SlideShare ist ein Scribd-Unternehmen logo
1 von 28
Hivereader.com
I’ve outgrown my basic
stack. Now what?
Thoughts and feelings about growing
with Django and NoSQL
Hivereader.com
Our common stack is built on:
Super awesome and fast (once you learn what knobs to turn).
Lots of cool features and tools: pg_tune, pg_top, pg_bouncer
Django is a high-level Python Web framework that encourages
rapid development and clean, pragmatic design.
In-memory key-value store for small chunks of data.
Super simple and awesome
Hivereader.com
People are signing up and using your
app/game/site/bread maker/whatever
Hivereader.com
hooray
Hivereader.com
But
Hivereader.com
Things get start to get slow
Hivereader.com
or worse
Hivereader.com
Single server
appapp
DBDB
otherother
Hivereader.com
Find your bottlenecks:
Unless your app is doing something crazy
you’re mostly abusing the DB
Add more caching or, better yet, smarter caching
Hivereader.com
Hivereader.com
pg_bouncer
Hivereader.com
Welcome to Postgres config file
pg_tune is here to help*
*kind of
Hivereader.com
Still Growing?
Hivereader.com
appapp
DBDB
otherother
appapp
DBDB
appapp
DBDB
otherother
appapp
DBDB
otherother
Hivereader.com
Need a solution for lots of data
that is growing quickly.
The solution needs to be targeted
for my problem.
Hivereader.com
NoSQL to the rescue?
Hivereader.com
But wait, can Postgres handle this?
most likely
partitioning
and
sharding
Can have lots of app code sometimes.
What about when you outgrow your shard key
“Don’t shard until you have to”
- every single talk I’ve seen
Slony?
“master to multiple slaves” replication
Hivereader.com
Lots of options
+ tons more
Hivereader.com
Nearly all of them are based on 2 papers
Built on CAP theorem
The theorem began as a conjecture made by University of California, Berkeley computer
scientist Eric Brewer at the 2000 Symposium on Principles of Distributed Computing.
In 2002, Seth Gilbert and Nancy Lynch of MIT published a formal proof of Brewer's
conjecture, rendering it a theorem.
Hivereader.com
Which one?
Hivereader.com
Super fast
Advanced key-value store
Think of it as super memcached. With union math.
All data must fit in ram
It is often referred to as a data structure server
Keys can contain strings, hashes, lists, sets and sorted sets
Not a db solution but more of a helper.
This is now a part of our basic stack for most apps.
Hivereader.com
Document store
JSON-like documents with dynamic schemas
Ad-hoc queries
Indexing
Load-balancing MongoDB scales horizontally using sharding
MongoDB uses a readers-writer lock that allows concurrent reads access to a database but gives exclusive access to a single write
operation.However, when a write lock exists, a single write operation holds the lock exclusively, and no other read or write operations may share
the lock.
Global write lock*
Uncompressed field names
Safe off by default
Just google “mongo problems” or “moving off mongodb”
Hivereader.com
Uses pre-defined column family format
Map Reduce
Used by all people with with ‘big data’ problems
Amazing workhorse for data
You need a sizable cluster
Cluster setup can be difficult
/ hbase
I need to personally spend more time with this
Hivereader.com
JSON to store data,
JavaScript for MapReduce and HTTP for an API.
Views: embedded map/reduce
Multi-master replication
BigCouch, couchbase, Membase?
Kind of in a dev rut...
...but just pushed a new huge upgrade
Hivereader.com
Based hardcore on Amazon's Dynamo paper
Key Value store
Super good about failure, “no downtime”
Map Reduce / Secondary Indexes
Built-in full text search
Link walking
2 types of mapreduce
Javascript - can be slow as hell
Erlang - super fast
Hivereader.com
Key value + row-oriented = column family
Linear scalability and fault-tolerance on commodity
hardware or cloud infrastructure
Built by Facebook for Messages
Has CQL3 - think SQL, kind of
Baked auto cluster AMI
Super fast writes
Compresses data that’s not accessed a lot
Can tie in to Hadoop for big map reduce
Hivereader.com
So now what?
Hivereader.com
Things to think about:
Is eventual consistency ok for you?
Do you know your queries you need right now?
Is your data complicated or simple?
How fast does it grow?
How long do you want that data to hang around?
Really think about trade offs.
Every system has its good and bad
There is no “winner”, so stop searching “which is best”
Think about which fits your use case
http://kkovacs.eu/cassandra-vs-mongodb-vs-couchdb-vs-redis
http://docs.basho.com/riak/1.2.1/references/appendices/comparisons/
Tons of links out there, just make sure they are relatively new

Weitere ähnliche Inhalte

Was ist angesagt?

