התחל במצב לא מקוון עם האפליקציה Player FM !
פודקאסטים ששווה להאזין
בחסות


1 Bermuda: The Crossroads of the Atlantic 51:57
4#8 - Shuang Wu - Service Platform: From Analytics to AI-Driven Success (Eng)
Manage episode 451836495 series 2940030
«We want to make data actionable.»
Join us for an engaging conversation with Shuang Wu, Mesta's lead data engineer. We delve into the concept of platforms and explore how they empower autonomous delivery teams, making data-driven decisions a central part of their strategy.
Shuang discusses the intricate process of evolving from a mere data platform to a comprehensive service platform, especially within organizations that aren't IT-centric. Her insights emphasize a lean, agile approach to prioritize use cases, focusing on quick iterations and prototypes that foster self-service and data democratization. We explore the potential shift towards a decentralized data structure where domain teams leverage data more effectively, driving operational changes and tangible business value in their pursuit of efficiency and impact.
My key learnings:
- It’s not just about gaining insights, but also about harmonizing and understanding data in context.
- Find your SMEs and involve them closely - you need insight knowledge about the data and pair that with engineering capabilities.
- Over time the SMEs and the central data team share experiences and knowledge. This creates a productive ground for working together.
- The more understanding business users gain on data, the more they want to build themselves.
- Central team delivers core data assets in a robust and stable manner. Business teams can build on that.
The Data
- You can integrate and combine internal data with external sources (like weather data, or road network data) to create valuable insights.
- Utilizing external data can save you efforts, since it often is structured and API ready.
- Dont over-engineer solutions - find you what your user-requirements are and provide data that match the requirements, not more.
- Use an agile approach to prioritize use cases together with your business users.
- Ensure you have a clear picture of potential value, but also investment and cost.
- Work in short iterations, to provide value quickly and constantly.
- Understand your platform constrains and limitations, also related to quality.
- Find your WHY! Why am I doing the work and what does that mean when it comes to prioritization?
- What is the value, impact and effort needed?
Service Platform:
- Is about offering self-service functionality.
- Due to the size of Mesta it made sense to take ownership for many data products centrally, closely aligned with the platform.
- Build it as a foundation, that can give rise to different digitalization initiatives.
- If you want to make data actionable they need to be discoverable first.
- The modular approach to data platform allows you to scale up required functionality when needed, but also to scale to zero if not.
- Verify requirements as early as you can.
Working with business use cases
- Visibility and discoverability of data stays a top priority.
- Make data and AI Literacy use case based, hands-on programs
- You need to understand constrains when selecting and working with a business use case.
- Start with a time-bound requirements analysis process, that also analyses constraints within the data.
- Once data is gathered and available on the platform, business case validity is much easier to verify.
- Gather the most relevant data first, and then see how you can utilize it further once it is structured accordingly.
- Quite often ideas originate in the business, and then the central data team is validating if the data can support the use case.
פרקים
1. From Data to Service Platform (00:00:00)
2. Data Ecosystem for Actionable Insights (00:16:04)
3. Utilizing Data for Efficiency and Impact (00:30:50)
4. Efficient Infrastructure Design for Organizations (00:40:16)
77 פרקים
Manage episode 451836495 series 2940030
«We want to make data actionable.»
Join us for an engaging conversation with Shuang Wu, Mesta's lead data engineer. We delve into the concept of platforms and explore how they empower autonomous delivery teams, making data-driven decisions a central part of their strategy.
Shuang discusses the intricate process of evolving from a mere data platform to a comprehensive service platform, especially within organizations that aren't IT-centric. Her insights emphasize a lean, agile approach to prioritize use cases, focusing on quick iterations and prototypes that foster self-service and data democratization. We explore the potential shift towards a decentralized data structure where domain teams leverage data more effectively, driving operational changes and tangible business value in their pursuit of efficiency and impact.
My key learnings:
- It’s not just about gaining insights, but also about harmonizing and understanding data in context.
- Find your SMEs and involve them closely - you need insight knowledge about the data and pair that with engineering capabilities.
- Over time the SMEs and the central data team share experiences and knowledge. This creates a productive ground for working together.
- The more understanding business users gain on data, the more they want to build themselves.
- Central team delivers core data assets in a robust and stable manner. Business teams can build on that.
The Data
- You can integrate and combine internal data with external sources (like weather data, or road network data) to create valuable insights.
- Utilizing external data can save you efforts, since it often is structured and API ready.
- Dont over-engineer solutions - find you what your user-requirements are and provide data that match the requirements, not more.
- Use an agile approach to prioritize use cases together with your business users.
- Ensure you have a clear picture of potential value, but also investment and cost.
- Work in short iterations, to provide value quickly and constantly.
- Understand your platform constrains and limitations, also related to quality.
- Find your WHY! Why am I doing the work and what does that mean when it comes to prioritization?
- What is the value, impact and effort needed?
Service Platform:
- Is about offering self-service functionality.
- Due to the size of Mesta it made sense to take ownership for many data products centrally, closely aligned with the platform.
- Build it as a foundation, that can give rise to different digitalization initiatives.
- If you want to make data actionable they need to be discoverable first.
- The modular approach to data platform allows you to scale up required functionality when needed, but also to scale to zero if not.
- Verify requirements as early as you can.
Working with business use cases
- Visibility and discoverability of data stays a top priority.
- Make data and AI Literacy use case based, hands-on programs
- You need to understand constrains when selecting and working with a business use case.
- Start with a time-bound requirements analysis process, that also analyses constraints within the data.
- Once data is gathered and available on the platform, business case validity is much easier to verify.
- Gather the most relevant data first, and then see how you can utilize it further once it is structured accordingly.
- Quite often ideas originate in the business, and then the central data team is validating if the data can support the use case.
פרקים
1. From Data to Service Platform (00:00:00)
2. Data Ecosystem for Actionable Insights (00:16:04)
3. Utilizing Data for Efficiency and Impact (00:30:50)
4. Efficient Infrastructure Design for Organizations (00:40:16)
77 פרקים
כל הפרקים
×
1 4#15 - Säde Haveri - The Data Governance Framework (Eng) 45:30

