SlideShare a Scribd company logo
1 of 10
Download to read offline
PADDLE PADDLE
FAULT-TOLERABLE DEEP LEARNING
A REAL REQUEST FOR AI
▸ How to control TV sets via voice
▸ AI Hub
▸ No. An Alexa in each room?
▸ AI API
▸ No. Business owners don’t want user behavior data go to AI tech providers.
▸ AI on Cloud
▸ No. GPU instances are too expensive.
▸ AI on on-premise clusters
▸ Yes.
Unisound, a PaddlePaddle collaborator, planted their
speech recognition technology into air conditioners, TV
sets, and Android-based mirrors in cars.
CLOUD AND ON-PREMISE CLUSTERS
Internet traditional
big
companies
on-
premises
on-
premises
small
companies
cloud
on-
premises
THE SOLUTION - GENERAL PURPOSE CLUSTERS
GPU servers Multi-GPU servers CPU servers…
Kubernetes: a distributed operating system
PaddleSpark
speech
model
trainer
speech
API
server
fluentd
nginx
log Kafka
online
data
process
offline
data
process
Hadoop HDFS
labeled
data
model
Internet
clients:
- Web browser
- mobile apps
- IoT devices
CHALLENGES - GENERAL PURPOSE CLUSTERS
▸ group replica of processes into jobs
▸ Web services, data processing pipelines, machine learning jobs.
▸ service isolation and multi-user
▸ online experiments requires real log data stream, so
▸ we run production jobs and experimental jobs on the same cluster.
▸ priority-based scheduling
▸ a high-priority (production) job can preempt low-priority (experiment) jobs.
▸ make full use of hardware
▸ e.g., schedule processes of a Hadoop job that requires network and disk bandwidth
and processes of a deep learning job that requires GPU on the same node.
CHALLENGES - FAULT-TOLERABLE JOBS
▸ auto-scaling
▸ there are often many active users at day time, so the cluster kills processes of
deep learning jobs and creates more Web service processes.
▸ in nights, it kills some Web service processes to run more deep learning
processes.
▸ fault-recovery
▸ a job must be tolerable with a varying number of processes.
▸ speedup v.s. fault-recovery
▸ speedup optimizes a job.
▸ speedup with fault-tolerance optimizes the business.
A PADDLE PADDLE JOB
parameter
server 1
parameter
server 2
trainer 1
global
model
shard
1/2
global
model
shard
2/2
local
model
shard
1/2
local
model
shard
2/2
trainer 2
local
model
shard
1/2
local
model
shard
2/2
trainer 3
local
model
shard
1/2
local
model
shard
2/2
master
gradients/model gradients/model gradients/model
tasks
tasks
tasks
AUTO FAULT-RECOVERY
etcd
job B
master of job A
job A
task 4
task 2
task 1
todo
pending
done
task 3
task 2 task 1
todo
pending
done
task 3
master of job B
todo
created
pending
done
dispatched
completed
timeout
KEEP OPEN
▸ Thanks to the Kubernetes community for their expertise on
distributed computing and their effort of code review.
▸ We hope to see more traditional industries have their on-
premise clusters support running their whole business.
▸ PaddlePaddle will keep open.
▸ We are working on open source more AI technologies
basing on PaddlePaddle.

More Related Content

What's hot

Strata 2016 - Architecting for Change: LinkedIn's new data ecosystem
Strata 2016 - Architecting for Change: LinkedIn's new data ecosystemStrata 2016 - Architecting for Change: LinkedIn's new data ecosystem
Strata 2016 - Architecting for Change: LinkedIn's new data ecosystemShirshanka Das
 
Microsoft AI Platform Overview
Microsoft AI Platform OverviewMicrosoft AI Platform Overview
Microsoft AI Platform OverviewDavid Chou
 
Red Hat Summit - What are your digital foundations?
Red Hat Summit - What are your digital foundations?Red Hat Summit - What are your digital foundations?
Red Hat Summit - What are your digital foundations?Eric D. Schabell
 
Forget becoming a Data Scientist, become a Machine Learning Engineer instead
Forget becoming a Data Scientist, become a Machine Learning Engineer insteadForget becoming a Data Scientist, become a Machine Learning Engineer instead
Forget becoming a Data Scientist, become a Machine Learning Engineer insteadData Con LA
 
Red Hat Summit - Discover the foundations of digital transformation
Red Hat Summit - Discover the foundations of digital transformationRed Hat Summit - Discover the foundations of digital transformation
Red Hat Summit - Discover the foundations of digital transformationEric D. Schabell
 
H2O Driverless AI Workshop
H2O Driverless AI WorkshopH2O Driverless AI Workshop
H2O Driverless AI WorkshopSri Ambati
 
EMC Sponsored Session- Building Massive + Efficient Indexer Storage Environme...
EMC Sponsored Session- Building Massive + Efficient Indexer Storage Environme...EMC Sponsored Session- Building Massive + Efficient Indexer Storage Environme...
EMC Sponsored Session- Building Massive + Efficient Indexer Storage Environme...Splunk
 
Security Breakout Session
Security Breakout Session Security Breakout Session
Security Breakout Session Splunk
 
Sl boston 05_12_15_ener_noc_final_public
Sl boston 05_12_15_ener_noc_final_publicSl boston 05_12_15_ener_noc_final_public
Sl boston 05_12_15_ener_noc_final_publicSplunk
 
GTC Taiwan 2017 在 Google Cloud 當中使用 GPU 進行效能最佳化
GTC Taiwan 2017 在 Google Cloud 當中使用 GPU 進行效能最佳化GTC Taiwan 2017 在 Google Cloud 當中使用 GPU 進行效能最佳化
GTC Taiwan 2017 在 Google Cloud 當中使用 GPU 進行效能最佳化NVIDIA Taiwan
 
Using the Actor Model with Domain-Driven Design (DDD) in Reactive Systems - w...
Using the Actor Model with Domain-Driven Design (DDD) in Reactive Systems - w...Using the Actor Model with Domain-Driven Design (DDD) in Reactive Systems - w...
Using the Actor Model with Domain-Driven Design (DDD) in Reactive Systems - w...Lightbend
 
Apache deep learning 202 Washington DC - DWS 2019
Apache deep learning 202   Washington DC - DWS 2019Apache deep learning 202   Washington DC - DWS 2019
Apache deep learning 202 Washington DC - DWS 2019Timothy Spann
 
Complex event processing platform handling millions of users - Krzysztof Zarz...
Complex event processing platform handling millions of users - Krzysztof Zarz...Complex event processing platform handling millions of users - Krzysztof Zarz...
Complex event processing platform handling millions of users - Krzysztof Zarz...GetInData
 
Fast Delivery DevOps Israel
Fast Delivery DevOps IsraelFast Delivery DevOps Israel
Fast Delivery DevOps IsraelAdrian Cockcroft
 
Monktoberfest Fast Delivery
Monktoberfest Fast DeliveryMonktoberfest Fast Delivery
Monktoberfest Fast DeliveryAdrian Cockcroft
 
Using H2O for Mobile Transaction Forecasting & Anomaly Detection - Capital One
Using H2O for Mobile Transaction Forecasting & Anomaly Detection - Capital OneUsing H2O for Mobile Transaction Forecasting & Anomaly Detection - Capital One
Using H2O for Mobile Transaction Forecasting & Anomaly Detection - Capital OneSri Ambati
 
Automatic and Interpretable Machine Learning in R with H2O and LIME (Milan Ed...
Automatic and Interpretable Machine Learning in R with H2O and LIME (Milan Ed...Automatic and Interpretable Machine Learning in R with H2O and LIME (Milan Ed...
Automatic and Interpretable Machine Learning in R with H2O and LIME (Milan Ed...Sri Ambati
 