Using server logs to your advantage
Using server logs to your advantageUsing server logs to your advantage
Using server logs to your advantageAlexandra Johnson
 
MongoDB and Hadoop: Driving Business Insights
MongoDB and Hadoop: Driving Business InsightsMongoDB and Hadoop: Driving Business Insights
MongoDB and Hadoop: Driving Business InsightsMongoDB
 
Scrapinghub Deck for Startups
Scrapinghub Deck for StartupsScrapinghub Deck for Startups
Scrapinghub Deck for StartupsScrapinghub
 
Webinar: MongoDB Connector for Spark
Webinar: MongoDB Connector for SparkWebinar: MongoDB Connector for Spark
Webinar: MongoDB Connector for SparkMongoDB
 
Find out how DataScience has revolutionized SEO for OVH
Find out how DataScience has revolutionized SEO for OVHFind out how DataScience has revolutionized SEO for OVH
Find out how DataScience has revolutionized SEO for OVHVincent Terrasi
 
Techorama - Evolvable Application Development with MongoDB
Techorama  - Evolvable Application Development with MongoDBTechorama  - Evolvable Application Development with MongoDB
Techorama - Evolvable Application Development with MongoDBbwullems
 
Hadoop at Yahoo! -- Hadoop World NY 2009
Hadoop at Yahoo! -- Hadoop World NY 2009Hadoop at Yahoo! -- Hadoop World NY 2009
Hadoop at Yahoo! -- Hadoop World NY 2009yhadoop
 
Performance evaluation of cloud-based log file analysis with Apache Hadoop an...
Performance evaluation of cloud-based log file analysis with Apache Hadoop an...Performance evaluation of cloud-based log file analysis with Apache Hadoop an...
Performance evaluation of cloud-based log file analysis with Apache Hadoop an...Kishor Datta Gupta
 
An Introduction to MongoDB Compass
An Introduction to MongoDB CompassAn Introduction to MongoDB Compass
An Introduction to MongoDB CompassMongoDB
 
Web scraping with BeautifulSoup, LXML, RegEx and Scrapy
Web scraping with BeautifulSoup, LXML, RegEx and ScrapyWeb scraping with BeautifulSoup, LXML, RegEx and Scrapy
Web scraping with BeautifulSoup, LXML, RegEx and ScrapyLITTINRAJAN
 
Google history nd architecture
Google history nd architectureGoogle history nd architecture
Google history nd architectureDivyangee Jain
 
Cache Sketches: Using Bloom Filters and Web Caching Against Slow Load Times
Cache Sketches: Using Bloom Filters and Web Caching Against Slow Load TimesCache Sketches: Using Bloom Filters and Web Caching Against Slow Load Times
Cache Sketches: Using Bloom Filters and Web Caching Against Slow Load TimesFelix Gessert
 
1 content optimization-hug-2010-07-21
1 content optimization-hug-2010-07-211 content optimization-hug-2010-07-21
1 content optimization-hug-2010-07-21Hadoop User Group
 
MongoDB World 2016: Poster Sessions eBook
MongoDB World 2016: Poster Sessions eBookMongoDB World 2016: Poster Sessions eBook
MongoDB World 2016: Poster Sessions eBookMongoDB
 
Living with SQL and NoSQL at craigslist, a Pragmatic Approach
Living with SQL and NoSQL at craigslist, a Pragmatic ApproachLiving with SQL and NoSQL at craigslist, a Pragmatic Approach
Living with SQL and NoSQL at craigslist, a Pragmatic ApproachJeremy Zawodny
 
