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Securing the data pipeline, from blockchain to AI

Dataconomy

Generative artificial intelligence is the talk of the town in the technology world today. These challenges are primarily due to how data is collected, stored, moved and analyzed. With most AI models, their training data will come from hundreds of different sources, any one of which could present problems.

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The power of remote engine execution for ETL/ELT data pipelines

IBM Journey to AI blog

Organizations require reliable data for robust AI models and accurate insights, yet the current technology landscape presents unparalleled data quality challenges. ETL/ELT tools typically have two components: a design time (to design data integration jobs) and a runtime (to execute data integration jobs).

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Building Robust Data Pipelines: 9 Fundamentals and Best Practices to Follow

Alation

But with the sheer amount of data continually increasing, how can a business make sense of it? Robust data pipelines. What is a Data Pipeline? A data pipeline is a series of processing steps that move data from its source to its destination. The answer?

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Data integrity vs. data quality: Is there a difference?

IBM Journey to AI blog

When we talk about data integrity, we’re referring to the overarching completeness, accuracy, consistency, accessibility, and security of an organization’s data. Together, these factors determine the reliability of the organization’s data. Data quality Data quality is essentially the measure of data integrity.

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5 Data Quality Best Practices

Precisely

Key Takeaways By deploying technologies that can learn and improve over time, companies that embrace AI and machine learning can achieve significantly better results from their data quality initiatives. Here are five data quality best practices which business leaders should focus.

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Data Integration for AI: Top Use Cases and Steps for Success

Precisely

Follow five essential steps for success in making your data AI ready with data integration. Define clear goals, assess your data landscape, choose the right tools, ensure data quality and governance, and continuously optimize your integration processes.

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Shaping the future: OMRON’s data-driven journey with AWS

AWS Machine Learning Blog

OMRONs data strategyrepresented on ODAPalso allowed the organization to unlock generative AI use cases focused on tangible business outcomes and enhanced productivity. The company aims to integrate additional data sources, including other mission-critical systems, into ODAP.

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