dm-limits-and-best-practices
cognitedata/builder-skills
How to install dm-limits-and-best-practices
npx skills add https://github.com/cognitedata/builder-skills --skill dm-limits-and-best-practicesFull instructions (SKILL.md)
Source of truth, from cognitedata/builder-skills.
name: dm-limits-and-best-practices description: "Reference skill for CDF Data Modeling API best practices. Covers concurrency limits (avoiding 429s), pagination patterns for instances.list and instances.query, batching write operations, search vs filter guidance, and the QueuedTaskRunner (Semaphore) utility for controlling concurrent requests. Triggers: DMS limits, 429 error, rate limit, pagination, cursor, nextCursor, batching, semaphore, QueuedTaskRunner, cdfTaskRunner, instances.search, instances.list, instances.query, instances.upsert, concurrency, deadlock." allowed-tools: Read, Glob, Grep, Edit, Write metadata: argument-hint: ""
CDF Data Modeling: Limits, Concurrency & Best Practices
This is a reference skill. When writing or reviewing code that calls CDF Data Modeling APIs, apply the patterns below.
This skill owns runtime reliability concerns: limits, concurrency, retries, throughput, and batching behavior.
For traversal payload correctness and graph-specific failure signatures, see dm-graph-traversal.
DMS Limits Reference
For the latest concurrency limits, resource limits, and property value limits, see the official documentation: https://docs.cognite.com/cdf/dm/dm_reference/dm_limits_and_restrictions
Key things to be aware of:
- Instance apply, delete, and query operations each have their own concurrent request limits
- Exceeding these limits returns 429 Too Many Requests
- Transformations consume a large portion of the concurrency budget, leaving less for other clients
instances.listhas a max page size (use pagination for complete results)instances.querytable expressions each have their own item limitinstances.upsertaccepts up to 1000 items per callinfilters accept at most 1000 values per expression; larger sets must be split into batches
Search vs Filter: When to Use Which
instances.search — Free-text search on text properties
Use instances.search when you need fuzzy/text matching on string fields (names, descriptions, etc.). It supports an operator parameter:
AND(default) — Narrow search. All terms must match. Use when the user provides a specific query.OR— Broad "shotgun" search. Any term can match. Use for exploratory/typeahead search where you want maximum recall.
// Narrow search: find a specific cell by name (AND — all terms must match)
const exactResults = await client.instances.search({
view: { type: 'view', ...PROCESS_CELL_VIEW },
query: 'reactor tank A',
properties: ['name'],
operator: 'AND',
limit: 10,
});
// Broad search: typeahead/autocomplete (OR — any term can match)
const broadResults = await client.instances.search({
view: { type: 'view', ...BATCH_VIEW },
query: 'BUDE completed',
properties: ['name', 'description', 'batchStatus'],
operator: 'OR',
limit: 10,
});
You can combine search with filter to further constrain results with exact-match conditions:
// Text search + exact filter: search for "pump" but only in active nodes
const filtered = await client.instances.search({
view: { type: 'view', ...PROCESS_CELL_VIEW },
query: 'pump',
properties: ['name', 'description'],
filter: {
equals: {
property: getContainerProperty(MY_CONTAINER, 'status'),
value: 'active',
},
},
limit: 20,
});
instances.list / instances.query with filter — Exact-match filtering
Use filter when you need precise, deterministic matching (equals, range, in, hasData, etc.). No fuzzy matching — values must match exactly.
// Exact match: get all completed batches
const completedBatches = await client.instances.list({
instanceType: 'node',
sources: [{ source: { type: 'view', ...BATCH_VIEW } }],
filter: {
equals: {
property: getContainerProperty(BATCH_CONTAINER, 'batchStatus'),
value: 'completed',
},
},
limit: 1000,
});
Decision Guide
| Need | Use |
|---|---|
| User typing in a search box | instances.search with OR |
| Find a specific item by name | instances.search with AND |
| Filter by status, date range, enums | filter on list/query |
| Text search + exact constraints | instances.search + filter |
in filter value limit (1000) and batching
CDF in filters support a maximum of 1000 values in a single filter expression. If you need to filter against more than 1000 IDs, split values into chunks and issue multiple requests, then merge results.
const IN_FILTER_BATCH_SIZE = 1000;
// Reuse the Chunking Utility defined in the Batching Write Operations section.
