

Raas Infotek
Senior MLOps Technical Lead
⭐ - Featured Role | Apply direct with Data Freelance Hub
This role is for a Senior MLOps Technical Lead, onsite in Cupertino, CA or Austin, TX, for 12+ years of experience. Pay rate is competitive. Key skills include Python, cloud infrastructure, AI systems integration, and container orchestration.
🌎 - Country
United States
💱 - Currency
$ USD
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💰 - Day rate
Unknown
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🗓️ - Date
March 21, 2026
🕒 - Duration
Unknown
-
🏝️ - Location
On-site
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📄 - Contract
Unknown
-
🔒 - Security
Unknown
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📍 - Location detailed
Austin, TX
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🧠 - Skills detailed
#Deployment #GCP (Google Cloud Platform) #Kubernetes #Regression #Batch #TypeScript #AI (Artificial Intelligence) #Scala #Docker #Cloud #ML (Machine Learning) #AWS (Amazon Web Services) #Observability #Python #API (Application Programming Interface) #Azure
Role description
Hi,
I hope you are doing well.
We have an urgent below position .If you are interested, please share your updated resume with the rate expectation.
Role: Senior MLOps Technical Lead
Location: Cupertino, CA/ Austin, TX - Onsite
Visa Status: GC/USC and GCEAD/E3/TN with pp no.
Experience: 12+ years
Job description:
Objective:
Build intelligent, data-driven platform. The focus is to support the development of next-generation test analytics and test agents that enable faster insights, improved diagnostics, and scalable infrastructure for Generative AI systems connecting test stations, line level data and pipelines . You will build automated evaluation tools, and conduct rigorous statistical analyses to ensure the reliability of both human and AI-based assessment systems.
Benchmark, adapt, and integrate AI/ML models into existing software systems. Independently run and analyze ML experiments for real improvements.
Must-Have Requirements
Requirement Details
Backend/Systems Experience 3+ years building production backend or distributed systems (pre-AI experience required)
Production AI Systems Has shipped AI/LLM features serving real users at scale — not just prototypes or demos
Agentic Systems Has built AI agents, skills, tools, or MCP (Model Context Protocol) integrations
Python Proficient for backend development
Secondary Language Working knowledge of Go, TypeScript, or Rust
Cloud Infrastructure Deep experience with AWS/GCP/Azure — cost optimization, compute decisions, not just deployment
Container & Orchestration Hands-on with Docker and Kubernetes — can build, deploy, debug, and scale services themselves
LLM Integration Understands token economics, context limits, rate limiting, structured outputs, API failure modes
LLM Evaluation Understands how to evaluate LLM outputs and the inherent challenges (non-determinism, quality measurement, regression detection)
Hands-On Engineer Not just an architect — writes code, debugs production issues, deploys their own work
\_\_\_\_\_\_\_\_\_\_\_\_\_\_\_\_\_\_\_\_\_\_\_\_\_\_\_\_\_\_\_\_\_\_\_\_\_\_\_\_
Preferred / Differentiators
• Built multi-step agentic workflows with tool use and function calling
• Experience with agent orchestration frameworks (LangGraph, CrewAI, or custom)
• Built guardrails, fallbacks, or graceful degradation for AI systems
• Streaming inference and async agent orchestration
• Cost/latency optimization: caching, batching, prompt compression
• ML observability tools: Langfuse, Arize, Braintrust, W&B
• Retrieval systems (vector search, hybrid search) — as a tool, not the focus
--
Thanks & Regards,
Anil Kumar
Raas Infotek Corporation.
262 Chapman Road, Suite 105A,
Newark, DE -19702
Direct No: 302-286-9932 Ext: 133
Email: anil.kumar@raasinfotek.com
Hi,
I hope you are doing well.
We have an urgent below position .If you are interested, please share your updated resume with the rate expectation.
Role: Senior MLOps Technical Lead
Location: Cupertino, CA/ Austin, TX - Onsite
Visa Status: GC/USC and GCEAD/E3/TN with pp no.
Experience: 12+ years
Job description:
Objective:
Build intelligent, data-driven platform. The focus is to support the development of next-generation test analytics and test agents that enable faster insights, improved diagnostics, and scalable infrastructure for Generative AI systems connecting test stations, line level data and pipelines . You will build automated evaluation tools, and conduct rigorous statistical analyses to ensure the reliability of both human and AI-based assessment systems.
Benchmark, adapt, and integrate AI/ML models into existing software systems. Independently run and analyze ML experiments for real improvements.
Must-Have Requirements
Requirement Details
Backend/Systems Experience 3+ years building production backend or distributed systems (pre-AI experience required)
Production AI Systems Has shipped AI/LLM features serving real users at scale — not just prototypes or demos
Agentic Systems Has built AI agents, skills, tools, or MCP (Model Context Protocol) integrations
Python Proficient for backend development
Secondary Language Working knowledge of Go, TypeScript, or Rust
Cloud Infrastructure Deep experience with AWS/GCP/Azure — cost optimization, compute decisions, not just deployment
Container & Orchestration Hands-on with Docker and Kubernetes — can build, deploy, debug, and scale services themselves
LLM Integration Understands token economics, context limits, rate limiting, structured outputs, API failure modes
LLM Evaluation Understands how to evaluate LLM outputs and the inherent challenges (non-determinism, quality measurement, regression detection)
Hands-On Engineer Not just an architect — writes code, debugs production issues, deploys their own work
\_\_\_\_\_\_\_\_\_\_\_\_\_\_\_\_\_\_\_\_\_\_\_\_\_\_\_\_\_\_\_\_\_\_\_\_\_\_\_\_
Preferred / Differentiators
• Built multi-step agentic workflows with tool use and function calling
• Experience with agent orchestration frameworks (LangGraph, CrewAI, or custom)
• Built guardrails, fallbacks, or graceful degradation for AI systems
• Streaming inference and async agent orchestration
• Cost/latency optimization: caching, batching, prompt compression
• ML observability tools: Langfuse, Arize, Braintrust, W&B
• Retrieval systems (vector search, hybrid search) — as a tool, not the focus
--
Thanks & Regards,
Anil Kumar
Raas Infotek Corporation.
262 Chapman Road, Suite 105A,
Newark, DE -19702
Direct No: 302-286-9932 Ext: 133
Email: anil.kumar@raasinfotek.com






