How can AI open new doors for community engagement?

What’s next for AI in community engagement?

Opening new doors to build trust
23 March 2026
Nexus - Emily Gallant - Hero
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00;00;01;01 - 00;00;03;28 Nexus, Publish By GHD. 00;00;03;28 - 00;00;05;17 Where ideas connect. 00;00;08;18 - 00;00;09;02 When you're 00;00;09;02 - 00;00;12;02 building the strategy for how you're going to engage. 00;00;12;14 - 00;00;15;05 Analytics needs to be in that conversation 00;00;15;05 - 00;00;18;14 because you need to build something that can be appropriately analyzed. 00;00;18;22 - 00;00;21;23 And that there's often a disconnect in engagement with that. 00;00;22;17 - 00;00;26;09 Welcome Today we're going to have a really engaging conversation 00;00;26;12 - 00;00;29;05 with two engagement practitioners, Emily and Danielle. 00;00;29;05 - 00;00;32;28 And really, we're going to unpack how might I contribute 00;00;33;01 - 00;00;35;21 to shaping resilient, future ready communities. 00;00;35;21 - 00;00;41;07 And what opportunities are possibilities can we explore to maximize its impact? 00;00;41;19 - 00;00;46;03 So before I get started, I'm going to ask what is one word 00;00;46;12 - 00;00;50;08 to describe your current feelings about the word engagement? 00;00;50;11 - 00;00;52;24 So Emily, I'll pass it over to you and then you can pass it. 00;00;52;24 - 00;00;54;28 Daniel. Thanks, Divya. 00;00;55;01 - 00;00;56;05 My name is Emily Glantz. 00;00;56;05 - 00;01;00;12 I am from Toronto, a long time engagement practitioner, 00;01;00;21 - 00;01;04;08 and have done some work at the macro level of collaboration, 00;01;04;11 - 00;01;08;18 being large cities down to the micro with leadership teams and how, 00;01;08;28 - 00;01;11;22 you know, smaller groups engage in progress. 00;01;11;25 - 00;01;15;03 Great question right now. 00;01;15;06 - 00;01;18;07 So that's always an evolving answer depending on where you are I suppose. 00;01;18;10 - 00;01;22;23 But right now I'm feeling like the word is opportunistic. 00;01;22;26 - 00;01;25;24 I think we're really on the edge of something 00;01;25;27 - 00;01;29;04 pretty amazing in the engagement space that I'm really excited about, 00;01;29;19 - 00;01;33;23 and it's so exploratory and there's so many opportunities 00;01;33;26 - 00;01;36;25 to chat about, discuss, try. 00;01;36;28 - 00;01;40;06 So I think we're really on the brink of something transformational. 00;01;40;29 - 00;01;42;06 Okay. Next. 00;01;42;09 - 00;01;44;00 Daniel. Hi. 00;01;44;02 - 00;01;45;21 Thanks for having me here today. 00;01;45;22 - 00;01;47;01 My name is Daniel Fusco. 00;01;47;01 - 00;01;51;22 I am the manager of public consultation in the Parks and Recreation department 00;01;51;25 - 00;01;52;23 at the City of Toronto. 00;01;52;24 - 00;01;57;18 So I lead a team of about 14 people, and we design and implement consultation 00;01;57;21 - 00;02;01;03 and engagement processes for mostly capital projects, 00;02;01;06 - 00;02;06;10 but also other projects that the Parks and Recreation Department is involved in. 00;02;06;13 - 00;02;10;26 I also teach at the University of Toronto and Toronto Metropolitan University. 00;02;10;29 - 00;02;14;10 I teach engagement and I am an openness in residents 00;02;14;13 - 00;02;17;12 this year at the University of Toronto School of Cities. 00;02;17;22 - 00;02;20;22 And my word, I think, is going to be hopeful. 00;02;20;29 - 00;02;25;00 I'm hopeful that engagement is evolving 00;02;25;03 - 00;02;30;26 in a really positive way towards better, enabling citizens 00;02;30;29 - 00;02;34;10 and residents to better contribute to government decision making. 00;02;35;07 - 00;02;39;19 Daniel, could you explain the engagement industry to me, 00;02;39;22 - 00;02;43;20 and where does technology and innovation sit in that industry? 00;02;44;06 - 00;02;44;17 Sure. 00;02;44;17 - 00;02;50;06 Well, the engagement industry is fundamentally focused on enabling 00;02;50;09 - 00;02;54;16 people to be involved meaningfully in decisions that affect them. 00;02;55;08 - 00;02;58;12 There are two typical approaches to engagement. 00;02;58;15 - 00;03;02;22 There's participatory approaches which look to involve as many people 00;03;02;25 - 00;03;07;03 as possible in sharing their views, their experiences, their ideas. 00;03;07;13 - 00;03;12;04 And that's using tools like surveys, polls, open houses, town halls. 00;03;12;16 - 00;03;15;14 And it tends to be what some people in the profession 00;03;15;17 - 00;03;19;11 refer to as thin engagement, meaning it activates people as individuals 00;03;19;14 - 00;03;22;10 but doesn't necessarily facilitate a conversation. 00;03;22;13 - 00;03;26;02 And then there's deliberative engagement, which puts a lot of emphasis 00;03;26;05 - 00;03;30;02 on the power of conversation and is more focused 00;03;30;05 - 00;03;34;11 on developing like a shared understand or consensus among participants 00;03;34;18 - 00;03;38;02 to help communities really think and decide together. 00;03;38;14 - 00;03;41;27 I'm in Canada and, Canada, I think is a leader 00;03;42;00 - 00;03;44;12 in both of these approaches, though participatory engagement 00;03;44;12 - 00;03;47;18 is sort of the primary form of engagement that takes place here. 00;03;47;21 - 00;03;50;28 And I think that's also the case elsewhere as well. 00;03;51;12 - 00;03;55;21 And I think, technology in my work 00;03;56;03 - 00;04;00;03 has played an increasingly important role 00;04;00;06 - 00;04;04;28 in our engagement processes, especially in the last ten years or so, 00;04;05;04 - 00;04;09;10 and really in a very accelerated way since the pandemic. 00;04;09;21 - 00;04;12;19 I would say that when I started my career in this field 00;04;12;22 - 00;04;16;04 about 15 years ago, we didn't use technology a lot in engagement. 00;04;16;07 - 00;04;18;06 A lot of it was all very analog. 00;04;18;09 - 00;04;21;21 You might have done a survey, maybe you reached 50 people, 00;04;22;04 - 00;04;25;29 but it wasn't really a major part of our processes. 00;04;26;15 - 00;04;30;11 Today, we are using technology 00;04;30;21 - 00;04;33;19 to help us reach more people in our processes. 00;04;33;22 - 00;04;37;24 So again, using tools like survey platforms, social mapping that allows 00;04;37;27 - 00;04;43;00 people to put pins and comments on maps and platforms like zoom and WebEx. 00;04;43;15 - 00;04;47;21 I would also say that the AI boom is having an impact on engagement 00;04;47;24 - 00;04;51;25 with new tools that are being released all the time that enable more meaningful 00;04;51;28 - 00;04;54;11 virtual conversations, or that help us to scale 00;04;54;11 - 00;04;56;12 and different engagement in different ways. 00;04;56;15 - 00;04;59;13 And my team, we engage a lot of people every year. 00;04;59;14 - 00;05;03;02 Last year we engaged 55,000 people in our work, 00;05;03;10 - 00;05;06;09 and most of those people are in fact engaged through technology, 00;05;06;12 - 00;05;10;05 mostly through standard surveys, but also through other methods. 