OWF 2014 - Take back control of your Web tracking - Dataiku
OWF 2014 - Take back control of your Web tracking - DataikuOWF 2014 - Take back control of your Web tracking - Dataiku
OWF 2014 - Take back control of your Web tracking - DataikuDataiku
 

Was ist angesagt? (20)

Using server logs to your advantage
Using server logs to your advantageUsing server logs to your advantage
Using server logs to your advantage
 
MongoDB and Hadoop: Driving Business Insights
MongoDB and Hadoop: Driving Business InsightsMongoDB and Hadoop: Driving Business Insights
MongoDB and Hadoop: Driving Business Insights
 
Scrapinghub Deck for Startups
Scrapinghub Deck for StartupsScrapinghub Deck for Startups
Scrapinghub Deck for Startups
 
Jinchao demo
Jinchao demoJinchao demo
Jinchao demo
 
Webinar: MongoDB Connector for Spark
Webinar: MongoDB Connector for SparkWebinar: MongoDB Connector for Spark
Webinar: MongoDB Connector for Spark
 
Find out how DataScience has revolutionized SEO for OVH
Find out how DataScience has revolutionized SEO for OVHFind out how DataScience has revolutionized SEO for OVH
Find out how DataScience has revolutionized SEO for OVH
 
Techorama - Evolvable Application Development with MongoDB
Techorama  - Evolvable Application Development with MongoDBTechorama  - Evolvable Application Development with MongoDB
Techorama - Evolvable Application Development with MongoDB
 
Hadoop at Yahoo! -- Hadoop World NY 2009
Hadoop at Yahoo! -- Hadoop World NY 2009Hadoop at Yahoo! -- Hadoop World NY 2009
Hadoop at Yahoo! -- Hadoop World NY 2009
 
Performance evaluation of cloud-based log file analysis with Apache Hadoop an...
Performance evaluation of cloud-based log file analysis with Apache Hadoop an...Performance evaluation of cloud-based log file analysis with Apache Hadoop an...
Performance evaluation of cloud-based log file analysis with Apache Hadoop an...
 
An Introduction to MongoDB Compass
An Introduction to MongoDB CompassAn Introduction to MongoDB Compass
An Introduction to MongoDB Compass
 
Web scraping with BeautifulSoup, LXML, RegEx and Scrapy
Web scraping with BeautifulSoup, LXML, RegEx and ScrapyWeb scraping with BeautifulSoup, LXML, RegEx and Scrapy
Web scraping with BeautifulSoup, LXML, RegEx and Scrapy
 
Fluentd - Unified logging layer
Fluentd -  Unified logging layerFluentd -  Unified logging layer
Fluentd - Unified logging layer
 
Google history nd architecture
Google history nd architectureGoogle history nd architecture
Google history nd architecture
 
Cache Sketches: Using Bloom Filters and Web Caching Against Slow Load Times
Cache Sketches: Using Bloom Filters and Web Caching Against Slow Load TimesCache Sketches: Using Bloom Filters and Web Caching Against Slow Load Times
Cache Sketches: Using Bloom Filters and Web Caching Against Slow Load Times
 
1 content optimization-hug-2010-07-21
1 content optimization-hug-2010-07-211 content optimization-hug-2010-07-21
1 content optimization-hug-2010-07-21
 
MongoDB World 2016: Poster Sessions eBook
MongoDB World 2016: Poster Sessions eBookMongoDB World 2016: Poster Sessions eBook
MongoDB World 2016: Poster Sessions eBook
 
Elastic Stack Roadmap
Elastic Stack RoadmapElastic Stack Roadmap
Elastic Stack Roadmap
 
Living with SQL and NoSQL at craigslist, a Pragmatic Approach
Living with SQL and NoSQL at craigslist, a Pragmatic ApproachLiving with SQL and NoSQL at craigslist, a Pragmatic Approach
Living with SQL and NoSQL at craigslist, a Pragmatic Approach
 
MongoDB and Spark
MongoDB and SparkMongoDB and Spark
MongoDB and Spark
 
OWF 2014 - Take back control of your Web tracking - Dataiku
OWF 2014 - Take back control of your Web tracking - DataikuOWF 2014 - Take back control of your Web tracking - Dataiku
OWF 2014 - Take back control of your Web tracking - Dataiku
 

Ähnlich wie I’ve outgrown my basic stack. Now what?

