머신 러닝 기반의 엔터프라이즈 데이터 통합 솔루션


An Agile Approach to Data Mastering With Machine Learning


 

 

 

Traditional approaches to master data management have been around for decades. As the volume of data has grown, and potential value of analytics has exploded, enterprises seeking to compete on analytics are struggling to scale their mastering efforts to the surfeit of data sources available to analysts. Creating data engineering pipelines to unify this data at scale is more important — and harder — than ever. See how an agile approach, utilizing machine learning, can cut the time required for unification projects can cut down the time required by 90%, while scaling to more sources than any other approach. The video above is a 10 minute “best of” culled from a recent webinar presentation by Tamr’s Technical Sales Lead Mark Marinelli.

The benefits of data unification are well understood. Gartner estimates that by 2019, “organizations that provide agile, curated internal and external datasets for a range of content authors will realize twice the business benefits as those that do not.” Given the scale of enterprise data, automation is key to agility and scale. And automation can only be achieved with some human oversight to make sure the results are fast and accurate.

You can watch the full one hour recorded webinar with Information Management Institute and Tamr here.


댓글 (0)

파일 첨부

여기에 파일을 끌어 놓거나 파일 첨부 버튼을 클릭하세요.

파일 크기 제한 : 0MB (허용 확장자 : *.*)

0개 첨부 됨 ( / )
 

DataOps: A Unique Moment in Time for Next Generation Data Engineering

Judging from the engagement on my latest post from across the spectrum of business leaders, data engineers, data scientists and thought leaders, DataOps is clearly picking up steam. There were too many...

An Agile Approach to Data Mastering With Machine Learning

Traditional approaches to master data management have been around for decades. As the volume of data has grown, and potential value of analytics has exploded, enterprises seeking to compete on analyti...

기계 학습을 통한 신속한 데이터 마스터 접근 방식

마스터 데이터 관리에 대한 전통적인 접근은 수십년 전부터 존재했습니다. 그러나 데이터의 양이 증가하고, 분석의 잠재적 가치가 폭발적으로 성장함에 따라, 분석 분야에서 경쟁을 추구하는 기업들은 분석을 위해 ...