There are no reviews yet. Be the first to send feedback to the community and the maintainers!
Computational-Social-Science-Training-Program
This course is a rigorous, year-long introduction to computational social science. We cover topics spanning reproducibility and collaboration, machine learning, natural language processing, and causal inference. This course has a strong applied focus with emphasis placed on doing computational social science.Machine-Learning-in-R
Workshop (6 hours): preprocessing, cross-validation, lasso, decision trees, random forest, xgboost, superlearner ensemblesPython-Fundamentals-Legacy
D-Lab's 12 hour introduction to Python. Learn how to create variables and functions, use control flow structures, use libraries, import data, and more, using Python and Jupyter Notebooks.R-Fundamentals-Legacy
D-Lab's 12 hour introduction to R Fundamentals. Learn how to create variables and functions, manipulate data frames, make visualizations, use control flow structures, and more, using R in RStudio.Bash-Git
D-Lab's 3 hour introduction to basic Bash commands and using version control with Git and Github.R-Deep-Learning
Workshop (6 hours): Deep learning in R using Keras. Building & training deep nets, image classification, transfer learning, text analysis, visualizationgit-fundamentals
A starting point for discovering the wonderful world of Git, GitHub, and Git Annex (Assistant)Stata-Fundamentals
D-Lab's 9 hour introduction to performing data analysis with Stata. Learn how to program, conduct data analysis, create visualization, and conduct statistical analyses in Stata.python-for-everything
Materials for teaching the Python for Everything workshop at UC Berkeley's D-labPython-Machine-Learning
D-Lab's 6 hour introduction to machine learning in Python. Learn how to perform classification, regression, clustering, and do model selection using scikit-learn in Python.MachineLearningWG
D-Lab's Machine Learning Working Group at UC Berkeley, with supervised & unsupervised learning tutorials in R and PythonPython-Geospatial-Fundamentals-Legacy
D-Lab's 6 hour introduction to working with geospatial data in Python. Learn how to import, visualize, and analyze geospatial data using GeoPandas in Python.Python-Data-Visualization-Legacy
D-Lab's 3 hour introduction to data visualization with Python. Learn how to create histograms, bar plots, box plots, scatter plots, compound figures, and more, using matplotlib and seaborn.R-Geospatial-Fundamentals-Legacy
This is the repository for D-Lab's Geospatial Fundamentals in R with sf workshop.Python-Data-Wrangling-Legacy
D-Lab's 3 hour introduction to data wrangling in Python. Learn how to import and manipulate dataframes using pandas in Python.R-Machine-Learning-Legacy
D-Lab's 6 hour introduction to machine learning in R. Learn the fundamentals of machine learning, regression, and classification, using tidymodels in R.Unsupervised-Learning-in-R
Workshop (6 hours): Clustering (Hdbscan, LCA, Hopach), dimension reduction (UMAP, GLRM), and anomaly detection (isolation forests).python-berkeley
python resources of berkeley curated at a placePython-Text-Analysis-Fundamentals
D-Lab's 9 hour introduction to text analysis with Python. Learn how to perform bag-of-words, sentiment analysis, topic modeling, word embeddings, and more, using scikit-learn, NLTK, gensim, and spaCy in Python.R-Data-Wrangling-Legacy
D-Lab's 6 hour introduction to data wrangling with R. Learn how to manipulate dataframes using the tidyverse in R.python-data-from-web
API and web scraping workshopsR-Data-Visualization-Legacy
D-Lab's 3 hour introduction to data visualization with R. Learn how to create histograms, bar plots, box plots, scatter plots, compound figures, and more using ggplot2 and cowplot.R-Functional-Programming
The joy and power of functional programming in Rpython-text-analysis-legacy
Text Analysis Workshops for UC Berkeley's D-Labprogramming-fundamentals
Introduction to Programming for UC Berkeley's D-LabANN-Fundamentals
DIGHUM101-2020
Python-Text-Analysis
D-Lab's 12 hour introduction to text analysis with Python. Learn how to perform bag-of-words, sentiment analysis, topic modeling, word embeddings, and more, using scikit-learn, NLTK, Gensim, and spaCy in Python.sql-for-r-users
SQL for R Users, WorkshopPython-Deep-Learning-Legacy
D-Lab's 6 hour introduction to deep learning in Python. Learn how to create and train neural networks using Tensorflow and Keras.awesome-dlab
😎 Awesome lists about all kinds of topics and tools interesting to D-Labbersadvanced-data-wrangling-in-R-legacy
Advanced-data-wrangling-in-R, WorkshopR-Census-Data-Legacy
Workshop on fetching and mapping census data with tidycensusGeospatial-Fundamentals-in-QGIS
