SlideShare une entreprise Scribd logo
1  sur  29
Télécharger pour lire hors ligne
Chronix
A fast and efficient time series storage based on Apache Solr
Caution: Contains technical content.
68.000.000.000* time correlated data objects.
3
* ~ collect every 10 seconds 72 metrics x 15 processes x 20 hosts over 1 years
How to store such amount of data on your laptop computer
and retrieve any point within a few milliseconds?
Well we tried that approach…
4
■ Store data objects in a classical RDBMS
■ But…
■Slow import of data objects
■Huge amount of hard drive space
■Slow retrieval of time series
■Limited scalability due to RDBMS
■Missing query functions for time series data
!68.000.000.000!
Measurement Series
Name
Start
End
Time Series
Start
End
Data Object
Timestamp
Value
Metric
Attributes
Host
Process
…
* *
*
*
Name
5
Hence it felt like …
Image Credit: http://www.sail-world.com/
But what to do? Compression, Chunks, and Open Source!
6
■ The key ideas to enable the efficient storage of billion data objects:
■Split time series into chunks of the same size with data objects
■Compress these chunks to reduce the data volume
■Store the compressed chunks and the attributes in a record
■ Reason for success:
■32 GB disk usage to store 68 billion data objects
■Fast retrieval of data objects within a few milliseconds
■Fast searching on attributes without loading the chunks
■Everything runs on a laptop computer
■… and many more!
Time Series Record
Start
End
Chunk[]
Size
Attributes, …
1 Million
!68.000!
That‘s all. No secrets, nothing special and nothing more to say.
 Time Series Database - What’s that? Definitions and typical features.
 Why did we choose Apache Solr and are there alternatives?
 Chronix Architecture that is based on Solr and Lucene.
 What’s needed to speed up Chronix to a firehorse.
What comes next?
Time Series Database: What’s that?
8
■ Definition 1: “A data object d is a tuple of {timestamp, value}, where
the value could be any kind of object.”
■ Definition 2: “A time series T is an arbitrary list of chronological
ordered data objects of one value type”.
■ Definition 3: “A chunk C is a chronological ordered part of a time
series.”
■ Definition 4: “A time series database TSDB is a specialized database
for storing and retrieving time series in an efficient and optimized
way”.
d
{t,v}
1
T
{d1,d2}
T
CT
T1
C1,1
C1,2
TSDB
T3C2,2
T1 C2,1
A few typical features of a time series database
9
■ Data management
■Round Robin Storages
■Down-sample old time series
■Compression
■Compaction
■ Arbitrary amount of Attributes
■For time series (Country, Host, Customer, …)
■For data object (Scale, Unit, Type)
■ Performance and Operational
■Rare updates, inserts are additive
■Fast inserts and retrievals
■Distributed and efficient per node
■No need of ACID, but consistency
■ Time series language and API
■Statistics: Aggregation (min, max, median), …
■Transformations: Time windows, time shifting,
resampling, ..
■High level: Outlier, trends, similarity search
Check out: A good post about the requirements of a time series:
http://www.xaprb.com/blog/2014/06/08/time-series-database-requirements/
10
Some time series databases out there.
■RRDTool - http://oss.oetiker.ch/rrdtool/
■Mainly used in traditional monitoring systems
■Graphite – https://github.com/graphite-project
■Uses the concepts of RRDTool and puts some sugar on it
■InfluxDB - https://influxdata.com/time-series-platform/influxdb/
■A distributed time series database with a very handy query language
■OpenTSDB - http://opentsdb.net/
■Is a scalable time series database and runs on Hadoop and Hbase
■Prometheus- http://www.scidb.org/
■ A monitoring system and a time series database
■KairosDB - https://kairosdb.github.io/
■Like OpenTSDB but is based on Apache Cassandra
■… many more! And of course Chronix! - http://chronix.io/
“Ey, there are so many time series databases out there? Why did
you create a new solution?”
11
Our Requirements
■ A fast write and query performance
■ Run the database on a laptop computer
■ Minimal data volume for stored data objects
■ Storing arbitrary attributes
■ A query API for searching on all attributes
■ Large community and an active development
That delivers Apache Solr
■ Based on Lucene which is really fast
■ Runs embedded, standalone, distributed
■ Lucene has a built-in compression
■ Schema or schemaless
■ Solr Query Language
■ Lucidworks and an Apache project
“Our tool has been around for a good few years, and in the beginning there was no time series
database that complies our requirements. And there isn’t one today!”Elastic Search is
an alternative. It
is also based on
Lucene.
12
Let‘s dig deeper into Chronix’ internals.
Image Credit: http://www.taringa.net/posts/ciencia-educacion/12656540/La-Filosofia-del-Dr-House-2.html
Chronix’ architecture enables both efficient storage of time
series and millisecond range queries.
13
(1)
Semantic Compression
(2)
Attributes and Chunks
(3)
Basic Compression
(4)
Multi-Dimensional
Storage
Record
data:<chunk>
attributes
Record
data:compressed
<chunk>
attributes
Record Storage
1 Million Points
100 Chunks *
10.000 Points
~ 96% Compression
Optional
The key data type of Chronix is called a record.
It stores a compressed time series chunk and its attributes.
14
record{
data:compressed{<chunk>}
//technical fields
id: 3dce1de0−...−93fb2e806d19
version: 1501692859622883300
start: 1427457011238
end: 1427471159292
//optional attributes
host: prodI5
process: scheduler
group: jmx
metric: heapMemory.Usage.Used
max: 896.571
}
Data:compressed{<chunk of time series data>}
■ Time Series: timestamp, numeric value
■ Traces: calls, exceptions, …
■ Logs: access, method runtimes
■ Complex data: models, test coverage,
anything else…
Optional attributes
■ Arbitrary attributes for the time series
■ Attributes are indexed
■ Make the chunk searchable
■ Can contain pre-calculated values
Chronix provides specialized aggregations and analyses in its
query language for time series that are commonly used.
15
Aggregations (ag)
■ Min / Max / Average / Sum / Count
■ Standard Deviation
■ Percentile
■ Bottom/Top n-values
■ First / Last
■ Derivative / Non negative derivative
■ Range
■ Moving average
■ Divide / Scale
■ ...
Analyses (analysis)
■ Trend Analysis
Using a linear regression model
■ Outlier Analysis
Using the IQR
■ Frequency Analysis
Check occurrence within a time range
■ Fast Dynamic Time Warping
Time series similarity search
■ Symbolic Aggregate Approximation
Similarity and pattern search
■ Vectorisation
for server side data reduction
Only scalar values? One size fits all? No! What about logs,
traces, and others? No problem – Just do it yourself!
16
■ Chronix Kassiopeia (Format)
■Time Series framework that is used by Chronix.
■Time Series Types:
■Numeric: Doubles (the time series known to be the default)
■Thread Dumps: Stack traces (e.g. java stack traces)
■Strace: Strace dumps (system call, duration, arguments
public interface TimeSeriesConverter<T> {
/**
* Shall create an object of type T from the given binary time series.
*/
T from(BinaryTimeSeries binaryTimeSeriesChunk, long queryStart, long queryEnd);
/**
* Shall do the conversation of the custom time series T into the binary time series that is stored.
*/
BinaryTimeSeries to(T timeSeriesChunk);
}
Plain
That‘s the easiest way to play with Chronix. A single instance of
Chronix on a single node with a Apache Solr instance.
17
Java 8 (JRE)
Chronix - 0.2
Solr - 6.0.0
Lucene
Solr plugins
8983
Your Computer
Chronix-Query-Handler
Chronix-Response-Writer
Chronix-Retention
Chronix-Client
Grafana
Json + Binary
Binary + Binary
Json + Json
Java 8 (JRE)
Code-Slide: How to set up Chronix, ask for time series data, and
call some server-side aggregations.
18
■ Create a connection to Solr and set up Chronix
■ Define and range query and stream its results
■ Call some aggregations
solr = new HttpSolrClient("http://localhost:8913/solr/chronix/")
chronix = new ChronixClient(new KassiopeiaSimpleConverter<>(),
new ChronixSolrStorage(200, groupBy, reduce))
query = new SolrQuery("metric:*Load*")
chronix.stream(solr,query)
query.addFilterQuery("ag=max,min,count,sdiff")
stream = chronix.stream(solr,query) Signed Difference:
First=20, Last=-100
 -80
Group chunks on a combination
of attributes and reduce them to
a time series.
Get all time series whose
metric contains Load
That’s the four
week data that is
shipped with the
release!
A more powerful way to work with time series. A Chronix Cloud,
a Spark Cluster, and an analysis workbench like Zeppelin.
20
Chronix Cloud
Chronix Node Chronix Node Chronix Node Chronix Node
Spark Cluster
Spark Node Spark Node Spark Node Spark Node
Zeppelin
Chronix Spark Context
Java Scala
Various Applications as Workbench
Spark SQL
Context
Code-Slide: Use Spark to process time series data that comes
out right now from Chronix.
21
■ Create a ChronixSparkContext
■ Define and range query and stream its results
■ Play with the data
conf = new SparkConf().setMaster(SPARK_MASTER).setAppName(CHRONIX)
jsc = new JavaSparkContext(conf)
csc = new ChronixSparkContext(jsc)
sqlc = new SQLContext(jsc)
query = new SolrQuery("metric:*Load*")
rdd = csc.queryChronixChunks(query,ZK_HOST,CHRONIX_COLLECTION,
new ChronixSolrCloudStorage());
DataSet<MetricObservation> ds = rdd.toObservationsDataset(sqlc)
rdd.mean()
rdd.max()
rdd.iterator()
Dataset to use Spark SQL
features
Set up Spark, a JavaSparkContext, a
ChronixSparkContext, and a SQLContext
Get all time series whose metric
contains Load
Tune Chronix to a firehorse. Even with defaults it’s blazing fast!
We have tuned Chronix in terms of chunk size, and compression
technique to get the ideal default values for you.
23
■ Tuning Dataset
■Three real-world projects
■15 GB of time series data (typical monitoring data)
■About 500 million points in 15k time series
■92 typical queries with different time range and occurrence
■ We have measured:
■Compression rate for serval compression techniques (T) and chunk sizes (C).
■Total time for all 92 queries in the mix (range + aggregations)
■ What we want to know: Ideal values for T and C
We have evaluated several compression techniques and chunk
sizes of the time series data to get the best parameter values.
24
T= GZIP +
C = 128 kBytes
Florian Lautenschlager, Michael Philippsen, Andreas Kumlehn, Josef Adersberger
Chronix: Efficient Storage and Query of Operational Time Series
International Conference on Software Maintenance and Evolution 2016 (submitted)
For more details
about the tuning
check our paper.
Compared to other time series databases Chronix‘ results for
our use case are outstanding. The approach works!
25
■ We have evaluated Chronix with:
■InfluxDB, Graphite, OpenTSDB, and KairosDB
■All databases are configured to run as single
node
■ Storage demand for 15 GB of raw csv time
series data
■Chronix (237 MB) takes 4 – 84 times less space
■ Query times on imported data
■49% – 91% faster than the evaluated time
series databases
■ Memory footprint: after start, max during
import, max during query mix
■Graphite is best (926 MB), Chronix (1.5 GB) is
second. Others 16 to 39 GB
The hard facts. For more details I suggest you to read our
research paper about Chronix.
26
Florian Lautenschlager, Michael Philippsen,
Andreas Kumlehn, Josef Adersberger
Chronix: Efficient Storage and Query of
Operational Time Series
International Conference on Software
Maintenance and Evolution 2016 (submitted)
Now it’s your turn.
Now it’s your turn.
Open the shell and type.
28
(mail) florian.lautenschlager@qaware.de
(twitter) @flolaut
(twitter) @ChronixDB
(web) www.chronix.io
#lovetimeseries
Bart Simpson

