SlideShare uma empresa Scribd logo
1 de 80
Baixar para ler offline
#DevoxxPL
BIG DATA 101, FOUNDATIONAL
KNOWLEDGE FOR A NEW PROJECT
IN 2017
DuyHai DOAN
@doanduyhai
@doanduyhai1
#DevoxxPL
Who Am I ?
Duy Hai DOAN
Technical Advocate @ Datastax
•  talks, meetups, confs
•  open-source devs (Achilles, Zeppelin,…)
•  OSS Cassandra point of contact
☞ duy_hai.doan@datastax.com
☞ @doanduyhai
Apache Zeppelin™ committer
@doanduyhai2
#DevoxxPL
Agenda
1) Distributed systems theories & properties
2) Data sharding , replication
3) CAP theorem
4) Distributed systems architecture: master/slave vs masterless
@doanduyhai3
#DevoxxPL
Distributed systems theories
@doanduyhai4
Time
Ordering
Latency
Failure
Consensus
#DevoxxPL
Time
There is no absolute time in theory (even with atomic clocks!)
Time-drift is unavoidable
•  unless you provide atomic clock to each server
•  unless you’re Google
NTP is your friend ☞ configure it properly !
@doanduyhai5
#DevoxxPL
Ordering of operations
How to order operations ?
What does before/after mean ?
•  when clock is not 100% reliable
•  when operations occur on multiple machines …
•  … that live in multiple continents (1000s km distance)
@doanduyhai6
#DevoxxPL
Ordering of operations
Local/relative ordering is possible
Global ordering ?
•  either execute all operations on single machine (☞ master)
•  or ensure time is perfectly synchronized on all machines executing the
operations (really feasible ?)
@doanduyhai7
#DevoxxPL
Known algorithms
Lamport clock
•  algorithm for message sender
•  algorithm for message receiver
•  partial ordering between a pair of (sender, receiver) is possible
@doanduyhai8
time = time+1;
time_stamp = time;
send(Message, time_stamp);
(message, time_stamp) = receive();
time = max(time_stamp, time)+1;
#DevoxxPL
Known algorithms
@doanduyhai9
Vector clock
#DevoxxPL
Latency
Def: time interval between request & response.
Latency is composed of
•  network delay: router/switch delay + physical medium delay
•  OS delay (negligible)
•  time to process the query by the target (disk access, computation …)
@doanduyhai10
#DevoxxPL
Latency
Speed of light physics
•  ≈ 300 000 km/s in the void
•  ≈ 197 000 km/s in fiber optic cable (due to refraction indice)
London – New York bird flight distance ≈ 5500km è 28ms for a
one way trip
Conclusion: a ping between London – New York cannot take less
than 56ms
@doanduyhai11
#DevoxxPL @doanduyhai12
"The mean latency is
below 10ms"
Database vendor X
✔︎ ✘︎
#DevoxxPL @doanduyhai13
"The mean latency is
below 10ms"
Database vendor X
✔︎ ✘︎
#DevoxxPL
Failure modes
•  Byzantine failure: same input, different outputs à application bug !!!
•  Performance failure: response correct but arrives too late
•  Omission failure: special case of performance failure, no response (timeout)
•  Crash failure: self-explanatory, server stops responding
Byzantine failure à value issue
Other failures à timing issue
@doanduyhai14
#DevoxxPL
Failure
Root causes
•  Hardware: disk, CPU, …
•  Software: packet lost, process crash, OS crash …
•  Workload-specific: flushing huge file to SAN (🙀)
•  JVM-related: long GC pause
Defining failure is hard
@doanduyhai15
#DevoxxPL @doanduyhai16
"A Server fails when it does
not respond to one or
multiple request(s) in a
timely manner"
Usual meaning of failure
#DevoxxPL
Failure detection
Timely manner ☞ timeout!
Failure detector:
•  heart beat: binary state, (up/down), too simple
•  multi-heartbeat with threshold
•  multi-heartbeat with exponential backoff : better model
•  phi accrual detector: advanced model using statictics
@doanduyhai17
#DevoxxPL
Distributed consensus protocols
Since time is unreliable, global ordering is hard to achieve & failure is
hard to detect ...
... how different machines can agree on a single value ?
Important properties:
•  validity: the agreed value must have been proposed by some process
•  termination: at least one non-faulty process eventually decides
•  agreement: all processes agree on the same value
@doanduyhai18
#DevoxxPL
Distributed consensus protocols
2-phases commit
•  termination KO: the protocol can be blocked if coordinator fails
3-phases commit
•  agreement KO: in case of network partition, possibility of inconsistent state
Paxos, RAFT & Zab (Zookeeper)
•  OK: satisfies 3 requirements
•  QUORUM-based: requires a strict majority of copies/replicas to be alive
@doanduyhai19
#DevoxxPL
Data sharding & replication
@doanduyhai20
#DevoxxPL
Data Sharding
Why sharding ?
•  scalability: map logical shard to physical hardware (machines/racks,...)
•  divide & conquer: each shard represents the DB at a smaller scale
How to shard ?
•  user-defined algorithm: user chooses the sharding algorithm & the target
columns on which applies the algorithm.
•  fixed algorithm: the DB imposes the sharding algorithm. The user decides only
on which columns to apply the algorithm. Ex: user_id
@doanduyhai21
#DevoxxPL
Data Sharding
Example of user-defined sharding
•  user data with sharding key == email, sharding algo == take 1st letter 😱
@doanduyhai22
19
32
27
15
5
2
0
5
10
15
20
25
30
35
a - c e - h m - p q - t u - x y - z
Dataownershipin%
Shards
1st letter Data Distribution
#DevoxxPL
Data Sharding
Example of fixed sharding algo Murmur3
•  user data with sharding key == user_id or whatever key 😎
@doanduyhai23
19
23
18
19
21
0
5
10
15
20
25
0-19 20-39 40-59 60-79 80-99
Dataownershipin%
Shards
Murmur3 Data Distribution
#DevoxxPL @doanduyhai24
