Books, Courses & Certifications
Top 5 Best AI Courses in Anchorage in 2025

Too Long; Didn’t Read:
In 2025, Anchorage’s top 5 AI courses offer beginners flexible learning formats, hands-on projects, and industry-recognized credentials. Local salaries for AI roles average $92,000+ – 20–30% higher than comparable jobs – driven by a $1.6 billion tech sector growing at 1.7% annually. Course options range from online certificates to university programs tailored for Alaska’s workforce needs.
Artificial intelligence is transforming Anchorage’s economy and job market in 2025, making AI literacy essential for anyone seeking tech roles in Alaska. Local employers increasingly demand skills in AI fluency, data analysis, cloud computing, and digital transformation leadership, with roles requiring AI expertise offering 20–30% higher salaries than equivalent positions top tech skills Anchorage employers seek in 2025.
As Anchorage’s tech scene contributes $1.6 billion to the regional economy and grows at 1.7% annually – with entry-level data science and AI roles starting near $92,000 – AI touches every sector, from healthcare to logistics, prompting strong investments in upskilling and bootcamps getting a tech job in Anchorage.
Local institutions like the University of Alaska Anchorage now offer tailored AI programs to meet workforce needs, while innovation-focused events such as the Alaska SBDC Summit 2025 highlight AI’s role in addressing Alaska’s unique challenges, including workforce shortages and rural healthcare access.
In short, learning AI in Anchorage this year isn’t just about personal growth – it’s about thriving in one of the fastest-growing, highest-paying, and most future-proofed job sectors in Alaska.
Table of Contents
- Methodology: How We Selected the Top 5 AI Courses for Beginners
- ChatGPT Training Course in Anchorage by The Knowledge Academy
- University of Alaska Anchorage – Graduate Certificate in Business Analytics and AI
- Pennsylvania State University Master of Professional Studies in Artificial Intelligence (Online)
- Stanford University School of Engineering – AI Graduate Certificate (Online)
- IBM Applied AI Professional Certificate on Coursera
- Conclusion: Choosing the Right AI Course in Anchorage for 2025
- Frequently Asked Questions
Methodology: How We Selected the Top 5 AI Courses for Beginners
(Up)
To determine the top 5 best AI courses for beginners in Anchorage in 2025, we developed a transparent, research-driven methodology aligned with national and Alaskan educational needs.
We prioritized courses with strong foundational content, recognized certification, and proven instructional quality suitable for those new to AI and tech, as highlighted in Qolaba’s guide to beginner-friendly AI courses in 2025.
Guided by key educational principles – purposeful AI application, compliance with privacy and equity policies, and promotion of AI literacy for all students – we assessed each program’s alignment to current frameworks, practical relevance, and instructor credibility, as outlined by the TeachAI Guidance Toolkit for ethical AI education.
We also reviewed comprehensive rankings from independent evaluators, focusing on video quality, hands-on projects, community support, and career value, as presented in learnDataSci’s 2025 review of online AI courses.
This multi-faceted process ensured our selections offer not only up-to-date AI knowledge but also support local learners with accessible, ethical, and evidence-based training essential for Anchorage’s tech landscape.
ChatGPT Training Course in Anchorage by The Knowledge Academy
(Up)
The ChatGPT Training Course in Anchorage by The Knowledge Academy offers a comprehensive, beginner-friendly introduction to artificial intelligence and natural language processing (NLP) tailored for Alaska’s evolving tech landscape.
Spanning a robust one-day curriculum, the course covers the fundamentals of ChatGPT, chatbot customization, ethical considerations, and practical hands-on deployment with widely-used tools such as Python, TensorFlow, and PyTorch.
Thanks to flexible learning options – including online instructor-led, self-paced, and onsite formats – participants can fit the training into busy schedules while benefiting from globally experienced instructors.
The course is particularly well-suited to content creators, customer support professionals, and technical decision makers looking to harness AI in their roles.
Upon completion, attendees receive a certification validating their AI-powered NLP proficiency, with career pathways including Chatbot Developer and NLP Specialist.
Notably, the Anchorage venue provides full IT support and modern amenities, contributing to an effective learning environment in Alaska’s largest city. According to a recent course overview from The Knowledge Academy, there are no formal prerequisites, and students gain lifetime access to quality digital resources.
The program’s value is further underscored by bundled discount packages and corporate training options for Anchorage organizations. As student reviewer Iain Rickatson notes,
“An excellent trainer very well presented and very helpful.”
To compare schedule, pricing, and delivery methods across locations, see the full ChatGPT Training Course details for the United States.
With the rise of AI across Alaska’s education and business sectors, this course empowers local talent for tomorrow’s tech-driven jobs. For a video-based alternative and free tutorials, the ChatGPT Full Course for 2025 on YouTube offers a broad overview of job opportunities, prompt engineering, and coding applications using ChatGPT.
