OpenAI Explores Social App to Rival X and Meta

OpenAI is developing a prototype social platform featuring an AI-powered content feed, potentially placing it in direct competition with Elon Musk's X and Metaโ€™s AI initiatives. Spearheaded by Sam Altman, the project aims to harness user-generated content and real-time interaction to train advanced AI systemsโ€”an approach already used by rivals like Grok and Llama.
OpenAI Explores Social App to Rival X and Meta

OpenAI builds internal prototype with social feed capabilities

OpenAI is working on a new project that could push it further into direct competition with Elon Musk and Meta. According to multiple sources familiar with the matter, the company is developing a social network with features similar to X (formerly Twitter). The idea is still in early stages, but insiders say there’s already a working prototype with a social feed focused on image generation powered by ChatGPT.

Sam Altman seeks feedback as plans remain fluid


CEO Sam Altman has reportedly been seeking external feedback on the concept. However, it’s not yet clear if this new product will launch as a standalone app or become part of the existing ChatGPT platform, which recently became the most downloaded app globally. When asked for comment, an OpenAI spokesperson did not respond by the time of publication.

Social ambitions could fuel rivalry with Musk and Zuckerberg

OpenAIโ€™s potential move into social media could escalate Altman’s ongoing rivalry with Elon Musk. Earlier this year, Musk made an unsolicited $97.4 billion offer to acquire OpenAI. Altman turned it down with a jab, tweeting, โ€œno thank you but we will buy twitter for $9.74 billion if you want.โ€

OpenAIโ€™s entry into the social space also positions it as a direct competitor to Meta, which is developing a standalone app for its AI assistant that will include a social feed. After reports emerged about Metaโ€™s plans to challenge ChatGPT, Altman replied with a tongue-in-cheek post: โ€œok fine maybe weโ€™ll do a social app.โ€

A strategy to gain access to real-time user data

By launching its own social platform, OpenAI would gain access to real-time user interaction dataโ€”something platforms like X and Meta already use to train their own AI models. For example, Muskโ€™s AI assistant Grok pulls live content from X to power its responses. He recently merged X and xAI into a single company, further aligning the platform with AI development. Meanwhile, Meta uses its large volume of user data to train its Llama models.

OpenAIโ€™s social network could follow a similar model. According to people familiar with the prototype, one idea is to use AI to help users create more engaging posts. โ€œThe Grok integration with X has made everyone jealous,โ€ said one source from a competing AI lab. โ€œEspecially how people are using it to craft viral tweets by making it say something outrageous.โ€

Still an experiment, but shows OpenAIโ€™s expansion mindset

Whether this internal prototype will evolve into a full-fledged product remains to be seen. OpenAI has a wide range of projects underway, and some ideas donโ€™t make it past the prototype stage. However, this initiative signals how the company is thinking about expansion beyond traditional AI tools. With investor and industry expectations running high, branching into social media could be one of many ways OpenAI seeks to grow its platform.


Recent Content

This article reflects on the misconceptions we have about AI, and discusses the fallacy of understanding AI’s underlying mechanisms, as it can demonstrate intelligent behavior despite our understanding. AI is developing its own form, capable of analyzing vast datasets, identifying patterns, and making connections that humans might take years to discover. And highlighting the power of partnership in AI projects, where both human and machine intelligence contribute their unique strengths. By combining human strengths with AI’s, we can create something greater than the sum of its parts.
The rising popularity of AI in the field of automation offers numerous lucrative opportunities for growth to the market players. Research Nester predicts that the automotive AI market size will reach USD 4 billion by the end of 2024. Furthermore, by 2037, the market is anticipated to garner USD 80 billion. In this blog, we will explore some of the latest trends in the market and other prospects.
AI is playing a key role in telecom security by strengthening threat detection, fraud prevention, and regulatory compliance. As 5G, IoT, and edge computing expand, telecom networks face cyber threats such as AI-specific attacks, network intrusions, and data breaches. AI-powered security solutions provide automated threat response, anomaly detection, and AI lifecycle protection, helping telecom providers maintain a secure and resilient network infrastructure.
Broadband leaders and utility companies, including CTA, NCTA, and PG&E, have extended the Voluntary Agreement for Small Network Equipment through 2028. The initiative has already improved home internet device energy efficiency by 89% since 2015, and new targets aim for an additional 10% reduction by 2026. With compliance from major ISPs and device manufacturers, this industry-led effort is making home broadband more sustainable while enhancing performance.
AI is transforming the relationship between telcos and hyperscalers like AWS, Google Cloud, and Microsoft Azure. With AI-driven automation, cloud-native networks, and edge computing, telecom operators are optimizing efficiency, reducing costs, and unlocking new revenue streams. As AI-powered innovations reshape 5G, cybersecurity, and digital services, these strategic partnerships are set to redefine the future of telecom.
Recent advancements in artificial intelligence training methodologies are challenging traditional assumptions about computational requirements and efficiency. Researchers have discovered an “Occam’s Razor” characteristic in neural network training, where models favor simpler solutions over complex ones, leading to superior generalization capabilities. This trend towards efficient training is expected to democratize AI development, reduce environmental impact, and lead to market restructuring, with a shift from hardware to software focus. The emergence of efficient training patterns and distributed training approaches is likely to have significant implications for companies like NVIDIA, which could face valuation adjustments despite strong fundamentals.

Currently, no free downloads are available for related categories. Search similar content to download:

  • Reset

It seems we can't find what you're looking for.

Download Magazine

With Subscription

Subscribe To Our Newsletter

Scroll to Top