Contenu connexe

Tendances

Managing an Akka Cluster on Kubernetes
Managing an Akka Cluster on KubernetesManaging an Akka Cluster on Kubernetes
Managing an Akka Cluster on KubernetesMarkus Jura
 
Time to-live: How to Perform Automatic State Cleanup in Apache Flink - Andrey...
Time to-live: How to Perform Automatic State Cleanup in Apache Flink - Andrey...Time to-live: How to Perform Automatic State Cleanup in Apache Flink - Andrey...
Time to-live: How to Perform Automatic State Cleanup in Apache Flink - Andrey...Flink Forward
 
cPrime Agile Enterprise Transformation
cPrime Agile Enterprise TransformationcPrime Agile Enterprise Transformation
cPrime Agile Enterprise TransformationCprime
 
Mindmaps and heuristics tester's best friends - lalit bhamare
Mindmaps and heuristics  tester's best friends - lalit bhamareMindmaps and heuristics  tester's best friends - lalit bhamare
Mindmaps and heuristics tester's best friends - lalit bhamareLalit Bhamare
 
Discover Quarkus and GraalVM
Discover Quarkus and GraalVMDiscover Quarkus and GraalVM
Discover Quarkus and GraalVMRomain Schlick
 
[Café Techno] Spectrum protect - Présentation des fonctionnalités
[Café Techno] Spectrum protect - Présentation des fonctionnalités[Café Techno] Spectrum protect - Présentation des fonctionnalités
[Café Techno] Spectrum protect - Présentation des fonctionnalitésGroupe D.FI
 
Danil Michailovas "Agile Coaching - Case Study Chapter 1"
Danil Michailovas   "Agile Coaching - Case Study Chapter 1"Danil Michailovas   "Agile Coaching - Case Study Chapter 1"
Danil Michailovas "Agile Coaching - Case Study Chapter 1"Agile Lietuva
 
Introduction to InfluxDB and TICK Stack
Introduction to InfluxDB and TICK StackIntroduction to InfluxDB and TICK Stack
Introduction to InfluxDB and TICK StackAhmed AbouZaid
 
Pinot: Enabling Real-time Analytics Applications @ LinkedIn's Scale
Pinot: Enabling Real-time Analytics Applications @ LinkedIn's ScalePinot: Enabling Real-time Analytics Applications @ LinkedIn's Scale
Pinot: Enabling Real-time Analytics Applications @ LinkedIn's ScaleSeunghyun Lee
 
An Executive Insider's Guide to Enterprise Agile Transformation
An Executive Insider's Guide to Enterprise Agile TransformationAn Executive Insider's Guide to Enterprise Agile Transformation
An Executive Insider's Guide to Enterprise Agile TransformationScott Richardson
 
Desenvolvendo Competências na visão da Gestão 3.0
Desenvolvendo Competências na visão da Gestão 3.0Desenvolvendo Competências na visão da Gestão 3.0
Desenvolvendo Competências na visão da Gestão 3.0André Faria Gomes
 
Agile Transformation in Telco Guide
Agile Transformation in Telco GuideAgile Transformation in Telco Guide
Agile Transformation in Telco GuideACM
 
HBase and HDFS: Understanding FileSystem Usage in HBase
HBase and HDFS: Understanding FileSystem Usage in HBaseHBase and HDFS: Understanding FileSystem Usage in HBase
HBase and HDFS: Understanding FileSystem Usage in HBaseenissoz
 
Coaching is the Product: building your agile coaching backlog
Coaching is the Product: building your agile coaching backlogCoaching is the Product: building your agile coaching backlog
Coaching is the Product: building your agile coaching backlogTricia Savage Bailey
 
the agile mindset, a learning lab
the agile mindset, a learning labthe agile mindset, a learning lab
the agile mindset, a learning labnikos batsios
 
Adaptive Query Execution: Speeding Up Spark SQL at Runtime
Adaptive Query Execution: Speeding Up Spark SQL at RuntimeAdaptive Query Execution: Speeding Up Spark SQL at Runtime
Adaptive Query Execution: Speeding Up Spark SQL at RuntimeDatabricks
 

Tendances (20)

Managing an Akka Cluster on Kubernetes
Managing an Akka Cluster on KubernetesManaging an Akka Cluster on Kubernetes
Managing an Akka Cluster on Kubernetes
 
Time to-live: How to Perform Automatic State Cleanup in Apache Flink - Andrey...
Time to-live: How to Perform Automatic State Cleanup in Apache Flink - Andrey...Time to-live: How to Perform Automatic State Cleanup in Apache Flink - Andrey...
Time to-live: How to Perform Automatic State Cleanup in Apache Flink - Andrey...
 
cPrime Agile Enterprise Transformation
cPrime Agile Enterprise TransformationcPrime Agile Enterprise Transformation
cPrime Agile Enterprise Transformation
 
Agile scrum-retrospective
Agile scrum-retrospectiveAgile scrum-retrospective
Agile scrum-retrospective
 
Agile Retrospectives Workshop
Agile Retrospectives WorkshopAgile Retrospectives Workshop
Agile Retrospectives Workshop
 
Mindmaps and heuristics tester's best friends - lalit bhamare
Mindmaps and heuristics  tester's best friends - lalit bhamareMindmaps and heuristics  tester's best friends - lalit bhamare
Mindmaps and heuristics tester's best friends - lalit bhamare
 
