[![License: MIT](https://img.shields.io/badge/License-MIT-yellow.svg)](https://opensource.org/licenses/MIT) Tantivy-cli is the project hosting the command line interface for [tantivy](https://github.com/fulmicoton/tantivy), a search engine project. # Tutorial: Indexing Wikipedia with Tantivy CLI ## Introduction In this tutorial, we will create a brand new index with the articles of English wikipedia in it. ## Installing the tantivy CLI. There are simple way to add the `tantivy` CLI to your computer. If you are a rust programmer, you probably have `cargo` installed and you can just run `cargo install tantivy-cli`. Alternatively, if you are on `Linux 64bits`, you can directly download a static binary: [binaries/linux_x86_64/](http://fulmicoton.com/tantivy-files/binaries/linux_x86_64/tantivy), and save it in a directory of your system's `PATH`. ## Creating the index: `new` Let's create a directory in which your index will be stored. ```bash # create the directory mkdir wikipedia-index ``` We will now initialize the index and create its schema. The [schema](http://fulmicoton.com/tantivy/tantivy/schema/index.html) defines the list of your fields, and for each field : - its name - its type, currently `u32` or `str` - how it should be indexed. You can find more information about the latter on [tantivy's schema documentation page](http://fulmicoton.com/tantivy/tantivy/schema/index.html In our case, our documents will contain * a title * a body * a url We want the title and the body to be tokenized and index. We want to also add the term frequency and term positions to our index. (To be honest, phrase queries are not yet implemented in tantivy, so the positions won't be really useful in this tutorial.) Running `tantivy new` will start a wizard that will help you go through the definition of the schema of our new index. Like all the other commands of `tantivy`, you will have to pass it your index directory via the `-i` or `--index` parameter as follows. ```bash tantivy new -i wikipedia-index ``` When asked answer to the question, answer as follows: ```none Creating new index Let's define it's schema! New field name ? title Text or unsigned 32-bit Integer (T/I) ? T Should the field be stored (Y/N) ? Y Should the field be indexed (Y/N) ? Y Should the field be tokenized (Y/N) ? Y Should the term frequencies (per doc) be in the index (Y/N) ? Y Should the term positions (per doc) be in the index (Y/N) ? Y Add another field (Y/N) ? Y New field name ? body Text or unsigned 32-bit Integer (T/I) ? T Should the field be stored (Y/N) ? Y Should the field be indexed (Y/N) ? Y Should the field be tokenized (Y/N) ? Y Should the term frequencies (per doc) be in the index (Y/N) ? Y Should the term positions (per doc) be in the index (Y/N) ? Y Add another field (Y/N) ? Y New field name ? url Text or unsigned 32-bit Integer (T/I) ? T Should the field be stored (Y/N) ? Y Should the field be indexed (Y/N) ? N Add another field (Y/N) ? N [ { "name": "title", "type": "text", "options": { "indexing": "position", "stored": true } }, { "name": "body", "type": "text", "options": { "indexing": "position", "stored": true } }, { "name": "url", "type": "text", "options": { "indexing": "unindexed", "stored": true } } ] ``` After the wizard has finished, a `meta.json` has been written in `wikipedia-index/meta.json`. It is a fairly human readable JSON, so you may check its content. It contains two sections : - segments (currently empty, but we will change that soon) - schema # Indexing the document : `index` Tantivy's `index` command offers a way to index a json file. More accurately, the file must contain one document per line, in a json format. The structure of this JSON object must match that of our schema definition. ```json {"body": "some text", "title": "some title", "url": "http://somedomain.com"} ``` For this tutorial, you can download a corpus with the 5 millions+ English articles of wikipedia formatted in the right format here : [wiki-articles.json (2.34 GB)](https://www.dropbox.com/s/wwnfnu441w1ec9p/wiki-articles.json.bz2?dl=0). Make sure to uncompress the file ```bash bunzip2 wiki-articles.json.bz2 ``` If you are in a rush you can [download 100 articles in the right format here](http://fulmicoton.com/tantivy-files/wiki-articles-1000.json). The `index` command will index your document. By default it will use as many threads as there are cores on your machine. You can change the number of threads by passing it the `-t` parameter. On my computer (8 core Xeon(R) CPU X3450 @ 2.67GHz), it will take around 6 minutes. ``` cat wiki-articles.json | tantivy index -i ./wikipedia-index ``` While it is indexing, you can peek at the index directory to check what is happening. ```bash ls ./wikipedia-index ``` If you indexed the 5 millions articles, you should see a lot of new files, all with the following format The main file is `meta.json`. Our index is in fact divided in segments. Each segment acts as an individual smaller index. Its named is simply a uuid. # Serve the search index : `serve` Tantivy's cli also embeds a search server. You can run it with the following command. ``` tantivy serve -i wikipedia-index ``` By default, the server is serving on the port `3000`. You can search for the top 20 most relevant documents for the query `Barack Obama` by accessing the following [url](http://localhost:3000/api/?q=barack+obama&explain=true&nhits=20) in your browser http://localhost:3000/api/?q=barack+obama&explain=true&nhits=20 # Optimizing the index : `merge` Each tantivy's indexer thread is closing a new segment every 100K documents (this is completely arbitrary at the moment). You should have more than 50 segments in your dictionary at the moment. Having that many queries is hurting your query performance (well, mostly the fast ones). Tantivy merge will merge your segment into one. ``` tantivy merge -i ./wikipedia-index ``` (The command takes around 7 minutes on my computer) Note that your files are still there even after having run the command. `meta.json` however only lists one of the segments. You will still need to remove the files manually.