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Senior Fastapi Jobs in Georgia (NOW HIRING)

They are seeking a Senior Solutions Architect to define AI/ML adoption roadmaps and lead teams in ... FastAPI, Flask). • Working knowledge of Java, C#, or Go for enterprise integrations and ...

Senior Software Engineer

Atlanta, GA · On-site +1

$117K - $155K/yr

THE POSITION The Sr. Software Engineer is the engine room of our engineering org. You will lead ... Rails, FastAPI, .NET, Postgres, DynamoDB, MSSQL Server, Docker, Terraform * Cloud Providers: AWS ...

... by FastAPI, PostgreSQL, Redis, and AI-driven ingestion workflows If you're an AI-forward engineer ... Proven experience as a Senior or Staff-level engineer building production SaaS or data platforms

... by FastAPI, PostgreSQL, Redis, and AI-driven ingestion workflows If you're an AI-forward engineer ... Proven experience as a Senior or Staff-level engineer building production SaaS or data platforms

Required Skills & Qualifications * 3 years (Mid) / 5 years (Senior) experience shipping ML systems ... Experience building and deploying ML services (e.g., FastAPI/Flask), containerization (Docker), and ...

GCP Data Engineer

Atlanta, GA · On-site

$110K - $132K/yr

B2/C1 The Senior Staff Data Engineer - API serves as a primary development resource for design ... FastAPI Framework o Spark Streaming, Kafka o SQL, JSON, Avro, Parquet o Java, Python, or Scala ...

Advanced Python proficiency including async patterns, data manipulation (pandas, NumPy), and REST API development (FastAPI, Flask). * Working knowledge of Java, C#, or Go for enterprise integrations ...

Advanced Python proficiency including async patterns, data manipulation (pandas, NumPy), and REST API development (FastAPI, Flask). * Working knowledge of Java, C#, or Go for enterprise integrations ...

Principal Software Engineer

Atlanta, GA · On-site

$129K - $174K/yr

Mentor senior and mid-level engineers through design reviews, code reviews, and architecture deep ... such as FastAPI, including schema validation, versioning, and backwards compatibility

Principal Software Engineer

Atlanta, GA · On-site

$129K - $174K/yr

Mentor senior and mid-level engineers through design reviews, code reviews, and architecture deep ... such as FastAPI, including schema validation, versioning, and backwards compatibility

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Showing results 1-20

Senior Fastapi information

What is the difference between Senior Fastapi vs Backend Developer?

AspectSenior FastapiBackend Developer
Primary FocusBuilding APIs with Fastapi frameworkDeveloping server-side logic across various frameworks
Required SkillsPython, Fastapi, async programming, REST API designPython, multiple frameworks (Django, Flask, Fastapi), database management
Work EnvironmentTech companies, startups, cloud-based projectsVaried industries, enterprise and startup environments
CertificationsPython certifications, Fastapi experiencePython certifications, general backend development certifications

Senior Fastapi specialists focus specifically on building high-performance APIs using the Fastapi framework, often requiring expertise in async programming and REST API design. Backend Developers have a broader scope, working across multiple frameworks and technologies to develop server-side logic. While both roles require Python skills, Senior Fastapi roles are more specialized, whereas Backend Developers have a wider range of tools and responsibilities.

What are the most commonly searched types of Fastapi jobs in Georgia? The most popular types of Fastapi jobs in Georgia are:
AI SENIOR SOLUTIONS ARCHITECT

