CausaLens gets $45M for no-code technology that introduces cause and effect into AI decision making | TechCrunch (2024)

One of the most popular applications of artificial intelligence to date has been to use it to predict things, using algorithms trained with historical data to determine a future outcome. But popularity doesn’t always mean success: Predictive AI leaves out a lot of the nuance, context and cause-and-effect reasoning that goes into an outcome; and as some have pointed out (and as we have seen), this means that sometimes the “logical” answers produced by predictive AI can prove disastrous. A startup called causaLens has developed causal inference technology — presented as a no-code tool that doesn’t require a data scientist to use to introduce more nuance, reasoning and cause-and-effect sensibility into an AI-based system — which it believes can solve this problem.

CausaLens’s aim, CEO and co-founder Darko Matovski said, is for AI “to start to understand the world as humans understand it.”

Today the startup is announcing $45 million in funding after seeing some early success with its approach, growing revenues 500% since coming out of stealth a year ago. This is being described as a “first close” of the round, meaning it’s still open and potentially going to grow in size.

Dorilton Ventures and Molten Ventures (the VC that rebranded from Draper Esprit) led the round, with previous backers Generation Ventures and IQ Capital, and new backer GP Bullhound also participating. Sources tell us the round values London-based causaLens at around $250 million.

CausaLens’s customers and partners currently include organizations in healthcare, financial services and government, among a number of other verticals, where its technology is used not just for AI-based decision making but to bring in more cause-and-effect nuance when arriving at outcomes.

An illustrative example of how this works can be found in the Mayo Clinic, one of the startup’s partners, which has been using causaLens to identify biomarkers for cancer.

“Human bodies are complex systems, and so applying basic AI paradigms you can find any pattern you want, correlations of any sort, and you are not getting anywhere,” Darko Matovski, the CEO and founder of the startup, said in an interview. “But if you apply cause and effect techniques to understand the mechanics of how different bodies work, you can understand more of the true nature of how one part has an impact on another.”

Considering all of the variables that might be involved, it’s the kind of big data problem that’s nearly impossible for a human, or even a team of humans, to compute, but is table stakes for a computer to work through. While it is not a cure for cancer, this kind of work is a significant step toward starting to consider different treatments tailored to the many permutations involved.

CausaLens’s tech has also been applied in a less clinical way in healthcare. A public health agency from one of the world’s biggest economies (causaLens cannot disclose publicly which one) used its causal AI engine to determine why certain adults have been holding back from getting COVID-19 vaccinations, so that the agency could devise better strategies to get them on board (plural “strategies” is the operative detail here: the whole point is that it’s a complex issue involving a number of reasons depending on the individuals in question).

Other customers in areas like financial services have been using causaLens to inform automated decision-making algorithms in areas like loan evaluations, where previous AI systems were introducing bias into its decisions when using historical data alone. Hedge funds, meanwhile, use causaLens to gain better understandings how a market trend might develop to inform their investment strategies.

And interestingly, one new wave of customers might be cropping up in the world of autonomous transportation. This is one area where the lack of human reasoning has held back progress in the field.

“No matter how much data is fed into autonomous systems, it’s still just historical correlations,” Matovski said of the challenge. He said that causaLens is in conversations now with two major automotive companies, with “many use cases” for its tech, but one in particular is autonomous driving “to help the systems understand how the world works. It’s not just correlated pixels related to a red light and a car stopping, but also what the effect will be of that car slowing down at a red light. We are bringing reasoning into the AI. Causal AI is the only hope for autonomous driving.”

It seems like a no-brainer that those using AI in their work would want the system to be as accurate as possible, which begs the question of why the brilliant improvement of causal AI hasn’t been built into AI algorithms and machine learning in the first place.

It’s not that more reasoning and answering “why” weren’t priorities early on, Matovski explained — “People have been exploring cause and effect relationships in science for a long time. You could even argue Newton’s equations are causal. It is super fundamental in science,” he said — but it’s that AI specialists couldn’t understand how to teach machines to do this. “It was just too difficult,” he said. “The algorithms and technology didn’t exist.”

That started to change around 2017, he said, as academics started to publish initial approaches considering how to represent “reasoning” and cause and effect in AI based on finding signals that contributed to existing outcomes (rather than using historical data to determine outcomes), and building models based on that. Interestingly, it’s an approach that Matovski says does not need to ingest huge volumes of training data to work. CausaLens’ team is very heavy on PhDs (you could say that the startup really ate its dogfood here: it considered 50,000 resumes while assembling its team). And this team has taken that baton and run with it. “Since then, it’s been an exponential growth curve” in terms of discovery, he said. (You can read more about it here.)

