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Add New Data Streams

A data stream is a set of sensor data collected using a specific type of device with a specific format and stored in a specific container. RAPIDS is agnostic to data streams’ formats and container; see the Data Streams Introduction for a list of supported streams.

A container is queried with an R or Python script that connects to the database, API or file where your stream’s raw data is stored.

A format is described using a format.yaml file that specifies how to map and mutate your stream’s raw data to match the data and format RAPIDS needs.

The most common cases when you would want to implement a new data stream are:

  • You collected data with a mobile sensing app RAPIDS does not support yet. For example, Beiwe data stored in MySQL. You will need to define a new format file and a new container script.
  • You collected data with a mobile sensing app RAPIDS supports, but this data is stored in a container that RAPIDS can’t connect to yet. For example, AWARE data stored in PostgreSQL. In this case, you can reuse the format file of the aware_mysql stream, but you will need to implement a new container script.

Hint

Both the container.[R|py] and the format.yaml are stored in ./src/data/streams/[stream_name] where [stream_name] can be aware_mysql for example.

Implement a Container

The container script of a data stream can be implemented in R (strongly recommended) or python. This script must have two functions if you are implementing a stream for phone data or one function otherwise. The script can contain other auxiliary functions.

First of all, add any parameters your script might need in config.yaml under (device)_DATA_STREAMS. These parameters will be available in the stream_parameters argument of the one or two functions you implement. For example, if you are adding support for Beiwe data stored in PostgreSQL and your container needs a set of credentials to connect to a database, your new data stream configuration would be:

PHONE_DATA_STREAMS:
  USE: aware_python

  # AVAILABLE:
  aware_mysql: 
    DATABASE_GROUP: MY_GROUP
  beiwe_postgresql: 
    DATABASE_GROUP: MY_GROUP # users define this group (user, password, host, etc.) in credentials.yaml

Then implement one or both of the following functions:

This function returns the data columns for a specific sensor and participant. It has the following parameters:

Param Description
stream_parameters Any parameters (keys/values) set by the user in any [DEVICE_DATA_STREAMS][stream_name] key of config.yaml. For example, [DATABASE_GROUP] inside [FITBIT_DATA_STREAMS][fitbitjson_mysql]
sensor_container The value set by the user in any [DEVICE_SENSOR][CONTAINER] key of config.yaml. It can be a table, file path, or whatever data source you want to support that contains the data from a single sensor for all participants. For example, [PHONE_ACCELEROMETER][CONTAINER]
device The device id that you need to get the data for (this is set by the user in the participant files). For example, in AWARE this device id is a uuid
columns A list of the columns that you need to get from sensor_container. You specify these columns in your stream’s format.yaml

Example

This is the pull_data function we implemented for aware_mysql. Note that we can message, warn or stop the user during execution.

pull_data <- function(stream_parameters, device, sensor_container, columns){
    # get_db_engine is an auxiliary function not shown here for brevity bu can be found in src/data/streams/aware_mysql/container.R
    dbEngine <- get_db_engine(stream_parameters$DATABASE_GROUP)
    query <- paste0("SELECT ", paste(columns, collapse = ",")," FROM ", sensor_container, " WHERE device_id = '", device,"'")
    # Letting the user know what we are doing
    message(paste0("Executing the following query to download data: ", query)) 
    sensor_data <- dbGetQuery(dbEngine, query)

    dbDisconnect(dbEngine)

    if(nrow(sensor_data) == 0)
        warning(paste("The device '", device,"' did not have data in ", sensor_container))

    return(sensor_data)
}

Warning

This function is only necessary for phone data streams.

RAPIDS allows users to use the keyword infer (previously multiple) to automatically infer the mobile Operative System a phone was running.

If you have a way to infer the OS of a device id, implement this function. For example, for AWARE data we use the aware_device table.

If you don’t have a way to infer the OS, call stop("Error Message") so other users know they can’t use infer or the inference failed, and they have to assign the OS manually in the participant file.