Discover Quarkus and GraalVM
Discover Quarkus and GraalVMDiscover Quarkus and GraalVM
Discover Quarkus and GraalVM
 
[Café Techno] Spectrum protect - Présentation des fonctionnalités
[Café Techno] Spectrum protect - Présentation des fonctionnalités[Café Techno] Spectrum protect - Présentation des fonctionnalités
[Café Techno] Spectrum protect - Présentation des fonctionnalités
 
Danil Michailovas "Agile Coaching - Case Study Chapter 1"
Danil Michailovas   "Agile Coaching - Case Study Chapter 1"Danil Michailovas   "Agile Coaching - Case Study Chapter 1"
Danil Michailovas "Agile Coaching - Case Study Chapter 1"
 
Agile mindset
Agile mindsetAgile mindset
Agile mindset
 
Mindset Ágil
Mindset ÁgilMindset Ágil
Mindset Ágil
 
Introduction to InfluxDB and TICK Stack
Introduction to InfluxDB and TICK StackIntroduction to InfluxDB and TICK Stack
Introduction to InfluxDB and TICK Stack
 
Pinot: Enabling Real-time Analytics Applications @ LinkedIn's Scale
Pinot: Enabling Real-time Analytics Applications @ LinkedIn's ScalePinot: Enabling Real-time Analytics Applications @ LinkedIn's Scale
Pinot: Enabling Real-time Analytics Applications @ LinkedIn's Scale
 
An Executive Insider's Guide to Enterprise Agile Transformation
An Executive Insider's Guide to Enterprise Agile TransformationAn Executive Insider's Guide to Enterprise Agile Transformation
An Executive Insider's Guide to Enterprise Agile Transformation
 
Desenvolvendo Competências na visão da Gestão 3.0
Desenvolvendo Competências na visão da Gestão 3.0Desenvolvendo Competências na visão da Gestão 3.0
Desenvolvendo Competências na visão da Gestão 3.0
 
Agile Transformation in Telco Guide
Agile Transformation in Telco GuideAgile Transformation in Telco Guide
Agile Transformation in Telco Guide
 
HBase and HDFS: Understanding FileSystem Usage in HBase
HBase and HDFS: Understanding FileSystem Usage in HBaseHBase and HDFS: Understanding FileSystem Usage in HBase
HBase and HDFS: Understanding FileSystem Usage in HBase
 
Coaching is the Product: building your agile coaching backlog
Coaching is the Product: building your agile coaching backlogCoaching is the Product: building your agile coaching backlog
Coaching is the Product: building your agile coaching backlog
 
the agile mindset, a learning lab
the agile mindset, a learning labthe agile mindset, a learning lab
the agile mindset, a learning lab
 
Adaptive Query Execution: Speeding Up Spark SQL at Runtime
Adaptive Query Execution: Speeding Up Spark SQL at RuntimeAdaptive Query Execution: Speeding Up Spark SQL at Runtime
Adaptive Query Execution: Speeding Up Spark SQL at Runtime
 

En vedette

Chronix: A fast and efficient time series storage based on Apache Solr
Chronix: A fast and efficient time series storage based on Apache SolrChronix: A fast and efficient time series storage based on Apache Solr
Chronix: A fast and efficient time series storage based on Apache SolrFlorian Lautenschlager
 
Time Series Processing with Solr and Spark: Presented by Josef Adersberger, Q...
Time Series Processing with Solr and Spark: Presented by Josef Adersberger, Q...Time Series Processing with Solr and Spark: Presented by Josef Adersberger, Q...
Time Series Processing with Solr and Spark: Presented by Josef Adersberger, Q...Lucidworks
 
Chronix as Long-Term Storage for Prometheus
Chronix as Long-Term Storage for PrometheusChronix as Long-Term Storage for Prometheus
Chronix as Long-Term Storage for PrometheusQAware GmbH
 
Apache Solr as a compressed, scalable, and high performance time series database
Apache Solr as a compressed, scalable, and high performance time series databaseApache Solr as a compressed, scalable, and high performance time series database
Apache Solr as a compressed, scalable, and high performance time series databaseFlorian Lautenschlager
 
Chronix: Long Term Storage and Retrieval Technology for Anomaly Detection in ...
Chronix: Long Term Storage and Retrieval Technology for Anomaly Detection in ...Chronix: Long Term Storage and Retrieval Technology for Anomaly Detection in ...
Chronix: Long Term Storage and Retrieval Technology for Anomaly Detection in ...Florian Lautenschlager
 
Time Series Analysis
Time Series AnalysisTime Series Analysis
Time Series AnalysisQAware GmbH
 

En vedette (7)

Chronix: A fast and efficient time series storage based on Apache Solr
Chronix: A fast and efficient time series storage based on Apache SolrChronix: A fast and efficient time series storage based on Apache Solr
Chronix: A fast and efficient time series storage based on Apache Solr
 
Time Series Processing with Solr and Spark: Presented by Josef Adersberger, Q...
Time Series Processing with Solr and Spark: Presented by Josef Adersberger, Q...Time Series Processing with Solr and Spark: Presented by Josef Adersberger, Q...
Time Series Processing with Solr and Spark: Presented by Josef Adersberger, Q...
 
Chronix as Long-Term Storage for Prometheus
Chronix as Long-Term Storage for PrometheusChronix as Long-Term Storage for Prometheus
Chronix as Long-Term Storage for Prometheus
 
Apache Solr as a compressed, scalable, and high performance time series database
Apache Solr as a compressed, scalable, and high performance time series databaseApache Solr as a compressed, scalable, and high performance time series database
Apache Solr as a compressed, scalable, and high performance time series database
 
Chronix: Long Term Storage and Retrieval Technology for Anomaly Detection in ...
Chronix: Long Term Storage and Retrieval Technology for Anomaly Detection in ...Chronix: Long Term Storage and Retrieval Technology for Anomaly Detection in ...
Chronix: Long Term Storage and Retrieval Technology for Anomaly Detection in ...
 
The new time series kid on the block
The new time series kid on the blockThe new time series kid on the block
The new time series kid on the block
 
Time Series Analysis
Time Series AnalysisTime Series Analysis
Time Series Analysis
 

Similaire à A Fast and Efficient Time Series Storage Based on Apache Solr

Chronix Time Series Database - The New Time Series Kid on the Block
Chronix Time Series Database - The New Time Series Kid on the BlockChronix Time Series Database - The New Time Series Kid on the Block
Chronix Time Series Database - The New Time Series Kid on the BlockQAware GmbH
 
Time Series Processing with Solr and Spark
Time Series Processing with Solr and SparkTime Series Processing with Solr and Spark
Time Series Processing with Solr and SparkJosef Adersberger
 
Riga dev day: Lambda architecture at AWS
Riga dev day: Lambda architecture at AWSRiga dev day: Lambda architecture at AWS
Riga dev day: Lambda architecture at AWSAntons Kranga
 
Time Series Processing with Apache Spark
Time Series Processing with Apache SparkTime Series Processing with Apache Spark
Time Series Processing with Apache SparkQAware GmbH
 
Time Series Processing with Apache Spark
Time Series Processing with Apache SparkTime Series Processing with Apache Spark
Time Series Processing with Apache SparkJosef Adersberger
 
Managing your Black Friday Logs - Antonio Bonuccelli - Codemotion Rome 2018
Managing your Black Friday Logs - Antonio Bonuccelli - Codemotion Rome 2018Managing your Black Friday Logs - Antonio Bonuccelli - Codemotion Rome 2018
Managing your Black Friday Logs - Antonio Bonuccelli - Codemotion Rome 2018Codemotion
 
ELK stack introduction
ELK stack introduction ELK stack introduction
ELK stack introduction abenyeung1
 
Apache con 2020 use cases and optimizations of iotdb
Apache con 2020 use cases and optimizations of iotdbApache con 2020 use cases and optimizations of iotdb
Apache con 2020 use cases and optimizations of iotdbZhangZhengming
 
Scylla Summit 2016: Analytics Show Time - Spark and Presto Powered by Scylla
Scylla Summit 2016: Analytics Show Time - Spark and Presto Powered by ScyllaScylla Summit 2016: Analytics Show Time - Spark and Presto Powered by Scylla
Scylla Summit 2016: Analytics Show Time - Spark and Presto Powered by ScyllaScyllaDB
 
Re-Engineering PostgreSQL as a Time-Series Database
Re-Engineering PostgreSQL as a Time-Series DatabaseRe-Engineering PostgreSQL as a Time-Series Database
Re-Engineering PostgreSQL as a Time-Series DatabaseAll Things Open
 
