Draft:AI Analytics
Submission declined on 25 December 2024 by Tesleemah (talk). This submission does not appear to be written in the formal tone expected of an encyclopedia article. Entries should be written from a neutral point of view, and should refer to a range of independent, reliable, published sources. Please rewrite your submission in a more encyclopedic format. Please make sure to avoid peacock terms that promote the subject. This submission reads more like an essay than an encyclopedia article. Submissions should summarise information in secondary, reliable sources and not contain opinions or original research. Please write about the topic from a neutral point of view in an encyclopedic manner.
Where to get help
How to improve a draft
You can also browse Wikipedia:Featured articles and Wikipedia:Good articles to find examples of Wikipedia's best writing on topics similar to your proposed article. Improving your odds of a speedy review To improve your odds of a faster review, tag your draft with relevant WikiProject tags using the button below. This will let reviewers know a new draft has been submitted in their area of interest. For instance, if you wrote about a female astronomer, you would want to add the Biography, Astronomy, and Women scientists tags. Editor resources
| ![]() |
Submission declined on 24 December 2024 by Significa liberdade (talk). Your draft shows signs of having been generated by a large language model, such as ChatGPT. Their outputs usually have multiple issues that prevent them from meeting our guidelines on writing articles. These include: Declined by Significa liberdade 3 months ago.
| ![]() |
Comment: concern expressed by the previous reviewers were not attended to.This article reads like an essay and the references are not well formatted. Tesleemah (talk) 08:56, 25 December 2024 (UTC)
AI analytics is a method of analyzing data using AI methodology. It combines artificial intelligence (AI) technologies with data analysis processes. Artificial intelligence (AI) such as machine learning (ML), natural language processing (NLP), and other advanced AI methodologies for analyzing. It is commonly used to extract insights from large datasets with greater speed, autonomously, accuracy, and depth than traditional analytical methods. This technology plays a critical role in automating data-driven decision-making and enhancing predictive and prescriptive analytics across various industries.
1. Detect patterns, trends, and anomalies in data, enabling predictive and prescriptive insights.
2. Use of Natural Language Processing (NLP): GPT style for analysis of data, such as text or speech, and enables interaction with data using conversational queries. This functionality allows non-technical users to explore data through free-text queries.
3. Personalized Insights: AI analytics platforms automatically generate insights and recommendations based on user preference and characteristics, minimizing the need for manual data analysis.
4. Data Visualization: AI analytics tools include capabilities for creating customized and interactive visualizations, such as dashboards and charts, tailored to user needs, unlike the traditional use AI create the code of the visualization dynamically and automatically
Speed and Scalability: AI analytics processes vast amounts of data quickly, making it ideal for big data applications.
Accessibility: By enabling natural language queries, AI analytics tools make data insights accessible to non-technical users.
Accuracy: Advanced algorithms reduce human error and improve the reliability of insights.
Proactive Insights: Real-time analytics provide actionable insights and alerts, helping businesses respond swiftly to changes.
Challenges
[edit]Despite its advantages, AI analytics faces several challenges:
Data Privacy: Because AI generates code and algorithms, it has the potential to issue problematic instructions, such as retrieving unauthorized data or altering server environments.
Bias and Fairness: Algorithms have biases, leading to wrong results.