DiscoverData & AI with Mukundan | Learn AI by Building
Data & AI with Mukundan | Learn AI by Building

Data & AI with Mukundan | Learn AI by Building

Author: Mukundan Sankar – Practical AI & Analytics

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Practical, human-first AI. Each week we build small, useful AI tools and workflows—so you can apply them the same day you listen.

Data & AI with Mukundan is where real-world problems meet practical AI. You don’t learn AI by collecting tabs—you learn it by shipping small, useful things. I’m Mukundan, an analytics pro, GPT builder, and lifelong learner. Every week we take one problem and build a solution you can actually use: smarter job-search helpers, portfolio reviewers, AI that speeds up analysis, slide/summary assistants, and more.

You’ll hear the decisions behind each build—what to automate, how to evaluate quality, how to keep outputs reliable, and how to make it useful today. We keep the language plain, the examples concrete, and the steps realistic whether you’re hands-on or just AI-curious.

Recurring themes: LLM applications, prompt design, evaluation, retrieval patterns, analytics workflows, career use-cases, and product thinking for AI. New episodes weekly. Subscribe for the how-to; stay for the shipped thing.

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In this episode, Mukundan opens up about one of the most difficult phases of his job hunt and how he built a tiny 3-agent AI system that completely changed the way he applied, prepared, and stayed consistent. You will learn how the Researcher Agent, Writer Agent, and Reviewer Agent work together to turn any job description into clarity. You will also hear a raw, human story about self-doubt, burnout, and the psychology behind job search momentum. This is a deeply personal, practical episode for anyone who feels stuck, exhausted, confused, or overwhelmed in their job search.Optimized for: AI jobs, data jobs, job search tools, AI agents, career automation, productivity systems, job search burnout, how to find clarity in job search.Join the Discussion (comments hub): https://mukundansankar.substack.com/notesTools I use for my Podcast and Affiliate PartnersRecording Partner: Riverside → Sign up here (affiliate)Host Your Podcast: RSS.com (affiliate )Research Tools: Sider.ai (affiliate)Sourcetable AI: Join Here(affiliate)🔗 Connect with Me:Free Email NewsletterWebsite: Data & AI with MukundanGitHub: https://github.com/mukund14Twitter/X: @sankarmukund475LinkedIn: Mukundan SankarYouTube: Subscribe
I missed my parents, so I built an AI that talks like them. This isn’t about replacing people—it’s about remembering the voices that make us feel safe.In this 90-minute episode of Data & AI with Mukundan, we explore what happens when technology stops chasing efficiency and starts chasing empathy. Mukundan shares the story behind “What Would Mom & Dad Say?”, a Streamlit + GPT-4 experiment that generates comforting messages in the voice of loved ones.You’ll hear:The emotional spark that inspired the projectThe plain-English prompts anyone can use to teach AI empathyBoundaries & ethics of emotional AIHow this project reframed loneliness, creativity, and connectionTakeaway: AI can’t love you—but it can remind you of the people who do.🔗 Try the free reflection prompts below:THE ONE-PROMPT VERSION: “What Would Mom & Dad Say?” “You are speaking to me as one of my parents. Choose the tone I mention: either Mom (warm and reflective) or Dad (practical and encouraging). First, notice the emotion in what I tell you—fear, stress, guilt, joy, or confusion—and name it back to me so I feel heard. Then reply in 3 parts:Start by validating what I’m feeling, in a caring way.Share a short story, lesson, or perspective that fits the situation.End with one hopeful or guiding question that helps me think forward. Keep your words gentle, honest, and simple. No technical language. Speak like someone who loves me and wants me to feel calm and capable again.”Join the Discussion (comments hub): https://mukundansankar.substack.com/notesTools I use for my Podcast and Affiliate PartnersRecording Partner: Riverside → Sign up here (affiliate)Host Your Podcast: RSS.com (affiliate )Research Tools: Sider.ai (affiliate)Sourcetable AI: Join Here(affiliate)🔗 Connect with Me:Free Email NewsletterWebsite: Data & AI with MukundanGitHub: https://github.com/mukund14Twitter/X: @sankarmukund475LinkedIn: Mukundan SankarYouTube: Subscribe
