Intro to Data Science Flashcards

Author: Ned Krastev Cards: 94

Data science can seem daunting for beginners, with complex concepts to grasp and the search for affordable, quality resources. Our intro to data science flashcards is here to help—offering a 100% free learning tool to guide your studies. Utilize this resource to enhance your understanding of common data science terms and discover how to get started with data science through an interactive and engaging approach. Our intro to data science flashcards encompass essential terms across business intelligence, analytics, data preprocessing, analysis, and strategic decision-making, including machine and deep learning. They feature different types of databases and outline key duties for data analysts, engineers, and aspiring data scientists’ daily tasks. In addition to mastering common data science terms, you'll acquire crucial business terminology, including (among others) KPIs, dashboards, strategic versus tactical decisions, client acquisition, and retention. The intro to data science flashcards creator is also a co-author of the 365 Data Science Bootcamp—an esteemed online course completed by over 600,000 students globally. This high-quality educational content reflects extensive preparation and expertise. The Intro to Data Science Flashcards deck complements our Intro to Data Science course by succinctly explaining fundamental data science terms in the order they appear—serving as an ideal study aid. Learning data science from scratch can be a fun journey with insights that could revolutionize your career.

Data science can seem daunting for beginners, with complex concepts to grasp and the search for affordable, quality resources. Our intro to data science flashcards is here to help—offering a 100% free learning tool to guide your studies. Utilize this resource to enhance your understanding of common data science terms and discover how to get started with data science through an interactive and engaging approach. Our intro to data science flashcards encompass essential terms across business intelligence, analytics, data preprocessing, analysis, and strategic decision-making, including machine and deep learning. They feature different types of databases and outline key duties for data analysts, engineers, and aspiring data scientists’ daily tasks. In addition to mastering common data science terms, you'll acquire crucial business terminology, including (among others) KPIs, dashboards, strategic versus tactical decisions, client acquisition, and retention. The intro to data science flashcards creator is also a co-author of the 365 Data Science Bootcamp—an esteemed online course completed by over 600,000 students globally. This high-quality educational content reflects extensive preparation and expertise. The Intro to Data Science Flashcards deck complements our Intro to Data Science course by succinctly explaining fundamental data science terms in the order they appear—serving as an ideal study aid. Learning data science from scratch can be a fun journey with insights that could revolutionize your career.

Explore the Flashcards:

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Business Intelligence (BI)

Tools and techniques for analyzing and understanding past data to make strategic decisions.

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Historical Data

Collected past data used for analysis.

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Dashboard

A user interface that visually summarizes key data and metrics.

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Strategic Decisions

Long-term planning choices.

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Tactical Decisions

Short-term, specific actions.

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Artificial Intelligence (AI)

Enabling machines to perform tasks that typically require human intelligence.

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Machine Learning (ML)

A branch of artificial intelligence where computers learn from data to improve their performance on tasks.

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Data Analytics

The process of examining datasets to draw conclusions and find patterns using statistical techniques.

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Real-time Dashboards

Interactive tools that display data and metrics as they are updated in real-time.

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Third-party Data

Data collected by an external entity; Not your own company's data.

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Predictive Analytics

The process of using data and statistical algorithms to predict future values or trends based on historical data.

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Algorithm

A set of rules or instructions designed to solve problems or perform tasks, often used in computing.

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Data Pattern

A recurring or recognizable element in a dataset, often indicating a trend or relationship.

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Client Retention

Businesses aiming to understand and predict customer purchasing behaviors to sell more products to existing clients.

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Client Acquisition

The process of gaining new clients or customers for a business, often through marketing and sales strategies.

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Fraud Prevention

Methods and systems used to detect and prevent fraudulent activities, such as unauthorized transactions.

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Speech Recognition

Technology that recognizes and interprets human speech, converting it into text or commands.

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Image Recognition

A computer technology that identifies objects, places, people, and other elements in digital images.

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Symbolic Reasoning

The process in artificial intelligence where symbols represent concepts or entities to make logical deductions.

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Advanced Analytics

Sophisticated data analysis techniques, often involving predictive models, machine learning, and big data.

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Data Collection

Gathering information systematically from various sources to analyze and make informed decisions.

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Data Analysis

The process of inspecting, cleaning, and modeling data with the goal of discovering useful information.

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Forecasting

The use of historical data to predict future events or trends, often used in business, finance, and weather predictions.

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Dataset

A collection of related sets of information, usually formatted in a table, used for analysis or processing.

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Analytical Tools

Software and applications used to analyze, visualize, and interpret data.

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Big Data

Extremely large data characterized by volume, variety, and velocity. Often requires cloud storage and processing.

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Real-time Data Processing

The continuous and immediate processing of data as it's collected or generated.

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Data Pre-processing

The initial steps in data analysis involving cleaning and organizing data for further use.

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Text Data Mining

Extracting useful information and insights from textual data using analytical methods.

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Data Masking

The practice of hiding original data with modified content (e.g., characters or other data) to protect sensitive information.

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Price Optimization

A technique to conceal sensitive information in a dataset by replacing it with fictitious but realistic data, ensuring privacy and security while allowing functional analysis and testing.

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Inventory Management

The practice of overseeing and controlling the ordering, storage, and use of a company's inventory.

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Seasonality Patterns

Trends or recurring changes in data observed at regular intervals throughout a year, often influenced by seasons.

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Shipment Logistics

The coordination of transporting goods from one place to another, including planning, execution, and tracking.

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Metrics

Quantitative measures used to track and assess the status of specific processes.

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KPIs

Specific metrics used to evaluate the success of an organization or activity in meeting its objectives.

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Customer Retention

Strategies and activities aimed at keeping customers engaged and continuing to purchase from a business.