MongoDB IoT City Tour LONDON: Managing the Database Complexity, by Arthur Vie...
MongoDB IoT City Tour LONDON: Managing the Database Complexity, by Arthur Vie...MongoDB IoT City Tour LONDON: Managing the Database Complexity, by Arthur Vie...
MongoDB IoT City Tour LONDON: Managing the Database Complexity, by Arthur Vie...MongoDB
 
On the need for a W3C community group on RDF Stream Processing
On the need for a W3C community group on RDF Stream ProcessingOn the need for a W3C community group on RDF Stream Processing
On the need for a W3C community group on RDF Stream ProcessingPlanetData Network of Excellence
 
OrdRing 2013 keynote - On the need for a W3C community group on RDF Stream Pr...
OrdRing 2013 keynote - On the need for a W3C community group on RDF Stream Pr...OrdRing 2013 keynote - On the need for a W3C community group on RDF Stream Pr...
OrdRing 2013 keynote - On the need for a W3C community group on RDF Stream Pr...Oscar Corcho
 
Gnocchi v3 brownbag
Gnocchi v3 brownbagGnocchi v3 brownbag
Gnocchi v3 brownbagGordon Chung
 
Lambda at Weather Scale - Cassandra Summit 2015
Lambda at Weather Scale - Cassandra Summit 2015Lambda at Weather Scale - Cassandra Summit 2015
Lambda at Weather Scale - Cassandra Summit 2015Robbie Strickland
 
Data Analysis on AWS
Data Analysis on AWSData Analysis on AWS
Data Analysis on AWSPaolo latella
 
Leveraging the Power of Solr with Spark: Presented by Johannes Weigend, QAware
Leveraging the Power of Solr with Spark: Presented by Johannes Weigend, QAwareLeveraging the Power of Solr with Spark: Presented by Johannes Weigend, QAware
Leveraging the Power of Solr with Spark: Presented by Johannes Weigend, QAwareLucidworks
 
Leveraging the Power of Solr with Spark
Leveraging the Power of Solr with SparkLeveraging the Power of Solr with Spark
Leveraging the Power of Solr with SparkQAware GmbH
 
Chronix Poster for the Poster Session FAST 2017
Chronix Poster for the Poster Session FAST 2017Chronix Poster for the Poster Session FAST 2017
Chronix Poster for the Poster Session FAST 2017Florian Lautenschlager
 

Similaire à A Fast and Efficient Time Series Storage Based on Apache Solr (20)

Chronix Time Series Database - The New Time Series Kid on the Block
Chronix Time Series Database - The New Time Series Kid on the BlockChronix Time Series Database - The New Time Series Kid on the Block
Chronix Time Series Database - The New Time Series Kid on the Block
 
Time Series Processing with Solr and Spark
Time Series Processing with Solr and SparkTime Series Processing with Solr and Spark
Time Series Processing with Solr and Spark
 
Riga dev day: Lambda architecture at AWS
Riga dev day: Lambda architecture at AWSRiga dev day: Lambda architecture at AWS
Riga dev day: Lambda architecture at AWS
 
Time Series Processing with Apache Spark
Time Series Processing with Apache SparkTime Series Processing with Apache Spark
Time Series Processing with Apache Spark
 
Time Series Processing with Apache Spark
Time Series Processing with Apache SparkTime Series Processing with Apache Spark
Time Series Processing with Apache Spark
 
Managing your Black Friday Logs - Antonio Bonuccelli - Codemotion Rome 2018
Managing your Black Friday Logs - Antonio Bonuccelli - Codemotion Rome 2018Managing your Black Friday Logs - Antonio Bonuccelli - Codemotion Rome 2018
Managing your Black Friday Logs - Antonio Bonuccelli - Codemotion Rome 2018
 
ELK stack introduction
ELK stack introduction ELK stack introduction
ELK stack introduction
 
Apache con 2020 use cases and optimizations of iotdb
Apache con 2020 use cases and optimizations of iotdbApache con 2020 use cases and optimizations of iotdb
Apache con 2020 use cases and optimizations of iotdb
 
Scylla Summit 2016: Analytics Show Time - Spark and Presto Powered by Scylla
Scylla Summit 2016: Analytics Show Time - Spark and Presto Powered by ScyllaScylla Summit 2016: Analytics Show Time - Spark and Presto Powered by Scylla
Scylla Summit 2016: Analytics Show Time - Spark and Presto Powered by Scylla
 
Re-Engineering PostgreSQL as a Time-Series Database
Re-Engineering PostgreSQL as a Time-Series DatabaseRe-Engineering PostgreSQL as a Time-Series Database
Re-Engineering PostgreSQL as a Time-Series Database
 
Apache cassandra
Apache cassandraApache cassandra
Apache cassandra
 
MongoDB IoT City Tour LONDON: Managing the Database Complexity, by Arthur Vie...
MongoDB IoT City Tour LONDON: Managing the Database Complexity, by Arthur Vie...MongoDB IoT City Tour LONDON: Managing the Database Complexity, by Arthur Vie...
MongoDB IoT City Tour LONDON: Managing the Database Complexity, by Arthur Vie...
 
On the need for a W3C community group on RDF Stream Processing
On the need for a W3C community group on RDF Stream ProcessingOn the need for a W3C community group on RDF Stream Processing
On the need for a W3C community group on RDF Stream Processing
 
OrdRing 2013 keynote - On the need for a W3C community group on RDF Stream Pr...
OrdRing 2013 keynote - On the need for a W3C community group on RDF Stream Pr...OrdRing 2013 keynote - On the need for a W3C community group on RDF Stream Pr...
OrdRing 2013 keynote - On the need for a W3C community group on RDF Stream Pr...
 
Gnocchi v3 brownbag
Gnocchi v3 brownbagGnocchi v3 brownbag
Gnocchi v3 brownbag
 
Lambda at Weather Scale - Cassandra Summit 2015
Lambda at Weather Scale - Cassandra Summit 2015Lambda at Weather Scale - Cassandra Summit 2015
Lambda at Weather Scale - Cassandra Summit 2015
 
Data Analysis on AWS
Data Analysis on AWSData Analysis on AWS
Data Analysis on AWS
 
Leveraging the Power of Solr with Spark: Presented by Johannes Weigend, QAware
Leveraging the Power of Solr with Spark: Presented by Johannes Weigend, QAwareLeveraging the Power of Solr with Spark: Presented by Johannes Weigend, QAware
Leveraging the Power of Solr with Spark: Presented by Johannes Weigend, QAware
 
Leveraging the Power of Solr with Spark
Leveraging the Power of Solr with SparkLeveraging the Power of Solr with Spark
Leveraging the Power of Solr with Spark
 
Chronix Poster for the Poster Session FAST 2017
Chronix Poster for the Poster Session FAST 2017Chronix Poster for the Poster Session FAST 2017
Chronix Poster for the Poster Session FAST 2017
 

Plus de QAware GmbH

50 Shades of K8s Autoscaling #JavaLand24.pdf
50 Shades of K8s Autoscaling #JavaLand24.pdf50 Shades of K8s Autoscaling #JavaLand24.pdf
50 Shades of K8s Autoscaling #JavaLand24.pdfQAware GmbH
 
Make Agile Great - PM-Erfahrungen aus zwei virtuellen internationalen SAFe-Pr...
Make Agile Great - PM-Erfahrungen aus zwei virtuellen internationalen SAFe-Pr...Make Agile Great - PM-Erfahrungen aus zwei virtuellen internationalen SAFe-Pr...
Make Agile Great - PM-Erfahrungen aus zwei virtuellen internationalen SAFe-Pr...QAware GmbH
 
Fully-managed Cloud-native Databases: The path to indefinite scale @ CNN Mainz
Fully-managed Cloud-native Databases: The path to indefinite scale @ CNN MainzFully-managed Cloud-native Databases: The path to indefinite scale @ CNN Mainz
Fully-managed Cloud-native Databases: The path to indefinite scale @ CNN MainzQAware GmbH
 
Down the Ivory Tower towards Agile Architecture
Down the Ivory Tower towards Agile ArchitectureDown the Ivory Tower towards Agile Architecture
Down the Ivory Tower towards Agile ArchitectureQAware GmbH
 
"Mixed" Scrum-Teams – Die richtige Mischung macht's!
"Mixed" Scrum-Teams – Die richtige Mischung macht's!"Mixed" Scrum-Teams – Die richtige Mischung macht's!
"Mixed" Scrum-Teams – Die richtige Mischung macht's!QAware GmbH
 
