SlideShare uma empresa Scribd logo
1 de 21
Jens Hagemeyer, Carola Haumann
Training Session on Machine Learning at the
Edge and the FarEdge
30. August 2021
VEDLIoT – A heterogeneous hardware
platform for next-gen AIoT applications
Teaching the IoT to learn
2
 Platform
 Hardware: Scalable, heterogeneous, distributed
 Accelerators: Efficiency boost by FPGA and ASIC technology
 Toolchain: Optimizing Deep Learning for IoT
 Use cases
 Industrial IoT
 Automotive
 Smart Home
 Open call
 At project mid-term
 Early use and evaluation of VEDLIoT technology
Very Efficient Deep Learning for IoT –
VEDLIoT
 Call: H2020-ICT2020-1
 Topic: ICT-56-2020 Next Generation Internet of Things
 Duration: 1. November 2020 – 31. Oktober 2023
 Coordinator: Bielefeld University (Germany)
 Overall budget: 7 996 646.25 €
 Consortium: 12 partners from 4 EU countries (Germany,
Poland, Portugal and Sweden) and one associated
country (Switzerland).
More info:
 https://www.vedliot.eu/
 https://twitter.com/VEDLIoT
 https://www.linkedin.com/company/vedliot/
3
 Bielefeld University (UNIBI) - Coordinator
 Christmann (CHR)
 University of Osnabrück (UOS)
 Siemens (SIEMENS)
 University of Neuchâtel (UNINE)
 University of Lisbon (FC.ID)
 Chalmers (CHALMERS)
 University of Gothenburg (UGOT)
 RISE (RISE)
 EmbeDL (EMBEDL)
 Veoneer (VEONEER)
 Antmicro (ANT)
VEDLIOT partners
4
Cognitive IoT Platforms
Security,
Privacy
and
Trust,
Robustness
and
Safety
Hardware Accelerators
Requirements
Use Cases
Industrial IoT Smart Home
Automotive Open Call
Toolchain
VEDLIoT structure
10x performance
improvement
10x efficiency
improvement
Reconfigurable,
heterogeneous,
scalable
5
VEDLIoT Hardware Platform
 Heterogeneous, modular, scalable microserver system
 Supporting the full spectrum of IoT from embedded over the edge towards the cloud
 Different technology concepts for improving
x86
GPU
ML-ASIC
ARM v8
GPU
SoC
FPGA
SoC
RISC-V
FPGA
VEDLIOT Cognitive
IoT Platform
 Performance
 Cost-effectiveness
 Maintainability
 Reliability
 Energy-Efficiency
 Safety
6
RECS Architecture (RECS|BOX)
RECS Server Backplane (up to 15 Carriers)
Carrier (PCIe Expansion)
Carrier (High Performance)
e.g. GPU-Accelerator
Carrier (Low Power)
#3
#2
Microserver
(High Performance)
#1
Microserver
(Low Power)
#16
#3
#2
Microserver
(Low Power)
#1
High-Speed Low-Latency Network (PCIe, High-Speed Serial)
Compute Network (up to 40 GbE)
Management Network (KVM, Monitoring, …)
HDMI/USB
iPass+ HD
QSFP+
RJ45
Ext. Connectors
GPU SoC
FPGA SoC ARM Soc
Low-Power Microserver (Apalis/Jetson)
x86 ARM v8
High-Performance Microserver (COM Express)
FPGA SoC
High-Performance
Carrier
(up to 3 microservers)
Low-Power Carrier
(up to 16 microservers)
7
RECS Architecture (t.RECS)
• Optimized platform for
local / edge applications
• Provide interfaces for
– Video
– Camera
– Peripheral input (USB)
• Combine FPGA and GPU acceleration
• Compact dimensions
1RU, E-ATX form factor
(2 RU/ 3 RU for special cases)
t.RECS Edge Server
Microserver
(COM-HPC Client)
Microserver
(COM-HPC Client)
Microserver
(COM-HPC Server)
Switched PCIe (Host to Host)
External
interfaces
PCIe
expansion
Ethernet (up to 10 GbE)
Management Network (KVM, Monitoring, …)
I/O (Camera, Display, Radar/Lidar, Audio)
8
 Embedded Device
 Supports ML acceleration
 FPGA
 ASIC
 Communication interfaces
 Wired (CAN, Ethernet, CSI)
 Wireless (WLAN, LoRa, 5G)
 Sensors
 Camera
 Environment (Temp./Hum.)
 Housekeeping
RECS Architecture (µ.RECS)
u.RECS Edge Server
ML
Accelerator
M.2
SMARC 2.1 JETSON NX
PCIe
Mux
Management
System
GbE Switch
Peripherals and I/O
Sensors
(CSI, ADC, I2S,…)
RJ45 SPE
LoRa
WiFi
/BLE
USB3.x 4G/5G
9
Microserver overview
t.RECS
RECS|Box
u.RECS
10
Flexible and adaptable Accelerators for Deep
Learning
DL
Model
DL Model
CPU, GPU-
SoC,
ML-SoC
FPGA-SoC
 End of Moore’s law & dark silicon
=> Domain Specific Architectures (DSA)
 Efficient, flexible, scalable accelerators for
the compute continuum
 Algotecture
 Optimized DL algorithms
 Optimized toolchain
 Optimized computer architecture
Heterogeneous DL
Accelerator
Algotecture/
Co-Designed DL
Accelerator
Compiler
Co-Design
11
VEDLIoT‘s Deep Learning Toolchain
Enabling the rapid convergence of the fast pace
innovation on the hardware and software
Frameworks &
Exchange Formats
Optimization
Engine
Compilers &
Runtime APIs
Heterogeneous
Hardware
Platforms
12
 Increase safety, health and well being of residents – acceleration of AI
methods for demand-oriented user-home interaction
 Smart Mirror as central user interface
 Own mirror image can be seen normally
 Intuitive control over gesture and voice
 Shows personalized information
 Data Privacy as the highest priority
 Edge computation of many neural networks
Use case: Smart Home / Assisted Living
13
 Face recognition
 mobilenetSSD trained on WIDERFACE dataset
 Object detection
 YoloV3, Efficient-Net, yoloV4-tiny
 Gesture detection
 YoloV4-tiny with 3 Yolo layers (usually: 2 layers)
 Speech recognition
 Mozilla DeepSpeech
 AI Art: Style-Gan trained on works of arts
 Collect usage data in situation memory
Use case: Smart Mirror – Neural Networks
14
Use case: Industrial IoT – drive condition
classification
 Control applications need DL-based condition classification
 On the edge device for low power consumption
 Suggestions for control and maintenance
 DL methods on all communication layers
 DL in a distributed architecture
 Dynamically configured systems
 Sensored testbench with 2 motors
 Acceleration, Magnetic field, Temperature,
IR-Cam (temperature), Current-Sensors, Torque
 On / Off detection without
motor current or voltage
 Cooling fault detection
 Bearing fault detection
15
Use case: Industrial IoT – Arc detectioc
 AI based pattern recognition for different local sensor data
 current, magnetic field, vibration, temperature, low resolution infrared picture
 Safety critical nature
 response time should be <10ms
 AI based or AI supported decision made by the sensor node itself or by a local part of the sensor
network
16
 Focus on collision detection/avoidance scenario
 Improve performance/cost ratio – AI processing hardware
distributed over the entire chain
Use case: Automotive
17
Follow our work
https://twitter.com/VEDLIoT
https://www.linkedin.com/company/vedliot/
https://vedliot.eu
Be part of it
Open call at project mid-term
Allow early use and evaluation of VEDLIoT
technology
18
Thank you for your
attention.
Contact
Jens Hagemeyer, Carola Haumann
Bielefeld University, Germany
chaumann@cor-lab.uni-bielefeld.de
jhagemey@cit-ec.uni-bielefeld.de
19
End-to-end attestation, support for execution and
communication
 Support for
 End-to-end trust (attestation)
 Secrets distribution (keys)
 Machine learning (federated, streaming, …)
 Requirements
 Support for edge applications
 Decentralised, dynamic, loosely organised
 Rely on
 Trusted execution environments
 BFT and peer-to-peer algorithms
 Blockchain concepts
VEDLIoT
app
Attestation
Pool
20
Simulation platform for IoT
 Open source framework for software/hardware co-development with CI-driven testing
capabilities, as well as metrics for measuring efficiency of ML workloads
 Enables development and continuous testing of VEDLIoT’s security features and its robustness
 Renode is available to all project members and future users of VEDLIoT and will include a
simulated model of the RISC-V-based FPGA SoC platform developed as part of the VEDLIoT
project
21
Safety and robustness
 Define monitors for timeliness and data quality assessment
 Develop safety argumentation for adaptive solutions,
exploiting architectural hybridization
Hybrid System architecture:
• Some system components implemented
with assured reliability (as needed)
• Remaining components subject to
uncertainties and prone to failures
Safety requirements:
• Defined at design time for each operational
mode
Monitoring data:
• Collected in run-time, to allow verifying if
safety requirements are being satisfied
and trigger reconfiguration if not
Timeliness (e.g., deadline
miss detection)
Sensor data quality (e.g.,
outlier, noise detection)
Accuracy of DL systems
(e.g., anomaly detection)

