SlideShare a Scribd company logo
1 of 43
Download to read offline
Building Pinterest Realtime Ads
Platform Using Kafka Streams
Liquan Pei, Boyang Chen
Kafka Summit SF 2018
Liquan Pei
liquanpei@pinterest.com
Boyang Chen
bychen@pinterest.com
Visual Discovery Engine
250M MAU
100B Pins created by people
10B Recommendations per day
A great platform for ads
Ads Platform
Ads Platform
● A recommendation system
○ Machine learning models
● More than a recommendation system
○ Budgeting
○ New Ads Exploration
Ads Platform
Ads Platform
Budgeting
Budgeting
Stream-Stream Windowed Join
Joiner Topology
Insertion
store
Action
store
ad_insertion user_action
Join status
Joiner Algorithm
Join
Status
1
Join
Status
Action
Store
4
Join
Status
2
Join
Status
Action
Store
3
Join
Join
Status
Action
Store
5
Insertion
Store
Joiner Algorithm
Join
Status 1
Join
Status
2
Join
Status
3
Insertion
Store
Join
4
Join
Status
Insertion
Store
Join
Status
Action
Store
5
Insertion
Store
Realtime Spend Joiner
● Large state: TB data.
○ 24-hour join window
● Window store operations
○ Put/Get
○ Commit
● Requirements
○ Sub second latency
○ Fast recovery
○ Fast scale up/down
● num.rolling.segments = number of RocksDB instances.
● A RocksDB is dropped when expired.
Window Store Internal
Window Store Operations
● Read/write performance
○ Use point query for fast lookup
■ fetch(key, timeFrom, timeTo);
■ fetch(key, windowStartTime); [ >=Kafka 2.0.0 ]
○ Increase block cache size
○ Reduce action state store size
How to achieve sub-second latency?
Window Store Operations
● Each commit triggers RocksDB flush to ensure data is persistent on disk.
● Each RocksDB flush creates SST.
● Accumulated number of SST files will trigger compaction.
● Tune commit.interval.ms.
Kafka Streams Commit
Fast recovery
● State rebalance
Fast recovery
● Rolling restart could trigger multiple rebalances.
● State shuffling is expensive.
Approaches:
● Recover faster:
○ increase max.poll.records for restore consumer (KIP-276)
○ RocksDB window store batch recovery (KAFKA-7023)
● Single rebalance:
○ Wait for all members to be ready = increase session.timeout.ms.
○ Restore faster: static membership (KIP-345)
Fast scale down/up
● Save state in remote storage.
○ S3
○ HDFS
Budgeting
Windowed Aggregation
Aggregator
● Utilize Stream DSL API
● Requirements
○ End to end sub second latency. User action to ads serving.
○ Thousands of ads serving machines needs to consume this data.
Output to a compacted topic
Cons:
○ High fanout, broker saturation.
○ Replay could be long.
Pros:
○ Fast correction.
○ Logic simplicity.
Cons:
○ Event based: no way to reset.
○ Time based: expensive batch
operation.
Pros:
○ Very small volume.
○ Logic consolidation.
Output to a signal topic
Streaming in budget change
Pros:
○ Unblock signal reset without
batch update.
Cons:
○ Consistency guarantee.
○ Strong ordering guarantee.
Budgeting Summary
● Low level metrics are critical, especially storage layer.
● Large state shuffling is bad.
● Compacted topic as partitioned key-value store.
● Unified solution for serving stream output.
New Ads Exploration
● A new ad is created, however, the Ads Platform doesn’t know about the user
engagement with this ad on different surfaces.
● The faster the Ads Platform knows about the performance of the newly
created ad, the better value we provide to the user.
● Balance between exploiting good ads and exploring new ads.
● Solution: Add a boosting factor to new ads to increase the probability of
winning auction.
New Ads Exploration
New Ads Exploration
● Need to compute <ad id, past X day impressions>.
● The result published to S3 for serving.
● Backfilling is needed.
○ Exactly same logic as the normal processing.
Backfilling
Backfilling
Backfilling
Stream Processing Patterns
Streaming Processing Patterns
Stream Processing Patterns
Stream Platform
● Usability
○ User should only focus on business logic.
○ Support for more state store backends.
○ Type system for easier code sharing.
● Scalability
○ Applications should be able to handle more QPS with more machines.
● Fault Tolerance
○ Application should recover within X minutes.
○ Application should support code and state rollback.
● Developer Velocity
○ The platform should provide standard ways of backfilling.
● Debuggability
○ The platform should provide standard ways of exposing debug information to be queryable.
Contributions
● KIP-91 Adding delivery.timeout.ms to Kafka producer.
● KIP-245 Replace StreamsConfig with Properties
● KIP-276 Add config prefix for different consumers
● KIP-300 (ongoing) Add windowed KTable API
● KIP-345 (ongoing) Reduce consumer rebalances through static membership
● KAFKA-6896 Export producer and consumer metrics in Kafka Streams
● KAFKA-7023 Move prepareForBulkLoad() call after customized RocksDBConfigSetter
● KAFKA-7103 Use bulkloading for RocksDBSegmentedBytesStore during init
● RocksDB Metrics Lib
Acknowledgements
Guozhang and Matthias from Confluent
Yu Yang, Zack Drach and Shawn Nguyen from Pinterest
The Ads Realtime Team
Citations
● Search ads on Pinterest: https://business.pinterest.com/en/blog/introducing-
search-ads-on-pinterest
● Ads demo: https://bn.co/pinterest-promoted-pin-campaign/
● Strencils source: https://stenciltown.omnigroup.com/categories/all/
● RocksDB tuning: https://github.com/facebook/rocksdb/wiki/RocksDB-Tuning-
Guide
● “Compact, delete” topic:https://issues.apache.org/jira/browse/KAFKA-4015
● Monitoring your Kafka Streams Application:
https://docs.confluent.io/current/streams/monitoring.html
● Join Support in Kafka streams:
https://docs.confluent.io/current/streams/developer-guide/dsl-
api.html#streams-developer-guide-dsl-joins

