SlideShare una empresa de Scribd logo
1 de 34
Sr. Solution Architect, MongoDB
Matt Kalan
How Capital Markets Firms
Use MongoDB as a Tick
Database
Agenda
• MongoDB One Slide Overview
• FS Use Cases
• Writing/Capturing Market Data
• Reading/Analyzing Market Data
• Performance, Scalability, & High Availability
• Q&A
MongoDB Technical Benefits
Horizontally Scalable
-Sharding
Agile &
Flexible
High
Performance
-Indexes
-RAM
Application
Highly
Available
-Replica Sets
{ name: “John Smith”,
date: “2013-08-01”),
address: “10 3rd St.”,
phone: [
{ home: 1234567890},
{ mobile: 1234568138} ]
}
db.cust.insert({…})
db.cust.find({
name:”John Smith”})
Most Common FS Use Cases
1. Tick Data Capture & Analysis
2. Reference Data Management
3. RiskAnalysis & Reporting
4. Trade Repository
5. Portfolio Reporting
Writing and Capturing Tick
Data
Tick Data Capture & Analysis
Requirements
• Capture real-time market data (multi-asset, top of
book, depth of book, even news)
• Load historical data
• Aggregate data into bars, daily, monthly intervals
• Enable queries & analysis on raw ticks or
aggregates
• Drive backtesting or automated signals
Tick Data Capture & Analysis –
Why MongoDB?
• High throughput => can capturereal-timefeeds for all products/assetclasses
needed
• High scalability=> all data and depth for all historical time periods can be
captured
• Flexible & Range-basedindexing => fast querying on time rangesand any
fields
• Aggregation Framework => can shape raw data into aggregates (e.g. ticks to
bars)
• Map-reduce capability(Native MR or Hadoop Connector) => batch analysis
looking for patternsand opportunities
• Easy to use => native language drivers and JSON expressionsthat you can
Trades/metrics
High Level Trading Architecture
Feed Handler
Exchanges/Mark
ets/Brokers
Capturing
Application
Low Latency
Applications
Higher Latency
Trading
Applications
Backtesting and
Analysis
Applications
Market Data
Cached Static &
Aggregated Data
News & social
networking
sources
Orders
Orders
Trades/metrics
High Level Trading Architecture
Feed Handler
Exchanges/Mark
ets/Brokers
Capturing
Application
Low Latency
Applications
Higher Latency
Trading
Applications
Backtesting and
Analysis
Applications
Market Data
Cached Static &
Aggregated Data
News & social
networking
sources
Orders
Orders
Data Types
• Top of book
• Depth of book
• Multi-asset
• Derivatives (e.g. strips)
• News (text, video)
• Social Networking
{
_id : ObjectId("4e2e3f92268cdda473b628f6"),
symbol : "DIS",
timestamp: ISODate("2013-02-15 10:00"),
bidPrice: 55.37,
offerPrice: 55.58,
bidQuantity: 500,
offerQuantity: 700
}
> db.ticks.find( {symbol: "DIS",
bidPrice: {$gt: 55.36} } )
Top of Book [e.g. equities]
{
_id : ObjectId("4e2e3f92268cdda473b628f6"),
symbol : "DIS",
timestamp: ISODate("2013-02-15 10:00"),
bidPrices: [55.37, 55.36, 55.35],
offerPrices: [55.58, 55.59, 55.60],
bidQuantities: [500, 1000, 2000],
offerQuantities: [1000, 2000, 3000]
}
> db.ticks.find( {bidPrices: {$gt: 55.36} } )
Depth of Book
{
_id : ObjectId("4e2e3f92268cdda473b628f6"),
symbol : "DIS",
timestamp: ISODate("2013-02-15 10:00"),
bids: [
{price: 55.37, amount: 500},
{price: 55.37, amount: 1000},
{price: 55.37, amount: 2000} ],
offers: [
{price: 55.58, amount: 1000},
{price: 55.58, amount: 2000},
{price: 55.59, amount: 3000} ]
}
> db.ticks.find( {"bids.price": {$gt: 55.36} } )
Or However Your App Uses It
{
_id : ObjectId("4e2e3f92268cdda473b628f6"),
symbol : "DIS",
timestamp: ISODate("2013-02-15 10:00"),
spreadPrice: 0.58
leg1: {symbol: “CLM13, price: 97.34}
leg2: {symbol: “CLK13, price: 96.92}
}
db.ticks.find( { “leg1” : “CLM13” },
{ “leg2” : “CLK13” },
{ “spreadPrice” : {$gt: 0.50 } } )
Synthetic Spreads
{
_id : ObjectId("4e2e3f92268cdda473b628f6"),
symbol : "DIS",
timestamp: ISODate("2013-02-15 10:00"),
title: “Disney Earnings…”
body: “Walt Disney Company reported…”,
tags: [“earnings”, “media”, “walt disney”]
}
News
{
_id : ObjectId("4e2e3f92268cdda473b628f6"),
timestamp: ISODate("2013-02-15 10:00"),
twitterHandle: “jdoe”,
