Achieve business outcomes that matter
Measure, manage, and operationalize your sustainability goals – including decarbonization, energy resources management, and reduced WAGES.
Achieve operations visibility and AI-based optimization, linking plant-floor actions to your enterprise sustainability initiatives.
A system of record to automate accurate GHG data collection, provide valuable insights, and identify ways to reduce carbon emissions
One modular solution to connect, see, control, and optimize DERs from a technical and an economic standpoint
Reduced operational costs and risks using Digital Twins, machine learning and predictive models
Increased network reliability
Advanced analytics to predict future asset and process performance for reduced variability and improved operations
Optimized asset performance to reduce risk and improve safety, reliability, compliance, and efficiency
Optimize assets and processes – from plant-level operations to the enterprise – with self-service process analytics software.
Minimized potential impact of anomalies
Comprehensive visibility of asset health for rapid situational adjustments with quality information
Streamlined mechanical integrity solution to reduce risk, maintain compliance and optimize resources
Develop, implement, maintain, and optimize asset strategies to effectively balance cost and risk
Operational visibility and analysis to reduce asset failures, control costs and increase availability
Performance Intelligence with APM Reliability is your partner in meeting your plant and fleet performance goals.
Predictive analytics software, helps prevent equipment downtime by detecting, diagnosing, forecasting & preventing emerging failures.
The AI-powered product automatically explores the space of operation of gas turbines, builds a machine learning model, and continuously finds the optimal flame temperatures and fuel splits to minimize emissions
BoilerOpt works within existing plant technology to improve boiler productivity and air-fuel ratios in a closed-loop system
Pre-built templates for equipment health monitoring, asset strategies, and process workflows
Operator rounds efficiency and operational impact
Secure and scalable data connectivity, analytics, and application services
Services and solutions to reduce vulnerability and identify, detect, prevent and protect
Turnkey solutions to reduce vulnerability and identify, detect, prevent and protect assets and systems
A globally recognized benchmark for procurement of OT secure products.
Strengthened device security across the development lifecycle
Informed decision making with data and insights from across the enterprise
Native cloud service for a data historian.
Safe and secure management and orchestration of the distribution grid
Network-level optimization with high-performing distribution power applications
Overcome foreseeable load variations
Minimized disruption of service even in extreme weather conditions
Effective management and orchestration to unlock the power of renewables and DERs
Increased output and energy production at times of highest demand
A common network view to ensure electrical integrity, network validity and infrastructure management
Accurately model your asset network, support traceability, help assure data completeness, & support integrity management
End-to-end network connectivity modeling and data workflow management
Software designed to help grid operators orchestrate the grid
Increased efficiency and reduced costs
Secure-by-design connectivity and certification management, and faster operator response
Faster operator response and increased efficiency
Centralized visualization and configuration, digitized processes and intelligence
Full visualization and control seamlessly across devices, including phones, tablets and desktops
Best practices and proven deployment learnings
In-depth understanding of how GE Digital software can help your operations
Holistic performance management for today’s connected enterprise
Management of fast-moving processes as well as slower moving, labor-intensive jobs
Cost savings with improved manufacturing overall equipment effectiveness
Batch automation, regardless of the underlying equipment
Data analysis for quick identification of defects and better optimization of processes
Unified manufacturing data from disparate systems to better meet changing consumer demands
Procedures managed in an electronic format for consistency and predictability
Optimized production with better planning
Improved throughput with greater efficiency and lower costs
Materials to help you better understand GE Digital software and its robust functionality
Integrated solutions for improved efficiency and sustainability while supporting business growth
Energy management for the zero carbon grid
Reliable mobilization of network assets to ensure maximum transmission of energy from multiple sources
Integrated solutions suite for energy market management
Decentralized data collection, data volume handling, and remote management
Getting the most benefit out of digitization and industrial IoT
Services that deliver best-in-class results
Rapid digital transformation wins based on industry-proven value cases and ROI
Best practices for your industrial processes to help build and maintain operational resilience
GE Digital’s expert service and support teams create value and deliver on business objectives
Expert service and support teams to maximize the benefits from your IIoT software
Improved efficiencies, optimized production and quality and reduced unplanned downtime
Increased reliability and availability, minimized costs, and reduced operational risks
Increased value from your equipment, process data, and business models
The cornerstone of your journey to operational excellence
Operational excellence including improved reliability, reduced costs and managed risk
GridOS, the first grid software portfolio designed for grid orchestration
Reduced operational costs and risks using predictive models
Enhanced overall situational awareness
Field-connected operations and management
One modular solution that enables grid operators to connect, see, control, and optimize DERs from a technical and an economic standpoint
Operational efficiency and reduction in build costs while meeting regulatory regulations
Reduced operational and new build costs and improved field inspection productivity
A holistic picture of the grid, reducing cost and complexity from traditional inspection approaches
Optimized operations to best meet changing consumer needs
Reduced variability and improved operations.
