Skip to main content

Tools to benchmark, deploy and monitor prediction market agents.

Project description

Prediction Market Agent Tooling

Tooling for benchmarking, deploying and monitoring agents for prediction market applications.

Setup

Install the project dependencies with poetry, using Python >=3.10:

python3.10 -m pip install poetry
python3.10 -m poetry install
python3.10 -m poetry shell

Create a .env file in the root of the repo with the following variables:

Deploying and monitoring agents using GCP requires that you set up the gcloud CLI (see here for installation instructions, and use gcloud auth login to authorize.)

MANIFOLD_API_KEY=...
BET_FROM_PRIVATE_KEY=...
OPENAI_API_KEY=...

Benchmarking

Create a benchmarkable agent by subclassing the AbstractBenchmarkedAgent base class, and plug in your agent's research and prediction functions into the predict method.

Use the Benchmarker class to compare your agent's predictions vs. the 'wisdom of the crowd' on a set of markets from your chosen prediction market platform.

For example:

import prediction_market_agent_tooling.benchmark.benchmark as bm
from prediction_market_agent_tooling.benchmark.agents import RandomAgent
from prediction_market_agent_tooling.markets.markets import MarketType, get_binary_markets

benchmarker = bm.Benchmarker(
    markets=get_binary_markets(limit=10, market_type=MarketType.MANIFOLD),
    agents=[RandomAgent(agent_name="a_random_agent")],
)
benchmarker.run_agents()
md = benchmarker.generate_markdown_report()

This produces a markdown report that you can use for comparing agents side-by-side, like:

Benchmark results

Deploying

Deprecated: We suggest using your own infrastructure to deploy, but you may still find this useful.

Create a deployable agent by subclassing the DeployableTraderAgent base class, and implementing the answer_binary_market method.

For example, deploy an agent that randomly picks an outcome:

import random
from prediction_market_agent_tooling.deploy.agent import DeployableTraderAgent
from prediction_market_agent_tooling.markets.agent_market import AgentMarket

class DeployableCoinFlipAgent(DeployableTraderAgent):
    def answer_binary_market(self, market: AgentMarket) -> bool | None:
        return random.choice([True, False])

DeployableCoinFlipAgent().deploy_gcp(...)

Safe

Agents can control funds via a wallet primary key only, or optionally via a Safe as well. For deploying a Safe manually for a given agent, run the script below:

poetry run python scripts/create_safe_for_agent.py  --from-private-key <YOUR_AGENT_PRIVATE_KEY> --salt-nonce 42

This will output the newly created Safe in the terminal, and it can then be copied over to the deployment part (e.g. Terraform). Note that salt_nonce can be passed so that the created safe is deterministically created for each agent, so that, if the same salt_nonce is used, the script will not create a new Safe for the agent, instead it will output the previously existent Safe.

You can then specify this agent's Safe address with the SAFE_ADDRESS environment variable.

Monitoring

Monitor the performance of the agents deployed to GCP, as well as meta-metrics of the prediction market platforms they are deployed to.

This runs as a streamlit app on a localhost server, executed with:

PYTHONPATH=. streamlit run examples/monitor/monitor.py

Which launches in the browser:

Monitoring

The Market Platforms

The following prediction market platforms are supported:

Platform Benchmarking Deployment Monitoring
Manifold
AIOmen
Polymarket

Prediction Markets Python API

We have built clean abstractions for taking actions on the different prediction market platforms (retrieving markets, buying and selling tokens, etc.). This is currently undocumented, but for now, inspecting the AgentMarket class and its methods is your best bet.

For example:

from prediction_market_agent_tooling.config import APIKeys
from prediction_market_agent_tooling.markets.agent_market import SortBy
from prediction_market_agent_tooling.markets.omen.omen import OmenAgentMarket

# Place a bet on the market closing soonest
market = OmenAgentMarket.get_binary_markets(limit=1, sort_by=SortBy.CLOSING_SOONEST)[0]
market.place_bet(outcome=True, amount=market.get_bet_amount(0.1))

# View your positions
my_positions = OmenAgentMarket.get_positions(user_id=APIKeys().bet_from_address)
print(my_positions)

# Sell position (accounting for fees)
market.sell_tokens(outcome=True, amount=market.get_bet_amount(0.095))

This API can be built on top of to create your application. See here for an example.

Contributing

See the Issues for ideas of things that need fixing or implementing. The team is also receptive to new issues and PRs.

We use mypy for static type checking, and isort, black and autoflake for linting, and pre-commit to minimise unwanted pushes to the public repositories. These all run as steps in CI, but pre-commit also needs to be installed locally using the provided install_hooks.sh script.

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

prediction_market_agent_tooling-0.61.1.dev485.tar.gz (147.3 kB view details)

Uploaded Source

Built Distribution

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

File details

Details for the file prediction_market_agent_tooling-0.61.1.dev485.tar.gz.

File metadata

File hashes

Hashes for prediction_market_agent_tooling-0.61.1.dev485.tar.gz
Algorithm Hash digest
SHA256 a12abc4feeefa5a862c367dfb9bf576344e1eb89005da72e57707be227d74045
MD5 63086695faade92f42dd7b547c4d20d3
BLAKE2b-256 dea5e02dfda20178542c730d8752a85fe0a2c1b676ccc48083377ac2e48f404a

See more details on using hashes here.

File details

Details for the file prediction_market_agent_tooling-0.61.1.dev485-py3-none-any.whl.

File metadata

File hashes

Hashes for prediction_market_agent_tooling-0.61.1.dev485-py3-none-any.whl
Algorithm Hash digest
SHA256 701bab270a6290b5f83664eda859e0a35a791712da5387503e31281e6bb19a1a
MD5 4d460b1c63e68f3afd0315a360522262
BLAKE2b-256 e47f9b0626cc672003637ce3485f443810790afed8a5754c2d36bc1f125291a8

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