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Big Data at DYNO
Tu Pham - IO extended 2017
CTO	@		DYNO		
Data		As		A		Service	
Technologies:	Java,	Python,	all	kind	of	databases	and	
Cloud	platform	from	Google,	Aws,	Azure.	
Interests:	Cloud	computing,	machine	learning,	
system	architecture,	technology	evolution,	
distributed	systems.	
Husband,	Father,	GDE,	Open	source	contributor
Tu Pham
foto: Lars Kruse, Aarhus Universitet
2
Current	system	
>	10	000	users		
- 4	countries:	US,	UK,	VN,	
Singapore	
- 700M	user	profiles	
- 800M	new	raw	data	daily	(90	
GB)	
- Hundred	of	jobs	daily
Images by ConnieZhou
Let’s	compare:	10	TB	
- 45,813,058.125	book	(200	
pages	of	240,000	characters)		
- 	2,621,440	MP3	files	(with	
4MB	average	file	size)	
- 3,495,250	MP3	files	(with	
3MB	average	file	size)
Images by ConnieZhou
From	 2014,	 we	 bring	 success	 	 to	
t h o u s a n d	 o n l i n e	 m a r k e t i n g	
campaigns	 based	 on	 our	 big	 data	
system.
DYNO
DYNO	pocesses	ability	to	build,	
organize,	and		operate	a	Big	Data	
system	with	an	efficiency	and	speed	
then	apply	Machine	Learning	
algorithms	to	make	magic	happen.	
These	are	our	advantages:	unique	technology,	
talents,	company	culture,	growth	hack,	
extreme	product	focus.
Yes,	We	Can	Power	that
User	Identify Social	User	Modeling Social	CRM
Advertising	Network Big	Data	System Data	Mining
Our	Clients
Organize	the	world’s		
information	and	make	it		
universally	accessible	and	
useful.	
Our mission is aligned with Google’s mission
With Sundar Pichai - CEO of Google
2
Source: Boston Consulting Group:
The Mobile Revolution: How Mobile Technologies Drive a Trillion-DollarImpact
IDC,2015
By	2020,		there	will	be		8		Billion		connected	smart	phones	
2X	more	than				today.
And 32 Billion connected “IOT”devices
6X more than today.
Google’s Data Services for everyone
A common configuration: draw	conclusions
CloudDatalab
Events,	metrics,		
etc.	
Stream	
Visualization and BI
Raw	logs,	files,		
assets,	Google	
Analytics	data	etc.	 Co-workers
Batch	
Batch	
B C Applications and
A Reports
Confidential +Proprietary
A	serverless big	data	stack	that	
scales	automatically
10+	Years	of	Tackling	Big	Data																			Problems
Google CloudPlatform 13
Google
Papers
20082002 2004 2006 2010 2012 2014 2015
GFS
Map
Reduce
Flume
Java
Millwheel
Open
Source
2005
Google
Cloud
Products BigQuery Pub/Sub Dataflow Bigtable
BigTable Dremel PubSub
Apache
Beam
Tensorflow
Cloud	Dataflow
Cloud	Platform
Dataflow is a unified programming model and a  managed service  for
developing and executing a wide range of data processing patterns
including ETL, batch computation, and continuous computation.
Cloud	Dataprep
Cloud	Platform
Dataprep is an intelligent data service for visually exploring, cleaning,
and preparing structured and unstructured data for analysis. Cloud
Dataprep is serverless and works at any scale.
Cloud	Dataproc
Cloud	Platform
Use Google Cloud Dataproc, an Apache Hadoop, Apache Spark, Apache
Pig, and Apache Hive service, to easily process big datasets at low cost.
Control your costs by quickly creating managed clusters of any size and
turning them off when you're done.
Building what’s next 33
Scales automatically
No setup or administration
Stream up to 100,000 rows/sec
Easily integrates with third-partysoftware
Google BigQuery
makes	complex	data	analysis	simple
Confidential +
Proprietary
Google	BigQuery	Performance	Example	?