1 4#14 - Rasmus Bang - Data Governance - Simple and Relevant (Eng) 46:59

1 4#13 - Juha Korpela - Data Consulting and the Role of Data Modeling (Eng) 43:40

1 4#12 - Gry Hasselbalch - The Ethics of AI and Data - Human at the Center (Dan) 51:40

1 4#11 - Kristiina Tiilas - The Role of Data Leadership in the Industrial Sector (Eng) 40:06

1 4#10 - Geir Myrind - The Revival of Data Modeling (Nor) 41:25

1 4#9 - Marte Kjelvik & Jørgen Brenne - Healthcare Data Management: Towards Standardization and Integration (Nor) 30:44

1 Holiday Special: Joe Reis - A Journey around the World of Data (Eng) 53:47

1 4#8 - Shuang Wu - Service Platform: From Analytics to AI-Driven Success (Eng) 41:11

1 4#7 - Victor Undli - From Hype to Innovation: Navigating Data Science and AI in Norway (Eng) 31:27

1 4#6 - Rasmus Thornberg - Decision Science and AI between Use Case and Product (Eng) 39:00

1 4#5 - Olga Sergeeva - Data and AI in Modern FMCG Supply Chains (Eng) 38:43

1 4#4 - May Lisbeth Øversveen - Data Strategy in Medium-sized organizations (Nor) 32:32

1 4#3 - Pedram Birounvand - A Paradigm Shift in Data through AI (Eng) 45:54

1 4#2 - Jonah Andersson - Journey to the Cloud: Cloud Migration, Edge AI, Data as a Service (Eng) 46:29

1 4#1 - Tiankai Feng - The Power of Communities - CoP, DAMA and Beyond (Eng) 37:37

1 3#19 - Yngvar Ugland - Unlocking Innovation: Digital Transformation, AI, and Tech Evolution (Nor) 48:00

1 3#20 - Ingrid Aukrust Rones - EU Policies, Big Tech, and Global Geopolitics (Eng) 55:10

1 3#18 - Erlend Aune - Bridging the Gap: Data Science Education and Industry Collaboration (Nor) 37:49

1 3#17 - Håkan Edvinsson - Data Diplomacy, Enterprise Architecture and Data Governance (Eng) 56:54

1 3#16 - Elisabeth M.J. Klaussen - Navigating the Regulatory Landscape for AI in Healthcare (Eng) 34:25

1 3#15 - Valentina Niklasson - Data Governance and Data Stewardship - Inspired by Quality Management (Eng) 40:41

1 3#14 - Claes Lyth Walsø - Towards a Data-Driven Police Force (Nor) 35:19

1 3#13 - Olof Granberg - The Butterfly Effect in Data: Embracing the Data Value Chain (Eng) 46:32

1 3#12 - Peter van Dam - Digital Transformation in the Legal Industry (Eng) 34:21

1 3#11 - Anna Carolina Wiklund - Strategy in the Digital Space (Eng) 40:21

1 3#10 - Inga Ros Gunnarsdottir - Innovating Diversity and Inclusion in the City of Reykjavik through the role of CDO (Eng) 39:38

1 3#9 - Laiz Batista Tellefsen - The EU AI Act - Balancing AI Risks and Innovation (Eng) 32:03

1 3#8 - Alexandra Diem - Software Development: An Inspiration for Data Management? (Eng) 36:32

1 Holiday Special: Jonathan Sunderland - Patterns of Perspicacity: Redefining Perspectives on the World of Data (Eng) 46:34

1 3#7 - Heidi Dahl - Transforming Business with a Strategic Approach to Data (Nor) 34:32

