StackShareStackShare
Follow on
StackShare

Discover and share technology stacks from companies around the world.

Follow on

© 2025 StackShare. All rights reserved.

Product

  • Stacks
  • Tools
  • Feed

Company

  • About
  • Contact

Legal

  • Privacy Policy
  • Terms of Service
  1. Home
  2. Companies
  3. Hawk
Hawk logo

Hawk

Verified

Hawk allows media traders to reach all digital screens all over the world

Montpellierwww.hawk-tech.io
37
Tools
2
Decisions
0
Followers

Tech Stack

AI

1 tool

TensorFlow logo
TensorFlow

Application & Data

20 tools

Scala logo
Scala
Docker logo
Docker
PostgreSQL logo
PostgreSQL
Redis logo
Redis
Google Cloud Platform logo
Google Cloud Platform
Amazon DynamoDB logo
Amazon DynamoDB
Golang logo
Golang
Flutter logo
Flutter
Kotlin logo
Kotlin
Swift logo
Swift
ES6 logo
ES6
Aerospike logo
Aerospike
Google BigQuery logo
Google BigQuery
Akka logo
Akka
Play logo
Play
C++ logo
C++
Apache Spark logo
Apache Spark
TypeScript logo
TypeScript
R Language logo
R Language
AngularJS logo
AngularJS

Utilities

7 tools

Slack logo
Slack
Consul logo
Consul
Kafka logo
Kafka
Imply logo
Imply
Kafka Streams logo
Kafka Streams
Auth0 logo
Auth0
gRPC logo
gRPC

DevOps

5 tools

GitLab logo
GitLab
Datadog logo
Datadog
Terraform logo
Terraform
Ansible logo
Ansible
GitLab CI logo
GitLab CI

Business Tools

4 tools

React logo
React
Confluence logo
Confluence
Sketch logo
Sketch
Miro logo
Miro

Team Members

Julien Lafont
Julien LafontCTO
Julien Lafont
Julien Lafont

Engineering Blog

Stack Decisions

Julien Lafont
Julien Lafont

Oct 24, 2021

Retour d'expérience de l'équipe Data Hawk : Exploration des stratégies pour ingérer dans #BigQuery des données massives générées sur #AWS

🎯 Solutions SAAS, pipelines Google Cloud #serverless & #nocode, aperçu du futur BigQuery Omni

Détail dans le blog post!

28 views28
Comments
Julien Lafont
Julien Lafont

Sep 19, 2020

Cloud Data-warehouse is the centerpiece of modern Data platform. The choice of the most suitable solution is therefore fundamental.

Our benchmark was conducted over BigQuery and Snowflake. These solutions seem to match our goals but they have very different approaches.

BigQuery is notably the only 100% serverless cloud data-warehouse, which requires absolutely NO maintenance: no re-clustering, no compression, no index optimization, no storage management, no performance management. Snowflake requires to set up (paid) reclustering processes, to manage the performance allocated to each profile, etc. We can also mention Redshift, which we have eliminated because this technology requires even more ops operation.

BigQuery can therefore be set up with almost zero cost of human resources. Its on-demand pricing is particularly adapted to small workloads. 0 cost when the solution is not used, only pay for the query you're running. But quickly the use of slots (with monthly or per-minute commitment) will drastically reduce the cost of use. We've reduced by 10 the cost of our nightly batches by using flex slots.

Finally, a major advantage of BigQuery is its almost perfect integration with Google Cloud Platform services: Cloud functions, Dataflow, Data Studio, etc.

BigQuery is still evolving very quickly. The next milestone, BigQuery Omni, will allow to run queries over data stored in an external Cloud platform (Amazon S3 for example). It will be a major breakthrough in the history of cloud data-warehouses. Omni will compensate a weakness of BigQuery: transferring data in near real time from S3 to BQ is not easy today. It was even simpler to implement via Snowflake's Snowpipe solution.

We also plan to use the Machine Learning features built into BigQuery to accelerate our deployment of Data-Science-based projects. An opportunity only offered by the BigQuery solution

193k views193k
Comments