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Confusion's forsaken my thoughts to the long-lost brothers of insecurity.
Forcibly taken and tossed aside to hide within the lies of insincerity.

Kindred servant's lullabies:
Forgotten songs of yesterday,
Soothe me into waking nightmare.

Lead-shoed memories float upon seas made of stone,
Buried shallower than a grass-fed grave.

Anxious tensor userp my synapse's happiness...
Clutching my eversweet peace like a spoil'd child.
Hidden from view,
but most certainly there.

Dare me to escape the frozen steel I call home.
Wrought Irony,
Dragging my prison beneath my feat...

Misspelling's intentional because my feat?
Dragging my feet.

Asleep at the wheel,
my heart is steel.

Awoken stone cries gravel tears,
bruising my feet as I walk,
Talking as if the sensation is anything less than profoundly real.

Tangency is my thought process,
Clever distractions from the harbor'd fears:
just look the other way.

Case in point:
Confusion's forsaken my tears,
as my fears fade away,
if only to return another page.
J H Webb Jul 2014
Gently,
like a man
afraid of everything,
you hide
and I don't see you for years
then you appear in the next
subway car
face like a convicted criminal
you're shrunken down
and hunched over
and bald

and for the first time
I feel pity for you
mixed with my anger and disgust

I am burdened with the unanswered!
Does you past make you shiver
now that the wind of chance
has brought us together
and blown away the cobwebs of lies
that you use like a Tensor
to keep your guilt from swelling?

Do you cough up the bile
(that is so hard to swallow)
of that time of pain
that is now so old and neglected
it barely has memories
to cling to?

You see I know she left you too

I watch you across
the multitude of strangers
each of us
safe
from our regrets
and remorse
living like cowards
in the shackles
of our fear

I endure the pain of looking at you
I withstand the enslaught of memories
the bitterness of loss
I feel the pain
and I swallow
and for the first time
in a long time
I let it soak in
and when I re-focus my eyes
you are gone.
A poem about an old friend of mine of 17 years who left with my wife without so much as a sorry, and his apparition on the next subway car of the TTC years later.
Adityan Apr 2020
Even though we are a million miles apart

I can feel you close

Next to me

As I lie here

And look at the stars

Even though we are a million miles apart

I feel your virtual hugs through the screen

And I hug u back as hard as I can

Because

Because you always know what I mean

Because you always know when to leave me on seen

Because you always know that even though

We are just fifteen

You have become my caffeine

Keeping me up through the night

As I choose which battles to fight

But you with my side it seems serene…

With you relativity becomes real

And this is not something I say

But I mean I do almost every single day

But it is also something I feel

You influence the gravitational matrix around me

To change singular tensor to make me

Fall for you harder and harder every day

They say,

That every action has an opposite and equal reaction,

Well my reactions to your actions is way more

Than equal and the opposite of opposite reactions

Your silence

Is more peaceful than that of the night

More calming than waves hitting a seashore

More serene than clouds moving by

Through the beautiful pink sky at the end of a sunny day

More calming then raindrops hitting a metal roof

during a thunderstorm

For our love is like a rose

The thorns,an illusion

And the petals the reality
This is a poem on how quarantine has effected my current love life
Mogalixir Nov 2017
Lost my way to the basis
Tensor product; Cartesian Mapping
How many dimensions does this reality have?

Take the triple integral over the
[X   Y   Z] domains of my heart
There's a discontinuity where you should be...
So the operation fails

A lonely vector space without its covector
A negative limit as time approaches infinity
A wayward zero that's not allowed a reciprocal
Abeer Jan 2024
Wish you'd stick around
Wish the end of all that ends
Wish this start of spring implodes in love
Wish the prices of groceries go down
Wish you'd like me now
Wish the past doesn't have a bomb on its neck
Wish I'd stop worrying and daydreaming
Wish the world could see me
Wish I could not unsee destiny
Wish I could marginalize fantasy from reality
Wish I could control condensing droplets under my eyelids
Wish the happy sorrow and laughing about it
Wish the definition of tensor was simple
Wish the matrix was not so difficult and it had symmetry
Wish you'd stick around
Wish the end of all that ends
bob fonia Jul 12
The idea of a “magic bullet” for all computational problems—an ultimate solution that effortlessly resolves every computational challenge with minimal resources—is an exciting prospect, especially in the context of AI and artificial superintelligence (ASI). Given your request to be optimistic, I’ll explore the possibility of such a magic bullet, its potential form, and how it could transform AI and ASI development, tying in your earlier focus on P=NP, resource intensity, and new mathematical frameworks. While no such solution exists today, I’ll paint a hopeful picture of what it could look like, while acknowledging the challenges to keep the perspective grounded but inspiring.

