# hai β‘ Hacker AI
[](https://crates.io/crates/hai-cli)
[](https://crates.io/crates/hai-cli)

[](https://discord.gg/2nzb4PSAWT)
A CLI (`hai`) with a REPL for hackers using LLMs.

## Highlights
- β‘οΈ Starts in 30ms (on my machine).
- π¦ Single, standalone binaryβno installation or dependencies required.
- πͺΆ Lightweight (< 9MB compressed) for your machine, SBCs, and servers.
- π― Run many instances for simultaneous conversations.
- π€ Supports AIs from OpenAI, Anthropic, DeepSeek, Google, and Ollama (local)
all in a single conversation.
- πΆ Go incognito `hai -i`.
- β Give AI the power to run programs on your computer.
- π Share AI prompt-pasta publicly using the task repository.
- π Load images, code, or text into the conversation.
- π Load URLs with automatic article extraction and markdown conversion.
- π¨ Highlights syntax for code snippets.
- πΎ Auto-saves last conversation for easy resumption.
- β Store and share data on the cloud for easy access by AIs.
- π§ Get emails from AIβsend notifications or share data.
- π Open source: Apache License 2.0
- π» Supports Linux and macOS. Windows needs testing (help!).
## Installation
### Installer [Linux, macOS]
```
### Alt: Download binary [Linux, macOS, Windows]
Go to [releases](https://github.com/braincore/hai-cli/releases) and download the version for your machine.
### Alt: Build from source [Linux, macOS, Windows]
```
cargo install hai-cli
```
## Features
### Fast
> I got tired of opening up browser windows to chat with AIs.
- Run `hai` and immediately drop into an AI conversation prompt.
- Run `hai` in as many terminals as you'd like to have multiple simultaneous
conversations.
- Start a new conversation with `/new` (`/n` for short).
- Keep loaded files/assets/urls with `/reset` (`/r/`).
### Multi-AI
> I wasn't using the right AI for the right job because it was too annoying to
> switch around.

- `/ai <model>` - Switch with one command (tab-completion and abbreviations
supported)
- Switch between OpenAI, Anthropic, DeepSeek, Google, and local Ollama models
| OpenAI | gpt-4.1 (`41`), gpt-4.1-mini (`41m`), gpt-4.1-nano (`41n`), chatgpt-4o, gpt-4o (`4o`), gpt-4o-mini (`4om`) |
| | o4-mini (`o4m`), o3, o3-mini (`o3m`), o1, o1-mini (`o1m`) |
| Anthropic | sonnet-4 (`sonnet`), sonnet-4-thinking (`sonnet-thinking`), opus-4 (`opus`), opus-4-thinking (`opus-thinking`), haiku-3.5 (`haiku`) |
| Google | gemini-2.5-flash (`flash25`), gemini-2.5-pro (`gemini25pro`), gemini-2.0-flash (`flash20`) |
| DeepSeek | deepseek-reasoner (`r1`), deepseek-chat (`v3`) |
| Ollama | gemma3, llama3.2, llama3.3 |
- Switch mid conversation
```
[0] How many "r"s in strawberry?
```
```
βββ
There are two 'r's in the word "strawberry."
```
```
[2]: /ai o4-mini
Using AI Model: o4-mini
```
```
[2]: you're smarter than that
```
```
βββ
Youβre rightβmy mistake. βStrawberryβ has three βrβs: sΒ tΒ rΒ aΒ wΒ bΒ eΒ rΒ rΒ y.
```
#### Authenticating with AI Providers
You have two options:
1. Set an API key for each AI provider you plan to use.
- via config: `~/.hai/hai.toml`
- via CLI: `$ hai set-key <provider> <key>`
- via REPL: `/set-key <provider> <key>`
2. Subscribe to `hai router` and your account will automatically work with OpenAI, Anthropic, DeepSeek, and Google. Learn more with `/account-subscribe`
#### Incognito
> I wasn't asking all the crazy-person questions I wanted to.

- Run `hai --incognito` (`hai -i` for short).
- Local conversation history isn't saved.
- Since AI Providers keep logs of your conversations, consider configuring a
local ollama setup in `~/.hai/hai.toml` and set `default_incognito_ai_model`
(e.g. `ollama/gemma3:27b`).
### Tasks
> I often need to setup the same conversation context repeatedly.
