Full-Time

Data Operations Engineer

Confirmed live in the last 24 hours

Labelbox

Labelbox

201-500 employees

Provides data labeling solutions for AI

Enterprise Software
AI & Machine Learning

Compensation Overview

$70k - $90kAnnually

Junior, Mid

San Francisco, CA, USA + 2 more

More locations: New York, NY, USA | United States

Hybrid model with a focus on collaboration in San Francisco Bay Area, New York City Metro Area, and Wrocław, Poland.

Category
Data Management
Data Engineering
Data & Analytics
Required Skills
Microsoft Azure
Python
SQL
AWS
Google Cloud Platform
Requirements
  • 2+ years of working experience in a Technical role.
  • Bachelor’s Degree in Engineering, Computer Science, Data Science, or a technical field.
  • Proficiency in Python scripting and experience with automation of operational tasks.
  • Proficiency in SQL.
  • Experience with Labelbox or similar data annotation platforms.
  • Strong analytical and problem-solving skills with a demonstrated ability to optimize processes.
  • Experience with data pipelines and data workflow management.
  • Familiarity with cloud platforms such as AWS, GCP, or Azure.
  • English fluency.
Responsibilities
  • Build, deploy, and maintain Python scripts and other tools to streamline the data annotation process, automate repetitive tasks, and reduce manual effort.
  • Identify bottlenecks in the data labeling pipeline and implement solutions to enhance throughput, accuracy, and scalability of labeling operations.
  • Work closely with the quality assurance team to ensure that data labeling meets accuracy standards and troubleshoot any issues related to data quality.
  • Integrate and manage third-party tools with Labelbox, ensuring seamless operation and data flow across platforms.
  • Provide ongoing technical support to the project managers and labelers, assisting with technical challenges in Labelbox and associated tools.
  • Set up monitoring tools to track the performance of data annotation operations, reporting key metrics and areas for improvement to leadership.

Labelbox offers data labeling solutions for artificial intelligence applications, enabling businesses to efficiently label images, videos, text, and documents. Their platform allows users to create workflows that manage labeling tasks, which is crucial for industries like agriculture and healthcare that require large-scale data labeling for AI model training. Operating on a software-as-a-service (SaaS) model, Labelbox generates revenue through subscription fees and additional workforce services. The company's goal is to enhance AI development by providing high-quality data labeling solutions that improve efficiency and output.

Company Stage

Series D

Total Funding

$183.7M

Headquarters

San Francisco, California

Founded

2018

Growth & Insights
Headcount

6 month growth

46%

1 year growth

26%

2 year growth

30%
Simplify Jobs

Simplify's Take

What believers are saying

  • The $110 million Series D funding led by SoftBank’s Vision Fund 2 and participation from other prominent investors indicates strong financial backing and growth potential.
  • Labelbox's continuous feature updates, such as auto-computed metrics and an updated text editor, demonstrate a commitment to improving user experience and staying ahead in the market.
  • The opening of a new office in London signifies Labelbox's expansion into the European market, offering new opportunities for growth and market penetration.

What critics are saying

  • The competitive landscape in AI and data labeling is intense, with numerous players vying for market share, which could impact Labelbox's growth.
  • Dependence on large-scale clients in specific industries like agriculture and healthcare may pose a risk if these sectors face downturns.

What makes Labelbox unique

  • Labelbox's focus on AI-enabled data labeling tools for diverse data types sets it apart from competitors who may specialize in only one type of data.
  • Their SaaS model combined with 'Boost Workforce' services allows clients to scale their labeling operations efficiently, a unique offering in the data labeling market.
  • The recent introduction of Large Language Model (LLM) solutions and expanded partnership with Google Cloud highlights their commitment to staying at the forefront of AI innovation.

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

Benefits

Competitive remuneration

Flexible vacation policy (we don't count PTO Days)

401k Program

College savings account

HSA

Daily lunches paid for by the company (especially convenient while working from home)

Virtual wellness and guided meditation programs

Dog-friendly office

Regular company social events (happy hours, off-sites)

Professional development benefits and resources

Remote friendly (we hire in-office and remote employees)