More Related Content

What's hot

Introduction to Redis
Introduction to RedisIntroduction to Redis
Introduction to Redis
Dvir Volk
 
Designing ETL Pipelines with Structured Streaming and Delta Lake—How to Archi...
Designing ETL Pipelines with Structured Streaming and Delta Lake—How to Archi...Designing ETL Pipelines with Structured Streaming and Delta Lake—How to Archi...
Designing ETL Pipelines with Structured Streaming and Delta Lake—How to Archi...
Databricks
 
Apache Pinot Case Study: Building Distributed Analytics Systems Using Apache ...
Apache Pinot Case Study: Building Distributed Analytics Systems Using Apache ...Apache Pinot Case Study: Building Distributed Analytics Systems Using Apache ...
Apache Pinot Case Study: Building Distributed Analytics Systems Using Apache ...
HostedbyConfluent
 

What's hot (20)

Change Data Feed in Delta
Change Data Feed in DeltaChange Data Feed in Delta
Change Data Feed in Delta
 
Whoops, The Numbers Are Wrong! Scaling Data Quality @ Netflix
Whoops, The Numbers Are Wrong! Scaling Data Quality @ NetflixWhoops, The Numbers Are Wrong! Scaling Data Quality @ Netflix
Whoops, The Numbers Are Wrong! Scaling Data Quality @ Netflix
 
Performance Tuning RocksDB for Kafka Streams’ State Stores
Performance Tuning RocksDB for Kafka Streams’ State StoresPerformance Tuning RocksDB for Kafka Streams’ State Stores
Performance Tuning RocksDB for Kafka Streams’ State Stores
 
Log Structured Merge Tree
Log Structured Merge TreeLog Structured Merge Tree
Log Structured Merge Tree
 
Exactly-Once Financial Data Processing at Scale with Flink and Pinot
Exactly-Once Financial Data Processing at Scale with Flink and PinotExactly-Once Financial Data Processing at Scale with Flink and Pinot
Exactly-Once Financial Data Processing at Scale with Flink and Pinot
 
Kafka for Real-Time Replication between Edge and Hybrid Cloud
Kafka for Real-Time Replication between Edge and Hybrid CloudKafka for Real-Time Replication between Edge and Hybrid Cloud
Kafka for Real-Time Replication between Edge and Hybrid Cloud
 
