article thumbnail

The Gold Standard – The Key to Information Extraction and Data Quality Control

Ontotext

In the same way as with data linking, we have to adjust our ML algorithms by giving them plenty of documents to learn from. Once developed and trained, these algorithms become the building blocks of systems that can automatically interpret data. Evaluation is for AI systems what quality assurance (QA) is for software systems.

article thumbnail

Why You’re Not Ready for Knowledge Graphs!

Ontotext

As a statistical model, LLM inherently is random. Semantic knowledge graphs combined with LLM allow you to bridge the gap – querying your well-curated and conformed data with natural language. Data quality Knowledge graphs thrive on clean, well-structured data, and they rely on accurate relationships and meaningful connections.

Insiders

Sign Up for our Newsletter

This site is protected by reCAPTCHA and the Google Privacy Policy and Terms of Service apply.

article thumbnail

The Role of AI and ML in Model Governance

Alation

A data catalog is a central hub for XAI and understanding data and related models. While “operational exhaust” arrived primarily as structured data, today’s corpus of data can include so-called unstructured data. These methods and their results need to be captured, but how? Other Technologies. Conclusion.

article thumbnail

Turbocharging Target Identification: Ontotext’s AI-Powered Solution at Work

Ontotext

Recent statistics shed light on the realities in the world of current drug development: out of about 10,000 compounds that undergo clinical research, only 1 emerges successfully as an approved drug. The current process involves costly wet lab experiments, which are often performed multiple times to achieve statistically significant results.

Metrics 52
article thumbnail

AI Adoption in the Enterprise 2021

O'Reilly on Data

The biggest problems in this year’s survey are lack of skilled people and difficulty in hiring (19%) and data quality (18%). The biggest skills gaps were ML modelers and data scientists (52%), understanding business use cases (49%), and data engineering (42%). Bad data yields bad results at scale. form data).

article thumbnail

The Data Scientist’s Guide to the Data Catalog

Alation

In this way, a data scientist benefits from business knowledge that they might not otherwise have access to. The catalog facilitates the synergy of the domain experts’ subject matter expertise with the data scientists statistical and coding expertise. Modern data catalogs surface a wide range of data asset types.

article thumbnail

15 Best Data Analysis Tools You Can’t Miss in 2022

FineReport

Key features: As a professional data analysis tool, FineBI successfully meets business people’s flexible and changeable data processing requirements through self-service datasets. FineBI is supported by a high-performance Spider engine to extract, calculate and analyze a large volume of data with lightweight architecture.