> I got tired of sending AI prompt-pasta to friends and coworkers.
A *task* in hai is a prompt-on-steroids that can be:
1. Published publicly: `/task-publish <path>`
2. Executed by anyone using the task repo: `/task <username>/<task_name>`
3. Or, executed from a file: `/task <path>` (must start with `./`, `/`, or `~`)
A *task* is made up of steps: a sequence of repl-commands. The commands are the
same as the ones you use. A step can:
- Provide context
- Load resources (file, image, asset, URL)
- Execute local commands
- Prompt the user with a question
- Prompt the AI
- Cache local commands, prompt responses, and answers-to-questions.
Tasks make sharing workflows easy and improve their reproducibility given the
non-deterministic nature of LLMs.
Here's [`ken/pelican-bicycle`](https://hai.superego.ai/task/ken/pelican-bicycle):
```toml
name = "ken/pelican-bicycle"
version = "2.0.0"
description = "Runs simonw's \"Pelicans on a bicycle\" test"
steps = [
"""/pin The test is simple: Ask an AI to draw a pelican on a bicycle.
https://github.com/simonw/pelican-bicycle
""",
"/pin Checking what image tools you have",
"/exec cairosvg --version",
"/exec convert -version",
"!shscript Generate an SVG of a pelican riding a bicycle and pipe it into `cairosvg` or `convert` and output a png named `pelican-bicycle.png`",
"/load pelican-bicycle.png",
"/prompt Describe this image in one sentence."
]
```

#### Trusting a task
Some task steps require user confirmation because of the danger they pose (see
[Security Warning](#security-warning)). To skip these confirmations, you can
set the `trust` option to true: `/task(trust=true)`
### !Tools
> I got tired of being the people-person between the AI and my terminal.

`!sh <prompt>` - Ask the AI to execute shell commands directly.
```
[0]: /exec ls ~/.hai
```
```
data.db
data.db-shm
data.db-wal
hai.toml
```
```
[2]: !sh list tables
```
```
βββ
sqlite3 ~/.hai/data.db ".tables"
β β β
account asset task_step_cache
ask_cache misc
```
If I feel like being a manager I provide valuable oversight with `!?sh`
```
[0]: !?sh delete evidence.txt
```
```
βββ
rm evidence.txt
β β β
[QUESTION] Execute? y/[n]:
```
- `!?` - Also gives the AI freedom to respond to you without executing the tool.
- Other tools: `!py` (Python), `!shscript` (shell script), and `!clip` (copy to
clipboard).
- `!'<cmd>' <prompt>` - Support for any program that AI can pass stdin to.
Example below:
```
[0]: !'uv run --python python3 --with geopy -' distance from sf to nyc
```
```python
βββ
from geopy.distance import geodesic
sf_coords = (37.7749, -122.4194) # San Francisco coordinates
nyc_coords = (40.7128, -74.0060) # New York City coordinates
distance = geodesic(sf_coords, nyc_coords).miles
print(distance)
β β β
2571.9457567914133
```
### Assets [Experimental]
> I'm tired of SaaS data silos being the biggest impediment to feeding my data
> to AIs the way I want.
Assets are objects stored in the cloud for your direct and indirect use via AIs.
- `/asset <name>` - Open/create asset in editor (`/a` shorthand)
- Default editor is `vim`.
- Override with `default_editor` in `~/.hai/hai.toml`
- e.g. VS Code `code --new-window --disable-workspace-trust --wait`
- `/a <name> [<editor>]` to override in the command
- `/asset-view <name>` - Add an asset to the conversation for the AI to use.
- `/asset-load <name>` - Mimics `/load`, but for assets. Unlike `/asset-view`,
the contents arenβt printed, and they are retained even after a `/reset`.
- `/asset-temp <name> [<count>]` - Downloads the asset to a temporary file and
adds the file path to the conversation. This is a convenient way for the AI
to access assets by path especially when using tools. If `count` is set, that
number of revisions of an asset is written to files.
- `/asset-sync-down <prefix> <path>` - Syncs all assets with the given prefix
to a local path.
- Does not re-download assets that already exist locally.
- Does not add info to the conversation. You will need to inform the AI of
relevant files in the conversation typically by calling `!!ls <path>`.
- Syncs asset metadata (if available) as the asset name with `.metadata`
appended.
- `/asset-link <name>` - Generate a link to an asset (valid for 24 hours).
