Skip to main content

The official Python SDK for Macrocosmos

Project description

Macrocosmos Python SDK

The offical Python SDK for Macrocosmos.

Installation

Using pip

pip install macrocosmos

Using uv

uv add macrocosmos

Usage

For a comprehensive overview of available functionality and integration patterns, refer to the Macrocosmos SDK guide.

Apex

Apex is a decentralized agentic inference engine powered by Subnet 1 on the Bittensor network. You can read more about this subnet on the Macrocosmos Apex page.

Use the synchronous ApexClient or asynchronous AsyncApexClient for inferencing tasks. See the examples for additional features and functionality.

Chat Completions

import macrocosmos as mc

client = mc.ApexClient(api_key="<your-api-key>")
response = client.chat.completions.create(
    messages=[{"role": "user", "content": "Write a short story about a cosmonaut learning to paint."}],
)

print(response)

Web Search

import macrocosmos as mc

client = mc.ApexClient(api_key="<your-api-key>")
response = client.web_search.search(
    search_query="What is Bittensor?",
    max_results_per_miner=3,
    max_response_time=20,
)

print(response)

Deep Researcher

Submit a deep researcher job

import macrocosmos as mc

client = mc.AsyncApexClient(api_key="<your-api-key>")
submitted_response = await client.deep_research.create_job(
        messages=[
            {
                "role": "user",
                "content": """Can you propose a mechanism by which a decentralized network 
                of AI agents could achieve provable alignment on abstract ethical principles 
                without relying on human-defined ontologies or centralized arbitration?""",
            }
        ]
    )

print(submitted_response)

Retrieve the results of a deep researcher job

import macrocosmos as mc

client = mc.AsyncApexClient(api_key="<your-api-key>")
polled_response = await client.deep_research.get_job_results(job_id="<your-job-id>")

print(polled_response)

SN13 OnDemandAPI

SN13 is focused on large-scale data collection. With the OnDemandAPI, you can run precise, real-time queries against platforms like X (Twitter) and Reddit (YouTube forthcoming).

Use the synchronous Sn13Client to query historical or current data based on users, keywords, and time range.

Query Example

import macrocosmos as mc

client = mc.Sn13Client(api_key="<your-api-key>")

response = client.sn13.OnDemandData(
    source='X',  # or 'Reddit'
    usernames=["@nasa"],  # Optional, up to 5 users
    keywords=["galaxy"],  # Optional, up to 5 keywords
    start_date='2025-04-15',  # Defaults to 24h range if not specified
    end_date='2025-05-15',  # Defaults to current time if not specified
    limit=1000  # Optional, up to 1000 results
)

print(response)

Gravity

Gravity is a decentralized data collection platform powered by Subnet 13 (Data Universe) on the Bittensor network. You can read more about this subnet on the Macrocosmos Data Universe page.

Use the synchronous GravityClient or asynchronous AsyncGravityClient for creating and monitoring data collection tasks. See the examples/gravity_workflow_example.py for a complete working example of a data collection CLI you can use for your next big project or to plug right into your favorite data product.

Creating a Gravity Task for Data Collection

Gravity tasks will immediately be registered on the network for miners to start working on your job. The job will stay registered for 7 days. After which, it will automatically generate a dataset of the data that was collected and an email will be sent to the email address you specify.

import macrocosmos as mc

client = mc.GravityClient(api_key="<your-api-key>")

gravity_tasks = [
    {"topic": "#ai", "platform": "x"},
    {"topic": "r/MachineLearning", "platform": "reddit"},
]

notification = {
    "type": "email",
    "address": "<your-email-address>",
    "redirect_url": "https://app.macrocosmos.ai/",
}

response =  client.gravity.CreateGravityTask(
    gravity_tasks=gravity_tasks, name="My First Gravity Task", notification_requests=[notification]
)

# Print the gravity task ID
print(response)

Get the status of a Gravity Task and its Crawlers

If you wish to get further information about the crawlers, you can use the include_crawlers flag or make separate GetCrawler() calls since returning in bulk can be slow.

import macrocosmos as mc

client = mc.GravityClient(api_key="<your-api-key>")

response = client.gravity.GetGravityTasks(gravity_task_id="<your-gravity-task-id>", include_crawlers=False)

# Print the details about the gravity task and crawler IDs
print(response)

Build Dataset

If you do not want to wait 7-days for your data, you can request it earlier. Add a notification to get notified when the build is complete or you can monitor the status by calling GetDataset(). Once the dataset is built, the gravity task will be de-registered. Calling CancelDataset() will cancel a build in-progress or, if it's already complete, will purge the created dataset.

import macrocosmos as mc

client = mc.GravityClient(api_key="<your-api-key>")

notification = {
    "type": "email",
    "address": "<your-email-address>",
    "redirect_url": "https://app.macrocosmos.ai/",
}

response = client.gravity.BuildDataset(
    crawler_id="<your-crawler-id>", notification_requests=[notification]
)

# Print the dataset ID
print(response)

Project details


Download files

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

Source Distribution

macrocosmos-1.0.5.tar.gz (133.1 kB view details)

Uploaded Source

Built Distribution

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

macrocosmos-1.0.5-py3-none-any.whl (54.6 kB view details)

Uploaded Python 3

File details

Details for the file macrocosmos-1.0.5.tar.gz.

File metadata

  • Download URL: macrocosmos-1.0.5.tar.gz
  • Upload date:
  • Size: 133.1 kB
  • Tags: Source
  • Uploaded using Trusted Publishing? No
  • Uploaded via: uv/0.6.10

File hashes

Hashes for macrocosmos-1.0.5.tar.gz
Algorithm Hash digest
SHA256 09259d8e908134a65611bd44e3b09e9b14e5c6b06f34fcd1d0c08f22fa783f0b
MD5 9df663073537f62e8dbfc38cdf804d89
BLAKE2b-256 9dd3f79b98e397c45abc029f3d4b519d8412187172edd44755fc1d08242a4ffb

See more details on using hashes here.

File details

Details for the file macrocosmos-1.0.5-py3-none-any.whl.

File metadata

File hashes

Hashes for macrocosmos-1.0.5-py3-none-any.whl
Algorithm Hash digest
SHA256 ca72fb024c190c09eb446a99f279c214a044b5720cb60de4b4474dd05b4473e5
MD5 8bead04ee0600a5b0e75bd5e772244d2
BLAKE2b-256 dad79a31ce58bed14917fa21a26a5e54a96528aae3cf8568e815489e3a74792e

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