Big Data and Hadoop
Big Data and HadoopBig Data and Hadoop
Big Data and HadoopFlavio Vit
 
Hadoop Online training by Keylabs
Hadoop Online training by KeylabsHadoop Online training by Keylabs
Hadoop Online training by KeylabsSiva Sankar
 
Overview of Big data, Hadoop and Microsoft BI - version1
Overview of Big data, Hadoop and Microsoft BI - version1Overview of Big data, Hadoop and Microsoft BI - version1
Overview of Big data, Hadoop and Microsoft BI - version1Thanh Nguyen
 
Overview of big data & hadoop version 1 - Tony Nguyen
Overview of big data & hadoop   version 1 - Tony NguyenOverview of big data & hadoop   version 1 - Tony Nguyen
Overview of big data & hadoop version 1 - Tony NguyenThanh Nguyen
 
Big-Data Hadoop Tutorials - MindScripts Technologies, Pune
Big-Data Hadoop Tutorials - MindScripts Technologies, Pune Big-Data Hadoop Tutorials - MindScripts Technologies, Pune
Big-Data Hadoop Tutorials - MindScripts Technologies, Pune amrutupre
 
Big data and hadoop product page
Big data and hadoop product pageBig data and hadoop product page
Big data and hadoop product pageJanu Jahnavi
 
Finding the needles in the haystack. An Overview of Analyzing Big Data with H...
Finding the needles in the haystack. An Overview of Analyzing Big Data with H...Finding the needles in the haystack. An Overview of Analyzing Big Data with H...
Finding the needles in the haystack. An Overview of Analyzing Big Data with H...Chris Baglieri
 
Need for Time series Database
Need for Time series DatabaseNeed for Time series Database
Need for Time series DatabasePramit Choudhary
 
Big Data & Analytics (CSE6005) L6.pptx
Big Data & Analytics (CSE6005) L6.pptxBig Data & Analytics (CSE6005) L6.pptx
Big Data & Analytics (CSE6005) L6.pptxAnonymous9etQKwW
 
A walk down NOSQL Lane in the cloud
A walk down NOSQL Lane in the cloudA walk down NOSQL Lane in the cloud
A walk down NOSQL Lane in the cloudsiculars
 
Big Data Goes Airborne. Propelling Your Big Data Initiative with Ironcluster ...
Big Data Goes Airborne. Propelling Your Big Data Initiative with Ironcluster ...Big Data Goes Airborne. Propelling Your Big Data Initiative with Ironcluster ...
Big Data Goes Airborne. Propelling Your Big Data Initiative with Ironcluster ...Precisely
 
Voldemort & Hadoop @ Linkedin, Hadoop User Group Jan 2010
Voldemort & Hadoop @ Linkedin, Hadoop User Group Jan 2010Voldemort & Hadoop @ Linkedin, Hadoop User Group Jan 2010
Voldemort & Hadoop @ Linkedin, Hadoop User Group Jan 2010Bhupesh Bansal
 
Hadoop and Voldemort @ LinkedIn
Hadoop and Voldemort @ LinkedInHadoop and Voldemort @ LinkedIn
Hadoop and Voldemort @ LinkedInHadoop User Group
 
Hadoop Demystified + MapReduce (Java and C#), Pig, and Hive Demos
Hadoop Demystified + MapReduce (Java and C#), Pig, and Hive DemosHadoop Demystified + MapReduce (Java and C#), Pig, and Hive Demos
Hadoop Demystified + MapReduce (Java and C#), Pig, and Hive DemosLester Martin
 

Ähnlich wie I’ve outgrown my basic stack. Now what? (20)

Big Data A La Carte Menu
Big Data A La Carte MenuBig Data A La Carte Menu
Big Data A La Carte Menu
 
Big Data and Hadoop
Big Data and HadoopBig Data and Hadoop
Big Data and Hadoop
 
Final deck
Final deckFinal deck
Final deck
 
Handling not so big data
Handling not so big dataHandling not so big data
Handling not so big data
 
