CloudCamp Chicago - Big Data & Cloud May 2015 - All Slides
-
Upload
cloudcamp-chicago -
Category
Technology
-
view
248 -
download
1
Transcript of CloudCamp Chicago - Big Data & Cloud May 2015 - All Slides
![Page 1: CloudCamp Chicago - Big Data & Cloud May 2015 - All Slides](https://reader034.fdocuments.us/reader034/viewer/2022042522/55b563c5bb61eb5d0d8b45d3/html5/thumbnails/1.jpg)
CloudCamp Chicago
“Big Data and Cloud”
#cloudcamp@CloudCamp_CHI
Sponsored by
Hosted by
![Page 2: CloudCamp Chicago - Big Data & Cloud May 2015 - All Slides](https://reader034.fdocuments.us/reader034/viewer/2022042522/55b563c5bb61eb5d0d8b45d3/html5/thumbnails/2.jpg)
Emcee
Margaret WalkerCohesive Networks
Tweet: @CloudCamp_Chi #cloudcamp
#cloudcamp@CloudCamp_CHI
Sponsored by
Hosted by
![Page 3: CloudCamp Chicago - Big Data & Cloud May 2015 - All Slides](https://reader034.fdocuments.us/reader034/viewer/2022042522/55b563c5bb61eb5d0d8b45d3/html5/thumbnails/3.jpg)
… sponsored by you!
William Knowles - Evident.ioAdam Kallish - IBMCraig Hancock - HealthEngineBrandon Pittman - VMwareChuck Mackie - Maven Wave PartnersBrad Foster - Maven Wave PartnersKim Neuwirth - Narrative SciencePiaOpulencia - Narrative ScienceJimStiller - Cloud Technology Partners NetworksBrian Lickenbrock - EY
![Page 4: CloudCamp Chicago - Big Data & Cloud May 2015 - All Slides](https://reader034.fdocuments.us/reader034/viewer/2022042522/55b563c5bb61eb5d0d8b45d3/html5/thumbnails/4.jpg)
6:00 pm Introductions6:05 pm: Lightning Talks
"Big Data without Big Infrastructure" - Dan Chuparkoff, VP of Product at Civis Analytics @Chuparkoff "Simplicity, Storytelling and Big Data" - Craig Booth, Data Engineer at Narrative Science @craigmbooth "Spark: A Quick Ignition" - Matthew Kemp, Team Lead & Engineer of Things at Signal @mattkemp"Building warehousing systems on Redshift" - Tristan Crockett, Software Engineer at Edgeflip @thcrock
7:00 pm: Unpanel 7:45 pm: Unconference / Networking, drinks and pizza
Agenda
#cloudcamp@CloudCamp_CHI
Sponsored by
Hosted by
![Page 5: CloudCamp Chicago - Big Data & Cloud May 2015 - All Slides](https://reader034.fdocuments.us/reader034/viewer/2022042522/55b563c5bb61eb5d0d8b45d3/html5/thumbnails/5.jpg)
"Big Data without Big Infrastructure"
Dan ChuparkoffVP of Product at Civis Analytics
Tweet: @Chuparkoff#cloudcamp
#cloudcamp@CloudCamp_CHI
Sponsored by
Hosted by
![Page 6: CloudCamp Chicago - Big Data & Cloud May 2015 - All Slides](https://reader034.fdocuments.us/reader034/viewer/2022042522/55b563c5bb61eb5d0d8b45d3/html5/thumbnails/6.jpg)
@chuparkoff
BIG Data without
BIG Infrastructure
Dan Chuparkoff
VP of Product
Civis Analytics
![Page 7: CloudCamp Chicago - Big Data & Cloud May 2015 - All Slides](https://reader034.fdocuments.us/reader034/viewer/2022042522/55b563c5bb61eb5d0d8b45d3/html5/thumbnails/7.jpg)
@chuparkoff Big Data without Big Infrastructure
Civis is an easy-to-use, incredibly extensible data science platform in the cloud for teams who want to make great data-driven decisions to drive their organizations forward.
I work at Civis
![Page 8: CloudCamp Chicago - Big Data & Cloud May 2015 - All Slides](https://reader034.fdocuments.us/reader034/viewer/2022042522/55b563c5bb61eb5d0d8b45d3/html5/thumbnails/8.jpg)
Big Data without Big Infrastructure@chuparkoff
“The ability to use the data that you’ve built up in the past
to inform & improve what you’re going to do in the future.”