00;05;10;14 - 00;05;14;25 And one of the things that I'm interested in is how we can use technology to move 00;05;14;28 - 00;05;19;05 beyond just engaging more people towards actually using it 00;05;19;07 - 00;05;22;23 to make engagement more meaningful for the people who are participating. 00;05;23;01 - 00;05;26;28 And so are you using technology right now to analyze that information? 00;05;27;01 - 00;05;29;24 That seems like a lot like it going from 50 to 50,000. 00;05;29;24 - 00;05;30;27 It's a drastic jump. 00;05;30;27 - 00;05;34;04 So do you want to talk a bit about that analytic side? 00;05;34;07 - 00;05;36;25 Where do people sit on the analytic side? 00;05;36;28 - 00;05;40;02 I'd like Emily to speak a bit about it too, but it is a challenge for us. 00;05;40;05 - 00;05;44;25 And one of the ways that we manage that is not really through AI yet, 00;05;44;28 - 00;05;50;01 although sometimes, but it's primarily through how we ask questions, right? 00;05;50;04 - 00;05;52;29 We try not to ask too many open ended questions in our surveys, 00;05;52;29 - 00;05;58;17 because we end up with data that is, can be very difficult to manage. 00;05;58;20 - 00;06;00;23 So coding the data is really important 00;06;00;23 - 00;06;02;10 if you're going to understand what people are saying. 00;06;02;10 - 00;06;05;03 And if you're going to report back to people what you heard. 00;06;05;06 - 00;06;08;17 So you've got to look at every piece of feedback that you get in a survey. 00;06;08;20 - 00;06;09;29 You've got to give it a code. 00;06;10;02 - 00;06;12;22 You've got to give it some theme, 00;06;12;25 - 00;06;15;09 so that you can then make sense of it later. 00;06;15;12 - 00;06;17;08 And so AI does help with that. 00;06;17;11 - 00;06;21;15 We've used AI a little bit to help us with that, including GHD. 00;06;21;18 - 00;06;26;01 It's own unpack, but I would say we're not really 00;06;26;05 - 00;06;30;05 at a point where we're using that kind of technology consistently. 00;06;30;11 - 00;06;35;15 Where we are using AI a little bit is more in how we engage people. 00;06;36;05 - 00;06;37;11 Emily, do you want to add to that? 00;06;37;12 - 00;06;38;20 I think I'm on consulting side. 00;06;38;20 - 00;06;41;20 You're getting multiple perspectives, and I'm sure you're seeing 00;06;41;23 - 00;06;45;09 a lot of movement in how AI is enabling community engagement. 00;06;45;12 - 00;06;47;06 So I'd love to hear your thoughts. 00;06;47;09 - 00;06;47;21 Yeah. 00;06;47;21 - 00;06;48;19 I mean, 00;06;48;22 - 00;06;53;15 there's so much going on right now that it is very invigorating and exciting. 00;06;53;29 - 00;06;57;23 Because I'm starting to see in the industry this shift towards 00;06;57;26 - 00;07;01;20 wanting to do things better and almost 00;07;02;07 - 00;07;06;04 like a really palpable desire for organizations 00;07;06;09 - 00;07;12;07 to be trying new things, to be exploring AI in pilots, in tests, 00;07;12;15 - 00;07;17;03 to really start building their own AI literacy and their comfort with AI. 00;07;17;19 - 00;07;20;12 And from an industry standpoint, to Daniel's 00;07;20;12 - 00;07;23;12 point of the difference 00;07;23;15 - 00;07;27;00 and the emphasis put on in-person engagement versus online engagement. 00;07;27;17 - 00;07;30;01 I just want to echo that over the last ten years, we've seen 00;07;30;01 - 00;07;32;04 that when I first started an engagement, 00;07;32;07 - 00;07;35;10 online engagement was like this tiny little sliver of the budget. 00;07;35;20 - 00;07;38;25 You know, maybe we could do something, but it didn't have that much impact. 00;07;38;28 - 00;07;41;28 And now we're just seeing that totally flip. 00;07;42;03 - 00;07;46;05 Now, lots of valuable room for in-person and the dialog that you can have 00;07;46;08 - 00;07;49;19 with people, the connections you can make, the stories 00;07;49;22 - 00;07;53;27 you can hear, like the deep, kind of awesome, impactful work 00;07;54;00 - 00;07;58;23 that engagement practitioners do, will always be the most important. 00;07;59;02 - 00;08;02;15 So I'm curious to see how the industry can adopt 00;08;02;18 - 00;08;05;10 things like AI or test things like AI. 00;08;05;13 - 00;08;08;12 Elevate our time spent doing that really deep 00;08;08;15 - 00;08;11;25 personal work, because that's why people get into engagement. 00;08;12;13 - 00;08;15;01 And so with technology, with the onset of AI, 00;08;15;01 - 00;08;20;25 we've seen a real opportunity to use AI in analysis of qualitative feedback. 00;08;21;09 - 00;08;25;17 Often engagement strategies across all different types of client types. 00;08;25;20 - 00;08;30;15 You know, public and private sector both tend to defer to quantitative questions, 00;08;30;28 - 00;08;34;08 tend to defer to a typical type of survey that I'm sure 00;08;34;11 - 00;08;38;01 everyone listening has completed, and there hasn't been innovation there 00;08;38;04 - 00;08;39;19 in a significant way. 00;08;39;22 - 00;08;40;28 And there's lots of reasons for that. 00;08;40;28 - 00;08;45;04 But I see one of the main reasons to deferring to quantity of is really just 00;08;45;07 - 00;08;50;22 our inability to analyze qualitative data at scale and it's perspectives. 00;08;50;25 - 00;08;52;21 It's rich, it's lived experience. 00;08;52;21 - 00;08;56;04 It's boots on the ground, people in communities 00;08;56;07 - 00;08;58;10 that are directly impacted by these projects. 00;08;58;10 - 00;09;01;17 So it's incredibly rich, valuable data. 00;09;01;28 - 00;09;06;15 And it's weird and seems dehumanizing to call it data, but it is actually data. 00;09;06;18 - 00;09;10;14 Once it comes to the practitioners analyzing it. 00;09;11;05 - 00;09;15;06 There's always been this elephant in the engagement space. 00;09;15;09 - 00;09;19;02 On how challenging that point of the engagement process really is. 00;09;19;20 - 00;09;21;23 And then it has systemic impacts, right? 00;09;21;23 - 00;09;27;11 So our struggles with analyzing data like that at scale, it's felt throughout 00;09;27;14 - 00;09;31;15 the decision making process, you know, things are seemed very high level. 00;09;31;18 - 00;09;34;15 Sentiment is positive, negative, neutral 00;09;34;15 - 00;09;37;26 which is not actionable or doesn't provide any insights. 00;09;38;09 - 00;09;42;11 And then decision makers are left often with data 00;09;42;14 - 00;09;46;23 or information or recommendations that are challenging to defend 00;09;47;07 - 00;09;50;08 or are too high level to really impact change. 