tweet: “Heard @DisneyPictures is releasing…”,
usernamesIncluded: [“DisneyPictures”],
hashTags: [“movierumors”, “disney”]
}
Social Networking
{
_id : ObjectId("4e2e3f92268cdda473b628f6"),
symbol : "DIS”,
openTS: Date("2013-02-15 10:00"),
closeTS: Date("2013-02-15 10:05"),
open: 55.36,
high: 55.80,
low: 55.20,
close: 55.70
}
Aggregates (bars, daily, etc)
Querying/Analyzing Tick Data
Architecture for Querying Data
Higher Latency
Trading
Applications
Backtesting
Applications
• Ticks
• Bars
• Other analysis
Research &
Analysis
Applications
// Compound indexes
> db.ticks.ensureIndex({symbol: 1, timestamp:1})
// Index on arrays
>db.ticks.ensureIndex( {bidPrices: -1})
// Index on any depth
> db.ticks.ensureIndex( {“bids.price”: 1} )
// Full text search
> db.ticks.ensureIndex ( {tweet: “text”} )
Index Any Fields: Arrays, Nested,
etc.
// Ticks for last month for media companies
> db.ticks.find({
symbol: {$in: ["DIS", “VIA“, “CBS"]},
timestamp: {$gt: new ISODate("2013-01-01")},
timestamp: {$lte: new ISODate("2013-01-31")}})
// Ticks when Disney’s bid breached 55.50 this month
> db.ticks.find({
symbol: "DIS",
bidPrice: {$gt: 55.50},
timestamp: {$gt: new ISODate("2013-02-01")}})
Query for ticks by time; price
threshold
Analyzing/Aggregating Options
• Custom application code
– Run your queries, compute your results
• Aggregation framework
– Declarative, pipeline-based approach
• Native Map/Reduce in MongoDB
– Javascript functions distributed across cluster
• Hadoop Connector
– Offline batch processing/computation
//Aggregate minute bars for Disney for February
db.ticks.aggregate(
{ $match: {symbol: "DIS”, timestamp: {$gt: new ISODate("2013-02-01")}}},
{ $project: {
year: {$year: "$timestamp"},
month: {$month: "$timestamp"},
day: {$dayOfMonth: "$timestamp"},
hour: {$hour: "$timestamp"},
minute: {$minute: "$timestamp"},
second: {$second: "$timestamp"},
timestamp: 1,
price: 1}},
{ $sort: { timestamp: 1}},
{ $group :
{ _id : {year: "$year", month: "$month", day: "$day", hour: "$hour", minute:
"$minute"},
open: {$first: "$price"},
high: {$max: "$price"},
low: {$min: "$price"},
close: {$last: "$price"} }} )
Aggregate into min bars
…
//then count the number of down bars
{ $project: {
downBar: {$lt: [“$close”, “$open”] },
timestamp: 1,
open: 1, high: 1, low: 1, close: 1}},
{ $group: {
_id: “$downBar”,
sum: {$sum: 1}}} })
Add Analysis on the Bars
var mapFunction = function () {
emit(this.symbol, this.bidPrice);
}
var reduceFunction = function (symbol, priceList) {
return Array.sum(priceList);
}
> db.ticks.mapReduce(
map, reduceFunction, {out: ”tickSums"})
MapReduce Example: Sum
Process Data in Hadoop
• MongoDB’s Hadoop Connector
• Supports Map/Reduce, Streaming, Pig
• MongoDB as input/output storage for Hadoop jobs
– No need to go through HDFS
• Leverage power of Hadoop ecosystem against
operational data in MongoDB
Performance, Scalability, and High
Availability
Why MongoDB Is Fast and Scalable
Better data locality
Relational MongoDB
In-Memory
Caching
Auto-Sharding
Read/write scaling
Auto-sharding for Horizontal Scale
mongod
Read/Write Scalability
Key Range
Symbol: A…Z
Auto-sharding for Horizontal Scale
Read/Write Scalability
mongod mongod
Key Range
Symbol: A…J
Key Range
Symbol: K…Z
Sharding
mongod mongod
mongod mongod
Read/Write Scalability
Key Range
Symbol: A…F
Key Range
Symbol: G…J
Key Range
Symbol: K…O
Key Range
Symbol: P…Z
Primary
Secondar
y
Secondar
y
Primary
Secondar
y
Secondar
y
Primary
Secondar
y
Secondar
y
Primary
Secondar
y
Secondar
y
MongoS MongoS MongoS
Key Range
Symbol: A…F,
Time
Key Range
Symbol: G…J,
Time
Key Range
Symbol: K…O,
Time
Key Range
Symbol: P…Z,
Time
Application
Summary
• MongoDB is high performance for tick data
• Scales horizontally automatically by auto-sharding
• Fast, flexible querying, analysis, & aggregation
• Dynamic schema can handle any data types
• MongoDB has all these features with low TCO
• We can support you with anything discussed
Questions?
Sr. Solution Architect, MongoDB
Matt Kalan
#ConferenceHashtag
Thank You