Hadoop Online training by Keylabs
Hadoop Online training by KeylabsHadoop Online training by Keylabs
Hadoop Online training by Keylabs
 
Overview of Big data, Hadoop and Microsoft BI - version1
Overview of Big data, Hadoop and Microsoft BI - version1Overview of Big data, Hadoop and Microsoft BI - version1
Overview of Big data, Hadoop and Microsoft BI - version1
 
Overview of big data & hadoop version 1 - Tony Nguyen
Overview of big data & hadoop   version 1 - Tony NguyenOverview of big data & hadoop   version 1 - Tony Nguyen
Overview of big data & hadoop version 1 - Tony Nguyen
 
Big-Data Hadoop Tutorials - MindScripts Technologies, Pune
Big-Data Hadoop Tutorials - MindScripts Technologies, Pune Big-Data Hadoop Tutorials - MindScripts Technologies, Pune
Big-Data Hadoop Tutorials - MindScripts Technologies, Pune
 
Big data and hadoop product page
Big data and hadoop product pageBig data and hadoop product page
Big data and hadoop product page
 
Finding the needles in the haystack. An Overview of Analyzing Big Data with H...
Finding the needles in the haystack. An Overview of Analyzing Big Data with H...Finding the needles in the haystack. An Overview of Analyzing Big Data with H...
Finding the needles in the haystack. An Overview of Analyzing Big Data with H...
 
The ABC of Big Data
The ABC of Big DataThe ABC of Big Data
The ABC of Big Data
 
Need for Time series Database
Need for Time series DatabaseNeed for Time series Database
Need for Time series Database
 
Big Data & Analytics (CSE6005) L6.pptx
Big Data & Analytics (CSE6005) L6.pptxBig Data & Analytics (CSE6005) L6.pptx
Big Data & Analytics (CSE6005) L6.pptx
 
Hadoop basics
Hadoop basicsHadoop basics
Hadoop basics
 
A walk down NOSQL Lane in the cloud
A walk down NOSQL Lane in the cloudA walk down NOSQL Lane in the cloud
A walk down NOSQL Lane in the cloud
 
Big Data Goes Airborne. Propelling Your Big Data Initiative with Ironcluster ...
Big Data Goes Airborne. Propelling Your Big Data Initiative with Ironcluster ...Big Data Goes Airborne. Propelling Your Big Data Initiative with Ironcluster ...
Big Data Goes Airborne. Propelling Your Big Data Initiative with Ironcluster ...
 
Voldemort & Hadoop @ Linkedin, Hadoop User Group Jan 2010
Voldemort & Hadoop @ Linkedin, Hadoop User Group Jan 2010Voldemort & Hadoop @ Linkedin, Hadoop User Group Jan 2010
Voldemort & Hadoop @ Linkedin, Hadoop User Group Jan 2010
 
Hadoop and Voldemort @ LinkedIn
Hadoop and Voldemort @ LinkedInHadoop and Voldemort @ LinkedIn
Hadoop and Voldemort @ LinkedIn
 
Architecting Your First Big Data Implementation
Architecting Your First Big Data ImplementationArchitecting Your First Big Data Implementation
Architecting Your First Big Data Implementation
 
Hadoop Demystified + MapReduce (Java and C#), Pig, and Hive Demos
Hadoop Demystified + MapReduce (Java and C#), Pig, and Hive DemosHadoop Demystified + MapReduce (Java and C#), Pig, and Hive Demos
Hadoop Demystified + MapReduce (Java and C#), Pig, and Hive Demos
 

Kürzlich hochgeladen

The UX of Automation by AJ King, Senior UX Researcher, Ocado
The UX of Automation by AJ King, Senior UX Researcher, OcadoThe UX of Automation by AJ King, Senior UX Researcher, Ocado
The UX of Automation by AJ King, Senior UX Researcher, OcadoUXDXConf
 
Top 10 Symfony Development Companies 2024
Top 10 Symfony Development Companies 2024Top 10 Symfony Development Companies 2024
Top 10 Symfony Development Companies 2024TopCSSGallery
 
