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Machine Learning Engineer

Posted 7 hours ago

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Job Description

At Inflection AI, our public benefit mission is to harness the power of AI to improve human well-being and productivity.

The next era of AI will be defined by agents we trust to act on our behalf. 

We’re pioneering this future with human-centered AI models that unite emotional intelligence (EQ) and raw intelligence (IQ)—transforming interactions from transactional to relational, to create enduring value for individuals and enterprises alike.

Our work comes to life in two ways today:

Pi, your personal AI, designed to be a kind and supportive companion that elevates everyday life with practical assistance and perspectives.

Platform — large-language models (LLMs) and APIs that enable builders, agents, and enterprises to bring Pi-class emotional intelligence into experiences where empathy and human understanding matter most.

We are building toward a future of AI agents that earn trust, deepen understanding, and create aligned, long-term value for all.

About the Role

As a Senior Machine Learning Engineer on the AI Engineering team, you will be a key technical leader responsible for designing and scaling the systems that bring our models from research into reliable, production-grade deployments.

You will work at the intersection of large-scale ML systems, low-latency inference, distributed infrastructure, and product integration. Your work will directly impact how intelligence is delivered to millions of users—ensuring performance, reliability, safety, and continuous improvement of our AI systems.

What You’ll Do

Production ML & Model Serving

  • Design and implement scalable, low-latency model-serving infrastructure for large language models and multimodal systems.
  • Build and maintain robust APIs and services to support real-time conversational workloads.
  • Optimize inference systems for throughput, latency, cost-efficiency, and reliability.

MLOps & Infrastructure

  • Architect and improve end-to-end ML pipelines spanning training, evaluation, deployment, monitoring, and rollback.
  • Develop model lifecycle management systems with strong observability and performance tracking.
  • Partner with infrastructure teams to scale compute resources efficiently across distributed environments.
  • Improve CI/CD workflows and automation for model releases and infrastructure updates.

Research-to-Production Enablement

  • Collaborate with ML researchers to productionize new model architectures and capabilities.
  • Design abstractions that enable rapid experimentation while preserving safety, quality, and reliability.
  • Implement evaluation frameworks and guardrails to ensure models meet performance and safety standards before deployment.

Data & Feedback Systems

  • Define data requirements and feedback loops to enable continuous model improvement.
  • Partner with product and safety teams to integrate telemetry, evaluation signals, and user feedback into training pipelines.
  • Ensure high-quality data ingestion and metadata tracking for ML readiness.

Architecture & Technical Leadership

  • Lead architectural decisions that balance performance, scalability, safety, and maintainability.
  • Contribute to code reviews and engineering best practices across the team.
  • Mentor engineers and raise the bar for production ML excellence.
  • Help shape long-term technical strategy for deploying AI systems at global scale.

What We’re Looking For

Required Qualifications

  • 1-4 years of experience in machine learning engineering, backend systems, or distributed infrastructure.
  • Proven experience deploying and operating ML models in production environments.
  • Strong programming skills in Python and/or C++ (or equivalent systems language).
  • Experience with large-scale model serving (LLMs, transformers, or similar architectures).
  • Deep understanding of distributed systems, API design, and cloud infrastructure.
  • Experience with MLOps tools and workflows (CI/CD, model monitoring, experiment tracking).

Preferred Qualifications

  • Experience scaling high-throughput, low-latency inference systems.
  • Familiarity with GPU acceleration, model optimization (quantization, batching, caching), and performance tuning.
  • Experience working with conversational AI systems or real-time user-facing AI products.
  • Knowledge of ML evaluation methodologies, safety systems, and guardrail design.
  • Background collaborating closely with research teams in fast-paced AI environments.

Employee Pay Disclosures

At Inflection AI, we aim to attract and retain the best employees and compensate them in a way that appropriately and fairly values their individual contributions to the company. For this role, Inflection AI estimates a starting annual base salary to fall within the range of $172,000.00 to $250,000.00, depending on a candidate’s qualifications and level of experience. This role also includes a meaningful equity component, allowing employees to share in the long-term success of the company.

Benefits

Inflection AI values and supports our team’s mental and physical health. We are focused on building a positive, safe, inclusive and inspiring place to work. Our benefits include: 

  • Diverse medical, dental and vision options 
  • 401k matching program 
  • Unlimited paid time off 
  • Parental leave and flexibility for all parents and caregivers
  • Support of country-specific visa needs for international employees living in the Bay Area

Please mention that you found this job on MoAIJobs, this helps us grow. Thank you!

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Inflection AI

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About the job

Posted on

Mar 10, 2026

Apply before

Apr 9, 2026

Job typeFull-time
Salary Range
$172,000 - $250,000/yr
CategoryML Engineer

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