Data Analyst

Competency-based
ONET: 15-2051.00

1

Years

28

Skills

72h

Related instructions
Classroom instruction topics
  • Exploratory data analysis
  • SQL
  • Environment Setup / Data Scientist Workflow
  • Statistics
  • Object Oriented Programming
  • Ins and Outs of Coding Pythonically - Functions & Scope, Linking it all together
  • Matplotlib & Tableau
  • Intro to modeling -Graph theory and modeling, Social Network Analysis
  • Data Visualization in Python
  • Ins and Outs of Coding Pythonically - Introduction to Python data structures, Python libraries, Lists, Strings, Tuples, Dictionaries, and Sets
  • Intro to modeling - Decision trees, random forests
  • Probability
  • Introduction to Statistical Modeling
On-the-job training
  • Statistics and Programming Foundation
    • Understand sampling, probability theory, and probability distributions
    • Demonstrate knowledge of descriptive statistical concepts
    • Demonstrate knowledge of inferential statistics
    • Demonstrate knowledge of python programming skills
    • Implement descriptive and inferential statistics using python
    • Demonstrate ability to visualize data and extract insights
    • Demonstrate through a project the ability to analyze a dataset and communicate insights
  • Data Science Foundation
    • Demonstrate understanding of what is Data Analyst and what Data Analyst do
    • Demonstrate ability to characterize a business problem
    • Demonstrate ability to formulate a business problem as a hypothesis question
    • Demonstrate use of methodologies in the execution of the analytics cycle
    • Demonstrate through a project the ability to plan for the execution of a project
  • Data Preparation
    • Demonstrate ability to identify and collect data – multiple formats
    • Demonstrate ability to manipulate, transform, and clean data
    • Demonstrate expertise with techniques to deal with missing values, outliers, unbalanced data, as well as data normalization
    • Demonstrate through a project the ability to construct usable data sets
  • Model Building
    • Demonstrate understanding of Linear Algebra principles for Machine Learning
    • Demonstrate understanding of different modeling techniques
    • Demonstrate understanding of model validation and selection techniques
    • Communicate results translating insight into business value
    • Demonstrate through a project the ability to test different models on a dataset, validate and select the best model, and communicate results
  • Model Deployment
    • Deploy and monitor a validated model in an operational environment
    • Demonstrate through a project the ability to deploy and use a deployed model
  • Big Data Foundation
    • Understand the concept of Big Data, and how Big Data is used at organizations
    • Understand with the Big Data ecosystem and its major components
    • Demonstrate through a project expertise
  • Leadership and Professional Development Skills
    • Participate as a data analyst on own organizations projects or external projects.
    • Contribute to the profession by teaching or mentoring others
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Program
Headquarters location
San Francisco, CA (94103)
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