Feedly MCP for AI. Control your entire content research workflow.
Works with every AI agent you already use
…and any MCP-compatible client








How this MCP server connects to your AI agent
Feedly MCP lets you stop manually browsing news sites. Connect your Feedly account to any AI client and give your agent full control over how you track industry trends.
Your agent can manage every subscription, pull the full text of articles, organize content into tags, and mark everything as read—all through natural conversation.
What AI agents can do with Feedly Automation
Subscribe to feed
This tool lets your agent start following a brand new news source.
Get article details
It pulls the entire text and metadata for any specific article you mention.
Get feed metadata
The agent fetches general information about a particular news stream or feed.
You can programmatically add new sources or stop following old ones.
The agent retrieves the newest articles from any specific feed or category in real time.
It pulls complete text and all metadata for deep analysis by your AI client.
You can list, manage, or update the custom tags and organizational categories you use in Feedly.
The system automatically marks one or more selected articles as consumed, keeping your reading list clean.
Ask an AI about this
Waiting for input…
What AI agents can do with Feedly with 10 Tools
These tools let your agent perform specific actions in Feedly, from adding new sources to fetching full article content for deep analysis.
Make your AI actually useful.
Add this MCP to Claude, Cursor, or Windsurf and your AI stops guessing. It gets real tools to look things up, take action, and handle the stuff you keep doing by hand.
Start using Feedly on VinkiusSubscribe To Feed
This tool lets your agent start following a brand new news source.
Get Article Details
It pulls the entire text and metadata for any specific article you mention.
Get Feed Metadata
The agent fetches general information about a particular news stream or feed.
Get User Profile
You can retrieve basic details about your personal Feedly user account.
Get Stream Contents
This tool retrieves a list of recent articles from an entire news stream or category.
List Categories
The agent lists all the custom categories you have set up in Feedly.
List Subscriptions
You can get a list of every feed source you are currently following.
List Tags
This tool shows all the personal tags you've used to categorize your content.
Mark Articles As Read
It marks one or more specified articles as read, clearing them from your unread...
Unsubscribe From Feed
The agent stops following a specific news source you no longer care about.
Security and governance baked right in.
Pick your AI client below to get set up. Just create a Vinkius account, subscribe, and you're instantly up and running. We handle the entire backend infrastructure, delivering out-of-the-box support for HTTPS Streamable, SSE, and OAuth2—zero messy routing required.
Choose How to Get Started
Build a custom MCP for your own tools, or connect a ready-made integration from our catalog.
Build Your Own
Turn any API into an MCP. Import a spec, define Agent Skills, or deploy with MCPFusion.
- Import from OpenAPI, Swagger, or YAML specs
- Create Agent Skills with progressive disclosure
- Deploy to edge with MCPFusion framework
- Built in DLP, auth, and compliance on every call
- Real time usage dashboard and cost metering
- Publish to catalog or keep private
Make Your AI Do More
Start with Feedly, then connect any of our 5,100+ other servers whenever your AI needs more. One click, no limits.
- Use this MCP plus 5,100+ others, all in one place
- Add new capabilities to your AI anytime you want
- Every connection is secured and compliant automatically
- Track usage and costs across all your servers
- Works with Claude, ChatGPT, Cursor, and more
- New servers added to the catalog every week
Independent Platform Disclaimer: Vinkius is an independent platform and is not affiliated with, endorsed by, sponsored by, verified by, or otherwise authorized by Feedly. All third-party trademarks, logos, and brand names are the property of their respective owners. Their use on this website is strictly for informational purposes to identify service compatibility and interoperability.
VINKIUS INFRASTRUCTURE
Cloud Hosted
Managed infra
V8 Isolated
Sandboxed per request
Zero-Trust Proxy
No stored credentials
DLP Enforced
Policy on every call
GDPR Compliant
EU data residency
Token Compression
~60% cost reduction
Built on the Model Context Protocol (MCP) for Claude, ChatGPT, Cursor, and more
The Model Context Protocol standardizes how applications expose capabilities to LLMs. Instead of operating in isolation, your AI gains direct access to external platforms, live data, and real-world actions through secure, standardized connections.
This connection provides 10 powerful capabilities that interface natively with Claude, ChatGPT, Cursor, and other compatible AI platforms. No middleware. No custom integration required.
The pain of manual news consumption, Solved with Vinkius AI Gateway
Today, keeping up with industry trends means opening a dozen tabs. You navigate to five different sources, copy the key paragraphs, paste them into Notion, and then try to remember which source contained what data point. It's endless scrolling mixed with frustrating manual copy-pasting.
With this MCP, your agent handles it all. Instead of clicking through feeds, you simply ask for a summary of unread articles in 'AI & ML'. The system runs the necessary calls and gives you a clean list of content—no clicks required.
Feedly MCP: Content Curation Done Right
The manual steps that disappear are checking if an article is read, fetching the full text for review, and manually filing it under a category. You never have to worry about forgetting to manage your tags or realizing you followed a dead feed.
Your AI client treats content curation like another conversation. It's not a series of clicks; it's a command that executes complex actions behind the scenes.
What your AI can actually do with this
You don't have time to scroll endless news feeds. This MCP lets your AI client take over your entire content curation process. Instead of opening dozens of tabs and hoping you remember which article was important, your agent acts like a dedicated research assistant that lives inside your workflow. It gives you natural language control over every feed—you can ask it to list all sources or pull the full text from specific articles for deep analysis.
