🚀 The AI Product Leader’s Playbook: My 5 Core Operating Principles Ankit Tomar, July 9, 2025July 7, 2025 “Anyone can ship a demo. Real leaders build what lasts.” After 13+ years building AI-powered and data-driven products across pricing, SaaS, healthcare, and telecom, I’ve come to rely on a few operating principles that never go out of style. These aren’t just bullet points from a playbook — they’ve helped me lead multi-year roadmaps, bring structure through leadership transitions, and ship real-world AI products that drive revenue and business value. Let’s dive in. ✅ 1. Know the domain and the ‘why’ behind your product “If you don’t know the ‘why’, no model will save your roadmap.” As a product leader, your first responsibility is to build context. Talk to commercial and frontline teams Listen to your customers Dig through competitive benchmarks and market shifts Even if you’re new to a domain, curiosity is your edge. Some of my biggest product wins came because I wasn’t biased by “how things are done here” — I asked better questions. Example:Coming from telecom into pricing science, I saw user behavior patterns that others didn’t. That cross-domain lens revealed gaps in the pricing workflow, which led to us building AI system — a tool that boosted response speed and simplified complex quotation processes. 📊 2. Problem first. Solution second. Tech last. It sounds simple — but even seasoned teams get it backwards. Nail the customer pain Validate the need is real and large Only then design a solution and select your tech “Tech is the how, not the why.” I’ve seen teams jump to LLMs or GenAI before understanding the use case. The result? Misaligned features and models that didn’t drive metrics. Always start at the problem. 🛠 3. Build and invest in your team “A brilliant idea with the wrong team goes nowhere. But the right team can evolve a shaky idea into something great.” The best AI product work I’ve seen was done by tightly aligned, high-trust teams. That doesn’t happen by luck — it takes daily investment. Hire thoughtfully, not reactively Mentor your team and let them lead Create psychological safety — especially for engineers and data scientists working with ambiguity Your job as a leader? Set direction, remove blockers, and let talent shine. 🧭 4. Start with an influencing strategy “Execution isn’t just shipping features — it’s aligning humans.” Every product roadmap is shaped by the people who fund it, sell it, or are impacted by it. If you’re not influencing them early, you’re firefighting later. Map every stakeholder — from budget owners to quiet skeptics Build shared OKRs Run regular demos, user feedback loops, and open-door updates Pro tip: Know who sees your product as a threat. Influence isn’t just alignment — it’s risk mitigation. ⏱ 5. Balance quality and time Speed matters. But in AI products, trust matters more. MVP ≠ “barely works” Include user feedback loops early Monitor model performance post-launch and be ready to iterate fast “Shipping a rushed product may win you time, but lose you long-term trust — especially in enterprise AI.” You often don’t get a second chance to prove your product delivers real value. Respect the quality trade-offs. ✍️ Beyond the principles I keep my edge by staying curious: Analyzing product rollouts from competitors Watching talks across industries — not just AI, but aviation, food, finance Constantly asking: What’s working there that we’re missing here? Innovation often comes from cross-pollination — not just iteration. ✅ In summary: Know your domain deeply — and ask “why” relentlessly Always start with the user problem Build a team you’d trust with a blank whiteboard Influence across the org, not just down your team Ship fast, but never sloppy These five principles help me lead with clarity, deliver AI products that scale, and keep teams aligned through every phase of the build. Because in the end: vision gets you in the room. Execution gets your product into the market. Post Views: 703 Product Management AI Product ManagementProduct Leadership
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