Player FM - Internet Radio Done Right
0-10 subscribers
Checked 8M ago
Lisätty two vuotta sitten
Sisällön tarjoaa Durai. Durai tai sen podcast-alustan kumppani lataa ja toimittaa kaiken podcast-sisällön, mukaan lukien jaksot, grafiikat ja podcast-kuvaukset. Jos uskot jonkun käyttävän tekijänoikeudella suojattua teostasi ilman lupaasi, voit seurata tässä https://fi.player.fm/legal kuvattua prosessia.
Player FM - Podcast-sovellus
Siirry offline-tilaan Player FM avulla!
Siirry offline-tilaan Player FM avulla!
Kuuntelemisen arvoisia podcasteja
SPONSOROITU
How do you know when it’s time to make your next big career move? With International Women’s Day around the corner, we are excited to feature Avni Patel Thompson, Founder and CEO of Milo. Avni is building technology that directly supports the often overlooked emotional and logistical labor that falls on parents—especially women. Milo is an AI assistant designed to help families manage that invisible load more efficiently. In this episode, Avni shares her journey from studying chemistry to holding leadership roles at global brands like Adidas and Starbucks, to launching her own ventures. She discusses how she approaches career transitions, the importance of unpleasant experiences, and why she’s focused on making everyday life easier for parents. [01:26] Avni's University Days and Early Career [04:36] Non-Linear Career Paths [05:16] Pursuing Steep Learning Curves [11:51] Entrepreneurship and Safety Nets [15:22] Lived Experiences and Milo [19:55] Avni’s In Her Ellement Moment [20:03] Reflections Links: Avni Patel Thompson on LinkedIn Suchi Srinivasan on LinkedIn Kamila Rakhimova on LinkedIn Ipsos report on the future of parenting About In Her Ellement: In Her Ellement highlights the women and allies leading the charge in digital, business, and technology innovation. Through engaging conversations, the podcast explores their journeys—celebrating successes and acknowledging the balance between work and family. Most importantly, it asks: when was the moment you realized you hadn’t just arrived—you were truly in your element? About The Hosts: Suchi Srinivasan is an expert in AI and digital transformation. Originally from India, her career includes roles at trailblazing organizations like Bell Labs and Microsoft. In 2011, she co-founded the Cleanweb Hackathon, a global initiative driving IT-powered climate solutions with over 10,000 members across 25+ countries. She also advises Women in Cloud, aiming to create $1B in economic opportunities for women entrepreneurs by 2030. Kamila Rakhimova is a fintech leader whose journey took her from Tajikistan to the U.S., where she built a career on her own terms. Leveraging her English proficiency and international relations expertise, she discovered the power of microfinance and moved to the U.S., eventually leading Amazon's Alexa Fund to support underrepresented founders. Subscribe to In Her Ellement on your podcast app of choice to hear meaningful conversations with women in digital, business, and technology.…
Data engineering and analytics for leaders
Merkitse kaikki (ei-)toistetut ...
Manage series 3452295
Sisällön tarjoaa Durai. Durai tai sen podcast-alustan kumppani lataa ja toimittaa kaiken podcast-sisällön, mukaan lukien jaksot, grafiikat ja podcast-kuvaukset. Jos uskot jonkun käyttävän tekijänoikeudella suojattua teostasi ilman lupaasi, voit seurata tässä https://fi.player.fm/legal kuvattua prosessia.
Unlocking the Power of Data: A Guide for Leaders and Executives" As a leader or executive, you know the importance of data in driving business decisions and staying ahead of the competition. But, with the increasing amount of data generated daily, it can be overwhelming to know where to start and how to utilize this valuable asset effectively. This blog, with multiple topics, addresses the technical terminology in data engineering and analytics on the cloud.
…
continue reading
8 jaksoa
Merkitse kaikki (ei-)toistetut ...
Manage series 3452295
Sisällön tarjoaa Durai. Durai tai sen podcast-alustan kumppani lataa ja toimittaa kaiken podcast-sisällön, mukaan lukien jaksot, grafiikat ja podcast-kuvaukset. Jos uskot jonkun käyttävän tekijänoikeudella suojattua teostasi ilman lupaasi, voit seurata tässä https://fi.player.fm/legal kuvattua prosessia.
Unlocking the Power of Data: A Guide for Leaders and Executives" As a leader or executive, you know the importance of data in driving business decisions and staying ahead of the competition. But, with the increasing amount of data generated daily, it can be overwhelming to know where to start and how to utilize this valuable asset effectively. This blog, with multiple topics, addresses the technical terminology in data engineering and analytics on the cloud.