Scaling your Data Pipelines with Apache Spark on Kubernetes
Scaling your Data Pipelines with Apache Spark on KubernetesScaling your Data Pipelines with Apache Spark on Kubernetes
Scaling your Data Pipelines with Apache Spark on Kubernetes
 
Introduction to Redis
Introduction to RedisIntroduction to Redis
Introduction to Redis
 
Parquet Hadoop Summit 2013
Parquet Hadoop Summit 2013Parquet Hadoop Summit 2013
Parquet Hadoop Summit 2013
 
Cassandra at Instagram 2016 (Dikang Gu, Facebook) | Cassandra Summit 2016
Cassandra at Instagram 2016 (Dikang Gu, Facebook) | Cassandra Summit 2016Cassandra at Instagram 2016 (Dikang Gu, Facebook) | Cassandra Summit 2016
Cassandra at Instagram 2016 (Dikang Gu, Facebook) | Cassandra Summit 2016
 
Designing ETL Pipelines with Structured Streaming and Delta Lake—How to Archi...
Designing ETL Pipelines with Structured Streaming and Delta Lake—How to Archi...Designing ETL Pipelines with Structured Streaming and Delta Lake—How to Archi...
Designing ETL Pipelines with Structured Streaming and Delta Lake—How to Archi...
 
Parallelization of Structured Streaming Jobs Using Delta Lake
Parallelization of Structured Streaming Jobs Using Delta LakeParallelization of Structured Streaming Jobs Using Delta Lake
Parallelization of Structured Streaming Jobs Using Delta Lake
 
Parquet performance tuning: the missing guide
Parquet performance tuning: the missing guideParquet performance tuning: the missing guide
Parquet performance tuning: the missing guide
 
A Deep Dive into Kafka Controller
A Deep Dive into Kafka ControllerA Deep Dive into Kafka Controller
A Deep Dive into Kafka Controller
 
Apache Pinot Case Study: Building Distributed Analytics Systems Using Apache ...
Apache Pinot Case Study: Building Distributed Analytics Systems Using Apache ...Apache Pinot Case Study: Building Distributed Analytics Systems Using Apache ...
Apache Pinot Case Study: Building Distributed Analytics Systems Using Apache ...
 
Building Stream Infrastructure across Multiple Data Centers with Apache Kafka
Building Stream Infrastructure across Multiple Data Centers with Apache KafkaBuilding Stream Infrastructure across Multiple Data Centers with Apache Kafka
Building Stream Infrastructure across Multiple Data Centers with Apache Kafka
 
How to build a streaming Lakehouse with Flink, Kafka, and Hudi
How to build a streaming Lakehouse with Flink, Kafka, and HudiHow to build a streaming Lakehouse with Flink, Kafka, and Hudi
How to build a streaming Lakehouse with Flink, Kafka, and Hudi
 
How Uber scaled its Real Time Infrastructure to Trillion events per day
How Uber scaled its Real Time Infrastructure to Trillion events per dayHow Uber scaled its Real Time Infrastructure to Trillion events per day
How Uber scaled its Real Time Infrastructure to Trillion events per day
 
MongoDB World 2015 - A Technical Introduction to WiredTiger
MongoDB World 2015 - A Technical Introduction to WiredTigerMongoDB World 2015 - A Technical Introduction to WiredTiger
MongoDB World 2015 - A Technical Introduction to WiredTiger
 
Building Data Product Based on Apache Spark at Airbnb with Jingwei Lu and Liy...
Building Data Product Based on Apache Spark at Airbnb with Jingwei Lu and Liy...Building Data Product Based on Apache Spark at Airbnb with Jingwei Lu and Liy...
Building Data Product Based on Apache Spark at Airbnb with Jingwei Lu and Liy...
 

