Top Companies  / Databricks

Apply to Databricks Jobs with AI - Backed by Real Application Data

Databricks employs around 6,000 people and is the world's leading data and AI company, headquartered in San Francisco. Founded in 2013 by the creators of Apache Spark at UC Berkeley, Databricks built the Lakehouse architecture — a platform that unifies data warehousing and data lakes — and developed widely adopted open-source projects including Delta Lake, MLflow, and Apache Spark. The company is valued at approximately $62 billion and is one of the most valuable private technology companies in the world. LoopCV users have applied to Databricks. Here is what the data shows.

Databricks at a Glance

  • Employees ~6,000
  • HQ San Francisco, CA
  • Open roles 200-500
  • Remote policy Hybrid
  • Avg. response time 2-4 weeks
  • ATS Greenhouse
companyPage.dataStrip.badge

companyPage.dataStrip.summaryBefore 2,300+ companyPage.dataStrip.summaryApps Databricks companyPage.dataStrip.summaryVia (Jan 2024 – Apr 2026). companyPage.dataStrip.summaryCovering SDE, Data Engineering, and Sales roles.

2,300+ companyPage.dataStrip.stat1
9 days companyPage.dataStrip.stat2
3.2× companyPage.dataStrip.stat3
74% companyPage.dataStrip.stat4

How Long Does Databricks Take to Respond to Job Applications?

Based on applications sent through LoopCV to Databricks, here is the typical response timeline:

Databricks has a response rate of around 9%. The company is actively growing across data engineering, ML engineering, solutions architecture, and enterprise sales as it expands the Lakehouse platform globally. Technical roles at Databricks are highly competitive given the company's prestige and compensation packages.

1
Application submitted via Greenhouse Immediate confirmation
2
Recruiter review 1-2 weeks
3
Recruiter phone screen 3-5 days after review
4
Technical screen (coding or system design) 1 week after phone screen
5
Virtual on-site loop (4-5 interviews) 1-2 weeks after tech screen
6
Offer 1-2 weeks after loop

Databricks' technical interview bar is high — the company was founded by PhD researchers from Berkeley's AMPLab and retains a research-forward engineering culture. For engineering roles, expect deep algorithmic questions, distributed systems design problems, and ML systems architecture discussions. For solutions architect roles, expect both technical depth and enterprise customer scenario role-plays.

LoopCV monitors Databricks job postings 24/7 and applies the moment a matching role goes live — so you're always among the first applicants.
Apply to Databricks Automatically

What ATS Does Databricks Use?

Databricks uses Greenhouse as its applicant tracking system. CVs are reviewed for Apache Spark, Delta Lake, and Lakehouse architecture expertise, as well as distributed data systems, ML engineering, and enterprise data platform experience. The company's core tech stack is built on Scala, Python, Java, and Spark.

Keywords That Help Pass Screening

  • Apache Spark, Delta Lake, Lakehouse, MLflow, databricks platform
  • Scala, Python, Java, distributed data processing, Kafka, dbt
  • Data engineering, ETL/ELT pipelines, data warehouse, data lake, data platform
  • Machine learning engineering, MLOps, model training at scale, LLM fine-tuning
  • Solutions architecture, enterprise data strategy, cloud (AWS, Azure, GCP)

Databricks invented the Lakehouse architecture and created Apache Spark, Delta Lake, and MLflow — all of which are now industry-standard tools. Candidates who have real hands-on experience with these technologies in production environments are far more compelling than those with only theoretical knowledge. If you have built production Spark pipelines or deployed MLflow tracking, describe the scale and business impact specifically.

How to Get a Job at Databricks

Databricks is one of the most technically prestigious data and AI companies in the world. Here is how to position yourself successfully.

Demonstrate production-scale Lakehouse or Spark experience

Databricks is the company that built the Lakehouse architecture and Apache Spark. Candidates who have worked with these technologies at production scale — terabyte or petabyte-scale data pipelines, Delta Lake table management, real-time streaming with Spark Structured Streaming — have a direct and significant advantage. Be specific about the data volumes, latency requirements, and business outcomes from your experience.

