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Artificial Intelligence (AI) and Organizational Intelligence (OI) differ fundamentally in nature and application.
AI refers to machine-driven intelligence, where algorithms process vast amounts of data to learn, predict, and automate tasks. It’s about speed, precision, and leveraging technology to enhance decision-making and efficiency.
OI, on the other hand, is the collective intelligence of an organization, built on human collaboration, culture, and shared knowledge. It’s about aligning people, processes, and strategies to adapt and thrive in complex environments.
While AI focuses on computation and automation, OI emphasizes creativity, problem-solving, and the human element. The real magic happens when the two work together—AI provides data-driven insights, and OI ensures they’re applied effectively to achieve meaningful outc
omes.
Individual intelligence is designed to automate specific tasks, such as data analysis. Currently, organizational intelligence is focused on capturing knowledge and understanding how it is stored within a company. For example, if you want to explore these ideas better, you can use illustration tools such as GPT Image, which allows you to quickly generate graphics for presentations and text design.
Artificial intelligence imitates human capabilities using technology, solving problems based on data and algorithms. Organizational intelligence is a company’s ability to effectively use collective knowledge and experience to make decisions and solve problems.
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1. Artificial Intelligence: This subject deals with Logic, Reasoning, Graph Traversing/Mining etc. It deals with automatic ways of reasoning and reaching to a conclusion by computers. Some of the algorithms of this domain are BFS, DFS, A*, Djikstra, Best First, Backtracking etc.Search and Optimization are two big use cases of AI. An example could be Google Maps. It shows you shortest path to reach to your destination. AI is one way to achieve that. Robot Navigation, Automatic Clinical Decision System, Knowledge representation in NLP are few other applications. 2. Machine Learning: This is sometimes included in AI subject. However, in my experience this AI professionals are not always experienced in ML and vice-versa. This subject deals with turning data in to information and taking decisions based on that. Some algorithms are Classification (Neural Network, SVM, CART, Random Forest, Gradient Boosting, Logistic Regression), Clustering (K-Means Clustering, Hierarchical Clustering, BIRCH), Regression (Linear/ Polynomial Regression, Curve Fitting),Feature Selection (PCA, ICA, RFE), Forecasting (ARIMA, ANOVA ..),Collaborative Filtering/Recommendation Systems etc.Many data based learning and decision systems are developed using these techniques in areas of Finance, Healthcare, Retail, E-commerce. One of the example is product recommendation system of Amazon. Energy load forecasting in Power industry, Sales Forecasting in retail industry etc.