| .. _s3_tut: |
| |
| ====================================== |
| 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 an unlimited amount 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. |
| |
| Creating a Bucket In Another Location |
| ------------------------------------- |
| |
| The example above assumes that you want to create a bucket in the |
| standard US region. However, it is possible to create buckets in |
| other locations. To do so, first import the Location object from the |
| boto.s3.connection module, like this:: |
| |
| >>> from boto.s3.connection import Location |
| >>> print '\n'.join(i for i in dir(Location) if i[0].isupper()) |
| APNortheast |
| APSoutheast |
| APSoutheast2 |
| DEFAULT |
| EU |
| SAEast |
| USWest |
| USWest2 |
| |
| As you can see, the Location object defines a number of possible locations. By |
| default, the location is the empty string which is interpreted as the US |
| Classic Region, the original S3 region. However, by specifying another |
| location at the time the bucket is created, you can instruct S3 to create the |
| bucket in that location. For example:: |
| |
| >>> conn.create_bucket('mybucket', location=Location.EU) |
| |
| will create the bucket in the EU region (assuming the name is available). |
| |
| 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. |
| |
| Accessing A Bucket |
| ------------------ |
| |
| Once a bucket exists, you can access it by getting the bucket. For example:: |
| |
| >>> mybucket = conn.get_bucket('mybucket') # Substitute in your bucket name |
| >>> mybucket.list() |
| <listing of keys in the bucket) |
| |
| By default, this method tries to validate the bucket's existence. You can |
| override this behavior by passing ``validate=False``.:: |
| |
| >>> nonexistent = conn.get_bucket('i-dont-exist-at-all', validate=False) |
| |
| If the bucket does not exist, a ``S3ResponseError`` will commonly be thrown. If |
| you'd rather not deal with any exceptions, you can use the ``lookup`` method.:: |
| |
| >>> nonexistent = conn.lookup('i-dont-exist-at-all') |
| >>> if nonexistent is None: |
| ... print "No such bucket!" |
| ... |
| No such bucket! |
| |
| Deleting A Bucket |
| ----------------- |
| |
| Removing a bucket can be done using the ``delete_bucket`` method. For example:: |
| |
| >>> conn.delete_bucket('mybucket') # Substitute in your bucket name |
| |
| The bucket must be empty of keys or this call will fail & an exception will be |
| raised. You can remove a non-empty bucket by doing something like:: |
| |
| >>> full_bucket = conn.get_bucket('bucket-to-delete') |
| # It's full of keys. Delete them all. |
| >>> for key in full_bucket.list(): |
| ... key.delete() |
| ... |
| # The bucket is empty now. Delete it. |
| >>> conn.delete_bucket('bucket-to-delete') |
| |
| .. warning:: |
| |
| This method can cause data loss! Be very careful when using it. |
| |
| Additionally, be aware that using the above method for removing all keys |
| and deleting the bucket involves a request for each key. As such, it's not |
| particularly fast & is very chatty. |
| |
| 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: |
| |
| 1. 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. |
| |
| 2. Use a "canned" access control policy. There are four canned policies |
| defined: |
| |
| a. private: Owner gets FULL_CONTROL. No one else has any access rights. |
| b. public-read: Owners gets FULL_CONTROL and the anonymous principal is granted READ access. |
| c. public-read-write: Owner gets FULL_CONTROL and the anonymous principal is granted READ and WRITE access. |
| d. authenticated-read: Owner gets FULL_CONTROL and any principal authenticated as a registered Amazon S3 user is granted READ access. |
| |
| To set a canned 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.display_name, grant.email_address, grant.id |
| ... |
| FULL_CONTROL <boto.user.User instance at 0x2e6a30> |
| |
| The Python objects representing the ACL can be found in the acl.py module |
| of boto. |
| |
| Both the Bucket object and the Key object also provide shortcut |
| methods to simplify the process of granting individuals specific |
| access. For example, if you want to grant an individual user READ |
| access to a particular object in S3 you could do the following:: |
| |
| >>> key = b.lookup('mykeytoshare') |
| >>> key.add_email_grant('READ', 'foo@bar.com') |
| |
| The email address provided should be the one associated with the users |
| AWS account. There is a similar method called add_user_grant that accepts the |
| canonical id of the user rather than the email address. |
| |
| 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' |
| >>> |
| |
| Setting/Getting/Deleting CORS Configuration on a Bucket |
| ------------------------------------------------------- |
| |
| Cross-origin resource sharing (CORS) defines a way for client web |
| applications that are loaded in one domain to interact with resources |
| in a different domain. With CORS support in Amazon S3, you can build |
