earthstar-data
v0.3.0
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Data structures for earthstar
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earthstar-data
Data structures for earthstar. Makes it easier to:
- Store structured data with granular documents so that they can be concurrently edited from multiple devices.
- Model relationships easily
- Easily encode and decode js types to text-based representations and binary attachments
- Represent values stored in earthstar using the correct Typescript type (if you like Typescript)
You might think of it as roughly fulfilling the role as that an ORM does in a relational database. Or at least in the sense of providing a higher-level wrapper that makes it easy to do slightly more complex things with data.
Install
npm install earthstar-data
Usage
The overall idea is that we define a schema for types using a similar API to validation APIs like yup and then use that to read and write to the replica rather than the replica directly.
Let's try it out by modelling a Post
type:
const Post = object({
content: string,
title: string,
});
Now we can use this to write documents to a share:
await Post.write({
replica: myReplica,
author: me,
path: "/posts/hello",
data: {
title: "Hello, world",
content: "This is an example post",
},
});
This will cause in the following documents to be written:
/posts/hello/title -> Hello, world
/posts/hello/content -> This is an example post
We can now read the Post
object we just created from the share:
const myPost = await Post.read({
path: "/posts/hello",
replica: myReplica,
});
...or observe it for changes...
const myPost$ = Post.observe({
path: "/posts/hello",
});
myPost$.subscribe((myPost) => {
console.log(myPost);
});
Internals
Types are defined by implementing two methods on the abstract EsType
class. There are a bunch of useful types already built in, but it's worth understanding how they work even if you don't need to write your own. A type needs to implement two methods:
class MyCustomType {
reduce({
// Document we're reading
doc: DocEs5
// Subpath components from the requested path to `doc`
pathComponents: string[]
// Replica we're reading from
replica: Replica
// Previous value returned from reduce() or undefined if this is the first invocation
prev: T | undefined
}): T | undefined | Promise<T | undefined> {
...
}
write({
// Replica we're writing to
replica: Replica,
// Author identity used to write documents
author: AuthorKeypair,
// Path of the current written value
path: string
// Data to be written to the current path
data: T | undefined
}): Promise<void> {
...
}
}
You can extend the Atom
class for simple atomic types that map one-one onto a document's text content. See the source for examples.
reduce()
When you call Post.read()
in the example above, the replica is queried for both the requested path and all subpaths. These are fed one-by-one fed into the reduce()
method along with its previous return value (starting with null). Each invocation progressively builds up the full object from the data in each document. If you've ever used redux or Elm, you might be familiar with this sort of approach.
For a simple, atomic type that doesn't have much of an internal structure, the reduce method will be very simple. It will simply grab some text from a document (or binary data from its attachment), possibly doing a conversion on the text and return it, ignoring the previous value.
For a more complex type, the reducer will recursively call into inner types to merge data extracted from the document from the last known value to add or remove data from it.
Using a reducer here means that we can fetch all the documents from the replica in one go and also listen for more granular changes to data than we would have otherwise, which makes observing documents (or big collections of data) for changes a bit more efficient. It also potentially allows us to do more fancy things if we want, like building up a persistent secondary index by listening to changes from the main replica.
write()
The implementation of Post.write()
is a little simpler. For atomic types, it just converts the value to a string or attachment and writes it to the replica. For more complex types, it recurses through the changes provided and calls through to the simpler types that it combines to write out the corresponding documents.
Updates to complex types are all assumed to be partial updates - passing in only some of the properties of an object leaves others untouched.
Types should interpret a null
value to wipe the doc at that path and all beneath it.
Modelling collections and relationships
So far, we've assumed that everything related to an object lives under a single root path that identifies it.
dict()
and set()
are a useful way of modelling relationships and collections.
A set
is a collection of strings stored as url-encoded slugs in the path. Let's use it to represent a relationship:
const Post = object({
content: string,
title: string,
readNext: set,
});
// Write a post
await Post.write({
author: me,
replica: myReplica,
path: "/posts/1",
data: {
title: "Hello, world",
content: "This is an example post",
},
});
// Write a post, linked to the first one
await Post.write({
author: me,
replica: myReplica,
path: "/posts/2",
data: {
readNext: {
"/posts/1": true,
},
},
});
We now have the following documents in our replica:
/posts/1/title -> Hello, world
/posts/1/content -> This is an example post
/posts/2/title -> Dogs are great
/posts/2/content -> This is another example post
/posts/2/readNext/%2Fposts%2F1%2F -> 1
We can unlink the post but leave other properties (and links) untouched by setting the link to null
:
await Post.write({
replica: myReplica,
author: me,
path: "/posts/2",
data: {
readNext: {
"/posts/1": null,
},
},
});
The dict
type stores keys in the document path the same way that a set does, but allows us to also provide a type for
its value.
We can use this to model collections. If all our posts live under a single path (as in the examples above) then we can similarly query for a whole list of posts by treating the collection of all posts as a dictionary mapping ids to objects.
const PostCollection = dict(Post);
const allPosts = readObjects(Post, { replica: "/posts" });
for (const [id, post] of Object.entries(allPosts)) {
console.log(id, "->", post);
}
The dict type can also be useful for relationships between objects when we want to include some contextual information about the relationship that doesn't belong in the linked object. For example, we might want an ordered relationship that weights the order that related posts appear in:
const Post = object({
content: string,
title: string,
related: dict(number),
});
const post = await Post.read(replica, "/posts/1");
const linkedPostPaths = Object.keys(post.related).sort(
(a, b) => post.related[a] - post.related[b]
);
If we want to find the inverse of our readNext
relation, we can use the findByCollectionKey
utility, which returns the path to all objects that store a given value as a set or dict key:
const readBeforePost1 = await findByCollectionKey("/posts/1", {
collectionPrefix: "/readNext",
replica: myReplica,
filter: {
pathStartsWith: "/posts",
},
});
console.log(readBeforePost1); // ["/posts/2"]