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A Cognitive Computing provider of Artificial Intelligence and Machine Learning Applications & Bots that synthesize vast amounts of competing raw and dark data into continuous streams of qualitative normalized understandings that accelerate and de-risk complex (high-dimensional) decisions.
Published June 26, 2020
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Updated August 21, 2020
Oil & Gas
Power & Utilities
Subsurface
Product Overview
Overview
Sfile focuses on solving complex challenges with big data by combining powerful compute engines with machine learning algorithms to deliver actionable insights from unstructured data. Sfile's solutions translate fragmented information into structured data through efficient analysis of internal and external well files. Its Virtual Wellfile Database is able to search across the entire repository for all files related to a desired well or set of wells with filtering and classification capabilities. Using artificial intelligence-driven clustering engines and bots, the software extracts, normalizes, and validates information from disparate data sets. By improving the quality of geologic, drilling, and completion data, Sfile enables companies to develop more accurate digital models for future operations.
Business Model
Enterprise Software, Software as a Service, and Consulting Services
Technology Innovations
Enterprise wide AI Driven data surveillance and data mining platform to accelerate data driven organizations.
- Auto-labeler uses automated bots to crawl through and then organize relevant data sets
- The above ability does not alter original files, but means that data scientists will spend less time trying to access information
- AI tool that transforms complex documents like drilling and completions reports into a series of normalized facts.
- Using unstructured text data to build a predictive analytics models that can help de-risk prospects
- Full normalization of all fluids and chemicals being pumped downhole
Applications
Mineral.ai - a modern model for meeting the current challenges of the E&P industry
Mineral.ai’s primary imperative is to advance E&P operators’ ability to meet its downsized operational capabilities while improving performance through machine learned models across the three constructs that Sfile has identified as critical to the E&P industry.
Comprehensive well lifecycle data
Completions design and economics optimization
Legal contract optimization and compliance
Machine learning across multiple non-correlated operators enhances machine learning experiences and improves model performance. Mineral.ai allows for data to be propagated horizontally, targeting each construct, and vertically integrating these constructs together without violating the rights of any data owner.
Mineral.ai advantages:
a formal approach to its machine learning systems across all features (Inference Models, Tensor-Flow, Neural Networks)
elastic computing to scale properly, avoiding performance issue with scale
encoding of patterns, consequently no client data is ever at risk
Mineral.ai benefits:
a leaner organization where the human capital is focused on productivity rather than information, where machine learned solutions integrate seamlessly with data
the evolution towards near real-time continuous improvement for operations
improve reliability by vetting constructs independently from potential bias present in a single operator’s data