Tuesday, November 18, 2025

When Depreciation Becomes a Business Model Issue

Perhaps depreciation is not typically a key business model issue, but that seems not to be the case for hyperscalers who have extended the useful lives of their servers and networking equipment.


Historically, hyperscalers depreciated servers over three  years. These days, server depreciation occurs over as much as five years to six years and networking gear is depreciated over as much as five to  six years.


Some observers may not like the practice, as longer depreciation periods extend the period when revenue is recorded against the capital investment. That essentially lowers the hurdle rate for making the investments. 


The concern, in some quarters, is that the treatment of useful economic lives of the GPUs is being extended so the firms buying the GPUs have more time to record revenue. And that might potentially obscure the actual business cases for deploying the GPUs.  


The concern is that longer depreciation cycles mean capitalized GPUs can be deployed to generate training and inference revenues before significant depreciation expenses have to be recorded, distorting the payback. 


Others disagree, arguing that the useful business life of any generation of GPU is longer than most assume. Some would argue that the rapid functional depreciation of GPUs for cutting-edge AI model training (typically after about three years) does not impair GPU value, and that the longer cycles are justified. In fact, some argue that useful GPU lives can stretch out nearly a decade.  


Even GPUs no longer on the cutting edge have value in a tiered ecosystem for compute usage, where hardware shifts from high-value training to sustained value in inference operations.


So there is a "value cascade" model. The newest GPUs handle demanding training workloads for frontier models, while depreciated ones (two to three years old) are repurposed for inference, fine-tuning, or less intensive tasks like batch processing.


Consider the business case for an Nvidia H100 with a cost of $250,000. Assume 

  • depreciation over six years, straight-line ($41,667/year for six years). 

  • Hourly Rate: from $6.15 initially, dropping 70 percent to $1.85 by year 10

  • Utilization: from 100 percent initially, decreasing to 50 percent  by year 10

  • Overhead: power at $0.10/kWh and networking costs of $6,000/year


source: Whitefiber


 

source: Whitefiber


For example, Azure announced the retirement of its original NC, NCv2, and ND-series VMs (powered by Nvidia K80, P100, and P40 GPUs) for August/September 2023. Given these GPUs were launched between 2014 and 2016, this implies a useful service life of seven to nine years. 


More recently, the retirement of the NCv3-series (powered by Nvidia V100 GPUs) was announced for September 2025, approximately 7.5 years after the V100’s launch. 


To be sure, chip wear and tear (thermal and electrical stress) does happen. But useful lifespans can be manipulated by controlling the utilization rates over time. That is a business decision: run at lower utilization rates to prolong useful life, or run at higher rates to maximize efficiency of an expensive asset. 


But it seems clear enough that the value cascade is part of the reason for rapidly-declining cost of inference operations.


So there might be suspicion in some quarters about accounting decisions that obscure the payback on big investments in GPUs. But others argue the value cascade means the useful business life of any generation of GPU is much longer than some imagine. 


Monday, November 17, 2025

Who Does This Sound Like?

Who does this sound like: a generation of “idealists” who came of age attacking their elders’ institutions; who were the best-fed, best-housed, best-educated generation in U.S. history; who refused to compromise over principle; were often seen as moralistic; often accused of “radicalism;” perhaps “strident” or “extreme” in their search for truth, while others were inner-absorbed seekers of spiritual growth; who were known for seeking “altered states of consciousness;” “inner truth” and the “stream of consciousness.”


“Finding myself” was always considered important and worthwhile. Communes appealed to some. 


Their student leaders were “preachy;” the females often rebellious career women. They were certain of their truths, so sometimes riots or bombings happened. Campus rebellions and redefining the role of women are associated with this  generation. 


“Any opinion was a religion once they decided it was right.” So the phrase “which side are you on?” was relevant. 


You’d probably pick “baby boomers.”



