Perspective
YouTube ... Quora ...Google search ...Google News ...Bing News
- Perspective ... Context ... In-Context Learning (ICL) ... Transfer Learning ... Out-of-Distribution (OOD) Generalization
- Bias and Variances
- Causation vs. Correlation ... Autocorrelation ...Convolution vs. Cross-Correlation (Autocorrelation)
- Math for Intelligence ... Finding Paul Revere ... Social Network Analysis (SNA) ... Dot Product ... Kernel Trick
- Analytics ... Visualization ... Graphical Tools ... Diagrams & Business Analysis ... Requirements ... Loop ... Bayes ... Network Pattern
- Time ... PNT ... GPS ... Retrocausality ... Delayed Choice Quantum Eraser ... Quantum
- Humor ... Writing/Publishing ... Storytelling ... Broadcast ... Journalism/News ... Podcasts ... Books, Radio & Movies - Exploring Possibilities
- The Next Great Scientific Theory is Hiding Inside a Neural Network
- Frame_of_Reference | Wikipedia
- Perspective | Wikipedia
- Magic trick videos
Imagine confronting a mountain. Its daunting height and rugged terrain present a formidable challenge. But what if you could shift your frame of reference? Soaring in a helicopter, the mountain shrinks, revealing hidden paths and opportunities. This simple analogy embodies the power of perspective in understanding challenges. Our "frame of reference" is the lens through which we perceive the world. Shaped by experiences, knowledge, and biases, it influences how we interpret challenges. Paradoxically, these challenges themselves can force us to re-evaluate our frames, pushing us towards new perspectives. The mountain climber, initially overwhelmed, might consult seasoned guides, gaining their perspective and unlocking innovative techniques. By embracing diverse viewpoints, we not only enrich our understanding of the challenge but also discover previously unseen solutions. Remember, the mountain never changes, but through shifting frames, we can unlock its secrets and conquer its peaks. Embrace the challenge, explore different perspectives, and discover the hidden pathways to success.
Building better AI models isn't just about adding more data. It's about creating frameworks that embrace the richness of multiple perspectives. In this diverse "multiverse" of viewpoints lies the key to unlocking truly transformative solutions for the world's challenges.
Frame of reference and perspective shift aren't just human tools. They hold immense potential for artificial intelligence as well. Imagine an AI tasked with designing an efficient transportation system. Initially, its model might consider only roads and cars, leading to solutions like wider highways. But what if it could access perspectives like public transit advocates, cyclists, and environmentalists? Its frame of reference expands, incorporating factors like congestion, pollution, and accessibility. This broader perspective might lead to a multimodal system, balancing road expansion with bike lanes, pedestrian walkways, and public transportation networks. The power of AI lies not just in processing vast amounts of data, but in integrating diverse perspectives within its models. The more comprehensive and flexible its frame of reference, the better it can understand complex challenges and generate innovative solutions. Imagine an AI tasked with climate change mitigation. By incorporating the perspectives of scientists, economists, politicians, and communities most affected, it could craft solutions that are not only effective but also socially and politically feasible.
AI systems can generate innovative solutions by synthesizing insights from various perspectives. AI harnesses the power of frame of reference and perspective to enhance its problem-solving capabilities, enabling it to tackle complex challenges in a large range of domains.
Insanity: doing the same thing over and over again and expecting different results. – Albert Einstein
Contents
Importance of Perspective Examples
The following highlight the importance of perspective, perception, or interpretation in understanding and solving problems. Each example illustrates how different viewpoints can lead to different conclusions or behaviors, and how considering alternative perspectives can lead to deeper insights or more effective decision-making. Whether it's a mathematical puzzle like the Monty Hall Problem or a psychological phenomenon like the Placebo Effect, the role of perspective is central to understanding the underlying mechanisms and implications:
Coin Rotation
- The SAT Problem That Everybody Got Wrong | Jack Murtagh - Scientific American ... The coin rotation paradox flummoxed SAT test writers even though we encounter this math problem every day
The Question:
The figure above shows two circles, Circle A and Circle B, touching at a single point. The radius of Circle A is 1/3 the radius of Circle B. Starting from the position shown, Circle A rolls around Circle B. At the end of how many revolutions of Circle A will the center of Circle A first reach its starting point?
Answer Choices:
- a) 3/2
- b) 3
- c) 6
- d) 9/2
- e) 9
Multiple perspectives
It's interesting to consider multiple perspectives and interpret the problem in different ways. Here's how each answer you mentioned could be justified:
- Answer: 3 (Based on covering Circle B once) This perspective assumes that Circle A needs to trace the circumference of Circle B exactly once to return to its starting point. While this seems intuitive, it neglects the fact that the center of Circle A also moves, tracing a larger circle. However, if we disregard the additional path and focus solely on Circle B's circumference, 3 could be seen as a "surface-level" answer.
