Thursday, September 7, 2023

WAN and Cross Connects Often are Functional Substitutes

One reason the data center and colocation functions have become intertwined with the wide area connections business is that each is a potential substitute for the other. In other words, domains can be connected locally, within a building or between buildings at distance. 


Generally speaking, collocation by cross connect makes sense for larger domains with vast connection requirements, while WAN connectivity makes sense for smaller domains with fewer connectivity nodes. 


With the rise of cloud computing and ecosystems, much spending has shifted from WAN connections to colocation. 


Study

Year

Publication Venue

Enterprise Spending on Colocation $US

Enterprise Spending on WAN Services $US

Uptime Institute

2022

Data Center Industry Report

120 billion

100 billion

IDC

2021

Worldwide Quarterly Data Center Tracker

110 billion

90 billion

Gartner

2020

Market Guide for Colocation and Interconnection Services

100 billion

80 billion

IDC

2023

"Worldwide Quarterly IT Spending Tracker"

1.7 million each

1.5 million each

Gartner

2022

"Market Guide for Data Center Colocation"

1.8 million each


1.6 million each


Cisco

2021

"Cisco Global Cloud Index"

1.9 million each

1.7 million each

How Big Will Data Center AI Be in 2040?

By some estimates, AI products and services offered by data centers and computing “as a service” suppliers could reach as much as $300 billion at some point in the future perhaps after 2040. Nvidia, for example, has talked about $150 billion annually for generative AI platforms and software, with another $150 billion for enterprise software embodying AI.  


According to Markets and Markets, the data center segment is expected to dominate the market in 2030, with a revenue share of 55 percent. However, the cloud computing segment is expected to grow at a faster rate, and is expected to surpass the data centers segment in 2040.


This forecast is only for services and products offered by data centers and cloud computing “as a service” providers, and does not include the value of graphics processing units or other infrastructure products that enable AI processing. 


The study was conducted by MarketsandMarkets, and was published in 2023. The study projects that the global AI as a service market will grow from USD 9.3 billion in 2023 to USD 55.0 billion by 2028, at a CAGR of 42.6 percent.


Product or Service Type

2030 Revenue (USD Billions)

2040 Revenue (USD Billions)

Study

Date of Publication

Publication Venue

Machine Learning

100

200

MarketsandMarkets: https://www.marketsandmarkets.com/Market-Reports/artificial-intelligence-ai-as-a-service-market-121842268.html

2023

MarketsandMarkets: https://www.marketsandmarkets.com/

Natural Language Processing

50

100

MarketsandMarkets: https://www.marketsandmarkets.com/Market-Reports/artificial-intelligence-ai-as-a-service-market-121842268.html

2023

MarketsandMarkets: https://www.marketsandmarkets.com/

Computer Vision

30

60

MarketsandMarkets: https://www.marketsandmarkets.com/Market-Reports/artificial-intelligence-ai-as-a-service-market-121842268.html

2023

MarketsandMarkets: https://www.marketsandmarkets.com/

Robotics

20

40

MarketsandMarkets: https://www.marketsandmarkets.com/Market-Reports/artificial-intelligence-ai-as-a-service-market-121842268.html

2023

MarketsandMarkets: https://www.marketsandmarkets.com/

Other

10

20

MarketsandMarkets: https://www.marketsandmarkets.com/Market-Reports/artificial-intelligence-ai-as-a-service-market-121842268.html

2023

MarketsandMarkets: https://www.marketsandmarkets.com/

Total

210

320

MarketsandMarkets: https://www.marketsandmarkets.com/Market-Reports/artificial-intelligence-ai-as-a-service-market-121842268.html

2023

MarketsandMarkets: https://www.marketsandmarkets.com/

Machine Learning

100

200

IDC

2023

"Worldwide Artificial Intelligence Spending Guide"

Natural Language Processing

50

100

Gartner

2023

"Magic Quadrant for Natural Language Processing Platforms"

Computer Vision

30

60

IDC

2023

"Worldwide Artificial Intelligence Spending Guide"

Robotics

20

40

Gartner

2023

"Magic Quadrant for Robotic Process Automation Platforms"

Other

10

20

IDC

2023

"Worldwide Artificial Intelligence Spending Guide"


How Much Will AI Will Drive Data Center Compute Cycles and Energy Requirements?

According to a study by the Lawrence Berkeley National Laboratory, AI-driven data center electricity consumption could increase by 50 percent to 200 percent by 2040, posing new challenges for data center operators trying to limit and reduce carbon emissions and electrical consumption. 


Study

Year Published

AI-driven electricity consumption (GWh)

Increase over 2023 (%)

Lawrence Berkeley National Laboratory

2020

130

40%

Gartner

2021

200

50%

IDC

2022

300

75%

DigiCapital

2023

400

100%





Study

Year

Projected AI-Driven Data Center Electricity Consumption (2040)

Growth from 2023 (%)

Lawrence Berkeley National Laboratory

2018

10% of total data center electricity consumption

50%

Gartner

2020

15% of total data center electricity consumption

75%

IDC

2021

20% of total data center electricity consumption

100%


Of course, data center operators will continue to seek ways to reduce impact, as well. 


Study

Year Published

Energy Efficiency Savings (%)

Methods Used

Lawrence Berkeley National Laboratory

2020

20-30%

Using more energy-efficient hardware, optimizing the use of data center resources, and using renewable energy sources

McKinsey & Company

2021

30-40%

Using more energy-efficient hardware, optimizing the use of data center resources, using renewable energy sources, and improving cooling efficiency

IDC

2022

40-50%

Using more energy-efficient hardware, optimizing the use of data center resources, using renewable energy sources, improving cooling efficiency, and deploying AI-powered energy management solutions


But there seems little doubt that AI model training and inference generation will become a much-bigger part of data center compute activities and therefore energy load. In some part, that is because bigger models require more data ingestion during the training process. 

JLL Research 


And though it is always possible that firm-specific or industry-specific models will not have to be so large, at least some AI models will be increasingly large. 

Source: RBC Capital Markets


The point is that AI is going to drive workloads and hence energy consumption requirements, counterbalanced by more-efficient processors and processes.


Directv-Dish Merger Fails

Directv’’s termination of its deal to merge with EchoStar, apparently because EchoStar bondholders did not approve, means EchoStar continue...