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https://github.com/sourceduty/intelligence_benchmark

💡 Intelligence metrics and tests.
https://github.com/sourceduty/intelligence_benchmark

ai artificial-intelligence benchmark chatgpt chatgpt-ai custom-gpt custom-gpts customp gpt gpts gptstore intelligence metrics openai smart smart-benchmark smartness tests very-smart

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💡 Intelligence metrics and tests.

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README

        

![Intelligence Benchmark](https://github.com/user-attachments/assets/fbdb4911-39b6-4cf5-82c9-6fb5ad58d0ed)

> Intelligence metrics and tests.

#

[Intelligence Benchmark](https://chatgpt.com/g/g-izzqAJLFc-intelligence-benchmark) was developed to evaluate and assess various aspects of intelligence. It focuses on providing information about different intelligence metrics, such as IQ tests, cognitive abilities, and emotional intelligence. Additionally, it can conduct simulated intelligence tests, offering users a way to understand their cognitive strengths and areas for improvement. By simplifying complex concepts, this GPT aims to make the subject of intelligence more accessible to a wide audience.

The GPT also serves an educational purpose by explaining the nuances of different types of intelligence, such as logical-mathematical, linguistic, spatial, and interpersonal intelligence. It breaks down these concepts into clear, understandable terms, ensuring that users gain a solid grasp of what each type of intelligence entails. This approach helps demystify intelligence-related topics, making them easier to understand and apply in real-life scenarios.

Moreover, the GPT is designed to engage users in a straightforward and informative manner, guiding them through a step-by-step process to assess or explore various intelligence-related topics. It prioritizes accuracy and clarity, avoiding ambiguous or overly complex language. This makes it a valuable tool for anyone looking to deepen their understanding of intelligence, whether for personal development, academic purposes, or general interest.

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### Overestimating Intelligence

Overestimating intelligence often leads to misguided assumptions about an individual's overall capabilities or potential. Many people equate high intelligence with success, thinking that a high IQ or strong cognitive abilities guarantee success in all areas of life. However, intelligence is just one aspect of a person’s skill set. Emotional intelligence, creativity, perseverance, and social skills are equally important, if not more so, in determining one's ability to navigate life’s challenges. Overestimating the power of intelligence can result in overlooking these other critical attributes.

This overestimation can also cause individuals to place undue pressure on themselves or others, believing that intelligence alone should enable them to excel without much effort. This mindset often ignores the importance of hard work, dedication, and continuous learning, which are essential components of success. When intelligence is overvalued, it can lead to complacency, where one might rely too heavily on their cognitive abilities without developing the resilience and adaptability needed to thrive in a complex and ever-changing world.

Moreover, overestimating intelligence can perpetuate harmful stereotypes and contribute to inequality. People who are deemed less intelligent by societal standards may be unfairly judged and have fewer opportunities to prove their worth. This narrow focus on intelligence can marginalize those who possess other valuable qualities and lead to a lack of diversity in thought and problem-solving approaches. By recognizing that intelligence is not the sole determinant of success, we can foster a more inclusive environment that values a broader range of human abilities.

#
### Intelligence Metrics

Intelligence metrics refer to various methods and tools used to measure different aspects of intelligence. These metrics can be broadly categorized into several types, each assessing distinct components of cognitive ability.

#
### The Smartest Scientists

Determining who the smartest scientist on Earth is can be challenging due to the subjective and multifaceted nature of intelligence. Intelligence encompasses various aspects, such as problem-solving ability, creativity, and the capacity to acquire and apply knowledge. While some might consider well-known scientists like Albert Einstein, Stephen Hawking, or Marie Curie among the smartest due to their groundbreaking contributions, intelligence in science is not limited to these renowned figures. Many other scientists excel in their specialized fields, making significant contributions that may not always be in the public eye.

No single scientist can know more than everyone else, given the vast scope of scientific knowledge. Modern science has become highly specialized, with each field containing an extensive body of knowledge. The ever-expanding nature of scientific discovery makes it impossible for any individual to master all subjects comprehensively. Instead, scientists often focus on specific areas where they can delve deeply, contributing to the collective understanding of humanity. Science thrives on collaboration, with each scientist building upon the work of others to advance knowledge.

