Bio-PrecisionAI Health

Bio-PrecisionAI Health Our unique combination of expertise in bioinformatics and AI positions us at the forefront of this rapidly evolving field.

Our goal is to design novel biologics, aptamers and small drug molecules using AI to target human diseases in the multiomics era. Our company, Bio-PrecisionAI Health LLC, is a biotech company focused on leveraging bioinformatics, computational biology, precision medicine, and artificial intelligence (AI) to revolutionize healthcare. We aim to develop innovative solutions that enable personalized and targeted treatments for patients, improving outcomes and reducing healthcare costs. Our unique combination of expertise in bioinformatics, computational biology, precision medicine, and AI positions us at the forefront of this rapidly evolving field. Our goal is to design novel peptides, enzymes and proteins using AI technologies to target human diseases in the multiomics era.

03/17/2026

๐Ÿง  Double Machine Learning (DML): A Practical Guide to Causal AI in Epidemiology

Most machine learning answers: โ€œWhat predicts an outcome?โ€

Double Machine Learning (DML)โ€”developed by Victor Chernozhukov and collaborators answers the more important question:

๐Ÿ‘‰ โ€œWhat actually causes the outcome?โ€

# # ๐Ÿ” What is DML?

DML is a framework that combines:
- ๐Ÿค– Machine learning (to model complex patterns)
- ๐Ÿ“Š Causal inference (to estimate unbiased effects)

It works by:
โœ”๏ธ Cross-fitting (avoids overfitting bias)
โœ”๏ธ Orthogonalization (separates signal from confounding)

๐Ÿ‘‰ Result: reliable causal estimates even in high-dimensional data

# # โš™๏ธ Core Types of DML (from basic โ†’ advanced)

# # # ๐Ÿ”น LinearDML (Partially Linear)
- Estimates average treatment effect (ATE)
- Simple, fast, interpretable
๐Ÿ‘‰ Best starting point

# # # ๐Ÿ”น SparseLinearDML
- Designed for high-dimensional data
- Uses regularization (Lasso-style)
๐Ÿ‘‰ Common in genomics & epidemiology

# # # ๐Ÿ”น KernelDML
- Captures nonlinear relationships
- More flexible than linear models

# # # ๐ŸŒฒ ForestDML (key method)
- Uses random forests
- Estimates heterogeneous treatment effects
๐Ÿ‘‰ Answers:
- Who benefits most?
- How effects vary across populations?

# # # ๐ŸŒณ CausalForestDML
- Specialized version of ForestDML
- Optimized for causal heterogeneity
๐Ÿ‘‰ Widely used in:
- precision medicine
- policy targeting

# # # ๐Ÿ”น DRLearner / Doubly Robust DML
- Combines DML + doubly robust estimation
- More stable under model misspecification

# # # ๐Ÿ”น Multi-treatment (Multi-class DML)
- Handles multiple treatment groups
- Example: drug A vs B vs C

# # # ๐Ÿ”น Multi-label DML (emerging ๐Ÿš€)
- Handles multiple simultaneous exposures
- Captures interaction effects
๐Ÿ‘‰ Very relevant for:
- omics data
- biological systems

# # ๐Ÿงช Applications

๐Ÿ“Š Epidemiology
- Air pollution โ†’ health outcomes
- Drug and vaccine effectiveness

๐Ÿฅ Healthcare / EHR
- Treatment effects from observational data

๐Ÿงฌ Computational Biology
- Gene expression โ†’ disease
- RNA features โ†’ protein interactions

๐Ÿ’ฐ Economics & Policy
- Education, policy, and intervention impact

# # ๐Ÿš€ Why DML matters

โœ… Controls high-dimensional confounding
โœ… Reduces bias from model misspecification
โœ… Handles nonlinear relationships
โœ… Enables personalized (heterogeneous) effects
โœ… Bridges ML โ†” causal inference

# # โš ๏ธ Challenges

โŒ Requires good overlap in data
โŒ Needs careful model tuning
โŒ Interpretation becomes complex (especially ForestDML)