Adobe Behance Scales to Millions of Users at Lower TCO with Neo4j
Adobe Behance Scales to Millions of Users at Lower TCO with Neo4jAdobe Behance Scales to Millions of Users at Lower TCO with Neo4j
Adobe Behance Scales to Millions of Users at Lower TCO with Neo4jNeo4j
 

What's hot (20)

Strata 2016 - Architecting for Change: LinkedIn's new data ecosystem
Strata 2016 - Architecting for Change: LinkedIn's new data ecosystemStrata 2016 - Architecting for Change: LinkedIn's new data ecosystem
Strata 2016 - Architecting for Change: LinkedIn's new data ecosystem
 
Aplicações Potenciais de Deep Learning à Indústria do Petróleo
Aplicações Potenciais de Deep Learning à Indústria do PetróleoAplicações Potenciais de Deep Learning à Indústria do Petróleo
Aplicações Potenciais de Deep Learning à Indústria do Petróleo
 
Microsoft AI Platform Overview
Microsoft AI Platform OverviewMicrosoft AI Platform Overview
Microsoft AI Platform Overview
 
Red Hat Summit - What are your digital foundations?
Red Hat Summit - What are your digital foundations?Red Hat Summit - What are your digital foundations?
Red Hat Summit - What are your digital foundations?
 
Forget becoming a Data Scientist, become a Machine Learning Engineer instead
Forget becoming a Data Scientist, become a Machine Learning Engineer insteadForget becoming a Data Scientist, become a Machine Learning Engineer instead
Forget becoming a Data Scientist, become a Machine Learning Engineer instead
 
Red Hat Summit - Discover the foundations of digital transformation
Red Hat Summit - Discover the foundations of digital transformationRed Hat Summit - Discover the foundations of digital transformation
Red Hat Summit - Discover the foundations of digital transformation
 
H2O Driverless AI Workshop
H2O Driverless AI WorkshopH2O Driverless AI Workshop
H2O Driverless AI Workshop
 
EMC Sponsored Session- Building Massive + Efficient Indexer Storage Environme...
EMC Sponsored Session- Building Massive + Efficient Indexer Storage Environme...EMC Sponsored Session- Building Massive + Efficient Indexer Storage Environme...
EMC Sponsored Session- Building Massive + Efficient Indexer Storage Environme...
 
Security Breakout Session
Security Breakout Session Security Breakout Session
Security Breakout Session
 
Sl boston 05_12_15_ener_noc_final_public
Sl boston 05_12_15_ener_noc_final_publicSl boston 05_12_15_ener_noc_final_public
Sl boston 05_12_15_ener_noc_final_public
 
GTC Taiwan 2017 在 Google Cloud 當中使用 GPU 進行效能最佳化
GTC Taiwan 2017 在 Google Cloud 當中使用 GPU 進行效能最佳化GTC Taiwan 2017 在 Google Cloud 當中使用 GPU 進行效能最佳化
GTC Taiwan 2017 在 Google Cloud 當中使用 GPU 進行效能最佳化
 
Using the Actor Model with Domain-Driven Design (DDD) in Reactive Systems - w...
Using the Actor Model with Domain-Driven Design (DDD) in Reactive Systems - w...Using the Actor Model with Domain-Driven Design (DDD) in Reactive Systems - w...
Using the Actor Model with Domain-Driven Design (DDD) in Reactive Systems - w...
 
Apache deep learning 202 Washington DC - DWS 2019
Apache deep learning 202   Washington DC - DWS 2019Apache deep learning 202   Washington DC - DWS 2019
Apache deep learning 202 Washington DC - DWS 2019
 
Complex event processing platform handling millions of users - Krzysztof Zarz...
Complex event processing platform handling millions of users - Krzysztof Zarz...Complex event processing platform handling millions of users - Krzysztof Zarz...
Complex event processing platform handling millions of users - Krzysztof Zarz...
 
Fast Delivery DevOps Israel
Fast Delivery DevOps IsraelFast Delivery DevOps Israel
Fast Delivery DevOps Israel
 
Monktoberfest Fast Delivery
Monktoberfest Fast DeliveryMonktoberfest Fast Delivery
Monktoberfest Fast Delivery
 
Practical advice to build a data driven company
Practical advice to build a data driven companyPractical advice to build a data driven company
Practical advice to build a data driven company
 
Using H2O for Mobile Transaction Forecasting & Anomaly Detection - Capital One
Using H2O for Mobile Transaction Forecasting & Anomaly Detection - Capital OneUsing H2O for Mobile Transaction Forecasting & Anomaly Detection - Capital One
Using H2O for Mobile Transaction Forecasting & Anomaly Detection - Capital One
 
Automatic and Interpretable Machine Learning in R with H2O and LIME (Milan Ed...
Automatic and Interpretable Machine Learning in R with H2O and LIME (Milan Ed...Automatic and Interpretable Machine Learning in R with H2O and LIME (Milan Ed...
Automatic and Interpretable Machine Learning in R with H2O and LIME (Milan Ed...
 
Adobe Behance Scales to Millions of Users at Lower TCO with Neo4j
Adobe Behance Scales to Millions of Users at Lower TCO with Neo4jAdobe Behance Scales to Millions of Users at Lower TCO with Neo4j
Adobe Behance Scales to Millions of Users at Lower TCO with Neo4j
 

Viewers also liked

Ross Goodwin, Technologist, Sunspring, MLconf NYC 2017
Ross Goodwin, Technologist, Sunspring, MLconf NYC 2017Ross Goodwin, Technologist, Sunspring, MLconf NYC 2017
Ross Goodwin, Technologist, Sunspring, MLconf NYC 2017MLconf
 
Mayur Thakur, Managing Director, Goldman Sachs, at MLconf NYC 2017
Mayur Thakur, Managing Director, Goldman Sachs, at MLconf NYC 2017Mayur Thakur, Managing Director, Goldman Sachs, at MLconf NYC 2017
Mayur Thakur, Managing Director, Goldman Sachs, at MLconf NYC 2017MLconf
 
Sanjeev Satheesj, Research Scientist, Baidu at The AI Conference 2017
Sanjeev Satheesj, Research Scientist, Baidu at The AI Conference 2017Sanjeev Satheesj, Research Scientist, Baidu at The AI Conference 2017
Sanjeev Satheesj, Research Scientist, Baidu at The AI Conference 2017MLconf
 
Serena Yeung, PHD, Stanford, at MLconf Seattle 2017
Serena Yeung, PHD, Stanford, at MLconf Seattle 2017 Serena Yeung, PHD, Stanford, at MLconf Seattle 2017
Serena Yeung, PHD, Stanford, at MLconf Seattle 2017 MLconf
 
Jeff Bradshaw, Founder, Adaptris
Jeff Bradshaw, Founder, AdaptrisJeff Bradshaw, Founder, Adaptris
Jeff Bradshaw, Founder, AdaptrisMLconf
 
Alexandra Johnson, Software Engineer, SigOpt, at MLconf NYC 2017
Alexandra Johnson, Software Engineer, SigOpt, at MLconf NYC 2017Alexandra Johnson, Software Engineer, SigOpt, at MLconf NYC 2017
Alexandra Johnson, Software Engineer, SigOpt, at MLconf NYC 2017MLconf
 
Jonathan Lenaghan, VP of Science and Technology, PlaceIQ at MLconf ATL 2016
Jonathan Lenaghan, VP of Science and Technology, PlaceIQ at MLconf ATL 2016Jonathan Lenaghan, VP of Science and Technology, PlaceIQ at MLconf ATL 2016
Jonathan Lenaghan, VP of Science and Technology, PlaceIQ at MLconf ATL 2016MLconf
 
