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OpenAI

2026年5月7日

製品リリース

Advancing voice intelligence with new models in the API

A new generation of realtime voice models that can reason, translate, and transcribe as people speak.

読み込んでいます...

We’re introducing three audio models in the API that unlock a new class of voice apps for developers. With these models, developers can build voice experiences that feel more natural, respond more intelligently, and take action in real time:

  • GPT‑Realtime‑2, our first voice model with GPT‑5‑class reasoning that can handle harder requests and carry the conversation forward naturally.
  • GPT‑Realtime‑Translate, a new live translation model that translates speech from 70+ input languages into 13 output languages while keeping pace with the speaker.
  • GPT‑Realtime‑Whisper, a new streaming speech-to-text that transcribes speech live as the speaker talks.

GPT-Realtime-2 を試す

セッションを開始したら、GPT-Realtime-2 と自然な会話をしてみましょう。
何を聞いてもいいですか?

セッションを開始したら、次の言葉のどれか一つを言ってみてください:

  • 今夜、急遽ディナーを主催することになりました。時間は30分。ベジタリアンの友人が2人、キノコ嫌いが1人いて、キッチンはとても狭いです。シンプルなメニューを考えるのを手伝ってください。
  • 日本で開催されるライブイベントでゲストを歓迎します。特別なイベントの幕開けを告げるホストのように、温かみのある自然な日本語のウェルカムメッセージを考えてください。
  • 注文番号は Orbit-742Q です。内容が正しいか確認したいので、はっきりと復唱してください。
  • チームにリリースのマイルストーンを達成したことを伝える練習を手伝ってください。まずは静かな自信を込めて、次に少し興奮気味に伝えてみてください。
  • ロードトリップで出すトリビアを考えています。一見簡単そうに聞こえるひっかけ問題を3つ出し、それぞれの答えを1文で解説してください。

このデモは期間限定です。これを利用することで、OpenAI の利用規約に同意し、当社のプライバシーポリシーを確認したものとみなされます。

Voice is becoming one of the most natural ways for people to use software. It lets someone ask for help while driving, change a travel plan while walking through an airport, get support in their preferred language, or move through a task without stopping to type.

But building useful voice products takes more than fast turn-taking or a natural-sounding voice. A voice agent needs to understand what someone means, keep track of context, recover when a request changes, use tools while the conversation continues, and respond in a way that feels appropriate to the moment.

Together, the models we are launching move realtime audio from simple call-and-response toward voice interfaces that can actually do work: listen, reason, translate, transcribe, and take action as a conversation unfolds.

Voice as an interface between people and products

As voice becomes a more natural way to use software, we’re seeing developers build around three emerging patterns in voice AI:

  • Voice-to-action, where people can describe what they need and the system can reason through the request, use tools, and complete the task. For example, Zillow is building an assistant that can listen, reason, and act on requests like: “find me homes within my BuyAbility, avoid busy streets, and schedule a tour for Saturday.”
  • Systems-to-voice, where software can turn context into live spoken guidance. For example, a travel app could proactively tell a traveler: “Your inbound flight is delayed, but you can still make your connection. I found the new gate, mapped the fastest route through the terminal, and your bag is still expected to transfer.”
  • Voice-to-voice, where AI can help live conversations continue across languages, tasks, or changing context. For example, Deutsche Telekom is building voice support experiences where customers can speak in the language they’re most comfortable using, while the model translates the conversation in real time.
3 つの音声 AI ワークフローを示す図。voice-to-action は音声をコード・開発、ショッピング、車載、スケジューリング ツールなどのアプリに接続し、systems-to-voice はアプリ、カレンダー、CRM、サポート ダッシュボードを音声に接続し、voice-to-voice は 2 つの音声エージェントを接続します。

These patterns can also work together. Priceline is working toward a future where travelers can manage entire trips by voice: searching for flights and hotels conversationally, handling changes like adjusting a hotel reservation after a flight delay or getting real-time updates on TSA wait times, and translating conversations once travelers are on the ground.

Realtime voice: helping voice models reason and take action

GPT‑Realtime‑2 is built for live voice interactions where the model keeps the conversation moving while it reasons through a request, calls tools, handles corrections or interruptions, and responds in a way that fits the moment.

  • Preambles: Developers can enable short phrases before a main response, like “let me check that” or “one moment while I look into it,” so users know the agent is working on the request.
  • Parallel tool calls and tool transparency: The model can call multiple tools at once and make those actions audible with phrases like “checking your calendar” or “looking that up now,” helping agents stay responsive while completing tasks.
  • Stronger recovery behavior: The model can recover more gracefully by saying things like “I’m having trouble with that right now,” instead of failing silently or breaking the conversation.
  • Longer context for agentic workflows: We’re increasing the context window from 32K to 128K to support longer, more coherent sessions and more complex task flows.
  • Stronger domain understanding: The model better retains specialized terminology, proper nouns, healthcare terms, and other vocabulary that matters in production settings.
  • More controllable tone and delivery: The model can better adjust its tone—speaking calmly while resolving an issue, empathetically when a user is frustrated, or upbeat when confirming a successful action.
  • Adjustable reasoning effort: Developers can now select from minimal, low, medium, high, and xhigh reasoning levels, with low as the default, balancing lower latency for straightforward interactions with more deliberate reasoning for complex requests.