async function listByExternalIds(
client: CogniteClient,
externalIds: string[],
): Promise<NodeOrEdge[]> {
const idBatches = chunk(externalIds, IN_FILTER_BATCH_SIZE);
const responses = await Promise.all(
idBatches.map((batch) =>
cdfTaskRunner.schedule(() =>
client.instances.list({
instanceType: 'node',
sources: [{ source: { type: 'view', ...MY_VIEW } }],
filter: {
in: {
property: ['node', 'externalId'],
values: batch,
},
},
limit: 1000,
})
)
)
);
return responses.flatMap((r) => r.items);
}
QueuedTaskRunner (Semaphore)
Always use the global cdfTaskRunner to wrap CDF API calls. It limits concurrent requests and prevents 429 errors and deadlocks.
Source Code
If the project does not already have a semaphore utility, create src/shared/utils/semaphore.ts with this implementation:
/**
* AbortError thrown when a queued task is cancelled
*/
export class AbortError extends Error {
public constructor(message: string = 'Aborted') {
super(message);
this.name = 'AbortError';
}
}
type PendingTask<AsyncFn, AsyncFnResult> = {
resolve: (result: AsyncFnResult) => void;
reject: (error: unknown) => void;
fn: AsyncFn;
key?: string;
};
const DEFAULT_MAX_CONCURRENT_TASKS = 15;
/**
* QueuedTaskRunner for controlling concurrent operations
* Used to limit concurrent CDF API requests to avoid rate limiting and deadlocks
* Essentially a semaphore that allows a limited number of tasks to run at once.
*/
export default class QueuedTaskRunner<
AsyncFn extends () => Promise<AsyncFnResult>,
AsyncFnResult = Awaited<ReturnType<AsyncFn>>,
> {
private pendingTasks: PendingTask<AsyncFn, AsyncFnResult>[] = [];
private currentPendingTasks: number = 0;
private readonly maxConcurrentTasks: number = 1;
public constructor(
maxConcurrentTasks: number = DEFAULT_MAX_CONCURRENT_TASKS
) {
this.maxConcurrentTasks = maxConcurrentTasks;
}
public schedule(
fn: AsyncFn,
options: { key?: string } = {}
): Promise<AsyncFnResult> {
this.startTrackingTime();
return new Promise((resolve, reject) => {
if (options.key !== undefined) {
// Cancel existing tasks with the same key (deduplication)
this.pendingTasks
.filter((task) => task.key === options.key)
.forEach((task) => task.reject(new AbortError()));
this.pendingTasks = this.pendingTasks.filter(
(task) => task.key !== options.key
);
}
this.pendingTasks.push({
resolve,
reject,
fn,
key: options.key,
});
this.attemptConsumingNextTask();
});
}
public async attemptConsumingNextTask(): Promise<void> {
if (this.pendingTasks.length === 0) return;
if (this.currentPendingTasks >= this.maxConcurrentTasks) return;
const pendingTask = this.pendingTasks.shift();
if (pendingTask === undefined) {
throw new Error('pendingTask is undefined, this should never happen');
}
this.currentPendingTasks++;
const { fn, resolve, reject } = pendingTask;
try {
const result = await fn();
resolve(result);
} catch (e) {
reject(e);
} finally {
this.currentPendingTasks--;
this.tick();
this.attemptConsumingNextTask();
}
}
public clearQueue = (): void => {
this.pendingTasks = [];
};
private startTime: number | null = null;
private startTrackingTime = (): void => {
if (this.startTime === null) {
this.startTime = performance.now();
}
};
private tick = (): void => {
if (this.pendingTasks.length === 0) {
this.startTime = null;
}
};
}
/**
* Global task runner for CDF API requests
* Limits concurrent requests to avoid 429 rate limiting and deadlocks
*/
export const cdfTaskRunner = new QueuedTaskRunner(DEFAULT_MAX_CONCURRENT_TASKS);
Usage Pattern
Always wrap CDF calls with cdfTaskRunner.schedule():
import { cdfTaskRunner } from '../../../../shared/utils/semaphore';
// Single query
export async function fetchBatches(client: CogniteClient): Promise<CDFBatch[]> {
return cdfTaskRunner.schedule(async () => {
const response = await client.instances.query({
with: { /* ... */ },
select: { /* ... */ },
});
return response.items?.nodes || [];
});
}
// Multiple parallel queries (safe — the semaphore limits concurrency)
export async function enrichBatch(
client: CogniteClient,
batch: CDFBatch
): Promise<BatchEnrichment> {
const [currentOp, lastOp, cells, material] = await Promise.all([
fetchCurrentOperation(client, batch.space, batch.externalId),
fetchLastCompletedOperation(client, batch.space, batch.externalId),
fetchProcessCells(client, batch.space, batch.externalId),
fetchMaterial(client, batch.space, batch.externalId),
]);
return { currentOp, lastOp, cells, material };
}
// Each of the above functions internally uses cdfTaskRunner.schedule(),
// so Promise.all is safe — the semaphore prevents exceeding concurrency limits
Deduplication with Keys
Use the key option to cancel stale requests when the same query is triggered again (e.g., user changes filters quickly):
const result = await cdfTaskRunner.schedule(
async () => client.instances.query({ /* ... */ }),
{ key: `batch-flow-${batchId}` }
);
// If another call with the same key arrives before this completes,
// the previous pending call is rejected with AbortError
Pagination
DMS instances.list returns at most limit items and a nextCursor for the next page.