With Murmur3 we are
guaranteed to have
even data distribution
✔︎ ✘︎
#DevoxxPL @doanduyhai25
With Murmur3 we are
guaranteed to have
even data distribution
✔︎ ✘︎
#DevoxxPL
Dice rolling experiment
@doanduyhai26
#DevoxxPL
Dice rolling experiment
@doanduyhai27
#DevoxxPL
Dice rolling experiment
@doanduyhai28
#DevoxxPL
Dice rolling experiment
@doanduyhai29
It’s all about
statistics !
#DevoxxPL
Data Sharding Trade-off
Logical sharding (which allows ordering of sharding key)
•  can lead to hotspots & imbalance in data distribution
•  but allows range queries
•  WHERE sharding_key >= xxx AND sharding_key <= yyy
Hash-based sharding
•  guarantees uniform distribution (with sufficient distinct shard key values)
•  range queries not possible, only point queries
•  WHERE sharding_key >= xxx AND sharding_key <= yyy
•  WHERE sharding_key == zzz
@doanduyhai30
#DevoxxPL
Data Sharding and Rebalancing
For some category of NoSQL solutions
•  range queries is mandatory à hotspots not avoidable !!!
•  mainly K/V databases, some wide columns databases too
@doanduyhai31
a - d
e - h
i - l
m - p
q - t
#DevoxxPL
Data Sharding and Rebalancing
Rebalancy is necessary
•  sometimes automated process
•  sometimes manual admin process 😭
•  resource-intensive operation (CPU, disk I/O + network) à impact live
production traffic 😱
@doanduyhai32
#DevoxxPL
Data Replication
How ? By having multiple copies/replicas
Type of replicas
•  symetric: no role, each replica is similar to others
•  asymetric: "master/slave" style. All operations (read/write) should go through
a single server
@doanduyhai33
#DevoxxPL
Data Replication
@doanduyhai34
Client
Replica1 Replica2 Replica3
Symetric replicas, write operations
Parallel dispatch
#DevoxxPL
Data Replication
@doanduyhai35
Client
Replica1 Replica2 Replica3
Symetric replicas, read operations
#DevoxxPL
Data Replication
@doanduyhai36
Master
Replica1 Replica2 Replica3
Client
Asymetric replicas, write operations
#DevoxxPL
Data Replication
@doanduyhai37
Master
Replica1 Replica2 Replica3
Client
Asymetric replicas, read operations
#DevoxxPL
Data Replication
@doanduyhai38
Master
Replica1 Replica2 Replica3
Client
Asymetric replicas, read operations
BOTTLENECK !!!
#DevoxxPL
Data Replication
@doanduyhai39
Master
Replica1 Replica2 Replica3
Client
Asymetric replicas, read operations from slaves
✘
#DevoxxPL
Data Replication
@doanduyhai40
Master
Replica
Asymetric replicas, common write failure scenarios
✘ Message lost (network)
àMaster never receives ack
à KO
Master
Replica
✘
Write dropped (overload)
àMaster never receives ack
à KO
Master
Replica
✘
Replica crashed right away
àMaster never receives ack
à KO
#DevoxxPL
Data Replication
@doanduyhai41
Master
Replica
Asymetric replicas, tricky write failure scenarios
✘
Ack lost (network)
àMaster never receives ack
à KO !!!!
Master
Replica
✘
Replica crashes AFTER
sending ACK but before
flushing data to disk
àMaster receives ack
à OK ?
#DevoxxPL
CAP Theorem
@doanduyhai42
Pick 2 out of 3
#DevoxxPL
CAP theorem
@doanduyhai43
Conjecture by Brewer, formalized later in a paper (2002):
The CAP theorem states that any networked shared-data system
can have at most two of three desirable properties
•  consistency (C): equivalent to having a single up-to-date copy of the data
•  high availability (A): of that data (for updates)
•  and tolerance to network partitions (P)
#DevoxxPL
CAP triangle
@doanduyhai44
#DevoxxPL
CAP theorem revised (2012)
@doanduyhai45
You cannot choose not to be partition-tolerant
Choice is not that binary:
•  in the absence of partition, you can tend toward CA
•  if when partition occurs, choose your side (C or A)
☞ tunable consistency
#DevoxxPL
What is Consistency ?
@doanduyhai46
Meaning is different from the C of ACID
Read Uncommited
Read Commited
Cursor Stability
Repeatable Read
Eventual Consistency
Read Your Write
Pipelined RAM
Causal
Snapshot Isolation Linearizability
Serializability
Without coordination
Requires coordination
#DevoxxPL
Consistency with some AP system
@doanduyhai47
Cassandra tunable consistency
Read Uncommited
Read Commited
Cursor Stability
Repeatable Read
Eventual Consistency
Read Your Write
Pipelined RAM
Causal
Snapshot Isolation Linearizability
Serializability
Without coordination
Requires coordination
Consistency Level
ONE
#DevoxxPL
Consistency with some AP system
@doanduyhai48
Cassandra tunable consistency
Read Uncommited
Read Commited
Cursor Stability
Repeatable Read
Eventual Consistency
Read Your Write
Pipelined RAM
Causal
Snapshot Isolation Linearizability
Serializability
Without coordination
Requires coordination
Consistency Level
QUORUM
#DevoxxPL
Consistency with some AP system
@doanduyhai49
Cassandra tunable consistency
Read Uncommited
Read Commited
Cursor Stability
Repeatable Read
Eventual Consistency
Read Your Write
Pipelined RAM
Causal
Snapshot Isolation Linearizability
Serializability
Without coordination
Requires coordination
LightWeight
Transaction
Single partition writes
are linearizable
#DevoxxPL
What is availability ?
@doanduyhai50
Ability to:
•  Read in the case of failure ?
•  Write in the case of failure ?
Brewer definition: high availability of the data (for updates)
#DevoxxPL
Real world example
@doanduyhai51
Cassandra claims to be highly available because it is AP, is it true ?
Some marketing slide even claims continous availability (100%
uptime), is it true ?
#DevoxxPL
Network partition scenario with Cassandra
@doanduyhai52
