Santa Fe
Institute
  • Research
    • Themes
    • Projects
    • SFI Press
    • Researchers
    • Publications
    • Library
    • Sponsored Research
    • Fellowships
    • Miller Scholarships
  • News + Events
    • News
    • Newsletters
    • Podcasts
    • SFI in the Media
    • Media Center
    • Events
    • Community
    • Journalism Fellowship
  • Education
    • Programs
    • Projects
    • Alumni
    • Complexity Explorer
    • Education FAQ
    • Postdoctoral Research
    • Education Supporters
  • People
    • Researchers
    • Fractal Faculty
    • Staff
    • Miller Scholars
    • Trustees
    • Governance
    • Resident Artists
    • Research Supporters
  • Applied Complexity
    • Office
    • Applied Projects
    • ACtioN
    • Applied Fellows
    • Studios
    • Applied Events
    • Login
  • Give
    • Give Now
    • Ways to Give
    • Contact
  • About
    • About SFI
    • Engage
    • Complex Systems
    • FAQ
    • Campuses
    • Jobs
    • Contact
    • Library
    • Employee Portal

Science for a Complex World

Events

Here's what's happening

Give

You make SFI possible

Subscribe

Sign up for research news

Connect

Follow us on social media

© 2026 Santa Fe Institute. All rights reserved. This site is supported by the Miller Omega Program.

Home / News

Where to park your car, according to math

(Photo: Sergiy1975/iStock)
September 19, 2019

Just as mathematics reveals the motions of the stars and the rhythms of nature, it can also shed light on the more mundane decisions of everyday life. Where to park your car, for example, is the subject of a new look at a classic optimization problem by physicists Paul Krapivsky (Boston University) and Sidney Redner (Santa Fe Institute) published in this week’s Journal of Statistical Mechanics.

The problem assumes what many of us can relate to when exhausted, encumbered, or desperate to be somewhere else: the best parking space is the one that minimizes time spent in the lot. So that space by the front door is ideal, unless you have to circle back three times to get it. In order to reduce the time spent driving around the lot AND walking across it, the efficient driver must decide whether to go for the close space, quickly park further out, or settle for something in-between. 

“Mathematics allows you to make intelligent decisions,” Redner says. “It allows you to approach a complex world with some insights.”

 

(Video: Michael Garfield for the Santa Fe Institute)

In their paper, Krapivsky and Redner map three simple parking strategies onto an idealized, single row parking lot. Drivers who grab the first space available follow what the authors call a “meek” strategy. They "waste no time looking for a parking spot," leaving spots near the entrance unfilled. Those who gamble on finding a space right next to the entrance are “optimistic.” They drive all the way to the entrance, then backtrack to the closest vacancy. “Prudent” drivers take the middle path. They drive past the first available space, betting on the availability of at least one other space further in. When they find the closest space between parked cars, they take it. If no spaces exist between the furthest parked car and the entrance, prudent drivers backtrack to the space a meek driver would have claimed straightaway.

Despite the simplicity of the three strategies, the authors had to use multiple techniques to compute their relative merits. Oddly enough, the meek strategy mirrored a dynamic seen in the microtubules that provide scaffolding within living cells. A car that parks immediately after the furthest car corresponds to a monomer glomming on to one end of the microtubule. The equation that describes a microtubule’s length — and sometimes dramatic shortening — also described the chain of “meek” cars that accumulate at the far end of the lot.

“Sometimes there are connections between things that seem to have no connection,” Redner says. “In this case, the connection to microtubule dynamics made the problem solvable.”

To model the optimistic strategy, the authors wrote a differential equation. Once they began to mathematically express the scenario, they spotted a logical shortcut which greatly simplified the number of spaces to consider.

The prudent strategy, according to Redner, was “inherently complicated” given the many spaces in play. The authors approached it by creating a simulation that allowed them to compute, on average, the average density of spots and the amount of backtracking required.

So which strategy is best? As the name suggests, the prudent strategy. Overall, it costs drivers the least amount of time, followed closely by the optimistic strategy. The meek strategy was “risibly inefficient,” to quote the paper, as the many spaces it left empty created a lengthy walk to the entrance.

Redner acknowledges that the optimization problem sacrifices much real-world applicability in exchange for mathematical insight. Leaving out competition between cars, for example, or assuming cars follow a uniform strategy under each scenario, are unrealistic assumptions that the authors may address in a future model.  

“If you really want to be an engineer you have to take into account how fast people are driving, the actual designs of the parking lot and spaces — all these things,” he remarks. “Once you start being completely realistic, [every parking situation is different] and you lose the possibility of explaining anything.”

Still, for Redner, it’s all about the joy of thinking analytically about everyday situations.

“We’re living in a crowded society and we always encounter crowding phenomena in parking lots, traffic patterns, you name it,” he says. “If you can look at it with the right eyes, you can account for something.”

Read the paper, "Simple parking strategies," in the Journal of Statistical Mechanics (September 19, 2019)

Read the article, "How to find the perfect parking spot," in Quartz (September 25, 2019)

Watch the video, "The Mathematics of Where to Park Your Car," on BoingBoing (September 25, 2019)

Read the article, "Maths tackles an eternal question: where to park?" in Nature (September 25, 2019)

Read the newscript, "Park Perfect," in C&EN News, and the follow-up editor's note (May 11, 2019)

Read the article (in German), "Die perfekte Parkplatz-Strategie: Nicht den ersten nehmen," in Deutschlandfunk (September 25, 2019)

Read the article, "To find the best parking spot, do the math," in Ars Technica (September 26, 2019)

Read the article , "Mathematics Finally used to Determine the Perfect Place to Park Your Car," in Jalopnik/Gizmodo (September 27, 2019)

 

 





Share
  • Sign Up For SFI News
News Media Contact

Santa Fe Institute

Office of Communications
news@santafe.edu
505-984-8800



  • Tags
  • SFI News Release
  • Research


More SFI News

View All News

Brian Enquist receives Robert H. MacArthur Award

Han van der Maas named director of Amsterdam’s Institute for Advanced Study

Marina Dubova receives Dissertation Prize

Smart parts for smart wholes

Aaron Clauset receives honors from AAAS and University of New Mexico

Laurent Hébert-Dufresne receives Erdős-Rényi Prize

Why noise may be the key to understanding cell group patterns

Reinventing democracy before it breaks

Do deep learning models recognize 3D shapes in the same way humans do?

Upending assumptions about learning, inspired by an AI phenomenon

Looking at AGI through the lens of natural intelligence

A simple baseline for AI forecasting in machine learning

Constantino Tsallis to co-chair the 2027 Nobel Symposium on Statistical Mechanics

How novelty arrives: Review of “The Origins of the New”

Working group asks, what’s the benefit of a brain?

Measuring irreversibility in gene transcription

ACtioN Academy engages industry leaders on AI and complexity

Arguing for a complex adaptive power grid

Mark Newman Awarded 2026 SIAM John von Neumann Prize

Review: Nonesuch, by SFI Miller Scholar Francis Spufford