AI Research
Artificial Intelligence News for the Week of August 29; Updates from IDC, SoftwareOne, Wiley & More

Solutions Review Executive Editor Tim King curated this list of notable artificial intelligence news for the week of August 29, 2025.
Keeping tabs on all the most relevant artificial intelligence news can be a time-consuming task. As a result, our editorial team aims to provide a summary of the top headlines from the last week in this space. Solutions Review editors will curate vendor product news, mergers and acquisitions, venture capital funding, talent acquisition, and other noteworthy artificial intelligence news items.
For early access to all the expert insights published on Solutions Review, join Insight Jam, a community dedicated to enabling the human conversation on AI.
Artificial Intelligence News for the Week of August 29, 2025
Broadcom Releases New Product Innovations for AI-Driven Enterprises
Broadcom has announced a suite of new product releases targeting AI-driven enterprise transformation, with advancements in automation, security, hybrid cloud management, and edge computing. These solutions equip organizations to scale and secure their infrastructure for next-gen workloads, driving agility and resilience in rapidly evolving digital markets.
Read more → https://www.broadcom.com/company/news/product-releases/63401
Cerebras and Core42 Deliver Record-Breaking AI Performance
AI hardware innovator Cerebras and UAE-based Core42 have set a new benchmark by training a 180-billion parameter Arabic language model on 4096 CS-3 AI accelerators in under 14 days. This collaboration demonstrates the rapid scaling power of Cerebras’ wafer-scale platform and advances the infrastructure market for large-scale national and multilingual AI solutions.
Read more → https://finance.yahoo.com/news/cerebras-core42-deliver-record-breaking-132300564.html
Digitate Unifies AIOps and Observability with OpenTelemetry Integration
Digitate has advanced its unified AIOps and observability platform with native OpenTelemetry integration, offering holistic, real-time monitoring and automation for IT and business operations. The update enables enterprises to unify signals across distributed systems, driving end-to-end visibility, automated incident response, and actionable insights for digital transformation initiatives.
Domo Deepens AWS Partnership to Accelerate GenAI Adoption
Domo announced a strategic collaboration agreement with AWS to boost enterprise adoption of generative AI. The partnership will expand Domo’s suite of GenAI solutions and support seamless integration with AWS AI services, enabling customers to stay agile and innovative as AI capabilities accelerate.
Exterro Launches AI-Powered Intelligence to Transform Legal Review
Exterro is launching Exterro Intelligence, a new AI platform to streamline legal investigations and document review. The solution leverages generative AI and smart workflows to accelerate e-discovery, improve review accuracy, and deliver actionable insights for legal, compliance, and investigations teams—reducing manual burden and time-to-evidence for modern legal operations.
Google Gemini Now Available On-Premises for Secure AI Everywhere
Google has made its Gemini AI models universally available with the release of Gemini on Google Distributed Cloud (GDC), now in general availability for air-gapped environments and preview for connected deployments. Enterprises and governments with stringent data sovereignty needs can securely run advanced generative AI—including multimodal analysis and custom agents—entirely within their own data centers.
Read more → https://cloud.google.com/blog/topics/hybrid-cloud/gemini-is-now-available-anywhere
HPE Launches Mist Agentic AI for Self-Driving Network Operations
Hewlett Packard Enterprise (HPE) has rolled out Mist Agentic AI, its latest innovation for self-driving network operations. The platform automates troubleshooting, anomaly detection, and network optimization, helping enterprises achieve greater uptime, resilience, and efficiency as digital demands grow.
Hyland Debuts Enterprise Context Engine and Agent Mesh
Hyland has launched its Enterprise Context Engine and Agent Mesh, two AI-powered frameworks to deliver holistic, connected enterprise automation and contextual intelligence. These solutions centralize contextual data, orchestrate agent-based workflows, and help large organizations enable smarter processes and decision-making across distributed business functions.
Read more → https://www.hyland.com/en/company/newsroom/hyland-unveils-enterprise-context-engine-enterprise-agent-mesh
IDC: Agentic AI to Exceed 25 Percent of Global IT Spend by 2029
IDC forecasts that agentic AI will command over 26 percent of worldwide IT budgets—$1.3 trillion—by 2029, up from less than 2 percent today. The research attributes this surge to rapid enterprise adoption of autonomous and task-oriented AI systems, reshaping spending priorities for digital transformation.