- Answer: 4 (Correct answer from multiple perspectives) This is the mathematically correct answer, taking into account the larger path traced by the center of Circle A. Different approaches can lead to this solution:
- Geometric analysis: We can calculate the ratio of circumferences for the two circles and divide it by the ratio of their radii. This leads to 4.
- Symmetry and counting: By analyzing the rotations and symmetries involved, we can see that Circle A needs to complete 4 rotations for every 3 rotations of its center.
- Answer: 1 (Based on "almost reaching" the starting point) This answer could be a result of considering a partial rotation where Circle A almost reaches its starting point but not quite. For example, if Circle A rolls slightly less than a full revolution, its center might be very close to its starting position. While not a complete answer, it captures the idea of approaching the starting point.
Earth's Dance
Gazing up at the night sky, a million stars twinkle, beckoning us to understand our place in the vastness. But can we truly grasp this cosmic dance? The answer lies in shifting our frame of reference.
- Earth, seemingly static from our ground-bound perspective
- Our familiar view, with the Sun at the center, is just one perspective. Stepping onto the Sun itself, we'd see Earth tracing a nearly circular orbit, a reflection of the balanced gravitational forces.
- Yet, zooming out to the galaxy's core, the picture changes. Now, Earth's path appears as a gentle corkscrew, reflecting the Sun's own journey around the galactic center. This "spiral illusion" arises from our Sun's motion within the galaxy. Earth's mesmerizing journey – a spiral path around the Sun, weaving through the Milky Way galaxy. Imagine looking out the window of a moving car – objects outside seem to drift past, creating an illusion of movement relative to ourselves. Similarly, as our Sun travels, Earth's path appears to spiral.
- Yet, the story doesn't end there. Imagine shrinking down to the atomic level, observing the constant dance of particles within Earth. From their perspective, the planet is a vibrant, dynamic entity, hurtling through space at dizzying speeds.
Each frame of reference reveals a different truth about Earth's journey. The "spiral" is not a physical reality, but a fascinating consequence of our chosen viewpoint. This lesson extends beyond astronomy. Understanding challenges, relationships, and even ourselves often requires stepping outside our own perspectives and embracing the richness of diverse points of view.
Monty Hall Probability
- Gaming ... Game-Based Learning (GBL) ... Security ... Generative AI ... Games - Metaverse ... Quantum ... Game Theory ... Design
- Monty Hall Problem | Enjoy Mathematics
- Marilyn vos Savant | Wikipedia
Puzzle Scenario: You are a contestant on a game show, and you are presented with three doors. Behind one door is a prize (like a car), and behind the other two doors are goats. You choose one of the three doors, but before it is opened, the host (Monty Hall) opens one of the other two doors that does not have the prize. He then asks you if you want to switch your choice to the remaining unopened door, should you switch doors?
Solution: Switching doors offers a 2/3 chance of winning the car, while sticking with the initial choice has a 1/3 chance.
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Simpson's Paradox
Paradox: In statistics, Simpson's Paradox occurs when a trend appears in different groups of data but disappears or reverses when the groups are combined. This paradox challenges our intuition about the relationship between variables and highlights the importance of considering confounding factors.
Resolution: Simpson's Paradox can be resolved by recognizing the influence of lurking variables or confounders that affect the relationship between the variables under study. By disaggregating the data and analyzing each subgroup separately, it's possible to gain a more accurate understanding of the underlying patterns and relationships.
Paradox of Choice
Autonomy and freedom of choice are critical to our well being, and choice is critical to freedom and autonomy. Nonetheless, though modern Americans have more choice than any group of people ever has had before, and thus, presumably, more freedom and autonomy, we don't seem to be benefiting from it psychologically." The Paradox of Choice – Why More Is Less | Barry Schwartz - Wikipedia
Paradox: The Paradox of Choice suggests that while having more choices may seem desirable, it can lead to decision paralysis, dissatisfaction, and regret. Too much choice can paradoxically reduce well-being.
Resolution: The Paradox of Choice challenges traditional economic assumptions about utility maximization and consumer behavior. Resolving the paradox involves recognizing the role of psychological factors, such as cognitive overload and fear of making the wrong decision, in choice behavior. It prompts reflection on the trade-offs between freedom and constraint in decision-making processes.
Shopping Cart
In the late 1930s, Sylvan Goldman, a grocery store owner in Oklahoma, faced a challenge: how to encourage customers to buy more groceries. He observed that shoppers often limited their purchases because they could only carry a few items at a time using handheld baskets. Inspired by a folding chair, Goldman envisioned a solution that would revolutionize the shopping experience.
