AI for Science implementation support

Bring usable generative AI and AI agents into research work.

We help life science, pharmaceutical, and medical research teams design generative AI, RAG, local LLMs, AI agents, and research data foundations from PoC to department operation.

The service is designed around human review, access control, explainability, and reproducibility.

Generative AI/RAGLocal LLMAI agentsResearch data foundationIAS integration

From research data to AI foundation, agents, and deliverables

Research data
RAG / AI foundation
AI agents
Human review
Deliverables

We validate search, summarization, analysis support, report drafts, and team knowledge workflows through PoC.

Why research AI implementations fail

Model selection alone is not enough. Research AI breaks down when data, permissions, evaluation, and operations are disconnected.

Unused AI
01

Data cannot reach AI safely

Papers, SOPs, notes, images, and analysis results are fragmented without retrieval and evidence design.

02

Evaluation is unclear

Teams lack criteria for correctness, reproducibility, review, and production readiness.

03

Security is added late

Confidential data, access control, audit logs, and external LLM boundaries are not defined early enough.

04

It does not connect to work

Chat remains isolated from analysis, reporting, approval, and education workflows.

LifeAnalytics approach

We design AI objectives, data foundations, agent workflows, PoC evaluation, production operations, and training with research teams.

Research data foundation/RAG

Design retrieval, citations, permissions, and update rules for papers, SOPs, notes, logs, and metadata.

AI agent design

Create human-reviewed workflows for search, analysis support, review requests, and report drafts.

Local LLM and secure AI

Compare external LLMs, private RAG, and local LLMs according to security and network constraints.

Operations and training

Prepare usage rules, review perspectives, prompt standards, evaluation logs, and department training.

Five-layer implementation architecture

We separate data, knowledge, models, agents, and department operations before scaling AI usage.

Layer 1

Research data

Papers, SOPs, notes, images, NGS, mass spectrometry, flow cytometry, and analysis results

Layer 2

Knowledge/RAG

Search, vector database, citations, permissions, update rules, and evaluation sets

Layer 3

Model/LLM

External LLMs, local LLMs, specialist models, prompts, and guardrails

Layer 4

AI agents

Research, summarization, analysis support, reports, review requests, and tool integration

Layer 5

Department operation

Human review, audit logs, training, usage rules, PoC evaluation, and improvement

Support menu

We support assessment, design, PoC, production, and training as separate stages.

MenuTargetOutputReview

AI implementation assessment

Research leaders and research DX teams

Use cases, data and permission inventory, PoC plan

Human decision on priority and feasibility

RAG/research data foundation PoC

Teams using papers, SOPs, and notes

Search evaluation, citation display, permission design, report

Evidence and answer review

AI agent PoC

Teams improving analysis, reports, and review

Task design, prototype, operation logs

Review approval before task execution

Local LLM/secure AI

Organizations with confidential or private environments

Environment proposal, model comparison, security plan, findings

Data boundary and responsibility review

Department training and operations

Organizations expanding to multiple teams

Usage rules, training materials, evaluation criteria, roadmap

Review culture that avoids overreliance

Research use cases

Paper, SOP, and internal document RAG

Support literature and protocol review with evidence-aware answers.

Analysis log and result explanation support

Assist review of imaging, NGS, mass-spec, and flow cytometry results with human oversight.

Report and meeting draft generation

Draft research meeting notes, PoC reviews, and department reports for human editing.

Research DX knowledge base

Organize analysis procedures, FAQs, and review criteria for education and improvement.

Implementation process

  1. 01

    30-minute consultation

    Review research themes, data, constraints, and field challenges.

  2. 02

    Use case design

    Define success criteria, evaluation data, review flow, and risks.

  3. 03

    PoC build

    Validate RAG, LLMs, agents, and access control in a small scope.

  4. 04

    Evaluation and improvement

    Review evidence, reproducibility, logs, and user feedback.

  5. 05

    Production and training

    Prepare rollout, training materials, rules, and continuous improvement.

Why LifeAnalytics

Close to research data

We build web systems for imaging, genomics, molecular, flow cytometry, and mass spectrometry data.

Designed for operations

We include permissions, review, training, and inquiry workflows beyond PoC.

Human-reviewed AI

We design for explainability and human review instead of claims of automated diagnosis or guaranteed outcomes.

IAS integration

AI implementation support is an independent service, not an IAS add-on. When useful, IAS can connect as a multimodal research data foundation across imaging, genomics, molecular, flow cytometry, and mass spectrometry data.

AI for ScienceIASMultimodal research data

FAQ

Is AI for Science support an IAS add-on?

No. It is an independent service for safely introducing AI into research teams. IAS can be integrated as a multimodal research data foundation when useful.

What do you validate in PoC?

We evaluate target data, retrieval quality, evidence, review flow, permissions, operation logs, and user feedback for production decisions.

Can you support local LLM or private environments?

We review external LLM, private RAG, and local LLM options according to confidentiality, network, and operation requirements.

Do you guarantee medical diagnosis or paper acceptance?

No. AI is positioned as support for research, organization, analysis assistance, and drafting, with final decisions handled by human reviewers.

Start with a small, reviewable AI PoC for your research team.

Even if the use case is not fully defined, we can help identify PoC candidates and a safer implementation path in a 30-minute consultation.

AI for Science Implementation Support | LifeAnalytics