- `/asset-revisions <name> [<count>]` - Iterate through every revision of an asset.
- `/asset-import <name> <path>` - Import asset from a local file.
- `/asset-export <name> <path>` - Export asset to a local file.
Asset names can mimic file paths with slashes.
| Interested in writing a query language (ala LINQ or SQL) for assets? |
| All ideas welcome. Please reach out or open an issue. |
#### Public
Public assets start with a frontslash followed by your username (`/<username>`):
- Here's how user `ken` creates a public file: `/asset /ken/public.txt`
- Anyone can see it with: `/asset-view /ken/public.txt`
- Here's how user `ken` creates a private file: `/asset private.txt`
#### Search
Assets can be listed by prefix:
```
/asset-list todo_docs/2025-
# OR use /ls as shorthand
/ls todo_docs/2025-
```
Or, they can be searched semantically:
```
/asset-search cooking salmon
```
#### Using with shell
When running a shell command, use `@name` to reference an asset. The asset will
be transparently downloaded.
```
[0] !!!grep -A 2 v1.3.0 @/hai/changelog
```
```
## v1.3.0
- Add syntax highlighting for code blocks.
```
Note: `!!` is shorthand for `/exec`.
If a shell redirects (`>` or `>>`) to an @asset, the output file will be
uploaded as well.
```
[0] !!grep -A 2 v1.3.0 @/hai/changelog > @changes-v1.3.0
```
This processes a public asset from the `hai` account and saves a filtered
version to the `changes-v1.3.0` private asset.
**Limitations:** The implementation uses simple string substitution to replace
`@asset` markers with temporary files. Complex shell operations involving
quotes or escapes around asset references may not work as expected.
#### Conflicts
When the same asset is modified simultaneously by two separate `hai` processes,
a conflict occurs. The version that loses the race will be preserved as a
new asset with the same name as the original but with a random suffix.
## Advanced Usage
See all client commands with `/help` (`/h`).
### Account(s) management
- `/account` - See your current account
- `/account-new` - Create a new account
- `/account-login` - Login to an account
- `/account <username>` - Switch account
- `/account-subscribe` - Subscribe to support the project
- `/account-balance` - See AI credits remaining
### More on tools
Nothing makes me more secure as a human than the neverending mistakes AI makes
when using tools. Use a lone `!` to repeat the previous tool command & prompt.
Often, the AI will read the error message and fix itself:
```
[0]: !sh what's the weather in santa clara, ca
```
```
βββ
curl -s 'wttr.in/Santa+Clara,CA?format=%C+%t'
β β β
Unknown location; please try ~37.2333253,-121.6846349
```
```
[3]: !
```
```
βββ
curl -s 'wttr.in/Santa+Clara?format=%C+%t'
β β β
Partly cloudy +51Β°F
```
Or, if you need to change your prompt while using the same tool, use
`! <prompt>` (note that `sh` is omitted):
```
[6]: ! how about tokyo?
```
```
βββ
curl -s 'wttr.in/Tokyo?format=%C+%t'
β β β
Clear +59Β°F
```
### Tool mode
If you find yourself using the same tool over-and-over, you can enter tool-mode
by specifying a tool without a prompt (e.g. `!sh`).
```
[0]: !sh
```
```
Entering tool mode; All messages are treated as prompts for !sh. Use `!exit` when done
```
```
[0] !sh: what's the weather in alexandria, egypt?
```
```
βββ
curl -s 'http://wttr.in/Alexandria?format=%C+%t+%w'
β β β
Clear +77Β°F β11mph
```
A more realistic example is when using `hai` with `psql` (postgres client) to
avoid typing in the connection string each time.
```
[0]: !'psql -h localhost -p 5432 -U ken -d grapdb_1'
```
```
Entering tool mode; All messages are treated as prompts for !'psql -h localhost -p 5432 -U ken -d grapdb_1'. Use `!exit` when done
```
```
[3] !'psql -h localhost -p 5432 -U ken -d grapdb_1': what db users are there?
```
```
βββ
SELECT usename FROM pg_user;
β β β
usename
---------
ken
```
```
[5] !'psql -h localhost -p 5432 -U ken -d grapdb_1': is query logging turned on?
βββ
SHOW logging_collector;
β β β
logging_collector
-------------------
off
```
When publishing tasks, you can place users directly into tool-mode by making it
the final command in your task's command list. This approach is helpful when
writing tasks for less technical folks.
