logoAiPathly

Harbinger

H

Overview

The term "Harbinger" encompasses various entities and works across different domains:

The Harbinger (2022 Film)

A horror film directed by Andy Mitton, set during the early COVID-19 lockdown. The movie follows Monique and her friend Mavis as they experience terrifying dreams haunted by a malevolent entity. It explores themes of isolation, mental health, and supernatural horror, utilizing the pandemic as a backdrop to amplify anxiety and fear. The film is praised for its intentional writing, unique plot, and effective use of practical effects.

The Harbinger (2011 Novel)

A Christian novel by Jonathan Cahn that draws parallels between ancient Israel's destruction and potential future events in the United States. Cahn identifies nine "harbingers" or signs that he believes were given to ancient Israel before its destruction and argues that similar signs are appearing in the U.S. The novel urges a return to spirituality and faith, warning of impending judgment if the nation does not repent.

Harbinger (Electric Vehicle Company)

An American company specializing in medium-duty electric vehicles. Harbinger has raised $100 million in Series B funding to accelerate growth, expand production, and enhance sales and service operations. The company is known for its vertically integrated approach to building electric vehicles, which allows it to maintain quality and keep costs low. Harbinger's products include electric platforms for vehicles such as walk-in vans, box trucks, and recreational vehicles.

Leadership Team

Harbinger Health, a biotechnology company focused on pioneering new technologies for cancer screening and detection, boasts a leadership team with extensive experience in healthcare, oncology, and biotechnology:

Key Executives

  • Stephen Hahn, M.D. (Chief Executive Officer): Former FDA Commissioner with extensive experience in healthcare strategy, oncology medical practice, and translational/clinical research.
  • Dymeka Harrison (Chief Commercial Officer): Over 20 years of experience in the diagnostics industry, overseeing commercial strategy and product launches.
  • Mathew Sargent (Chief Business Officer): Focuses on driving growth and expansion, with over 20 years of experience in the oncology diagnostic industry.
  • Gisela Paulsen (Chief Operating Officer): Brings over 25 years of experience in the life sciences industry, with executive roles at various companies.
  • Vincent Lozada (Chief Financial Officer): Manages the company's financial operations.
  • Tony Shuber (Chief Innovation Officer): Scientific leader with over 25 years of experience in diagnostics and applied genomics.
  • Kieran Chacko, Ph.D. (Executive Vice President, Data Science and Strategy): Leads data science research efforts, advancing machine learning and computational biology methodologies.

Additional Key Roles

  • May Orfali, M.D. (Chief Medical Officer)
  • David Lambe (Senior Vice President, Portfolio Strategy and Operations)
  • Leila Gjika (Vice President, Head of Human Resources)
  • Eric Haltom (Senior Vice President, Clinical Operations) This team combines expertise in diagnostics, oncology, biotechnology, data science, and healthcare strategy to drive Harbinger Health's mission of developing innovative cancer screening technologies.

History

The term "harbinger" has a rich history and multiple contexts across various fields:

Etymological Origins

Originating in the 15th century, "harbinger" derives from the Middle English term "herbengar," meaning "one sent ahead to arrange lodgings" for a monarch or army. Its meaning later expanded to include "a forerunner, that which precedes and gives notice of the coming of another."

Harbinger Fitness

Founded in 1988 by David McCrane, Harbinger Fitness initially focused on a wrist-stabilizing glove for skateboarders, later adopted by weight lifters. Collaborating with Lee Haney, an 8-time Mr. Olympia winner, the company became a leading brand for high-quality fitness accessories. Now part of Implus LLC, Harbinger distributes products across North America and over 70 countries worldwide.

Millennial Harbinger (Journal)

A religious journal started by Alexander Campbell in 1830, the "Millennial Harbinger" was a key publication of the Stone-Campbell Movement. It played a crucial role in shaping the movement's thought and practice, addressing various theological debates and controversies. The journal continued until 1870, with its influence waning after Campbell's death in 1866.

Harbinger (Comic Book Series)

First released in January 1992 by Valiant Comics, "Harbinger" is a series centered on a group of teenage super-powered outcasts known as Harbingers. The main character, Peter Stanchek, leads the Renegades against the powerful Toyo Harada and his Harbinger Foundation. The series has undergone several revamps and remains a significant part of the Valiant Universe.

The Harbinger (Novel)

Jonathan Cahn's 2011 Christian novel presents the 9/11 attacks as a "divine warning" to the United States. Drawing parallels between ancient Israel's destruction and potential future events in America, Cahn identifies several "harbingers" or signs that he believes indicate a warning from God to America, similar to the warnings given to ancient Israel before its destruction. These diverse contexts highlight the versatility of the term "harbinger" across various fields, from its etymological roots to its use in fitness, religious history, comics, and literature.