Running an inefficient	regular expression over 100 billion rowsin
less than 60 seconds
Source: https://cloud.google.com/blog/big-data/2016/01/anatomy-of-a-bigquery-
query
Google	BigQuery
The	Power	of	Google	Dremel	for	everyone
Storage Compute
Fast Ingest
Query
Terabit Network
Flow	step	1:	Stream	hundred	of	million	event	to	Cloud	Storage
Flow	step	2:	Aggregate	2B	user	engagement	action	with	Data	Proc
> val df = spark.read.parquet("/log/2017/07/user_engagement/1.snappy.parquet")
df: org.apache.spark.sql.DataFrame = [id: string, categoryId: string ... 5 more fields]







Flow	step	2:	Aggregate	2B	user	engagement	action	with	Data	Proc
Flow	step	2:	Aggregate	2B	user	engagement	action	with	Data	Proc
> df.show()
+----------------------------+---------------------------+------------------------------+-----------------------------+---------+---------+------------------+
| id | categoryId | topicId | userId | action | value | created |
+----------------------------+---------------------------+------------------------------+-----------------------------+---------+---------+------------------+
|"100011125479181_..|"253397751448382"|"253397751448382_...| "100011125479181 "|"view"| "" |1490621079|
|"100004354358107_..|"253397751448382"|"253397751448382_...| "100004354358107"|"view"| "" |1490491531|
|"100014752680147_..|"253397751448382"|"253397751448382_...| "100014752680147"|"view"| "" |1490457109|
|"5c0cba20-654b-11...|"253397751448382"|"253397751448382_...|"1265404853580995...| "love"| "" |1490457109|
|"5c0cba21-654b-11...|"253397751448382"|"253397751448382_...|"1265404853580995...| "love"| "" |1490457109|
|"5c3c7cb0-654b-11...|"253397751448382"|"253397751448382_...|"1264382007016613...| "love"| "" |1490457109|
|"5c3c7cb1-654b-11...|"253397751448382"|"253397751448382_...|"1264382007016613...| "love"| "" |1490457109|
|"5c3c7cb2-654b-11...|"253397751448382"|"253397751448382_...|"1264382007016613...| "love"| "" |1490457109|
|"5c3c7cb3-654b-11...|"253397751448382"|"253397751448382_...|"1264382007016613...| "love"| "" |1490457109|
|"5c3c7cb4-654b-11...|"253397751448382"|"253397751448382_...|"1264382007016613...| "love"| "" |1490457109|
|"5c3c7cb5-654b-11...|"253397751448382"|"253397751448382_...|"1264382007016613...| "love"| "" |1490457109|
|"5c3c7cb6-654b-11...|"253397751448382"|"253397751448382_...|"1264382007016613...| "love"| "" |1490457109|
|"5c3c7cb7-654b-11...|"253397751448382"|"253397751448382_...|"1264382007016613...| "love"| "" |1490457109|
|"5c3c7cb8-654b-11...|"253397751448382"|"253397751448382_...|"1264382007016613...| "love"| "" |1490457109|
|"5c3c7cb9-654b-11...|"253397751448382"|"253397751448382_...|"1264382007016613...| "love"| "" |1490457109|
|"5c3c7cba-654b-11...|"253397751448382"|"253397751448382_...|"1264382007016613...| "love"| "" |1490457109|
|"5c3c7cbb-654b-11...|"253397751448382"|"253397751448382_...|"1264382007016613...| "love"| "" |1490457109|
|"5c3c7cbc-654b-11...|"253397751448382"|"253397751448382_...|"1264382007016613...| "love"| "" |1490457109|
|"5c3c7cbd-654b-11...|"253397751448382"|"253397751448382_...|"1264382007016613...| "love"| "" |1490457109|
|"5c3c7cbe-654b-11...|"253397751448382"|"253397751448382_...|"1264382007016613...| "love"| "" |1490457109|
Flow	step	2:	Aggregate	2B	user	engagement	action	with	Data	Proc
> val df_group_count = df.groupBy("userId","categoryId", "action").count().show()
+--------------------------+---------------------------+----------+----------+
| userId | categoryId | action | count |