But you’d be wrong. All those descriptions were of Americans born in 1584 to 1614; 1701 to 1723; 1792 to 1821; 1860 to 1882. All those exact personality traits, in those generations, are described in Generations: The History of America's Future, 1584–2069, a 1991 non-fiction book by William Strauss and Neil Howe.


People born in those generations do, however, tend to share a peer personality with baby boomers (born 1943 to 1960). Whatever positive attributes you might think they have, they have some unfortunate attitudes as well. 


They are narcissistic, smug, self-righteous, intolerant (“puritanical” in the sense of being rigid and intolerant). I’m a boomer myself, and I’ve had lots of time to ponder the particularities of my generation. Not all of it is in any way “good.”


Looking at today’s political culture, the polarization is a reflection of our attitudes. Since nobody instinctively will compromise on a matter of “principle,” (on “either side,” however you define the sides), you have sharp division. 


Perhaps tragically, certainly ironically, a generation that thinks of itself as tolerant and accepting is actually the very opposite. We have a genuine tendency to be smug, self-righteous, intolerant and actually closed-minded, because, of course, “we are right and they are wrong; we are moral, they are immoral.” 


The odd thing is that people seem to have no self awareness, as hard as they seem, on some matters, to try. Self deception, hypocrisy and moral failure know no bounds, even for a generation that often seems convinced it is accepting, tolerant, principled, moral and just.


Saturday, November 15, 2025

Will New Revenue Plus Savings Justify $405 Billion in AI Capex This Year?

How much revenue upside can Microsoft, Meta, Amazon, and Alphabet produce from their capital expenditures on artificial intelligence infrastructure? And will such revenue gains justify the massive AI investments?


Keep in mind, those four firms might spend $405 billion on AI-related capex in calendar year 2025, up sharply from prior years. This includes:

  • Microsoft: ~$117 billion (driven by Azure AI expansions and OpenAI integrations).

  • Meta: ~$71 billion (focused on AI training for content recommendation and metaverse).

  • Amazon: ~$125 billion (heavily weighted toward AWS AI services and e-commerce optimization).

  • Alphabet (Google): ~$92 billion (bolstering Google Cloud and AI-enhanced search/YouTube).


So it is reasonable to ask when and how those investments will produce a positive financial result. 


Assuming a three-year to five- year depreciation schedule for infrastructure and a target return on investment of 20 percent to 30 percent (accounting for high margins in cloud/ads), each firm needs to generate $200-500 billion in cumulative additional value over the next few years. 


The burden is reduced if one uses depreciation more like five to six years, of course. 


Some might argue the additional revenue could come from:


Firm

Product Line

Current Revenue ($B)

Prorated AI Capex ($B)

Possible Revenue Upside ($B)

percent Upside

Microsoft

Intelligent Cloud (Azure)

120

58

20 (15 percent uplift) + 8 new (Copilot)

23 percent


Productivity (Office/365)

80

39

12

15 percent


Personal Computing (Windows/Xbox)

70

20

11

16 percent


Total

270

117

51

19 percent

Meta

Family of Apps (Ads/Social)

160

67

24

15 percent


Reality Labs (VR/AR)

2

4

0.3 + 5 new (AI glasses)

253 percent


Total

162

71

29.3

18 percent

Amazon

North America Retail

400

60

60

15 percent


International Retail

140

21

21

15 percent


AWS (Cloud)

100

44

15 + 10 new (Bedrock AI)

25 percent


Total

640

125

106

17 percent

Alphabet

Search & Other (Ads)

198

55

30

15 percent


YouTube Ads/Subscriptions

36

10

5.4 + 3 new (AI creators)

23 percent


Google Cloud

33

27

5 + 7 new (Vertex AI)

36 percent


Total

267

92

50.4

19 percent


Will there be some amount of overinvestment? Almost assuredly. But will the assets be rationalized and produce positive outcomes? Did overinvestment in prior waves of technology ultimately pay off? One tends to say "yes." 

Yes, Follow the Data. Even if it Does Not Fit Your Agenda

When people argue we need to “follow the science” that should be true in all cases, not only in cases where the data fits one’s political pr...