| class_id | details | description | start_date | Venues | learning_levels | Topic | Tags | delivery_method | presenters | Organizer | seminar_series | class_title |
|---|---|---|---|---|---|---|---|---|---|---|---|---|
| 2081 |
Organized By:Ryan O'Neill (NHLBI)DescriptionAn Artificial Intelligence-based Pipeline for Drosophila Behavioral Analysis An Artificial Intelligence-based Pipeline for Drosophila Behavioral Analysis |
An Artificial Intelligence-based Pipeline for Drosophila Behavioral Analysis | 2026-03-23 11:00:00 | NIH Library Training Room, Building 10, Clinical Center, South Entrance | Any | Artificial Intelligence (Al) | Hybrid | Ryan O\'Neill PhD (NHLBI) | Ryan O'Neill (NHLBI) | 0 | AI Club: An Artificial Intelligence-based Pipeline for Drosophila Behavioral Analysis | |
| 1983 |
Organized By:NCIDescription
Overview
This 3-day, virtual workshop will explore how foundation models—a powerful class of advanced AI models —can transform cancer research and clinical care. We will focus on their potential to improve diagnosis, prognosis, and treatment response, with a strong emphasis on clinical translation and technology development. Key Topics:
Overview
This 3-day, virtual workshop will explore how foundation models—a powerful class of advanced AI models —can transform cancer research and clinical care. We will focus on their potential to improve diagnosis, prognosis, and treatment response, with a strong emphasis on clinical translation and technology development. Key Topics:
Agenda (https://events.cancer.gov/dctd/foundationmodel/agenda) |
Overview This 3-day, virtual workshop will explore how foundation models—a powerful class of advanced AI models —can transform cancer research and clinical care. We will focus on their potential to improve diagnosis, prognosis, and treatment response, with a strong emphasis on clinical translation and technology development. Key Topics: Foundation Model Primer: A high-level introduction to foundation models. Multimodal Data: Combining pathology, radiology, omics, and patient data into unified models. Prediction: Predicting therapeutic response, resistance, and patient outcomes. Validation and Reproducibility: Ensuring model results are consistent and reliable for real-world clinical performance and use. Diagnostic Case Studies: Real-world applications for early detection and automated diagnostics. Federated Learning: Approaches to training robust models across multiple institutions—without sharing sensitive patient data Challenges, Risk, and Regulation: Addressing model interpretability and regulatory considerations for clinical adoption. Agenda (https://events.cancer.gov/dctd/foundationmodel/agenda) | 2026-03-24 10:00:00 | Online | Any | Artificial Intelligence (Al) | Online | Asif Rizwan (NCI) | NCI | 0 | Foundational Models for Cancer: Advancing Diagnosis, Prognosis, and Treatment Response | |
| 2069 |
DescriptionThis is the last lesson in Part 1 of Introductory R for Novices: Getting Started with R. This lesson will focus exclusively on working with data frames. Attendees will learn how to examine, summarize, and access data in data frames. This is the last lesson in Part 1 of Introductory R for Novices: Getting Started with R. This lesson will focus exclusively on working with data frames. Attendees will learn how to examine, summarize, and access data in data frames. |
This is the last lesson in Part 1 of Introductory R for Novices: Getting Started with R. This lesson will focus exclusively on working with data frames. Attendees will learn how to examine, summarize, and access data in data frames. | 2026-03-24 14:00:00 | Online | Beginner | Programming | Online | Alex Emmons (BTEP) | BTEP | 0 | R Data Structures: Data Frames | |
| 2075 |
DescriptionThis class will introduce beginners or those looking for a refresher to Jupyter Lab, a platform used to organize code and analysis steps in one place. Jupyter Lab can be easily installed or run in a web browser, and supports several languages such as R and Python. It provides a way to keep track of all steps in an analysis and a place for collaboration. This class will not be hands-on and is a ...Read More This class will introduce beginners or those looking for a refresher to Jupyter Lab, a platform used to organize code and analysis steps in one place. Jupyter Lab can be easily installed or run in a web browser, and supports several languages such as R and Python. It provides a way to keep track of all steps in an analysis and a place for collaboration. This class will not be hands-on and is a demo only. Experience using or installation onto personal computer of Jupyter Lab is not needed to attend. This is for NIH audience only. |
This class will introduce beginners or those looking for a refresher to Jupyter Lab, a platform used to organize code and analysis steps in one place. Jupyter Lab can be easily installed or run in a web browser, and supports several languages such as R and Python. It provides a way to keep track of all steps in an analysis and a place for collaboration. This class will not be hands-on and is a demo only. Experience using or installation onto personal computer of Jupyter Lab is not needed to attend. This is for NIH audience only. | 2026-03-25 14:00:00 | Online | Computing Resources,Data | Online | Joe Wu (BTEP) | BTEP | 0 | Documenting Analysis with Jupyter Lab | ||
| 2089 |
Coding Club Seminar SeriesDescriptionThe programming language R is ideal for biomedical researchers as it has packages that facilitate Next Generation Sequencing (NGS) data analysis. For example, bulk RNA sequencing differential expression analysis can be performed with DESeq2 and Seurat is used for analyzing single cell RNA sequencing data. When programming, scientists are encouraged to keep track of versions using tools such as Git (https://git-scm.com). Git is a software that ...Read More The programming language R is ideal for biomedical researchers as it has packages that facilitate Next Generation Sequencing (NGS) data analysis. For example, bulk RNA sequencing differential expression analysis can be performed with DESeq2 and Seurat is used for analyzing single cell RNA sequencing data. When programming, scientists are encouraged to keep track of versions using tools such as Git (https://git-scm.com). Git is a software that saves the history of code, which enables scientists to track and revert changes. This Coding Club will introduce participants to versioning using Git inside of R Studio, a graphical interface for working with R. Essential steps in versioning code such as setting up Git in R Studio, tracking code history, reverting to previous versions, and sharing code on GitHub will be covered. After this class, participants will appreciate the convenience of versioning using Git within R Studio and start to apply materials learned to track changes in their own R scripts. This class is a demo and not hands-on. Attendance is restricted to NIH staff. |
The programming language R is ideal for biomedical researchers as it has packages that facilitate Next Generation Sequencing (NGS) data analysis. For example, bulk RNA sequencing differential expression analysis can be performed with DESeq2 and Seurat is used for analyzing single cell RNA sequencing data. When programming, scientists are encouraged to keep track of versions using tools such as Git (https://git-scm.com). Git is a software that saves the history of code, which enables scientists to track and revert changes. This Coding Club will introduce participants to versioning using Git inside of R Studio, a graphical interface for working with R. Essential steps in versioning code such as setting up Git in R Studio, tracking code history, reverting to previous versions, and sharing code on GitHub will be covered. After this class, participants will appreciate the convenience of versioning using Git within R Studio and start to apply materials learned to track changes in their own R scripts. This class is a demo and not hands-on. Attendance is restricted to NIH staff. | 2026-03-26 14:00:00 | Online | Any | Programming | Online | Joe Wu (BTEP) | BTEP | 1 | Reproducible R with Git | |
