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data analytics
a form of business intelligence, used to solve specific problems and challenges within an
organization
data analytics
It's all about finding patterns in a dataset which can tell you something useful and relevant about a particular area of the business
data analytics
Data analytics to make sense of the past and to predict future trends and behaviors; rather than basing your decisions and strategies on guesswork, you're making informed choices
based on what the data is telling you
data analytics
Focus: analyzing historical data to gain insights and improve decision-making
data analytics
Methods: descriptive and diagnostic (what happened? why did it happen?)
data analytics
Tools: excel, sql, tableau, power bi
data analytics
Techniques: data visualization, statistical analysis, reporting
data analytics
Application: business intelligence, process optimization, reporting
data science
Focus: extracting insights from data using machine learning, statistics, and ai
data science
Methods: predictive and prescriptive (what will happen? what should we do?)
data science
Tools: python, r, TensorFlow, Scikit-learn
data science
Techniques: machine learning, ai, deep learning, predictive modeling
data science
Application: forecasting, recommendation systems, innovation
Machine Learning
a branch of artificial intelligence
(AI) that enables computers to
learn patterns from data and make predictions or decisions without being explicitly programmed.
Machine Learning
Instead of following fixed rules, _______________ models improve their performance as they are exposed to more data
over time.
data analytics
tends to be more focused on analyzing data to understand past and current trends
data science
encompasses a broader range of activities including predictive modeling, machine learning, and developing algorithms to automate decision making processes
Descriptive Analysis
What happened?
Descriptive Analysis
It utilizes data aggregation, summarization, and visualization techniques to identify trends, patterns, and outliers in historical data.
Descriptive Analysis
This type of analysis focuses on summarizing past data to understand what has happened.
Diagnostic Analysis
Why did it happened?
Diagnostic Analysis
Aims to uncover the reason behind past events or behaviors.
Diagnostic Analysis
It involves hypothesis testing, root cause
analysis, and comparative analysis to identify patterns, correlations, and causal relationships within the data.
Predictive Analysis
What will happen?
Predictive Analysis
uses historical data to forecast future trends, behaviors, or events
Predictive Analysis
By applying statistical models, machine learning, business intelligence tools, it helps analyst anticipate potential outcomes and make informed decisions.
Prescriptive Analysis
What should be done?
Prescriptive Analysis
This analysis suggests actions to achieve desired outcomes or mitigate future risks.
Prescriptive Analysis
It uses data driven insights to recommend intervention strategies, optimizing potential future scenarios based on predicted trends.