What if your job hunt could run like a data system?In this episode, I share the story of how I used three AI agents — Researcher, Writer, and Reviewer — to rebuild my job search from the ground up. These agents read job descriptions, tailor resumes, and even critique tone and clarity — saving hours every week.But this episode isn’t just about automation. It’s about agency. I’ll talk about rejection, burnout, and the mindset shift that changed everything: treating every rejection as a data point, not a defeat.Whether you’re in tech, analytics, or just tired of the job search grind — this one’s for you.🔹 Learn how I automated resume tailoring with GPT-4 🔹 Understand how to design AI systems that protect your mental energy 🔹 Discover why “efficiency” means doing less of what drains you 🔹 Hear the emotional story behind building these agents from scratchJoin the Discussion (comments hub): https://mukundansankar.substack.com/notesTools I use for my Podcast and Affiliate PartnersRecording Partner: Riverside → Sign up here (affiliate)Host Your Podcast: RSS.com (affiliate )Research Tools: Sider.ai (affiliate)Sourcetable AI: Join Here(affiliate)🔗 Connect with Me:Free Email NewsletterWebsite: Data & AI with MukundanGitHub: https://github.com/mukund14Twitter/X: @sankarmukund475LinkedIn: Mukundan SankarYouTube: Subscribe
What happens when an AI starts asking better questions than you?In this 60-minute episode, I share the real story behind “The AI That Thinks Like an Analyst” — a Streamlit + GPT-4 project that changed the way I see data, curiosity, and creativity.This isn’t a technical tutorial. It’s a journey into the mind of a data professional learning to think deeper — and how building this AI taught me the most human lesson of all: how to stay curious.We’ll explore:Why the hardest part of analysis isn’t code — it’s curiosity.How I built a privacy-first Streamlit app that generates questions instead of answers.What AI can teach us about slowing down, observing, and thinking like explorers.The moment I realized data analysis and self-reflection are the same skill.If you’ve ever felt stuck staring at your data, unsure what to ask next — this episode is for you. 📖 Read the full story: https://mukundansankar.substack.com/p/the-no-upload-ai-analyst-v4-secure Join the Discussion (comments hub): https://mukundansankar.substack.com/notesTools I use for my Podcast and Affiliate PartnersRecording Partner: Riverside → Sign up here (affiliate)Host Your Podcast: RSS.com (affiliate )Research Tools: Sider.ai (affiliate)Sourcetable AI: Join Here(affiliate)🔗 Connect with Me:Free Email NewsletterWebsite: Data & AI with MukundanGitHub: https://github.com/mukund14Twitter/X: @sankarmukund475LinkedIn: Mukundan SankarYouTube: Subscribe
This week, I’m showing you exactly how I used AI agents to fix my job hunt — no hype, just results.I was juggling dozens of job applications, interviews, and follow-ups until I built three small agents that acted like my personal job search team.In this episode, I do a live demo of:A Researcher Agent that finds company insights automaticallyA Writer Agent that drafts personal outreach messagesA Reviewer Agent that polishes tone and clarityTogether, they turned hours of chaos into minutes of clear progress.You’ll see how these agents plan, collaborate, and improve your workflow — and how you can build your own version tonight using just ChatGPT or any LLM platform.By the end, you’ll understand what makes agents powerful: planning, memory, and feedback.🔗 Connect with Me:Free Email NewsletterWebsite: Data & AI with MukundanGitHub: https://github.com/mukund14Twitter/X: @sankarmukund475LinkedIn: Mukundan SankarYouTube: Subscribe
Data interviews do not have to feel messy. In this episode, I share a simple AI Interview Copilot that works for data analyst, data scientist, analytics engineer, product analyst, and marketing analyst roles.What you will learn today:How to Turn a Job Post into a Skills Map: Know Exactly What to Study First.How to build role-specific SQL drills (joins, window functions, cohorts, retention, time series).How to practice product/case questions that end with a decision and a metric you can defend.How to prepare ML/experimentation basics (problem framing, features, success metrics, A/B test sanity checks).How to plan take-home assignments (scope, assumptions, readable notebook/report structure).How to create a 6-story STAR bank with real numbers and clear outcomes.How to follow a 7-day rhythm so you make steady progress without burnout.How to keep proof of progress so your confidence comes from evidence, not hope.Copy-and-use prompts from the show:JD → Skills Map: “Parse this job post. Table: Skill/Theme | Where mentioned | My level (guess) | Study action | Likely interview questions. Then give 5 bullets: what they are really hiring for.”SQL Drill Factory (Analyst/Product/Marketing): “Create 20 SQL tasks + hint + how to check results using orders, users, events, campaigns. Emphasize joins, windows, conditional agg, cohorts, funnels, retention, time windows.”Case