Similar to Building Pinterest Real-Time Ads Platform Using Kafka Streams

Kafka Summit NYC 2017 - Scalable Real-Time Complex Event Processing @ Uber
Kafka Summit NYC 2017 - Scalable Real-Time Complex Event Processing @ UberKafka Summit NYC 2017 - Scalable Real-Time Complex Event Processing @ Uber
Kafka Summit NYC 2017 - Scalable Real-Time Complex Event Processing @ Uber
confluent
 

Similar to Building Pinterest Real-Time Ads Platform Using Kafka Streams (20)

Storing State Forever: Why It Can Be Good For Your Analytics
Storing State Forever: Why It Can Be Good For Your AnalyticsStoring State Forever: Why It Can Be Good For Your Analytics
Storing State Forever: Why It Can Be Good For Your Analytics
 
Architecting Analytic Pipelines on GCP - Chicago Cloud Conference 2020
Architecting Analytic Pipelines on GCP - Chicago Cloud Conference 2020Architecting Analytic Pipelines on GCP - Chicago Cloud Conference 2020
Architecting Analytic Pipelines on GCP - Chicago Cloud Conference 2020
 
Kafka Summit NYC 2017 - Scalable Real-Time Complex Event Processing @ Uber
Kafka Summit NYC 2017 - Scalable Real-Time Complex Event Processing @ UberKafka Summit NYC 2017 - Scalable Real-Time Complex Event Processing @ Uber
Kafka Summit NYC 2017 - Scalable Real-Time Complex Event Processing @ Uber
 
Kafka Practices @ Uber - Seattle Apache Kafka meetup
Kafka Practices @ Uber - Seattle Apache Kafka meetupKafka Practices @ Uber - Seattle Apache Kafka meetup
Kafka Practices @ Uber - Seattle Apache Kafka meetup
 
Citi Tech Talk: Monitoring and Performance
Citi Tech Talk: Monitoring and PerformanceCiti Tech Talk: Monitoring and Performance
Citi Tech Talk: Monitoring and Performance
 
Story of migrating event pipeline from batch to streaming
Story of migrating event pipeline from batch to streamingStory of migrating event pipeline from batch to streaming
Story of migrating event pipeline from batch to streaming
 
Real-time Analytics with Upsert Using Apache Kafka and Apache Pinot | Yupeng ...
Real-time Analytics with Upsert Using Apache Kafka and Apache Pinot | Yupeng ...Real-time Analytics with Upsert Using Apache Kafka and Apache Pinot | Yupeng ...
Real-time Analytics with Upsert Using Apache Kafka and Apache Pinot | Yupeng ...
 
Democratizing data science Using spark, hive and druid
Democratizing data science Using spark, hive and druidDemocratizing data science Using spark, hive and druid
Democratizing data science Using spark, hive and druid
 
Bootstrapping state in Apache Flink
Bootstrapping state in Apache FlinkBootstrapping state in Apache Flink
Bootstrapping state in Apache Flink
 
Flipkart's Hybrid Cloud Infrastructure Strategy for Optimal Cost Efficiency a...
Flipkart's Hybrid Cloud Infrastructure Strategy for Optimal Cost Efficiency a...Flipkart's Hybrid Cloud Infrastructure Strategy for Optimal Cost Efficiency a...
Flipkart's Hybrid Cloud Infrastructure Strategy for Optimal Cost Efficiency a...
 
Key considerations in productionizing streaming applications
Key considerations in productionizing streaming applicationsKey considerations in productionizing streaming applications
Key considerations in productionizing streaming applications
 
Scaling event aggregation at twitter
Scaling event aggregation at twitterScaling event aggregation at twitter
Scaling event aggregation at twitter
 
Enabling Presto to handle massive scale at lightning speed
Enabling Presto to handle massive scale at lightning speedEnabling Presto to handle massive scale at lightning speed
Enabling Presto to handle massive scale at lightning speed
 
BAXTER phase 1b
BAXTER phase 1bBAXTER phase 1b
BAXTER phase 1b
 
Benefits of Stream Processing and Apache Kafka Use Cases
Benefits of Stream Processing and Apache Kafka Use CasesBenefits of Stream Processing and Apache Kafka Use Cases
Benefits of Stream Processing and Apache Kafka Use Cases
 
iFood on Delivering 100 Million Events a Month to Restaurants with Scylla
iFood on Delivering 100 Million Events a Month to Restaurants with ScyllaiFood on Delivering 100 Million Events a Month to Restaurants with Scylla
iFood on Delivering 100 Million Events a Month to Restaurants with Scylla
 
OSMC 2023 | What’s new with Grafana Labs’s Open Source Observability stack by...
OSMC 2023 | What’s new with Grafana Labs’s Open Source Observability stack by...OSMC 2023 | What’s new with Grafana Labs’s Open Source Observability stack by...
OSMC 2023 | What’s new with Grafana Labs’s Open Source Observability stack by...
 