+--------------------------+---------------------------+----------+----------+
|"100011896037126"|"253397751448382"|"love" | 2 |
|"100010391178709"|"253397751448382"|"love" | 1 |
|"100011186707422"|"253397751448382"|"love" | 1 |
|"100012202096674"|"253397751448382"|"love" | 1 |
|"100006411671757"|"253397751448382"|"love" | 1 |
|"100013620943281"|"253397751448382"|"love" | 1 |
|"100009214460050"|"253397751448382"|"love" | 1 |
|"100005333179465"|"253397751448382"|"love" | 1 |
|"100005035988496"|"253397751448382"|"love" | 1 |
|"100013770611991"|"253397751448382"|"love" | 2 |
|"100005162145247"|"253397751448382"|"love" | 1 |
|"100011338607899"|"253397751448382"|"love" | 1 |
|"100014561310840"|"253397751448382"|"love" | 1 |
|"100013095813707"|"253397751448382"|"love" | 1 |
|"100005734717764"|"253397751448382"|"love" | 1 |
|"100007839645885"|"253397751448382"|"love" | 1 |
|"100006016514971"|"253397751448382"|"love" | 1 |
|"100004108243097"|"253397751448382"|"love" | 2 |
|"100008185535342"|"253397751448382"|"love" | 1 |
Flow	step	2:	Aggregate	2B	user	engagement	action	with	Data	Proc
>	df_group_count.coalesce(1).write.parquet("/log/2017/07/user_engagement/stat/
avg_engagement_per_user_by_category_id")	
BOOM!	We	have	the	result!
Flow	step	3:	Data	enrich	flow
Flow	step	4:	Data	visualization	–	Number	of	unique	user	per	topic
Flow	step	4:	Data	visualization	–	AVG	User	engagement	per	topic
Challenges	at	DYNO	-	Advertising	Network
- Thing we have to do
+ Deliver right ad at right time for right people
+ Mining user information to help brands understand
their audience
+ Build flexible ad targeting infrastructure
+ Analyze user behavior to improve ad relevancy at real
time
Challenges	at	DYNO	-	User	Profiling
- The truth:
+ 65 social network all around the world
+ 2B monthly active user from Facebook (300 PB data
warehouse)
+ Unlimited data still offline
- The problem:
+ How you know N account from Facebook, Google,
Twitter, Linkedin, StackOverFlow, Github, … belong to
one person or not ?
Challenges	at	DYNO	-	Image	Processing
- The problem
+ Detect board sets of objects (House, Car, Motorbike)
+ Find topical entities (Logo, Celebrity, New Event)
+ Face detection
We are hiring - Data Mining
Responsibilities
- Designing, mining, testing machine learning algorithms for
delivering valued information from DYNO data warehouse.
Requirements
- BS/MS degree in Computer Science, Engineering or a
related subject
- Knowledge of Relational Databases, SQL or NOSQL
- Familiar with basic machine learning algorithms
- (Plus) Familiar with big data system (Volume, variety and
velocity)
We are hiring - Back End
Responsibilities
- Designing and developing high-volume, low-latency applications
for mission-critical systems and delivering high-availability and
performance
- Contributing in all phases of the development lifecycle
- Writing well designed, testable, efficient code
Requirements
- BS/MS degree in Computer Science, Engineering or a related
subject
- Language: Java, Python
- Knowledge of Relational Databases, SQL or NOSQL
- (Plus) Familiar with big data system (Volume, variety and velocity)
Big	Data	Challenges	At	DYNO	-	Image	Extraction
- Thing we have to do
+ Deliver right ad at right time for right people
+ Mining user information to help brands understand
their audience
+ Build flexible ad targeting infrastructure
+ Analyze user behavior to improve ad relevancy at real
time
JOIN THE FLIGHT
IO Extended 2017
Facebook: fb/pham.phuong.tu
Twitter: @phamptu
Email: tu@dyno.vn

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