Más contenido relacionado

La actualidad más candente

Advanced Postgres Monitoring
Advanced Postgres MonitoringAdvanced Postgres Monitoring
Advanced Postgres Monitoring
Denish Patel
 
Unify Stream and Batch Processing using Dataflow, a Portable Programmable Mod...
Unify Stream and Batch Processing using Dataflow, a Portable Programmable Mod...Unify Stream and Batch Processing using Dataflow, a Portable Programmable Mod...
Unify Stream and Batch Processing using Dataflow, a Portable Programmable Mod...
DataWorks Summit
 
Introducing MongoDB Atlas
Introducing MongoDB AtlasIntroducing MongoDB Atlas
Introducing MongoDB Atlas
MongoDB
 
Hands on MapR -- Viadea
Hands on MapR -- ViadeaHands on MapR -- Viadea
Hands on MapR -- Viadea
viadea
 

La actualidad más candente (20)

Best Practices for Managing MongoDB with Ops Manager
Best Practices for Managing MongoDB with Ops ManagerBest Practices for Managing MongoDB with Ops Manager
Best Practices for Managing MongoDB with Ops Manager
 
Aggregated queries with Druid on terrabytes and petabytes of data
Aggregated queries with Druid on terrabytes and petabytes of dataAggregated queries with Druid on terrabytes and petabytes of data
Aggregated queries with Druid on terrabytes and petabytes of data
 
AWS RDS Benchmark - Instance comparison
AWS RDS Benchmark - Instance comparisonAWS RDS Benchmark - Instance comparison
AWS RDS Benchmark - Instance comparison
 
Apache doris (incubating) introduction
Apache doris (incubating) introductionApache doris (incubating) introduction
Apache doris (incubating) introduction
 
Google BigQuery
Google BigQueryGoogle BigQuery
Google BigQuery
 
Advanced Postgres Monitoring
Advanced Postgres MonitoringAdvanced Postgres Monitoring
Advanced Postgres Monitoring
 
Delta Lake with Azure Databricks
Delta Lake with Azure DatabricksDelta Lake with Azure Databricks
Delta Lake with Azure Databricks
 
Advanced Ops Manager Topics
Advanced Ops Manager TopicsAdvanced Ops Manager Topics
Advanced Ops Manager Topics
 
Hoodie: Incremental processing on hadoop
Hoodie: Incremental processing on hadoopHoodie: Incremental processing on hadoop
Hoodie: Incremental processing on hadoop
 
Sharding
ShardingSharding
Sharding
 
Unify Stream and Batch Processing using Dataflow, a Portable Programmable Mod...
Unify Stream and Batch Processing using Dataflow, a Portable Programmable Mod...Unify Stream and Batch Processing using Dataflow, a Portable Programmable Mod...
Unify Stream and Batch Processing using Dataflow, a Portable Programmable Mod...
 
Introducing MongoDB Atlas
Introducing MongoDB AtlasIntroducing MongoDB Atlas
Introducing MongoDB Atlas
 
Hands on MapR -- Viadea
Hands on MapR -- ViadeaHands on MapR -- Viadea
Hands on MapR -- Viadea
 
Bucketing 2.0: Improve Spark SQL Performance by Removing Shuffle
Bucketing 2.0: Improve Spark SQL Performance by Removing ShuffleBucketing 2.0: Improve Spark SQL Performance by Removing Shuffle
Bucketing 2.0: Improve Spark SQL Performance by Removing Shuffle
 
Kafka to the Maxka - (Kafka Performance Tuning)
Kafka to the Maxka - (Kafka Performance Tuning)Kafka to the Maxka - (Kafka Performance Tuning)
Kafka to the Maxka - (Kafka Performance Tuning)
 
[Pgday.Seoul 2018] Greenplum의 노드 분산 설계
[Pgday.Seoul 2018]  Greenplum의 노드 분산 설계[Pgday.Seoul 2018]  Greenplum의 노드 분산 설계
[Pgday.Seoul 2018] Greenplum의 노드 분산 설계
 
Social Network Visualization 101
Social Network Visualization 101Social Network Visualization 101
Social Network Visualization 101
 
An Introduction to MongoDB Ops Manager
An Introduction to MongoDB Ops ManagerAn Introduction to MongoDB Ops Manager
An Introduction to MongoDB Ops Manager
 
Apache kafka
Apache kafkaApache kafka
Apache kafka
 
The Zen of High Performance Messaging with NATS
The Zen of High Performance Messaging with NATS The Zen of High Performance Messaging with NATS
The Zen of High Performance Messaging with NATS
 

Similar a Using MongoDB As a Tick Database

Similar a Using MongoDB As a Tick Database (20)

How to leverage what's new in MongoDB 3.6
How to leverage what's new in MongoDB 3.6How to leverage what's new in MongoDB 3.6
How to leverage what's new in MongoDB 3.6
 
Webinar: How Banks Use MongoDB as a Tick Database
Webinar: How Banks Use MongoDB as a Tick DatabaseWebinar: How Banks Use MongoDB as a Tick Database
Webinar: How Banks Use MongoDB as a Tick Database
 
MongoDB Evenings Dallas: What's the Scoop on MongoDB & Hadoop
MongoDB Evenings Dallas: What's the Scoop on MongoDB & HadoopMongoDB Evenings Dallas: What's the Scoop on MongoDB & Hadoop
MongoDB Evenings Dallas: What's the Scoop on MongoDB & Hadoop
 
MongoDB World 2018: Keynote
MongoDB World 2018: KeynoteMongoDB World 2018: Keynote
MongoDB World 2018: Keynote
 
MongoDB Meetup
MongoDB MeetupMongoDB Meetup
MongoDB Meetup
 
Joins and Other MongoDB 3.2 Aggregation Enhancements
Joins and Other MongoDB 3.2 Aggregation EnhancementsJoins and Other MongoDB 3.2 Aggregation Enhancements
Joins and Other MongoDB 3.2 Aggregation Enhancements
 
MongoDB .local Houston 2019: Best Practices for Working with IoT and Time-ser...
MongoDB .local Houston 2019: Best Practices for Working with IoT and Time-ser...MongoDB .local Houston 2019: Best Practices for Working with IoT and Time-ser...
MongoDB .local Houston 2019: Best Practices for Working with IoT and Time-ser...
 