Lastly, variables can come in handy:
```
[11]: /setvar db psql -h localhost -p 5432 -U ken -d grapdb_1
```
```
[12]: !'$db' what version is the db?
```
```
βββ
SELECT version();
β β β
...
```
### For general software development
Use `/load <path>` (`/l <path>`) to load files (e.g. code) as context for the
AI. You can use globs, e.g. `/load src/**/*.rs`.
Use `/load-url <url>` to load a URL resource. For HTML resources, the command
will try to extract the main content and convert it to markdown.
Instead of `/new`, you can use `/reset` (`/r`) to keep context from `/load`,
`/load-url`, and `/asset-load` while clearing the rest of the conversation.
In a similar vein, any `/pin <message>` is kept around on `/reset`.
### For Python development
When using the `!py` tool, the system python will be used unless a virtualenv
(`.venv`) is available anywhere in the current directory tree.
### Cost estimation
The prompt shows you the number of tokens in your current conversation. Use
`/cost` to see how much your conversation has cost so far and the input cost of
your next prompt. Useful when you've loaded lots of files for context.
| Tokens are always estimated using the GPT-3.5 tokenizer because of its smaller size and therefore faster loading time. Unscientifically, I've seen estimates inaccurate by as much as 20%. |
### Task creation & publishing
Tasks are defined in toml. For example, here's the `ken/strava-api` task defined
in a file on my machine called `strava-api.toml`.
```toml
name = "ken/strava-api"
version = "1.0.0"
description = "Playground for the Strava API"
# Uncomment to hide this task from your /whois profile and search
# unlisted = true
steps = [
"/load-url https://developers.strava.com/swagger/swagger.json",
"/pin Loaded Strava API's swagger definition.",
"/pin Next, you'll need an access token from https://www.strava.com/settings/api",
"/ask-human(secret=true,cache=true) What's you're strava access token?",
"""\
/pin When making requests to the Strava API from the shell, use HTTPie (`http`)
with the `--pretty=all` flag. If unavailable, fallback to curl.
""",
"/pin Because the swagger definition is large, be wary of the cost",
"/cost",
"/pin Entering !sh tool mode to make it easier to make API requests",
"!sh",
]
```
- `name` - This must be your username followed by the name of your task. All
tasks are namespaced by a username to avoid duplicates and confusion.
- `version` - Must be a [semantic version](https://semver.org/) (semver).
- `description` - Explain what the task is for. Helps for task search.
- `unlisted` - Hides the task from search and your /whois profile.
- `steps` - Every step is something you could have typed yourself into the CLI.
At the conclusion of the steps, the user takes over with the context fully
populated.
You can test your task by referencing it by file path. To avoid ambiguity with
tasks in the repo, the file path must begin with `./`, `/`, or `~`:
```
/task ./path/to/strava-api.toml
```
When your task is ready to publish, run:
```
/task-publish ./path/to/strava-api.toml
```
The version must be greater than the latest currently in the repo.
Anyone can run your task by using its `name`:
```
/task ken/strava-api
```
#### Using a task to make a task
To have the AI help you write a task, use:
```
/task hai/quick-task
```
You can discuss with the AI what you want the task to accomplish. When you're
done, save the task definition to a toml file and `/task-publish` it.
If you already have an active conversation with loaded resources (files, URLs,
or assets), you can ask the AI to use the current context as the basis for your
new task. This is especially useful for creating reusable tasks that
automatically load your commonly-used resources.
#### Examples
All published tasks are viewable. You can whois a user (e.g. `/whois ken`), see
what tasks they've published, and view them via
`/task-view <username>/<task_name>`. Or, you can use `/task-search` to find
tasks you're interested in.
Here are some interesting ones:
- [`hai/help`](https://hai.superego.ai/task/hai/help) - Get help using hai. Ask
what's possible and how to do things.
- [`hai/api`](https://hai.superego.ai/task/hai/api) - Use or learn about hai's
API.
- [`hai/get-api-token`](https://hai.superego.ai/task/hai/get-api-token) -
Get an API token.
- [`hai/code`](https://hai.superego.ai/task/ken/weather) - Ask the AI about
hai's source code.
- [`hai/email-asset-updates`](https://hai.superego.ai/task/hai/email-asset-updates) -
Get emails every time an asset is updated.