In-depth understanding of our software and its functionality
A clear a path to operational transformation
Maintain consistent quality and reduce cost per ton
Optimized costs and improved reliability while reducing risk to keep your teams and communities safe
Streamlined end-to-end operations driving high-volume, high-quality production
GE Digital software is the backbone of modern plant operations
Improved reliability, increased availability, and reduced O&M costs
AI/ML to make your gas turbine's fuel and air controls smarter
Increase energy production at times of highest demand without costly maintenance adders or adversely impacting the maintenance interval
Inclusive outsourcing services that deliver best-in-class results
Achieve digital transformation
Expert service teams to maximize the benefits from your IIoT software
Reduced costs, lower risk, and faster response times
Analytics to predict future asset and process performance for reduced variability & improved operations
A common network view to ensure integrity, network validity and infrastructure management
Mission critical software to better operate, optimize and analyze your work to deliver results
Locate the best partners to meet your needs
Digital transformation acceleration
Technical and domain expertise that complements GE Digital’s industry leading applications
Assistance to accelerate your digital transformation and put your industrial data to work
Deep domain knowledge and technical expertise
Product training, industry education, and rigorous certification programs
More efficient and secure electric grid, greater sustainability and waste reduction
Solutions for today, scale for tomorrow
Increased reliability and reduced reactive maintenance leading to higher efficiency and reduced costs
Using Digital Twin blueprints, GE's Industrial Managed Services team monitors 7,000+ global assets
Understanding of the latest thought leadership that can be applied to your operations
Understand how our software and services help our customers solve today's toughest challenges
Experienced team dedicated to customer success
Success stories and product updates from the world of Electrification Software
Analyst and third-party expert opinions of Electrification Software and our software and services
White papers, product overviews, and other content to help you put your industrial data to work
Experience in leading edge software development and business working with best-in-class leaders
Understand how Electrification software and services helps our customers solve today's toughest challenges
Blog
Advancements in technology have disrupted nearly every industry and created career opportunities that were once implausible. So, it should come as no surprise that nearly half of the 50 Best Jobs in America, according to Glassdoor, are tech-related. What may be surprising, however, is that in 2016, data scientist came in at the top of the list.
Simply put, data scientists are big data wranglers. They explore and analyze datasets in order to understand and organize data, identify underlying patterns and trends, and develop methods that identify how to best extract and summarize information from the data that can be used to inform better decision-making.
A McKinsey study predicts that by 2018, the number of data science jobs in the United States alone will exceed 490,000. However, despite demand, there will be fewer than 200,000 available data scientists to fill these positions. Globally, this demand is projected to exceed supply by more than 50 percent in the next two years. I was lucky enough to find my calling in numerical analytics and scientific computing, but how can we inspire an entire generation to track along career paths that emphasize quantitative reasoning as industries place more importance on technology and data insights?
A career in data science begins not only with a love for mathematics, but also with a knack for applying mathematical concepts to topics from other aspects of life both academically and in general. Traditionally, school curriculums do not emphasize many quantitative toolsets required for analyzing and manipulating large volumes of data such as statistics, matrix algebra, and hands-on exercises geared at translating these methods into numerical algorithms. While this is starting to change as more emphasis is placed on science, technology, engineering and math (STEM) education, middle school and high school mathematics curriculums tend to still primarily focus on preparing students for calculus. However, other analytical toolsets, such as statistics and discrete math, offer critical and different ways of thinking that is key to data science.
