Join SignalFire's Talent Network for Principal AI/ML Engineer Roles at VC-Backed Startups At SignalFire, we partner with top early-stage startups that are shaping the future of technology. Our portfolio spans 200+ innovative companies across AI, cybersecurity, healthtech, fintech, developer tools, and enterprise SaaS. We're looking to connect with exceptional Principal AI/ML Engineers who are excited about driving AI strategy, advancing machine learning research, and scaling AI-powered systems at high-growth startups. By joining SignalFire's Talent Network, your profile will be shared with our portfolio companies, giving you visibility into exclusive early-stage opportunities that may not be publicly listed. This is not an application for a specific job. Instead, this is a way to get on the radar of VC-backed startups that are actively hiring AI/ML talent. If you have any questions, please direct inquiries to
[email protected]. Who Should Join? We're looking for AI/ML experts who are: Passionate about developing and deploying cutting-edge machine learning and deep learning models Experienced in architecting scalable AI systems and leading technical teams Excited to push the boundaries of AI research and apply it to real-world business challengesTypical Roles & Responsibilities
- Architect, develop, and optimize machine learning and deep learning models for production systems
- Research and apply state-of-the-art AI methodologies, including LLMs, transformers, and reinforcement learning
- Lead AI strategy, identifying opportunities for innovation and model optimization
- Develop scalable training and inference pipelines for AI-powered applications
- Work closely with engineering, data, and product teams to integrate AI/ML into business solutions
- Optimize ML models for efficiency, accuracy, and scalability in real-world deployments
- Ensure robust MLOps practices, including model monitoring, retraining, and deployment automation
- Collaborate on AI/ML research publications, patents, and open-source contributions
Common Qualifications While each startup has its own hiring criteria, many Principal AI/ML Engineer roles in our network look for:
- 8+ years of experience in AI/ML, deep learning, or applied AI
- Expertise in Python and ML frameworks (TensorFlow, PyTorch, JAX, Hugging Face Transformers)
- Strong background in computer vision, NLP, generative AI, or reinforcement learning
- Experience developing scalable AI pipelines, data processing workflows, and distributed training systems
- Familiarity with big data tools (Apache Spark, Kafka, Hadoop) and MLOps platforms (MLflow, TFX, SageMaker)
- Deep understanding of LLMs, transformer architectures, and retrieval-augmented generation (RAG) pipelines
- Experience with model quantization, fine-tuning, and optimization for performance
- Strong knowledge of cloud environments (AWS, GCP, Azure) and containerization tools (Docker, Kubernetes)
- A track record of technical leadership, mentoring, and driving AI innovation
Technologies You Might Work With:
- Languages & Frameworks: Python, TensorFlow, PyTorch, JAX, Hugging Face Transformers
- MLOps & Data Pipelines: MLflow, Kubeflow, TFX, Apache Spark, Airflow, Ray
- Cloud & Deployment: AWS SageMaker, GCP Vertex AI, Azure ML, Kubernetes, Docker
- Big Data & Storage: Apache Kafka, Hadoop, BigQuery, Snowflake, Redis, NoSQL databases
- Model Optimization: ONNX, TensorRT, pruning, quantization, distillation
What Happens Next?
Submit your application to join SignalFire's Talent Ecosystem. We review applications on an ongoing basis to identify strong candidates. If there's a match, a SignalFire talent partner or a leader from one of our startups may reach out directly. No match yet? We'll keep your profile on file for future AI/ML roles in our portfolio.