Google Cloud Platform Blog
Product updates, customer stories, and tips and tricks on Google Cloud Platform
Affini-Tech Brings Affordable and User-Friendly Big Data Analysis to Retailers, Using Google Cloud Platform
November 14, 2014
Today’s guest blog comes from Vincent Heuschling, founder and CEO of
Affini-Tech
, a creator of data platforms that help businesses make data-driven decisions. Affini-Tech is based in Meudon, France and was founded in 2003.
Affini-Tech’s primary goal is helping our customers make data-driven decisions, regardless of the industry they work in. This means giving them easy workflows and web-based interfaces for analyzing and managing Big Data – all at a cost that makes sense for their businesses.
Google Cloud Platform
has become the foundation for everything we do.
When we launched Affini-Tech, we knew we needed a scalable solution for building applications and analyzing information. We explored a number of Cloud vendors - including doing an initial storage deployment on another large public cloud. However, after trying Cloud Platform and speaking with the Cloud Platform team, we decided to go all-in with Google. Google's pricing was the most competitive, but we also found it to be the best platform for our developers.
Google App Engine
,
Google Compute Engine
and
Google BigQuery
provided us with an integrated technology stack that worked better than anything else on the market, making it easier for us to build complex applications.
We use App Engine to build applications that help our customers to control their data collections, model data sets and filter and group data. We sell these applications to marketing companies that want to run their software on top of our platform. App Engine is flexible enough to allow developers at marketing companies to customize our stack for their own needs.
Cloud Platform also helps us generate data findings at a faster rate. We’re storing data in
Google Cloud Storage
, creating ephemeral Hadoop and Apache Spark clusters, then pushing the data into BigQuery for analysis. Ephemeral clusters provide a more efficient, flexible and cost-effective processing model than old-fashioned static clusters and take full advantage of the Cloud model of computing. The key enablers to using the ephemeral clusters are the
Google Cloud Storage connector
, which lets us directly access data on Cloud Storage using standard Hadoop interfaces, and
bdutil
, which helps us automate cluster deployment. Our customers only have to “pay as they process,” which saves them money. Not to mention, setup takes less time. Traditional clusters can take days to install, whereas we can get ephemeral clusters up and running in just minutes.
We can pass these cost savings onto our customers, which makes our products and services more competitive. Many of our users are used to spending more than $250,000 to build a data analytics platform. We can often provide the same service for $2,000 per month. This saves our customers money and allows them to go deeper with their data analytics. This access allows our customers to create things like micro segments in their customer base so they can do better targeting for their marketing campaigns.
In a way, Google is helping to democratize data, since more businesses can afford to study it. If a customer is already using Google Apps – and many of them are – we can integrate our data platforms into Google Apps, making these tools even easier to use and understand.
As a small company, the support we receive from the Cloud Platform team is helping us think bigger. It enables us to build new tools and platforms that take advantage of big data. We plan to make a push for business beyond France and the retail sector – and we’re confident about our expansion, with Cloud Platform doing the heavy lifting.
- Contributed by Vincent Heuschling, founder and CEO of Affini-Tech
No comments :
Post a Comment
Free Trial
Labels
Android
Announcement
api
app engine
Atmosphere Live
bigquery
BigTable
CDN
Cloud Console
Cloud Dataflow
Cloud Datastore
cloud endpoints
Cloud Pub/Sub
Cloud SDK
cloud sql
cloud storage
Cloudera
Compute
Compute Engine
container cluster
customer
Dev Tools
developer tools
developer-insights
Developers
Developers Console
devfests
Disaster Recovery
Encryption Keys
ESG
Event
events
GA
Go Client
Google App Engine
Google Apps
Google BigQuery
Google Cloud Deployment Manager
Google Cloud Networking
Google Cloud Platform
Google Cloud Storage
Google Compute Engine
Google Container Engine
gRPC
hadoop
Hardware
Helium
how to
IO2013
iOS
Kubernetes
Levyx
Local SSD
mapreduce
Media
Nearline
networking
open source
PaaS Solution
Partner
Pricing
Research
round-up
Server
Siggraph
solutions
Startup
Tableau
TCO
Technical
Windows
Wowza
Zync
Archive
2015
Nov
Oct
Sep
Aug
Jul
Jun
May
Apr
Mar
Feb
Jan
2014
Dec
Nov
Oct
Sep
Aug
Jul
Jun
May
Apr
Mar
Feb
Jan
2013
Dec
Nov
Oct
Sep
Aug
Jul
Jun
May
Apr
Mar
Feb
Jan
2012
Dec
Nov
Oct
Sep
Aug
Jul
Jun
May
Apr
Mar
Feb
Jan
2011
Dec
Nov
Oct
Sep
Aug
Jul
Jun
May
Apr
Mar
Feb
Jan
2010
Dec
Oct
Sep
Aug
Jul
Jun
May
Apr
Mar
Feb
Jan
2009
Dec
Nov
Oct
Sep
Aug
Jul
Jun
May
Apr
Mar
Feb
Jan
2008
Dec
Nov
Oct
Sep
Aug
Jul
Jun
May
Apr
Feed
Technical questions? Check us out on
Stack Overflow
.
Subscribe to
our monthly newsletter
.
Follow @googlecloud
No comments :
Post a Comment