1

Dvc Jobs in San Ramon, CA (NOW HIRING)

Experience with data versioning systems (e.g., DVC, Delta Lake, Iceberg) is a strong plus. * Systems thinking. You reason about schema evolution, backfills, and failure modes before they become ...

Data Engineering Lead

San Jose, CA · On-site

$170K - $450K/yr

Experience with data versioning systems (e.g., DVC, Delta Lake, Iceberg) is a strong plus. * Systems thinking. You reason about schema evolution, backfills, and failure modes before they become ...

Senior AI Data Science Engineer

Sunnyvale, CA · On-site

$124K - $169K/yr

Familiarity with ML experiment tracking or data versioning tools (e.g., MLFlow, DVC, Weights & Biases). * Working knowledge of cloud data platforms, containerization (Docker, Kubernetes), and storage ...

Data Scientist

San Mateo, CA · On-site

$180K - $250K/yr

You have experience with dbt , Dagster , MLflow/DVC , Weights & Biases , or Feast/feature stores . * You are obsessed with data and patterns to solve business problems. * You will be jumping in deep ...

next page

Showing results 1-20

Dvc information

See San Ramon, CA salary details

$78.8K

$96.4K

$119K

How much do dvc jobs pay per year?

As of Jul 19, 2026, the average yearly pay for dvc in San Ramon, CA is $96,436.00, according to ZipRecruiter salary data. Most workers in this role earn between $90,500.00 and $100,600.00 per year, depending on experience, location, and employer.

What are DVCs?

DVCs, or Data Version Control specialists, are professionals who manage and oversee data versioning using tools like Data Version Control (DVC). They help teams track changes to datasets and machine learning models, ensuring reproducibility and collaboration in data science projects. DVCs work closely with data scientists and engineers to implement data pipelines, handle large datasets, and maintain consistency across multiple experiments. Their expertise is essential in organizations where managing complex data workflows is critical for research and deployment.

What is the difference between Dvc vs Video Editor?

AspectDvcVideo Editor
Required CredentialsHigh school diploma or equivalent; technical training or certification often preferredHigh school diploma; often a degree or certification in film, media, or related field
Work EnvironmentFilm sets, production companies, or broadcast stationsPost-production studios, editing suites, or freelance work
Industry UsageUsed in film, TV, and video production for technical supportUsed in editing and post-production to craft the final video content

While both Dvc and Video Editor work within the video production industry, Dvc primarily handles technical aspects during filming, such as camera operation and equipment setup. In contrast, Video Editors focus on editing footage to create the final product. Understanding these roles helps clarify career paths and job expectations in video production.

How does a Data Version Control (DVC) Engineer typically collaborate with data scientists and machine learning engineers on a project?

A DVC Engineer works closely with data scientists and machine learning engineers to streamline data management, versioning, and reproducibility throughout the machine learning workflow. They help set up and maintain DVC pipelines, ensuring data and model versions are tracked across experiments. Regular communication is essential, as DVC Engineers provide support for integrating DVC into existing workflows, troubleshoot issues, and train team members on best practices. This collaborative effort helps teams maintain consistency, improve efficiency, and facilitate smoother handoffs between stages of model development.

What are the key skills and qualifications needed to thrive as a DVC (Divisional Vice Chancellor), and why are they important?

To thrive as a Divisional Vice Chancellor, you need strong leadership abilities, a background in academia or administration, and typically an advanced degree such as a Ph.D. or Ed.D. Familiarity with university management systems, accreditation processes, and data analysis tools is often required. Exceptional communication, strategic vision, and conflict resolution skills help foster academic excellence and organizational growth. These competencies are critical for effective governance, stakeholder engagement, and advancing the institution’s mission.
What job categories do people searching Dvc jobs in San Ramon, CA look for? The top searched job categories for Dvc jobs in San Ramon, CA are:
What cities near San Ramon, CA are hiring for Dvc jobs? Cities near San Ramon, CA with the most Dvc job openings:
Infographic showing various Dvc job openings in San Ramon, CA as of July 2026, with employment types broken down into 75% Full Time, and 25% Temporary. Highlights an 75% In-person, and 25% Remote job distribution, with an average salary of $96,436 per year, or $46.4 per hour.
Data Engineering Lead

Data Engineering Lead

Hark

San Jose, CA

$170K - $450K/yr

Other

Re-posted 3 days ago


Job description

About Hark

Hark is an artificial intelligence company building advanced, personalized intelligence. One that is proactive, multimodal, and capable of interacting with the world through speech, text, vision, and persistent memory.

