Socure is building the identity trust infrastructure for the digital economy â verifying 100% of good identities in real time and stopping fraud before it starts. The mission is big, the problems are complex, and the impact is felt by businesses, governments, and millions of people every day.
We hire people who want that level of responsibility. People who move fast, think critically, act like owners, and care deeply about solving customer problems with precision. If you want predictability or narrow scope, this wonât be your place. If you want to help build the future of identity with a team that holds a high bar for itself â keep reading.
The Big Data R&D team builds the core entityâresolution and graphâbased intelligence that underpins Socureâs Verify and KYC products. As a Senior Data Scientist focused on international eKYC, you will be a technical leader driving the next generation of global identity verification solutions. You will design and deploy ML and graph-based systems tailored to diverse international markets, regulations, and data ecosystemsâcovering government IDs, telco and credit bureaus, mobile-first data, and nonâtraditional signals.
You will own complex, crossâproduct initiatives such as international identity graph evolution, probabilistic matching for nonâUS identities, and scalable evaluation frameworks that account for regional regulatory and fairness constraints. You will closely partner with Product, Engineering, Compliance, and GTM teams to launch and scale eKYC solutions across multiple countries and regions.
International eKYC Modeling & Entity Resolution
Lead the design, development, and deployment of ML and graph-based algorithms for international entity resolution, identity trust scoring, and anomaly detection across heterogeneous, countryâspecific datasets.
Architect reusable matching and linking frameworks that work across multiple ID schemes (e.g., national ID numbers, passports, voter IDs, mobile accounts, bank accounts) and local name/address conventions.
Develop probabilistic and ruleâaugmented models that handle noisy, sparse, or partially labeled international data while maintaining explainability and regulatory defensibility.
Global Identity Graph & Data Quality
Define and evolve the international extension of Socureâs identity graph: schema design, linkage strategies, quality tiers, and confidence scoring that can be leveraged by multiple products (Verify, KYC, watchlists, fraud).
Design and implement robust data quality and monitoring frameworks for international identity data (coverage, stability, drift, regional bias, label quality) and integrate them into modeling and production monitoring workflows.
Build scalable approaches for handling linguistic and cultural variation (e.g., transliteration, multiâscript names, address normalization, local naming patterns) in the identity graph and matching pipelines.
Evaluation, Experimentation, and Model Governance
Own experimentation strategy for major international eKYC initiatives:
Design offline evaluations and online A/B tests that reflect local ground truth constraints and data sparsity.
Define success metrics that balance approval rates, fraud capture, and regulatory/operational constraints per market.
Analyze lift, stability, and fairness tradeâoffs and drive go/noâgo decisions with Product and Engineering.
Define and maintain evaluation frameworks specific to international eKYC (e.g., regional coverage maps, crossâborder identity leakage, local demographic impact, regulatory thresholds).
Contribute to model governance documentation and support responses to regulators and large enterprise customers regarding model logic, data provenance, fairness, and monitoring for international markets.
Data Source Strategy & Vendor Evaluation (International)
Lead the evaluation and integration of international data vendors (e.g., bureaus, telcos, public records, alternative data):
Design benchmarking methodologies for signal quality, incremental value, stability, and fairness by country/segment.
Quantify ROI and tradeâoffs across multiple vendors and data types; provide clear recommendations that influence product and commercial decisions.
Partner with Data Acquisition, Legal, and Compliance to ensure that data usage and modeling approaches meet regional regulatory requirements (e.g., GDPR and local privacy/AML/KYC rules).
Technical Leadership & CrossâFunctional Partnership
Collaborate with engineering leaders to design scalable, reliable international data and model pipelines using Spark/PySpark, AWS (EMR, S3, SageMaker, Neptune), and modern MLOps workflows.
Act as a subjectâmatter expert on international identity, eKYC regulations, and crossâborder data limitations for internal stakeholders, supporting complex customer questions and strategic roadmap discussions.
Mentor Data Scientists and Senior Data Scientists on best practices for international modeling: handling lowâlabel regimes, domain adaptation, localization of thresholds/logic, and building reusable abstractions instead of oneâoff country fixes.
Communicate strategy, progress, and results to senior leadership and crossâfunctional partners through clear documents and presentations, framing complex technical work in terms of business impact, regional risk, and regulatory tradeâoffs.
Education & Experience
Masterâs or Ph.D. in Computer Science, Data Science, Machine Learning, Statistics, Mathematics, or a related field, or equivalent practical experience.
6+ years of hands-on applied ML / data science experience (4+ with Ph.D.), including owning production models and pipelines in highâstakes domains (fraud, risk, identity, payments, credit, or similar).
Significant prior work on international or multiâregion products is strongly preferred (e.g., crossâcountry KYC, credit risk, payments, or compliance systems).
Technical Skills
Expertâlevel proficiency in Python and SQL, with extensive experience in distributed data processing (Spark/PySpark, Databricks or similar) on very large datasets.
Deep experience designing, training, and deploying models for classification, ranking, anomaly detection, and/or graph learning, including:
Feature engineering for noisy/heterogeneous identity data.
Robust evaluation under label sparsity and feedback delays.
Calibration and thresholding tailored to regional risk and regulatory constraints.
Proven expertise with graph technologies (e.g., Neo4j, AWS Neptune, GraphFrames, DGL, PyTorch Geometric) and graph algorithms (entity resolution, link prediction, community detection, label propagation) at scale.
Please note that sponsorship is not available at this time; and that you must be located within 45 miles of a talent hub to be considered.
Socure is an equal opportunity employer that values diversity in all its forms within our company. We do not discriminate based on race, religion, color, national origin, gender, sexual orientation, age, marital status, veteran status, or disability status.
If you need an accommodation during any stage of the application or hiring processâincluding interview or onboarding supportâplease reach out to your Socure recruiting partner directly.
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