Sustainability-in-Tech : Why Measuring Plasma Could Unlock Fusion Power
A new report suggests that the future of fusion energy may depend less on generating power, and more on measuring it accurately.
Understanding The Real Barrier To Fusion
Fusion power has long been seen as a near-perfect clean energy source, offering abundant electricity with minimal environmental impact. The science behind it is well understood, involving the fusion of atomic nuclei at extremely high temperatures to release energy. However, turning this into a reliable, commercial power source has remained out of reach, largely due to the difficulty of controlling the process in real time.
At the centre of this challenge is plasma, a superheated state of matter that must be carefully managed inside a fusion reactor. For fusion to occur consistently, scientists need to monitor conditions such as temperature, density, and stability with extreme precision. Even small fluctuations can disrupt the reaction and bring it to a halt.
Why Measurement Technology Is Now Critical
A growing body of research, including a recent U.S. Department of Energy-backed report, highlights that advances in diagnostic technology could play a decisive role in making fusion commercially viable. Diagnostics are specialised systems used to measure and observe plasma behaviour inside a reactor while it is operating.
The report suggests that the ability to measure, understand, and control plasma under extreme conditions is now one of the most important factors in accelerating progress towards working fusion power plants. As the report states, “Diagnostics will be critical to determining whether the U.S. can sustain a burning plasma, engineer for extreme environments, and translate plasma science into deployable systems.”
The Engineering Challenge Inside Fusion Reactors
The conditions inside a fusion reactor are among the most extreme ever created by humans. Sensors must operate in environments with intense heat, high radiation, and very limited physical access. Conventional measurement tools are simply not designed to survive these conditions.
As a result, researchers are focusing on developing radiation-resistant sensors, faster measurement systems, and more robust designs that can continue to function reliably over time. In some fusion approaches, particularly inertial confinement, key events happen in fractions of a second, meaning diagnostics must capture data at extremely high speeds.
Without these capabilities, it becomes almost impossible to maintain the precise conditions required for sustained fusion reactions.
The Growing Role Of AI And Digital Twins
Alongside physical measurement tools, software is becoming equally important. Fusion experiments generate vast amounts of complex data that cannot be easily interpreted in real time by human operators alone.
Artificial intelligence and machine learning are now being used to analyse this data, detect patterns, and predict instabilities before they occur. This allows researchers to make faster adjustments and maintain stable plasma conditions for longer periods. As highlighted in the report, this includes “AI-enhanced data interpretation and integrated data analysis” as well as “digital twins that unite simulation and experiment.”
Digital twins are also emerging as a key tool. These are virtual models of fusion systems that combine simulation with real-world data. They allow scientists to test different scenarios, optimise performance, and refine control strategies without putting physical systems at risk. Over time, this approach could reduce development costs and accelerate progress towards commercial deployment.
A Decisive Decade For Fusion Development
Fusion energy is now entering what many researchers describe as a decisive period. Pilot plants are being targeted for the 2030s and 2040s, and global competition is increasing across both public and private sectors.
The report makes this urgency clear, noting that “the speed of progress across fusion and plasma tech now hinges on our ability to innovate.” Major programmes such as ITER in France and the UK’s STEP initiative are placing increasing emphasis on measurement and control technologies, while private fusion companies are investing heavily in the same areas.
This actually reflects a broader shift in focus. For example, earlier efforts were centred on demonstrating that fusion reactions could be achieved. That milestone has largely been reached in controlled experiments. The next stage is engineering systems that can operate continuously and reliably at scale.
The Sustainability Case For Fusion
The long-term appeal of fusion remains strong. It offers the potential for large-scale, low-carbon electricity generation without the long-lived radioactive waste associated with traditional nuclear power. It also relies on widely available fuels, which could reduce dependence on fossil fuels and improve energy security.
However, these benefits depend on overcoming the remaining technical barriers. Measurement and control are now seen as central to that challenge, making them a critical focus for investment and innovation.
What Does This Mean For Your Business?