Big Data at Civis Analytics
![Page 9: CloudCamp Chicago - Big Data & Cloud May 2015 - All Slides](https://reader034.fdocuments.us/reader034/viewer/2022042522/55b563c5bb61eb5d0d8b45d3/html5/thumbnails/9.jpg)
@chuparkoff Big Data without Big Infrastructure
Data science is too damn hard
have a report every day that says what happened yesterday?
apply predictive modeling to improve my customer retention?
to use data from my past to improve acquisition in the future?
Why can’t I…
?
?
?
![Page 10: CloudCamp Chicago - Big Data & Cloud May 2015 - All Slides](https://reader034.fdocuments.us/reader034/viewer/2022042522/55b563c5bb61eb5d0d8b45d3/html5/thumbnails/10.jpg)
@chuparkoff Big Data without Big Infrastructure
Everyone’s story • Aggregate
• Unify• Explore• Optimize• Share• Automate
![Page 11: CloudCamp Chicago - Big Data & Cloud May 2015 - All Slides](https://reader034.fdocuments.us/reader034/viewer/2022042522/55b563c5bb61eb5d0d8b45d3/html5/thumbnails/11.jpg)
Big Data without Big Infrastructure@chuparkoff
Where should we start?
Cloud OnPrem
vs.
![Page 12: CloudCamp Chicago - Big Data & Cloud May 2015 - All Slides](https://reader034.fdocuments.us/reader034/viewer/2022042522/55b563c5bb61eb5d0d8b45d3/html5/thumbnails/12.jpg)
@chuparkoff Big Data without Big Infrastructure
Civis Analytics uses AWS
![Page 13: CloudCamp Chicago - Big Data & Cloud May 2015 - All Slides](https://reader034.fdocuments.us/reader034/viewer/2022042522/55b563c5bb61eb5d0d8b45d3/html5/thumbnails/13.jpg)
@chuparkoff Big Data without Big Infrastructure
• No hardware costs and infinitely scalable
• Safety and security of AWS
• Automatic backups to multiple data centers
• Access from any computer with an internet connection
![Page 14: CloudCamp Chicago - Big Data & Cloud May 2015 - All Slides](https://reader034.fdocuments.us/reader034/viewer/2022042522/55b563c5bb61eb5d0d8b45d3/html5/thumbnails/14.jpg)
@chuparkoff Big Data without Big Infrastructure
Redshift S3 EC2 DynamoDB RDS EMR
![Page 15: CloudCamp Chicago - Big Data & Cloud May 2015 - All Slides](https://reader034.fdocuments.us/reader034/viewer/2022042522/55b563c5bb61eb5d0d8b45d3/html5/thumbnails/15.jpg)
@chuparkoff Big Data without Big Infrastructure
![Page 16: CloudCamp Chicago - Big Data & Cloud May 2015 - All Slides](https://reader034.fdocuments.us/reader034/viewer/2022042522/55b563c5bb61eb5d0d8b45d3/html5/thumbnails/16.jpg)
@chuparkoff Big Data without Big Infrastructure
![Page 17: CloudCamp Chicago - Big Data & Cloud May 2015 - All Slides](https://reader034.fdocuments.us/reader034/viewer/2022042522/55b563c5bb61eb5d0d8b45d3/html5/thumbnails/17.jpg)
@chuparkoff Big Data without Big Infrastructure
![Page 18: CloudCamp Chicago - Big Data & Cloud May 2015 - All Slides](https://reader034.fdocuments.us/reader034/viewer/2022042522/55b563c5bb61eb5d0d8b45d3/html5/thumbnails/18.jpg)
@chuparkoff Big Data without Big Infrastructure
Civis data streams aggregate data from virtually any source.
Get all pf your data together in one place.
Aggregate
From data to activation
![Page 19: CloudCamp Chicago - Big Data & Cloud May 2015 - All Slides](https://reader034.fdocuments.us/reader034/viewer/2022042522/55b563c5bb61eb5d0d8b45d3/html5/thumbnails/19.jpg)
@chuparkoff Big Data without Big Infrastructure
Next, Civis’ intelligent matching algorithmslink data in disparate data stores. No matter where your data starts, Civis helps you build a unified data repository.