# # ๐Ÿ’ก Key intuition

- LinearDML โ†’ โ€œDoes it work on average?โ€
- ForestDML โ†’ โ€œWho does it work for?โ€
- Multi-label DML โ†’ โ€œHow do multiple factors interact causally?โ€

# # ๐Ÿง  Big picture

DML transforms machine learning from:
โžก๏ธ prediction
to
โžก๏ธ causal understanding

And that shift is critical for:
- epidemiology
- healthcare
- AI-driven science



~ ChatGPT

03/17/2026

๐ŸŒ๐Ÿง  World Models: Teaching AI to Understand and Imagine Reality

What if an AI didnโ€™t just react to the world, but could build an internal model of it, simulate outcomes, and plan ahead?

Thatโ€™s the idea behind World Models, introduced by David Ha and Jรผrgen Schmidhuber in their influential paper World Models.

# # ๐Ÿ” What are World Models?

A World Model is an internal representation that an agent learns to:

โœ”๏ธ Understand how the environment works
โœ”๏ธ Predict future states
โœ”๏ธ Simulate possible outcomes
โœ”๏ธ Plan actions before taking them

๐Ÿ‘‰ Instead of learning only from trial and error, the agent learns to โ€œthink before acting.โ€

# # ๐Ÿงฉ Core Architecture (3 Components)

# # # 1๏ธโƒฃ V โ€” Vision Model (Perception)
- Encodes raw observations (e.g., images, states)
- Typically a Variational Autoencoder (VAE)

๐Ÿ‘‰ Compresses high-dimensional input into a latent space

# # # 2๏ธโƒฃ M โ€” Memory Model (Dynamics)
- Predicts how the world evolves over time
- Often implemented with:
- RNNs (e.g., LSTM)
- or modern sequence models

๐Ÿ‘‰ Learns:
zโ‚œโ‚Šโ‚ = f(zโ‚œ, aโ‚œ)

# # # 3๏ธโƒฃ C โ€” Controller (Decision Maker)
- Chooses actions based on latent state
- Usually small (even linear in original paper!)

๐Ÿ‘‰ Key idea:
- Complexity is in the world model, not the policy

# # ๐Ÿ”„ Training Pipeline

# # # Step 1: Learn Representation
Train VAE:
x โ†’ z

# # # Step 2: Learn Dynamics
Train sequence model:
(zโ‚œ, aโ‚œ) โ†’ zโ‚œโ‚Šโ‚

# # # Step 3: Train Controller
- Use reinforcement learning or evolution strategies
- Train inside the learned simulated world

๐Ÿ‘‰ This is powerful:
- No need for expensive real-world interaction

# # ๐Ÿง  Key Idea: โ€œDreamingโ€

The agent can:
- Simulate trajectories
- Train entirely in its own imagination

๐Ÿ‘‰ Called:
โ€œDream environmentโ€

This dramatically improves:
- sample efficiency
- safety
- scalability

# # โš™๏ธ Modern Extensions

# # # ๐Ÿ”น Latent World Models
- Work entirely in compressed latent space
- Faster and more scalable

# # # ๐Ÿ”น Transformer World Models
- Replace RNNs with Transformers
- Capture long-range dependencies

Used in systems like:
- Decision Transformer

# # # ๐Ÿ”น MuZero-style Models
Developed by DeepMind

- Learn dynamics without explicit environment rules
- Combine planning + learning

Used in:
- MuZero

# # # ๐Ÿ”น Diffusion / Generative World Models
- Use generative models to simulate environments
- High realism (video, physics, robotics)

# # ๐Ÿงช Applications

๐ŸŽฎ Reinforcement Learning
- Game playing
- robotics control

๐Ÿš— Autonomous Driving
- Predicting future scenarios
- planning safe actions

๐Ÿงฌ Computational Biology
- Simulating molecular interactions
- proteinโ€“RNA dynamics

๐Ÿค– Robotics
- Learning from simulation before deployment

# # ๐Ÿš€ Why World Models matter

โœ… Reduce reliance on real-world data
โœ… Enable planning & reasoning
โœ… Improve sample efficiency
โœ… Allow safe training via simulation
โœ… Bridge perception + dynamics + control

# # โš ๏ธ Challenges

โŒ Model errors compound over time
โŒ Hard to learn accurate dynamics
โŒ Latent space interpretability
โŒ Scaling to real-world complexity

# # ๐Ÿ’ก Deep Insight

World Models shift AI from:

โžก๏ธ Reactive systems
to
โžก๏ธ Predictive, planning agents

# # ๐Ÿ”ฎ Big Picture

World Models are a step toward:

- general intelligence
- embodied AI
- agents that can imagine, reason, and act

๐Ÿ‘‰ In essence:

A good world model = the ability to simulate reality before touching it.