Fusion power itself may still be years away from commercial use, but the technologies being developed to enable it are already starting to influence other industries. Advanced sensing systems, real-time data analysis, AI-driven decision-making, and digital twin modelling are not unique to fusion. They are increasingly being adopted in sectors such as manufacturing, energy, infrastructure, and logistics.
For UK businesses, this highlights an important point. The value of these innovations does not depend on fusion becoming mainstream in the near term. The underlying capabilities are already delivering practical benefits today, particularly in environments where performance, efficiency, and reliability depend on accurate measurement and fast decision-making.
There is also a clear strategic angle here. As energy systems evolve, businesses that rely heavily on power, including data centres, manufacturing sites, and large commercial facilities, will need to adapt to new energy sources and more dynamic grid conditions. Understanding how technologies like AI-driven monitoring and predictive control work could become increasingly important in managing costs and resilience.
At the same time, this research reinforces a broader lesson about innovation. Breakthroughs often depend not just on headline technologies, but on the supporting systems that make them usable at scale. In the case of fusion, the ability to measure and control plasma may prove to be just as important as the reaction itself.
Organisations that recognise the importance of these enabling technologies, and begin exploring how similar approaches can be applied within their own operations, may be better positioned to improve efficiency, reduce risk, and take advantage of future developments as they emerge.
Video Update : GPT 5.4 Launched – Here’s Why You Should Use It
OpenAI’s new GPT 5.4 model introduces more accurate responses, better reasoning and improved real world usefulness, and this video shows why it is worth using to get faster, more reliable results from your everyday AI prompts.
[Note – To Watch This Video without glitches/interruptions, It may be best to download it first]
Tech Tip : Adjust Your Spam Filter Settings To Avoid Missing Important Emails
Spam filters can sometimes misclassify legitimate emails, so regularly reviewing your junk folder and adjusting settings is a simple way to avoid missing important enquiries, invoices or client messages.
Why This Matters
Email filtering has become more aggressive in recent years as providers try to block phishing, spam and malicious attachments.
While this improves security, it also increases the chances of genuine emails being incorrectly flagged as junk.
This can include:
– New customer enquiries
– Supplier invoices
– Automated system alerts
– Replies from new contacts
If these emails are missed, it can lead to delayed responses, missed opportunities or unnecessary disruption to business operations.
How To Adjust Junk Email Settings In Microsoft Outlook (Microsoft 365)
– Open Outlook (desktop app or web).
– Go to the Junk Email folder.
– Review recent messages.
– Right-click any legitimate email.
– Select Not junk.
To prevent this happening again:
– Add the sender to your Safe senders list.
– Or add the domain (e.g. @companyname.co.uk) to trusted senders.
How To Adjust Spam Settings In Gmail (Google Workspace)
– Open Gmail.
– Click the Spam folder in the left-hand menu.
– Review recent messages.
– Open any legitimate email.
– Click Report not spam.
You can also:
– Add the sender to your Contacts.
– Create a filter to always allow emails from specific addresses or domains.
What To Watch For
If legitimate emails are regularly going to spam, check:
– Whether the sender is new or unknown.
– If their domain has poor email reputation.
– Whether your organisation has strict filtering policies enabled.
In some cases, your IT provider may need to review mail filtering settings.
A Practical Approach
A quick check and small adjustment can prevent important emails being missed.
Spending a minute reviewing your spam settings each week helps ensure genuine messages reach your inbox and reduces the risk of missed opportunities or delayed responses.
Tesla Wins Licence To Supply Electricity In Britain
Tesla has been granted a licence to supply electricity directly to homes and businesses in Britain, marking a significant step in the company’s effort to expand from electric vehicles into a full energy provider.
Tesla Receives Approval To Supply Electricity
Tesla subsidiary Tesla Energy Ventures has reportedly (according to reports by The Wall Street Journal) received approval from the UK energy regulator Ofgem to supply electricity to domestic and commercial customers across England, Scotland and Wales.
