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OpenAI Tests Photorealistic Image Model to Drive ChatGPT Growth

Stephanie PalazzoloRead original
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OpenAI Tests Photorealistic Image Model to Drive ChatGPT Growth

OpenAI is testing a new image generation model, internally referred to as 'gpt-image-2,' that produces photorealistic images nearly indistinguishable from real photographs. The model is being tested with select ChatGPT users and on leaderboards, with examples circulating on X and Reddit. Beyond its technical capabilities, the release appears tied to OpenAI's broader strategy to reach 1 billion weekly active users on ChatGPT, a milestone the company missed in 2025 and has been pursuing since stalling at around 920 million WAU.

TL;DR

  • OpenAI is testing 'gpt-image-2,' a new image generation model producing photorealistic outputs that are difficult to distinguish from real images
  • The model is being tested with some ChatGPT users and on leaderboards under code names, with examples already visible on social platforms
  • The release is part of OpenAI's push to reach 1 billion weekly active users on ChatGPT, a goal missed in 2025 with the platform currently at approximately 920 million WAU
  • Enhanced image generation capabilities could serve as a user acquisition and retention lever for ChatGPT as the company seeks to break through its current growth plateau

Why it matters

Image generation is a core competitive battleground in generative AI, with Google, Midjourney, and others offering similar capabilities. OpenAI's advancement in photorealism and integration into ChatGPT could shift user preference and consolidate more AI workloads within a single platform. For the broader market, this signals that multimodal capabilities are becoming table stakes for major AI platforms.

Business relevance

For operators and founders, this demonstrates how feature velocity and multimodal integration are critical to user growth and retention in the AI space. Companies relying on standalone image generation tools may face pressure from integrated alternatives, while those building on top of ChatGPT's API may gain access to improved image capabilities. The timing also underscores OpenAI's focus on user growth metrics as a business priority, particularly as it approaches advertising monetization.

Key implications

  • Photorealistic image generation at scale could accelerate adoption of AI-generated content across professional and consumer use cases, raising questions about authenticity and misinformation
  • Integration of advanced image generation into ChatGPT positions the platform as a more comprehensive creative tool, potentially reducing user switching to specialized competitors
  • OpenAI's focus on user growth metrics suggests the company views feature releases as levers for reaching growth targets, which may influence the pace and prioritization of future model releases

What to watch

Monitor whether gpt-image-2 becomes a standard feature in ChatGPT and how it affects user engagement metrics and WAU growth. Watch for competitive responses from Google, Midjourney, and other image generation providers. Also track whether OpenAI's advertising strategy and monetization plans incorporate image generation capabilities, as this could signal how the company intends to extract value from the feature.

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