SlideShare a Scribd company logo
1 of 30
Download to read offline
Tupperware:
Containerized Deployment at FB
Aravind Narayanan
aravindn@fb.com
DockerCon 2014
Scale makes everything harder
• Running single instance: easy
• Running at scale in production: messy and
complicated
Provision machines
Distribute binaries
Daemonize processMonitoring
Failover Geo-distribution
Machine decoms
Time spent on
Application Logic
Time spent on getting app
to run in prod
Tupperware to the rescue
“This is my binary. Run it on X machines!”
• Engineer is hands-off
• Doesn’t need to worry about machines in
prod
• Handles failover, when machines go bad
• Efficient use of infrastructure
• 300,000+ processes, spread over 15,000+
services
Agenda
1. Architecture
2. Sandboxes
3. Ecosystem
4. Lessons learnt
Facebook Datacenters
PRN
SNC FRC
ASH
LLA
Terminology
• A DC has one or more clusters
• A cluster has multiple racks
• A rack has multiple machines
!
• A TW job is equivalent to a service
• A job has multiple tasks, each an
instance of the service
Architecture
Scheduler
Host1 Host2 Host3
config.tw
twdeploy
Server DB
Start Task
BitTorrent-based binary
package store
QuoteService
Machine “failures” / hour
Failover
Failover
Scheduler
Host1 Host2 Host3
Server DB
Start Task
QuoteService QuoteService
Heartbeat
BitTorrent-based binary
package store
Painless Hardware maintenance
• Notify scheduler of impending operations
• Scheduler can preemptively move tasks
• Graceful migration for stateless services
• Stateful services may endure maintenance
Expressive allocation policies
Production Host
MyBigJob
QuoteService
QuoteAggregator
Production Host
Top of Rack Switch
NetworkHogJob
NetworkHogJob
Job M Job N
Job M Job N
TW Agent
Agent Helper
TW Agent process
Package Manager
Resource Manager
Task Manager API
Scheduler heartbeat
Agent Helper Task B
Agent Helper Task C
Task A
Production Host
Agent Helper process
Heartbeat with Agent, 	

prevents zombies
TW Agent process
Package Manager
Resource Manager
Task Manager API
Scheduler heartbeat Agent Helper Task A
Logging
Compress on the fly
Log Files
• Persistent logs
• Instantaneous rotation
Task A
Agent Helper
Log Catcher
stderr stdout
Sandboxing
Initially, used chroots to contain processes
• No isolation
• Not secure
LinuXContainers
• As tech matured, we switched
• Separate process and file
namespaces, set up by Helper
• Mount required resources
directly into container
• Secure & isolated
Service permissions
• Every container runs sshd
• SSH directly into the container
• Regulate access
Production Host
TW Agent process
Task Manager API
Agent Helper Task A
SSH
X
Configuring the container
Resource limits
• CPU, RAM & disk limits
• Implemented with cgroups
• Agent handles memory limits
with cgroup notification API
• Adaptive limits
Resource Limits in action
watchdog-service - tw.mem.rss_bytes
Migrate from Chroots to
Containers
• No-op for most services
• But new namespaces posed problems
for some
• Major hurdle was social, not technical
Service Discovery
Scheduler
Host1 Host2 Host3
Server DB
Service Registry
QuoteService
QuoteService
Host1:12345 ALIVE
Host2:12345 ALIVE
QuoteService
Host2:12345 ALIVE
Host1:12345 DEAD
Start Task
QuoteService
QuoteService
Host2:12345 ALIVE
Host3:12345 ALIVE
QuoteService
Start Task
Monitoring & Alerting
Alternatives to Tupperware
• Why not use Docker / CoreOS?
• They didn’t exist
• TW integrates with other FB systems
• Why not use VMs?
• Performance penalty
• Hypervisor makes debugging harder
Lessons learnt
Releases are scary!
• Release often
• Dry runs
• Canaries are your friends
• Manage dependencies
Sane defaults
• Users shouldn’t have to read entire manual
• Choose what makes sense for most services
What went wrong?
• Hard to understand why TW did
something
• It’s not about “what went wrong”,
but “what should I do next?”
Tupperware
• Automated deployment
• Less work for engineers
• Containers for security
and isolation
• Increased efficiency
Questions?
Time spent on getting app
to run in prod
Time spent on
Application Logic

