
11 - 50 employees
Founded 2022
🤖 Artificial Intelligence
🔧 Hardware
🤝 B2B
💰 $100M Series B - EnCharge AI on 2025-02
Artificial Intelligence • Hardware • B2B
EnCharge AI is a company that develops analog in-memory computing hardware and complementary software to accelerate on-device and edge-to-cloud AI workloads. Their technology includes the EN100 analog AI accelerator and other form factors (chiplets, ASICs, PCIe cards) designed to deliver much higher energy efficiency, compute density, and lower total cost of ownership for inference compared with conventional GPUs and digital accelerators. EnCharge emphasizes sustainability, data privacy through local processing, and deployment for enterprise and developer customers seeking efficient, scalable AI computation outside traditional cloud infrastructure.
🔥 0 minutes ago
Improve your chances of getting an interview by checking your resume score before you apply.

11 - 50 employees
Founded 2022
🤖 Artificial Intelligence
🔧 Hardware
🤝 B2B
💰 $100M Series B - EnCharge AI on 2025-02
Artificial Intelligence • Hardware • B2B
EnCharge AI is a company that develops analog in-memory computing hardware and complementary software to accelerate on-device and edge-to-cloud AI workloads. Their technology includes the EN100 analog AI accelerator and other form factors (chiplets, ASICs, PCIe cards) designed to deliver much higher energy efficiency, compute density, and lower total cost of ownership for inference compared with conventional GPUs and digital accelerators. EnCharge emphasizes sustainability, data privacy through local processing, and deployment for enterprise and developer customers seeking efficient, scalable AI computation outside traditional cloud infrastructure.
• Research and implement state-of-the-art techniques to accelerate AI inference • Partner closely with hardware, compiler, and quantization teams • Build profiling tools and comprehensive benchmarking frameworks • Build robust fine-tuning workflows for modern AI models
• 5+ years of experience in ML research, applied ML, or ML systems • Strong fundamentals in Python and PyTorch • Hands-on experience with modern AI models (transformers, diffusion models, or other generative architectures) • Experience fine-tuning large models and building training/evaluation pipelines • Deep understanding of transformers, attention mechanisms, & optimization techniques • Comfort reading and implementing techniques from research papers
• Health insurance • Flexible work arrangements • Professional development
Apply Now🔥 4 hours ago
Manager, AI Engineer responsible for driving the adoption of Anthropic Claude platform. Collaborating with teams to design AI integrations and optimize workflows.
🔥 5 hours ago
AI Developer responsible for deploying AI solutions at Green Spoon Sales. Collaborating with teams to drive operational efficiency and smarter workflows across technology platforms.
🔥 8 hours ago
AI & Data Architect responsible for defining and governing AI and data ecosystem strategies. Join Thermo Fisher Scientific in enabling a healthier, cleaner, and safer world through innovative solutions.
🔥 10 hours ago
AI Engineer designing and maintaining ML tooling for RISE program in data migration. Responsible for anomaly detection pipelines and documentation in regulated environments.
🔥 11 hours ago
Senior AI Full Stack Engineer overseeing planning and execution of frontend and backend features in a healthcare payment integrity company.
🇺🇸 United States – Remote
💵 $140k - $170k / year
💰 Private Equity Round on 2023-01
⏰ Full Time
🟠 Senior
🤖 AI Engineer