00;09;50;24 - 00;09;54;27 So AI is just such a huge opportunity for us 00;09;55;00 - 00;09;59;16 because humans, we read and we forget, you know, when we code. 00;09;59;19 - 00;10;02;11 Daniel, like your teams go through all that coding, 00;10;02;11 - 00;10;05;11 we read ten comments, then we read another ten. 00;10;05;20 - 00;10;08;00 And our bias is coming into play there. 00;10;08;03 - 00;10;12;12 Our fatigue, our feeling that in that moment and we forget as humans, 00;10;12;15 - 00;10;17;12 we just don't have the human capability to really process data like that at scale. 00;10;17;21 - 00;10;20;12 And I can do that. I reads and remembers 00;10;20;12 - 00;10;24;13 and it makes connections and it is so much more valuable. 00;10;24;21 - 00;10;29;15 So I think we're at a moment right now where exploration in this space, 00;10;29;29 - 00;10;32;29 I think is required by engagement practitioners. 00;10;33;09 - 00;10;36;21 It's not that you need to go and throw all your stuff into copilot 00;10;36;24 - 00;10;40;03 or a publicly available large language model by any means. 00;10;40;19 - 00;10;41;29 We wouldn't suggest that. 00;10;42;02 - 00;10;44;29 But you know where along the engagement spectrum 00;10;44;29 - 00;10;48;26 on the process of engagement, can we try innovating? 00;10;49;02 - 00;10;50;18 Can we try exploring? 00;10;50;18 - 00;10;52;27 Because I think we have a duty to do that. 00;10;54;00 - 00;10;54;28 It seems like 00;10;54;28 - 00;11;00;12 technology is quite new to the industry, and practitioners have traditional methods 00;11;00;15 - 00;11;04;06 of using tech tools like the survey tools, or that in-person engagement 00;11;04;09 - 00;11;08;06 to really get that in-person discourse, like the emotional sentiment 00;11;08;09 - 00;11;09;23 of conversation. 00;11;09;26 - 00;11;12;25 Emily, you had some great points about using AI 00;11;12;26 - 00;11;16;00 to help reduce human bias and human unconscious bias. 00;11;16;03 - 00;11;19;02 So I'd love to know, what are you seeing when you're talking 00;11;19;05 - 00;11;22;06 to other individuals to answer your question. 00;11;22;09 - 00;11;23;26 Yeah, it's definitely a mixed bag. 00;11;23;27 - 00;11;27;24 Obviously, there's people who are into it and keen to explore on one side 00;11;27;27 - 00;11;30;06 and people who are quite resistant on the other, and that's fine. 00;11;30;07 - 00;11;33;18 Of course, that's not unique to using AI for engagement. 00;11;33;21 - 00;11;35;07 That's just AI in general. 00;11;35;10 - 00;11;38;24 But what I'm seeing specifically with using AI and analysis 00;11;38;27 - 00;11;42;24 of qualitative data, I'm seeing such a reaction in 00;11;43;09 - 00;11;45;29 that I actually have never seen before in my career. 00;11;46;02 - 00;11;51;27 So internally to PhD, the response from people is almost immediate 00;11;52;00 - 00;11;54;29 because it's not necessarily just applicable to engagement. 00;11;55;02 - 00;11;57;02 It's any type of qualitative data. 00;11;57;05 - 00;12;00;25 It's monitoring evaluation data, it's social science data. 00;12;00;28 - 00;12;05;08 It's any organization that has qualitative data 00;12;05;11 - 00;12;09;15 of any kind can benefit from exploring what I can do with it. 00;12;09;29 - 00;12;14;07 We had an interesting example where we looked at safety logs 00;12;14;10 - 00;12;15;18 for an environment project 00;12;15;18 - 00;12;19;03 where normally an incident happens and you fill out a form. 00;12;19;06 - 00;12;22;06 And it's important because safety is absolutely critical, 00;12;22;09 - 00;12;23;23 especially in engineering. 00;12;23;26 - 00;12;26;20 Then there's that section at the end where you add that qualitative data. 00;12;26;23 - 00;12;30;23 And so even going into that and pulling out that that experience 00;12;30;26 - 00;12;35;10 and pulling that sentiment out, and not just a sentiment that the context 00;12;35;13 - 00;12;37;24 of what they're saying and then looking through, you know, 00;12;37;24 - 00;12;40;24 hundreds or thousands of safety logs, what might you learn? 00;12;40;29 - 00;12;43;23 So we did a test on that, and it was incredible. 00;12;43;26 - 00;12;46;25 So the response I'm seeing is palpable. 00;12;46;28 - 00;12;48;18 People have excitement around it. 00;12;48;21 - 00;12;51;10 There's lots of questions on, you know, security. 00;12;51;10 - 00;12;53;01 What are the security measures? 00;12;53;04 - 00;12;54;16 Who owns the data? 00;12;54;19 - 00;12;57;01 Where does the data go? Where does it live? 00;12;57;04 - 00;13;00;05 All super important questions to be asking 00;13;00;08 - 00;13;04;29 anyone, getting into AI and working on behalf 00;13;05;02 - 00;13;07;19 or in service of stakeholders of any kind, 00;13;07;22 - 00;13;09;17 they have a duty to be asking those questions 00;13;09;20 - 00;13;13;28 and to be building those guardrails from an ethical standpoint 00;13;14;16 - 00;13;18;18 as well, around how we use it right now and how we don't, considering that it's 00;13;19;13 - 00;13;22;11 so yeah, the response has been great. 00;13;22;14 - 00;13;25;14 I think it's going to impact the entire engagement industry. 00;13;25;22 - 00;13;27;23 I think it's going to be disruptive. 00;13;27;26 - 00;13;29;20 Biggest change is disruptive. 00;13;29;23 - 00;13;33;23 There'll be some challenge in that as well for different types 00;13;33;26 - 00;13;38;15 of organizations or, practitioners who might not be so AI enabled. 00;13;38;29 - 00;13;41;06 I think we're going into a state of disruption. 00;13;41;09 - 00;13;44;06 So how are we taking care of the people that are going to feel 00;13;44;06 - 00;13;47;06 the impact of that is really, really important? 00;13;48;00 - 00;13;50;27 If I could just add to that, I'm struck by your comment, 00;13;51;00 - 00;13;55;15 Emily, that most people at GHD get excited about it. 00;13;55;22 - 00;13;58;22 And what I have experienced in the public sector 00;13;59;02 - 00;14;02;20 is that people are less excited, they're far more cautious. 00;14;03;00 - 00;14;06;09 They really lean into those questions that you identified, Emily, like, 00;14;06;18 - 00;14;08;01 is it secure? 00;14;08;04 - 00;14;10;10 Do we have to worry about privacy? 00;14;10;13 - 00;14;11;24 Is there bias? 00;14;11;27 - 00;14;14;26 How are people going to react to the idea 00;14;14;26 - 00;14;17;25 of using AI to make sense of their feedback? 00;14;18;06 - 00;14;22;04 I think public servants are trained to be a lot more cautious 00;14;22;07 - 00;14;25;07 and to see the potential roadblocks to something. 00;14;25;17 - 00;14;28;22 And so I think there's a lot of work to be done still in the industry. 00;14;28;25 - 00;14;29;21 I agree with Emily. 00;14;29;21 - 00;14;32;22 I think it will be disruptive, but I think we have a little bit of ways 00;14;32;25 - 00;14;38;10 to go before that's a reflected in the way it gets used to the public sector. 00;14;38;17 - 00;14;42;05 And Daniel, like, how are you answering those types of questions? 