TOPIO NETWORKS FOOTPRINT - Store & Retrieve Data Anywhere · Edge Computing, AI for Edge, Big...

Preview:

Citation preview

www.edgecomputingworld.com

TOPIO NETWORKS FOOTPRINT – Tracking the 4th industrial revolution

2019

Edge Computing (Edgecomputingworld.com)

Community: 120KEdge Computing, AI for Edge, Big Data, Connected Cars, Autonomous Vehicles

2019

Distributed Apps (Edgecomputingworld.com)Community: 60KBlockchain, DApps

2015

Wearables(ReadWrite Labs)Community: 60K

2017

IoT(ReadWrite Labs)Community: 400KIoT, AI for IoT, Smart Home, IoT Connectivity*

Mapping the information & connections necessary to profit from emerging trends

• Identify relevant emerging trends

• Map timing, critical touchpoints and opportunities

• Create industry landscapes

• Develop and nurture impacted communities

• Enable companies and expert voices to contribute content

3 The Golden Age of Location-Enabled AI

Are you prepared to catch the next technology wave?

Open access to our industry research and analysis

Go to market identification from 100s use cases and markets based on market fit, timing and market sizing

Highly focused campaigns based on selected use cases and industries or selected accountsThought leadership opportunities

Our Speakers:

Gavin WhitechurchCo-Founder

Topio Networks & Edge Computing World

- Philippe Cases

- Philippe Cases

- Philippe Cases

- Philippe Cases/Gavin Whitechurch

- AI On Edge Devices:- Consumer- Enterprise

- AI via Connectivity- Telecom Edge- Data Center- Enterprise Core

WHERE COMPUTE ARISES

100

20%

100

25%

100

20%

100%

0%10%

15% 20%

5% Device Edge

70%55%

30% On-Prem Edge

Telco Edge

Cloud Edge

2015 2020

30%

2025

CONFIDENTIAL

Two types of compute:• Inference• Training

Type of activities at the edge:• Device isolated

insights• Data compression

and conversion

Edge AI Feature Requirements

• Edge resident analytics

• Ability to function autonomously

• Lower power consumption

• Latency

• Security, privacy

• Costs

• Scalability across a vast number of edge devices

• Issues associated with Edge:• Lack of device standardization• Infrastructure readiness (device maintenance and updates both hardware and software)• Potential loss of useful insights

Edge Business Benefits

• Faster response times (low latency)

• Reliability

• Reduced network bottlenecks

• Data filtering

• Costs (power, processing, communications)

Predictions about AI on Edge Devices

• Edge Analytics: 2 to 5 years to mainstream adoption

• Tripling number of Edge AI units between 2019 and 2024

••

Devices can go from an autonomous vehicle in the ten of thousand dollars to a proximity sensors at few dollars

Each devices require a different trade off:• Performance• Inference and training location• Size• Cost• Power• Software support • Price

Key KPIs for market entrants

• Clear value proposition (focus on a problem)

• Comprehensive software stack

• Developer community

• Strong support for partner ecosystem

••

••

• Trend 1: Going to the very edge

• Trend 2: Streaming Analytics

• Trend 3: Computational storage

• Trend 4: Healthy climate for innovation in semi conductor companies

• Trend 5: Healthy M&A activity (7 companies acquired)

••

Trend 1 - Going to very edge of the edge: IBM Effort

Trend 1 - Going to the very edge: TinyMLconsortium

• Focus on how best to implement machine learning in ultra-low power systems

• Backed by Google, Qualcomm, Arm, Nvidia, Facebook, Microsoft, Samsung

• Emerging start-ups:• Greenwave systems

• Babble Labs

• ETA compute

• GrAI Matter Labs

• Brainchip

Trend 2: Streaming analytics

• Purposes: Exploring data streams coming from the Edge

• Inference at the Edge

• Training in the cloud or in the edge

• Type of data: mostly sensor type data

Trend 3: Computational Storage

Computational resources into storage devices

Advantage:Lower latencyReducing Bottleneck

Telco Edge, Cloud, Hybrid

Raises US$ 40 millionUse of funds: Build the Edge AI net

Raises US$ 30 millionUse of funds: Accelerate Leadership in Human Security Market

Raises US$ 75 millionUse of funds:Innovating and evolving NLP and Artificial Emotional Computing technologies

Technology: Quantization of neural networks

For Xnor, quantization enables:- 32x memory saving - 58x faster operationsWhile being closer to 2.9% to a model that would operate with the full datasets

Xnor was focused on products that could run independently (on a FPGA Chip powered by a single solar cell…)

Technology: New architecture for Data Center AI Chips focused on deep learning

Habana optimizes on power and costs- 4x more efficient than traditional GPUs such as NVidia

••

Agent Target Systems

High-End ECU with AI Models

CA

N,

LIN

, M

OS

T, F

lexR

ay,

Eth

ern

et

Neural network for predictive maintenance

Source: IIC OTA SIG

Forthcoming Webinars

February 20 Data Platforms for the Smart Building Industry

Philippe Cases, CEO & Co-Founder, Topio Networks

Joseph Aamidor: Aamidor Consulting

Al Sargent: Product Marketing Influx

February 27 Blockchain – State of the Industry Q1 2020

Kyle Ellicott, Principal Blockchain and Dapps Analyst, Topio Networks

Philippe Cases, CEO & Co-Founder, Topio Networks

March 5 Privacy at the Edge

Jessica Groopman, Industry analyst and Founding Partner Kaleido Insights

Gavin Whitechurch, Principal Edge Analyst, Topio Networks

Thank You!Philippe.cases@topionetworks.com

Please Do Complete the Exit Survey !

Recommended