1 3#6 - Ieva Martinkenaite - Responsible AI: Ethical Governance and Positive Social Impact (Eng) 49:09

1 3#5 - Alex Moltzau - Norway & AI (Eng) 47:34

1 3#4 - Anders Dræge - AI-driven Process Automation (Nor) 37:55

1 3#3 - Lars Albertsson - Data Management as Code (Eng) 55:29

1 3#2 - Carl Johan Rising - Data Scientist Redesigned (Eng) 32:22

1 3#1 - Nino Letteriello - DAMA EMEA (Eng) 46:29

1 2#17 - Ida Haugland - Digital Product Management for the Future of Shipping & Logistics (Eng) 47:58

1 2#18 - Nicolai Jørgensen - Scientific Data Management (Eng) 37:10

1 2#19 - Lisa Reutter - Datafication of Public Administration (Nor) 42:35

1 2#16 - Pedram Birounvand - Data Skills for the Future (Eng) 44:59

1 2#15 - Steen Rasmussen - The Business Impact of Data Ethics (Eng) 43:56

1 2#14 - Celine Xu - When ML meets Fashion (Eng) 46:09

1 2#13 - Xiaopeng Li - The Path to MLOps (Eng) 42:47

1 2#12 - Alexandra Gunderson & Sheri Shamlou - A Quest for Diversity - Women in Data Science (Eng) 48:48

1 #2 - Kjetil Eritzland - DMBOK & CDMP (Nor) 24:25

1 #1 - Maria Camilla Nørgaard - DAMA Norge (Nor) 30:15

1 #17 - Kristin Otter Rønnevig & Espen Hjelmeland - Return of Investment for Data Quality (Nor) 29:42

1 #16 - Espen Langbråten - Data Competencies & Recruitment (Nor) 41:31

1 #15 - Espen Bjarnes - Data Centers & Sustainability (Nor) 28:04

1 #14 - Gustav Aagesen - Data Democratization in public services (Nor) 42:25

1 #13 - Bente Busch - Technology & Data (Nor) 33:05

1 #12 - Sami Laine - Trustworthy AI & Data Ethics (Eng) 41:18

1 #11 - Torstein Hoem - Informasjonsforvaltning i Skatteetaten (Nor) 31:31

1 #10 - Rushanth Vathanagopalan - Data Strategy & How to engage your stakeholders (Nor) 32:40

1 #9 - Aiko Yamashita & Karl-Aksel Festø - Demand Side Data Management (Eng) 37:42

1 #8 - Kjetil Rønning - Data som produkt (Nor) 33:19

1 #7 - Geoffrey van IJzendoorn-Joshi - How to get started with Data Management & Sustainability (Eng) 36:03

1 #6 - Eric Toogood - DISKOS & Datakvalitet (Nor) 42:37

1 #5 - Aidan Millar - Data & Culture (Eng) 30:53

1 #4 - Chris Dale - Cybersecurity & Dark Data (Nor) 42:31

1 #3 - Alte Skjekkeland - En helhetlig tilnærming til Informationsforvaltning (Nor) 47:51

1 2#11 - Karin Håkansson - Data Governance in a Mesh (Eng) 42:12

1 2#10 - Mozhgan Tavakolifard - Knowledge Graph enabled Data Mesh (Eng) 46:55

1 2#9 - Umair M.Imam - Sustainability & AI in Transportation (Eng) 39:44

1 Live: Loris Marini - 7 data management lessons for 2023 (Eng) 51:14

1 2#8 - Nina Walberg - The 6 principles for value creation through data (Eng) 50:21

1 2#7 - Ásgeir Gunnarsson - PowerBI Governance (Eng) 45:16

1 2#6 - Trond Sogn-Lunden - Ways of Working - Insight Factory (Nor) 37:16

1 2#5 - Ivan Karlovic - Data Availability (Eng) 38:24

1 2#4 - Ole Olesen-Bagneux - Data Lifecycle, Search & Data Catalog (Eng) 36:34

1 2#3 - Leif Eric Fredheim - Customer Experience (Nor) 42:51

1 2#2 - Marti Colominas - The Business Value of Data (Eng) 40:20

1 2#1 - Marilu Lopez, Peter Aiken & Achillefs Tsitsonis - Data Literacy & DAMA International (Eng) 54:13

1 #20 - Astrid Solhaug - EU Data Legislations (Nor) 36:52

1 #19 - Mads Flensted Hauge - Data Privacy (Eng) 44:03

1 #18 - Michael Bendixen - Data Governance (Eng) 40:51
ברוכים הבאים אל Player FM!
Player FM סורק את האינטרנט עבור פודקאסטים באיכות גבוהה בשבילכם כדי שתהנו מהם כרגע. זה יישום הפודקאסט הטוב ביותר והוא עובד על אנדרואיד, iPhone ואינטרנט. הירשמו לסנכרון מנויים במכשירים שונים.