More Related Content

What's hot

Hive + Tez: A Performance Deep Dive
Hive + Tez: A Performance Deep DiveHive + Tez: A Performance Deep Dive
Hive + Tez: A Performance Deep DiveDataWorks Summit
 
Stephan Ewen - Experiences running Flink at Very Large Scale
Stephan Ewen -  Experiences running Flink at Very Large ScaleStephan Ewen -  Experiences running Flink at Very Large Scale
Stephan Ewen - Experiences running Flink at Very Large ScaleVerverica
 
Apache Calcite (a tutorial given at BOSS '21)
Apache Calcite (a tutorial given at BOSS '21)Apache Calcite (a tutorial given at BOSS '21)
Apache Calcite (a tutorial given at BOSS '21)Julian Hyde
 
Hadoop Strata Talk - Uber, your hadoop has arrived
Hadoop Strata Talk - Uber, your hadoop has arrived Hadoop Strata Talk - Uber, your hadoop has arrived
Hadoop Strata Talk - Uber, your hadoop has arrived Vinoth Chandar
 
Apache Kylin: Speed Up Cubing with Apache Spark with Luke Han and Shaofeng Shi
 Apache Kylin: Speed Up Cubing with Apache Spark with Luke Han and Shaofeng Shi Apache Kylin: Speed Up Cubing with Apache Spark with Luke Han and Shaofeng Shi
Apache Kylin: Speed Up Cubing with Apache Spark with Luke Han and Shaofeng ShiDatabricks
 
hbaseconasia2017: HBase Practice At XiaoMi
hbaseconasia2017: HBase Practice At XiaoMihbaseconasia2017: HBase Practice At XiaoMi
hbaseconasia2017: HBase Practice At XiaoMiHBaseCon
 
Supporting Apache HBase : Troubleshooting and Supportability Improvements
Supporting Apache HBase : Troubleshooting and Supportability ImprovementsSupporting Apache HBase : Troubleshooting and Supportability Improvements
Supporting Apache HBase : Troubleshooting and Supportability ImprovementsDataWorks Summit
 
Dr. Elephant for Monitoring and Tuning Apache Spark Jobs on Hadoop with Carl ...
Dr. Elephant for Monitoring and Tuning Apache Spark Jobs on Hadoop with Carl ...Dr. Elephant for Monitoring and Tuning Apache Spark Jobs on Hadoop with Carl ...
Dr. Elephant for Monitoring and Tuning Apache Spark Jobs on Hadoop with Carl ...Databricks
 
Kafka to the Maxka - (Kafka Performance Tuning)
Kafka to the Maxka - (Kafka Performance Tuning)Kafka to the Maxka - (Kafka Performance Tuning)
Kafka to the Maxka - (Kafka Performance Tuning)DataWorks Summit
 
Performance Optimizations in Apache Impala
Performance Optimizations in Apache ImpalaPerformance Optimizations in Apache Impala
Performance Optimizations in Apache ImpalaCloudera, Inc.
 
Impacts of Sharding, Partitioning, Encoding, and Sorting on Distributed Query...
Impacts of Sharding, Partitioning, Encoding, and Sorting on Distributed Query...Impacts of Sharding, Partitioning, Encoding, and Sorting on Distributed Query...
Impacts of Sharding, Partitioning, Encoding, and Sorting on Distributed Query...InfluxData
 
The Rise of ZStandard: Apache Spark/Parquet/ORC/Avro
The Rise of ZStandard: Apache Spark/Parquet/ORC/AvroThe Rise of ZStandard: Apache Spark/Parquet/ORC/Avro
The Rise of ZStandard: Apache Spark/Parquet/ORC/AvroDatabricks
 
Apache Hadoop YARNとマルチテナントにおけるリソース管理
Apache Hadoop YARNとマルチテナントにおけるリソース管理Apache Hadoop YARNとマルチテナントにおけるリソース管理
Apache Hadoop YARNとマルチテナントにおけるリソース管理Cloudera Japan
 
ETL With Cassandra Streaming Bulk Loading
ETL With Cassandra Streaming Bulk LoadingETL With Cassandra Streaming Bulk Loading
ETL With Cassandra Streaming Bulk Loadingalex_araujo
 