Brian Lucena, Senior Data Scientist, Metis at MLconf SF 2016
Brian Lucena, Senior Data Scientist, Metis at MLconf SF 2016Brian Lucena, Senior Data Scientist, Metis at MLconf SF 2016
Brian Lucena, Senior Data Scientist, Metis at MLconf SF 2016MLconf
 
Layla El Asri, Research Scientist, Maluuba
Layla El Asri, Research Scientist, Maluuba Layla El Asri, Research Scientist, Maluuba
Layla El Asri, Research Scientist, Maluuba MLconf
 
Rajat Monga, Engineering Director, TensorFlow, Google at MLconf 2016
Rajat Monga, Engineering Director, TensorFlow, Google at MLconf 2016Rajat Monga, Engineering Director, TensorFlow, Google at MLconf 2016
Rajat Monga, Engineering Director, TensorFlow, Google at MLconf 2016MLconf
 
Scott Clark, Co-Founder and CEO, SigOpt at MLconf SF 2016
Scott Clark, Co-Founder and CEO, SigOpt at MLconf SF 2016Scott Clark, Co-Founder and CEO, SigOpt at MLconf SF 2016
Scott Clark, Co-Founder and CEO, SigOpt at MLconf SF 2016MLconf
 
Ashirth Barthur, Security Scientist, H2O, at MLconf Seattle 2017
Ashirth Barthur, Security Scientist, H2O, at MLconf Seattle 2017Ashirth Barthur, Security Scientist, H2O, at MLconf Seattle 2017
Ashirth Barthur, Security Scientist, H2O, at MLconf Seattle 2017MLconf
 
Caroline Sinders, Online Harassment Researcher, Wikimedia at The AI Conferenc...
Caroline Sinders, Online Harassment Researcher, Wikimedia at The AI Conferenc...Caroline Sinders, Online Harassment Researcher, Wikimedia at The AI Conferenc...
Caroline Sinders, Online Harassment Researcher, Wikimedia at The AI Conferenc...MLconf
 
Daniel Shank, Data Scientist, Talla at MLconf SF 2016
Daniel Shank, Data Scientist, Talla at MLconf SF 2016Daniel Shank, Data Scientist, Talla at MLconf SF 2016
Daniel Shank, Data Scientist, Talla at MLconf SF 2016MLconf
 
Andrew Musselman, Committer and PMC Member, Apache Mahout, at MLconf Seattle ...
Andrew Musselman, Committer and PMC Member, Apache Mahout, at MLconf Seattle ...Andrew Musselman, Committer and PMC Member, Apache Mahout, at MLconf Seattle ...
Andrew Musselman, Committer and PMC Member, Apache Mahout, at MLconf Seattle ...MLconf
 
Aaron Roth, Associate Professor, University of Pennsylvania, at MLconf NYC 2017
Aaron Roth, Associate Professor, University of Pennsylvania, at MLconf NYC 2017Aaron Roth, Associate Professor, University of Pennsylvania, at MLconf NYC 2017
Aaron Roth, Associate Professor, University of Pennsylvania, at MLconf NYC 2017MLconf
 
Anjuli Kannan, Software Engineer, Google at MLconf SF 2016
Anjuli Kannan, Software Engineer, Google at MLconf SF 2016Anjuli Kannan, Software Engineer, Google at MLconf SF 2016
Anjuli Kannan, Software Engineer, Google at MLconf SF 2016MLconf
 
Alex Dimakis, Associate Professor, Dept. of Electrical and Computer Engineeri...
Alex Dimakis, Associate Professor, Dept. of Electrical and Computer Engineeri...Alex Dimakis, Associate Professor, Dept. of Electrical and Computer Engineeri...
Alex Dimakis, Associate Professor, Dept. of Electrical and Computer Engineeri...MLconf
 
Chris Fregly, Research Scientist, PipelineIO at MLconf ATL 2016
Chris Fregly, Research Scientist, PipelineIO at MLconf ATL 2016Chris Fregly, Research Scientist, PipelineIO at MLconf ATL 2016
Chris Fregly, Research Scientist, PipelineIO at MLconf ATL 2016MLconf
 
Scott Clark, CEO, SigOpt, at MLconf Seattle 2017
Scott Clark, CEO, SigOpt, at MLconf Seattle 2017Scott Clark, CEO, SigOpt, at MLconf Seattle 2017
Scott Clark, CEO, SigOpt, at MLconf Seattle 2017MLconf
 

Viewers also liked (20)

Ross Goodwin, Technologist, Sunspring, MLconf NYC 2017
Ross Goodwin, Technologist, Sunspring, MLconf NYC 2017Ross Goodwin, Technologist, Sunspring, MLconf NYC 2017
Ross Goodwin, Technologist, Sunspring, MLconf NYC 2017
 
Mayur Thakur, Managing Director, Goldman Sachs, at MLconf NYC 2017
Mayur Thakur, Managing Director, Goldman Sachs, at MLconf NYC 2017Mayur Thakur, Managing Director, Goldman Sachs, at MLconf NYC 2017
Mayur Thakur, Managing Director, Goldman Sachs, at MLconf NYC 2017
 
Sanjeev Satheesj, Research Scientist, Baidu at The AI Conference 2017
Sanjeev Satheesj, Research Scientist, Baidu at The AI Conference 2017Sanjeev Satheesj, Research Scientist, Baidu at The AI Conference 2017
Sanjeev Satheesj, Research Scientist, Baidu at The AI Conference 2017
 
Serena Yeung, PHD, Stanford, at MLconf Seattle 2017
Serena Yeung, PHD, Stanford, at MLconf Seattle 2017 Serena Yeung, PHD, Stanford, at MLconf Seattle 2017
Serena Yeung, PHD, Stanford, at MLconf Seattle 2017
 
Jeff Bradshaw, Founder, Adaptris
Jeff Bradshaw, Founder, AdaptrisJeff Bradshaw, Founder, Adaptris
Jeff Bradshaw, Founder, Adaptris
 
Alexandra Johnson, Software Engineer, SigOpt, at MLconf NYC 2017
Alexandra Johnson, Software Engineer, SigOpt, at MLconf NYC 2017Alexandra Johnson, Software Engineer, SigOpt, at MLconf NYC 2017
Alexandra Johnson, Software Engineer, SigOpt, at MLconf NYC 2017
 
Jonathan Lenaghan, VP of Science and Technology, PlaceIQ at MLconf ATL 2016
Jonathan Lenaghan, VP of Science and Technology, PlaceIQ at MLconf ATL 2016Jonathan Lenaghan, VP of Science and Technology, PlaceIQ at MLconf ATL 2016
Jonathan Lenaghan, VP of Science and Technology, PlaceIQ at MLconf ATL 2016
 
Brian Lucena, Senior Data Scientist, Metis at MLconf SF 2016
Brian Lucena, Senior Data Scientist, Metis at MLconf SF 2016Brian Lucena, Senior Data Scientist, Metis at MLconf SF 2016
Brian Lucena, Senior Data Scientist, Metis at MLconf SF 2016
 
Layla El Asri, Research Scientist, Maluuba
Layla El Asri, Research Scientist, Maluuba Layla El Asri, Research Scientist, Maluuba
Layla El Asri, Research Scientist, Maluuba
 
Rajat Monga, Engineering Director, TensorFlow, Google at MLconf 2016
Rajat Monga, Engineering Director, TensorFlow, Google at MLconf 2016Rajat Monga, Engineering Director, TensorFlow, Google at MLconf 2016
Rajat Monga, Engineering Director, TensorFlow, Google at MLconf 2016
 
Scott Clark, Co-Founder and CEO, SigOpt at MLconf SF 2016
Scott Clark, Co-Founder and CEO, SigOpt at MLconf SF 2016Scott Clark, Co-Founder and CEO, SigOpt at MLconf SF 2016
Scott Clark, Co-Founder and CEO, SigOpt at MLconf SF 2016
 
Ashirth Barthur, Security Scientist, H2O, at MLconf Seattle 2017
Ashirth Barthur, Security Scientist, H2O, at MLconf Seattle 2017Ashirth Barthur, Security Scientist, H2O, at MLconf Seattle 2017
Ashirth Barthur, Security Scientist, H2O, at MLconf Seattle 2017
 
Caroline Sinders, Online Harassment Researcher, Wikimedia at The AI Conferenc...
Caroline Sinders, Online Harassment Researcher, Wikimedia at The AI Conferenc...Caroline Sinders, Online Harassment Researcher, Wikimedia at The AI Conferenc...
Caroline Sinders, Online Harassment Researcher, Wikimedia at The AI Conferenc...
 