C*
C*
C*
C*
C*C*
C*
C*
C*
C*
C*
C*
C*
Read/Write at
Consistency level ONE
✔︎
#DevoxxPL
Network partition scenario with Cassandra
@doanduyhai53
C*
C*
C*
C*
C*C*
C*
C*
C*
C*
C*
C*
C*
Read/Write at
Consistency level ONE ✘︎
#DevoxxPL
So how can it be highly available ???
@doanduyhai54
C*
C*
C*
C*
C*C*
C*
C*
C*
C*
C*
C*
C*
Read/Write at
Consistency level ONE
C*
C*
C*
C*
C*C*
C*
C*
C*
C*
C*
C*
C*
US DataCenter EU DataCenter
✘
Datacenter-aware load balancing strategy at driver level
#DevoxxPL
Architecture
@doanduyhai55
Master/Slave vs Masterless
#DevoxxPL
Pure master/slave architecture
@doanduyhai56
Single server for all writes, read can be done on master or any slave
Advantages
•  operations can be serialized
•  easy to reason about
•  pre-aggregation is possible
Drawbacks
•  cannot scale on write (read can be scaled)
•  single point of failure (SPOF)
#DevoxxPL
Master/slave SPOF
@doanduyhai57
Write request
MASTER
SLAVE1 SLAVE2 SLAVE3
#DevoxxPL
Multi-master/slave layout
@doanduyhai58
Write request
MASTER1
SLAVE11 SLAVE12 SLAVE13
Shard1
MASTER2
SLAVE21 SLAVE22 SLAVE23
Shard2
…
Proxy layer
#DevoxxPL
Multi-master/slave architecture
@doanduyhai59
Distribute data between shards. One master per shard
Advantages
•  operations can still be serialized in a single shard
•  easy to reason about in a single shard
•  no more big SPOF
Drawbacks
•  consistent only in a single shard (unless global lock)
•  multiple small points of failure (SPOF inside a shard)
•  global pre-aggregation is no longer possible
#DevoxxPL @doanduyhai60
Failure of a master/primary
shard is not a problem
because it takes less than
xxx millisecs to elect a
slave into a master Wrong Objection Rhetoric
#DevoxxPL
Recovery
Real domain of unavailability
@doanduyhai61
Time to detect a master/primary shard is down (seconds)
- simple heartbeat
- multi-heartbeat
- multi-heartbeat with exponential backoff
Master election
duration
(millisecs)
#DevoxxPL
Fake masterless/shared-nothing architecture
@doanduyhai62
In reality, multi-master architecture …
… but branded as shared-nothing/masterless architecture
#DevoxxPL @doanduyhai63
Censored
#DevoxxPL @doanduyhai64
Censored
It was in
Dec. 2016
#DevoxxPL
As of May 2017
Official doc
@doanduyhai65
Censored
#DevoxxPL
As of May 2017
Technical overview doc
@doanduyhai66
#DevoxxPL
As of May 2017
Technical overview doc
@doanduyhai67
Remember this ?
#DevoxxPL @doanduyhai68
Beware of
marketing!
Shared-nothing architecture
Masterless architecture
Primary-shard == hidden master
#DevoxxPL
Masterless architecture
@doanduyhai69
No master, every node has equal role
☞ how to manage consistency then if there is no master ?
☞ which replica has the right value of my data ?
Some data-structures to the rescue:
•  vector clock
•  CRDT (Convergent Replicated Data Type)
#DevoxxPL
Masterless architecture
@doanduyhai70
C*
C*
C*
C*
C*C*
C*
C*
C*
C*
Client sending request
C* C*
C*
Notion of coordinator
•  just a network proxy !
•  what if the coordinator dies ???
coordinator
replica replica
replica
#DevoxxPL
Masterless architecture
@doanduyhai71
C*
C*
C*
C*
C*C*
C*
C*
C*
C*
Client sending request
C* C*
C*
Anyone can be coordinator !!!
new coordinator
replica replica
replica
#DevoxxPL
CRDT
@doanduyhai72
Riak
•  Registers
•  Counters
•  Sets
•  Maps
•  …
Cassandra only proposes LWW-register (Last Write Win)
•  based on write timestamp
#DevoxxPL
Timestamp, again …
@doanduyhai73
But didn’t we say that timestamp not really reliable ?
Why not implement other CRDTs ?
Why choose LWW-registered ?
•  because last-write-win is still the most "intuitive"
•  because conflict resolution with other CRDT is the user responsibility
•  because one should not be required to have a PhD in CS to use Cassandra
#DevoxxPL
Example of write conflict with Cassandra
@doanduyhai74
C*
C*
C*
C*
C*C*
C*
C*
C*
C*
UPDATE users SET
age=32 WHERE id=1
C* C*
C*
Local time
10:00:01.050
age=32 @ 10:00:01.050 age=32 @ 10:00:01.050
age=32 @ 10:00:01.050
#DevoxxPL
Example of write conflict with Cassandra
@doanduyhai75
C*
C*
C*
C*
C*C*
C*
C*
C*
C*
UPDATE users SET
age=33 WHERE id=1
C* C*
C*
Local time
10:00:01.020
age=32 @ 10:00:01.050
age=33 @ 10:00:01.020
age=32 @ 10:00:01.050
age=33 @ 10:00:01.020
age=32 @ 10:00:01.050
age=33 @ 10:00:01.020
#DevoxxPL
Example of write conflict with Cassandra
@doanduyhai76
C*
C*
C*
C*
C*C*
C*
C*
C*
C*
UPDATE users SET
age=33 WHERE id=1
C* C*
C*
Local time
10:00:01.020
age=32 @ 10:00:01.050
age=33 @ 10:00:01.020
age=32 @ 10:00:01.050
age=33 @ 10:00:01.020
age=32 @ 10:00:01.050
age=33 @ 10:00:01.020
#DevoxxPL
Example of write conflict
@doanduyhai77
How can we cope with this ?
•  It’s functionally rare to have a update on the same column by differents
clients at atmost same time (few millisecs apart)
•  can also force timestamp at client-side (but need to synchronize clients now
…)
•  can always use LightWeight Transaction to guarantee linearizability but very
expensive
UPDATE user SET age = 33 WHERE id = 1 IF age = 32
#DevoxxPL
Masterless architecture
@doanduyhai78
Advantages
•  no SPOF
•  no failover procedure
•  can achieve 0 downtime with correct tuning/multi-DC setup
Drawbacks
•  consistency model hard to reason about (not intuitive)
•  very expensive to have linearizability (when implemented)
•  pre-aggregation impossible
#DevoxxPL @doanduyhai79
Q & A
! "
#DevoxxPL @doanduyhai80
Thank You !
@doanduyhai
duy_hai.doan@datastax.com
https://academy.datastax.com/