Building large scale transactional data lake using apache hudi
Building large scale transactional data lake using apache hudiBuilding large scale transactional data lake using apache hudi
Building large scale transactional data lake using apache hudiBill Liu
 
Diving into the Deep End - Kafka Connect
Diving into the Deep End - Kafka ConnectDiving into the Deep End - Kafka Connect
Diving into the Deep End - Kafka Connectconfluent
 
Apache BookKeeper: A High Performance and Low Latency Storage Service
Apache BookKeeper: A High Performance and Low Latency Storage ServiceApache BookKeeper: A High Performance and Low Latency Storage Service
Apache BookKeeper: A High Performance and Low Latency Storage ServiceSijie Guo
 
Data profiling in Apache Calcite
Data profiling in Apache CalciteData profiling in Apache Calcite
Data profiling in Apache CalciteDataWorks Summit
 
RedisConf17- Using Redis at scale @ Twitter
RedisConf17- Using Redis at scale @ TwitterRedisConf17- Using Redis at scale @ Twitter
RedisConf17- Using Redis at scale @ TwitterRedis Labs
 

What's hot (20)

Hive + Tez: A Performance Deep Dive
Hive + Tez: A Performance Deep DiveHive + Tez: A Performance Deep Dive
Hive + Tez: A Performance Deep Dive
 
Stephan Ewen - Experiences running Flink at Very Large Scale
Stephan Ewen -  Experiences running Flink at Very Large ScaleStephan Ewen -  Experiences running Flink at Very Large Scale
Stephan Ewen - Experiences running Flink at Very Large Scale
 
Apache Calcite (a tutorial given at BOSS '21)
Apache Calcite (a tutorial given at BOSS '21)Apache Calcite (a tutorial given at BOSS '21)
Apache Calcite (a tutorial given at BOSS '21)
 
Hadoop Strata Talk - Uber, your hadoop has arrived
Hadoop Strata Talk - Uber, your hadoop has arrived Hadoop Strata Talk - Uber, your hadoop has arrived
Hadoop Strata Talk - Uber, your hadoop has arrived
 
Apache Kylin: Speed Up Cubing with Apache Spark with Luke Han and Shaofeng Shi
 Apache Kylin: Speed Up Cubing with Apache Spark with Luke Han and Shaofeng Shi Apache Kylin: Speed Up Cubing with Apache Spark with Luke Han and Shaofeng Shi
Apache Kylin: Speed Up Cubing with Apache Spark with Luke Han and Shaofeng Shi
 
hbaseconasia2017: HBase Practice At XiaoMi
hbaseconasia2017: HBase Practice At XiaoMihbaseconasia2017: HBase Practice At XiaoMi
hbaseconasia2017: HBase Practice At XiaoMi
 
Supporting Apache HBase : Troubleshooting and Supportability Improvements
Supporting Apache HBase : Troubleshooting and Supportability ImprovementsSupporting Apache HBase : Troubleshooting and Supportability Improvements
Supporting Apache HBase : Troubleshooting and Supportability Improvements
 
Dr. Elephant for Monitoring and Tuning Apache Spark Jobs on Hadoop with Carl ...
Dr. Elephant for Monitoring and Tuning Apache Spark Jobs on Hadoop with Carl ...Dr. Elephant for Monitoring and Tuning Apache Spark Jobs on Hadoop with Carl ...
Dr. Elephant for Monitoring and Tuning Apache Spark Jobs on Hadoop with Carl ...
 
Kafka to the Maxka - (Kafka Performance Tuning)
Kafka to the Maxka - (Kafka Performance Tuning)Kafka to the Maxka - (Kafka Performance Tuning)
Kafka to the Maxka - (Kafka Performance Tuning)
 
Performance Optimizations in Apache Impala
Performance Optimizations in Apache ImpalaPerformance Optimizations in Apache Impala
Performance Optimizations in Apache Impala
 
Impacts of Sharding, Partitioning, Encoding, and Sorting on Distributed Query...
Impacts of Sharding, Partitioning, Encoding, and Sorting on Distributed Query...Impacts of Sharding, Partitioning, Encoding, and Sorting on Distributed Query...
Impacts of Sharding, Partitioning, Encoding, and Sorting on Distributed Query...
 
