Skip to main content

Autotouch Smart Table CLI

Project description

Autotouch CLI

Installable CLI for the Smart Table developer API.

Use it when you want command-driven access to search, tables, columns, runs, jobs, leads, sequences, and task workflows without hand-writing raw HTTP requests.

The CLI talks to the same API the product uses. For automation, prefer --output json.

For a machine-readable local command contract, use autotouch cli-manifest --output json. For a shipped human-readable reference generated from the installed parser, use autotouch cli-reference.

Install

pipx install autotouch-cli
# or
pip install autotouch-cli
# upgrade
pip install -U autotouch-cli

First Run

Existing developer key:

read -s AUTOTOUCH_API_KEY
export AUTOTOUCH_API_KEY
autotouch setup --api-key "$AUTOTOUCH_API_KEY" --base-url https://app.autotouch.ai

Equivalent manual steps:

autotouch auth set-key --api-key "$AUTOTOUCH_API_KEY" --base-url https://app.autotouch.ai
autotouch auth check --base-url https://app.autotouch.ai

Fresh account:

export AUTOTOUCH_CONFIG_PATH=/tmp/autotouch-audit.json
read -s AUTOTOUCH_BOOTSTRAP_PASSWORD
export AUTOTOUCH_BOOTSTRAP_PASSWORD

autotouch auth bootstrap \
  --first-name Ada \
  --last-name Lovelace \
  --email ada+audit@example.com \
  --password "$AUTOTOUCH_BOOTSTRAP_PASSWORD" \
  --organization-name "Audit Org" \
  --save-key

autotouch auth check

Config precedence:

  • Explicit flags win over environment variables.
  • Environment variables win over saved config.
  • Saved config wins over built-in defaults.
  • For JSON payload inputs, pass either --data-json or --data-file, not both.

5-Minute Flow

# 0) First-run setup
autotouch setup --api-key "$AUTOTOUCH_API_KEY" --base-url https://app.autotouch.ai

# 1) Inspect machine-readable contract
autotouch capabilities --output json

# 2) Create a table and capture its id
TABLE_ID=$(autotouch tables create --name "CLI Contacts" --output json --select id)

# 3) Add a couple rows with the default lead_finder recipe's expected field
ROW_ID=$(autotouch rows add \
  --table-id "$TABLE_ID" \
  --records-json '[{"domain":"openai.com","companyName":"OpenAI"},{"domain":"stripe.com","companyName":"Stripe"}]' \
  --output json --select rowIds.0)

# 4) Generate a provider-backed column payload
autotouch columns recipe --type lead_finder --out-file column.json

# 5) Create the column and capture its id
COLUMN_ID=$(autotouch columns create --table-id "$TABLE_ID" --data-file column.json --output json --select id)

# 6) Run a small controlled slice and capture the bulk job id
JOB_ID=$(autotouch columns run-next \
  --table-id "$TABLE_ID" \
  --column-id "$COLUMN_ID" \
  --count 2 \
  --show-estimate \
  --wait \
  --output json --select job_id)

# 7) Verify backend truth
autotouch jobs get --job-id "$JOB_ID" --output json

# 8) Inspect exactly what changed
autotouch rows get --table-id "$TABLE_ID" --row-id "$ROW_ID" --output json

Cheat Sheet

  • Create table: autotouch tables create
  • Add rows: autotouch rows add
  • Inspect rows: autotouch rows list, autotouch rows get
  • Inspect one cell: autotouch cells get
  • Create a workflow column: autotouch columns recipe, autotouch columns create
  • Run provider-hidden search: autotouch search companies, autotouch search people
  • Run controlled slices: autotouch columns run-next
  • Poll authoritative state: autotouch jobs get
  • Create/activate sequences: autotouch sequences recipe, autotouch sequences create, autotouch sequences activate
  • Query leads: autotouch leads query
  • Find a lead by email or phone: autotouch leads query --search '<email-or-phone>' --limit 10