Coach (Data/Product): “Run a 15-minute case: key metric is down. Ask one question at a time. Score clarity, structure, metrics, trade-offs. End with gaps + practice list.”ML/Experimentation Basics (Data Science): “Create a 7-step outline for framing a modeling problem (goal, data, features, baseline, evaluation, risks, comms). Add an A/B test sanity checklist (power, SRM, population, metric guardrails).”Take-Home Planner: “Given this brief, propose scope, data assumptions, 3–5 analysis steps, visuals, and a short results section. Output a clear report outline.”Behavioral STAR Bank: “Draft 6 STAR stories (<120s) for conflict, ambiguity, failure, leadership without title, stakeholder influence, measurable impact. Put numbers in Results.”
If your “system” is 17 to‑do lists and three forgotten calendars, this episode is your reset. We build a Notion Life OS powered by three tiny AI agents that make daily planning stick:Capture Agent – Inbox anything in under 30 seconds, deduplicate, and route it to the right list.Prioritizer Agent – Convert chaos into a Today list using urgency × effort, hard time limits, and the rule of 3.Timebox Agent – Create a 3‑block schedule with buffers, calendar sync, and a 60‑second kickoff ritual. Plus: an Evening Reflection micro‑agent so you close the loop—wins, misses, one improvement. You’ll leave with prompts, templates, and guardrails you can copy tonight.Primary keywords: AI agents, Notion planner, daily planning, timeboxing, productivity, routines, morning routine, evening reflectionSecondary keywords: capture to inbox, Eisenhower matrix, calendar sync, habit loops, task automation, micro‑automationsLinks & ResourcesRecording Partner: Riverside → Sign up here (affiliate)Host Your Podcast: RSS.com (affiliate )Research Tools: Sider.ai (affiliate)Join the Newsletter: Free Email Newsletter to receive practical AI tools weekly.Join the Discussion (comments hub): https://mukundansankar.substack.com/notes🔗 Connect with Me:Website: Data & AI with MukundanTwitter/X: @sankarmukund475LinkedIn: Mukundan SankarYouTube: Subscribe
If your job search feels like tab-hell—applications everywhere, prep scattered, follow-ups forgotten—this episode is your reset. I walk you through three small but mighty AI agents you can build in an afternoon:• Application Tracker Agent — paste a job link → extract company, title, pay, location → auto-log to Notion/Sheets → set a 7-day follow-up. • Interview Prep Agent — feed the JD + your resume → get tailored behavioral questions, SQL/case drills, and a tight “Tell me about yourself.” • Follow-Up Agent — generate a thank-you in your voice, log the interview date, and nudge you if you haven’t heard back.You’ll learn the agent essentials—planning, memory, feedback loops—plus a copy-and-paste framework, example prompts, and quality checks so your agents save time instead of making noise.Chapters below. Show notes include my working templates, prompts, and affiliate tools I actually use (Riverside for recording, RSS.com for hosting, Sider for research). Rate the show if this helped—it means a lot.Primary keywords: ai agents, job search, interview prep, application tracking, follow-up emails Secondary keywords: Notion, Google Sheets, SQL interview, behavioral questions, automation, productivity, podseo, career toolsLinks & ResourcesRecording Partner: Riverside → Sign up here (affiliate)Host Your Podcast: RSS.com (affiliate )Research Tools: Sider.ai (affiliate)Join the Newsletter: Free Email Newsletter to receive practical AI tools weekly.Join the Discussion (comments hub): https://mukundansankar.substack.com/notes🔗 Connect with Me:Website: Data & AI with MukundanTwitter/X: @sankarmukund475LinkedIn: Mukundan SankarYouTube: Subscribe
AI agents are everywhere in the headlines — but what do they really do? In this episode of Data & AI with Mukundan, we cut through the hype and explain, in plain language, how AI agents actually think.You’ll learn the three key ingredients that separate real agents from chatbots:Planning: breaking big goals into concrete stepsMemory: remembering context so actions feel consistentFeedback: adjusting when things go wrong instead of collapsingI also walk through a live demo where an AI agent triages my Google Calendar and Gmail inbox. You’ll hear exactly how it proposes deep-work sessions, admin blocks, and even a workout — all while avoiding conflicts and asking for my approval before making changes.To make this practical, I include a true/false quiz to test your instincts and a set of discussion prompts to help you imagine how agents could save you hours in real life.By the end of this episode, you’ll know:How to tell the difference between a chatbot, automation, and a real AI agentWhy most flashy demos online fail in practiceHow