Traditional bot tools weren't built for knowledge platforms. Bot Filter is.
A short walkthrough of what Bot Filter does, how it works, and why it matters for knowledge platforms.
Generic bot detection wasn't designed for the nuanced traffic patterns of libraries, publishers, and content platforms.
Overzealous tools block legitimate crawlers โ search engines, accessibility tools, academic aggregators โ damaging discoverability and partnerships.
Sophisticated bots now mimic human behaviour, rendering signature-based detection increasingly unreliable against modern threats.
Bot traffic inflates usage reports, distorts analytics, and undermines the metrics that knowledge platforms rely on to demonstrate value.
Generic bot tools are built for corporate IT teams, not for the specific traffic patterns and usage reporting needs of knowledge platforms.
Traditional detection methods rely on CAPTCHA-style challenges that build in delays, frustrate legitimate users, and push them away from your platform.
Bot traffic forces expensive emergency scaling and drives up server costs, while real users suffer slow or unavailable access during spikes.
Bot Filter uses machine learning to cluster and classify bot behaviour specific to knowledge platform traffic โ detecting threats without disrupting legitimate access.
Analyses request patterns, timing, and session behaviour rather than relying on static signatures that attackers can easily spoof.
ML models cluster bot behaviours to distinguish malicious intent โ DDoS-style attacks, vulnerability scanning, spoofed user agents โ from benign activity.
A curated, maintained list of verified legitimate bot user agents and IP addresses ensures search engines, AI agents, and trusted crawlers are correctly identified and allowed through.
Rich bot metadata is surfaced to your platform, enabling differential treatment of traffic โ excluding unwanted bots from usage reports or including AI agent activity that represents real usage.
Nearly half of bot traffic is legitimate. Bot Filter is the only solution designed specifically for knowledge platforms.
Purpose-built for the specific needs of knowledge platforms and their stakeholders.
Exclude unwanted bots that inflate open access stats, and track the agentic AI bots crawling your content on behalf of users โ activity that matters for subscription-based platforms but is invisible to traditional tools.
Defend against DDoS-style attacks, vulnerability scans, and malicious scraping without disrupting real users.
Continuously improving models that adapt to new bot behaviours rather than relying on static rule sets.
Use granular metadata to make active decisions โ grant enhanced access to strategic bots, throttle low-value ones, or include AI agent activity in usage reports, based on each bot's intent and value to your platform.
Designed specifically for libraries, publishers, and knowledge platforms โ not retrofitted from generic tools.
Traditional bot tools are aimed at devops engineers. Bot Filter is designed for platform managers โ anyone can configure and manage bot access without technical expertise.