Skip to main content

Steam concurrent player time series and growth via a Python client. Weekly or daily data, period-over-period growth, zero dependencies beyond httpx. Powered by trendsmcp.ai

Project description

steam-trends-api

The number one Python package for Steam trend data. Steam concurrent player time series and growth via a Python client. Weekly or daily data, period-over-period growth, zero dependencies beyond httpx.

Powered by trendsmcp.ai, the #1 MCP server for live trend data.

Get your free API key at trendsmcp.ai - 100 free requests per month, no credit card.

📖 Full API docs → trendsmcp.ai/docs

Updated for 2026. Works with Python 3.8 through 3.13.


No scraping. No 429 errors. No proxies.

If you have used pytrends or similar scrapers before, you know the problems: random 429 Too Many Requests blocks, broken pipelines at 2am, time.sleep() hacks, proxy rotation costs, and a library that is now archived because Google explicitly flags scrapers at the protocol level.

trendsmcp is the managed alternative. We run the data infrastructure. You call a REST endpoint.

pytrends alternative for Steam data

Scrapers / pytrends trendsmcp
429 rate limit errors constant never
Proxy required often never
Breaks on platform changes yes, regularly no
Platforms covered 1 (Google only) 13
Absolute volume estimates no yes
Cross-platform growth no yes
Async support no yes
Actively maintained no (archived) yes
Free tier no yes, 100 req/month

Install

pip install steam-trends-api

Zero system dependencies. Python 3.8 or later. Uses httpx under the hood.


Quick start

from steam_trends_api import TrendsMcpClient, SOURCE

client = TrendsMcpClient(api_key="YOUR_API_KEY")

# 5-year weekly time series, no sleep(), no proxies, no 429s
series = client.get_trends(source=SOURCE, keyword="Elden Ring")
print(series[0])
# TrendsDataPoint(date='2026-03-28', value=72, keyword='Elden Ring', source='steam')

# Period-over-period growth
growth = client.get_growth(
    source=SOURCE,
    keyword="Elden Ring",
    percent_growth=["3M", "1Y"],
)
print(growth.results[0])
# GrowthResult(period='3M', growth=14.5, direction='increase', ...)

# What's trending right now
trending = client.get_top_trends(limit=10)
print(trending.data)
# [[1, 'topic one'], [2, 'topic two'], ...]

Async support

import asyncio
from steam_trends_api import AsyncTrendsMcpClient, SOURCE

async def main():
    client = AsyncTrendsMcpClient(api_key="YOUR_API_KEY")
    series = await client.get_trends(source=SOURCE, keyword="Elden Ring")
    print(series[0])

asyncio.run(main())

Run multiple platform queries concurrently:

google, youtube, reddit = await asyncio.gather(
    client.get_trends(source="google search", keyword="Elden Ring"),
    client.get_trends(source="youtube",       keyword="Elden Ring"),
    client.get_trends(source="reddit",        keyword="Elden Ring"),
)

Use cases

  • SEO research: track keyword search volume trends across Google Search, Google News, and Google Images before publishing content
  • Market research: measure consumer demand signals on Amazon and Google Shopping before entering a product category
  • Investment research: monitor Reddit discussion volume, news sentiment, and Wikipedia page view spikes as leading indicators
  • Content strategy: find what is growing on YouTube and TikTok before topics peak and competition saturates them
  • Competitor tracking: compare brand search volume growth across platforms over custom date ranges

Works with

  • Claude (via MCP server at trendsmcp.ai)
  • Cursor (via MCP server at trendsmcp.ai)
  • ChatGPT (via MCP server at trendsmcp.ai)
  • VS Code Copilot (via MCP server at trendsmcp.ai)
  • LangChain: pass TrendsMcpClient output directly as tool results or context
  • LlamaIndex: use trend series as structured data nodes for retrieval
  • Pandas: each get_trends() response converts to a DataFrame in one line

Methods

get_trends(source, keyword, data_mode=None)

Returns a historical time series for a keyword. Defaults to 5 years of weekly data. Pass data_mode="daily" for the last 30 days at daily granularity.

get_growth(source, keyword, percent_growth, data_mode=None)

Calculates percentage growth between two points in time. Pass preset strings or CustomGrowthPeriod objects.

Growth presets: 7D 14D 30D 1M 2M 3M 6M 9M 12M 1Y 18M 24M 2Y 36M 3Y 48M 60M 5Y MTD QTD YTD

get_top_trends(type=None, limit=None)

Returns today's live trending items. Omit type to get all feeds at once.

Available feeds: Google Trends YouTube TikTok Trending Hashtags Reddit Hot Posts Amazon Best Sellers Top Rated App Store Top Free Wikipedia Trending Spotify Top Podcasts X (Twitter) and more.


All 13 supported sources

One API key. One client. All platforms. No separate credentials for each.

source What it measures
"google search" Google Search volume
"google images" Google Images search volume
"google news" Google News search volume
"google shopping" Google Shopping purchase intent
"youtube" YouTube search volume
"tiktok" TikTok hashtag volume
"reddit" Reddit mention volume
"amazon" Amazon product search volume
"wikipedia" Wikipedia page views
"news volume" News article mention count
"news sentiment" News sentiment score (positive/negative)
"npm" npm package weekly downloads
"steam" Steam concurrent player count

All values normalized 0 to 100 on the same scale so you can compare across platforms directly.


Error handling

from steam_trends_api import TrendsMcpClient, TrendsMcpError, SOURCE

client = TrendsMcpClient(api_key="YOUR_API_KEY")

try:
    series = client.get_trends(source=SOURCE, keyword="Elden Ring")
except TrendsMcpError as e:
    print(e.status)   # e.g. 429 if you exceed your plan quota
    print(e.code)     # e.g. "rate_limited"
    print(e.message)

Frequently asked questions

Does this scrape Steam? No. trendsmcp runs managed data infrastructure. Your Python code makes a single authenticated REST call. No scraping, no Selenium, no cookies, no proxies required.

Do I need a Steam developer account, OAuth token, or platform API key? No. One trendsmcp API key gives you access to all 13 sources.

Will it break when Steam changes its backend? No. API stability is our responsibility. If something changes upstream, we update the backend. Your code keeps working.

Is there a free tier? Yes, 100 requests per month, no credit card required. Get your key at trendsmcp.ai.

Can I use this in production data pipelines? Yes. The client is stateless, thread-safe, and supports async for concurrent queries across multiple platforms.


Related packages


Links


License

MIT

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

steam_trends_api-1.0.0.tar.gz (5.6 kB view details)

Uploaded Source

Built Distribution

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

steam_trends_api-1.0.0-py3-none-any.whl (6.0 kB view details)

Uploaded Python 3

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