DMS instances.query uses a cursors object keyed by table expression name.
instances.list Pagination
async function fetchAllNodes(client: CogniteClient): Promise<CDFNodeResponse[]> {
const allItems: CDFNodeResponse[] = [];
let cursor: string | undefined = undefined;
do {
const response = await client.instances.list({
instanceType: 'node',
sources: [{ source: { type: 'view', ...MY_VIEW } }],
filter: {
equals: {
property: getContainerProperty(MY_CONTAINER, 'status'),
value: 'active',
},
},
limit: 1000,
cursor,
});
allItems.push(...response.items);
cursor = response.nextCursor;
} while (cursor);
return allItems;
}
instances.query Pagination
The query endpoint returns nextCursor as a Record<string, string> (one cursor per table expression). Use it via the cursors parameter:
import { isEmpty } from 'lodash';
async function fetchAllResults(
client: CogniteClient
): Promise<{ results: CDFResult[]; edges: EdgeDefinition[] }> {
const QUERY_LIMIT = 10_000;
const fetchPage = async (
nextCursors?: Record<string, string>
): Promise<{ results: CDFResult[]; edges: EdgeDefinition[] }> => {
const { items, nextCursor } = await client.instances.query({
with: {
results: {
limit: QUERY_LIMIT,
nodes: {
filter: {
hasData: [{ type: 'view', ...RESULT_VIEW }],
},
},
},
relatedEdges: {
limit: QUERY_LIMIT,
edges: {
from: 'results' as const,
maxDistance: 1,
direction: 'outwards' as const,
filter: {
equals: {
property: ['edge', 'type'],
value: MY_EDGE_TYPE,
},
},
},
},
},
cursors: nextCursors, // Pass cursors from previous page
select: {
results: {
sources: [
{ source: { type: 'view', ...RESULT_VIEW }, properties: ['*'] },
],
},
relatedEdges: {},
},
});
const results = (items?.results || []) as CDFResult[];
const edges = (items?.relatedEdges || []).filter(
(e) => e.instanceType === 'edge'
);
// Recurse if more pages exist
if (!isEmpty(nextCursor)) {
const next = await fetchPage(nextCursor);
return {
results: [...results, ...next.results],
edges: [...edges, ...next.edges],
};
}
return { results, edges };
};
return fetchPage();
}
Pagination + QueuedTaskRunner Combined
Always wrap paginated fetches with the semaphore to avoid saturating the concurrency budget:
export async function fetchAllWithPagination(
client: CogniteClient
): Promise<CDFNodeResponse[]> {
return cdfTaskRunner.schedule(async () => {
const allItems: CDFNodeResponse[] = [];
let cursor: string | undefined = undefined;
do {
const response = await client.instances.list({
instanceType: 'node',
sources: [{ source: { type: 'view', ...MY_VIEW } }],
filter: { /* ... */ },
limit: 1000,
cursor,
});
allItems.push(...response.items);
cursor = response.nextCursor;
// Optional: break early if you have enough data
if (allItems.length >= 500) break;
} while (cursor);
return allItems;
});
}
Batching Write Operations
When upserting many instances, chunk them to stay under the apply concurrency limit. Each instances.upsert call accepts up to 1000 items.