Unpacking Value Delivery - Agile Oxford Meetup - May 2024.pptx
Unpacking Value Delivery - Agile Oxford Meetup - May 2024.pptxUnpacking Value Delivery - Agile Oxford Meetup - May 2024.pptx
Unpacking Value Delivery - Agile Oxford Meetup - May 2024.pptxDavid Michel
 
Free and Effective: Making Flows Publicly Accessible, Yumi Ibrahimzade
Free and Effective: Making Flows Publicly Accessible, Yumi IbrahimzadeFree and Effective: Making Flows Publicly Accessible, Yumi Ibrahimzade
Free and Effective: Making Flows Publicly Accessible, Yumi IbrahimzadeCzechDreamin
 
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 PerformanceSamy Fodil
 
Salesforce Adoption – Metrics, Methods, and Motivation, Antone Kom
Salesforce Adoption – Metrics, Methods, and Motivation, Antone KomSalesforce Adoption – Metrics, Methods, and Motivation, Antone Kom
Salesforce Adoption – Metrics, Methods, and Motivation, Antone KomCzechDreamin
 
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...FIDO Alliance
 
WSO2CONMay2024OpenSourceConferenceDebrief.pptx
WSO2CONMay2024OpenSourceConferenceDebrief.pptxWSO2CONMay2024OpenSourceConferenceDebrief.pptx
WSO2CONMay2024OpenSourceConferenceDebrief.pptxJennifer Lim
 
Enterprise Knowledge Graphs - Data Summit 2024
Enterprise Knowledge Graphs - Data Summit 2024Enterprise Knowledge Graphs - Data Summit 2024
Enterprise Knowledge Graphs - Data Summit 2024Enterprise Knowledge
 
Strategic AI Integration in Engineering Teams
Strategic AI Integration in Engineering TeamsStrategic AI Integration in Engineering Teams
Strategic AI Integration in Engineering TeamsUXDXConf
 
Optimizing NoSQL Performance Through Observability
Optimizing NoSQL Performance Through ObservabilityOptimizing NoSQL Performance Through Observability
Optimizing NoSQL Performance Through ObservabilityScyllaDB
 
What's New in Teams Calling, Meetings and Devices April 2024
What's New in Teams Calling, Meetings and Devices April 2024What's New in Teams Calling, Meetings and Devices April 2024
What's New in Teams Calling, Meetings and Devices April 2024Stephanie Beckett
 
Google I/O Extended 2024 Warsaw
Google I/O Extended 2024 WarsawGoogle I/O Extended 2024 Warsaw
Google I/O Extended 2024 WarsawGDSC PJATK
 
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...FIDO Alliance
 
Extensible Python: Robustness through Addition - PyCon 2024
Extensible Python: Robustness through Addition - PyCon 2024Extensible Python: Robustness through Addition - PyCon 2024
Extensible Python: Robustness through Addition - PyCon 2024Patrick Viafore
 
ECS 2024 Teams Premium - Pretty Secure
ECS 2024   Teams Premium - Pretty SecureECS 2024   Teams Premium - Pretty Secure
ECS 2024 Teams Premium - Pretty SecureFemke de Vroome
 
IESVE for Early Stage Design and Planning
IESVE for Early Stage Design and PlanningIESVE for Early Stage Design and Planning
IESVE for Early Stage Design and PlanningIES VE
 
SOQL 201 for Admins & Developers: Slice & Dice Your Org’s Data With Aggregate...
SOQL 201 for Admins & Developers: Slice & Dice Your Org’s Data With Aggregate...SOQL 201 for Admins & Developers: Slice & Dice Your Org’s Data With Aggregate...
SOQL 201 for Admins & Developers: Slice & Dice Your Org’s Data With Aggregate...CzechDreamin
 
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...FIDO Alliance
 
Speed Wins: From Kafka to APIs in Minutes
Speed Wins: From Kafka to APIs in MinutesSpeed Wins: From Kafka to APIs in Minutes
Speed Wins: From Kafka to APIs in Minutesconfluent
 

Kürzlich hochgeladen (20)