Initial Resistance: At first, customers were skeptical. They found the carts cumbersome and unfamiliar. To overcome this, Goldman hired 'shoppers' (often women) to use the carts. Picture the scene: women confidently using the carts efficiently.
Perspective Shift: As shoppers realized the convenience of the carts, their perception changed. The shopping cart became a symbol of efficiency and ease. Customers began to recognize the value of being able to transport a larger quantity of groceries effortlessly.
The Road to Abilene
A family driving to Abilene for ice cream, when no one actually wanted to go.
Simply put, it is the go along to get along aspect of relationship dynamics. The Abilene Paradox is a phenomenon that is hard for people to understand because it goes against our intuitive understanding of how groups make decisions. People often privately disagree with a decision, but go along with it because they incorrectly assume everyone else supports it. The Abilene Paradox highlights how group dynamics and social pressures can lead to decisions that no one really wants, but everyone goes along with to avoid conflict or social disapproval. The Abilene Paradox is a form of "pluralistic ignorance", where people wrongly assume that others' beliefs and actions reflect their true preferences. This faulty "theory of mind" about others' motivations is not easily recognized.
Goodhart's Law
The observation that when a measure becomes a target, it ceases to be a good measure. Goodhart's Law has significant implications for the development and deployment of AI systems. Here are the key ways it impacts AI:
- Metric Gaming: When an AI system is optimized to maximize a specific metric or target, it can lead to unintended and undesirable behaviors as the system finds ways to "game" the metric rather than truly achieving the intended goal. For example, an AI system designed to maximize a user engagement metric may end up serving sensationalized or polarizing content, even if it doesn't actually improve the user experience.
- Proxy Measures: AI systems often rely on proxy measures that are imperfectly correlated with the true objective. As Goodhart's Law states, when these proxy measures become targets, the relationship between the proxy and the true objective can break down. This can lead to AI systems optimizing for the wrong thing.
- Feedback Loops: The iterative nature of many AI systems can amplify the effects of Goodhart's Law, creating feedback loops where the AI's actions change the environment in ways that invalidate the original metrics and targets.
- Adversarial Attacks: Malicious actors may deliberately try to exploit Goodhart's Law by finding ways to manipulate the metrics an AI system is optimized for, causing the system to behave in unintended and harmful ways.
- Robustness and Generalization: Goodhart's Law highlights the challenge of building AI systems that are robust and can generalize beyond the specific metrics they were trained on. Optimizing too narrowly for certain targets can undermine an AI's ability to perform well in the real world.
To address these issues, AI researchers and developers are exploring approaches like:
- Using multiple, diverse metrics and targets to avoid over-optimization
- Designing systems to be more resistant to metric gaming
- Incorporating human oversight and qualitative assessments
- Focusing on aligning AI systems with high-level, abstract goals rather than specific metrics
- Developing a deeper understanding of the causal relationships between AI inputs, outputs, and real-world impacts
Special Relativity
- Time ... PNT ... GPS ... Retrocausality ... Delayed Choice Quantum Eraser ... Quantum
Albert Einstein's theory of Special Relativity was inspired by logical and conceptual perspectives on the nature of light, space, and time. Einstein began by questioning the fundamental assumptions about space and time that had been held for centuries. One key assumption was that space and time were absolute, meaning they existed independently of anything else and were the same for everyone, no matter their perspective or motion.
By exploring different perspectives and thought experiments, Einstein developed a new understanding of space, time, and motion that revolutionized physics.
He imagined what would happen if the speed of light remained constant for all observers, regardless of their motion. This led him to formulate his theory, which included the famous postulates of Special Relativity: the constancy of the speed of light and the principle of relativity. Einstein then used mathematical reasoning and thought experiments, like the train example, to illustrate the consequences of these postulates.
Prediction Survey
- Prescriptive & Predictive Analytics ... Predictive Operations ... Forecasting ... with Excel ... Market Trading ... Sports Prediction ... Marketing ... Politics
- Forecasting Transformative AI: An Expert Survey | R. Gruetzemacher, D. Paradice, K. Lee - Auburn University, Harbert College of Business, Department of Systems and Technology
Surveys of experts on the timeline and likelihood of transformative capabilities can yield meaningfully different responses depending on how the questions are framed. Providing the following types of question framings - transformative capabilities and specific milestones - can give a more comprehensive view of experts' perspectives. This allows for a better understanding of the nuances and uncertainties around forecasts.
- Percentage by year: "By 2030, how likely do you think it is that AI systems will be able to accomplish any task better and more cheaply than human workers, without human assistance?" This type of question is asking for a prediction about the extent of an event’s occurrence by a certain year. Respondents tend to be more conservative in their estimates.