The licence allows Tesla to sell electricity directly to households and businesses in much the same way as established suppliers such as British Gas, EDF, E.ON and Octopus Energy. Northern Ireland is not included, as it operates under a separate electricity market.
Ofgem confirmed that the application underwent a full regulatory review between July 2025 and March 2026. The regulator assessed whether Tesla could meet the financial, operational and consumer protection standards required of all electricity suppliers in Britain.
As with any licensed supplier, Tesla must now comply with the UK’s strict energy market rules covering billing transparency, customer treatment, financial resilience and dispute resolution.
A Long Term Strategy In The UK Energy Market
Although the licence approval is new, Tesla has actually been building its presence in the British electricity sector for several years.
The company first obtained an electricity generation licence in 2020, allowing it to operate energy assets connected to the national grid. Since then Tesla has deployed large grid scale battery systems across the country using its Megapack technology.
One of the most notable projects is the Pillswood battery facility near Hull, which at the time of its launch in 2022 was one of Europe’s largest battery storage systems with a capacity of 196 megawatt hours.
Tesla has also been active in energy trading through its Autobidder software platform, which uses artificial intelligence to automatically buy and sell electricity in response to market conditions.
These developments laid the groundwork for the company to move into direct electricity supply.
How Tesla’s Energy Model Works
Tesla’s entry into the UK electricity market is likely to follow a model already used in Texas through its Tesla Electric service.
The approach combines several elements of Tesla’s broader energy ecosystem. These include home solar generation, battery storage, grid scale energy storage and software driven electricity trading.
Customers with Tesla Powerwall home batteries can store electricity generated by rooftop solar panels or purchased from the grid when prices are low. The stored energy can then be used later or exported back to the grid.
When large numbers of home batteries are connected together they can form what is known as a virtual power plant. This network of distributed energy storage can help stabilise the grid during periods of high demand while also generating revenue for participants.
Tesla’s Autobidder software manages the flow of electricity between batteries, the grid and wholesale markets in real time. The system automatically adjusts when energy is bought, stored or sold.
This model allows Tesla to treat energy not simply as a commodity delivered to homes, but as a dynamic resource that can be managed through software.
Competition With Established Suppliers
Obviously, Tesla’s arrival adds a new competitor to a crowded but rapidly evolving UK energy market.
Companies such as Octopus Energy have already demonstrated how software driven platforms and flexible tariffs can disrupt traditional energy supply models. Octopus has grown rapidly by combining renewable energy sourcing with advanced pricing systems and digital customer services.
In fact, Tesla and Octopus have previously worked together in Britain through the Tesla Energy Plan, which connected Powerwall owners to Octopus electricity tariffs.
However, now that Tesla can operate as a supplier in its own right, that partnership may evolve into direct competition.
The company will also compete with large incumbent utilities including British Gas, EDF and E.ON, which together supply millions of UK households.
Public Opposition And Regulatory Scrutiny
Tesla’s application attracted some significant public criticism during the consultation process.
For example, campaign groups organised thousands of submissions to Ofgem expressing concern about Elon Musk’s political statements and online activity. Critics argued that these issues should be considered when deciding whether the company should operate in the UK energy market.
Ofgem stated that licensing decisions are based on regulatory and operational criteria rather than opinions about company leadership. The regulator concluded that Tesla’s application met the legal requirements for a supply licence.
Government officials also confirmed that Ofgem has sole responsibility for assessing such applications.
A Move Toward Software Led Energy Systems
Tesla’s move into electricity supply reflects a broader trend across global energy markets.
Electricity systems are becoming increasingly dependent on renewable energy sources such as wind and solar. These sources generate power intermittently, which creates new challenges for grid stability.
Battery storage and intelligent software systems are emerging as key tools for balancing supply and demand. Grid scale batteries can store excess energy when production is high and release it when demand rises.
Companies that combine generation, storage and software control may therefore gain a strategic advantage in the evolving energy sector.
