Battery Data Acquisition and Analysis Using MATLAB

In this webinar, MathWorks engineers will demonstrate how to acquire and analyze battery discharge data using MATLAB. They will show techniques for aligning data traces with different timestamps, repairing datasets with missing data, rejecting noisy data, and other tasks needed for battery modeling and battery management system (BMS) development.
Watch Now

Spotlight

OTHER ON-DEMAND WEBINARS

Streaming Data: The Nexus of Cloud-Modernized Analytics

Leveraging business data as a valuable asset is no longer a debated concept – it’s a broadly adopted, competitive undertaking that’s part and parcel to cloud modernization. Today, if there’s one thing that defines competitive advantage in the data analytics arena it’s streaming data platforms. Older approaches employing batch-only analytics, brittle ETL pipelines, and the latency they can introduce just don’t cut it anymore. Cloud-Modernized Analytics are poised to step in and take over.
Watch Now

Fanatics Ingests Streaming Data to a Data Lake on AWS

awscloud.com

Fanatics, a popular sports apparel website and fan gear merchandiser, needed to ingest terabytes of data from multiple historical and streaming sources transactional, e-commerce, and back-office systems to a data lake on Amazon S3. Once ingested, the data would be analyzed to better identify, predict, and fulfill customer needs related to the products Fanatics offers in over 300 online and offline stores.
Watch Now

How to Use Data Prep to Accelerate Cloud Data Lake Adoption

tdwi

What began as a trickle is now the mainstream: Organizations are moving to the cloud for data management. No longer is the cloud just a cheaper place to park data; it is key to supporting business-critical innovation in advanced analytics, data science, and AI as well as for end-user business intelligence, data exploration, and data visualization. Data lakes and data warehouses running on market-leading platforms such as AWS are growing fast, just as they are on the platforms of competing providers. However, as cloud-based workloads grow in number and size, organizations are facing difficult data preparation challenges. The flow of data raw, diverse, and frequently unstructured can quickly turn cloud data lakes into impenetrable swamps. Without good data preparation technologies and practices, users of all types are frustrated; their productivity and satisfaction suffer because it’s too hard to get accurate data that’s appropriately transformed and structured for their purposes.
Watch Now

MONETIZING BIG DATA CUSTOMER CASE STUDY WITH UNILOG

Paxata

commercializing or sharing their data for revenue. Unilog, a global technology company specializing in enterprise e-commerce solutions and product content services in the B2B marketplace, is an example of one company who successfully monetized upstream manufacturing by enriching, cleaning and joining data needed by its customers – using Paxata’s data preparation solution.
Watch Now