Mais conteúdo relacionado

Semelhante a IoT Week 2021_Jens Hagemeyer presentation

RAD Industrial Automation, Labs, and Instrumentation
RAD Industrial Automation, Labs, and InstrumentationRAD Industrial Automation, Labs, and Instrumentation
RAD Industrial Automation, Labs, and InstrumentationEmbarcadero Technologies
 
AccML, co-located with HiPEAC 2021_Pedro Trancoso presentation
AccML, co-located with HiPEAC 2021_Pedro Trancoso presentationAccML, co-located with HiPEAC 2021_Pedro Trancoso presentation
AccML, co-located with HiPEAC 2021_Pedro Trancoso presentationVEDLIoT Project
 
02/2017 Santa Clara, California: Networks of autonomous devices and their imp...
02/2017 Santa Clara, California: Networks of autonomous devices and their imp...02/2017 Santa Clara, California: Networks of autonomous devices and their imp...
02/2017 Santa Clara, California: Networks of autonomous devices and their imp...Frank Alexander Reusch
 
How to bootstrap your IoT project
How to bootstrap  your IoT projectHow to bootstrap  your IoT project
How to bootstrap your IoT projectEurotech
 
InduSoft IoTView
InduSoft IoTViewInduSoft IoTView
InduSoft IoTViewAVEVA
 
Convergence of device and data at the Edge Cloud
Convergence of device and data at the Edge CloudConvergence of device and data at the Edge Cloud
Convergence of device and data at the Edge CloudMichelle Holley
 
Byte lab Presentation
Byte lab Presentation Byte lab Presentation
Byte lab Presentation Byte Lab
 
“Accelerate Tomorrow’s Models with Lattice FPGAs,” a Presentation from Lattic...
“Accelerate Tomorrow’s Models with Lattice FPGAs,” a Presentation from Lattic...“Accelerate Tomorrow’s Models with Lattice FPGAs,” a Presentation from Lattic...
“Accelerate Tomorrow’s Models with Lattice FPGAs,” a Presentation from Lattic...Edge AI and Vision Alliance
 
Chapter-2 Internet of Things.pptx
Chapter-2 Internet of Things.pptxChapter-2 Internet of Things.pptx
Chapter-2 Internet of Things.pptx40NehaPagariya
 
IEEE SusTech IoT Keynote Presentation 10/10/16
IEEE SusTech IoT Keynote Presentation 10/10/16IEEE SusTech IoT Keynote Presentation 10/10/16
IEEE SusTech IoT Keynote Presentation 10/10/16Mark Goldstein
 
IEEE CS Phoenix - Internet of Things Innovations & Megatrends 12/2/15
IEEE CS Phoenix - Internet of Things Innovations & Megatrends 12/2/15IEEE CS Phoenix - Internet of Things Innovations & Megatrends 12/2/15
IEEE CS Phoenix - Internet of Things Innovations & Megatrends 12/2/15Mark Goldstein
 