Make Developers Fly: Principles for Platform Engineering
Make Developers Fly: Principles for Platform EngineeringMake Developers Fly: Principles for Platform Engineering
Make Developers Fly: Principles for Platform EngineeringQAware GmbH
 
Der Tod der Testpyramide? – Frontend-Testing mit Playwright
Der Tod der Testpyramide? – Frontend-Testing mit PlaywrightDer Tod der Testpyramide? – Frontend-Testing mit Playwright
Der Tod der Testpyramide? – Frontend-Testing mit PlaywrightQAware GmbH
 
Was kommt nach den SPAs
Was kommt nach den SPAsWas kommt nach den SPAs
Was kommt nach den SPAsQAware GmbH
 
Cloud Migration mit KI: der Turbo
Cloud Migration mit KI: der Turbo Cloud Migration mit KI: der Turbo
Cloud Migration mit KI: der Turbo QAware GmbH
 
Migration von stark regulierten Anwendungen in die Cloud: Dem Teufel die See...
 Migration von stark regulierten Anwendungen in die Cloud: Dem Teufel die See... Migration von stark regulierten Anwendungen in die Cloud: Dem Teufel die See...
Migration von stark regulierten Anwendungen in die Cloud: Dem Teufel die See...QAware GmbH
 
Aus blau wird grün! Ansätze und Technologien für nachhaltige Kubernetes-Cluster
Aus blau wird grün! Ansätze und Technologien für nachhaltige Kubernetes-Cluster Aus blau wird grün! Ansätze und Technologien für nachhaltige Kubernetes-Cluster
Aus blau wird grün! Ansätze und Technologien für nachhaltige Kubernetes-Cluster QAware GmbH
 
Endlich gute API Tests. Boldly Testing APIs Where No One Has Tested Before.
Endlich gute API Tests. Boldly Testing APIs Where No One Has Tested Before.Endlich gute API Tests. Boldly Testing APIs Where No One Has Tested Before.
Endlich gute API Tests. Boldly Testing APIs Where No One Has Tested Before.QAware GmbH
 
Kubernetes with Cilium in AWS - Experience Report!
Kubernetes with Cilium in AWS - Experience Report!Kubernetes with Cilium in AWS - Experience Report!
Kubernetes with Cilium in AWS - Experience Report!QAware GmbH
 
50 Shades of K8s Autoscaling
50 Shades of K8s Autoscaling50 Shades of K8s Autoscaling
50 Shades of K8s AutoscalingQAware GmbH
 
Kontinuierliche Sicherheitstests für APIs mit Testkube und OWASP ZAP
Kontinuierliche Sicherheitstests für APIs mit Testkube und OWASP ZAPKontinuierliche Sicherheitstests für APIs mit Testkube und OWASP ZAP
Kontinuierliche Sicherheitstests für APIs mit Testkube und OWASP ZAPQAware GmbH
 
Service Mesh Pain & Gain. Experiences from a client project.
Service Mesh Pain & Gain. Experiences from a client project.Service Mesh Pain & Gain. Experiences from a client project.
Service Mesh Pain & Gain. Experiences from a client project.QAware GmbH
 
50 Shades of K8s Autoscaling
50 Shades of K8s Autoscaling50 Shades of K8s Autoscaling
50 Shades of K8s AutoscalingQAware GmbH
 
Blue turns green! Approaches and technologies for sustainable K8s clusters.
Blue turns green! Approaches and technologies for sustainable K8s clusters.Blue turns green! Approaches and technologies for sustainable K8s clusters.
Blue turns green! Approaches and technologies for sustainable K8s clusters.QAware GmbH
 
Per Anhalter zu Cloud Nativen API Gateways
Per Anhalter zu Cloud Nativen API GatewaysPer Anhalter zu Cloud Nativen API Gateways
Per Anhalter zu Cloud Nativen API GatewaysQAware GmbH
 
Aus blau wird grün! Ansätze und Technologien für nachhaltige Kubernetes-Cluster
Aus blau wird grün! Ansätze und Technologien für nachhaltige Kubernetes-Cluster Aus blau wird grün! Ansätze und Technologien für nachhaltige Kubernetes-Cluster
Aus blau wird grün! Ansätze und Technologien für nachhaltige Kubernetes-Cluster QAware GmbH
 

Plus de QAware GmbH (20)

50 Shades of K8s Autoscaling #JavaLand24.pdf
50 Shades of K8s Autoscaling #JavaLand24.pdf50 Shades of K8s Autoscaling #JavaLand24.pdf
50 Shades of K8s Autoscaling #JavaLand24.pdf
 
Make Agile Great - PM-Erfahrungen aus zwei virtuellen internationalen SAFe-Pr...
Make Agile Great - PM-Erfahrungen aus zwei virtuellen internationalen SAFe-Pr...Make Agile Great - PM-Erfahrungen aus zwei virtuellen internationalen SAFe-Pr...
Make Agile Great - PM-Erfahrungen aus zwei virtuellen internationalen SAFe-Pr...
 
Fully-managed Cloud-native Databases: The path to indefinite scale @ CNN Mainz
Fully-managed Cloud-native Databases: The path to indefinite scale @ CNN MainzFully-managed Cloud-native Databases: The path to indefinite scale @ CNN Mainz
Fully-managed Cloud-native Databases: The path to indefinite scale @ CNN Mainz
 
Down the Ivory Tower towards Agile Architecture
Down the Ivory Tower towards Agile ArchitectureDown the Ivory Tower towards Agile Architecture
Down the Ivory Tower towards Agile Architecture
 
"Mixed" Scrum-Teams – Die richtige Mischung macht's!
"Mixed" Scrum-Teams – Die richtige Mischung macht's!"Mixed" Scrum-Teams – Die richtige Mischung macht's!
"Mixed" Scrum-Teams – Die richtige Mischung macht's!
 
Make Developers Fly: Principles for Platform Engineering
Make Developers Fly: Principles for Platform EngineeringMake Developers Fly: Principles for Platform Engineering
Make Developers Fly: Principles for Platform Engineering
 
Der Tod der Testpyramide? – Frontend-Testing mit Playwright
Der Tod der Testpyramide? – Frontend-Testing mit PlaywrightDer Tod der Testpyramide? – Frontend-Testing mit Playwright
Der Tod der Testpyramide? – Frontend-Testing mit Playwright
 
Was kommt nach den SPAs
Was kommt nach den SPAsWas kommt nach den SPAs
Was kommt nach den SPAs
 
Cloud Migration mit KI: der Turbo
Cloud Migration mit KI: der Turbo Cloud Migration mit KI: der Turbo
Cloud Migration mit KI: der Turbo
 
Migration von stark regulierten Anwendungen in die Cloud: Dem Teufel die See...
 Migration von stark regulierten Anwendungen in die Cloud: Dem Teufel die See... Migration von stark regulierten Anwendungen in die Cloud: Dem Teufel die See...
Migration von stark regulierten Anwendungen in die Cloud: Dem Teufel die See...
 
Aus blau wird grün! Ansätze und Technologien für nachhaltige Kubernetes-Cluster
Aus blau wird grün! Ansätze und Technologien für nachhaltige Kubernetes-Cluster Aus blau wird grün! Ansätze und Technologien für nachhaltige Kubernetes-Cluster
Aus blau wird grün! Ansätze und Technologien für nachhaltige Kubernetes-Cluster
 
Endlich gute API Tests. Boldly Testing APIs Where No One Has Tested Before.
Endlich gute API Tests. Boldly Testing APIs Where No One Has Tested Before.Endlich gute API Tests. Boldly Testing APIs Where No One Has Tested Before.
Endlich gute API Tests. Boldly Testing APIs Where No One Has Tested Before.
 
Kubernetes with Cilium in AWS - Experience Report!
Kubernetes with Cilium in AWS - Experience Report!Kubernetes with Cilium in AWS - Experience Report!
Kubernetes with Cilium in AWS - Experience Report!
 
50 Shades of K8s Autoscaling
50 Shades of K8s Autoscaling50 Shades of K8s Autoscaling
50 Shades of K8s Autoscaling
 
Kontinuierliche Sicherheitstests für APIs mit Testkube und OWASP ZAP
Kontinuierliche Sicherheitstests für APIs mit Testkube und OWASP ZAPKontinuierliche Sicherheitstests für APIs mit Testkube und OWASP ZAP
Kontinuierliche Sicherheitstests für APIs mit Testkube und OWASP ZAP
 
Service Mesh Pain & Gain. Experiences from a client project.
Service Mesh Pain & Gain. Experiences from a client project.Service Mesh Pain & Gain. Experiences from a client project.
Service Mesh Pain & Gain. Experiences from a client project.
 