You can even manage your organization tags and mark entire reading lists as read with simple prompts. By connecting this MCP through Vinkius, you centralize your news aggregation; your AI becomes the single point of control for managing research boards and keeping up with what matters across every topic.
019dd0ef-1803-7071-b381-1949e3e41bf2 Here's how it actually works
The bottom line is that once connected, your AI client treats Feedly like another built-in app, responding to natural requests instead of requiring manual API calls.
First, subscribe to this MCP and retrieve your Developer Access Token from Feedly's integration settings.
Next, connect the token within any MCP-compatible client (like Cursor or Claude) so your agent can authenticate with the service.
Finally, tell your agent what you need—for example, 'Show me all unread articles in my Market News category,' and it executes the command.
Who is this actually for?
This MCP is for the professional who spends their day reading and synthesizing specialized information. It's for the Market Researcher tired of losing track of key data points across dozens of industry feeds, or the Content Strategist who needs to automate content cleanup and trend monitoring.
They use this MCP to instantly fetch full article contents for deep analysis when tracking multiple industries. They manage their research boards by asking the agent to list all subscribed feeds.
They monitor trending topics across specific feeds, using the capabilities to manage curation tags and ensure every new piece of content is correctly organized before it's published or summarized.
They automate their reading process by having the agent mark articles as read after they extract key metadata, keeping track of what needs review versus what was already processed.
What Changes When You Connect
Automate reading cleanup. Instead of manually marking articles as read, the agent runs mark_articles_as_read when you're done, keeping your unread count accurate and manageable.
Deep dive into sources. When a specific article catches your eye, use get_article_details to pull the complete text for summarization, avoiding the need to copy-paste content manually.
Maintain perfect structure. You can list all tags using list_tags or manage categories via list_categories, ensuring every piece of research is properly filed without manual effort.
Centralized monitoring. If you're tracking a major industry event, your agent checks the latest entries from multiple sources using get_stream_contents, giving you one comprehensive view.
See it in action
Quickly auditing research scope
A market researcher needs to know exactly what feeds are contributing to a project. They ask their agent, 'List all my sources for Q3 planning.' The agent runs list_subscriptions, immediately providing an inventory list so they don't have to navigate multiple screens.
Processing competitor news
A content strategist receives a batch of articles. They prompt the agent: 'Pull the full text and metadata for these 5 links.' The agent executes get_article_details on each, allowing them to run deep analysis without leaving their main workspace.
Clearing old reading lists
After a big review session, the editor asks the agent to mark all articles from 'Tech' as read. The agent runs mark_articles_as_read for that category, instantly clearing clutter and focusing attention on truly new content.
Onboarding a new topic
A professional needs to follow a niche industry blog. They instruct the agent: 'Follow this RSS feed and add it under my Finance category.' The agent runs subscribe_to_feed and handles the entire setup.
The honest tradeoffs
Manually tracking article status
Opening 20 different articles, reading them, and then having to remember which ones I reviewed versus which ones are still unread.
Instead of manual checks, ask the agent to run mark_articles_as_read on a specific category or stream. This clears the status in one go.
Losing article context
Copying an interesting paragraph from an article and then having trouble finding the original source or full metadata later.
Use get_article_details. This tool pulls all necessary content, ensuring you have the full text and rich metadata for analysis.
Over-subscribing to feeds
Accumulating dozens of feeder accounts over time, making it hard to know which sources are relevant or active.
Run list_subscriptions first. This gives you a clean inventory so you can decide exactly what to keep and what to discard using unsubscribe_from_feed.
When It Fits, When It Doesn't
Use this MCP if your workflow depends on managing, aggregating, or analyzing content from many disparate news sources—the core task is centralized consumption. You need the ability to programmatically list feeds (list_subscriptions), fetch complete article text (get_article_details), and manage organization structure (tags/categories). Don't use this if you just need a single, one-time data pull of a simple metric; for that, a dedicated API connector might be better. If your goal is purely to create new content from scratch without reference material, don't use it either—you’re looking for generation, not aggregation.
Questions you might have
How do I list all my Feedly categories using the Feedly MCP? +
You use the list_categories tool. This immediately returns a structured list of every category you have set up, letting your agent know exactly what organizational streams exist.
Can I pull full text from an article using Feedly MCP? +
Yes, the get_article_details tool fetches the complete body and metadata of any article. This is crucial when your agent needs to summarize or analyze content deeply.
Is Feedly MCP better than just using RSS feeds? +
Yes, because this MCP adds intelligence. It lets your agent interact with the feed—you can list sources (list_subscriptions) and manage them programmatically, which standard RSS readers can't do.
What happens when I use mark_articles_as_read? +
Running mark_articles_as_read updates your reading status across Feedly. Your agent handles the necessary API calls to ensure those articles are marked as consumed.
Can my AI client subscribe to a new feed with Feedly MCP? +
Absolutely. You can use subscribe_to_feed to add any new news source directly through your agent, keeping your research pipeline current.
We've already built the connector for Feedly. Just plug in your AI agents and start using Vinkius.
No hosting. No infrastructure. No complex setup.
All 10 tools are live and waiting.
You're up and running in seconds.
Vinkius gives your AI agents access to the full catalog of app connectors, all fully managed, secure, and enterprise-ready. One subscription, every tool you need.
Built, hosted, and secured by Vinkius. You just connect and go.