Meta Stock Falls After Upbeat Quarter As AI Spending To Push Up 2026 Costs

International Business TimesWednesday, October 29, 2025 at 10:10:24 PM
Meta's stock has taken a hit despite reporting a strong quarter, as the company anticipates a significant rise in expenses for 2026 due to heavy investments in AI infrastructure and data centers. This news is crucial as it highlights the balancing act Meta faces between growth and rising costs, which could impact its profitability and investor confidence in the long run.
— Curated by the World Pulse Now AI Editorial System

Was this article worth reading? Share it

Recommended Readings
Fortytwo: Swarm Inference with Peer-Ranked Consensus
PositiveArtificial Intelligence
Fortytwo introduces an innovative protocol that enhances AI inference by utilizing swarm intelligence and distributed consensus. As traditional centralized AI systems face limitations, this new approach allows for scalable and efficient collaboration among AI nodes, promising to improve performance significantly. This development is crucial as it addresses the growing demand for AI capabilities while overcoming the challenges of larger training runs.
MR-Align: Meta-Reasoning Informed Factuality Alignment for Large Reasoning Models
PositiveArtificial Intelligence
Researchers have introduced MR-Align, a new approach aimed at improving the factual accuracy of large reasoning models (LRMs). While these models excel in complex reasoning tasks, they often struggle with incorporating the correct facts into their final answers. MR-Align addresses this issue by bridging the gap between reasoning and factuality, enhancing the models' ability to provide accurate responses. This advancement is significant as it could lead to more reliable AI systems that better understand and utilize factual information, ultimately benefiting various applications in technology and research.
COMMUNITYNOTES: A Dataset for Exploring the Helpfulness of Fact-Checking Explanations
PositiveArtificial Intelligence
A new dataset called CommunityNotes is making waves in the world of fact-checking by allowing users to contribute explanations about misleading posts on platforms like X, Meta, and TikTok. This shift from expert-driven verification to community involvement is significant because it empowers users to clarify misinformation and enhances the overall understanding of real-world claims. By focusing on the helpfulness of these explanations, the dataset addresses a crucial gap in previous research, paving the way for more effective fact-checking practices.
ProMediate: A Socio-cognitive framework for evaluating proactive agents in multi-party negotiation
PositiveArtificial Intelligence
The introduction of ProMediate, a socio-cognitive framework for evaluating proactive agents in multi-party negotiation, marks a significant advancement in AI technology. As large language models become more prevalent, the need for agents that can effectively manage complex collaborations among multiple parties is crucial. This framework aims to fill the gap in systematic evaluation methods, paving the way for AI that can enhance teamwork and negotiation processes. Its development is essential for improving how AI supports group interactions, making it a noteworthy step forward in the field.
Roleplaying with Structure: Synthetic Therapist-Client Conversation Generation from Questionnaires
PositiveArtificial Intelligence
A new AI-driven approach is transforming mental health therapy by generating synthetic counseling dialogues from structured client profiles and psychological questionnaires. This innovation addresses the challenge of limited authentic therapy dialogues due to privacy regulations and the rarity of recorded clinical sessions. Grounded in Cognitive Behavioral Therapy principles, this method not only enhances the accessibility of therapeutic conversations but also holds the potential to improve mental health support for many individuals.
Beyond Models: A Framework for Contextual and Cultural Intelligence in African AI Deployment
PositiveArtificial Intelligence
A new framework called Contextual and Cultural Intelligence (CCI) is being introduced to enhance AI deployment in African markets. Unlike traditional AI development that focuses on model performance, CCI emphasizes the importance of understanding cultural contexts and emotional intelligence in design. This approach aims to create AI systems that are not only effective but also economically inclusive and relevant to local communities. This is significant as it addresses the unique challenges faced in Africa, paving the way for more meaningful and impactful AI solutions.
Jon-Paul Vasta on How AI Is Quietly Future-Proofing Small Businesses in 2025
PositiveArtificial Intelligence