Mais conteúdo relacionado

Mais procurados

Datastax enterprise presentation
Datastax enterprise presentationDatastax enterprise presentation
Datastax enterprise presentationDuyhai Doan
 
Cassandra 3 new features 2016
Cassandra 3 new features 2016Cassandra 3 new features 2016
Cassandra 3 new features 2016Duyhai Doan
 
Beyond the Query – Bringing Complex Access Patterns to NoSQL with DataStax - ...
Beyond the Query – Bringing Complex Access Patterns to NoSQL with DataStax - ...Beyond the Query – Bringing Complex Access Patterns to NoSQL with DataStax - ...
Beyond the Query – Bringing Complex Access Patterns to NoSQL with DataStax - ...StampedeCon
 
Spark cassandra integration 2016
Spark cassandra integration 2016Spark cassandra integration 2016
Spark cassandra integration 2016Duyhai Doan
 
Advanced data modeling with apache cassandra
Advanced data modeling with apache cassandraAdvanced data modeling with apache cassandra
Advanced data modeling with apache cassandraPatrick McFadin
 
Cassandra and Spark, closing the gap between no sql and analytics codemotio...
Cassandra and Spark, closing the gap between no sql and analytics   codemotio...Cassandra and Spark, closing the gap between no sql and analytics   codemotio...
Cassandra and Spark, closing the gap between no sql and analytics codemotio...Duyhai Doan
 
Spark cassandra connector.API, Best Practices and Use-Cases
Spark cassandra connector.API, Best Practices and Use-CasesSpark cassandra connector.API, Best Practices and Use-Cases
Spark cassandra connector.API, Best Practices and Use-CasesDuyhai Doan
 
Storing time series data with Apache Cassandra
Storing time series data with Apache CassandraStoring time series data with Apache Cassandra
Storing time series data with Apache CassandraPatrick McFadin
 
Datastax day 2016 : Cassandra data modeling basics
Datastax day 2016 : Cassandra data modeling basicsDatastax day 2016 : Cassandra data modeling basics
Datastax day 2016 : Cassandra data modeling basicsDuyhai Doan
 
Cassandra EU - Data model on fire
Cassandra EU - Data model on fireCassandra EU - Data model on fire
Cassandra EU - Data model on firePatrick McFadin
 
A Cassandra + Solr + Spark Love Triangle Using DataStax Enterprise
A Cassandra + Solr + Spark Love Triangle Using DataStax EnterpriseA Cassandra + Solr + Spark Love Triangle Using DataStax Enterprise
A Cassandra + Solr + Spark Love Triangle Using DataStax EnterprisePatrick McFadin
 
Apache cassandra in 2016
Apache cassandra in 2016Apache cassandra in 2016
Apache cassandra in 2016Duyhai Doan
 
Spark Cassandra Connector: Past, Present and Furure
Spark Cassandra Connector: Past, Present and FurureSpark Cassandra Connector: Past, Present and Furure
Spark Cassandra Connector: Past, Present and FurureDataStax Academy
 
GNW01: In-Memory Processing for Databases
GNW01: In-Memory Processing for DatabasesGNW01: In-Memory Processing for Databases
GNW01: In-Memory Processing for DatabasesTanel Poder
 
Cassandra Materialized Views
Cassandra Materialized ViewsCassandra Materialized Views
Cassandra Materialized ViewsCarl Yeksigian
 
A Deep Dive Into Understanding Apache Cassandra
A Deep Dive Into Understanding Apache CassandraA Deep Dive Into Understanding Apache Cassandra
A Deep Dive Into Understanding Apache CassandraDataStax Academy
 
Real data models of silicon valley
Real data models of silicon valleyReal data models of silicon valley
Real data models of silicon valleyPatrick McFadin
 
Beyond the Query: A Cassandra + Solr + Spark Love Triangle Using Datastax Ent...
Beyond the Query: A Cassandra + Solr + Spark Love Triangle Using Datastax Ent...Beyond the Query: A Cassandra + Solr + Spark Love Triangle Using Datastax Ent...
Beyond the Query: A Cassandra + Solr + Spark Love Triangle Using Datastax Ent...DataStax Academy
 
Cassandra nice use cases and worst anti patterns
Cassandra nice use cases and worst anti patternsCassandra nice use cases and worst anti patterns
Cassandra nice use cases and worst anti patternsDuyhai Doan
 
The data model is dead, long live the data model
The data model is dead, long live the data modelThe data model is dead, long live the data model
The data model is dead, long live the data modelPatrick McFadin
 

Mais procurados (20)

Datastax enterprise presentation
Datastax enterprise presentationDatastax enterprise presentation
Datastax enterprise presentation
 
Cassandra 3 new features 2016
Cassandra 3 new features 2016Cassandra 3 new features 2016
Cassandra 3 new features 2016
 
Beyond the Query – Bringing Complex Access Patterns to NoSQL with DataStax - ...
Beyond the Query – Bringing Complex Access Patterns to NoSQL with DataStax - ...Beyond the Query – Bringing Complex Access Patterns to NoSQL with DataStax - ...
Beyond the Query – Bringing Complex Access Patterns to NoSQL with DataStax - ...
 
Spark cassandra integration 2016
Spark cassandra integration 2016Spark cassandra integration 2016
Spark cassandra integration 2016
 
Advanced data modeling with apache cassandra
Advanced data modeling with apache cassandraAdvanced data modeling with apache cassandra
Advanced data modeling with apache cassandra
 
Cassandra and Spark, closing the gap between no sql and analytics codemotio...
Cassandra and Spark, closing the gap between no sql and analytics   codemotio...Cassandra and Spark, closing the gap between no sql and analytics   codemotio...
Cassandra and Spark, closing the gap between no sql and analytics codemotio...
 
Spark cassandra connector.API, Best Practices and Use-Cases
Spark cassandra connector.API, Best Practices and Use-CasesSpark cassandra connector.API, Best Practices and Use-Cases
Spark cassandra connector.API, Best Practices and Use-Cases
 
Storing time series data with Apache Cassandra
Storing time series data with Apache CassandraStoring time series data with Apache Cassandra
Storing time series data with Apache Cassandra
 
Datastax day 2016 : Cassandra data modeling basics
Datastax day 2016 : Cassandra data modeling basicsDatastax day 2016 : Cassandra data modeling basics
Datastax day 2016 : Cassandra data modeling basics
 
Cassandra EU - Data model on fire
Cassandra EU - Data model on fireCassandra EU - Data model on fire
Cassandra EU - Data model on fire
 
A Cassandra + Solr + Spark Love Triangle Using DataStax Enterprise
A Cassandra + Solr + Spark Love Triangle Using DataStax EnterpriseA Cassandra + Solr + Spark Love Triangle Using DataStax Enterprise
A Cassandra + Solr + Spark Love Triangle Using DataStax Enterprise
 
Apache cassandra in 2016
Apache cassandra in 2016Apache cassandra in 2016
Apache cassandra in 2016
 