How to build a product advisory council for your startup

As you might expect, causaLens is not the only player out there looking at how to leverage advances in causal inference in bigger projects that rely on AI. Microsoft, Facebook, Amazon, Google and other big tech players with substantial AI investments are also working on the field. Among startups, there is also Causalis focusing specifically on the opportunity of using causal AI in medicine and healthcare, and Oogway appears to be building a causal AI platform geared at consumers, a “personalised AI decision assistant” as it describes itself. All of this speaks to the opportunity to develop more and a pretty massive market for the technology, covering both specific commercial and more general use cases.

“AI must take the next step towards causal reasoning to meet its potential in the real world. causaLens is the first to leverage Causal AI to model interventions and enable machine-driven introspection,” said Daniel Freeman of Dorilton Ventures, in a statement. “This world-class team has built software with the sophistication to win over serious data scientists and the usability to empower business leaders. Dorilton Ventures is very excited to support causaLens on the next stage of its journey.”

“Every company will adopt AI, not just because they can, but because they must,” added Christoph Hornung, an investment director at Molten Ventures. “Weat Molten are convinced that causality is the key ingredient that’s needed to unlock the potential of AI. causaLens is the world’s first causal AI platform with a proven ability to convert data into optimal business decisions.”

CausaLens gets $45M for no-code technology that introduces cause and effect into AI decision making | TechCrunch (2024)

FAQs

CausaLens gets $45M for no-code technology that introduces cause and effect into AI decision making | TechCrunch? ›

CausaLens's aim, CEO and co-founder Darko Matovski said, is for AI “to start to understand the world as humans understand it.” Today the startup is announcing $45 million in funding after seeing some early success with its approach, growing revenues 500% since coming out of stealth a year ago.

How does AI affect decision making? ›

Speeding up decision making.

AI can process vast amounts of data at incredible speeds, enabling quick analysis and generating insights in real time. This ultimately leads to faster and more efficient decision making processes, especially when you're able to incorporate automation in many components of the process.

What can the misuse of AI technologies cause? ›

Cyber attacks: AI can be used to launch sophisticated cyberattacks, such as phishing or malware attacks. These attacks can be difficult to detect and can cause significant harm, such as data breaches or financial loss.

What does causaLens do? ›

causaLens are the pioneers of Causal AI, a giant leap in machine intelligence. We build Causal AI powered products that are trusted by leading organizations across industries. Our No Code Causal AI Platform empowers all types of users to make informed decisions through an intuitive user interface.

What is the funding round for causaLens? ›

causaLens, the London deep tech company delivering the future of AI, has raised a $45m Series A round. causaLens is the pioneer of Causal AI — the only AI technology that quantifies cause-and-effect relationships to reason alongside humans in a manner that is trustworthy, explainable, and fair.

What are the pros and cons of AI decision-making? ›

AI in decision-making offers benefits like process streamlining, time-saving, bias elimination, and automation of monotonous tasks, to name a few. However, it also brings disadvantages such as expensive implementation, potential job losses, and a lack of emotional intelligence and creativity.

Can we trust AI decision-making? ›

In contrast to humans, machine decision-making is optimized toward consistency across time. Even if data-driven machine learning has access to the very latest data, it will still limit our option space. It will always choose a more efficient way to travel along our current path, rather than try to forge a new one.

What is the main danger of AI? ›

AI is only as unbiased as the data and people training the programs. So if the data is flawed, impartial, or biased in any way, the resulting AI will be biased as well. The two main types of bias in AI are “data bias” and “societal bias.”

What are 3 negative impacts of AI on society? ›

The disadvantages are things like costly implementation, potential human job loss, and lack of emotion and creativity.

Why is using AI unethical? ›

The ethical issues arising from the use of AI in academia include “the distortion and/or inaccuracy of data, unfair authorship, the formation of plagiarism, and reaching a correct or incorrect result without exerting effort.”

What is an example of causal AI? ›

A practical example of causal AI is fault tree analysis. A top-down approach using Boolean logic to trace the events leading to system failures. This method pinpoints root causes by mapping relationships between component failures and system malfunctions.

What is a famous causal AI network? ›

Causal AI - SwissCognitive, World-Leading AI Network.

What is causal reasoning AI? ›

By learning cause-and-effect information from data and then using this to reason about the world, causal AI operates much more similarly to how humans think when they are thinking slowly. It allows AI to move beyond pattern recognition and delve into understanding the “why” behind the patterns.

How does Funding Circle make money? ›

Our fee structure is simple: we charge a one-time origination fee on each loan we fund, which is added to your approved loan amount and financed through the term. Just like your interest rate, your origination fee will be determined during our underwriting process and is based on your creditworthiness and term chosen.