University of Alaska Anchorage – Graduate Certificate in Business Analytics and AI
(Up)
The University of Alaska Anchorage offers a Graduate Certificate in Business Analytics and Artificial Intelligence specifically designed to help Alaskans transform company data into actionable insights, elevate decision-making, and boost organizational competitiveness.
This 12-credit program, based in Anchorage and delivered by the College of Business and Public Policy, blends foundational AI concepts with advanced business analytics, data science, and machine learning.
The curriculum includes courses such as Artificial Intelligence with Business Applications, Business Intelligence and Analytics, and Advanced Business Data Analysis, with electives allowing for focus in negotiation, leadership, or data mining.
The program emphasizes “skills in business intelligence, business analytics, and artificial intelligence,” which are “expected to grow exponentially over the coming decades,” enhancing both immediate career trajectory and preparation for further graduate study.
To qualify, applicants must hold a bachelor’s degree and submit a statement of goals, a résumé, and references; those with leadership experience or an existing graduate degree may have GPA requirements waived.
Students must maintain a minimum GPA of 3.0 and can transfer up to one course (three credits) from another accredited institution. For a clear view of the curriculum structure, refer to the UAA official certificate page.
UAA’s stature as Alaska’s largest public university, combined with dedicated student support – especially for Alaska Native communities – ensures robust local relevance and opportunity (see UAA business certificates).
The certificate’s inclusion in national listings underscores its value: “University of Alaska Anchorage – Graduate Certificate in Business Analytics and Artificial Intelligence” is recognized among leading analytics programs across the United States (explore certificate rankings and comparisons).
Pennsylvania State University Master of Professional Studies in Artificial Intelligence (Online)
(Up)
The Pennsylvania State University’s Master of Professional Studies in Artificial Intelligence offers Alaskans a comprehensive and flexible approach to AI education through its 100% online format, making it especially accessible for Anchorage residents balancing work and life commitments.
As a 33-credit program, it covers foundational and advanced areas such as machine learning, deep learning, natural language processing, reinforcement learning, and computer vision, with core courses like Deep Learning, Natural Language Processing, and Ethics of Artificial Intelligence.
Students can progress at their own pace, stack graduate certificates in specialized AI subfields, and participate in national competitions like DataFest and Kaggle for practical experience (Artificial Intelligence Master’s Degree Online).
Tuition is $1,067 per credit for the 2024–25 academic year, with robust career support including employer connections, counseling, and salary data, benefiting those seeking AI roles across Alaska’s growing tech sector.
The curriculum stands out for its blend of theory and hands-on learning, culminating with a capstone project applying real-world AI techniques – especially valuable for students looking to serve local industries from healthcare to resource management.
As highlighted by a recent program alum,
“The artificial intelligence program is a great way to upskill yourself or get into the industry. If you have a curious mindset and are analytical, you should definitely do it.”
Ranked among the top online options nationally, this Penn State program ensures career relevance and workforce connection, supported by experienced faculty with expertise spanning deep learning, computer vision, and ethics.
For further details on tuition, requirements, and outcomes, see the comprehensive 2025 guide to online AI master’s programs and a state-focused overview of Pennsylvania’s AI education landscape for prospective students in Anchorage.
Stanford University School of Engineering – AI Graduate Certificate (Online)
(Up)
The Stanford University School of Engineering offers its renowned Artificial Intelligence Graduate Certificate entirely online, bringing a rigorous and flexible AI education to learners in Anchorage and across Alaska.
This graduate-level program, requiring completion of four courses within one to two years and a weekly commitment of 15-20 hours, stands out for its depth and breadth – covering topics such as machine learning, deep learning, reinforcement learning, robotics, and natural language processing, all taught by leading Stanford faculty like Andrew Ng and Christopher Manning.
As detailed by Stanford University’s Artificial Intelligence Graduate Certificate online program, students can tailor their curriculum through a combination of required and elective courses, culminating in a blockchain-verified digital certificate and official Stanford academic credits.
Tuition ranges from $19,682 to $24,224, reflecting the program’s comprehensive nature and the renowned credential awarded upon earning a minimum grade of B in each course.
A testimonial from a past student emphasizes the certificate’s industry impact:
“The certificate is a symbol of my investment to keep my skills and knowledge up-to-date and of the highest quality.” – Shawn McCann, Software Development Manager
For Alaska professionals seeking a flexible, high-quality entry or advancement into AI, this program offers both practical skills and respected recognition in the job market.
For a concise breakdown, refer to the table below:
Program Element | Details |
---|---|
Format | 100% Online, On-demand and Live |
Duration | 1-2 years |
Tuition | $19,682 – $24,224 |
Weekly Commitment | 15-20 hours |
Entry Requirements | Bachelor’s degree, calculus, linear algebra, programming |
Explore more on curriculum options and faculty credentials at Shiksha’s comprehensive Stanford AI Graduate Certificate overview or learn about program flexibility and career outcomes on Hackr.io’s in-depth analysis of Stanford’s AI professional program.