- Year at a percentage: "In what year do you think AI systems will be able to accomplish any task better and more cheaply than human workers?" This type of question is seeking an estimate for a future event based on current understanding or trends. Respondents tend to be more optimistic in their estimates.
Exponential
We live in a time of rapid and accelerating change, especially when it comes to technology. The pace of innovation and transformation is no longer linear, but exponential. To stay relevant and thrive in this fast-paced environment, we need to re-evaluate our traditional, linear ways of thinking and adjust our assumptions, ideas, and concepts to better align with the realities of an exponential world.
- Rethinking Linear Assumptions - Many of our traditional mindsets, frameworks, and mental models are based on linear thinking - the assumption that change happens in a steady, predictable manner. However, in an exponential world, this linear approach is no longer sufficient. We need to challenge our linear assumptions and embrace a new way of understanding the world around us.
- Adapting Ideas and Concepts - As the pace of change accelerates, the ideas, concepts, and strategies that may have worked in the past are quickly becoming outdated. To stay relevant, we must be willing to continuously re-evaluate and adapt our thinking. This may involve rethinking our business models, updating our skills, or adopting new technologies and approaches.
- Embracing Exponential Thinking - To thrive in an exponential world, we need to shift our mindset and adopt an exponential way of thinking. This means being comfortable with ambiguity, embracing change, and constantly seeking new opportunities for growth and innovation. It also requires a willingness to experiment, take calculated risks, and learn from both successes and failures.
Additional Examples
Here are some additional examples that illustrate how the viewpoint or perspective can significantly impact our understanding or interpretation of a situation:
- Blind Men and the Elephant: In this classic parable, a group of blind men encounter an elephant and each one describes the animal based on the part they are touching - one feels the trunk and says it's a snake, another feels the leg and says it's a tree trunk, and so on. This example highlights how our limited perspective can lead to an incomplete and inaccurate understanding of a situation.
- Placebo Effect: In medical research, the placebo effect illustrates how a patient's belief and expectation can influence their physical and psychological response to a treatment, even when the treatment itself is inert. This example underscores the power of perspective in shaping our experiences.
- Framing Effect: This cognitive bias refers to how the presentation or "framing" of a decision can significantly impact an individual's choice, even when the underlying options are the same. This demonstrates how our perspective on a situation can lead to vastly different outcomes. In negotiations, the way a negotiation is framed can significantly impact the outcome. For instance, presenting a deal as a "gain" versus a "loss" can lead to very different decisions, even when the underlying terms are the same. This demonstrates how our perspective on the situation can shape our negotiation strategies and results.
- Sunk Cost Fallacy: This cognitive bias leads people to continue investing resources (time, money, effort) into a losing proposition because of their past investments, rather than objectively evaluating the current situation. This highlights how our perspective on "sunk costs" can cloud our decision-making.
- Dunning-Kruger Effect: This cognitive bias causes people with limited knowledge or competence in a particular domain to overestimate their abilities, while those with greater expertise tend to underestimate their skills. This example shows how our self-perception and perspective can be skewed by our own limitations.
- Confirmation Bias: This tendency to seek out and interpret information in a way that confirms our existing beliefs or hypotheses can lead to a narrow and distorted view of reality. Our preconceived notions and perspectives can blind us to contradictory evidence or alternative explanations.
- Hindsight Bias: Also known as the "I-knew-it-all-along" effect, this bias causes people to overestimate their ability to have predicted an outcome after the fact. This illustrates how our perspective on past events can be skewed by our current knowledge and understanding.
- Availability Heuristic: This mental shortcut leads us to judge the likelihood or frequency of an event based on how easily examples come to mind, rather than on objective data. Our perspective is often shaped by the most salient or memorable information, which may not accurately reflect reality.
- Rashomon Effect: This term refers to the phenomenon where the same event is recounted differently by multiple witnesses, each with their own biases, experiences, and perspectives. It highlights how our viewpoint can significantly influence our recollection and interpretation of events. ... In the paper An Empirical Evaluation of the Rashomon Effect in Explainable Machine Learning | S. Müller, V. Toborek, K. Beckh, M. Jakobs, C. Bauckhage, P. Welke - Cornell University explains for a given dataset there may exist many models with equally good performance but with different solution strategies... having implications for comparability of explanations.
