Bearing in mind that I'll be performing calculations on lat / long pairs, what datatype is best suited for use with a MySQL database?

1I found this link very useful: howtousemysqlspatialext.blogspot.com/2007/11/… It may be a little bit older, but it contains a complete explanation including examples. – madc Jul 15 '11 at 17:03

Imho most people here do not understand what happens. As soon as the app code touches a number, provided one uses doubles (which most do), the number turns into at most double precision. Storing it then with even a million decimals won't do any good. Storing it with a limited number of decimals (eg. 6) destroys part of that precision and adds an accumulated error each time it is rewritten into the database. A double carries ca 16 significant numbers, potentially all decimals. Scrapping off 10 of them creates an accumulated error over time. It is "floating point" for reason. Cont. – Stormwind Jan 25 '17 at 3:04

Cont: 6 decimals may be ok when storing a figure as acquired from an external source, unaltered and for the first time  as source material. But if performing a calculation on it even once, and storing it again, it is dumb to remove part of it's precision by enforcing a specific decimal format. Performing the calculation solely inside the server may be different (the server may or may not be using something else than doubles internally), and using worse numeric representations than double in the app calculation ofc decreses the need for storage precision equally. – Stormwind Jan 25 '17 at 3:11

Cont: IF the server stores the number with a higher precision, despite the claimed "9.6" (which i do not know if it does), then nothing of all this matters, and the format is purely a matter of convenience  has little to do with precision issues. But i would not be surprised if the server actually rounds any number into 6 decimal precision with that format. – Stormwind Jan 25 '17 at 3:26

Cont: Finally: For lat,lon's, the 6th decimal is a matter of snapping into a ca. 11centimeter grid. Each time one reads (touches), calculates and stores again, with 6 decimals, there will be a new snapping (= accumulated error). If all errors happen to go in the same direction, there will be a big error. If performing temporary multiplications on it (eg. scale up, then subtract and scale down), it may grow even bigger. Do not scrap precision without a good rason! – Stormwind Jan 25 '17 at 3:35
Use MySQL's spatial extensions with GIS.

20Do you have any other links to examples or any other info as to how best get started with them? – Codebeef Oct 1 '08 at 19:40

6MYSQL Spatial is a good option, but still has significant limits and caveats (as of 6). Please see my answer below... – James Schek Oct 2 '08 at 15:43

1@James Schek is right. Plus, MySQL does all it's calculations using euclidean geometry, so it doesn't represent a realworld use case for lat/lng. – mkuech May 14 '13 at 14:53

FYI; Mysql support spatial index only with *.myisam tables, i.e. the ISAM engine. Link: dev.mysql.com/doc/refman/5.0/en/creatingspatialindexes.html – PodTech.io Jan 15 '17 at 5:46

Have a look at this article in the end Update part: mysqlserverteam.com/mysql57andgisanexample – Jaspal Singh Jun 22 '17 at 15:15
Google provides a start to finish PHP/MySQL solution for an example "Store Locator" application with Google Maps. In this example, they store the lat/lng values as "Float" with a length of "10,6"

11Google clearly doesn't understand how the FLOAT specification works:
FLOAT(10,6)
leaves 4 digits for the integer part of the coordinate. And no, the sign doesn't count  that comes from the (un)signed attribute. – Alix Axel May 9 '13 at 9:54 
36@AlixAxel I think Google knows what it is doing. Because it states that: "With the current zoom capabilities of Google Maps, you should only need 6 digits of precision after the decimal. That will let the fields store 6 digits after the decimal, plus up to 4 digits before the decimal, e.g. 123.456789 degrees.". If unsigned is checked the pattern will be 1234,567890. So no problems. – 1.44mb Feb 19 '14 at 10:58

4

16@AlixAxel He is counting off the the numbers in the sequence; not using an actual coordinate... – Andrew Ellis May 27 '14 at 21:57

8
Basically it depends on the precision you need for your locations. Using DOUBLE you'll have a 3.5nm precision. DECIMAL(8,6)/(9,6) goes down to 16cm. FLOAT is 1.7m...
This very interesting table has a more complete list: http://mysql.rjweb.org/doc.php/latlng :
Datatype Bytes Resolution
Deg*100 (SMALLINT) 4 1570 m 1.0 mi Cities
DECIMAL(4,2)/(5,2) 5 1570 m 1.0 mi Cities
SMALLINT scaled 4 682 m 0.4 mi Cities
Deg*10000 (MEDIUMINT) 6 16 m 52 ft Houses/Businesses
DECIMAL(6,4)/(7,4) 7 16 m 52 ft Houses/Businesses
MEDIUMINT scaled 6 2.7 m 8.8 ft
FLOAT 8 1.7 m 5.6 ft
DECIMAL(8,6)/(9,6) 9 16cm 1/2 ft Friends in a mall
Deg*10000000 (INT) 8 16mm 5/8 in Marbles
DOUBLE 16 3.5nm ... Fleas on a dog
Hope this helps.