00;14;42;08 - 00;14;42;15 Right. 00;14;42;15 - 00;14;45;15 Like as a person that's advocating for technology and innovation. 00;14;45;23 - 00;14;48;25 What are the things that help with that dialog 00;14;48;28 - 00;14;53;03 when you're addressing something like ethics or even data ownership 00;14;53;07 - 00;14;54;26 or even bias, like unconscious 00;14;54;26 - 00;14;57;25 bias that exists in humans, and maybe also technology? 00;14;57;28 - 00;15;00;25 Exactly. Look, I'm not an expert in AI. 00;15;00;25 - 00;15;03;25 I'm an expert in engagement, so I don't have all the answers. 00;15;04;06 - 00;15;07;05 You know, when people are concerned, I think what you just said 00;15;07;08 - 00;15;08;07 is absolutely true. 00;15;08;08 - 00;15;10;12 Like, there's human bias as well. 00;15;10;15 - 00;15;12;16 There's always going to be some form of bias. 00;15;12;16 - 00;15;12;27 And I think 00;15;12;27 - 00;15;16;18 Emily did a really good job of explaining why human bias can be problematic 00;15;16;21 - 00;15;19;21 and the challenges with having humans do this, some of this work, 00;15;20;00 - 00;15;23;15 and how things can fall through the cracks and be missed or misinterpreted. 00;15;24;05 - 00;15;25;19 So there's that piece. 00;15;25;19 - 00;15;30;25 When people talk about privacy and security, I wonder why 00;15;31;07 - 00;15;35;27 that is such an important consideration when we're talking about feedback 00;15;36;00 - 00;15;39;13 related to how a person wants a park designed. 00;15;40;00 - 00;15;42;09 I think it really matters with the subject matter 00;15;42;09 - 00;15;45;27 is in relation to how important that question is. 00;15;46;13 - 00;15;49;15 So, you know, how I respond depends on the context. 00;15;49;18 - 00;15;51;29 But these are some of the arguments that I make. 00;15;52;02 - 00;15;54;21 You know what excites me too about what you just said. 00;15;54;24 - 00;15;57;25 Yes. Like public sector a little slower, a little bit more cautious 00;15;57;28 - 00;16;01;00 private, a little bit more gung ho for different reasons. 00;16;01;10 - 00;16;05;04 To me, those are both so valuable, right. 00;16;05;07 - 00;16;09;20 Like bringing those public private partnerships that actually bring both 00;16;09;23 - 00;16;13;25 of those very essential perspectives to the table. 00;16;14;07 - 00;16;18;04 Creates the dialog that is deliberative 00;16;18;11 - 00;16;22;07 so that that sits on, you know, what is the art of the possible 00;16;22;10 - 00;16;24;28 and what needs to be considered and what is the current state, 00;16;24;28 - 00;16;29;04 and what's the future desired state that we want and what needs to be planned 00;16;29;07 - 00;16;34;12 and guardrails and what doors do we need to open to explore along that journey? 00;16;34;23 - 00;16;37;25 I think that that is where the power of partnerships is really going 00;16;37;26 - 00;16;43;04 to come in to make those sustainable, lasting decisions on projects. 00;16;43;07 - 00;16;45;06 But also how to embrace AI. 00;16;45;09 - 00;16;46;23 I think that's such a cool opportunity, 00;16;46;23 - 00;16;49;21 because won't that make the dialog so much better 00;16;49;24 - 00;16;53;13 when you bring those perspectives all into the room to solve one problem? 00;16;53;28 - 00;16;55;06 That kind of excites me. 00;16;55;09 - 00;16;56;20 Emily, I have a question for you. 00;16;56;21 - 00;17;00;12 How does an AI enabled community engagement strategy differ 00;17;00;15 - 00;17;01;22 from the traditional models, 00;17;01;22 - 00;17;04;20 like speaking to what you're just saying about public private partnerships? 00;17;04;23 - 00;17;09;03 Like, I'd love to know your thoughts on using AI for community engagement. 00;17;10;04 - 00;17;12;26 One thing I'll correct there is for a community engagement 00;17;12;26 - 00;17;16;26 strategy to be AI enabled is, I think, maybe the wrong language 00;17;17;05 - 00;17;21;03 because community engagement is enabled by many other things. 00;17;21;15 - 00;17;25;10 I think it's an AI supported engagement process. 00;17;25;27 - 00;17;29;01 AI is a tool that engagement practitioners are using. 00;17;29;08 - 00;17;31;02 So what kind of tools do we have access to? 00;17;31;03 - 00;17;32;23 How do we use those? 00;17;32;26 - 00;17;36;07 How do we build it into how we collect feedback? 00;17;36;10 - 00;17;38;27 How do we build it into how we analyze it? 00;17;39;00 - 00;17;40;16 What do we explore? 00;17;40;19 - 00;17;46;14 What I've seen just from the analytics component of it is the efficiency. 00;17;46;17 - 00;17;49;16 The efficiency and the quality 00;17;49;25 - 00;17;53;15 at scale and the consistency in that analysis. 00;17;54;01 - 00;17;57;21 It's almost mind blowing to me, because I've never been able to do that 00;17;57;24 - 00;18;01;04 or see that as an engagement practitioner in a meaningful way. 00;18;01;14 - 00;18;04;10 My experience doing it, which is where the innovation came from, 00;18;04;13 - 00;18;07;12 was a project where we got so many comments. 00;18;07;12 - 00;18;11;03 We had 10,000 open ended, amazing values based comments back, and I was like, 00;18;11;06 - 00;18;14;03 oh man, how am I going to do this justice? 00;18;14;06 - 00;18;17;04 And so that's the initial problem it's solving. 00;18;17;07 - 00;18;20;06 Is the practitioner in our ability to analyze data. 00;18;20;15 - 00;18;24;06 But then we've seen, you know, over the past couple of years of doing this 00;18;24;20 - 00;18;27;20 actually how many other systemic impacts it can really have. 00;18;28;04 - 00;18;31;03 And what it really means to be able to have data 00;18;31;06 - 00;18;35;02 driven, defensible results in an engagement report 00;18;35;11 - 00;18;39;16 where when something is questioned, you can point to data to support it. 00;18;40;03 - 00;18;41;24 I just think that's so invigorating 00;18;41;26 - 00;18;45;00 and the possibilities for how we might use that. 00;18;45;19 - 00;18;48;19 I'm not saying that I should run engagement by any means. 00;18;48;29 - 00;18;51;20 It is the people who need to run engagement. 00;18;51;20 - 00;18;57;01 And how might integration of AI elevate that person's experience of their job? 00;18;57;06 - 00;18;59;25 Their experience being in the community? 00;18;59;28 - 00;19;04;04 How can we use it as a tool to have greater impact? 00;19;04;27 - 00;19;07;21 And so where do people sit with that? 00;19;07;22 - 00;19;08;04 Is it 00;19;08;04 - 00;19;13;04 that they're they're assigning the themes that inform how the tool is being used? 00;19;13;07 - 00;19;17;07 Is it something that you have to do in an iterative approach where you know 00;19;17;09 - 00;19;19;29 you're going through the process and then you recognize, 00;19;19;29 - 00;19;22;27 hey, I need to actually change the way we're tagging all of this 00;19;22;29 - 00;19;25;28 information or the outcome here is quite surprising. 