The gains show up on audio evals that map closely to production voice agents: GPT‑Realtime‑2 (high) scores 15.2% higher on Big Bench Audio for audio intelligence than GPT‑Realtime‑1.5. GPT‑Realtime‑2 (xhigh) scores 13.8% higher on Audio MultiChallenge for instruction following, improving over GPT‑Realtime‑1.5 and showing stronger reasoning, context management, and control in live conversations.

Big Bench Audio は、音声入力をサポートする言語モデルの高度な推論能力を評価します。Audio MultiChallenge(新しいウィンドウで開く) は、指示追従、文脈統合、自己整合性、自然な発話修正への対応を含む、音声対話システムのマルチターン会話インテリジェンスを評価します。

The magic of GPT‑Realtime‑2 shows up across a variety of different use cases:

リアルタイムの例を読み込んでいます…

During early testing, businesses used GPT‑Realtime‑2 to build voice agents that help customers and employees get things done through natural conversation:

Realtime translation: build live multilingual voice experiences

GPT‑Realtime‑Translate helps developers build live multilingual voice experiences where each person can speak in their preferred language and hear the conversation translated in real time and read the real time transcriptions. It supports more than 70 input languages and 13 output languages, making it useful for customer support, cross-border sales, education, events, media, and creator platforms serving global audiences.

For developers, live translation needs to preserve meaning while keeping pace with the speaker, even when people speak naturally, switch context, or use regional pronunciation and domain-specific language. For example, Deutsche Telekom is testing the model for multilingual voice interactions, where lower latency and stronger fluency can make cross-language conversations feel more natural.

In this video, Vimeo shows how GPT‑Realtime‑Translate can translate a product education video live as it plays, so global customers can hear updates in their preferred language without waiting for a separately produced version.

「インド向けの音声 AI を構築するには、多様な地域ごとの音声特性に対応する必要があります。ヒンディー語、タミル語、テルグ語で行った評価では、GPT-Realtime-Translate は、当社がテストした他のどのモデルよりも単語誤り率が 12.5% 低く、フォールバック率の低下、タスク完了率の向上、自然な会話を維持できるレイテンシも実現しました。多言語音声 AI の新たな基準を打ち立てています。」
— BolnaAI 共同創業者兼 CTO、Prateek Sachan

Realtime transcription: build low-latency transcription experiences

GPT‑Realtime‑Whisper is a new streaming transcription model built for low-latency speech-to-text. It transcribes audio as people speak, so live products can feel faster, more responsive, and more natural—from captions that appear in the moment, to meeting notes that keep up with the conversation.

The model makes live speech usable inside business workflows as it happens. Teams can power captions for meetings, classrooms, broadcasts, and events; generate notes and summaries while conversations are still in progress; build voice agents that need to understand users continuously; and create faster follow-up workflows for customer support, healthcare, sales, recruiting, and other high-volume spoken interactions.

Safety

The Realtime API incorporates multiple layers of safeguards and mitigations to help prevent misuse. We employ active classifiers over Realtime API sessions, meaning certain conversations can be halted if they are detected as violating our harmful content guidelines. Developers can also easily add their own additional safety guardrails using the Agents SDK⁠.(新しいウィンドウで開く)

Our usage policies⁠ prohibit repurposing or distributing outputs from our services for spam, deception, or other harmful purposes. Developers must also make it clear to end users when they’re interacting with AI, unless it’s already obvious from the context.

The Realtime API fully supports EU Data Residency⁠(新しいウィンドウで開く) for EU-based applications and is covered by our enterprise privacy commitments⁠.

Pricing & availability

GPT‑Realtime‑2, GPT‑Realtime‑Translate and GPT‑Realtime‑Whisper are available in the Realtime API. GPT‑Realtime‑2 is priced at $32 / 1M audio input tokens ($0.40 for cached input tokens) and $64 / 1M audio output tokens. GPT‑Realtime‑Translate is priced at $0.034 per minute. GPT‑Realtime‑Whisper is priced at $0.017 per minute.

Get started

You can test the new realtime voice models in the Playground(新しいウィンドウで開く)

To start building, open this prompt in Codex to add GPT‑Realtime‑2 to an existing app or start a new one. If you don’t have Codex yet, download the Codex app first.

著者

OpenAI