pipeline ======== This directory contains tools and scripts for running a cron job that does RAPPOR analysis and generates an HTML dashboard. It works like this: 1. `task_spec.py` generates a text file where each line corresponds to a process to be run (a "task"). The process is `bin/decode-dist` or `bin/decode-assoc`. The line contains the task parameters. 2. `xargs -P` is used to run processes in parallel. Our analysis is generally single-threaded (i.e. because R is single-threaded), so this helps utilize the machine fully. Each task places its output in a different subdirectory. 3. `cook.sh` calls `combine_results.py` to combine analysis results into a time series. It also calls `combine_status.py` to keep track of task data for "meta-analysis". `metric_status.R` generates more summary CSV files. 4. `ui.sh` calls `csv_to_html.py` to generate an HTML fragments from the CSV files. 5. The JavaScript in `ui/ui.js` is loaded from static HTML, and makes AJAX calls to retrieve the HTML fragments. The page is made interactive with `ui/table-lib.js`. `dist.sh` and `assoc.sh` contain functions which coordinate this process. `alarm-lib.sh` is used to kill processes that have been running for too long. Testing ------- `pipeline/regtest.sh` contains end-to-end demos of this process. Right now it depends on testdata from elsewhere in the tree: rappor$ ./demo.sh run # prepare dist testdata rappor$ cd bin bin$ ./test.sh write-assoc-testdata # prepare assoc testdata bin$ cd ../pipeline pipeline$ ./regtest.sh dist pipeline$ ./regtest.sh assoc pipeline$ python -m SimpleHTTPServer # start a static web server http://localhost:8000/_tmp/