Senior Software Engineer - Network Enablement (Applied ML)
Plaid
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See open jobs at Plaid.See open jobs similar to "Senior Software Engineer - Network Enablement (Applied ML)" Base10.Software Engineering, Data Science
San Francisco, CA, USA
USD 190,800-286,800 / year
Responsibilities
- Embed model inference into Network Enablement product flows and decision logic (APIs, feature flags, backend flows).
- Define and instrument product + ML success metrics (fraud reduction, retention lift, false positives, downstream impact).
- Design and run experiments and rollout plans (backtesting, shadow scoring, A/B tests, feature-flagged releases) to validate product hypotheses.
- Build and operate offline training pipelines and production batch scoring for bank intelligence products.
- Ship and maintain online feature serving and low-latency model inference endpoints for real-time partner/bank scoring.
- Implement model CI/CD, model/version registry, and safe rollout/rollback strategies.
- Monitor model/data health: drift/regression detection, model-quality dashboards, alerts, and SLOs targeted to partner product needs.
- Ensure offline and online parity, data lineage, and automated validation / data contracts to reduce regressions.
- Optimize inference performance and cost for real-time scoring (batching, caching, runtime selection).Ensure fairness, explainability and PII-aware handling for partner-facing ML features; maintain auditability for compliance.
- Partner with platform and cross-functional teams to scale the ML/data foundation (graph features, sequence embeddings, unified pipelines).
- Mentor engineers and document team standards for ML productization and operations.
Qualifications
- Must-haves:
- Strong software engineering skills including systems design, APIs, and building reliable backend services (Go or Python preferred).
- Production experience with batch and streaming data pipelines and orchestration tools such as Airflow or Spark.
- Experience building or operating real-time scoring and online feature-serving systems, including feature stores and low-latency model inference.
- Experience integrating model outputs into product flows (APIs, feature flags) and measuring impact through experiments and product metrics.
- Experience with model lifecycle and operations: model registries, CI/CD for models, reproducible training, offline & online parity, monitoring and incident response.
- Nice to have:
- Experience in fraud, risk, or marketing intelligence domains.
- Experience with feature-store products (Tecton / Chronon / Feast / internal) and unified pipelines.
- Experience with graph frameworks, graph feature engineering, or sequence embeddings.
- Experience optimizing inference at scale (Triton/ONNX/quantization, batching, caching).
190800 - 286800 USD a year
The target base salary for this position ranges from $190,800/year to $286,800/year in Zone 1. The target base salary will vary based on the job's location.
Our geographic zones are as follows:
Zone 1 - San Francisco / New York City / Seattle
Zone 2 - Los Angeles / Washington DC / Austin / Boston / Sacramento / San Diego
Zone 3 - Atlanta / Portland / Chicago / Philadelphia / Denver / Miami / Dallas / Raleigh
Zone 4 - All other US cities
The base salary range listed for this full-time position excludes commission (if applicable), equity and benefits. The pay range shown on each job posting is the minimum and maximum target for new-hire salaries. Actual pay may be higher or lower depending on factors like skills, experience, and relevant education or training.
This job is no longer accepting applications
See open jobs at Plaid.See open jobs similar to "Senior Software Engineer - Network Enablement (Applied ML)" Base10.