IBM Applied AI Professional Certificate on Coursera
(Up)
The IBM Applied AI Professional Certificate on Coursera stands out as a flexible, beginner-friendly online program well-suited for Anchorage residents seeking to enter Alaska’s rapidly modernizing tech sector.
Spread across ten self-paced courses, the certificate covers essentials like Python programming, AI concepts, generative AI, prompt engineering, and full-stack web development, culminating with hands-on projects building AI-powered chatbots and applications using IBM Watson and open-source models.
As summarized on Franklin University’s overview of the IBM Certificate, students gain practical experience in designing, building, and deploying applications while preparing for a range of in-demand AI careers – everything from AI Developer to Data Analyst – without requiring prior programming expertise.
The curriculum’s real-world emphasis is especially valuable for learners in Anchorage, where remote work opportunities and digital transformation are expanding.
For added value, completed certificates are shareable on LinkedIn and can award credit toward degrees at select partner institutions, a meaningful pathway for Alaskans considering advanced education.
As one testimonial noted,
“To be able to take courses at my own pace and rhythm has been amazing.”
The certificate is widely recognized by employers and may be completed through a monthly Coursera subscription, and local students can expect strong foundational skills for Alaska’s evolving job market.
For an in-depth review of the coursework and project experience, refer to E-Student’s analysis of the IBM Applied AI Professional Certificate.
Feature | Details |
---|---|
Duration | 6-8 months (self-paced) |
Skill Level | Beginner (no programming required) |
Project Examples | AI chatbots, generative AI apps, portfolio website, sentiment analysis |
Career Outcomes | AI Developer, Data Scientist, Machine Learning Engineer, and more |
Conclusion: Choosing the Right AI Course in Anchorage for 2025
(Up)
Choosing the right AI course in Anchorage for 2025 depends on your goals, background, and preferred learning format. While Alaska’s universities are deeply involved in real-world AI applications – from climate change modeling to aviation route optimization – there are currently no in-state, on-campus AI degree programs; residents instead access leading online options from institutions nationwide, such as Stanford’s Graduate Certificate in Artificial Intelligence or Penn State’s Master in AI, and reputable bootcamps designed for career acceleration.
Many learners kickstart their AI journey with high-quality, accessible programs like Andrew Ng’s “AI for Everyone” course, Harvard’s Professional Certificate in Artificial Intelligence, or robust project-based bootcamps, as documented in independent reviews like the best AI courses online for 2025.
For Anchorage residents, in-person and live online training – such as Certstaffix’s instructor-led AI classes and eLearning options – offer options catering to individuals and teams, starting at $460 for a single-day intensive or $475 for bundled, flexible eLearning paths.
Ultimately, prioritize courses that match your experience, offer hands-on projects and real-world case studies, and include ethical, business, and technical perspectives to prepare for Alaska’s dynamic tech workforce.
As Alaska’s AI job market expands in climate research, health analytics, aviation, and more, graduates with in-demand skills – bolstered by globally recognized credentials – will be positioned to contribute to the state’s innovation economy.
Frequently Asked Questions
(Up)
Why should I take an AI course in Anchorage in 2025?
AI skills are in high demand in Anchorage’s growing tech industry, touching sectors from healthcare to logistics. AI roles offer 20–30% higher salaries, and entry-level AI and data science jobs start near $92,000. Learning AI equips you to thrive in Alaska’s tech-driven economy, which contributes $1.6 billion regionally and is expanding at 1.7% annually.
What are the top 5 AI courses available for Anchorage residents in 2025?
The top 5 AI courses for Anchorage in 2025 are: 1) ChatGPT Training Course in Anchorage by The Knowledge Academy, 2) University of Alaska Anchorage Graduate Certificate in Business Analytics and AI, 3) Penn State University Master of Professional Studies in Artificial Intelligence (100% online), 4) Stanford University School of Engineering AI Graduate Certificate (online), and 5) IBM Applied AI Professional Certificate on Coursera.
How were the best AI courses in Anchorage selected?
Courses were selected using a research-driven methodology that assessed foundational content, recognized certifications, instructor quality, alignment with workforce needs, compliance with privacy and equity standards, practical relevance, support for beginners, and career value. Independent rankings, hands-on projects, and community support were also considered.
Are there in-person AI training options available in Anchorage?
Yes, the ChatGPT Training Course by The Knowledge Academy is offered in Anchorage with options for onsite, online instructor-led, or self-paced learning. This accommodates both individuals and organizations seeking in-person or live online training courses tailored to Alaska’s business needs.
Do I need a technical background or prior programming experience to enroll in these courses?
Not for all courses. Options like the IBM Applied AI Professional Certificate on Coursera and The Knowledge Academy’s ChatGPT course are beginner-friendly and do not require prior programming experience. However, more advanced programs such as Stanford’s AI Graduate Certificate and the UAA Graduate Certificate may require a bachelor’s degree and foundational skills in math or programming.