Jellyfish Research: AI Delivers End-to-End Impact Across the SDLC
A new report from Jellyfish dives deep into how AI is transforming every phase of the software development lifecycle (SDLC), from planning and coding to testing, deployment, and maintenance. The findings highlight productivity boosts, improved defect detection, and accelerated release cycles, showcasing the growing importance of AI-driven optimization in engineering organizations.
Read more → https://jellyfish.co/newsroom/end-to-end-ai-impact-sdlc/
NTT Data and Cisco Partner to Advance Next-Gen Networking
NTT Data and Cisco are deepening their partnership to deliver advanced network solutions optimized for AI, cloud, and edge applications. The collaboration will produce agile, secure infrastructure supporting digital transformation for global enterprises, including enhanced automation, threat detection, and service assurance as networking needs evolve.
Read more → https://services.global.ntt/en-US/newsroom/ntt-data-and-cisco-partner-to-power-networking
OpenText/Ponemon Survey: Information Readiness Threatens AI Goals
A new survey by OpenText and the Ponemon Institute reveals that a lack of information readiness is threatening organizations’ ability to successfully implement and scale AI. CIOs cited data fragmentation, poor integration, and insufficient governance as leading barriers, with 74 percent saying unpreparedness will delay AI value realization. The study underscores the urgent need for holistic data management to unlock enterprise AI’s full potential.
Pecan AI Launches DemandForecastAI for GenAI-Powered Supply Chains
Pecan AI has introduced DemandForecastAI, a generative AI solution designed to close the costly global supply chain forecasting gap. The platform leverages GenAI and predictive models to analyze and synthesize demand signals, improving accuracy for retailers and manufacturers and mitigating trillion-dollar inefficiencies from misaligned inventory and demand.
Uniphore Acquires Orby AI and RedRoute to Boost AI-Powered Automation
Uniphore has acquired Orby AI and RedRoute, expanding its platform’s AI-powered process automation, conversational AI, and contact center capabilities. With these acquisitions, Uniphore aims to deliver more adaptive, autonomous solutions for enterprise digital experience and customer service transformation worldwide.
Read more → https://finance.yahoo.com/news/uniphore-announces-acquisitions-orby-ai-120200993.html
Virtualitics Unveils IRIS AI Agents for Mission Readiness
Virtualitics has launched IRIS AI Agents, purpose-built to automate and enhance mission readiness in defense and government sectors. These agents leverage cutting-edge AI to support scenario simulation, decision intelligence, and operational planning, helping agencies and organizations achieve faster, data-driven mission outcomes.
Wiley Survey Reveals AI Change Fatigue as Emerging Crisis Risk
A recent survey highlights widespread AI change fatigue among enterprise employees, warning that the constant pace of AI-driven transformation may lead to productivity drops, higher turnover, and organizational risk. Respondents cited “overwhelming” AI deployments and insufficient support for upskilling. The crisis underscores the need for structured change management and holistic employee wellbeing strategies as AI adoption accelerates across sectors.
Read more → https://www.miragenews.com/survey-unveils-ai-change-fatigue-crisis-risk-1521442/
Expert Insights
Watch this space each week as our editors will share upcoming events, new thought leadership, and the best resources from Insight Jam, Solutions Review’s enterprise tech community where the human conversation around AI is happening. The goal? To help you gain a forward-thinking analysis and remain on-trend through expert advice, best practices, predictions, and vendor-neutral software evaluation tools.
What to Expect at Solutions Review‘s Spotlight with SoftwareOne on September 10: How to Use Copilot Agents
Generative AI has evolved from a tool we harness for productivity to a true collaborator. With Copilot Agents, AI works alongside us to boost creativity, streamline workflows, and provide real-time coaching—becoming a valuable teammate and ushering in the next era of AI-driven productivity.
What to Expect at Solutions Review‘s Industry Trends Session with Denodo on September 16: AI Deep Research
We’ll explore the kinds of questions Deep Research can tackle: Why is customer churn rising in a specific region? How will new regulations impact our supply chain? What is the optimal strategy for entering a new market? These are the complex, open-ended questions that go far beyond dashboards and canned reports, questions that require reasoning, synthesis, and real-time, trusted data.