Enabling presto to handle massive scale at lightning speed
Enabling presto to handle massive scale at lightning speedEnabling presto to handle massive scale at lightning speed
Enabling presto to handle massive scale at lightning speed
 
Flink Forward San Francisco 2018: Gregory Fee - "Bootstrapping State In Apach...
Flink Forward San Francisco 2018: Gregory Fee - "Bootstrapping State In Apach...Flink Forward San Francisco 2018: Gregory Fee - "Bootstrapping State In Apach...
Flink Forward San Francisco 2018: Gregory Fee - "Bootstrapping State In Apach...
 
Scylla Summit 2022: Building Zeotap's Privacy Compliant Customer Data Platfor...
Scylla Summit 2022: Building Zeotap's Privacy Compliant Customer Data Platfor...Scylla Summit 2022: Building Zeotap's Privacy Compliant Customer Data Platfor...
Scylla Summit 2022: Building Zeotap's Privacy Compliant Customer Data Platfor...
 

More from confluent

More from confluent (20)

Evolving Data Governance for the Real-time Streaming and AI Era
Evolving Data Governance for the Real-time Streaming and AI EraEvolving Data Governance for the Real-time Streaming and AI Era
Evolving Data Governance for the Real-time Streaming and AI Era
 
Catch the Wave: SAP Event-Driven and Data Streaming for the Intelligence Ente...
Catch the Wave: SAP Event-Driven and Data Streaming for the Intelligence Ente...Catch the Wave: SAP Event-Driven and Data Streaming for the Intelligence Ente...
Catch the Wave: SAP Event-Driven and Data Streaming for the Intelligence Ente...
 
Santander Stream Processing with Apache Flink
Santander Stream Processing with Apache FlinkSantander Stream Processing with Apache Flink
Santander Stream Processing with Apache Flink
 
Unlocking the Power of IoT: A comprehensive approach to real-time insights
Unlocking the Power of IoT: A comprehensive approach to real-time insightsUnlocking the Power of IoT: A comprehensive approach to real-time insights
Unlocking the Power of IoT: A comprehensive approach to real-time insights
 
Workshop híbrido: Stream Processing con Flink
Workshop híbrido: Stream Processing con FlinkWorkshop híbrido: Stream Processing con Flink
Workshop híbrido: Stream Processing con Flink
 
Industry 4.0: Building the Unified Namespace with Confluent, HiveMQ and Spark...
Industry 4.0: Building the Unified Namespace with Confluent, HiveMQ and Spark...Industry 4.0: Building the Unified Namespace with Confluent, HiveMQ and Spark...
Industry 4.0: Building the Unified Namespace with Confluent, HiveMQ and Spark...
 
AWS Immersion Day Mapfre - Confluent
AWS Immersion Day Mapfre   -   ConfluentAWS Immersion Day Mapfre   -   Confluent
AWS Immersion Day Mapfre - Confluent
 
Eventos y Microservicios - Santander TechTalk
Eventos y Microservicios - Santander TechTalkEventos y Microservicios - Santander TechTalk
Eventos y Microservicios - Santander TechTalk
 
Q&A with Confluent Experts: Navigating Networking in Confluent Cloud
Q&A with Confluent Experts: Navigating Networking in Confluent CloudQ&A with Confluent Experts: Navigating Networking in Confluent Cloud
Q&A with Confluent Experts: Navigating Networking in Confluent Cloud
 
Citi TechTalk Session 2: Kafka Deep Dive
Citi TechTalk Session 2: Kafka Deep DiveCiti TechTalk Session 2: Kafka Deep Dive
Citi TechTalk Session 2: Kafka Deep Dive
 
Build real-time streaming data pipelines to AWS with Confluent
Build real-time streaming data pipelines to AWS with ConfluentBuild real-time streaming data pipelines to AWS with Confluent
Build real-time streaming data pipelines to AWS with Confluent
 