MongoDB .local London 2019: Best Practices for Working with IoT and Time-seri...
MongoDB .local London 2019: Best Practices for Working with IoT and Time-seri...MongoDB .local London 2019: Best Practices for Working with IoT and Time-seri...
MongoDB .local London 2019: Best Practices for Working with IoT and Time-seri...
 
MongoDB 3.2 - Analytics
MongoDB 3.2  - AnalyticsMongoDB 3.2  - Analytics
MongoDB 3.2 - Analytics
 
Webinar: General Technical Overview of MongoDB for Dev Teams
Webinar: General Technical Overview of MongoDB for Dev TeamsWebinar: General Technical Overview of MongoDB for Dev Teams
Webinar: General Technical Overview of MongoDB for Dev Teams
 
MongoDB Evenings Houston: What's the Scoop on MongoDB and Hadoop? by Jake Ang...
MongoDB Evenings Houston: What's the Scoop on MongoDB and Hadoop? by Jake Ang...MongoDB Evenings Houston: What's the Scoop on MongoDB and Hadoop? by Jake Ang...
MongoDB Evenings Houston: What's the Scoop on MongoDB and Hadoop? by Jake Ang...
 
Simplifying & accelerating application development with MongoDB's intelligent...
Simplifying & accelerating application development with MongoDB's intelligent...Simplifying & accelerating application development with MongoDB's intelligent...
Simplifying & accelerating application development with MongoDB's intelligent...
 
MongoDB.local DC 2018: Tutorial - Data Analytics with MongoDB
MongoDB.local DC 2018: Tutorial - Data Analytics with MongoDBMongoDB.local DC 2018: Tutorial - Data Analytics with MongoDB
MongoDB.local DC 2018: Tutorial - Data Analytics with MongoDB
 
Pragmatic approaches to the Event Horizon
Pragmatic approaches to the Event HorizonPragmatic approaches to the Event Horizon
Pragmatic approaches to the Event Horizon
 
How to leverage MongoDB for Big Data Analysis and Operations with MongoDB's A...
How to leverage MongoDB for Big Data Analysis and Operations with MongoDB's A...How to leverage MongoDB for Big Data Analysis and Operations with MongoDB's A...
How to leverage MongoDB for Big Data Analysis and Operations with MongoDB's A...
 
Analytics with MongoDB Aggregation Framework and Hadoop Connector
Analytics with MongoDB Aggregation Framework and Hadoop ConnectorAnalytics with MongoDB Aggregation Framework and Hadoop Connector
Analytics with MongoDB Aggregation Framework and Hadoop Connector
 
Webinar: Applikationsentwicklung mit MongoDB : Teil 5: Reporting & Aggregation
Webinar: Applikationsentwicklung mit MongoDB: Teil 5: Reporting & AggregationWebinar: Applikationsentwicklung mit MongoDB: Teil 5: Reporting & Aggregation
Webinar: Applikationsentwicklung mit MongoDB : Teil 5: Reporting & Aggregation
 
MongoDB .local Chicago 2019: Best Practices for Working with IoT and Time-ser...
MongoDB .local Chicago 2019: Best Practices for Working with IoT and Time-ser...MongoDB .local Chicago 2019: Best Practices for Working with IoT and Time-ser...
MongoDB .local Chicago 2019: Best Practices for Working with IoT and Time-ser...
 
MongoDB SoCal 2020: Best Practices for Working with IoT and Time-series Data
MongoDB SoCal 2020: Best Practices for Working with IoT and Time-series DataMongoDB SoCal 2020: Best Practices for Working with IoT and Time-series Data
MongoDB SoCal 2020: Best Practices for Working with IoT and Time-series Data
 
Aggregation Framework MongoDB Days Munich
Aggregation Framework MongoDB Days MunichAggregation Framework MongoDB Days Munich
Aggregation Framework MongoDB Days Munich
 

Más de MongoDB

Más de MongoDB (20)

MongoDB SoCal 2020: Migrate Anything* to MongoDB Atlas
MongoDB SoCal 2020: Migrate Anything* to MongoDB AtlasMongoDB SoCal 2020: Migrate Anything* to MongoDB Atlas
MongoDB SoCal 2020: Migrate Anything* to MongoDB Atlas
 
MongoDB SoCal 2020: Go on a Data Safari with MongoDB Charts!
MongoDB SoCal 2020: Go on a Data Safari with MongoDB Charts!MongoDB SoCal 2020: Go on a Data Safari with MongoDB Charts!
MongoDB SoCal 2020: Go on a Data Safari with MongoDB Charts!
 
MongoDB SoCal 2020: Using MongoDB Services in Kubernetes: Any Platform, Devel...
MongoDB SoCal 2020: Using MongoDB Services in Kubernetes: Any Platform, Devel...MongoDB SoCal 2020: Using MongoDB Services in Kubernetes: Any Platform, Devel...
MongoDB SoCal 2020: Using MongoDB Services in Kubernetes: Any Platform, Devel...
 
MongoDB SoCal 2020: A Complete Methodology of Data Modeling for MongoDB
MongoDB SoCal 2020: A Complete Methodology of Data Modeling for MongoDBMongoDB SoCal 2020: A Complete Methodology of Data Modeling for MongoDB
MongoDB SoCal 2020: A Complete Methodology of Data Modeling for MongoDB
 
MongoDB SoCal 2020: From Pharmacist to Analyst: Leveraging MongoDB for Real-T...
MongoDB SoCal 2020: From Pharmacist to Analyst: Leveraging MongoDB for Real-T...MongoDB SoCal 2020: From Pharmacist to Analyst: Leveraging MongoDB for Real-T...
MongoDB SoCal 2020: From Pharmacist to Analyst: Leveraging MongoDB for Real-T...
 
