Full-Time

Software Engineer

Frontend

Posted on 10/31/2025

Greptile

Greptile

11-50 employees

AI-powered platform analyzes reviews, automates responses

Compensation Overview

$120k - $160k/yr

San Francisco, CA, USA

In Person

Category
Software Engineering (1)
Required Skills
JavaScript
React.js
TypeScript
Requirements
  • B.S. Computer Science or equivalent degree, undergraduate or higher
  • 1+ years of front-end/full-stack engineering experience
  • Experience with JavaScript/TypeScript
  • Experience with ReactJS
Responsibilities
  • Maintain and build features for the Greptile dashboard, which is a TypeScript-based web app
  • Work with our design engineer to ensure a fast, consistent, and beautiful experience across the application
  • Maintain the customer-facing analytics dashboard, which helps engineering leadership see the value that Greptile is creating for their organization.
Desired Qualifications
  • None

Greptile helps businesses turn customer reviews into usable information. It collects reviews from customers, uses AI to analyze them for patterns, sentiment, and trends, and presents insights that guide decisions. It also offers an AI Review Replier that automatically writes empathetic, personalized responses to reviews so businesses can engage customers consistently without extra manual work. The platform is offered on a subscription basis with different tiers, from basic review collection to advanced analytics and premium AI responses. Compared to competitors, Greptile focuses on turning reviews into concrete actions and automating customer engagement with scalable, tiered pricing for retailers, online shops, and service providers. The company aims to help businesses understand what customers want, improve products and services, and boost customer satisfaction by making review management easier and more impactful.

Company Size

11-50

Company Stage

Series A

Total Funding

$29.9M

Headquarters

San Francisco, California

Founded

2021

Simplify Jobs

Simplify's Take

What believers are saying

  • Serves 2,000+ customers including Brex, Whoop, Substack, Stripe.
  • Raised $30M Series A at $180M valuation from Benchmark.
  • Achieved SOC2 Type II compliance and offers self-hosting.

What critics are saying

  • GitHub Copilot integrates code review into IDEs within 12 months.
  • Stripe, Amazon build internal AI reviewers in 12-24 months.
  • Open-source tools commoditize codebase indexing in 12 months.

What makes Greptile unique

  • Greptile 2.0 uses codegraph for full codebase context in PR reviews.
  • API enables custom AI dev tools beyond standard code reviews.
  • Learns coding standards from engineers' comments over time.

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

Benefits

Flexible Work Hours

Remote Work Options

Paid Vacation

Paid Sick Leave

Paid Holidays

Hybrid Work Options

Wellness Program

Mental Health Support

Conference Attendance Budget

Family Planning Benefits

Fertility Treatment Support

401(k) Retirement Plan

401(k) Company Match

Growth & Insights and Company News

Headcount

6 month growth

-7%

1 year growth

4%

2 year growth

-11%
NVIDIA
Mar 11th, 2026
New NVIDIA Nemotron 3 Super Delivers 5x Higher Throughput for Agentic AI

