How AppsFlyer modernized their interactive workload by shifting to Amazon Athena and saved 80% of prices

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This publish is co-written with Nofar Diamant and Matan Safri from AppsFlyer. 

AppsFlyer develops a number one measurement answer targeted on privateness, which allows entrepreneurs to gauge the effectiveness of their advertising actions and integrates them with the broader advertising world, managing an unlimited quantity of 100 billion occasions on daily basis. AppsFlyer empowers digital entrepreneurs to exactly establish and allocate credit score to the varied shopper interactions that lead as much as an app set up, using in-depth analytics.

A part of AppsFlyer’s providing is the Audiences Segmentation product, which permits app homeowners to exactly goal and reengage customers primarily based on their habits and demographics. This features a characteristic that gives real-time estimation of viewers sizes inside particular consumer segments, known as the Estimation characteristic.

To supply customers with real-time estimation of viewers measurement, the AppsFlyer staff initially used Apache HBase, an open-source distributed database. Nevertheless, because the workload grew to 23 TB, the HBase structure wanted to be revisited to satisfy service degree agreements (SLAs) for response time and reliability.

This publish explores how AppsFlyer modernized their Audiences Segmentation product by utilizing Amazon Athena. Athena is a robust and versatile serverless question service offered by AWS. It’s designed to make it simple for customers to research information saved in Amazon Easy Storage Service (Amazon S3) utilizing commonplace SQL queries.

We dive into the varied optimization methods AppsFlyer employed, resembling partition projection, sorting, parallel question runs, and using question end result reuse. We share the challenges the staff confronted and the methods they adopted to unlock the true potential of Athena in a use case with low-latency necessities. Moreover, we talk about the thorough testing, monitoring, and rollout course of that resulted in a profitable transition to the brand new Athena structure.

Audiences Segmentation legacy structure and modernization drivers

Viewers segmentation entails defining focused audiences in AppsFlyer’s UI, represented by a directed tree construction with set operations and atomic standards as nodes and leaves, respectively.

The next diagram exhibits an instance of viewers segmentation on the AppsFlyer Audiences administration console and its translation to the tree construction described, with the 2 atomic standards because the leaves and the set operation between them because the node.

Audience segmentation tool and its translation to a tree structure

To supply customers with real-time estimation of viewers measurement, the AppsFlyer staff used a framework known as Theta Sketches, which is an environment friendly information construction for counting distinct parts. These sketches improve scalability and analytical capabilities. These sketches had been initially saved within the HBase database.

HBase is an open supply, distributed, columnar database, designed to deal with massive volumes of information throughout commodity {hardware} with horizontal scalability.

Unique information construction

On this publish, we concentrate on the occasions desk, the most important desk initially saved in HBase. The desk had the schema date | app-id | event-name | event-value | sketch and was partitioned by date and app-id.

The next diagram showcases the high-level authentic structure of the AppsFlyer Estimations system.

High level architecture of the Estimations system

The structure featured an Airflow ETL course of that initiates jobs to create sketch information from the supply dataset, adopted by the importation of those information into HBase. Customers might then use an API service to question HBase and retrieve estimations of consumer counts based on the viewers phase standards arrange within the UI.

To be taught extra concerning the earlier HBase structure, see Utilized Chance – Counting Massive Set of Unstructured Occasions with Theta Sketches.

Over time, the workload exceeded the dimensions for which HBase implementation was initially designed, reaching a storage measurement of 23 TB. It grew to become obvious that in an effort to meet AppsFlyer’s SLA for response time and reliability, the HBase structure wanted to be revisited.

As beforehand talked about, the main target of the use case entailed every day interactions by prospects with the UI, necessitating adherence to a UI commonplace SLA that gives fast response instances and the potential to deal with a considerable variety of every day requests, whereas accommodating the present information quantity and potential future enlargement.

Moreover, as a result of excessive value related to working and sustaining HBase, the goal was to seek out another that’s managed, simple, and cost-effective, that wouldn’t considerably complicate the prevailing system structure.

Following thorough staff discussions and consultations with the AWS specialists, the staff concluded {that a} answer utilizing Amazon S3 and Athena stood out as probably the most cost-effective and simple alternative. The first concern was associated to question latency, and the staff was notably cautious to keep away from any adversarial results on the general buyer expertise.