This function returns the operative system (android or ios) for a specific phone device id. It has the following parameters:

Param Description
stream_parameters Any parameters (keys/values) set by the user in any [DEVICE_DATA_STREAMS][stream_name] key of config.yaml. For example, [DATABASE_GROUP] inside [FITBIT_DATA_STREAMS][fitbitjson_mysql]
device The device id that you need to infer the OS for (this is set by the user in the participant files). For example, in AWARE this device id is a uuid

Example

This is the infer_device_os function we implemented for aware_mysql. Note that we can message, warn or stop the user during execution.

infer_device_os <- function(stream_parameters, device){
    # get_db_engine is an auxiliary function not shown here for brevity bu can be found in src/data/streams/aware_mysql/container.R
    group <- stream_parameters$DATABASE_GROUP

    dbEngine <- dbConnect(MariaDB(), default.file = "./.env", group = group)
    query <- paste0("SELECT device_id,brand FROM aware_device WHERE device_id = '", device, "'")
    message(paste0("Executing the following query to infer phone OS: ", query)) 
    os <- dbGetQuery(dbEngine, query)
    dbDisconnect(dbEngine)

    if(nrow(os) > 0)
        return(os %>% mutate(os = ifelse(brand == "iPhone", "ios", "android")) %>% pull(os))
    else
        stop(paste("We cannot infer the OS of the following device id because it does not exist in the aware_device table:", device))

    return(os)
}

Implement a Format

A format file format.yaml describes the mapping between your stream’s raw data and the data that RAPIDS needs. This file has a section per sensor (e.g. PHONE_ACCELEROMETER), and each section has two attributes (keys):

  1. RAPIDS_COLUMN_MAPPINGS are mappings between the columns RAPIDS needs and the columns your raw data already has.

    1. The reserved keyword FLAG_TO_MUTATE flags columns that RAPIDS requires but that are not initially present in your container (database, CSV file). These columns have to be created by your mutation scripts.
  2. MUTATION. Sometimes your raw data needs to be transformed to match the format RAPIDS can handle (including creating columns marked as FLAG_TO_MUTATE)

    1. COLUMN_MAPPINGS are mappings between the columns a mutation SCRIPT needs and the columns your raw data has.

    2. SCRIPTS are a collection of R or Python scripts that transform one or more raw data columns into the format RAPIDS needs.

Hint

[RAPIDS_COLUMN_MAPPINGS] and [MUTATE][COLUMN_MAPPINGS] have a key (left-hand side string) and a value (right-hand side string). The values are the names used to pulled columns from a container (e.g., columns in a database table). All values are renamed to their keys in lower case. The renamed columns are sent to every mutation script within the data argument, and the final output is the input RAPIDS process further.

For example, let’s assume we are implementing beiwe_mysql and defining the following format for PHONE_FAKESENSOR:

PHONE_FAKESENSOR:
    ANDROID:
        RAPIDS_COLUMN_MAPPINGS:
            TIMESTAMP: beiwe_timestamp
            DEVICE_ID: beiwe_deviceID
            MAGNITUDE_SQUARED: FLAG_TO_MUTATE
        MUTATE:
            COLUMN_MAPPINGS:
                MAGNITUDE: beiwe_value
            SCRIPTS:
              - src/data/streams/mutations/phone/square_magnitude.py

RAPIDS will:

  1. Download beiwe_timestamp, beiwe_deviceID, and beiwe_value from the container of beiwe_mysql (MySQL DB)
  2. Rename these columns to timestamp, device_id, and magnitude, respectively.
  3. Execute square_magnitude.py with a data frame as an argument containing the renamed columns. This script will square magnitude and rename it to magnitude_squared
  4. Verify the data frame returned by square_magnitude.py has the columns RAPIDS needs timestamp, device_id, and magnitude_squared.
  5. Use this data frame as the input to be processed in the pipeline.

Note that although RAPIDS_COLUMN_MAPPINGS and [MUTATE][COLUMN_MAPPINGS] keys are in capital letters for readability (e.g. MAGNITUDE_SQUARED), the names of the final columns you mutate in your scripts should be lower case.

Let’s explain in more depth this column mapping with examples.