00;19;26;01 - 00;19;29;01 Maybe the information was clustered in an interesting way. 00;19;29;05 - 00;19;30;23 What are you noticing? 00;19;30;26 - 00;19;32;26 Yeah, I might jump to you, Daniel, in a second, 00;19;32;26 - 00;19;35;14 but I will say that it's not often a one person. 00;19;35;17 - 00;19;37;13 Oh, it should always be more than that. 00;19;37;16 - 00;19;39;21 Daniel, I might actually throw to you even. 00;19;39;21 - 00;19;41;20 Maybe if you think back, like two years ago. 00;19;41;20 - 00;19;43;01 I know you have data scientists. 00;19;43;01 - 00;19;46;24 Even in your team, which I think is probably quite unique to engagement. 00;19;47;08 - 00;19;50;08 What was the current state two years ago for analysis? 00;19;50;22 - 00;19;52;23 Well, it wasn't that sophisticated. 00;19;52;23 - 00;19;55;29 I would say. We would pull up a spreadsheet 00;19;57;17 - 00;19;59;27 and every comment would have 00;19;59;29 - 00;20;03;24 a theme or a code attached to it, and you go through each comment. 00;20;04;15 - 00;20;05;26 It is kind of iterative. 00;20;05;29 - 00;20;10;09 So typically the way my team has worked is we would just code as we go. 00;20;10;25 - 00;20;16;00 And that became very, very problematic for us recently, 00;20;16;03 - 00;20;21;11 with a, a survey that we ran that was quite robust. 00;20;21;14 - 00;20;25;23 I will say we surveyed, Torontonians 00;20;25;26 - 00;20;31;06 about their feelings about their parks and how they wanted to see parks. 00;20;31;09 - 00;20;36;14 So, you know, overall, our approach to how we build and manage our parks evolves. 00;20;36;29 - 00;20;40;04 And so we got a lot of feedback from thousands of people. 00;20;40;21 - 00;20;44;00 And, that's when Emily and I met, actually, 00;20;44;03 - 00;20;47;03 and I was telling Emily about this problem. 00;20;47;09 - 00;20;50;01 And that's when she told me about unpack. 00;20;50;04 - 00;20;53;00 So what we had been doing was multiple 00;20;53;00 - 00;20;56;26 team members spending hours a day slowly 00;20;56;29 - 00;21;01;09 going through this data and very slowly coding it. 00;21;01;12 - 00;21;06;02 And there was just this huge database that was extremely unwieldy. 00;21;06;23 - 00;21;10;02 And so we were able to bring GHD on board 00;21;10;05 - 00;21;13;04 to help us manage this data. 00;21;13;07 - 00;21;17;14 And I think Emily told me after a while, they were sort of looking at the data 00;21;17;17 - 00;21;20;05 that because of the way the survey was designed, 00;21;20;08 - 00;21;22;21 it was really like because there was a lot of branching in it. 00;21;22;24 - 00;21;26;24 So really there were like 3000 surveys in that one survey. 00;21;26;27 - 00;21;29;00 So, so much data. 00;21;29;03 - 00;21;33;21 And the way we had coded it just I don't want to say it was a bit of a mess, but 00;21;34;09 - 00;21;36;06 because I don't I don't mean to put anyone down. 00;21;36;07 - 00;21;37;17 Everyone was doing their best. 00;21;37;17 - 00;21;41;10 It was just so unwieldy that it was really difficult to take 00;21;41;13 - 00;21;46;14 a systematic approach to the coding in a way that really made sense. 00;21;46;20 - 00;21;49;27 It was going to take a lot of work to clean up those codes, 00;21;50;10 - 00;21;54;29 and then unpack was able to do that work for us in the span of a week. 00;21;55;16 - 00;21;58;14 We gave for a week for our listeners. 00;21;58;17 - 00;22;01;18 Emily, do you want to just briefly talk about one item pack? 00;22;01;18 - 00;22;05;07 Is GHD pack is an engagement offering 00;22;05;10 - 00;22;08;28 where we go all the way back to what kind of questions are you asking? 00;22;09;07 - 00;22;11;00 What's the purpose of that question? 00;22;11;03 - 00;22;13;04 What are the objectives of asking that question? 00;22;13;04 - 00;22;14;26 What do you actually want to know from it? 00;22;14;29 - 00;22;17;22 And is there an opportunity to ask an open 00;22;17;22 - 00;22;22;00 ended question that is going to elicit richer feedback? 00;22;22;09 - 00;22;25;05 Because now we have the ability to analyze that type of feedback. 00;22;25;05 - 00;22;27;04 And we know that when you ask 00;22;27;04 - 00;22;30;24 better quality questions, you get better quality feedback. 00;22;31;01 - 00;22;34;07 That's true in one on one conversations with people. 00;22;34;11 - 00;22;38;21 I'm sure many people have can recall a really great conversation 00;22;38;24 - 00;22;40;04 that they were a part of, 00;22;40;07 - 00;22;44;04 and it probably had some really quality questions in there. 00;22;44;10 - 00;22;46;28 So it's also applicable at the macro level. 00;22;47;01 - 00;22;49;21 So we started it a couple of years ago. 00;22;49;24 - 00;22;53;18 We were piloting it around the world, and it's really just changed 00;22;53;21 - 00;22;59;00 my entire perspective on engagement and has brought out that elephant of, 00;22;59;03 - 00;23;02;15 oh wow, this is such a critical part of engagement 00;23;02;28 - 00;23;05;29 that Daniel, you guys aren't the only ones that have that challenge. 00;23;06;04 - 00;23;10;21 Everyone in engagement has that challenge globally or had it. 00;23;11;08 - 00;23;14;21 So whether you're public, whether you're private, if you collect 00;23;14;24 - 00;23;19;29 and look at stakeholder feedback, this challenge is applicable to you. 00;23;20;10 - 00;23;22;02 And we try our best in engagement. Right. 00;23;22;02 - 00;23;23;05 Because it's all we ever knew. 00;23;23;05 - 00;23;27;05 It's all we could do to do it manually and do our very best. 00;23;27;08 - 00;23;30;08 It's so labor intensive and costly. 00;23;30;14 - 00;23;33;10 So much resources going to that. 00;23;33;13 - 00;23;37;01 When a lot of engagement practitioners maybe didn't sign up to be in engagement 00;23;37;04 - 00;23;41;12 to sit behind Excel sheets, but rather, you know, how might this shift, 00;23;41;15 - 00;23;44;28 how we allocate our resources so that we can spend more time 00;23;45;01 - 00;23;48;19 in the community building connection, creating dialog 00;23;48;29 - 00;23;53;16 and take out this relative flawed process of analytics? 00;23;54;01 - 00;23;55;12 I think that's such a good point. 00;23;55;12 - 00;23;59;06 I just want to comment on that point because that's really hitting me. 00;23;59;09 - 00;24;02;00 Engagement specialists are engagement specialists. 00;24;02;00 - 00;24;03;16 We're not data scientists. 00;24;03;19 - 00;24;07;08 We would rather be facilitating a conversation, designing a process 00;24;07;25 - 00;24;10;00 than coding data. 00;24;10;03 - 00;24;11;24 It's just not our forte. 00;24;11;27 - 00;24;14;24 And so that's also why there's just 00;24;14;27 - 00;24;18;22 a lot of varied outcomes when it comes to to how data gets coded. 