Data digitization, ingestion and standardization are often most overlook tasks in any industry. Everyone wants to go ahead with artificial intelligence (AI) and machine learning (ML) applications of the data. However, the time, efforts and care needed for data cleaning and wrangling parts get usually overlooked or underestimated. Often, up to 80% of the valuable time is spent on finding, cleaning, organizing and standardizing data.
At fluidsdata, we recognize the invaluable insights hidden within your fluids characterization data that you can leverage through AI. However, the challenge lies in harnessing this data effectively due to non-standardized formats, unstructured data, and the need for subject matter expertise in data mapping and categorization. That's where our Fluidsdata's Digitization, Ingestion and Standardization Services come in.
We ensure comprehensive digitization of fluids characterization data across assets, fields, and teams. Our AI-powered tools, trained by SMEs streamline data categorization and optical character recognition, reducing time and effort.
Already have digitized data stored in various databases or non-standard formats? No problem! Fluidsdata will ingests your existing fluids characterization data, transforming it into actionable insights and empowering you to leverage YOUR data for property predictions with AI-ML models.
Say goodbye to inconsistencies. We standardize fluids characterization data and validate it through rigorous quality check of the digitized/ingested data conducted by our subject matter experts.
Enjoy seamless integration with your existing databases through API-based output. YOUR data is portable, take it wherever you want including Fluidsdata's data democratization and AI-ML property prediction software & services while conforming to industry-standard formats such as OSDU and ProdML.
Copyright © 2024 fluidsdata - All Rights Reserved.
We use cookies to analyze website traffic and optimize your website experience. By accepting our use of cookies, your data will be aggregated with all other user data.