Why Causal AI? | causaLens (2024)

Causal AI is the only technology that can reason and make choices like humans do. It utilizes causality to go beyond narrow machine learning predictions and can be directly integrated into human decision-making. It is the only AI system organizations can trust with their biggest challenges – a revolution in enterprise AI.

Request Free Trial

“To build truly intelligent machines, teach them cause & effect”

-Judea Pearl

Move beyond
predictions

Machine learning approaches have always focused on predicting. Causal AI can also predict, but more importantly it can take you a step further, allowing you to answer questions that you cannot with traditional machine learning models. This leads to a clearer connection to ROI.

Structural causal modelsallow you to estimate treatments and simulate counterfactuals, such as “What is the causal effect of intervening on a certain input variable?” or “What would be the most cost-effective way to change an outcome?”. This unlocks a whole new class of problems for data scientists to tackle. We call this decision intelligence.

Why Causal AI? | causaLens (1)

engine.perform_individual_recourse( data=data, desired_outcome={‘Renew’:[True]}, constraints=constraints)

Explain your
model’s decisions

Methods like LIME or SHAP provide limited explainability as they can only be used with already trained models. This poses two main problems:

  • They cannot guarantee the model will always act sensibly as they are trying to explain based on observed inputs. Imagine you have a datapoint that is drastically different from those observed in the past, there is no guarantee that the output of the model will make sense. SHAP and Lime are only explaining the past and not trying to anticipate what the model may do in the future.
  • They tell us what features are associated with the prediction but not necessarily what features drive the outcome. The SHAP documentation touches on this issue in more detail.

Why Causal AI? | causaLens (2)

Why Causal AI? | causaLens (3)

Embed domain knowledge

Causal methods allow domain experts to incorporate their unique knowledge in the modeling process. Experts can constrain specific relationships to their functional form ensuring the model always respects these and is generalizable. Causal models therefore merge the best of domain expertise and data driven approaches.

For example, think of a causal model of a manufacturing line. The process engineer may know that Temperature in sensor 1 has a linear positive relationship with pressure in chamber X. Leveraging decisionOS’Human-Guided Causal Discoverythey are able to embed this knowledge into the model and ensure the model always respects this relationship.

Learn more

Why Causal AI? | causaLens (4)

The Causal AI Revolution is Underway

The world’s largest technology companies are heavily invested in it, having created their very own causal research labs, and seeing great returns from their research.

Read more on our Causal AI Revolution blog

Image:
The number of papers presented atNeurIPS, the leading AI conference, on Causal AI has ballooned in recent years.

Why Causal AI? | causaLens (5)

Why Causal AI? | causaLens (6)

Why Causal AI? | causaLens (7)

Why Causal AI? | causaLens (8)

Why Causal AI? | causaLens (9)

Why Causal AI? | causaLens (10)

What do we mean by Causal AI?

The Causal AI ecosystem in decisionOS contains a rich set of tools, broadly divided in 3 categories:

1. Causal Discovery

Causal discoveryis the process of combining algorithms and domain expertise to discover a causal graph from observational data. Causal graphs attempt to model the underlying data generating process rather than simple associations between variables.

decisionOS contains a full suite of the best-in class Causal Discovery algorithms that allow you to estimate these causal graphs in a wide variety of settings.

Learn more

Why Causal AI? | causaLens (11)

CausalWorkflow.discover_causal_graph(data, config)

2. Causal Model Discovery

Once causal relationships have been inferred you must train a structural causal model. In a structural causal model the relationships between variables represent causal effects, i.e. it is a representation of the underlying mechanism by which the system operates.

Learn more

Why Causal AI? | causaLens (12)

from causalnet import CausalNetcnet = CausalNet()cnet.train(...)cnet.interventions.do(...)

Why Causal AI? | causaLens (13)

from cldt import CLDTRegressorcldt_regressor = CLDTRegressor(...)cldt_regrressor.fit(...)

3. Decision Intelligence

A structural causal model allows us to go beyond pure predictions and estimate the effect of treatments and counterfactuals. Using these estimations allows us to unlock a new class of decision intelligence.

Algorithmic recourse

Provide optimal interventions for a given objective.

Causal effect estimation

Quantify how interventions impact different groups within your data.