Products & Solutions

Harbinger Group offers a diverse range of products and solutions across various sectors, primarily focusing on digital transformation, eLearning, and AI-powered tools.

eLearning Solutions

  • Raptivity: An eLearning interaction builder for creating engaging micro-learning experiences.
  • Quillionz: An AI-powered platform for generating quizzes and assessments.
  • SprinkleZone: A micro-learning platform for delivering small chunks of knowledge with automated and manual authoring options.
  • YawnBuster, Elicitus, TeemingPod, and SiteJazzer: Various tools for learning interaction, social interaction, and content development.

Content and Learning Solutions

  • iContent: A Generative AI-based content processing framework for automating content development, transcription, and translation.
  • Skimthru: An AI-powered tool for generating word clouds from videos to highlight key information.
  • Offline Player: A standards-compliant eLearning content player for SCORM and xAPI courses.

HR Solutions

  • Polestar CPM: A continuous performance tracking tool for setting goals, monitoring, motivating, and developing team members.
  • Pritella: An AI-enabled office bot for HR teams to enhance service delivery and employee engagement.

Digital Transformation and AI

Harbinger Group focuses on the future of work, learning, and automation using AI-powered intelligent content automation. They offer various frameworks, APIs, and templates for digital transformation, including content automation, micro-learning, quiz generation, and performance tracking tools.

Product Engineering

Harbinger Group provides product engineering solutions for HR, learning, education, digital publishing, and high-tech industries. They emphasize customer-centricity and the use of AI-assisted technologies. It's worth noting that there are other unrelated companies using the Harbinger name, such as Harbinger Pro Audio (specializing in audio equipment) and Harbinger Motors (focusing on electrification in the commercial vehicle industry), which are not part of the Harbinger Group discussed here.

Core Technology

Harbinger Health's core technology revolves around a cutting-edge, blood-based early cancer detection platform. This innovative approach integrates several key components:

Biology-Informed Approach

The platform is built on proprietary insights into the biology of early-stage cancer. By focusing on specific biological events occurring during the initial phases of tumorigenesis, Harbinger Health can detect cancer even when the tumor fraction is very low.

AI-Driven Analytics

Harbinger Health employs a biology-informed, AI-driven approach utilizing advanced machine learning algorithms. Specifically, they use a multi-layered logistic regression-based machine learning algorithm to predict the likelihood of cancer. This method generates binary classification outputs (cancer yes/no) and has demonstrated high sensitivity and specificity in detecting early-stage cancers.

Blood-Based Assay

The company's technology centers on a blood-based assay capable of detecting multiple types of cancer. This assay has shown impressive results, with an overall sensitivity of 82% at 95% specificity. It has demonstrated particularly high sensitivities for high-incidence cancers, including colorectal (96%), lung (85%), prostate (82%), and breast (73%).

Clinical Validation

To validate the efficacy of their platform, Harbinger Health is conducting the Cancer Origin Epigenetics-Harbinger Health (CORE-HH) clinical study. This large-scale, 10,000-participant case-control study is being carried out in collaboration with the Sarah Cannon Research Institute. The study aims to further develop and validate the diagnostic accuracy of Harbinger's platform technology for early-stage cancer detection across multiple cancer types and to assess the ability to determine tumor location.

Collaboration and Data Enhancement

Harbinger Health is also collaborating with Memorial Sloan Kettering Cancer Center (MSK) to leverage MSK's expertise and diverse patient population. This partnership aims to advance the validation of their assay and enhance the development of their diagnostic tests. By building a diverse recruitment base, Harbinger Health continually refines and validates their technology. In summary, Harbinger Health's core technology combines advanced artificial intelligence, machine learning, and deep biological insights to develop a low-cost, multi-cancer blood test. This innovative approach has the potential to transform cancer diagnosis and management by enabling early detection across multiple cancer types.

Industry Peers

Harbinger Group operates across multiple sectors, including digital marketing, software technology, and product engineering. As such, its industry peers vary depending on the specific area of focus.

Digital Marketing and Software Services

In the digital marketing services and software technology sectors, Harbinger Group's key competitors include:

  • Adobe Digital Marketing Suite: A major player with a significant market share in digital marketing services.
  • ProSites: A competitor specializing in digital marketing services.
  • Skai: Another prominent competitor in the digital marketing services category.
  • SupraSoft Technologies Pvt Ltd., Freecharge, and BrowserStack: While not direct competitors in all areas, these companies compete with Harbinger Group in various aspects of tech services.

