Research Beta Version  ·  Please do not share data or code  ·  Contents are still subject to change

Towards open
and traceable
corporate data

Automated extraction, verification, and analysis across thousands of sustainability disclosures — all in one platform.

How it works

From report to insight,
in minutes.

A single pipeline that turns raw sustainability disclosures into clean, verified, structured data.

01 The Source

Every insight starts
with a report.

Companies publish annual and sustainability reports packed with ESG metrics, narratives, and disclosures. The SRN Lab hosts the most complete database of public CSRD-compliant reports and we are growing our database every day.

Acme_AR_2025.pdf
Annual Report 2025
Scope 1 Emissions 12,450 tCO₂e
Page 47 of 234 PDF
02 Ingest & Embed

Reports become
queryable knowledge.

Each document is chunked and embedded into a semantic vector store, linked to company metadata. Every section is instantly searchable and cross-referenceable across the entire universe of reports.

Vector Store · 3 documents
PDF
climatebiodiversitygovernance
own workforcesupply chainpollution
Chunks: 2,847 · Dim: 1,536
03 Define Schema

You decide what
data you need.

Build a custom extraction schema — define fields, data types, and validation rules. If it appears somewhere in the report, we can extract and structure it, be it standardized financial data or unstructured ESG-related information.

Extraction Schema + Add field
scope_1_emissions number req
scope_2_market_based number req
board_diversity percent opt
water_withdrawal number opt
employees_total integer req
net_zero_target_|
04 AI Extraction

Our AI reads every page,
for every company.

State-of-the-art extraction models run across your entire report universe, pulling structured data points with source references, using a mix of keyword-based search and semantic similarity to identify the right paragraphs.

AI Extraction · running 94.2% conf.
Source · p.47
The company reported Scope 1 emissions of 12,450 tCO₂e for FY 2023. Board included 38% women.
Extracted
scope_1 12,450tCO₂e
board_div 38%
employees 24,300
05 Verify

Human oversight,
built in.

Sample-verify AI extractions yourself or onboard a review team. Flag discrepancies, tune prompts, and adjust model settings — building a quality loop that compounds over time.

Review Queue 94.2% ✓
scope_1_emissions 12,450 tCO₂e
board_diversity 38%
water_withdrawal 2.4M m³
employees_total 24,300
J
T
A
3 reviewers active
06 Quality & Outliers

Catch what
the eye misses.

Automated rule checks and outlier detection surface anomalies, data gaps, and inconsistencies across the full dataset before they reach downstream analysis.

Scope 1 Emissions · 8 companies
↑ outlier
⚠ 1 outlier detected · value 3.1× above median
07 Distribute

Trusted data,
ready to use.

Export via REST API or download as a flat file CSV. Integrate into models, dashboards, or research workflows — fully traceable, with provenance back to the source.

GET /api/v1/esg
{
"company": "Acme Corp",
"year": 2023,
"scope_1": 12450,
"scope_2": 3820,
"board_div": 0.38
}
CSV
API
Browser
Get started for free

Research preview · free to use · subject to approval for research purposes only.
Reach out to hello@srnav.com for any questions.