search
HomeTechnology peripheralsAITop 10 Bad Business Intelligence Implementation Practices to Avoid

Top 10 Bad Business Intelligence Implementation Practices to Avoid

Apr 12, 2023 pm 10:34 PM
AIBusiness Intelligence

Business intelligence is transforming traditional workloads for global enterprises across all industries. Business intelligence practices enable enterprises to become more modern while effectively adopting digitalization or digital transformation.

Depending on the business goals and objectives, there are various business intelligence implementation practices for integrating with artificial intelligence. Leveraging artificial intelligence in your business will help increase customer engagement and aspire to earn adequate profits. Business intelligence implementation practices help gain a competitive advantage for millions of companies in the global technology market. The combination of artificial intelligence and business intelligence supports better, more informed decisions through automation. BI practices have become one of the key elements to help the decision-making process meet customer satisfaction in 2022 and beyond. People need to know some of the top ten worst business intelligence implementation practices to avoid when implementing artificial intelligence in business to eliminate potentially huge losses.

Top 10 Bad Business Intelligence Implementation Practices to Avoid

Top 10 Worst Business Intelligence Implementation Practices to Avoid in 2022

1. Collect Poor-quality data

Data is the most important element in business intelligence that is integrated into artificial intelligence models. Companies may not collect any poor quality data to implement into business implementation practices that solely leverage AI. Then, it will hinder the entire data management process such as real-time data tracking, data reconciliation, etc.

2. Ignore key data sources

Enterprises must not ignore key data sources as they continue to implement business intelligence practices. In addition to data warehouses, EROs, CRMs, and specific databases, there are multiple key data sources. Ignoring other key data sources such as network monitoring data or social media can lead to inaccurate decisions.

3. Complicating BI practices

One of the worst business intelligence implementation practices is to complicate BI practices for no reason. complex. Businesses need to remember that the integration of AI makes business intelligence practices much easier and simpler, with just a little understanding. There is no unwillingness to complicate BI practices.

4. Not providing practical business intelligence training

Organizations must find the right time to provide practical business intelligence training to employees. Avoiding training on business intelligence practices can lead to more confusion and complex issues for employees who don’t have a proper understanding of business intelligence and artificial intelligence. Avoiding proper training sessions is one of the worst business intelligence implementation practices.

5. Organizational Culture and Structure

Before implementing business intelligence practices, an organization must have a deep understanding of its culture and structure. Individual teams should have the freedom to choose their own BI practices rather than dictate what members need. This business intelligence implementation practice can slow down the process of adopting business intelligence practices that have inaccurate insights from data.

#6. Poor perception of business intelligence projects

One of the worst business intelligence implementation processes is the perception of business intelligence projects Poor cognition. The integration of artificial intelligence in business is to make business goals easier to achieve in a shorter time. The perspective on business intelligence projects should change to drive profits through informed decisions.

7. Treat Excel as the default platform for business intelligence practices

Organizations must not treat Excel as just a spreadsheet and make it Become the default platform for all business intelligence practices. Excel can provide some additional issues in the artificial intelligence management process in the business, such as error-prone processes, data errors, etc. Businesses should prevent critical data from accumulating in Excel worksheets.

8. Avoid defining KPIs for business intelligence

Implementing AI in business requires defining KPIs for effective business intelligence. Strategic business intelligence practices must include defining KPIs into different categories, such as project management metrics, marketing data, financial metrics, customer metrics, and HR metrics. Businesses should neglect to avoid defining KPIs as it is one of the worst business intelligence implementation practices.

9. Failure to find competent software vendors

Not finding competent software vendors is one of the worst business intelligence practices . To implement Artificial Intelligence in the business and integrate the combination of Artificial Intelligence and Business Intelligence, there is a need for Business Intelligence Infrastructure Architect, Database Administrator, Data Mining Expert, ETL Lead Developer and Application Lead and Data Quality Analyst and Project Manager . Therefore, it is important to find a competent software vendor to work on your business intelligence project.

10. Inaccurate estimates

Inaccurate estimates often delay some top business intelligence projects, hindering business processes and profits in the long term. This can lead to serious consequences, such as adjusting project scope and implementing AI in business processes.

The above is the detailed content of Top 10 Bad Business Intelligence Implementation Practices to Avoid. For more information, please follow other related articles on the PHP Chinese website!