| 2045 |
DescriptionQlucore Omics Explorer is a desktop-based point-and-click software with built-in machine learning capabilities. It enables RNA sequencing (bulk and single cell), proteomics and metabolomics analysis. This software is available for NCI CCR scientists upon submitting a ticket at https://service.cancer.gov/ncisp. In this demonstration-only class, Qlucore scientist will illustrate proteomics analysis workflow starting from data import through performing QC, constructing visualizations (ie. PCA, heatmap, volcano, box, and violin plots),and conducting GSEA. ...Read More Qlucore Omics Explorer is a desktop-based point-and-click software with built-in machine learning capabilities. It enables RNA sequencing (bulk and single cell), proteomics and metabolomics analysis. This software is available for NCI CCR scientists upon submitting a ticket at https://service.cancer.gov/ncisp. In this demonstration-only class, Qlucore scientist will illustrate proteomics analysis workflow starting from data import through performing QC, constructing visualizations (ie. PCA, heatmap, volcano, box, and violin plots),and conducting GSEA. Experience using or installation of this software is not required for attendance. Participation is restricted to NIH staff. |
Qlucore Omics Explorer is a desktop-based point-and-click software with built-in machine learning capabilities. It enables RNA sequencing (bulk and single cell), proteomics and metabolomics analysis. This software is available for NCI CCR scientists upon submitting a ticket at https://service.cancer.gov/ncisp. In this demonstration-only class, Qlucore scientist will illustrate proteomics analysis workflow starting from data import through performing QC, constructing visualizations (ie. PCA, heatmap, volcano, box, and violin plots),and conducting GSEA. Experience using or installation of this software is not required for attendance. Participation is restricted to NIH staff. | 2026-04-06 11:00:00 | Online | Any | Computing Resources,Software | Online | Jan Nilsson (Qlucore),Joe Wu (BTEP) | BTEP | 0 | Proteomics Analysis Using Qlucore | |
| 2061 |
Organized By:NIH LibraryDescriptionThis one-hour online training will provide a high-level overview of Python coding concepts, as well as some of the integrative development environments (IDEs, such as Jupyter notebooks) used for Python coding. Python is a programming language used for data science, specifically: data analysis, statistical analysis, and visualization of results. The training will feature the following IDEs: Google Colaboratory: Jupyter Notebook; and Anaconda’s: Spyder, Jupyter Notebook, and JupyterLab. ...Read More This one-hour online training will provide a high-level overview of Python coding concepts, as well as some of the integrative development environments (IDEs, such as Jupyter notebooks) used for Python coding. Python is a programming language used for data science, specifically: data analysis, statistical analysis, and visualization of results. The training will feature the following IDEs: Google Colaboratory: Jupyter Notebook; and Anaconda’s: Spyder, Jupyter Notebook, and JupyterLab. This overview training will demonstrate how these skills can boost productivity, rigor, and transparency in reporting research findings. By the end of the training, attendees will be able to:
Attendees are not expected to have any prior knowledge of python coding or the IDEs to be successful in this training. If you choose to follow along with Google Colab or Jupyter Notebooks, these IDEs should be installed and ready to go. Code will be provided during the training for this option. |
This one-hour online training will provide a high-level overview of Python coding concepts, as well as some of the integrative development environments (IDEs, such as Jupyter notebooks) used for Python coding. Python is a programming language used for data science, specifically: data analysis, statistical analysis, and visualization of results. The training will feature the following IDEs: Google Colaboratory: Jupyter Notebook; and Anaconda’s: Spyder, Jupyter Notebook, and JupyterLab. This overview training will demonstrate how these skills can boost productivity, rigor, and transparency in reporting research findings. By the end of the training, attendees will be able to: Recognize four freely available IDEs for python coding Identify fundamental components of python code Understand how and why notebooks support rigor and transparency in analysis Attendees are not expected to have any prior knowledge of python coding or the IDEs to be successful in this training. If you choose to follow along with Google Colab or Jupyter Notebooks, these IDEs should be installed and ready to go. Code will be provided during the training for this option. | 2026-04-07 10:00:00 | Online | Beginner | Programming | Online | Cindy Sheffield (NIH Library) | NIH Library | 0 | Python for Data Science: How to Get Started, What to Learn, and Why | |
| 2060 |
Organized By:NIH LibraryDescriptionThis one-hour online training, provided by a presenter from SAS, introduces the basics of accessing SAS 9.4 tools and setting up your environment. By the end of this training, attendees will be able to:
This one-hour online training, provided by a presenter from SAS, introduces the basics of accessing SAS 9.4 tools and setting up your environment. By the end of this training, attendees will be able to:
Attendees are not expected to have any prior knowledge of SAS to be successful in this training. |
This one-hour online training, provided by a presenter from SAS, introduces the basics of accessing SAS 9.4 tools and setting up your environment. By the end of this training, attendees will be able to: Load data using SAS Studio or Enterprise Guide Run simple programs using SAS Studio or Enterprise Guide Generate reports using SAS Studio or Enterprise Guide Describe technical aspects, such as understanding libraries, managing data sets, and using core SAS procedures for analysis Attendees are not expected to have any prior knowledge of SAS to be successful in this training. | 2026-04-08 11:00:00 | Online | Beginner | Software | Online | Instructor (SAS) | NIH Library | 0 | Getting Started with SAS | |
| 2091 |
DescriptionQiagen Ingenuity Pathway Analysis (IPA) is a point-and-click software that enables scientists to discern how genomic, transcriptomic, proteomic, and metabolomic changes influence molecular biology pathways and networks. This software is available to NCI investigators. Submit a ticket with NCI computing help desk (https://service.cancer.gov/ncisp) to get it installed on personal computer. In this Qiagen scientist led training, participants will learn conduct path analysis from bulk RNA sequencing differential expression results using ...Read More Qiagen Ingenuity Pathway Analysis (IPA) is a point-and-click software that enables scientists to discern how genomic, transcriptomic, proteomic, and metabolomic changes influence molecular biology pathways and networks. This software is available to NCI investigators. Submit a ticket with NCI computing help desk (https://service.cancer.gov/ncisp) to get it installed on personal computer. In this Qiagen scientist led training, participants will learn conduct path analysis from bulk RNA sequencing differential expression results using this software. Experience using or installation of IPA is not required for participation. This class is a demonstration and not hands-on. Attendance is restricted to NIH staff. |