File Format Benchmark - Avro, JSON, ORC & Parquet
File Format Benchmark - Avro, JSON, ORC & ParquetFile Format Benchmark - Avro, JSON, ORC & Parquet
File Format Benchmark - Avro, JSON, ORC & Parquet
 
The Rise of ZStandard: Apache Spark/Parquet/ORC/Avro
The Rise of ZStandard: Apache Spark/Parquet/ORC/AvroThe Rise of ZStandard: Apache Spark/Parquet/ORC/Avro
The Rise of ZStandard: Apache Spark/Parquet/ORC/Avro
 
Apache Hadoop YARNとマルチテナントにおけるリソース管理
Apache Hadoop YARNとマルチテナントにおけるリソース管理Apache Hadoop YARNとマルチテナントにおけるリソース管理
Apache Hadoop YARNとマルチテナントにおけるリソース管理
 
ETL With Cassandra Streaming Bulk Loading
ETL With Cassandra Streaming Bulk LoadingETL With Cassandra Streaming Bulk Loading
ETL With Cassandra Streaming Bulk Loading
 
Building large scale transactional data lake using apache hudi
Building large scale transactional data lake using apache hudiBuilding large scale transactional data lake using apache hudi
Building large scale transactional data lake using apache hudi
 
Diving into the Deep End - Kafka Connect
Diving into the Deep End - Kafka ConnectDiving into the Deep End - Kafka Connect
Diving into the Deep End - Kafka Connect
 
Apache BookKeeper: A High Performance and Low Latency Storage Service
Apache BookKeeper: A High Performance and Low Latency Storage ServiceApache BookKeeper: A High Performance and Low Latency Storage Service
Apache BookKeeper: A High Performance and Low Latency Storage Service
 
Data profiling in Apache Calcite
Data profiling in Apache CalciteData profiling in Apache Calcite
Data profiling in Apache Calcite
 
RedisConf17- Using Redis at scale @ Twitter
RedisConf17- Using Redis at scale @ TwitterRedisConf17- Using Redis at scale @ Twitter
RedisConf17- Using Redis at scale @ Twitter
 

Similar to Tupperware: Containerized Deployment at FB

DCSF19 Container Security: Theory & Practice at Netflix
DCSF19 Container Security: Theory & Practice at NetflixDCSF19 Container Security: Theory & Practice at Netflix
DCSF19 Container Security: Theory & Practice at NetflixDocker, Inc.
 
Orchestrating Linux Containers while tolerating failures
Orchestrating Linux Containers while tolerating failuresOrchestrating Linux Containers while tolerating failures
Orchestrating Linux Containers while tolerating failuresDocker, Inc.
 
The impact of cloud NSBCon NY by Yves Goeleven
The impact of cloud NSBCon NY by Yves GoelevenThe impact of cloud NSBCon NY by Yves Goeleven
The impact of cloud NSBCon NY by Yves GoelevenParticular Software
 
John adams talk cloudy
John adams   talk cloudyJohn adams   talk cloudy
John adams talk cloudyJohn Adams
 
Series of Unfortunate Netflix Container Events - QConNYC17
Series of Unfortunate Netflix Container Events - QConNYC17Series of Unfortunate Netflix Container Events - QConNYC17
Series of Unfortunate Netflix Container Events - QConNYC17aspyker
 
Debugging Microservices - key challenges and techniques - Microservices Odesa...
Debugging Microservices - key challenges and techniques - Microservices Odesa...Debugging Microservices - key challenges and techniques - Microservices Odesa...
Debugging Microservices - key challenges and techniques - Microservices Odesa...Lohika_Odessa_TechTalks
 
Tech talk microservices debugging
Tech talk microservices debuggingTech talk microservices debugging
Tech talk microservices debuggingAndrey Kolodnitsky
 
QConSF18 - Disenchantment: Netflix Titus, its Feisty Team, and Daemons
QConSF18 - Disenchantment: Netflix Titus, its Feisty Team, and DaemonsQConSF18 - Disenchantment: Netflix Titus, its Feisty Team, and Daemons
QConSF18 - Disenchantment: Netflix Titus, its Feisty Team, and Daemonsaspyker
 
