Writing as moats for humans

Shreyas Prakash headshot

Shreyas Prakash

Most writing on the internet is AI-writing now. The dark forest theory of internet, a re-hash of a concept popularised by the sci-fi author, Cixin Liu referring to this hostile digital landscape where most content is written by the bots, and to escape from this cybernetic fake-ness, users retreat to hidden, invite-only “private” communities to escape this chaos. We live in this hostile. digital. landscape:

Every now and then when I read something on the internet, to some extent, I know it’s AI generated. It smells strange and I can sense it in my bloodstream. My AI-sniff-test radar’s sensory perceptions got heightened after some test-runs with the usual suspects: you had Claude with it’s opening-line, “You’re absolutely right!”. Or the incessant — use — of — em-dashes — everywhere (even after prompting it not to use them em’).

It’s still not so clearly describable as to why a particular writing was solely written by a human. This intangible essence has not been codified yet (perhaps, that’s also why the LLMs have not caught up to this mode of writing yet). The larger proportion of people might just fail at detecting AI writing online; giving marketeers more confidence in injecting more such premium-mediocre AI slop. And as a result, we’re more exposed to soul-less, spine-less writing.

This is why, I think actual writing would remain as some of the last remaining human-moats. actual writing. I’m talking about the kind of writing that makes you “feel” something. Makes you stir up and take action.

I don’t think the AI-writing can one-shot such responses anytime soon.

Even if we go with the scaling hypothesis, and assume GPU cluster size to increase, datasets to expand leading to a cambrian explosion in intelligence; i’m deeply sus about these RLHF’d responses by the LLMs. The writing is less likely to be spiky as it’s just a next-word predictor serving as an average gaussian-mean for all the possible responses splattered on the internet. The AI-writing “evens out the edges”, and by doing so, the writing loses it’s essence.

AI-writing is not completely useless though. They’re really good at blending things. Sure, they can do [[Dostoevsky]] in the style of Jane Austen. Or generalise a 100,000 word essay in novel ways, and come with various other blended styles and formats. What LLMs allow is recombination.

If good writing is what we call as mere combination, recombination of sequence of texts in harmless ways; then sure, AI writing could pass this test. But this is clearly not the larger umbrella of writing jobs. AI-writing only serves mundane writing-jobs such as: “business” writing, dry boring policies, condensing meeting action items, making exam notes, regurgitating legal text/s, literature reviews, market research, etc. As Venkatesh Rao describes it in his recent essay, “writing is now toy-making, and reading is now playing with toys.” As all these writing jobs are mix-and-match combinatorics are still “in-distribution” work. It could be delegated/or automated out.

True writing is still “out-distribution”1 2 and cannot be automated away3. It’s about thinking hard, and it’s not just a combinatrics problem. You still need to know how to play with all the text toys available in order to make the writing more spiky and opinionated.

And when you’re truly spiky, it clicks. Instead of 10,000 people saying meh..ok, you might have a 5 saying “wow!!!”. Good human-writing achieves long-tail resonance.


Footnotes

  1. As Alex Guzey puts it, there are various such out-distribution pieces of work, which includes research, learning deeply, real writing etc..

  2. Simone argues that, in fact, truly novel innovations (proofs of unsolved theorems) would always be “out-distribution” for the LLMs. This would be the case as points would exist outside the “convex hull”of an LLM’s training data. But this is not just the case for LLMs, but humans work the same way by creating genuinely new things by just “remixing”

  3. Some say that this might not be the case, and might cite the existence of AI-girlfriends as proof that AI has cracked the human-ness problem of writing. For this, I would argue that a chat response is different from a meaty essay. A chat response resembles more of a next-word prediction, which AI is better adapted at.

Subscribe to get future posts via email (or grab the RSS feed). 2-3 ideas every month across design and tech