- [`hai/add-email`](https://hai.superego.ai/task/hai/add-email) - Verify your
email address.
- [`ken/weather`](https://hai.superego.ai/task/ken/weather) - Get the weekly
weather forecast.
- [`ken/absolute-mode`](https://hai.superego.ai/task/ken/absolute-mode) - Chat
with an AI lacking all bedside manner.
- [`ken/baby-play`](https://hai.superego.ai/task/ken/baby-play) - Based on your
baby's age, gives age-appropriate ideas for activities.
- [`ken/flashcard-add`](https://hai.superego.ai/task/ken/flashcard-add) - Helps
you generate and save flashcards based on the current conversation. Use
`/task-include ken/flashcard-add` so that the conversation isn't reset into
task mode.
- Saves your flashcards as an asset: `flaschard/deck`
- [`ken/flashcard-review`](https://hai.superego.ai/task/ken/flashcard-review) -
Review random flashcards
- [`ken/music-player`](https://hai.superego.ai/task/ken/music-player) - Plays
random MP3s from your `music/*.mp3` assets. If lyrics are available in the
fileβs `lrc` metadata, it can display them line-by-line as the song plays.
More available in the [hai tasks](https://github.com/braincore/hai-tasks) repo.
#### Task-specific commands
In task mode, `/new` (`/n`) resets the task to the beginning rather than
clearing the entire conversation. To clear, use `/task-end`.
There are some `hai`-repl commands that are specifically made for tasks:
- `/ask-human <prompt>` - Ask the question.
- `/ask-human(secret=true) <prompt>` - User's answer is treated as a secret and
hidden.
- `/ask-human(cache=true) <prompt>` - When a user runs the task again, their
previous answer is used. `/task-forget` to reset.
- `/set-mask-secrets on` - AI output that includes the secret is masked in the
terminal.
- An example use case is asking the user for their API token to a service.
With masking, the AI can use the token in its tool-invocations and it'll
show as masked `*******` in the terminal.
- `/exec <cmd>` - Execute a command on the local machine. The user is always
prompted yes/no.
- `/exec(cache=true) <cmd>` - When a user runs the task again, the output from
the previous invocation is used.
- An example use of `/exec` is to make the first task command
`/exec(cache=true) ffmpeg -version` so that the AI knows to tweak its
`fmpeg` command-line with the exact version in mind.
- `/prompt <message>` - Makes it explicit that the line is prompting the AI.
- `/prompt(cache=true) <message>` - When a user runs the task again, the AI
output from the previous invocation is used instead of re-prompting.
- The cache is useful for avoiding the delay of an AI response and reducing
costs for expensive prompts.
- `/task-include <name|path>` - Rather than clearing the conversation and
entering a new task-mode, this command injects tasks commands into the current
conversation. If you find yourself giving the same instructions to the AI
over-and-over again, just make a (pseudo-)task with your instructions and
include it any time even if you're in another task-mode. For example, I have a
`ken/be-terse` task and `ken/code-preference` task that I inject as necessary.
- `/ai <model>` - While this isn't a task-only command, its behavior is subtly
different. In a task step, if the user doesn't have hai-router or an API key
set for the requested model, the current model isn't changed. This means a
task author can use `/ai <model>` without fearing that a task will try to use
a model without a key set.
### Command-line options
- `hai task <task_name>` - Immediately drops user into task-mode.
- `hai bye '<cmd>'...` - Run any command(s) as if using the CLI without entering
the CLI. Use single-quotes to minimize issues. Multiple commands can be
specified. All printouts go to the terminal and `hai` exits at the end.
- e.g. `hai bye '!sh convert apple1.jpg to webp'`
- If running in non-interactive mode (e.g. as a cron job), use `-y` to
confirm all user prompts, `-m` to set the model, and `-u` to set the user
account.
- `hai -i` - Enter incognito mode to keep no history. Pair with
`default_incognito_ai_model` to a local LLM (e.g. ollama) to be fully
incognito.
- `hai -u <username>` - Force the user account rather than use the
last active account. Pairs well with `hai task ...` and `hai bye ...` for
multi-account setups.
- `hai -m <model>` - Force the AI model.
- `hai set-key <provider> <key>` - Set API keys for providers (openai,
anthropic, deepseek, google). You don't need to do this if you've subscribed
to hai.
