Tag: Google Cloud Gen AI Series
-
Vertex AI Pricing, Provisioned Throughput, and Context Caching (Google Cloud Gen AI Series, Part 6)
A working architect’s breakdown of what you really pay for on Vertex AI: on-demand token rates, Provisioned Throughput and the GSU, context caching, and batch, with a worked cost example you can run.
-
Vertex AI vs the Gemini API in AI Studio, and When to Switch (Google Cloud Gen AI Series, Part 5)
Google AI Studio and Vertex AI are two doors to the same Gemini models. Here is what actually changes between them on auth, data governance, quotas and price, and exactly when to move from one to the other.
-
Third-Party Models in Vertex AI Model Garden, from Claude to Self-Deploy (Google Cloud Gen AI Series, Part 4)
Vertex AI Model Garden runs Claude, Mistral, Grok and more as managed APIs, or as proprietary models you license into your own VPC. Here is how each mode works and when to use it.
-
Gemini Flash vs Pro, and When to Pay for Reasoning (Google Cloud Gen AI Series, Part 3)
Flash or Pro? On Vertex AI the two Gemini tiers differ by about 4x on output tokens. Here is how to pick per request and route only the hard ones to Pro.
-
Vertex AI and Model Garden, from Catalog to Endpoint (Google Cloud Gen AI Series, Part 2)
Vertex AI is Google Cloud’s managed platform and Model Garden is its 200-plus model catalog. Here is how the three access paths, managed API, MaaS, and self-deploy, decide your cost, latency, and data isolation, and which one to start on.
-
Google Cloud Generative AI Stack, End to End (Google Cloud Gen AI Series, Part 1)
A map of the Google Cloud generative AI stack in 2026, from Gemini Enterprise Agent Platform (the service that used to be Vertex AI) down to Ironwood TPUs, and where a real project plugs in.
Architect’s Toolkit
PJ’s Tools
VMware Cloud Foundation
- VCF Documentation
- VCF 9 Planning & Preparation Workbook
- VCF Bill of Materials (BoM)
- VMware Compatibility Guide
- VMware Interoperability Matrix
- VMware Configuration Maximums
- VMware Ports & Protocols
- VMware Hands-on Labs
- RVTools Download
Nutanix
AI & Cloud-Native Platform
- NVIDIA Build (Model Catalog)
- NVIDIA AI Enterprise Reference Architecture
- NVIDIA NIM Performance Benchmarking
- NVIDIA NGC Catalog
- NeMo Microservices Helm Chart
- Helm Charts Repository
- Hugging Face Models
Architecture & Design
About the Author

Dr Pranay Jha
Dr. Pranay Jha is a Cloud and AI Consultant with 18+ years of experience in hybrid cloud, virtualization, and enterprise infrastructure transformation. He specializes in VMware technologies, multi-cloud strategy, and Generative AI solutions. He holds a PhD in Computer Applications with research focused on Cloud and AI, has published multiple research papers, and has been a VMware vExpert since 2016 and a VMUG Community Leader.
You May Have Missed

DrJha