Q&A with Confluent Professional Services: Confluent Service Mesh
Q&A with Confluent Professional Services: Confluent Service MeshQ&A with Confluent Professional Services: Confluent Service Mesh
Q&A with Confluent Professional Services: Confluent Service Mesh
 
Citi Tech Talk: Event Driven Kafka Microservices
Citi Tech Talk: Event Driven Kafka MicroservicesCiti Tech Talk: Event Driven Kafka Microservices
Citi Tech Talk: Event Driven Kafka Microservices
 
Confluent & GSI Webinars series - Session 3
Confluent & GSI Webinars series - Session 3Confluent & GSI Webinars series - Session 3
Confluent & GSI Webinars series - Session 3
 
Citi Tech Talk: Messaging Modernization
Citi Tech Talk: Messaging ModernizationCiti Tech Talk: Messaging Modernization
Citi Tech Talk: Messaging Modernization
 
Citi Tech Talk: Data Governance for streaming and real time data
Citi Tech Talk: Data Governance for streaming and real time dataCiti Tech Talk: Data Governance for streaming and real time data
Citi Tech Talk: Data Governance for streaming and real time data
 
Confluent & GSI Webinars series: Session 2
Confluent & GSI Webinars series: Session 2Confluent & GSI Webinars series: Session 2
Confluent & GSI Webinars series: Session 2
 
Data In Motion Paris 2023
Data In Motion Paris 2023Data In Motion Paris 2023
Data In Motion Paris 2023
 
Confluent Partner Tech Talk with Synthesis
Confluent Partner Tech Talk with SynthesisConfluent Partner Tech Talk with Synthesis
Confluent Partner Tech Talk with Synthesis
 
The Future of Application Development - API Days - Melbourne 2023
The Future of Application Development - API Days - Melbourne 2023The Future of Application Development - API Days - Melbourne 2023
The Future of Application Development - API Days - Melbourne 2023
 

Recently uploaded

Easier, Faster, and More Powerful – Alles Neu macht der Mai -Wir durchleuchte...
Easier, Faster, and More Powerful – Alles Neu macht der Mai -Wir durchleuchte...Easier, Faster, and More Powerful – Alles Neu macht der Mai -Wir durchleuchte...
Easier, Faster, and More Powerful – Alles Neu macht der Mai -Wir durchleuchte...
panagenda
 
Harnessing Passkeys in the Battle Against AI-Powered Cyber Threats.pptx
Harnessing Passkeys in the Battle Against AI-Powered Cyber Threats.pptxHarnessing Passkeys in the Battle Against AI-Powered Cyber Threats.pptx
Harnessing Passkeys in the Battle Against AI-Powered Cyber Threats.pptx
FIDO Alliance
 
Tales from a Passkey Provider Progress from Awareness to Implementation.pptx
Tales from a Passkey Provider  Progress from Awareness to Implementation.pptxTales from a Passkey Provider  Progress from Awareness to Implementation.pptx
Tales from a Passkey Provider Progress from Awareness to Implementation.pptx
FIDO Alliance
 

Recently uploaded (20)

Easier, Faster, and More Powerful – Alles Neu macht der Mai -Wir durchleuchte...
Easier, Faster, and More Powerful – Alles Neu macht der Mai -Wir durchleuchte...Easier, Faster, and More Powerful – Alles Neu macht der Mai -Wir durchleuchte...
Easier, Faster, and More Powerful – Alles Neu macht der Mai -Wir durchleuchte...
 
Harnessing Passkeys in the Battle Against AI-Powered Cyber Threats.pptx
Harnessing Passkeys in the Battle Against AI-Powered Cyber Threats.pptxHarnessing Passkeys in the Battle Against AI-Powered Cyber Threats.pptx
Harnessing Passkeys in the Battle Against AI-Powered Cyber Threats.pptx
 
Secure Zero Touch enabled Edge compute with Dell NativeEdge via FDO _ Brad at...
Secure Zero Touch enabled Edge compute with Dell NativeEdge via FDO _ Brad at...Secure Zero Touch enabled Edge compute with Dell NativeEdge via FDO _ Brad at...
Secure Zero Touch enabled Edge compute with Dell NativeEdge via FDO _ Brad at...
 