~ ChatGPT

A new OpenFold3-preview-2 release is going public today.Key highlights:๐Ÿ‘‰ The current checkpoint, 155K, is competitive wi...
03/15/2026

A new OpenFold3-preview-2 release is going public today.

Key highlights:
๐Ÿ‘‰ The current checkpoint, 155K, is competitive with AlphaFold3 and Protenix-v1 on small-molecule runs-and-poses benchmarks.
๐Ÿ‘‰ The full training dataset is being made public, including the self-distillation data and RNA sets. In many model releases, you get weights, inference code, and sometimes a paper, but not the full training data behind the system. Here, the training corpus is accessible as well, which makes it possible to inspect, reproduce, benchmark and modify the model by independent teams.
๐Ÿ‘‰ The release package contains a cleaner distribution path, expanded training documentation, and a clearer public setup for teams that want to evaluate the model themselves.

Open science gives independent teams the ability to test a model under different conditions and in different workflows. That is how trust gets built in this field, and how models improve in the right directions.

We love the OpenFold Consortium for pushing that work forward and contributing to a strong open-source ecosystem for drug discovery. Thrilled to be collaborating with so many fantastic people in the ecosystem.
๐Ÿ‘ Mohammed AlQuraishi Mallory Tollefson, Ph. D. Jan Domanski, PhD Woody Sherman Brian Weitzner Christina Taylor Lucas Nivon Peter Clark, PhD Alexandre Zanghellini

The new checkpoint can of course be accessed through ApherisFold, with local inference, result inspection, benchmarking, fine-tuning on in-house data, and API-based integration into existing drug discovery workflows.

๐Ÿ”— Press release: https://lnkd.in/di8iYgTQ
๐Ÿ”— Full technical report: chrome-extension://efaidnbmnnnibpcajpcglclefindmkaj/https://lnkd.in/diKSEBM6



Copied

We are enabling validation and rapid iteration so researchers can turn cofolding models into scientific infrastructure that speeds drug discovery

03/14/2026

Met the talent hiring team today at @ Xaira_Thera and they asked me what kind of researchers I want to hire in the age of agentic coding

Honestly took me a second because the answer has changed.

I's not about who codes the fastest anymore, agents handle that.

What I look for: Someone who wakes up obsessed with the right question. Who can smell a bad assumption before it wastes three months of experiments. Who can write a one-page spec clear enough that an agent can execute it โ€” and knows when the agent drifted.

The researchers who stand out aren't the ones who work harder. They're the ones who decide better.

Scientific taste, judgment under uncertainty, the instinct to kill a project early when the signal isn't there.

That's always been what separated great researchers, the difference now is you can't hide behind "I'm still running experiments."๐Ÿ˜…

If that sounds like you, let's talk.

~ Dr. Wang

๐Ÿšจ Yann LeCun, the former chief AI scientist at Meta and a Turing Award winner, just raised $1.03 billion in seed funding...
03/10/2026

๐Ÿšจ Yann LeCun, the former chief AI scientist at Meta and a Turing Award winner, just raised $1.03 billion in seed funding for a new startup called Advanced Machine Intelligence Labs, or AMI.

The round values the company at $3.5 billion and is believed to be the largest seed round ever raised by a European company. Investors include Nvidia, Temasek, and Jeff Bezos' Bezos Expeditions.

LeCun has been one of the most vocal critics of the technology dominating the AI industry.

His argument is that large language models, the systems behind ChatGPT, Claude, and Gemini, are fundamentally limited because they only learn from text. They can generate fluent language, but they do not understand the physical world.