You may be interested in the following topics as well:
Ludovic (Ludo) Fourrage is an education industry veteran, named in 2017 as a Learning Technology Leader by Training Magazine. Before founding Nucamp, Ludo spent 18 years at Microsoft where he led innovation in the learning space. As the Senior Director of Digital Learning at this same company, Ludo led the development of the first of its kind ‘YouTube for the Enterprise’. More recently, he delivered one of the most successful Corporate MOOC programs in partnership with top business schools and consulting organizations, i.e. INSEAD, Wharton, London Business School, and Accenture, to name a few. With the belief that the right education for everyone is an achievable goal, Ludo leads the nucamp team in the quest to make quality education accessible
Books, Courses & Certifications
Teachers Turn Toward Virtual Schools for Better Work-Life Balance
As Molly Hamill explains the origin of the Declaration of Independence to her students, she dons a white wig fashioned into a ponytail, appearing as John Adams, before sporting a bald cap in homage to Benjamin Franklin, then wearing a red wig to imitate Thomas Jefferson. But instead of looking out to an enraptured sea of 28 fifth graders leaning forward in their desks, she is speaking directly into a camera.
Hamill is one of a growing number of educators who forwent brick-and-mortar schools post-pandemic. She now teaches fully virtually through the public, online school California Virtual Academies, having swapped desks for desktops.
After the abrupt shift to virtual schooling during the COVID-19 health crisis — and the stress for many educators because of it — voluntarily choosing the format may seem unthinkable.
“You hear people say, ‘I would never want to go back to virtual,’ and I get it, it was super stressful because we were building the plane as we were flying it, deciding if we were going to have live video or recordings, and adapt all the teaching materials to virtual,” Hamill says. “But my school is a pretty well-oiled machine … there’s a structure already in place. And kids are adaptable, they already like being on a computer.”
And for Hamill, and thousands of other teachers, instructing through a virtual school is a way to attempt striking a rare work-life balance in the education world.
More Flexibility for Teaching Students
The number of virtual schools has grown, as has the number of U.S. children enrolled in them. In the 2022-2023 school year, about 2.5 percent of K-12 students were enrolled in full-time virtual education (1.8 percent of them through public or private online schools, and 0.7 percent as homeschoolers), according to data published in 2024 by the National Center for Education Statistics. And parents reported that 7 percent of students who learned at home that year took at least one virtual course.
There’s been an accompanying rise in the number of teachers instructing remotely via virtual schools.
The number of teachers employed by K12, which is under the parent company Stride Inc. and one of the largest and longest-running providers of virtual schools, has jumped from 6,500 to 8,000 over the last three or four years, says Niyoka McCoy, chief learning officer at the company.
McCoy credits the growth in part to teachers wanting to homeschool their own children, and therefore needing to do their own work from home, but she also thinks it is a sign of a shifting preference for technology-based offerings.
“They think this is the future, that more online programs will open up,” McCoy says.
Connections Academy, which is the parent company of Pearson Online Academy and a similarly long-standing online learning provider, employs 3,500 teachers. Nik Osborne, senior vice president of partnerships and customer success at Pearson, says it’s been easy to both recruit and keep teachers: roughly 91 percent of teachers in the 2024-2025 school year returned this academic year.
“Teaching in a virtual space is very different than brick-and-mortar; even the type of role teachers play appeals to some teachers,” Osborne says. “They become more of a guide to help the kids understand content.”
Courtney Entsminger, a middle school math teacher at the public, online school Virginia Connections Academy, teaches asynchronously and likes the ability to record her own lesson plans in addition to teaching them live, which she says helps a wider variety of learners. Hamill, who teaches synchronously, similarly likes that the virtual format can be leveraged to build more creative lesson plans, like her Declaration of Independence video, or a fake livestream of George Washington during the Battle of Trenton, both which are on her YouTube channel.
Whether a school is asynchronous or not largely depends on the standard of the provider. Pearson, which runs the Virtual Academies where Entsminger teaches, is asynchronous. For other standalone public school districts, such as Georgia Cyber Academy, the decision comes down to what students need: if they are performing at or above grade level, they get more flexibility, but if they come to the school below grade level — reading at a second grade level, for example, but placed in a fourth grade classroom — they need more structure.
“I do feel like a TikTok star where I record myself teaching through different aspects of that curriculum because students work in different ways,” says Entsminger, who has 348 online students across three grades. “In person you’re able to realize ‘this student works this way,’ and I’ll do a song and dance in front of you. Online, I can do it in different mediums.”
Karen Bacon, a transition liaison at Ohio Virtual Academy who works with middle and high school students in special education, was initially drawn to virtual teaching because of its flexibility for supporting students through a path that works best for them.
“I always like a good challenge and thought this was interesting to dive into how this works and different ways to help students,” says Bacon, who was a high school French teacher before making the switch to virtual in 2017. “There’s obviously a lot to learn and understand, but once you dive in and see all the options, there really are a lot of different possibilities out there.”