Software and Product Engineering

In the context of software and product engineering, particularly in the areas of corporate learning and talent management, Harbinger Group's peers include:

  • Degreed: Focuses on lifelong learning and skills development within corporate environments.
  • SumTotal Systems: Provides integrated human resource solutions, including talent acquisition, onboarding, and learning management.
  • EdCast: Specializes in employee experience solutions with a unified platform for learning, skilling, and career mobility.
  • D2L: Offers the Brightspace online learning platform for education and technology sectors.

AI and Machine Learning

While not explicitly mentioned in the original text, given Harbinger Group's focus on AI-powered tools and solutions, it's worth noting some peers in this space:

  • IBM Watson: Offers a range of AI-powered business solutions.
  • Microsoft Azure AI: Provides AI and machine learning services for businesses.
  • Google Cloud AI: Offers machine learning and AI tools for various industries. It's important to note that Harbinger Group's diverse portfolio means it competes with different sets of companies across various sectors. The company's focus on integrating AI and machine learning into its products and services places it at the intersection of several rapidly evolving industries. This analysis of industry peers provides a snapshot of Harbinger Group's competitive landscape, highlighting the company's position in the digital transformation, eLearning, and AI-powered solutions markets.

More Companies

A

AI Test Automation Engineer specialization training

AI Test Automation Engineer specialization training equips professionals with the skills to leverage artificial intelligence in software testing. This comprehensive overview covers key aspects of the specialization: ### Course Content and Objectives 1. Introduction to AI in Software Testing - Understand fundamentals of AI, machine learning, and deep learning in software testing - Explore applications through courses on platforms like Udemy and Global Knowledge 2. AI-Powered Testing Tools and Techniques - Learn tools such as Selenium, Katalon Studio, Testim, TestProject, and Applitools - Gain practical experience in test data generation, case selection, defect prediction, and automation 3. Test Automation with AI - Focus on AI's role in accelerating test authoring, execution, and maintenance - Explore machine learning applications in UI test automation 4. Practical Skills and Hands-On Experience - Work on labs and projects involving AI-powered testing tools - Generate test data, select test cases, predict defects, and automate tests ### Key Skills and Responsibilities 1. Technical Skills - Develop proficiency in programming languages (e.g., Python, Java) - Master automation frameworks and integration with existing toolchains 2. Analytical and Problem-Solving Skills - Apply critical thinking to discover flaws and leverage diverse testing techniques 3. Domain Knowledge - Acquire deep understanding of the product or software being tested - Create effective test models and ensure high test coverage 4. Collaboration and Communication - Work effectively in teams, interacting with various stakeholders - Establish procedures, review requirements, and document test plans ### Training Programs and Courses 1. Global Knowledge: "Smarter Software Testing & Test Automation with AI" - One-day, hands-on course covering AI in software testing and related tools 2. Udemy: "Artificial Intelligence (AI) in Software Testing" - Comprehensive course on AI basics and UI test automation 3. Coursera: "Software Testing and Automation Specialization" - Broad foundation in software testing techniques and tools ### Career Development 1. Role of an AI Test Automation Engineer - Design, write, maintain, and execute automated test scripts using AI technologies - Integrate AI into the software testing life cycle 2. Continuous Learning - Stay updated with latest technologies and tools in AI and test automation - Participate in workshops, webinars, and conferences for professional growth This overview provides a solid foundation for professionals seeking to specialize in AI test automation engineering, covering essential knowledge, skills, and career development opportunities.

A

AI Workflow Engineer specialization training

The IBM AI Enterprise Workflow Specialization is a comprehensive training program designed to equip data science practitioners with the skills necessary for building, deploying, and managing AI solutions in large enterprises. This specialization offers a structured approach to mastering the AI workflow process. ## Course Structure The specialization consists of six courses that build upon each other: 1. AI Workflow: Business Priorities and Data Ingestion 2. AI Workflow: Data Analysis and Hypothesis Testing 3. AI Workflow: Feature Engineering and Bias Detection 4. AI Workflow: Machine Learning, Visual Recognition and NLP 5. AI Workflow: Enterprise Model Deployment 6. AI Workflow: AI in Production ## Skills and Knowledge Participants will gain expertise in: - MLOps (Machine Learning Operations) - Apache Spark - Feature Engineering - Statistical Analysis and Inference - Data Analysis and Hypothesis Testing - Applied Machine Learning - Predictive Modeling - DevOps - Deployment of machine learning models using IBM Watson tools on IBM Cloud ## Target Audience This specialization is tailored for experienced data science practitioners seeking to enhance their skills in enterprise AI deployment. It is not suitable for aspiring data scientists without real-world experience. ## Course Content and Delivery Each course includes a mix of videos, readings, assignments, and labs. For instance, the Feature Engineering and Bias Detection course comprises 6 videos, 14 readings, 5 assignments, and 1 ungraded lab, focusing on best practices in feature engineering, class imbalance, dimensionality reduction, and data bias. ## Tools and Technologies The courses utilize: - Open-source tools (e.g., Jupyter notebooks, Python libraries) - Enterprise-class tools on IBM Cloud (e.g., IBM Watson Studio) Participants should have a basic working knowledge of design thinking and Watson Studio before starting the specialization. ## Certification Upon completion, participants will be prepared to take the official IBM certification examination for the IBM AI Enterprise Workflow V1 Data Science Specialist, administered by Pearson VUE. ## Practical Application The specialization emphasizes practical application with an enterprise focus. Exercises are designed to simulate real-world scenarios, emphasizing the deployment and testing of machine learning models in an enterprise environment. While most exercises can be completed using open-source tools on a personal computer, the specialization is optimized for an enterprise setting that facilitates sharing and collaboration.