Monitoring microservices: Docker, Mesos and Kubernetes visibility at scale
Monitoring microservices: Docker, Mesos and Kubernetes visibility at scaleMonitoring microservices: Docker, Mesos and Kubernetes visibility at scale
Monitoring microservices: Docker, Mesos and Kubernetes visibility at scaleAlessandro Gallotta
 
Database as a Service (DBaaS) on Kubernetes
Database as a Service (DBaaS) on KubernetesDatabase as a Service (DBaaS) on Kubernetes
Database as a Service (DBaaS) on KubernetesObjectRocket
 
FreeSWITCH as a Microservice
FreeSWITCH as a MicroserviceFreeSWITCH as a Microservice
FreeSWITCH as a MicroserviceEvan McGee
 
Building Efficient Parallel Testing Platforms with Docker
Building Efficient Parallel Testing Platforms with DockerBuilding Efficient Parallel Testing Platforms with Docker
Building Efficient Parallel Testing Platforms with DockerLaura Frank Tacho
 
Infrastructure at Scale: Apache Kafka, Twitter Storm & Elastic Search (ARC303...
Infrastructure at Scale: Apache Kafka, Twitter Storm & Elastic Search (ARC303...Infrastructure at Scale: Apache Kafka, Twitter Storm & Elastic Search (ARC303...
Infrastructure at Scale: Apache Kafka, Twitter Storm & Elastic Search (ARC303...Amazon Web Services
 
MesosCon EU 2017 - Criteo - Operating Mesos-based Infrastructures
MesosCon EU 2017 - Criteo - Operating Mesos-based InfrastructuresMesosCon EU 2017 - Criteo - Operating Mesos-based Infrastructures
MesosCon EU 2017 - Criteo - Operating Mesos-based Infrastructurespierrecdn -
 
Docker in Production: How RightScale Delivers Cloud Applications
Docker in Production: How RightScale Delivers Cloud ApplicationsDocker in Production: How RightScale Delivers Cloud Applications
Docker in Production: How RightScale Delivers Cloud ApplicationsRightScale
 
Patterns and Pains of Migrating Legacy Applications to Kubernetes
Patterns and Pains of Migrating Legacy Applications to KubernetesPatterns and Pains of Migrating Legacy Applications to Kubernetes
Patterns and Pains of Migrating Legacy Applications to KubernetesJosef Adersberger
 
Patterns and Pains of Migrating Legacy Applications to Kubernetes
Patterns and Pains of Migrating Legacy Applications to KubernetesPatterns and Pains of Migrating Legacy Applications to Kubernetes
Patterns and Pains of Migrating Legacy Applications to KubernetesQAware GmbH
 

Similar to Tupperware: Containerized Deployment at FB (20)

DCSF19 Container Security: Theory & Practice at Netflix
DCSF19 Container Security: Theory & Practice at NetflixDCSF19 Container Security: Theory & Practice at Netflix
DCSF19 Container Security: Theory & Practice at Netflix
 
Orchestrating Linux Containers while tolerating failures
Orchestrating Linux Containers while tolerating failuresOrchestrating Linux Containers while tolerating failures
Orchestrating Linux Containers while tolerating failures
 
The impact of cloud NSBCon NY by Yves Goeleven
The impact of cloud NSBCon NY by Yves GoelevenThe impact of cloud NSBCon NY by Yves Goeleven
The impact of cloud NSBCon NY by Yves Goeleven
 
John adams talk cloudy
John adams   talk cloudyJohn adams   talk cloudy
John adams talk cloudy
 
Series of Unfortunate Netflix Container Events - QConNYC17
Series of Unfortunate Netflix Container Events - QConNYC17Series of Unfortunate Netflix Container Events - QConNYC17
Series of Unfortunate Netflix Container Events - QConNYC17
 
Debugging Microservices - key challenges and techniques - Microservices Odesa...
Debugging Microservices - key challenges and techniques - Microservices Odesa...Debugging Microservices - key challenges and techniques - Microservices Odesa...
Debugging Microservices - key challenges and techniques - Microservices Odesa...
 