Qiagen Ingenuity Pathway Analysis (IPA) is a point-and-click software that enables scientists to discern how genomic, transcriptomic, proteomic, and metabolomic changes influence molecular biology pathways and networks. This software is available to NCI investigators. Submit a ticket with NCI computing help desk (https://service.cancer.gov/ncisp) to get it installed on personal computer. In this Qiagen scientist led training, participants will learn conduct path analysis from bulk RNA sequencing differential expression results using this software. Experience using or installation of IPA is not required for participation. This class is a demonstration and not hands-on. Attendance is restricted to NIH staff. | 2026-04-08 14:00:00 | Online | Any | Software | Online | Joe Wu (BTEP),Kyle Nilson (Qiagen Scientist) | BTEP | 0 | Introduction to Qiagen Ingenuity Pathway Analysis | |
| 2034 |
Organized By:NIH LibraryDescriptionIn partnership with the NIH Clinical Center's Biostatistics and Clinical Epidemiology Service (BCES), the NIH Library is offering several trainings that cover general concepts behind statistics and epidemiology. These trainings will help participants better understand and prepare data, interpret results and findings, design and prepare studies, and understand the results in published literature. This six-hour online training will describe the basic concepts for using ...Read More In partnership with the NIH Clinical Center's Biostatistics and Clinical Epidemiology Service (BCES), the NIH Library is offering several trainings that cover general concepts behind statistics and epidemiology. These trainings will help participants better understand and prepare data, interpret results and findings, design and prepare studies, and understand the results in published literature. This six-hour online training will describe the basic concepts for using common statistical tests such as Chi-square, paired and two-sample t-tests, ANOVA, correlations, simple and multiple regression, logistic regression, and survival analysis. Time will be devoted to questions from attendees and references will be provided for in-depth self-study. By the end of this training, attendees will be able to:
The first part of the class will be 10:00 a.m. to 12:00 p.m. EST followed by a break from 12:00-1:00 p.m. The class resumes at 1:00 p.m. and concludes at 5:00 p.m. |
In partnership with the NIH Clinical Center's Biostatistics and Clinical Epidemiology Service (BCES), the NIH Library is offering several trainings that cover general concepts behind statistics and epidemiology. These trainings will help participants better understand and prepare data, interpret results and findings, design and prepare studies, and understand the results in published literature. This six-hour online training will describe the basic concepts for using common statistical tests such as Chi-square, paired and two-sample t-tests, ANOVA, correlations, simple and multiple regression, logistic regression, and survival analysis. Time will be devoted to questions from attendees and references will be provided for in-depth self-study. By the end of this training, attendees will be able to: Explain the importance of study design and hypothesis Describe types of data and their distributions List examples of statistical tests for analyzing continuous data List examples of statistical tests for analyzing dichotomous or categorical data Understand differences in regression methods Identify nonparametric tests and when to use them The first part of the class will be 10:00 a.m. to 12:00 p.m. EST followed by a break from 12:00-1:00 p.m. The class resumes at 1:00 p.m. and concludes at 5:00 p.m. | 2026-04-09 10:00:00 | Online | Beginner | Statistics | Online | Ninet Sinaii Ph.D. MPH (Biostatistics and Clinical Epidemiology Branch NIH Clinical Center) | NIH Library | 0 | Statistics and Epidemiology - Part 3: Overview of Common Statistical Tests | |
| 2070 |
Description
OncoFold is a web resource to visualize somatic mutations in 3D protein structures. It enables researchers to interpret mutations in cancer through their structural context, explore significantly mutated regions with ligands and detailed domain annotations, identify spatial clustering indicative of positive selection, and gain mechanistic insights into how specific mutations may alter protein function and contribute to tumorigenesis.
OncoFold is a web resource to visualize somatic mutations in 3D protein structures. It enables researchers to interpret mutations in cancer through their structural context, explore significantly mutated regions with ligands and detailed domain annotations, identify spatial clustering indicative of positive selection, and gain mechanistic insights into how specific mutations may alter protein function and contribute to tumorigenesis.
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OncoFold is a web resource to visualize somatic mutations in 3D protein structures. It enables researchers to interpret mutations in cancer through their structural context, explore significantly mutated regions with ligands and detailed domain annotations, identify spatial clustering indicative of positive selection, and gain mechanistic insights into how specific mutations may alter protein function and contribute to tumorigenesis. | 2026-04-09 13:00:00 | Online | Beginner | Software | Online | Do Young Hyeon (Harvard Medical School),Felix Dietlein MD PhD (Harvard Medical School),Yuxiang Zhou (Harvard Medical School) | BTEP | 0 | OncoFold: Visualizing Somatic Mutations in 3D Protein Structures | |
| 2054 |
Organized By:OCIO| NIH Library| CITDescriptionChatGPT 101 training is part 1 of a three-part series. This one-hour online training led by OpenAI experts will cover the fundamentals of using ChatGPT Enterprise effectively in your daily NIH workflows. Attendees will learn to navigate the ChatGPT interface, implement practices for prompt writing, and utilize key features, such as working with files, search functions, and content drafting in Canvas. The training will also demonstrate real-world use cases for ...Read More ChatGPT 101 training is part 1 of a three-part series. This one-hour online training led by OpenAI experts will cover the fundamentals of using ChatGPT Enterprise effectively in your daily NIH workflows. Attendees will learn to navigate the ChatGPT interface, implement practices for prompt writing, and utilize key features, such as working with files, search functions, and content drafting in Canvas. The training will also demonstrate real-world use cases for improving productivity and highlight security and compliance features tailored for NIH staff. By the end of this training, attendees will be able to:
Attendees are not expected to have any prior knowledge of the tool to be successful in this training. |
ChatGPT 101 training is part 1 of a three-part series. This one-hour online training led by OpenAI experts will cover the fundamentals of using ChatGPT Enterprise effectively in your daily NIH workflows. Attendees will learn to navigate the ChatGPT interface, implement practices for prompt writing, and utilize key features, such as working with files, search functions, and content drafting in Canvas. The training will also demonstrate real-world use cases for improving productivity and highlight security and compliance features tailored for NIH staff. By the end of this training, attendees will be able to: Use ChatGPT Enterprise’s foundational features, including Working with documents, Search, and Canvas. Apply effective prompt strategies to generate accurate, useful outputs for NIH-specific tasks. Understand best practices to help ensure responsible use of generative AI tools like ChatGPT. Attendees are not expected to have any prior knowledge of the tool to be successful in this training. | 2026-04-10 13:00:00 | Online | Beginner | Artificial Intelligence (Al) | Online | Guest Speaker(s) | OCIO| NIH Library| CIT | 0 | ChatGPT Learning Sessions: ChatGPT 101 | |
| 2080 |
DescriptionDenoising for Light Microscopy using Deep Learning Denoising for Light Microscopy using Deep Learning |
Denoising for Light Microscopy using Deep Learning | 2026-04-13 11:00:00 | NIH Library Training Room Building 10 Clinical Center South Entrance | Any | Hybrid | Sarah Hooper PhD (NHLBI) | 0 | AI Club: Denoising for Light Microscopy using Deep Learning | |||
| 2062 |
