Tag Archives: Pierre Leroux

Get More Value From Operational Assets with Predictive Analytics

Kaan_groupSharpening operational focus and squeezing more efficiencies out of production assets—these are just two objectives that have COOs and operations managers turning to new technologies. One of the best of these technologies is predictive analytics. Predictive analytics isn’t new, but a growing number of companies are using it in predictive maintenance, quality control, demand forecasting, and other manufacturing functions to deliver efficiencies and make improvements in real time. So what is it?

Predictive analytics is a blend of mathematics and technology learning from experience (the data companies are already collecting) to predict a future behavior or outcome within an acceptable level of reliability.

Predictive analytics can play a substantial role in redefining your operations. Today, let’s explore three additional cases of predictive analytics in action:

  • Predictive maintenance
  • Smart grids
  • Manufacturing

Predictive Maintenance

Predictive maintenance assesses equipment condition on a continuous basis and determines if and when maintenance should be performed. Instead of relying on routine or time-based scheduling, like having your oil changed every 3,000 miles, it promises to save money by calling for maintenance only when needed or to avoid imminent equipment failure.

While equipment is in use, sensors measure vibrations, temperature, high-frequency sound, air pressure, and more. In the case of predictive maintenance, predictive models allow you to make sense of the streaming data and score it on the likelihood of failure occurring. Coupled with in-memory technologies, it can detect machine failures hours in advance of it occurring and avoid unplanned downtime by scheduling maintenance sooner than planned.

This all means less downtime, decreased time to resolution, and optimal longevity and performance for equipment operators. For manufacturers, predictive maintenance can streamline inventory of spare parts and the ongoing monitoring services can become a source of new revenue. And as predictive maintenance becomes part of the equipment, it also has the potential to become a competitive advantage.

Smart Grids

Sensors and predictive analytics are also changing the way utilities manage highly distributed assets like electrical grids. From reliance on unconventional energy sources like solar and wind to the introduction of electric cars, the energy landscape is evolving. One of the biggest challenges facing energy companies today is keeping up with these rapid changes.

Smart grids emerge when sensor data is combined with other data sources such as temperature, humidity, and consumption forecasts at the meter level to predict demand and load. For example, combined with powerful in-memory technologies, predictive analytics can be used by electricity providers to improve load forecasting. That leads to frequent, less expensive adjustments that optimize the grid and maintain delivery of consistent and dependable power.

As more houses are equipped with smart meters, data scientists using predictive analytics can build advanced models and apply forecasting to groups of customers with similar load profiles. They can also present those customers with some ideas to reduce their energy bill.

Manufacturing

The manufacturing industry continues its relentless drive for customization and “Lot sizes of 1” with innovations such as the connected factory, the Internet of Things, next shoring, and 3D printing. It’s also hard at work making sure it extracts the maximum productivity from existing facilities, which traditionally has been accomplished by using automation and IT resources. According to Aberdeen, the need to reduce the cost of manufacturing operations is now the top reason companies seek more insight from data.

Quality control has always been an area where statistical methods have played a key role in whether to accept or reject a lot. Now manufacturers are expanding predictive analytics to the testing phase as well. For example, tests on components like high-end car engines can be stopped long before the end of the actual procedure thanks to predictive analytics. By analyzing test data from the component’s ongoing testing against the data from other engines, engineers can identify potential issues faster. That in turn, maximizes the capacity available for testing and reduces unproductive time. That is only one of the many applications manufacturers find for predictive analytics.

Innovations on the Shop Floor

Predictive analytics provides an excellent opportunity for COOs and operations managers to extract additional value from production assets. It can also be an opportunity to create critical differentiators in the way products are created and delivered to customers—by providing it as a paid service (predictive maintenance) or as insight (predicting future electricity consumption).

However a company chooses to use it, predictive analytics can be the key to beating the competition.

Discover and Follow

And join the predictive conversation by following me on Twitter @pileroux.

AmickBrown.com

 

In the New Digital Economy, Everything Can Be Digitized and Tracked : Now What?

Woman Buying ClothesWelcome to a world where digital reigns supreme. Remember when the Internet was more of a ‘push’ network? Today, it underpins how most people and businesses conduct transactions – providing peer-to-peer connections where every single interaction can be tracked.

Enterprises are still not taking full advantage. With hundreds of millions of people connected, it’s possible for them to connect their suppliers with their customers and their payment systems, and reach the holy grail of seamlessly engaging in commerce, where a transaction can be tracked from purchase, to order received, to manufacturing, through to shipment— all in real time. It’s clear that end-to-end digitization delivers enormous potential, but it has yet to be fully tapped by most companies.

