Latest Updates

Documenting code, one commit at a time.

JavaScript LinkedIn

Refactoring LinkedIn Share Post Generation for a Personal Touch

This post details a small but important change in how we generate content for sharing on LinkedIn, focusing on aligning the tone with the platform's user experience.

The Goal

The primary goal was to shift the voice of automatically generated LinkedIn share posts to a first-person perspective. Since the posts are published from the user's profile, using "I" instead of third-person references

Read more
JavaScript Python

Streamlining Content Generation with LinkedIn Prompts in Devlog-ist/landing

This post details the recent enhancements to the content generation process within the devlog-ist/landing project, focusing on the integration and management of LinkedIn prompts for improved content quality and platform-specific tailoring.

The Goal

The primary objective was to enhance the content generation workflow by incorporating LinkedIn-specific prompts, allowing for more targeted and

Read more
JavaScript React

Restoring Diagram Visibility in devlog-ist/landing

When working on web applications, ensuring that all components render correctly across different environments is crucial. In the devlog-ist/landing project, a recent commit focused on restoring the visibility of a diagram section within the PostResource component. This seemingly small change can have a significant impact on the user experience, ensuring that visual elements are displayed as

Read more

Enhancing User Engagement: Implementing LinkedIn Share for Landing Pages

Introduction

We recently added a "Share on LinkedIn" feature to our landing page project, devlog-ist/landing. The goal was to increase user engagement and expand the reach of user portfolios by enabling seamless sharing on LinkedIn. This post details the implementation process, covering AI-powered post generation, direct publishing via the LinkedIn API, and considerations for different user

Read more

Enhancing Technology Detection in Post Generation

Improving the accuracy and scope of technology detection is crucial for generating relevant and informative content. A recent update introduces rule-based technology detection, significantly expanding our ability to identify the technologies involved in code changes. This enhancement allows for more precise tagging and categorization of blog posts, benefiting both content creators and readers.

Read more

Enhancing AI Auditability Through Structured Summaries

Improving the auditability of AI interactions is crucial for maintaining security and control. A recent update focuses on preventing the exposure of raw code to AI models, enhancing data security, and providing better insights into flagged code changes.

The Challenge of Raw Diffs

Previously, raw git diffs were sent to AI models for analysis. This approach, while providing detailed context,

Read more
Python JavaScript

Adding a Safe Mode and Improving Code Generation

This post discusses recent improvements to our application, focusing on enhanced security measures and smarter code generation capabilities.

Safe Mode Implementation

We've introduced a 'safe mode' feature, giving tenants more control over security audits during post generation. By default, safe mode is enabled, ensuring all generated content undergoes a thorough security check.

Read more

Enhancing AI Auditability: From Raw Diffs to Structured Summaries

Improving the way we audit code changes is crucial for maintaining security and stability in our applications. Recently, we transitioned from feeding raw Git diffs directly to our AI analysis tools to using structured summaries. This shift significantly enhances auditability and reduces the risk of exposing sensitive information.

The Problem with Raw Diffs

Sending raw diffs to AI models

Read more
Python

Mitigating False Positives in Security Audits for Code Examples

Introduction

Security audits are crucial for maintaining the integrity of applications. However, overly sensitive rules can lead to false positives, particularly when dealing with illustrative code examples. This post discusses how to refine audit rules to distinguish between genuine security vulnerabilities and intentionally simplified or educational code snippets.

The Challenge:

Read more