This site uses cookies to improve your experience. To help us insure we adhere to various privacy regulations, please select your country/region of residence. If you do not select a country, we will assume you are from the United States. Select your Cookie Settings or view our Privacy Policy and Terms of Use.
Cookie Settings
Cookies and similar technologies are used on this website for proper function of the website, for tracking performance analytics and for marketing purposes. We and some of our third-party providers may use cookie data for various purposes. Please review the cookie settings below and choose your preference.
Used for the proper function of the website
Used for monitoring website traffic and interactions
Cookie Settings
Cookies and similar technologies are used on this website for proper function of the website, for tracking performance analytics and for marketing purposes. We and some of our third-party providers may use cookie data for various purposes. Please review the cookie settings below and choose your preference.
Strictly Necessary: Used for the proper function of the website
Performance/Analytics: Used for monitoring website traffic and interactions
The way that I explained it to my data science students years ago was like this. I brought them deeper into the world by pointing out how much more effective and efficient the data professionals’ life would be if our data repositories had a similar semantic meta-layer. What is a semantic layer? There’s more.
In my previous blog post, I shared examples of how data provides the foundation for a modern organization to understand and exceed customers’ expectations. Collecting workforce data as a tool for talent management. Collecting workforce data as a tool for talent management.
DataKitchen Resource Guide To Data Journeys & Data Observability & DataOps Data (and Analytic) Observability & Data Journey – Ideas and Background Data Journey Manifesto and Why the Data Journey Manifesto?
Teams need to urgently respond to everything from massive changes in workforce access and management to what-if planning for a variety of grim scenarios, in addition to building and documenting new applications and providing fast, accurate access to data for smart decision-making. Data Modeling. Data Governance.
The World Economic Forum has included cyber-attacks and data breaches in the list of top global risks in 2020. The problems associated with data breaches cannot possibly be overstated. The average data breach cost $3.86 This is critical if you want to stop a data breach. Why do you need an email security plan?
Of course, adopting these data-driven solutions can make you more resilient in the face of a global pandemic or any other significant threats. Read on to learn more about businesses adopting innovative new data technology amidst the COVID-19 pandemic. Document Sharing & Collaboration Tools. Project Management Tools.
erwin recently hosted the second in its six-part webinar series on the practice of data governance and how to proactively deal with its complexities. Led by Frank Pörschmann of iDIGMA GmbH, an IT industry veteran and data governance strategist, the second webinar focused on “ The Value of Data Governance & How to Quantify It.”.
A database is a crucial engine for a world becoming more datadriven. Businesses are more heavily relying on smart insights and emerging patterns to succeed. Advancements in software and hardware had an interplay between the rising appetite for any organization making a data-driven decision.
Our recent data analysis of AI/ML trends and usage confirms this: enterprises across industries have substantially increased their use of generative AI, across many kinds of AI tools. Once shared, this data can be fed into the data lakes used to train large language models (LLMs) and can be discovered by other users.
Data modeling supports collaboration among business stakeholders – with different job roles and skills – to coordinate with business objectives. Data resides everywhere in a business , on-premise and in private or public clouds. A single source of data truth helps companies begin to leverage data as a strategic asset.
CDP (Cloudera Data Platform) Private Cloud 1.2 In this blog, we’ll cover the complete range of new capabilities and updates for CDP Private Cloud as a whole (the platform) as well as for both the CDW (Cloudera Data Warehouse) and CML (Cloudera Machine Learning) services. release blog ). Platform – In-place Updates.
Data is the fuel that drives government, enables transparency, and powers citizen services. It outlines a scenario in which “recently married people might want to change their names on their driver’s licenses or other documentation. Data quality issues deter trust and hinder accurate analytics. Modern data architectures.
There has been an explosion of data, from social and mobile data to big data, that is fueling new ways to understand and improve customer experience. Is this data in a form I can use? Where is the data I need? Davis will discuss how data wrangling makes the self-service analytics process more productive.