IEEE CS Phoenix - Internet of Things Innovations & Megatrends Update
IEEE CS Phoenix - Internet of Things Innovations & Megatrends UpdateIEEE CS Phoenix - Internet of Things Innovations & Megatrends Update
IEEE CS Phoenix - Internet of Things Innovations & Megatrends UpdateMark Goldstein
 
Software virtualization lessons for extreme IoT portability and scale
Software virtualization lessons for extreme IoT portability and scaleSoftware virtualization lessons for extreme IoT portability and scale
Software virtualization lessons for extreme IoT portability and scaleMicroEJ
 
InduSoft Building Automation and Energy Management Webinar
InduSoft Building Automation and Energy Management WebinarInduSoft Building Automation and Energy Management Webinar
InduSoft Building Automation and Energy Management WebinarAVEVA
 
White Box Hardware Challenges in the 5G & IoT Hyperconnected Era
White Box Hardware Challenges in the 5G & IoT Hyperconnected EraWhite Box Hardware Challenges in the 5G & IoT Hyperconnected Era
White Box Hardware Challenges in the 5G & IoT Hyperconnected EraCharo Sanchez
 
IT Solution through IoT Development
IT Solution through IoT DevelopmentIT Solution through IoT Development
IT Solution through IoT DevelopmentAndri Yadi
 

Semelhante a IoT Week 2021_Jens Hagemeyer presentation (20)

RAD Industrial Automation, Labs, and Instrumentation
RAD Industrial Automation, Labs, and InstrumentationRAD Industrial Automation, Labs, and Instrumentation
RAD Industrial Automation, Labs, and Instrumentation
 
AccML, co-located with HiPEAC 2021_Pedro Trancoso presentation
AccML, co-located with HiPEAC 2021_Pedro Trancoso presentationAccML, co-located with HiPEAC 2021_Pedro Trancoso presentation
AccML, co-located with HiPEAC 2021_Pedro Trancoso presentation
 
Chapter - One.ppt
Chapter - One.pptChapter - One.ppt
Chapter - One.ppt
 
02/2017 Santa Clara, California: Networks of autonomous devices and their imp...
02/2017 Santa Clara, California: Networks of autonomous devices and their imp...02/2017 Santa Clara, California: Networks of autonomous devices and their imp...
02/2017 Santa Clara, California: Networks of autonomous devices and their imp...
 
How to bootstrap your IoT project
How to bootstrap  your IoT projectHow to bootstrap  your IoT project
How to bootstrap your IoT project
 
Resume_Pratik
Resume_PratikResume_Pratik
Resume_Pratik
 
Ankit sarin
Ankit sarinAnkit sarin
Ankit sarin
 
InduSoft IoTView
InduSoft IoTViewInduSoft IoTView
InduSoft IoTView
 
Convergence of device and data at the Edge Cloud
Convergence of device and data at the Edge CloudConvergence of device and data at the Edge Cloud
Convergence of device and data at the Edge Cloud
 
Byte lab Presentation
Byte lab Presentation Byte lab Presentation
Byte lab Presentation
 
“Accelerate Tomorrow’s Models with Lattice FPGAs,” a Presentation from Lattic...
“Accelerate Tomorrow’s Models with Lattice FPGAs,” a Presentation from Lattic...“Accelerate Tomorrow’s Models with Lattice FPGAs,” a Presentation from Lattic...
“Accelerate Tomorrow’s Models with Lattice FPGAs,” a Presentation from Lattic...
 
Chapter-2 Internet of Things.pptx
Chapter-2 Internet of Things.pptxChapter-2 Internet of Things.pptx
Chapter-2 Internet of Things.pptx
 
IEEE SusTech IoT Keynote Presentation 10/10/16
IEEE SusTech IoT Keynote Presentation 10/10/16IEEE SusTech IoT Keynote Presentation 10/10/16
IEEE SusTech IoT Keynote Presentation 10/10/16
 
IEEE CS Phoenix - Internet of Things Innovations & Megatrends 12/2/15
IEEE CS Phoenix - Internet of Things Innovations & Megatrends 12/2/15IEEE CS Phoenix - Internet of Things Innovations & Megatrends 12/2/15
IEEE CS Phoenix - Internet of Things Innovations & Megatrends 12/2/15
 
IEEE CS Phoenix - Internet of Things Innovations & Megatrends Update
IEEE CS Phoenix - Internet of Things Innovations & Megatrends UpdateIEEE CS Phoenix - Internet of Things Innovations & Megatrends Update
IEEE CS Phoenix - Internet of Things Innovations & Megatrends Update
 
Software virtualization lessons for extreme IoT portability and scale
Software virtualization lessons for extreme IoT portability and scaleSoftware virtualization lessons for extreme IoT portability and scale
Software virtualization lessons for extreme IoT portability and scale
 
InduSoft Building Automation and Energy Management Webinar
InduSoft Building Automation and Energy Management WebinarInduSoft Building Automation and Energy Management Webinar
InduSoft Building Automation and Energy Management Webinar
 
LEGaTO: Use cases
LEGaTO: Use casesLEGaTO: Use cases
LEGaTO: Use cases
 
White Box Hardware Challenges in the 5G & IoT Hyperconnected Era
White Box Hardware Challenges in the 5G & IoT Hyperconnected EraWhite Box Hardware Challenges in the 5G & IoT Hyperconnected Era
White Box Hardware Challenges in the 5G & IoT Hyperconnected Era
 
IT Solution through IoT Development
IT Solution through IoT DevelopmentIT Solution through IoT Development
IT Solution through IoT Development
 

Mais de VEDLIoT Project

IoT Tech Expo 2023_Micha vor dem Berge presentation
IoT Tech Expo 2023_Micha vor dem Berge presentationIoT Tech Expo 2023_Micha vor dem Berge presentation
IoT Tech Expo 2023_Micha vor dem Berge presentationVEDLIoT Project
 
