Senior Software Engineer - Agentic AI - Python Expert

M-Tech Systems International, LLC.
Atlanta, United States of America
3 days ago

Role details

Contract type
Permanent contract
Employment type
Full-time (> 32 hours)
Working hours
Regular working hours
Languages
English
Experience level
Senior

Job location

Atlanta, United States of America

Tech stack

.NET
API
Artificial Intelligence
Application Performance Management
Azure
C Sharp (Programming Language)
Code Coverage
Continuous Integration
Data Integration
Cursor (Graphical User Interface Elements)
Programming Tools
Python
PostgreSQL
Machine Learning
Microsoft Data Access Components
Microsoft SQL Server
Performance Tuning
Redis
Regression Testing
Reliability Engineering
E2e Testing
Ionic
Azure DevOps Pipelines
Search Technologies
SQL Databases
TypeScript
Azure
Feature Engineering
GitHub Copilot
Large Language Models
Multi-Agent Systems
Prompt Engineering
Mttr
Cypress
FastAPI
Servicebus
Microsoft Fabric
Containerization
Data Lake
AI Platforms
Angular
Low Latency
HuggingFace
Machine Learning Operations
Front End Software Development
Virtual Agents
Api Design
gRPC
Stream Analytics
Automation Anywhere
Key Vault
Databricks

Job description

We are hiring senior engineers who build fast, think AI-first, and can take agentic AI from prototype to production. You will design, ship, and operate agentic systems that combine large language models (LLMs), tools/functions, planning, memory, evaluation, and multi-agent communication. You will work primarily in Python for AI services and integrate with our enterprise stack (TypeScript/Angular, .NET/C#, SQL Server, Azure), delivering trustworthy, cost-efficient, low-latency experiences in real customer workflows.

What You'll Do!

  • Build agentic AI applications on Azure AI Foundry: Azure OpenAI models, Prompt Flow, tools/function-calling, evaluations, vector search (Azure AI/Cognitive Search), and orchestration for multi-step reasoning and tool use.
  • Design memory & grounding: implement episodic/semantic/long-term memory with vector/graph stores; architect RAG pipelines and retrieval strategies that improve factuality and reduce latency/cost.
  • Integrate via Model Context Protocol (MCP) to standardize tool/skill access; design agent-to-agent communication, delegation, and event-driven workflows.
  • Connect agents to Microsoft Fabric (OneLake, Lakehouse, Warehouse, Real-Time Analytics) and Dataverse entities/workflows; ensure lineage, governance, and auditability.
  • Develop AI-native backend services in Python (FastAPI, asyncio) with evaluation harnesses, observability, and cost/latency/quality dashboards.
  • Embed AI features into the Speria stack: TypeScript/Angular UIs, .NET/C# services, SQL Server, NServiceBus, Azure DevOps pipelines, and Ionic/Cypress where applicable.
  • Use AI-augmented development tools like GitHub Copilot, Bolt, Cursor, Replit, and vibe-coding workflows to accelerate delivery, test generation, refactoring, and documentation.
  • Implement safety & reliability: guardrails, red-teaming, PII protection, prompt hardening, regression tests, automated evaluations; uphold SLO/SLA excellence in production.
  • Implement full cycle agentic engineering: design model/tool selection API & UI deployment monitoring continuous improvement., * Daily use of GitHub Copilot, Bolt, Cursor, Replit, and vibe-coding to speed delivery and raise quality.
  • Mentor teams in prompting, agent behavior design, context management, evaluation, and AI-assisted engineering practices.
  • Seasoned aptitude for action, tight feedback loops, crisp written communication, and ownership mindset.

Success Looks Like (Outcomes)

  • Quality & reliability: rising agent tool-use success rate; falling hallucination/retry rates; low incident volume; fast MTTR.
  • Performance & cost: P50/P95 latency and token-cost budgets met; measurable efficiency gains across services.
  • Adoption & impact: shipped features used by real users; clear business KPIs improved via automation/intelligence.
  • Engineering excellence: high test coverage, stable CI/CD, observable systems, and healthy on-call posture., * AI & Agentic: Azure AI Foundry (Azure OpenAI, Prompt Flow, evaluations), MCP, Semantic Kernel, LangGraph, LangChain, AutoGen, CrewAI, HuggingFace embeddings, vector DBs, Azure AI/Cognitive Search, RAG, memory architectures.
  • Data & Integration: Databricks (ELT, ML, Delta Lake, MLflow), Microsoft Fabric (OneLake/Lakehouse/Warehouse/Real-Time), Dataverse, Event Hubs/Service Bus.
  • IoT: Azure IoT Hub, IoT Edge, stream ingestion & device telemetry flows.
  • Services: Python (FastAPI, asyncio), .NET/C#, REST/gRPC, containers, CI/CD with Azure DevOps.
  • Frontend: TypeScript/Angular, Ionic; E2E testing with Cypress.
  • AI-Native Dev Tools: GitHub Copilot, Bolt, Cursor, Replit, vibe-coding workflows.

Requirements

Do you have experience in gRPC?, * Proven experience building LLM-powered applications with Azure OpenAI, embeddings, vector stores, RAG, prompt engineering, and evaluation pipelines.

  • Hands-on with agent frameworks such as Semantic Kernel, LangGraph, LangChain Agents, AutoGen, or CrewAI.
  • Ability to design deterministic, evaluatable, and safe agent behaviors including function schemas, tool success metrics, fallback strategies.
  • Practical use of Prompt Flow for authoring, testing, and deploying multi-step AI workflows in Azure AI Foundry.

MCP, Memory & Agentic Communication

  • Experience building and consuming MCP services to standardize tool access across agents.
  • Implemented memory architectures (episodic, semantic, vector, graph) and long-running conversational context.
  • Designed agent-to-agent communication patterns (messaging, orchestration, delegation, arbitration).

Microsoft Data & App Platform

  • Integration with Microsoft Fabric, SQL Server, Supabase, Databricks (OneLake/Lakehouse/Warehouse/Real-Time) for grounding data, retrieval, and telemetry.
  • Working knowledge of Dataverse entities, actions, and triggers; connecting agents to line-of-business records and Power Platform workflows.
  • Databricks for ELT, Delta Lake pipelines, feature engineering, ML training/serving, MLflow tracking and model lifecycle.
  • Azure IoT Hub/IoT Edge pipelines to incorporate device telemetry and edge-to-cloud intelligence into agentic workflows.
  • Azure services: App Service/Functions/AKS, Key Vault, Storage, Event Hubs/Service Bus, Monitor/Application Insights.

Python & Backend Engineering

  • Production-grade Python (FastAPI, asyncio, type hints), Postgres/SQL, Redis, queues, OpenTelemetry, CI/CD, and containerization.
  • Strong API design, testing (unit/integration/property-based), performance tuning, and reliability engineering.

Front-End & Speria Enterprise Stack

  • Experience in TypeScript/Angular for operator consoles and human-in-the-loop oversight.
  • Ability to integrate with .NET/C#, SQL Server, NServiceBus and Azure DevOps in our enterprise environment.

About the company

Speria is a commercial brand for the integrated offering within Munters FoodTech business, bringing together technologies, software and services into one connected offering. Speria delivers operational intelligence solutions for food systems, helping producers and integrators improve efficiency, build predictability and enable greater productivity. This means improving feed conversion, reducing waste and emissions, and supporting animal health and welfare. As a technology and services partner for food supply chain management, Speria supports mission-critical operations and decisions end-to-end.

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