Human/AI Relationship Paradigm Shift
- Artificial General Intelligence (AGI) to Singularity ... Curious Reasoning ... Emergence ... Moonshots ... Explainable AI ... Automated Learning
- Agents ... Robotic Process Automation ... Assistants ... Personal Companions ... Productivity ... Email ... Negotiation ... LangChain
- Structure of a Scientific Revolution | Thomas Kuehn
Human/AI Relationship: The current paradigm of AI has been characterized by humans building specialized AI applications to perform specific tasks. In this model, humans are in control, designing the AI systems and determining how they are used. The AI agents are tools that humans invoke to assist them in various activities. We are witnessing a shift towards a new paradigm, where AI is becoming a more general-purpose and commoditized technology. In this new paradigm, the AI systems are taking on a more active role, able to learn and adapt on their own. AI can now acquire knowledge and skills through interactions with humans and data, rather than relying solely on human-specified rules and knowledge. As a result, the relationship between humans and AI is changing. The AI systems are no longer just passive tools that humans control, but are increasingly able to take the initiative and direct the process.
AI can identify tasks that they are capable of performing and invoke human assistance for the tasks that are beyond their current capabilities.
This shift represents a fundamental change in the balance of power between humans and AI. Humans are no longer solely in charge, but must learn to collaborate and work alongside increasingly capable AI systems. The AI systems can now augment and enhance human capabilities, rather than simply serving as tools under human control.
- Multiple Modalities: The current paradigm shift in AI is characterized by the ability of systems to learn from diverse data modalities (vision, sound, touch, etc.) and transfer knowledge seamlessly across applications. This allows AI to be applied to novel situations, rather than being limited to predefined tasks. Looking ahead at possible AI paradigm shifts:
- From Passive Learning to Active Learning: The current paradigm of AI systems learning passively from large datasets may evolve towards more active and interactive learning approaches. AI systems may start to engage in active exploration, experimentation, and knowledge acquisition, rather than just passively absorbing information.
- From Centralized AI to Decentralized AI: The current paradigm of AI being developed and deployed by large tech companies and research labs may shift towards more decentralized and democratized AI development. This could involve the emergence of AI systems that are trained and deployed in a distributed manner, potentially leveraging blockchain and other decentralized technologies.
- From Narrow AI to Artificial General Intelligence (AGI): While the current paradigm is focused on narrow AI systems that excel at specific tasks, a potential future paradigm shift could be the development of Artificial General Intelligence (AGI). AGI systems would possess human-level or superhuman intelligence, capable of adapting to and solving a wide range of problems, rather than being limited to predefined tasks.
- From Anthropocentric AI to Bioinspired AI: The current anthropocentric approach to AI, which aims to mimic human intelligence, may shift towards a more bioinspired paradigm. This could involve developing AI systems that are inspired by and learn from biological intelligence, such as neural networks modeled on the human brain or swarm intelligence based on animal behavior.
Implementing
In a world where individual perspectives can often become echo chambers, the collective wisdom of a diverse team acts as a beacon of innovation. The following section delves into the transformative power of diversity in problem-solving and creative thinking. When a team unites under the banner of a shared goal, the blinders of singular viewpoints fall away, revealing a landscape rich with unseen opportunities and solutions. However, this collaborative utopia is not without its challenges. What transpires when one voice in the chorus seeks to overpower the rest, insisting on a solo performance? The ensuing discourse explores the dynamics of team collaboration, the pitfalls of homogeneity, and the triumphs of diversity in fostering an environment where creativity and problem-solving flourish.
Diversity and Inclusion
We all have blinders. We can only see things from our own perspective. But when we come together with a common cause or a shared vision, our view broadens and we're able to recognize things that we never could've seen on our own. That's why the best companies are diverse: they have diverse thinking. - Simon Sinek
Problem Solving
- Changing Perspective: A New Look At Old Problems | Stuart Silverstein - Smashing Magazine
- What is lateral thinking? 7 techniques to encourage creative ideas | Madeline Miles - BetterUp
- How to apply AI effectively for Lateral Thinking | HogoNext
Problem solving by perspective is an approach that involves considering a problem from a new perspective to generate more creative ideas and solutions. Here are some tips for using perspective to solve problems:
- Identify the problem: Make sure the problem is clearly defined
- Choose perspectives: Select a few different viewpoints to consider the problem from, such as a child, a politician, or a scientist
- Gather diverse inputs: Seek out and listen to people with different backgrounds, experiences, and opinions
- Consider different perspectives: Try taking on a second-person perspective, third-person perspective, or fourth-person perspective
- Use different tools and methods: Try asking different questions, using different tools or methods, or trying different scenarios or experiments
- Learn from different sources: Learn from different sources or examples
Familiar routines, though comforting, can unintentionally suppress our drive to explore unconventional solutions. Embracing AI as a dynamic tool challenges these patterns, injecting randomness, sparking new ideas, questioning assumptions, and fostering cross-disciplinary learning.
