Data Engineering Podcast show

Data Engineering Podcast

Summary: This show goes behind the scenes for the tools, techniques, and difficulties associated with the discipline of data engineering. Databases, workflows, automation, and data manipulation are just some of the topics that you will find here.

Join Now to Subscribe to this Podcast

Podcasts:

 Power Your Real-Time Analytics Without The Headache Using Fivetran's Change Data Capture Integrations | File Type: audio/mpeg | Duration: 00:49:36

Data integration from source systems to their downstream destinations is the foundational step for any data product. With the increasing expecation for information to be instantly accessible, it drives the need for reliable change data capture. The team at Fivetran have recently introduced that functionality to power real-time data products. In this episode Mark Van de Wiel explains how they integrated CDC functionality into their existing product, discusses the nuances of different approaches to change data capture from various sources.

 Building A Shared Understanding Of Data Assets In A Business Through A Single Pane Of Glass With Workstream | File Type: audio/mpeg | Duration: 00:54:51

There is a constant tension in business data between growing siloes, and breaking them down. Even when a tool is designed to integrate information as a guard against data isolation, it can easily become a silo of its own, where you have to make a point of using it to seek out information. In order to help distribute critical context about data assets and their status into the locations where work is being done Nicholas Freund co-founded Workstream. In this episode he discusses the challenge of maintaining shared visibility and understanding of data work across the various stakeholders and his efforts to make it a seamless experience.

 Operational Analytics To Increase Efficiency For Multi-Location Businesses With OpsAnalitica | File Type: audio/mpeg | Duration: 01:32:03

In order to improve efficiency in any business you must first know what is contributing to wasted effort or missed opportunities. When your business operates across multiple locations it becomes even more challenging and important to gain insights into how work is being done. In this episode Tommy Yionoulis shares his experiences working in the service and hospitality industries and how that led him to found OpsAnalitica, a platform for collecting and analyzing metrics on multi location businesses and their operational practices. He discusses the challenges of making data collection purposeful and efficient without distracting employees from their primary duties and how business owners can use the provided analytics to support their staff in their duties.

 Build Confidence In Your Data Platform With Schema Compatibility Reports That Span Systems And Domains Using Schemata | File Type: audio/mpeg | Duration: 00:59:39

Data engineering systems are complex and interconnected with myriad and often opaque chains of dependencies. As they scale, the problems of visibility and dependency management can increase at an exponential rate. In order to turn this into a tractable problem one approach is to define and enforce contracts between producers and consumers of data. Ananth Packildurai created Schemata as a way to make the creation of schema contracts a lightweight process, allowing the dependency chains to be constructed and evolved iteratively and integrating validation of changes into standard delivery systems. In this episode he shares the design of the project and how it fits into your development practices.

 Building Data Pipelines That Run From Source To Analysis And Activation With Hevo Data | File Type: audio/mpeg | Duration: 00:57:15

Any business that wants to understand their operations and customers through data requires some form of pipeline. Building reliable data pipelines is a complex and costly undertaking with many layered requirements. In order to reduce the amount of time and effort required to build pipelines that power critical insights Manish Jethani co-founded Hevo Data. In this episode he shares his journey from building a consumer product to launching a data pipeline service and how his frustrations as a product owner have informed his work at Hevo Data.

 Introduce Climate Analytics Into Your Data Platform Without The Heavy Lifting Using Sust Global | File Type: audio/mpeg | Duration: 00:54:18

The global climate impacts everyone, and the rate of change introduces many questions that businesses need to consider. Getting answers to those questions is challenging, because the climate is a multidimensional and constantly evolving system. Sust Global was created to provide curated data sets for organizations to be able to analyze climate information in the context of their business needs. In this episode Gopal Erinjippurath discusses the data engineering challenges of building and serving those data sets, and how they are distilling complex climate information into consumable facts so you don't have to be an expert to understand it.

