Rental market snapshot for South San Francisco, California

South San Francisco, California Rental Property Market Overview

The average rent for an apartment in South San Francisco is $3,614. The cost of rent varies depending on several factors, including location, size, and quality.

The average rent has increased by 9.1% over the past year.

South San Francisco is a city located in northern California, just south of San Francisco. As of 2021, the population of South San Francisco is 64,251. The city is known for its diverse population and its many technology companies.

Last Updated December 23, 2022

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Average monthly rent graph in South San Francisco California | Cost of Living

  • The most expensive ZIP Code in South San Francisco is 94080 with an average price of $3,491
  • The cheapest ZIP Code in South San Francisco is 94080 with an average price of $3,200

South San Francisco ZIP Codes with the highest, most expensive rent

#zip codeaverage rent
194080$3,491

Live near South San Francisco, California's Top Sights and Attractions

Orange Memorial Park is a beautiful park located in South San Francisco, California. The park features a variety of amenities including a playground, picnic areas, a basketball court, and a walking trail. The park is also home to a number of Orange Memorial trees, which are a popular attraction for visitors.

Centennial Way is a scenic route that runs along the San Francisco Bay. It offers views of the Golden Gate Bridge, Alcatraz Island, and the city skyline.

Alta Loma Park is a beautiful park located in South San Francisco, California. The park has a playground, a basketball court, a picnic area, and a walking trail. The park is also home to a variety of birds and other wildlife.

Westborough Park is a beautiful park located in South San Francisco, California. The park features a variety of amenities including a playground, picnic tables, a walking trail, and a pond. The park is also home to a variety of wildlife, including ducks, geese, and turtles.

Oyster Point Marina is a beautiful place to take a stroll, relax by the water, and enjoy the stunning views of the San Francisco Bay. The marina is home to many boats and yachts, and is a popular spot for fishing, picnicking, and kayaking.

Francis Drake Masonic Lodge 376 is a historic lodge located in South San Francisco, California. The lodge was founded in 1868 and is one of the oldest lodges in the state. The lodge is named after Francis Drake, who was a famous English explorer and pirate. The lodge has a beautiful meeting hall with a large fireplace and a stained glass window. The lodge also has a museum with a collection of historic artifacts.

Monte Verde Park is a small park located in South San Francisco, California. The park features a playground, a picnic area, and a small pond.

Sellick Park is a small park located in South San Francisco, California. The park features a playground, a picnic area, and a small pond.

South San Francisco, California area median rent change by ZIP Code map

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How does South San Francisco compare to other cities in California ?

citymedian price
Redondo Beach$3,995
Santa Ana$3,037
Larkspur$3,400
Altadena$3,345
Bellflower$2,854
San Bruno$2,953
San Dimas$2,545
Lakewood$2,282
Lemoore$975
Chino$2,799

Average household income in South San Francisco area graph - US Census

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The median household income in South San Francisco in 2021 was $106,005. This represents a 40.3% change from 2011 when the median was $75,543.

#categorypercent
0Less than $10,0003.1%
1$10,000 to $14,9992.5%
2$15,000 to $19,9992.1%
3$20,000 to $24,9991.9%
4$25,000 to $29,9992.5%
5$30,000 to $34,9992.1%
6$35,000 to $39,9991.2%
7$40,000 to $44,9992.7%
8$45,000 to $49,9992.2%
9$50,000 to $59,9994.5%
10$60,000 to $74,9998.1%
11$75,000 to $99,99914.2%
12$100,000 to $124,9999.5%
13$125,000 to $149,9997.8%
14$150,000 to $199,99913.3%
15$200,000 or more22.1%

Frequently asked questions

Our data is best categorized as "alternative data", which is a burgeoning sector. Through partnerships and direct feeds, we extract key factual elements that are publicly available within rental listings on internet listing sites and property websites. Once aggregated, we mine through the data to parse out relevant insights and calculate important metrics, benchmarks, and other KPIs. Each week, our system sifts through millions of listing observations and other pockets of market information to deliver the most comprehensive picture of rental housing available.

This is a metric that we try not to overthink. Simply, we take each unique listing observation within a geographic boundary and calculate a simple average. Of course, we're careful to filter for duplicates and other listings that aren't reflective of the market.

Yes, but please attribute us accordingly.

Yes. We can deliver bulk raw data in various formats. Please contact us to discuss - [email protected]

While some of our data is refreshed daily and other data comes in weekly, the bulk of it comes in on a biweekly basis.

Our coverage is nationwide! In our platform, we have data points for every ZIP code and neighborhood boundary in the country.

Every rental housing unit is differentiated by attributes such as its location, square footage, and amenity composition. Thanks to machine learning and natural language processing technologies we deploy, we're able to deconstruct our rental listing data points and identify key amenities for each listing. With this information, we're able to give signals around how certain amenities drive rental pricing value in certain areas.

Well, we think so! At the highest level, our process is simple. Listings data is ingested, cleaned (de-duplicated. etc.), analyzed for insights, and then presented to our users.
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