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F5 Research Finds Most Enterprises Still Fall Short in AI Readiness, Face Security and Governance Issues Blocking Scalability

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  • F5’s 2025 State of AI Application Strategy Report reveals 25% of apps on average use AI, yet only 2% of enterprises qualify as being highly AI-ready.

  • 77% of companies are moderately ready for AI but still face significant security and governance hurdles.

  • 71% of organizations use AI to boost security, while only 31% have deployed AI firewalls.

SEATTLE, July 14, 2025–(BUSINESS WIRE)–F5 (NASDAQ: FFIV), the global leader in delivering and securing every app and API, today unveiled its 2025 State of AI Application Strategy Report, revealing that only 2% of global organizations are highly ready to scale AI securely across operations. The report compiles insights from 650 global IT leaders and additional research with 150 AI strategists, representing organizations with at least $200 million in annual revenue.

The report unveils stark truths about the state of AI readiness for enterprises today and their ability to adapt at sufficient speeds to keep pace with new innovations. The most notable findings of the report reveal that while 77% of companies demonstrate moderate AI readiness, most lack robust governance and cross-cloud security, exposing them to risks. Meanwhile, 21% of companies fall into the low-readiness category, limiting their competitive edge as AI transforms industries.

F5’s research reveals trends illustrating the rapid expansion of AI use by today’s enterprises. All told, 70% of moderately ready organizations have generative AI in active use, and virtually everyone else is working on it. Additionally, 25% of apps, on average, use AI. Highly ready organizations typically use AI in a much higher percentage, with portfolio-wide saturation expected. Low-readiness organizations use AI in less than one-quarter of their apps, typically in siloed or experimental settings. Moderately ready organizations currently have AI present in about one-third of applications.

The report provides a snapshot of the latest trends in enterprises grappling with embracing AI. Nearly two-thirds of survey respondents (65%) use two or more paid models and at least one open-source model. The average organization uses three models, and the use of multiple models correlates with deployment in more than one environment or location. The majority of models in use today are paid models such as GPT-4, but open-source alternatives are also popular. The top open-source models cited are Meta’s Llama variants, Mistral AI variants, and Google’s Gemma.

“As AI becomes core to business strategy, readiness requires more than experimentation—it demands security, scalability, and alignment,” said John Maddison, Chief Product and Corporate Marketing Officer at F5. “This report highlights actionable steps for organizations to operationalize AI with confidence. AI is already transforming security operations, but without mature governance and purpose-built protections, enterprises risk amplifying threats.”





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Who is Shawn Shen? The Cambridge alumnus and ex-Meta scientist offering $2M to poach AI researchers

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Shawn Shen, co-founder and Chief Executive Officer of the artificial intelligence (AI) startup Memories.ai, has made headlines for offering compensation packages worth up to $2 million to attract researchers from top technology companies. In a recent interview with Business Insider, Shen explained that many scientists are leaving Meta, the parent company of Facebook, due to constant reorganisations and shifting priorities.“Meta is constantly doing reorganizations. Your manager and your goals can change every few months. For some researchers, it can be really frustrating and feel like a waste of time,” Shen told Business Insider, adding that this is a key reason why researchers are seeking roles at startups. He also cited Meta Chief Executive Officer Mark Zuckerberg’s philosophy that “the biggest risk is not taking any risks” as a motivation for his own move into entrepreneurship.With Memories.ai, a company developing AI capable of understanding and remembering visual data, Shen is aiming to build a niche team of elite researchers. His company has already recruited Chi-Hao Wu, a former Meta research scientist, as Chief AI Officer, and is in talks with other researchers from Meta’s Superintelligence Lab as well as Google DeepMind.

From full scholarships to Cambridge classrooms

Shen’s academic journey is rooted in engineering, supported consistently by merit-based scholarships. He studied at Dulwich College from 2013 to 2016 on a full scholarship, completing his A-Level qualifications.He then pursued higher education at the University of Cambridge, where he was awarded full scholarships throughout. Shen earned a Bachelor of Arts (BA) in Engineering (2016–2019), followed by a Master of Engineering (MEng) at Trinity College (2019–2020). He later continued at Cambridge as a Meta PhD Fellow, completing his Doctor of Philosophy (PhD) in Engineering between 2020 and 2023.

Early career: Internships in finance and research

Alongside his academic pursuits, Shen gained early experience through internships and analyst roles in finance. He worked as a Quantitative Research Summer Analyst at Killik & Co in London (2017) and as an Investment Banking Summer Analyst at Morgan Stanley in Shanghai (2018).Shen also interned as a Research Scientist at the Computational and Biological Learning Lab at the University of Cambridge (2019), building the foundations for his transition into advanced AI research.

From Meta’s Reality Labs to academia

After completing his PhD, Shen joined Meta (Reality Labs Research) in Redmond, Washington, as a Research Scientist (2022–2024). His time at Meta exposed him to cutting-edge work in generative AI, but also to the frustrations of frequent corporate restructuring. This experience eventually drove him toward building his own company.In April 2024, Shen began his academic career as an Assistant Professor at the University of Bristol, before launching Memories.ai in October 2024.