Computing Frontiers 2023_Pedro Trancoso presentation
Computing Frontiers 2023_Pedro Trancoso presentationComputing Frontiers 2023_Pedro Trancoso presentation
Computing Frontiers 2023_Pedro Trancoso presentationVEDLIoT Project
 
HiPEAC-CSW 2022_Pedro Trancoso presentation
HiPEAC-CSW 2022_Pedro Trancoso presentationHiPEAC-CSW 2022_Pedro Trancoso presentation
HiPEAC-CSW 2022_Pedro Trancoso presentationVEDLIoT Project
 
IoT Week 2022-NGIoT session_Micha vor dem Berge presentation
IoT Week 2022-NGIoT session_Micha vor dem Berge presentationIoT Week 2022-NGIoT session_Micha vor dem Berge presentation
IoT Week 2022-NGIoT session_Micha vor dem Berge presentationVEDLIoT Project
 
Next Generation IoT Architectures_Hans Salomonsson
Next Generation IoT Architectures_Hans SalomonssonNext Generation IoT Architectures_Hans Salomonsson
Next Generation IoT Architectures_Hans SalomonssonVEDLIoT Project
 
IoT Tech Expo 2023_Pedro Trancoso presentation
IoT Tech Expo 2023_Pedro Trancoso presentationIoT Tech Expo 2023_Pedro Trancoso presentation
IoT Tech Expo 2023_Pedro Trancoso presentationVEDLIoT Project
 
HiPEAC-CSW 2022_Kevin Mika presentation
HiPEAC-CSW 2022_Kevin Mika presentationHiPEAC-CSW 2022_Kevin Mika presentation
HiPEAC-CSW 2022_Kevin Mika presentationVEDLIoT Project
 
HiPEAC 2022-DL4IoT workshop_René Griessl presentation
HiPEAC 2022-DL4IoT workshop_René Griessl presentationHiPEAC 2022-DL4IoT workshop_René Griessl presentation
HiPEAC 2022-DL4IoT workshop_René Griessl presentationVEDLIoT Project
 
HiPEAC 2022_Marcelo Pasin presentation
HiPEAC 2022_Marcelo Pasin presentationHiPEAC 2022_Marcelo Pasin presentation
HiPEAC 2022_Marcelo Pasin presentationVEDLIoT Project
 
IoT Tech Expo 2023_Marcelo Pasin presentation
IoT Tech Expo 2023_Marcelo Pasin presentationIoT Tech Expo 2023_Marcelo Pasin presentation
IoT Tech Expo 2023_Marcelo Pasin presentationVEDLIoT Project
 
IoT Tech Expo 2023_Hans-Martin Heyn presentation
IoT Tech Expo 2023_Hans-Martin Heyn presentationIoT Tech Expo 2023_Hans-Martin Heyn presentation
IoT Tech Expo 2023_Hans-Martin Heyn presentationVEDLIoT Project
 
HiPEAC 2022_Marco Tassemeier presentation
HiPEAC 2022_Marco Tassemeier presentationHiPEAC 2022_Marco Tassemeier presentation
HiPEAC 2022_Marco Tassemeier presentationVEDLIoT Project
 
HiPEAC Computing Systems Week 2022_Mario Porrmann presentation
HiPEAC Computing Systems Week 2022_Mario Porrmann presentationHiPEAC Computing Systems Week 2022_Mario Porrmann presentation
HiPEAC Computing Systems Week 2022_Mario Porrmann presentationVEDLIoT Project
 
HiPEAC2022_António Casimiro presentation
HiPEAC2022_António Casimiro presentationHiPEAC2022_António Casimiro presentation
HiPEAC2022_António Casimiro presentationVEDLIoT Project
 
NGIoT Sustainability Workshop 2023_ Hans-Martin Heyn presentation
NGIoT Sustainability Workshop 2023_ Hans-Martin Heyn presentationNGIoT Sustainability Workshop 2023_ Hans-Martin Heyn presentation
NGIoT Sustainability Workshop 2023_ Hans-Martin Heyn presentationVEDLIoT Project
 
NGIoT Sustainability Workshop 2023_Rene Griessl presentation
NGIoT Sustainability Workshop 2023_Rene Griessl presentationNGIoT Sustainability Workshop 2023_Rene Griessl presentation
NGIoT Sustainability Workshop 2023_Rene Griessl presentationVEDLIoT Project
 
HiPEAC2022-DL4IoT workshop_ Muhammad Waqar Azhar
HiPEAC2022-DL4IoT workshop_ Muhammad Waqar AzharHiPEAC2022-DL4IoT workshop_ Muhammad Waqar Azhar
HiPEAC2022-DL4IoT workshop_ Muhammad Waqar AzharVEDLIoT Project
 
VEDLIoT at FPL'23_Accelerators for Heterogenous Computing in AIoT
VEDLIoT at FPL'23_Accelerators for Heterogenous Computing in AIoTVEDLIoT at FPL'23_Accelerators for Heterogenous Computing in AIoT
VEDLIoT at FPL'23_Accelerators for Heterogenous Computing in AIoTVEDLIoT Project
 

Mais de VEDLIoT Project (18)

IoT Tech Expo 2023_Micha vor dem Berge presentation
IoT Tech Expo 2023_Micha vor dem Berge presentationIoT Tech Expo 2023_Micha vor dem Berge presentation
IoT Tech Expo 2023_Micha vor dem Berge presentation
 
Computing Frontiers 2023_Pedro Trancoso presentation
Computing Frontiers 2023_Pedro Trancoso presentationComputing Frontiers 2023_Pedro Trancoso presentation
Computing Frontiers 2023_Pedro Trancoso presentation
 
HiPEAC-CSW 2022_Pedro Trancoso presentation
HiPEAC-CSW 2022_Pedro Trancoso presentationHiPEAC-CSW 2022_Pedro Trancoso presentation
HiPEAC-CSW 2022_Pedro Trancoso presentation
 
IoT Week 2022-NGIoT session_Micha vor dem Berge presentation
IoT Week 2022-NGIoT session_Micha vor dem Berge presentationIoT Week 2022-NGIoT session_Micha vor dem Berge presentation
IoT Week 2022-NGIoT session_Micha vor dem Berge presentation
 