Estimates of the human brain's storage capacity range from 10 terabytes to over 1 petabyte, considering the number of neurons and synaptic connections. The smartest humans utilize this vast capacity not just for storing information but also for processing it rapidly and efficiently. These individuals form complex neural networks that enhance their memory retention, critical thinking, and problem-solving abilities. Their learning goes beyond mere memorization; they understand the underlying principles of their fields, allowing them to apply their knowledge creatively and innovatively. This depth of understanding and capacity for abstract thinking sets them apart, enabling them to tackle complex, multifaceted issues with unique insights and approaches.

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### Ruling Them All

No single scientist can learn every known science subject due to the sheer volume and complexity of knowledge across various fields. The number of scientific disciplines is vast, including physics, chemistry, biology, astronomy, geology, computer science, and many more, each with numerous subfields. To illustrate, if we consider there are at least 50 major scientific disciplines and each has 10 subfields, that amounts to 500 subfields. Assuming a scientist could spend an average of 5 years mastering each subfield, it would take 2,500 years to learn them all (500 subfields * 5 years per subfield). This estimation shows that even with a lifetime dedicated to learning, no one person could possibly master all the knowledge contained within every scientific discipline.

Furthermore, scientific knowledge is continually growing. Research articles, books, and new discoveries are published daily, expanding each field's body of knowledge. For example, the number of scientific papers published annually is estimated to be over 2.5 million. If a scientist could read and fully understand one paper every hour without breaks, they could only cover about 8,760 papers a year, barely scratching the surface of what is produced. This ongoing expansion of knowledge means that even if a scientist were somehow able to learn all existing subjects at one point in time, they would still face the insurmountable challenge of keeping up with the continuous influx of new information. Thus, the complexity and dynamic nature of science make it impossible for any individual to learn and master every known science subject.

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### AI Knowledge

Artificial Intelligence (AI), especially sophisticated models like those from organizations such as OpenAI, is trained on vast datasets covering a broad spectrum of topics, including various scientific disciplines. This allows AI to rapidly access, analyze, and generate responses across fields like biology, chemistry, physics, and mathematics. However, AI's knowledge is not truly exhaustive. Its understanding is limited by the data it was trained on, which means it can only draw on information available up to a certain point in time. AI doesn't "understand" concepts as humans do; it identifies and applies patterns based on the data it has processed.

Furthermore, AI lacks consciousness, intuition, and the ability to innovate like humans. While it can simulate expertise in multiple scientific fields and provide valuable support in research, calculations, and data analysis, its capabilities are ultimately constrained by its programming and the quality of its training data. Therefore, while AI can significantly enhance scientific inquiry, it does not possess a comprehensive understanding of all science fields and cannot replace human creativity and intuition in scientific exploration.

#
### Intelligence Naivety

![Teaching Doctors](https://github.com/user-attachments/assets/c247c6b6-43fc-4301-a4ed-986bdc8ba0d7)

Intelligence naivety refers to a lack of awareness or understanding of how intelligence and information can be manipulated or used against individuals or organizations. This naivety often involves underestimating the capabilities of others in gathering, analyzing, or exploiting information for various purposes. When people or organizations display intelligence naivety, they may believe their data, communications, or plans are secure without recognizing potential vulnerabilities. This can lead to a false sense of security, making them susceptible to espionage, data breaches, or other forms of exploitation. Common examples include neglecting cybersecurity measures, failing to encrypt sensitive information, or blindly trusting unverified sources of information.

Naivety security is about implementing protective measures to safeguard individuals or organizations that may lack awareness of potential risks. These measures aim to create security protocols and systems that compensate for a lack of sophistication or understanding of threats. Naivety security focuses on both preventing external threats, such as hackers or spies, and mitigating internal risks, such as accidental information leaks. Effective naivety security strategies include implementing strong cybersecurity systems, conducting regular security audits, and educating users about security risks and best practices. The goal is to minimize vulnerabilities and ensure that even those with limited knowledge of security threats can operate safely.

