一键导入
create-agent-list
Create AgentLists from web searches, descriptions, local files, or programmatic generation
用 Codex 或 Claude 帮你安装 复制这段 Prompt,粘贴到 Codex、Claude 或其他助手里,让它检查 Skill 页面并帮你完成安装。
菜单
Create AgentLists from web searches, descriptions, local files, or programmatic generation
用 Codex 或 Claude 帮你安装 复制这段 Prompt,粘贴到 Codex、Claude 或其他助手里,让它检查 Skill 页面并帮你完成安装。
基于 SOC 职业分类
Generate a qualitative interview guide as an EDSL Survey with QuestionInterview, based on Geiecke & Jaravel (2026) methodology
Publish a completed study to GitHub - creates a repo with the analysis report as README.md, all charts, data, and a reproducibility footer linking to Expected Parrot
Generate a comprehensive, self-contained analysis report for a conjoint (choice-based) study with executive summary, methodology, part-worth utilities, segment analysis, and limitations
Design, execute, and analyze conjoint analysis studies - guides through attribute/level definition, experimental design, EDSL survey generation, and part-worth utility estimation
Quality standards and guidelines for generating analysis reports across all report-producing skills
Write a detailed referee report for an academic paper in economics or a related discipline
| name | create-agent-list |
| description | Create AgentLists from web searches, descriptions, local files, or programmatic generation |
| allowed-tools | Read, Glob, Bash(python:*), WebSearch, WebFetch, AskUserQuestion |
| user-invocable | true |
| arguments | agent_list_description |
Agents can be generated from descriptions or external sources:
# Example: Generate agents from web search results
# 1. Search for data (e.g., sports roster, company employees, historical figures)
# 2. Extract relevant traits
# 3. Build AgentList programmatically
from edsl import Agent, AgentList
# Generated from research/web data
agents = AgentList([
Agent(name="Person A", traits={"role": "CEO", "age": 45, "company": "Acme"}),
Agent(name="Person B", traits={"role": "CTO", "age": 38, "company": "Acme"}),
])
from edsl import Agent, AgentList
# Create agents individually
agent1 = Agent(traits={"age": 25, "occupation": "teacher"})
agent2 = Agent(traits={"age": 35, "occupation": "doctor"})
# Combine into AgentList
agents = AgentList([agent1, agent2])
Agents can take a separate name parameter e.g.,
a = Agent(name = 'John', traits={"age": 25, "occupation": "teacher"})
The from_source() method auto-detects the source type:
from edsl import AgentList
# From CSV file
agents = AgentList.from_source("people.csv")
# From Excel file
agents = AgentList.from_source("data.xlsx", sheet_name="Participants")
# From dictionary
agents = AgentList.from_source({
"age": [25, 30, 35],
"name": ["Alice", "Bob", "Charlie"],
"occupation": ["teacher", "doctor", "engineer"]
})
# From pandas DataFrame
import pandas as pd
df = pd.DataFrame({"age": [25, 30], "city": ["NYC", "LA"]})
agents = AgentList.from_source(df)
# Apply instructions to all agents at creation time
agents = AgentList.from_source(
"people.csv",
instructions="Answer as if you were this person",
codebook={"age": "Age in years", "income": "Annual income in USD"},
name_field="respondent_name" # Use this column as agent names
)
# Or load codebook from a CSV file (2 columns: key, description)
agents = AgentList.from_source(
"people.csv",
codebook="codebook.csv"
)
from edsl import Agent, AgentList
from itertools import product
# Create agents for all combinations
ages = [25, 35, 45]
occupations = ["teacher", "doctor", "engineer"]
agents = AgentList([
Agent(traits={"age": age, "occupation": occ})
for age, occ in product(ages, occupations)
])
# Creates 9 agents (3 ages × 3 occupations)
| Source | Example |
|---|---|
| List of Agents | AgentList([agent1, agent2]) |
| CSV file | AgentList.from_source("file.csv") |
| Excel file | AgentList.from_source("file.xlsx", sheet_name="Sheet1") |
| Dictionary | AgentList.from_source({"col": [1, 2, 3]}) |
| DataFrame | AgentList.from_source(df) |
You will create a Python file with a descriptive name e.g., 'occupation_agent_list.py' Whatever the name of your agent list, you will also save it as local JSON file:
agent.save('occupation_agent_list')
Ask the user if they want to push that agent list to coop (Expected Parrot's servers).
Use AskUserQuestion to ask the user:
If they answer 'Yes' ask them for the visibility setting with AskUserQuestion:
Only proceed after receiving a response.
The description should be a short paragraph you write. The alias should be a valid URL slug e.g., 'exit-interview'
agent_list.push(
visibility = "unlisted",
description = "<paragraph description of the survey>",
alias = "<valid url slug>"
)
After pushing, you should print the results so the user can see them. If there is any error in pushing from your parameters, update the names.