00;24;18;25 - 00;24;22;06 It's sometimes it's done successfully and sometimes it's done less successfully 00;24;22;25 - 00;24;25;28 because that's just not what we're actually trained to do. 00;24;26;01 - 00;24;29;13 You know, this very little time devoted maybe not 00;24;30;18 - 00;24;30;28 in my 00;24;30;28 - 00;24;34;18 education was devoted to how you code survey data. 00;24;34;21 - 00;24;35;19 Same, right. 00;24;35;22 - 00;24;37;12 So that's something you figure out on your own. 00;24;37;13 - 00;24;40;23 I mean, I teach it a bit in my class, but to be honest, 00;24;40;26 - 00;24;43;26 it's not something that I'm not interested in doing myself. 00;24;44;02 - 00;24;47;09 And data scientists love it like they love it. 00;24;47;12 - 00;24;50;25 Yeah, there are people out there that love it and they love it. 00;24;51;07 - 00;24;54;03 So I was going to ask like, does that mean engagement for tomorrow? 00;24;54;03 - 00;24;55;19 Like, what does the time dial look like? 00;24;55;19 - 00;24;58;08 Our engagement practitioners, engagement specialists 00;24;58;08 - 00;25;02;02 are they getting that time back to do the thing that they love with technology? 00;25;02;09 - 00;25;04;23 And Danielle, going back to this survey, 00;25;04;26 - 00;25;08;12 were you able to learn from the output to like redesign better surveys? 00;25;08;15 - 00;25;10;05 Like what does that look like? 00;25;10;08 - 00;25;12;25 You know, we're in a process of learning. 00;25;12;28 - 00;25;15;11 And I to be honest, I haven't spent much time 00;25;15;11 - 00;25;18;16 with the outcomes of the work that Emily's team has done. 00;25;18;19 - 00;25;20;22 You went on vacation real quick. 00;25;20;22 - 00;25;22;25 I went on vacation. To be fair. That's true. 00;25;22;26 - 00;25;27;03 I've been away for a while, and I also I'm the manager of the team, 00;25;27;06 - 00;25;32;08 so I don't always get super involved in the weeds of the projects. 00;25;32;25 - 00;25;37;03 But we do always try to learn something from every experience. 00;25;37;06 - 00;25;40;21 We definitely learned something about the complexity of that survey, 00;25;41;10 - 00;25;44;20 about open ended questions and the challenge with open ended 00;25;44;23 - 00;25;48;01 questions, and when it's best to ask them and when it's not. 00;25;48;13 - 00;25;51;12 And as the value of these tools 00;25;51;15 - 00;25;54;25 to help us do all that work better. 00;25;55;07 - 00;25;58;26 So maybe if we chatted again in a year, I'd be able to answer that 00;25;58;28 - 00;26;00;19 question better. 00;26;00;22 - 00;26;03;08 But you know, we will definitely be thinking about it. 00;26;03;08 - 00;26;07;24 And we absolutely will be tweaking our approach in order to 00;26;08;05 - 00;26;12;25 to not face those same challenges again or to be able to face them in a better way. 00;26;13;26 - 00;26;16;14 To build on it to we're exploring too. 00;26;16;15 - 00;26;16;25 Right. 00;26;16;25 - 00;26;20;14 Everybody is like, there's no absolute expert in this field. 00;26;21;00 - 00;26;23;19 There's just people who are trying and trying and have been trying 00;26;23;19 - 00;26;25;28 for a certain amount of time and trying in unique ways. 00;26;26;01 - 00;26;29;23 You know, when it comes to surveys, what I've explored 00;26;29;26 - 00;26;32;28 through this whole process and working with data scientists and teams 00;26;33;01 - 00;26;37;20 and really trying to get reflective and provoke thoughts within us 00;26;37;23 - 00;26;41;14 about how deep and meaningful this could be and what it could be. 00;26;41;27 - 00;26;43;04 What I've come to realize 00;26;43;05 - 00;26;46;27 is that survey design, I think, really needs to be innovated. 00;26;47;10 - 00;26;50;10 It's the same way it's been since surveys really came out. 00;26;50;14 - 00;26;53;13 Now you can branch surveys and you could do some things with it. 00;26;53;16 - 00;26;57;24 But I think the social science and behind surveys 00;26;57;27 - 00;27;00;25 and how people take them and what is the best approach 00;27;00;25 - 00;27;04;21 for different types of groups like I know Daniel, you guys had a long option 00;27;04;24 - 00;27;06;08 and a short option. 00;27;06;11 - 00;27;10;17 Like I think there's so much possibility to change for the better. 00;27;10;25 - 00;27;14;28 How surveys are constructed and the analytics, how you're going 00;27;15;01 - 00;27;19;20 to analyze the data needs to be at that point in the conversation. 00;27;20;01 - 00;27;23;17 When you're building the strategy for how you're going to engage, 00;27;24;00 - 00;27;26;20 analytics needs to be in that conversation 00;27;26;20 - 00;27;29;29 because you need to build something that can be appropriately analyzed. 00;27;30;07 - 00;27;33;08 And that there's often a disconnect in engagement with that. 00;27;33;23 - 00;27;36;16 So I think there's a lot of potential, of course. 00;27;36;16 - 00;27;40;17 And I think we just have such an opportunity to harness data science 00;27;40;20 - 00;27;45;14 and decision science and survey science to really elevate engagement 00;27;45;23 - 00;27;49;25 in a way that has a more direct impact on the decisions that are being made. 00;27;50;12 - 00;27;51;04 That's what I want 00;27;51;04 - 00;27;55;17 the future to look like is engagement is valuable without question. 00;27;55;25 - 00;27;56;13 Sometimes. 00;27;56;13 - 00;28;00;11 Now there's questions around how valuable it is in certain circumstances. 00;28;00;24 - 00;28;03;06 And I think we have an opportunity to do that. 00;28;03;09 - 00;28;05;17 I'd love to see this conversation a year from now. 00;28;05;18 - 00;28;07;15 You know, we should come back. 00;28;10;02 - 00;28;10;28 But I would add 00;28;10;28 - 00;28;13;25 to that, I mean, I totally agree with that comment, Emily. 00;28;13;28 - 00;28;17;08 And, you know, I think when we talk about engagement tomorrow 00;28;17;21 - 00;28;21;14 for me, technology is a part of that conversation. 00;28;22;00 - 00;28;24;03 It's certainly not all of it. 00;28;24;03 - 00;28;27;18 It's not even necessarily the most important part of it. 00;28;27;21 - 00;28;31;19 I think how we approach engagement is changing. 00;28;31;22 - 00;28;34;22 I think it needs to change more. 00;28;35;01 - 00;28;37;28 I think engagement needs to be come more embedded. 00;28;37;28 - 00;28;40;09 I think it needs to become more deliberative. 00;28;40;10 - 00;28;45;08 As I talked about earlier, I think it needs to become more co-creative. 00;28;45;11 - 00;28;48;22 We need to establish stronger feedback loops 00;28;48;25 - 00;28;51;24 where we kind of share back what we heard with people. 