Next Generation IoT Architectures_Hans Salomonsson
Next Generation IoT Architectures_Hans SalomonssonNext Generation IoT Architectures_Hans Salomonsson
Next Generation IoT Architectures_Hans Salomonsson
 
IoT Tech Expo 2023_Pedro Trancoso presentation
IoT Tech Expo 2023_Pedro Trancoso presentationIoT Tech Expo 2023_Pedro Trancoso presentation
IoT Tech Expo 2023_Pedro Trancoso presentation
 
HiPEAC-CSW 2022_Kevin Mika presentation
HiPEAC-CSW 2022_Kevin Mika presentationHiPEAC-CSW 2022_Kevin Mika presentation
HiPEAC-CSW 2022_Kevin Mika presentation
 
HiPEAC 2022-DL4IoT workshop_René Griessl presentation
HiPEAC 2022-DL4IoT workshop_René Griessl presentationHiPEAC 2022-DL4IoT workshop_René Griessl presentation
HiPEAC 2022-DL4IoT workshop_René Griessl presentation
 
HiPEAC 2022_Marcelo Pasin presentation
HiPEAC 2022_Marcelo Pasin presentationHiPEAC 2022_Marcelo Pasin presentation
HiPEAC 2022_Marcelo Pasin presentation
 
IoT Tech Expo 2023_Marcelo Pasin presentation
IoT Tech Expo 2023_Marcelo Pasin presentationIoT Tech Expo 2023_Marcelo Pasin presentation
IoT Tech Expo 2023_Marcelo Pasin presentation
 
IoT Tech Expo 2023_Hans-Martin Heyn presentation
IoT Tech Expo 2023_Hans-Martin Heyn presentationIoT Tech Expo 2023_Hans-Martin Heyn presentation
IoT Tech Expo 2023_Hans-Martin Heyn presentation
 
HiPEAC 2022_Marco Tassemeier presentation
HiPEAC 2022_Marco Tassemeier presentationHiPEAC 2022_Marco Tassemeier presentation
HiPEAC 2022_Marco Tassemeier presentation
 
HiPEAC Computing Systems Week 2022_Mario Porrmann presentation
HiPEAC Computing Systems Week 2022_Mario Porrmann presentationHiPEAC Computing Systems Week 2022_Mario Porrmann presentation
HiPEAC Computing Systems Week 2022_Mario Porrmann presentation
 
HiPEAC2022_António Casimiro presentation
HiPEAC2022_António Casimiro presentationHiPEAC2022_António Casimiro presentation
HiPEAC2022_António Casimiro presentation
 
NGIoT Sustainability Workshop 2023_ Hans-Martin Heyn presentation
NGIoT Sustainability Workshop 2023_ Hans-Martin Heyn presentationNGIoT Sustainability Workshop 2023_ Hans-Martin Heyn presentation
NGIoT Sustainability Workshop 2023_ Hans-Martin Heyn presentation
 
NGIoT Sustainability Workshop 2023_Rene Griessl presentation
NGIoT Sustainability Workshop 2023_Rene Griessl presentationNGIoT Sustainability Workshop 2023_Rene Griessl presentation
NGIoT Sustainability Workshop 2023_Rene Griessl presentation
 
HiPEAC2022-DL4IoT workshop_ Muhammad Waqar Azhar
HiPEAC2022-DL4IoT workshop_ Muhammad Waqar AzharHiPEAC2022-DL4IoT workshop_ Muhammad Waqar Azhar
HiPEAC2022-DL4IoT workshop_ Muhammad Waqar Azhar
 
VEDLIoT at FPL'23_Accelerators for Heterogenous Computing in AIoT
VEDLIoT at FPL'23_Accelerators for Heterogenous Computing in AIoTVEDLIoT at FPL'23_Accelerators for Heterogenous Computing in AIoT
VEDLIoT at FPL'23_Accelerators for Heterogenous Computing in AIoT
 

Último

Green chemistry and Sustainable development.pptx
Green chemistry  and Sustainable development.pptxGreen chemistry  and Sustainable development.pptx
Green chemistry and Sustainable development.pptxRajatChauhan518211
 
Orientation, design and principles of polyhouse
Orientation, design and principles of polyhouseOrientation, design and principles of polyhouse
Orientation, design and principles of polyhousejana861314
 
Labelling Requirements and Label Claims for Dietary Supplements and Recommend...
Labelling Requirements and Label Claims for Dietary Supplements and Recommend...Labelling Requirements and Label Claims for Dietary Supplements and Recommend...
Labelling Requirements and Label Claims for Dietary Supplements and Recommend...Lokesh Kothari
 
Zoology 4th semester series (krishna).pdf
Zoology 4th semester series (krishna).pdfZoology 4th semester series (krishna).pdf
Zoology 4th semester series (krishna).pdfSumit Kumar yadav
 
Discovery of an Accretion Streamer and a Slow Wide-angle Outflow around FUOri...
Discovery of an Accretion Streamer and a Slow Wide-angle Outflow around FUOri...Discovery of an Accretion Streamer and a Slow Wide-angle Outflow around FUOri...
Discovery of an Accretion Streamer and a Slow Wide-angle Outflow around FUOri...Sérgio Sacani
 
TEST BANK For Radiologic Science for Technologists, 12th Edition by Stewart C...
TEST BANK For Radiologic Science for Technologists, 12th Edition by Stewart C...TEST BANK For Radiologic Science for Technologists, 12th Edition by Stewart C...
TEST BANK For Radiologic Science for Technologists, 12th Edition by Stewart C...ssifa0344
 
Broad bean, Lima Bean, Jack bean, Ullucus.pptx
Broad bean, Lima Bean, Jack bean, Ullucus.pptxBroad bean, Lima Bean, Jack bean, Ullucus.pptx
Broad bean, Lima Bean, Jack bean, Ullucus.pptxjana861314
 
Spermiogenesis or Spermateleosis or metamorphosis of spermatid
Spermiogenesis or Spermateleosis or metamorphosis of spermatidSpermiogenesis or Spermateleosis or metamorphosis of spermatid
Spermiogenesis or Spermateleosis or metamorphosis of spermatidSarthak Sekhar Mondal
 