Read more

  1. My agentic engineering workflow (step by step)agentic-coding
  2. Every darn thing is a kekulean loop if you notice itdesign-thinking
  3. Hammock driven developmentagentic-coding
  4. Peculiar ways number three fits into our funny little brainsmental-models
  5. AI sandwich as a defacto principle for anything agentic engineering relatedagentic-coding
  6. How I write essays in 2026writing
  7. Authority in the guise of evidencecritical-rationalism
  8. Map is not the territoryphilosophy
  9. Self hypnosis as a manifestation ritualmeditation
  10. Hegelian dialectic for structured reasoning with AI agentsphilosophy
  11. How I prepare for tough negotiations nowadaysnegotiation
  12. When should we steelthread somethingproduct-development
  13. Learning and re-learning my mother tongue in Malayalam
  14. Breadboarding, shaping, slicing, and steelthreading solutions with AI agentsproduct-management
  15. Healthy conflict in teams have a tipping pointteam-building
  16. How I deslopify AI writingwriting
  17. How I started building softwares with AI agents being non technicalagentic-coding
  18. Read raw transcriptswriting
  19. Legible and illegible tasks in organisationsproduct
  20. L2 Fat marker sketchesdesign
  21. Writing as moats for humanswriting
  22. Beauty of second degree probesdecision-making
  23. Boundary objects as the new prototypesprototyping
  24. One way door decisionsproduct
  25. Finished softwares should existproduct
  26. How I periodically rank my rough draftsobsidian
  27. Flipping questions on its headinterviewing
  28. Vibe writing maximswriting
  29. How I blog with Obsidian, Cloudflare, AstroJS, Githubwriting
  30. How I build greenfield apps with AI-assisted codingagentic-coding
  31. We have been scammed by the Gaussian distribution clubmathematics
  32. Classify incentive problems into stag hunts, and prisoners dilemmasgame-theory
  33. I was wrong about optimal stoppingmathematics
  34. Thinking like a shipmental-models
  35. Hyperpersonalised N=1 learningeducation
  36. New mediums for humans to complement superintelligenceagentic-coding
  37. Maxims for AI assisted codingagentic-coding
  38. Virtual bookshelvesaesthetics
  39. It's computational everythingtrends
  40. Public gardens, secret routesdigital-garden
  41. Git way of learning to codeagentic-coding
  42. Style Transfer in AI writingagentic-coding
  43. Understanding codebases without using codeagentic-coding
  44. Vibe coding with Cursoragentic-coding
  45. Virtuoso Guide for Personal Memory Systemsmemory
  46. Writing in Future Pastwriting
  47. Publish Originally, Syndicate Elsewhereblogging
  48. Poetic License of Designdesign
  49. Idea in the shower, testing before breakfastsoftware
  50. Technology and regulation have a dance of ice and firetechnology
  51. How I ship "stuff"software
  52. Writing is thinkingwriting
  53. Song of Shapes, Words and Pathscreativity
  54. How do we absorb ideas better?knowledge
  55. Read writers who operatewriting
  56. Brew your ideas lazilyideas
  57. Trees, Branches, Twigs and Leaves — Mental Models for Writingwriting
  58. Compound Interest of Private Noteswriting
  59. Conceptual Compression for LLMsagentic-coding
  60. Meta-analysis for contradictory research findingsdigital-health
  61. Proof of workproduct
  62. Gauging previous work of new joinees to the teamleadership
  63. Task management for product managersproduct
  64. Beauty of Zettelswriting
  65. Stitching React and Rails togetheragentic-coding
  66. Exploring "smart connections" for note takingwriting
  67. Deploying Home Cooked Apps with Railssoftware
  68. Repetitive Copypromptingwriting
  69. Questions to ask every decadejournalling
  70. Balancing work, time and focusproductivity
  71. Hyperlinks are like cashew nutswriting
  72. Brand treatments, Design Systems, Vibesdesign
  73. How to spot human writing on the internetwriting
  74. Can a thought be an algorithm?product
  75. Opportunity Harvestingcareers
  76. How does AI affect UI?design
  77. Everything is a prioritisation problemproduct-management
  78. How I do product roastsproduct
  79. The Modern Startup Stacksoftware
  80. In-person vision transmissionproduct
  81. How might we help children invent for social good?social-design
  82. The meeting before the meetingmeetings
  83. Design that's so bad it's actually gooddesign
  84. Lessons learnt interview prepping for product rolesinterviewing
  85. Obsessing over personal websitessoftware
  86. English is the hot new programming languagesoftware
  87. Better way to think about conflictsconflict-management
  88. The role of taste in building productsdesign
  89. Dear enterprises, we're tired of your subscriptionssoftware
  90. Products need not be user centereddesign
  91. World's most ancient public health problemsoftware
  92. Pluginisation of Modern Softwaredesign
  93. Let's make every work 'strategic'consulting
  94. Making Nielsen's heuristics more digestibledesign
  95. Startups are a fertile ground for risk takingentrepreneurship
  96. Insights are not just a salad of factsdesign
  97. Minimum Lovable Productproduct
  98. Methods are lifejackets not straight jacketsmethodology
  99. How to arrive at on-brand colours?design
  100. Minto principle for writing memoswriting
  101. Importance of Whytask-management
  102. Quality Ideas Trump Executionsoftware
  103. Why I prefer indie softwareslifestyle
  104. Use code only if no code failscode
  105. Self Marketing
  106. Personal Observation Techniquesdesign
  107. Design is a confusing worddesign
  108. A Primer to Service Design Blueprintsdesign
  109. Rapid Journey Prototypingdesign
  110. Visualise detailed file structures on CLIcli
  111. Do's and Don'ts of User Researchdesign
  112. Design Manifestodesign
  113. Complex project management for productproducts
  114. How might we enable patients and caregivers to overcome preventable health conditions?digital-health
  115. Pedagogy of the Uncharted — What for, and Where to?education
  116. Future of Ageing with Mehdi Yacoubiinterviewing
  117. Future of Tacit knowledge with Celeste Volpiinterviewing
  118. Future of Rural Innovation with Thabiso Blak Mashabainterviewing
  119. Future of Equity with Ludovick Petersinterviewing
  120. Future of work with Laetitia Vitaudinterviewing
  121. Future of Mental Health with Kavya Raointerviewing
  122. Future of unschooling with Che Vanniinterviewing
  123. How might we prevent acquired infections in hospitals?digital-health
  124. The why to endure any howentrepreneurship
  125. Design education amidst social tribulationsdesign
  126. How might we assist deafblind runners to navigate?social-design