00;28;51;27 - 00;28;56;24 And I think increasingly, engagement to our will be supported by technology 00;28;56;27 - 00;29;02;05 such as AI tools that help us to scale engagement in different ways, 00;29;02;15 - 00;29;06;28 like helping us to synthesize conversations or visualize patterns, 00;29;07;08 - 00;29;10;06 but also in a lot of different ways as well. 00;29;10;06 - 00;29;14;01 And, I was talking to Emily earlier today about this paper 00;29;14;19 - 00;29;15;28 put out by this organization 00;29;15;28 - 00;29;19;25 that I have done some work with called democracy Next, called Five Dimensions 00;29;19;28 - 00;29;23;21 of Scaling Democratic Deliberation with and beyond AI. 00;29;24;09 - 00;29;25;27 One is scaling out. 00;29;25;27 - 00;29;29;17 So that's about using AI to increase the number of people 00;29;29;20 - 00;29;32;01 who are participating in deliberative processes. 00;29;32;01 - 00;29;36;26 And remember, that means like conversation based processes, scaling up. 00;29;37;03 - 00;29;41;12 So using technology to facilitate deliberation happening at higher 00;29;41;15 - 00;29;44;28 levels of governance, like national and transnational levels of governance. 00;29;45;09 - 00;29;46;22 Scaling across. 00;29;46;22 - 00;29;50;11 So using AI to increase the number of deliberative processes 00;29;50;14 - 00;29;55;27 in government and other institutions, scaling deep, which is about using 00;29;56;00 - 00;30;00;28 AI to increase the impact of deliberation by institutionalizing it 00;30;01;23 - 00;30;04;20 and then scaling in, which is about actually increasing 00;30;04;20 - 00;30;07;00 the quality of the deliberation when it's happening. 00;30;07;03 - 00;30;12;11 So I'm most interested, in the promise of scaling across. 00;30;12;14 - 00;30;16;08 So I would love to see more deliberative engagement processes 00;30;16;18 - 00;30;19;18 happening all across society. 00;30;19;24 - 00;30;23;07 I would like to see AI help us to scale deep 00;30;23;12 - 00;30;28;14 so that we can adopt these tools more effectively as institutions, 00;30;29;00 - 00;30;32;15 and then scaling in so that we can improve the quality of the operation. 00;30;32;18 - 00;30;35;03 So how does I do all that stuff? 00;30;35;03 - 00;30;36;16 I have no idea. 00;30;38;18 - 00;30;40;09 I mean, I have a little bit of an idea. 00;30;40;10 - 00;30;42;17 Yeah. But I'm, you know, I'm interested in learning. 00;30;42;18 - 00;30;44;12 I have an open mind. 00;30;44;15 - 00;30;47;02 Daniel is at all a part of deliberative dialog. 00;30;47;05 - 00;30;49;20 I know that's something that you specialize in. 00;30;49;20 - 00;30;51;21 And so I actually want to ask, what is it, 00;30;51;22 - 00;30;54;11 why is it important and how my I enhance it. 00;30;54;12 - 00;30;58;00 But I think you might have just started on that to just answer that. 00;30;58;03 - 00;31;00;18 You answer that question. 00;31;00;21 - 00;31;02;29 Well, we could talk a little bit more about like what it is. 00;31;03;00 - 00;31;03;22 Sure. Yeah. 00;31;03;25 - 00;31;07;04 So it's basically like thoughtful discussion 00;31;07;10 - 00;31;11;22 that's aimed at making well-informed decisions together. 00;31;12;14 - 00;31;16;28 So in a deliberative process, you get people to talk to one another. 00;31;17;16 - 00;31;18;19 And what's important 00;31;18;19 - 00;31;22;00 in a deliberative process isn't really what each individual wants, 00;31;22;03 - 00;31;26;28 which is what's important when you're surveying people, for example, right? 00;31;27;01 - 00;31;30;18 When you're doing a participatory process, it's actually what the group 00;31;30;27 - 00;31;34;04 can move forward with together, right? 00;31;34;07 - 00;31;37;07 What the group feels comfortable moving forward with together. 00;31;37;13 - 00;31;41;05 And so in a deliberative process, you ask people to listen 00;31;41;08 - 00;31;44;28 to different perspectives with an open mind, to ask questions 00;31;45;01 - 00;31;48;15 of other people to share their views, to share their lived experience. 00;31;48;27 - 00;31;54;05 Two way trade offs focus on the common good and build off each other's ideas, 00;31;54;16 - 00;31;58;04 and these processes are typically focused on a few key principles. 00;31;58;07 - 00;32;00;13 One is representative participation. 00;32;00;16 - 00;32;03;14 So in a deliberative process, you try to bring together a group 00;32;03;14 - 00;32;03;29 that looks 00;32;03;29 - 00;32;07;07 as much as possible, like the people who are going to be impacted by a decision. 00;32;07;21 - 00;32;11;15 And one of the ways we do that is through civic lotteries, 00;32;12;04 - 00;32;14;16 where people volunteer to participate. 00;32;14;16 - 00;32;17;01 They fill out a survey of their demographics. 00;32;17;04 - 00;32;21;00 We've already done some research to determine 00;32;21;03 - 00;32;25;05 what the demographic makeup of the group should look like based on, again, 00;32;25;13 - 00;32;28;13 what the community looks like, what the demographics of the community are. 00;32;29;00 - 00;32;32;03 And then you pick people randomly, 00;32;32;06 - 00;32;34;19 but you control for those demographics, by the way. 00;32;34;19 - 00;32;36;05 I can help with that as well. 00;32;36;05 - 00;32;38;08 And it is used in that way. 00;32;38;11 - 00;32;42;13 You want to make sure that the group will have a meaningful influence on a process. 00;32;42;29 - 00;32;45;19 To do that, they need a clear purpose and mandates. 00;32;45;19 - 00;32;47;18 They need a lot of clarity as to what exactly 00;32;47;18 - 00;32;49;23 their role is in the overall process. 00;32;49;26 - 00;32;53;20 You need to give them a lot of information so that they can really make sense 00;32;53;23 - 00;32;56;23 of what they're being asked, and make an informed decision. 00;32;57;02 - 00;33;00;07 You need to give them time to have those conversations. 00;33;00;24 - 00;33;04;05 Often, you ask the participants in the process to 00;33;04;08 - 00;33;06;00 develop the reports themselves, 00;33;06;00 - 00;33;10;08 or at least to have a say in those reports once they've been developed. 00;33;10;27 - 00;33;14;04 You want to be transparent as much as possible with the wider public, 00;33;14;07 - 00;33;18;00 so they know what's happening is they want to and oftentimes 00;33;18;03 - 00;33;22;10 also people will, point to the need for independent facilitation. 00;33;22;13 - 00;33;26;11 So people who are not associated with the sponsoring organization 00;33;26;14 - 00;33;30;14 running those processes, although that's not a principle 00;33;30;17 - 00;33;33;24 that we adhere to in Parks and Rec, we're trying to be 00;33;33;26 - 00;33;37;03 as innovative and, sort of forward thinking as possible. 00;33;37;06 - 00;33;41;07 And so we as an engagement team, act as this kind of independent group 00;33;41;21 - 00;33;44;22 from the rest of the division while still being embedded in it. 00;33;44;25 - 00;33;46;11 And that's kind of how we describe it. 00;33;46;14 - 00;33;49;25 So all that to say that I think that 00;33;50;03 - 00;33;55;12 this is the future of engagement is these kinds of processes 00;33;55;15 - 00;33;57;11 where you're actually having people talk to one another 00;33;57;11 - 00;34;00;19 because we don't know how to talk to one another anymore. 