MongoDB SoCal 2020: MongoDB Atlas Jump Start
 MongoDB SoCal 2020: MongoDB Atlas Jump Start MongoDB SoCal 2020: MongoDB Atlas Jump Start
MongoDB SoCal 2020: MongoDB Atlas Jump Start
 
MongoDB .local San Francisco 2020: Powering the new age data demands [Infosys]
MongoDB .local San Francisco 2020: Powering the new age data demands [Infosys]MongoDB .local San Francisco 2020: Powering the new age data demands [Infosys]
MongoDB .local San Francisco 2020: Powering the new age data demands [Infosys]
 
MongoDB .local San Francisco 2020: Using Client Side Encryption in MongoDB 4.2
MongoDB .local San Francisco 2020: Using Client Side Encryption in MongoDB 4.2MongoDB .local San Francisco 2020: Using Client Side Encryption in MongoDB 4.2
MongoDB .local San Francisco 2020: Using Client Side Encryption in MongoDB 4.2
 
MongoDB .local San Francisco 2020: Using MongoDB Services in Kubernetes: any ...
MongoDB .local San Francisco 2020: Using MongoDB Services in Kubernetes: any ...MongoDB .local San Francisco 2020: Using MongoDB Services in Kubernetes: any ...
MongoDB .local San Francisco 2020: Using MongoDB Services in Kubernetes: any ...
 
MongoDB .local San Francisco 2020: Go on a Data Safari with MongoDB Charts!
MongoDB .local San Francisco 2020: Go on a Data Safari with MongoDB Charts!MongoDB .local San Francisco 2020: Go on a Data Safari with MongoDB Charts!
MongoDB .local San Francisco 2020: Go on a Data Safari with MongoDB Charts!
 
MongoDB .local San Francisco 2020: From SQL to NoSQL -- Changing Your Mindset
MongoDB .local San Francisco 2020: From SQL to NoSQL -- Changing Your MindsetMongoDB .local San Francisco 2020: From SQL to NoSQL -- Changing Your Mindset
MongoDB .local San Francisco 2020: From SQL to NoSQL -- Changing Your Mindset
 
MongoDB .local San Francisco 2020: MongoDB Atlas Jumpstart
MongoDB .local San Francisco 2020: MongoDB Atlas JumpstartMongoDB .local San Francisco 2020: MongoDB Atlas Jumpstart
MongoDB .local San Francisco 2020: MongoDB Atlas Jumpstart
 
MongoDB .local San Francisco 2020: Tips and Tricks++ for Querying and Indexin...
MongoDB .local San Francisco 2020: Tips and Tricks++ for Querying and Indexin...MongoDB .local San Francisco 2020: Tips and Tricks++ for Querying and Indexin...
MongoDB .local San Francisco 2020: Tips and Tricks++ for Querying and Indexin...
 
MongoDB .local San Francisco 2020: Aggregation Pipeline Power++
MongoDB .local San Francisco 2020: Aggregation Pipeline Power++MongoDB .local San Francisco 2020: Aggregation Pipeline Power++
MongoDB .local San Francisco 2020: Aggregation Pipeline Power++
 
MongoDB .local San Francisco 2020: A Complete Methodology of Data Modeling fo...
MongoDB .local San Francisco 2020: A Complete Methodology of Data Modeling fo...MongoDB .local San Francisco 2020: A Complete Methodology of Data Modeling fo...
MongoDB .local San Francisco 2020: A Complete Methodology of Data Modeling fo...
 
MongoDB .local San Francisco 2020: MongoDB Atlas Data Lake Technical Deep Dive
MongoDB .local San Francisco 2020: MongoDB Atlas Data Lake Technical Deep DiveMongoDB .local San Francisco 2020: MongoDB Atlas Data Lake Technical Deep Dive
MongoDB .local San Francisco 2020: MongoDB Atlas Data Lake Technical Deep Dive
 
MongoDB .local San Francisco 2020: Developing Alexa Skills with MongoDB & Golang
MongoDB .local San Francisco 2020: Developing Alexa Skills with MongoDB & GolangMongoDB .local San Francisco 2020: Developing Alexa Skills with MongoDB & Golang
MongoDB .local San Francisco 2020: Developing Alexa Skills with MongoDB & Golang
 
MongoDB .local Paris 2020: Realm : l'ingrédient secret pour de meilleures app...
MongoDB .local Paris 2020: Realm : l'ingrédient secret pour de meilleures app...MongoDB .local Paris 2020: Realm : l'ingrédient secret pour de meilleures app...
MongoDB .local Paris 2020: Realm : l'ingrédient secret pour de meilleures app...
 
MongoDB .local Paris 2020: Upply @MongoDB : Upply : Quand le Machine Learning...
MongoDB .local Paris 2020: Upply @MongoDB : Upply : Quand le Machine Learning...MongoDB .local Paris 2020: Upply @MongoDB : Upply : Quand le Machine Learning...
MongoDB .local Paris 2020: Upply @MongoDB : Upply : Quand le Machine Learning...
 