2I need to write a constructive, detailed commentary focused on the contents of the posts, so I will say that while observing the accuracy table as provided from Rick James' website, I was mildly amused at the resolution description "fleas on a dog" and felt it worthy of kudos. Technically speaking, this was a helpful depiction that assisted me in deciding what datatype to use when storing coordinates for measuring the distance between two addresses, which, @Simon, I'd like to thank you for sharing. – Sam_Butler Jun 25 '17 at 22:30

MySQL's Spatial Extensions are the best option because you have the full list of spatial operators and indices at your disposal. A spatial index will allow you to perform distancebased calculations very quickly. Please keep in mind that as of 6.0, the Spatial Extension is still incomplete. I am not putting down MySQL Spatial, only letting you know of the pitfalls before you get too far along on this.
If you are dealing strictly with points and only the DISTANCE function, this is fine. If you need to do any calculations with Polygons, Lines, or BufferedPoints, the spatial operators do not provide exact results unless you use the "relate" operator. See the warning at the top of 21.5.6. Relationships such as contains, within, or intersects are using the MBR, not the exact geometry shape (i.e. an Ellipse is treated like a Rectangle).
Also, the distances in MySQL Spatial are in the same units as your first geometry. This means if you're using Decimal Degrees, then your distance measurements are in Decimal Degrees. This will make it very difficult to get exact results as you get furthur from the equator.

26Restating: MySQL Spatial Extensions aren't suitable for calculating great circle distances between points on the surface of the earth represented by lat/long. Their distance functions, etc, are only useful on cartesian, planar, coordinates. – O. Jones Feb 11 '12 at 0:17
When I did this for a navigation database built from ARINC424 I did a fair amount of testing and looking back at the code, I used a DECIMAL(18,12) (Actually a NUMERIC(18,12) because it was firebird).
Floats and doubles aren't as precise and may result in rounding errors which may be a very bad thing. I can't remember if I found any real data that had problems  but I'm fairly certain that the inability to store accurately in a float or a double could cause problems
The point is that when using degrees or radians we know the range of the values  and the fractional part needs the most digits.
The MySQL Spatial Extensions are a good alternative because they follow The OpenGIS Geometry Model. I didn't use them because I needed to keep my database portable.

2Thank you, this was helpful. Feels weird reading all these questions and answers from 2008 realising it was already 8 years ago. – aexl Nov 8 '16 at 22:03

1@TheSexiestManinJamaica  Before IEEE 7541985, computer floatingpoint hardware was chaotic. There was even on machine where
a*b
was not equalb*a
(for some values). There were many examples somewhat like:2+2 = 3.9999
. The standard cleaned up a lot of mess, and was 'rapidly' adopted by virtually every piece of hardware and software. So, this discussion has been valid, not just since 2008, but for a third of a century. – Rick James May 6 '18 at 3:42
Depends on the precision that you require.
Datatype Bytes resolution
  
Deg*100 (SMALLINT) 4 1570 m 1.0 mi Cities
DECIMAL(4,2)/(5,2) 5 1570 m 1.0 mi Cities
SMALLINT scaled 4 682 m 0.4 mi Cities
Deg*10000 (MEDIUMINT) 6 16 m 52 ft Houses/Businesses
DECIMAL(6,4)/(7,4) 7 16 m 52 ft Houses/Businesses
MEDIUMINT scaled 6 2.7 m 8.8 ft
FLOAT 8 1.7 m 5.6 ft
DECIMAL(8,6)/(9,6) 9 16cm 1/2 ft Friends in a mall
Deg*10000000 (INT) 8 16mm 5/8 in Marbles
DOUBLE 16 3.5nm ... Fleas on a dog
From: http://mysql.rjweb.org/doc.php/latlng
To summarise:
 The most precise available option is
DOUBLE
.  The most common seen type used is
DECIMAL(8,6)/(9,6)
.
As of MySQL 5.7, consider using Spatial Data Types (SDT), specifically POINT
for storing a single coordinate. Prior to 5.7, SDT does not support indexes (with exception of 5.6 when table type is MyISAM).
Note:
 When using
POINT
class, the order of the arguments for storing coordinates must bePOINT(latitude, longitude)
.  There is a special syntax for creating a spatial index.
 The biggest benefit of using SDT is that you have access to Spatial Analyses Functions, e.g. calculating distance between two points (
ST_Distance
) and determining whether one point is contained within another area (ST_Contains
).

