The Data Edge: Data Quality & AI Readiness

AI & Data Standards

16 min ยท 9 de abr de 2026
Portada del episodio AI & Data Standards

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๐—•๐˜‚๐—ถ๐—น๐—ฑ๐—ถ๐—ป๐—ด ๐—ฎ ๐—ฅ๐—ฒ๐—น๐—ถ๐—ฎ๐—ฏ๐—น๐—ฒ ๐——๐—ฎ๐˜๐—ฎ ๐—Ÿ๐—ฎ๐˜†๐—ฒ๐—ฟ: ๐—œ๐—ป๐˜€๐—ถ๐—ด๐—ต๐˜๐˜€ ๐—ณ๐—ฟ๐—ผ๐—บ "๐—ง๐—ต๐—ฒ ๐——๐—ฎ๐˜๐—ฎ ๐—˜๐—ฑ๐—ด๐—ฒ" ๐—ฃ๐—ผ๐—ฑ๐—ฐ๐—ฎ๐˜€๐˜ In this episode of The Data Edge, Erwin de Werd and guest Stephanie Wiechers explore the critical aspects of data quality, standardization, and data movement for organizations aiming to leverage AI and advanced analytics effectively. They discuss practical challenges and strategic considerations for companies of all sizes seeking to build trustworthy, scalable data infrastructure. ๐— ๐—ฎ๐—ถ๐—ป ๐—ง๐—ผ๐—ฝ๐—ถ๐—ฐ๐˜€: โœ” The increasing importance of data quality and reliability in AI applications โœ” Challenges in creating and trusting dashboards due to data flaws โœ” How data movement between systems influences decision-making and analytics โœ” The role of standardization in cross-entity data sharing and efficiency โœ” Trends and best practices for adopting data standards and improving data governance โœ” The impact of AI tools like Copilot on data analysis and development โœ” Strategies for smaller businesses to align with industry standards despite resource constraints ๐—ง๐—ถ๐—บ๐—ฒ๐˜€๐˜๐—ฎ๐—บ๐—ฝ๐˜€: 00:00 - Introduction and overview of data quality challenges in AI development 00:30 - The surge in democratized data analysis and its responsibilities 01:34 - Risks of trusting dashboards with potential data flaws 03:07 - The importance of data reliability for decision-making 04:13 - Moving data across systems to enable advanced analytics 05:18 - The significance of data standardization in different industries 06:34 - How data lakes and recent platforms support data integration 07:45 - The role of data quality as a foundation for dashboards and AI models 08:26 - Standardization trends and industry-specific norms 09:13 - Cost considerations and strategic choices in implementing standards 10:27 - Challenges and strategies for smaller companies adopting standards 11:48 - Practical steps for transitioning from non-standard to standardized data 12:18 - Industry standards like UNSPSC and industry-specific frameworks 13:25 - The strategic value of standardization for cost savings and operational efficiency 14:09 - Use cases in procurement and spend analysis 15:13 - The growing importance of data quality and standardization in analytics 16:02 - Final thoughts and future topics ๐—ฅ๐—ฒ๐˜€๐—ผ๐˜‚๐—ฟ๐—ฐ๐—ฒ๐˜€ & ๐—Ÿ๐—ถ๐—ป๐—ธ๐˜€: โ€ข UNSPSC (United Nations Standard Products and Services Code) [https://www.unspsc.org/] โ€“ Industry-standard classification for products and services

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13 episodios

episode Data Quality in Manufacturing and Procurement artwork

Data Quality in Manufacturing and Procurement

Unlocking Data Quality in Manufacturing and Procurement with Jonas Hauswurz"In this episode, Stephanie Wiechers chats with Jonas Hauswurz, founder of Neomir, about the real issues behind data quality problems in manufacturing and procurement. Discover practical use cases, how to identify critical data leaks, and the importance of focusing on operational teams rather than just executives.Key Topics: * The distinction between data problems and data quality issues * How Neomir's software detects bad data at scale and automates resolutions * The significance of rules in data validation, e.g., ensuring cars always have four wheels * Practical applications in manufacturing, procurement, and asset management * The challenge of tying data quality to measurable ROI and cost savings * The different approaches to data quality: identification vs. pre-filling and machine learning * Why operational teams often detect data issues before management does * Strategies for engaging ground-level staff to improve data quality Timestamps: 00:00 - The difference between data issues and data quality flaws 00:25 - Why data quality is often misunderstood in organizations 00:55 - How Neomir's software identifies and automates fixing bad data 01:20 - Practical examples in manufacturing and asset management 03:12 - Creating rules for data validation with AI assistance 04:29 - Common data errors in manufacturing, such as bill of materials inaccuracies 05:15 - Propagation of data checks through entire supply chains 07:28 - The role of data quality in cost savings and strategic decision-making 08:23 - Indirect effects of data quality on financial performance 09:58 - Approaches to measuring ROI for data quality initiatives 11:03 - Advantages of transparency and rough ROI estimates over precise calculations 13:23 - Engaging operational teams for better data insights 15:45 - How management often underestimates data issues until front-line staff reveal them 16:24 - The importance of targeting conversations at data specialists and operational staff 18:05 - Closing thoughts and how to connect with Jonas for manufacturing and procurement data challenges Resources & Links: * Stephanie Wiechers - LinkedIn [https://www.linkedin.com/in/stephanie-wiechers/] * Jonas Hauswurz - LinkedIn [https://www.linkedin.com/in/jonas-hauswurz/]