Unify
From data to activation
![Page 20: CloudCamp Chicago - Big Data & Cloud May 2015 - All Slides](https://reader034.fdocuments.us/reader034/viewer/2022042522/55b563c5bb61eb5d0d8b45d3/html5/thumbnails/20.jpg)
@chuparkoff Big Data without Big Infrastructure
Explore and transform the data in a fast analytics database.
Explore
From data to activation
![Page 21: CloudCamp Chicago - Big Data & Cloud May 2015 - All Slides](https://reader034.fdocuments.us/reader034/viewer/2022042522/55b563c5bb61eb5d0d8b45d3/html5/thumbnails/21.jpg)
@chuparkoff Big Data without Big Infrastructure
Build powerful predictive models and easily score results with the Civis platform’s advanced modeling engine. This is the heart of data-driven decision making!
Optimize
From data to activation
![Page 22: CloudCamp Chicago - Big Data & Cloud May 2015 - All Slides](https://reader034.fdocuments.us/reader034/viewer/2022042522/55b563c5bb61eb5d0d8b45d3/html5/thumbnails/22.jpg)
@chuparkoff Big Data without Big Infrastructure
Create, automate, & share reports across your team.Empower your entire organization to move forward with precision.
Share
From data to activation
![Page 23: CloudCamp Chicago - Big Data & Cloud May 2015 - All Slides](https://reader034.fdocuments.us/reader034/viewer/2022042522/55b563c5bb61eb5d0d8b45d3/html5/thumbnails/23.jpg)
@chuparkoff Big Data without Big Infrastructure
When tomorrow comesthere’s no need to reinvent the wheel. Civis let’s you automate and schedule from start to finish, so you can get back to pushing boundaries.
Automate
From data to activation
![Page 24: CloudCamp Chicago - Big Data & Cloud May 2015 - All Slides](https://reader034.fdocuments.us/reader034/viewer/2022042522/55b563c5bb61eb5d0d8b45d3/html5/thumbnails/24.jpg)
@chuparkoff Big Data without Big Infrastructure
Big Data + the Cloud + AWS helps Civis Analytics turn
an analyst into a data scientist & a data scientist
into a team of data scientists.
Thanks!
![Page 25: CloudCamp Chicago - Big Data & Cloud May 2015 - All Slides](https://reader034.fdocuments.us/reader034/viewer/2022042522/55b563c5bb61eb5d0d8b45d3/html5/thumbnails/25.jpg)
"Simplicity, Storytelling and Big Data"
Craig BoothData Engineer at Narrative Science
Tweet: @craigmbooth #cloudcamp
#cloudcamp@CloudCamp_CHI
Sponsored by
Hosted by
![Page 26: CloudCamp Chicago - Big Data & Cloud May 2015 - All Slides](https://reader034.fdocuments.us/reader034/viewer/2022042522/55b563c5bb61eb5d0d8b45d3/html5/thumbnails/26.jpg)
Simplicity, Storytelling & Big Data
Craig Booth
What I Wish I Knew About Big Data On Day One.
![Page 27: CloudCamp Chicago - Big Data & Cloud May 2015 - All Slides](https://reader034.fdocuments.us/reader034/viewer/2022042522/55b563c5bb61eb5d0d8b45d3/html5/thumbnails/27.jpg)
My Backgrounddata driven science
30+ journal articles; complex analytics on 10s of TB of data
data powered storytelling
![Page 28: CloudCamp Chicago - Big Data & Cloud May 2015 - All Slides](https://reader034.fdocuments.us/reader034/viewer/2022042522/55b563c5bb61eb5d0d8b45d3/html5/thumbnails/28.jpg)
![Page 29: CloudCamp Chicago - Big Data & Cloud May 2015 - All Slides](https://reader034.fdocuments.us/reader034/viewer/2022042522/55b563c5bb61eb5d0d8b45d3/html5/thumbnails/29.jpg)
lumière léger
![Page 30: CloudCamp Chicago - Big Data & Cloud May 2015 - All Slides](https://reader034.fdocuments.us/reader034/viewer/2022042522/55b563c5bb61eb5d0d8b45d3/html5/thumbnails/30.jpg)
![Page 31: CloudCamp Chicago - Big Data & Cloud May 2015 - All Slides](https://reader034.fdocuments.us/reader034/viewer/2022042522/55b563c5bb61eb5d0d8b45d3/html5/thumbnails/31.jpg)
![Page 32: CloudCamp Chicago - Big Data & Cloud May 2015 - All Slides](https://reader034.fdocuments.us/reader034/viewer/2022042522/55b563c5bb61eb5d0d8b45d3/html5/thumbnails/32.jpg)
Credit: Josh Bloom Henrik Brink of wise.io
![Page 33: CloudCamp Chicago - Big Data & Cloud May 2015 - All Slides](https://reader034.fdocuments.us/reader034/viewer/2022042522/55b563c5bb61eb5d0d8b45d3/html5/thumbnails/33.jpg)
“…more than 2000 hours of work in order to come up with the final combination of 107 algorithms that gave them this prize”
Xavier Amatriain and Justin Basilico, Netflix
![Page 34: CloudCamp Chicago - Big Data & Cloud May 2015 - All Slides](https://reader034.fdocuments.us/reader034/viewer/2022042522/55b563c5bb61eb5d0d8b45d3/html5/thumbnails/34.jpg)
“We evaluated some of the new methods offline but the additional accuracy gains that we measured did not seem to justify the engineering effort needed to bring them into a production environment.”