Tesla has been positioning its energy division around precisely this combination.
What Does This Mean For Your Business?
Tesla’s entry into the UK electricity market highlights how energy supply is becoming increasingly technology driven.
Businesses may soon see new types of electricity tariffs that combine battery storage, renewable generation and software based energy optimisation. This could (hopefully) lead to more flexible pricing models and opportunities to reduce energy costs through smarter usage patterns.
Organisations with on site solar generation or battery storage may also benefit from emerging virtual power plant programmes, where surplus energy can be sold back to the grid.
The development also signals a wider transformation of the electricity sector. Traditional utilities are increasingly competing with technology companies that treat energy management as a data and software problem rather than simply a supply service.
For businesses planning long term energy strategies, the ability to integrate storage, renewable generation and intelligent energy management systems is likely to become increasingly important.
Why Some People Can Spot AI Images More Easily Than Others
New research suggests that the ability to detect AI-generated faces may depend less on intelligence or technical knowledge and more on a fundamental visual skill known as object recognition.
A Surprising Predictor Of AI Detection
As artificial intelligence tools become increasingly capable of generating realistic images, concerns about deepfakes and digital misinformation have grown rapidly. Synthetic faces created by AI systems now appear regularly across social media, advertising and online content, often looking convincingly real.
A new study from researchers at Vanderbilt University (in Nashville, Tennessee) has examined why some people are better than others at detecting these images. The findings suggest that the key factor is not intelligence, technological expertise or familiarity with AI tools, but a more basic perceptual ability.
Object Recognition
The research was led by Isabel Gauthier, professor of psychology at Vanderbilt University, together with Jason Chow and Rankin McGugin. Their study, published in the Journal of Experimental Psychology, found that individuals with stronger object recognition skills consistently performed better at identifying AI-generated faces.
Object recognition is a broad visual ability that allows people to distinguish between very similar objects quickly and accurately. In scientific research it is sometimes referred to as the “o factor”, a domain-general skill involved in recognising patterns and structures across many different visual tasks.
Testing The Ability To Detect AI Faces
To investigate how people recognise synthetic images, the researchers developed a new evaluation tool called the AI Face Test. Participants were shown a mixture of real photographs and faces generated by artificial intelligence systems and asked to determine which images were authentic.
The study then compared each participant’s performance with a range of cognitive and perceptual abilities, including intelligence, face recognition skills and familiarity with artificial intelligence technology.
The results revealed that object recognition ability is the strongest predictor of success in detecting AI-generated faces.
In contrast, factors that might seem more relevant, such as intelligence or experience with AI tools, showed little relationship with performance.
A Useful Visual Ability
As Professor Gauthier explained, “these results highlight a visual ability that has very general applications. It’s a stable trait that helps people meet new perceptual challenges, including those created by AI.”
The researchers were particularly surprised that technological experience did not appear to help participants distinguish between real and synthetic images.
“We were shocked to see how intelligence or even technology training did not help accurately judge if a face is AI,” Gauthier said.
Why Some People Are Better At Object Recognition
It seems that some people are just naturally better at this particular skill. Object recognition ability varies between individuals, but those with stronger visual processing skills are better at detecting small structural differences in images. This means that when looking at AI-generated faces, they are more likely to notice subtle inconsistencies in areas such as lighting, texture or facial proportions that others may overlook.
It’s An Underlying Perceptual Ability
In the Vanderbilt study, participants with higher object recognition scores consistently performed better at identifying AI-generated faces in the AI Face Test. Their performance also remained stable when tested again later, suggesting the skill reflects an underlying perceptual ability rather than something people quickly learn through experience with AI tools.
Looking Beyond Obvious Visual Errors
Researchers believe the advantage does not come from spotting obvious “AI mistakes”. Instead, people with stronger object recognition ability appear better at interpreting complex visual structure when the differences are subtle and the signals are noisy.
Can This Skill Be Improved?
