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Software Engineer III

Software Engineer III

CompanyWalmart
LocationBentonville, AR, USA
Salary$90000 – $180000
TypeFull-Time
Degrees
Experience LevelMid Level, Senior

Requirements

  • Experience in ML systems engineering (esp. time series and sequence models) and full stack software development.
  • Proven ability in backend engineering (Python, FastAPI, Flask, Node.js, or similar), API design, and microservice architecture.
  • Strong grasp of cloud platforms (GCP, Azure, or AWS), containerization (Docker), orchestration (Kubernetes), and infrastructure-as-code (Terraform, CloudFormation).
  • Experience implementing CI/CD, DevOps best practices, monitoring, and logging for both ML and web services.
  • Experienced in distributed computing and processing big data for feature engineering, model training, and inference.
  • Hands-on with PyTorch, TensorFlow/Keras, Scikit-learn, and MLOps tools (MLflow, Vertex AI, Sagemaker, etc.).

Responsibilities

  • Develop, and deploy scalable, production-grade time series forecasting systems using advanced global models to support high-volume retail and e-commerce workloads.
  • Build and orchestrate end-to-end ML pipelines for data ingestion, training, evaluation, deployment, and monitoring, leveraging workflow managers such as Airflow, Astronomer, or Kubeflow.
  • Engineer robust backend services and RESTful APIs to serve ML models and analytics, ensuring secure, reliable, and low-latency data access for internal and external stakeholders.
  • Implement and automate CI/CD pipelines for code, models, and infrastructure, applying best practices for version control, testing, code review, and continuous integration.
  • Integrate generative AI and NLP-based analytics assistants into both backend and frontend workflows for intelligent querying, reporting, and data synthesis.
  • Utilize distributed compute frameworks (Spark, Ray, Dask) for large-scale data processing and model training, ensuring scalable and efficient resource use.
  • Develop and maintain cloud-native microservices and infrastructure (Docker, Kubernetes, Terraform, GCP, Azure) for robust deployment, scaling, and monitoring of ML and web applications.
  • Collaborate closely with cross-functional teams (software engineers, data scientists, product, business) to gather requirements, design end-to-end solutions, and deliver value through technology.

Preferred Qualifications

  • Experience with retrieval-augmented generation (RAG), LLM fine-tuning, and large-scale NLP pipelines.
  • Expertise in real-time data processing, WebSockets, and serverless architectures.
  • Domain experience in retail, e-commerce, or financial analytics.