#
### Corporate Naivety

Corporate naivety of intelligence often manifests in very large corporations due to their complex hierarchies and entrenched bureaucracies. These companies may believe that the vast resources and market dominance they possess make them immune to significant disruption or failure. This overconfidence can lead to a dismissal of external threats, underestimation of competitors, or ignorance of rapidly changing market conditions. In many cases, executives may prioritize short-term profits and shareholder value over long-term strategic thinking, innovation, and adaptation. This myopic focus can leave large corporations vulnerable to shifts in consumer preferences, technological advancements, or unforeseen global events, ultimately threatening their long-term survival.

Furthermore, large corporations often suffer from siloed departments and poor internal communication, which can impede the flow of critical information and stifle innovation. Decisions are frequently made at the top without input from employees on the ground, who may have a better understanding of emerging trends and potential issues. This disconnect can result in a lack of responsiveness to market changes and a failure to capitalize on new opportunities. Additionally, a corporate culture that discourages dissenting opinions or innovative ideas can perpetuate outdated strategies and practices, reinforcing the naivety of intelligence within the organization. Without fostering an environment that values diverse perspectives and encourages continuous learning, large corporations risk becoming obsolete, as they fail to recognize and respond to the evolving business landscape.

#
### Top 100 Corporations Intelligence

The scale of the top 100 corporations is immense, spanning industries from technology and finance to consumer goods and energy. These companies often have billions in revenue, extensive global operations, and influence that reaches across borders. They employ hundreds of thousands, if not millions, of people worldwide. Their market capitalizations can dwarf the GDP of entire countries, reflecting their massive economic footprint. However, sheer size does not necessarily equate to operational efficiency or smart decision-making.

Despite their size, some of these corporations demonstrate significant inefficiencies and a lack of adaptability. Large organizational structures can lead to bureaucratic inertia, where decision-making is slow, and innovation stifled. These corporations may fail to recognize or respond quickly to market changes or disruptive technologies, clinging to outdated business models or practices. The complexity of managing vast operations and diverse product lines can further dilute focus and lead to strategic missteps. Moreover, corporate culture in these massive entities can sometimes prioritize risk aversion over agility, leading to what some might describe as a lack of "intelligence" in responding to evolving consumer needs or competitive threats.

Conversely, other top corporations exhibit high levels of intelligence, characterized by strategic foresight, innovation, and effective management. These companies invest heavily in research and development, continuously seeking ways to improve products, streamline operations, and enter new markets. They leverage data analytics to inform decision-making, predict trends, and personalize customer experiences. Such corporations often maintain flatter organizational structures that facilitate quicker decision-making and foster a culture of innovation. Their ability to intelligently navigate the complexities of a globalized economy, manage risks, and capitalize on emerging opportunities sets them apart, proving that while scale poses challenges, it also provides the resources to drive smart, sustainable growth.

#
### Active and Unintelligent Corporations

Lited below are companies that are still operational but have faced significant challenges or criticism that have impacted their reputations, operations, or financial performance. The issues range from legal and ethical concerns to strategic missteps and market challenges.