Xavier Amatriain and Justin Basilico, Netflix
Expla
inabil
ity
Imple
mentab
ility
Accur
acy
Can I c
ommun
icate
resu
lts?
How lo
ng w
ill it
take m
e to
build
?Can
I tole
rate
some e
rrors?
![Page 35: CloudCamp Chicago - Big Data & Cloud May 2015 - All Slides](https://reader034.fdocuments.us/reader034/viewer/2022042522/55b563c5bb61eb5d0d8b45d3/html5/thumbnails/35.jpg)
"Spark: A Quick Ignition"
Matthew KempTeam Lead & Engineer of Things at Signal
Tweet: @mattkemp #cloudcamp
#cloudcamp@CloudCamp_CHI
Sponsored by
Hosted by
![Page 36: CloudCamp Chicago - Big Data & Cloud May 2015 - All Slides](https://reader034.fdocuments.us/reader034/viewer/2022042522/55b563c5bb61eb5d0d8b45d3/html5/thumbnails/36.jpg)
Spark: A Quick IgnitionMatthew Kemp
![Page 37: CloudCamp Chicago - Big Data & Cloud May 2015 - All Slides](https://reader034.fdocuments.us/reader034/viewer/2022042522/55b563c5bb61eb5d0d8b45d3/html5/thumbnails/37.jpg)
Provides distributed processing
Main unit of abstraction is the RDD
Can be used with frameworks like Mesos or Yarn
Supports Java, Python and Scala
https://spark.apache.org/
What is Spark?
![Page 38: CloudCamp Chicago - Big Data & Cloud May 2015 - All Slides](https://reader034.fdocuments.us/reader034/viewer/2022042522/55b563c5bb61eb5d0d8b45d3/html5/thumbnails/38.jpg)
Can be created from… Files or HDFS In memory iterable Cassandra or SQL tables
Transformations Lazily create a new RDD from an existing one
Actions Usually return a value, force computation of RDD
Resilient Distributed Dataset
![Page 39: CloudCamp Chicago - Big Data & Cloud May 2015 - All Slides](https://reader034.fdocuments.us/reader034/viewer/2022042522/55b563c5bb61eb5d0d8b45d3/html5/thumbnails/39.jpg)
Some examples: filter map flatMap distinct union intersection join reduceByKey
Transformations
![Page 40: CloudCamp Chicago - Big Data & Cloud May 2015 - All Slides](https://reader034.fdocuments.us/reader034/viewer/2022042522/55b563c5bb61eb5d0d8b45d3/html5/thumbnails/40.jpg)
Some examples: reduce collect take count foreach saveAsTextFile
Actions
![Page 41: CloudCamp Chicago - Big Data & Cloud May 2015 - All Slides](https://reader034.fdocuments.us/reader034/viewer/2022042522/55b563c5bb61eb5d0d8b45d3/html5/thumbnails/41.jpg)
Sample Text
Spark Example
Spark Shell
Shell Example
Gists
![Page 42: CloudCamp Chicago - Big Data & Cloud May 2015 - All Slides](https://reader034.fdocuments.us/reader034/viewer/2022042522/55b563c5bb61eb5d0d8b45d3/html5/thumbnails/42.jpg)
Example: Word Count
flatMap()inputreduceBy
Key() map() outputmap()
![Page 43: CloudCamp Chicago - Big Data & Cloud May 2015 - All Slides](https://reader034.fdocuments.us/reader034/viewer/2022042522/55b563c5bb61eb5d0d8b45d3/html5/thumbnails/43.jpg)
