DEV Community

chatgptnexus
chatgptnexus

Posted on

AI-Powered Daily News Curation with ChatGPT Tasks | Effortless Knowledge Management

Smart News Curation on Autopilot

Build a self-updating knowledge feed without automation tools. ChatGPT Tasks handles execution - you focus on insights.


Core Workflow Architecture

1. Intelligence Blueprint

[Task Name: Global Tech Pulse]
Trigger: Daily 7 AM EST
Execution Protocol:
1. Search "AI breakthroughs" + "peer-reviewed" + site:.edu/.gov (past 18h)
2. Curate 5 top stories from: Nature, IEEE Spectrum, VentureBeat
3. Structure each entry with:
   - Impact-driven headline
   - Technical summary (under 100 words)
   - Source verification markers
   - Actionable implication analysis
Enter fullscreen mode Exit fullscreen mode

2. Cognitive Enhancement Layer

For each story:
1. Generate headline using Fogg Behavior Model principles
   Example: "MIT's New Chip Design Cuts AI Energy Use 60% - How This Lowers Your Cloud Costs"

2. Create three-section analysis:
   [Disruption Index] 1-10 scale measuring field impact
   [Timeline] Adoption phases: Lab → Industry → Consumer
   [Personal Leverage] Practical ways to benefit
Enter fullscreen mode Exit fullscreen mode

Sample Output Structure

Story 01: Photonic Computing Breakthrough

Headline: Light-Based Neural Networks Achieve 240% Speed Boost in Climate Modeling

Technical Summary:

UC Berkeley researchers demonstrate photonic tensor cores performing climate simulations 2.4x faster than NVIDIA A100 GPUs, using 83% less energy. Validation through NOAA partnership.

Sources: nature.com/photonic-climate | berkeley.edu/light-compute

Strategic Analysis:

  • Disruption Index: 8.7/10 (Semiconductor Industry)
  • Timeline: Lab prototypes (2024) → Cloud providers (2027) → Laptop chips (2030+)
  • Personal Leverage:
    1. Upskill in photonic circuit design
    2. Monitor cloud pricing trends
    3. Invest in hybrid computing ETFs

Quality Control Systems

A. Source Validation Protocol

For each collected story:
1. Check author credentials against IEEE/ACM databases
2. Verify institutional funding sources
3. Cross-reference experimental data with 2 preprint papers
4. Flag conflicts of interest with 🔍
Enter fullscreen mode Exit fullscreen mode

B. Cognitive Load Optimization

Before final output:
1. Convert technical jargon to Flesch-Kincaid Grade 8 equivalents
2. Insert 3 interactive elements per report:
   - Prediction market: "Bet on adoption timeline"
   - Skill adjacency matrix: "Your existing skills → New opportunities"
   - Risk calculator: "Job impact probability"
Enter fullscreen mode Exit fullscreen mode

Advanced Personalization

1. Adaptive Relevance Engine

When user engages with "quantum computing" content:
1. Activate sub-task: Track 3 quantum startups' funding rounds
2. Generate comparison matrix: D-Wave vs IBM vs Rigetti
3. Insert career transition roadmap
Enter fullscreen mode Exit fullscreen mode

2. Ethical Filter Layer

For military/controversial applications:
1. Apply Asilomar AI Principles checklist
2. Include dual-perspective analysis
3. Add resource section: "Ethical AI Organizations to Support"
Enter fullscreen mode Exit fullscreen mode

Image of Timescale

🚀 pgai Vectorizer: SQLAlchemy and LiteLLM Make Vector Search Simple

We built pgai Vectorizer to simplify embedding management for AI applications—without needing a separate database or complex infrastructure. Since launch, developers have created over 3,000 vectorizers on Timescale Cloud, with many more self-hosted.

Read full post →

Top comments (0)

Image of Docusign

🛠️ Bring your solution into Docusign. Reach over 1.6M customers.

Docusign is now extensible. Overcome challenges with disconnected products and inaccessible data by bringing your solutions into Docusign and publishing to 1.6M customers in the App Center.

Learn more