5 days ago

Data Analyst I

Nexus Consulting

Hybrid
Full Time
$160,000
Hybrid

Job Overview

Job TitleData Analyst I
Job TypeFull Time
CategoryCommerce
Experience5 Years
DegreeMaster
Offered Salary$160,000
LocationHybrid

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Job Description

About the Role

We are seeking a detail-oriented Data Analyst I to support large-scale data curation and evaluation initiatives for advanced generative AI systems. This role focuses on improving model quality across key dimensions such as visual fidelity, prompt adherence, identity preservation, naturalness, and text generation within images. You will work closely with engineers and research teams to manage data labeling workflows, maintain high-volume data pipelines, audit annotations, and analyze model outputs to identify quality gaps. This is an onsite role requiring hands-on collaboration with technical teams.

Key Responsibilities

  • Data Curation & Labeling Operations: Manage end-to-end data labeling workflows, enqueue datasets for labeling, maintain labeling interfaces, extract structured labels for modeling teams, manually annotate training data when required, and audit/correct human-labeled data.
  • Data Engineering & Pipelines: Maintain and optimize large-scale data processing pipelines (billions of images), support data sourcing and content understanding using ML models, leverage LLMs to clean, annotate, and evaluate data, and assist in building efficient ETL workflows.
  • Data Governance: Maintain dataset portfolio with proper access controls, ensure compliance with data retention and privacy standards, and support governance and documentation practices.
  • Analysis & Model Evaluation: Identify model quality gaps using structured evaluation protocols, collaborate with engineers to summarize findings and recommend improvements, mine and prepare new datasets for iterative model training, and scale validated evaluation frameworks across product teams.

Required Qualifications

  • Associate’s degree or equivalent training in Computer Science, Engineering, Physics, Bioinformatics, or other STEM field
  • Basic knowledge of Python and SQL
  • Foundational understanding of computer vision and generative AI models
  • Experience with data ETL workflows or pipelines
  • Familiarity using LLMs for data labeling or evaluation tasks
  • Strong attention to detail and analytical thinking

Preferred Qualifications

  • Prior industry experience in software development, QA, or research
  • Exposure to human-computer interaction or ML evaluation work
  • Experience working in large-scale technology environments
  • Strong written and verbal communication skills

Work Environment

  • Onsite collaboration with engineering teams in Menlo Park, CA
  • Fast-paced, research-driven environment
  • High-impact role supporting next-generation AI systems

Key skills/competency

  • Data Curation
  • Generative AI
  • Data Labeling
  • ETL Workflows
  • SQL
  • Python
  • Model Evaluation
  • Computer Vision
  • LLMs
  • Data Governance

Tags:

Data Analyst
Data Curation
Generative AI
AI Models
ETL
SQL
Python
Computer Vision
LLMs
Data Pipelines
Model Evaluation
Data Governance
Machine Learning
Analytics
Research
Software Development
QA
Human-Computer Interaction
Technology Environments

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How to Get Hired at Nexus Consulting

  • Research Nexus Consulting's culture: Study their mission, values, recent news, and employee testimonials on LinkedIn and Glassdoor.
  • Tailor your resume: Customize your application to highlight data curation, AI model evaluation, and ETL experience for Nexus Consulting's Data Analyst I role.
  • Showcase Python and SQL proficiency: Provide specific project examples demonstrating your ability to manipulate and analyze large datasets effectively.
  • Demonstrate AI understanding: Be prepared to discuss your foundational knowledge of generative AI models, computer vision, and LLMs during interviews.
  • Emphasize attention to detail: Prepare STAR method examples illustrating your meticulous approach to data quality, auditing, and problem-solving.

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