Spark Cassandra Connector: Past, Present and Furure
Spark Cassandra Connector: Past, Present and FurureSpark Cassandra Connector: Past, Present and Furure
Spark Cassandra Connector: Past, Present and Furure
 
GNW01: In-Memory Processing for Databases
GNW01: In-Memory Processing for DatabasesGNW01: In-Memory Processing for Databases
GNW01: In-Memory Processing for Databases
 
Cassandra Materialized Views
Cassandra Materialized ViewsCassandra Materialized Views
Cassandra Materialized Views
 
A Deep Dive Into Understanding Apache Cassandra
A Deep Dive Into Understanding Apache CassandraA Deep Dive Into Understanding Apache Cassandra
A Deep Dive Into Understanding Apache Cassandra
 
Real data models of silicon valley
Real data models of silicon valleyReal data models of silicon valley
Real data models of silicon valley
 
Beyond the Query: A Cassandra + Solr + Spark Love Triangle Using Datastax Ent...
Beyond the Query: A Cassandra + Solr + Spark Love Triangle Using Datastax Ent...Beyond the Query: A Cassandra + Solr + Spark Love Triangle Using Datastax Ent...
Beyond the Query: A Cassandra + Solr + Spark Love Triangle Using Datastax Ent...
 
Cassandra nice use cases and worst anti patterns
Cassandra nice use cases and worst anti patternsCassandra nice use cases and worst anti patterns
Cassandra nice use cases and worst anti patterns
 
The data model is dead, long live the data model
The data model is dead, long live the data modelThe data model is dead, long live the data model
The data model is dead, long live the data model
 

Semelhante a Big data 101 for beginners devoxxpl

FP Days: Down the Clojure Rabbit Hole
FP Days: Down the Clojure Rabbit HoleFP Days: Down the Clojure Rabbit Hole
FP Days: Down the Clojure Rabbit HoleChristophe Grand
 
Survey of the Microsoft Azure Data Landscape
Survey of the Microsoft Azure Data LandscapeSurvey of the Microsoft Azure Data Landscape
Survey of the Microsoft Azure Data LandscapeIke Ellis
 
Jan 2015 - Cassandra101 Manchester Meetup
Jan 2015 - Cassandra101 Manchester MeetupJan 2015 - Cassandra101 Manchester Meetup
Jan 2015 - Cassandra101 Manchester MeetupChristopher Batey
 
Build a Time Series Application with Apache Spark and Apache HBase
Build a Time Series Application with Apache Spark and Apache  HBaseBuild a Time Series Application with Apache Spark and Apache  HBase
Build a Time Series Application with Apache Spark and Apache HBaseCarol McDonald
 
Cassandra introduction apache con 2014 budapest
Cassandra introduction apache con 2014 budapestCassandra introduction apache con 2014 budapest
Cassandra introduction apache con 2014 budapestDuyhai Doan
 
Cassandra for the ops dos and donts
Cassandra for the ops   dos and dontsCassandra for the ops   dos and donts
Cassandra for the ops dos and dontsDuyhai Doan
 
Select Stars: A DBA's Guide to Azure Cosmos DB (SQL Saturday Oslo 2018)
Select Stars: A DBA's Guide to Azure Cosmos DB (SQL Saturday Oslo 2018)Select Stars: A DBA's Guide to Azure Cosmos DB (SQL Saturday Oslo 2018)
Select Stars: A DBA's Guide to Azure Cosmos DB (SQL Saturday Oslo 2018)Bob Pusateri
 
OracleStore: A Highly Performant RawStore Implementation for Hive Metastore
OracleStore: A Highly Performant RawStore Implementation for Hive MetastoreOracleStore: A Highly Performant RawStore Implementation for Hive Metastore
OracleStore: A Highly Performant RawStore Implementation for Hive MetastoreDataWorks Summit
 
The Highs and Lows of Stateful Containers
The Highs and Lows of Stateful ContainersThe Highs and Lows of Stateful Containers
The Highs and Lows of Stateful ContainersC4Media
 
Building a smarter application stack - service discovery and wiring for Docker
Building a smarter application stack - service discovery and wiring for DockerBuilding a smarter application stack - service discovery and wiring for Docker
Building a smarter application stack - service discovery and wiring for DockerTomas Doran
 
Building a smarter application Stack by Tomas Doran from Yelp
Building a smarter application Stack by Tomas Doran from YelpBuilding a smarter application Stack by Tomas Doran from Yelp
Building a smarter application Stack by Tomas Doran from YelpdotCloud
 
Building a Smarter Application Stack
Building a Smarter Application StackBuilding a Smarter Application Stack
Building a Smarter Application StackDocker, Inc.
 
Bullet: A Real Time Data Query Engine
Bullet: A Real Time Data Query EngineBullet: A Real Time Data Query Engine
Bullet: A Real Time Data Query EngineDataWorks Summit
 
Cassandra drivers and libraries
Cassandra drivers and librariesCassandra drivers and libraries
Cassandra drivers and librariesDuyhai Doan
 
The Data Mullet: From all SQL to No SQL back to Some SQL
The Data Mullet: From all SQL to No SQL back to Some SQLThe Data Mullet: From all SQL to No SQL back to Some SQL
The Data Mullet: From all SQL to No SQL back to Some SQLDatadog
 
Intro to Cassandra
Intro to CassandraIntro to Cassandra
Intro to CassandraJon Haddad
 

Semelhante a Big data 101 for beginners devoxxpl (20)

FP Days: Down the Clojure Rabbit Hole
FP Days: Down the Clojure Rabbit HoleFP Days: Down the Clojure Rabbit Hole
FP Days: Down the Clojure Rabbit Hole
 
Survey of the Microsoft Azure Data Landscape
Survey of the Microsoft Azure Data LandscapeSurvey of the Microsoft Azure Data Landscape
Survey of the Microsoft Azure Data Landscape
 
Jan 2015 - Cassandra101 Manchester Meetup
Jan 2015 - Cassandra101 Manchester MeetupJan 2015 - Cassandra101 Manchester Meetup
Jan 2015 - Cassandra101 Manchester Meetup
 
Database History From Codd to Brewer
Database History From Codd to BrewerDatabase History From Codd to Brewer
Database History From Codd to Brewer
 
Build a Time Series Application with Apache Spark and Apache HBase
Build a Time Series Application with Apache Spark and Apache  HBaseBuild a Time Series Application with Apache Spark and Apache  HBase
Build a Time Series Application with Apache Spark and Apache HBase
 
