Title
Causal AI for Accelerated Battery Materials Development

CoPED ID
b8e921f4-16ed-4b81-90a2-5f8d2f17531d

Status
Active

Funder

Value
£350,000

Start Date
Nov. 1, 2022

End Date
Oct. 31, 2025

Description

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The global chemicals industry stands at US$4.3T, covering a broad application range encapsulating consumer products, speciality chemicals, basic chemicals, pharmaceuticals, etc. The spending on research and development varies from 2% to up to 15% of revenue in companies in this industry.

Development timelines and costs across verticals within the chemical industry are notoriously high. In agrochemicals, the lead time for a new protection product stands at over 11.3 years with required investment of $100-250 million. In battery materials, cycling data needed to assess each new material or formulation iteration can take up to months - contributing greatly to the time to market for new chemistries being a minimum of 5-10 years.

A key reason for the long iteration cycles and labour intensiveness of industrial chemical research is the reliance on experimental research. Most chemical research and development - be it fundamental research for novel materials, qualification of new suppliers, quality and performance assessment during batch size scale-up for new or modified materials and processes, tweaking of existing platforms as per specific customer requirements - involves laboratory experimentation. This is due to well-understood theoretical chemical reactions being eclipsed by the effects of variations in material properties due to differences in production processes followed by suppliers, in testing and measurement techniques across the value chain and side reactions across complex multi-step production processes.

Our goal is to integrate the disruptive technology of causal inference with artificial intelligence models to create a new form of Causal AI that is able to provide insight into the development of chemical products. We will specifically provide actionable insights into the process of battery development with the goal of validating our model in a cutting edge sector that has far reaching impacts on environmentally friendly energy storage. This model will then be extended to other commercial applications within the chemicals industry to accelerate their R&D timescales.

Allos Ai Limited LEAD_ORG
Allos Ai Limited PARTICIPANT_ORG

Subjects by relevance
  1. Pharmaceutical industry
  2. Industry
  3. Chemical industry
  4. Chemicals
  5. Processes
  6. Production
  7. Products
  8. Productivity
  9. Enterprises

Extracted key phrases
  1. Global chemical industry
  2. Causal AI
  3. Industrial chemical research
  4. Chemical product
  5. Accelerated Battery Materials Development
  6. Theoretical chemical reaction
  7. Speciality chemical
  8. Basic chemical
  9. Causal inference
  10. New protection product
  11. New material
  12. New supplier
  13. New form
  14. New chemistry
  15. Artificial intelligence model

Related Pages

UKRI project entry

UK Project Locations