Organized By:NIH LibraryDescriptionThis one and a half-hour online training covers the basic principles of FAIR (Findable, Accessible, Interoperable, Reusable) data and why it is important to make your data FAIR. By the end of this training, attendees will be able to:
This one and a half-hour online training covers the basic principles of FAIR (Findable, Accessible, Interoperable, Reusable) data and why it is important to make your data FAIR. By the end of this training, attendees will be able to:
This is an introductory level training. |
This one and a half-hour online training covers the basic principles of FAIR (Findable, Accessible, Interoperable, Reusable) data and why it is important to make your data FAIR. By the end of this training, attendees will be able to: Define FAIR data Explain what purpose FAIR data serves Apply FAIR data principles to make data findable, accessible, interoperable, and reusable This is an introductory level training. | 2026-04-14 13:00:00 | Online | Beginner | Data | Online | Raisa Ionin (NIH Library) | NIH Library | 0 | How to Make Your Data FAIR | |
| 2088 |
Organized By:CBIITDescriptionSpeaker will:
Speaker will:
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Speaker will: Address how robust AI models in digital pathology are limited not only due to the scarcity of large-scale, annotated data sets but also due to the lack of clear framework for clinical translation. • exemplify a deep learning model that can generate synthetic, but plausible, histological stains from unstained tissue. Highlight how NIH exploratory grants (e.g., NIH R21) have made it possible for a feasible technology to become a clinically validated, risk-probability tool (i.e., prognostic model) Give perspective on both emerging challenges and standards for validating and approving these complex, AI-enabled medical devices intended for clinical use. | 2026-04-15 11:00:00 | Online | Any | Artificial Intelligence (Al) | Online | Pratik Shah PhD (UC Irvine) | CBIIT | 0 | Validating AI in Digital Pathology for Clinical Use Beyond the Algorithm | |
| 1920 |
Distinguished Speakers Seminar SeriesDescriptionThe ability to measure gene expression levels for individual cells (vs. pools of cells) and with spatial resolution is crucial to address many important biological and medical questions, such as the study of stem cell differentiation, the discovery of cellular subtypes in the brain, and cancer diagnosis and treatment. Single-cell transcriptome sequencing (RNA-Seq) allows the high-throughput measurement of gene expression levels for entire genomes at the resolution of single cells. Spatially-resolved ...Read More The ability to measure gene expression levels for individual cells (vs. pools of cells) and with spatial resolution is crucial to address many important biological and medical questions, such as the study of stem cell differentiation, the discovery of cellular subtypes in the brain, and cancer diagnosis and treatment. Single-cell transcriptome sequencing (RNA-Seq) allows the high-throughput measurement of gene expression levels for entire genomes at the resolution of single cells. Spatially-resolved transcriptomics further allows the measurement of gene expression levels along with the location of the RNA molecules within a tissue. Transcriptomics exemplifies the range of issues one encounters in a data science workflow, where the data are complex in a variety of ways, questions are not always clearly formulated, there are multiple analysis steps, and drawing on rigorous statistical principles and methods is essential to derive meaningful and reliable biological results. In this talk, Dr. Dudoit will provide a survey of statistical questions related to the analysis of single-cell transcriptome sequencing data to investigate the differentiation of stem cells in the brain, including, exploratory data analysis, expression quantitation, cluster analysis, and the inference of cellular lineages. She will also address differential expression analysis in spatial transcriptomics. |
The ability to measure gene expression levels for individual cells (vs. pools of cells) and with spatial resolution is crucial to address many important biological and medical questions, such as the study of stem cell differentiation, the discovery of cellular subtypes in the brain, and cancer diagnosis and treatment. Single-cell transcriptome sequencing (RNA-Seq) allows the high-throughput measurement of gene expression levels for entire genomes at the resolution of single cells. Spatially-resolved transcriptomics further allows the measurement of gene expression levels along with the location of the RNA molecules within a tissue. Transcriptomics exemplifies the range of issues one encounters in a data science workflow, where the data are complex in a variety of ways, questions are not always clearly formulated, there are multiple analysis steps, and drawing on rigorous statistical principles and methods is essential to derive meaningful and reliable biological results. In this talk, Dr. Dudoit will provide a survey of statistical questions related to the analysis of single-cell transcriptome sequencing data to investigate the differentiation of stem cells in the brain, including, exploratory data analysis, expression quantitation, cluster analysis, and the inference of cellular lineages. She will also address differential expression analysis in spatial transcriptomics. | 2026-04-16 13:00:00 | Online | Any | Omics | Online | Sandrine Dudoit (UC Berkeley) | BTEP | 1 | Learning from Data in Single-Cell Transcriptomics | |
| 2056 |
Organized By:OCIO| NIH Library| CITDescriptionChatGPT 102 training is part 2 of a three-part series. This one-hour online training led by OpenAI experts will dive deeper into intermediate features and strategies for maximizing ChatGPT Enterprise in NIH workflows. Building on the fundamentals from ChatGPT 101, this training will focus on intermediate features including Custom GPTs, Projects, Data Analysis, coding in Canvas, and Deep Research to enable broader value creation ...Read More ChatGPT 102 training is part 2 of a three-part series. This one-hour online training led by OpenAI experts will dive deeper into intermediate features and strategies for maximizing ChatGPT Enterprise in NIH workflows. Building on the fundamentals from ChatGPT 101, this training will focus on intermediate features including Custom GPTs, Projects, Data Analysis, coding in Canvas, and Deep Research to enable broader value creation and collaboration with ChatGPT. Attendees will also learn how to integrate ChatGPT into specialized tasks and optimize outputs for NIH-specific use cases. By the end of this training, attendees will be able to:
Attendees are expected to be familiar with the basic functions of ChatGPT to be successful in this training (gained by attending ChatGPT 101), attending another relevant training, and/or using ChatGPT previously). |
ChatGPT 102 training is part 2 of a three-part series. This one-hour online training led by OpenAI experts will dive deeper into intermediate features and strategies for maximizing ChatGPT Enterprise in NIH workflows. Building on the fundamentals from ChatGPT 101, this training will focus on intermediate features including Custom GPTs, Projects, Data Analysis, coding in Canvas, and Deep Research to enable broader value creation and collaboration with ChatGPT. Attendees will also learn how to integrate ChatGPT into specialized tasks and optimize outputs for NIH-specific use cases. By the end of this training, attendees will be able to: Create and customize GPTs and projects to serve as tailored assistants for NIH-specific initiatives and domains. Utilize additional intermediate features including Data Analysis, coding in Canvas, and Deep Research, to handle complex tasks and collaborative workflows. Implement best practices for integrating ChatGPT into broader NIH processes while maintaining compliance and security standards. Attendees are expected to be familiar with the basic functions of ChatGPT to be successful in this training (gained by attending ChatGPT 101), attending another relevant training, and/or using ChatGPT previously). | 2026-04-17 13:00:00 | Online | Beginner | Artificial Intelligence (Al) | Online | Guest Speaker(s) | OCIO| NIH Library| CIT | 0 | ChatGPT Learning Sessions: ChatGPT 102 | |