2You copy pasted part of a previous answer and "summarise" with something the guy that created that table did not recommend: «How to PARTITION? Well, MySQL is very picky. So FLOAT/DOUBLE are out. DECIMAL is out. So, we are stuck with some kludge. Essentially, we need to convert Lat/Lng to some size of INT and use PARTITION BY RANGE.» AND «FLOAT has 24 significant bits; DOUBLE has 53. (They don't work with PARTITIONing but are included for completeness. Often people use DOUBLE without realizing how much an overkill it is, and how much space it takes.)» Just leave the SDT part you wrote. – Armfoot Nov 26 '15 at 11:51

1@Armfoot If you look at the time of the edits, it is the other answer that copied from me. Not that it matters: I am seeing Stack Overflow more of a "notes for the future me". – Gajus Nov 26 '15 at 12:00

1No he didn't copy from you, he just pasted the table like you did from the link he referenced on 2014 (your post is from 2015). Btw, I think you misspelled "Special" when you linked Spatial Data Types. This part you wrote is actually useful for people who want to start using them, if you add some more examples like
CREATE TABLE geom (g GEOMETRY NOT NULL, SPATIAL INDEX(g)) ENGINE=MyISAM;
and the warning about SDT limitations, as James mentioned, perhaps your answer will be more concise and precise in helping other people as well... – Armfoot Nov 26 '15 at 12:07 
3

@Gajus  I'm honored that two of you found my document! (No, I don't know how big a flea is, but I felt it would get someone's attention.) – Rick James May 6 '18 at 3:46
Based on this wiki article http://en.wikipedia.org/wiki/Decimal_degrees#Accuracy the appropriate data type in MySQL is Decimal(9,6) for storing the longitude and latitude in separate fields.
Use DECIMAL(8,6)
for latitude (90 to 90 degrees) and DECIMAL(9,6)
for longitude (180 to 180 degrees). 6 decimal places is fine for most applications. Both should be "signed" to allow for negative values.

DECIMAL
type is intended for financial calculations where nofloor/ceil
is accepted. PlainFLOAT
significantly outperformsDECIMAL
. – Kondybas Jul 28 '17 at 22:21 
1@Kondybas  Since the main cost in a database is fetching rows, the performance difference between float and decimal should not be a concern. – Rick James May 6 '18 at 3:49
No need to go far, according to Google Maps, the best is FLOAT(10,6) for lat and lng.
We store latitude/longitude X 1,000,000 in our oracle database as NUMBERS to avoid round off errors with doubles.
Given that latitude/longitude to the 6th decimal place was 10 cm accuracy that was all we needed. Many other databases also store lat/long to the 6th decimal place.

2Multiplying by some large number (like a million) is great if you have a lot of data because integer operations (e.g. indexed retrieval) are much much faster than floats. – Kaitlin Duck Sherwood Apr 22 '16 at 3:43

@KaitlinDuckSherwood  bits are bits  I'm not aware of any reason a 32bit float would be slower for retrieval (indexed or otherwise) than a 32bit integer. Even floating math these days is fast enough to be a nonissue. Nevertheless, I agree with the comment to use implied multiplier with an integer: it maximizes the precision you get out of 32 bits. A bit of futureproofing as technology improves. – ToolmakerSteve Apr 7 at 15:32
In a completely different and simpler perspective:
 if you are relying on Google for showing your maps, markers, polygons, whatever, then let the calculations be done by Google!
 you save resources on your server and you simply store the latitude and longitude together as a single string (
VARCHAR
), E.g.: "0000.0000001,0000.000000000000001" (35 length and if a number has more than 7 decimal digits then it gets rounded);  if Google returns more than 7 decimal digits per number, you can get that data stored in your string anyway, just in case you want to detect some flees or microbes in the future;
 you can use their distance matrix or their geometry library for calculating distances or detecting points in certain areas with calls as simple as this:
google.maps.geometry.poly.containsLocation(latLng, bermudaTrianglePolygon))
 there are plenty of "serverside" APIs you can use (in Python, Ruby on Rails, PHP, CodeIgniter, Laravel, Yii, Zend Framework, etc.) that use Google Maps API.
This way you don't need to worry about indexing numbers and all the other problems associated with data types that may screw up your coordinates.

