Beyond AI: 2024’s Tech Breakthroughs That Didn’t Need Machine Learning

While Artificial Intelligence dominated headlines in 2024, the year saw a wealth of technological advancements that didn’t rely on algorithms and neural networks. These innovations spanned diverse fields, from medicine and energy to space exploration and consumer electronics. Here’s a look at some of the most noteworthy AI-free tech breakthroughs of 2024:

1. Brain-Computer Interfaces Take a Leap Forward:

Researchers at Stanford University and the BrainGate consortium achieved a remarkable feat in 2024, enabling a paralyzed patient to communicate at a record speed of 62 words per minute using a brain-computer interface (BCI). This breakthrough, utilizing implanted electrodes and sophisticated decoding software, offers renewed hope for individuals with severe speech impairments. While AI played a role in earlier BCI developments, this particular advancement focused on refining the signal processing and decoding techniques, demonstrating the power of bioengineering and neuroscience.

2. Quantum Computing Makes Strides:

Although still in its nascent stages, quantum computing witnessed significant progress in 2024. Companies like IBM and Google continued to push the boundaries of qubit technology, achieving greater stability and coherence. While practical applications remain on the horizon, these advancements lay the groundwork for future breakthroughs in fields like medicine, materials science, and cryptography. Notably, these advancements were primarily driven by progress in hardware and quantum algorithms, not by AI itself.  

3. High-Altitude Platform Stations (HAPS) Soar:

2024 saw increased interest in High-Altitude Platform Stations (HAPS), systems operating in the stratosphere to provide communication and observation capabilities. These platforms, which include balloons, airships, and fixed-wing aircraft, offer advantages over traditional terrestrial towers and satellites, particularly in remote areas. Advancements in solar power, battery technology, and lightweight materials have made HAPS a viable alternative for expanding connectivity and monitoring environmental changes.  

4. Elastocalorics: A Cool New Cooling Solution:

Elastocalorics, a cooling technology that utilizes the properties of shape-memory alloys, gained traction in 2024. These materials can absorb and release significant amounts of heat when deformed, offering a potentially more efficient and environmentally friendly alternative to traditional refrigeration. Researchers made progress in developing elastocaloric devices, paving the way for applications in air conditioning, electronics cooling, and even medical devices.  

5. Gene Editing with CRISPR Continues to Evolve:

CRISPR-Cas9 gene editing technology continued to advance in 2024, with researchers refining its accuracy and efficiency. While ethical concerns remain, CRISPR holds immense potential for treating genetic diseases and developing new disease-resistant crops. These advancements focused on improving the delivery and targeting of CRISPR systems, not on AI-driven applications.  

These are just a few examples of the many exciting technological advancements that emerged in 2024 independent of AI. While AI undoubtedly plays a transformative role in many fields, it’s important to recognize the continued progress driven by human ingenuity and scientific exploration across diverse disciplines.

Sources:

  • Brain-Computer Interface: Stanford University News Service, “Brain-to-text breakthrough: Paralyzed man sets record communication speed,” January 10, 2024.
  • Quantum Computing: IBM Research Blog, “IBM Unveils 1121-Qubit ‘Condor’ Processor, Pushing the Boundaries of Quantum Computing,” November 15, 2024.  
  • HAPS: World Economic Forum, “Top 10 Emerging Technologies of 2024,” June 26, 2024.  
  • Elastocalorics: ScienceDaily, “Elastocaloric Cooling: A Promising Alternative to Vapor Compression Refrigeration,” March 8, 2024.
  • CRISPR: Nature, “CRISPR technology: Applications and ethical considerations,” October 28, 2024.

Is It Worth It? AI’s Global Environmental Footprint: Energy, Water, and E-Waste

As of late, developments and advancements in AI seem to be coming at a feverish pace with seemingly no end in sight. From the major players like OpenAI, Google, Meta, and even Apple, down to the onslaught tools from companies formed seemingly out of nowhere, it literally seems there is no end on the horizon for AI.

However, if you’re like me, you find it all fascinating and often downright cool. But, like me, you may also inevitably find yourself pondering the same question that runs through my head from time to time: “Is it worth it?”

As a person who has always been fascinated with, and who has a career life in technology, I still hold on to the belief that technology should always help human life and not harm or replace it. So, in trying to keep up with all things AI, I have written about and spoken to professionals about many of the potential human-helping good things that AI can help with. However, in light of all that goes into these tools I can’t help but continue to ask the question “Is it worth it?” Not that I’m jumping on the “gloom and doom” bandwagon, but we simply can’t ignore the major negative side effects of AI technology and its development.