Daniel Shank, Data Scientist, Talla at MLconf SF 2016
Daniel Shank, Data Scientist, Talla at MLconf SF 2016Daniel Shank, Data Scientist, Talla at MLconf SF 2016
Daniel Shank, Data Scientist, Talla at MLconf SF 2016
 
Andrew Musselman, Committer and PMC Member, Apache Mahout, at MLconf Seattle ...
Andrew Musselman, Committer and PMC Member, Apache Mahout, at MLconf Seattle ...Andrew Musselman, Committer and PMC Member, Apache Mahout, at MLconf Seattle ...
Andrew Musselman, Committer and PMC Member, Apache Mahout, at MLconf Seattle ...
 
Aaron Roth, Associate Professor, University of Pennsylvania, at MLconf NYC 2017
Aaron Roth, Associate Professor, University of Pennsylvania, at MLconf NYC 2017Aaron Roth, Associate Professor, University of Pennsylvania, at MLconf NYC 2017
Aaron Roth, Associate Professor, University of Pennsylvania, at MLconf NYC 2017
 
Anjuli Kannan, Software Engineer, Google at MLconf SF 2016
Anjuli Kannan, Software Engineer, Google at MLconf SF 2016Anjuli Kannan, Software Engineer, Google at MLconf SF 2016
Anjuli Kannan, Software Engineer, Google at MLconf SF 2016
 
Alex Dimakis, Associate Professor, Dept. of Electrical and Computer Engineeri...
Alex Dimakis, Associate Professor, Dept. of Electrical and Computer Engineeri...Alex Dimakis, Associate Professor, Dept. of Electrical and Computer Engineeri...
Alex Dimakis, Associate Professor, Dept. of Electrical and Computer Engineeri...
 
Chris Fregly, Research Scientist, PipelineIO at MLconf ATL 2016
Chris Fregly, Research Scientist, PipelineIO at MLconf ATL 2016Chris Fregly, Research Scientist, PipelineIO at MLconf ATL 2016
Chris Fregly, Research Scientist, PipelineIO at MLconf ATL 2016
 
Scott Clark, CEO, SigOpt, at MLconf Seattle 2017
Scott Clark, CEO, SigOpt, at MLconf Seattle 2017Scott Clark, CEO, SigOpt, at MLconf Seattle 2017
Scott Clark, CEO, SigOpt, at MLconf Seattle 2017
 

Similar to Yi Wang, Tech Lead of AI Platform, Baidu, at MLconf 2017

PaddlePaddle: A Complete Enterprise Solution
PaddlePaddle: A Complete Enterprise SolutionPaddlePaddle: A Complete Enterprise Solution
PaddlePaddle: A Complete Enterprise SolutionYi Wang
 
Usability in the GeoWeb
Usability in the GeoWebUsability in the GeoWeb
Usability in the GeoWebDave Bouwman
 
Developing Microservices Directly in AKS/Kubernetes
Developing Microservices Directly in AKS/KubernetesDeveloping Microservices Directly in AKS/Kubernetes
Developing Microservices Directly in AKS/KubernetesChakradhar Rao Jonagam
 
The Visual Computing Company
The Visual Computing CompanyThe Visual Computing Company
The Visual Computing CompanyGrupo Texium
 
Using GPUs to Handle Big Data with Java
Using GPUs to Handle Big Data with JavaUsing GPUs to Handle Big Data with Java
Using GPUs to Handle Big Data with JavaTim Ellison
 
From Zero to Hadoop: a tutorial for getting started writing Hadoop jobs on Am...
From Zero to Hadoop: a tutorial for getting started writing Hadoop jobs on Am...From Zero to Hadoop: a tutorial for getting started writing Hadoop jobs on Am...
From Zero to Hadoop: a tutorial for getting started writing Hadoop jobs on Am...Alexander Dean
 
Modern Scheduling for Modern Applications with Nomad
Modern Scheduling for Modern Applications with NomadModern Scheduling for Modern Applications with Nomad
Modern Scheduling for Modern Applications with NomadMitchell Pronschinske
 
Choosing the right parallel compute architecture
Choosing the right parallel compute architecture Choosing the right parallel compute architecture
Choosing the right parallel compute architecture corehard_by
 
The Kitchen Cloud How To: Automating Joyent SmartMachines with Chef
The Kitchen Cloud How To: Automating Joyent SmartMachines with ChefThe Kitchen Cloud How To: Automating Joyent SmartMachines with Chef
The Kitchen Cloud How To: Automating Joyent SmartMachines with ChefChef Software, Inc.
 
Dr Elephant: LinkedIn's Self-Service System for Detecting and Treating Hadoop...
Dr Elephant: LinkedIn's Self-Service System for Detecting and Treating Hadoop...Dr Elephant: LinkedIn's Self-Service System for Detecting and Treating Hadoop...
Dr Elephant: LinkedIn's Self-Service System for Detecting and Treating Hadoop...DataWorks Summit
 
Deploying Perl apps on dotCloud
Deploying Perl apps on dotCloudDeploying Perl apps on dotCloud
Deploying Perl apps on dotClouddaoswald
 
BDM37: Hadoop in production – the war stories by Nikolaï Grigoriev, Principal...
BDM37: Hadoop in production – the war stories by Nikolaï Grigoriev, Principal...BDM37: Hadoop in production – the war stories by Nikolaï Grigoriev, Principal...
BDM37: Hadoop in production – the war stories by Nikolaï Grigoriev, Principal...Big Data Montreal
 
NVIDIA DGX-1 超級電腦與人工智慧及深度學習
NVIDIA DGX-1 超級電腦與人工智慧及深度學習NVIDIA DGX-1 超級電腦與人工智慧及深度學習
NVIDIA DGX-1 超級電腦與人工智慧及深度學習NVIDIA Taiwan
 
The Convergence of HPC and Deep Learning
The Convergence of HPC and Deep LearningThe Convergence of HPC and Deep Learning
The Convergence of HPC and Deep Learninginside-BigData.com
 
AMD Embedded Solutions Guide
AMD Embedded Solutions GuideAMD Embedded Solutions Guide
AMD Embedded Solutions GuideAMD
 
Serverless meetup Auckland #6
Serverless meetup Auckland #6Serverless meetup Auckland #6
Serverless meetup Auckland #6Myles Henaghan
 
Big Data and Hadoop in Cloud - Leveraging Amazon EMR
Big Data and Hadoop in Cloud - Leveraging Amazon EMRBig Data and Hadoop in Cloud - Leveraging Amazon EMR
Big Data and Hadoop in Cloud - Leveraging Amazon EMRVijay Rayapati
 

Similar to Yi Wang, Tech Lead of AI Platform, Baidu, at MLconf 2017 (20)