AMI is built around a different approach called world models.

Instead of predicting the next word in a sequence, these systems learn from video, audio, and sensor data to build abstract representations of how the real world works. The underlying architecture, called JEPA, is a framework LeCun first proposed in 2022.

The company plans to spend its first year entirely on research and development, with target industries including healthcare, robotics, and manufacturing. The founding team is drawn almost entirely from Meta's AI research organization.

A billion dollars in seed funding for a company openly challenging the direction nearly every major AI lab is moving in.

Most of the industry is betting on making language models bigger. LeCun is arguing the entire approach has a ceiling and that the next generation of AI will need to learn the way humans do, through experience with the physical world rather than text alone.

What are your thoughts on this? ๐Ÿค”๐Ÿ’ฌ

~ Evolving AI

It was a great time yesterday at our BIO on the Bay event held in St. Petersburg, FL in partnership with NEXI Biotech an...
03/06/2026

It was a great time yesterday at our BIO on the Bay event held in St. Petersburg, FL in partnership with NEXI Biotech and others.

Up next is Nucleate Floridaโ€™s in event taking place in Gainesville, FL on April 2. This event is organized in partnership with UF Innovate Accelerate and Bio-PrecisionAI Health. Gainesville is a talent hub.

We look forward to bringing together innovators, researchers, investors, entrepreneurs, and industry leaders to explore how AI is transforming biotech and healthcare.

Register here: https://luma.com/mk64kffy

๐Ÿš€ Our AI in Biotech Event Is Finally Here! ๐Ÿ’ƒ๐Ÿ•บMark your calendars!๐Ÿ“… Date: Thursday, April 2, 2026โฐ Time: 6:00 โ€“ 9:00 PM E...
03/02/2026

๐Ÿš€ Our AI in Biotech Event Is Finally Here! ๐Ÿ’ƒ๐Ÿ•บ

Mark your calendars!

๐Ÿ“… Date: Thursday, April 2, 2026
โฐ Time: 6:00 โ€“ 9:00 PM EST
๐Ÿ“ Venue: UF Innovate, 747 SW 2nd Ave, Gainesville, FL

๐Ÿš€ As the Partnerships Operations Lead at Nucleate Florida, Iโ€™m excited to be leading our efforts to organize AI in Biotech โ€” a collaborative event by Nucleate Florida & UF Innovate, bringing together researchers, founders, AI scientists, investors, and students to explore how artificial intelligence is transforming biotechnology ๐Ÿค–๐Ÿงฌ

Agenda Highlights:
โœจ Welcome โ€ข AI Keynote + Q&A
โœจ Networking & Dinner
โœจ Expert Panel โ€ข Closing Remarks

Featured Panelists:
โ€ข Dr. Scott Siegel โ€“ Interim Professor and Postdoc, University of Florida
โ€ข Dr. David Vaillancourt โ€“ Founder & CSO, Neuropacs
โ€ข Dr. Gustavo Seabra โ€“ Associate Professor, University of Florida
โ€ข Dr. Martin Handfield โ€“ President & CEO, Neuropacs
โ€ข Dr. Noah Berlow โ€“ Co-Founder & CTO, First Ascent Biomedical

Moderators: Joseph Luper Tsenum โ€ข Dylan T.

๐ŸŽŸ Register here: https://luma.com/mk64kffy

Letโ€™s build the future of AI-driven biotech together.

As genomic information becomes increasingly relevant for clinical care and public health, strengthening our collective a...
02/20/2026

As genomic information becomes increasingly relevant for clinical care and public health, strengthening our collective ability to interpret complex genomic findings matters as much as generating them. That is why Iโ€™m excited to share information about Illumina Grand Rounds in Genomic Medicine, a monthly, interactive webinar series modeled after medical grand rounds and molecular tumor boards. This series is designed to help healthcare professionals build practical strategies for interpreting genome-sequence information.

Our second session of the series, which will be led by Illumina oncology Medical Affairs will highlight an ovarian cancer case. Please join us on February 26 at 8:00 AM PT to hear how genomic analyses of BRCA1 and HRD are guiding clinical trials.