We're pairing that intelligence with next-generation hardware to create a universal interface between humans and machines. While today's AI largely operates through chat boxes and decade-old devices, Hark is focused on what comes next: agentic systems that interact naturally with people and the real world.

To get there, we're developing multimodal models and next-generation AI hardware together - designed from the ground up as a single, unified interface for a new era of intelligent systems.

About the Role 

You'll build the data infrastructure that turns raw signals into the training data Hark's models learn from, and the pipelines that keep it flowing at scale.

That means owning the full data engineering stack: ingestion, transformation, quality filtering, and delivery to training and evaluation systems. The models we ship are only as good as the data behind them, and this role owns that foundation.

This is a high-ownership role on a small team. You'll work directly with model researchers, data collection leads, and infrastructure engineers, and the systems you build will directly shape the quality and pace of model development.

Responsibilities

  • Design and build scalable data pipelines that ingest, process, and deliver training data across multiple modalities: text, audio, vision, and structured feedback signals.
  • Own the data infrastructure stack end-to-end: ingestion, transformation, deduplication, quality filtering, versioning, and delivery to model training and evaluation systems.
  • Collaborate closely with model researchers and data collection leads to understand data requirements and translate them into reliable, auditable pipelines.
  • Build tooling and frameworks that make it easy for the team to inspect, evaluate, and iterate on data quality. The insights surfaced should feed back into collection and curation decisions.
  • Define and enforce data quality standards. Instrument pipelines for correctness, freshness, and coverage. Catch regressions before they reach training.
  • Design data systems for reproducibility and scale. The pipelines you build need to handle growing volumes across modalities without becoming a bottleneck.
  • Identify gaps in the current stack and drive concrete improvements to throughput, quality, and reliability.

Requirements

  • Strong data engineering fundamentals. You are comfortable designing and operating large-scale batch and streaming pipelines, and you care about correctness and reliability.
  • Experience building data systems for machine learning. You understand the difference between a data pipeline for analytics and one that feeds model training, and you know what it takes to get the latter right.
  • Fluency with the modern data stack. You've worked with tools like Spark, Beam, or Flink, and you know how to make tradeoffs between them. Experience with data versioning systems (e.g., DVC, Delta Lake, Iceberg) is a strong plus.
  • Systems thinking. You reason about schema evolution, backfills, and failure modes before they become production incidents. You build for the day-2 case, not just the demo.
  • A quality instinct. You don't just move data. You understand what's in it, catch problems early, and close the feedback loop with the people who need clean data.
  • Strong communication. You can work closely with model researchers and engineers, explain data tradeoffs clearly, and make good decisions across team boundaries.
  • 5+ years of relevant data engineering experience. Experience at a fast-growing AI or research-driven company is a strong plus.

Bonus Qualifications

  • Experience building data infrastructure for large language model or multimodal model training.
  • Familiarity with multimodal data formats and processing pipelines (audio, video, image).
  • Experience with human feedback or preference data pipelines (RLHF, DPO, or similar).
  • Hands-on experience with data quality evaluation frameworks or annotation tooling.
  • Background in distributed systems, stream processing, or large-scale ETL.
  • Experience at a fast-moving AI lab or research-driven company.

Compensation

The US base salary range for this full-time position is between $170,000 - $450,000 annually.

The pay offered for this position may vary based on several individual factors, including job-related knowledge, skills, and experience. The total compensation package may also include additional components/benefits depending on the specific role. This information will be shared if an employment offer is extended.