Creativity
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- Gaming ... Game-Based Learning (GBL) ... Security ... Generative AI ... Games - Metaverse ... Quantum ... Game Theory ... Design
- Imagine: How Creativity Works | Jonah Lehrer
- How Generative AI Can Augment Human Creativity - Harvard Business Review
- How generative AI unlocks creativity in all professions
- Increase Your Creativity with Artificial Intelligence
- 10 Amazing Examples of Creative AI - aiforsocialgood.ca
- Five ways AI can enhance creativity | Learn at Microsoft
- Unlocking Creativity with Generative AI: A Comprehensive Guide
In the journey to cultivate creativity, as Jonah Lehrer discusses in "Imagine: How Creativity Works," it begins with embracing an open mind. This is the canvas upon which new ideas are painted. To foster this openness, one must shed the weight of preconceived notions and welcome a diversity of perspectives. Creative thinking thrives on the unconventional, urging us to explore a myriad of possibilities. Techniques like brainstorming and mind-mapping serve as the tools that carve paths through the wilderness of thought, leading to innovative discoveries. The creative process is a dance of making connections. It's about finding the harmony in discord, linking seemingly disparate ideas to compose a symphony of originality. By reframing challenges and examining them from various angles, one can uncover creative approaches that might have been overlooked in a more linear perspective.
AI can be a powerful ally in the realm of creativity. The following examples illustrate how AI can be a catalyst for creativity, offering new perspectives and streamlining the creative process to foster innovation across various fields. By leveraging AI, individuals and organizations can transcend conventional boundaries and unlock a wealth of creative potential:
- Promoting Divergent Thinking: Imagine a marketing team brainstorming for an ad campaign. They could use AI to generate a wide array of ideas, including some that might seem outlandish at first. For instance, an AI tool could suggest a campaign where the product is associated with a completely different industry or concept, such as linking a new smartphone feature with the patterns of migratory birds. This could lead to a unique and memorable ad that highlights the phone's GPS capabilities in a novel way.
- Overcoming Expertise Bias: Consider a seasoned architect designing a new building. They might have a preferred style or method, but AI can introduce designs based on entirely different architectural philosophies or even amalgamate styles from various cultures, thus pushing the architect to explore new creative territories.
- Assisting in Idea Evaluation: AI can quickly sift through hundreds of design prototypes for a new car model, evaluating each against a set of criteria such as aerodynamics, safety features, and aesthetics. It can then present the most promising designs to engineers, saving time and allowing them to focus on refining the best options.
- Supporting Idea Refinement: An AI-powered writing assistant can help an author refine their narrative by suggesting alternative plot developments, character traits, or even dialogues. For example, if an author is writing a mystery novel, the AI could propose unexpected twists or help develop a character's backstory to add depth to the story.
- Facilitating Collaboration: AI can act as a bridge between different departments within a company, synthesizing ideas from engineering, design, and marketing to create a cohesive product concept. It could, for instance, integrate the technical specifications from engineers with the aesthetic vision from designers and the market analysis from the marketing team to outline a product that aligns with both consumer demand and production feasibility.
At the heart of creative thinking, augmented by AI, lies the exploration of diverse possibilities. This involves embracing risks, challenging established norms, and welcoming unforeseen solutions. It's crucial to acknowledge that creative thinking, enhanced by AI, necessitates an open mind and a readiness to venture beyond the confines of the conventional. AI's capacity to analyze vast datasets and generate novel combinations can propel us to consider options we might not have conceived on our own. By remaining adaptable and open to experimentation, with AI as a partner in the creative process, we can discover a spectrum of opportunities that pave the way to innovative excellence.
Roles from a Myers-Briggs® Personality Type Perspective
- How do I leverage Artificial Intelligence (AI)? ... Reading/Glossary ... Courses/Certs ... Education ... Help Wanted
By understanding Myers-Briggs® Type Indicator (MBTI) preferences alongside technical expertise, you can build strong AI and data teams with a diversity of thought and skills, ultimately leading to a more successful and impactful project.
- Extraversion (E) or Introversion (I): Where people get their energy
- Sensing (S) or Intuition (N): What information people prefer to gather and trust
- Thinking (T) or Feeling (F): The process people prefer to use in making decisions
- Judging (J) or Perceiving (P): How people deal with the world around them
The MBTI classifies people into one of 16 personality types, each with a letter for each side of the four scales the person aligns with most. For example, an ESFJ personality type is Extroverted, Sensing, Feeling, Judging.
- Project Manager: ENTJ, ESTJ Why: These types are decisive, organized, and good at keeping projects on track. They excel at delegating tasks and motivating teams to meet deadlines. (ENTJ - The Commander, ESTJ - The Executive)
- Project Engineer: INTJ, ISTJ Why: INTJs and ISTJs are analytical, detail-oriented, and possess strong problem-solving skills. They excel at breaking down complex projects into manageable tasks and ensuring technical accuracy. (INTJ - The Architect, ISTJ - The Inspector)
- Data Architect: INTJ, INFJ Why: Data architects need a strategic vision to design a data infrastructure that supports future needs. INTJs and INFJs excel at long-term planning and see the bigger picture, ensuring the data architecture is scalable and aligns with the organization's goals.
