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
However, with the abundance of different types of data analysis tools in the market, what was supposed to be a simple task has become a complex undertaking. This article aims to simplify the process of finding the dataanalytics platform that meets your organization’s specific needs.
Introduction Why should I read the definitive guide to embeddedanalytics? But many companies fail to achieve this goal because they struggle to provide the reporting and analytics users have come to expect. The Definitive Guide to EmbeddedAnalytics is designed to answer any and all questions you have about the topic.
Data pipelines are designed to automate the flow of data, enabling efficient and reliable data movement for various purposes, such as dataanalytics, reporting, or integration with other systems. For example, streaming data from sensors to an analytics platform where it is processed and visualized immediately.
Its distributed architecture empowers organizations to query massive datasets across databases, data lakes, and cloud platforms with speed and reliability. Horizontal scaling with additional worker nodes supports expanding workloads to ensure speed or reliability. Learn more about how Simba can help.
2022 was a big year for embeddedanalytics at insightsoftware, bringing significant enhancements to our best-of-breed solutions. This was bolstered by insightsoftware’s acquisition of Dundas Data Visualization, Inc., adding deeper functionality that has strengthened Logi’s self-servicedataanalytics and visualizations.
For maximum impact, data storytelling must be woven into the culture of an organization. That means having applications that prioritize meaningful insights over raw data. Data storytelling makes any software application more valuable by helping users turn data into action. 16 Data Visualizations to Thrill Your Customers.
Self-service’ capabilities like Self-Service BI are the manifestation of this expectation within many technologies. Organizations are promised a ‘one size fits all’ tool that will allow users to ‘drag n drop’ their way to data fluency. Put simply, ‘self-service’ relates to true autonomy.
Traditional dataanalytics models often create bottlenecks, relying heavily on overextended IT departments to provide insights, which delays decision-making and limits agility. Adopting a self-serviceanalytics approach with the right tools is the key to overcoming these challenges. Want to learn more?
better drill down, more filtering options, real-time, self-service capabilities, exporting etc.). Deployment and integration – ISVs wanting to embed BI and analytics capabilities into their applications frequently find it hard to deliver the seamless experience their end users expect.
Close skills gaps with self-service. Hubble enables user-friendly access to all JD Edwards financial and operational data with the ability to drill down into details. Real-time integration with JD Edwards puts you in control with live data so your decisions are based on consistent, reliable, and accurate information.
To get there, companies are utilizing business intelligence tools to analyze important data and gain valuable insights to inform their decision-making process. Both product analytics and embeddedanalytics fall into this tool category. Product AnalyticsEmbeddedAnalytics What data does it provide?
In this article, we’ll address the various ways that software companies (including SaaS vendors) can build analytics into their products. Using third-party libraries also creates some challenges with respect to security, which must be implemented separately for each UI component. The Better Approach: EmbeddedAnalytics.
To effectively fulfill this role, analytics systems must possess a high degree of flexibility and scalability, seamlessly integrating with diverse applications and data sources. As a software vendor, providing your customers with a robust and adaptable analytics platform is crucial for maintaining a competitive edge.
Self-serviceanalytics has been a leading priority in the business intelligence (BI) space for years and is likely here to stay. With data-driven culture on the rise, analytics is no longer just for IT teams and data scientists. What Is Self-ServiceAnalytics?
Chief Data Officers and business leaders must stay abreast of key trends so their organizations don’t miss out on its benefits. A relatively new buzzword in the embeddedanalytics arena was coined by thought leader Howard Dresner, who serves as Chief Research Officer of Dresner Advisory Services. The answer is simple.
By providing a consistent and stable backend, Apache Iceberg ensures that data remains immutable and query performance is optimized, thus enabling businesses to trust and rely on their BI tools for critical insights. It provides a stable schema, supports complex data transformations, and ensures atomic operations.
In the rapidly-evolving world of embeddedanalytics and business intelligence, one important question has emerged at the forefront: How can you leverage artificial intelligence (AI) to enhance your data analysis? Extend AI’s reach with seamless embedding. Forget the one-size-fits-all approach.
Every data source claims important elements and insight. You will look within your organization for data from sales, marketing, customer relations, billing, and more. You may even choose to aggregate third-partydata in order to capture data points that you don’t currently have, be it propensity-to-buy models or demographics data.
Raw data can be difficult to comprehend or interpret when numbers lack meaningful insights for business users. Embeddedanalytics offers users real-time, contextual analytics within their standard workflows to transform raw numbers into easily comprehensible and actionable business insights. Just a Story, or The Truth?