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Business Goal Alignment

The process of ensuring that business activities and strategies are focused on achieving the company's primary objectives.

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Data Architect

A professional responsible for designing and managing an organization's data architecture to meet business needs.

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Data Engineer

A role focused on preparing 'big data' for analytical or operational uses, often involving building and maintaining data systems.

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Database Administrator

A specialist responsible for managing and maintaining database systems, ensuring their optimal performance and security.

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BI Analyst

A professional who analyzes data to provide insights and recommendations for improving business decisions and strategies.

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BI Consultant

An expert who advises businesses on how to use data analytics and BI tools to improve decision-making and performance.

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BI Developer

A professional who designs, develops, and maintains BI solutions, including data visualization and reporting tools.

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Data Scientist

A specialist in extracting insights and knowledge from complex data using various statistical, machine learning, and analytical techniques.

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Data Analyst

A professional who collects, processes, and performs statistical analyses on data to help make informed decisions.

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Machine Learning Engineer

An engineer specialized in designing and building machine learning models and systems.

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Business Analytics

The practice of using data analysis to inform and guide business decisions.

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Data Storytelling

The skill of communicating insights from data analyses through compelling narratives and visualizations.

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R

A programming language and environment widely used for statistical computing and graphics.

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Python

A versatile programming language popular in many fields, including data science, for its readability and vast libraries.

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Digital Signal Processing

The analysis and manipulation of digital signals, often for improving accuracy and reliability of digital communication.

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Supervised Learning

A type of machine learning where models are trained on labeled data to predict outcomes or classify data.

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Fraud Detection

Banks using machine learning to detect fraudulent credit card transactions.

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Predictive Modeling

Creating, testing, and validating a model to best predict the probability of an outcome..

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Data

Information, often in the form of facts or statistics, collected for reference or analysis.

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Model

In data science, a representation or abstraction of a real-world process, used for analysis and predictions.

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Objective Function

A mathematical formula used in optimization to define the goal of a model or algorithm, often representing the cost, loss, or error which the model seeks to minimize or maximize during training.

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Optimization Algorithm

A method or procedure used to make a system or design as effective or functional as possible.

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Trial-and-Error Process

A problem-solving method involving repeated, varied attempts until success is achieved.

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Model Training

The process of feeding data into a machine learning algorithm to help it learn and adapt, improving its ability to make predictions or decisions based on that data.

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Generalization

The ability of a model to perform well on new, unseen data after being trained on a dataset.

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Unsupervised Learning

A type of machine learning that finds patterns in data without pre-existing labels.

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Reinforcement Learning

A type of machine learning where an agent learns to behave in an environment by performing actions and receiving rewards.

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Support Vector Machines

A supervised machine learning model used for classification and regression analysis, effective in high-dimensional spaces.

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Neural Networks

Computational models inspired by the human brain, used in machine learning to recognize patterns and make decisions.

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Deep Learning

A subset of machine learning involving neural networks with many layers, enabling advanced pattern recognition.

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Random Forest Models

A machine learning method involving many decision trees to improve predictive accuracy and prevent overfitting.

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Bayesian Networks

A type of probabilistic model that uses Bayesian inference for probability computations.

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K-Means

A clustering algorithm in machine learning that divides a set of data points into k groups based on feature similarity.

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SQL

A programming language used to manage and manipulate relational databases.

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MATLAB

A high-level language and interactive environment used for numerical computation, visualization, and programming.

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Excel

Microsoft's spreadsheet software for data organization, analysis, and visual representation using formulas and tools.

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SPSS

A software package used for statistical analysis, particularly in social sciences.

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Hadoop

An open-source framework for storing data and running applications on clusters of commodity hardware,

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Numerical Data

Data that is quantifiable and measurable, like numbers, which can be used in mathematical calculations.

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Categorical Data

Data that represents characteristics or descriptors, often grouped into categories or labels. For example data on choices of ice cream flavors like vanilla, vhocolate, and strawberry.

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Raw Data

Data in its original form, unprocessed and unfiltered. Example: Sensor readings directly recorded.

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Class Labelling

Assigning predefined categories to data points. Example: Tagging emails as 'spam' or 'not spam'.

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Handling Missing Values

Techniques to deal with absent data points. Example: Filling missing values with the average of existing data.

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Balancing

Adjusting datasets to have an equal number of instances in each category. Example: Ensuring equal cases of positive and negative outcomes in medical data.

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Data Shuffling

Randomly rearranging data points to prevent order bias. Example: Shuffling customer data before analysis.

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Entity-Relationship Diagram

A graphical representation of entities and their relationships.

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Relational Schema

A blueprint of a database structure, showing tables and relationships.

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Cluster Analysis

Grouping data points based on similarities. Example: Segmenting customers into groups based on buying habits.

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Time Series Analysis

Analyzing data points collected over time. Example: Examining stock prices over several months.

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Regression Analysis

Evaluating relationships between variables. Example: Predicting house prices based on size and location.

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Factor Analysis

Identifying underlying variables that explain observed patterns. Example: Analyzing survey responses to uncover hidden attitudes.

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Data Balancing

The process of ensuring a dataset has an evenly distributed class representation. Example: Balancing the number of fraud and non-fraud cases in a financial dataset.

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Traditional Data

Tabular data containing numeric or text values, manageable from a single computer.

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Data Volume

The size of data, measured in megabytes, gigabytes, terabytes, petabytes, or exabytes.

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Data Variety

Diversity in data types, including structured, semi-structured, and unstructured formats like images, audio, and mobile data.

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Data Velocity

The rapid rate of data generation and processing, aiming for real-time outputs.

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Traditional Methods

Classical statistical methods adapted for business applications. Not including advanced statistical analyses.