Achira

HQ
San Francisco
12 Total Employees
Year Founded: 2024

Jobs at Achira

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Recently posted jobs

11 Hours AgoSaved
Remote or Hybrid
2 Locations
Biotech • Pharmaceutical
As an ML Research Engineer, you'll design experiments, implement model architectures, and engineer scalable libraries to advance molecular simulations to support drug discovery.
11 Hours AgoSaved
Remote or Hybrid
2 Locations
Biotech • Pharmaceutical
The ML Research Engineer will develop training pipelines for atomistic simulation models and collaborate with researchers to optimize training workflows.
11 Hours AgoSaved
In-Office or Remote
2 Locations
Biotech • Pharmaceutical
You will design and optimize distributed compute infrastructure for ML applications, improve resource utilization, and collaborate with ML engineers on large-scale workloads.
11 Hours AgoSaved
Remote or Hybrid
2 Locations
Biotech • Pharmaceutical
This role involves shaping training data strategies for computational drug discovery, curating protein-ligand systems, and collaborating with model teams to enhance drug discovery tools.
11 Hours AgoSaved
Remote or Hybrid
2 Locations
Biotech • Pharmaceutical
The role involves architecting molecular machine learning systems, building workflows for data generation and training, and collaborating between research scientists and infrastructure teams.
Biotech • Pharmaceutical
Develop and evaluate representation-learning architectures for atomistic systems, including equivariant GNNs and geometric transformers; design pre/mid/post-training curricula and RL strategies; prototype, benchmark, and scale research into reusable components; collaborate with physicists, chemists, and engineers to ground models in physical principles and deploy on distributed infrastructure.
14 Hours AgoSaved
Remote or Hybrid
2 Locations
Biotech • Pharmaceutical
Conduct research to develop generative and sampling models for molecular systems, integrating probabilistic inference, deep learning, and reinforcement learning. Design, train, prototype, and benchmark diffusion, autoregressive, flow-based, and latent-variable architectures. Map between simulation and reality, collaborate with chemists and physicists, and work with engineers to deploy scalable research on distributed compute. Contribute end-to-end from ideation to production in a hybrid San Francisco/New York environment.