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sources/tech/20220512 sqlite-utils- a nice way to import data into SQLite for analysis.md
121 lines
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121 lines
4.5 KiB
Markdown
[#]: subject: "sqlite-utils: a nice way to import data into SQLite for analysis"
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[#]: via: "https://jvns.ca/blog/2022/05/12/sqlite-utils--a-nice-way-to-import-data-into-sqlite/"
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[#]: author: "Julia Evans https://jvns.ca/"
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[#]: collector: "lujun9972"
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[#]: translator: " "
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[#]: reviewer: " "
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[#]: publisher: " "
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[#]: url: " "
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sqlite-utils: a nice way to import data into SQLite for analysis
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======
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Hello! This is a quick post about a nice tool I found recently called [sqlite-utils][1], from the [tools category][2].
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Recently I wanted to do some basic data analysis using data from my Shopify store. So I figured I’d query the Shopify API and import my data into SQLite, and then I could make queries to get the graphs I want.
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But this seemed like a lot of boring work, like I’d have to write a schema and write a Python program. So I hunted around for a solution, and I found `sqlite-utils`, a tool designed to make it easy to import arbitrary data into SQLite to do data analysis on the data.
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### sqlite-utils automatically generates a schema
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The Shopify data has about a billion fields and I really did not want to type out a schema for it. `sqlite-utils` solves this problem: if I have an array of JSON orders, I can create a new SQLite table with that data in it like this:
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```
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import sqlite_utils
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orders = ... # (some code to get the `orders` array here)
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db = sqlite_utils.Database('orders.db')
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db['shopify_orders'].insert_all(orders)
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```
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### you can alter the schema if there are new fields (with `alter`)
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Next, I ran into a problem where on the 5th page of downloads, the JSON contained a new field that I hadn’t seen before.
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Luckily, `sqlite-utils` thought of that: there’s an `alter` flag which will update the table’s schema to include the new fields. ```
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Here’s what the code for that looks like
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```
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db['shopify_orders'].insert_all(orders, alter=True)
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```
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### you can deduplicate existing rows (with `upsert`)
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Next I ran into a problem where sometimes when doing a sync, I’d download data from the API where some of it was new and some wasn’t.
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So I wanted to do an “upsert” where it only created new rows if the item didn’t already exist. `sqlite-utils` also thought of this, and there’s an `upsert` method.
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For this to work you have to specify the primary key. For me that was `pk="id"`. Here’s what my final code looks like:
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```
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db['shopify_orders'].upsert_all(
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orders,
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pk="id",
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alter=True
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)
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```
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### there’s also a command line tool
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I’ve talked about using `sqlite-utils` as a library so far, but there’s also a command line tool which is really useful.
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For example, this inserts the data from a `plants.csv` into a `plants` table:
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```
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sqlite-utils insert plants.db plants plants.csv --csv
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```
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### format conversions
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I haven’t tried this yet, but here’s a cool example from the help docs of how you can do format conversions, like converting a string to a float:
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```
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sqlite-utils insert plants.db plants plants.csv --csv --convert '
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return {
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"name": row["name"].upper(),
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"latitude": float(row["latitude"]),
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"longitude": float(row["longitude"]),
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}'
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```
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This seems really useful for CSVs, where by default it’ll often interpret numeric data as strings if you don’t do this conversions.
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### metabase seems nice too
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Once I had all the data in SQLite, I needed a way to draw graphs with it. I wanted some dashboards, so I ended up using [Metabase][3], an open source business intelligence tool. I found it very straightforward and it seems like a really easy way to turn SQL queries into graphs.
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This whole setup (sqlite-utils + metabase + SQL) feels a lot easier to use than my previous setup, where I had a custom Flask website that used plotly and pandas to draw graphs.
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### that’s all!
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I was really delighted by `sqlite-utils`, it was super easy to use and it did everything I wanted.
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--------------------------------------------------------------------------------
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via: https://jvns.ca/blog/2022/05/12/sqlite-utils--a-nice-way-to-import-data-into-sqlite/
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作者:[Julia Evans][a]
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选题:[lujun9972][b]
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译者:[译者ID](https://github.com/译者ID)
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校对:[校对者ID](https://github.com/校对者ID)
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本文由 [LCTT](https://github.com/LCTT/TranslateProject) 原创编译,[Linux中国](https://linux.cn/) 荣誉推出
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[a]: https://jvns.ca/
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[b]: https://github.com/lujun9972
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[1]: https://sqlite-utils.datasette.io
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[2]: https://jvns.ca/#cool-computer-tools---features---ideas
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[3]: https://www.metabase.com/
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