The UX of Automation by AJ King, Senior UX Researcher, Ocado
The UX of Automation by AJ King, Senior UX Researcher, OcadoThe UX of Automation by AJ King, Senior UX Researcher, Ocado
The UX of Automation by AJ King, Senior UX Researcher, Ocado
 
Top 10 Symfony Development Companies 2024
Top 10 Symfony Development Companies 2024Top 10 Symfony Development Companies 2024
Top 10 Symfony Development Companies 2024
 
Unpacking Value Delivery - Agile Oxford Meetup - May 2024.pptx
Unpacking Value Delivery - Agile Oxford Meetup - May 2024.pptxUnpacking Value Delivery - Agile Oxford Meetup - May 2024.pptx
Unpacking Value Delivery - Agile Oxford Meetup - May 2024.pptx
 
Free and Effective: Making Flows Publicly Accessible, Yumi Ibrahimzade
Free and Effective: Making Flows Publicly Accessible, Yumi IbrahimzadeFree and Effective: Making Flows Publicly Accessible, Yumi Ibrahimzade
Free and Effective: Making Flows Publicly Accessible, Yumi Ibrahimzade
 
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
 
Salesforce Adoption – Metrics, Methods, and Motivation, Antone Kom
Salesforce Adoption – Metrics, Methods, and Motivation, Antone KomSalesforce Adoption – Metrics, Methods, and Motivation, Antone Kom
Salesforce Adoption – Metrics, Methods, and Motivation, Antone Kom
 
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...
 
WSO2CONMay2024OpenSourceConferenceDebrief.pptx
WSO2CONMay2024OpenSourceConferenceDebrief.pptxWSO2CONMay2024OpenSourceConferenceDebrief.pptx
WSO2CONMay2024OpenSourceConferenceDebrief.pptx
 
Enterprise Knowledge Graphs - Data Summit 2024
Enterprise Knowledge Graphs - Data Summit 2024Enterprise Knowledge Graphs - Data Summit 2024
Enterprise Knowledge Graphs - Data Summit 2024
 
Strategic AI Integration in Engineering Teams
Strategic AI Integration in Engineering TeamsStrategic AI Integration in Engineering Teams
Strategic AI Integration in Engineering Teams
 
Optimizing NoSQL Performance Through Observability
Optimizing NoSQL Performance Through ObservabilityOptimizing NoSQL Performance Through Observability
Optimizing NoSQL Performance Through Observability
 
What's New in Teams Calling, Meetings and Devices April 2024
What's New in Teams Calling, Meetings and Devices April 2024What's New in Teams Calling, Meetings and Devices April 2024
What's New in Teams Calling, Meetings and Devices April 2024
 
Google I/O Extended 2024 Warsaw
Google I/O Extended 2024 WarsawGoogle I/O Extended 2024 Warsaw
Google I/O Extended 2024 Warsaw
 
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...
 
Extensible Python: Robustness through Addition - PyCon 2024
Extensible Python: Robustness through Addition - PyCon 2024Extensible Python: Robustness through Addition - PyCon 2024
Extensible Python: Robustness through Addition - PyCon 2024
 
ECS 2024 Teams Premium - Pretty Secure
ECS 2024   Teams Premium - Pretty SecureECS 2024   Teams Premium - Pretty Secure
ECS 2024 Teams Premium - Pretty Secure
 
IESVE for Early Stage Design and Planning
IESVE for Early Stage Design and PlanningIESVE for Early Stage Design and Planning
IESVE for Early Stage Design and Planning
 
SOQL 201 for Admins & Developers: Slice & Dice Your Org’s Data With Aggregate...
SOQL 201 for Admins & Developers: Slice & Dice Your Org’s Data With Aggregate...SOQL 201 for Admins & Developers: Slice & Dice Your Org’s Data With Aggregate...
SOQL 201 for Admins & Developers: Slice & Dice Your Org’s Data With Aggregate...
 
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...
 
Speed Wins: From Kafka to APIs in Minutes
Speed Wins: From Kafka to APIs in MinutesSpeed Wins: From Kafka to APIs in Minutes
Speed Wins: From Kafka to APIs in Minutes
 

I’ve outgrown my basic stack. Now what?