#### 25 Active and Unintelligent Corporations

```
1. Meta (formerly Facebook) - Criticized for handling user data and privacy concerns.
2. Twitter (now X) - Controversies over content moderation and leadership changes.
3. Boeing - Safety issues and production problems with the 737 Max.
4. Juul Labs - Legal and regulatory issues related to marketing to minors.
5. General Electric (GE) - Financial struggles and poor strategic decisions.
6. Uber - Management controversies, regulatory battles, and profitability challenges.
7. WeWork - Overvaluation, leadership issues, and a failed IPO.
8. McDonald's - Criticism over labor practices and health concerns.
9. Volkswagen - Emissions scandal ("Dieselgate") and reputation damage.
10. Monsanto (acquired by Bayer) - Public backlash over environmental and health concerns.
11. BP (British Petroleum) - Environmental disasters, most notably the Deepwater Horizon oil spill.
12. Equifax - Data breach compromising the personal information of millions.
13. Johnson & Johnson - Legal issues related to talc products and opioid crisis.
14. TikTok - Regulatory scrutiny and concerns over data security and privacy.
15. Amazon - Criticized for labor practices, environmental impact, and monopolistic behavior.
16. Robinhood - Controversial trading restrictions during the GameStop stock surge.
17. AT&T - Criticism over customer service and strategic missteps in acquisitions.
18. HSBC - Involvement in money laundering scandals and regulatory fines.
19. PG&E - Legal issues related to California wildfires and safety practices.
20. Ryanair - Criticized for customer service, labor disputes, and handling of the COVID-19 pandemic.
21. KPMG - Involved in multiple auditing scandals and regulatory investigations.
22. Credit Suisse - Financial losses due to involvement in various scandals and mismanagement.
23. Tesla - Controversies over autopilot safety, labor practices, and CEO behavior.
24. Wells Fargo - Scandals involving fake accounts and unethical practices.
25. Apple - Criticized for labor conditions in its supply chain and antitrust concerns.
```


Corporate stupidity, as demonstrated by the actions of these corporations, often manifests in a range of poor decisions, from ignoring regulatory requirements and ethical standards to mismanaging data and mishandling customer relationships. Companies like Boeing, Juul Labs, and Volkswagen have faced severe backlash due to neglecting safety standards, which led to catastrophic outcomes such as product recalls, health risks, and legal penalties. Financial institutions like Wells Fargo and Credit Suisse have shown how unethical practices and poor risk management can erode trust and lead to costly scandals. Tech giants such as Meta, Twitter, and TikTok have grappled with issues around data privacy and misinformation, reflecting a failure to anticipate the societal impact of their platforms. Even successful companies like Amazon and Tesla have faced criticism over labor practices and executive behavior, which highlights how corporate success does not exempt companies from scrutiny or ethical obligations. The recurring theme across these examples is a short-sighted focus on profits or growth at the expense of safety, ethics, and long-term sustainability, revealing a type of corporate stupidity that ultimately harms their reputation, finances, and consumer trust.

#
### Unintelligent Corporations IQ Rating

Measuring the intelligence or IQ of corporations is not straightforward, as it involves qualitative judgments about strategic decision-making, adaptability, ethical considerations, and operational efficiency. However, as a conceptual exercise, the table below uses a hypothetical rating system (1-10 scale) to reflect these companies' perceived intelligence, where 1 indicates poor decision-making and high levels of corporate stupidity, and 10 indicates high strategic intelligence and ethical management.


#### 25 Active and Unintelligent Corporations IQ Rating

```
| Corporation | General Intelligence (IQ) Rating |
|-----------------------|----------------------------------|
| Meta | 5 |
| Twitter (now X) | 4 |
| Boeing | 6 |
| Juul Labs | 3 |
| General Electric (GE) | 4 |
| Uber | 5 |
| WeWork | 2 |
| McDonald's | 6 |
| Volkswagen | 4 |
| Monsanto (Bayer) | 4 |
| BP | 5 |
| Equifax | 3 |
| Johnson & Johnson | 6 |
| TikTok | 5 |
| Amazon | 7 |
| Robinhood | 4 |
| AT&T | 5 |
| HSBC | 4 |
| PG&E | 3 |
| Ryanair | 5 |
| KPMG | 5 |
| Credit Suisse | 3 |
| Tesla | 6 |
| Wells Fargo | 3 |
| Apple | 8 |
```

These ratings are based on various factors such as the company’s ability to adapt to market changes, handle ethical concerns, maintain customer trust, innovate, and manage crises effectively. They reflect a general assessment rather than precise metrics.

#

> Alex: "*To learn the 50 or more existing modern science subjects, it would roughly take 2,500 years.*"

> "*I'm not quitting my job until I die.*"

#
### Related Links

[ChatGPT](https://github.com/sourceduty/ChatGPT)

***
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