 1920,\n \"created_at\": 1518591100346,\n \"screen\": {\n \"baseWidth\": 1280,\n \"height\": 600,\n \"isAutoHeight\": false,\n \"width\": 1280,\n \"workingState\": false\n },\n \"type\": \"web\",\n \"updated_at\": 1518792996878,\n \"version\": \"4.1.3\"\n },\n \"pages\": [\n {\n \"head\": {\n \"meta\": {\n \"robots\": \"noindex\"\n },\n \"title\": \"\"\n },\n \"heightExtension\": 0,\n \"id\": \"404\",\n \"name\": \"404 Not Found\",\n \"statusBar\": \"\",\n \"type\": \"page\",\n \"view\": {\n \"children\": [\n {\n \"name\": \"Menu\",\n \"refId\": \"d1f7770a-071c-442c-a07d-cdd9f49bd76b\",\n \"style\": {\n \"@mobile\": {\n \"flex\": \"none\"\n },\n \"@tablet\": {\n \"height\": \"auto\",\n \"padding\": \"0px 0px\"\n },\n \"alignContent\": \"center\",\n \"alignItems\": \"center\",\n \"background\": \"rgba(0,0,0,0.0)\",\n \"borderBottom\": \"0px solid rgba(255, 255, 255, 0.3)\",\n \"borderLeft\": \"0px solid rgba(255, 255, 255, 0.3)\",\n \"borderRight\": \"0px solid rgba(255, 255, 255, 0.3)\",\n \"borderTop\": \"0px solid rgba(255, 255, 255, 0.3)\",\n \"flex\": \"none\",\n \"flexDirection\": \"column\",\n \"flexWrap\": \"nowrap\",\n \"height\": \"auto\",\n \"justifyContent\": \"space-between\",\n \"margin\": \"0px 0px 0px 0px\",\n \"padding\": \"0px 48px\",\n \"width\": \"auto\"\n },\n \"tagName\": \"\",\n \"type\": \"ref\"\n }\n ],\n \"content\": {\n \"name\": \"\",\n \"type\": \"\"\n },\n \"name\": \"Base\",\n \"style\": {\n \"@mobile\": {\n \"padding\": \"56px 0px 0px 0px\"\n },\n \"background\": \"var(--s-color-1bbe02c8)\",\n \"borderRadius\": \"0\",\n \"boxShadow\": \"\",\n \"height\": \"100%\",\n \"margin\": \"0 0 0 0\",\n \"opacity\": \"1\",\n \"padding\": \"0 0 0 0\",\n \"width\": \"100%\"\n }\n }\n }\n ],\n \"resources\": {\n \"cmsProjectId\": \"3mPxrUtdtLXTjo0KwrWX\"\n },\n \"styleVars\": {\n \"color\": [],\n \"fontFamily\": []\n },\n \"symbols\": []\n}\n```\n",
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