Register here: https://lnkd.in/gSPv6YEy

~ Dr. Eric Green

This link will take you to a page thatโ€™s not on LinkedIn

Bio-PrecisionAI Health Transitions to C-Corporation and Strengthens Leadership for Next Phase of GrowthBio-PrecisionAI H...
02/18/2026

Bio-PrecisionAI Health Transitions to C-Corporation and Strengthens Leadership for Next Phase of Growth

Bio-PrecisionAI Health is entering an exciting new chapter as we continue building toward our long-term mission of transforming drug discovery through AI.

As part of positioning the company for investor readiness and long-term growth, Bio-PrecisionAI Health LLC is officially transitioning to Bio-PrecisionAI Health Inc., converting from a limited liability company (LLC) to a C-corporation. This change aligns with standard U.S. corporate structuring practices and strengthens our foundation for future investment, governance, and scalability.

Alongside this transition, we are announcing an update to our leadership structure:

โ€ข Joseph Luper Tsenum, formerly Founder and CEO, will now serve as Co-Founder, CEO, and Director of Research & Development, reflecting his continued leadership in advancing our core AI and molecular design technologies.

โ€ข Victoria Harper-Alexander, formerly Chief Scientific Officer (CSO), will now serve as Co-Founder and Chief Scientific Officer (CSO), recognizing her foundational scientific leadership and ongoing role in shaping our research direction.

These changes reflect our evolution as a company and reinforce our commitment to scientific excellence, technical innovation, and responsible growth.

As we continue developing next-generation AI models to design therapeutic molecules across multiple modalities, we are energized for what lies ahead. We look forward to a supercharged 2026 as we scale our platform, expand our capabilities, and move closer to delivering meaningful impact in precision medicine.

01/28/2026

Layers of AI #1. Classical AI (Rule-Based AI)What it is:  The earliest form of AI, based on explicit rules written by hu...
01/26/2026

Layers of AI

#1. Classical AI (Rule-Based AI)
What it is: The earliest form of AI, based on explicit rules written by humans.

components:
- Symbolic AI
- Expert Systems
- Knowledge Representation
- Logic & Reasoning
No learning from data & Rigid and hard to scale

# 2. Machine Learning (ML)
What it is: Systems learn patterns from data instead of fixed rules.

Key components:
Supervised Learning | Unsupervised Learning | Reinforcement Learning
Classification & Regression

#3. Neural Networks
What it is: ML models inspired by the human brain, using layers of neurons.

# 4. Deep Learning
What it is: Neural networks with many layers, capable of high-level feature learning.

Key architectures:
CNNs โ†’ images & vision
RNNs / LSTMs โ†’ sequences & time series
Transformers โ†’ language & multimodal data
Autoencoders โ†’ representation learning

Example:
Face recognition, speech-to-text, translation.

#5. Generative AI
What it is: Models that create new content, not just predict.

Key models:
LLMs (text generation)
Diffusion Models (image/video generation)
VAEs
Multimodal Models (text + image + audio)
Example: Chatbots, image generators, code assistants.
Key leap: AI becomes creative, not just analytical.

#6. Agentic AI (Autonomous AI)
What it is: AI systems that plan, remember, decide, use tools, and act autonomously.
Core capabilities:
Memory
Planning
Tool Use (APIs, databases, code ex*****on)
Autonomous Ex*****on

By KODI PRAKASH SENAPATI

Address

Techwood Drive NW
Atlanta, GA
30313

Opening Hours

Monday 9am - 5pm
Tuesday 9am - 5pm
Wednesday 9am - 5pm
Thursday 9am - 5pm
Friday 9am - 5pm

Alerts

Be the first to know and let us send you an email when Bio-PrecisionAI Health posts news and promotions. Your email address will not be used for any other purpose, and you can unsubscribe at any time.

Contact The Practice

Send a message to Bio-PrecisionAI Health:

Share

Share on Facebook Share on Twitter Share on LinkedIn
Share on Pinterest Share on Reddit Share via Email
Share on WhatsApp Share on Instagram Share on Telegram