| 2079 |
Organized By:Ryan O'Neill (NHLBI)DescriptionThe Replication Gap: Moving NIH Beyond Computational Reproducibility The Replication Gap: Moving NIH Beyond Computational Reproducibility |
The Replication Gap: Moving NIH Beyond Computational Reproducibility | 2026-04-20 11:00:00 | NIH Library Training Room Building 10 Clinical Center South Entrance | Any | Artificial Intelligence (Al) | Hybrid | Sepid Mazrouee PhD (NIAID) | Ryan O'Neill (NHLBI) | 0 | AI Club: The Replication Gap: Moving NIH Beyond Computational Reproducibility | |
| 2063 |
Organized By:NIH LibraryDescriptionThis one-hour online training, is the first of a two-part series, which introduces participants to cleaning and exploring a patient health dataset using Python and pandas. Attendees will load tabular data, inspect structure and data types, summarize columns, and identify common data quality problems such as missing values, inconsistent formats, and duplicate records. They will then apply practical fixes, including standardizing height and weight units, parsing and normalizing dates of birth, splitting combined fields, ...Read More This one-hour online training, is the first of a two-part series, which introduces participants to cleaning and exploring a patient health dataset using Python and pandas. Attendees will load tabular data, inspect structure and data types, summarize columns, and identify common data quality problems such as missing values, inconsistent formats, and duplicate records. They will then apply practical fixes, including standardizing height and weight units, parsing and normalizing dates of birth, splitting combined fields, and using Boolean masks to flag or correct implausible values. By the end of this session students will be able to:
Attendees are expected to have:
Requirements:
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This one-hour online training, is the first of a two-part series, which introduces participants to cleaning and exploring a patient health dataset using Python and pandas. Attendees will load tabular data, inspect structure and data types, summarize columns, and identify common data quality problems such as missing values, inconsistent formats, and duplicate records. They will then apply practical fixes, including standardizing height and weight units, parsing and normalizing dates of birth, splitting combined fields, and using Boolean masks to flag or correct implausible values. By the end of this session students will be able to: Import CSV data into pandas DataFrames and quickly understand column types, basic statistics, and overall data quality. Identify duplicate or repeated patient records and decide whether to keep, correct, or remove them. Detect and handle missing or inconsistent values using methods such as isna, fillna, filtering, and conditional replacement. Standardize mixed formats (for example, heights with and without units, date strings in different formats, and numeric values embedded in text). Create derived columns such as systolic and diastolic blood pressure, and use logical conditions to flag questionable or out-of-range values. Attendees are expected to have: Basic Python coding knowledge Familiarity with an IDE and loading script and data files into the IDE. (Colab, Jupyter Notebooks) Requirements: Participants will receive a script file and data files prior to the training. These should be loaded and ready to use before the training session begins. | 2026-04-20 13:00:00 | Online | Intermediate | Programming | Online | Cindy Sheffield (NIH Library) | NIH Library | 0 | Introduction to Data Wrangling Using Python: Part 1 of 2 | |
| 2064 |
Organized By:NIH LibraryDescriptionThis one-hour online training, the second session of the two-part series, focuses on reshaping and enriching the cleaned patient dataset to prepare it for analysis and reporting. Attendees will practice splitting and recombining columns (for example, separating full names into first and last names), converting columns to appropriate data types, and engineering new fields such as outlier indicators and blood pressure status labels. The session also covers merging multiple tables (patient details, contact ...Read More This one-hour online training, the second session of the two-part series, focuses on reshaping and enriching the cleaned patient dataset to prepare it for analysis and reporting. Attendees will practice splitting and recombining columns (for example, separating full names into first and last names), converting columns to appropriate data types, and engineering new fields such as outlier indicators and blood pressure status labels. The session also covers merging multiple tables (patient details, contact information, and subsets of records) and filtering or subsetting data to answer specific analytical questions. By the end of this training, attendees will be able to:
Attendees are expected to have:
Familiarity with an IDE and loading script and data files into the IDE. (Colab, Jupyter Notebooks) Requirements:
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This one-hour online training, the second session of the two-part series, focuses on reshaping and enriching the cleaned patient dataset to prepare it for analysis and reporting. Attendees will practice splitting and recombining columns (for example, separating full names into first and last names), converting columns to appropriate data types, and engineering new fields such as outlier indicators and blood pressure status labels. The session also covers merging multiple tables (patient details, contact information, and subsets of records) and filtering or subsetting data to answer specific analytical questions. By the end of this training, attendees will be able to: Reshape and restructure data by splitting and combining columns, changing data types, and reordering or selecting relevant fields. Engineer clinically useful features, including z-score–based outlier flags, hypertension indicators, and combined status columns for downstream models or dashboards. Merge and join DataFrames using common keys (such as patient ID) to bring together core data with supplemental tables like contact information. Filter and subset records based on multiple conditions (for example, patients with diabetes and abnormal blood pressure) to create analysis-ready datasets. Attendees are expected to have: To have attended Intro to Data Wrangling Using Python - Part 1 of the series Basic Python coding knowledge Familiarity with an IDE and loading script and data files into the IDE. (Colab, Jupyter Notebooks) Requirements: Participants will receive a script file and data files prior to the training. These should be loaded and ready to use before the training session begins. | 2026-04-21 13:00:00 | Online | Intermediate | Programming | Online | Cindy Sheffield (NIH Library) | NIH Library | 0 | Introduction to Data Wrangling Using Python: Part 2 of 2 | |
| 2057 |
Organized By:OCIO| NIH Library| CITDescriptionAdvanced ChatGPT training is part 3 of a three-part series. This one-hour online training, led by OpenAI experts, is for those who have completed the ChatGPT 101 and 102 trainings. The training will focus on leveraging two of ChatGPT Enterprise's most powerful features: Custom GPTs and Data Analysis. Attendees will learn how to create specialized GPTs tailored for specific NIH tasks and how to use the Data Analysis feature to upload, interpret, and visualize ...Read More Advanced ChatGPT training is part 3 of a three-part series. This one-hour online training, led by OpenAI experts, is for those who have completed the ChatGPT 101 and 102 trainings. The training will focus on leveraging two of ChatGPT Enterprise's most powerful features: Custom GPTs and Data Analysis. Attendees will learn how to create specialized GPTs tailored for specific NIH tasks and how to use the Data Analysis feature to upload, interpret, and visualize data sets for deeper insights. This training is designed to provide the skills needed to apply these advanced tools to complex, enterprise-level projects. By the end of this training, attendees will be able to:
Attendees are expected to be able to utilize ChatGPT to be successful in this training. You can register for the other trainings in this series via the link(s) below: |
Advanced ChatGPT training is part 3 of a three-part series. This one-hour online training, led by OpenAI experts, is for those who have completed the ChatGPT 101 and 102 trainings. The training will focus on leveraging two of ChatGPT Enterprise's most powerful features: Custom GPTs and Data Analysis. Attendees will learn how to create specialized GPTs tailored for specific NIH tasks and how to use the Data Analysis feature to upload, interpret, and visualize data sets for deeper insights. This training is designed to provide the skills needed to apply these advanced tools to complex, enterprise-level projects. By the end of this training, attendees will be able to: Build and deploy Custom GPTs tailored to specific NIH workflows. Use the Data Analysis feature to upload, analyze, and visualize data. Apply advanced techniques to solve complex problems using ChatGPT Enterprise. Attendees are expected to be able to utilize ChatGPT to be successful in this training. You can register for the other trainings in this series via the link(s) below: ChatGPT 101 ChatGPT 102 | 2026-04-24 11:00:00 | Online | Intermediate | Artificial Intelligence (Al) | Online | Guest Speaker(s) | OCIO| NIH Library| CIT | 0 | ChatGPT Learning Session: Advanced Session - Custom GPTs and Data Analysis | |
| 2082 |
Organized By:Ryan O'Neill (NHLBI)DescriptionArtificial Evolution with Artificial Intelligence Artificial Evolution with Artificial Intelligence |
Artificial Evolution with Artificial Intelligence | 2026-04-27 11:00:00 | NIH Library Training Room Building 10 Clinical Center South Entrance | Any | Hybrid | Harutyun Saakyan PhD (NCBI) | Ryan O'Neill (NHLBI) | 0 | AI Club: Artificial Evolution with Artificial Intelligence | ||
| 2086 |
Organized By:NCI Genomic Data CommonsDescriptionThe Genomic Data Commons is releasing a new Correlation Plot Tool which provides a framework for correlating GDC molecular information (mutation, CNV, gene expression) with clinical and survival data. Using quick access features, researchers can compare mutation or CNV status of a gene with a clinical variable or survival, CNV and mutation for given genes, a gene's CNV with its expression, and gene expression level with survival. The tool assists in identifying statistically meaningful ...Read More The Genomic Data Commons is releasing a new Correlation Plot Tool which provides a framework for correlating GDC molecular information (mutation, CNV, gene expression) with clinical and survival data. Using quick access features, researchers can compare mutation or CNV status of a gene with a clinical variable or survival, CNV and mutation for given genes, a gene's CNV with its expression, and gene expression level with survival. The tool assists in identifying statistically meaningful correlations between genomic variants and clinical phenotypes to uncover patterns that assist in enabling diagnostic and treatment discoveries. Join us for an overview and demonstration of the GDC Correlation Plot Tool, and associated data supporting correlative analysis. |
The Genomic Data Commons is releasing a new Correlation Plot Tool which provides a framework for correlating GDC molecular information (mutation, CNV, gene expression) with clinical and survival data. Using quick access features, researchers can compare mutation or CNV status of a gene with a clinical variable or survival, CNV and mutation for given genes, a gene's CNV with its expression, and gene expression level with survival. The tool assists in identifying statistically meaningful correlations between genomic variants and clinical phenotypes to uncover patterns that assist in enabling diagnostic and treatment discoveries. Join us for an overview and demonstration of the GDC Correlation Plot Tool, and associated data supporting correlative analysis. | 2026-04-29 14:00:00 | Online | Any | Artificial Intelligence (Al) | Online | Bill Wysocki Ph.D. (CRDC GDC),Xin Zhou Ph.D. (St. Jude Children\'s Research Hospital) | NCI Genomic Data Commons | 0 | Uncovering Patterns in Genomic Variation Data with Clinical Phenotypes Using the New GDC Correlation Plot Tool | |
| 2035 |
Organized By:NIH LibraryDescriptionIn partnership with the NIH Clinical Center's Biostatistics and Clinical Epidemiology Service (BCES), the NIH Library is offering several trainings that cover general concepts behind statistics and epidemiology. These trainings will help participants better understand and prepare data, interpret results and findings, design and prepare studies, and understand the results in published literature. This four-hour online training will provide a brief review of ...Read More In partnership with the NIH Clinical Center's Biostatistics and Clinical Epidemiology Service (BCES), the NIH Library is offering several trainings that cover general concepts behind statistics and epidemiology. These trainings will help participants better understand and prepare data, interpret results and findings, design and prepare studies, and understand the results in published literature. This four-hour online training will provide a brief review of the principles of epidemiology, outbreak investigations, implications in public health, key concepts and terms, and commonly used statistics in epidemiology (e.g., morbidity and mortality rates; incidence and prevalence; relative risk; odds ratio; sensitivity and specificity). Time will be devoted to questions from attendees and references will be provided for in-depth self-study. By the end of this training, attendees will be able to:
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In partnership with the NIH Clinical Center's Biostatistics and Clinical Epidemiology Service (BCES), the NIH Library is offering several trainings that cover general concepts behind statistics and epidemiology. These trainings will help participants better understand and prepare data, interpret results and findings, design and prepare studies, and understand the results in published literature. This four-hour online training will provide a brief review of the principles of epidemiology, outbreak investigations, implications in public health, key concepts and terms, and commonly used statistics in epidemiology (e.g., morbidity and mortality rates; incidence and prevalence; relative risk; odds ratio; sensitivity and specificity). Time will be devoted to questions from attendees and references will be provided for in-depth self-study. By the end of this training, attendees will be able to: Define epidemiology and its key principles Share the purpose and function of outbreak investigations Describe methods for measuring risk Be familiar with screening and diagnostic accuracy indices and their differences Describe when to use relative risks and odds ratios Explain differences between confounding and interaction | 2026-05-14 13:00:00 | Online | Beginner | Statistics | Online | Ninet Sinaii Ph.D. MPH (Biostatistics and Clinical Epidemiology Branch NIH Clinical Center) | NIH Library | 0 | Statistics and Epidemiology - Part 4: A Review of Epidemiology Concepts and Statistics | |
| 2073 |
Organized By:Ryan O'Neill (NHLBI)DescriptionJoin us for a day-long symposium exploring AI approaches in biomedical sciences, with the aim of sharing effective AI implementation strategies across NIH. Contact Lead Organizer Ryan O’Neill, PhD (oneillrs@nih.gov) for more info. Sign language interpreting and CART services are available upon request to participate in this event. Individualsneeding either of these services and/or other reasonable accommodations should ...Read More Join us for a day-long symposium exploring AI approaches in biomedical sciences, with the aim of sharing effective AI implementation strategies across NIH. Contact Lead Organizer Ryan O’Neill, PhD (oneillrs@nih.gov) for more info. Sign language interpreting and CART services are available upon request to participate in this event. Individualsneeding either of these services and/or other reasonable accommodations should contact Lisa Bossert (lisa.bossert@nih.gov) by May 1. |
