# Alphabet Reduces NVIDIA Dependence, Boosts Growth Outlook

> Source: <https://letsdatascience.com/news/alphabet-reduces-nvidia-dependence-boosts-growth-outlook-85e7b941>
> Published: 2026-06-05 10:52:45.049109+00:00

# Alphabet Reduces NVIDIA Dependence, Boosts Growth Outlook

Seeking Alpha assigns **Alphabet** a Buy rating under its Quality Growth framework, citing a proprietary **TPU** chip stack that the article says reduces dependence on **NVIDIA** and widens Alphabet's infrastructure moat. The Seeking Alpha analysis reports **Google Cloud** has a **$460 billion** backlog, **63%** revenue growth, and a **32.9%** operating margin, and it characterizes valuation as attractive at roughly **25x** forward P/E. The piece also notes projected EPS growth (described as tripling over five years) and recent capital raises, which Seeking Alpha frames as supporting future compounding. Editorial analysis and forward-looking rationale in the Seeking Alpha writeup are the basis for the Buy recommendation.

### What happened

Seeking Alpha assigns **Alphabet Inc. (GOOG)** a Buy rating under its Quality Growth framework, citing several company-level metrics and strategic assets. The Seeking Alpha article states Alphabet's proprietary **TPU** chip stack reduces dependence on **NVIDIA**, and reports **Google Cloud** has a **$460 billion** backlog, **63%** revenue growth, and a **32.9%** operating margin. The article also notes an approximate **25x** forward P/E and projects EPS could triple over five years, while referencing recent capital raises as supportive of growth.

### Technical details

Editorial analysis - technical context: In-house accelerator designs such as TPUs are an increasingly common lever for hyperscalers to capture cost and performance advantages for AI training and inference. Industry patterns show three practical effects:

- •tighter hardware-software co-optimization
- •reduced unit economics sensitivity to third-party GPU pricing
- •potential differences in software compatibility and ecosystem lock-in that practitioners must weigh when porting workloads

### Context and significance

Editorial analysis: For practitioners, a major cloud provider building a credible accelerator stack alters procurement and deployment trade-offs. Teams evaluating multi-cloud or hybrid ML deployments should treat in-house accelerators as a factor in total-cost-of-training and inference latency calculations, while also monitoring software portability layers and framework support.

### What to watch

Editorial analysis: Observers should track independent benchmarks comparing TPUs and NVIDIA GPUs on representative workloads, changes in Google Cloud pricing or instance availability tied to TPU capacity, and announcements from major ML framework maintainers about optimized TPU integrations. Also watch for third-party validation of the backlog and margin figures cited in Seeking Alpha's piece.

## Scoring Rationale

The story is notable because it combines a major cloud provider's infrastructure claims (TPUs) with concrete commercial metrics that influence cloud economics for ML teams. It is not a frontier-model or regulatory event, so its practitioner impact is meaningful but not industry-shaking.

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