23 de abr de 202618 min
episode AI & Data Standards artwork

AI & Data Standards

๐—•๐˜‚๐—ถ๐—น๐—ฑ๐—ถ๐—ป๐—ด ๐—ฎ ๐—ฅ๐—ฒ๐—น๐—ถ๐—ฎ๐—ฏ๐—น๐—ฒ ๐——๐—ฎ๐˜๐—ฎ ๐—Ÿ๐—ฎ๐˜†๐—ฒ๐—ฟ: ๐—œ๐—ป๐˜€๐—ถ๐—ด๐—ต๐˜๐˜€ ๐—ณ๐—ฟ๐—ผ๐—บ "๐—ง๐—ต๐—ฒ ๐——๐—ฎ๐˜๐—ฎ ๐—˜๐—ฑ๐—ด๐—ฒ" ๐—ฃ๐—ผ๐—ฑ๐—ฐ๐—ฎ๐˜€๐˜ In this episode of The Data Edge, Erwin de Werd and guest Stephanie Wiechers explore the critical aspects of data quality, standardization, and data movement for organizations aiming to leverage AI and advanced analytics effectively. They discuss practical challenges and strategic considerations for companies of all sizes seeking to build trustworthy, scalable data infrastructure. ๐— ๐—ฎ๐—ถ๐—ป ๐—ง๐—ผ๐—ฝ๐—ถ๐—ฐ๐˜€: โœ” The increasing importance of data quality and reliability in AI applications โœ” Challenges in creating and trusting dashboards due to data flaws โœ” How data movement between systems influences decision-making and analytics โœ” The role of standardization in cross-entity data sharing and efficiency โœ” Trends and best practices for adopting data standards and improving data governance โœ” The impact of AI tools like Copilot on data analysis and development โœ” Strategies for smaller businesses to align with industry standards despite resource constraints ๐—ง๐—ถ๐—บ๐—ฒ๐˜€๐˜๐—ฎ๐—บ๐—ฝ๐˜€: 00:00 - Introduction and overview of data quality challenges in AI development 00:30 - The surge in democratized data analysis and its responsibilities 01:34 - Risks of trusting dashboards with potential data flaws 03:07 - The importance of data reliability for decision-making 04:13 - Moving data across systems to enable advanced analytics 05:18 - The significance of data standardization in different industries 06:34 - How data lakes and recent platforms support data integration 07:45 - The role of data quality as a foundation for dashboards and AI models 08:26 - Standardization trends and industry-specific norms 09:13 - Cost considerations and strategic choices in implementing standards 10:27 - Challenges and strategies for smaller companies adopting standards 11:48 - Practical steps for transitioning from non-standard to standardized data 12:18 - Industry standards like UNSPSC and industry-specific frameworks 13:25 - The strategic value of standardization for cost savings and operational efficiency 14:09 - Use cases in procurement and spend analysis 15:13 - The growing importance of data quality and standardization in analytics 16:02 - Final thoughts and future topics ๐—ฅ๐—ฒ๐˜€๐—ผ๐˜‚๐—ฟ๐—ฐ๐—ฒ๐˜€ & ๐—Ÿ๐—ถ๐—ป๐—ธ๐˜€: โ€ข UNSPSC (United Nations Standard Products and Services Code) [https://www.unspsc.org/] โ€“ Industry-standard classification for products and services