Betting on talent with $2M offers

Explaining his company’s aggressive hiring packages, Shen told Business Insider: “It’s because of the talent war that was started by Mark Zuckerberg. I used to work at Meta, and I speak with my former colleagues often about this. When I heard about their compensation packages, I was shocked — it’s really in the tens of millions range. But it shows that in this age, AI researchers who make the best models and stand at the frontier of technology are really worth this amount of money.”Shen noted that Memories.ai is looking to recruit three to five researchers in the next six months, followed by up to ten more within a year. The company is prioritising individuals willing to take a mix of equity and cash, with Shen emphasising that these recruits would be treated as founding members rather than employees.By betting heavily on talent, Shen believes Memories.ai will be in a strong position to secure additional funding and establish itself in the competitive AI landscape.His bold $2 million offers may raise eyebrows, but they also underline a larger truth: in today’s technology race, the fiercest competition is not for customers or capital, it’s for talent.





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The Energy Monster AI Is Creating

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We don’t really know how much energy artificial intelligence is consuming. There aren’t any laws currently on the books requiring AI companies to disclose their energy usage or environmental impact, and most firms therefore opt to keep that controversial information close to the vest. Plus, large language models are evolving all the time, increasing in both complexity and efficiency, complicating outside efforts to quantify the sector’s energy footprint. But while we don’t know exactly how much electricity data centers are eating up to power ever-increasing AI integration, we do know that it’s a whole lot. 

“AI’s integration into almost everything from customer service calls to algorithmic “bosses” to warfare is fueling enormous demand,” the Washington Post recently reported. “Despite dramatic efficiency improvements, pouring those gains back into bigger, hungrier models powered by fossil fuels will create the energy monster we imagine.”

And that energy monster is weighing heavily on the minds of policymakers around the world. Global leaders are busily wringing their hands over the potentially disastrous impact AI could have on energy security, especially in countries like Ireland, Saudi Arabia, and Malaysia, where planned data center development outpaces planned energy capacity. 

In a rush to keep ahead of a critical energy shortage, public and private entities involved on both the tech and energy sides of the issue have been rushing to increase energy production capacities by any means. Countries are in a rush to build new power plants as well as to keep existing energy projects online beyond their planned closure dates. Many of these projects are fossil fuel plants, causing outcry that indiscriminate integration of artificial intelligence is undermining the decarbonization goals of nations and tech firms the world over. 

“From the deserts of the United Arab Emirates to the outskirts of Ireland’s capital, the energy demands of AI applications and training running through these centres are driving the surge of investment into fossil fuels,” reports the Financial Times. Globally, more than 85 gas-powered facilities are currently being built to meet AI’s energy demand according to figures from Global Energy Monitor.

In the United States, the demand surge is leading to the resurrection of old coal plants. Coal has been in terminal decline for years now in the U.S., and a large number of defunct plants are scattered around the country with valuable infrastructure that could lend itself to a speedy new power plant hookup. Thanks to the AI revolution, many of these plants are now set to come back online as natural gas-fired plants. While gas is cleaner than coal, the coal-to-gas route may come at the expense of clean energy projects that could have otherwise used the infrastructure and coveted grid hookups of defunct coal-fired power plants. 

“Our grid isn’t short on opportunity — it’s short on time,” Carson Kearl, Enverus senior analyst for energy and AI, recently told Fortune. “These grid interconnections are up for grabs for new power projects when these coal plants roll off. The No. 1 priority for Big Tech has changed to [speed] to energy, and this is the fastest way to go in a lot of cases,” Kearl continued.

Last year, Google stated that the company’s carbon emissions had skyrocketed by a whopping 48 percent over the last five years thanks to its AI integration. “AI-powered services involve considerably more computer power – and so electricity – than standard online activity, prompting a series of warnings about the technology’s environmental impact,” the BBC reported last summer. Google had previously pledged to reach net zero greenhouse gas emissions by 2030, but the company now concedes that “as we further integrate AI into our products, reducing emissions may be challenging.”

By Haley Zaremba for Oilprice.com 

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JUPITER: Europe’s First Exascale Supercomputer Powers AI and Climate Research | Ukraine news

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The Jupiter supercomputer at the Jülich Research Centre, Germany, September 5, 2025.
Getty Images/INA FASSBENDER/AFP

As reported by the European Commission’s press service

At the Jülich Research Center in Germany, on September 5, the ceremonial opening of the supercomputer JUPITER took place – the first in Europe to surpass the exaflop performance threshold. The system is capable of performing more than one quintillion operations per second, according to the European Commission’s press service.

According to the EU, JUPITER runs entirely on renewable energy sources and features advanced cooling and heat disposal systems. It also topped the Green500 global energy-efficiency ranking.

The supercomputer is located on a site covering more than 2,300 square meters and comprises about 50 modular containers. It is currently the fourth-fastest supercomputer in the world.

JUPITER is capable of running high-resolution climate and meteorological models with kilometer-scale resolution, which allows more accurate forecasts of extreme events – from heat waves to floods.

Role in the European AI ecosystem and industrial developments

In addition, the system will form the backbone of the future European AI factory JAIF, which will train large language models and other generative technologies.

The investment in JUPITER amounts to about 500 million euros – a joint project of the EU and Germany under the EuroHPC programme. This is part of a broader strategy to build a network of AI gigafactories that will provide industry and science with the capabilities to develop new models and technologies.

It is expected that the deployment of JUPITER will strengthen European research-industrial initiatives and enhance the EU’s competitiveness on the global stage in the field of artificial intelligence and scientific developments.

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