No good. OP said he'd be performing calculations on the lat/lng pairs  your answers preclude that – Yarin May 15 '16 at 17:42

4@Yarin This is a popular question where a few (or a lot) of people just need an answer on how to store the coordinates according to their own needs (a great deal of them may just use Google maps). Your downvote suggests that this answer may not help them... By storing the coordinates in a string they will know exactly the original values that were provided to them (e.g.: by Google) which will do help them later if they decide to evolve their own app and perform calculations on them. At that time, they'll still have the original raw data just because they didn't mess it up with conversions. – Armfoot May 22 '16 at 0:42
depending on you application, i suggest using FLOAT(9,6)
spatial keys will give you more features, but in by production benchmarks the floats are much faster than the spatial keys. (0,01 VS 0,001 in AVG)

Can you please provide your test result with details here ? – NameNotFoundException Sep 29 '17 at 7:10
MySQL uses double for all floats ... So use type double. Using float will lead to unpredictable rounded values in most situations

1MySQL performs operations in
DOUBLE
. MySQL lets you store data as either a 4byteFLOAT
or an 8byteDOUBLE
. So, there is likely to be a loss of precision when storing an expression into aFLOAT
column. – Rick James May 6 '18 at 3:54
While it isn't optimal for all operations, if you are making map tiles or working with large numbers of markers (dots) with only one projection (e.g. Mercator, like Google Maps and many other slippy maps frameworks expect), I have found what I call "Vast Coordinate System" to be really, really handy. Basically, you store x and y pixel coordinates at some wayzoomedin  I use zoom level 23. This has several benefits:
 You do the expensive lat/lng to mercator pixel transformation once instead of every time you handle the point
 Getting the tile coordinate from a record given a zoom level takes one right shift.
 Getting the pixel coordinate from a record takes one right shift and one bitwise AND.
 The shifts are so lightweight that it is practical to do them in SQL, which means you can do a DISTINCT to return only one record per pixel location, which will cut down on the number records returned by the backend, which means less processing on the front end.
I talked about all this in a recent blog post: http://blog.webfoot.com/2013/03/12/optimizingmaptilegeneration/
I am highly surprised by some answers/comments.
Why on earth would anyone be willing to voluntarely "predecrease" the precision, and then later on perform calculations on the worse numbers? Sounds ultimately stupid.
If the source has 64bit precision, certainly it would be dumb to voluntarely fix the scale to eg. 6 decimals, and limit the precision to a maximum of 9 significant digts (which happens with the commonly proposed decimal 9.6 format).
Naturally, one stores the data with the precision that the source material has. The only reason to decrease precision would be limited storage space.
 Store source figures with original accuracy
 Store figures calculated from the source in the precision the calculation happens (eg. if the aplication code uses doubles, store the results as doubles)
The decimal 9.6format causes a snaptogrid phenomen. That should be the very last step, if it is at all to happen.
I wouldn't invite accumulated errors to my nest.

1Because most GPS tools and applications are only accurate to 6 decimal places. Pointless to store data to a greater precision than what tools can measure gis.stackexchange.com/questions/8650/… – Yarin May 15 '16 at 17:52

1@Yarin Yes indeed, but you talk about measurements and GPS, which are not mentioned in the question. Most certainly there exist more accurate figures. But lets consider GPS; say a source data set of 64bit floats, that already contains an inaccuracy. 6 decimals means snapping a latitude to closest ca 11 centimeters. Hence, by only storing the data (with 6 decimals) now, you open up for a potential 22 cm inaccuracy (if originally 11 cm too). Voluntarely, probably to do 64bit calculation on that, before maybe storing a 3rd time  now 33 cm inaccuracy window, +16 cm. Sounds dumb, imho. – Stormwind May 15 '16 at 21:44