The next diagram illustrates the brand new structure utilizing Athena. Discover that import-..-sketches-to-hbase and HBase had been omitted, and Athena was added to question information in Amazon S3.

High level architecture of the Estimations system using Athena

Schema design and partition projection for efficiency enhancement

On this part, we talk about the method of schema design within the new structure and totally different efficiency optimization strategies that the staff used together with partition projection.

Merging information for partition discount

In an effort to consider if Athena can be utilized to help Audiences Segmentation, an preliminary proof of idea was carried out. The scope was restricted to occasions arriving from three app-ids (approximated 3 GB of information) partitioned by app-id and by date, utilizing the identical partitioning schema that was used within the HBase implementation. Because the staff scaled as much as embody your complete dataset with 10,000 app-ids for a 1-month time vary (reaching an approximated 150 GB of information), the staff began to see extra sluggish queries, particularly for queries that spanned over vital time ranges. The staff dived deep and found that Athena spent vital time on the question starting stage resulting from numerous partitions (7.3 million) that it loaded from the AWS Glue Knowledge Catalog (for extra details about utilizing Athena with AWS Glue, see Integration with AWS Glue).

This led the staff to look at partition indexing. Athena partition indexes present a solution to create metadata indexes on partition columns, permitting Athena to prune the information scan on the partition degree, which may cut back the quantity of information that must be learn from Amazon S3. Partition indexing shortened the time of partition discovery within the question starting stage, however the enchancment wasn’t substantial sufficient to satisfy the required question latency SLA.

As an alternative choice to partition indexing, the staff evaluated a technique to cut back partition quantity by decreasing information granularity from every day to month-to-month. This methodology consolidated every day information into month-to-month aggregates by merging day-level sketches into month-to-month composite sketches utilizing the Theta Sketches union functionality. For instance, taking an information of a month vary, as an alternative of getting 30 rows of information monthly, the staff united these rows right into a single row, successfully slashing the row rely by 97%.

This methodology tremendously decreased the time wanted for the partition discovery part by 30%, which initially required roughly 10–15 seconds, and it additionally lowered the quantity of information that needed to be scanned. Nevertheless, the anticipated latency objectives primarily based on the UI’s responsiveness requirements had been nonetheless not splendid.

Moreover, the merging course of inadvertently compromised the precision of the information, resulting in the exploration of different options.

Partition projection as an enhancement multiplier

At this level, the staff determined to discover partition projection in Athena.

Partition projection in Athena permits you to enhance question effectivity by projecting the metadata of your partitions. It nearly generates and discovers partitions as wanted with out the necessity for the partitions to be explicitly outlined within the database catalog beforehand.

This characteristic is especially helpful when coping with massive numbers of partitions, or when partitions are created quickly, as within the case of streaming information.

As we defined earlier, on this specific use case, every leaf is an entry sample being translated into a question that should include date vary, app-id, and event-name. This led the staff to outline the projection columns by utilizing date sort for the date vary and injected sort for app-id and event-name.

Slightly than scanning and loading all partition metadata from the catalog, Athena can generate the partitions to question utilizing configured guidelines and values from the question. This avoids the necessity to load and filter partitions from the catalog by producing them within the second.

The projection course of helped keep away from efficiency points attributable to a excessive variety of partitions, eliminating the latency from partition discovery throughout question runs.

As a result of partition projection eradicated the dependency between variety of partitions and question runtime, the staff might experiment with a further partition: event-name. Partitioning by three columns (date, app-id, and event-name) lowered the quantity of scanned information, leading to a ten% enchancment in question efficiency in comparison with the efficiency utilizing partition projection with information partitioned solely by date and app-id.

The next diagram illustrates the high-level information move of sketch file creation. Specializing in the sketch writing course of (write-events-estimation-sketches) into Amazon S3 with three partition fields brought on the method to run twice as lengthy in comparison with the unique structure, resulting from an elevated variety of sketch information (writing 20 instances extra sketch information to Amazon S3).