How we scaled to 80K users by doing nothing!.pdf
How we scaled to 80K users by doing nothing!.pdfHow we scaled to 80K users by doing nothing!.pdf
How we scaled to 80K users by doing nothing!.pdf
 
Using IESVE for Room Loads Analysis - UK & Ireland
Using IESVE for Room Loads Analysis - UK & IrelandUsing IESVE for Room Loads Analysis - UK & Ireland
Using IESVE for Room Loads Analysis - UK & Ireland
 
Event-Driven Architecture Masterclass: Challenges in Stream Processing
Event-Driven Architecture Masterclass: Challenges in Stream ProcessingEvent-Driven Architecture Masterclass: Challenges in Stream Processing
Event-Driven Architecture Masterclass: Challenges in Stream Processing
 
Top 10 CodeIgniter Development Companies
Top 10 CodeIgniter Development CompaniesTop 10 CodeIgniter Development Companies
Top 10 CodeIgniter Development Companies
 
AI mind or machine power point presentation
AI mind or machine power point presentationAI mind or machine power point presentation
AI mind or machine power point presentation
 
Event-Driven Architecture Masterclass: Integrating Distributed Data Stores Ac...
Event-Driven Architecture Masterclass: Integrating Distributed Data Stores Ac...Event-Driven Architecture Masterclass: Integrating Distributed Data Stores Ac...
Event-Driven Architecture Masterclass: Integrating Distributed Data Stores Ac...
 
2024 May Patch Tuesday
2024 May Patch Tuesday2024 May Patch Tuesday
2024 May Patch Tuesday
 
ERP Contender Series: Acumatica vs. Sage Intacct
ERP Contender Series: Acumatica vs. Sage IntacctERP Contender Series: Acumatica vs. Sage Intacct
ERP Contender Series: Acumatica vs. Sage Intacct
 
ADP Passwordless Journey Case Study.pptx
ADP Passwordless Journey Case Study.pptxADP Passwordless Journey Case Study.pptx
ADP Passwordless Journey Case Study.pptx
 
Collecting & Temporal Analysis of Behavioral Web Data - Tales From The Inside
Collecting & Temporal Analysis of Behavioral Web Data - Tales From The InsideCollecting & Temporal Analysis of Behavioral Web Data - Tales From The Inside
Collecting & Temporal Analysis of Behavioral Web Data - Tales From The Inside
 
Continuing Bonds Through AI: A Hermeneutic Reflection on Thanabots
Continuing Bonds Through AI: A Hermeneutic Reflection on ThanabotsContinuing Bonds Through AI: A Hermeneutic Reflection on Thanabots
Continuing Bonds Through AI: A Hermeneutic Reflection on Thanabots
 
Working together SRE & Platform Engineering
Working together SRE & Platform EngineeringWorking together SRE & Platform Engineering
Working together SRE & Platform Engineering
 
ASRock Industrial FDO Solutions in Action for Industrial Edge AI _ Kenny at A...
ASRock Industrial FDO Solutions in Action for Industrial Edge AI _ Kenny at A...ASRock Industrial FDO Solutions in Action for Industrial Edge AI _ Kenny at A...
ASRock Industrial FDO Solutions in Action for Industrial Edge AI _ Kenny at A...
 
Tales from a Passkey Provider Progress from Awareness to Implementation.pptx
Tales from a Passkey Provider  Progress from Awareness to Implementation.pptxTales from a Passkey Provider  Progress from Awareness to Implementation.pptx
Tales from a Passkey Provider Progress from Awareness to Implementation.pptx
 
Google I/O Extended 2024 Warsaw
Google I/O Extended 2024 WarsawGoogle I/O Extended 2024 Warsaw
Google I/O Extended 2024 Warsaw
 
WebAssembly is Key to Better LLM Performance
WebAssembly is Key to Better LLM PerformanceWebAssembly is Key to Better LLM Performance
WebAssembly is Key to Better LLM Performance
 
Choosing the Right FDO Deployment Model for Your Application _ Geoffrey at In...
Choosing the Right FDO Deployment Model for Your Application _ Geoffrey at In...Choosing the Right FDO Deployment Model for Your Application _ Geoffrey at In...
Choosing the Right FDO Deployment Model for Your Application _ Geoffrey at In...
 

Building Pinterest Real-Time Ads Platform Using Kafka Streams