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Generative AI
Bible
The ultimate guide
to genAI disruption
Pablo Xavier via BuzzFeed News
2
Unleash the
generative AI
revolution
Dive into a treasure trove of generative AI
companies, investors, and market insights.
Elevate your decisions with exclusive software
buyer interviews to understand product pricing,
CSAT, and post-deployment experience.
CB Insights – Your Gateway to Generative AI
Sign up for access
3
Generative
adversarial
networks
Commercial
deepfakes, AI
voice spoofing
Synthetic data,
self-supervised
learning
Transformers,
multilingual
models
Code generation,
deepfake
detection,
multimodal AI
CB Insights
2019 Trends Report
CB Insights
2020 Trends Report
CB Insights
2020 Trends Report
CB Insights
2021 Trends Report
CB Insights
2022 Trends Report
1
2
3
4
5
Generative AI is a theme CB Insights covered before the
hype. We've consistently been ahead of the curve
2019
2020
2020
2021
2022
4
CB Insights helps the world’s leading companies understand everything they need to know about
disruptive technologies — find out more about why our customers love us here.
And we're staying ahead today – so you can too
Understand 25+ generative AI markets
Large language model developers
Customer support operations
Text generation
Protein & drug design
Voice synthesis & cloning
+ more
Discover 400+ genAI vendors
Tracked in our analyst-curated
Expert Collection
Stay on top of the landscape with research & transcripts
2023
5
Contents
Generative AI Bible
The generative AI boom
And now suddenly is accelerating
63
119
6
37
64
88
Gradually
Then suddenly
1. Race to dominate genAI infrastructure
2. Cross-industry applications face pressure
from large players
3. Opportunity in vertical genAI
So where is generative AI headed?
Promising companies to watch
Healthcare & life sciences
Financial services & insurance
Retail
9
19
Hundreds of startups pile into genAI
Funding soars as investors flock
Big tech is all in and ready to fight
38
41
50
93
6
The
generative AI
boom
7
“How did you go bankrupt?”
ERNEST HEMINGWAY, THE SUN ALSO RISES
8
“Two ways…
Gradually and then suddenly”
ERNEST HEMINGWAY, THE SUN ALSO RISES
9
Gradually
Generative AI has been in the works for years
2014
10
How did we get here? A recent timeline of select
events in the development of generative AI
1
Generative adversarial
networks (GANs)
introduced by Ian
Goodfellow
2014
2
WaveNet and audio
generation introduced
by DeepMind
2016
4
Google AI releases BERT,
a leap in the ability of
machines to understand
context in language
2018
5
OpenAI releases GPT-2,
gaining attention for
text generation
capabilities
2019
8
OpenAI releases
text-to-image model
DALL-E
2021
10
OpenAI launches GPT-
3.5-based chatbot
ChatGPT, unleashing
genAI boom
2022
Text-to-image models
from Google, Midjourney,
Stability AI, and OpenAI
proliferate
2022
9
3
New neural network
architecture called the
“Transformer” introduced
by Google researchers
2017
OpenAI releases GPT-3,
accelerating interest in
language models
6
2020
*Generative AI is artificial intelligence that can generate new content (text, code, images, audio, etc.).
“Deepfakes” become
widely known
7
2020
11
Image source: Large Scale GAN Training for High Fidelity Natural Image Synthesis
*”AI versus AI”: A breakthrough where two neural networks try to outsmart each other, creating and refining
synthetic outputs.
GANs tap into the idea of “AI versus AI” — advancing
image generation dramatically
Images from 2018 paper where DeepMind researchers trained GANs on a large-
scale dataset to create “BigGANs”
2014
1
2018
2020
2022
2016
12
Image source: Google DeepMind
WaveNet produces synthetic audio, showcasing the
potential of generative models beyond images
2014
2018
2020
2022
2016
2
13
The Transformer architecture can better understand and
generate human language, paving the way for further R&D
6 authors of the seminal research paper have gone on to raise $1.7B across 5 AI companies*
175 +661%
Source: CB Insights — 6 authors of a seminal research paper by Google
*As of 10/12/2023
2014
2018
2020
2022
2016
3
14
Google AI releases BERT, a leap in the ability of machines
to understand context in language
Image source: Google
2014
2018
2020
2022
2016
4
The AI language model predicts a word based on not only the preceding words, but
also the succeeding ones (bidirectional understanding of context).
BERT is deeply bidirectional, OpenAI GPT is unidirectional, and ELMo is shallowly bidirectional.
15
OpenAI incorporates the Transformer architecture into its
language models
Image source: OpenAI
GPT-1 – June 2018
GPT-2 – February 2019
2014
2018
2020
2022
2016
5
16
OpenAI’s GPT-3 is a major leap forward, showcasing ability
to generate code, jokes, and more
Image source: NYT, MIT Technology Review
2014
2018
2020
2022
2016
6
November 2020
July 2020
17
Deepfakes go mainstream, highlighting power and pitfalls
of video generation
Image source: YouTube, TikTok via ABC
*Deepfakes refer to synthetic media where a person in an existing image or video is replaced with someone
else’s likeness using neural networks.
2014
2018
2020
2022
2016
7
18
GPT-3 is the foundation for DALL-E, which can generate
images from text descriptions
Image source: OpenAI
2014
2018
2020
2022
2016
8
19
2022
Then suddenly
GenAI goes from experiment to everywhere
20
Models get bigger…
Image source: The Economist
21
…and better, beating human performance benchmarks
Image source: Science
22
Text-to-image generators take the internet by storm
Image source: Imagen (Google), Midjourney, DALL-E 1 vs. DALL-E 2 (OpenAI), Stable Diffusion
23
Generative AI startups raise major funding to fuel growth
Deals worth $100M+ to generative AI startups in 2022
Source: CB Insights – Advanced Search - Deals
24
AI coding assistant GitHub Copilot
becomes widely available
Image source: GitHub
25
ChatGPT goes viral, getting to 1M users in 5 days and
100M in 2 months — unleashing genAI boom
Time to 1M users for select platforms/apps from launch
Source: Media mentions
*App downloads
2 years
10 months
7 months
5 months
2.5 months*
5 days
0
5
10
15
20
25
30
Twitter
Facebook
Dropbox
Spotify
Instagram
ChatGPT
26
Source: CB Insights — Advanced Search - Earnings transcripts
1
0
1
0
0
0
0
28
446
1,546
2,081
0
500
1,000
1,500
2,000
2,500
Q1
Q2
Q3
Q4
Q1
Q2
Q3
Q4
Q1
Q2
Q3
2021
2022
2023
Almost overnight, exec interest in generative AI
skyrockets and companies feel pressured to react
Earnings call mentions of “generative AI” (as of 9/30/2023)
27
Microsoft invests $10B into ChatGPT-maker OpenAI in
Q1’23, propelling genAI funding to new heights
Disclosed equity funding & deals to generative AI companies (as of 9/30/2023)
$1.7B
$0.7B
$5.3B
$3.2B
Funding
$17.4B
64
103
154
168
0
50
100
150
200
250
$0.0B
$2.0B
$4.0B
$6.0B
$8.0B
$10.0B
$12.0B
$14.0B
$16.0B
2019
2020
2021
2022
2023 YTD
$10.0B
$2.0B
$1.0B
Funding
Deals
funding
Deals
170
0
20 0
40 0
60 0
80 0
1000
1200
1400
1600
Source: CB Insights — What are customers saying about generative AI startups?
28
Microsoft debuts AI-powered Bing, running on a new
OpenAI large language model (LLM)
Image source: Microsoft *A large language model is a deep learning algorithm that analyzes and produces text
by learning from extensive language data.
29
Meta introduces Llama, an open-source language model
Image source: Meta
30
Google sounds alarm bells and releases Bard chatbot
Source: CB Insights – Advanced Search - Earnings transcripts; Google
*Reflects quarter call occurred
Alphabet CEO Sundar Pichai
Q1’23 earnings call
On the AI side, it is a really exciting time. I think we've been
investing for a while, and it's clear that the market is
ready…Obviously, we need to make sure we're iterating in
public, these models will keep getting better, so the field
is fast changing. The serving costs will need to be
improved.
So I view it as very, very early days, but we are committed
to…actually bringing direct LLM experiences in Search,
making APIs available for developers and enterprises and
learn from there and iterate like we've always done.
31
GPT-4 becomes OpenAI’s most powerful model yet,
crushing human exams
Image source: OpenAI
32
Reddit, after providing years of free training data for AI
systems, plans to charge for access to its content
Image source: Reddit
33
Chegg blames ChatGPT for declining revenue, sees its
share price tank, and, in response, pivots to build LLMs
Source: CB Insights – Chegg company profile, Chegg
Chegg attributes
declining growth
to ChatGPT
34
Nvidia enters the $1T market cap club as demand
for GPUs used in genAI sends its revenue soaring
US companies to reach $1T+ market cap (as of 10/30/2023)
$1.2T
$1.1T
$1.2T
$1.9T
$2.0T
$2.7T
$3.1T
$0.6T
$0.8T
$1.0T
$1.4T
$1.6T
$2.5T
$2.7T
$0.0T
$0.5T
$1.0T
$1.5T
$2.0T
$2.5T
$3.0T
$3.5T
All-time high
Current market cap
*GPUs = graphics processing units, which are used to run intensive AI applications.