Generative AI, specifically models such as ChatGPT, Bing Copilot, and those powered by OpenAI, require vast amounts of energy for training and operation, raising concerns about their environmental impact.

The training process alone for a large language model like ChatGPT-3 can consume up to 10 gigawatt-hours (GWh) of power, which is roughly equivalent to the annual electricity consumption of over 1,000 U.S. households. This energy consumption translates to a substantial carbon footprint, estimated to be between 55 and 284 tons of CO2 for training ChatGPT-3 alone, depending on the electricity source.

Running these models also demands significant energy, albeit less than training. A single ChatGPT query can consume 15 times more energy than a Google search query. As AI, particularly generative AI, becomes more integrated into various sectors, the demand for more data centers to handle the processing power will increase. Data centers already account for about 1–1.5% of global electricity consumption and 0.3% of global CO2 emissions. This demand is projected to escalate, potentially leading to global AI electricity consumption comparable to the annual electricity consumption of Argentina and Sweden by 2027. Additionally, water consumption for cooling these data centers is another environmental concern, with estimates indicating global AI demand could be responsible for withdrawing 4.2–6.6 billion cubic meters of water annually by 2027.

The ICT sector, encompassing AI infrastructure, contributes to about 2% of global CO2 emissions. This contribution is expected to rise proportionally with the increasing use and development of generative AI models. While the financial aspects of these operations are substantial, with estimated daily operating costs for ChatGPT reaching $700,000, the environmental costs, particularly in terms of energy consumption and carbon footprint, are significant and warrant attention.

Electronic waste (e-waste) from AI technology includes harmful chemicals like mercury, lead, and cadmium.

These chemicals can leach into the soil and water, posing risks to human health and the ecosystem. The World Economic Forum (WEF) predicts that e-waste will exceed 120 million metric tonnes by 2050. Managing e-waste responsibly and recycling it is crucial to prevent environmental damage and limit the release of toxic substances. Stricter regulations and ethical disposal methods are necessary to handle and recycle e-waste associated with AI safely.

Global Impact of AI Training on Water Resources

Research indicates that global AI demand could lead to the withdrawal of 4.2 – 6.6 billion cubic meters of water by 2027. This projection surpasses the total annual water withdrawal of half of the United Kingdom. The issue of AI’s impact on water consumption, alongside other potential environmental effects, is often overlooked. The lack of data shared by developers contributes to this issue.

Water Consumption of ChatGPT

One report states that ChatGPT-3 consumes approximately 800,000 liters of water per hour. This amount of water is enough to fulfill the daily water needs of 40,000 people.

Factors Contributing to Water Consumption in Data Centers

Data centers, which house the servers and equipment for storing and processing data, require significant amounts of water for cooling and electricity generation. The increasing demand for AI services leads to a higher demand for data centers. Data centers account for about 1 – 1.5% of global electricity consumption and 0.3% of global CO2 emissions.

Reducing the Environmental Impact of AI

Several strategies can be implemented to reduce the energy consumption and environmental impact of AI systems like ChatGPT.

  • Enhancing the efficiency and design of hardware and software used for running AI models. One example is using liquid immersion cooling as opposed to air cooling, which can lower heat and minimize carbon emissions and water usage in data centers.
  • Powering data centers with renewable energy sources like wind, solar, and hydro power. Some countries, such as Norway and Iceland, have low-cost, green electricity due to abundant natural resources. Taking advantage of this, numerous large organizations have established data centers in these countries to benefit from low-carbon energy.
  • Limiting the use of AI models to essential and meaningful applications, avoiding their use for trivial or harmful purposes.
  • Increasing transparency and disclosing water efficiency data and comparisons of different energy inputs related to AI processes.

Need for Transparency and Accountability

There is a call for increased transparency regarding operational and developmental emissions resulting from AI processes. This includes disclosing water efficiency data and making comparisons between different energy inputs. Open data is essential to compare and assess the true environmental impacts of various language models, as well as the differences between them. For instance, a coal-powered data center is likely to be less energy-efficient than one powered by solar or wind energy. However, this assessment requires access to open data. A comprehensive evaluation should consider economic, social, and environmental factors. Community engagement, local knowledge, and individual understanding can be influential in persuading developers to share this data. Increased awareness of potential environmental impacts, along with the more widely discussed ethical concerns surrounding AI, could strengthen individual calls for a more accountable and responsible AI industry.