#!/bin/pythonregex = re.compile('[%s]' % re.escape(string.punctuation))def word_count(sc, in_file_name, out_file_name): sc.textFile(in_file_name) \ .map(lambda line: regex.sub(' ', line).strip().lower()) \ .flatMap(lambda line: [ (word, 1) for word in line.split() ]) \ .reduceByKey(lambda a, b: a + b) \ .map(lambda (word, count): '%s,%s' % (word, count)) \ .saveAsTextFile(out_file_name)
Example: Word Count
![Page 44: CloudCamp Chicago - Big Data & Cloud May 2015 - All Slides](https://reader034.fdocuments.us/reader034/viewer/2022042522/55b563c5bb61eb5d0d8b45d3/html5/thumbnails/44.jpg)
#!/bin/pythonregex = re.compile('[%s]' % re.escape(string.punctuation))def word_count(sc, in_file_name, out_file_name): sc.textFile(in_file_name) \ .map(lambda line: regex.sub(' ', line)) \ .map(lambda line: line.strip()) \ .map(lambda line: line.lower()) \ .flatMap(lambda line: line.split()) \ .map(lambda word: (word, 1)) \ .reduceByKey(lambda a, b: a + b) \ .map(lambda (word, count): '%s,%s' % (word, count)) \ .saveAsTextFile(out_file_name)
Example: Alternate Word Count
![Page 45: CloudCamp Chicago - Big Data & Cloud May 2015 - All Slides](https://reader034.fdocuments.us/reader034/viewer/2022042522/55b563c5bb61eb5d0d8b45d3/html5/thumbnails/45.jpg)
$ pyspark...Using Python version 2.7.2 (default)SparkContext available as sc.>>> from word_count import word_count>>> word_count(sc, 'text.txt', 'text_counts')
Running the Example
![Page 46: CloudCamp Chicago - Big Data & Cloud May 2015 - All Slides](https://reader034.fdocuments.us/reader034/viewer/2022042522/55b563c5bb61eb5d0d8b45d3/html5/thumbnails/46.jpg)
a,23able,1about,6above,1accept,1accuse,1ago,2alarm,2all,7although,1always,2an,1
The Results From Sparkand,26anger,1another,1any,2anyone,1arches,1are,1arm,1armour,1as,7assistant,2...
![Page 47: CloudCamp Chicago - Big Data & Cloud May 2015 - All Slides](https://reader034.fdocuments.us/reader034/viewer/2022042522/55b563c5bb61eb5d0d8b45d3/html5/thumbnails/47.jpg)
#!/bin/bashtext=$(cat ${1} | tr "[:punct:]" " " | \ tr "[:upper:]" "[:lower:]")parsed=(${text})for w in ${parsed[@]}; do echo ${w}; done | sort | uniq -c
A (Bad) Shell Version
![Page 48: CloudCamp Chicago - Big Data & Cloud May 2015 - All Slides](https://reader034.fdocuments.us/reader034/viewer/2022042522/55b563c5bb61eb5d0d8b45d3/html5/thumbnails/48.jpg)
23 a 1 able 6 about 1 above 1 accept 1 accuse 2 ago 2 alarm 7 all 1 although 2 always 1 an
The Results From the Shell 26 and 1 anger 1 another 2 any 1 anyone 1 arches 1 are 1 arm 1 armour 7 as 2 assistant ...
![Page 49: CloudCamp Chicago - Big Data & Cloud May 2015 - All Slides](https://reader034.fdocuments.us/reader034/viewer/2022042522/55b563c5bb61eb5d0d8b45d3/html5/thumbnails/49.jpg)
Our Use Case
distinct()3rd party
3rd partydistinct()
join()
join()
union() distinct() foreach()1st party
![Page 50: CloudCamp Chicago - Big Data & Cloud May 2015 - All Slides](https://reader034.fdocuments.us/reader034/viewer/2022042522/55b563c5bb61eb5d0d8b45d3/html5/thumbnails/50.jpg)
Questions?