35
Stack Overflow sees declining traffic and lays off
employees amid AI coding boom
Image source: SimilarWeb, The Verge
36
Apple CEO Tim Cook
Q3’23 earnings call
Even Apple scrambles as it works on its own LLM called
Ajax and is on course to spend $1B a year on genAI push
Source: Bloomberg; CB Insights – Advanced Search - Earnings transcripts
*Reflects quarter call occurred
If you take a step back, we view AI and machine learning as
core fundamental technologies that are integral to virtually
every product that we build…And of course, we've been doing
research across a wide range of AI technologies, including
generative AI, for years. We're going to continue investing
and innovating and responsibly advancing our products with
these technologies with the goal of enriching people's
lives…And as you know, we tend to announce things as they
come to market, and that's our MO, and I'd like to stick to that.
37
And now suddenly
is accelerating
Ambitious & flush with cash, young
companies and big tech players are all
rushing into this next platform shift
38
Hundreds of startups
pile into genAI
39
Source: CB Insights — Generative AI Market Map
Commercial genAI
applications are
proliferating
Generative AI Market Map
Explore the full map
40
Source: CB Insights — Generative AI Market Map
300+ vendors have
emerged across:
GENAI LANDSCAPE LAYERS
• Cross-industry generative applications
(visual media, text generation, code generation,
etc.)
• Industry-specific generative applications
(healthcare, finance, etc.)
• Generative AI infrastructure
(foundational models, vector databases, etc.)
41
Funding soars as
investors flock
42
Source: CB Insights — The state of generative AI in 7 charts; Deals Story
As investors look to ride the generative AI wave,
funding soars in 2023
Disclosed equity funding & deals (as of 9/30/2023)
$1.7B
$0.7B
$5.3B
$3.2B
Funding
$17.4B
64
103
154
168
Deals
170
0
20
40
60
80
100
120
140
160
180
$0.0B
$2.0B
$4.0B
$6.0B
$8.0B
$10.0B
$12.0B
$14.0B
$16.0B
$18.0B
$20.0B
2019
2020
2021
2022
2023 YTD
43
Source: CB Insights — The state of generative AI in 7 charts
Generative AI infrastructure attracts the bulk of funding,
due to the capital-intensive nature of developing LLMs
Disclosed equity funding & deals to generative AI categories, from Q4’22 to Q3’23
$0.8B
$5.5B
$11.6B
48 deals
129 deals
30 deals
Generative AI
infrastructure
Industry-specific
generative applications
Cross-industry
generative applications
Funding
Deals
44
Source: CB Insights — Advanced Search - Deals
A record number of $100M+ mega-rounds drive funding
surge, with money primarily going to infrastructure layer
Disclosed $100M+ genAI equity deals (as of 9/30/2023)
4
1
9
8
Mega-rounds
20
0
5
10
15
20
25
0
0.1
0.2
0.3
0.4
0.5
0.6
0.7
0.8
0.9
1
2019
2020
2021
2022
2023 YTD
45
Source: CB Insights
Alongside big deals, generative AI is minting unicorns left
and right
New unicorns ($1B+ valuation), Q1’23 — Q3’23
Company
Valuation
Country
1
$4.4B
United States
2
$2.2B
Canada
3
$1.5B
United States
4
$1.4B
Israel
5
$1.2B
United States
6
$1.0B
United States
6
$1.0B
United States
6
$1.0B
United Kingdom
6
$1.0B
United States
6
$1.0B
United States
6
$1.0B
China
46
Source: CB Insights — State of AI Q3'23 Report
Out of the 16 new AI unicorns in 2023 so far, 11 are
genAI companies
New AI unicorns ($1B+ valuation)
3
3
3
4
21
24
16
14
14
14
2
6
5
7
4
0
5
10
15
20
25
30
Q1
Q2
Q3
Q4
Q1
Q2
Q3
Q4
Q1
Q2
Q3
Q4
Q1
Q2
Q3
2020
2021
2022
2023
AI unicorns
2023 genAI unicorns
3
5
3
47
Source: CB Insights — Advanced Search - Deals
Biggest M&A deal of 2023 lands in infrastructure, but the
rest of M&A reflects push at the industry/application level
Generative AI M&A exits, Q1’23 — Q3’23
Company
Round Valuation Acquirer
GenAI Focus Area
Country
1 MosaicML
$1.3B Databricks
Infrastructure
United States
2 InstaDeep
$125M BioNTech
Healthcare & life sciences
United Kingdom
3 Casetext
$650M Thomson Reuters
Legal
United States
4 Light Year AI
$234M Meituan
Infrastructure
China
5 Valence
$47M Recursion
Healthcare & life sciences
Canada
Neeva
N/A Snowflake
Enterprise tech
United States
Thankful
N/A Gladly
Enterprise tech
United States
Fig
N/A Amazon Web Services
Enterprise tech
United States
Codiga
N/A Datadog
Enterprise tech
United States
48
Source: CB Insights — Advanced Search - Deals
The US is poised to own the genAI boom: 2x more deals in
the US than the rest of the world combined
Disclosed generative AI equity deals to startups by company HQ, Q4’22 — Q3’23
64
143
0
20
40
60
80
100
120
140
160
Rest of world
United States
49
39%
13%
12%
1%
19%
16%
Seed, pre-seed, angel, &
convertible note
Series A
Series B & C
Series D+
Not raised outside funding
Other
Source: CB Insights — The state of generative AI in 7 charts
*Other includes non-equity funding rounds and equity rounds not tied to specific stage of investment.
But it's still early days for genAI startups — 71% are
early-stage or haven't raised any funding
Percent of companies by latest disclosed round (as of 9/30/2023)
17 +66%
50
Big tech is all in and
ready to fight
51
Source: CB Insights *Includes investments from M12 and Google Ventures
**AWS
Generative AI is a new battleground for big tech, with
overlapping alliances and commitments into the billions
Generative AI companies with two or more big tech investors (as of 9/30/2023)
1,646
+370%
Hugging Face
Adept
AI21 Labs
Anthropic
Inflection AI
Inworld AI
OpenAI
Runway
Synthesia
Typeface
Big tech investors
**
Company
Indicates where big tech invested
52
Source: CB Insights — Advanced Search - Deals
*Big tech includes Amazon, Apple, Microsoft, Meta, Google, and Nvidia
Big tech backs every top deal in 2023 so far, with other
CVCs & corporates joining the action
Top generative AI equity deals, Q1’23 — Q3’23
1,646
+370%
175 +661%
Company
Round Amount Round
Date
Round
Valuation Big Tech Investors
Other Select Investors
Country
1 OpenAI
$10.0B Corporate Minority - III
2023-01-23
N/A Microsoft
United States
2 Inflection AI
$1.3B Series B
2023-06-29
$4.0B Microsoft, Nvidia
Gates Frontier
United States
3 Anthropic
$1.25B Corporate Minority - V
2023-09-25
N/A Amazon
United States
4 Anthropic
$450M Series C
2023-05-23
$4.1B Google
Menlo Ventures, SK telecom ventures, Salesforce
Ventures, Zoom Ventures
United States
5 Anthropic
$400M Corporate Minority
2023-02-03
$4.1B Google
United States
6 Adept
$350M Series B
2023-03-14
$1.0B Microsoft, Nvidia
General Catalyst, Spark Capital, Atlassian Ventures,
Workday Ventures, Greylock Partners
United States
7
Generate
Biomedicines
$273M Series C
2023-09-14
N/A NVentures
Abu Dhabi Investment Authority, Amgen, Fidelity
Investments, Flagship Pioneering, MAPS Capital
United States
8 Cohere
$270M Series B
2023-05-02
$2.2B Nvidia
Inovia Capital, Index Ventures, Oracle, Salesforce
Ventures, SentinelOne
Canada
9 Hugging Face
$235M Series D
2023-08-23
$4.5B Amazon, Google Ventures,
NVentures
Salesforce Ventures, AMD, IBM Ventures, Intel
Capital, Qualcomm Ventures
France
10 Imbue
$200M Series B
2023-09-07
$1.0B Nvidia
Astera Institute
United States
53
Source: CB Insights — Nvidia company profile – investments
Nvidia increases its investment activity dramatically...
Equity deals backed by Nvidia (as of 10/25/2023)
2
3
9
7
Deals
17
0
2
4
6
8
10
12
14
16
18
0
0.1
0.2
0.3
0.4
0.5
0.6
0.7
0.8
0.9
1
2019
2020
2021
2022
2023 YTD
54
Source: CB Insights — Advanced Search - Deals
…becoming the most active investor in generative AI
Top generative AI investors by company count, Q1’23 — Q3’23
Investor
Company Count Investor Group
Country
1 Nvidia
9 Corp
United States
2 SV Angel
7 Angel
United States
3 Salesforce Ventures
6 CVC
United States
3 Index Ventures
6 VC
United States
3 Andreessen Horowitz
6 VC
United States
6 GV (Google Ventures)
5 CVC
United States
7 Microsoft
4 Corp
United States
7 Sequoia Capital
4 VC
United States
7 Lightspeed Venture Partners
4 VC
United States
55
Source: Inflection AI; CB Insights — Advanced Search - Deals
The dominant chipmaker is cashing in on the genAI
computing boom, backing startups using its chips…
Nvidia-backed equity deals to generative AI companies (as of 9/30/2023)
56
Source: CB Insights — Advanced Search – Earnings transcripts
*Reflects quarter call occurred
…as demand for Nvidia GPUs far exceeds supply
If you're trying to do the training
of the models, then having the
absolute latest, greatest GPU,
the H100 from Nvidia right now,
there's a lot of constraint in
getting those chips.
CEO Matthew Prince,
Q3’23 earnings call
There is [a] significant bottleneck in terms
of Nvidia’s GPU chips…in short, the
demand far exceeds the supply in the
market. And that is not the situation for us
as one company, it is a general situation for
the industry…We had originally expected
the revenue from AI to be shown in our
financials in the third quarter and that is
likely to be delayed due to the shortage of
supply of GPU servers through the fourth
quarter or even the first quarter of 2024.