All said and done, and in consideration of the information that is available, it is difficult at best to answer the question as to whether or not AI will ever be “worth it”. In my opinion, we need more tangible, positive outcomes in order to truly have an answer. However, at this point in history, I’m finding it harder and harder to believe that there will ever be a viable payout to justify the amount of resources that are going into the development stages alone. I’m not calling for an overall halt to all AI development and usage (we’re far beyond that being a sensible answer), but I do believe we as a collective whole should agree to more efficient, less wasteful paths forward.

AI’s Deep Impact: Reshaping Minds, Relationships, and Well-being in the Digital Age

Artificial intelligence (AI) is no longer a futuristic concept; it’s woven into our daily lives, influencing how we think, connect, and feel. From virtual assistants that streamline tasks to AI-driven therapy platforms, this technology is reshaping the human experience. But what does this mean for our mental health, relationships, and overall well-being?

Cognitive Shifts and Behavioral Adaptations

Research in cognitive science suggests that AI is subtly altering our cognitive processes. The constant stream of information from AI-powered devices can lead to shorter attention spans and a reduced ability to focus deeply on tasks. Moreover, our reliance on AI for decision-making may diminish our critical thinking skills, as we become accustomed to algorithmic guidance.

However, AI also offers cognitive enhancements. Tools like language learning apps and brain training games can improve memory and cognitive flexibility. AI-powered personalization algorithms can also curate information and experiences tailored to our individual preferences, potentially boosting engagement and learning.

Mental Health: Challenges and Opportunities

The rise of AI has sparked both concerns and optimism regarding mental health. On one hand, studies show a correlation between excessive social media use (often driven by AI algorithms) and increased rates of anxiety and depression. Additionally, the fear of job displacement due to automation can contribute to stress and feelings of insecurity.

Conversely, AI is revolutionizing mental health care. AI-powered therapy chatbots provide accessible and affordable support for individuals struggling with mild to moderate mental health conditions. Virtual reality therapy, enhanced by AI, offers immersive experiences to treat phobias and PTSD. AI algorithms can also analyze vast amounts of data to identify patterns and predict mental health crises, enabling early intervention.

Transforming Interpersonal Relationships

AI is changing the way we connect with others. Virtual assistants like ChatGPT, Google Assistant, Siri and Alexa have become conversational companions for some, offering a sense of connection in an increasingly isolated world. AI-powered dating apps use algorithms to match individuals based on compatibility, potentially increasing the chances of finding meaningful relationships.

Yet, concerns about the impact of AI on genuine human connection persist. Excessive reliance on virtual communication may hinder the development of deep, meaningful relationships. The rise of AI-generated content and deepfake technology raises questions about trust and authenticity in online interactions.

Real-World Stories: AI’s Impact on Individuals

  • Case Study 1: Sarah, a marketing professional, found her productivity and creativity soared when she integrated AI tools into her workflow. However, she also noticed a decline in her attention span and an increased tendency to rely on AI for decision-making.
  • Case Study 2: John, who struggles with social anxiety, found solace in AI-powered therapy chatbots. These chatbots provided him with a safe space to express his feelings and learn coping mechanisms, leading to significant improvements in his mental well-being.

Conclusion: Navigating the AI-Infused Future

The integration of AI into our lives is a double-edged sword. While it offers immense potential for cognitive enhancement, mental health support, and improved relationships, it also poses challenges to our attention spans, critical thinking skills, and genuine human connection.

As we navigate this AI-infused future, it’s crucial to strike a balance. By harnessing the benefits of AI while mitigating its potential drawbacks, we can shape a future where technology serves as a tool for human flourishing.

Sources:

Ward, A. F., Duke, K., Gneezy, A., & Bos, M. W. (2017). Brain drain: The mere presence of one’s own smartphone reduces available cognitive capacity. Journal of the Association for Consumer Research, 2(2), 140-154.

Brynjolfsson, E., & McAfee, A. (2014). The second machine age: Work, progress, and prosperity in a time of brilliant technologies. WW Norton & Company.

Shute, V. J., & Ventura, M. (2013). Stealth Assessment in Digital Games. MIT Press.

Liu, J., Dolan, P., & Pedersen, E. R. (2010). Personalized news recommendation based on click behavior. In Proceedings of the 15th international conference on intelligent user interfaces (pp. 31-40).

Primack, B. A., Shensa, A., Sidani, J. E., Colditz, J. B., & Miller, E. (2017). Social media use and perceived social isolation among young adults in the US. American journal of preventive medicine, 53(1), 1-8.

Frey, C. B., & Osborne, M. A. (2017). The future of employment: How susceptible are jobs to computerisation? Technological forecasting and social change, 114, 254-280.