50 Shades of K8s Autoscaling
50 Shades of K8s Autoscaling50 Shades of K8s Autoscaling
50 Shades of K8s Autoscaling
 
Blue turns green! Approaches and technologies for sustainable K8s clusters.
Blue turns green! Approaches and technologies for sustainable K8s clusters.Blue turns green! Approaches and technologies for sustainable K8s clusters.
Blue turns green! Approaches and technologies for sustainable K8s clusters.
 
Per Anhalter zu Cloud Nativen API Gateways
Per Anhalter zu Cloud Nativen API GatewaysPer Anhalter zu Cloud Nativen API Gateways
Per Anhalter zu Cloud Nativen API Gateways
 
Aus blau wird grün! Ansätze und Technologien für nachhaltige Kubernetes-Cluster
Aus blau wird grün! Ansätze und Technologien für nachhaltige Kubernetes-Cluster Aus blau wird grün! Ansätze und Technologien für nachhaltige Kubernetes-Cluster
Aus blau wird grün! Ansätze und Technologien für nachhaltige Kubernetes-Cluster
 

Dernier

MK KOMUNIKASI DATA (TI)komdat komdat.docx
MK KOMUNIKASI DATA (TI)komdat komdat.docxMK KOMUNIKASI DATA (TI)komdat komdat.docx
MK KOMUNIKASI DATA (TI)komdat komdat.docxUnduhUnggah1
 
EMERCE - 2024 - AMSTERDAM - CROSS-PLATFORM TRACKING WITH GOOGLE ANALYTICS.pptx
EMERCE - 2024 - AMSTERDAM - CROSS-PLATFORM  TRACKING WITH GOOGLE ANALYTICS.pptxEMERCE - 2024 - AMSTERDAM - CROSS-PLATFORM  TRACKING WITH GOOGLE ANALYTICS.pptx
EMERCE - 2024 - AMSTERDAM - CROSS-PLATFORM TRACKING WITH GOOGLE ANALYTICS.pptxthyngster
 
Customer Service Analytics - Make Sense of All Your Data.pptx
Customer Service Analytics - Make Sense of All Your Data.pptxCustomer Service Analytics - Make Sense of All Your Data.pptx
Customer Service Analytics - Make Sense of All Your Data.pptxEmmanuel Dauda
 
Advanced Machine Learning for Business Professionals
Advanced Machine Learning for Business ProfessionalsAdvanced Machine Learning for Business Professionals
Advanced Machine Learning for Business ProfessionalsVICTOR MAESTRE RAMIREZ
 
专业一比一美国俄亥俄大学毕业证成绩单pdf电子版制作修改
专业一比一美国俄亥俄大学毕业证成绩单pdf电子版制作修改专业一比一美国俄亥俄大学毕业证成绩单pdf电子版制作修改
专业一比一美国俄亥俄大学毕业证成绩单pdf电子版制作修改yuu sss
 
RadioAdProWritingCinderellabyButleri.pdf
RadioAdProWritingCinderellabyButleri.pdfRadioAdProWritingCinderellabyButleri.pdf
RadioAdProWritingCinderellabyButleri.pdfgstagge
 
DBA Basics: Getting Started with Performance Tuning.pdf
DBA Basics: Getting Started with Performance Tuning.pdfDBA Basics: Getting Started with Performance Tuning.pdf
DBA Basics: Getting Started with Performance Tuning.pdfJohn Sterrett
 
How we prevented account sharing with MFA
How we prevented account sharing with MFAHow we prevented account sharing with MFA
How we prevented account sharing with MFAAndrei Kaleshka
 
Indian Call Girls in Abu Dhabi O5286O24O8 Call Girls in Abu Dhabi By Independ...
Indian Call Girls in Abu Dhabi O5286O24O8 Call Girls in Abu Dhabi By Independ...Indian Call Girls in Abu Dhabi O5286O24O8 Call Girls in Abu Dhabi By Independ...
Indian Call Girls in Abu Dhabi O5286O24O8 Call Girls in Abu Dhabi By Independ...dajasot375
 
RABBIT: A CLI tool for identifying bots based on their GitHub events.
RABBIT: A CLI tool for identifying bots based on their GitHub events.RABBIT: A CLI tool for identifying bots based on their GitHub events.
RABBIT: A CLI tool for identifying bots based on their GitHub events.natarajan8993
 
RS 9000 Call In girls Dwarka Mor (DELHI)⇛9711147426🔝Delhi
RS 9000 Call In girls Dwarka Mor (DELHI)⇛9711147426🔝DelhiRS 9000 Call In girls Dwarka Mor (DELHI)⇛9711147426🔝Delhi
RS 9000 Call In girls Dwarka Mor (DELHI)⇛9711147426🔝Delhijennyeacort
 
办理学位证纽约大学毕业证(NYU毕业证书)原版一比一
办理学位证纽约大学毕业证(NYU毕业证书)原版一比一办理学位证纽约大学毕业证(NYU毕业证书)原版一比一
办理学位证纽约大学毕业证(NYU毕业证书)原版一比一fhwihughh
 
Call Girls In Dwarka 9654467111 Escorts Service
Call Girls In Dwarka 9654467111 Escorts ServiceCall Girls In Dwarka 9654467111 Escorts Service
Call Girls In Dwarka 9654467111 Escorts ServiceSapana Sha
 
Generative AI for Social Good at Open Data Science East 2024
Generative AI for Social Good at Open Data Science East 2024Generative AI for Social Good at Open Data Science East 2024
Generative AI for Social Good at Open Data Science East 2024Colleen Farrelly
 
9654467111 Call Girls In Munirka Hotel And Home Service
9654467111 Call Girls In Munirka Hotel And Home Service9654467111 Call Girls In Munirka Hotel And Home Service
9654467111 Call Girls In Munirka Hotel And Home ServiceSapana Sha
 
dokumen.tips_chapter-4-transient-heat-conduction-mehmet-kanoglu.ppt
dokumen.tips_chapter-4-transient-heat-conduction-mehmet-kanoglu.pptdokumen.tips_chapter-4-transient-heat-conduction-mehmet-kanoglu.ppt
dokumen.tips_chapter-4-transient-heat-conduction-mehmet-kanoglu.pptSonatrach
 
NLP Data Science Project Presentation:Predicting Heart Disease with NLP Data ...
NLP Data Science Project Presentation:Predicting Heart Disease with NLP Data ...NLP Data Science Project Presentation:Predicting Heart Disease with NLP Data ...
NLP Data Science Project Presentation:Predicting Heart Disease with NLP Data ...Boston Institute of Analytics
 
原版1:1定制南十字星大学毕业证(SCU毕业证)#文凭成绩单#真实留信学历认证永久存档
原版1:1定制南十字星大学毕业证(SCU毕业证)#文凭成绩单#真实留信学历认证永久存档原版1:1定制南十字星大学毕业证(SCU毕业证)#文凭成绩单#真实留信学历认证永久存档
原版1:1定制南十字星大学毕业证(SCU毕业证)#文凭成绩单#真实留信学历认证永久存档208367051
 
Call Us ➥97111√47426🤳Call Girls in Aerocity (Delhi NCR)
Call Us ➥97111√47426🤳Call Girls in Aerocity (Delhi NCR)Call Us ➥97111√47426🤳Call Girls in Aerocity (Delhi NCR)
Call Us ➥97111√47426🤳Call Girls in Aerocity (Delhi NCR)jennyeacort
 

Dernier (20)

MK KOMUNIKASI DATA (TI)komdat komdat.docx
MK KOMUNIKASI DATA (TI)komdat komdat.docxMK KOMUNIKASI DATA (TI)komdat komdat.docx
MK KOMUNIKASI DATA (TI)komdat komdat.docx
 
EMERCE - 2024 - AMSTERDAM - CROSS-PLATFORM TRACKING WITH GOOGLE ANALYTICS.pptx
EMERCE - 2024 - AMSTERDAM - CROSS-PLATFORM  TRACKING WITH GOOGLE ANALYTICS.pptxEMERCE - 2024 - AMSTERDAM - CROSS-PLATFORM  TRACKING WITH GOOGLE ANALYTICS.pptx
EMERCE - 2024 - AMSTERDAM - CROSS-PLATFORM TRACKING WITH GOOGLE ANALYTICS.pptx
 