Join us for a day-long symposium exploring AI approaches in biomedical sciences, with the aim of sharing effective AI implementation strategies across NIH. Contact Lead Organizer Ryan O’Neill, PhD (oneillrs@nih.gov) for more info. Sign language interpreting and CART services are available upon request to participate in this event. Individualsneeding either of these services and/or other reasonable accommodations should contact Lisa Bossert (lisa.bossert@nih.gov) by May 1. | 2026-05-15 09:00:00 | Building 10, Masur Auditorium (Bethesda) | Any | Artificial Intelligence (Al) | In-Person | Peter Kraft PhD (NCI),Michael Chiang MD (NEI),Francisco Pereira PhD (NIMH),RADM William Childs MD (NHLBI),Richard Scheuermann PhD (NLM),Brad Bower PhD (NIBIB),Ismail Baris Turkbey MD FSAR (NCI),Arash Afraz MD PhD (NIMH),Alison Motsinger-Reif PhD (NIEHS) | Ryan O'Neill (NHLBI) | 0 | NIH AI Symposium | |
| 2049 |
DescriptionQlucore Omics Explorer is a desktop-based point-and-click software with built-in machine learning capabilities. It enables RNA sequencing (bulk and single cell), proteomics and metabolomics analysis. This software is available for NCI CCR scientists upon submitting a ticket at https://service.cancer.gov/ncisp. In this demonstration-only class, Qlucore scientist will illustrate single cell RNA sequencing analysis workflow starting from data import through performing QC, visualization, clustering (tSNE, UMAP, 3D PCA) and marker-based cell type ...Read More Qlucore Omics Explorer is a desktop-based point-and-click software with built-in machine learning capabilities. It enables RNA sequencing (bulk and single cell), proteomics and metabolomics analysis. This software is available for NCI CCR scientists upon submitting a ticket at https://service.cancer.gov/ncisp. In this demonstration-only class, Qlucore scientist will illustrate single cell RNA sequencing analysis workflow starting from data import through performing QC, visualization, clustering (tSNE, UMAP, 3D PCA) and marker-based cell type identification. Experience using or installation of this software is not required for attendance. Participation is restricted to NIH staff. |
Qlucore Omics Explorer is a desktop-based point-and-click software with built-in machine learning capabilities. It enables RNA sequencing (bulk and single cell), proteomics and metabolomics analysis. This software is available for NCI CCR scientists upon submitting a ticket at https://service.cancer.gov/ncisp. In this demonstration-only class, Qlucore scientist will illustrate single cell RNA sequencing analysis workflow starting from data import through performing QC, visualization, clustering (tSNE, UMAP, 3D PCA) and marker-based cell type identification. Experience using or installation of this software is not required for attendance. Participation is restricted to NIH staff. | 2026-06-01 11:00:00 | Online | Any | Computing Resources,Next Gen Sequencing (NGS) Methods,Software | Online | Jan Nilsson (Qlucore),Joe Wu (BTEP) | BTEP | 0 | Single Cell RNA Sequencing Analysis using Qlucore | |
| 2077 |
Organized By:FAESDescriptionThis series invites Principal Investigators, Senior Scientists, and Senior Clinicians to share cutting-edge research and developments in their fields. Each session includes a 20-30 minute presentation followed by a Q&A or journal club discussion, fostering deeper insights and scholarly exchange. Lunch is provided. Please note this event is only open to members of the NIH community. Recent advances in large language models (LLMs) have enabled powerful AI agents for biomedical ...Read More This series invites Principal Investigators, Senior Scientists, and Senior Clinicians to share cutting-edge research and developments in their fields. Each session includes a 20-30 minute presentation followed by a Q&A or journal club discussion, fostering deeper insights and scholarly exchange. Lunch is provided. Please note this event is only open to members of the NIH community. Recent advances in large language models (LLMs) have enabled powerful AI agents for biomedical research, yet their adoption in high-stakes settings remains limited by concerns about hallucination, opacity, and reliability. In this talk, I discuss how expert-curated domain knowledge can be used to help mitigate these challenges in general-purpose LLMs. Drawing on real-world systems and case studies such as GeneAgent (Nature Methods 2025), I will highlight design principles for building AI agents that are scientifically sound, interpretable, and suitable for biomedical research and clinical applications. |
This series invites Principal Investigators, Senior Scientists, and Senior Clinicians to share cutting-edge research and developments in their fields. Each session includes a 20-30 minute presentation followed by a Q&A or journal club discussion, fostering deeper insights and scholarly exchange. Lunch is provided. Please note this event is only open to members of the NIH community. Recent advances in large language models (LLMs) have enabled powerful AI agents for biomedical research, yet their adoption in high-stakes settings remains limited by concerns about hallucination, opacity, and reliability. In this talk, I discuss how expert-curated domain knowledge can be used to help mitigate these challenges in general-purpose LLMs. Drawing on real-world systems and case studies such as GeneAgent (Nature Methods 2025), I will highlight design principles for building AI agents that are scientifically sound, interpretable, and suitable for biomedical research and clinical applications. | 2026-06-09 11:45:00 | Bethesda, Building 10, FAES Classroom #7 (B1C206) | Any | Artificial Intelligence (Al) | In-Person | Zhiyong Lu PhD FACMI FIAHSI (NLM) | FAES | 0 | FAES Science Insight Series: Trust Through Knowledge Grounding: AI Agents in Biomedicine | |
| 2036 |
DescriptionPartek Flow is a point-and-click platform for building analysis workflows for Next Generation Sequences (NGS), including DNA, bulk and single-cell RNA, spatial transcriptomics, ATAC, and ChIP, helping scientists avoid the steep learning curve of code-based NGS analysis. In this demonstration-only class, Illumina scientist will illustrate how to obtain insights to regulation of gene expression from bulk RNA and ATAC sequencing data. No prior experience or access to Partek Flow is required. Attendance is limited ...Read More Partek Flow is a point-and-click platform for building analysis workflows for Next Generation Sequences (NGS), including DNA, bulk and single-cell RNA, spatial transcriptomics, ATAC, and ChIP, helping scientists avoid the steep learning curve of code-based NGS analysis. In this demonstration-only class, Illumina scientist will illustrate how to obtain insights to regulation of gene expression from bulk RNA and ATAC sequencing data. No prior experience or access to Partek Flow is required. Attendance is limited to NIH staff. |
Partek Flow is a point-and-click platform for building analysis workflows for Next Generation Sequences (NGS), including DNA, bulk and single-cell RNA, spatial transcriptomics, ATAC, and ChIP, helping scientists avoid the steep learning curve of code-based NGS analysis. In this demonstration-only class, Illumina scientist will illustrate how to obtain insights to regulation of gene expression from bulk RNA and ATAC sequencing data. No prior experience or access to Partek Flow is required. Attendance is limited to NIH staff. | 2026-06-18 14:00:00 | Online | Computing Resources,Next Gen Sequencing (NGS) Methods,Software | Online | Joe Wu (BTEP),Xiaowen Wang (Partek) | BTEP | 0 | Integration of Bulk RNA and ATAC Sequencing Data | ||
