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Journeys to Democratize Data+AI

Journeys to Democratize Data+AI

By Sandeep Uttamchandani

Organizations are data rich but information poor! To truly become data-driven, each episode covers the modernization journey of organizations across different verticals in making their Data+AI self-service. The podcast is hosted by Dr. Sandeep Uttamchandani -- an entrepreneur and O'Reilly book author of "The Self-service Data Roadmap."

Our mission with this podcast is to share knowledge and experiences so the power of Data+AI can create a data-driven world providing equal opportunities for everyone!
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Democratizing Data Quality at LinkedIn - Part 2

Journeys to Democratize Data+AI Dec 16, 2020

00:00
42:14
Sandeep's Quicktake: Getting teams to not just look at wrong labels in ML data

Sandeep's Quicktake: Getting teams to not just look at wrong labels in ML data

Democratize is not one big strategy but 100s of small things that you put in place. Quicktake is a series of short practical tips to get you started towards making data and AI widely accessible and self-service within your organization.

This tip covers an important myth: To improve model accuracy, start by verifying the correctness of labels. Typically, there is only a small percentage of miss predictions that are related to wrong labels. Often times the biggest reason for model inaccuracies is the poor quality of data samples. Train the team just that instead of jumping to fix the incorrect labels, start by analyzing a sample of results that were misclassified and make a judgment call on whether to invest in fixing the labels going back and looking at opus deposit useful.

Dec 11, 202102:52
Sandeep's Quicktake: How to handle misclassified predictions

Sandeep's Quicktake: How to handle misclassified predictions

Democratize is not one big strategy but 100s of small things that you put in place. Quicktake is a series of short practical tips to get you started towards making data and AI widely accessible and self-service within your organization.

This tip covers 3 recipes on handling misclassified ML predictions within your product.




Dec 11, 202103:11
Journey to democratize AI for digital agriculture

Journey to democratize AI for digital agriculture

In this episode, my guest is Daniel Mccaffery. Daniel is a technology thought leader driving Data and Analytics at Climate Corporation (a division of Bayer).

Daniel shares his insights on using ML to provide personalized recommendations for helping farmers grow crops with higher yield, profitable and sustainability. This involves deciding the right seed, right crop protection, density levels across different parts of the farm, etc. This is a fascinating example of AI and physical sciences coming together to build an innovative product offering. Daniel and I had a blast covering several topics: the building of models, model deployment and re-training, explainability for farmers to understand the recommendations, managing bias, experimentation A/B testing, monitoring drifts, data labeling, and perspectives on key bottlenecks in going from idea to ROI.

Dec 03, 202101:15:31
Democratizing Data Governance with Data Products at ING Bank France

Democratizing Data Governance with Data Products at ING Bank France

In this episode, Samir Boualla shares the journey to democratize Data Governance across business teams (with Data Literacy & Data Protection). He also discusses how they build internal and external-facing data products to expedite the journey to self-service Data.

At ING Bank France, Samir is the Chief Data Officer responsible for several teams governing, developing, and managing data infrastructure and data assets to deliver value to the business. With over 20+ years of experience on various data topics. Samir shares interesting battle-tested techniques in this podcast: a process catalog, having a "data minimum standard," change management mindset, applying transfer learning.

Jan 13, 202101:01:22
Democratizing Data Quality at LinkedIn - Part 2

Democratizing Data Quality at LinkedIn - Part 2

In this episode (part 2), Kapil Surlaker shares the journey to democratize data quality at LinkedIn scale!

Kapil has 20+ years of experience in data and infrastructure both at large companies such as Oracle as well as multiple startups. At LinkedIn, Kapil has been leading the next generation of Big Data Infrastructure, Platforms, Tools, and Applications to empower Data Scientists, AI engineers, App developers, to extract value from data. Kapil's team has been at the forefront of innovation driving multiple open source initiatives such as Apache Pinot, Gobblin, DataHub.

Dec 16, 202042:14
Democratizing metadata management and data access APIs at LinkedIn - Part 1

Democratizing metadata management and data access APIs at LinkedIn - Part 1

In this episode (Part 1), Kapil Surlaker shares the challenges and experiences in successfully democratizing metadata management and data access APIs across LinkedIn. In the next part, we deep-dive on data quality.

Kapil is the VP of Engg, and Head of Data at LinkedIn. He has 20+ years of experience in data and infrastructure both at large companies such as Oracle as well as multiple startups. At LinkedIn, Kapil has been leading the next generation of Big Data Infrastructure, Platforms, Tools, and Applications to empower Data Scientists, AI engineers, App developers, to extract value from data. Kapil's team has been at the forefront of innovation driving multiple open source initiatives such as Apache Pinot, Gobblin, DataHub.

Nov 09, 202044:19
Journey to recruit and build Data Science at Etsy

Journey to recruit and build Data Science at Etsy

In this episode, Chu-Cheng covers experiences in recruiting and building a Data Science team from scratch. 

Chu-Cheng is the Chief Data Officer (CDO) at Etsy. Chu-Cheng leads the global data organization responsible for data science strategy, AI innovation, machine learning & data infrastructure. Prior to Etsy, Chu-Cheng led various data roles at Amazon, Intuit, Rakuten, and eBay.  Chu-Cheng is a Ph.D. in computer science, with published papers in key AI/ML conferences.

Oct 31, 202041:55
Using Data Science to democratize traditional market data analysis at PFM

Using Data Science to democratize traditional market data analysis at PFM

In this episode, Manish Chitnis covers experiences in using Data Science to democratize traditional market data analysis (for hedge fund investment decisions). 

Manish Chitnis is the Chief Data Officer (CDO) at Partner Fund Management (PFM).  Manish has 20+ years of diverse multi-disciplinary experience across a wide range of analytics: architecting the data warehouses from scratch, building risk/data apps, introducing new data architectures, instituting data governance/stewardship, data-hygiene and cleanup, improved data collection, and much more. 

Oct 11, 202028:06
Democratize by developing data literacy and standardized metrics at Tailored Brands

Democratize by developing data literacy and standardized metrics at Tailored Brands

In this podcast, Meenal Iyer shares the journey to democratize by growing data literacy, creating a data-driven culture, and standardization of business metrics.


Meenal Iyer is a Data and Analytics leader at Tailored Brands. She brings in 20+ years of data analytics experience across multiple domains namely retail, travel, financial services. Meenal has been transforming enterprises to become data driven, and shares interesting domain agnostic lessons from her experience. 

Oct 05, 202035:04
Journey to develop a self-service data platform in FinTech

Journey to develop a self-service data platform in FinTech

In this episode, Keyur Desai shares the journey of building a data strategy & a pervasive self-service analytics platform. He discusses some really valuable lessons based on his extensive experience. 

Keyur Desai is the former CDO of TD Ameritrade. He is a data executive with over 30 years of experience managing and monetizing data and analytics.  He has created data-driven organizations and driven enterprise-wide data strategies, data literacy, modern data governance, machine learning & data science, pervasive self-service analytics, and several other initiatives. He has experience across multiple industries including Insurance, Technology, Healthcare, Retail.

Sep 28, 202001:02:25
Journey to democratize business metrics & experimentation at Intuit

Journey to democratize business metrics & experimentation at Intuit

In this episode, Anil Madan shares the journey at Intuit as they democratize business metrics and experimentation within the company. Anil is the VP of Data and Analytics for Intuit’s Small Business and Self Employed group. He has over 25 years of experience in the data space across Intuit, PayPal, eBay — a pioneer in building data infrastructure and value creation in the form of products, experimentation, data advertising, digital marketing, payments, and many more.


Sep 20, 202029:18