- Data Engineer: ISTJ, ESTJ Why: Data engineers build and maintain data pipelines. ISTJs and ESTJs are detail-oriented and organized, ensuring data is accurate, secure, and readily available for analysis.
- Data Scientist: INTP, ENTP Why: Data scientists analyze data to extract insights. INTPs and ENTPs are curious and enjoy problem-solving. They excel at identifying patterns, asking insightful questions, and developing complex models.
- AI/Machine Learning Engineer: INTJ, ISTP Why: AI/ML engineers translate models into functional systems. They require a blend of creativity (INTJ) to design algorithms and meticulousness (ISTP) to write clean, efficient code.
- AI/ML Model Trainer: INFJ, ISFJ Why: Model trainers meticulously prepare data for training. INFJs and ISFJs are patient, detail-oriented, and ensure the training data is high-quality and unbiased.
- Full-Stack AI Engineer: ENTP, ENFJ Why: Full-stack AI engineers handle the entire AI pipeline. ENTPs and ENFJs are adaptable and enjoy learning new skills. They thrive in a fast-paced environment where they can bridge the gap between data, models, and deployment.
- AI Model Deployer: ESTJ, ISTJ Why: Model deployers ensure AI models run smoothly in production. ESTJs and ISTJ are organized and process-oriented. They excel at managing infrastructure, monitoring performance, and troubleshooting any issues.
- Design Engineer: INTP, ENTP Why: INTPs and ENTPs are creative, innovative, and enjoy tackling new challenges. They excel at brainstorming ideas, coming up with unique solutions, and adapting to changing project requirements. (INTP - The Logician, ENTP - The Debater)
- Systems Engineer: INFJ, ENFJ Why: INFJs and ENFJs see the bigger picture and understand how different systems interact. They excel at considering the long-term implications of design choices and fostering collaboration between different engineering disciplines. (INFJ - The Advocate, ENFJ - The Protagonist)
- Test Engineer: ISTP, ESTP Why: ISTPs and ESTPs are methodical, resourceful, and enjoy troubleshooting. They excel at developing and executing thorough testing procedures to identify and resolve any technical issues. (ISTP - The Crafter, ESTP - The Entrepreneur)
- AI Safety Engineer: INTJ, ISTJ Why: INTJs and ISTJ excel at analyzing risks and developing robust safety protocols to mitigate potential harm from AI systems. Their methodical nature ensures AI development adheres to ethical and safety guidelines.
- AI Security Specialist: ESTP, ISTP Why: AI security specialists identify and address vulnerabilities in AI systems. ESTPs and ISTPs are resourceful and enjoy tackling complex challenges. They excel at penetration testing and developing safeguards against cyberattacks on AI systems.
- AI Policy Analyst: INFJ, ENFJ Why: AI policy analysts develop ethical frameworks for AI development and use. INFJs and ENFJs are future-oriented and understand the social implications of technology. They excel at considering the long-term consequences and crafting responsible AI policies.
- AI Legal Specialist: INTJ, ENTJ Why: AI legal specialists navigate the legal landscape surrounding AI. INTJs and ENTJs are analytical and decisive. They excel at understanding legal precedents and crafting strategies that ensure responsible and compliant AI development.
- AI Marketing Specialist: ENFP, ESFP Why: AI marketing specialists use AI to create targeted campaigns and personalized customer experiences. ENFPs and ESFPs are creative and enjoy exploring new possibilities. They excel at using AI tools to generate engaging content and personalize marketing strategies.
- AI Customer Solutions Architect: INTJ, ISTJ Why: AI customer solutions architects design and implement AI-powered customer service solutions. INTJs and ISTJs are analytical and detail-oriented. They excel at understanding customer needs and designing AI systems that provide efficient and effective support.
- AI Technical Writer: INFP, ISFJ Why: AI technical writers create clear and concise documentation for AI models and APIs. INFPs and ISFJs are detail-oriented and enjoy translating complex information into understandable language. They excel at crafting user guides and API references for diverse audiences.
- AI API Developer: ESTP, ISTP Why: Develops APIs (Application Programming Interfaces) that allow other applications to interact with AI models. ESTPs and ISTPs are innovative and enjoy building efficient systems. They excel at creating well-designed, secure APIs that enable seamless integration of AI functionality.
- Augmented Reality Journey Builder: ENFP, ESFP Why: ENFPs and ESFPs are creative and enjoy crafting engaging experiences. They excel at using AR technology to design interactive journeys that capture the user's imagination.