CEO Tao Zou
Q3’23 earnings call
57
Source: CB Insights — Advanced Search - Deals *Includes deals backed by Microsoft’s venture arm M12
Microsoft steps up its genAI investment activity beyond
its $13B invested in OpenAI…
Microsoft-backed equity deals to generative AI companies (as of 9/30/2023)
1,646
+370%
58
...betting that generative AI could tip the competitive
scales in its favor for decades to come
Source: CB Insights — Analyzing Microsoft’s generative AI strategy: How Microsoft is expanding past OpenAI
to transform the way we work
Microsoft
Investment Thesis
Map – Generative AI
59
Source: Microsoft
Microsoft’s investments in genAI help reverse slowing
Azure growth and contribute to 3 percentage point bump
Azure and other cloud services revenue growth (year-over-year) by quarter
59%
62%
59%
47%
48%
50%
50%
51%
50%
46%
46%
40%
35%
31%
27%
26%
29%
0%
10%
20%
30%
40%
50%
60%
70%
Q1
Q2
Q3
Q4
Q1
Q2
Q3
Q4
Q1
Q2
Q3
Q4
Q1
Q2
Q3
Q4
Q1
FY 2020
FY 2021
FY 2022
FY 2023
FY 2024
60
Source: CB Insights — Advanced Search - Deals *Includes investments by Google, Google Ventures, and Gradient
Ventures
Alongside its Bard chatbot, Google puts billions toward
internal AI research & a range of AI startups
Google-backed equity deals to generative AI startups (as of 10/27/2023)
1,646
+370%
61
Source: CB Insights — Anthropic company profile - funding
Amazon and Google commit billions to LLM developer
Anthropic in battle with OpenAI-backer Microsoft
1,646
+370%
175 +661%
62
Amazon launches
$100M generative AI
accelerator, looking
to feed its cloud
computing business
AWS Generative AI
Accelerator Investment
Thesis Map
Share of genAI
accelerator cohort
Source: CB Insights — Where the AWS Generative AI accelerator is placing its bets across 7 industries
63
So where is
genAI headed?
1. Race to dominate genAI infrastructure
2. Cross-industry applications face pressure from
large players
3. Opportunity in vertical genAI
Generative AI will soon be
impossible to ignore as disruptive
applications spread
64
No clear winner yet in
foundational models
1. Race to dominate genAI infrastructure
65
Source: CB Insights — The state of generative AI in 7 charts
Highest-valued genAI unicorns compete primarily at the
infrastructure layer
Most highly valued private generative AI companies (as of 09/30/2023)
$1.4B
$1.5B
$1.5B
$1.8B
$2.1B
$4.0B
$4.1B
$4.5B
$7.3B
$29.0B
$0M
$5,000M
$10,000M
$15,000M
$20,000M
$25,000M
$30,000M
Company 10
Company 9
Company 8
Company 7
Company 6
Company 5
Company 4
Company 3
Company 2
Company 1
66
Source: CB Insights — Generative AI — large language model developers market report
4 LLM developers – Anthropic, Cohere, AI21 Labs, and
Adept – join the unicorn club in 2023
Leading LLM developers by valuation (as of 09/30/2023)
67
Source: CB Insights — Generative AI — large language model developers market report - scorecard
While OpenAI has clear lead, vendors are competing on
multiple fronts to become the go-to model developer
1,646
+370%
Key KPIs for evaluation
Safety & compliance
Accuracy & quality
Customization
Pricing & deployment
Token limits
68
Source: CB Insights — Advanced Search - Earnings transcripts
*Reflects quarter call occurred
Executive interest in AI has surged
Enterprise demand for AI and accelerated computing is strong.
We are seeing momentum in verticals such as automotive,
financial services, healthcare, and telecom, where AI and
accelerated computing are quickly becoming integral to
customers' innovation roadmaps and
competitive positioning.
CFO Colette Kress
Q2’23 earnings call
69
Source: CB Insights — Software buyer interview transcripts and Analyst Briefing data
Enterprises are spending millions with LLM developers…
Annual spend ranges displayed
$100K - $500K
$20K - $2M
$25K - $300K
$50K - $100K
$15K - $800K
$40K - $5M
70
Source: CB Insights — MosaicML software buyer interview transcripts
…but reducing costs & time to train are key priorities
Mosaic ML offers what's called
programmatic optimization, which is not
so much on the hardware side of things,
but rather on the algorithmic side. Can
you find ways of optimizing the time it
takes to get to a certain performance
bar? I think that's really what drove us to
evaluate MosaicML. In fact, it was pretty
much the main tool out there right now
that offers this. I don't think there's any
other tool that really has this
programmatic optimization layer.
Senior Manager, Data Science,
$1B+ valuation technology company
One of the things that we're really
trying to do is reduce the cost for a lot
of our large language models and
training…What we liked about Mosaic
was it is a lot less expensive in terms
of the training models…Right now, I
would project, just based on our usage,
I think the initial spend was $15,000 per
annum. I would expect next year to
probably be $200,000, $250,000. We're
a very large organization and there's
been a lot of interest in MosaicML.
Vice President, Innovation,
Fortune Global 500 company
71
Source: CB Insights — Cohere software buyer interview transcript; Anthropic software buyer interview
transcript
Safety & compliance will be in focus for enterprise
customers
72
Source: CB Insights — The responsible AI market map
Concern around AI
risks puts responsible
AI solutions in the
spotlight
These tools help
enterprises build and
deploy AI in an ethical
and legal manner
175 +661%
73
Source: CB Insights — Figures represent the latest disclosed revenue (based on company discussion or media sources).
All revenues are full-year 2023 ARR projections, expect for MosaicML (reported ARR at time of acquisition in June 2023).
As LLM developers burn through cash, focus will shift to
customer adoption — and revenue
Latest disclosed or whisper revenue (as of 10/18/2023)
$1,300M
$200M
$50M
$40M
$20M
$10M
Company A
Company B
Company C
Company D
Company E
Company F
74
Source: CB Insights — Figures represent the latest disclosed valuation divided by revenue (based on company discussion or
media sources). All revenues are full-year 2023 ARR projections, except for MosaicML (reported ARR at time of acquisition
in June 2023).
Companies need to grow into big valuations and will come
under pressure to build real business models
Revenue multiples (as of 10/18/2023)
113x
100x
65x
28x
22x
21x
Company A
Company B
Company C
Company D
Company E
Company F
75
Source: CB Insights — Anthropic, AI21 Labs, OpenAI software buyer transcripts
There’s no winner yet in foundational models
Strengths, I would say, the ethical
considerations of privacy and bias,
fairness…their model outperformed the
other models, including GPT-3 and
ChatGPT…In terms of weaknesses, the
specificity of the model output and the
interestingness of the model output… I
think that other weakness also was in
terms of speed and efficiency, like
latency, and once you ask a question,
how long does it take to fully respond.
Senior Manager of Data Science,
Model-as-a-service platform
We were considering obviously OpenAI,
Cohere, Anthropic, and deepset…To be
honest, the reason that we actually
chose AI21 is because the interface is
super easy to use for non-tech
people…I actually tested Cohere pretty
extensively…I think that their models
are really strong and also for some of
the creative work, I thought they were
doing slightly even better than even
OpenAI when it comes to creative stuff,
like ad copy and marketing related
tasks.
Head of AI,
$100M+ funded technology startup
The first two things that came to my
mind is, of course, OpenAI is still the
market leader. That gives us the
sense of comfort and we are confident
on this market-leading product…On the
flip side of the open-source platforms
that I just mentioned, the Hugging
Face and the Llama 2, we don't have
much faith and information about how
they are going to deal with our data.
That's the key to the enterprise world.
If we are not certain, then I would
rather pass my roles to OpenAI.
Cloud, Data & AI Lead,
Fortune 500 company
76
Open-source AI
movement gains steam
1. Race to dominate genAI infrastructure
77
Source: CB Insights — Advanced Search - News mentions
*The open-source approach to AI development is focused on making source code available for public use and allowing a
community of developers to contribute to improving software.
Need for AI model transparency and rapid innovation
is fueling the open-source AI movement
News mentions of open-source AI and related terms (as of 9/30/2023)
1,646
+370%
175 +661%
78
Source: CB Insights — Advanced Search - Earnings transcripts
*Reflects quarter call occurred
Meta is leveling the playing field with its open-source
LLM, Llama 2
175 +661%
Notably, we recently announced a
collaboration with Meta on Llama
2-based AI implementations on
flagship smartphones and PCs
that will enable developers to
create new and exciting genAI
applications using the AI
capabilities of Snapdragon
platforms beginning in 2024.
Qualcomm CEO Cristiano Amon
Q3’23 earnings call
Azure AI is ushering in new
born-in-the-cloud, AI-first
workloads with the best selection
of frontier and open models,
including Meta's recent
announcements supporting
Llama on Azure and Windows,
as well as OpenAI.
Microsoft CEO Satya Nadella
Q3’23 earnings call
AI is the flavor of the day. And
thanks to ChatGPT’s great
launch, everyone has discovered
this potential. We can expect
new changes by the day in the
tech world. Just take yesterday,
Meta’s launch of Llama 2, which
will be available on Azure free of
charge, including for
commercial purposes.
Publicis CEO Arthur Sadoun
Q3’23 earnings call
79
Source: CB Insights — Generative AI – Large language model developers market report
The private market is split into open vs. closed
Disclosed equity funding to LLM developers (as of 10/27/2023)
Closed-source LLMs
Open-source LLMs
*Some developers may offer open-source versions of their models
but keep their core models proprietary
*Excludes open-source developers that have not raised equity funding
80
Source: CB Insights — OpenAI software buyer interview transcripts
OpenAI customers highlight potential cost-savings,
customizability benefits of open-source models – though
OpenAI has the edge on performance & support
OpenAI’s developer API and the developer
experience is definitely the best. It's really
managed, super clean APIs, well-
documented, and has the most
integrations. There was a big push toward
using open-source models and then fine-
tuning them with your own data. That's
still a big thing. We're actually evaluating
that for some of the public data set stuff
because it's a lot cheaper, especially if you
add in more huge amounts of data versus
a giant OpenAI model.
