• Artificial Intelligence (LLMs, AI agents, and the future of human expertise)
  • Blockchain (Decentralized infrastructure, networks, and ecosystem evolution)
  • Data Engineering (Building data infrastructure that actually scales)
  • DevOps (Infrastructure, automation, and operational philosophy)
  • General (Culture, science, and the miscellaneous)
  • Retro Computing (The machines and culture that shaped computing)
  • Music Production (Gear, sound design, and creative workflow)
  • Personal Development (Expertise, craft, and the engineering mindset)
  • Space (Infrastructure and vision for human expansion beyond Earth)
Human Advancement Acceleration Banner

The Exponential Curve: Understanding Human Advancement Acceleration

A child born in 1700 inherited a world barely changed from their grandparents’. A child born in 1900 saw horses give way to automobiles, then aircraft, then space travel within a single lifetime. A child born today will witness more transformation in their first 30 years than humans experienced across the entire 18th century. This isn’t hyperbole. It’s geometry. INNOVATION DENSITY PER DECADE (1700 - 2030) ════════════════════════════════════════════════════════════ 1700s │▏ 1710s │▏ 1720s │▎ The "slow century" 1730s │▎ Marine Chronometer (1735) 1740s │▍ 1750s │▍ 1760s │▌ Spinning Jenny (1764) 1770s │▋ ◀── Steam Engine (1769) - Industrial Revolution begins 1780s │▊ 1790s │▉ 1800s │█ Photography emerges 1810s │█▏ 1820s │█▎ 1830s │█▌ Telegraph (1837) 1840s │█▋ 1850s │█▊ Bessemer Steel 1860s │██ Internal Combustion Engine 1870s │██▎ Telephone (1876), Phonograph 1880s │██▌ Electric Light, Automobile 1890s │██▊ Radio Waves, X-rays 1900s │███ Powered Flight (1903) 1910s │███▎ 1920s │███▌ Television 1930s │████ Antibiotics 1940s │█████ ◀── ENIAC + Transistor - Computing era begins 1950s │██████ Commercial Jets, DNA Discovered 1960s │████████ Integrated Circuit, Moon Landing 1970s │██████████ Microprocessor, Personal Computer 1980s │█████████████ Internet, Mobile Phones 1990s │████████████████ World Wide Web 2000s │█████████████████████ Smartphones, Social Media 2010s │██████████████████████████ Deep Learning, CRISPR 2020s │█████████████████████████████████████ ◀── YOU ARE HERE │ └──→ AGI? Fusion? Age Reversal? ──→ 2030s What ‘Exponential’ Actually Means Most people nod along when someone says “technology is accelerating,” but few grasp what exponential growth looks like up close. ...

April 20, 2026 · 5 min · James M
Speech To Text Banner

Grok's New Voice APIs: Speech Recognition and Synthesis at Enterprise Scale

xAI has released two standalone voice APIs - Speech-to-Text (STT) and Text-to-Speech (TTS) - built on the same stack powering Grok Voice, Tesla in-vehicle assistants, and Starlink customer support. The move puts xAI in direct competition with ElevenLabs, Deepgram, and AssemblyAI, three companies that have owned the enterprise voice API market for years. The interesting question isn’t whether Grok’s voice tech is good. It clearly is - Tesla wouldn’t ship it otherwise. The question is whether xAI’s bundle (voice + reasoning + frontier models under one roof) is worth switching for. ...

April 19, 2026 · 4 min · James M
Spacefact Reenty Banner

Why Spacecraft Don't Just Slow Down Before Reentry

When a spacecraft returns from the Moon, it strikes Earth’s atmosphere at around 25,000 miles per hour. The air in front of it compresses into a glowing plasma sheath hotter than molten lava, and the vehicle effectively becomes a fireball for several minutes. A reasonable question follows - why not just slow down first? Why not fire engines to drop down to something more manageable, like the ~17,500 mph of low Earth orbit, and skip the inferno entirely? ...

April 19, 2026 · 4 min · James M
Four Futures Machine Speed Economy Banner

Four Futures for the Machine-Speed Economy

The pace of AI development over the past three years is genuinely unlike anything in recent economic history. The Stanford AI Index has tracked frontier model capability roughly doubling on a yearly cadence, and private AI investment has reached levels that dwarf the dot-com peak in inflation-adjusted terms. What’s less widely understood is what that pace actually means for competition, investment, and the structure of the economy. The Build Time Collapse It’s not just that AI is writing code faster. Build times are collapsing across the entire software stack - design, implementation, testing, deployment - and that changes the rules of competition. ...

