Hinweis: Die aktuelle TDWI-Konferenz finden Sie hier!

CONFERENCE PROGRAM OF 2021

Please note:
On this site, there is only displayed the English speaking sessions of the TDWI München digital. You can find all conference sessions, including the German speaking ones, here.

The times given in the conference program of TDWI München digital correspond to Central European Time (CET).

By clicking on "EVENT MERKEN" within the lecture descriptions you can arrange your own schedule. You can view your schedule at any time using the icon in the upper right corner.

Data science workbenches and machine learning automation – new technologies for agile data science

This session looks at how data science workbenches and machine learning automation tools can help business analysts to become data scientists and so meet the demand of business.

Target Audience: CDO, Head of Analytics, Data Scientist, Business Analysts, CIO
Prerequisites: Basic understanding of Data Science
Level: Advanced

Extended Abstract:
The demand for analytics is now almost everywhere in the business. Analytics are needed in sales, marketing and self-service, finance, risk, operations, supply chain and even HR. However, the current shortage of data scientists and the reliance on detailed skills such as programming, has led many corporate executives to question current approaches to development of high value analytical models and ask if they can be accelerated in any way to improve agility and reduce time to value. This session looks at this problem in detail and at how emerging data science workbenches and machine learning automation tools can help reduce the reliance on highly skilled data scientists and allow business analysts to become data scientists and so meet the demand of business.

 

o            The explosion in demand for analytics

o            Data science and the modern analytical ecosystem

o            Challenges with current approaches to analytics

o            Requirements to reduce time to value and accelerate development of analytical models

o            Improving productivity by integrating Information catalogs and data science workbenches, e.g. Amazon SageMaker, Cloudera CDP Machine Learning, IBM Watson Studio Microsoft, Azure ML Service,

o            Accelerating model development, monitoring and model refresh using ML automation tools, e.g. DataRobot, SAS, Dataiku Data Science Studio, Big Squid

o            Facilitating rapid analytics deployment via analytics as a service to maximise effectiveness and competitive edge

Mike Ferguson is Managing Director of Intelligent Business Strategies and Chairman of Big Data LDN. An independent analyst and consultant, with over 40 years of IT experience, he specialises in data management and analytics, working at board, senior IT and detailed technical IT levels on data management and analytics. He teaches, consults and presents around the globe.

Mike Ferguson
11:00 - 12:10
Vortrag: Mi 4.3

Vortrag Teilen