AI SENIOR SOLUTIONS ARCHITECT

Kaleris

Alpharetta, GA • On-site

Full-time

Posted 18 days ago


Job description

Job Summary:
Kaleris is a company focused on AI and enterprise applications. They are seeking a Senior Solutions Architect to define AI/ML adoption roadmaps and lead teams in delivering complex AI projects, ensuring integration with enterprise systems and compliance with governance standards.
Responsibilities:
• Define an AI/ML adoption roadmap across ERP, CRM, HRIS, BI, and custom applications.
• Translate strategic objectives into use-case-driven AI initiatives, leveraging GenAI capabilities for tangible business value.
• Advise IT leadership on emerging AI trends, frameworks, and platform innovations (e.g., LLM orchestration, multi-modal AI).
• Architect end-to-end AI solutions in Microsoft Azure AI, integrating with enterprise systems via REST APIs, GraphQL, and event-driven architectures.
• Ensure compatibility with solutions running in AWS SageMaker and hybrid-cloud deployments.
• Assist with design data ingestion and preparation pipelines.
• Lead a team of engineers and data scientists in delivering complex AI projects (e.g., document intelligence, NLP chatbots, predictive analytics, RPA workflows).
• Implement MLOps practices and CI/CD pipelines using GitHub Actions for AI model lifecycle management.
• Establish model monitoring, retraining schedules, and drift detection with frameworks like MLflow and Kubeflow.
• Own AI project delivery from PoC to production, ensuring robust governance, risk management, security, and compliance.
• Deploy scalable models in Azure AI Studio and productionize via APIs or microservices in Kubernetes/AKS.
• Collaborate with Business Analysts, Product Owners, Developers, and Data Engineers to ensure solutions meet functional and performance requirements.
• Partner with external AI vendors, cloud providers, and technology partners to align on deliverables and integrations.
• Hands-on evaluation and selection of AI/ML frameworks (PyTorch, TensorFlow, scikit-learn) and GenAI orchestration tools (LangChain, Semantic Kernel).
• Review and approve solution architecture and code for scalability, efficiency, and security compliance.
• Mentor and develop team members through training on AI frameworks, cloud development practices, and architectural patterns.
• Assist with implementation of AI-specific data governance, privacy policies, and responsible AI principles.
• Ensure compliance with standards and regulations (GDPR, SOC 2, ISO 27001) and practices such as OAuth2, SAML, RBAC/ABAC, encryption-at-rest/in-transit.
• Initiate and lead rapid Proofs of Concept (PoCs) and Minimum Viable Products (MVPs) using AI and GenAI for streamlined business processes.
• Explore and pilot new AI features in LLMs, vision models, speech-to-text, translation, and personalization engines.
Qualifications:
Required:
• Bachelor's or Master's degree in Computer Science, Data Science, AI/ML Engineering, or a related technical field.
• 5+ years in enterprise IT/applications management with at least 5+ years in AI/ML solution delivery in production environments.
• Proven track record leading cross-functional technical teams on complex AI/ML projects in diverse, matrixed enterprise environments.
• Deep experience with enterprise application platforms including CRM (Salesforce), ERP (NetSuite, SAP, Oracle), HRIS (Workday), and PSA/Billing (Certinia).
• Demonstrated expertise in GenAI, NLP, RPA, predictive modeling, computer vision, and recommendation systems.
• Strong understanding of enterprise integration patterns, event-driven architecture, and data engineering principles.
• Experience working in regulated or compliance-sensitive environments (SOC 2, GDPR, ISO 27001).
• Ability to balance hands-on technical delivery with strategic planning and executive-level communication.
• Strong project ownership and accountability with experience in end-to-end delivery from requirements through post-production support.
• Advanced Python proficiency including async patterns, data manipulation (pandas, NumPy), and REST API development (FastAPI, Flask).
• Working knowledge of Java, C#, or Go for enterprise integrations and microservices development.
• Hands-on experience with AI/ML frameworks: TensorFlow, PyTorch, scikit-learn, Hugging Face Transformers.
• GenAI orchestration tools: LangChain, Semantic Kernel, LlamaIndex; experience with prompt engineering and RAG architecture design.
• Expertise in cloud-native architecture on Microsoft Azure: Azure AI Studio, Azure Machine Learning, Azure OpenAI Service, Azure Data Factory, Synapse Analytics, AKS, Azure Functions.
• Hands-on experience with AWS ML services: SageMaker, Bedrock, Lambda, S3, and hybrid-cloud deployment patterns.
• Container orchestration: Kubernetes (AKS/EKS), Docker, Helm charts for ML model deployment.
• Infrastructure-as-Code: Terraform, Bicep, or ARM templates for reproducible environment provisioning.
• Integration patterns: REST APIs, gRPC, GraphQL, message queues (Kafka, Azure Service Bus, RabbitMQ), and webhook-based architectures.
• Data streaming and batch pipeline design using Azure Data Factory, Databricks, Synapse Analytics, and Spark.
• Experience designing vector databases and embedding pipelines for RAG/semantic search (Azure AI Search, Pinecone, Weaviate).
• Familiarity with data lakehouse patterns and medallion architecture (Bronze/Silver/Gold).
• CI/CD pipeline implementation for AI/ML workloads using Azure DevOps, GitHub Actions, or Jenkins.
• MLOps platforms: MLflow, Kubeflow, Azure ML Pipelines including model registry, versioning, and experiment tracking.
• Model monitoring, drift detection, and automated retraining pipelines.
• Security tooling: IAM/RBAC, OAuth2/SAML implementation, encryption-at-rest and in-transit, vulnerability scanning (Snyk, Dependabot).
• Experience with process automation platforms: Power Automate, UiPath, Blue Prism including AI-augmented workflow design.
• Familiarity with Microsoft Power Platform (Power Apps, Power Automate, Copilot Studio) for low-code AI integration.
Preferred:
• Exceptional communication across technical and executive levels — able to translate complex AI concepts into business value narratives.
• Demonstrated track record in change management for enterprise AI adoption, including stakeholder readiness, training, and cultural enablement.
• Advanced problem-solving skills, particularly in scaling AI workloads from prototype to production under enterprise constraints.
• Ability to architect AI reference patterns, reusable components, and drive enterprise-wide standards adoption.
• Experience building and presenting business cases for AI investments, including ROI modeling, TCO analysis, and risk framing.
• Familiarity with AI agent frameworks (AutoGen, CrewAI, OpenAI Assistants API) and multi-agent orchestration patterns.
• Exposure to AI governance frameworks (NIST AI RMF, EU AI Act, Microsoft Responsible AI Standard) and enterprise AI policy design.
• Experience with Salesforce Einstein, Agentforce, or Salesforce AI capabilities a plus given enterprise CRM environment.
• Contributions to open-source AI projects, published research, or conference presentations a distinguishing factor.
• Relevant certifications: Microsoft Azure AI Engineer (AI-102), AWS Certified ML Specialty, Google Professional ML Engineer, or equivalent.
Company:
Kaleris is a logistics platform that provides cloud-based supply chain execution and visibility technology solutions. Founded in 2004, the company is headquartered in Alpharetta, USA, with a team of 501-1000 employees. The company is currently Late Stage.