Bacon says there are “definitely less distractions,” than in a brick-and-mortar environment, allowing her to get more creative. For example, she had noticed stories crop up across the nation showcasing special education students in physical environments working to serve coffee to teachers and students as a way to learn workplace skills. She, adapting to the virtual environment, created the “Cardinal Cafe,” where students can accomplish the same goals, albeit with a virtual cup of joe.
“I don’t really consider myself super tech-y, but I have that curiosity and love going outside the box and looking at ways to really help my students,” she says.
A Way to Curb Teacher Burnout?
The flexibility that comes with teaching in a virtual environment is not just appealing for what it offers students. Teachers say it can also help cushion the consistently lower wages and lack of benefits most educators grapple with, conditions that drive many to leave the field.
“So many of us have said, ‘I felt so burned out, I wasn’t sure I could keep teaching,’” Hamill says, adding she felt similarly at the start of her career as a first grade teacher. “But doing it this way helps it feel sustainable. We’re still underpaid and not appreciated enough as a whole profession, but at least virtually some of the big glaring issues aren’t there in terms of how we’re treated.”
Entsminger was initially drawn to teaching in part because she hoped it would allow her to have more time with her future children than other careers might offer. But as she became a mother while teaching for a decade in a brick-and-mortar environment — both at the elementary school and the high school level — she found she was unable to pick up or drop her daughter off at school, despite working in the same district her daughter attended.
In contrast, while teaching online,“in this environment I’m able to take her to school, make her breakfast,” she says. “I’m able to do life and my job. On the daily, I’m able to be ‘Mom’ and ‘Ms. Entsminger’ with less fighting for my time.”
Because of the more-flexible schedule for students enrolled in virtual learning programs, teachers do not have to be “on” for eight straight hours. And they do not necessarily have to participate in the sorts of shared systems that keep physical schools running. In a brick-and-mortar school, even if Bacon, Hamill or Entsminger were not slated to teach a class, they might be assigned to spend their time walking their students to their next class or the bus stop, or tasked with supervising the cafeteria during a lunch period. But in the virtual environment, they have the ability to close their laptop, and to quietly plan lessons or grade papers.
However, that is not to say these teachers operate as islands. Hamill says one of the largest perks of teaching virtual school is working with other fifth grade teachers across the nation, who often share PowerPoints or other lesson plans, whereas, she says, “I think sometimes in person, people can be a little precious about that.”
The workload varies for teachers in virtual programs. Entsminger’s 300-plus students are enrolled in three grades. Some live as close as her same city, others as far-flung as Europe, where they play soccer. Hamill currently has 28 students, expecting to get to 30 as the school continuously admits more. According to the National Policy Education Center, the average student-teacher ratio in the nation’s public schools was 14.8 students per teacher in 2023, with virtual schools reporting having 24.4 students per teacher.
Hamill also believes that virtual environments keep both teachers and students safer. She says she was sick for nine months of the year her first year teaching, getting strep throat twice. She also points to the seemingly endless onslaught of school shootings and the worsening of behavior issues among children.
“The trade-off for not having to do classroom management of behavioral issues is huge,” she says. “If the kid is mean in the chat, I turn off the chat. If kids aren’t listening, I can mute everyone and say, ‘I’ll let you talk one at a time.’ Versus, in my last classroom, the kids threw chairs at me.”
There are still adjustments to managing kids remotely, the teachers acknowledge. Hamill coaches her kids through internet safety and online decorum, like learning that typing in all-caps, for example, can come across rudely.
And while the virtual teachers were initially concerned about bonding with their students, they have found those worries largely unfounded. During online office hours, Hamill plays Pictionary with her students and has met most of their pets over a screen. Meanwhile, Entsminger offers online tutoring and daily opportunities to meet, where she has “learned more than I ever thought about K-pop this year.”
There are also opportunities for in-person gatherings with students. Hamill does once-a-month meetups, often in a park. Bacon attended an in-person picnic earlier this month to meet the students who live near her. And both K12 and Connections Academy hold multiple in-person events for students, including field trips and extracurriculars, like sewing or bowling clubs.
“Of course I wish I could see them more in person, and do arts and crafts time — that’s a big thing I miss,” Hamill says. “But we have drawing programs or ways they can post their artwork; we find ways to adapt to it.”
And that adaptation is largely worth it to virtual teachers.
“Teaching is teaching; even if I’m behind a computer screen, kids are still going to be kids,” Entsminger says. “The hurdles are still there. We’re still working hard, but it’s really nice to work with my students, and then walk to my kitchen to get coffee, then come back to connect to my students again.”