00;34;01;12 - 00;34;02;26 That's so interesting. 00;34;02;26 - 00;34;05;26 Yeah, that is crazy because that is like your field. 00;34;06;03 - 00;34;06;21 Yeah. 00;34;06;24 - 00;34;11;04 I'm just sitting here like, yes, I literally had to make a noise for you 00;34;11;06 - 00;34;16;08 then like, no, my agreement with that is we see that in organizations too. 00;34;16;14 - 00;34;17;17 And I've seen that over the past 00;34;17;17 - 00;34;21;05 couple of years in my previous role working with leadership teams. 00;34;21;15 - 00;34;24;14 Leadership teams make decisions, they collect 00;34;24;17 - 00;34;27;17 information, they understand what's going on in an organization. 00;34;27;22 - 00;34;29;03 They deliberate. 00;34;29;06 - 00;34;31;23 But what is that deliberative process look like? 00;34;31;23 - 00;34;35;10 What's that decision making process look like for different types of decisions? 00;34;35;25 - 00;34;39;07 I've been entrenched in work internally inside organizations 00;34;39;10 - 00;34;40;17 in the past couple of years. 00;34;40;20 - 00;34;43;19 Seeing what kind of engagement techniques 00;34;43;19 - 00;34;47;15 from public engagement can we pull into an organization? 00;34;47;18 - 00;34;52;00 Because an organization is inherently a community of people. 00;34;52;12 - 00;34;55;04 There's lots of literature about that. 00;34;55;04 - 00;34;59;01 But what if you treat an organization like you would treat a community? 00;34;59;16 - 00;35;00;20 What might that look like? 00;35;00;20 - 00;35;04;24 So things like deliberative dialog, Daniel, like really piqued my interest 00;35;04;27 - 00;35;10;08 because it's not only applicable to macro collaboration and macro engagement, 00;35;10;11 - 00;35;16;06 but also micro around the boardroom table or in a workshop with different 00;35;16;09 - 00;35;21;24 technical experts, you know, trying to come up with a path forward. 00;35;22;08 - 00;35;23;22 And I see it all the time. 00;35;23;22 - 00;35;27;08 People struggle in those environments because they're tricky, 00;35;27;28 - 00;35;31;01 deliberative dialog and figuring things out and perspectives 00;35;31;04 - 00;35;34;16 coming to the table and opinions 00;35;34;26 - 00;35;37;25 and sometimes for sure, emotions. 00;35;38;05 - 00;35;41;28 It's a people process, businesses, people. 00;35;42;08 - 00;35;43;23 So I'm really keen. 00;35;43;23 - 00;35;47;20 I think it'd be very cool to take the deliberative dialog process 00;35;47;23 - 00;35;48;29 that you're exploring there, Daniel, 00;35;48;29 - 00;35;51;29 and see what it can do at the boardroom table for sure. 00;35;52;08 - 00;35;54;02 You know, it's interesting 00;35;54;05 - 00;35;57;01 as much as this conversation was about technology, 00;35;57;01 - 00;36;01;10 and I felt more about culture change and just understanding 00;36;01;13 - 00;36;04;24 what processes we could put in place that can be enabled by technology. 00;36;04;27 - 00;36;07;28 So I like that we deep dive into that 00;36;08;01 - 00;36;11;19 element of even micro cultures, and Michael processes. 00;36;12;00 - 00;36;14;04 So I wanted to get closing remarks. 00;36;14;04 - 00;36;16;28 What do you both hope to see in the future? 00;36;16;28 - 00;36;18;06 We talked a little bit about the future, 00;36;18;06 - 00;36;21;06 but anything that you wanted to add for closing. 00;36;21;13 - 00;36;23;29 Yeah, I'll just say, you know, that 00;36;23;29 - 00;36;27;19 I have a lot of hope that we can harness 00;36;28;00 - 00;36;31;00 AI and other technological tools 00;36;31;04 - 00;36;35;05 to scale up to make these conversations 00;36;35;23 - 00;36;40;07 more regular, to make them happen more often, to make them more meaningful. 00;36;40;22 - 00;36;43;15 I could not agree more. 00;36;43;18 - 00;36;48;01 I just think stakeholder perspectives can sometimes be seen as a risk. 00;36;48;04 - 00;36;50;13 A lot of people see stakeholders as a risk. 00;36;50;16 - 00;36;56;10 It's very common, very common, and I really think that's the wrong mindset. 00;36;56;13 - 00;37;00;23 I think if we go into engagement with the mindset of I'm 00;37;00;26 - 00;37;04;07 going to mitigate this risk or I'm going to manage these stakeholders 00;37;04;21 - 00;37;07;25 and control it, I think it's the wrong mindset. 00;37;08;12 - 00;37;12;08 Risk mitigation might be an output of a really powerful engagement strategy. 00;37;12;25 - 00;37;15;18 But the mindset I think that we need to go into engagement 00;37;15;18 - 00;37;20;09 with is stakeholder perspectives are an asset to harness. 00;37;20;26 - 00;37;24;03 And if we can harness them well and we can create the right dialog 00;37;24;13 - 00;37;28;20 and we can understand their feedback at scale, I think we have the potential 00;37;28;23 - 00;37;32;06 to really make changes that I almost can't even imagine. 00;37;32;18 - 00;37;35;23 Would you change your word now that we're at the end of this conversation? 00;37;35;26 - 00;37;37;19 So are you still hopeful and optimistic? 00;37;37;19 - 00;37;40;12 Are you just curious? I think I'm both. 00;37;41;16 - 00;37;42;13 That's good. 00;37;42;16 - 00;37;43;16 Yeah. 00;37;43;19 - 00;37;46;19 Yeah I think curious is actually a great work. 00;37;47;05 - 00;37;49;06 It's very hopeful to be curious isn't it. 00;37;49;07 - 00;37;52;07 It's it's a great way to take on a new venture. 00;37;52;26 - 00;37;54;23 Thank you both so much. 00;37;54;23 - 00;37;57;21 We have such a delightful conversation and I hope we revisit this 00;37;57;24 - 00;38;01;02 in one year where all of our one year predictions come true. 00;38;01;05 - 00;38;02;07 And, yeah. 00;38;02;08 - 00;38;03;14 Thank you so much. 00;38;03;17 - 00;38;05;13 Look forward to it. Thank you for having me. 00;38;05;16 - 00;38;06;11 Thank you. Divya. 00;38;11;06 - 00;38;14;06 Brought to you by Nexus, Publish By GHD. 00;38;14;14 - 00;38;15;18 Where ideas connect

Community engagement is evolving, with AI and technology central to creating meaningful connections and informed decisions. In this podcast episode, we're joined by Emily Gallant (GHD) and Daniel Fusca (City of Toronto) to explore how technology and AI are transforming the way we engage and how they might play a role in shaping the future of decision-making.

Catch up on:

  • The potential of AI to reduce human bias and analyse large-scale qualitative data
  • How technology is enabling informed and scalable decision-making
  • The challenge of integrating technology into traditional engagement practices
  • The importance of fostering dialogue in a time when connection feels harder than ever before

This discussion explores our evolving engagement processes and how innovation is opening new doors to build trust and foster collaboration.

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