Project Management

Please login or join to subscribe to this thread

Ready, Set, Gen AI! Share Your Checklists and Protocols for Successful Integration

linkedin twitter facebook   Artificial Intelligence  
avatar
Claudia Alcelay
PMI Team Member
Learning & Innovation Research Manager| Project Management Institute (PMI) Spain
Are you utilizing any specific checklists or protocols within your projects or company to assess your readiness for working with Generative AI data? I'm curious to know what strategies or tools you've implemented to prepare for integrating Gen AI into your workflows. Please share your approaches in the comments below!
Sort By:
< 1 ... 66 67 68 69 70 71 72 73 74 75 76 ... 132 >
avatar
Gutema Wako Wako Senior Contract Engineer| Engineering Corporation of Oromia
Dear Claudia Alcelay;
As I am a project management professional operating with statutory, regulatory, and general compliance, I apprehend the significance of a based method when integrating Generative AI (Gen AI) into workflows. Although my company is in its early levels, I am proactively establishing readiness protocols.
I am using tailoring checklists and protocols to evaluate our preparedness for operating with Gen AI, ensuring alignment with enterprise standards and regulatory requirements. Our method includes:
Regulatory and Compliance Checklist: Evaluating adherence to records privacy legal guidelines and region-specific policies.
Risk Assessment Framework: Identifying capability risks in AI-generated outputs, consisting of bias, protection vulnerabilities, and reliability worries.
Data Quality and Integrity Protocols: Ensuring that entered data meets the required accuracy and consistency requirements before being processed through AI models.
Ethical AI Use Guidelines: Establishing responsible AI usage regulations, which include transparency, duty, and human oversight measures.
Change Management and Training Programs: Preparing groups with vital talents to interact efficiently with Gen AI and interpret AI-driven insights.
My team is also exploring AI governance frameworks and enforcing pilot tasks to check Gen AI use instances in controlled environments. These measures help ensure our organization is located to combine AI responsibly and correctly.
Thank you for the idea!!
avatar
Josh Rice Project Strategy and Implementation Manager| Fort Financial Credit Union Fort Wayne, Indiana, United States
We have started looking at consultants to help with determining our Rediness for AI, mostly in the Data Analytics space. When it comes to Projects though, I am taking a "Throw it a the wall and see what sticks" approach. I make sure to confirm that everything aligns with our PM strategy, but it's been kind of fun to experiment with. It isn't the sexiest approach, but you don't know what you don't know until you run into an obstacle to overcome.
avatar
John Njoroge Project Management| Equity Group Holdings Sabaki/ Athi river, Kenya
Hi Claudia,
in readines to plug into the new Gold we are exercising the following items to makes sure we dont strike out.
Data readiness.
We are avoinding any paper works in the project documentaitons and having atleast 95% of the project artifacts in document mode word/pdf
We are also having a shared drive for back up on portfolio level to enable the diversity of having data from a 360 perspective.
We have templates for reporting that enable partten identification easily.
We have more compliance of the project data being backed up into a DR for future reference.
We have organization accets and procedures revamped to provid data for the AI to learn.
We are also leveraging on exitsting GPT to have data which is easily understood and extractable.
We are maintaining the CIA triad of Data to have quality, and accessible data which is accesible to the right person and with its integrtity by having file which are read only and others marked as confidential to provide markers.
avatar
Michael Moore None Aiken, South Carolina, United States
I retired in 2014 and my last project would not have been easily suited to GenAI because it involved correcting and upgrading IT design and infrastructure at the same time as replacing underperforming softwares supporting clinical staffs in two very large, separate, health care systems. This also required analyzing raw data flows, reliability, accuracy, and data quality. Our work is still being utilized today.

However, related to my volunteer work over the last three years, I do believe that GenAI has real potential for synthesizing hundreds or thousands of observational clinical studies to move from association or correlation to clues regarding causation in order to suggest treatment protocols. I have been a project manager and I am also an attorney. For example, the first landmark study related to tobacco and the harms of smoking was in 1950 and the study was observational. The US Surgeon General issued a report in 1964. States litigated against the tobacco companies during the 1990’s. About the same time, randomized clinical trials (RCTs) began to be commonly called the gold standard in medical evidence. However, well-designed observational studies and meta-analyses of such can be far more appropriate than multiple poorly-designed RCTs which report nonconclusive findings. I’ve read approximately 300 published clinical studies and I have learned nuanced patterns for potential use in treatment protocols. I believe that GenAI, properly applied, could dramatically reduce the time spent and highlight narrowly tailored findings across studies, including those [RCT] studies characterized as nonconclusive.
avatar
Darsh Gogari Union, NJ, United States
Hi all,
I come form Civil/Construction industry and I started adding GenAI on some of the projects for Initiating Phase, this makes training a new employee easier and also works as a reminder for a professional in case something is missed before moving to Execution Phase.
Apart from this I also use to summarize some long documents and manuals or guidelines, which are supposed to be followed and checked whether implemented properly or not. So taking notes from construction site and transforming to baseline schedule along with engineering check makes this Gen AI a useful tool to expedite the review process.
avatar
Christina Dietrich Customer Project Manager| Nokia of North America Seattle, Wa, United States
Dec 02, 2023 8:50 AM
Replying to Markus Kopko
...
Dear Claudia,

Specific checklists and protocols can be beneficial to assess readiness for working with Generative AI (GenAI) data within a project or organizational context. These tools help ensure all necessary factors are considered and addressed before integrating GenAI into your workflows. Here’s a structured approach:

GenAI Readiness Assessment Checklist:
Infrastructure Readiness:

Evaluate existing IT infrastructure for compatibility with GenAI requirements.
Ensure adequate computing power and storage capacity.
Assess network capabilities for handling GenAI data processing.
Data Management:

Inventory available data sources relevant to GenAI applications.
Assess the quality, volume, and variety of data.
Establish data governance policies, including data privacy and security measures.
Skills and Knowledge:

Evaluate the team’s current understanding of GenAI.
Identify skill gaps and plan for training or hiring.
Ensure access to GenAI expertise, either internally or through external partnerships.
Legal and Compliance:

Review data usage and GenAI applications for compliance with laws (e.g., GDPR, CCPA).
Assess ethical considerations related to GenAI use.
Technology and Tools:

Identify and evaluate GenAI tools and platforms suitable for your needs.
Ensure compatibility of these tools with existing systems.
Risk Assessment:

Identify potential risks associated with GenAI implementation.
Develop strategies for risk mitigation.
Stakeholder Engagement:

Engage with key stakeholders to understand their expectations and concerns.
Develop a communication plan for GenAI integration.
Pilot Testing:

Plan for pilot projects to test GenAI integration.
Define success criteria for pilot projects.
Feedback and Improvement Mechanisms:

Establish processes for ongoing feedback on GenAI use.
Plan for regular reviews and updates of GenAI strategies.
Protocols for GenAI Integration:
Project Initiation Protocol:

Define objectives and scope for GenAI application in specific projects.
Conduct initial stakeholder meetings to align goals and expectations.
Data Preparation Protocol:

Standard procedures for data cleaning, labeling, and preprocessing.
Protocols for data security and privacy during GenAI handling.
Training and Development Protocol:

Guidelines for training team members on GenAI tools and concepts.
Schedule for ongoing learning and development.
Quality Assurance Protocol:

Steps for validating and testing GenAI outputs.
Regular audits to ensure quality and accuracy.
Change Management Protocol:

Guidelines for managing the transition to GenAI-enhanced processes.
Support structures for team members adapting to new tools and workflows.

Conclusion:
Implementing these checklists and protocols provides a structured framework to assess and prepare for the integration of GenAI. It’s essential to approach this process methodically, ensuring that infrastructure, data, skills, and compliance are thoroughly addressed. Regular reviews and updates to these protocols are also crucial as GenAI technology and its applications continue to evolve.

BR,

Markus
Appreciate your sharing this comprehensive checklist, Markus! I'm working my way through the educational/learning aspects and am just about to start using my company's internal GPT tool. My business unit was the last to receive a customized, security-hardened tool as we're quite cautious to keep IP confidential.
avatar
Aqeel Ahmad Pakistan

Hi,



This is my first post on this thread.



At our company, we don't have a checklist per-say but we've initiated a few AI projects internally, like enabling our Sales team with a chatbot that they can leverage to quickly access past projects examples that the company has done, along with the business use case and the functional and technical specifications/solutioning of the project.



We also created a bot for HR policy, where we embedded the HR documents, and the chatbot can reference that for any queries employees may have.



The checklists that others have provided here are a great help.



Thanks.

avatar
Kenneth Restelli Plainville, Ct, United States
Nov 30, 2023 12:17 PM
Replying to Rami Kaibni
...
Hi Claudia, thank you. As a mater of fact, I did a post last week on my LinkedIn as to how we can utilize AI in the construction industry because AI can add lots of value if properly utilized on Construction Projects. Some of those benefits include:

1) Predictive Analytics: Using AI algorithms to forecast timelines, material requirements, and potential risks, optimizing planning and scheduling.

2) Computer Vision and Drones: AI-powered drones equipped with cameras to monitor construction sites, track progress, and identify safety hazards.

3) Generative Design: Create and optimize designs based on project requirements, site conditions, and material constraints, enhancing efficiency and reducing waste.

4) Quality Control: AI-powered systems to inspect materials, identify defects, and ensure compliance with building codes and standards.

5) Autonomous Equipment: Integrating AI into construction machinery for autonomous operation, improving efficiency and safety on site.

6) Supply Chain Management: Using AI to optimize supply chain logistics, predicting material needs, and streamlining procurement processes.

7) Smart Project Management: Leveraging AI-driven platforms for better project management, collaboration, and decision-making driven by data insights.
Very interested in the implementation of AI in Construction. Thank you for these insights!
avatar
Kristina Schlumpberger Technical Project Manager| Last Rev, LLC. Austin, Tx, United States

The lists above are fantastic. I am finding many people don't even know where to start. Though data cleanliness is definitely the first, gathering robust data sets, but then communicating to the team the understanding that it is an ongoing process to train, QA, and enhance the GPTs over time. It seems that many people think it's train it once and you have your output.



Really getting people to define what they want the GPTs to do if key. Everyone had a different use case, different way that they would talk to it or ask questions.

avatar
vasudev sinha Hyderabad, TG, India
Hi Claudia, I am very interested in the RAG model and can see a lot of possibilities within it, however I have limited resource availability in my current org as the GPTs are not available for us at this point, I am expecting it would be in bear future and I will be sharing all what i envision turning in to reality.
< 1 ... 66 67 68 69 70 71 72 73 74 75 76 ... 132 >

Please login or join to reply

Content ID:
ADVERTISEMENTS

"Doubt is not a pleasant condition, but certainty is absurd."

- Voltaire

ADVERTISEMENT

Sponsors