regular-expressions-in-python
Qualtrics-Fundamentals
D-Lab's 3 hour introduction to Qualtrics Fundamentals. Learn how to design and manage your own surveys in Qualtrics.Data-Science-Social-Justice-2022
Materials for D-Lab / UC Berkeley Graduate Division's Data Science + Social Justice summer workshop. These materials provide an introduction to Python, natural language processing, text analysis, word embeddings, and network analysis. They also include discussions on critical approaches to data science to promote social justice.Geocoding-in-R
Python-Data-Wrangling
D-Lab's 3-hour workshop diving deep into Pandas. Learn how to manipulate, index, merge, group, and plot data frames using Pandas functions.efficient-reproducible-project-management-in-R
Efficient and Reproducible Project Management in RExcel-Fundamentals
D-Lab's six-hour introduction to the basics of Microsoft Excel (with support materials for Google Sheets). Learn Excel functions for handling text, math, dates, logic, and calculations; learn to create charts and pivot tables.fairML
Bias and Fairness in ML workshopPython-Web-Scraping-Legacy
D-Lab's 3 hour introduction to web scraping in Python. Learn how to use APIs and scrape data from websites using the New York Times API and BeautifulSoup in Python.regex-intro
Geospatial-Fundamentals-in-R-sp
javascript-viz
A D-Lab intro to JavaScript visualization using the IPython notebook.DIGHUM101-2023
Practicing the Digital Humanities, UC Berkeley Summer Session 2023LaTeX-Fundamentals
DIGHUM101-2021
cloud-computing-working-group
data-security-fundamentals
Data Security FundamentalsPython-Fundamentals
D-Lab's 3-part, 6 hour introduction to Python. Learn how to create variables, distinguish data types, use methods, and work with Pandas, using Python and Jupyter.Python-Web-APIs
D-Lab's 2 hour introduction to using web APIs in Python. Learn how to obtain data from web platforms using the New York Times API as a case study.quick-consulting-examples
Collection of quick pandas, python, and other coding examples based on real consulting requests.dlab-berkeley.github.io
Tech overview site showcasing D-Lab's online offeringsvisualization-in-Excel
Python-Web-Scraping
D-Lab's 2 hour introduction to web scraping in Python. Learn how to scrape HTML/CSS data from websites using Requests and Beautiful Soup.Data-Science-Social-Justice
Materials for D-Lab / UC Berkeley Graduate Division's Data Science for Social Justice summer workshop. These materials provide an introduction to Python, natural language processing, text analysis, word embeddings, and network analysis. They also include discussions on critical approaches to data science to promote social justice.DIGHUM101-2022
Practicing the Digital Humanities, UC Berkeley Summer Session 2022Python-Geospatial-Fundamentals
About D-Lab's 4-hour introduction to working with geospatial data in Python. Learn how to import, visualize, and analyze geospatial data in Python.Basics-of-Excel
intro-maxqda
Python-Intermediate
D-Lab's 3-part, 6 hour workshop diving deeper into Python. Learn how to create functions, use if-statements and for-loops, and work with Pandas, using Python and Jupyter.R-Data-Visualization
D-Lab's 2-hour introduction to data visualization with R. Learn how to create histograms, bar charts, box plots, scatter plots, and more using ggplot2.IRB-Fundamentals
D-Lab's 3 hour introduction to the fundamentals of navigating Institutional Review Boards (IRB).RStudio-Project-Management
Resources to help you start managing data science projects.git-for-project-management
Using Git and GitHub for Project ManagementR-package-development
R package development workshopGit-Playground
This repository is for D-Lab workshops that require practicing with Git.sas-intro
Introduction to SASR-Push-Ins
D-Lab's 4.5 hour "push-in" introduction to R, providing a brief survey of foundational R concepts and operations.DEVP229-Spring2021
MAXQDA-Fundamentals
D-Lab's 2 hour introduction to MAXQDA. Learn how to conduct qualitative data analysis using MAXQDA.sas-analysis
Data Analysis with SASR-Research-Design
ArcGIS-Online-Fundamentals
dlab-methods
Computational-Text-Analysis-2017
An introduction to Computational Text Analysis in four 2hr sessions designed to help beginners build intuition, and to interact with workflows for natural language processing, supervised, and unsupervised approaches. Created for CTAWG in 2017 by Ben Gebre-MedhinPython-Data-Visualization-Pilot
D-Lab's 4-hour introduction to data visualization with Python. Learn how to create histograms, bar plots, box plots, scatter plots, compound figures, and more, using matplotlib and seaborn.HAAS-Python-Workshop
Love Open Source and this site? Check out how you can help us