In the latest #askSAP Analytics Innovations Community Webcast, Reimagine Predictive Analytics for the Digital Enterprise, attendees were given an introduction to SAP BusinessObjects Predictive Analytics, along with some key use cases. The presentation covered native in-memory predictive analytics, deploying predictive analytics on Big Data, and how to bring predictive insight to Business Intelligence (BI).

The live, interactive call was moderated by  SAP Mentor  Greg Myers and featured expert speakers Ashish Morzaria, Global GTM Director, Advanced Analytics, and Richard Mooney, Lead Product Manager for Advanced Analytics.

The speakers noted that companies used to become leaders in their industries by establishing an unbeatable brand or by having a supply chain that was more efficient than anyone else’s. While this is still relevant in the digital economy, companies now have to think about how they can turn this new digital economy to their advantage. One of the keys is turning the digital economy’s key driver —the data— to their advantage.

Companies embracing digital transformation are outperforming those who aren’t. With predictive analytics, these companies can use historical data to predict behaviors or outcomes, answer “what-if” questions, and ensure employees have what they need to make optimized decisions. They can fully leverage customer relationships with better insight, and make meaningful sense of Big Data.

One big question delved into during the call: How can companies personalize each interaction across all channels and turn each one into an advantage? The answer: By getting a complete digital picture of their customers and applying predictive analytics to sharpen their marketing focus, optimize their spend, redefine key marketing activities, and offer product recommendations tailored to customers across different channels.

Real-World Customer Stories

The call also focused on some real-world examples of customers achieving value by using and embedding predictive analytics in their decisions and operations, including Cox Cable, Monext, M-Bank, and Mobilink.

These companies have been able to improve performance across thousands of processes and decisions, and also create new products, services, and business models. They’ve squeezed more efficiencies and margins from their production assets, processes, networks, and people.

One key takeaway is the importance of using algorithms, as they provide insights that can make a business process more profitable or competitive, and spotlight new ways of doing business and new opportunities for growth.

The speakers also presented a very detailed customer case study on Harris Logic. The company is using SAP BusinessObjects Predictive Analytics for automated analytics and rapid prototyping of their models. They execute models into SAP HANA for real-time predictions using a native, logistical regression model. This approach is allowing for the identification of key predictors that more heavily influence a behavioral health outcome.

Learn More

Lots of food for thought. See what questions people were asking during the webcast and get all of the answers here. Check out the complete presentation, and continue to post your questions and watch for dates for our upcoming webcast in the series via Twitter using #askSAP.

AmickBrown.com

Reimagine Predictive Analytics for the Digital Enterprise

future_predictive_analytics_SAPPHIRENOW

As part of a broad announcement made at SAPPHIRE NOW 2016, SAP announced a range of new features and capabilities in its analytics solutions portfolio. Because predictive capabilities play an important role in the portfolio, I thought I’d take this opportunity to share the details of our innovations in both SAP BusinessObjects Cloud and SAP BusinessObjects Predictive Analytics.

Innovations in SAP BusinessObjects Cloud

Predictive analytics capabilities have been added to the SAP BusinessObjects Cloud offering. Business users can use an intuitive graphical user interface to investigate business scenarios by leveraging powerful built-in algorithmic models. For example, users can perform financial projections with time series forecasts, automatically identify key influencers of operational performance, and determine factors impacting employee performance with guided machine discovery.

Learn more about our predictive capabilities in SAP BusinessObjects Cloud.

Innovations in SAP BusinessObjects Predictive Analytics

Predictive analytics features that aim to help analysts easily deliver predictive insights across an enterprise’s business processes and applications are planned for availability in the near term.

Planned innovations include:

  • Automated predictive analysis of Big Data with native Spark modeling in Hadoop environments
  • Enhancements for SAP HANA including in-database social network analysis and embedding expert model chains
  • A new simplified user interface for the predictive factory and automated generation of segmented forecast models
  • Integration of third-party tools and external processes into predictive factory workflows
  • The ability to create and manage customized models that detect complex fraud patterns for the SAP Fraud Management analytic application

Learn more about what SAP Predictive Analytics has in store.

Upcoming Release of SAP Predictive Analytics

Watch the video about our upcoming release of SAP Predictive Analytics for more information.

Thank you to Pierre Leroux, Director, Predictive Analytics Product Marketing, SAP for writing this informative article.

AmickBrown.com