Books, Courses & Certifications
Schedule topology-aware workloads using Amazon SageMaker HyperPod task governance

Today, we are excited to announce a new capability of Amazon SageMaker HyperPod task governance to help you optimize training efficiency and network latency of your AI workloads. SageMaker HyperPod task governance streamlines resource allocation and facilitates efficient compute resource utilization across teams and projects on Amazon Elastic Kubernetes Service (Amazon EKS) clusters. Administrators can govern accelerated compute allocation and enforce task priority policies, improving resource utilization. This helps organizations focus on accelerating generative AI innovation and reducing time to market, rather than coordinating resource allocation and replanning tasks. Refer to Best practices for Amazon SageMaker HyperPod task governance for more information.
Generative AI workloads typically demand extensive network communication across Amazon Elastic Compute Cloud (Amazon EC2) instances, where network bandwidth impacts both workload runtime and processing latency. The network latency of these communications depends on the physical placement of instances within a data center’s hierarchical infrastructure. Data centers can be organized into nested organizational units such as network nodes and node sets, with multiple instances per network node and multiple network nodes per node set. For example, instances within the same organizational unit experience faster processing time compared to those across different units. This means fewer network hops between instances results in lower communication.
To optimize the placement of your generative AI workloads in your SageMaker HyperPod clusters by considering the physical and logical arrangement of resources, you can use EC2 network topology information during your job submissions. An EC2 instance’s topology is described by a set of nodes, with one node in each layer of the network. Refer to How Amazon EC2 instance topology works for details on how EC2 topology is arranged. Network topology labels offer the following key benefits:
- Reduced latency by minimizing network hops and routing traffic to nearby instances
- Improved training efficiency by optimizing workload placement across network resources
With topology-aware scheduling for SageMaker HyperPod task governance, you can use topology network labels to schedule your jobs with optimized network communication, thereby improving task efficiency and resource utilization for your AI workloads.
In this post, we introduce topology-aware scheduling with SageMaker HyperPod task governance by submitting jobs that represent hierarchical network information. We provide details about how to use SageMaker HyperPod task governance to optimize your job efficiency.
Solution overview
Data scientists interact with SageMaker HyperPod clusters. Data scientists are responsible for the training, fine-tuning, and deployment of models on accelerated compute instances. It’s important to make sure data scientists have the necessary capacity and permissions when interacting with clusters of GPUs.
To implement topology-aware scheduling, you first confirm the topology information for all nodes in your cluster, then run a script that tells you which instances are on the same network nodes, and finally schedule a topology-aware training task on your cluster. This workflow facilitates higher visibility and control over the placement of your training instances.
In this post, we walk through viewing node topology information and submitting topology-aware tasks to your cluster. For reference, NetworkNodes describes the network node set of an instance. In each network node set, three layers comprise the hierarchical view of the topology for each instance. Instances that are closest to each other will share the same layer 3 network node. If there are no common network nodes in the bottom layer (layer 3), then see if there is commonality at layer 2.
Prerequisites
To get started with topology-aware scheduling, you must have the following prerequisites:
- An EKS cluster
- A SageMaker HyperPod cluster with instances enabled for topology information
- The SageMaker HyperPod task governance add-on installed (version 1.2.2 or later)
- Kubectl installed
- (Optional) The SageMaker HyperPod CLI installed
Get node topology information
Run the following command to show node labels in your cluster. This command provides network topology information for each instance.
Instances with the same network node layer 3 are as close as possible, following EC2 topology hierarchy. You should see a list of node labels that look like the following:topology.k8s.aws/network-node-layer-3: nn-33333example
Run the following script to show the nodes in your cluster that are on the same layers 1, 2, and 3 network nodes:
The output of this script will print a flow chart that you can use in a flow diagram editor such as Mermaid.js.org to visualize the node topology of your cluster. The following figure is an example of the cluster topology for a seven-instance cluster.
Submit tasks
SageMaker HyperPod task governance offers two ways to submit tasks using topology awareness. In this section, we discuss these two options and a third alternative option to task governance.
Modify your Kubernetes manifest file
First, you can modify your existing Kubernetes manifest file to include one of two annotation options:
- kueue.x-k8s.io/podset-required-topology – Use this option if you must have all pods scheduled on nodes on the same network node layer in order to begin the job
- kueue.x-k8s.io/podset-preferred-topology – Use this option if you ideally want all pods scheduled on nodes in the same network node layer, but you have flexibility
The following code is an example of a sample job that uses the kueue.x-k8s.io/podset-required-topology
setting to schedule pods that share the same layer 3 network node:
To verify which nodes your pods are running on, use the following command to view node IDs per pod:kubectl get pods -n hyperpod-ns-team-a -o wide
Use the SageMaker HyperPod CLI
The second way to submit a job is through the SageMaker HyperPod CLI. Be sure to install the latest version (version pending) to use topology-aware scheduling. To use topology-aware scheduling with the SageMaker HyperPod CLI, you can include either the --preferred-topology
parameter or the --required-topology
parameter in your create job
command.