PaddlePaddle: A Complete Enterprise Solution
PaddlePaddle: A Complete Enterprise SolutionPaddlePaddle: A Complete Enterprise Solution
PaddlePaddle: A Complete Enterprise Solution
 
Usability in the GeoWeb
Usability in the GeoWebUsability in the GeoWeb
Usability in the GeoWeb
 
NoSQL and ACID
NoSQL and ACIDNoSQL and ACID
NoSQL and ACID
 
Developing Microservices Directly in AKS/Kubernetes
Developing Microservices Directly in AKS/KubernetesDeveloping Microservices Directly in AKS/Kubernetes
Developing Microservices Directly in AKS/Kubernetes
 
The Visual Computing Company
The Visual Computing CompanyThe Visual Computing Company
The Visual Computing Company
 
Using GPUs to Handle Big Data with Java
Using GPUs to Handle Big Data with JavaUsing GPUs to Handle Big Data with Java
Using GPUs to Handle Big Data with Java
 
From Zero to Hadoop: a tutorial for getting started writing Hadoop jobs on Am...
From Zero to Hadoop: a tutorial for getting started writing Hadoop jobs on Am...From Zero to Hadoop: a tutorial for getting started writing Hadoop jobs on Am...
From Zero to Hadoop: a tutorial for getting started writing Hadoop jobs on Am...
 
Modern Scheduling for Modern Applications with Nomad
Modern Scheduling for Modern Applications with NomadModern Scheduling for Modern Applications with Nomad
Modern Scheduling for Modern Applications with Nomad
 
Choosing the right parallel compute architecture
Choosing the right parallel compute architecture Choosing the right parallel compute architecture
Choosing the right parallel compute architecture
 
The Kitchen Cloud How To: Automating Joyent SmartMachines with Chef
The Kitchen Cloud How To: Automating Joyent SmartMachines with ChefThe Kitchen Cloud How To: Automating Joyent SmartMachines with Chef
The Kitchen Cloud How To: Automating Joyent SmartMachines with Chef
 
Dr Elephant: LinkedIn's Self-Service System for Detecting and Treating Hadoop...
Dr Elephant: LinkedIn's Self-Service System for Detecting and Treating Hadoop...Dr Elephant: LinkedIn's Self-Service System for Detecting and Treating Hadoop...
Dr Elephant: LinkedIn's Self-Service System for Detecting and Treating Hadoop...
 
Deploying Perl apps on dotCloud
Deploying Perl apps on dotCloudDeploying Perl apps on dotCloud
Deploying Perl apps on dotCloud
 
BDM37: Hadoop in production – the war stories by Nikolaï Grigoriev, Principal...
BDM37: Hadoop in production – the war stories by Nikolaï Grigoriev, Principal...BDM37: Hadoop in production – the war stories by Nikolaï Grigoriev, Principal...
BDM37: Hadoop in production – the war stories by Nikolaï Grigoriev, Principal...
 
Fish Cam.pptx
Fish Cam.pptxFish Cam.pptx
Fish Cam.pptx
 
NVIDIA DGX-1 超級電腦與人工智慧及深度學習
NVIDIA DGX-1 超級電腦與人工智慧及深度學習NVIDIA DGX-1 超級電腦與人工智慧及深度學習
NVIDIA DGX-1 超級電腦與人工智慧及深度學習
 
The Convergence of HPC and Deep Learning
The Convergence of HPC and Deep LearningThe Convergence of HPC and Deep Learning
The Convergence of HPC and Deep Learning
 
AMD Embedded Solutions Guide
AMD Embedded Solutions GuideAMD Embedded Solutions Guide
AMD Embedded Solutions Guide
 
Serverless meetup Auckland #6
Serverless meetup Auckland #6Serverless meetup Auckland #6
Serverless meetup Auckland #6
 
Cuda
CudaCuda
Cuda
 
Big Data and Hadoop in Cloud - Leveraging Amazon EMR
Big Data and Hadoop in Cloud - Leveraging Amazon EMRBig Data and Hadoop in Cloud - Leveraging Amazon EMR
Big Data and Hadoop in Cloud - Leveraging Amazon EMR
 

More from MLconf

Jamila Smith-Loud - Understanding Human Impact: Social and Equity Assessments...
Jamila Smith-Loud - Understanding Human Impact: Social and Equity Assessments...Jamila Smith-Loud - Understanding Human Impact: Social and Equity Assessments...
Jamila Smith-Loud - Understanding Human Impact: Social and Equity Assessments...MLconf
 
Ted Willke - The Brain’s Guide to Dealing with Context in Language Understanding
Ted Willke - The Brain’s Guide to Dealing with Context in Language UnderstandingTed Willke - The Brain’s Guide to Dealing with Context in Language Understanding
Ted Willke - The Brain’s Guide to Dealing with Context in Language UnderstandingMLconf
 
Justin Armstrong - Applying Computer Vision to Reduce Contamination in the Re...
Justin Armstrong - Applying Computer Vision to Reduce Contamination in the Re...Justin Armstrong - Applying Computer Vision to Reduce Contamination in the Re...
Justin Armstrong - Applying Computer Vision to Reduce Contamination in the Re...MLconf
 
Igor Markov - Quantum Computing: a Treasure Hunt, not a Gold Rush
Igor Markov - Quantum Computing: a Treasure Hunt, not a Gold RushIgor Markov - Quantum Computing: a Treasure Hunt, not a Gold Rush
Igor Markov - Quantum Computing: a Treasure Hunt, not a Gold RushMLconf
 
Josh Wills - Data Labeling as Religious Experience
Josh Wills - Data Labeling as Religious ExperienceJosh Wills - Data Labeling as Religious Experience
Josh Wills - Data Labeling as Religious ExperienceMLconf
 
Vinay Prabhu - Project GaitNet: Ushering in the ImageNet moment for human Gai...
Vinay Prabhu - Project GaitNet: Ushering in the ImageNet moment for human Gai...Vinay Prabhu - Project GaitNet: Ushering in the ImageNet moment for human Gai...
Vinay Prabhu - Project GaitNet: Ushering in the ImageNet moment for human Gai...MLconf
 
Jekaterina Novikova - Machine Learning Methods in Detecting Alzheimer’s Disea...
Jekaterina Novikova - Machine Learning Methods in Detecting Alzheimer’s Disea...Jekaterina Novikova - Machine Learning Methods in Detecting Alzheimer’s Disea...
Jekaterina Novikova - Machine Learning Methods in Detecting Alzheimer’s Disea...MLconf
 
Meghana Ravikumar - Optimized Image Classification on the Cheap
Meghana Ravikumar - Optimized Image Classification on the CheapMeghana Ravikumar - Optimized Image Classification on the Cheap
Meghana Ravikumar - Optimized Image Classification on the CheapMLconf
 
Noam Finkelstein - The Importance of Modeling Data Collection
Noam Finkelstein - The Importance of Modeling Data CollectionNoam Finkelstein - The Importance of Modeling Data Collection
Noam Finkelstein - The Importance of Modeling Data CollectionMLconf
 
June Andrews - The Uncanny Valley of ML
June Andrews - The Uncanny Valley of MLJune Andrews - The Uncanny Valley of ML
June Andrews - The Uncanny Valley of MLMLconf
 
Sneha Rajana - Deep Learning Architectures for Semantic Relation Detection Tasks
Sneha Rajana - Deep Learning Architectures for Semantic Relation Detection TasksSneha Rajana - Deep Learning Architectures for Semantic Relation Detection Tasks
Sneha Rajana - Deep Learning Architectures for Semantic Relation Detection TasksMLconf
 
Anoop Deoras - Building an Incrementally Trained, Local Taste Aware, Global D...
Anoop Deoras - Building an Incrementally Trained, Local Taste Aware, Global D...Anoop Deoras - Building an Incrementally Trained, Local Taste Aware, Global D...
Anoop Deoras - Building an Incrementally Trained, Local Taste Aware, Global D...MLconf
 