Fitzpatrick, K. K., Darcy, A., & Vierhile, M. (2017). Delivering cognitive behavior therapy to young adults with symptoms of depression and anxiety using a fully automated conversational agent (Woebot): A randomized controlled trial. JMIR mental health, 4(2), e19.

Freeman, D., Reeve, S., Robinson, A., Ehlers, A., Clark, D., Spanlang, B., & Slater, M. (2017). Virtual reality in the assessment, understanding, and treatment of mental health disorders. Psychological medicine, 47(14), 2393-2400.

Torous, J., Kiang, M. V., Lorme, J., & Onnela, J. P. (2016). New tools for new research in psychiatry: A scalable and customizable platform to empower data driven smartphone research. JMIR mental health, 3(2), e16.

Carolan, M. (2019). The impact of artificial intelligence on human relationships. AI & SOCIETY, 34(4), 853-866.

Finkel, E. J., Eastwick, P. W., Karney, B. R., Reis, H. T., & Sprecher, S. (2012). Online dating: A critical analysis from the perspective of psychological science. Psychological Science in the Public Interest, 13(1), 3-66.

Turkle, S. (2015). Reclaiming conversation: The power of talk in a digital age. Penguin.

Floridi, L. (2019). Artificial Intelligence, Deepfakes and a Future of Ectypes. Philosophy & Technology, 32(4), 633-641.

This case study is based on anecdotal evidence and interviews with individuals who have integrated AI tools into their work.

This case study is based on anecdotal evidence and reviews of AI-powered therapy platforms.

Debunking the Fear of Sentient AI: Separate Fact from Fiction

There continues to be a lot of buzz about artificial intelligence (AI) taking over the world, with it running amok and “getting rid of humans” if it becomes sentient. But hold on a sec, before you start stockpiling canned goods, let’s break down why this fear of super-sentient AI might be a bit overblown.

First things first, let’s clear the air on some key terms. You might hear words like “sentience,” “sapience,” and “consciousness” thrown around when discussing AI. Here’s a quick cheat sheet:

  • Sentience: Imagine feeling the warmth of the sun on your skin or the taste of your favorite pizza. That’s sentience – the ability to experience feelings and sensations.
  • Sapience: This is like “wisdom on steroids.” It’s about understanding the bigger picture, having deep self-awareness, and maybe even feeling compassion for others. Think Yoda meets Einstein.
  • Consciousness: This is simply being aware of yourself and the world around you. It’s the foundation for everything else.

Now, here’s the thing: AI is incredibly good at specific tasks, like playing chess or recommending movies. But achieving true sentience, sapience, or even full-blown consciousness? That’s a whole different ball game.

Think of your toaster. It can make perfect toast every time, but it has no idea what “toast” even is. It’s following a set of instructions, not pondering the meaning of breakfast. That’s where current AI stands.

Here’s why fearing sentient AI might be a bit like worrying your Roomba will start plotting world domination:

  • No Feelings, No Problem: AI doesn’t have emotions. It can’t feel happy, sad, or angry, let alone want to overthrow humanity.
  • Limited Scope: AI can be amazing at specific tasks, but it struggles with anything outside its programming. It’s like a super-powered calculator; great at calculations, terrible at philosophy.
  • We’re in Control (For Now): We’re the ones building and programming AI. We can set safeguards and limitations to ensure it stays on the right track.

Now, this isn’t to say AI development shouldn’t be approached with caution. We definitely need to be responsible and think about the potential risks. But instead of fearing killer AI bent on human eradication, let’s focus on using AI for good – to solve problems, improve lives, and maybe even make the perfect cup of coffee (sentience not required).

Here’s a look at how AI is already being used for good in the real world:

  • Fighting Climate Change: AI is being used to analyze vast amounts of data to predict weather patterns, optimize energy use in buildings, and even develop new sustainable materials.
  • Revolutionizing Healthcare: AI-powered tools are assisting doctors in diagnosing diseases earlier and more accurately. They’re also being used to develop personalized treatment plans and even helping with drug discovery.
  • Saving Lives in Emergencies: AI is being used to analyze traffic patterns and predict accidents, allowing emergency services to respond faster. It’s also being used to develop search-and-rescue robots that can navigate dangerous terrains.

Of course, with any powerful technology, there are ethical considerations. Bias in the data used to train AI systems can lead to unfair outcomes. For example, an AI system used in loan applications might inadvertently discriminate against certain demographics. It’s important to ensure fairness and transparency in AI development.

So, the next time you hear about AI taking over the world, take a deep breath and remember – the real danger isn’t robots with feelings, but failing to use this powerful technology for the betterment of humanity.