Name mapping

The mapping for some sensors is straightforward. For example, accelerometer data most of the time has a timestamp, three axes (x,y,z), and a device id that produced it. AWARE and a different sensing app like Beiwe likely logged accelerometer data in the same way but with different column names. In this case, we only need to match Beiwe data columns to RAPIDS columns one-to-one:

PHONE_ACCELEROMETER:
  ANDROID:
    RAPIDS_COLUMN_MAPPINGS:
      TIMESTAMP: beiwe_timestamp
      DEVICE_ID: beiwe_deviceID
      DOUBLE_VALUES_0: beiwe_x
      DOUBLE_VALUES_1: beiwe_y
      DOUBLE_VALUES_2: beiwe_z
    MUTATE:
      COLUMN_MAPPINGS:
      SCRIPTS: # it's ok if this is empty

Value mapping

For some sensors, we need to map column names and values. For example, screen data has ON and OFF events; let’s suppose Beiwe represents an ON event with the number 1, but RAPIDS identifies ON events with the number 2. In this case, we need to mutate the raw data coming from Beiwe and replace all 1s with 2s.

We do this by listing one or more R or Python scripts in MUTATION_SCRIPTS that will be executed in order. We usually store all mutation scripts under src/data/streams/mutations/[device]/[platform]/ and they can be reused across data streams.

PHONE_SCREEN:
  ANDROID:
    RAPIDS_COLUMN_MAPPINGS:
      TIMESTAMP: beiwe_timestamp
      DEVICE_ID: beiwe_deviceID
      EVENT: beiwe_event
     MUTATE:
      COLUMN_MAPPINGS:
      SCRIPTS:
        - src/data/streams/mutations/phone/beiwe/beiwe_screen_map.py

Hint

  • A MUTATION_SCRIPT can also be used to clean/preprocess your data before extracting behavioral features.
  • A mutation script has to have a main function that receives two arguments, data and stream_parameters.
  • The stream_parameters argument contains the config.yaml key/values of your data stream (this is the same argument that your container.[py|R] script receives, see Implement a Container).

Example of a python mutation script

import pandas as pd

def main(data, stream_parameters):
    # mutate data
    return(data)

Example of a R mutation script

source("renv/activate.R") # needed to use RAPIDS renv environment
library(dplyr)

main <- function(data, stream_parameters){
    # mutate data
    return(data)
}

Complex mapping

Sometimes, your raw data doesn’t even have the same columns RAPIDS expects for a sensor. For example, let’s pretend Beiwe stores PHONE_ACCELEROMETER axis data in a single column called acc_col instead of three. You have to create a MUTATION_SCRIPT to split acc_col into three columns x, y, and z.

For this, you mark the three axes columns RAPIDS needs in [RAPIDS_COLUMN_MAPPINGS] with the word FLAG_TO_MUTATE, map acc_col in [MUTATION][COLUMN_MAPPINGS], and list a Python script under [MUTATION][SCRIPTS] with the code to split acc_col. See an example below.

RAPIDS expects that every column mapped as FLAG_TO_MUTATE will be generated by your mutation script, so it won’t try to retrieve them from your container (database, CSV file, etc.).

In our example, acc_col will be fetched from the stream’s container and renamed to JOINED_AXES because beiwe_split_acc.py will split it into double_values_0, double_values_1, and double_values_2.

PHONE_ACCELEROMETER:
  ANDROID:
    RAPIDS_COLUMN_MAPPINGS:
      TIMESTAMP: beiwe_timestamp
      DEVICE_ID: beiwe_deviceID
      DOUBLE_VALUES_0: FLAG_TO_MUTATE
      DOUBLE_VALUES_1: FLAG_TO_MUTATE
      DOUBLE_VALUES_2: FLAG_TO_MUTATE
    MUTATE:
      COLUMN_MAPPINGS:
        JOINED_AXES: acc_col
      SCRIPTS:
        - src/data/streams/mutations/phone/beiwe/beiwe_split_acc.py

This is a draft of beiwe_split_acc.py MUTATION_SCRIPT:

import pandas as pd

def main(data, stream_parameters):
    # data has the acc_col
    # split acc_col into three columns: double_values_0, double_values_1, double_values_2 to match RAPIDS format
    # remove acc_col since we don't need it anymore
    return(data)

OS complex mapping

There is a special case for a complex mapping scenario for smartphone data streams. The Android and iOS sensor APIs return data in different formats for certain sensors (like screen, activity recognition, battery, among others).