Vito Ostuni - The Voice: New Challenges in a Zero UI World
Vito Ostuni - The Voice: New Challenges in a Zero UI WorldVito Ostuni - The Voice: New Challenges in a Zero UI World
Vito Ostuni - The Voice: New Challenges in a Zero UI WorldMLconf
 
Anna choromanska - Data-driven Challenges in AI: Scale, Information Selection...
Anna choromanska - Data-driven Challenges in AI: Scale, Information Selection...Anna choromanska - Data-driven Challenges in AI: Scale, Information Selection...
Anna choromanska - Data-driven Challenges in AI: Scale, Information Selection...MLconf
 
Janani Kalyanam - Machine Learning to Detect Illegal Online Sales of Prescrip...
Janani Kalyanam - Machine Learning to Detect Illegal Online Sales of Prescrip...Janani Kalyanam - Machine Learning to Detect Illegal Online Sales of Prescrip...
Janani Kalyanam - Machine Learning to Detect Illegal Online Sales of Prescrip...MLconf
 
Esperanza Lopez Aguilera - Using a Bayesian Neural Network in the Detection o...
Esperanza Lopez Aguilera - Using a Bayesian Neural Network in the Detection o...Esperanza Lopez Aguilera - Using a Bayesian Neural Network in the Detection o...
Esperanza Lopez Aguilera - Using a Bayesian Neural Network in the Detection o...MLconf
 
Neel Sundaresan - Teaching a machine to code
Neel Sundaresan - Teaching a machine to codeNeel Sundaresan - Teaching a machine to code
Neel Sundaresan - Teaching a machine to codeMLconf
 
Rishabh Mehrotra - Recommendations in a Marketplace: Personalizing Explainabl...
Rishabh Mehrotra - Recommendations in a Marketplace: Personalizing Explainabl...Rishabh Mehrotra - Recommendations in a Marketplace: Personalizing Explainabl...
Rishabh Mehrotra - Recommendations in a Marketplace: Personalizing Explainabl...MLconf
 
Soumith Chintala - Increasing the Impact of AI Through Better Software
Soumith Chintala - Increasing the Impact of AI Through Better SoftwareSoumith Chintala - Increasing the Impact of AI Through Better Software
Soumith Chintala - Increasing the Impact of AI Through Better SoftwareMLconf
 
Roy Lowrance - Predicting Bond Prices: Regime Changes
Roy Lowrance - Predicting Bond Prices: Regime ChangesRoy Lowrance - Predicting Bond Prices: Regime Changes
Roy Lowrance - Predicting Bond Prices: Regime ChangesMLconf
 

More from MLconf (20)

Jamila Smith-Loud - Understanding Human Impact: Social and Equity Assessments...
Jamila Smith-Loud - Understanding Human Impact: Social and Equity Assessments...Jamila Smith-Loud - Understanding Human Impact: Social and Equity Assessments...
Jamila Smith-Loud - Understanding Human Impact: Social and Equity Assessments...
 
Ted Willke - The Brain’s Guide to Dealing with Context in Language Understanding
Ted Willke - The Brain’s Guide to Dealing with Context in Language UnderstandingTed Willke - The Brain’s Guide to Dealing with Context in Language Understanding
Ted Willke - The Brain’s Guide to Dealing with Context in Language Understanding
 
Justin Armstrong - Applying Computer Vision to Reduce Contamination in the Re...
Justin Armstrong - Applying Computer Vision to Reduce Contamination in the Re...Justin Armstrong - Applying Computer Vision to Reduce Contamination in the Re...
Justin Armstrong - Applying Computer Vision to Reduce Contamination in the Re...
 
Igor Markov - Quantum Computing: a Treasure Hunt, not a Gold Rush
Igor Markov - Quantum Computing: a Treasure Hunt, not a Gold RushIgor Markov - Quantum Computing: a Treasure Hunt, not a Gold Rush
Igor Markov - Quantum Computing: a Treasure Hunt, not a Gold Rush
 
Josh Wills - Data Labeling as Religious Experience
Josh Wills - Data Labeling as Religious ExperienceJosh Wills - Data Labeling as Religious Experience
Josh Wills - Data Labeling as Religious Experience
 
Vinay Prabhu - Project GaitNet: Ushering in the ImageNet moment for human Gai...
Vinay Prabhu - Project GaitNet: Ushering in the ImageNet moment for human Gai...Vinay Prabhu - Project GaitNet: Ushering in the ImageNet moment for human Gai...
Vinay Prabhu - Project GaitNet: Ushering in the ImageNet moment for human Gai...
 
Jekaterina Novikova - Machine Learning Methods in Detecting Alzheimer’s Disea...
Jekaterina Novikova - Machine Learning Methods in Detecting Alzheimer’s Disea...Jekaterina Novikova - Machine Learning Methods in Detecting Alzheimer’s Disea...
Jekaterina Novikova - Machine Learning Methods in Detecting Alzheimer’s Disea...
 
Meghana Ravikumar - Optimized Image Classification on the Cheap
Meghana Ravikumar - Optimized Image Classification on the CheapMeghana Ravikumar - Optimized Image Classification on the Cheap
Meghana Ravikumar - Optimized Image Classification on the Cheap
 
Noam Finkelstein - The Importance of Modeling Data Collection
Noam Finkelstein - The Importance of Modeling Data CollectionNoam Finkelstein - The Importance of Modeling Data Collection
Noam Finkelstein - The Importance of Modeling Data Collection
 
June Andrews - The Uncanny Valley of ML
June Andrews - The Uncanny Valley of MLJune Andrews - The Uncanny Valley of ML
June Andrews - The Uncanny Valley of ML
 
Sneha Rajana - Deep Learning Architectures for Semantic Relation Detection Tasks
Sneha Rajana - Deep Learning Architectures for Semantic Relation Detection TasksSneha Rajana - Deep Learning Architectures for Semantic Relation Detection Tasks
Sneha Rajana - Deep Learning Architectures for Semantic Relation Detection Tasks
 
Anoop Deoras - Building an Incrementally Trained, Local Taste Aware, Global D...
Anoop Deoras - Building an Incrementally Trained, Local Taste Aware, Global D...Anoop Deoras - Building an Incrementally Trained, Local Taste Aware, Global D...
Anoop Deoras - Building an Incrementally Trained, Local Taste Aware, Global D...
 
Vito Ostuni - The Voice: New Challenges in a Zero UI World
Vito Ostuni - The Voice: New Challenges in a Zero UI WorldVito Ostuni - The Voice: New Challenges in a Zero UI World
Vito Ostuni - The Voice: New Challenges in a Zero UI World
 
Anna choromanska - Data-driven Challenges in AI: Scale, Information Selection...
Anna choromanska - Data-driven Challenges in AI: Scale, Information Selection...Anna choromanska - Data-driven Challenges in AI: Scale, Information Selection...
Anna choromanska - Data-driven Challenges in AI: Scale, Information Selection...
 
Janani Kalyanam - Machine Learning to Detect Illegal Online Sales of Prescrip...
Janani Kalyanam - Machine Learning to Detect Illegal Online Sales of Prescrip...Janani Kalyanam - Machine Learning to Detect Illegal Online Sales of Prescrip...
Janani Kalyanam - Machine Learning to Detect Illegal Online Sales of Prescrip...
 
Esperanza Lopez Aguilera - Using a Bayesian Neural Network in the Detection o...
Esperanza Lopez Aguilera - Using a Bayesian Neural Network in the Detection o...Esperanza Lopez Aguilera - Using a Bayesian Neural Network in the Detection o...
Esperanza Lopez Aguilera - Using a Bayesian Neural Network in the Detection o...
 