E-Commerce Order PredictionShraddha Kamble.pptx
E-Commerce Order PredictionShraddha Kamble.pptxE-Commerce Order PredictionShraddha Kamble.pptx
E-Commerce Order PredictionShraddha Kamble.pptx
 
Customer Service Analytics - Make Sense of All Your Data.pptx
Customer Service Analytics - Make Sense of All Your Data.pptxCustomer Service Analytics - Make Sense of All Your Data.pptx
Customer Service Analytics - Make Sense of All Your Data.pptx
 
Advanced Machine Learning for Business Professionals
Advanced Machine Learning for Business ProfessionalsAdvanced Machine Learning for Business Professionals
Advanced Machine Learning for Business Professionals
 
专业一比一美国俄亥俄大学毕业证成绩单pdf电子版制作修改
专业一比一美国俄亥俄大学毕业证成绩单pdf电子版制作修改专业一比一美国俄亥俄大学毕业证成绩单pdf电子版制作修改
专业一比一美国俄亥俄大学毕业证成绩单pdf电子版制作修改
 
RadioAdProWritingCinderellabyButleri.pdf
RadioAdProWritingCinderellabyButleri.pdfRadioAdProWritingCinderellabyButleri.pdf
RadioAdProWritingCinderellabyButleri.pdf
 
DBA Basics: Getting Started with Performance Tuning.pdf
DBA Basics: Getting Started with Performance Tuning.pdfDBA Basics: Getting Started with Performance Tuning.pdf
DBA Basics: Getting Started with Performance Tuning.pdf
 
How we prevented account sharing with MFA
How we prevented account sharing with MFAHow we prevented account sharing with MFA
How we prevented account sharing with MFA
 
Indian Call Girls in Abu Dhabi O5286O24O8 Call Girls in Abu Dhabi By Independ...
Indian Call Girls in Abu Dhabi O5286O24O8 Call Girls in Abu Dhabi By Independ...Indian Call Girls in Abu Dhabi O5286O24O8 Call Girls in Abu Dhabi By Independ...
Indian Call Girls in Abu Dhabi O5286O24O8 Call Girls in Abu Dhabi By Independ...
 
RABBIT: A CLI tool for identifying bots based on their GitHub events.
RABBIT: A CLI tool for identifying bots based on their GitHub events.RABBIT: A CLI tool for identifying bots based on their GitHub events.
RABBIT: A CLI tool for identifying bots based on their GitHub events.
 
RS 9000 Call In girls Dwarka Mor (DELHI)⇛9711147426🔝Delhi
RS 9000 Call In girls Dwarka Mor (DELHI)⇛9711147426🔝DelhiRS 9000 Call In girls Dwarka Mor (DELHI)⇛9711147426🔝Delhi
RS 9000 Call In girls Dwarka Mor (DELHI)⇛9711147426🔝Delhi
 
办理学位证纽约大学毕业证(NYU毕业证书)原版一比一
办理学位证纽约大学毕业证(NYU毕业证书)原版一比一办理学位证纽约大学毕业证(NYU毕业证书)原版一比一
办理学位证纽约大学毕业证(NYU毕业证书)原版一比一
 
Call Girls In Dwarka 9654467111 Escorts Service
Call Girls In Dwarka 9654467111 Escorts ServiceCall Girls In Dwarka 9654467111 Escorts Service
Call Girls In Dwarka 9654467111 Escorts Service
 
Generative AI for Social Good at Open Data Science East 2024
Generative AI for Social Good at Open Data Science East 2024Generative AI for Social Good at Open Data Science East 2024
Generative AI for Social Good at Open Data Science East 2024
 
9654467111 Call Girls In Munirka Hotel And Home Service
9654467111 Call Girls In Munirka Hotel And Home Service9654467111 Call Girls In Munirka Hotel And Home Service
9654467111 Call Girls In Munirka Hotel And Home Service
 
dokumen.tips_chapter-4-transient-heat-conduction-mehmet-kanoglu.ppt
dokumen.tips_chapter-4-transient-heat-conduction-mehmet-kanoglu.pptdokumen.tips_chapter-4-transient-heat-conduction-mehmet-kanoglu.ppt
dokumen.tips_chapter-4-transient-heat-conduction-mehmet-kanoglu.ppt
 
NLP Data Science Project Presentation:Predicting Heart Disease with NLP Data ...
NLP Data Science Project Presentation:Predicting Heart Disease with NLP Data ...NLP Data Science Project Presentation:Predicting Heart Disease with NLP Data ...
NLP Data Science Project Presentation:Predicting Heart Disease with NLP Data ...
 
原版1:1定制南十字星大学毕业证(SCU毕业证)#文凭成绩单#真实留信学历认证永久存档
原版1:1定制南十字星大学毕业证(SCU毕业证)#文凭成绩单#真实留信学历认证永久存档原版1:1定制南十字星大学毕业证(SCU毕业证)#文凭成绩单#真实留信学历认证永久存档
原版1:1定制南十字星大学毕业证(SCU毕业证)#文凭成绩单#真实留信学历认证永久存档
 
Call Us ➥97111√47426🤳Call Girls in Aerocity (Delhi NCR)
Call Us ➥97111√47426🤳Call Girls in Aerocity (Delhi NCR)Call Us ➥97111√47426🤳Call Girls in Aerocity (Delhi NCR)
Call Us ➥97111√47426🤳Call Girls in Aerocity (Delhi NCR)
 