Causal fairness

Determine how discrimination can occur within your data as you perform interventions and actions.

Root Cause Analysis

Answer new causal questions through the use of interventions and counterfactuals.

Why Causal AI? | causaLens (14)

Related Resources

Enterprise decision making needs more than LLMs

Following the hype around large language models (LLMs), tools and applications, the question remains, how many enterprise problems today can actually be solved by ChatGPT?

Discovering Causal Drivers at Scale

We discuss the challenges of scaling causal discovery for high-dimensional datasets in order to enable effective decision making in complex systems.

How Can AI Discover Cause and Effect?

Causal AI autonomously finds causes, using “causal discovery algorithms”, while boosting experimentation and human intuition.

Ways to get started

Book a personalized demo

Book a demo to see our decision-making AI powered by Causal AI in action.

Get started

Request Free Trial

Discover the power of Causal AI by requesting a free trial of decisionOS.

Get started

Resources

Read our white papers, case studies, and research to gain new understanding in the world of Causality.

Get started

Why Causal AI? | causaLens (2024)
Top Articles
Baji Live Login to personal account - Baji live
আমাদের সম্পর্কে - Baji Live
Vegas X Vip.org
Understanding Filmyzilla - A Comprehensive Guide to Movies
Nizhoni Massage Gun
Everything You Might Want to Know About Tantric Massage - We've Asked a Pro
Craigslist Richmond Ba
Uscis Fort Myers 3850 Colonial Blvd
Craigslist Cars And Trucks For Sale Private Owners
Which Statement About These Two Restaurant Meals Is Correct
Sarah Dreyer Obituary
Craigslist Hutchinson Ks
Is Robert Manse Leaving Hsn
Giantesssave
Pachuvum Athbutha Vilakkum Movie Download Telegram Link
Ian D. McClure on LinkedIn: New partnerships, licenses, patents and projects in today’s #ukotc…
To Give A Guarantee Promise Figgerits
Ninaisboring
ACCESS Arts Live --- Online Performing Arts for All on LinkedIn: Leeds International Piano Competition 2024 | Second Round | 12 September…
Robotization Deviantart
Unveiling The Fascination: Makayla Campinos Video
Red Lobster cleared to exit bankruptcy under new owner Fortress
159R Bus Schedule Pdf
2010 Ford F-350 Super Duty XLT for sale - Wadena, MN - craigslist
Gem City Surgeons Miami Valley South
Zen Leaf New Kensington Menu
Scrap Metal Prices in Indiana, Pennsylvania Scrap Price Index,United States Scrap Yards
Camwhor*s Bypass 2022
Account Now Login In
Hyvee Workday
Haverhill, MA Obituaries | Driscoll Funeral Home and Cremation Service
How 'Tuesday' Brings Death to Life With Heart, Humor, and a Giant Bird
Union Supply Direct Wisconsin
Bolly2Tolly Sale
Dimbleby Funeral Home
100000 Divided By 3
Litter-Robot 3 Pinch Contact & Dfi Kit
Cbs Sportsline Fantasy Rankings
Hingham Police Scanner Wicked Local
Jetnet Retirees Aa
Alineaciones De Rcd Espanyol Contra Celta De Vigo
Solar Smash Unblocked Wtf
Urgent Care Pelham Nh
Plusword 358
Publix Coral Way And 147
Best Blox Fruit For Grinding
Call Of The Arbiter Code Chase Episode 3
Equine Trail Sports
Wis International Intranet
The Crew 2 Cheats für PS4, Xbox One und PC ▷➡️
Transportationco.logisticare
8X10 Meters To Square Meters
Latest Posts
Article information

Author: Ouida Strosin DO

Last Updated:

Views: 5988

Rating: 4.6 / 5 (76 voted)

Reviews: 83% of readers found this page helpful

Author information

Name: Ouida Strosin DO

Birthday: 1995-04-27

Address: Suite 927 930 Kilback Radial, Candidaville, TN 87795

Phone: +8561498978366

Job: Legacy Manufacturing Specialist

Hobby: Singing, Mountain biking, Water sports, Water sports, Taxidermy, Polo, Pet

Introduction: My name is Ouida Strosin DO, I am a precious, combative, spotless, modern, spotless, beautiful, precious person who loves writing and wants to share my knowledge and understanding with you.