Partner, Early-stage VC firm
Meta's invention… it may be cheaper than
the OpenAI [model] because it's open-
source. Then we believe the performance
of the Hugging Face and also the Llama 2
is also comparable to the OpenAI [model].
Maybe just a little bit weaker than that, but
maybe the overall…ROI is quite a good
deal.
VP, Machine Learning, Fortune 500 company
81
Databricks pays $1.3B for MosaicML, which makes AI
development tools and has its own open-source model,
in June 2023
Source: CB Insights — Databricks acquired Mosaic ML for $1.3B. How do the valuations of other generative AI
companies compare?
$20M in FY’22
revenue (65x
multiple)
82
Source: CB Insights — The open-source AI development market map
Growing number of
vendors are developing
open-source tools to help
enterprises build and
deploy AI projects
Open-source AI
development market map
175 +661%
83
LLM infrastructure market
grows rapidly
1. Race to dominate genAI infrastructure
84
Source: CB Insights — The large language model operations (LLMOps) market map
*LLMOps refers to the end-to-end workflow that organizations employ to build, fine-tune, and deploy LLMs into production.
Tech vendors
supporting LLM
operations are
gaining traction
with enterprises
LLMOps market map
175 +661%
85
Source: CB Insights — Snorkel AI software buyer interview transcript, Fiddler AI software buyer interview
transcript
Execs are buying infrastructure tools for better training
data, observing performance of models, and more
We had, basically, messy data and we
needed a better way of providing, of
doing better training data for generative
content... We have a lot of machine
learning models that are fueling us here.
In both cases, it was the desire to have,
basically, a higher level of data hygiene
in our training data.
Chief Product Officer, IT company
I led a small data science team that
created a lot of models in production. As
we scaled, our observability of our
machine learning models in production
was limited, and we felt blind to issues
or ways to improve the model once in
production. We tried to build a solution
in-house, which showed the difficulty of
the challenge.
Senior Manager, $10M+ funded data analytics
platform
86
Source: CB Insights – LLM application development market report
New vendors are emerging for LLM fine-tuning &
customization
Leading LLM application development vendors by disclosed equity funding (as of 10/30/2023)
87
Source: CB Insights – Vector database market report
*Vector databases provide enterprises with an easy way to store, search, and index unstructured data.
Vector database startups, which make data more accessible
for AI systems, raise record funding amid LLM boom
Disclosed equity funding and deals (as of 9/30/2023)
$44M
$10M
$109M
Funding
$176M
0
2
1
7
Deals
5
0
1
2
3
4
5
6
7
$0M
$20M
$40M
$60M
$80M
$100M
$120M
$140M
$160M
$180M
$200M
2019
2020
2021
2022
2023 YTD
88
2. Cross-industry applications face
pressure from large players
89
Source: CB Insights — Sourcegraph software buyer interview transcript; SlashNext software buyer interview
transcript
Execs are demanding their tech vendors keep up with
genAI advances and opportunities
From a technical perspective, I think
this wave of ChatGPT and OpenAI large
language models is going to open up a
lot of opportunities for Sourcegraph
because they already have a lot of the
code and can say, "We'll take a
customized model, throw in your code,
and give you super good suggestions for
your developers." So I think that's an
area that is super interesting. And again,
they have to compete with GitHub,
which already has Copilot.
VP, Technology at Publicly traded e-commerce
company
SlashNext is working on a generative AI-based
solution, which means it will generate its own
kind of phishing and malware and it will train
the software to automatically be aware of any
new kind of threats arriving in the market. So
even if tomorrow some human is creating a
new kind of malware or any other software is
creating some new kind of phishing or
ransomware, because SlashNext is based on
AI, it is already aware of these kinds of
changes and it will be able to detect them
before any other software can do so. That is a
differentiator from the technology perspective.
Senior Design Engineer at Fortune 500
company
90
Source: CB Insights — The state of generative AI in 7 charts
Generative interfaces, like Anthropic’s AI assistant Claude,
lead in funding among cross-industry tools
Distribution of generative AI funding, Q3’22 — Q2’23
1,646
+370%
175 +661%
*Based on an analysis of 210+ generative AI companies
building cross-industry solutions; excludes deals to
industry-specific companies and model developers such as
OpenAI.
91
Source: CB Insights — Mutiny company profile - headcount; Jasper software buyer interview transcript
Growing competition is a threat to vendors in some cross-
industry markets, like text generation & editing
So in this newly emerging world of generative AI it's
hard to keep up with all the changes that are going on.
It's probably not fair to ask this, but I'll say it: Jasper
needs to stay up to date faster to make me a definite
yes to renew. We need to look at their pricing model to
make sure, as I'm beginning to use it more and more at
a higher and higher scale, that it keeps working and the
price remains right for me. I'm seeing other lower cost
options; the price of calls to GPT-3, for example, has
gone down to really minimal numbers. It might be
harder to say yes to a renewal when we're due next
year, so I'll have to really see that our people have
picked this up and are finding great value.
C-level executive at $10M+ funded research platform
Mutiny and Jasper announce layoffs
92
Source: CB Insights — Generative AI — legal case search & summarization; Virtual medical scribes &
summarization tools
Watch for vendors to scramble to build defensible
moats in specialized areas
93
Drive growth
Improve customer experience
Reduce costs & risk
Healthcare &
life sciences
• Copilots for doctors automate
tedious tasks & improve EHR
documentation
• De-noise radiology scans
• AI companions address well-being &
mental health
• Synthetic patient data protects
patient privacy
• GenAI drug discovery & design reduces
time-to-market
• Biomedical NLP supports clinical decision-
making
Financial
services &
insurance
• GenAI assistants analyze &
synthesize financial data at scale
• Automated underwriting decisions
• GenAI chatbots simplify day-to-day
financial tasks
• Personalized interactions in
insurance sales process
• Synthetic training data improves financial
models & ensures compliance
• Pattern identification in unstructured
claims filings to minimize losses
Retail
• LLM-powered search improves
conversion
• Smarter, more relevant search
• Personalized avatars
• GenAI automates product catalogs
• Synthetic humans save on model costs
How generative AI is going to be used to…
Industry
3. Opportunity in vertical genAI
94
3. Opportunity in vertical genAI
Healthcare &
life sciences
95
Health systems and
pharma players are
using genAI to scale
everything from drug
design to EHR
documentation
Source: CB Insights — 7 applications of generative AI in healthcare
HEALTHCARE & LIFE SCIENCES
96
CB Insights — Understanding generative AI’s potential in healthcare - webinar
AI expertise is a necessity in sectors like pharma to
reduce time-to-market
Select generative AI drug discovery & design exits in 2023
HEALTHCARE & LIFE SCIENCES
Acquired by Recursion
Pharma in May 2023
Acquired by BioNTech
in January 2023
Filed for Hong Kong
IPO in June 2023
97
Source: CB Insights — Virtual scribes & summarization tools market report – ESP, Generative AI copilots for
doctors have raised more than $240M
GenAI copilots for
doctors automate
tedious tasks like
note-taking
HEALTHCARE & LIFE SCIENCES
98
Source: CB Insights — Corti Analyst Briefing; Virtual scribes & summarization tools market report
Up-and-comer Corti raises $60M Series B in September
2023, taking on Microsoft’s Nuance
HEALTHCARE & LIFE SCIENCES
99
Source: CB Insights – AI companions market report
Applications to enhance well-being and mental health emerge,
including AI-generated music, VR landscapes, and companions
Top-funded companies developing AI companions (as of 10/30/2023)
1,646
+370%
175 +661%
HEALTHCARE & LIFE SCIENCES
100
Source: CB Insights — OpenAI software buyer interview transcript, Cohere software buyer interview transcript
EHR workflows are ripe for LLM disruption, from document
search to summarization to suggested diagnoses
I can potentially ask ChatGPT, hey,
does this person have out of network
coverage and is this person eligible for
spine surgery or something like that?
Then, we are having to look at multiple
documents and you don't know where to
look, essentially, and you're essentially
just giving the combination of all these
documents as an input to ChatGPT.
VP, Machine Learning, Fortune 500 company
HEALTHCARE & LIFE SCIENCES
We have tens of thousands, if not
hundreds of thousands, of patients on
our devices. We have device populations
in the millions... For service and
operations, there's a high demand in
terms of the support that they can give
to a patient if they're in a trial or if they're
just going about their day-to-day life on
therapy, on one of these devices…So,
why we were investigating these
chatbots was to lower their cognitive
burden so that 10:1, 5:1 ratio could be
equalized.
Sr. Research Engineer, Fortune 500 company
101
Source: CB Insights — OpenAI software buyer interview transcript
Bundling genAI tools with existing cloud subscriptions is
giving big tech companies an advantage with market reach
Advantage is with, for example, John Snow Labs, it's a very sort
of clinically trained model... It's not just trained on wiki pages or
like general text. In that sense, I think it's much better…in terms
of entity recognition and things like that.
But the limitations, I would think, are these models are not
getting trained on the volume of data anywhere as close to
what ChatGPT is trained on… It [OpenAI deployment] was pretty
minimal overhead… the goal… is to essentially enable the use
of ML tools that are available from the Azure subscription at
the Enterprise level…
VP, Machine Learning, Fortune 500 company
HEALTHCARE & LIFE SCIENCES
Bible
The ultimate guide
to genAI disruption
Pablo Xavier via BuzzFeed News
2
Unleash the
generative AI
revolution
Dive into a treasure trove of generative AI
companies, investors, and market insights.
