
Observability for AI agents, detecting and fixing production failures.

Signal history
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Product memo
Latitude gives AI developers a way to trace agent behavior in production, moving beyond basic logs. It automatically detects, clusters, and analyzes issues like hallucinations or incorrect tool calls. This approach helps teams generate evaluations directly from real failures, ensuring agent reliability before issues impact users.
For who
AI developers and teams building AI agents
Solves what
Detects and fixes AI agent failures before production
- Automatic issue detection
- Failure clustering
- Eval generation from failures
In their own words
Automatic issue detection for AI agents
Agents fail differently
Trace your agent in production. Latitude finds the failures and writes the evals
Commercial cues
Model
hybrid
Free tier
Yes
Trial
Available
Pricing Strategy
Latitude uses monthly subscription tiers tied to the listed plan limits.
- • Usage-based pricing scales with credit consumption, aligning costs directly to agent activity.
- • Custom Pro and Enterprise tiers serve teams with higher credit needs.
- • Free Starter tier lowers testing friction.
Operator context
Founded
Sep 2025
Platform
Web app
Audience
Developers
Public footprint
Tech stack
Builder Strategy
- Strategy Type
- Niche Specialist
- Stage
- Vc Growth
- Effort
- Small Team
About Latitude 2.0 Expand
Latitude provides specialized observability for AI developers building and deploying AI agents. It goes beyond traditional logging by focusing on automatic issue detection and failure analysis, addressing common problems like hallucinations or incorrect tool usage.
The platform helps teams generate evaluations directly from real production failures, ensuring agents perform reliably. This targeted approach positions Latitude as a critical tool for maintaining the health and performance of complex AI systems, offering a defined workflow for developers to refine their agents based on actual operational data.