Better decision-making has now topped compliance as the primary driver of data governance. However, organizations still encounter a number of bottlenecks that may hold them back from fully realizing the value of their data in producing timely and relevant business insights. Data Governance Bottlenecks. Sources, like IoT.
I’m attending Commvault’s webinar tomorrow on the topic ‘‘From Threats to Resilience: Leveraging AI for Data Security’ as I am particularly interested in the topic of how generative AI will impact cybersecurity for both good and bad. I am joining the webinar as an attendee so I can get out in front of the risks.
One trend that we’ve seen this year, is that enterprises are leveraging streaming data as a way to traverse through unplanned disruptions, as a way to make the best business decisions for their stakeholders. . Today, a new modern data platform is here to transform how businesses take advantage of real-time analytics.
We just announced Cloudera DataFlow for the Public Cloud (CDF-PC), the first cloud-native runtime for Apache NiFi data flows. Apache Nifi is a powerful tool to build data movement pipelines using a visual flow designer. Implementing an automated scale up and scale down procedure for NiFi clusters is complex and time consuming.
What is your organization doing to protect the value of your data? A strong data governance strategy helps ensure that your data is usable, accessible and protected, guaranteeing trust in the quality and consistency of the data. But creating a data governance program is not something you can do overnight.
For data-driven enterprises, data governance is no longer an option; it’s a necessity. Businesses are growing more dependent on data governance to manage data policies, compliance, and quality. For these reasons, a business’ data governance approach is essential. Data Democratization.
The Semantic Web, both as a research field and a technology stack, is seeing mainstream industry interest, especially with the knowledge graph concept emerging as a pillar for data well and efficiently managed. And what are the commercial implications of semantic technologies for enterprise data? Source: tag.ontotext.com.
Join SingleStore and IBM on September 21, 2022 for our webinar “ Accelerating Real-Time IoT Analytics with IBM Cognos and SingleStore ”. IoT systems access millions of devices that generate large amounts of streaming data. Considering solutions for real-time analytics on IoT data. Why real-time analytics matters for IoT systems.
The way enterprises implement data governance is changing. In the past, data governance either emphasized exercising tight control over data or fitting people into rigid roles and processes. With both approaches, data governance is a hurdle to productive data & analytics rather than an enabler.
Integration will help finance professionals understand their data and make critical business decisions. Financial reports are deeply scrutinized, yet the process to generate these documents remains time-consuming, complex, and manual, leaving room for human error. About insightsoftware.
On Thursday January 6th I hosted Gartner’s 2022 Leadership Vision for Data and Analytics webinar. There were 80 or so questions or comments posted and I was not able to respond to all of them live in the webinar so here are the verbatim questions and an individual response to each on. I hope they are helpful.
On the heels of its erwin® Data Modeler 12.1 Register to attend our What’s New webinar , hosted by product manager Vani Mishra. That’s why, in erwin Data Modeler 12.1, From the customer’s perspective, once erwin Data Modeler 12.1 In erwin Data Modeler 12.1 Account-based licensing.
This past week, I had the pleasure of hosting Data Governance for Dummies author Jonathan Reichental for a fireside chat , along with Denise Swanson , Data Governance lead at Alation. Can you have proper data management without establishing a formal data governance program? Establishing a solid vision and mission is key.
Although many publications compare product data management and product life cycle management — commonly framing the debate as “PDM versus PLM” — that can create confusion. The functionality referred to as a product data management framework is more accurately a subset of a product life cycle management framework.
For NoSQL, data lakes, and data lake houses—data modeling of both structured and unstructured data is somewhat novel and thorny. This blog is an introduction to some advanced NoSQL and data lake database design techniques (while avoiding common pitfalls) is noteworthy. A sample data warehousing project.
It demonstrates how GraphDB and metaphactory work together and how you can employ the platform’s intuitive and out-of-the-box search, visualization and authoring components to empower end users to consume data from your knowledge graph. You can also listen to our on-demand webinar on the same topic or check out our use case brief.