9 de abr de 202616 min
episode Succesfactors for AI artwork

Succesfactors for AI

๐—จ๐—ป๐—น๐—ผ๐—ฐ๐—ธ๐—ถ๐—ป๐—ด ๐˜๐—ต๐—ฒ ๐—ฃ๐—ผ๐˜„๐—ฒ๐—ฟ ๐—ฎ๐—ป๐—ฑ ๐—ฃ๐—ถ๐˜๐—ณ๐—ฎ๐—น๐—น๐˜€ ๐—ผ๐—ณ ๐—”๐—œ ๐—ฎ๐—ป๐—ฑ ๐——๐—ฎ๐˜๐—ฎ ๐— ๐—ฎ๐—ป๐—ฎ๐—ด๐—ฒ๐—บ๐—ฒ๐—ป๐˜ In this episode of The Data Edge, Erwin de Werd and Stephanie Wiechers explore how AI can transform data management from a headache into a strategic advantage โ€” if used wisely. They discuss the pitfalls of overhyped AI solutions, the importance of building robust systems, and practical steps to improve data quality. ๐—ž๐—ฒ๐˜† ๐—ง๐—ผ๐—ฝ๐—ถ๐—ฐ๐˜€: The proliferation of AI "skills" and why over 90% are ineffective How automation, when done properly, enhances data quality and operational efficiency The challenge of discerning quality in AI tools and avoiding superficial solutions Practical examples of AI in lead generation (Dream 100 strategy) and content creation How to build trust in AI-driven data solutions amidst industry hype The importance of authentic, human-centered communication in AI content The distinction between front-end conversation and back-end automation in data management Planning for a future where AI and data quality ensure better decision-making ๐—ง๐—ถ๐—บ๐—ฒ๐˜€๐˜๐—ฎ๐—บ๐—ฝ๐˜€: 00:00 - Introduction: Transforming data management with AI 00:30 - Why most AI skills are ineffective and what they entail 01:25 - Explanation of skills as standard operating procedures (SOPs) 02:24 - The explosion of AI skills on platforms like Instagram and their usability 03:20 - The common problem of people not doing the work when using AI tools 03:50 - Strategic laziness: automating repetitive tasks with quality checks 04:32 - Pitfalls of trusting AI outputs without proper validation 04:57 - Challenges in training AI models to produce accurate, high-quality content 05:44 - Limitations of custom GPTs in professional tasks like LinkedIn content 06:22 - The importance of investing effort upfront to create effective automation systems 06:47 - Why cost savings lead to underinvestment in AI automation 07:34 - Challenges of relying on incomplete or careless prompts 07:45 - The habit of short-input prompts and the impact on output quality 08:13 - Building outreach strategies with AI: the Dream 100 example 08:51 - Automating research and outreach to generate leads efficiently 09:35 - Using AI to identify influencers and industry events for strategic networking 10:58 - The need for consistency and authenticity in AI-generated content 12:04 - How good copywriters leverage AI as a starting point, not a replacement 12:51 - Authenticity remains crucial despite the efficiency gains from AI 13:17 - Connecting AI automation in data management with operational layers of business 14:09 - The importance of backend automation for data quality and integrity 15:14 - Trust issues in procurement and other industries regarding AI promises 16:26 - The hype versus reality of AI solutions, and the upcoming industry shakeout 17:08 - Final thoughts: Deepening the conversation in future episodes

2 de abr de 202617 min
episode AI & Human Collaboration artwork

AI & Human Collaboration

๐ŸŽ™๏ธ ๐˜๐—ต๐—ฒ ๐—ฑ๐—ฎ๐˜๐—ฎ ๐—ฒ๐—ฑ๐—ด๐—ฒ โ€” ๐—ฑ๐—ฎ๐˜๐—ฎ ๐—พ๐˜‚๐—ฎ๐—น๐—ถ๐˜๐˜† ๐—ถ๐—ป ๐—ฎ๐—ถ ๐—ฝ๐—ฟ๐—ผ๐—ท๐—ฒ๐—ฐ๐˜๐˜€ In this episode, Erwin and Stephanie delve into the complexities of data quality in AI projects, emphasizing that messy data often leads to costly mistakes. They explore how human-AI collaboration and understanding the limitations of models like LLMs are crucial for success. ๐Ÿ”‘ ๐—ž๐—˜๐—ฌ ๐—ง๐—ข๐—ฃ๐—œ๐—–๐—ฆ * The common misconception that first data categorization is 100% accurate โ€” and why errors are part of the process * The reality of achieving high data quality and near automation (up to 95%) in data processing * Expectations vs. reality: Why clients sometimes expect AI to be a 'magic bullet' and how to set realistic goals * The importance of contextual knowledge and communication to improve model accuracy * Methodologies for training AI models as 'new employees', including leveraging human expertise and internal knowledge * A real-world construction project: data categorization challenges, including language issues (tablets as lozenges) * Differentiating LLMs like ChatGPT from specialized machine learning models * The role of human-AI cooperation in improving data quality and operational efficiency * Creating a knowledge center for clients through ongoing data training and model refinement * The value of building IP within organizations by developing tailored data solutions and models โฑ๏ธ ๐—ง๐—œ๐— ๐—˜๐—ฆ๐—ง๐—”๐— ๐—ฃ๐—ฆ 00:00 Introduction: The impact of messy data on industry costs 00:30 Setting the stage: From data quality to correction hiccups 01:14 Why initial categorization often isn't perfect โ€” and it's normal 02:02 The misconception of AI producing perfect results immediately 02:50 Achieving high data quality and near automation possibilities 03:17 Managing client expectations around AI and data processing 04:05 Importance of communication about processes and contextual insights 05:14 When models don't perform as expected: Training methodologies 05:45 Example project in construction: Data categorization challenges 06:47 Using dashboards to identify and fix misclassified data 08:11 Language nuances affecting classification (e.g., tablets as lozenges) 08:58 Differences between LLMs like ChatGPT and task-specific ML models 10:16 The core distinction: General language models vs. specialized models 12:11 Why consistency and rule-based training are vital 13:24 Human-AI collaboration enhancing data accuracy 14:02 Implementing biases and industry knowledge to improve models 15:19 Building an organization's IP through data and model development 16:21 Potential for transparency: Sharing system rules with clients 17:05 Recap: Differentiating AI types and combining human expertise 18:18 Closing: Key takeaways on data, AI, and IP in projects

26 de mar de 202618 min