Elevate your decisions with exclusive software
buyer interviews to understand product pricing,
CSAT, and post-deployment experience.
CB Insights – Your Gateway to Generative AI
Sign up for access
3
Generative
adversarial
networks
Commercial
deepfakes, AI
voice spoofing
Synthetic data,
self-supervised
learning
Transformers,
multilingual
models
Code generation,
deepfake
detection,
multimodal AI
CB Insights
2019 Trends Report
CB Insights
2020 Trends Report
CB Insights
2020 Trends Report
CB Insights
2021 Trends Report
CB Insights
2022 Trends Report
1
2
3
4
5
Generative AI is a theme CB Insights covered before the
hype. We've consistently been ahead of the curve
2019
2020
2020
2021
2022
4
CB Insights helps the world’s leading companies understand everything they need to know about
disruptive technologies — find out more about why our customers love us here.
And we're staying ahead today – so you can too
Understand 25+ generative AI markets
Large language model developers
Customer support operations
Text generation
Protein & drug design
Voice synthesis & cloning
+ more
Discover 400+ genAI vendors
Tracked in our analyst-curated
Expert Collection
Stay on top of the landscape with research & transcripts
2023
5
Contents
Generative AI Bible
The generative AI boom
And now suddenly is accelerating
63
119
6
37
64
88
Gradually
Then suddenly
1. Race to dominate genAI infrastructure
2. Cross-industry applications face pressure
from large players
3. Opportunity in vertical genAI
So where is generative AI headed?
Promising companies to watch
Healthcare & life sciences
Financial services & insurance
Retail
9
19
Hundreds of startups pile into genAI
Funding soars as investors flock
Big tech is all in and ready to fight
38
41
50
93
6
The
generative AI
boom
7
“How did you go bankrupt?”
ERNEST HEMINGWAY, THE SUN ALSO RISES
8
“Two ways…
Gradually and then suddenly”
ERNEST HEMINGWAY, THE SUN ALSO RISES
9
Gradually
Generative AI has been in the works for years
2014
10
How did we get here? A recent timeline of select
events in the development of generative AI
1
Generative adversarial
networks (GANs)
introduced by Ian
Goodfellow
2014
2
WaveNet and audio
generation introduced
by DeepMind
2016
4
Google AI releases BERT,
a leap in the ability of
machines to understand
context in language
2018
5
OpenAI releases GPT-2,
gaining attention for
text generation
capabilities
2019
8
OpenAI releases
text-to-image model
DALL-E
2021
10
OpenAI launches GPT-
3.5-based chatbot
ChatGPT, unleashing
genAI boom
2022
Text-to-image models
from Google, Midjourney,
Stability AI, and OpenAI
proliferate
2022
9
3
New neural network
architecture called the
“Transformer” introduced
by Google researchers
2017
OpenAI releases GPT-3,
accelerating interest in
language models
6
2020
*Generative AI is artificial intelligence that can generate new content (text, code, images, audio, etc.).
“Deepfakes” become
widely known
7
2020
11
Image source: Large Scale GAN Training for High Fidelity Natural Image Synthesis
*”AI versus AI”: A breakthrough where two neural networks try to outsmart each other, creating and refining
synthetic outputs.
GANs tap into the idea of “AI versus AI” — advancing
image generation dramatically
Images from 2018 paper where DeepMind researchers trained GANs on a large-
scale dataset to create “BigGANs”
2014
1
2018
2020
2022
2016
12
Image source: Google DeepMind
WaveNet produces synthetic audio, showcasing the
potential of generative models beyond images
2014
2018
2020
2022
2016
2
13
The Transformer architecture can better understand and
generate human language, paving the way for further R&D
6 authors of the seminal research paper have gone on to raise $1.7B across 5 AI companies*
175 +661%
Source: CB Insights — 6 authors of a seminal research paper by Google
*As of 10/12/2023
2014
2018
2020
2022
2016
3
14
Google AI releases BERT, a leap in the ability of machines
to understand context in language
Image source: Google
2014
2018
2020
2022
2016
4
The AI language model predicts a word based on not only the preceding words, but
also the succeeding ones (bidirectional understanding of context).
BERT is deeply bidirectional, OpenAI GPT is unidirectional, and ELMo is shallowly bidirectional.
15
OpenAI incorporates the Transformer architecture into its
language models
Image source: OpenAI
GPT-1 – June 2018
GPT-2 – February 2019
2014
2018
2020
2022
2016
5
16
OpenAI’s GPT-3 is a major leap forward, showcasing ability
to generate code, jokes, and more
Image source: NYT, MIT Technology Review
2014
2018
2020
2022
2016
6
November 2020
July 2020
17
Deepfakes go mainstream, highlighting power and pitfalls
of video generation
Image source: YouTube, TikTok via ABC
*Deepfakes refer to synthetic media where a person in an existing image or video is replaced with someone
else’s likeness using neural networks.
2014
2018
2020
2022
2016
7
18
GPT-3 is the foundation for DALL-E, which can generate
images from text descriptions
Image source: OpenAI
2014
2018
2020
2022
2016
8
19
2022
Then suddenly
GenAI goes from experiment to everywhere
20
Models get bigger…
Image source: The Economist
21
…and better, beating human performance benchmarks
Image source: Science
22
Text-to-image generators take the internet by storm
Image source: Imagen (Google), Midjourney, DALL-E 1 vs. DALL-E 2 (OpenAI), Stable Diffusion
23
Generative AI startups raise major funding to fuel growth
Deals worth $100M+ to generative AI startups in 2022
Source: CB Insights – Advanced Search - Deals
24
AI coding assistant GitHub Copilot
becomes widely available
Image source: GitHub
25
ChatGPT goes viral, getting to 1M users in 5 days and
100M in 2 months — unleashing genAI boom
Time to 1M users for select platforms/apps from launch
Source: Media mentions
*App downloads
2 years
10 months
7 months
5 months
2.5 months*
5 days
0
5
10
15
20
25
30
Dropbox
Spotify
ChatGPT
26
Source: CB Insights — Advanced Search - Earnings transcripts
1
0
1
0
0
0
0
28
446
1,546
2,081
0
500
1,000
1,500
2,000
2,500
Q1
Q2
Q3
Q4
Q1
Q2
Q3
Q4
Q1
Q2
Q3
2021
2022
2023
Almost overnight, exec interest in generative AI
skyrockets and companies feel pressured to react
Earnings call mentions of “generative AI” (as of 9/30/2023)
27
Microsoft invests $10B into ChatGPT-maker OpenAI in
Q1’23, propelling genAI funding to new heights
Disclosed equity funding & deals to generative AI companies (as of 9/30/2023)
$1.7B
$0.7B
$5.3B
$3.2B
Funding
$17.4B
64
103
154
168
0
50
100
150
200
250
$0.0B
$2.0B
$4.0B
$6.0B
$8.0B
$10.0B
$12.0B
$14.0B
$16.0B
2019
2020
2021
2022
2023 YTD
$10.0B
$2.0B
$1.0B
Funding
Deals
funding
Deals
170
0
20 0
40 0
60 0
80 0
1000
1200
1400
1600
Source: CB Insights — What are customers saying about generative AI startups?
28
Microsoft debuts AI-powered Bing, running on a new
OpenAI large language model (LLM)
Image source: Microsoft *A large language model is a deep learning algorithm that analyzes and produces text
by learning from extensive language data.
29
Meta introduces Llama, an open-source language model
Image source: Meta
30
Google sounds alarm bells and releases Bard chatbot
Source: CB Insights – Advanced Search - Earnings transcripts; Google
*Reflects quarter call occurred
Alphabet CEO Sundar Pichai
Q1’23 earnings call
On the AI side, it is a really exciting time. I think we've been
investing for a while, and it's clear that the market is
ready…Obviously, we need to make sure we're iterating in
public, these models will keep getting better, so the field
is fast changing. The serving costs will need to be
improved.
So I view it as very, very early days, but we are committed
to…actually bringing direct LLM experiences in Search,
making APIs available for developers and enterprises and
learn from there and iterate like we've always done.
31
GPT-4 becomes OpenAI’s most powerful model yet,
crushing human exams
Image source: OpenAI
32
Reddit, after providing years of free training data for AI
systems, plans to charge for access to its content
Image source: Reddit
33
Chegg blames ChatGPT for declining revenue, sees its
share price tank, and, in response, pivots to build LLMs
Source: CB Insights – Chegg company profile, Chegg
Chegg attributes
declining growth
to ChatGPT
34
Nvidia enters the $1T market cap club as demand
for GPUs used in genAI sends its revenue soaring
US companies to reach $1T+ market cap (as of 10/30/2023)
$1.2T
$1.1T
$1.2T
$1.9T
$2.0T
$2.7T
$3.1T
$0.6T
$0.8T
$1.0T
$1.4T
$1.6T
$2.5T
$2.7T
$0.0T
$0.5T
$1.0T
$1.5T
$2.0T
$2.5T
$3.0T
$3.5T
All-time high
Current market cap
*GPUs = graphics processing units, which are used to run intensive AI applications.
35
Stack Overflow sees declining traffic and lays off
employees amid AI coding boom
Image source: SimilarWeb, The Verge
36
Apple CEO Tim Cook
Q3’23 earnings call
Even Apple scrambles as it works on its own LLM called
Ajax and is on course to spend $1B a year on genAI push
Source: Bloomberg; CB Insights – Advanced Search - Earnings transcripts
*Reflects quarter call occurred
If you take a step back, we view AI and machine learning as
core fundamental technologies that are integral to virtually
every product that we build…And of course, we've been doing
research across a wide range of AI technologies, including
generative AI, for years. We're going to continue investing
and innovating and responsibly advancing our products with
these technologies with the goal of enriching people's
lives…And as you know, we tend to announce things as they
come to market, and that's our MO, and I'd like to stick to that.