Neel Sundaresan - Teaching a machine to code
Neel Sundaresan - Teaching a machine to codeNeel Sundaresan - Teaching a machine to code
Neel Sundaresan - Teaching a machine to code
 
Rishabh Mehrotra - Recommendations in a Marketplace: Personalizing Explainabl...
Rishabh Mehrotra - Recommendations in a Marketplace: Personalizing Explainabl...Rishabh Mehrotra - Recommendations in a Marketplace: Personalizing Explainabl...
Rishabh Mehrotra - Recommendations in a Marketplace: Personalizing Explainabl...
 
Soumith Chintala - Increasing the Impact of AI Through Better Software
Soumith Chintala - Increasing the Impact of AI Through Better SoftwareSoumith Chintala - Increasing the Impact of AI Through Better Software
Soumith Chintala - Increasing the Impact of AI Through Better Software
 
Roy Lowrance - Predicting Bond Prices: Regime Changes
Roy Lowrance - Predicting Bond Prices: Regime ChangesRoy Lowrance - Predicting Bond Prices: Regime Changes
Roy Lowrance - Predicting Bond Prices: Regime Changes
 

Recently uploaded

Slack Application Development 101 Slides
Slack Application Development 101 SlidesSlack Application Development 101 Slides
Slack Application Development 101 Slidespraypatel2
 
Advanced Test Driven-Development @ php[tek] 2024
Advanced Test Driven-Development @ php[tek] 2024Advanced Test Driven-Development @ php[tek] 2024
Advanced Test Driven-Development @ php[tek] 2024Scott Keck-Warren
 
Making_way_through_DLL_hollowing_inspite_of_CFG_by_Debjeet Banerjee.pptx
Making_way_through_DLL_hollowing_inspite_of_CFG_by_Debjeet Banerjee.pptxMaking_way_through_DLL_hollowing_inspite_of_CFG_by_Debjeet Banerjee.pptx
Making_way_through_DLL_hollowing_inspite_of_CFG_by_Debjeet Banerjee.pptxnull - The Open Security Community
 
Integration and Automation in Practice: CI/CD in Mule Integration and Automat...
Integration and Automation in Practice: CI/CD in Mule Integration and Automat...Integration and Automation in Practice: CI/CD in Mule Integration and Automat...
Integration and Automation in Practice: CI/CD in Mule Integration and Automat...Patryk Bandurski
 
Presentation on how to chat with PDF using ChatGPT code interpreter
Presentation on how to chat with PDF using ChatGPT code interpreterPresentation on how to chat with PDF using ChatGPT code interpreter
Presentation on how to chat with PDF using ChatGPT code interpreternaman860154
 
Breaking the Kubernetes Kill Chain: Host Path Mount
Breaking the Kubernetes Kill Chain: Host Path MountBreaking the Kubernetes Kill Chain: Host Path Mount
Breaking the Kubernetes Kill Chain: Host Path MountPuma Security, LLC
 
How to convert PDF to text with Nanonets
How to convert PDF to text with NanonetsHow to convert PDF to text with Nanonets
How to convert PDF to text with Nanonetsnaman860154
 
How to Remove Document Management Hurdles with X-Docs?
How to Remove Document Management Hurdles with X-Docs?How to Remove Document Management Hurdles with X-Docs?
How to Remove Document Management Hurdles with X-Docs?XfilesPro
 
Neo4j - How KGs are shaping the future of Generative AI at AWS Summit London ...
Neo4j - How KGs are shaping the future of Generative AI at AWS Summit London ...Neo4j - How KGs are shaping the future of Generative AI at AWS Summit London ...
Neo4j - How KGs are shaping the future of Generative AI at AWS Summit London ...Neo4j
 
Transforming Data Streams with Kafka Connect: An Introduction to Single Messa...
Transforming Data Streams with Kafka Connect: An Introduction to Single Messa...Transforming Data Streams with Kafka Connect: An Introduction to Single Messa...
Transforming Data Streams with Kafka Connect: An Introduction to Single Messa...HostedbyConfluent
 
Human Factors of XR: Using Human Factors to Design XR Systems
Human Factors of XR: Using Human Factors to Design XR SystemsHuman Factors of XR: Using Human Factors to Design XR Systems
Human Factors of XR: Using Human Factors to Design XR SystemsMark Billinghurst
 
Transcript: #StandardsGoals for 2024: What’s new for BISAC - Tech Forum 2024
Transcript: #StandardsGoals for 2024: What’s new for BISAC - Tech Forum 2024Transcript: #StandardsGoals for 2024: What’s new for BISAC - Tech Forum 2024
Transcript: #StandardsGoals for 2024: What’s new for BISAC - Tech Forum 2024BookNet Canada
 
Unblocking The Main Thread Solving ANRs and Frozen Frames
Unblocking The Main Thread Solving ANRs and Frozen FramesUnblocking The Main Thread Solving ANRs and Frozen Frames
Unblocking The Main Thread Solving ANRs and Frozen FramesSinan KOZAK
 
Pigging Solutions in Pet Food Manufacturing
Pigging Solutions in Pet Food ManufacturingPigging Solutions in Pet Food Manufacturing
Pigging Solutions in Pet Food ManufacturingPigging Solutions
 
Automating Business Process via MuleSoft Composer | Bangalore MuleSoft Meetup...
Automating Business Process via MuleSoft Composer | Bangalore MuleSoft Meetup...Automating Business Process via MuleSoft Composer | Bangalore MuleSoft Meetup...
Automating Business Process via MuleSoft Composer | Bangalore MuleSoft Meetup...shyamraj55
 
08448380779 Call Girls In Friends Colony Women Seeking Men
08448380779 Call Girls In Friends Colony Women Seeking Men08448380779 Call Girls In Friends Colony Women Seeking Men
08448380779 Call Girls In Friends Colony Women Seeking MenDelhi Call girls
 
Enhancing Worker Digital Experience: A Hands-on Workshop for Partners
Enhancing Worker Digital Experience: A Hands-on Workshop for PartnersEnhancing Worker Digital Experience: A Hands-on Workshop for Partners
Enhancing Worker Digital Experience: A Hands-on Workshop for PartnersThousandEyes
 
Beyond Boundaries: Leveraging No-Code Solutions for Industry Innovation
Beyond Boundaries: Leveraging No-Code Solutions for Industry InnovationBeyond Boundaries: Leveraging No-Code Solutions for Industry Innovation
Beyond Boundaries: Leveraging No-Code Solutions for Industry InnovationSafe Software
 
Pigging Solutions Piggable Sweeping Elbows
Pigging Solutions Piggable Sweeping ElbowsPigging Solutions Piggable Sweeping Elbows
Pigging Solutions Piggable Sweeping ElbowsPigging Solutions
 

Recently uploaded (20)

Slack Application Development 101 Slides
Slack Application Development 101 SlidesSlack Application Development 101 Slides
Slack Application Development 101 Slides
 
Advanced Test Driven-Development @ php[tek] 2024
Advanced Test Driven-Development @ php[tek] 2024Advanced Test Driven-Development @ php[tek] 2024
Advanced Test Driven-Development @ php[tek] 2024
 
Making_way_through_DLL_hollowing_inspite_of_CFG_by_Debjeet Banerjee.pptx
Making_way_through_DLL_hollowing_inspite_of_CFG_by_Debjeet Banerjee.pptxMaking_way_through_DLL_hollowing_inspite_of_CFG_by_Debjeet Banerjee.pptx
Making_way_through_DLL_hollowing_inspite_of_CFG_by_Debjeet Banerjee.pptx
 
Integration and Automation in Practice: CI/CD in Mule Integration and Automat...
Integration and Automation in Practice: CI/CD in Mule Integration and Automat...Integration and Automation in Practice: CI/CD in Mule Integration and Automat...
Integration and Automation in Practice: CI/CD in Mule Integration and Automat...
 