Cassandra introduction apache con 2014 budapest
Cassandra introduction apache con 2014 budapestCassandra introduction apache con 2014 budapest
Cassandra introduction apache con 2014 budapest
 
Cassandra for the ops dos and donts
Cassandra for the ops   dos and dontsCassandra for the ops   dos and donts
Cassandra for the ops dos and donts
 
Select Stars: A DBA's Guide to Azure Cosmos DB (SQL Saturday Oslo 2018)
Select Stars: A DBA's Guide to Azure Cosmos DB (SQL Saturday Oslo 2018)Select Stars: A DBA's Guide to Azure Cosmos DB (SQL Saturday Oslo 2018)
Select Stars: A DBA's Guide to Azure Cosmos DB (SQL Saturday Oslo 2018)
 
OracleStore: A Highly Performant RawStore Implementation for Hive Metastore
OracleStore: A Highly Performant RawStore Implementation for Hive MetastoreOracleStore: A Highly Performant RawStore Implementation for Hive Metastore
OracleStore: A Highly Performant RawStore Implementation for Hive Metastore
 
The Highs and Lows of Stateful Containers
The Highs and Lows of Stateful ContainersThe Highs and Lows of Stateful Containers
The Highs and Lows of Stateful Containers
 
How to choose a database
How to choose a databaseHow to choose a database
How to choose a database
 
Building a smarter application stack - service discovery and wiring for Docker
Building a smarter application stack - service discovery and wiring for DockerBuilding a smarter application stack - service discovery and wiring for Docker
Building a smarter application stack - service discovery and wiring for Docker
 
Building a smarter application Stack by Tomas Doran from Yelp
Building a smarter application Stack by Tomas Doran from YelpBuilding a smarter application Stack by Tomas Doran from Yelp
Building a smarter application Stack by Tomas Doran from Yelp
 
Building a Smarter Application Stack
Building a Smarter Application StackBuilding a Smarter Application Stack
Building a Smarter Application Stack
 
Bullet: A Real Time Data Query Engine
Bullet: A Real Time Data Query EngineBullet: A Real Time Data Query Engine
Bullet: A Real Time Data Query Engine
 
Cassandra drivers and libraries
Cassandra drivers and librariesCassandra drivers and libraries
Cassandra drivers and libraries
 
Cassandra training
Cassandra trainingCassandra training
Cassandra training
 
The Data Mullet: From all SQL to No SQL back to Some SQL
The Data Mullet: From all SQL to No SQL back to Some SQLThe Data Mullet: From all SQL to No SQL back to Some SQL
The Data Mullet: From all SQL to No SQL back to Some SQL
 
Revision
RevisionRevision
Revision
 
Intro to Cassandra
Intro to CassandraIntro to Cassandra
Intro to Cassandra
 

Mais de Duyhai Doan

Pourquoi Terraform n'est pas le bon outil pour les déploiements automatisés d...
Pourquoi Terraform n'est pas le bon outil pour les déploiements automatisés d...Pourquoi Terraform n'est pas le bon outil pour les déploiements automatisés d...
Pourquoi Terraform n'est pas le bon outil pour les déploiements automatisés d...Duyhai Doan
 
Le futur d'apache cassandra
Le futur d'apache cassandraLe futur d'apache cassandra
Le futur d'apache cassandraDuyhai Doan
 
Spark zeppelin-cassandra at synchrotron
Spark zeppelin-cassandra at synchrotronSpark zeppelin-cassandra at synchrotron
Spark zeppelin-cassandra at synchrotronDuyhai Doan
 
Cassandra 3 new features @ Geecon Krakow 2016
Cassandra 3 new features  @ Geecon Krakow 2016Cassandra 3 new features  @ Geecon Krakow 2016
Cassandra 3 new features @ Geecon Krakow 2016Duyhai Doan
 
Algorithme distribués pour big data saison 2 @DevoxxFR 2016
Algorithme distribués pour big data saison 2 @DevoxxFR 2016Algorithme distribués pour big data saison 2 @DevoxxFR 2016
Algorithme distribués pour big data saison 2 @DevoxxFR 2016Duyhai Doan
 
Apache Zeppelin @DevoxxFR 2016
Apache Zeppelin @DevoxxFR 2016Apache Zeppelin @DevoxxFR 2016
Apache Zeppelin @DevoxxFR 2016Duyhai Doan
 
Apache zeppelin the missing component for the big data ecosystem
Apache zeppelin the missing component for the big data ecosystemApache zeppelin the missing component for the big data ecosystem
Apache zeppelin the missing component for the big data ecosystemDuyhai Doan
 
Cassandra UDF and Materialized Views
Cassandra UDF and Materialized ViewsCassandra UDF and Materialized Views
Cassandra UDF and Materialized ViewsDuyhai Doan
 
Data stax academy
Data stax academyData stax academy
Data stax academyDuyhai Doan
 
Apache zeppelin, the missing component for the big data ecosystem
Apache zeppelin, the missing component for the big data ecosystemApache zeppelin, the missing component for the big data ecosystem
Apache zeppelin, the missing component for the big data ecosystemDuyhai Doan
 
Fast track to getting started with DSE Max @ ING
Fast track to getting started with DSE Max @ INGFast track to getting started with DSE Max @ ING
Fast track to getting started with DSE Max @ INGDuyhai Doan
 
Distributed algorithms for big data @ GeeCon
Distributed algorithms for big data @ GeeConDistributed algorithms for big data @ GeeCon
Distributed algorithms for big data @ GeeConDuyhai Doan
 
Spark cassandra integration, theory and practice
Spark cassandra integration, theory and practiceSpark cassandra integration, theory and practice
Spark cassandra integration, theory and practiceDuyhai Doan
 
Algorithmes distribues pour le big data @ DevoxxFR 2015
Algorithmes distribues pour le big data @ DevoxxFR 2015Algorithmes distribues pour le big data @ DevoxxFR 2015
Algorithmes distribues pour le big data @ DevoxxFR 2015Duyhai Doan
 
Real time data processing with spark & cassandra @ NoSQLMatters 2015 Paris
Real time data processing with spark & cassandra @ NoSQLMatters 2015 ParisReal time data processing with spark & cassandra @ NoSQLMatters 2015 Paris
Real time data processing with spark & cassandra @ NoSQLMatters 2015 ParisDuyhai Doan
 

Mais de Duyhai Doan (15)

Pourquoi Terraform n'est pas le bon outil pour les déploiements automatisés d...
Pourquoi Terraform n'est pas le bon outil pour les déploiements automatisés d...Pourquoi Terraform n'est pas le bon outil pour les déploiements automatisés d...
Pourquoi Terraform n'est pas le bon outil pour les déploiements automatisés d...
 
