Artificial Intelligence | News | Insights | AiThority
Bitcoin
$11,893.37
+250.72
(+2.15%)
Ethereum
$396.71
+6.49
(+1.66%)
Ripple
$0.30
+0.01
(+2.68%)
Litecoin
$58.47
+1.55
(+2.72%)
EOS
$3.22
+0.22
(+7.15%)
Cardano
$0.14
0
(+0.07%)
Stellar
$0.11
0
(+1.34%)
NEO
$14.62
+1.61
(+12.38%)
NEM
$0.06
-0
(-1.12%)
DigitalCash
$96.29
-0.31
(-0.32%)
Tether
$1.00
0
(+0.1%)
Binance Coin
$22.52
+0.08
(+0.36%)
QTUM
$2.96
+0.27
(+10.17%)
Verge
$0.01
0
(+5.56%)
Ontology
$0.82
+0.03
(+4.27%)
ZCash
$89.81
-1.97
(-2.15%)
Steem
$0.23
+0.01
(+2.64%)

SensiML Adds Rapid Evaluation Capabilities to its Analytics Toolkit for Building Intelligent IoT Endpoints

0 7

Automates Data Science and IoT Device Coding Using AI to Deliver 5x Faster Development over Hand-Coded Sensor Algorithms

SensiML Corporation, a leading developer of AI tools for building intelligent IoT endpoints, announced the availability of a free trial version of its SensiML™ Analytics Toolkit and introduction of its Data Depot sample dataset repository. SensiML offers an IoT AI software program that enables developers to build intelligent endpoints quickly and easily (up to five times faster than hand-coded solutions).  Now with the availability of the free trial and Data Depot dataset repository, developers have the opportunity to easily preview the toolkit and learn how SensiML can vastly accelerate IoT algorithm development prior to purchasing.

The SensiML Analytics Toolkit delivers significant benefits for both the AI endpoint product, as well as the development process for that product. Data science is built into the toolkit, making it usable for mainstream developers – there is no need for a team of AI experts. The toolkit generates code that runs on MCUs (rather than CPUs), enabling the delivery of practical AI on embedded wireless IoT devices.  It also increases power efficiency, with built-in automatically generated optimizations for MCUs, DSPs and FPGAs. All phases of design development are supported, including raw signal capture, data insight and labeling, algorithm generation, firmware code generation, and test validation and support. By automating the implementation of AI-based designs, the toolkit reduces the time and resources typically needed, from five engineer years to just four engineer months.

Read More: Teradata Unifies IT, Marketing, and Customer Intelligence into Single CDP; Launches Vantage CX

Applications for the SensiML Analytics Toolkit include a broad array of time-series sensor intelligence usages across consumer and industrial IoT devices.  Examples of such applications include predictive maintenance, safety wearables, smart appliances, fitness wearables and industrial monitoring, to name just a few.  Sample application datasets and documentation are now available for exploration and use in the SensiML Data Depot dataset repository, which provides a curated set of labeled datasets for a growing list of applications.

The toolkit itself is made up of three components: the SensiML Data Capture Lab, Analytics Studio, and the Test App.  Together, these components provide a complete end-to-end development solution.  Multiple hardware evaluation platforms are supported as well, including the QuickLogic Merced and Chilkat platforms, Raspberry Pi, the ST Sensor Tile and Nordic Thingy to speed evaluation and subsequent design development.

The free trial version of the SensiML Analytics Toolkit includes:

  • Data collection and labeling (using sample datasets)
  • Automated ML algorithm creation
  • Algorithm performance visualization
  • Auto-generation of optimized device code
  • Embedded binary executable output (limited number of classification results)
  • Device test/validation application

Read More: Mitsubishi Electric to Exhibit Autonomous-Driving Technologies Incorporated in New xAUTO Test Vehicle

“We wanted to make it as easy as possible for potential customers to learn about adding AI to their endpoint IoT applications,” said Chris Rogers, CEO at SensiML.  “With this trial version and the SensiML Data Depot, users can quickly explore the design flow for AI-based IoT applications and gain a deeper understanding of how the toolkit can speed their own application development, without requiring large teams of data scientists or engineers.”

Read More: AiThority Interview with Phil Tee, CEO and Co-Founder at Moogsoft

Leave A Reply

Your email address will not be published.

This site uses Akismet to reduce spam. Learn how your comment data is processed.