I’ve personally always had a passion for math but it wasn’t until my junior year of college that I decided to become a math major. Like many others, I initially thought the only thing you could do with a mathematics degree was to teach high school students, but technology has opened the door for a range of career possibilities.
After college, I pursued a graduate degree, studying applied mathematics and scientific computing. For my post-doctorate, I focused on biomathematics and held a joint appointment in critical care medicine designing data-driven models to better understand complex medical processes. It was my varied educational background, coupled with real-world experience in data modeling, which led me to my current role as the first data scientist at a global software company.
When I was hired as a data scientist in 2014, it was still a relatively new field. The growth of connected devices, sensors, and better Internet access globally, however, has created an abundance of messy data—driving the demand for data scientists across industries.
When I say data is messy, I’m referring to data quality. Think of it as missing fields from manual entry. To bring it to a consumer level, fitness trackers are a perfect example of disorganized data. When you enter information into a fitness tracker, you tend to do input it quickly. For example, after you ride a bike or go for a run, you may input the distance you traveled; however, there is so much additional information that could have also been added. How many minutes did you exercise? Did you ride a road bike, a mountain bike, or a beach cruiser? Did you run on a treadmill or a trail? At what resistance or pace did you ride? What about your age, weight and activity level? All of these factors help improve the data quality and inform a more complete story about your fitness and health.
When it comes to enterprise-level initiatives, data science teams tackle the challenge of identifying and developing ways to produce measureable outputs of value from data of variable quality originating from disparate sources. Decision-makers want to see summary numbers presented in an informative and consumable way. In the desire to see whole numbers, users do not always understand the importance of also looking at the statistical certainty around data measurements. It is my team’s job to take statistical validity into account while evaluating metrics for both data quality and for performance benchmarking. The data science team will scour through data in order to create and measure benchmarks for tracking improvement efforts and for identifying trends or opportunities for growth.
Every organization’s data might start messy, but it all holds valuable insights that can effect the bottom line. Data scientists can help organizations transform the data being collected in ways that will ultimately help achieve business objectives.
My job is to help industrial companies, such as oil and gas refineries or utility providers, organize, qualify, and manage data from digital assets, and then use this data to draw strategic insights around how to improve asset performance and reduce risks. In a turbulent energy market, identifying efficiencies and realizing cost savings from data is critical for many of these businesses to stay afloat. But this is just in one sector—many other organizations have identified the need for a data science team, though few have thus far been able to fill these types of roles.
In order to effectively build a talent pipeline for data scientists, there needs to be more of a focus on teaching quantitative skills beyond calculus prep in a mathematics education. There must be increased awareness at the high school and college levels of what skill sets are in demand so programs may be tailored accordingly. Every year the number of opportunities for this skill set grows, and the need for data scientists at a range of companies has never been greater.
Beyond math skills, prospective data scientists need to know how to think creatively and develop context and a story for the data they are analyzing. Data scientists need to be talented with numbers, but they must also excel at problem solving by leveraging various types of data. The art of taking qualitative phenomenon and quantifying it in a meaningful way is a difficult challenge, largely due to the fact it is an open-ended task and not straightforward like a number crunching process. However, everything can be modeled into a mathematical story, and having the ability to look at data sets and develop strategic insights from a business mindset is what makes data scientist so valuable.
Data Scientist, Asset Performance Management, GE Digital
Sarah's current role involves analyzing asset maintenance data and creating statistical models and data tools that support the asset performance management business process. This involves components from natural language processing, machine learning, and reliability engineering. Prior to joining Meridium, Inc. (which was acquired by GE Digital in 2016) Sarah’s research focused on building data-driven computational models forecasting infectious disease and control.
Use a combination of physical principles, empirical knowledge, and data science to build a solution to uncover key patterns within your data—driving significant business value
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