A light, fast, and memory-efficient collection traversal library for Firestore and Node.js.
Firecode is a Node.js library that lets you efficiently traverse Firestore collections.
When you have millions of documents in a collection, you can't just get all of them at once as your program's memory usage will explode. Firecode's configurable traverser objects let you do this in a simple, intuitive and memory-efficient way using batching.
Firecode is an extremely light, well-typed, zero-dependency library that is useful in a variety of scenarios. You can use it in database migration scripts (e.g. when you need to add a new field to all docs) or a scheduled Cloud Function that needs to check every doc in a collection periodically or a locally run script that retrieves some data from a collection.
Firecode on Google Dev Library ▸
Read the introductory blog post ▸
View the full documentation (docs) ▸
Overview
- Installation
- Core Concepts
- Quick Start
- More Examples
- API
- Upgrading
- License
Installation
Firecode is designed to work with the Firebase Admin SDK so if you haven't already installed it, run
npm install firebase-admin
Then run
npm install @firecode/admin
Core Concepts
There are only 2 kinds of objects you need to be familiar with when using this library:
-
Traverser: An object that walks you through a collection of documents (or more generally a Traversable).
-
Migrator: A convenience object used for database migrations. It lets you easily write to the documents within a given traversable and uses a traverser to do that. You can easily write your own migration logic in the traverser callback if you don't want to use a migrator.
Quick Start
Suppose we have a users
collection and we want to send an email to each user. This is how easy it is to do that efficiently with a Firecode traverser:
import { firestore } from 'firebase-admin';
import { createTraverser } from '@firecode/admin';
const usersCollection = firestore().collection('users');
const traverser = createTraverser(usersCollection);
const { batchCount, docCount } = await traverser.traverse(async (batchDocs, batchIndex) => {
const batchSize = batchDocs.length;
await Promise.all(
batchDocs.map(async (doc) => {
const { email, firstName } = doc.data();
await sendEmail({ to: email, content: `Hello ${firstName}!` });
})
);
console.log(`Batch ${batchIndex} done! We emailed ${batchSize} users in this batch.`);
});
console.log(`Traversal done! We emailed ${docCount} users in ${batchCount} batches!`);
We are doing 3 things here:
- Create a reference to the
users
collection - Pass that reference to the
createTraverser()
function - Invoke
.traverse()
with an async callback that is called for each batch of document snapshots
This pretty much sums up the core functionality of this library! The .traverse()
method returns a Promise that resolves when the entire traversal finishes, which can take a while if you have millions of docs. The Promise resolves with an object containing the traversal details e.g. the number of docs you touched.
More Examples
Use a fast traverser
const projectsColRef = firestore().collection('projects');
const traverser = createFastTraverser(projectsColRef, {
batchSize: 500,
maxConcurrentBatchCount: 20,
});
const { docCount } = await traverser.traverse(async (_, batchIndex) => {
console.log(`Gonna process batch ${batchIndex} now!`);
});
console.log(`Traversed ${docCount} projects super-fast!`);
Add a new field using a migrator
const projectsColRef = firestore().collection('projects');
const migrator = createMigrator(projectsColRef);
const { migratedDocCount } = await migrator.update('isCompleted', false);
console.log(`Updated ${migratedDocCount} projects!`);
Add a new field derived from the previous fields
type UserDoc = {
firstName: string;
lastName: string;
};
const usersColRef = firestore().collection('users') as firestore.CollectionReference<UserDoc>;
const migrator = createMigrator(usersColRef);
const { migratedDocCount } = await migrator.updateWithDerivedData((snap) => {
const { firstName, lastName } = snap.data();
return {
fullName: `${firstName} ${lastName}`,
};
});
console.log(`Updated ${migratedDocCount} users!`);
Use a fast migrator
const projectsColRef = firestore().collection('projects');
const fastTraverser = createFastTraverser(projectsColRef, { maxConcurrentBatchCount: 25 });
const fastMigrator = createMigrator(fastTraverser);
const { migratedDocCount } = await fastMigrator.update('isCompleted', false);
console.log(`Updated ${migratedDocCount} projects super-fast!`);
Change traversal config
const walletsWithNegativeBalance = firestore().collection('wallets').where('money', '<', 0);
const migrator = createMigrator(walletsWithNegativeBalance, {
batchSize: 500,
sleepBetweenBatches: true,
sleepTimeBetweenBatches: 500,
});
const { migratedDocCount } = await migrator.set({ money: 0 });
console.log(`Updated ${migratedDocCount} wallets!`);
Rename a field
const postsColGroup = firestore().collectionGroup('posts');
const migrator = createMigrator(postsColGroup);
const { migratedDocCount } = await migrator.renameField('postedAt', 'publishedAt');
console.log(`Updated ${migratedDocCount} posts!`);
You can find the full API reference for @firecode/admin
here. We maintain detailed docs for every version! Here are some of the core functions that this library provides.