New Episode of The Cyber Circuit with Michael Morgenstern: The AI Revolution Needs Better Asset Management
From shadow AI implementations draining sensitive data to why “we went too fast with cloud and we’re doing it again,” discover why the organizations that can’t answer “what assets do we have?” are the ones AI will hurt most. Parker reveals why AI represents the fourth industrial revolution and what security leaders must do now before regulatory hammers drop.
SR Thought Leaders: Agentic AI Governance: 4 Criteria to Evaluate Tools by Kevin Petrie
As companies mature, they are taking a more sober view of the opportunity that agentic AI represents. In fact, only 27 percent of executives say they would trust fully autonomous agents for enterprise use, down from 43 percent one year ago, according to a recent Capgemini survey. They recognize the need to manage risks before reaping the innovation benefits of agentic AI. This requires a robust governance program, supported by effective technology.
Editorial: Soft Skills Crisis? Why Gen Z Struggles – and How Leaders Can Help by Dr. Laurie Cure
Soft skills have always played a quiet but powerful role in workplace success. After all, these are the often invisible qualities that allow people to collaborate, resolve issues, and lead with confidence — often the most essential elements for leadership success.
Editorial: The Evolution of Enterprise Data Archives in the AI Era by Archive360’s George Tziahanas
For decades, enterprise data archives have occupied an understated position within organizational IT infrastructure. These vast repositories of information were treated as necessary for meeting legal and regulatory obligations, but only modestly accessed once data was safely stored away. The prevailing approach was simple: keep costs low, ensure compliance, and preserve the data until a court order or regulatory investigation demanded its retrieval.
Editorial: Why Data Quality is the Make-or-Break Factor for AI Success by Semarchy’s Craig Gravina
According to a recent survey of 1,050 senior business leaders across the US, UK, and France, only 46 percent express confidence in the quality of their data. This lack of trust in data quality represents the Achilles’ heel of many promising AI strategies, underscoring a critical truth: without trustworthy data, even the most sophisticated AI initiatives risk falling short of their potential.
For consideration in future artificial intelligence news roundups, send your announcements to the editor: tking@solutionsreview.com.
AI Research
Intelligence is not artificial | The Catholic Register

On our Comment pages, Sr. Helena Burns issues a robust call for a return to “old school” means of acquiring, developing and retaining knowledge in the age of AI.
Traditionalist though she might be in many ways, however, Sr. Burns’ appeal is not simply to revive the alliterative formula of Readin’, Writin’ and Arithmetic. Rather, she urges a return to the lost arts of using libraries, taking notes, listening to wiser heads, and above all using our own brains rather than relying on the post in the machine to explain the world.
“We can rebuild a talking, thinking, literate, memorizing culture. But it’s a slow build. It always was, always will be, and it starts when you’re a kiddo. Children in school are now saying they don’t want to learn how to read and write because computers will do it for them. They don’t know that they’re surrendering their humanity,” she writes.
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The good news is that the much-rumoured surrender seems to be much further off than predicted in the recent frenzy over ChatGPT and its cohorts purportedly being thisclose to taking over the world and doing everything from producing perfect sour grapes to writing editorials.
In facts, recent reports particularly in the financial press, suggest AI-mania is already plateauing, if not hitting a downward curve. That doesn’t mean it won’t still cause significant disruption in workplaces or in how we navigate the storm-tossed seas of daily life. It doesn’t mean we can simply shrug off the statistic Sr. Burns cites of a reported 47 per cent decline in neural engagement among those who relied on artificial intelligence to help complete an essay versus those who got ink under their fingernails.
But as techno journalist Asa Fitch reported last week, Meta Platforms has delayed rollout of its next AI iteration, Llama 4 Behemoth, because of engineering failures to significantly improve the previous model. Open AI, meanwhile, overhyped its follow up ChatGPT 5 and saw it effectively flatline in the market.
Business leaders, already sceptical of security and privacy concerns with AI, have hardly been reassured by the “tendency of even the best AI models to occasionally hallucinate wrong answers,” Fitch writes.
More critically, many businesses looking at the allure of AI don’t yet know, in very practical terms, what it can do for their particular sector. We tend to forget that from the “future is now” advent of the Internet, it took the better part of a decade before society began to appreciate its ubiquitous uses.
