PLATFORM

Generative De Novo Design

Anew’s Insight:

For challenging undruggable targets, the ligand space we need to explore is fundamentally larger and more complex than what we’re used to for canonical pockets.

Existing chemical HTS/VS libraries are biased toward canonical druggable pockets, making it a key challenge to find a proper hit for challenging targets.

Anew’s Solution:

Our mission is to develop a generative foundation model that learns atomic interactions, which is the universal language across diverse biomolecules.

Working with expertise in physics, chemistry, biology, and computer science, we aim to unlock the full potential of generative modeling, scaling across data and model sizes to understand the language of molecules.

AI-Physics Convergence

Unrivaled Affinity Prediction

A high-throughput platform delivering physics-based generalization superior to that of AI models and accuracy exceeding all open-source alternatives.

Target-Centric Parameterization

Data-driven parameterization rigorously optimized for complex drug molecules and challenging protein systems.

AI-Enhanced Sampling

Accelerating molecular dynamics to uncover rare conformational events beyond standard timescales.

Chemistry Agent

Precision Task Orchestration

Interprets objectives, matches toolchains, initiates tasks, manages data/dependencies/resource allocation.

Cross-platform Synergy

Integrates core biocomputing capabilities, enables multi-system collaboration and data interoperability.

Insight-Driven Analysis

Extracts metrics, runs statistical analysis, generates reports, supports one-click data export.

Knowledge-Embedded Support

Delivers workflow guidance, troubleshooting and document retrieval via built-in biocomputing knowledge base.