High level data flow of Sketch file creation

This prompted the staff to drop the event-name partition and compromise on two partitions: date and app-id, ensuing within the following partition construction:

s3://bucket/table_root/date=${day}/app_id=${app_id}

Utilizing Parquet file format

Within the new structure, the staff used Parquet file format. Apache Parquet is an open supply, column-oriented information file format designed for environment friendly information storage and retrieval. Every Parquet file accommodates metadata resembling minimal and most worth of columns that enables the question engine to skip loading unneeded information. This optimization reduces the quantity of information that must be scanned, as a result of Athena can skip or shortly navigate via sections of the Parquet file which can be irrelevant to the question. In consequence, question efficiency improves considerably.

Parquet is especially efficient when querying sorted fields, as a result of it permits Athena to facilitate predicate pushdown optimization and shortly establish and entry the related information segments. To be taught extra about this functionality in Parquet file format, see Understanding columnar storage codecs.

Recognizing this benefit, the staff determined to type by event-name to reinforce question efficiency, attaining a ten% enchancment in comparison with non-sorted information. Initially, they tried partitioning by event-name to optimize efficiency, however this method elevated writing time to Amazon S3. Sorting demonstrated question time enchancment with out the ingestion overhead.

Question optimization and parallel queries

The staff found that efficiency could possibly be improved additional by operating parallel queries. As a substitute of a single question over an extended window of time, a number of queries had been run over shorter home windows. Though this elevated the complexity of the answer, it improved efficiency by about 20% on common.

As an illustration, take into account a situation the place a consumer requests the estimated measurement of app com.demo and occasion af_purchase between April 2024 and finish of June 2024 (as illustrated earlier, the segmentation is outlined by the consumer after which translated to an atomic leaf, which is then damaged right down to a number of queries relying on the date vary). The next diagram illustrates the method of breaking down the preliminary 3-month question into two separate as much as 60-day queries, operating them concurrently after which merging the outcomes.

Splitting query by date range

Lowering outcomes set measurement

In analyzing efficiency bottlenecks, analyzing the differing types and properties of the queries, and analyzing the totally different phases of the question run, it grew to become clear that particular queries had been sluggish in fetching question outcomes. This drawback wasn’t rooted within the precise question run, however in information switch from Amazon S3 on the GetQueryResults part, resulting from question outcomes containing numerous rows (a single end result can include hundreds of thousands of rows).

The preliminary method of dealing with a number of key-value permutations in a single sketch inflated the variety of rows significantly. To beat this, the staff launched a brand new event-attr-key discipline to separate sketches into distinct key-value pairs.

The ultimate schema regarded as follows:

date | app-id | event-name | event-attr-key | event-attr-value | sketch

This refactoring resulted in a drastic discount of end result rows, which considerably expedited the GetQueryResults course of, markedly bettering general question runtime by 90%.

Athena question outcomes reuse

To handle a typical use case within the Audiences Segmentation GUI the place customers typically make refined changes to their queries, resembling adjusting filters or barely altering time home windows, the staff used the Athena question outcomes reuse characteristic. This characteristic improves question efficiency and reduces prices by caching and reusing the outcomes of earlier queries. This characteristic performs a pivotal position, notably when bearing in mind the latest enhancements involving the splitting of date ranges. The flexibility to reuse and swiftly retrieve outcomes implies that these minor—but frequent—modifications now not require a full question reprocessing.

In consequence, the latency of repeated question runs was lowered by as much as 80%, enhancing the consumer expertise by offering sooner insights. This optimization not solely accelerates information retrieval but in addition considerably reduces prices as a result of there’s no have to rescan information for each minor change.

Resolution rollout: Testing and monitoring

On this part, we talk about the method of rolling out the brand new structure, together with testing and monitoring.

Fixing Amazon S3 slowdown errors

In the course of the answer testing part, the staff developed an automation course of designed to evaluate the totally different audiences inside the system, utilizing the information organized inside the newly carried out schema. The methodology concerned a comparative evaluation of outcomes obtained from HBase in opposition to these derived from Athena.

Whereas operating these checks, the staff examined the accuracy of the estimations retrieved and in addition the latency change.

On this testing part, the staff encountered some failures when operating many concurrent queries directly. These failures had been attributable to Amazon S3 throttling resulting from too many GET requests to the identical prefix produced by concurrent Athena queries.

In an effort to deal with the throttling (slowdown errors), the staff added a retry mechanism for question runs with an exponential back-off technique (wait time will increase exponentially with a random offset to stop concurrent retries).

Rollout preparations

At first, the staff initiated a 1-month backfilling course of as a cost-conscious method, prioritizing accuracy validation earlier than committing to a complete 2-year backfill.

