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How organizations can leverage 'Large Scale Graph Based Analytics’ to derive value from their data.

Submitted by Upendra Singh (@upendrasingh) on Thursday, 12 April 2018


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Section: Crisp Talk Technical level: Advanced

Abstract

An organization’s data is like a living organism - growing, expanding and evolving over time to form complicated and connected systems. This is similar to biological evolution, where life forms evolved from simple unicellular structures to more and more complex multicellular organisms. And as organizations compile more and more data, it is crucial for them to understand that the value of any data point multiplies only when it can be connected to other data points. So the question they need to ask themselves is ‘Do our current analytics platforms prioritize these data points and its various interrelations?’

To ensure the organization’s needs are met, the data model built for persisting and processing data must support the representation of the relationships both at a logical and persistence level. This is where a Graph based modelling system helps in resolving most of the issues expressed, allowing the query and processing system to leverage data in the best possible way.

So, this talk will describe graph based data modelling and analytics as a means to help organizations figure out the various nuances and hidden elements within their current data models. It will also delve into the various techniques and approaches that will enable them to leverage these data systems. It will cover key questions that organizations typically face: Why should they move to Graph based data modelling? When do they need to start migrating to the Graph paradigm? And How to do this transformation to build analytics from simple aggregations to complex machine learning based analytics?

Outline

This talk will describe graph based data modelling and analytics as a means to help organizations figure out the various nuances and hidden elements within their current data models. It will also delve into the various techniques and approaches that will enable them to leverage these data systems. It will cover key questions that organizations typically face: Why should they move to Graph based data modelling? When do they need to start migrating to the Graph paradigm? And How to do this transformation to build analytics from simple aggregations to complex machine learning based analytics?

Speaker bio

Upendra Singh is a Lead Big Data Architect at Clustr, working as full stack big data {architect,scientist} and machine learning engineer with a strong base in data engineering and distributed systems development. He comes with over 10 years of experience in building production grade large scale machine learning systems which have been integrated in existing systems. He is adept at building data pipelines for various analytics and data processing use cases. His expertise lies in converting Business Problems into Analytics Solutions, designing the core and assessing the feasibility of Analytics Solutions.

Upendra has a Master’s Degree in Computer Science from Motilal Nehru National Institute Of Technology and a Bachelor’s Degree from Punjab University. Prior to Clustr, he has worked with technology leaders such as Robert Bosch, Dell R&D India and Dell EMC.

Links

Preview video

https://youtu.be/C-WPH909LOY

Comments

  • Hari C M (@haricm) Reviewer a year ago

    Upendra, you have to share slides for us to evaluate this talk

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