37
And now suddenly
is accelerating
Ambitious & flush with cash, young
companies and big tech players are all
rushing into this next platform shift
38
Hundreds of startups
pile into genAI
39
Source: CB Insights — Generative AI Market Map
Commercial genAI
applications are
proliferating
Generative AI Market Map
Explore the full map
40
Source: CB Insights — Generative AI Market Map
300+ vendors have
emerged across:
GENAI LANDSCAPE LAYERS
• Cross-industry generative applications
(visual media, text generation, code generation,
etc.)
• Industry-specific generative applications
(healthcare, finance, etc.)
• Generative AI infrastructure
(foundational models, vector databases, etc.)
41
Funding soars as
investors flock
42
Source: CB Insights — The state of generative AI in 7 charts; Deals Story
As investors look to ride the generative AI wave,
funding soars in 2023
Disclosed equity funding & deals (as of 9/30/2023)
$1.7B
$0.7B
$5.3B
$3.2B
Funding
$17.4B
64
103
154
168
Deals
170
0
20
40
60
80
100
120
140
160
180
$0.0B
$2.0B
$4.0B
$6.0B
$8.0B
$10.0B
$12.0B
$14.0B
$16.0B
$18.0B
$20.0B
2019
2020
2021
2022
2023 YTD
43
Source: CB Insights — The state of generative AI in 7 charts
Generative AI infrastructure attracts the bulk of funding,
due to the capital-intensive nature of developing LLMs
Disclosed equity funding & deals to generative AI categories, from Q4’22 to Q3’23
$0.8B
$5.5B
$11.6B
48 deals
129 deals
30 deals
Generative AI
infrastructure
Industry-specific
generative applications
Cross-industry
generative applications
Funding
Deals
44
Source: CB Insights — Advanced Search - Deals
A record number of $100M+ mega-rounds drive funding
surge, with money primarily going to infrastructure layer
Disclosed $100M+ genAI equity deals (as of 9/30/2023)
4
1
9
8
Mega-rounds
20
0
5
10
15
20
25
0
0.1
0.2
0.3
0.4
0.5
0.6
0.7
0.8
0.9
1
2019
2020
2021
2022
2023 YTD
45
Source: CB Insights
Alongside big deals, generative AI is minting unicorns left
and right
New unicorns ($1B+ valuation), Q1’23 — Q3’23
Company
Valuation
Country
1
$4.4B
United States
2
$2.2B
Canada
3
$1.5B
United States
4
$1.4B
Israel
5
$1.2B
United States
6
$1.0B
United States
6
$1.0B
United States
6
$1.0B
United Kingdom
6
$1.0B
United States
6
$1.0B
United States
6
$1.0B
China
46
Source: CB Insights — State of AI Q3'23 Report
Out of the 16 new AI unicorns in 2023 so far, 11 are
genAI companies
New AI unicorns ($1B+ valuation)
3
3
3
4
21
24
16
14
14
14
2
6
5
7
4
0
5
10
15
20
25
30
Q1
Q2
Q3
Q4
Q1
Q2
Q3
Q4
Q1
Q2
Q3
Q4
Q1
Q2
Q3
2020
2021
2022
2023
AI unicorns
2023 genAI unicorns
3
5
3
47
Source: CB Insights — Advanced Search - Deals
Biggest M&A deal of 2023 lands in infrastructure, but the
rest of M&A reflects push at the industry/application level
Generative AI M&A exits, Q1’23 — Q3’23
Company
Round Valuation Acquirer
GenAI Focus Area
Country
1 MosaicML
$1.3B Databricks
Infrastructure
United States
2 InstaDeep
$125M BioNTech
Healthcare & life sciences
United Kingdom
3 Casetext
$650M Thomson Reuters
Legal
United States
4 Light Year AI
$234M Meituan
Infrastructure
China
5 Valence
$47M Recursion
Healthcare & life sciences
Canada
Neeva
N/A Snowflake
Enterprise tech
United States
Thankful
N/A Gladly
Enterprise tech
United States
Fig
N/A Amazon Web Services
Enterprise tech
United States
Codiga
N/A Datadog
Enterprise tech
United States
48
Source: CB Insights — Advanced Search - Deals
The US is poised to own the genAI boom: 2x more deals in
the US than the rest of the world combined
Disclosed generative AI equity deals to startups by company HQ, Q4’22 — Q3’23
64
143
0
20
40
60
80
100
120
140
160
Rest of world
United States
49
39%
13%
12%
1%
19%
16%
Seed, pre-seed, angel, &
convertible note
Series A
Series B & C
Series D+
Not raised outside funding
Other
Source: CB Insights — The state of generative AI in 7 charts
*Other includes non-equity funding rounds and equity rounds not tied to specific stage of investment.
But it's still early days for genAI startups — 71% are
early-stage or haven't raised any funding
Percent of companies by latest disclosed round (as of 9/30/2023)
17 +66%
50
Big tech is all in and
ready to fight
51
Source: CB Insights *Includes investments from M12 and Google Ventures
**AWS
Generative AI is a new battleground for big tech, with
overlapping alliances and commitments into the billions
Generative AI companies with two or more big tech investors (as of 9/30/2023)
1,646
+370%
Hugging Face
Adept
AI21 Labs
Anthropic
Inflection AI
Inworld AI
OpenAI
Runway
Synthesia
Typeface
Big tech investors
**
Company
Indicates where big tech invested
52
Source: CB Insights — Advanced Search - Deals
*Big tech includes Amazon, Apple, Microsoft, Meta, Google, and Nvidia
Big tech backs every top deal in 2023 so far, with other
CVCs & corporates joining the action
Top generative AI equity deals, Q1’23 — Q3’23
1,646
+370%
175 +661%
Company
Round Amount Round
Date
Round
Valuation Big Tech Investors
Other Select Investors
Country
1 OpenAI
$10.0B Corporate Minority - III
2023-01-23
N/A Microsoft
United States
2 Inflection AI
$1.3B Series B
2023-06-29
$4.0B Microsoft, Nvidia
Gates Frontier
United States
3 Anthropic
$1.25B Corporate Minority - V
2023-09-25
N/A Amazon
United States
4 Anthropic
$450M Series C
2023-05-23
$4.1B Google
Menlo Ventures, SK telecom ventures, Salesforce
Ventures, Zoom Ventures
United States
5 Anthropic
$400M Corporate Minority
2023-02-03
$4.1B Google
United States
6 Adept
$350M Series B
2023-03-14
$1.0B Microsoft, Nvidia
General Catalyst, Spark Capital, Atlassian Ventures,
Workday Ventures, Greylock Partners
United States
7
Generate
Biomedicines
$273M Series C
2023-09-14
N/A NVentures
Abu Dhabi Investment Authority, Amgen, Fidelity
Investments, Flagship Pioneering, MAPS Capital
United States
8 Cohere
$270M Series B
2023-05-02
$2.2B Nvidia
Inovia Capital, Index Ventures, Oracle, Salesforce
Ventures, SentinelOne
Canada
9 Hugging Face
$235M Series D
2023-08-23
$4.5B Amazon, Google Ventures,
NVentures
Salesforce Ventures, AMD, IBM Ventures, Intel
Capital, Qualcomm Ventures
France
10 Imbue
$200M Series B
2023-09-07
$1.0B Nvidia
Astera Institute
United States
53
Source: CB Insights — Nvidia company profile – investments
Nvidia increases its investment activity dramatically...
Equity deals backed by Nvidia (as of 10/25/2023)
2
3
9
7
Deals
17
0
2
4
6
8
10
12
14
16
18
0
0.1
0.2
0.3
0.4
0.5
0.6
0.7
0.8
0.9
1
2019
2020
2021
2022
2023 YTD
54
Source: CB Insights — Advanced Search - Deals
…becoming the most active investor in generative AI
Top generative AI investors by company count, Q1’23 — Q3’23
Investor
Company Count Investor Group
Country
1 Nvidia
9 Corp
United States
2 SV Angel
7 Angel
United States
3 Salesforce Ventures
6 CVC
United States
3 Index Ventures
6 VC
United States
3 Andreessen Horowitz
6 VC
United States
6 GV (Google Ventures)
5 CVC
United States
7 Microsoft
4 Corp
United States
7 Sequoia Capital
4 VC
United States
7 Lightspeed Venture Partners
4 VC
United States
55
Source: Inflection AI; CB Insights — Advanced Search - Deals
The dominant chipmaker is cashing in on the genAI
computing boom, backing startups using its chips…
Nvidia-backed equity deals to generative AI companies (as of 9/30/2023)
56
Source: CB Insights — Advanced Search – Earnings transcripts
*Reflects quarter call occurred
…as demand for Nvidia GPUs far exceeds supply
If you're trying to do the training
of the models, then having the
absolute latest, greatest GPU,
the H100 from Nvidia right now,
there's a lot of constraint in
getting those chips.
CEO Matthew Prince,
Q3’23 earnings call
There is [a] significant bottleneck in terms
of Nvidia’s GPU chips…in short, the
demand far exceeds the supply in the
market. And that is not the situation for us
as one company, it is a general situation for
the industry…We had originally expected
the revenue from AI to be shown in our
financials in the third quarter and that is
likely to be delayed due to the shortage of
supply of GPU servers through the fourth
quarter or even the first quarter of 2024.