SOLUBLE PATTERN RECOGNITION RECEPTORS.pptx
SOLUBLE PATTERN RECOGNITION RECEPTORS.pptxSOLUBLE PATTERN RECOGNITION RECEPTORS.pptx
SOLUBLE PATTERN RECOGNITION RECEPTORS.pptxkessiyaTpeter
 
PossibleEoarcheanRecordsoftheGeomagneticFieldPreservedintheIsuaSupracrustalBe...
PossibleEoarcheanRecordsoftheGeomagneticFieldPreservedintheIsuaSupracrustalBe...PossibleEoarcheanRecordsoftheGeomagneticFieldPreservedintheIsuaSupracrustalBe...
PossibleEoarcheanRecordsoftheGeomagneticFieldPreservedintheIsuaSupracrustalBe...Sérgio Sacani
 
Nightside clouds and disequilibrium chemistry on the hot Jupiter WASP-43b
Nightside clouds and disequilibrium chemistry on the hot Jupiter WASP-43bNightside clouds and disequilibrium chemistry on the hot Jupiter WASP-43b
Nightside clouds and disequilibrium chemistry on the hot Jupiter WASP-43bSérgio Sacani
 
Pests of cotton_Borer_Pests_Binomics_Dr.UPR.pdf
Pests of cotton_Borer_Pests_Binomics_Dr.UPR.pdfPests of cotton_Borer_Pests_Binomics_Dr.UPR.pdf
Pests of cotton_Borer_Pests_Binomics_Dr.UPR.pdfPirithiRaju
 
Recombination DNA Technology (Nucleic Acid Hybridization )
Recombination DNA Technology (Nucleic Acid Hybridization )Recombination DNA Technology (Nucleic Acid Hybridization )
Recombination DNA Technology (Nucleic Acid Hybridization )aarthirajkumar25
 
9654467111 Call Girls In Raj Nagar Delhi Short 1500 Night 6000
9654467111 Call Girls In Raj Nagar Delhi Short 1500 Night 60009654467111 Call Girls In Raj Nagar Delhi Short 1500 Night 6000
9654467111 Call Girls In Raj Nagar Delhi Short 1500 Night 6000Sapana Sha
 
Recombinant DNA technology (Immunological screening)
Recombinant DNA technology (Immunological screening)Recombinant DNA technology (Immunological screening)
Recombinant DNA technology (Immunological screening)PraveenaKalaiselvan1
 
GBSN - Microbiology (Unit 1)
GBSN - Microbiology (Unit 1)GBSN - Microbiology (Unit 1)
GBSN - Microbiology (Unit 1)Areesha Ahmad
 
Hire 💕 9907093804 Hooghly Call Girls Service Call Girls Agency
Hire 💕 9907093804 Hooghly Call Girls Service Call Girls AgencyHire 💕 9907093804 Hooghly Call Girls Service Call Girls Agency
Hire 💕 9907093804 Hooghly Call Girls Service Call Girls AgencySheetal Arora
 
Biological Classification BioHack (3).pdf
Biological Classification BioHack (3).pdfBiological Classification BioHack (3).pdf
Biological Classification BioHack (3).pdfmuntazimhurra
 
Raman spectroscopy.pptx M Pharm, M Sc, Advanced Spectral Analysis
Raman spectroscopy.pptx M Pharm, M Sc, Advanced Spectral AnalysisRaman spectroscopy.pptx M Pharm, M Sc, Advanced Spectral Analysis
Raman spectroscopy.pptx M Pharm, M Sc, Advanced Spectral AnalysisDiwakar Mishra
 

Último (20)

Green chemistry and Sustainable development.pptx
Green chemistry  and Sustainable development.pptxGreen chemistry  and Sustainable development.pptx
Green chemistry and Sustainable development.pptx
 
Orientation, design and principles of polyhouse
Orientation, design and principles of polyhouseOrientation, design and principles of polyhouse
Orientation, design and principles of polyhouse
 
Labelling Requirements and Label Claims for Dietary Supplements and Recommend...
Labelling Requirements and Label Claims for Dietary Supplements and Recommend...Labelling Requirements and Label Claims for Dietary Supplements and Recommend...
Labelling Requirements and Label Claims for Dietary Supplements and Recommend...
 
Zoology 4th semester series (krishna).pdf
Zoology 4th semester series (krishna).pdfZoology 4th semester series (krishna).pdf
Zoology 4th semester series (krishna).pdf
 
Discovery of an Accretion Streamer and a Slow Wide-angle Outflow around FUOri...
Discovery of an Accretion Streamer and a Slow Wide-angle Outflow around FUOri...Discovery of an Accretion Streamer and a Slow Wide-angle Outflow around FUOri...
Discovery of an Accretion Streamer and a Slow Wide-angle Outflow around FUOri...
 
TEST BANK For Radiologic Science for Technologists, 12th Edition by Stewart C...
TEST BANK For Radiologic Science for Technologists, 12th Edition by Stewart C...TEST BANK For Radiologic Science for Technologists, 12th Edition by Stewart C...
TEST BANK For Radiologic Science for Technologists, 12th Edition by Stewart C...
 
Broad bean, Lima Bean, Jack bean, Ullucus.pptx
Broad bean, Lima Bean, Jack bean, Ullucus.pptxBroad bean, Lima Bean, Jack bean, Ullucus.pptx
Broad bean, Lima Bean, Jack bean, Ullucus.pptx
 
Spermiogenesis or Spermateleosis or metamorphosis of spermatid
Spermiogenesis or Spermateleosis or metamorphosis of spermatidSpermiogenesis or Spermateleosis or metamorphosis of spermatid
Spermiogenesis or Spermateleosis or metamorphosis of spermatid
 
SOLUBLE PATTERN RECOGNITION RECEPTORS.pptx
SOLUBLE PATTERN RECOGNITION RECEPTORS.pptxSOLUBLE PATTERN RECOGNITION RECEPTORS.pptx
SOLUBLE PATTERN RECOGNITION RECEPTORS.pptx
 
PossibleEoarcheanRecordsoftheGeomagneticFieldPreservedintheIsuaSupracrustalBe...
PossibleEoarcheanRecordsoftheGeomagneticFieldPreservedintheIsuaSupracrustalBe...PossibleEoarcheanRecordsoftheGeomagneticFieldPreservedintheIsuaSupracrustalBe...
PossibleEoarcheanRecordsoftheGeomagneticFieldPreservedintheIsuaSupracrustalBe...
 