Le futur d'apache cassandra
Le futur d'apache cassandraLe futur d'apache cassandra
Le futur d'apache cassandra
 
Spark zeppelin-cassandra at synchrotron
Spark zeppelin-cassandra at synchrotronSpark zeppelin-cassandra at synchrotron
Spark zeppelin-cassandra at synchrotron
 
Cassandra 3 new features @ Geecon Krakow 2016
Cassandra 3 new features  @ Geecon Krakow 2016Cassandra 3 new features  @ Geecon Krakow 2016
Cassandra 3 new features @ Geecon Krakow 2016
 
Algorithme distribués pour big data saison 2 @DevoxxFR 2016
Algorithme distribués pour big data saison 2 @DevoxxFR 2016Algorithme distribués pour big data saison 2 @DevoxxFR 2016
Algorithme distribués pour big data saison 2 @DevoxxFR 2016
 
Apache Zeppelin @DevoxxFR 2016
Apache Zeppelin @DevoxxFR 2016Apache Zeppelin @DevoxxFR 2016
Apache Zeppelin @DevoxxFR 2016
 
Apache zeppelin the missing component for the big data ecosystem
Apache zeppelin the missing component for the big data ecosystemApache zeppelin the missing component for the big data ecosystem
Apache zeppelin the missing component for the big data ecosystem
 
Cassandra UDF and Materialized Views
Cassandra UDF and Materialized ViewsCassandra UDF and Materialized Views
Cassandra UDF and Materialized Views
 
Data stax academy
Data stax academyData stax academy
Data stax academy
 
Apache zeppelin, the missing component for the big data ecosystem
Apache zeppelin, the missing component for the big data ecosystemApache zeppelin, the missing component for the big data ecosystem
Apache zeppelin, the missing component for the big data ecosystem
 
Fast track to getting started with DSE Max @ ING
Fast track to getting started with DSE Max @ INGFast track to getting started with DSE Max @ ING
Fast track to getting started with DSE Max @ ING
 
Distributed algorithms for big data @ GeeCon
Distributed algorithms for big data @ GeeConDistributed algorithms for big data @ GeeCon
Distributed algorithms for big data @ GeeCon
 
Spark cassandra integration, theory and practice
Spark cassandra integration, theory and practiceSpark cassandra integration, theory and practice
Spark cassandra integration, theory and practice
 
Algorithmes distribues pour le big data @ DevoxxFR 2015
Algorithmes distribues pour le big data @ DevoxxFR 2015Algorithmes distribues pour le big data @ DevoxxFR 2015
Algorithmes distribues pour le big data @ DevoxxFR 2015
 
Real time data processing with spark & cassandra @ NoSQLMatters 2015 Paris
Real time data processing with spark & cassandra @ NoSQLMatters 2015 ParisReal time data processing with spark & cassandra @ NoSQLMatters 2015 Paris
Real time data processing with spark & cassandra @ NoSQLMatters 2015 Paris
 

Último

Biography Of Angeliki Cooney | Senior Vice President Life Sciences | Albany, ...
Biography Of Angeliki Cooney | Senior Vice President Life Sciences | Albany, ...Biography Of Angeliki Cooney | Senior Vice President Life Sciences | Albany, ...
Biography Of Angeliki Cooney | Senior Vice President Life Sciences | Albany, ...Angeliki Cooney
 
AWS Community Day CPH - Three problems of Terraform
AWS Community Day CPH - Three problems of TerraformAWS Community Day CPH - Three problems of Terraform
AWS Community Day CPH - Three problems of TerraformAndrey Devyatkin
 
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.pdfsudhanshuwaghmare1
 
Exploring Multimodal Embeddings with Milvus
Exploring Multimodal Embeddings with MilvusExploring Multimodal Embeddings with Milvus
Exploring Multimodal Embeddings with MilvusZilliz
 
Introduction to Multilingual Retrieval Augmented Generation (RAG)
Introduction to Multilingual Retrieval Augmented Generation (RAG)Introduction to Multilingual Retrieval Augmented Generation (RAG)
Introduction to Multilingual Retrieval Augmented Generation (RAG)Zilliz
 
CNIC Information System with Pakdata Cf In Pakistan
CNIC Information System with Pakdata Cf In PakistanCNIC Information System with Pakdata Cf In Pakistan
CNIC Information System with Pakdata Cf In Pakistandanishmna97
 
Why Teams call analytics are critical to your entire business
Why Teams call analytics are critical to your entire businessWhy Teams call analytics are critical to your entire business
Why Teams call analytics are critical to your entire businesspanagenda
 
MINDCTI Revenue Release Quarter One 2024
MINDCTI Revenue Release Quarter One 2024MINDCTI Revenue Release Quarter One 2024
MINDCTI Revenue Release Quarter One 2024MIND CTI
 
DEV meet-up UiPath Document Understanding May 7 2024 Amsterdam
DEV meet-up UiPath Document Understanding May 7 2024 AmsterdamDEV meet-up UiPath Document Understanding May 7 2024 Amsterdam
DEV meet-up UiPath Document Understanding May 7 2024 AmsterdamUiPathCommunity
 
TrustArc Webinar - Unlock the Power of AI-Driven Data Discovery
TrustArc Webinar - Unlock the Power of AI-Driven Data DiscoveryTrustArc Webinar - Unlock the Power of AI-Driven Data Discovery
TrustArc Webinar - Unlock the Power of AI-Driven Data DiscoveryTrustArc
 
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 FresherRemote DBA Services
 
Apidays New York 2024 - APIs in 2030: The Risk of Technological Sleepwalk by ...
Apidays New York 2024 - APIs in 2030: The Risk of Technological Sleepwalk by ...Apidays New York 2024 - APIs in 2030: The Risk of Technological Sleepwalk by ...
Apidays New York 2024 - APIs in 2030: The Risk of Technological Sleepwalk by ...apidays
 
Rising Above_ Dubai Floods and the Fortitude of Dubai International Airport.pdf
Rising Above_ Dubai Floods and the Fortitude of Dubai International Airport.pdfRising Above_ Dubai Floods and the Fortitude of Dubai International Airport.pdf
Rising Above_ Dubai Floods and the Fortitude of Dubai International Airport.pdfOrbitshub
 