…
continue reading
8 jaksoa
Kaikki jaksot
×In a modern data stack, data is collected from various sources, such as databases, APIs, and third-party applications. This data is then processed and transformed into a usable format for analysis. However, data quality can suffer at every stage of this process, leading to unreliable insights and flawed decision-making. One of the biggest challenges of maintaining data quality in a modern data stack is the sheer volume and variety of data. With so much data coming in from different sources, ensuring that all data is accurate, complete, and consistent can be challenging. Another challenge is data lineage. With data flowing through multiple systems, it can be difficult to track its origin and how it has been transformed over time. This lack of transparency can make it challenging to identify and address issues with data quality.…
A modern data stack combines different tools, technologies, and processes businesses use to collect, store, analyze, and visualize data. It is designed to provide a unified and streamlined approach to data management, allowing organizations to make data-driven decisions quickly and efficiently. The modern data stack differs from the traditional one in several ways. Traditionally, data stacks were built using a monolithic architecture that relied on expensive hardware and software licenses. These stacks were challenging to manage and slow to scale and often resulted in data silos that hindered collaboration between different teams. On the other hand, the modern data stack is built using a modular architecture that leverages cloud computing, open-source software, and APIs. This approach allows organizations to use the best-of-breed tools for each step of the data pipeline, resulting in a more flexible, scalable, and cost-effective solution.…
Why is Data Literacy Important? In today's world, data is everywhere. Businesses generate vast amounts of daily data, from sales figures and customer feedback to website analytics and social media metrics. This data can be precious, providing insights to help businesses make informed decisions and gain a competitive advantage. However, to truly benefit from data, leaders and executives need to be able to understand and interpret it; this requires a solid understanding of data literacy. With data literacy, leaders may be able to make sense of the data they collect, leading to better decision-making, missed opportunities, and, ultimately, a loss of revenue.…
In other words, data observability enables data leaders and executives to have complete visibility into their data infrastructure, ensuring that data is accurate, complete, and trustworthy. By leveraging data observability, organizations can make informed decisions and take action based on data-driven insights. So why is data observability critical? Well, as organizations continue to generate and collect more data, it becomes increasingly more work to manage and ensure the quality of that data. Research shows that data quality issues cost organizations an average of $15 million annually .…
Welcome to this podcast on data mesh, a new approach to data architecture transforming how organizations manage their data. Data has become a strategic asset for businesses in the digital age. The amount of data generated and collected is growing exponentially. Companies use it to gain valuable insights and improve their decision-making processes. However, traditional approaches to data management have yet to keep pace with this explosion of data. Centralized data warehouses and data lakes can be slow, inflexible, and difficult to scale. They can also create silos of information that are hard to integrate, leading to inconsistencies and inaccuracies in data.…
Welcome to today's Data Warehouse vs. Lakehouse podcast for Data leaders and executives. In this episode, we will discuss the critical differences between these two approaches to data management and which one might be best suited for your organization. First, let's define what we mean by Data Warehouse and Lakehouse. A Data Warehouse is a centralized data repository optimized for querying and analysis. It is typically built using a structured, relational database. It supports business intelligence (BI) and analytics use cases. A Lakehouse, on the other hand, is a newer concept that combines the scalability and flexibility of a data lake with the structure and governance of a data warehouse. It supports BI and advanced analytics use cases like machine learning and AI.…
Welcome to today's podcast on data contracts for data leaders and executives. Data contracts are a critical component of data management and are essential for any organization that collects, processes, or analyzes data. This podcast will explore data contracts, their importance, and how data leaders and executives can implement them in their organizations. To begin with, let's define what we mean by data contracts. A data contract is a formal agreement between the data provider and the data consumer that specifies the terms and conditions under which the data will be shared, used, and protected. The data contract outlines the obligations and responsibilities of both parties. It clearly explains how the data will be managed, stored, and analyzed.…
Data engineering and analytics are critical components of a data-driven organization but have different roles and skill sets. Data engineering focuses on the management and manipulation of data. In contrast, data analytics focuses on the interpretation and visualization of data. Let's start with data engineering. Data engineering involves collecting, processing, storing, and managing large amounts of data. Data engineers design and build data architectures and infrastructure, create pipelines to move data from source systems to storage and processing systems, and ensure data quality and integrity.…
Tervetuloa Player FM:n!
Player FM skannaa verkkoa löytääkseen korkealaatuisia podcasteja, joista voit nauttia juuri nyt. Se on paras podcast-sovellus ja toimii Androidilla, iPhonela, ja verkossa. Rekisteröidy sykronoidaksesi tilaukset laitteiden välillä.