The backfilling course of included operating the Spark job (write-events-estimation-sketches) within the desired time vary. The job learn from the information warehouse, created sketches from the information, and wrote them to information within the particular schema that the staff outlined. Moreover, as a result of the staff used partition projection, they might skip the method of updating the Knowledge Catalog with each partition being added.

This step-by-step method allowed them to verify the correctness of their answer earlier than continuing with your complete historic dataset.

With confidence within the accuracy achieved through the preliminary part, the staff systematically expanded the backfilling course of to embody the complete 2-year timeframe, assuring an intensive and dependable implementation.

Earlier than the official launch of the up to date answer, a strong monitoring technique was carried out to safeguard stability. Key screens had been configured to evaluate important features, resembling question and API latency, error charges, API availability.

After the information was saved in Amazon S3 as Parquet information, the next rollout course of was designed:

  1. Maintain each HBase and Athena writing processes operating, cease studying from HBase, and begin studying from Athena.
  2. Cease writing to HBase.
  3. Sundown HBase.

Enhancements and optimizations with Athena

The migration from HBase to Athena, utilizing partition projection and optimized information constructions, has not solely resulted in a ten% enchancment in question efficiency, however has additionally considerably boosted general system stability by scanning solely the required information partitions. As well as, the transition to a serverless mannequin with Athena has achieved a powerful 80% discount in month-to-month prices in comparison with the earlier setup. This is because of eliminating infrastructure administration bills and aligning prices immediately with utilization, thereby positioning the group for extra environment friendly operations, improved information evaluation, and superior enterprise outcomes.

The next desk summarizes the enhancements and the optimizations carried out by the staff.

Space of Enchancment Motion Taken Measured Enchancment
Athena partition projection Partition projection over the big variety of partitions, avoiding limiting the variety of partitions; partition by event_name and app_id A whole lot of p.c enchancment in question efficiency. This was probably the most vital enchancment, which allowed the answer to be possible.
Partitioning and sorting Partitioning by app_id and sorting event_name with every day granularity 100% enchancment in jobs calculating the sketches. 5% latency in question efficiency.
Time vary queries Splitting very long time vary queries into a number of queries operating in parallel 20% enchancment in question efficiency.
Lowering outcomes set measurement Schema refactoring 90% enchancment in general question time.
Question end result reuse Supporting Athena question outcomes reuse 80% enchancment in queries ran greater than as soon as within the given time.

Conclusion

On this publish, we confirmed how Athena grew to become the primary element of the AppsFlyer Audiences Segmentation providing. We explored varied optimization methods resembling information merging, partition projection, schema redesign, parallel queries, Parquet file format, and using the question end result reuse.

We hope our expertise offers invaluable insights to reinforce the efficiency of your Athena-based purposes. Moreover, we suggest trying out Athena efficiency greatest practices for additional steerage.


Concerning the Authors

Nofar DiamantNofar Diamant is a software program staff lead at AppsFlyer with a present concentrate on fraud safety. Earlier than diving into this realm, she led the Retargeting staff at AppsFlyer, which is the topic of this publish. In her spare time, Nofar enjoys sports activities and is captivated with mentoring ladies in know-how. She is devoted to shifting the trade’s gender demographics by growing the presence of girls in engineering roles and inspiring them to succeed.

Matan Safri Matan Safri is a backend developer specializing in massive information within the Retargeting staff at AppsFlyer. Earlier than becoming a member of AppsFlyer, Matan was a backend developer in IDF and accomplished an MSC in electrical engineering, majoring in computer systems at BGU college. In his spare time, he enjoys wave browsing, yoga, touring, and taking part in the guitar.

Michael PeltsMichael Pelts is a Principal Options Architect at AWS. On this place, he works with main AWS prospects, aiding them in creating modern cloud-based options. Michael enjoys the creativity and problem-solving concerned in constructing efficient cloud architectures. He additionally likes sharing his in depth expertise in SaaS, analytics, and different domains, empowering prospects to raise their cloud experience.

Orgad Kimchi Orgad Kimchi is a Senior Technical Account Supervisor at Amazon Net Providers. He serves because the buyer’s advocate and assists his prospects in attaining cloud operational excellence specializing in structure, AI/ML in alignment with their enterprise objectives.

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