A

AI Tools Developer specialization training

For professionals interested in specializing in AI tools development, several comprehensive training programs are available to help acquire the necessary skills: ### Generative AI for Software Developers Specialization (Coursera/IBM) - Three self-paced courses: 1. "Generative AI: Introduction and Applications" 2. "Generative AI: Prompt Engineering Basics" 3. "Generative AI: Elevate your Software Development Career" - Skills gained: Generative AI, prompt engineering, code generation - Tools covered: GitHub Copilot, OpenAI ChatGPT, Google Gemini - Hands-on projects: Generating text, images, code; creating personalized learning platforms ### Generative AI for Developers Specialization (Coursera/Fractal Analytics) - Four courses: 1. "Generative AI Essentials: A Comprehensive Introduction" 2. "Coding with Generative AI" 3. "Generative AI - Your Personal Code Reviewer" 4. "Responsible AI in the Generative AI Era" - Skills gained: Code refactoring, error handling, prompt engineering, responsible AI practices - Projects: Developing Python programs using generative AI, data cleaning for analysis ### The AI Developer's Toolkit (Pluralsight) - Overview of modern data-driven AI tools for software developers and IT professionals - Covers tools for analyzing and synthesizing data, text, audio, images, and video - Demonstrations of AI tools from Microsoft, Google, and Amazon - Focuses on understanding the AI tool landscape and integration into various applications ### AI Engineer Training (Microsoft Learn) - Career path for AI engineers, covering software development, programming, data science, and data engineering - Options: Self-paced training, instructor-led training, and certifications - Skills gained: Developing AI algorithms, creating and testing machine learning models, implementing AI applications These programs offer diverse perspectives and skill sets, allowing professionals to choose based on their career goals and current expertise level.

A

AI Training Engineer specialization training

Becoming an AI Engineer requires a comprehensive educational foundation and ongoing skill development. Here's an overview of the training and specialization paths to consider: ### Educational Foundation - A bachelor's degree in computer science, mathematics, statistics, or engineering provides the necessary groundwork. - Essential coursework includes artificial intelligence, machine learning, data science, computer programming, and algorithms. ### Programming Skills - Proficiency in Python, R, Java, and C++ is crucial, with Python being particularly important due to its extensive AI and data science libraries. ### AI and Machine Learning Concepts - Master fundamentals such as machine learning algorithms, neural networks, deep learning, reinforcement learning, natural language processing, and computer vision. - Utilize online platforms like Coursera, edX, and Udacity for comprehensive courses in these areas. ### Specialization Courses and Certifications 1. AI Engineering Specialization (Coursera): - Focuses on building generative AI-powered applications - Covers OpenAI API, open-source models, AI safety, embeddings, vector databases, and AI agents 2. AI and Machine Learning Essentials with Python Specialization (Coursera): - Delves into AI fundamentals, statistics, machine learning, and deep learning - Enhances Python skills through practical projects 3. Microsoft Learn Training for AI Engineers: - Offers self-paced and instructor-led paths - Covers developing, programming, and training complex AI algorithms ### Practical Experience - Engage in projects, internships, coding competitions, and open-source contributions - Utilize platforms like Kaggle to work on real-world problems using provided datasets ### Certifications - Pursue relevant certifications such as AWS Certified Machine Learning and Microsoft Certified: Azure AI Engineer Associate ### Continuous Learning - Stay updated with the rapidly evolving field through ongoing education, workshops, and industry events By following this comprehensive approach, you can develop the technical expertise and practical skills necessary for a successful career as an AI Engineer.