In my sixth year of self-employment, the demand for data visualization skills is stronger than ever. Are you ready to take your organization’s data communications skills to the next level? Then, join me and your fellow students live webinars twice each month. This training program is about classic data visualization principles?
How to create a solid foundation for data modeling of OLTP systems. As you undertake a cloud database migration , a best practice is to perform data modeling as the foundation for well-designed OLTP databases. This makes mastering basic data modeling techniques and avoiding common pitfalls imperative. Data modeling basics.
Be datadriven?" Six Rules For Creating A DataDriven Boss! Be datadriven?" Slay The Analytics Data Quality Dragon & Win Your HiPPO's Love! Web Data Quality: A 6 Step Process To Evolve Your Mental Model. The Ultimate Web Analytics Data Reconciliation Checklist.
This is part of Ontotext’s AI-in-Action initiative aimed at enabling data scientists and engineers to benefit from the AI capabilities of our products. Natural Language Query (NLQ) has gained immense popularity due to its ability to empower non-technical individuals to extract data insights just by asking questions in plain language.
By leveraging data analysis to solve high-value business problems, they will become more efficient. This is in contrast to traditional BI, which extracts insight from data outside of the app. that gathers data from many sources. These tools prep that data for analysis and then provide reporting on it from a central viewpoint.
More than ever before, business leaders recognize that top-performing organizations are driven by data. Briefly stated, the perfect order rate represents the percentage of orders that are delivered in full, on time, without incident, and with documentation that is accurate and complete.
Greater scrutiny of multinational organizations’ tax arrangements following the pandemic will be driven by governments’ ambition to gather optimum tax dollars to pay for higher levels of borrowing. International tax regimes are also undergoing significant change, driven by the need for more transparency and accountability.
Three of the most important of these are: cloud migration, data standardization, and interoperability. In the case of data standardization, silos of information held by different teams are being replaced by single common datasets that underpin every process and are updated in real-time. Transfer Pricing at an Inflexion Point.
When extracting your financial and operational reporting data from a cloud ERP, your enterprise organization needs accurate, cost-efficient, user-friendly insights into that data. While real-time extraction is historically faster, your team needs the reliability of the replication process for your cloud data extraction.
Those without KPIs are left without any valuable statistics, while those with established performance tracking dashboards are able to make datadriven decisions. To make even more use of this KPI, data should be collected to see if there are any regular donors, and which program they graduated from. Effective Data Collection.
In a study of how and where corporations are discussing ESG issues, along with the number of public documents (including filings and ESG reports) published, Deutsche Bank concluded that corporations’ ESG priorities have indeed changed in response to the pandemic. I'd like to see a demo of insightsoftware solutions.
For data management teams, achieving more with fewer resources has become a familiar challenge. While efficiency is a priority, data quality and security remain non-negotiable. Developing and maintaining data transformation pipelines are among the first tasks to be targeted for automation.
Without deep technical knowledge of Epicor’s data structures, attempting to manually create custom reports can create serious roadblocks to data trust within your organization. Additionally, disconnected data forces manual verification, raising doubts about accuracy and eroding trust.
In the rapidly evolving world of embedded analytics and business intelligence, one important question has emerged at the forefront: How can you leverage artificial intelligence (AI) to enhance your data analysis? Users can ask specific questions about the data; for example, asking what a particular data value was on a particular date.
Remember the phrase big data? It was the mainstay of tech articles, talk shows and webinars for at least a decade before AI took over and completely supplanted it in the minds of tech enthusiasts. But that doesnt mask the fact that AI models rely on large amounts of data. An AI model is only as good as the data its trained on.
We organize all of the trending information in your field so you don't have to. Join 42,000+ users and stay up to date on the latest articles your peers are reading.
You know about us, now we want to get to know you!
Let's personalize your content
Let's get even more personalized
We recognize your account from another site in our network, please click 'Send Email' below to continue with verifying your account and setting a password.
Let's personalize your content