In case you didn’t notice, the examples we have used so far are grouped under an ANDROID key, which means they will be applied to data collected by Android phones. Additionally, each sensor has an IOS key for a similar purpose. We use the complex mapping described above to transform iOS data into an Android format (it’s always iOS to Android and any new phone data stream must do the same).

For example, this is the format.yaml key for PHONE_ACTVITY_RECOGNITION. Note that the ANDROID mapping is simple (one-to-one) but the IOS mapping is complex with three FLAG_TO_MUTATE columns, two [MUTATE][COLUMN_MAPPINGS] mappings, and one [MUTATION][SCRIPT].

PHONE_ACTIVITY_RECOGNITION:
  ANDROID:
    RAPIDS_COLUMN_MAPPINGS:
      TIMESTAMP: timestamp
      DEVICE_ID: device_id
      ACTIVITY_TYPE: activity_type
      ACTIVITY_NAME: activity_name
      CONFIDENCE: confidence
    MUTATION:
      COLUMN_MAPPINGS:
      SCRIPTS:
  IOS:
    RAPIDS_COLUMN_MAPPINGS:
      TIMESTAMP: timestamp
      DEVICE_ID: device_id
      ACTIVITY_TYPE: FLAG_TO_MUTATE
      ACTIVITY_NAME: FLAG_TO_MUTATE
      CONFIDENCE: FLAG_TO_MUTATE
    MUTATION:
      COLUMN_MAPPINGS:
        ACTIVITIES: activities
        CONFIDENCE: confidence
      SCRIPTS:
        - "src/data/streams/mutations/phone/aware/activity_recogniton_ios_unification.R"
Example activity_recogniton_ios_unification.R

In this MUTATION_SCRIPT we create ACTIVITY_NAME and ACTIVITY_TYPE based on activities, and map confidence iOS values to Android values.

source("renv/activate.R")
library("dplyr", warn.conflicts = F)
library(stringr)

clean_ios_activity_column <- function(ios_gar){
    ios_gar <- ios_gar %>%
        mutate(activities = str_replace_all(activities, pattern = '("|\\[|\\])', replacement = ""))

    existent_multiple_activities <- ios_gar %>%
        filter(str_detect(activities, ",")) %>% 
        group_by(activities) %>%
        summarise(mutiple_activities = unique(activities), .groups = "drop_last") %>% 
        pull(mutiple_activities)

    known_multiple_activities <- c("stationary,automotive")
    unkown_multiple_actvities <- setdiff(existent_multiple_activities, known_multiple_activities)
    if(length(unkown_multiple_actvities) > 0){
        stop(paste0("There are unkwown combinations of ios activities, you need to implement the decision of the ones to keep: ", unkown_multiple_actvities))
    }

    ios_gar <- ios_gar %>%
        mutate(activities = str_replace_all(activities, pattern = "stationary,automotive", replacement = "automotive"))

    return(ios_gar)
}

unify_ios_activity_recognition <- function(ios_gar){
    # We only need to unify Google Activity Recognition data for iOS
    # discard rows where activities column is blank
    ios_gar <- ios_gar[-which(ios_gar$activities == ""), ]
    # clean "activities" column of ios_gar
    ios_gar <- clean_ios_activity_column(ios_gar)

    # make it compatible with android version: generate "activity_name" and "activity_type" columns
    ios_gar  <-  ios_gar %>% 
        mutate(activity_name = case_when(activities == "automotive" ~ "in_vehicle",
                                        activities == "cycling" ~ "on_bicycle",
                                        activities == "walking" ~ "walking",
                                        activities == "running" ~ "running",
                                        activities == "stationary" ~ "still"),
                activity_type = case_when(activities == "automotive" ~ 0,
                                        activities == "cycling" ~ 1,
                                        activities == "walking" ~ 7,
                                        activities == "running" ~ 8,
                                        activities == "stationary" ~ 3,
                                        activities == "unknown" ~ 4),
                confidence = case_when(confidence == 0 ~ 0,
                                      confidence == 1 ~ 50,
                                      confidence == 2 ~ 100)
                                    ) %>% 
        select(-activities)

    return(ios_gar)
}

main <- function(data, stream_parameters){
    return(unify_ios_activity_recognition(data, stream_parameters))
}