All is not lost for those who do not naturally have this skill. There is some evidence that aspects of object recognition can be improved through training. For example, exercises that involve comparing similar objects, analysing small visual variations and practising detailed visual inspection can strengthen perceptual judgement over time.
Useful In Medical Imaging and Radiology
Research in fields such as medical imaging and radiology shows that targeted visual training can improve a person’s ability to recognise subtle visual differences. That said, people with stronger object recognition skills often perform better in visually demanding tasks, including identifying lung nodules in medical scans, recognising cancerous blood cells, reading musical notation and analysing retinal images.
A Wider Skill With Many Applications
Object recognition ability has been linked in previous research to success across a wide range of visually demanding tasks. The Vanderbilt University study takes things one step further by also challenging the widely repeated claim that AI-generated images are now impossible for humans to detect.
“There is this general message we hear in the media that AI images are so realistic that we can’t tell the difference, and I think that’s misleading,” Gauthier said.
According to the researchers, the results instead show a distribution of abilities across the population. Some people struggle to detect synthetic images, some perform moderately well and others identify them with high accuracy. Understanding these differences may become increasingly important as generative AI technologies continue to evolve.
What Does This Mean For Your Business?
For organisations concerned about misinformation, digital trust and online security, the research highlights an important point about the human side of AI detection.
Many current discussions about identifying synthetic media focus on technical solutions such as watermarking systems, detection algorithms or digital authentication tools. These technologies will likely remain important as AI-generated content becomes more widespread.
However, the new research suggests that human perception also plays a significant role. Individuals differ in their natural ability to interpret complex visual information, and this may affect how easily they recognise AI-generated imagery.
For businesses that rely on visual content, such as media organisations, marketing teams and social media platforms, understanding these differences could help shape training programmes, moderation strategies and verification processes.
As AI-generated media becomes more common across the internet, combining technical safeguards with a deeper understanding of human perception may become an increasingly important part of managing digital authenticity.
Amazon Brings AI Health Assistant To Its Website And App
Amazon has launched a new AI-powered healthcare assistant called Health AI on its website and mobile app, marking a significant step in the company’s effort to use artificial intelligence to help people understand medical information and access care more easily.
Why Amazon Is Expanding Into AI-Powered Healthcare
Amazon’s entry into AI-driven healthcare builds on several major moves the company has made in the sector over the past few years. In 2023 it acquired the primary care provider One Medical for $3.9 billion, adding a nationwide network of clinics and telehealth services to its growing health portfolio.
Alongside this, Amazon has expanded its pharmacy services and introduced digital tools designed to simplify medication management and appointment booking. Health AI now becomes a central interface within this ecosystem, allowing customers to ask health-related questions directly through the Amazon website or mobile app.
According to Amazon, the goal of Health AI is to make healthcare easier to navigate and more accessible. As the company explains on its website, the assistant is designed “to make health care easier by providing you with insights into your health, helping you understand your medical records, and seamlessly connecting you with licensed health care professionals when you need them.”
What The Amazon Health AI Assistant Actually Does
Health AI functions as a conversational assistant that can answer health questions and help users understand information about their health.
For example, users can ask questions about symptoms, medications or test results. The system can also explain medical records, provide guidance about possible next steps and help arrange professional care when needed.
In addition to answering questions, Amazon says Health AI can assist with practical tasks such as managing prescription renewals or booking appointments with healthcare providers. If a user needs medical support, the system can connect them to clinicians through Amazon One Medical.
However, Amazon is keen to point out that the tool is designed to help people better understand their health rather than replace professional medical advice.
How It Works
Health AI operates as what Amazon describes as an “agentic” AI system. This means that instead of acting only as a chatbot, the system can also take actions on behalf of the user, such as arranging appointments or managing prescriptions.
With a user’s permission, Health AI can access medical information such as diagnoses, medications and lab results through the United States Health Information Exchange. This nationwide network allows healthcare providers to share patient data securely.
Using that information, the assistant can provide more personalised responses. For example, if a user asks about a symptom, the system can consider their medical history and current medications when explaining possible causes.
