San Francisco Data & Analytics: Python, SQL, Machine Learning Lead 989 Roles -- January 2026
BetaSan Francisco data hiring in January 2026 featured 1,011 roles from 483 employers, with Fintech leading at 17% and strong ML Engineer demand at 40% of positions. Median disclosed salary reached $204k among the 22% of tracked roles with employer-provided salary ranges.
This report analyzes 989 Data & Analytics job postings from 472+ companies tracked via direct employer career pages and job board aggregators. Our coverage skews toward tech-forward and scaling companies; large enterprises using enterprise hiring platforms may be underrepresented. Coverage varies by section and is noted throughout.
Key Takeaways for Hiring Managers
Compensation
22% of roles with disclosed salary ranges
Overall Distribution
25th Percentile
$165K
Median
$204K
75th Percentile
$243K
IQR (Spread)
$78K
Advertised Salary by Seniority
Advertised Salary by Role
Employers Hiring for Data & Analytics Roles
New This Month
Uber, SoFi, Nuro
Biggest Decline
Roblox
-2pp
Market interpretation: Uber leads with 3% of tracked roles, followed by Waymo, Capital One, Sofi, and Nuro at 2% each. New entrants this month include Uber, Sofi, and Nuro, reflecting continued investment in mobility and fintech sectors. Hiring is broadly distributed across 483 employers.
Industry Distribution
65% of roles with industry data
Biggest Gainer
Fintech
+3pp
New This Month
Climate & Sustainability
Biggest Decline
AI & Machine Learning
-4pp
Fintech leads at 17%, followed by Mobility at 13% and Professional Services at 11%. The AI/ML sector's 9% share reflects San Francisco's position as a hub for machine learning innovation. Month-over-month, Fintech gained 3 percentage points while Data Infrastructure declined 4 points, though these shifts may reflect sampling variation rather than market trends. Industry coverage is 65% of tracked roles.
Role Specialization
Biggest Gainer
ML Engineer
+3pp
Biggest Decline
Data Engineer
-2pp
ML Engineer roles lead at 40% (+3pp MoM), reflecting San Francisco's AI/ML focus. Data Scientist follows at 19%, with Data Engineer at 16% (-2pp MoM). Traditional analytics roles (Data Analyst, Product Analytics) comprise a smaller share, suggesting the market skews toward technical implementation over analysis.
Seniority Distribution
Junior: 0-2 years | Mid-Level: 3-5 years | Senior: 6-10 years | Staff/Principal: 11+ years (IC track) | Director+: Management track
Biggest Gainer
Director+
+3pp
Biggest Decline
Senior
-5pp
Senior-to-Junior Ratio
15:1
Senior+ roles per Junior role
Entry Accessibility Rate
15%
Junior + Mid-Level roles combined
Senior roles represent 52% of positions (-5pp MoM), with Staff/Principal at 22%. Director+ roles grew 4 percentage points to 11%. The 15:1 senior-to-junior ratio indicates a competitive market for entry-level candidates, with only 15% of roles accessible to those with under 3 years experience.
Company Maturity
65% of roles with company age data
Growth-stage companies (6-15 years) lead hiring at 49%, with mature organizations contributing 39%. Young companies under 5 years represent 12% of roles. This distribution reflects our data sources which tend toward venture-backed and growth-oriented companies.
Ownership Type
65% of roles with ownership data
Private companies account for 58% of tracked roles, reflecting the strong venture-backed startup ecosystem in San Francisco. Public companies contribute 34%, while subsidiaries represent 7% of positions.
Employer Size Distribution
62% of roles with company size data
Enterprise employers (1,000+ employees) lead at 47% of roles, with scale-ups (50-1,000) at 29% and startups under 50 employees at 25%. This mix offers candidates options ranging from established companies to early-stage ventures.
Working Arrangement
Onsite: office full-time | Hybrid: mix of office and remote | Remote: work from anywhere | Flexible: employee chooses arrangement
94% of roles with known working arrangement
Remote roles lead at 46%, with hybrid at 28% and flexible arrangements at 16%. Only 10% of positions require full onsite presence. This 90% flexibility rate aligns with San Francisco's tech culture and may help employers compete for talent in the current market.
Skills Demand
57% of roles with skills data
Skills insight: Python leads at 52% of roles with skill data, with SQL at 34%. Cloud platforms AWS (17%) and GCP (9%) are well-represented. ML-specific tools like PyTorch (12%), LLMs (13%), and TensorFlow (9%) reflect the market's ML Engineer focus. The Python + SQL combination appears in 27% of multi-skill requirements.
Market Context
Methodology
This report analyzes direct employer job postings for Data & Analytics roles in San Francisco during January 2026.
Data collection:
- 1.Over 1,000 roles from 483+ employers aggregated from multiple sources
- 2.Recruitment agency postings identified and excluded (4% of raw data)
- 3.Jobs deduplicated across sources to avoid double-counting
Classification:
- 1.Roles classified using an LLM-powered taxonomy
- 2.Subfamily, seniority, skills, and working arrangement extracted
- 3.Employer metadata enriched from company databases where available
Limitations:
- 1.Not a complete census of the market - some roles may not be captured
- 2.Skills analysis based on 560 roles with skill data (57% coverage)
- 3.Salary data available due to pay transparency law
- 4.Working arrangement based on 296 ATS-sourced roles (Adzuna excluded due to truncated descriptions)
Data coverage:
77%
Seniority coverage
Roles with seniority level classified
94%
Arrangement coverage
Roles with working arrangement known
57%
Skills coverage
Roles with skills extracted from description
73%
Employer metadata
Roles with enriched company data
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