CEO Tao Zou
Q3’23 earnings call
57
Source: CB Insights — Advanced Search - Deals *Includes deals backed by Microsoft’s venture arm M12
Microsoft steps up its genAI investment activity beyond
its $13B invested in OpenAI…
Microsoft-backed equity deals to generative AI companies (as of 9/30/2023)
1,646
+370%
58
...betting that generative AI could tip the competitive
scales in its favor for decades to come
Source: CB Insights — Analyzing Microsoft’s generative AI strategy: How Microsoft is expanding past OpenAI
to transform the way we work
Microsoft
Investment Thesis
Map – Generative AI
59
Source: Microsoft
Microsoft’s investments in genAI help reverse slowing
Azure growth and contribute to 3 percentage point bump
Azure and other cloud services revenue growth (year-over-year) by quarter
59%
62%
59%
47%
48%
50%
50%
51%
50%
46%
46%
40%
35%
31%
27%
26%
29%
0%
10%
20%
30%
40%
50%
60%
70%
Q1
Q2
Q3
Q4
Q1
Q2
Q3
Q4
Q1
Q2
Q3
Q4
Q1
Q2
Q3
Q4
Q1
FY 2020
FY 2021
FY 2022
FY 2023
FY 2024
60
Source: CB Insights — Advanced Search - Deals *Includes investments by Google, Google Ventures, and Gradient
Ventures
Alongside its Bard chatbot, Google puts billions toward
internal AI research & a range of AI startups
Google-backed equity deals to generative AI startups (as of 10/27/2023)
1,646
+370%
61
Source: CB Insights — Anthropic company profile - funding
Amazon and Google commit billions to LLM developer
Anthropic in battle with OpenAI-backer Microsoft
1,646
+370%
175 +661%
62
Amazon launches
$100M generative AI
accelerator, looking
to feed its cloud
computing business
AWS Generative AI
Accelerator Investment
Thesis Map
Share of genAI
accelerator cohort
Source: CB Insights — Where the AWS Generative AI accelerator is placing its bets across 7 industries
63
So where is
genAI headed?
1. Race to dominate genAI infrastructure
2. Cross-industry applications face pressure from
large players
3. Opportunity in vertical genAI
Generative AI will soon be
impossible to ignore as disruptive
applications spread
64
No clear winner yet in
foundational models
1. Race to dominate genAI infrastructure
65
Source: CB Insights — The state of generative AI in 7 charts
Highest-valued genAI unicorns compete primarily at the
infrastructure layer
Most highly valued private generative AI companies (as of 09/30/2023)
$1.4B
$1.5B
$1.5B
$1.8B
$2.1B
$4.0B
$4.1B
$4.5B
$7.3B
$29.0B
$0M
$5,000M
$10,000M
$15,000M
$20,000M
$25,000M
$30,000M
Company 10
Company 9
Company 8
Company 7
Company 6
Company 5
Company 4
Company 3
Company 2
Company 1
66
Source: CB Insights — Generative AI — large language model developers market report
4 LLM developers – Anthropic, Cohere, AI21 Labs, and
Adept – join the unicorn club in 2023
Leading LLM developers by valuation (as of 09/30/2023)
67
Source: CB Insights — Generative AI — large language model developers market report - scorecard
While OpenAI has clear lead, vendors are competing on
multiple fronts to become the go-to model developer
1,646
+370%
Key KPIs for evaluation
Safety & compliance
Accuracy & quality
Customization
Pricing & deployment
Token limits
68
Source: CB Insights — Advanced Search - Earnings transcripts
*Reflects quarter call occurred
Executive interest in AI has surged
Enterprise demand for AI and accelerated computing is strong.
We are seeing momentum in verticals such as automotive,
financial services, healthcare, and telecom, where AI and
accelerated computing are quickly becoming integral to
customers' innovation roadmaps and
competitive positioning.
CFO Colette Kress
Q2’23 earnings call
69
Source: CB Insights — Software buyer interview transcripts and Analyst Briefing data
Enterprises are spending millions with LLM developers…
Annual spend ranges displayed
$100K - $500K
$20K - $2M
$25K - $300K
$50K - $100K
$15K - $800K
$40K - $5M
70
Source: CB Insights — MosaicML software buyer interview transcripts
…but reducing costs & time to train are key priorities
Mosaic ML offers what's called
programmatic optimization, which is not
so much on the hardware side of things,
but rather on the algorithmic side. Can
you find ways of optimizing the time it
takes to get to a certain performance
bar? I think that's really what drove us to
evaluate MosaicML. In fact, it was pretty
much the main tool out there right now
that offers this. I don't think there's any
other tool that really has this
programmatic optimization layer.
Senior Manager, Data Science,
$1B+ valuation technology company
One of the things that we're really
trying to do is reduce the cost for a lot
of our large language models and
training…What we liked about Mosaic
was it is a lot less expensive in terms
of the training models…Right now, I
would project, just based on our usage,
I think the initial spend was $15,000 per
annum. I would expect next year to
probably be $200,000, $250,000. We're
a very large organization and there's
been a lot of interest in MosaicML.
Vice President, Innovation,
Fortune Global 500 company
71
Source: CB Insights — Cohere software buyer interview transcript; Anthropic software buyer interview
transcript
Safety & compliance will be in focus for enterprise
customers
72
Source: CB Insights — The responsible AI market map
Concern around AI
risks puts responsible
AI solutions in the
spotlight
These tools help
enterprises build and
deploy AI in an ethical
and legal manner
175 +661%
73
Source: CB Insights — Figures represent the latest disclosed revenue (based on company discussion or media sources).
All revenues are full-year 2023 ARR projections, expect for MosaicML (reported ARR at time of acquisition in June 2023).
As LLM developers burn through cash, focus will shift to
customer adoption — and revenue
Latest disclosed or whisper revenue (as of 10/18/2023)
$1,300M
$200M
$50M
$40M
$20M
$10M
Company A
Company B
Company C
Company D
Company E
Company F
74
Source: CB Insights — Figures represent the latest disclosed valuation divided by revenue (based on company discussion or
media sources). All revenues are full-year 2023 ARR projections, except for MosaicML (reported ARR at time of acquisition
in June 2023).
Companies need to grow into big valuations and will come
under pressure to build real business models
Revenue multiples (as of 10/18/2023)
113x
100x
65x
28x
22x
21x
Company A
Company B
Company C
Company D
Company E
Company F
75
Source: CB Insights — Anthropic, AI21 Labs, OpenAI software buyer transcripts
There’s no winner yet in foundational models
Strengths, I would say, the ethical
considerations of privacy and bias,
fairness…their model outperformed the
other models, including GPT-3 and
ChatGPT…In terms of weaknesses, the
specificity of the model output and the
interestingness of the model output… I
think that other weakness also was in
terms of speed and efficiency, like
latency, and once you ask a question,
how long does it take to fully respond.
Senior Manager of Data Science,
Model-as-a-service platform
We were considering obviously OpenAI,
Cohere, Anthropic, and deepset…To be
honest, the reason that we actually
chose AI21 is because the interface is
super easy to use for non-tech
people…I actually tested Cohere pretty
extensively…I think that their models
are really strong and also for some of
the creative work, I thought they were
doing slightly even better than even
OpenAI when it comes to creative stuff,
like ad copy and marketing related
tasks.
Head of AI,
$100M+ funded technology startup
The first two things that came to my
mind is, of course, OpenAI is still the
market leader. That gives us the
sense of comfort and we are confident
on this market-leading product…On the
flip side of the open-source platforms
that I just mentioned, the Hugging
Face and the Llama 2, we don't have
much faith and information about how
they are going to deal with our data.
That's the key to the enterprise world.
If we are not certain, then I would
rather pass my roles to OpenAI.
Cloud, Data & AI Lead,
Fortune 500 company
76
Open-source AI
movement gains steam
1. Race to dominate genAI infrastructure
77
Source: CB Insights — Advanced Search - News mentions
*The open-source approach to AI development is focused on making source code available for public use and allowing a
community of developers to contribute to improving software.
Need for AI model transparency and rapid innovation
is fueling the open-source AI movement
News mentions of open-source AI and related terms (as of 9/30/2023)
1,646
+370%
175 +661%
78
Source: CB Insights — Advanced Search - Earnings transcripts
*Reflects quarter call occurred
Meta is leveling the playing field with its open-source
LLM, Llama 2
175 +661%
Notably, we recently announced a
collaboration with Meta on Llama
2-based AI implementations on
flagship smartphones and PCs
that will enable developers to
create new and exciting genAI
applications using the AI
capabilities of Snapdragon
platforms beginning in 2024.
Qualcomm CEO Cristiano Amon
Q3’23 earnings call
Azure AI is ushering in new
born-in-the-cloud, AI-first
workloads with the best selection
of frontier and open models,
including Meta's recent
announcements supporting
Llama on Azure and Windows,
as well as OpenAI.
Microsoft CEO Satya Nadella
Q3’23 earnings call
AI is the flavor of the day. And
thanks to ChatGPT’s great
launch, everyone has discovered
this potential. We can expect
new changes by the day in the
tech world. Just take yesterday,
Meta’s launch of Llama 2, which
will be available on Azure free of
charge, including for
commercial purposes.
Publicis CEO Arthur Sadoun
Q3’23 earnings call
79
Source: CB Insights — Generative AI – Large language model developers market report
The private market is split into open vs. closed
Disclosed equity funding to LLM developers (as of 10/27/2023)
Closed-source LLMs
Open-source LLMs
*Some developers may offer open-source versions of their models
but keep their core models proprietary
*Excludes open-source developers that have not raised equity funding
80
Source: CB Insights — OpenAI software buyer interview transcripts
OpenAI customers highlight potential cost-savings,
customizability benefits of open-source models – though
OpenAI has the edge on performance & support
OpenAI’s developer API and the developer
experience is definitely the best. It's really
managed, super clean APIs, well-
documented, and has the most
integrations. There was a big push toward
using open-source models and then fine-
tuning them with your own data. That's
still a big thing. We're actually evaluating
that for some of the public data set stuff
because it's a lot cheaper, especially if you
add in more huge amounts of data versus
a giant OpenAI model.
