cdc-gov/healthy-people-2020-final-progress-by-population-3q3z-9ucr
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Query the Data Delivery Network

Query the DDN

The easiest way to query any data on Splitgraph is via the "Data Delivery Network" (DDN). The DDN is a single endpoint that speaks the PostgreSQL wire protocol. Any Splitgraph user can connect to it at data.splitgraph.com:5432 and query any version of over 40,000 datasets that are hosted or proxied by Splitgraph.

For example, you can query the healthy_people_2020_final_progress_by_population table in this repository, by referencing it like:

"cdc-gov/healthy-people-2020-final-progress-by-population-3q3z-9ucr:latest"."healthy_people_2020_final_progress_by_population"

or in a full query, like:

SELECT
    ":id", -- Socrata column ID
    "final_progress_status_category", -- [4] Status was determined using the baseline, final, and target value. The status categories used in HP2020 were: a. Target met or exceeded; b. Improved; c. Little or no detectable change; and d. Got worse.
    "target_value", -- [3] Targets were generally set using one of several available target-setting methods, based on objectives’ baseline values for the total population covered by the objective. For information on the target-setting methods used in HP2020, see the General Data Issues  document (https://www.cdc.gov/nchs/healthy_people/hp2020/hp2020_data_issues.htm).
    "final_year_estimate_standard", -- Standard error of the final year(s) estimate, if available.
    "final_year_estimate", -- Estimate for the population group during the final year(s). This estimate can be a count, percentage, or rate depending on the objective. For more information on how estimates for specific objectives were calculated, see https://www.healthypeople.gov/2020/. 
    "final_year_s", -- [2] The final year(s) of reliable data that were included for the population group in HP2020. The final value was generally based on data available on the HP2020 website as of January 2020. For objectives that are continuing into HP2030, more recent data will be included on the HP2030 website as it becomes available: https://health.gov/healthypeople.
    "baseline_estimate_standard", -- Standard error of the baseline estimate, if available. 
    "baseline_estimate", -- Estimate for the population group for the baseline year(s). This estimate can be a count, percentage, or rate depending on the objective. For more information on how estimates for specific objectives were calculated, see https://www.healthypeople.gov/2020/.
    "population_group", -- Population groups defined by sex, race and ethnicity, educational attainment, family income, disability status, and geographic location. See “Population Group Definitions and Categorizations for Healthy People 2020 Final Review” for further information on the population groups included in the data (https://www.cdc.gov/nchs/data/hpdata2020/Population-Group-Definitions-for-HP2020-Final-Review.pdf). 
    "population_characteristic", -- Characteristics available in the “Group By” menu of the Progress by Population Group chart include sex, race and ethnicity, educational attainment, family income, disability status, and geographic location. 
    "topic_area", -- A subset of the HP2020 topic areas that had measurable objectives with data available for any of the six population characteristics. 
    "hp2020_objective", -- [1] The analysis included subsets of the 1,111 measurable HP2020 objectives that had data available for any of six broad population characteristics: sex, race and ethnicity, educational attainment, family income, disability status, and geographic location.
    "baseline_year_s" -- The first year(s) of HP2020 data for the population group. 
FROM
    "cdc-gov/healthy-people-2020-final-progress-by-population-3q3z-9ucr:latest"."healthy_people_2020_final_progress_by_population"
LIMIT 100;

Connecting to the DDN is easy. All you need is an existing SQL client that can connect to Postgres. As long as you have a SQL client ready, you'll be able to query cdc-gov/healthy-people-2020-final-progress-by-population-3q3z-9ucr with SQL in under 60 seconds.

Query Your Local Engine

Install Splitgraph Locally
bash -c "$(curl -sL https://github.com/splitgraph/splitgraph/releases/latest/download/install.sh)"
 

Read the installation docs.

Splitgraph Cloud is built around Splitgraph Core (GitHub), which includes a local Splitgraph Engine packaged as a Docker image. Splitgraph Cloud is basically a scaled-up version of that local Engine. When you query the Data Delivery Network or the REST API, we mount the relevant datasets in an Engine on our servers and execute your query on it.

It's possible to run this engine locally. You'll need a Mac, Windows or Linux system to install sgr, and a Docker installation to run the engine. You don't need to know how to actually use Docker; sgrcan manage the image, container and volume for you.

There are a few ways to ingest data into the local engine.

For external repositories, the Splitgraph Engine can "mount" upstream data sources by using sgr mount. This feature is built around Postgres Foreign Data Wrappers (FDW). You can write custom "mount handlers" for any upstream data source. For an example, we blogged about making a custom mount handler for HackerNews stories.

For hosted datasets (like this repository), where the author has pushed Splitgraph Images to the repository, you can "clone" and/or "checkout" the data using sgr cloneand sgr checkout.

Cloning Data

Because cdc-gov/healthy-people-2020-final-progress-by-population-3q3z-9ucr:latest is a Splitgraph Image, you can clone the data from Spltgraph Cloud to your local engine, where you can query it like any other Postgres database, using any of your existing tools.

First, install Splitgraph if you haven't already.

Clone the metadata with sgr clone

This will be quick, and does not download the actual data.

sgr clone cdc-gov/healthy-people-2020-final-progress-by-population-3q3z-9ucr

Checkout the data

Once you've cloned the data, you need to "checkout" the tag that you want. For example, to checkout the latest tag:

sgr checkout cdc-gov/healthy-people-2020-final-progress-by-population-3q3z-9ucr:latest

This will download all the objects for the latest tag of cdc-gov/healthy-people-2020-final-progress-by-population-3q3z-9ucr and load them into the Splitgraph Engine. Depending on your connection speed and the size of the data, you will need to wait for the checkout to complete. Once it's complete, you will be able to query the data like you would any other Postgres database.

Alternatively, use "layered checkout" to avoid downloading all the data

The data in cdc-gov/healthy-people-2020-final-progress-by-population-3q3z-9ucr:latest is 0 bytes. If this is too big to download all at once, or perhaps you only need to query a subset of it, you can use a layered checkout.:

sgr checkout --layered cdc-gov/healthy-people-2020-final-progress-by-population-3q3z-9ucr:latest

This will not download all the data, but it will create a schema comprised of foreign tables, that you can query as you would any other data. Splitgraph will lazily download the required objects as you query the data. In some cases, this might be faster or more efficient than a regular checkout.

Read the layered querying documentation to learn about when and why you might want to use layered queries.

Query the data with your existing tools

Once you've loaded the data into your local Splitgraph Engine, you can query it with any of your existing tools. As far as they're concerned, cdc-gov/healthy-people-2020-final-progress-by-population-3q3z-9ucr is just another Postgres schema.

Related Documentation:

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