@Rick James I'd likely store it as 64bit, ie. 0.3333333333333333. We talk geodata, right? "1/3" rarely appears in nature where things are normally measured, with a reasonable precision. – Stormwind May 7 '18 at 12:24
The spatial functions in PostGIS are much more functional (i.e. not constrained to BBOX operations) than those in the MySQL spatial functions. Check it out: link text
TL;DR
Use FLOAT(8,5) if you're not working in NASA / military and not making aircrafts navi systems.
To answer your question fully, you'd need to consider several things:
Format
 degrees minutes seconds: 40° 26′ 46″ N 79° 58′ 56″ W
 degrees decimal minutes: 40° 26.767′ N 79° 58.933′ W
 decimal degrees 1: 40.446° N 79.982° W
 decimal degrees 2: 32.60875, 21.27812
 Some other homemade format? Noone forbids you from making your own homecentric coordinates system and store it as heading and distance from your home. This could make sense for some specific problems you're working on.
So the first part of the answer would be  you can store the coordinates in the format your application uses to avoid constant conversions back and forth and make simpler SQL queries.
Most probably you use Google Maps or OSM to display your data, and GMaps are using "decimal degrees 2" format. So it will be easier to store coordinates in the same format.
Precision
Then, you'd like to define precision you need. Of course you can store coordinates like "32.608697550570334,21.278081997935146", but have you ever cared about millimeters while navigation to the point? If you're not working in NASA and not doing satellites or rockets or planes trajectories, you should be fine with several meters accuracy.
Commonly used format is 5 digits after dots which gives you 50cm accuracy.
Example: there is 1cm distance between X,21.2780818 and X,21.2780819. So 7 digits after dot give you 1/2cm precision and 5 digits after dot will give you 1/2 meters precision (because minimal distance between distinct points is 1m, so rounding error cannot be more than half of it). For most civil purposes it should be enough.
degrees decimal minutes format (40° 26.767′ N 79° 58.933′ W) gives you exactly the same precision as 5 digits after dot
Spaceefficient storage
If you've selected decimal format, then your coordinate is a pair (32.60875, 21.27812). Obviously, 2 x (1 bit for sign, 2 digits for degrees and 5 digits for exponent) will be enough.
So here I'd like to support Alix Axel from comments saying that Google suggestion to store it in FLOAT(10,6) is really extra, because you don't need 4 digits for main part (since sign is separated and latitude is limited to 90 and longitude is limited to 180). You can easily use FLOAT(8,5) for 1/2m precision or FLOAT(9,6) for 50/2cm precision. Or you can even store lat and long in separated types, because FLOAT(7,5) is enough for lat. See MySQL float types reference. Any of them will be like normal FLOAT and equal to 4 bytes anyway.
Usually space is not an issue nowadays, but if you want to really optimize the storage for some reason (Disclaimer: don't do preoptimization), you may compress lat(no more than 91 000 values + sign) + long(no more than 181 000 values + sign) to 21 bits which is significantly less than 2xFLOAT (8 bytes == 64 bits)
Latitudes range from 90 to +90 (degrees), so DECIMAL(10, 8) is ok for that
longitudes range from 180 to +180 (degrees) so you need DECIMAL(11, 8).
Note: The first number is the total number of digits stored, and the second is the number after the decimal point.
In short: lat DECIMAL(10, 8) NOT NULL, lng DECIMAL(11, 8) NOT NULL
Lat Long calculations require precision, so use some type of decimal type and make the precision at least 2 higher than the number you will store in order to perform math calculations. I don't know about the my sql datatypes but in SQL server people often use float or real instead of decimal and get into trouble because these are are estimated numbers not real ones. So just make sure the data type you use is a true decimal type and not a floating decimal type and you should be fine.

1both float and decimal types have their place. as a rule of thumb, floats mean physical variables, and decimals are for countable entities (mostly money). i don't see why you'd prefer decimal for lat/long – Javier Oct 1 '08 at 19:26

1I also think float is fine for lat/long. At least on SQL Server (4bytes, 7 digits). – Dragoljub Curcic May 21 '09 at 16:46

Float is not exact it is estimated, lake of exactness in a lat long is fatal! It could point you to a completely differnt spot on the globe. – HLGEM May 21 '09 at 17:26

2The maximum error of float datatypes is low enough that this shouldn't be a problem. I mean, you have to be aware of error multiplication/accumulation with both implementations anyway. – Spidey Apr 16 '12 at 21:12

@HLGEM  Rounding to some number of decimal places also lands you in a different spot on the globe. The question is whether that different spot is so close that it does not matter. – Rick James May 6 '18 at 3:59
A FLOAT
should give you all of the precision you need, and be better for comparison functions than storing each coordinate as a string or the like.
If your MySQL version is earlier than 5.0.3, you may need to take heed of certain floating point comparison errors however.
Prior to MySQL 5.0.3, DECIMAL columns store values with exact precision because they are represented as strings, but calculations on DECIMAL values are done using floatingpoint operations. As of 5.0.3, MySQL performs DECIMAL operations with a precision of 64 decimal digits, which should solve most common inaccuracy problems when it comes to DECIMAL columns

2You need a real latitude/longitude coordinate datatype for easy math. Imagine the convenience of something like the equivalent of "select * from stores where distance(stores.location, mylocation) < 5 miles" – Kirk Strauser Oct 1 '08 at 19:23

1Hadn't heard of the spatial extensions before, that does sound very convenient alright, having previously worked on an inherited app that does quite a bit of georelated calculations, must check it out. – ConroyP Oct 1 '08 at 19:33

@ConroyP  No. That quote is pointing out that
DECIMAL
had (before 5.0.3) certain errors due to the use of floating implementation. – Rick James May 6 '18 at 4:01