GoogleSQL for BigQuery supports data sketches. A data sketch is a compact summary of a data aggregation. It captures all the necessary information to either extract an aggregation result, continue a data aggregation, or merge it with another sketch, enabling re-aggregation.
Computing a metric using a sketch is substantially less expensive than computing an exact value. If your computation is too slow or requires too much temporary storage, use sketches to reduce query time and resources.
Additionally, computing cardinalities, such as the number of distinct users, or quantiles, such as median visit duration, without sketches is usually only possible by running jobs over the raw data because already-aggregated data can't be combined anymore.
Consider a table with the following data:
Product | Number of users | Median visit duration |
---|---|---|
Product A | 500 million | 10 minutes |
Product B | 20 million | 2 minutes |
Computing the total number of users for both products isn't possible because we don't know how many users used both products in the table.
A solution is to store sketches in the table instead. Each sketch is an approximate and compact representation of a particular input property, such as cardinality, that you can store, merge (or re-aggregate), and query for near-exact results. In the previous example, you can estimate the number of distinct users for Product A and Product B by creating and merging (re-aggregating) the sketches for each product. You can also estimate the median visit duration with quantile sketches that you can likewise merge and query.
Because a sketch has lossy compression of the original data, it introduces a statistical error that's represented by an error bound or confidence interval (CI). For most applications, this uncertainty is small. For example, a typical cardinality-counting sketch has a relative error of about 1% in 95% of all cases. A sketch trades some accuracy, or precision, for faster and less expensive computations, and less storage.
In summary, a sketch has these main properties:
- Represents an approximate aggregate for a specific metric
- Is compact
- Is a serialized form of an in-memory, sublinear data structure
- Is typically a fixed size and asymptotically smaller than the input
- Can introduce a statistical error that you determine with a precision level
- Can be merged with other sketches to summarize the union of the underlying data sets
Re-aggregation with sketch merging
Sketches let you store and merge data for efficient re-aggregation. This makes sketches particularly useful for materialized views of data sets. You can merge sketches to construct a summary of multiple data streams based on partial sketches created for each stream.
For example, if you create a sketch for the estimated number of distinct users every day, you can get the number of distinct users during the last seven days by merging daily sketches. Re-aggregating the merged daily sketches helps you avoid reading the full input of the data set.
Sketch re-aggregation is also useful in online analytical processing (OLAP). You can merge sketches to create a roll-up of an OLAP cube, where the sketch summarizes data along one or more specific dimensions of the cube. OLAP roll-ups aren't possible with true distinct counts.
Sketch integration
You can integrate sketches with other systems. For example, you can build sketches in external applications, like Dataflow, Apache Spark, and ZetaSketch and then consume them in GoogleSQL or vice versa.
In addition to GoogleSQL, you can use sketches with the following coding languages:
- C++
- Go
- Java
- Python
Estimate cardinality without deletions
If you need to estimate cardinality and you don't need the ability to delete items from the sketch, use an HLL++ sketch.
For example, to get the number of unique users who actively used a product in a given month (MAU or 28DAU metrics), use an HLL++ sketch.
HLL++ sketches
HyperLogLog++ (HLL++) is a sketching algorithm for estimating cardinality. HLL++ is based on the paper HyperLogLog in Practice, where the ++ denotes the augmentations made to the HyperLogLog algorithm.
Cardinality is the number of distinct elements in the input for a sketch. For example, you could use an HLL++ sketch to get the number of unique users who have opened an application.
HLL++ estimates very small and very large cardinalities. HLL++ includes a 64-bit hash function, sparse representation to reduce memory requirements for small cardinality estimates, and empirical bias correction for small cardinality estimates.
Precision
HLL++ sketches support custom precision. The following table shows the supported precision values, the maximum storage size, and the confidence interval (CI) of typical precision levels:
Precision | Max storage size | 65% CI | 95% CI | 99% CI |
---|---|---|---|---|
10 | 1 KiB + 28 B | ±3.25% | ±6.50% | ±9.75% |
11 | 2 KiB + 28 B | ±2.30% | ±4.60% | ±6.89% |
12 | 4 KiB + 28 B | ±1.63% | ±3.25% | ±4.88% |
13 | 8 KiB + 28 B | ±1.15% | ±2.30% | ±3.45% |
14 | 16 KiB + 30 B | ±0.81% | ±1.63% | ±2.44% |
15 (default) | 32 KiB + 30 B | ±0.57% | ±1.15% | ±1.72% |
16 | 64 KiB + 30 B | ±0.41% | ±0.81% | ±1.22% |
17 | 128 KiB + 30 B | ±0.29% | ±0.57% | ±0.86% |
18 | 256 KiB + 30 B | ±0.20% | ±0.41% | ±0.61% |
19 | 512 KiB + 30 B | ±0.14% | ±0.29% | ±0.43% |
20 | 1024 KiB + 30 B | ±0.10% | ±0.20% | ±0.30% |
21 | 2048 KiB + 32 B | ±0.07% | ±0.14% | ±0.22% |
22 | 4096 KiB + 32 B | ±0.05% | ±0.10% | ±0.15% |
23 | 8192 KiB + 32 B | ±0.04% | ±0.07% | ±0.11% |
24 | 16384 KiB + 32 B | ±0.03% | ±0.05% | ±0.08% |
You can define precision for an HLL++ sketch when you initialize it with the
HLL_COUNT.INIT
function.
Deletion
You can't delete values from an HLL++ sketch.
Additional details
For a list of functions that you can use with HLL++ sketches, see HLL++ functions.
Approximate aggregate functions
As an alternative to specific sketch-based approximation functions, GoogleSQL provides predefined approximate aggregate functions. These approximate aggregate functions support sketches for common estimations such as distinct count, quantiles, and top count, but they don't allow custom precision. They also don't expose and store the sketch for re-aggregation like other types of sketches. The approximate aggregate functions are designed for running quick sketch-based queries without detailed configuration.
For a list of approximate aggregate functions that you can use with sketch-based approximation, see Approximate aggregate functions.