 A Reflection On Data Observability As It Reaches Broader Adoption | File Type: audio/mpeg | Duration: 00:58:39

A Reflection On Data Observability As It Reaches Broader Adoption

 An Exploration Of What Data Automation Can Provide To Data Engineers And Ascend's Journey To Make It A Reality | File Type: audio/mpeg | Duration: 01:03:32

The dream of every engineer is to automate all of their tasks. For data engineers, this is a monumental undertaking. Orchestration engines are one step in that direction, but they are not a complete solution. In this episode Sean Knapp shares his views on what constitutes proper automation and the work that he and his team at Ascend are doing to help make it a reality.

 Alumni Of AirBnB's Early Years Reflect On What They Learned About Building Data Driven Organizations | File Type: audio/mpeg | Duration: 01:10:14

AirBnB pioneered a number of the organizational practices that have become the goal of modern data teams. Out of that culture a number of successful businesses were created to provide the tools and methods to a broader audience. In this episode several almuni of AirBnB's formative years who have gone on to found their own companies join the show to reflect on their shared successes, missed opportunities, and lessons learned.

 Understanding The Role Of The Chief Data Officer | File Type: audio/mpeg | Duration: 00:47:10

The position of Chief Data Officer (CDO) is relatively new in the business world and has not been universally adopted. As a result, not everyone understands what the responsibilities of the role are, when you need one, and how to hire for it. In this episode Tracy Daniels, CDO of Truist, shares her journey into the position, her responsibilities, and her relationship to the data professionals in her organization.

 An Exploration Of The Expectations, Ecosystem, and Realities Of Real-Time Data Applications | File Type: audio/mpeg | Duration: 01:06:19

Data has permeated every aspect of our lives and the products that we interact with. As a result, end users and customers have come to expect interactions and updates with services and analytics to be fast and up to date. In this episode Shruti Bhat gives her view on the state of the ecosystem for real-time data and the work that she and her team at Rockset is doing to make it easier for engineers to build those experiences.

 Bringing Automation To Data Labeling For Machine Learning With Watchful | File Type: audio/mpeg | Duration: 01:20:29

Data engineers have typically left the process of data labeling to data scientists or other roles because of its nature as a manual and process heavy undertaking, focusing instead on building automation and repeatable systems. Watchful is a platform to make labeling a repeatable and scalable process that relies on codifying domain expertise. In this episode founder Shayan Mohanty explains how he and his team are bringing software best practices and automation to the world of machine learning data preparation and how it allows data engineers to be involved in the process.

 Collecting And Retaining Contextual Metadata For Powerful And Effective Data Discovery | File Type: audio/mpeg | Duration: 00:53:24

Data is useless if it isn't being used, and you can't use it if you don't know where it is. Data catalogs were the first solution to this problem, but they are only helpful if you know what you are looking for. In this episode Shinji Kim discusses the challenges of data discovery and how to collect and preserve additional context about each piece of information so that you can find what you need when you don't even know what you're looking for yet.

 Useful Lessons And Repeatable Patterns Learned From Data Mesh Implementations At AgileLab | File Type: audio/mpeg | Duration: 00:48:30

Data mesh is a frequent topic of conversation in the data community, with many debates about how and when to employ this architectural pattern. The team at AgileLab have first-hand experience helping large enterprise organizations evaluate and implement their own data mesh strategies. In this episode Paolo Platter shares the lessons they have learned in that process, the Data Mesh Boost platform that they have built to reduce some of the boilerplate required to make it successful, and some of the considerations to make when deciding if a data mesh is the right choice for you.

 Optimize Your Machine Learning Development And Serving With The Open Source Vector Database Milvus | File Type: audio/mpeg | Duration: 00:58:51

The optimal format for storage and retrieval of data is dependent on how it is going to be used. For analytical systems there are decades of investment in data warehouses and various modeling techniques. For machine learning applications relational models require additional processing to be directly useful, which is why there has been a growth in the use of vector databases. These platforms store direct representations of the vector embeddings that machine learning models rely on for computing relevant predictions so that there is no additional processing required to go from input data to inference output. In this episode Frank Liu explains how the open source Milvus vector database is implemented to speed up machine learning development cycles, how to think about proper storage and scaling of these vectors, and how data engineering and machine learning teams can collaborate on the creation and maintenance of these data sets.

Comments

Login or signup comment.