Show ML engineering and MLOps depth

MLflow, Databricks' open-source ML lifecycle management platform, has become an industry standard. Databricks hires ML engineers and MLOps specialists who can build, track, and serve models at enterprise scale. Candidates with experience in feature stores, model registries, model serving infrastructure, or LLM fine-tuning and deployment are particularly competitive as Databricks invests in AI platforms.

Target solutions architect roles if you have customer-facing experience

Databricks' revenue model depends heavily on solutions architects who work directly with enterprise customers to design and deploy Lakehouse architectures. These roles combine deep technical knowledge with customer communication skills. Candidates who have previously worked as data architects, principal data engineers, or implementation consultants with enterprise data platform experience are well-positioned for this track.

Prepare for a high technical bar in engineering interviews

Databricks was founded by research scientists and the technical interview bar reflects that. Engineering interviews include algorithmic coding, distributed systems design, and often ML systems architecture for relevant roles. Leetcode preparation is necessary but insufficient — practice distributed system design problems specifically in the context of data processing: designing a distributed sort, a streaming join, or a fault-tolerant pipeline.

Know what it takes. Now apply — automatically.

LoopCV applies to matching Databricks roles on your behalf, tailors your CV for each posting, and tracks every application in one dashboard.

Start Applying Free

No credit card · Cancel anytime

Databricks' Culture and Values

Databricks has a research-forward, technically rigorous culture shaped by its academic origins and its mission to democratise data and AI.

Research-forward — Databricks publishes academic papers and contributes to open-source at scale Open-source first — Apache Spark, Delta Lake, and MLflow are freely available by design Data democratisation mission — making enterprise-grade data and AI accessible to all organisations High technical bar — engineering culture shaped by Berkeley PhD researchers and their standards Private at $62B valuation — one of the highest-valued private tech companies globally Hybrid work model with offices in San Francisco, Amsterdam, London, and other global hubs

Databricks' open-source strategy is genuine and central to the company's competitive moat. Apache Spark has over a thousand contributors globally; Delta Lake and MLflow have massive community adoption. Candidates who have contributed to any of these open-source projects, even in small ways, should mention it prominently — it is a strong cultural signal at a company that measures its impact partly by GitHub stars and PyPI downloads.

Databricks Job Applications - Frequently Asked Questions

Common questions from job seekers applying to Databricks. .

How long does Databricks take to respond?

Databricks typically responds within 2-4 weeks for qualified candidates. The full process from application to offer takes 5-8 weeks. Solutions architect and ML engineering roles are currently among the most active hiring areas.

What ATS does Databricks use?

Databricks uses Greenhouse. Tailor your CV with data platform keywords: Apache Spark, Delta Lake, Lakehouse, MLflow, data engineering, distributed systems, or cloud data architecture (AWS, Azure, GCP) depending on your target role.

Is Databricks a public company?

No. Databricks is private as of 2025, with a valuation of approximately $62 billion following its most recent funding round. The company has been preparing for an eventual IPO but has not set a public timeline. Employee equity is in private stock, which is illiquid until a liquidity event.

What is the Databricks Lakehouse architecture?

The Lakehouse combines the low-cost storage and flexibility of a data lake with the performance and reliability features (ACID transactions, schema enforcement) traditionally only available in data warehouses. Delta Lake provides these capabilities on top of cloud object storage. Databricks invented this architecture and it is now widely adopted across the industry.

Does Databricks hire outside of engineering?

Yes. Databricks has significant hiring across enterprise sales (account executives, sales engineers), solutions architecture, customer success, professional services, and corporate functions. Enterprise sales roles are particularly active as Databricks expands globally. Sales candidates with data platform or cloud infrastructure backgrounds are competitive.

How can LoopCV help me apply to Databricks?

LoopCV monitors Databricks' Greenhouse job board and automatically applies to matching roles in data engineering, ML engineering, solutions architecture, and enterprise sales the moment new positions are posted. Given Databricks' prestige and the competition for its roles, applying early matters significantly.

Auto-Apply to Databricks with LoopCV

Databricks is one of the most technically prestigious and well-compensated data companies in the world. LoopCV monitors Greenhouse and applies automatically the moment a matching role is posted.