| rich client-side web applications with Amazon S3 and selectively allow |
| cross-origin access to your Amazon S3 resources. |
| |
| To create a CORS configuration and associate it with a bucket:: |
| |
| >>> from boto.s3.cors import CORSConfiguration |
| >>> cors_cfg = CORSConfiguration() |
| >>> cors_cfg.add_rule(['PUT', 'POST', 'DELETE'], 'https://www.example.com', allowed_header='*', max_age_seconds=3000, expose_header='x-amz-server-side-encryption') |
| >>> cors_cfg.add_rule('GET', '*') |
| |
| The above code creates a CORS configuration object with two rules. |
| |
| * The first rule allows cross-origin PUT, POST, and DELETE requests from |
| the https://www.example.com/ origin. The rule also allows all headers |
| in preflight OPTIONS request through the Access-Control-Request-Headers |
| header. In response to any preflight OPTIONS request, Amazon S3 will |
| return any requested headers. |
| * The second rule allows cross-origin GET requests from all origins. |
| |
| To associate this configuration with a bucket:: |
| |
| >>> import boto |
| >>> c = boto.connect_s3() |
| >>> bucket = c.lookup('mybucket') |
| >>> bucket.set_cors(cors_cfg) |
| |
| To retrieve the CORS configuration associated with a bucket:: |
| |
| >>> cors_cfg = bucket.get_cors() |
| |
| And, finally, to delete all CORS configurations from a bucket:: |
| |
| >>> bucket.delete_cors() |
| |
| Transitioning Objects to Glacier |
| -------------------------------- |
| |
| You can configure objects in S3 to transition to Glacier after a period of |
| time. This is done using lifecycle policies. A lifecycle policy can also |
| specify that an object should be deleted after a period of time. Lifecycle |
| configurations are assigned to buckets and require these parameters: |
| |
| * The object prefix that identifies the objects you are targeting. |
| * The action you want S3 to perform on the identified objects. |
| * The date (or time period) when you want S3 to perform these actions. |
| |
| For example, given a bucket ``s3-glacier-boto-demo``, we can first retrieve the |
| bucket:: |
| |
| >>> import boto |
| >>> c = boto.connect_s3() |
| >>> bucket = c.get_bucket('s3-glacier-boto-demo') |
| |
| Then we can create a lifecycle object. In our example, we want all objects |
| under ``logs/*`` to transition to Glacier 30 days after the object is created. |
| |
| :: |
| |
| >>> from boto.s3.lifecycle import Lifecycle, Transition, Rule |
| >>> to_glacier = Transition(days=30, storage_class='GLACIER') |
| >>> rule = Rule('ruleid', 'logs/', 'Enabled', transition=to_glacier) |
| >>> lifecycle = Lifecycle() |
| >>> lifecycle.append(rule) |
| |
| .. note:: |
| |
| For API docs for the lifecycle objects, see :py:mod:`boto.s3.lifecycle` |
| |
| We can now configure the bucket with this lifecycle policy:: |
| |
| >>> bucket.configure_lifecycle(lifecycle) |
| True |
| |
| You can also retrieve the current lifecycle policy for the bucket:: |
| |
| >>> current = bucket.get_lifecycle_config() |
| >>> print current[0].transition |
| <Transition: in: 30 days, GLACIER> |
| |
| When an object transitions to Glacier, the storage class will be |
| updated. This can be seen when you **list** the objects in a bucket:: |
| |
| >>> for key in bucket.list(): |
| ... print key, key.storage_class |
| ... |
| <Key: s3-glacier-boto-demo,logs/testlog1.log> GLACIER |
| |
| You can also use the prefix argument to the ``bucket.list`` method:: |
| |
| >>> print list(b.list(prefix='logs/testlog1.log'))[0].storage_class |
| u'GLACIER' |
| |
| |
| Restoring Objects from Glacier |
| ------------------------------ |
| |
| Once an object has been transitioned to Glacier, you can restore the object |
| back to S3. To do so, you can use the :py:meth:`boto.s3.key.Key.restore` |
| method of the key object. |
| The ``restore`` method takes an integer that specifies the number of days |
| to keep the object in S3. |
| |
| :: |
| |
| >>> import boto |
| >>> c = boto.connect_s3() |
| >>> bucket = c.get_bucket('s3-glacier-boto-demo') |
| >>> key = bucket.get_key('logs/testlog1.log') |
| >>> key.restore(days=5) |
| |
| It takes about 4 hours for a restore operation to make a copy of the archive |
| available for you to access. While the object is being restored, the |
| ``ongoing_restore`` attribute will be set to ``True``:: |
| |
| |
| >>> key = bucket.get_key('logs/testlog1.log') |
| >>> print key.ongoing_restore |
| True |
| |
| When the restore is finished, this value will be ``False`` and the expiry |
| date of the object will be non ``None``:: |
| |
| >>> key = bucket.get_key('logs/testlog1.log') |
| >>> print key.ongoing_restore |
| False |
| >>> print key.expiry_date |
| "Fri, 21 Dec 2012 00:00:00 GMT" |
| |
| |
| .. note:: If there is no restore operation either in progress or completed, |
| the ``ongoing_restore`` attribute will be ``None``. |
| |
| Once the object is restored you can then download the contents:: |
| |
| >>> key.get_contents_to_filename('testlog1.log') |