A Fast and Efficient Time Series Storage Based on Apache Solr

  • 1. Chronix A fast and efficient time series storage based on Apache Solr Caution: Contains technical content.
  • 2.
  • 3. 68.000.000.000* time correlated data objects. 3 * ~ collect every 10 seconds 72 metrics x 15 processes x 20 hosts over 1 years How to store such amount of data on your laptop computer and retrieve any point within a few milliseconds?
  • 4. Well we tried that approach… 4 ■ Store data objects in a classical RDBMS ■ But… ■Slow import of data objects ■Huge amount of hard drive space ■Slow retrieval of time series ■Limited scalability due to RDBMS ■Missing query functions for time series data !68.000.000.000! Measurement Series Name Start End Time Series Start End Data Object Timestamp Value Metric Attributes Host Process … * * * * Name
  • 5. 5 Hence it felt like … Image Credit: http://www.sail-world.com/
  • 6. But what to do? Compression, Chunks, and Open Source! 6 ■ The key ideas to enable the efficient storage of billion data objects: ■Split time series into chunks of the same size with data objects ■Compress these chunks to reduce the data volume ■Store the compressed chunks and the attributes in a record ■ Reason for success: ■32 GB disk usage to store 68 billion data objects ■Fast retrieval of data objects within a few milliseconds ■Fast searching on attributes without loading the chunks ■Everything runs on a laptop computer ■… and many more! Time Series Record Start End Chunk[] Size Attributes, … 1 Million !68.000!
  • 7. That‘s all. No secrets, nothing special and nothing more to say.  Time Series Database - What’s that? Definitions and typical features.  Why did we choose Apache Solr and are there alternatives?  Chronix Architecture that is based on Solr and Lucene.  What’s needed to speed up Chronix to a firehorse. What comes next?
  • 8. Time Series Database: What’s that? 8 ■ Definition 1: “A data object d is a tuple of {timestamp, value}, where the value could be any kind of object.” ■ Definition 2: “A time series T is an arbitrary list of chronological ordered data objects of one value type”. ■ Definition 3: “A chunk C is a chronological ordered part of a time series.” ■ Definition 4: “A time series database TSDB is a specialized database for storing and retrieving time series in an efficient and optimized way”. d {t,v} 1 T {d1,d2} T CT T1 C1,1 C1,2 TSDB T3C2,2 T1 C2,1
  • 9. A few typical features of a time series database 9 ■ Data management ■Round Robin Storages ■Down-sample old time series ■Compression ■Compaction ■ Arbitrary amount of Attributes ■For time series (Country, Host, Customer, …) ■For data object (Scale, Unit, Type) ■ Performance and Operational ■Rare updates, inserts are additive ■Fast inserts and retrievals ■Distributed and efficient per node ■No need of ACID, but consistency ■ Time series language and API ■Statistics: Aggregation (min, max, median), … ■Transformations: Time windows, time shifting, resampling, .. ■High level: Outlier, trends, similarity search Check out: A good post about the requirements of a time series: http://www.xaprb.com/blog/2014/06/08/time-series-database-requirements/
  • 10. 10 Some time series databases out there. ■RRDTool - http://oss.oetiker.ch/rrdtool/ ■Mainly used in traditional monitoring systems ■Graphite – https://github.com/graphite-project ■Uses the concepts of RRDTool and puts some sugar on it ■InfluxDB - https://influxdata.com/time-series-platform/influxdb/ ■A distributed time series database with a very handy query language ■OpenTSDB - http://opentsdb.net/ ■Is a scalable time series database and runs on Hadoop and Hbase ■Prometheus- http://www.scidb.org/ ■ A monitoring system and a time series database ■KairosDB - https://kairosdb.github.io/ ■Like OpenTSDB but is based on Apache Cassandra ■… many more! And of course Chronix! - http://chronix.io/
  • 11. “Ey, there are so many time series databases out there? Why did you create a new solution?” 11 Our Requirements ■ A fast write and query performance ■ Run the database on a laptop computer ■ Minimal data volume for stored data objects ■ Storing arbitrary attributes ■ A query API for searching on all attributes ■ Large community and an active development That delivers Apache Solr ■ Based on Lucene which is really fast ■ Runs embedded, standalone, distributed ■ Lucene has a built-in compression ■ Schema or schemaless ■ Solr Query Language ■ Lucidworks and an Apache project “Our tool has been around for a good few years, and in the beginning there was no time series database that complies our requirements. And there isn’t one today!”Elastic Search is an alternative. It is also based on Lucene.
  • 12. 12 Let‘s dig deeper into Chronix’ internals. Image Credit: http://www.taringa.net/posts/ciencia-educacion/12656540/La-Filosofia-del-Dr-House-2.html
  • 13. Chronix’ architecture enables both efficient storage of time series and millisecond range queries. 13 (1) Semantic Compression (2) Attributes and Chunks (3) Basic Compression (4) Multi-Dimensional Storage Record data:<chunk> attributes Record data:compressed <chunk> attributes Record Storage 1 Million Points 100 Chunks * 10.000 Points ~ 96% Compression Optional
  • 14. The key data type of Chronix is called a record. It stores a compressed time series chunk and its attributes. 14 record{ data:compressed{<chunk>} //technical fields id: 3dce1de0−...−93fb2e806d19 version: 1501692859622883300 start: 1427457011238 end: 1427471159292 //optional attributes host: prodI5 process: scheduler group: jmx metric: heapMemory.Usage.Used max: 896.571 } Data:compressed{<chunk of time series data>} ■ Time Series: timestamp, numeric value ■ Traces: calls, exceptions, … ■ Logs: access, method runtimes ■ Complex data: models, test coverage, anything else… Optional attributes ■ Arbitrary attributes for the time series ■ Attributes are indexed ■ Make the chunk searchable ■ Can contain pre-calculated values
  • 15. Chronix provides specialized aggregations and analyses in its query language for time series that are commonly used. 15 Aggregations (ag) ■ Min / Max / Average / Sum / Count ■ Standard Deviation ■ Percentile ■ Bottom/Top n-values ■ First / Last ■ Derivative / Non negative derivative ■ Range ■ Moving average ■ Divide / Scale ■ ... Analyses (analysis) ■ Trend Analysis Using a linear regression model ■ Outlier Analysis Using the IQR ■ Frequency Analysis Check occurrence within a time range ■ Fast Dynamic Time Warping Time series similarity search ■ Symbolic Aggregate Approximation Similarity and pattern search ■ Vectorisation for server side data reduction
  • 16. Only scalar values? One size fits all? No! What about logs, traces, and others? No problem – Just do it yourself! 16 ■ Chronix Kassiopeia (Format) ■Time Series framework that is used by Chronix. ■Time Series Types: ■Numeric: Doubles (the time series known to be the default) ■Thread Dumps: Stack traces (e.g. java stack traces) ■Strace: Strace dumps (system call, duration, arguments public interface TimeSeriesConverter<T> { /** * Shall create an object of type T from the given binary time series. */ T from(BinaryTimeSeries binaryTimeSeriesChunk, long queryStart, long queryEnd); /** * Shall do the conversation of the custom time series T into the binary time series that is stored. */ BinaryTimeSeries to(T timeSeriesChunk); }
  • 17. Plain That‘s the easiest way to play with Chronix. A single instance of Chronix on a single node with a Apache Solr instance. 17 Java 8 (JRE) Chronix - 0.2 Solr - 6.0.0 Lucene Solr plugins 8983 Your Computer Chronix-Query-Handler Chronix-Response-Writer Chronix-Retention Chronix-Client Grafana Json + Binary Binary + Binary Json + Json Java 8 (JRE)
  • 18. Code-Slide: How to set up Chronix, ask for time series data, and call some server-side aggregations. 18 ■ Create a connection to Solr and set up Chronix ■ Define and range query and stream its results ■ Call some aggregations solr = new HttpSolrClient("http://localhost:8913/solr/chronix/") chronix = new ChronixClient(new KassiopeiaSimpleConverter<>(), new ChronixSolrStorage(200, groupBy, reduce)) query = new SolrQuery("metric:*Load*") chronix.stream(solr,query) query.addFilterQuery("ag=max,min,count,sdiff") stream = chronix.stream(solr,query) Signed Difference: First=20, Last=-100  -80 Group chunks on a combination of attributes and reduce them to a time series. Get all time series whose metric contains Load
  • 19. That’s the four week data that is shipped with the release!
  • 20. A more powerful way to work with time series. A Chronix Cloud, a Spark Cluster, and an analysis workbench like Zeppelin. 20 Chronix Cloud Chronix Node Chronix Node Chronix Node Chronix Node Spark Cluster Spark Node Spark Node Spark Node Spark Node Zeppelin Chronix Spark Context Java Scala Various Applications as Workbench Spark SQL Context
  • 21. Code-Slide: Use Spark to process time series data that comes out right now from Chronix. 21 ■ Create a ChronixSparkContext ■ Define and range query and stream its results ■ Play with the data conf = new SparkConf().setMaster(SPARK_MASTER).setAppName(CHRONIX) jsc = new JavaSparkContext(conf) csc = new ChronixSparkContext(jsc) sqlc = new SQLContext(jsc) query = new SolrQuery("metric:*Load*") rdd = csc.queryChronixChunks(query,ZK_HOST,CHRONIX_COLLECTION, new ChronixSolrCloudStorage()); DataSet<MetricObservation> ds = rdd.toObservationsDataset(sqlc) rdd.mean() rdd.max() rdd.iterator() Dataset to use Spark SQL features Set up Spark, a JavaSparkContext, a ChronixSparkContext, and a SQLContext Get all time series whose metric contains Load
  • 22. Tune Chronix to a firehorse. Even with defaults it’s blazing fast!
  • 23. We have tuned Chronix in terms of chunk size, and compression technique to get the ideal default values for you. 23 ■ Tuning Dataset ■Three real-world projects ■15 GB of time series data (typical monitoring data) ■About 500 million points in 15k time series ■92 typical queries with different time range and occurrence ■ We have measured: ■Compression rate for serval compression techniques (T) and chunk sizes (C). ■Total time for all 92 queries in the mix (range + aggregations) ■ What we want to know: Ideal values for T and C
  • 24. We have evaluated several compression techniques and chunk sizes of the time series data to get the best parameter values. 24 T= GZIP + C = 128 kBytes Florian Lautenschlager, Michael Philippsen, Andreas Kumlehn, Josef Adersberger Chronix: Efficient Storage and Query of Operational Time Series International Conference on Software Maintenance and Evolution 2016 (submitted) For more details about the tuning check our paper.
  • 25. Compared to other time series databases Chronix‘ results for our use case are outstanding. The approach works! 25 ■ We have evaluated Chronix with: ■InfluxDB, Graphite, OpenTSDB, and KairosDB ■All databases are configured to run as single node ■ Storage demand for 15 GB of raw csv time series data ■Chronix (237 MB) takes 4 – 84 times less space ■ Query times on imported data ■49% – 91% faster than the evaluated time series databases ■ Memory footprint: after start, max during import, max during query mix ■Graphite is best (926 MB), Chronix (1.5 GB) is second. Others 16 to 39 GB
  • 26. The hard facts. For more details I suggest you to read our research paper about Chronix. 26 Florian Lautenschlager, Michael Philippsen, Andreas Kumlehn, Josef Adersberger Chronix: Efficient Storage and Query of Operational Time Series International Conference on Software Maintenance and Evolution 2016 (submitted)
  • 27. Now it’s your turn. Now it’s your turn.
  • 28. Open the shell and type. 28
  • 29. (mail) florian.lautenschlager@qaware.de (twitter) @flolaut (twitter) @ChronixDB (web) www.chronix.io #lovetimeseries Bart Simpson