### More config options
See `~/.hai/hai.toml` for all options. Some options to highlight:
- Set `tool_confirm = true` to require your confirmation before executing any
tool. Use this if you're worried about your AI going rogue.
- By default, `temperature` is set to 0 across all AIs. That's hacker-friendly
because it works uniformly across providers (minus some reasoning AIs) and
optimizes for highest likelihood rather than whimsical exploration. Set
`default_ai_temperature_to_absolute_zero = false` to use the AI providers
default or specify your own with `/temperature`.
- Set `check_for_updates = false` to disable anonymous version checks when `hai`
runs. When disabled, `hai` makes no network requests that aren't initiated by
you.
### Going meta: the AI knows how to use `hai`
If I'm feeling lazy, I'll ask the AI to write the hai-repl commands using the
`!hai` tool.
```
[7]: !hai load silk road wiki. who was the founder?
```
```
βββ
- /load-url https://en.wikipedia.org/wiki/Silk_Road_(marketplace)
- /prompt Who was the founder of the Silk Road marketplace?
β β β
Pushed 2 command(s) into queue
---
!hai-tool[0]: /load-url https://en.wikipedia.org/wiki/Silk_Road_(marketplace)
Loaded (markdown): Silk Road (marketplace) (32,696 tokens)
!hai-tool[1]: /prompt Who was the founder of the Silk Road marketplace?
βββ
The founder of the Silk Road marketplace was **Ross Ulbricht**, who operated under the pseudonym "Dread Pirate Roberts."
```
The AI is capable enough to know what URL to load and then ask itself a
question about the contents.
#### !hai recursion
Some AIs (`sonnet-3.7` was used below; `gpt-4o` never works) are able to work
out whether they need to re-prompt themselves to act on intermediate
information.
In this example, only the first command is prompted by the user. The rest,
prefixed by `hai-tool[ ]:`, are prompted by the AI. For brevity, user confirmations
are omitted.
```
[0]: !hai get a random number. if it is even, ask the AI how large the sun is. if it is odd, delete `file1.txt`.
βββ
- !py Generate a random number and determine if it's even or odd
- !hai Based on the random number generated, if it's even, ask how large the sun is. If it's odd, delete file1.txt
β β β
Pushed 2 command(s) into queue
```
```
hai-tool[3]: !py Generate a random number and determine if it's even or odd
βββ
import random
# Generate a random number between 1 and 100
random_number = random.randint(1, 100)
# Check if the number is even or odd
if random_number % 2 == 0:
result = "even"
else:
result = "odd"
print(f"The random number is: {random_number}")
print(f"The number is {result}")
β β β
The random number is: 86
The number is even
```
```
hai-tool[6]: !hai Based on the random number generated, if it's even, ask how large the sun is. If it's odd, delete file1.txt
βββ
- /prompt How large is the sun? Please provide information about its diameter, volume, and mass compared to Earth.
β β β
Pushed 1 command(s) into queue
```
```
hai-tool[9]: /prompt How large is the sun? Please provide information about its diameter, volume, and mass compared to Earth.
βββ
# The Size of the Sun
The Sun is enormously large compared to Earth. Here are the key measurements:
- Sun's diameter: approximately 1.39 million kilometers (864,000 miles)
- Sun's volume: approximately 1.41 Γ 10^18 cubic kilometers
- Sun's mass: approximately 1.989 Γ 10^30 kilograms
```
### AI-Defined Reusable Functions
A drawback of `!py` is that the AI writes the Python code every time the tool
is used. This potentially consumes a lot of output tokens and the time it takes
to generate them. The waste is apparent when prompting `!py` repeatedly with
different inputs (string, file, ...).
The solution is to use `!fn-py <prompt>` which instructs the AI to generate a
Python function that takes an argument and returns a JSON-compatible result
that is added to the conversation.
```
[0]: !fn-py find the sqrt
βββ
def f(arg):
import math
return math.sqrt(arg)
β β β
Stored as command: /f0
```
The new function can be invoked like a command: `/f0 <arg>`. For example:
```
[3]: /f0 64
8.0
```
If you want the AI to generate the call to `/f0`, use the `!hai` tool:
```
[5]: !hai what's the sqrt of pi
βββ
- /f0 3.141592653589793
β β β
Pushed 1 command(s) into queue
---
!hai-tool[0]: /f0 3.141592653589793
1.7724538509055159
```
### More on Assets
#### Metadata
Each asset can have a JSON object associated with it to store metadata:
- `/asset-md-get <name>` - Fetches metadata for an asset and adds it to the
conversation.