More

For automation or agent-driven setup, use:

  • autotouch cli-manifest --output json for the local machine-readable command contract
  • autotouch cli-reference for the shipped parser-generated reference
  • autotouch capabilities --output json for provider/workflow contracts
  • autotouch rows list / autotouch rows get / autotouch cells get for read-back and audit
  • autotouch sequences ... and autotouch tasks ... for sequence/task workflows
  • pip install 'autotouch-cli[mongo]' if you need the Mongo-backed status / watch commands

LLM Columns

For llm_enrichment in agent mode, the recommended path is:

  • provide config.instructions
  • let the API compile the runnable prompt
  • keep config.useAutoSchema = true

Only send user_schema / response_schema when you intentionally want to override the generated schema and keep it aligned yourself. The installed recipe surface at autotouch columns recipe --type llm_enrichment follows this contract.

Schema ownership rules:

  • Accepted generated schemas and explicit user schemas are the saved output contract.
  • Row execution must not add fields, rename fields, or replace a valid locked schema.
  • Agent-mode evidence/scored state decides which values may fill the schema; the finalizer formats those values and schema validation gates persistence.

Prompt variables in authored prompts support nested JSON access:

  • Use flat row variables like {{company_name}} for scalar columns.
  • Use dotted placeholders like {{linkedin_lookup.linkedin_url}} when the source column stores JSON or stringified JSON.
  • For arrays, use numeric indexes such as {{contacts.0.email}}.
  • This is different from config payload mappings, which use objects like { "column": "linkedin_lookup", "path": "linkedin_url" }.

Docs

Project details


Release history Release notifications | RSS feed

Download files

Download the file for your platform. If you're not sure which to choose, learn more about installing packages.

Source Distribution

autotouch_cli-0.2.68.tar.gz (192.1 kB view details)

Uploaded Source

Built Distribution

If you're not sure about the file name format, learn more about wheel file names.

autotouch_cli-0.2.68-py3-none-any.whl (215.1 kB view details)

Uploaded Python 3

File details

Details for the file autotouch_cli-0.2.68.tar.gz.

File metadata

  • Download URL: autotouch_cli-0.2.68.tar.gz
  • Upload date:
  • Size: 192.1 kB
  • Tags: Source
  • Uploaded using Trusted Publishing? No
  • Uploaded via: twine/6.1.0 CPython/3.13.12

File hashes

Hashes for autotouch_cli-0.2.68.tar.gz
Algorithm Hash digest
SHA256 79ae4c996fda370c91da7b111a23461868586b9c56018e9e3399b980356e05d3
MD5 a83e98f6faea46120e7d3f9c7732c64c
BLAKE2b-256 d5ecda4418831938da7b3dc3adea372e375ffebc73a69d2b6cbb2be79e127cdf

See more details on using hashes here.

File details

Details for the file autotouch_cli-0.2.68-py3-none-any.whl.

File metadata

  • Download URL: autotouch_cli-0.2.68-py3-none-any.whl
  • Upload date:
  • Size: 215.1 kB
  • Tags: Python 3
  • Uploaded using Trusted Publishing? No
  • Uploaded via: twine/6.1.0 CPython/3.13.12

File hashes

Hashes for autotouch_cli-0.2.68-py3-none-any.whl
Algorithm Hash digest
SHA256 f54ed582e793154369190619d09bb1f14b73d5c6d02ccb7395be6bb78d2d1395
MD5 f21d0019ae969cea14db3ee4629ede2e
BLAKE2b-256 30bc1dac2caf65ce6598569eb1a9eb7492a3e281167190ce6f5d5161ca80471d

See more details on using hashes here.

Supported by

AWS Cloud computing and Security Sponsor Datadog Monitoring Depot Continuous Integration Fastly CDN Google Download Analytics Pingdom Monitoring Sentry Error logging StatusPage Status page