Nightside clouds and disequilibrium chemistry on the hot Jupiter WASP-43b
Nightside clouds and disequilibrium chemistry on the hot Jupiter WASP-43bNightside clouds and disequilibrium chemistry on the hot Jupiter WASP-43b
Nightside clouds and disequilibrium chemistry on the hot Jupiter WASP-43b
 
Pests of cotton_Borer_Pests_Binomics_Dr.UPR.pdf
Pests of cotton_Borer_Pests_Binomics_Dr.UPR.pdfPests of cotton_Borer_Pests_Binomics_Dr.UPR.pdf
Pests of cotton_Borer_Pests_Binomics_Dr.UPR.pdf
 
Recombination DNA Technology (Nucleic Acid Hybridization )
Recombination DNA Technology (Nucleic Acid Hybridization )Recombination DNA Technology (Nucleic Acid Hybridization )
Recombination DNA Technology (Nucleic Acid Hybridization )
 
9654467111 Call Girls In Raj Nagar Delhi Short 1500 Night 6000
9654467111 Call Girls In Raj Nagar Delhi Short 1500 Night 60009654467111 Call Girls In Raj Nagar Delhi Short 1500 Night 6000
9654467111 Call Girls In Raj Nagar Delhi Short 1500 Night 6000
 
Recombinant DNA technology (Immunological screening)
Recombinant DNA technology (Immunological screening)Recombinant DNA technology (Immunological screening)
Recombinant DNA technology (Immunological screening)
 
GBSN - Microbiology (Unit 1)
GBSN - Microbiology (Unit 1)GBSN - Microbiology (Unit 1)
GBSN - Microbiology (Unit 1)
 
9953056974 Young Call Girls In Mahavir enclave Indian Quality Escort service
9953056974 Young Call Girls In Mahavir enclave Indian Quality Escort service9953056974 Young Call Girls In Mahavir enclave Indian Quality Escort service
9953056974 Young Call Girls In Mahavir enclave Indian Quality Escort service
 
Hire 💕 9907093804 Hooghly Call Girls Service Call Girls Agency
Hire 💕 9907093804 Hooghly Call Girls Service Call Girls AgencyHire 💕 9907093804 Hooghly Call Girls Service Call Girls Agency
Hire 💕 9907093804 Hooghly Call Girls Service Call Girls Agency
 
Biological Classification BioHack (3).pdf
Biological Classification BioHack (3).pdfBiological Classification BioHack (3).pdf
Biological Classification BioHack (3).pdf
 
Raman spectroscopy.pptx M Pharm, M Sc, Advanced Spectral Analysis
Raman spectroscopy.pptx M Pharm, M Sc, Advanced Spectral AnalysisRaman spectroscopy.pptx M Pharm, M Sc, Advanced Spectral Analysis
Raman spectroscopy.pptx M Pharm, M Sc, Advanced Spectral Analysis
 