Presentation on how to chat with PDF using ChatGPT code interpreter
Presentation on how to chat with PDF using ChatGPT code interpreterPresentation on how to chat with PDF using ChatGPT code interpreter
Presentation on how to chat with PDF using ChatGPT code interpreter
 
Breaking the Kubernetes Kill Chain: Host Path Mount
Breaking the Kubernetes Kill Chain: Host Path MountBreaking the Kubernetes Kill Chain: Host Path Mount
Breaking the Kubernetes Kill Chain: Host Path Mount
 
How to convert PDF to text with Nanonets
How to convert PDF to text with NanonetsHow to convert PDF to text with Nanonets
How to convert PDF to text with Nanonets
 
How to Remove Document Management Hurdles with X-Docs?
How to Remove Document Management Hurdles with X-Docs?How to Remove Document Management Hurdles with X-Docs?
How to Remove Document Management Hurdles with X-Docs?
 
Neo4j - How KGs are shaping the future of Generative AI at AWS Summit London ...
Neo4j - How KGs are shaping the future of Generative AI at AWS Summit London ...Neo4j - How KGs are shaping the future of Generative AI at AWS Summit London ...
Neo4j - How KGs are shaping the future of Generative AI at AWS Summit London ...
 
Transforming Data Streams with Kafka Connect: An Introduction to Single Messa...
Transforming Data Streams with Kafka Connect: An Introduction to Single Messa...Transforming Data Streams with Kafka Connect: An Introduction to Single Messa...
Transforming Data Streams with Kafka Connect: An Introduction to Single Messa...
 
Human Factors of XR: Using Human Factors to Design XR Systems
Human Factors of XR: Using Human Factors to Design XR SystemsHuman Factors of XR: Using Human Factors to Design XR Systems
Human Factors of XR: Using Human Factors to Design XR Systems
 
Transcript: #StandardsGoals for 2024: What’s new for BISAC - Tech Forum 2024
Transcript: #StandardsGoals for 2024: What’s new for BISAC - Tech Forum 2024Transcript: #StandardsGoals for 2024: What’s new for BISAC - Tech Forum 2024
Transcript: #StandardsGoals for 2024: What’s new for BISAC - Tech Forum 2024
 
Unblocking The Main Thread Solving ANRs and Frozen Frames
Unblocking The Main Thread Solving ANRs and Frozen FramesUnblocking The Main Thread Solving ANRs and Frozen Frames
Unblocking The Main Thread Solving ANRs and Frozen Frames
 
Vulnerability_Management_GRC_by Sohang Sengupta.pptx
Vulnerability_Management_GRC_by Sohang Sengupta.pptxVulnerability_Management_GRC_by Sohang Sengupta.pptx
Vulnerability_Management_GRC_by Sohang Sengupta.pptx
 
Pigging Solutions in Pet Food Manufacturing
Pigging Solutions in Pet Food ManufacturingPigging Solutions in Pet Food Manufacturing
Pigging Solutions in Pet Food Manufacturing
 
Automating Business Process via MuleSoft Composer | Bangalore MuleSoft Meetup...
Automating Business Process via MuleSoft Composer | Bangalore MuleSoft Meetup...Automating Business Process via MuleSoft Composer | Bangalore MuleSoft Meetup...
Automating Business Process via MuleSoft Composer | Bangalore MuleSoft Meetup...
 
08448380779 Call Girls In Friends Colony Women Seeking Men
08448380779 Call Girls In Friends Colony Women Seeking Men08448380779 Call Girls In Friends Colony Women Seeking Men
08448380779 Call Girls In Friends Colony Women Seeking Men
 
Enhancing Worker Digital Experience: A Hands-on Workshop for Partners
Enhancing Worker Digital Experience: A Hands-on Workshop for PartnersEnhancing Worker Digital Experience: A Hands-on Workshop for Partners
Enhancing Worker Digital Experience: A Hands-on Workshop for Partners
 
Beyond Boundaries: Leveraging No-Code Solutions for Industry Innovation
Beyond Boundaries: Leveraging No-Code Solutions for Industry InnovationBeyond Boundaries: Leveraging No-Code Solutions for Industry Innovation
Beyond Boundaries: Leveraging No-Code Solutions for Industry Innovation
 
Pigging Solutions Piggable Sweeping Elbows
Pigging Solutions Piggable Sweeping ElbowsPigging Solutions Piggable Sweeping Elbows
Pigging Solutions Piggable Sweeping Elbows
 

Yi Wang, Tech Lead of AI Platform, Baidu, at MLconf 2017

  • 2. A REAL REQUEST FOR AI ▸ How to control TV sets via voice ▸ AI Hub ▸ No. An Alexa in each room? ▸ AI API ▸ No. Business owners don’t want user behavior data go to AI tech providers. ▸ AI on Cloud ▸ No. GPU instances are too expensive. ▸ AI on on-premise clusters ▸ Yes.
  • 3. Unisound, a PaddlePaddle collaborator, planted their speech recognition technology into air conditioners, TV sets, and Android-based mirrors in cars.
  • 4. CLOUD AND ON-PREMISE CLUSTERS Internet traditional big companies on- premises on- premises small companies cloud on- premises
  • 5. THE SOLUTION - GENERAL PURPOSE CLUSTERS GPU servers Multi-GPU servers CPU servers… Kubernetes: a distributed operating system PaddleSpark speech model trainer speech API server fluentd nginx log Kafka online data process offline data process Hadoop HDFS labeled data model Internet clients: - Web browser - mobile apps - IoT devices
  • 6. CHALLENGES - GENERAL PURPOSE CLUSTERS ▸ group replica of processes into jobs ▸ Web services, data processing pipelines, machine learning jobs. ▸ service isolation and multi-user ▸ online experiments requires real log data stream, so ▸ we run production jobs and experimental jobs on the same cluster. ▸ priority-based scheduling ▸ a high-priority (production) job can preempt low-priority (experiment) jobs. ▸ make full use of hardware ▸ e.g., schedule processes of a Hadoop job that requires network and disk bandwidth and processes of a deep learning job that requires GPU on the same node.
  • 7. CHALLENGES - FAULT-TOLERABLE JOBS ▸ auto-scaling ▸ there are often many active users at day time, so the cluster kills processes of deep learning jobs and creates more Web service processes. ▸ in nights, it kills some Web service processes to run more deep learning processes. ▸ fault-recovery ▸ a job must be tolerable with a varying number of processes. ▸ speedup v.s. fault-recovery ▸ speedup optimizes a job. ▸ speedup with fault-tolerance optimizes the business.
  • 8. A PADDLE PADDLE JOB parameter server 1 parameter server 2 trainer 1 global model shard 1/2 global model shard 2/2 local model shard 1/2 local model shard 2/2 trainer 2 local model shard 1/2 local model shard 2/2 trainer 3 local model shard 1/2 local model shard 2/2 master gradients/model gradients/model gradients/model tasks tasks tasks
  • 9. AUTO FAULT-RECOVERY etcd job B master of job A job A task 4 task 2 task 1 todo pending done task 3 task 2 task 1 todo pending done task 3 master of job B todo created pending done dispatched completed timeout
  • 10. KEEP OPEN ▸ Thanks to the Kubernetes community for their expertise on distributed computing and their effort of code review. ▸ We hope to see more traditional industries have their on- premise clusters support running their whole business. ▸ PaddlePaddle will keep open. ▸ We are working on open source more AI technologies basing on PaddlePaddle.