Jon-Paul Vasta highlights how AI is becoming a crucial ally for small businesses as they navigate the challenges of 2025. Many owners feel overwhelmed with year-end pressures, but AI tools can streamline operations, enhance customer engagement, and ultimately help these businesses thrive. This shift is significant because it empowers small enterprises to compete more effectively in a rapidly changing market, ensuring they can meet customer demands without burning out.
How I Use GitHub to Host My AI Prompt Libraries
PositiveArtificial Intelligence
In this article, the author shares their experience of using GitHub to create a centralized hub for AI prompt libraries. By organizing hundreds of prompts, templates, and case studies into a structured system, they made it easier for developers to access and reuse their work. This approach not only enhances productivity but also empowers others to leverage AI effectively. It's a practical guide for anyone looking to optimize their AI resources using GitHub.
Latest from Artificial Intelligence
Not ready for the bench: LLM legal interpretation is unstable and out of step with human judgments
NegativeArtificial Intelligence
Recent discussions highlight the instability of large language models (LLMs) in legal interpretation, suggesting they may not align with human judgments. This matters because the legal field relies heavily on precise language and understanding, and introducing LLMs could lead to misinterpretations in critical legal disputes. As legal practitioners consider integrating these models into their work, it's essential to recognize the potential risks and limitations they bring to the table.
BioCoref: Benchmarking Biomedical Coreference Resolution with LLMs
PositiveArtificial Intelligence
A new study has been released that evaluates the performance of large language models (LLMs) in resolving coreferences in biomedical texts, which is crucial due to the complexity and ambiguity of the terminology used in this field. By using the CRAFT corpus as a benchmark, this research highlights the potential of LLMs to improve understanding and processing of biomedical literature, making it easier for researchers to navigate and utilize this information effectively.
Cross-Lingual Summarization as a Black-Box Watermark Removal Attack
NeutralArtificial Intelligence
A recent study introduces cross-lingual summarization attacks as a method to remove watermarks from AI-generated text. This technique involves translating the text into a pivot language, summarizing it, and potentially back-translating it. While watermarking is a useful tool for identifying AI-generated content, the study highlights that existing methods can be compromised, leading to concerns about text quality and detection. Understanding these vulnerabilities is crucial as AI-generated content becomes more prevalent.
Parrot: A Training Pipeline Enhances Both Program CoT and Natural Language CoT for Reasoning
PositiveArtificial Intelligence
A recent study highlights the development of a training pipeline that enhances both natural language chain-of-thought (N-CoT) and program chain-of-thought (P-CoT) for large language models. This innovative approach aims to leverage the strengths of both paradigms simultaneously, rather than enhancing one at the expense of the other. This advancement is significant as it could lead to improved reasoning capabilities in AI, making it more effective in solving complex mathematical problems and enhancing its overall performance.
Lost in Phonation: Voice Quality Variation as an Evaluation Dimension for Speech Foundation Models
PositiveArtificial Intelligence
Recent advancements in speech foundation models (SFMs) are revolutionizing how we process spoken language by allowing direct analysis of raw audio. This innovation opens up new possibilities for understanding the nuances of voice quality, including variations like creaky and breathy voice. By focusing on these paralinguistic elements, researchers can enhance the effectiveness of SFMs, making them more responsive to the subtleties of human speech. This is significant as it could lead to more natural and effective communication technologies.
POWSM: A Phonetic Open Whisper-Style Speech Foundation Model
PositiveArtificial Intelligence
The introduction of POWSM, a new phonetic open whisper-style speech foundation model, marks a significant advancement in spoken language processing. This model aims to unify various phonetic tasks like automatic speech recognition and grapheme-to-phoneme conversion, which have traditionally been studied separately. By integrating these tasks, POWSM could enhance the efficiency and accuracy of speech technologies, making it a noteworthy development in the field.