Creates a traverser that facilitates Firestore collection traversals. When traversing the collection, this traverser invokes a specified async callback for each batch of document snapshots and waits for the callback Promise to resolve before moving to the next batch.
Complexity:
- Time complexity: O((N /
batchSize
) * (Q(batchSize
) + C(batchSize
))) - Space complexity: O(
batchSize
* D + S) - Billing: max(1, N) reads
where:
- N: number of docs in the traversable
- Q(
batchSize
): average batch query time - C(
batchSize
): average callback processing time - D: average document size
- S: average extra space used by the callback
Creates a fast traverser that facilitates Firestore collection traversals. When traversing the collection, this traverser invokes a specified async callback for each batch of document snapshots and immediately moves to the next batch. It does not wait for the callback Promise to resolve before moving to the next batch so there is no guarantee that any given batch will finish processing before a later batch. This traverser uses more memory but is significantly faster than the default traverser.
Complexity:
- Time complexity: O((N /
batchSize
) * (Q(batchSize
) + C(batchSize
) / maxConcurrentBatchCount
)) - Space complexity: O(
maxConcurrentBatchCount
* (batchSize
* D + S)) - Billing: max(1, N) reads
where:
- N: number of docs in the traversable
- Q(
batchSize
): average batch query time - C(
batchSize
): average callback processing time - D: average document size
- S: average extra space used by the callback
Creates a migrator that facilitates database migrations. The migrator accepts a custom traverser to traverse the collection. Otherwise it will create a default traverser with your desired traversal config. This migrator does not use atomic batch writes so it is possible that when a write fails other writes go through.
Complexity:
- Time complexity: TC(
traverser
) where C(batchSize
) = W(batchSize
) - Space complexity: SC(
traverser
) where S = O(batchSize
) - Billing: max(1, N) reads, K writes
where:
- N: number of docs in the traversable
- K: number of docs that passed the migration predicate (K<=N)
- W(
batchSize
): average batch write time - TC(
traverser
): time complexity of the underlying traverser - SC(
traverser
): space complexity of the underlying traverser
Creates a migrator that facilitates database migrations. The migrator accepts a custom traverser to traverse the collection. Otherwise it will create a default traverser with your desired traversal config. This migrator uses atomic batch writes so the entire operation will fail if a single write isn't successful.
Complexity:
- Time complexity: TC(
traverser
) where C(batchSize
) = W(batchSize
) - Space complexity: SC(
traverser
) where S = O(batchSize
) - Billing: max(1, N) reads, K writes
where:
- N: number of docs in the traversable
- K: number of docs that passed the migration predicate (K<=N)
- W(
batchSize
): average batch write time - TC(
traverser
): time complexity of the underlying traverser - SC(
traverser
): space complexity of the underlying traverser
Upgrading
This project is still very new and we have a lot to work on. We will be moving fast and until we release v1, there may be breaking changes between minor versions (e.g. when upgrading from 0.4 to 0.5). However, all breaking changes will be documented and you can always use our Releases page as a changelog.
License
This project is made available under the MIT License.