• About Us
  • Contact Us
  • Terms & Conditions
  • Privacy Policy
Technology Hive
  • Home
  • Technology
  • Artificial Intelligence (AI)
  • Cyber Security
  • Machine Learning
  • More
    • Deep Learning
    • AI in Healthcare
    • AI Regulations & Policies
    • Business
    • Cloud Computing
    • Ethics & Society
No Result
View All Result
  • Home
  • Technology
  • Artificial Intelligence (AI)
  • Cyber Security
  • Machine Learning
  • More
    • Deep Learning
    • AI in Healthcare
    • AI Regulations & Policies
    • Business
    • Cloud Computing
    • Ethics & Society
No Result
View All Result
Technology Hive
No Result
View All Result
Home Technology

Bridging Semantic Gaps with AI-Powered BigQuery Solutions

Linda Torries – Tech Writer & Digital Trends Analyst by Linda Torries – Tech Writer & Digital Trends Analyst
September 30, 2025
in Technology
0
Bridging Semantic Gaps with AI-Powered BigQuery Solutions
0
SHARES
0
VIEWS
Share on FacebookShare on Twitter

Introduction to KonveyN2AI

Have you ever been stuck trying to understand a system where the documentation is incomplete, inconsistent, or missing altogether? Whether it’s legacy COBOL code, Kubernetes manifests, MUMPS procedures, or IRS data layouts, knowledge gaps can grind productivity to a halt. What if we could detect these gaps automatically — surfacing missing links, semantic mismatches, and undocumented rules in real time? That’s the idea behind KonveyN2AI, a project built for the BigQuery AI Hackathon. Powered by BigQuery’s new vector capabilities, it’s a multi-agent architecture that spots knowledge gaps across diverse artifact types — without relying on an external vector database.

The Problem: Hidden Knowledge Gaps

Modern systems often span cloud-native configs like Kubernetes YAML, legacy codebases like COBOL and MUMPS, APIs and schemas like FastAPI, and regulatory layouts like IRS files. Each comes with implicit knowledge. Teams waste hours deciphering these “gaps,” leading to bugs, delays, and frustration. Existing solutions (LLMs + vector DBs) help, but they’re costly, complex, and often slow.

The Idea: KonveyN2AI

KonveyN2AI is designed to:

  1. Ingest heterogeneous artifacts (code, configs, layouts)
  2. Chunk and embed them using Google’s text-embedding-004
  3. Store embeddings directly in BigQuery (using VECTOR columns)
  4. Search, score, and rank gaps with BigQuery’s native vector functions (VECTOR_SEARCH)
  5. Surface results via agents orchestrated in a governance-inspired model

How It Works

1. Ingestion & Embedding

Artifacts are parsed, deduplicated, chunked, and hashed for idempotency. Each chunk is embedded (768-dim vector), reduced via PCA (3072 → 768 dims), and cached for efficiency.

2. Vector Search in BigQuery

Instead of paying for and maintaining a separate vector DB, embeddings live inside BigQuery. If BigQuery is temporarily unavailable, KonveyN2AI falls back to an in-memory index.

3. Hybrid Scoring

Deterministic SQL filters combine with AI confidence scores. This hybrid model reduces hallucinations while ranking gaps more reliably.

4. Results & Dashboard

Outputs include heatmaps of similarity scores, latency benchmarks (sub-second search), and an interactive dashboard showing artifact clusters and detected gaps.

Results

KonveyN2AI has been tested with 5+ artifact types, achieving sub-second latency for typical queries and cost savings by eliminating external vector DBs. It also improves reproducibility via caching, error handling, and BigQuery-native storage.

Extended Insights and Use Cases

While KonveyN2AI was born out of a hackathon experiment, its potential goes far beyond proof-of-concept. Let’s dive deeper into the challenges it addresses, and the practical impact it can have in enterprise environments.

1. Why Legacy + Modern Systems Clash

Organizations rarely get the luxury of starting fresh. Legacy systems often coexist with modern microservices. Each generation of technology brings its own terminology, encoding assumptions, and hidden defaults. KonveyN2AI can act as a semantic bridge — surfacing where assumptions misalign before they cause failures.

2. Case Study: Kubernetes + API Drift

Imagine a Kubernetes YAML defining a service on port 8080. The backend FastAPI service, however, listens on port 9090. Such mismatches typically emerge only at runtime, often in staging or production. With KonveyN2AI, both artifacts are chunked + embedded, and the system detects similarity between “service port” and “backend listen port” fields, flagging a semantic gap.

3. Technical Deep Dive

KonveyN2AI stores embeddings in BigQuery, reducing operational overhead and avoiding data silos. Dimensionality reduction via PCA compresses high-dimensional embeddings, retaining ~95% semantic variance. Hybrid scoring combines rules-based filters with LLM scoring to reduce false positives.

4. Future Directions

KonveyN2AI today is a strong proof-of-concept, but here’s where it could evolve: artifact expansion, feedback loops, CI/CD integration, visualization upgrades, and enterprise adoption.

5. Why This Matters

Semantic gaps aren’t trivial — they’re costly. Industry studies estimate that 60–70% of debugging time is spent on misaligned assumptions rather than pure logic errors. Bridging these gaps early not only reduces operational risk but also frees human engineers to focus on innovation, not archaeology.