Tech talk microservices debugging
Tech talk microservices debuggingTech talk microservices debugging
Tech talk microservices debugging
 
QConSF18 - Disenchantment: Netflix Titus, its Feisty Team, and Daemons
QConSF18 - Disenchantment: Netflix Titus, its Feisty Team, and DaemonsQConSF18 - Disenchantment: Netflix Titus, its Feisty Team, and Daemons
QConSF18 - Disenchantment: Netflix Titus, its Feisty Team, and Daemons
 
2 万林涛
2 万林涛2 万林涛
2 万林涛
 
Scaling tappsi
Scaling tappsiScaling tappsi
Scaling tappsi
 
Monitoring microservices: Docker, Mesos and Kubernetes visibility at scale
Monitoring microservices: Docker, Mesos and Kubernetes visibility at scaleMonitoring microservices: Docker, Mesos and Kubernetes visibility at scale
Monitoring microservices: Docker, Mesos and Kubernetes visibility at scale
 
Database as a Service (DBaaS) on Kubernetes
Database as a Service (DBaaS) on KubernetesDatabase as a Service (DBaaS) on Kubernetes
Database as a Service (DBaaS) on Kubernetes
 
FreeSWITCH as a Microservice
FreeSWITCH as a MicroserviceFreeSWITCH as a Microservice
FreeSWITCH as a Microservice
 
Building Efficient Parallel Testing Platforms with Docker
Building Efficient Parallel Testing Platforms with DockerBuilding Efficient Parallel Testing Platforms with Docker
Building Efficient Parallel Testing Platforms with Docker
 
Vinetalk: The missing piece for cluster managers to enable accelerator sharing
Vinetalk: The missing piece for cluster managers to enable accelerator sharingVinetalk: The missing piece for cluster managers to enable accelerator sharing
Vinetalk: The missing piece for cluster managers to enable accelerator sharing
 
Infrastructure at Scale: Apache Kafka, Twitter Storm & Elastic Search (ARC303...
Infrastructure at Scale: Apache Kafka, Twitter Storm & Elastic Search (ARC303...Infrastructure at Scale: Apache Kafka, Twitter Storm & Elastic Search (ARC303...
Infrastructure at Scale: Apache Kafka, Twitter Storm & Elastic Search (ARC303...
 
MesosCon EU 2017 - Criteo - Operating Mesos-based Infrastructures
MesosCon EU 2017 - Criteo - Operating Mesos-based InfrastructuresMesosCon EU 2017 - Criteo - Operating Mesos-based Infrastructures
MesosCon EU 2017 - Criteo - Operating Mesos-based Infrastructures
 
Docker in Production: How RightScale Delivers Cloud Applications
Docker in Production: How RightScale Delivers Cloud ApplicationsDocker in Production: How RightScale Delivers Cloud Applications
Docker in Production: How RightScale Delivers Cloud Applications
 
Patterns and Pains of Migrating Legacy Applications to Kubernetes
Patterns and Pains of Migrating Legacy Applications to KubernetesPatterns and Pains of Migrating Legacy Applications to Kubernetes
Patterns and Pains of Migrating Legacy Applications to Kubernetes
 
Patterns and Pains of Migrating Legacy Applications to Kubernetes
Patterns and Pains of Migrating Legacy Applications to KubernetesPatterns and Pains of Migrating Legacy Applications to Kubernetes
Patterns and Pains of Migrating Legacy Applications to Kubernetes
 

More from Docker, Inc.

Containerize Your Game Server for the Best Multiplayer Experience
Containerize Your Game Server for the Best Multiplayer Experience Containerize Your Game Server for the Best Multiplayer Experience
Containerize Your Game Server for the Best Multiplayer Experience Docker, Inc.
 
How to Improve Your Image Builds Using Advance Docker Build
How to Improve Your Image Builds Using Advance Docker BuildHow to Improve Your Image Builds Using Advance Docker Build
How to Improve Your Image Builds Using Advance Docker BuildDocker, Inc.
 
Build & Deploy Multi-Container Applications to AWS
Build & Deploy Multi-Container Applications to AWSBuild & Deploy Multi-Container Applications to AWS
Build & Deploy Multi-Container Applications to AWSDocker, Inc.
 
Securing Your Containerized Applications with NGINX
Securing Your Containerized Applications with NGINXSecuring Your Containerized Applications with NGINX
Securing Your Containerized Applications with NGINXDocker, Inc.
 