IoT Week 2021_Jens Hagemeyer presentation

  • 1. Jens Hagemeyer, Carola Haumann Training Session on Machine Learning at the Edge and the FarEdge 30. August 2021 VEDLIoT – A heterogeneous hardware platform for next-gen AIoT applications Teaching the IoT to learn
  • 2. 2  Platform  Hardware: Scalable, heterogeneous, distributed  Accelerators: Efficiency boost by FPGA and ASIC technology  Toolchain: Optimizing Deep Learning for IoT  Use cases  Industrial IoT  Automotive  Smart Home  Open call  At project mid-term  Early use and evaluation of VEDLIoT technology Very Efficient Deep Learning for IoT – VEDLIoT  Call: H2020-ICT2020-1  Topic: ICT-56-2020 Next Generation Internet of Things  Duration: 1. November 2020 – 31. Oktober 2023  Coordinator: Bielefeld University (Germany)  Overall budget: 7 996 646.25 €  Consortium: 12 partners from 4 EU countries (Germany, Poland, Portugal and Sweden) and one associated country (Switzerland). More info:  https://www.vedliot.eu/  https://twitter.com/VEDLIoT  https://www.linkedin.com/company/vedliot/
  • 3. 3  Bielefeld University (UNIBI) - Coordinator  Christmann (CHR)  University of Osnabrück (UOS)  Siemens (SIEMENS)  University of Neuchâtel (UNINE)  University of Lisbon (FC.ID)  Chalmers (CHALMERS)  University of Gothenburg (UGOT)  RISE (RISE)  EmbeDL (EMBEDL)  Veoneer (VEONEER)  Antmicro (ANT) VEDLIOT partners
  • 4. 4 Cognitive IoT Platforms Security, Privacy and Trust, Robustness and Safety Hardware Accelerators Requirements Use Cases Industrial IoT Smart Home Automotive Open Call Toolchain VEDLIoT structure 10x performance improvement 10x efficiency improvement Reconfigurable, heterogeneous, scalable
  • 5. 5 VEDLIoT Hardware Platform  Heterogeneous, modular, scalable microserver system  Supporting the full spectrum of IoT from embedded over the edge towards the cloud  Different technology concepts for improving x86 GPU ML-ASIC ARM v8 GPU SoC FPGA SoC RISC-V FPGA VEDLIOT Cognitive IoT Platform  Performance  Cost-effectiveness  Maintainability  Reliability  Energy-Efficiency  Safety
  • 6. 6 RECS Architecture (RECS|BOX) RECS Server Backplane (up to 15 Carriers) Carrier (PCIe Expansion) Carrier (High Performance) e.g. GPU-Accelerator Carrier (Low Power) #3 #2 Microserver (High Performance) #1 Microserver (Low Power) #16 #3 #2 Microserver (Low Power) #1 High-Speed Low-Latency Network (PCIe, High-Speed Serial) Compute Network (up to 40 GbE) Management Network (KVM, Monitoring, …) HDMI/USB iPass+ HD QSFP+ RJ45 Ext. Connectors GPU SoC FPGA SoC ARM Soc Low-Power Microserver (Apalis/Jetson) x86 ARM v8 High-Performance Microserver (COM Express) FPGA SoC High-Performance Carrier (up to 3 microservers) Low-Power Carrier (up to 16 microservers)
  • 7. 7 RECS Architecture (t.RECS) • Optimized platform for local / edge applications • Provide interfaces for – Video – Camera – Peripheral input (USB) • Combine FPGA and GPU acceleration • Compact dimensions 1RU, E-ATX form factor (2 RU/ 3 RU for special cases) t.RECS Edge Server Microserver (COM-HPC Client) Microserver (COM-HPC Client) Microserver (COM-HPC Server) Switched PCIe (Host to Host) External interfaces PCIe expansion Ethernet (up to 10 GbE) Management Network (KVM, Monitoring, …) I/O (Camera, Display, Radar/Lidar, Audio)
  • 8. 8  Embedded Device  Supports ML acceleration  FPGA  ASIC  Communication interfaces  Wired (CAN, Ethernet, CSI)  Wireless (WLAN, LoRa, 5G)  Sensors  Camera  Environment (Temp./Hum.)  Housekeeping RECS Architecture (µ.RECS) u.RECS Edge Server ML Accelerator M.2 SMARC 2.1 JETSON NX PCIe Mux Management System GbE Switch Peripherals and I/O Sensors (CSI, ADC, I2S,…) RJ45 SPE LoRa WiFi /BLE USB3.x 4G/5G
  • 10. 10 Flexible and adaptable Accelerators for Deep Learning DL Model DL Model CPU, GPU- SoC, ML-SoC FPGA-SoC  End of Moore’s law & dark silicon => Domain Specific Architectures (DSA)  Efficient, flexible, scalable accelerators for the compute continuum  Algotecture  Optimized DL algorithms  Optimized toolchain  Optimized computer architecture Heterogeneous DL Accelerator Algotecture/ Co-Designed DL Accelerator Compiler Co-Design
  • 11. 11 VEDLIoT‘s Deep Learning Toolchain Enabling the rapid convergence of the fast pace innovation on the hardware and software Frameworks & Exchange Formats Optimization Engine Compilers & Runtime APIs Heterogeneous Hardware Platforms
  • 12. 12  Increase safety, health and well being of residents – acceleration of AI methods for demand-oriented user-home interaction  Smart Mirror as central user interface  Own mirror image can be seen normally  Intuitive control over gesture and voice  Shows personalized information  Data Privacy as the highest priority  Edge computation of many neural networks Use case: Smart Home / Assisted Living
  • 13. 13  Face recognition  mobilenetSSD trained on WIDERFACE dataset  Object detection  YoloV3, Efficient-Net, yoloV4-tiny  Gesture detection  YoloV4-tiny with 3 Yolo layers (usually: 2 layers)  Speech recognition  Mozilla DeepSpeech  AI Art: Style-Gan trained on works of arts  Collect usage data in situation memory Use case: Smart Mirror – Neural Networks
  • 14. 14 Use case: Industrial IoT – drive condition classification  Control applications need DL-based condition classification  On the edge device for low power consumption  Suggestions for control and maintenance  DL methods on all communication layers  DL in a distributed architecture  Dynamically configured systems  Sensored testbench with 2 motors  Acceleration, Magnetic field, Temperature, IR-Cam (temperature), Current-Sensors, Torque  On / Off detection without motor current or voltage  Cooling fault detection  Bearing fault detection
  • 15. 15 Use case: Industrial IoT – Arc detectioc  AI based pattern recognition for different local sensor data  current, magnetic field, vibration, temperature, low resolution infrared picture  Safety critical nature  response time should be <10ms  AI based or AI supported decision made by the sensor node itself or by a local part of the sensor network
  • 16. 16  Focus on collision detection/avoidance scenario  Improve performance/cost ratio – AI processing hardware distributed over the entire chain Use case: Automotive
  • 17. 17 Follow our work https://twitter.com/VEDLIoT https://www.linkedin.com/company/vedliot/ https://vedliot.eu Be part of it Open call at project mid-term Allow early use and evaluation of VEDLIoT technology
  • 18. 18 Thank you for your attention. Contact Jens Hagemeyer, Carola Haumann Bielefeld University, Germany chaumann@cor-lab.uni-bielefeld.de jhagemey@cit-ec.uni-bielefeld.de
  • 19. 19 End-to-end attestation, support for execution and communication  Support for  End-to-end trust (attestation)  Secrets distribution (keys)  Machine learning (federated, streaming, …)  Requirements  Support for edge applications  Decentralised, dynamic, loosely organised  Rely on  Trusted execution environments  BFT and peer-to-peer algorithms  Blockchain concepts VEDLIoT app Attestation Pool
  • 20. 20 Simulation platform for IoT  Open source framework for software/hardware co-development with CI-driven testing capabilities, as well as metrics for measuring efficiency of ML workloads  Enables development and continuous testing of VEDLIoT’s security features and its robustness  Renode is available to all project members and future users of VEDLIoT and will include a simulated model of the RISC-V-based FPGA SoC platform developed as part of the VEDLIoT project
  • 21. 21 Safety and robustness  Define monitors for timeliness and data quality assessment  Develop safety argumentation for adaptive solutions, exploiting architectural hybridization Hybrid System architecture: • Some system components implemented with assured reliability (as needed) • Remaining components subject to uncertainties and prone to failures Safety requirements: • Defined at design time for each operational mode Monitoring data: • Collected in run-time, to allow verifying if safety requirements are being satisfied and trigger reconfiguration if not Timeliness (e.g., deadline miss detection) Sensor data quality (e.g., outlier, noise detection) Accuracy of DL systems (e.g., anomaly detection)