HappyHorse-1.0 is a mysterious AI video generation model that recently claimed the #1 spot on the Artificial Analysis Video Arena leaderboard. Submitted pseudonymously without a verifiable team identity, this 15B parameter unified Transformer features a 40-layer architecture that jointly denoises text tokens, image latents, video tokens, and audio tokens in a single sequence. The model supports both text-to-video (T2V) and image-to-video (I2V) generation with native multilingual audio synthesis for Chinese, English, Japanese, Korean, German, and French—all produced in one unified forward pass without cross-attention mechanisms.
このコレクションの最終調整中です — その間、下記の類似コレクションをご覧ください。
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HappyHorse-1.0 is a mysterious AI video generation model that recently claimed the #1 spot on the Artificial Analysis Video Arena leaderboard. Submitted pseudonymously without a verifiable team identity, this 15B parameter unified Transformer features a 40-layer architecture that jointly denoises text tokens, image latents, video tokens, and audio tokens in a single sequence. The model supports both text-to-video (T2V) and image-to-video (I2V) generation with native multilingual audio synthesis for Chinese, English, Japanese, Korean, German, and French—all produced in one unified forward pass without cross-attention mechanisms.
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Explore OpenAI’s language and video models on Atlas Cloud: ChatGPT for advanced reasoning and interaction, and Sora-2 for physics-aware video generation.
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Atlas Cloudは、業界をリードする最新のクリエイティブモデルを提供します。
ingle self-attention architecture with modality-specific projections in the first/last 4 layers and shared parameters across the middle 32 layers for seamless multimodal generation.
Ranked #1 in both Text-to-Video (Elo 1333) and Image-to-Video (Elo 1392) on Artificial Analysis Video Arena, surpassing Dreamina Seedance 2.0 by 60 and 37 points respectively.
Native support for six languages (Chinese, English, Japanese, Korean, German, French) with claimed ultra-low WER lip-synchronization.
Generates dialogue, ambient sounds, and Foley effects alongside video in a single pass through unified token denoising—no separate audio pipeline required.
One unified model handles both text-to-video and image-to-video tasks, appearing under the same model name in both arena categories.
Self-reported speeds of ~2 seconds for 5-second clips at 256p and ~38 seconds at 1080p on H100 hardware (unverified by third parties).
このモデルファミリーで構築できる実用的なユースケースとワークフローを発見 — コンテンツ作成や自動化から本番グレードのアプリケーションまで。
The HappyHorse-1.0 API enables studios and creators to generate cinematic video content that achieved #1 rankings on the Artificial Analysis Video Arena leaderboard. Leveraging its 15B parameter unified architecture, the API delivers leaderboard-winning quality with natural motion and synchronized audio across six languages. Perfect for advertising agencies, film pre-visualization, and premium content creators requiring uncompromising video quality—when the model becomes publicly available.
For global brands and international creators, the HappyHorse-1.0 API generates video content with native audio in six languages including Chinese, English, Japanese, Korean, German, and French. It excels at producing culturally relevant content with claimed ultra-low WER lip-synchronization. This use case fits global marketing teams and international social media campaigns requiring authentic multilingual output.
The HappyHorse-1.0 API allows marketers and influencers to rapidly produce engaging short-form video content with automatic audio generation. By processing creative concepts into polished video clips with synchronized sound including dialogue and Foley effects, it creates scroll-stopping content optimized for TikTok, Instagram Reels, and YouTube Shorts.
数分で始められます — 以下の簡単なステップに従って、Atlas Cloud プラットフォームでモデルを統合・デプロイしましょう。
atlascloud.ai でサインアップし、認証を完了します。新規ユーザーには無料クレジットが付与され、プラットフォームの探索やモデルのテストに使用できます。
高度なHappy Horse 1.0モデルとAtlas CloudのGPU加速プラットフォームを組み合わせることで、比類のないパフォーマンス、スケーラビリティ、開発者エクスペリエンスを提供。
低レイテンシ:
リアルタイム推論のためのGPU最適化推論。
統合API:
1つの統合でHappy Horse 1.0、GPT、Gemini、DeepSeekを実行。
透明な料金:
サーバーレスオプション付きの予測可能なtoken単位の課金。
開発者エクスペリエンス:
SDK、分析、ファインチューニングツール、テンプレート。
信頼性:
99.99%の稼働率、RBAC、コンプライアンス対応ロギング。
セキュリティとコンプライアンス:
SOC 2 Type II、HIPAA準拠、米国内のデータ主権。
As of April 2026, HappyHorse-1.0 is not publicly accessible. There is no public API, no downloadable weights, no documented pricing, and no SLA. The model exists as a leaderboard entry with verified quality signals from blind user votes, but practical access does not exist yet. Watch for GitHub repository releases, HuggingFace model cards, or API announcements to know when it becomes available.