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An Introduction to boto's S3 interface
This tutorial focuses on the boto interface to the Simple Storage Service from Amazon Web Services. This tutorial assumes that you have already downloaded and installed boto.
Creating a Connection
The first step in accessing S3 is to create a connection to the service. There are two ways to do this in boto. The first is:
>>> from boto.s3.connection import S3Connection >>> conn = S3Connection('<aws access key>', '<aws secret key>')
At this point the variable conn will point to an S3Connection object. In this example, the AWS access key and AWS secret key are passed in to the method explicitely. Alternatively, you can set the environment variables:
AWS_ACCESS_KEY_ID - Your AWS Access Key ID AWS_SECRET_ACCESS_KEY - Your AWS Secret Access Key
and then call the constructor without any arguments, like this:
>>> conn = S3Connection()
There is also a shortcut function in the boto package, called connect_s3 that may provide a slightly easier means of creating a connection:
>>> import boto >>> conn = boto.connect_s3()
In either case, conn will point to an S3Connection object which we will use throughout the remainder of this tutorial.
Creating a Bucket
Once you have a connection established with S3, you will probably want to create a bucket. A bucket is a container used to store key/value pairs in S3. A bucket can hold un unlimited about of data so you could potentially have just one bucket in S3 for all of your information. Or, you could create separate buckets for different types of data. You can figure all of that out later, first let's just create a bucket. That can be accomplished like this:
>>> bucket = conn.create_bucket('mybucket') Traceback (most recent call last): File "<stdin>", line 1, in ? File "boto/connection.py", line 285, in create_bucket raise S3CreateError(response.status, response.reason) boto.exception.S3CreateError: S3Error[409]: Conflict
Whoa. What happended there? Well, the thing you have to know about buckets is that they are kind of like domain names. It's one flat name space that everyone who uses S3 shares. So, someone has already create a bucket called "mybucket" in S3 and that means no one else can grab that bucket name. So, you have to come up with a name that hasn't been taken yet. For example, something that uses a unique string as a prefix. Your AWS_ACCESS_KEY (NOT YOUR SECRET KEY!) could work but I'll leave it to your imagination to come up with something. I'll just assume that you found an acceptable name.
The create_bucket method will create the requested bucket if it does not exist or will return the existing bucket if it does exist.
Storing Data
Once you have a bucket, presumably you will want to store some data in it. S3 doesn't care what kind of information you store in your objects or what format you use to store it. All you need is a key that is unique within your bucket.
The Key object is used in boto to keep track of data stored in S3. To store new data in S3, start by creating a new Key object:
>>> from boto.s3.key import Key >>> k = Key(bucket) >>> k.key = 'foobar' >>> k.set_contents_from_string('This is a test of S3')
The net effect of these statements is to create a new object in S3 with a key of "foobar" and a value of "This is a test of S3". To validate that this worked, quit out of the interpreter and start it up again. Then:
>>> import boto >>> c = boto.connect_s3() >>> b = c.create_bucket('mybucket') # substitute your bucket name here >>> from boto.s3.key import Key >>> k = Key(b) >>> k.key = 'foobar' >>> k.get_contents_as_string() 'This is a test of S3'
So, we can definitely store and retrieve strings. A more interesting example may be to store the contents of a local file in S3 and then retrieve the contents to another local file.
>>> k = Key(b) >>> k.key = 'myfile' >>> k.set_contents_from_filename('foo.jpg') >>> k.get_contents_to_filename('bar.jpg')
There are a couple of things to note about this. When you send data to S3 from a file or filename, boto will attempt to determine the correct mime type for that file and send it as a Content-Type header. The boto package uses the standard mimetypes package in Python to do the mime type guessing. The other thing to note is that boto does stream the content to and from S3 so you should be able to send and receive large files without any problem.
Listing All Available Buckets
In addition to accessing specific buckets via the create_bucket method you can also get a list of all available buckets that you have created.
>>> rs = conn.get_all_buckets()
This returns a ResultSet object (see the SQS Tutorial for more info on ResultSet objects). The ResultSet can be used as a sequence or list type object to retrieve Bucket objects.
>>> len(rs) 11 >>> for b in rs: ... print b.name ... <listing of available buckets> >>> b = rs[0]
Setting / Getting the Access Control List for Buckets and Keys
The S3 service provides the ability to control access to buckets and keys within s3 via the Access Control List (ACL) associated with each object in S3. There are two ways to set the ACL for an object:
- Create a custom ACL that grants specific rights to specific users. At the moment, the users that are specified within grants have to be registered users of Amazon Web Services so this isn't as useful or as general as it could be.
- Use a "canned" access control policy. There are four canned policies
defined:
- private: Owner gets FULL_CONTROL. No one else has any access rights.
- public-read: Owners gets FULL_CONTROL and the anonymous principal is granted READ access.
- public-read-write: Owner gets FULL_CONTROL and the anonymous principal is granted READ and WRITE access.
- authenticated-read: Owner gets FULL_CONTROL and any principal authenticated as a registered Amazon S3 user is granted READ access.
Currently, boto only supports the second method using canned access control policies. A future version may allow setting of arbitrary ACL's if there is sufficient demand.
To set the ACL for a bucket, use the set_acl method of the Bucket object. The argument passed to this method must be one of the four permissable canned policies named in the list CannedACLStrings contained in acl.py. For example, to make a bucket readable by anyone:
>>> b.set_acl('public-read')
You can also set the ACL for Key objects, either by passing an additional argument to the above method:
>>> b.set_acl('public-read', 'foobar')
where 'foobar' is the key of some object within the bucket b or you can call the set_acl method of the Key object:
>>> k.set_acl('public-read')
You can also retrieve the current ACL for a Bucket or Key object using the get_acl object. This method parses the AccessControlPolicy response sent by S3 and creates a set of Python objects that represent the ACL.
>>> acp = b.get_acl() >>> acp <boto.acl.Policy instance at 0x2e6940> >>> acp.acl <boto.acl.ACL instance at 0x2e69e0> >>> acp.acl.grants [<boto.acl.Grant instance at 0x2e6a08>] >>> for grant in acp.acl.grants: ... print grant.permission, grant.grantee ... FULL_CONTROL <boto.user.User instance at 0x2e6a30>
The Python objects representing the ACL can be found in the acl.py module of boto.
Setting/Getting Metadata Values on Key Objects
S3 allows arbitrary user metadata to be assigned to objects within a bucket. To take advantage of this S3 feature, you should use the set_metadata and get_metadata methods of the Key object to set and retrieve metadata associated with an S3 object. For example:
>>> k = Key(b) >>> k.key = 'has_metadata' >>> k.set_metadata('meta1', 'This is the first metadata value') >>> k.set_metadata('meta2', 'This is the second metadata value') >>> k.set_contents_from_filename('foo.txt')
This code associates two metadata key/value pairs with the Key k. To retrieve those values later:
>>> k = b.get_key('has_metadata) >>> k.get_metadata('meta1') 'This is the first metadata value' >>> k.get_metadata('meta2') 'This is the second metadata value' >>>