| 2037 |
DescriptionPartek Flow is a point-and-click platform for building analysis workflows for Next Generation Sequences (NGS), including DNA, bulk and single-cell RNA, spatial transcriptomics, ATAC, and ChIP, helping scientists avoid the steep learning curve of code-based NGS analysis. This class is demonstration-only. Starting from single cell RNA expression matrix, Illumina scientist will illustrate how to conduct QC, perform cell type classification, obtain differential expression results, and generate visualizations. No prior experience or access to Partek ...Read More Partek Flow is a point-and-click platform for building analysis workflows for Next Generation Sequences (NGS), including DNA, bulk and single-cell RNA, spatial transcriptomics, ATAC, and ChIP, helping scientists avoid the steep learning curve of code-based NGS analysis. This class is demonstration-only. Starting from single cell RNA expression matrix, Illumina scientist will illustrate how to conduct QC, perform cell type classification, obtain differential expression results, and generate visualizations. No prior experience or access to Partek Flow is required. Attendance is limited to NIH staff. |
Partek Flow is a point-and-click platform for building analysis workflows for Next Generation Sequences (NGS), including DNA, bulk and single-cell RNA, spatial transcriptomics, ATAC, and ChIP, helping scientists avoid the steep learning curve of code-based NGS analysis. This class is demonstration-only. Starting from single cell RNA expression matrix, Illumina scientist will illustrate how to conduct QC, perform cell type classification, obtain differential expression results, and generate visualizations. No prior experience or access to Partek Flow is required. Attendance is limited to NIH staff. | 2026-08-19 14:00:00 | Online | Computing Resources,Next Gen Sequencing (NGS) Methods,Software | Online | Joe Wu (BTEP),Xiaowen Wang (Partek) | BTEP | 0 | Introduction to Single Cell RNA Sequencing Analysis using Partek Flow | ||
| 2050 |
DescriptionQlucore Omics Explorer is a desktop-based point-and-click software with built-in machine learning capabilities. It enables RNA sequencing (bulk and single cell), proteomics and metabolomics analysis. This software is available for NCI CCR scientists upon submitting a ticket at https://service.cancer.gov/ncisp. In this demonstration-only class, Qlucore scientist will illustrate the use of regression approaches to identify correlation between gene and protein expression. Experience using or installation of this software is not required ...Read More Qlucore Omics Explorer is a desktop-based point-and-click software with built-in machine learning capabilities. It enables RNA sequencing (bulk and single cell), proteomics and metabolomics analysis. This software is available for NCI CCR scientists upon submitting a ticket at https://service.cancer.gov/ncisp. In this demonstration-only class, Qlucore scientist will illustrate the use of regression approaches to identify correlation between gene and protein expression. Experience using or installation of this software is not required for attendance. Participation is restricted to NIH staff. |
Qlucore Omics Explorer is a desktop-based point-and-click software with built-in machine learning capabilities. It enables RNA sequencing (bulk and single cell), proteomics and metabolomics analysis. This software is available for NCI CCR scientists upon submitting a ticket at https://service.cancer.gov/ncisp. In this demonstration-only class, Qlucore scientist will illustrate the use of regression approaches to identify correlation between gene and protein expression. Experience using or installation of this software is not required for attendance. Participation is restricted to NIH staff. | 2026-09-14 11:00:00 | Online | Any | Computing Resources,Next Gen Sequencing (NGS) Methods,Software | Online | Jan Nilsson (Qlucore),Joe Wu (BTEP) | BTEP | 0 | Correlating RNA with Protein Expression using Qlucore | |
| 2038 |
DescriptionPartek Flow is a point-and-click platform for building analysis workflows for Next Generation Sequences (NGS), including DNA, bulk and single-cell RNA, spatial transcriptomics, ATAC, and ChIP, helping scientists avoid the steep learning curve of code-based NGS analysis. In this demonstration-only class, an Illumina scientist will show a bulk ATAC-sequencing workflow starting from FASTQ files through peak and motif detection as well as comparison of peaks found across samples. No prior experience or access to ...Read More Partek Flow is a point-and-click platform for building analysis workflows for Next Generation Sequences (NGS), including DNA, bulk and single-cell RNA, spatial transcriptomics, ATAC, and ChIP, helping scientists avoid the steep learning curve of code-based NGS analysis. In this demonstration-only class, an Illumina scientist will show a bulk ATAC-sequencing workflow starting from FASTQ files through peak and motif detection as well as comparison of peaks found across samples. No prior experience or access to Partek Flow is required. Attendance is limited to NIH staff. |
Partek Flow is a point-and-click platform for building analysis workflows for Next Generation Sequences (NGS), including DNA, bulk and single-cell RNA, spatial transcriptomics, ATAC, and ChIP, helping scientists avoid the steep learning curve of code-based NGS analysis. In this demonstration-only class, an Illumina scientist will show a bulk ATAC-sequencing workflow starting from FASTQ files through peak and motif detection as well as comparison of peaks found across samples. No prior experience or access to Partek Flow is required. Attendance is limited to NIH staff. | 2026-10-14 14:00:00 | Online | Any | Computing Resources,Next Gen Sequencing (NGS) Methods,Software | Online | Joe Wu (BTEP),Xiaowen Wang (Partek) | BTEP | 0 | Introducing Bulk ATAC Sequencing Analysis using Partek Flow | |
| 2039 |
DescriptionPartek Flow is a point-and-click platform for building analysis workflows for Next Generation Sequences (NGS), including DNA, bulk and single-cell RNA, spatial transcriptomics, ATAC, and ChIP, helping scientists avoid the steep learning curve of code-based NGS analysis. In this demonstration-only class, an Illumina scientist will show steps for spatial transcriptomics analysis including QC, exploratory analysis, batch effect removal, integration of spatial and gene expression information, as well as differential expression and pathway analysis. ...Read More Partek Flow is a point-and-click platform for building analysis workflows for Next Generation Sequences (NGS), including DNA, bulk and single-cell RNA, spatial transcriptomics, ATAC, and ChIP, helping scientists avoid the steep learning curve of code-based NGS analysis. In this demonstration-only class, an Illumina scientist will show steps for spatial transcriptomics analysis including QC, exploratory analysis, batch effect removal, integration of spatial and gene expression information, as well as differential expression and pathway analysis. No prior experience or access to Partek Flow is required. Attendance is limited to NIH staff. |
Partek Flow is a point-and-click platform for building analysis workflows for Next Generation Sequences (NGS), including DNA, bulk and single-cell RNA, spatial transcriptomics, ATAC, and ChIP, helping scientists avoid the steep learning curve of code-based NGS analysis. In this demonstration-only class, an Illumina scientist will show steps for spatial transcriptomics analysis including QC, exploratory analysis, batch effect removal, integration of spatial and gene expression information, as well as differential expression and pathway analysis. No prior experience or access to Partek Flow is required. Attendance is limited to NIH staff. | 2026-12-02 14:00:00 | Online | Any | Computing Resources,Next Gen Sequencing (NGS) Methods,Software | Online | Joe Wu (BTEP),Xiaowen Wang (Partek) | BTEP | 0 | Analyzing Spatial Transcriptomics Data using Partek Flow |