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University of California, San Diego psychology professor Cory Miller points out there even more formidable barriers to broad AI adaptation. Not the least of such obstacles are the requirements for, as Miller says, “enormous hardware, constant access to vast training data, and unsustainable amounts of electrical power (emphasis added).”
How unsustainable? A human brain, Miller writes, “runs on 20 watts of power – less than a lightbulb.”
AI by contrast?
“To match the computational power of a single human brain, a leading AI system would require the same amount of energy that powers the entire city of Dallas. Let that sink in for a second. One lightbulb versus a city of 1.3 million people,” he says.
The comparison is arithmetically sobering. It’s also ultimately a hallelujah chorus to the glory of creation that is humankind. We exist in a culture awash – it often seems perversely pridefully – in self-underestimation and outright denigration. Oh, to deploy Hamlet’s immortal phrase, what a piece of work is man.
Without question, evil lurks in our darker corners and threatens to beset our best and brightest achievements. But achieve we do as we collectively engage the unique phenomenal 20-watt light bulb brains that are the universal gift from God, our Sovereign Lord and Creator.
In another column in our Comment section, Mary Marrocco illuminates the dynamic of that gift and that engagement, quoting St. Athanasius’ observation that “when we forgot to look up to God, God came down to the low place we’d fixed our gaze on.”
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The outcome was the glorious rise of our Holy Mother the Church, whose cycle of liturgical years, year after year, reminds us of who we are, what we are, and to whom we truly belong.
There is not a shred of artificiality in the intelligence of the resulting library (biblio) of the Bible’s books, its Gospels, its Good News. There is only God’s Word, the most extraordinary conversation any child, any human being, could ever be invited to learn from
A version of this story appeared in the August 31, 2025, issue of The Catholic Register with the headline “Intelligence is not artificial“.
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Has artificial intelligence finally passed the Will Smith spaghetti test? – Sky News
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AI as a Researcher: First Peer-Reviewed Research Paper Written Without Humans

Artificial intelligence has crossed another significant milestone that challenges our understanding of what machines can achieve independently. For the first time in scientific history, an AI system has written a complete research paper that passed peer review at an academic conference without any human assistance in the writing process. This breakthrough could be a fundamental shift in how scientific research might be conducted in the future.
Historic Achievement
A paper produced by The AI Scientist-v2 passed the peer-review process at a workshop in a top international AI conference. The research was submitted to an ICLR 2025 workshop, which is one of the most prestigious venues in machine learning. The paper was generated by an improved version of the original AI Scientist, called The AI Scientist-v2.
The accepted paper, titled “Compositional Regularization: Unexpected Obstacles in Enhancing Neural Network Generalization,” received impressive scores from human reviewers. Of the three papers submitted for review, one received ratings that placed it above the acceptance threshold. This breakthrough is a significant advancement as AI can now participate in the fundamental process of scientific discovery that has been exclusively human for centuries.
The research team from Sakana AI, working with collaborators from the University of British Columbia and the University of Oxford, conducted this experiment. They received institutional review board approval and worked directly with ICLR conference organizers to ensure the experiment followed proper scientific protocols.
How The AI Scientist-v2 Works
The AI Scientist-v2 has achieved this success due to several major advancements over its predecessor. Unlike its predecessor, AI Scientist-v2 eliminates the need for human-authored code templates, can work across diverse machine learning domains, and employs a tree-search methodology to explore multiple research paths simultaneously.
The system operates through an end-to-end process that mirrors how human researchers work. It begins by formulating scientific hypotheses based on the research domain it is assigned to explore. The AI then designs experiments to test these hypotheses, writes the necessary code to conduct the experiments, and executes them automatically.
What makes this system particularly advanced is its use of agentic tree search methodology. This approach allows the AI to explore multiple research directions simultaneously, much like how human researchers might consider various approaches to solving a problem. This involves running experiments via agentic tree search, analyzing results, and generating a paper draft. A dedicated experiment manager agent coordinates this entire process to ensure that the research remains focused and productive.
The system also includes an enhanced AI reviewer component that uses vision-language models to provide feedback on both the content and visual presentation of research findings. This creates an iterative refinement process where the AI can improve its own work based on feedback, similar to how human researchers refine their manuscripts based on colleague input.
What Made This Research Paper Special
The accepted paper focused on a challenging problem in machine learning called compositional generalization. This refers to the ability of neural networks to understand and apply learned concepts in new combinations they have never seen before. The AI Scientist-v2 investigated novel regularization methods that might improve this capability.