MongoDB .local Paris 2020: Les bonnes pratiques pour sécuriser MongoDB
MongoDB .local Paris 2020: Les bonnes pratiques pour sécuriser MongoDBMongoDB .local Paris 2020: Les bonnes pratiques pour sécuriser MongoDB
MongoDB .local Paris 2020: Les bonnes pratiques pour sécuriser MongoDB
 

Último

+971581248768>> SAFE AND ORIGINAL ABORTION PILLS FOR SALE IN DUBAI AND ABUDHA...
+971581248768>> SAFE AND ORIGINAL ABORTION PILLS FOR SALE IN DUBAI AND ABUDHA...+971581248768>> SAFE AND ORIGINAL ABORTION PILLS FOR SALE IN DUBAI AND ABUDHA...
+971581248768>> SAFE AND ORIGINAL ABORTION PILLS FOR SALE IN DUBAI AND ABUDHA...
?#DUbAI#??##{{(☎️+971_581248768%)**%*]'#abortion pills for sale in dubai@
 

Último (20)

Strategies for Landing an Oracle DBA Job as a Fresher
Strategies for Landing an Oracle DBA Job as a FresherStrategies for Landing an Oracle DBA Job as a Fresher
Strategies for Landing an Oracle DBA Job as a Fresher
 
Apidays New York 2024 - Scaling API-first by Ian Reasor and Radu Cotescu, Adobe
Apidays New York 2024 - Scaling API-first by Ian Reasor and Radu Cotescu, AdobeApidays New York 2024 - Scaling API-first by Ian Reasor and Radu Cotescu, Adobe
Apidays New York 2024 - Scaling API-first by Ian Reasor and Radu Cotescu, Adobe
 
Tech Trends Report 2024 Future Today Institute.pdf
Tech Trends Report 2024 Future Today Institute.pdfTech Trends Report 2024 Future Today Institute.pdf
Tech Trends Report 2024 Future Today Institute.pdf
 
🐬 The future of MySQL is Postgres 🐘
🐬  The future of MySQL is Postgres   🐘🐬  The future of MySQL is Postgres   🐘
🐬 The future of MySQL is Postgres 🐘
 
Apidays New York 2024 - The value of a flexible API Management solution for O...
Apidays New York 2024 - The value of a flexible API Management solution for O...Apidays New York 2024 - The value of a flexible API Management solution for O...
Apidays New York 2024 - The value of a flexible API Management solution for O...
 
A Year of the Servo Reboot: Where Are We Now?
A Year of the Servo Reboot: Where Are We Now?A Year of the Servo Reboot: Where Are We Now?
A Year of the Servo Reboot: Where Are We Now?
 
Understanding Discord NSFW Servers A Guide for Responsible Users.pdf
Understanding Discord NSFW Servers A Guide for Responsible Users.pdfUnderstanding Discord NSFW Servers A Guide for Responsible Users.pdf
Understanding Discord NSFW Servers A Guide for Responsible Users.pdf
 
TrustArc Webinar - Stay Ahead of US State Data Privacy Law Developments
TrustArc Webinar - Stay Ahead of US State Data Privacy Law DevelopmentsTrustArc Webinar - Stay Ahead of US State Data Privacy Law Developments
TrustArc Webinar - Stay Ahead of US State Data Privacy Law Developments
 
Finology Group – Insurtech Innovation Award 2024
Finology Group – Insurtech Innovation Award 2024Finology Group – Insurtech Innovation Award 2024
Finology Group – Insurtech Innovation Award 2024
 
+971581248768>> SAFE AND ORIGINAL ABORTION PILLS FOR SALE IN DUBAI AND ABUDHA...
+971581248768>> SAFE AND ORIGINAL ABORTION PILLS FOR SALE IN DUBAI AND ABUDHA...+971581248768>> SAFE AND ORIGINAL ABORTION PILLS FOR SALE IN DUBAI AND ABUDHA...
+971581248768>> SAFE AND ORIGINAL ABORTION PILLS FOR SALE IN DUBAI AND ABUDHA...
 
Axa Assurance Maroc - Insurer Innovation Award 2024
Axa Assurance Maroc - Insurer Innovation Award 2024Axa Assurance Maroc - Insurer Innovation Award 2024
Axa Assurance Maroc - Insurer Innovation Award 2024
 
Scaling API-first – The story of a global engineering organization
Scaling API-first – The story of a global engineering organizationScaling API-first – The story of a global engineering organization
Scaling API-first – The story of a global engineering organization
 
Apidays Singapore 2024 - Building Digital Trust in a Digital Economy by Veron...
Apidays Singapore 2024 - Building Digital Trust in a Digital Economy by Veron...Apidays Singapore 2024 - Building Digital Trust in a Digital Economy by Veron...
Apidays Singapore 2024 - Building Digital Trust in a Digital Economy by Veron...
 
Workshop - Best of Both Worlds_ Combine KG and Vector search for enhanced R...
Workshop - Best of Both Worlds_ Combine  KG and Vector search for  enhanced R...Workshop - Best of Both Worlds_ Combine  KG and Vector search for  enhanced R...
Workshop - Best of Both Worlds_ Combine KG and Vector search for enhanced R...
 
Boost Fertility New Invention Ups Success Rates.pdf
Boost Fertility New Invention Ups Success Rates.pdfBoost Fertility New Invention Ups Success Rates.pdf
Boost Fertility New Invention Ups Success Rates.pdf
 
Strategies for Unlocking Knowledge Management in Microsoft 365 in the Copilot...
Strategies for Unlocking Knowledge Management in Microsoft 365 in the Copilot...Strategies for Unlocking Knowledge Management in Microsoft 365 in the Copilot...
Strategies for Unlocking Knowledge Management in Microsoft 365 in the Copilot...
 