New NVIDIA Nemotron 3 Super delivers 5x higher throughput for agentic AI. A new, open, 120-billion-parameter hybrid mixture-of-experts model optimized for NVIDIA Blackwell addresses the costs of long thinking and context explosion that slow autonomous agent workflows. Launched today, NVIDIA Nemotron 3 Super is a 120-billion-parameter open model with 12 billion active parameters designed to run complex agentic AI systems at scale. Available now, the model combines advanced reasoning capabilities to efficiently complete tasks with high accuracy for autonomous agents. AI-Native Companies: Perplexity offers its users access to Nemotron 3 Super for search and as one of 20 orchestrated models in Computer. Companies offering software development agents like CodeRabbit, Factory and Greptile are integrating the model into their AI agents along with proprietary models to achieve higher accuracy at lower cost. And life sciences and frontier AI organizations like Edison Scientific and Lila Sciences will power their agents for deep literature search, data science and molecular understanding. Enterprise Software Platforms: Industry leaders such as Amdocs, Palantir, Cadence, Dassault Systèmes and Siemens are deploying and customizing the model to automate workflows in telecom, cybersecurity, semiconductor design and manufacturing. As companies move beyond chatbots and into multi-agent applications, they encounter two constraints. The first is context explosion. Multi-agent workflows generate up to 15x more tokens than standard chat because each interaction requires resending full histories, including tool outputs and intermediate reasoning. Over long tasks, this volume of context increases costs and can lead to goal drift, where agents lose alignment with the original objective. The second is the thinking tax. Complex agents must reason at every step, but using large models for every subtask makes multi-agent applications too expensive and sluggish for practical applications. Nemotron 3 Super has a 1-million-token context window, allowing agents to retain full workflow state in memory and preventing goal drift. Nemotron 3 Super has set new standards, claiming the top spot on Artificial Analysis for efficiency and openness with leading accuracy among models of the same size. The model also powers the NVIDIA AI-Q research agent to the No. 1 position on DeepResearch Bench and DeepResearch Bench II leaderboards, benchmarks that measure an AI system's ability to conduct thorough, multistep research across large document sets while maintaining reasoning coherence. Hybrid Architecture. Nemotron 3 Super uses a hybrid mixture-of-experts (MoE) architecture that combines three major innovations to deliver up to 5x higher throughput and up to 2x higher accuracy than the previous Nemotron Super model. * Hybrid Architecture: Mamba layers deliver 4x higher memory and compute efficiency, while transformer layers drive advanced reasoning. * MoE: Only 12 billion of its 120 billion parameters are active at inference. * Latent MoE: A new technique that improves accuracy by activating four expert specialists for the cost of one to generate the next token at inference. * Multi-Token Prediction: Predicts multiple future words simultaneously, resulting in 3x faster inference. On the NVIDIA Blackwell platform, the model runs in NVFP4 precision. That cuts memory requirements and pushes inference up to 4x faster than FP8 on NVIDIA Hopper, with no loss in accuracy. Open weights, data and recipes. NVIDIA is releasing Nemotron 3 Super with open weights under a permissive license. Developers can deploy and customize it on workstations, in data centers or in the cloud. The model was trained on synthetic data generated using frontier reasoning models. NVIDIA is publishing the complete methodology, including over 10 trillion tokens of pre- and post-training datasets, 15 training environments for reinforcement learning and evaluation recipes. Researchers can further use the NVIDIA NeMo platform to fine-tune the model or build their own. Use in agentic systems. Nemotron 3 Super is designed to handle complex subtasks inside a multi-agent system. A software development agent can load an entire codebase into context at once, enabling end-to-end code generation and debugging without document segmentation. In financial analysis it can load thousands of pages of reports into memory, eliminating the need to re-reason across long conversations, which improves efficiency. Nemotron 3 Super has high-accuracy tool calling that ensures autonomous agents reliably navigate massive function libraries to prevent execution errors in high-stakes environments, like autonomous security orchestration in cybersecurity. Availability. NVIDIA Nemotron 3 Super, part of the Nemotron 3 family, can be accessed at build.nvidia.com, Perplexity, OpenRouter and Hugging Face. Dell Technologies is bringing the model to the Dell Enterprise Hub on Hugging Face, optimized for on-premise deployment on the Dell AI Factory, advancing multi-agent AI workflows. HPE is also bringing NVIDIA Nemotron to its agents hub to help ensure scalable enterprise adoption of agentic AI. Enterprises and developers can deploy the model through several partners: * Cloud Service Providers: Google Cloud's Vertex AI and Oracle Cloud Infrastructure, and coming soon to Amazon Web Services through Amazon Bedrock as well as Microsoft Azure. * NVIDIA Cloud Partners: Coreweave, Crusoe, Nebius and Together AI. * Inference Service Providers: Baseten, CloudFlare, DeepInfra, Fireworks AI, Inference.net, Lightning AI, Modal and FriendliAI. * Data Platforms and Services: Distyl, Dataiku, DataRobot, Deloitte, EY and Tata Consultancy Services. The model is packaged as an NVIDIA NIM microservice, allowing deployment from on-premises systems to the cloud. Stay up to date on agentic AI, NVIDIA Nemotron and more by subscribing to NVIDIA AI news, joining the community, and following NVIDIA AI on LinkedIn, Instagram, X and Facebook.

Metro Atlanta CEO
Jan 8th, 2026
Georgia Tech startup Greptile raises $30M, joins Y Combinator after pivoting from AI shopping to code analysis tools

Greptile, an AI startup founded by three Georgia Tech students, has raised $25 million in Series A funding from Benchmark, bringing total capital raised to $30 million and valuing the company at $180 million. The company was also accepted into Y Combinator's winter 2024 cohort. Founded in 2023 by Daksh Gupta, Soohoon Choi and Vaishant Kameswaran, Greptile builds AI tools that help engineering teams review and improve code. The startup now serves over 2,000 customers, including Brex, Whoop and Substack. The company emerged from Georgia Tech's CREATE-X Startup Launch programme, where the founders pivoted from an AI shopping assistant to their current product. CEO Gupta credits the programme with introducing him to his co-founder and providing entrepreneurial confidence before Y Combinator helped scale the business.

FinSMEs
Sep 23rd, 2025
Greptile Raises $25M in Series A Funding

Greptile, a San Francisco, CA-based AI code reviewer, raised $25M in Series A funding

Bob Webmaster
Jul 19th, 2025
Benchmark Negotiating Series A Investment for Greptile, Valuing AI Code Reviewer at $180M, Sources Indicate

Greptile, an innovative startup leveraging AI for code reviews, is in the process of securing a $30 million Series A funding round at a valuation of $180 million, led by Benchmark partner Eric Vishria.

Tech in Asia
Jul 19th, 2025
Y Combinator-backed US AI startup Greptile eyes $180m valuation

AI-powered code review startup Greptile is in talks to raise US$30 million in a series A round, potentially valuing the company at US$180 million.

INACTIVE