As the digitization wave crashes over a post-pandemic market, many organizations are taking stock of their data tools and finding them lacking in comparison to other more modern solutions available. Gone are the days when simple self-serviceanalytics would suffice for their users.
EmbeddedAnalytics Brings Data Storytelling to Any Application. Data storytelling is the future of analytics. If your software company wants to truly stand apart from the crowd, then data storytelling should be part of your value proposition. The Path to Data Leadership: Embracing EmbeddedAnalytics.
It directly queries structured and semi-structured data from data lakes , enabling operational dashboards and real-time analytics without the need for preprocessing. This supports faster decision-making without the bottlenecks of traditional ETL. Get a Demo Facing Data Connectivity Challenges?
Most finance professionals need more time to think about how to convey the data story in a way that gets the audience’s attention and influences them to make intelligent decisions with the data. The data storytelling process starts with analyzing the data and gathering insights; this stage is critical.
How Finance Can Achieve Agility and Support Organizational Decision Making. They understand that adopting new technology to streamline processes is the surest way to achieve true agility and support organizational decision making. Even so, it’s clear there is still much work to be done. See Your New Business From A New Angle.
From paid training sessions to free resources on their website – Qlik provides comprehensive support for total beginners through to advanced users. Within this space, you’ll find everything from Forums for DataAnalytics to Events and Support.
Here’s how AI is transforming production and supply chain management: Supply Chain Optimization: AI and dataanalytics optimize transportation routes, warehouse locations, and inventory levels, ensuring a smoother supply chain.
Meaning, analysts and data scientists serve as the primary “composers” of analytics through the use of reusable assets. They leverage components from various data, analytics, and AI solutions. Composable analytics are comprised of a set of tools that ultimately form a solution. Want a head start on analytics?
Finance is responsible not only for comprehensive financial and operational reporting, but also for accurate dataanalytics and precise accounting. Today’s finance teams are under more pressure than ever before. More than 40% of finance leaders report that skills shortages are a major challenge to their productivity and efficiency.
Data insights that drive business processes: Reduce your carbon emissions with operational reporting software that supports advanced analytics, flexibility, and understanding across your organization through analytical insights from footprint data.
Let’s take a look at how industries like yours are making use of dataanalytics tools to find patterns and derive insights from data. As masters of the application of new technological advancements to financial products and services, it’s no wonder that leaders in the financial industry are also leaders in data discovery.
DataAnalytics: Unravelling Insights Standardizing your data with a modern tax tool allows for much deeper analysis. Resilience and Agility With Longview Tax Embrace the automation, dataanalytics, and the cloud computing power of Longview Tax to help you to remain resilient and agile in todays’ shifting tax landscape.
Similarly, in a survey conducted by PwC , 75% of CFOs in the EMEA region stated that they were concerned about the lack of specialized skills in their finance teams, particularly in areas like dataanalytics and financial modeling.
By leveraging technology to automate planning processes, you can deploy real-time dataanalytics, scenario modeling, and forecasting capabilities. Automation can help you improve efficiency, accelerate processes, and free up valuable time for your team to focus on more strategic activities.
There is a heightened need for collaboration in the analytics sector, a team that will hold your hand and guides you throughout every phase of the process. Leaders of embeddedanalytics, like insightsoftware’s Logi solutions , serve as advocates for their partners’ initiatives. The Definitive Guide to EmbeddedAnalytics.
The provisioning of software and services that help companies grow is the end goal of Human Capital Management (HCM) organizations around the world. The delivery of these specialized services has changed in recent years. Leaders of embeddedanalytics, like insightsoftware’s Logi solutions, serve as advocates for their HCM providers.
Driving Data-Driven Decisions Vizlib supports a data-first culture by delivering actionable insights directly to decision-makers. With tools designed to extract meaning from complex datasets, it helps your business align its strategies with real-world data and trends.
For JasperReports users, the dual release model of Mainstream and Long-Term Support (LTS) versions means that while older versions like 7.9.x promise extended support and new features. x: Support for this version is scheduled to end on June 30, 2025. x: Support for this version is scheduled to end on June 30, 2025.
Data Consolidation and Harmonization (No Data Silos) In many organizations, financial data is scattered across multiple systems, making it difficult to manage, analyze, and trust. A staggering 93% of finance teams rely on multiple software tools, and 94% use solutions from different vendors.
We organize all of the trending information in your field so you don't have to. Join 57,000+ 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