Data Analysis
big-picture thinking.
Puzzles
Understanding context
The analytical skill that has to do with how you group things into categories
A technical mindset
The analytical skill that involves breaking processes down into smaller steps and working with them in an orderly, logical way
Data design
The analytical skill that involves how you organize information
Data strategy
The analytical skill that involves managing the processes and tools used in data analysis
Select
The clause identifies the column you want to pull data from by name
From
The clause identifies the table where the column is located by name
Data Analysis
The collection, transformation, and organization of data in order to draw conclusions, make predictions, and drive informed decision making.
Technical Mindset Example
When paying your bills, you probably already break down the process into smaller steps. Maybe you start by sorting them by the date they're due. Next, you might add them up and compare that amount to the balance in your bank account. This would help you see if you can pay your bills now, or if you should wait until the next paycheck. Finally, you'd pay them.
SAS's iterative life cycle
1. Ask 2. Prepare 3. Explore 4. Model 5. Implement 6. Act 7. Evaluate
6 Phases
1. Ask: Business Challenge/Objective/Question 2. Prepare: Data generation, collection, storage, and data management 3. Process: Data cleaning/data integrity 4. Analyze: Data exploration, visualization, and analysis 5. Share: Communicating and interpreting results 6. Act: Putting your insights to work to solve the problem
Big data analytics life cycle
1. Business case evaluation 2. Data identification 3. Data acquisition and filtering 4. Data extraction 5. Data validation and cleaning 6. Data aggregation and representation 7. Data analysis 8. Data visualization 9. Utilization of analysis results
EMC's Data Analysis Life Cycle
1. Discovery 2. Pre-processing data 3. Model planning 4. Model building 5. Communicate results 6. Operationalize
Data life cycle based on research
1. Generation 2. Collection 3. Processing 4. Storage 5. Management 6. Analysis 7. Visualization 8. Interpretation
Project-based data analytics life cycle
1. Identifying the problem 2. Designing data requirements 3. Pre-processing data 4. Performing data analysis 5. Visualizing data
Query a request for data or information from a database.
A request for data or information from a database.
Analytical skills
Are qualities and characteristics associated with solving problems using facts
Phases of Data
Ask, prepare, process, analyze, share, and act
False
Data analysis is the various elements that interact with one another in order to provide, manage, store, organize, analyze, and share data.
Context
is the condition in which something exists or happens. This can be a structure or an environment. 1,2,3,4,5
Syntax
is the predetermined structure of a language that includes all required words, symbols, and punctuation, as well as their proper placement.
Data-driven decision-making
using facts to guide business strategy
The five key aspects to analytical thinking
visualization, strategy, problem-orientation, correlation, and finally, big-picture and detail-oriented thinking
Data-driven decision-making
An airline collects, observes, and analyzes its customers' online behaviors. Then, it uses the insights gained to choose what new products and services to offer. What business process does this describe?
Data
Collection of facts
Five Essential Skills
Curiosity, understanding context, having technical mindset, data design, and data strategy
False
In data analytics, a model is a group of elements that interact with one another.
Collection of data
Includes numbers, pictures, videos, words, measurements, observations and more.
technical mindset
Involves the ability to break things down into smaller steps or pieces and work with them in an orderly and logical way
Data Design
Is how you organize information.
Data Strategy
Is the management of the people, processes, and tools used in data analysis.
Correlation
Relationship (Correlation does not equal causation. In other words, just because two pieces of data are both trending in the same direction, that doesn't necessarily mean they are all related.)
Analytical thinking
involves identifying and defining a problem and then solving it by using data in an organized, step-by-step manner.
subject matter experts
The people very familiar with a business problem are called _____. They are an important part of data-driven decision-making.
Strategic
With so much data available, having a strategic mindset is key to staying focused and on track. Strategizing helps data analysts see what they want to achieve with the data and how they can get there. Strategy also helps improve the quality and usefulness of the data we collect. By strategizing, we know all our data is valuable and can help us accomplish our goals.
gut instinct
The term _____ is defined as an intuitive understanding of something with little or no explanation.
Data Design Example
Think about the way you organize the contacts in your phone. That's actually a type of data design. Maybe you list them by first name instead of last, or maybe you use email addresses instead of their names. What you're really doing is designing a clear, logical list that lets you call or text a contact in a quick and simple way.
The specifics
To execute a plan using detail-oriented thinking, what does a data analyst consider?
Subject-matter experts
To get the most out of data-driven decision-making, it's important to include insights from people very familiar with the business problem. Identify what these people are called.
data scientist
The primary goal of a data _____ is to create new questions using data.
Data Analysis Life Cycle
The process of going from data to decision.
Analytical skills
The qualities and characteristics associated with solving problems using facts
False
A furniture manufacturer wants to find a more environmentally friendly way to make its products. A data analyst helps solve this problem by gathering relevant data, analyzing it, and using it to draw conclusions. The analyst then shares their analysis with subject-matter experts from the manufacturing team, who validate the findings. Finally, a plan is put into action. This scenario describes data science.
Visualization
Graphical representation of information
Data Analysis Job
Someone who collects , transforms, and organizes data in order to help make informed decisions
Where
The clause narrows your query so that the database returns only the data with an exact value match or the data that matches a certain condition that you want to satisfy.
Data-driven decision-making
You have just finished analyzing data for a marketing project. Before moving forward, you share your results with members of the marketing team to see if they might have additional insights into the business problem. What practice does this support?
False
You read an interesting article about data analytics in a magazine and want to share some ideas from the article in the discussion forum. In your post, you include the author and a link to the original article. This would be an inappropriate use of the forum.
problem-oriented
in order to identify, describe, and solve problems. It's all about keeping the problem top of mind throughout the entire project. For example, say a data analyst is told about the problem of a warehouse constantly running out of supplies. They would move forward with different strategies and processes. But the number one goal would always be solving the problem of keeping inventory on the shelves.
Curiosity
is all about wanting to learn something. Curious people usually seek out new challenges and experiences. This leads to knowledge.
Gap analysis
lets you examine and evaluate how a process works currently in order to get where you want to be in the future.
data ecosystem
refers to the various elements that interact with one another to produce, manage, store, organize, analyze, and share data.