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Member of Technical Staff, Grokipedia - Synthetic Data & Epistemics

xAI

Member of Technical Staff, Grokipedia - Synthetic Data & Epistemics

xAI

Palo Alto, CA

·

On-site

·

Full-time

·

1mo ago

Compensation

$180,000 - $440,000

Benefits & Perks

Competitive salary and equity package

Comprehensive health, dental, and vision insurance

Professional development budget

Generous paid time off and holidays

Flexible work arrangements

Equity

Healthcare

Learning

Flexible Hours

Required Skills

JavaScript

Python

React

About xAI

xAI’s mission is to create AI systems that can accurately understand the universe and aid humanity in its pursuit of knowledge. Our team is small, highly motivated, and focused on engineering excellence. This organization is for individuals who appreciate challenging themselves and thrive on curiosity. We operate with a flat organizational structure. All employees are expected to be hands-on and to contribute directly to the company’s mission. Leadership is given to those who show initiative and consistently deliver excellence. Work ethic and strong prioritization skills are important. All employees are expected to have strong communication skills. They should be able to concisely and accurately share knowledge with their teammates.

About the Role

The Grokipedia team at xAI is building an AI-powered knowledge platform that leverages advanced LLMs to generate, maintain, and update high-quality, factual articles. We are seeking a skilled engineer to lead the development and improvement of article generation pipelines, focusing on epistemics to ensure truthfulness and reliability. This role involves creating LLM agents for long-form content creation, synthetic data generation for training and evaluation, advanced prompting techniques, and inference systems that incorporate user feedback and keep content current.

Tech Stack

  • Python

  • Agent frameworks

  • Ray

Focus

  • Developing article rewrite pipelines using LLM agents to produce accurate, long-form content while prioritizing epistemic integrity.

  • Developing prompting strategies and synthetic data generation methods to improve model performance in knowledge-intensive tasks.

  • Incorporating user edit suggestions into inference pipelines to iteratively refine articles for factual accuracy and completeness.

  • Building systems to automatically update articles with new information, ensuring ongoing truthfulness and reducing hallucinations through rigorous verification mechanisms.

  • Experimenting with epistemics-focused techniques, such as chain-of-thought reasoning, self-critique, and multi-agent debates, to elevate the quality of generated content.

  • Collaborating on scalable infrastructure for real-time article maintenance and generation at production scale.

Ideal Experiences (at least one from below)

  • Strong engineering background with expertise in LLMs, agentic systems, and epistemics in AI.

  • Experience in prompting engineering, synthetic data creation, and long-form text generation using models

  • Proficiency in building and optimizing inference pipelines for knowledge bases, including handling user feedback loops.

  • Familiarity with techniques for ensuring factual accuracy in AI outputs, such as retrieval-augmented generation (RAG) or epistemic uncertainty modeling.

  • Hands-on work with large-scale data processing and generation, focusing on quality, verifiability, and bias mitigation.

  • Preference for candidates with experience in content platforms, wiki-like systems, or AI-driven knowledge management tools.

Location

The role is based in the Bay Area San Francisco and Palo Alto. Candidates are expected to be located near the Bay Area or open to relocation.

Interview Process

After submitting your application, the team reviews your CV and statement of exceptional work. If your application passes this stage, you will be invited to a 15-minute interview (“phone interview”) during which a member of our team will ask some basic questions. If you clear the initial phone interview, you will enter the main process, which consists of four technical interviews:

  • Coding assessment in a language of your choice.

  • Systems hands-on: Demonstrate practical skills in a live problem-solving session.

  • Project deep-dive: Present your past exceptional work to a small audience.

  • Meet and greet with the wider team.

Our goal is to finish the main process within one week. All interviews will be conducted via Google Meet.

Annual Salary Range

$180,000 - $440,000 USD

Benefits

Base salary is just one part of our total rewards package at xAI, which also includes equity, comprehensive medical, vision, and dental coverage, access to a 401(k) retirement plan, short & long-term disability insurance, life insurance, and various other discounts and perks.

*xAI is an equal opportunity employer. For details on data processing, view our *Recruitment Privacy Notice.

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About xAI

xAI

xAI

Series B

X.AI Corp., doing business as xAI, is an American company working in the area of artificial intelligence (AI), social media and technology that is a wholly owned subsidiary of American aerospace company SpaceX.

201-500

Employees

Austin

Headquarters

$50B

Valuation

Reviews

4.1

25 reviews

Work Life Balance

3.9

Compensation

4.6

Culture

4.3

Career

4.3

Management

3.5

83%

Recommend to a Friend

Pros

Strong engineering culture with focus on code quality

Competitive compensation packages with equity

Flexible remote work options and good work-life balance

Cons

Organizational changes and restructuring can be disruptive

Internal politics in some teams

Fast-paced environment with tight deadlines

Salary Ranges

0 data points

Junior/L3

L3

Junior/L3 · Data Analyst

0 reports

$82,784

total / year

Base

-

Stock

-

Bonus

-

$70,366

$95,202

Interview Experience

5 interviews

Difficulty

3.0

/ 5

Duration

14-28 weeks

Interview Process

1

Coding Assessment

2

Live coding round

3

Technical Interview

4

Systems Design

Common Questions

Coding challenges

Technical problem solving

Systems design

Algorithm implementation