Interestingly, the paper also reported negative results. The AI discovered that certain approaches it hypothesized would improve neural network performance actually created unexpected obstacles. In science, negative results are valuable because they prevent other researchers from pursuing unproductive paths and contribute to our understanding of what does not work.
The research followed rigorous scientific standards throughout the process. The AI Scientist-v2 conducted multiple experimental runs to ensure statistical validity, created clear visualizations of its findings, and properly cited relevant previous work. It formatted the entire manuscript according to academic standards and wrote comprehensive discussions of its methodology and findings.
The human researchers who supervised the project conducted their own thorough review of all three generated papers. They found that while the accepted paper was of workshop quality, it contained some technical issues that would prevent acceptance at the main conference track. This honest assessment demonstrates the current limitations while acknowledging the significant progress achieved.
Technical Capabilities and Improvements
The AI Scientist-v2 demonstrates several remarkable technical capabilities that distinguish it from previous automated research systems. The system can work across diverse machine learning domains without requiring pre-written code templates. This flexibility means it can adapt to new research areas and generate original experimental approaches rather than following predetermined patterns.
The tree search methodology is a significant innovation in AI research automation. Rather than pursuing a single research direction, the system can maintain multiple hypotheses simultaneously and allocate computational resources based on the promise each direction shows. This approach mirrors how experienced human researchers often maintain several research threads while focusing most effort on the most promising avenues.
Another crucial improvement is the integration of vision-language models for reviewing and refining the visual elements of research papers. Scientific figures and visualizations are critical for communicating research findings effectively. The AI can now evaluate and improve its own data visualizations iteratively.
The system also demonstrates understanding of scientific writing conventions. It properly structures papers with appropriate sections, maintains consistent terminology throughout manuscripts, and creates logical flow between different parts of the research narrative. The AI shows awareness of how to present methodology, discuss limitations, and contextualize findings within existing literature.
Current Limitations and Challenges
Despite this historic achievement, several important limitations restrict the current capabilities of AI-generated research. The company said that none of its AI-generated studies passed its internal bar for ICLR conference track publication standards. This indicates that while the AI can produce workshop-quality research, reaching the highest tiers of scientific publication remains challenging.
The acceptance rates provide important context for evaluating this achievement. The paper was accepted at a workshop track, which typically has less strict standards than the main conference (60-70% acceptance rate vs. the 20-30% acceptance rates typical of main conference tracks. While this does not diminish the significance of the achievement, it suggests that producing truly groundbreaking research remains beyond current AI capabilities.
The AI Scientist-v2 also demonstrated some weaknesses that human researchers identified during their review process. The system occasionally made citation errors, attributing research findings to incorrect authors or publications. It also struggled with some aspects of experimental design that human experts would have approached differently.
Perhaps most importantly, the AI-generated research focused on incremental improvements rather than paradigm-shifting discoveries. The system appears more capable of conducting thorough investigations within established research frameworks than of proposing entirely new ways of thinking about scientific problems.
The Road Ahead
The successful peer review of AI-generated research is the beginning of a new era in scientific research. As foundation models continue improving, we can expect The AI Scientist and similar systems to produce increasingly sophisticated research that approaches and potentially exceeds human capabilities in many domains.
The research team anticipates that future versions will be capable of producing papers worthy of acceptance at top-tier conferences and journals. The logical progression suggests that AI systems may eventually contribute to breakthrough discoveries in fields ranging from medicine to physics to chemistry.
This development also raises important questions about research ethics and publication standards. The scientific community must develop new norms for handling AI-generated research, including when and how to disclose AI involvement and how to evaluate such work alongside human-generated research.
The transparency demonstrated by the research team in this experiment provides a valuable model for future AI research evaluation. By working openly with conference organizers and subjecting their AI-generated work to the same standards as human research, they have established important precedents for the responsible development of automated research capabilities.
The Bottom Line
The acceptance of an AI-written paper at a leading machine learning workshop is a significant advancement in AI capabilities. While the work is not yet at the level of top-tier conference, it demonstrates a clear trajectory toward AI systems becoming serious contributors to scientific discovery. The challenge now lies not only in advancing technology but also in shaping the ethical and academic frameworks that will govern this new frontier of research.
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