How To Build and Run Node Apps with Docker and Compose
How To Build and Run Node Apps with Docker and ComposeHow To Build and Run Node Apps with Docker and Compose
How To Build and Run Node Apps with Docker and ComposeDocker, Inc.
 
Distributed Deep Learning with Docker at Salesforce
Distributed Deep Learning with Docker at SalesforceDistributed Deep Learning with Docker at Salesforce
Distributed Deep Learning with Docker at SalesforceDocker, Inc.
 
The First 10M Pulls: Building The Official Curl Image for Docker Hub
The First 10M Pulls: Building The Official Curl Image for Docker HubThe First 10M Pulls: Building The Official Curl Image for Docker Hub
The First 10M Pulls: Building The Official Curl Image for Docker HubDocker, Inc.
 
Monitoring in a Microservices World
Monitoring in a Microservices WorldMonitoring in a Microservices World
Monitoring in a Microservices WorldDocker, Inc.
 
COVID-19 in Italy: How Docker is Helping the Biggest Italian IT Company Conti...
COVID-19 in Italy: How Docker is Helping the Biggest Italian IT Company Conti...COVID-19 in Italy: How Docker is Helping the Biggest Italian IT Company Conti...
COVID-19 in Italy: How Docker is Helping the Biggest Italian IT Company Conti...Docker, Inc.
 
Predicting Space Weather with Docker
Predicting Space Weather with DockerPredicting Space Weather with Docker
Predicting Space Weather with DockerDocker, Inc.
 
Become a Docker Power User With Microsoft Visual Studio Code
Become a Docker Power User With Microsoft Visual Studio CodeBecome a Docker Power User With Microsoft Visual Studio Code
Become a Docker Power User With Microsoft Visual Studio CodeDocker, Inc.
 
How to Use Mirroring and Caching to Optimize your Container Registry
How to Use Mirroring and Caching to Optimize your Container RegistryHow to Use Mirroring and Caching to Optimize your Container Registry
How to Use Mirroring and Caching to Optimize your Container RegistryDocker, Inc.
 
Monolithic to Microservices + Docker = SDLC on Steroids!
Monolithic to Microservices + Docker = SDLC on Steroids!Monolithic to Microservices + Docker = SDLC on Steroids!
Monolithic to Microservices + Docker = SDLC on Steroids!Docker, Inc.
 
Kubernetes at Datadog Scale
Kubernetes at Datadog ScaleKubernetes at Datadog Scale
Kubernetes at Datadog ScaleDocker, Inc.
 
Labels, Labels, Labels
Labels, Labels, Labels Labels, Labels, Labels
Labels, Labels, Labels Docker, Inc.
 
Using Docker Hub at Scale to Support Micro Focus' Delivery and Deployment Model
Using Docker Hub at Scale to Support Micro Focus' Delivery and Deployment ModelUsing Docker Hub at Scale to Support Micro Focus' Delivery and Deployment Model
Using Docker Hub at Scale to Support Micro Focus' Delivery and Deployment ModelDocker, Inc.
 
Build & Deploy Multi-Container Applications to AWS
Build & Deploy Multi-Container Applications to AWSBuild & Deploy Multi-Container Applications to AWS
Build & Deploy Multi-Container Applications to AWSDocker, Inc.
 
From Fortran on the Desktop to Kubernetes in the Cloud: A Windows Migration S...
From Fortran on the Desktop to Kubernetes in the Cloud: A Windows Migration S...From Fortran on the Desktop to Kubernetes in the Cloud: A Windows Migration S...
From Fortran on the Desktop to Kubernetes in the Cloud: A Windows Migration S...Docker, Inc.
 
Developing with Docker for the Arm Architecture
Developing with Docker for the Arm ArchitectureDeveloping with Docker for the Arm Architecture
Developing with Docker for the Arm ArchitectureDocker, Inc.
 