Is Funding Circle profitable? ›

We delivered a solid Group performance in line with expectations: Total income grew 7% to £162.2m (FY 2022: £151.0m); Group AEBITDA of negative £3.9m (FY 2022: £9.5m) with strong profit in UK Loans offset by continued investment into FlexiPay and the US business.

How much is a funding round? ›

What are the steps in rounding off numbers?
  1. Find the desired place value.
  2. Look at the number to the right.
  3. If that number is 4 or less, round down. If it is 5 or higher, round up.
  4. Change the numbers to the right of the desired place value to zero.

How does intelligence affect decision-making? ›

Individuals with higher intelligence may be quicker to comprehend the information, weigh the pros and cons, and foresee potential outcomes, which could lead to more effective decision-making in certain contexts.

Can AI replace human decision-making? ›

While some fear that AI will replace humans, the reality is that it enhances our decision-making abilities in ways we never thought possible. One of the key ways AI enhances human decision-making is through its ability to process vast amounts of data quickly and accurately.

How does AI affect problem solving? ›

Artificial intelligence (AI) has a positive effect on the problem-solving skills of students. Studies have shown that AI-based education programs, such as those using problem-based learning (PBL), can improve problem-solving abilities in various areas, including recognition, analysis, decision-making, and evaluation.

What is responsible AI decision-making? ›

The primary goal of responsible AI is to develop systems that are secure, reliable, ethical, and transparent. This focuses on critical challenges, including data privacy, bias elimination, and decision explainability, to ensure AI applications are fair and beneficial.

Top Articles
20 Copycat Taco Bell Recipes
Copycat Taco Bell Beef Recipe - Mashed
Deep East Texas Farm And Garden - By Owner
manhattan cars & trucks - by owner - craigslist
Nashville Tranny
Fairwinds Shred Fest 2023
Is Holly Warlick Married To Susan Patton
Solarmovies.ma
24-Hour Autozone On Hickory Hill
Pokemon Fire Red Download Pc
Knock At The Cabin Showtimes Near Fat Cats Mesa
R/Skinwalker
Is Robert Manse Leaving Hsn
Zitobox Tips And Tricks
The First 10 Years, Leslie Bricusse - Qobuz
Linktree Teentinyangel
Offsale Roblox Items are Going Limited… What’s Next? | Rolimon's
9:00 A.m. Cdt
Unveiling The Fascination: Makayla Campinos Video
Blackboard Qcc
Chittenden County Family Court Schedule
Cal Poly 2027 College Confidential
4 Pics One Word Level 363
[TOP 18] Massage near you in Glan-y-Llyn - Find the best massage place for you!
Don Wallence Auto Sales Reviews
Coors Field Seats In The Shade
Prisoners Metacritic
Search results for: Kert\u00E9sz, Andr\u00E9, page 1
Wie funktioniert der Ochama Supermarkt? | Ladenbau.de Ratgeber
M3Gan Showtimes Near Cinemark North Hills And Xd
Walb Game Forecast
Simple Simon's Pizza Lone Jack Menu
Credit Bureau Contact Information
O2 eSIM guide | Download your eSIM | The Drop
Cavender's Boot City Lafayette Photos
The Grand Canyon main water line has broken dozens of times. Why is it getting a major fix only now?
FedEx zoekt een Linehaul Supervisor in Duiven | LinkedIn
Section 212 Metlife Stadium
Lildeadjanet
Top 100 Golfclubs - Albrecht Golf Guide bei 1Golf.eu
Mosley Lane Candles
Directions To 401 East Chestnut Street Louisville Kentucky
Ccga Address
Rachaelrayshow Com Recipes
Does Lowes Take Ebt
Mazda 6 GG/GG1; GY/GY1 2.3 MPS Test : MPSDriver
Hit Entertainment Wiki
Steel Punchings For Sale
Azpeople Self Service
304-733-7788
Farmers And Merchants Bank Broadway Va
Ladyva Is She Married
Latest Posts
Article information

Author: Foster Heidenreich CPA

Last Updated:

Views: 6265

Rating: 4.6 / 5 (56 voted)

Reviews: 87% of readers found this page helpful

Author information

Name: Foster Heidenreich CPA

Birthday: 1995-01-14

Address: 55021 Usha Garden, North Larisa, DE 19209

Phone: +6812240846623

Job: Corporate Healthcare Strategist

Hobby: Singing, Listening to music, Rafting, LARPing, Gardening, Quilting, Rappelling

Introduction: My name is Foster Heidenreich CPA, I am a delightful, quaint, glorious, quaint, faithful, enchanting, fine person who loves writing and wants to share my knowledge and understanding with you.