2024: Domino Containers - The Next Step. News from the Domino Container commu...
2024: Domino Containers - The Next Step. News from the Domino Container commu...2024: Domino Containers - The Next Step. News from the Domino Container commu...
2024: Domino Containers - The Next Step. News from the Domino Container commu...
 
How to Troubleshoot Apps for the Modern Connected Worker
How to Troubleshoot Apps for the Modern Connected WorkerHow to Troubleshoot Apps for the Modern Connected Worker
How to Troubleshoot Apps for the Modern Connected Worker
 
Strategize a Smooth Tenant-to-tenant Migration and Copilot Takeoff
Strategize a Smooth Tenant-to-tenant Migration and Copilot TakeoffStrategize a Smooth Tenant-to-tenant Migration and Copilot Takeoff
Strategize a Smooth Tenant-to-tenant Migration and Copilot Takeoff
 
Boost PC performance: How more available memory can improve productivity
Boost PC performance: How more available memory can improve productivityBoost PC performance: How more available memory can improve productivity
Boost PC performance: How more available memory can improve productivity
 

Using MongoDB As a Tick Database

  • 1. Sr. Solution Architect, MongoDB Matt Kalan How Capital Markets Firms Use MongoDB as a Tick Database
  • 2. Agenda • MongoDB One Slide Overview • FS Use Cases • Writing/Capturing Market Data • Reading/Analyzing Market Data • Performance, Scalability, & High Availability • Q&A
  • 3. MongoDB Technical Benefits Horizontally Scalable -Sharding Agile & Flexible High Performance -Indexes -RAM Application Highly Available -Replica Sets { name: “John Smith”, date: “2013-08-01”), address: “10 3rd St.”, phone: [ { home: 1234567890}, { mobile: 1234568138} ] } db.cust.insert({…}) db.cust.find({ name:”John Smith”})
  • 4. Most Common FS Use Cases 1. Tick Data Capture & Analysis 2. Reference Data Management 3. RiskAnalysis & Reporting 4. Trade Repository 5. Portfolio Reporting
  • 6. Tick Data Capture & Analysis Requirements • Capture real-time market data (multi-asset, top of book, depth of book, even news) • Load historical data • Aggregate data into bars, daily, monthly intervals • Enable queries & analysis on raw ticks or aggregates • Drive backtesting or automated signals
  • 7. Tick Data Capture & Analysis – Why MongoDB? • High throughput => can capturereal-timefeeds for all products/assetclasses needed • High scalability=> all data and depth for all historical time periods can be captured • Flexible & Range-basedindexing => fast querying on time rangesand any fields • Aggregation Framework => can shape raw data into aggregates (e.g. ticks to bars) • Map-reduce capability(Native MR or Hadoop Connector) => batch analysis looking for patternsand opportunities • Easy to use => native language drivers and JSON expressionsthat you can
  • 8. Trades/metrics High Level Trading Architecture Feed Handler Exchanges/Mark ets/Brokers Capturing Application Low Latency Applications Higher Latency Trading Applications Backtesting and Analysis Applications Market Data Cached Static & Aggregated Data News & social networking sources Orders Orders
  • 9. Trades/metrics High Level Trading Architecture Feed Handler Exchanges/Mark ets/Brokers Capturing Application Low Latency Applications Higher Latency Trading Applications Backtesting and Analysis Applications Market Data Cached Static & Aggregated Data News & social networking sources Orders Orders Data Types • Top of book • Depth of book • Multi-asset • Derivatives (e.g. strips) • News (text, video) • Social Networking
  • 10. { _id : ObjectId("4e2e3f92268cdda473b628f6"), symbol : "DIS", timestamp: ISODate("2013-02-15 10:00"), bidPrice: 55.37, offerPrice: 55.58, bidQuantity: 500, offerQuantity: 700 } > db.ticks.find( {symbol: "DIS", bidPrice: {$gt: 55.36} } ) Top of Book [e.g. equities]
  • 11. { _id : ObjectId("4e2e3f92268cdda473b628f6"), symbol : "DIS", timestamp: ISODate("2013-02-15 10:00"), bidPrices: [55.37, 55.36, 55.35], offerPrices: [55.58, 55.59, 55.60], bidQuantities: [500, 1000, 2000], offerQuantities: [1000, 2000, 3000] } > db.ticks.find( {bidPrices: {$gt: 55.36} } ) Depth of Book
  • 12. { _id : ObjectId("4e2e3f92268cdda473b628f6"), symbol : "DIS", timestamp: ISODate("2013-02-15 10:00"), bids: [ {price: 55.37, amount: 500}, {price: 55.37, amount: 1000}, {price: 55.37, amount: 2000} ], offers: [ {price: 55.58, amount: 1000}, {price: 55.58, amount: 2000}, {price: 55.59, amount: 3000} ] } > db.ticks.find( {"bids.price": {$gt: 55.36} } ) Or However Your App Uses It