![Page 52: CloudCamp Chicago - Big Data & Cloud May 2015 - All Slides](https://reader034.fdocuments.us/reader034/viewer/2022042522/55b563c5bb61eb5d0d8b45d3/html5/thumbnails/52.jpg)
"Building warehousing systems on Redshift"
Tristan CrockettSoftware Engineer at Edgeflip
Tweet: @thcrock #cloudcamp
#cloudcamp@CloudCamp_CHI
Sponsored by
Hosted by
![Page 53: CloudCamp Chicago - Big Data & Cloud May 2015 - All Slides](https://reader034.fdocuments.us/reader034/viewer/2022042522/55b563c5bb61eb5d0d8b45d3/html5/thumbnails/53.jpg)
Redshift: Lessons Learned
Tristan Crockett – Software Engineer, Edgeflip
![Page 54: CloudCamp Chicago - Big Data & Cloud May 2015 - All Slides](https://reader034.fdocuments.us/reader034/viewer/2022042522/55b563c5bb61eb5d0d8b45d3/html5/thumbnails/54.jpg)
Basics
● Analytical database● PostgreSQL with column storage engine● Automatic Data compression● No traditional indexes; specify a sort key (how
are records in the table sorted?) and distribution key (which node will house a record?)
![Page 55: CloudCamp Chicago - Big Data & Cloud May 2015 - All Slides](https://reader034.fdocuments.us/reader034/viewer/2022042522/55b563c5bb61eb5d0d8b45d3/html5/thumbnails/55.jpg)
My Work with Redshift
● Data warehouse for Facebook user feeds and related app data
● Inputs– RDS (MySQL)
– DynamoDB
● Stats– ~2TB of compressed data
– Two main tables, ~5bil and ~25bil rows respectively
![Page 56: CloudCamp Chicago - Big Data & Cloud May 2015 - All Slides](https://reader034.fdocuments.us/reader034/viewer/2022042522/55b563c5bb61eb5d0d8b45d3/html5/thumbnails/56.jpg)
Advantages / Disadvantages
● Fast at copying data in from S3● Fast at computing aggregate/analytical
functions over an entire table● Decent at intra-db operations (create table as
select, insert into select)● Most everything else is slow● Without traditional indexes, table design isn't as
flexible
![Page 57: CloudCamp Chicago - Big Data & Cloud May 2015 - All Slides](https://reader034.fdocuments.us/reader034/viewer/2022042522/55b563c5bb61eb5d0d8b45d3/html5/thumbnails/57.jpg)
Lessons/Tips
● Optimize load size (1 MB to 1 GB per file)● Compress input● Upsert when needed, and always vacuum● Don't populate tables with 'CREATE TABLE AS'
if you like compression (which you do)● To avoid complicated joins, consider computing
single-table aggregates and join on the results
![Page 58: CloudCamp Chicago - Big Data & Cloud May 2015 - All Slides](https://reader034.fdocuments.us/reader034/viewer/2022042522/55b563c5bb61eb5d0d8b45d3/html5/thumbnails/58.jpg)
Upsert
![Page 59: CloudCamp Chicago - Big Data & Cloud May 2015 - All Slides](https://reader034.fdocuments.us/reader034/viewer/2022042522/55b563c5bb61eb5d0d8b45d3/html5/thumbnails/59.jpg)
Keep an Eye on Compression
![Page 60: CloudCamp Chicago - Big Data & Cloud May 2015 - All Slides](https://reader034.fdocuments.us/reader034/viewer/2022042522/55b563c5bb61eb5d0d8b45d3/html5/thumbnails/60.jpg)
Single-Table Aggregates
![Page 62: CloudCamp Chicago - Big Data & Cloud May 2015 - All Slides](https://reader034.fdocuments.us/reader034/viewer/2022042522/55b563c5bb61eb5d0d8b45d3/html5/thumbnails/62.jpg)
Un-panel Discussion
volunteer to join the panel & ask questions from the floor!
#cloudcamp@CloudCamp_CHI
Sponsored by
Hosted by
![Page 63: CloudCamp Chicago - Big Data & Cloud May 2015 - All Slides](https://reader034.fdocuments.us/reader034/viewer/2022042522/55b563c5bb61eb5d0d8b45d3/html5/thumbnails/63.jpg)
Unconference
Small groups & discussions, network
Pizza’s almost here!
#cloudcamp@CloudCamp_CHI
Sponsored by
Hosted by