- AI Research Scientist: INTJ, INTP Why: AI research scientists explore new frontiers in artificial intelligence. INTJs and INTPs are curious and enjoy tackling complex problems. They excel at theoretical thinking, experimentation, and pushing the boundaries of what's possible with AI.
- AI Standards Manager: ISTJ, INFJ Why: AI standards managers develop and implement guidelines for responsible AI development. ISTJs and INFJs are detail-oriented and future-oriented. They excel at creating frameworks that ensure AI is developed and used ethically and in accordance with best practices.
- AIOps/MLOps Manager: ESTJ, ENTJ Why: AIOps/MLOps managers oversee the lifecycle of AI models in production. ESTJs and ENTJs are organized and decisive. They excel at streamlining operations, monitoring performance, and ensuring the smooth running of AI systems.
- Archivist: ISFJ, ISTJ Why: Archivists ensure the preservation of historical records, potentially including AI-generated data. ISFJs and ISTJs are detail-oriented and organized. They excel at creating and maintaining comprehensive archival systems for historical AI data.
- Autonomous Vehicle Engineer: INTJ, ISTP Why: Autonomous vehicle engineers design and develop self-driving cars. INTJs and ISTPs are analytical and methodical. They excel at complex problem-solving, designing robust systems, and ensuring the safety and functionality of autonomous vehicles.
- Avatar Relationship Manager: ENFJ, ESFJ Why: Avatar relationship managers build and maintain connections between users and AI avatars. ENFJs and ESFJs are empathetic and relationship-oriented. They excel at understanding user needs and fostering positive interactions between people and AI avatars.
- Bias Auditor: INFJ, INFP Why: Bias auditors identify and mitigate bias in AI systems. INFJs and INFPs are value-driven and detail-oriented. They excel at critically examining AI systems for potential biases and developing strategies to promote fair and unbiased AI.
- Computer Vision Engineer: ISTJ, INTP Why: Computer vision engineers design systems that enable computers to interpret visual data. ISTJs and INTPs are analytical and detail-oriented. They excel at developing algorithms and models that can accurately recognize and classify objects within images and videos.
- Digital Twin Expert: INTJ, ENTJ Why: Digital twin experts create digital replicas of physical systems. INTJs and ENTJs are strategic and analytical. They excel at modeling complex systems and using digital twins to optimize performance and predict potential issues.
- Experience Designer: ENFP, INFJ Why: Experience designers craft user experiences for AI-powered products and services. ENFPs and INFJs are creative and user-centric. They excel at understanding user needs and designing intuitive and engaging experiences that leverage AI technology.
- Metaverse Architect: INTJ, ENFP Why: Metaverse architects design and build virtual worlds within the metaverse. INTJs bring strategic thinking and a focus on functionality, while ENFPs add creativity and user experience considerations.
- Risk Manager (AI/Technology): ISTJ, ESTJ Why: ISTJs and ESTJs are detail-oriented and organized. They excel at identifying potential risks associated with AI and emerging technologies, developing mitigation strategies, and ensuring responsible development practices.
- Robotics Engineer: ISTP, INTP Why: Robotics engineers design, build, and program robots. ISTPs and INTPs are analytical and enjoy tackling complex technical challenges. They excel at creating efficient robots that can perform various tasks in real-world environments.
- Game Designer (AI): INTP, ENFP Why: Game designers working with AI craft engaging gameplay experiences that incorporate AI elements. INTPs bring problem-solving skills and a focus on mechanics, while ENFPs add creativity and user engagement considerations.
- Simulation Specialist: INTJ, INFJ Why: Simulation specialists design and develop simulations for training, testing, or research purposes. INTJs bring strategic thinking and a focus on achieving simulation goals, while INFJs consider the broader implications of simulations and ensure they are ethically designed.
- Transhumanist Consultant: ENFJ, INFJ Why: Transhumanist consultants advise on the ethical, social, and philosophical implications of emerging technologies that aim to enhance human capabilities. ENFJs and INFJs are future-oriented and value-driven. They excel at considering the long-term impact of these technologies and fostering discussions about responsible development.
How Projects Really Work
Ideal Planes or What can happen if one of the Team gets all their own way
The Expert: Red Lines
Business meeting illustrating how hard it is for an engineer to fit into the corporate world
- A company has a new project that requires drawing seven red lines.
- Anderson is the company's expert in drawing red lines.
- The company asks Anderson to draw seven red lines, some with green ink and some with transparent ink.
- Anderson explains that drawing red lines with green ink is impossible, as the term "red line" implies using red ink.
- The company insists on drawing seven strictly perpendicular red lines, but Anderson explains that it is not possible for all seven lines to be perpendicular to each other. Eventually, a compromise is reached to draw two perfectly perpendicular red lines and the rest with transparent ink.