When professional care is needed, the system can connect users directly to a One Medical clinician via message, video consultation or an in-person appointment.
Where?
At present, Amazon’s Health AI assistant is being rolled out only to customers in the United States. The company says availability will expand gradually across the US in the coming weeks as more users gain access through the Amazon website and mobile app.
Amazon has not yet announced when the service may become available in the UK or other international markets. Healthcare services are heavily regulated and differ significantly between countries, which means new digital health tools often launch first in the US before being adapted for other healthcare systems.
For now, the service is closely linked to Amazon One Medical and other US-based healthcare services, which makes a wider international rollout more complex.
What About Privacy And Safety?
Amazon says Health AI has been designed to meet strict privacy and security standards, reflecting the sensitive nature of the medical information the system handles.
All interactions take place within a HIPAA-compliant environment, the regulatory framework that governs the protection of medical information in the US. Conversations are encrypted and access to data is restricted to authorised personnel performing specific healthcare functions.
Amazon also says that Health AI models are trained using abstracted data patterns rather than identifiable patient information.
Warning
Despite these safeguards, privacy experts have warned that AI systems handling medical data must be monitored carefully, particularly as companies continue to improve and train their models using large volumes of user interactions. As Stanford researcher Dr Nigam Shah has noted, “AI systems in healthcare must be evaluated carefully in real-world settings because even small errors can have significant consequences for patients.”
The Rise Of AI Assistants In Healthcare
Amazon’s move reflects a wider trend in the technology sector where AI is rapidly becoming part of how healthcare services interact with patients.
For example, earlier this year OpenAI introduced a version of ChatGPT designed to answer health-related questions, while Anthropic launched its own healthcare-focused AI product.
Many technology companies believe AI assistants could help patients navigate complex healthcare systems, understand medical information and access care more quickly.
However, the expansion of these systems also raises questions about safety and reliability.
Safety Questions Surrounding Medical Chatbots
Recent research has highlighted potential risks when AI systems become involved in healthcare processes.
Security researchers at the AI safety firm Mindgard recently demonstrated that a medical chatbot used in a US telehealth pilot could be manipulated through a technique known as prompt injection. By exploiting weaknesses in the system’s internal instructions, the researchers were able to push the chatbot into generating misleading medical guidance and unsafe recommendations.
The experiment also showed that manipulated information could appear in structured medical summaries passed to clinicians as part of the consultation process.
Researchers warned that systems producing authoritative-looking medical information could influence clinical decision-making if safeguards are not robust.
Why Companies Are Still Pursuing AI Health Assistants
Despite these concerns, companies continue to invest heavily in AI tools designed to support healthcare services.
Healthcare systems in many countries are struggling with rising demand, administrative complexity and limited clinical capacity. Technology firms argue that AI assistants could help patients obtain basic guidance more quickly and reduce the burden on healthcare providers.
Amazon says Health AI is intended to support clinicians rather than replace them, helping patients understand information and navigate healthcare services more efficiently.
What Does This Mean For Your Business?
Amazon’s Health AI launch highlights how artificial intelligence is increasingly becoming a front door to complex services such as healthcare.
The move also places Amazon more directly in competition with other technology companies that are introducing healthcare-focused AI tools, including OpenAI’s health-oriented chatbot features and Anthropic’s Claude for Healthcare. As these systems improve, AI assistants could become a common way for people to seek initial medical guidance, interpret health information and navigate care services.
For businesses operating in sectors that depend on trust and accurate information, including healthcare providers, insurers, financial institutions and legal firms, the development illustrates both the opportunities and the risks of AI systems that interact directly with customers.
AI assistants may help simplify access to services and improve user experience. However, they also introduce new responsibilities around safety, transparency and oversight, particularly when systems provide advice or generate information that may influence important decisions.
As more organisations deploy AI to support customer interactions, ensuring that these systems remain reliable, secure and resistant to manipulation will become an increasingly important challenge.