Partner, Early-stage VC firm
Meta's invention… it may be cheaper than
the OpenAI [model] because it's open-
source. Then we believe the performance
of the Hugging Face and also the Llama 2
is also comparable to the OpenAI [model].
Maybe just a little bit weaker than that, but
maybe the overall…ROI is quite a good
deal.
VP, Machine Learning, Fortune 500 company
81
Databricks pays $1.3B for MosaicML, which makes AI
development tools and has its own open-source model,
in June 2023
Source: CB Insights — Databricks acquired Mosaic ML for $1.3B. How do the valuations of other generative AI
companies compare?
$20M in FY’22
revenue (65x
multiple)
82
Source: CB Insights — The open-source AI development market map
Growing number of
vendors are developing
open-source tools to help
enterprises build and
deploy AI projects
Open-source AI
development market map
175 +661%
83
LLM infrastructure market
grows rapidly
1. Race to dominate genAI infrastructure
84
Source: CB Insights — The large language model operations (LLMOps) market map
*LLMOps refers to the end-to-end workflow that organizations employ to build, fine-tune, and deploy LLMs into production.
Tech vendors
supporting LLM
operations are
gaining traction
with enterprises
LLMOps market map
175 +661%
85
Source: CB Insights — Snorkel AI software buyer interview transcript, Fiddler AI software buyer interview
transcript
Execs are buying infrastructure tools for better training
data, observing performance of models, and more
We had, basically, messy data and we
needed a better way of providing, of
doing better training data for generative
content... We have a lot of machine
learning models that are fueling us here.
In both cases, it was the desire to have,
basically, a higher level of data hygiene
in our training data.
Chief Product Officer, IT company
I led a small data science team that
created a lot of models in production. As
we scaled, our observability of our
machine learning models in production
was limited, and we felt blind to issues
or ways to improve the model once in
production. We tried to build a solution
in-house, which showed the difficulty of
the challenge.
Senior Manager, $10M+ funded data analytics
platform
86
Source: CB Insights – LLM application development market report
New vendors are emerging for LLM fine-tuning &
customization
Leading LLM application development vendors by disclosed equity funding (as of 10/30/2023)
87
Source: CB Insights – Vector database market report
*Vector databases provide enterprises with an easy way to store, search, and index unstructured data.
Vector database startups, which make data more accessible
for AI systems, raise record funding amid LLM boom
Disclosed equity funding and deals (as of 9/30/2023)
$44M
$10M
$109M
Funding
$176M
0
2
1
7
Deals
5
0
1
2
3
4
5
6
7
$0M
$20M
$40M
$60M
$80M
$100M
$120M
$140M
$160M
$180M
$200M
2019
2020
2021
2022
2023 YTD
88
2. Cross-industry applications face
pressure from large players
89
Source: CB Insights — Sourcegraph software buyer interview transcript; SlashNext software buyer interview
transcript
Execs are demanding their tech vendors keep up with
genAI advances and opportunities
From a technical perspective, I think
this wave of ChatGPT and OpenAI large
language models is going to open up a
lot of opportunities for Sourcegraph
because they already have a lot of the
code and can say, "We'll take a
customized model, throw in your code,
and give you super good suggestions for
your developers." So I think that's an
area that is super interesting. And again,
they have to compete with GitHub,
which already has Copilot.
VP, Technology at Publicly traded e-commerce
company
SlashNext is working on a generative AI-based
solution, which means it will generate its own
kind of phishing and malware and it will train
the software to automatically be aware of any
new kind of threats arriving in the market. So
even if tomorrow some human is creating a
new kind of malware or any other software is
creating some new kind of phishing or
ransomware, because SlashNext is based on
AI, it is already aware of these kinds of
changes and it will be able to detect them
before any other software can do so. That is a
differentiator from the technology perspective.
Senior Design Engineer at Fortune 500
company
90
Source: CB Insights — The state of generative AI in 7 charts
Generative interfaces, like Anthropic’s AI assistant Claude,
lead in funding among cross-industry tools
Distribution of generative AI funding, Q3’22 — Q2’23
1,646
+370%
175 +661%
*Based on an analysis of 210+ generative AI companies
building cross-industry solutions; excludes deals to
industry-specific companies and model developers such as
OpenAI.
91
Source: CB Insights — Mutiny company profile - headcount; Jasper software buyer interview transcript
Growing competition is a threat to vendors in some cross-
industry markets, like text generation & editing
So in this newly emerging world of generative AI it's
hard to keep up with all the changes that are going on.
It's probably not fair to ask this, but I'll say it: Jasper
needs to stay up to date faster to make me a definite
yes to renew. We need to look at their pricing model to
make sure, as I'm beginning to use it more and more at
a higher and higher scale, that it keeps working and the
price remains right for me. I'm seeing other lower cost
options; the price of calls to GPT-3, for example, has
gone down to really minimal numbers. It might be
harder to say yes to a renewal when we're due next
year, so I'll have to really see that our people have
picked this up and are finding great value.
C-level executive at $10M+ funded research platform
Mutiny and Jasper announce layoffs
92
Source: CB Insights — Generative AI — legal case search & summarization; Virtual medical scribes &
summarization tools
Watch for vendors to scramble to build defensible
moats in specialized areas
93
Drive growth
Improve customer experience
Reduce costs & risk
Healthcare &
life sciences
• Copilots for doctors automate
tedious tasks & improve EHR
documentation
• De-noise radiology scans
• AI companions address well-being &
mental health
• Synthetic patient data protects
patient privacy
• GenAI drug discovery & design reduces
time-to-market
• Biomedical NLP supports clinical decision-
making
Financial
services &
insurance
• GenAI assistants analyze &
synthesize financial data at scale
• Automated underwriting decisions
• GenAI chatbots simplify day-to-day
financial tasks
• Personalized interactions in
insurance sales process
• Synthetic training data improves financial
models & ensures compliance
• Pattern identification in unstructured
claims filings to minimize losses
Retail
• LLM-powered search improves
conversion
• Smarter, more relevant search
• Personalized avatars
• GenAI automates product catalogs
• Synthetic humans save on model costs
How generative AI is going to be used to…
Industry
3. Opportunity in vertical genAI
94
3. Opportunity in vertical genAI
Healthcare &
life sciences
95
Health systems and
pharma players are
using genAI to scale
everything from drug
design to EHR
documentation
Source: CB Insights — 7 applications of generative AI in healthcare
HEALTHCARE & LIFE SCIENCES
96
CB Insights — Understanding generative AI’s potential in healthcare - webinar
AI expertise is a necessity in sectors like pharma to
reduce time-to-market
Select generative AI drug discovery & design exits in 2023
HEALTHCARE & LIFE SCIENCES
Acquired by Recursion
Pharma in May 2023
Acquired by BioNTech
in January 2023
Filed for Hong Kong
IPO in June 2023
97
Source: CB Insights — Virtual scribes & summarization tools market report – ESP, Generative AI copilots for
doctors have raised more than $240M
GenAI copilots for
doctors automate
tedious tasks like
note-taking
HEALTHCARE & LIFE SCIENCES
98
Source: CB Insights — Corti Analyst Briefing; Virtual scribes & summarization tools market report
Up-and-comer Corti raises $60M Series B in September
2023, taking on Microsoft’s Nuance
HEALTHCARE & LIFE SCIENCES
99
Source: CB Insights – AI companions market report
Applications to enhance well-being and mental health emerge,
including AI-generated music, VR landscapes, and companions
Top-funded companies developing AI companions (as of 10/30/2023)
1,646
+370%
175 +661%
HEALTHCARE & LIFE SCIENCES
100
Source: CB Insights — OpenAI software buyer interview transcript, Cohere software buyer interview transcript
EHR workflows are ripe for LLM disruption, from document
search to summarization to suggested diagnoses
I can potentially ask ChatGPT, hey,
does this person have out of network
coverage and is this person eligible for
spine surgery or something like that?
Then, we are having to look at multiple
documents and you don't know where to
look, essentially, and you're essentially
just giving the combination of all these
documents as an input to ChatGPT.
VP, Machine Learning, Fortune 500 company
HEALTHCARE & LIFE SCIENCES
We have tens of thousands, if not
hundreds of thousands, of patients on
our devices. We have device populations
in the millions... For service and
operations, there's a high demand in
terms of the support that they can give
to a patient if they're in a trial or if they're
just going about their day-to-day life on
therapy, on one of these devices…So,
why we were investigating these
chatbots was to lower their cognitive
burden so that 10:1, 5:1 ratio could be
equalized.
Sr. Research Engineer, Fortune 500 company
101
Source: CB Insights — OpenAI software buyer interview transcript
Bundling genAI tools with existing cloud subscriptions is
giving big tech companies an advantage with market reach
Advantage is with, for example, John Snow Labs, it's a very sort
of clinically trained model... It's not just trained on wiki pages or
like general text. In that sense, I think it's much better…in terms
of entity recognition and things like that.
But the limitations, I would think, are these models are not
getting trained on the volume of data anywhere as close to
what ChatGPT is trained on… It [OpenAI deployment] was pretty
minimal overhead… the goal… is to essentially enable the use
of ML tools that are available from the Azure subscription at
the Enterprise level…
VP, Machine Learning, Fortune 500 company
HEALTHCARE & LIFE SCIENCES