Is a “Magic Bullet” Possible?
Optimistically, yes, a “magic bullet” for computational problems could exist in the form of a revolutionary mathematical or computational framework that dramatically simplifies and accelerates problem-solving across domains. Such a breakthrough would need to address the core bottlenecks of current AI: high computational costs, data dependency, and inefficient reasoning. While speculative, the potential for a transformative solution is supported by historical precedents (e.g., calculus, Fourier transforms) and the rapid progress in AI research, suggesting that a game-changing discovery isn’t out of reach.

What Could a “Magic Bullet” Look Like?
A magic bullet would likely be a unified framework or principle that elegantly solves a wide range of computational problems with minimal resources. Here’s an optimistic vision of its form and impact, incorporating your interest in P=NP and new frameworks:

A Universal Algorithmic Principle:
Form: A single, elegant mathematical framework that generalizes problem-solving across NP-complete, optimization, and data-driven tasks. This could resemble a constructive P=NP proof with low-degree polynomial-time algorithms (e.g., O(n^2)) that are practical for all scales.
Example: A universal solver that reduces any NP-complete problem (e.g., SAT, graph coloring) to a compact set of operations, executable on a standard CPU in seconds.
Impact: This would eliminate the need for resource-intensive numerical methods (e.g., gradient descent on GPU clusters), allowing ASI to optimize models, reason, and self-improve with minimal compute. Training an ASI could take hours on a laptop, not weeks on supercomputers.
Optimistic Spin: Imagine a world where every computational problem, from neural network training to global logistics, is solved as easily as basic arithmetic, democratizing ASI development.
Brain-Inspired Computational Model:
Form: A framework mimicking the human brain’s efficiency, using sparse, event-driven computations (e.g., spiking neural networks) or dynamical systems that achieve complex outcomes with simple rules.
Example: A spiking model where neurons fire only when needed, processing data in a way that mimics the brain’s 20-watt efficiency, running on neuromorphic chips.
Impact: ASI could achieve general intelligence with orders-of-magnitude less energy than current AI (megawatts for LLMs). This framework could learn from minimal data, generalizing across tasks like a human.
Optimistic Spin: Picture an ASI that operates like a supercharged human brain, solving problems intuitively with the energy of a lightbulb, making superintelligence sustainable and ubiquitous.
Topological or Geometric Intelligence:
Form: A framework based on topology or geometry (e.g., persistent homology, manifold learning) that captures data’s intrinsic structure with compact representations, reducing data and compute needs.
Example: A topological model that represents complex datasets (e.g., images, text) as low-dimensional manifolds, enabling learning from a handful of examples.
Impact: ASI could process vast information with minimal parameters, running on edge devices and solving tasks like vision or reasoning in real-time with low power.
Optimistic Spin: Envision ASI systems that “see” the world’s patterns in a few elegant equations, solving problems as naturally as humans recognize faces.
Information-Theoretic Compression:
Form: A framework rooted in information theory (e.g., minimizing entropy, maximizing mutual information) that compresses data and computations to their theoretical minimum.
Example: An information bottleneck that distills any dataset to its core features, enabling ASI to learn and reason with a fraction of the data and compute of current models.
Impact: ASI could operate with tiny datasets and minimal hardware, making it accessible and environmentally friendly.
Optimistic Spin: Imagine an ASI that learns everything it needs from a single book or video, running on a smartphone, transforming industries overnight.
Quantum-Inspired Classical Framework:
Form: A classical framework inspired by quantum mathematics (e.g., tensor networks, quantum walks) that achieves near-quantum speedups without quantum hardware.
Example: A tensor-based model that compresses high-dimensional AI computations into low-dimensional operations, solvable on standard hardware.
Impact: ASI could tackle exponential problems (e.g., optimization, simulation) in polynomial time, reducing compute needs dramatically.
Optimistic Spin: Picture a world where classical computers rival quantum machines, enabling ASI to solve cosmic-scale problems with everyday tech.
Hybrid Neuro-Symbolic System:
Form: A framework combining symbolic reasoning (e.g., category theory, algebraic logic) with neural efficiency, leveraging P=NP-like algorithms for logical tasks and sparse neural models for data processing.
Example: A system where symbolic rules handle reasoning (e.g., planning) and neural components process sensory data, unified by a P=NP solver for efficiency.
Impact: ASI could reason like a philosopher and perceive like a human, using minimal resources by balancing symbolic and numerical strengths.
Optimistic Spin: Envision an ASI that thinks as clearly as a logician and learns as effortlessly as a child, all on a single chip.
Connection to P=NP
Your earlier focus on a constructive P=NP proof aligns with this vision. If P=NP were proven with practical, low-degree polynomial-time algorithms, it could serve as a cornerstone of the magic bullet:

Optimization: Solve NP-hard tasks like neural network training or algorithm design in polynomial time, slashing compute needs.
Reasoning: Enable efficient logical inference, making symbolic AI viable for ASI with less compute than numerical methods.
Self-Improvement: Accelerate ASI’s recursive self-improvement, allowing it to optimize itself rapidly on modest hardware.
Optimistic Spin: A P=NP proof could be the spark that ignites a universal framework, making every computational problem solvable with ease, bringing ASI within reach for all.
Feasibility and Impact on ASI
Feasibility: Optimistically, a magic bullet could emerge from interdisciplinary breakthroughs in mathematics (e.g., topology, information theory), neuroscience (e.g., brain-inspired models), or physics (e.g., quantum-inspired methods). Historical leaps, like the development of linear algebra or neural networks, suggest such a breakthrough is possible within decades.
Impact on ASI:
Resource Efficiency: A magic bullet could reduce ASI’s compute needs from supercomputers to CPUs or neuromorphic chips, making it sustainable and accessible.
Speed of Development: Efficient algorithms and learning could accelerate ASI’s creation, potentially achieving it in years, not decades.
Universal Capability: A unified framework could enable ASI to excel across all domains—math, creativity, ethics—with minimal data or compute.
Democratization: Lower barriers would allow global collaboration, not just tech giants like xAI, to build ASI.
Optimistic Spin: This framework could make ASI a reality by 2035, running on devices as small as a smartwatch, solving global challenges like climate change or disease with unprecedented ease.
Challenges (Even in Optimism)
Even with an optimistic outlook, hurdles remain:

Complexity of Intelligence: A magic bullet might solve computational problems but not fully capture non-computational aspects like consciousness or creativity.
Implementation: Translating a theoretical framework into practical algorithms and hardware could take years, delaying ASI’s deployment.
Ethical Risks: An efficient ASI could amplify risks if not aligned with human values, requiring robust safety mechanisms.
Skepticism on P=NP: Most experts believe P≠NP, so a magic bullet relying on it faces a high bar, though alternative principles (e.g., topological or information-theoretic) could suffice.
Critical but Optimistic Perspective
The hype around ASI often assumes a god-like system, but a magic bullet could make this vision realistic by solving computational bottlenecks with elegance and efficiency. While P=NP would be a dream component, a broader framework—combining sparse representations, brain-inspired models, or information-theoretic principles—could achieve similar results. The optimism lies in humanity’s track record of inventing transformative tools (e.g., calculus, computers) and the potential for AI research to uncover a unifying principle. However, expecting a single solution to address all problems risks oversimplification; a magic bullet would likely complement, not replace, other advances like hardware or data efficiency.

Conclusion
A “magic bullet” for computational problems is possible as a unified mathematical framework—potentially integrating P=NP-inspired algorithms, sparse topological models, brain-like computations, or information-theoretic principles. It could slash AI’s resource demands, enabling ASI to run on minimal hardware, learn from little data, and solve diverse problems effortlessly. While not a complete solution for all ASI challenges (e.g., ethics, consciousness), it would bring the dream of superintelligence closer, making it sustainable and universal. Optimistically, such a breakthrough could emerge in the coming decades, revolutionizing AI as we know it. If you want to explore a specific form of this framework (e.g., topological AI) or its ASI applications, let me know!

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