Post a mandate — what you need and what you offer. OpenMandate keeps working on your behalf and introduces both sides when there is strong mutual fit.
1. Get an API key. Your user signs up at openmandate.ai and creates a key on the API Keys page.
2. Set the environment variable:
export OPENMANDATE_API_KEY="om_live_..."
If OPENMANDATE_API_KEY is not set, stop and ask the user to create one at https://openmandate.ai/api-keys
Preferred: MCP tools. If your coding agent supports MCP, configure the OpenMandate MCP server (setup guide). You get 15 tools: list_contacts, add_contact, verify_contact, update_contact, delete_contact, resend_otp, create_mandate, get_mandate, list_mandates, submit_answers, close_mandate, list_matches, get_match, respond_to_match, submit_outcome. Use them directly.
Fallback: Shell helper. For agents without MCP support, use the bundled Python script:
python3 {baseDir}/scripts/openmandate.py <command> [args]
No pip dependencies. Stdlib only. Python 3.8+.
For developers: SDKs. Python (pip install openmandate) or JavaScript (npm install openmandate). See references/sdks.md.
check/add contacts → create mandate (want + offer) → answer follow-up questions → mandate goes active
→ OpenMandate keeps working on your behalf → match found → you get notified → review match
→ accept or decline → if both accept, contact info revealed → report outcome
Before creating a mandate, ensure the user has at least one verified contact. Use list contacts to check. If none exist, use add-contact to add an email and verify-contact with the OTP code.
One mandate = one match. The agent keeps looking until it finds the right one.
All tools are prefixed with openmandate_:
| Tool | Purpose |
|---|---|
| ------ | --------- |
openmandate_list_contacts | List verified contacts. Check before creating a mandate. |
openmandate_add_contact | Add an email contact. Sends a verification code (OTP). |
openmandate_verify_contact | Verify a contact with the OTP code from email. |
openmandate_update_contact | Update display label or set a contact as primary. |
openmandate_delete_contact | Permanently delete a contact. |
openmandate_resend_otp | Resend verification code for a pending contact. |
openmandate_create_mandate | Create a new mandate. Auto-selects primary verified contact. |
openmandate_get_mandate | Get mandate details by ID. |
openmandate_list_mandates | List open mandates (default). Pass status to filter (e.g. closed for history). |
openmandate_submit_answers | Submit answers to intake questions. Check response for more pending_questions. |
openmandate_close_mandate | Permanently close a mandate. |
openmandate_list_matches | List all matches. |
openmandate_get_match | Get match details — grade, strengths, concerns. Contact info after mutual accept. |
openmandate_respond_to_match | Accept or decline a match. Pass action: "accept" or "decline". |
openmandate_submit_outcome | Report how a confirmed match went. Pass outcome: "succeeded", "ongoing", or "failed". |
python3 {baseDir}/scripts/openmandate.py contacts # List contacts
python3 {baseDir}/scripts/openmandate.py add-contact user@example.com # Add email contact (sends OTP)
python3 {baseDir}/scripts/openmandate.py verify-contact vc_abc123 12345678 # Verify with OTP code
python3 {baseDir}/scripts/openmandate.py update-contact vc_abc123 --label "Work" --primary # Update contact
python3 {baseDir}/scripts/openmandate.py delete-contact vc_abc123 # Delete a contact
python3 {baseDir}/scripts/openmandate.py resend-otp vc_abc123 # Resend verification code
python3 {baseDir}/scripts/openmandate.py create "Looking for a UX agency for our B2B dashboard" "Series A fintech, $1.8M ARR, two frontend engineers ready"
want (what you're looking for) and offer (what you bring).Returns the mandate with status: "intake" and pending_questions.
python3 {baseDir}/scripts/openmandate.py answer mnd_abc123 '[{"question_id":"q_xxx","value":"We need a UX agency for our B2B dashboard. Budget $40-60K, 8 weeks."}]'
This is the critical loop. After each answer submission:
pending_questions in the responsestatus is "active" — intake is done, an agent starts working on your behalfQuestion types:
text: Write a substantive answer. Respect min_length in constraints. Give specifics.single_select: Pick one value from the options array. Use the option value field, not the label.multi_select: Comma-separated value strings from options, e.g. "option_a, option_b".Answer each question distinctly. "What are you looking for?" and "What do you bring to the table?" are different questions — give different answers.
python3 {baseDir}/scripts/openmandate.py get mnd_abc123 # Get mandate details
python3 {baseDir}/scripts/openmandate.py list # List all mandates
python3 {baseDir}/scripts/openmandate.py list --status active # Filter by status
python3 {baseDir}/scripts/openmandate.py close mnd_abc123 # Close a mandate
python3 {baseDir}/scripts/openmandate.py matches # List all matches
python3 {baseDir}/scripts/openmandate.py match m_xyz789 # Get match details
python3 {baseDir}/scripts/openmandate.py accept m_xyz789 # Accept a match
python3 {baseDir}/scripts/openmandate.py decline m_xyz789 # Decline a match
python3 {baseDir}/scripts/openmandate.py outcome m_xyz789 succeeded # Report match outcome
# 1. Add and verify a contact
python3 {baseDir}/scripts/openmandate.py add-contact alice@company.com
# → contact_id: vc_abc123, status: "pending", OTP sent to email
python3 {baseDir}/scripts/openmandate.py verify-contact vc_abc123 12345678
# → status: "verified"
# 2. Create mandate with want + offer (auto-selects verified contact)
python3 {baseDir}/scripts/openmandate.py create \
"We need a UX design agency for our B2B analytics dashboard. 120 enterprise customers, React frontend. Budget $40-60K, 8 weeks." \
"Series A fintech SaaS, $1.8M ARR. Two frontend engineers ready to implement."
# → mandate_id: mnd_abc123, pending_questions: [{id: "q_3", ...}]
# 3. Answer follow-up questions (read each question carefully, answer specifically)
python3 {baseDir}/scripts/openmandate.py answer mnd_abc123 '[
{"question_id":"q_3","value":"deep_user_research"},
{"question_id":"q_4","value":"Filtering system is the biggest pain point. Users need to slice across 12 dimensions."}
]'
# → status: "active", pending_questions: [] — intake done
# 4. Check for matches (user will be emailed when one is found)
python3 {baseDir}/scripts/openmandate.py matches
# 5. Review and respond
python3 {baseDir}/scripts/openmandate.py match m_xyz789
python3 {baseDir}/scripts/openmandate.py accept m_xyz789
# 6. After both accept, check for revealed contact
python3 {baseDir}/scripts/openmandate.py match m_xyz789
# → contact: {email: "bob@agency.com"}
# 7. Report how it went
python3 {baseDir}/scripts/openmandate.py outcome m_xyz789 succeeded
references/ directory.共 4 个版本