More from Docker, Inc. (20)

Containerize Your Game Server for the Best Multiplayer Experience
Containerize Your Game Server for the Best Multiplayer Experience Containerize Your Game Server for the Best Multiplayer Experience
Containerize Your Game Server for the Best Multiplayer Experience
 
How to Improve Your Image Builds Using Advance Docker Build
How to Improve Your Image Builds Using Advance Docker BuildHow to Improve Your Image Builds Using Advance Docker Build
How to Improve Your Image Builds Using Advance Docker Build
 
Build & Deploy Multi-Container Applications to AWS
Build & Deploy Multi-Container Applications to AWSBuild & Deploy Multi-Container Applications to AWS
Build & Deploy Multi-Container Applications to AWS
 
Securing Your Containerized Applications with NGINX
Securing Your Containerized Applications with NGINXSecuring Your Containerized Applications with NGINX
Securing Your Containerized Applications with NGINX
 
How To Build and Run Node Apps with Docker and Compose
How To Build and Run Node Apps with Docker and ComposeHow To Build and Run Node Apps with Docker and Compose
How To Build and Run Node Apps with Docker and Compose
 
Hands-on Helm
Hands-on Helm Hands-on Helm
Hands-on Helm
 
Distributed Deep Learning with Docker at Salesforce
Distributed Deep Learning with Docker at SalesforceDistributed Deep Learning with Docker at Salesforce
Distributed Deep Learning with Docker at Salesforce
 
The First 10M Pulls: Building The Official Curl Image for Docker Hub
The First 10M Pulls: Building The Official Curl Image for Docker HubThe First 10M Pulls: Building The Official Curl Image for Docker Hub
The First 10M Pulls: Building The Official Curl Image for Docker Hub
 
Monitoring in a Microservices World
Monitoring in a Microservices WorldMonitoring in a Microservices World
Monitoring in a Microservices World
 
COVID-19 in Italy: How Docker is Helping the Biggest Italian IT Company Conti...
COVID-19 in Italy: How Docker is Helping the Biggest Italian IT Company Conti...COVID-19 in Italy: How Docker is Helping the Biggest Italian IT Company Conti...
COVID-19 in Italy: How Docker is Helping the Biggest Italian IT Company Conti...
 
Predicting Space Weather with Docker
Predicting Space Weather with DockerPredicting Space Weather with Docker
Predicting Space Weather with Docker
 
Become a Docker Power User With Microsoft Visual Studio Code
Become a Docker Power User With Microsoft Visual Studio CodeBecome a Docker Power User With Microsoft Visual Studio Code
Become a Docker Power User With Microsoft Visual Studio Code
 
How to Use Mirroring and Caching to Optimize your Container Registry
How to Use Mirroring and Caching to Optimize your Container RegistryHow to Use Mirroring and Caching to Optimize your Container Registry
How to Use Mirroring and Caching to Optimize your Container Registry
 
Monolithic to Microservices + Docker = SDLC on Steroids!
Monolithic to Microservices + Docker = SDLC on Steroids!Monolithic to Microservices + Docker = SDLC on Steroids!
Monolithic to Microservices + Docker = SDLC on Steroids!
 
Kubernetes at Datadog Scale
Kubernetes at Datadog ScaleKubernetes at Datadog Scale
Kubernetes at Datadog Scale
 
Labels, Labels, Labels
Labels, Labels, Labels Labels, Labels, Labels
Labels, Labels, Labels
 
Using Docker Hub at Scale to Support Micro Focus' Delivery and Deployment Model
Using Docker Hub at Scale to Support Micro Focus' Delivery and Deployment ModelUsing Docker Hub at Scale to Support Micro Focus' Delivery and Deployment Model
Using Docker Hub at Scale to Support Micro Focus' Delivery and Deployment Model
 
Build & Deploy Multi-Container Applications to AWS
Build & Deploy Multi-Container Applications to AWSBuild & Deploy Multi-Container Applications to AWS
Build & Deploy Multi-Container Applications to AWS
 
From Fortran on the Desktop to Kubernetes in the Cloud: A Windows Migration S...
From Fortran on the Desktop to Kubernetes in the Cloud: A Windows Migration S...From Fortran on the Desktop to Kubernetes in the Cloud: A Windows Migration S...
From Fortran on the Desktop to Kubernetes in the Cloud: A Windows Migration S...
 
Developing with Docker for the Arm Architecture
Developing with Docker for the Arm ArchitectureDeveloping with Docker for the Arm Architecture
Developing with Docker for the Arm Architecture
 

Tupperware: Containerized Deployment at FB