Conclusion

KonveyN2AI is one attempt to make systems more self-aware — surfacing their hidden assumptions before those assumptions break. By leveraging BigQuery’s vector capabilities and a governance-inspired multi-agent model, KonveyN2AI offers a scalable, cost-effective solution to the age-old problem of knowledge gaps in complex systems.

FAQs

  • Q: What is KonveyN2AI?
    • A: KonveyN2AI is a project that uses BigQuery’s new vector capabilities to detect knowledge gaps in systems by analyzing diverse artifact types.
  • Q: How does KonveyN2AI work?
    • A: KonveyN2AI ingests artifacts, embeds them, stores the embeddings in BigQuery, and uses vector search and hybrid scoring to detect and rank gaps.
  • Q: What are the benefits of using KonveyN2AI?
    • A: KonveyN2AI offers sub-second latency, cost savings, improved reproducibility, and the ability to bridge semantic gaps between legacy and modern systems.
  • Q: Can I try KonveyN2AI?
    • A: Yes, the project is open on GitHub, and you can clone it, run the pipeline, and explore how BigQuery vector search can help surface hidden knowledge in your systems.
Previous Post

Rising AI Demands Push APAC Data Centres to Adapt

Next Post

A Drone-Filled Future Ahead

Linda Torries – Tech Writer & Digital Trends Analyst

Linda Torries – Tech Writer & Digital Trends Analyst

Linda Torries is a skilled technology writer with a passion for exploring the latest innovations in the digital world. With years of experience in tech journalism, she has written insightful articles on topics such as artificial intelligence, cybersecurity, software development, and consumer electronics. Her writing style is clear, engaging, and informative, making complex tech concepts accessible to a wide audience. Linda stays ahead of industry trends, providing readers with up-to-date analysis and expert opinions on emerging technologies. When she's not writing, she enjoys testing new gadgets, reviewing apps, and sharing practical tech tips to help users navigate the fast-paced digital landscape.

Related Posts

Lightricks Releases Open-Source AI Video Tool with 4K and Enhanced Rendering
Technology

Lightricks Releases Open-Source AI Video Tool with 4K and Enhanced Rendering

by Linda Torries – Tech Writer & Digital Trends Analyst
October 24, 2025
OpenAI Unlocks Enterprise Knowledge with ChatGPT Integration
Technology

OpenAI Unlocks Enterprise Knowledge with ChatGPT Integration

by Linda Torries – Tech Writer & Digital Trends Analyst
October 24, 2025
Training on “junk data” can lead to LLM “brain rot”
Technology

Training on “junk data” can lead to LLM “brain rot”

by Linda Torries – Tech Writer & Digital Trends Analyst
October 24, 2025
Lawsuit: Reddit caught Perplexity “red-handed” stealing data from Google results
Technology

Lawsuit: Reddit caught Perplexity “red-handed” stealing data from Google results

by Linda Torries – Tech Writer & Digital Trends Analyst
October 24, 2025
OpenAI Expands OS Integration with New Acquisition
Technology

OpenAI Expands OS Integration with New Acquisition

by Linda Torries – Tech Writer & Digital Trends Analyst
October 23, 2025
Next Post
A Drone-Filled Future Ahead

A Drone-Filled Future Ahead

Leave a Reply Cancel reply

Your email address will not be published. Required fields are marked *

Latest Articles

Aged Care Provider Reduces Staff Turnover with Automation

Aged Care Provider Reduces Staff Turnover with Automation

March 18, 2025
PR Agencies in the Age of AI

PR Agencies in the Age of AI

February 25, 2025
AI Revolutionizes SEO Link Building

AI Revolutionizes SEO Link Building

October 22, 2025

Browse by Category

  • AI in Healthcare
  • AI Regulations & Policies
  • Artificial Intelligence (AI)
  • Business
  • Cloud Computing
  • Cyber Security
  • Deep Learning
  • Ethics & Society
  • Machine Learning
  • Technology
Technology Hive

Welcome to Technology Hive, your go-to source for the latest insights, trends, and innovations in technology and artificial intelligence. We are a dynamic digital magazine dedicated to exploring the ever-evolving landscape of AI, emerging technologies, and their impact on industries and everyday life.

Categories

  • AI in Healthcare
  • AI Regulations & Policies
  • Artificial Intelligence (AI)
  • Business
  • Cloud Computing
  • Cyber Security
  • Deep Learning
  • Ethics & Society
  • Machine Learning
  • Technology

Recent Posts

  • Lightricks Releases Open-Source AI Video Tool with 4K and Enhanced Rendering
  • OpenAI Unlocks Enterprise Knowledge with ChatGPT Integration
  • Anthropic Expands AI Infrastructure with Billion-Dollar TPU Investment
  • Training on “junk data” can lead to LLM “brain rot”
  • Lawsuit: Reddit caught Perplexity “red-handed” stealing data from Google results

Our Newsletter

Subscribe Us To Receive Our Latest News Directly In Your Inbox!

We don’t spam! Read our privacy policy for more info.

Check your inbox or spam folder to confirm your subscription.

© Copyright 2025. All Right Reserved By Technology Hive.

No Result
View All Result
  • Home
  • Technology
  • Artificial Intelligence (AI)
  • Cyber Security
  • Machine Learning
  • AI in Healthcare
  • AI Regulations & Policies
  • Business
  • Cloud Computing
  • Ethics & Society
  • Deep Learning

© Copyright 2025. All Right Reserved By Technology Hive.

Are you sure want to unlock this post?
Unlock left : 0
Are you sure want to cancel subscription?