Remove compliance Remove Reference Remove Traceability
article thumbnail

Different Types of Logs in a SaaS Application

Frontegg

You should keep the logs for as long as you would want quick access to them for matters of traceability. Personas & Use Cases — Developers, for traceability. Compliance – a. Compliance – a. Retention — Medium. Developer Logs are usually kept for 3 months and then either moved to cold storage or deleted.

article thumbnail

7 Ways to build Enterprise Readiness into your SaaS roadmap

CloudGeometry

Think about iconic logos for reference customers, certification to IT industry standards like HIPAA or SOC2, even an improved exit valuation. 3 Audit Logging and Compliance Enterprise customers view the ROI of your solution as more than a great set of features. Refer to the previous two sections on security and change management.

Insiders

Sign Up for our Newsletter

This site is protected by reCAPTCHA and the Google Privacy Policy and Terms of Service apply.

article thumbnail

Measurement: What SaaS platform builders need to know to prepare for growth, Part 3

CloudGeometry

DevOps has largely completed the evolution of systems monitoring from the datacenter/IT worldview to what is commonly referred to as observability. Using logging to track, compliance, traceability, resource utilization, and system behaviors are a core competence for application of log data.

article thumbnail

Top 8+ Best PLM Software (Free and Paid) In 2022

How To Buy Saas

PLMs can also be utilized for regulatory and quality assurance purposes by enabling traceability, which is necessary for a variety of industries. Arena makes it possible for everyone involved in the product lifecycle to collaborate, boosting visibility and traceability. Product efficiency has improved Reduced costs. Visit Website.

article thumbnail

A Technical Deep Dive Into Building AI Products for the Enterprise with Contextual AI’s CEO Douwe Kiela

SaaStr

Staleness and compliance — language models must be up-to-date, compliant with regulations, and able to be revised on the fly without having to retrain the entire thing every time. At Contextual AI, they refer to this architecture as Frankenstein’s monster, a cobbled-together embedding model, vector database, and language model.

AI Search 246