Apidays New York 2024 - Accelerating FinTech Innovation by Vasa Krishnan, Fin...
Apidays New York 2024 - Accelerating FinTech Innovation by Vasa Krishnan, Fin...Apidays New York 2024 - Accelerating FinTech Innovation by Vasa Krishnan, Fin...
Apidays New York 2024 - Accelerating FinTech Innovation by Vasa Krishnan, Fin...apidays
 
MS Copilot expands with MS Graph connectors
MS Copilot expands with MS Graph connectorsMS Copilot expands with MS Graph connectors
MS Copilot expands with MS Graph connectorsNanddeep Nachan
 
Web Form Automation for Bonterra Impact Management (fka Social Solutions Apri...
Web Form Automation for Bonterra Impact Management (fka Social Solutions Apri...Web Form Automation for Bonterra Impact Management (fka Social Solutions Apri...
Web Form Automation for Bonterra Impact Management (fka Social Solutions Apri...Jeffrey Haguewood
 
Apidays New York 2024 - Passkeys: Developing APIs to enable passwordless auth...
Apidays New York 2024 - Passkeys: Developing APIs to enable passwordless auth...Apidays New York 2024 - Passkeys: Developing APIs to enable passwordless auth...
Apidays New York 2024 - Passkeys: Developing APIs to enable passwordless auth...apidays
 
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, Adobeapidays
 
WSO2's API Vision: Unifying Control, Empowering Developers
WSO2's API Vision: Unifying Control, Empowering DevelopersWSO2's API Vision: Unifying Control, Empowering Developers
WSO2's API Vision: Unifying Control, Empowering DevelopersWSO2
 

Último (20)

Biography Of Angeliki Cooney | Senior Vice President Life Sciences | Albany, ...
Biography Of Angeliki Cooney | Senior Vice President Life Sciences | Albany, ...Biography Of Angeliki Cooney | Senior Vice President Life Sciences | Albany, ...
Biography Of Angeliki Cooney | Senior Vice President Life Sciences | Albany, ...
 
AWS Community Day CPH - Three problems of Terraform
AWS Community Day CPH - Three problems of TerraformAWS Community Day CPH - Three problems of Terraform
AWS Community Day CPH - Three problems of Terraform
 
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
 
Exploring Multimodal Embeddings with Milvus
Exploring Multimodal Embeddings with MilvusExploring Multimodal Embeddings with Milvus
Exploring Multimodal Embeddings with Milvus
 
Understanding the FAA Part 107 License ..
Understanding the FAA Part 107 License ..Understanding the FAA Part 107 License ..
Understanding the FAA Part 107 License ..
 
Introduction to Multilingual Retrieval Augmented Generation (RAG)
Introduction to Multilingual Retrieval Augmented Generation (RAG)Introduction to Multilingual Retrieval Augmented Generation (RAG)
Introduction to Multilingual Retrieval Augmented Generation (RAG)
 
CNIC Information System with Pakdata Cf In Pakistan
CNIC Information System with Pakdata Cf In PakistanCNIC Information System with Pakdata Cf In Pakistan
CNIC Information System with Pakdata Cf In Pakistan
 
Why Teams call analytics are critical to your entire business
Why Teams call analytics are critical to your entire businessWhy Teams call analytics are critical to your entire business
Why Teams call analytics are critical to your entire business
 
MINDCTI Revenue Release Quarter One 2024
MINDCTI Revenue Release Quarter One 2024MINDCTI Revenue Release Quarter One 2024
MINDCTI Revenue Release Quarter One 2024
 
DEV meet-up UiPath Document Understanding May 7 2024 Amsterdam
DEV meet-up UiPath Document Understanding May 7 2024 AmsterdamDEV meet-up UiPath Document Understanding May 7 2024 Amsterdam
DEV meet-up UiPath Document Understanding May 7 2024 Amsterdam
 
TrustArc Webinar - Unlock the Power of AI-Driven Data Discovery
TrustArc Webinar - Unlock the Power of AI-Driven Data DiscoveryTrustArc Webinar - Unlock the Power of AI-Driven Data Discovery
TrustArc Webinar - Unlock the Power of AI-Driven Data Discovery
 
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 - APIs in 2030: The Risk of Technological Sleepwalk by ...
Apidays New York 2024 - APIs in 2030: The Risk of Technological Sleepwalk by ...Apidays New York 2024 - APIs in 2030: The Risk of Technological Sleepwalk by ...
Apidays New York 2024 - APIs in 2030: The Risk of Technological Sleepwalk by ...
 
Rising Above_ Dubai Floods and the Fortitude of Dubai International Airport.pdf
Rising Above_ Dubai Floods and the Fortitude of Dubai International Airport.pdfRising Above_ Dubai Floods and the Fortitude of Dubai International Airport.pdf
Rising Above_ Dubai Floods and the Fortitude of Dubai International Airport.pdf
 
Apidays New York 2024 - Accelerating FinTech Innovation by Vasa Krishnan, Fin...
Apidays New York 2024 - Accelerating FinTech Innovation by Vasa Krishnan, Fin...Apidays New York 2024 - Accelerating FinTech Innovation by Vasa Krishnan, Fin...
Apidays New York 2024 - Accelerating FinTech Innovation by Vasa Krishnan, Fin...
 
MS Copilot expands with MS Graph connectors
MS Copilot expands with MS Graph connectorsMS Copilot expands with MS Graph connectors
MS Copilot expands with MS Graph connectors
 
Web Form Automation for Bonterra Impact Management (fka Social Solutions Apri...
Web Form Automation for Bonterra Impact Management (fka Social Solutions Apri...Web Form Automation for Bonterra Impact Management (fka Social Solutions Apri...
Web Form Automation for Bonterra Impact Management (fka Social Solutions Apri...
 
Apidays New York 2024 - Passkeys: Developing APIs to enable passwordless auth...
Apidays New York 2024 - Passkeys: Developing APIs to enable passwordless auth...Apidays New York 2024 - Passkeys: Developing APIs to enable passwordless auth...
Apidays New York 2024 - Passkeys: Developing APIs to enable passwordless auth...
 
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
 
WSO2's API Vision: Unifying Control, Empowering Developers
WSO2's API Vision: Unifying Control, Empowering DevelopersWSO2's API Vision: Unifying Control, Empowering Developers
WSO2's API Vision: Unifying Control, Empowering Developers
 

Big data 101 for beginners devoxxpl