The following code is an example command to start a topology-aware mnist training job using the SageMaker HyperPod CLI, replace XXXXXXXXXXXX with your AWS account ID:
Clean up
If you deployed new resources while following this post, refer to the Clean Up section in the SageMaker HyperPod EKS workshop to make sure you don’t accrue unwanted charges.
Conclusion
During large language model (LLM) training, pod-to-pod communication distributes the model across multiple instances, requiring frequent data exchange between these instances. In this post, we discussed how SageMaker HyperPod task governance helps schedule workloads to enable job efficiency by optimizing throughput and latency. We also walked through how to schedule jobs using SageMaker HyperPod topology network information to optimize network communication latency for your AI tasks.
We encourage you to try out this solution and share your feedback in the comments section.
About the authors
Nisha Nadkarni is a Senior GenAI Specialist Solutions Architect at AWS, where she guides companies through best practices when deploying large scale distributed training and inference on AWS. Prior to her current role, she spent several years at AWS focused on helping emerging GenAI startups develop models from ideation to production.
Siamak Nariman is a Senior Product Manager at AWS. He is focused on AI/ML technology, ML model management, and ML governance to improve overall organizational efficiency and productivity. He has extensive experience automating processes and deploying various technologies.
Zican Li is a Senior Software Engineer at Amazon Web Services (AWS), where he leads software development for Task Governance on SageMaker HyperPod. In his role, he focuses on empowering customers with advanced AI capabilities while fostering an environment that maximizes engineering team efficiency and productivity.
Anoop Saha is a Sr GTM Specialist at Amazon Web Services (AWS) focusing on generative AI model training and inference. He partners with top frontier model builders, strategic customers, and AWS service teams to enable distributed training and inference at scale on AWS and lead joint GTM motions. Before AWS, Anoop held several leadership roles at startups and large corporations, primarily focusing on silicon and system architecture of AI infrastructure.
Books, Courses & Certifications
How msg enhanced HR workforce transformation with Amazon Bedrock and msg.ProfileMap

This post is co-written with Stefan Walter from msg.
With more than 10,000 experts in 34 countries, msg is both an independent software vendor and a system integrator operating in highly regulated industries, with over 40 years of domain-specific expertise. msg.ProfileMap is a software as a service (SaaS) solution for skill and competency management. It’s an AWS Partner qualified software available on AWS Marketplace, currently serving more than 7,500 users. HR and strategy departments use msg.ProfileMap for project staffing and workforce transformation initiatives. By offering a centralized view of skills and competencies, msg.ProfileMap helps organizations map their workforce’s capabilities, identify skill gaps, and implement targeted development strategies. This supports more effective project execution, better alignment of talent to roles, and long-term workforce planning.
In this post, we share how msg automated data harmonization for msg.ProfileMap, using Amazon Bedrock to power its large language model (LLM)-driven data enrichment workflows, resulting in higher accuracy in HR concept matching, reduced manual workload, and improved alignment with compliance requirements under the EU AI Act and GDPR.
The importance of AI-based data harmonization
HR departments face increasing pressure to operate as data-driven organizations, but are often constrained by the inconsistent, fragmented nature of their data. Critical HR documents are unstructured, and legacy systems use mismatched formats and data models. This not only impairs data quality but also leads to inefficiencies and decision-making blind spots.Accurate and harmonized HR data is foundational for key activities such as matching candidates to roles, identifying internal mobility opportunities, conducting skills gap analysis, and planning workforce development. msg identified that without automated, scalable methods to process and unify this data, organizations would continue to struggle with manual overhead and inconsistent results.
Solution overview
HR data is typically scattered across diverse sources and formats, ranging from relational databases to Excel files, Word documents, and PDFs. Additionally, entities such as personnel numbers or competencies have different unique identifiers as well as different text descriptions, although with the same semantics. msg addressed this challenge with a modular architecture, tailored for IT workforce scenarios. As illustrated in the following diagram, at the core of msg.ProfileMap is a robust text extraction layer, which transforms heterogeneous inputs into structured data. This is then passed to an AI-powered harmonization engine that provides consistency across data sources by avoiding duplication and aligning disparate concepts.
The harmonization process uses a hybrid retrieval approach that combines vector-based semantic similarity and string-based matching techniques. These methods align incoming data with existing entities in the system. Amazon Bedrock is used to semantically enrich data, improving cross-source compatibility and matching precision. Extracted and enriched data is indexed and stored using Amazon OpenSearch Service and Amazon DynamoDB, facilitating fast and accurate retrieval, as shown in the following diagram.
The framework is designed to be unsupervised and domain independent. Although it’s optimized for IT workforce use cases, it has demonstrated strong generalization capabilities in other domains as well.
msg.ProfileMap is a cloud-based application that uses several AWS services, notably Amazon Neptune, Amazon DynamoDB, and Amazon Bedrock. The following diagram illustrates the full solution architecture.