  • 13. { _id : ObjectId("4e2e3f92268cdda473b628f6"), symbol : "DIS", timestamp: ISODate("2013-02-15 10:00"), spreadPrice: 0.58 leg1: {symbol: “CLM13, price: 97.34} leg2: {symbol: “CLK13, price: 96.92} } db.ticks.find( { “leg1” : “CLM13” }, { “leg2” : “CLK13” }, { “spreadPrice” : {$gt: 0.50 } } ) Synthetic Spreads
  • 14. { _id : ObjectId("4e2e3f92268cdda473b628f6"), symbol : "DIS", timestamp: ISODate("2013-02-15 10:00"), title: “Disney Earnings…” body: “Walt Disney Company reported…”, tags: [“earnings”, “media”, “walt disney”] } News
  • 15. { _id : ObjectId("4e2e3f92268cdda473b628f6"), timestamp: ISODate("2013-02-15 10:00"), twitterHandle: “jdoe”, tweet: “Heard @DisneyPictures is releasing…”, usernamesIncluded: [“DisneyPictures”], hashTags: [“movierumors”, “disney”] } Social Networking
  • 16. { _id : ObjectId("4e2e3f92268cdda473b628f6"), symbol : "DIS”, openTS: Date("2013-02-15 10:00"), closeTS: Date("2013-02-15 10:05"), open: 55.36, high: 55.80, low: 55.20, close: 55.70 } Aggregates (bars, daily, etc)
  • 18. Architecture for Querying Data Higher Latency Trading Applications Backtesting Applications • Ticks • Bars • Other analysis Research & Analysis Applications
  • 19. // Compound indexes > db.ticks.ensureIndex({symbol: 1, timestamp:1}) // Index on arrays >db.ticks.ensureIndex( {bidPrices: -1}) // Index on any depth > db.ticks.ensureIndex( {“bids.price”: 1} ) // Full text search > db.ticks.ensureIndex ( {tweet: “text”} ) Index Any Fields: Arrays, Nested, etc.
  • 20. // Ticks for last month for media companies > db.ticks.find({ symbol: {$in: ["DIS", “VIA“, “CBS"]}, timestamp: {$gt: new ISODate("2013-01-01")}, timestamp: {$lte: new ISODate("2013-01-31")}}) // Ticks when Disney’s bid breached 55.50 this month > db.ticks.find({ symbol: "DIS", bidPrice: {$gt: 55.50}, timestamp: {$gt: new ISODate("2013-02-01")}}) Query for ticks by time; price threshold
  • 21. Analyzing/Aggregating Options • Custom application code – Run your queries, compute your results • Aggregation framework – Declarative, pipeline-based approach • Native Map/Reduce in MongoDB – Javascript functions distributed across cluster • Hadoop Connector – Offline batch processing/computation
  • 22. //Aggregate minute bars for Disney for February db.ticks.aggregate( { $match: {symbol: "DIS”, timestamp: {$gt: new ISODate("2013-02-01")}}}, { $project: { year: {$year: "$timestamp"}, month: {$month: "$timestamp"}, day: {$dayOfMonth: "$timestamp"}, hour: {$hour: "$timestamp"}, minute: {$minute: "$timestamp"}, second: {$second: "$timestamp"}, timestamp: 1, price: 1}}, { $sort: { timestamp: 1}}, { $group : { _id : {year: "$year", month: "$month", day: "$day", hour: "$hour", minute: "$minute"}, open: {$first: "$price"}, high: {$max: "$price"}, low: {$min: "$price"}, close: {$last: "$price"} }} ) Aggregate into min bars
  • 23. … //then count the number of down bars { $project: { downBar: {$lt: [“$close”, “$open”] }, timestamp: 1, open: 1, high: 1, low: 1, close: 1}}, { $group: { _id: “$downBar”, sum: {$sum: 1}}} }) Add Analysis on the Bars
  • 24. var mapFunction = function () { emit(this.symbol, this.bidPrice); } var reduceFunction = function (symbol, priceList) { return Array.sum(priceList); } > db.ticks.mapReduce( map, reduceFunction, {out: ”tickSums"}) MapReduce Example: Sum
  • 25. Process Data in Hadoop • MongoDB’s Hadoop Connector • Supports Map/Reduce, Streaming, Pig • MongoDB as input/output storage for Hadoop jobs – No need to go through HDFS • Leverage power of Hadoop ecosystem against operational data in MongoDB
  • 26. Performance, Scalability, and High Availability
  • 27. Why MongoDB Is Fast and Scalable Better data locality Relational MongoDB In-Memory Caching Auto-Sharding Read/write scaling
  • 28. Auto-sharding for Horizontal Scale mongod Read/Write Scalability Key Range Symbol: A…Z
  • 29. Auto-sharding for Horizontal Scale Read/Write Scalability mongod mongod Key Range Symbol: A…J Key Range Symbol: K…Z
  • 30. Sharding mongod mongod mongod mongod Read/Write Scalability Key Range Symbol: A…F Key Range Symbol: G…J Key Range Symbol: K…O Key Range Symbol: P…Z
  • 31. Primary Secondar y Secondar y Primary Secondar y Secondar y Primary Secondar y Secondar y Primary Secondar y Secondar y MongoS MongoS MongoS Key Range Symbol: A…F, Time Key Range Symbol: G…J, Time Key Range Symbol: K…O, Time Key Range Symbol: P…Z, Time Application
  • 32. Summary • MongoDB is high performance for tick data • Scales horizontally automatically by auto-sharding • Fast, flexible querying, analysis, & aggregation • Dynamic schema can handle any data types • MongoDB has all these features with low TCO • We can support you with anything discussed
  • 34. Sr. Solution Architect, MongoDB Matt Kalan #ConferenceHashtag Thank You