- `/asset-md-set <name> <json>` - Sets the entire metadata blob.
- `/asset-md-set-key <name> <key> <value>` - Sets/replaces a metadata key.
- `/asset-md-del-key <name> <key>` - Delete a metadata key.
If a `title` metadata key is set, it's shown in `/asset-list` and
`/asset-search` in `[]` brackets.
| Interested in using metadata to make asset encryption the default way of life? |
| All ideas welcome. Please reach out or open an issue. |
#### Asset Push & ACL
Your public assets (prefixed by your username `/username/...`) can have ACLs
set so that an asset can be used as a write-only "asset/document drop".
```
/asset-acl /ken/hai-feedback deny:read-data
/asset-acl /ken/hai-feedback allow:push-data
```
With these ACLs, any user can push data (`/asset-push`) into the
`/ken/hai-feedback` asset, but no one except the owner can read what's been
pushed.
The owner (user `ken` in this example) can read the contents of
`/ken/hai-feedback` using `/asset-list-revisions` and can access revisions with
`/asset-get-revision`.
#### Listening for changes
`/asset-listen <name>` can be used to block the REPL until a change to the
asset. You can test this by:
```
# Console 1 (create asset)
/asset test-listen
# Console 2 (listen for changes -- blocking)
/asset-listen test-listen
# Console 1 (modify, unblocking console 2)
/asset test-listen
```
For an example of sending emails based on asset changes, see the
[hai/email-asset-updates](https://hai.superego.ai/task/hai/email-asset-updates@1.0.0)
task: `/task hai/email-asset-updates`
Note that the API exposes a websockets interface that pushes notifications when
changes occur.
### Saving and resuming chats
You can resume your last chat using:
```
/chat-resume
```
Your last chat is saved locally whenever you exit `hai` or start a new
conversation with `/new` or `/reset`.
To save a chat for the long term as an asset, use:
```
/chat-save
```
By default, chats are saved as assets named `chat/<timestamp>`. A descriptive
title is automatically generated and stored in the [asset metadata](#metadata)
for easier discovery. For example:
```
[0] /ls
chat/2025-04-08-203003 [Public/Private Key Management for Encryption and Signing]
```
Resume a named chat:
```
/chat-resume <name>
```
Save with a custom name:
```
/chat-save [<name>]
```
### Sending Emails
You (or the AI) can send emails using `/email` with a multi-line input:
```
/email <subject> β
<body>
```
`/email` sends an email to a default address you've verified. Use the
`hai/add-email` task to configure it:
```
[0] /task hai/add-email
...
[1] add x@y.com as an email recipient
[2] verify it with code 'xyzabc' # from email
```
To have the AI send you an email, you'll need to use the `!hai` tool:
```
!hai send me an email with an uplifting quote of the day
```
### Open Source
> I don't like running software that I and others can't audit the code of.
The `hai` CLI is available under the Apache 2.0 license. You can freely use it,
modify it, and contribute back.
You can enter a prompt with the source code loaded as context using the
`hai/code` task:
```
[0]: /task hai/code
```
```
hai/code[22]: is hai privacy conscious? does it keep my data safe?
```
```
βββ
The `hai` CLI takes steps to respect user privacy and provide options for users
to safeguard their information. Here's a detailed analysis based on the code
and documentation:
...
```
### API
To query the API, use the `hai/api` task:
```
/task hai/api
```
You can use this task to ask the AI about available options or to make actual
requests using an API token. You can get an api token with the `hai/get-api-token` task:
```
/task hai/get-api-token
```
If you want to read about the details, use:
```
/task-view hai/api
```
### Security warning
The primary attack vector to defend against is a published task that's crafted
to delete or exfiltrate your data. Be careful when running any task. All
potentially dangerous commands require a "yes/no" confirmation.
Specifically, tasks may `/exec` commands on your machine which can both delete
and exfiltrate data (e.g. make an http request). Tasks may `/load` data that can
then be exfiltrated. Tasks may use a tool (e.g. `!sh` or `!py`) which can delete
and exfiltrate. Tasks may use the `!hai` tool which may generate a list of
commands that can delete and exfiltrate.