Results and technical validation
msg evaluated the effectiveness of the data harmonization framework through internal testing on IT workforce concepts and external benchmarking in the Bio-ML Track of the Ontology Alignment Evaluation Initiative (OAEI), an international and EU-funded research initiative that evaluates ontology matching technologies since 2004.
During internal testing, the system processed 2,248 concepts across multiple suggestion types. High-probability merge recommendations reached 95.5% accuracy, covering nearly 60% of all inputs. This helped msg reduce manual validation workload by over 70%, significantly improving time-to-value for HR teams.
During OAEI 2024, msg.ProfileMap ranked at the top of the 2024 Bio-ML benchmark, outperforming other systems across multiple biomedical datasets. On NCIT-DOID, it achieved a 0.918 F1 score, with Hits@1 exceeding 92%, validating the engine’s generalizability beyond the HR domain. Additional details are available in the official test results.
Why Amazon Bedrock
msg relies on LLMs to semantically enrich data in near real time. These workloads require low-latency inference, flexible scaling, and operational simplicity. Amazon Bedrock met these needs by providing a fully managed, serverless interface to leading foundation models—without the need to manage infrastructure or deploy custom machine learning stacks.
Unlike hosting models on Amazon Elastic Compute Cloud (Amazon EC2) or Amazon SageMaker, Amazon Bedrock abstracts away provisioning, versioning, scaling, and model selection. Its consumption-based pricing aligns directly with msg’s SaaS delivery model—resources are used (and billed) only when needed. This simplified integration reduced overhead and helped msg scale elastically as customer demand grew.
Amazon Bedrock also helped msg meet compliance goals under the EU AI Act and GDPR by enabling tightly scoped, auditable interactions with model APIs—critical for HR use cases that handle sensitive workforce data.
Conclusion
msg’s successful integration of Amazon Bedrock into msg.ProfileMap demonstrates that large-scale AI adoption doesn’t require complex infrastructure or specialized model training. By combining modular design, ontology-based harmonization, and the fully managed LLM capabilities of Amazon Bedrock, msg delivered an AI-powered workforce intelligence platform that is accurate, scalable, and compliant.This solution improved concept match precision and achieved top marks in international AI benchmarks, demonstrating what’s possible when generative AI is paired with the right cloud-based service. With Amazon Bedrock, msg has built a platform that’s ready for today’s HR challenges—and tomorrow’s.
msg.ProfileMap is available as a SaaS offering on AWS Marketplace. If you are interested in knowing more, you can reach out to msg.hcm.backoffice@msg.group.
The content and opinions in this blog post are those of the third-party author and AWS is not responsible for the content or accuracy of this post.
About the authors
Stefan Walter is Senior Vice President of AI SaaS Solutions at msg. With over 25 years of experience in IT software development, architecture, and consulting, Stefan Walter leads with a vision for scalable SaaS innovation and operational excellence. As a BU lead at msg, Stefan has spearheaded transformative initiatives that bridge business strategy with technology execution, especially in complex, multi-entity environments.
Gianluca Vegetti is a Senior Enterprise Architect in the AWS Partner Organization, aligned to Strategic Partnership Collaboration and Governance (SPCG) engagements. In his role, he supports the definition and execution of Strategic Collaboration Agreements with selected AWS partners.
Yuriy Bezsonov is a Senior Partner Solution Architect at AWS. With over 25 years in the tech, Yuriy has progressed from a software developer to an engineering manager and Solutions Architect. Now, as a Senior Solutions Architect at AWS, he assists partners and customers in developing cloud solutions, focusing on container technologies, Kubernetes, Java, application modernization, SaaS, developer experience, and GenAI. Yuriy holds AWS and Kubernetes certifications, and he is a recipient of the AWS Golden Jacket and the CNCF Kubestronaut Blue Jacket.
-
Business3 weeks ago
The Guardian view on Trump and the Fed: independence is no substitute for accountability | Editorial
-
Tools & Platforms1 month ago
Building Trust in Military AI Starts with Opening the Black Box – War on the Rocks
-
Ethics & Policy2 months ago
SDAIA Supports Saudi Arabia’s Leadership in Shaping Global AI Ethics, Policy, and Research – وكالة الأنباء السعودية
-
Events & Conferences4 months ago
Journey to 1000 models: Scaling Instagram’s recommendation system
-
Jobs & Careers3 months ago
Mumbai-based Perplexity Alternative Has 60k+ Users Without Funding
-
Podcasts & Talks2 months ago
Happy 4th of July! 🎆 Made with Veo 3 in Gemini
-
Education3 months ago
VEX Robotics launches AI-powered classroom robotics system
-
Education2 months ago
Macron says UK and France have duty to tackle illegal migration ‘with humanity, solidarity and firmness’ – UK politics live | Politics
-
Podcasts & Talks2 months ago
OpenAI 🤝 @teamganassi
-
Funding & Business3 months ago
Kayak and Expedia race to build AI travel agents that turn social posts into itineraries