April 19, 2026 · 4 min · James M
AI Intelligence Banner

The Next Decade of AI: What Actually Happens From Here

Most predictions about the future of AI fall into two flavours. One camp says we are months away from machines that can do everything a human can do, and we should brace for either paradise or extinction. The other camp says the whole thing is a bubble, the models have plateaued, and in five years we will be talking about something else. Both are wrong, and both are wrong for the same reason. They are trying to forecast a single headline event - arrival of AGI, collapse of the hype - when the actual future of AI is not an event. It is a slow, uneven transformation of how ordinary work gets done. ...

April 19, 2026 · 11 min · James M
AI Cloud Subsriptions Icon

AI Cloud Subscriptions: Comparing Pricing and Features in 2026

AI cloud subscriptions have fragmented into a crowded market. Frontier-lab APIs compete with open-weights challengers, consumer chat plans compete with agent platforms, and every provider is reshuffling model tiers every few months. This guide organizes the 2026 landscape so you can pick a plan without reading six pricing pages. For background on how these costs behave over time, see Token Economics: Why Costs Aren’t Going Down and Local vs Cloud AI in 2026. ...

April 19, 2026 · 8 min · James M

DGX Spark vs Mac Studio: Which Personal AI Supercomputer Should You Buy?

TL;DR Best value: Mac Studio M4 Max at $1,999 for most local LLM work Best prefill speed: DGX Spark at $4,699 (3.8× faster prompt processing) Best token generation: Mac Studio M3 Ultra at $3,999 (819 GB/s bandwidth) Best for fine-tuning: DGX Spark (CUDA ecosystem wins) Best combined setup: DGX Spark + M3 Ultra = 2.8× faster than either alone Introduction The market for personal AI supercomputers has exploded in 2025-2026. Two standout options have emerged: NVIDIA’s DGX Spark and Apple’s Mac Studio lineup. Both promise desktop-scale AI compute, but they approach the problem very differently. This guide breaks down the specs, costs, and real-world performance to help you decide which is right for you. ...

April 19, 2026 · 11 min · James M
AI Resources & Best Practices Banner

The Complete AI Developer's Guide: Resources and Best Practices

The AI landscape is evolving rapidly, and knowing where to find reliable guidance on best practices has become essential for developers, researchers, and organizations. This post curates the most valuable resources and practices that will help you work more effectively with modern AI systems. Key Best Practices to Master Prompt Engineering Fundamentals Clear, specific prompts produce better results than vague requests. The foundation of working with any LLM is understanding how to communicate your intent precisely. Break complex tasks into smaller, manageable steps and provide context about what success looks like. ...

April 18, 2026 · 5 min · James M
Mac Studio LLMs Icon

Which Mac Studio Should You Buy for Running LLMs Locally?

TL;DR Best entry point: M2 Max 32-64 GB (~£1.4k-£2k) for 7B-13B models at 25-40 tok/s Best sweet spot: M2 Ultra 64-128 GB (~£3k-£4.5k) handles 30B+ models comfortably Best for 70B models: M3 Ultra 128 GB+ (~£5.5k+) with 800+ GB/s bandwidth Newer alternative: M4 Max (£2k-£4k) - lower bandwidth (410-546 GB/s) than Ultra chips, but still solid for 7B-13B models Key rule: Memory bandwidth matters more than raw compute for token generation Reality check: A RTX 5090 rig is 2-3× faster for similar money - buy Mac for simplicity and unified memory You want to run large language models locally on a Mac Studio. Good idea - unified memory is genuinely useful for LLMs. But the specs matter, and there are some hard truths about what “works” versus what feels responsive. More importantly: the right Mac depends entirely on which model you want to run. ...

April 18, 2026 · 10 min · James M
Snowflake Icon

Snowflake Storage for Apache Iceberg: Enterprise Open Data Comes to AWS and Azure

A New Era for Open Data Formats Snowflake has announced the general availability of Snowflake Storage for Apache Iceberg on both AWS and Azure, marking a significant shift in how enterprises can build open, interoperable data lakehouses. This development combines Snowflake’s enterprise reliability and governance capabilities with the flexibility and openness of Apache Iceberg, one of the most promising open table formats in the data ecosystem. What is Snowflake Storage for Apache Iceberg? Snowflake Storage for Apache Iceberg enables users to query and manage Iceberg tables using Snowflake’s SQL engine while storing data in their own cloud object storage. This is fundamentally different from traditional Snowflake architectures—you get: ...

April 18, 2026 · 4 min · James M