Statement
This article is reproduced at:51CTO.COM. If there is any infringement, please contact admin@php.cn delete
Does Hugging Face's 7B Model OlympicCoder Beat Claude 3.7?Does Hugging Face's 7B Model OlympicCoder Beat Claude 3.7?Apr 23, 2025 am 11:49 AM

Hugging Face's OlympicCoder-7B: A Powerful Open-Source Code Reasoning Model The race to develop superior code-focused language models is intensifying, and Hugging Face has joined the competition with a formidable contender: OlympicCoder-7B, a product

4 New Gemini Features You Can't Afford to Miss4 New Gemini Features You Can't Afford to MissApr 23, 2025 am 11:48 AM

How many of you have wished AI could do more than just answer questions? I know I have, and as of late, I’m amazed by how it’s transforming. AI chatbots aren’t just about chatting anymore, they’re about creating, researchin

Camunda Writes New Score For Agentic AI OrchestrationCamunda Writes New Score For Agentic AI OrchestrationApr 23, 2025 am 11:46 AM

As smart AI begins to be integrated into all levels of enterprise software platforms and applications (we must emphasize that there are both powerful core tools and some less reliable simulation tools), we need a new set of infrastructure capabilities to manage these agents. Camunda, a process orchestration company based in Berlin, Germany, believes it can help smart AI play its due role and align with accurate business goals and rules in the new digital workplace. The company currently offers intelligent orchestration capabilities designed to help organizations model, deploy and manage AI agents. From a practical software engineering perspective, what does this mean? The integration of certainty and non-deterministic processes The company said the key is to allow users (usually data scientists, software)

Is There Value In A Curated Enterprise AI Experience?Is There Value In A Curated Enterprise AI Experience?Apr 23, 2025 am 11:45 AM

Attending Google Cloud Next '25, I was keen to see how Google would distinguish its AI offerings. Recent announcements regarding Agentspace (discussed here) and the Customer Experience Suite (discussed here) were promising, emphasizing business valu

How to Find the Best Multilingual Embedding Model for Your RAG?How to Find the Best Multilingual Embedding Model for Your RAG?Apr 23, 2025 am 11:44 AM

Selecting the Optimal Multilingual Embedding Model for Your Retrieval Augmented Generation (RAG) System In today's interconnected world, building effective multilingual AI systems is paramount. Robust multilingual embedding models are crucial for Re

Musk: Robotaxis In Austin Need Intervention Every 10,000 MilesMusk: Robotaxis In Austin Need Intervention Every 10,000 MilesApr 23, 2025 am 11:42 AM

Tesla's Austin Robotaxi Launch: A Closer Look at Musk's Claims Elon Musk recently announced Tesla's upcoming robotaxi launch in Austin, Texas, initially deploying a small fleet of 10-20 vehicles for safety reasons, with plans for rapid expansion. H

AI's Shocking Pivot: From Work Tool To Digital Therapist And Life CoachAI's Shocking Pivot: From Work Tool To Digital Therapist And Life CoachApr 23, 2025 am 11:41 AM

The way artificial intelligence is applied may be unexpected. Initially, many of us might think it was mainly used for creative and technical tasks, such as writing code and creating content. However, a recent survey reported by Harvard Business Review shows that this is not the case. Most users seek artificial intelligence not just for work, but for support, organization, and even friendship! The report said that the first of AI application cases is treatment and companionship. This shows that its 24/7 availability and the ability to provide anonymous, honest advice and feedback are of great value. On the other hand, marketing tasks (such as writing a blog, creating social media posts, or advertising copy) rank much lower on the popular use list. Why is this? Let's see the results of the research and how it continues to be

Companies Race Toward AI Agent AdoptionCompanies Race Toward AI Agent AdoptionApr 23, 2025 am 11:40 AM

The rise of AI agents is transforming the business landscape. Compared to the cloud revolution, the impact of AI agents is predicted to be exponentially greater, promising to revolutionize knowledge work. The ability to simulate human decision-maki

See all articles

Hot AI Tools

Undresser.AI Undress

Undresser.AI Undress

AI-powered app for creating realistic nude photos

AI Clothes Remover

AI Clothes Remover

Online AI tool for removing clothes from photos.

Undress AI Tool

Undress AI Tool

Undress images for free

Clothoff.io

Clothoff.io

AI clothes remover

Video Face Swap

Video Face Swap

Swap faces in any video effortlessly with our completely free AI face swap tool!

Hot Tools

SublimeText3 Linux new version

SublimeText3 Linux new version

SublimeText3 Linux latest version

VSCode Windows 64-bit Download

VSCode Windows 64-bit Download

A free and powerful IDE editor launched by Microsoft

MinGW - Minimalist GNU for Windows

MinGW - Minimalist GNU for Windows

This project is in the process of being migrated to osdn.net/projects/mingw, you can continue to follow us there. MinGW: A native Windows port of the GNU Compiler Collection (GCC), freely distributable import libraries and header files for building native Windows applications; includes extensions to the MSVC runtime to support C99 functionality. All MinGW software can run on 64-bit Windows platforms.

Dreamweaver Mac version

Dreamweaver Mac version

Visual web development tools

DVWA

DVWA

Damn Vulnerable Web App (DVWA) is a PHP/MySQL web application that is very vulnerable. Its main goals are to be an aid for security professionals to test their skills and tools in a legal environment, to help web developers better understand the process of securing web applications, and to help teachers/students teach/learn in a classroom environment Web application security. The goal of DVWA is to practice some of the most common web vulnerabilities through a simple and straightforward interface, with varying degrees of difficulty. Please note that this software