Chunking Utility
function chunk<T>(arr: T[], size: number): T[][] {
const chunks: T[][] = [];
for (let i = 0; i < arr.length; i += size) {
chunks.push(arr.slice(i, i + size));
}
return chunks;
}
Batched Upsert with QueuedTaskRunner
const UPSERT_BATCH_SIZE = 1000;
async function batchUpsertNodes(
client: CogniteClient,
nodes: NodeOrEdgeCreate[]
): Promise<void> {
const chunks = chunk(nodes, UPSERT_BATCH_SIZE);
// Process chunks through the semaphore — safe even with Promise.all
await Promise.all(
chunks.map((batch) =>
cdfTaskRunner.schedule(async () => {
await client.instances.upsert({
items: batch,
});
})
)
);
}
Batched Delete with QueuedTaskRunner
Instance deletes have an even stricter concurrency limit. Use a separate, more restrictive task runner:
import QueuedTaskRunner from '../../../../shared/utils/semaphore';
// Dedicated runner for deletes (stricter concurrency — check docs for current limit)
const deleteTaskRunner = new QueuedTaskRunner(2);
async function batchDeleteNodes(
client: CogniteClient,
nodeIds: { space: string; externalId: string }[]
): Promise<void> {
const chunks = chunk(nodeIds, 1000);
for (const batch of chunks) {
await deleteTaskRunner.schedule(async () => {
await client.instances.delete(
batch.map((id) => ({
instanceType: 'node' as const,
...id,
}))
);
});
}
}
Common Pitfalls
1. Deadlocks from Nested Semaphore Calls
If function A holds a semaphore slot and calls function B which also needs a slot, you can deadlock if all slots are occupied. Keep the semaphore at the outermost call level, or ensure inner calls don't go through the same semaphore.
// BAD: Nested semaphore — can deadlock
async function fetchAndEnrich(client: CogniteClient) {
return cdfTaskRunner.schedule(async () => {
const batches = await fetchBatches(client); // This also calls cdfTaskRunner.schedule!
// If all slots are held by fetchAndEnrich callers, fetchBatches will never run
});
}
// GOOD: Let inner functions own the semaphore
async function fetchAndEnrich(client: CogniteClient) {
const batches = await fetchBatches(client); // Has its own semaphore call
const enriched = await Promise.all(
batches.map((b) => enrichBatch(client, b)) // Each has its own semaphore call
);
return enriched;
}
2. Forgetting Pagination
DMS returns at most limit items. If you don't paginate, you silently lose data. Always check nextCursor:
// BAD: May miss data
const response = await client.instances.list({ limit: 1000, /* ... */ });
const items = response.items; // Could be incomplete!
// GOOD: Paginate
const allItems = [];
let cursor;
do {
const response = await client.instances.list({ limit: 1000, cursor, /* ... */ });
allItems.push(...response.items);
cursor = response.nextCursor;
} while (cursor);
3. Unbounded Promise.all Without Semaphore
Firing many parallel API calls will hit the 429 limit immediately:
// BAD: Too many simultaneous requests
await Promise.all(batchIds.map((id) => client.instances.query({ /* ... */ })));
// GOOD: Each call goes through the semaphore
await Promise.all(
batchIds.map((id) =>
cdfTaskRunner.schedule(() => client.instances.query({ /* ... */ }))
)
);
4. Query Limit per Table Expression
Each table expression in instances.query has its own limit. If your traversal might return more items than the limit in a single expression, you must paginate using the cursors parameter.
5. Oversized in Filters
in filters are capped at 1000 values per expression. Passing more than 1000 values in a single in filter can fail or produce incomplete behavior depending on endpoint/version. Always chunk the values and run batched requests.
Summary Checklist
- Wrap all CDF API calls with
cdfTaskRunner.schedule() - Paginate
instances.listcalls usingcursor/nextCursor - Paginate
instances.querycalls usingcursors/nextCursorwhen data may exceed limits - Chunk write operations to 1000 items per
instances.upsertcall - Use a separate, stricter task runner for deletes
- Avoid nesting
cdfTaskRunner.schedule()calls to prevent deadlocks - Use
Promise.allwith semaphore-wrapped functions, never with raw API calls - Use
instances.searchfor text matching,filterfor exact-match queries - Split
infilter values into batches of at most 1000 and merge responses - Refer to https://docs.cognite.com/cdf/dm/dm_reference/dm_limits_and_restrictions for current limits
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