Geospatial Data Science with Python: GeoPandas
What you'll learn
How to analyze geospatial data using the python data science ecosystem
Using Jupyter notebooks to provide complete documentation of your workflow and interactive code examples
The basics of the python data science ecosystem: NumPy, Matplotlib, Pandas, SciPy, Scikit-learn
Geospatial extensions to the Python data science ecosystem: Fiona, Shapely, GDAL, PySAL and most importantly GeoPandas
Perform common vector analysis tasks with GeoPandas
Requirements
Basic understanding of GIS operations for data analysis (buffers, intersections, etc)
Basic understanding of Python (You can get what you need from my course Survey of Python for GIS analysis)
Description
Learn why the Geospatial Data Science tools are becoming so popular in the Geospatial sector. The combination of Jupyter Notebooks with Python and GeoPanda's allows you to analyze vector data quickly, repeatably, and with full documentation of every step along the way so your entire analysis can be repeated at the touch of a button in a notebook format that can be shared with colleagues.
If you ever get asked to explain your analysis, either for a scientific paper, to defend your results in a court, or simply to share what you've done with others so they can follow your steps than you will be glad that you conducted your analysis in Jupyter notebooks with GeoPanda's rather than in a traditional desktop GIS system.
If you ever get frustrated with limitations in desktop GIS software, some of which is still 32 bit, single core software that uses decades old technology under the hood then you will appreciate the performance that can be achieved with this approach.
Who this course is for:
GIS analysts who want to increase their understanding of data science
Data scientists who want to increase their understanding of geospatial analysis
Genre: eLearning | MP4 | Video: h264, 1280x720 | Audio: aac, 44100 Hz
Language: English | VTT | Size: 3.57 GB | Duration: 8h 36m
Download
*
What you'll learn
How to analyze geospatial data using the python data science ecosystem
Using Jupyter notebooks to provide complete documentation of your workflow and interactive code examples
The basics of the python data science ecosystem: NumPy, Matplotlib, Pandas, SciPy, Scikit-learn
Geospatial extensions to the Python data science ecosystem: Fiona, Shapely, GDAL, PySAL and most importantly GeoPandas
Perform common vector analysis tasks with GeoPandas
Requirements
Basic understanding of GIS operations for data analysis (buffers, intersections, etc)
Basic understanding of Python (You can get what you need from my course Survey of Python for GIS analysis)
Description
Learn why the Geospatial Data Science tools are becoming so popular in the Geospatial sector. The combination of Jupyter Notebooks with Python and GeoPanda's allows you to analyze vector data quickly, repeatably, and with full documentation of every step along the way so your entire analysis can be repeated at the touch of a button in a notebook format that can be shared with colleagues.
If you ever get asked to explain your analysis, either for a scientific paper, to defend your results in a court, or simply to share what you've done with others so they can follow your steps than you will be glad that you conducted your analysis in Jupyter notebooks with GeoPanda's rather than in a traditional desktop GIS system.
If you ever get frustrated with limitations in desktop GIS software, some of which is still 32 bit, single core software that uses decades old technology under the hood then you will appreciate the performance that can be achieved with this approach.
Who this course is for:
GIS analysts who want to increase their understanding of data science
Data scientists who want to increase their understanding of geospatial analysis
Genre: eLearning | MP4 | Video: h264, 1280x720 | Audio: aac, 44100 Hz
Language: English | VTT | Size: 3.57 GB | Duration: 8h 36m
Download
*