Full-Time

Software R&D Engineer – New College Grad 2026

VLSI Physical Design

NVIDIA

NVIDIA

10,001+ employees

Designs GPUs and AI HPC platforms

Compensation Overview

$116k - $189.8k/yr

+ Equity

Company Historically Provides H1B Sponsorship

Austin, TX, USA

In Person

Category
Hardware Engineering (1)
Required Skills
Python
Perl
C/C++

People at NVIDIA

People at NVIDIA who can refer or advise you

Requirements
  • Masters or PhD in Electrical Engineering or Computer Science (or equivalent experience)
  • Experience with VLSI algorithms development using C++
  • Understanding of VLSI timing optimization and related concepts, including cell libraries, interconnect models, crosstalk, glitches, IR drop, timing constraints, corners, congestion, etc.
  • Familiarity with design implementation tools such as ICC2, Innovus, PrimeTime, Tempus, and StarRC and typical design flows written in Perl, Tcl, and Python.
Responsibilities
  • Invent new optimization engines that fuse traditionally independent engines (e.g., co-optimization of legalization and sizing) with the objective of increasing chip frequency while minimizing power consumption across a suite of internal optimization tools.
  • Improve algorithms (in C++) for gate-level sizing, buffering, useful clock skew, cell legalization, power minimization, ECO routing, and incremental parasitic extraction.
  • We as a team own the whole process from discovery and invention of new optimization opportunities, to developing solutions and working directly inside design teams to facilitate deployment.
Desired Qualifications
  • C++14 or newer experience, such as lambdas and concurrency.
  • Understanding of how multiple Physical Design steps interact and how they can potentially be fused together to form hybrid engines that result in better PPA.
  • Experience in high performance software design including multithreading, distributed computing, efficient memory and I/O use, etc.
  • Highly driven to craft software towards improving PPA with a dedication to continuous improvement.
  • Experience with reinforcement learning, GNNs (Graph Neural Networks), and other relevant machine learning frameworks, especially as applied to physical design.

NVIDIA designs and manufactures graphics processing units (GPUs) and computing platforms used for gaming, data centers, and artificial intelligence. These products work by using parallel processing to handle complex mathematical calculations much faster than standard computer processors, supported by a software ecosystem that allows developers to build and run AI models. Unlike competitors that may focus solely on hardware, NVIDIA integrates its chips with specialized software and cloud services to create a complete environment for high-performance tasks. The company’s goal is to provide the underlying technology necessary to power advanced computing, from realistic video game graphics to autonomous vehicles and large-scale data analysis.

Company Size

10,001+

Company Stage

IPO

Headquarters

Santa Clara, California

Founded

1993

People at NVIDIA

People at NVIDIA who can refer or advise you

Simplify Jobs

Simplify's Take

What believers are saying

  • Vera targets agent orchestration unlocking billions in new revenue beyond GPUs through 2027.
  • Data center revenue reached $75.25 billion in Q1 FY2027, up 92% year-over-year.
  • NVIDIA maintains 80% share of the AI accelerator market despite growing competition from AMD and Broadcom.

What critics are saying

  • Google, Meta, and OpenAI will deploy custom chips capturing 45% of AI market by 2028.
  • AMD and Broadcom win hyperscaler contracts with cheaper accelerators threatening $91 billion Q2 revenue guidance.
  • Three hyperscalers account for 60% of data center revenue; one pivoting to custom silicon drops revenue 20-30%.

What makes NVIDIA unique

  • Vera CPU is the first processor purpose-built for agentic AI and reinforcement learning.
  • Vera uses 88 custom NVIDIA Olympus cores delivering 1.5x higher single-thread IPC than Grace.
  • Vera integrates with Rubin GPUs and NVLink 6 switches forming a unified AI supercomputer architecture.

Help us improve and share your feedback! Did you find this helpful?

Benefits

Company Equity

401(k) Company Match

Growth & Insights and Company News

Headcount

6 month growth

1%

1 year growth

-1%

2 year growth

-1%
LinkedIn
Jun 19th, 2026
LinkedIn

This link will take you to a page that’s not on LinkedIn

Mistral AI
May 28th, 2026
Mistral AI raises $1.9B at $13.2B valuation, led by ASML to advance frontier AI research

Mistral AI has raised €1.7 billion in a Series C funding round at an €11.7 billion post-money valuation. The round was led by semiconductor equipment manufacturer ASML Holding, with participation from existing investors including DST Global, Andreessen Horowitz, Bpifrance, General Catalyst, Index Ventures, Lightspeed and NVIDIA. The Paris-based AI company will use the funding to advance its scientific research and develop custom decentralised frontier AI solutions for complex engineering and industrial problems. ASML CEO Christophe Fouquet said the partnership aims to generate benefits for ASML customers through AI-enabled products and solutions. Mistral AI CEO Arthur Mensch stated the investment will help address engineering challenges in the semiconductor and AI value chain whilst maintaining the company's independence.

Decart
May 18th, 2026
Decart Raises $300M: Tech Leaders Back the Company as Both Customers and Investors | Decart AI

With funding led by Radical Ventures, Decart is building the infrastructure layer for the next generation of low-latency AI systems, through three product lines: DOS, an ultra-optimized inference and training stack that enables agents and reasoning models to run smarter and faster; and the models Lucy, its World Model for Immersive Experiences; and Oasis, its World Model for Physical AI – both powered by DOS. Today, we’re also announcing DOS 2.0, with new versions of Lucy and Oasis launching in the coming weeks.

The Associated Press
Apr 15th, 2026
Matlantis integrates NVIDIA ALCHEMI Toolkit for 10x faster materials simulation

Matlantis has integrated NVIDIA's ALCHEMI Toolkit into its materials simulation platform to accelerate industrial materials discovery. The company previously incorporated NVIDIA Warp-optimised kernels, achieving up to 10x speed improvements in atomistic calculations. The integration includes LightPFP, Matlantis' lightweight potential for large-scale simulations, which uses a server-based architecture with NVIDIA ALCHEMI Toolkit-Ops to reduce communication bottlenecks. Matlantis plans to integrate its flagship Universal Machine-Learning Interatomic Potential with the toolkit to further enhance GPU efficiency. Launched in 2021, Matlantis is a cloud-based atomistic simulator jointly developed by PFN and ENEOS. The platform uses deep learning to increase simulation speeds by tens of thousands of times and serves over 150 companies discovering materials including catalysts, batteries and semiconductors.

CNBC
Apr 14th, 2026
Nvidia stock surges 18% on 10-day winning streak fuelled by $1T GPU orders through 2027

Nvidia shares have climbed 18% over a ten-day winning streak, the longest since 2023. The stock is trading about 8% below its October all-time high of $212.19. CEO Jensen Huang revealed at last month's GTC conference that Nvidia has over $1 trillion in GPU orders through 2027, including Blackwell and next-generation Vera Rubin chips. Data centre revenue surged 75% year-over-year and now comprises 88% of the business, a dramatic shift from five years ago when gaming dominated. The rally follows major deals including Meta's February commitment to deploy millions of Nvidia chips across its global data centres. On Monday, Nvidia denied rumours it was pursuing acquisitions of PC makers Dell or HP. The company also unveiled Ising, a new family of open-source models for quantum computing.