to build your first mini-agent with just one tool and a simple feedback loopWhy agents only matter if they give you back time and focusIf you’ve ever wished for an assistant to handle your messy inbox, your cluttered schedule, or your repetitive tasks, this episode will show you how AI agents can actually do it. No buzzwords, no sci-fi — just practical, useful AI that you can build today.Links & ResourcesToday's Demo: HereQuiz: HereRecording Partner: Riverside → Sign up here (affiliate)Host Your Podcast: RSS.com (affiliate )Research Tools: Sider.ai (affiliate)Join the Newsletter: Free Email Newsletter to receive practical AI tools weekly.Join the Discussion (comments hub): https://mukundansankar.substack.com/notes🔗 Connect with Me:Website: Data & AI with MukundanTwitter/X: @sankarmukund475LinkedIn: Mukundan SankarYouTube: Subscribe
Plain-English agents, not hype: plan, use tools, add guardrails—then dry-run a calendar + inbox agent that saves hours.You’ve heard “AI agent” everywhere, but definitions vary. In this episode, Mukundan explains—in plain, practical language—what a real agent is and when to use one. We’ll contrast agents with chatbots and simple automations, walk through the five pillars (goal, plan, tools, memory, feedback), and strip the tooling of buzzwords. Then we run a live dry-run: two 90-minute deep-work blocks, one 45-minute admin sweep, and a 30-minute workout that avoids your existing commitments. We finish by triaging sample emails into reply/delegate/archive/read-later and drafting five concise replies with one clear next step each. Safety first: drafts-only, tentative calendar holds, approval gates, and fallbacks if tools fail. Copy the templates from the show notes and ship your v0.5 tonight.Lightning Round: True/False (answers in the episode)An AI agent is just a chatbot.Remove a tool and it still makes progress → probably a real agent.Clear success criteria matter less than good prompts.Chatbots reply; agents execute across steps.Fixed automations are best when inputs rarely change.If a tool disconnect breaks everything, it’s a brittle macro.Links & ResourcesAI Agent Copy-Paste Templates (run these in ChatGPT): Get your free copyRecording Partner: Riverside → Sign up here (affiliate)Host Your Podcast: RSS.com (affiliate )Research Tools: Sider.ai (affiliate)Join the Newsletter: Free Email Newsletter to receive practical AI tools weekly.Join the Discussion (comments hub): https://mukundansankar.substack.com/notes🔗 Connect with Me:Website: Data & AI with MukundanTwitter/X: @sankarmukund475LinkedIn: Mukundan SankarYouTube: Subscribe
Discover how small AI prompts can transform your productivity. In this episode, Mukundan explains the 80‑20 rule. Mukundan demonstrates AI workflows for scheduling and focus, and introduces a Prompt Wallet to help you beat decision fatigue. Perfect for anyone seeking practical AI and better time management.Episode Highlights80‑20 Rule Explained: Most of your progress comes from a few critical actions. Learn how to identify them with prompts.Prompt Structure 101: Context, constraints, desired outcome, and a tiny first step.Classic Prompts: 10‑minute workouts, zero‑based budgeting, Pomodoro study plans, teach‑back outlines, and Power Clean 15.New Productivity Hacks: Time blocking, task prioritization, interrupt handling, focus sprints, and daily review.Live Demo: Mukund feeds tasks into the AI and shows how it schedules a day, orders tasks by impact, manages interruptions, and sets up a focus sprint.Seven‑Day Challenge: Try one prompt per day and track whether you start within 60 seconds. Join the conversation with #PromptWalletChallenge.Takeaways & ActionsStart with your context and constraints. Ask for a plan and a micro‑action.Most results come from a handful of well‑chosen tasks. Use prompts to find them.Commit to the seven‑day challenge. Sign up for the free newsletter and email Mukundan your progress.Download the free Prompt Wallet PDF to keep all the scripts handy.Support the show by subscribing and leaving a review; tell your friends if you found value.Links & ResourcesPrompt Wallet PDF: Get your free copyRecording Partner: Riverside → Sign up here (affiliate)Host Your Podcast: RSS.com (affiliate )Research Tools: Sider.ai (affiliate)Join the Newsletter: Free Email Newsletter to receive practical AI tools weekly.Join the Discussion (comments hub): https://mukundansankar.substack.com/notes🔗 Connect with Me:Website: Data & AI with MukundanTwitter/X: @sankarmukund475LinkedIn: Mukundan SankarYouTube: Subscribe
AI, data, numbers—without uploads. Hash, mask, and redact PII, then run data analytics locally for time-saving and privacy.In this episode, we build a No-Upload AI Analyst that keeps your PII safe: HMAC SHA-256 hashing, masking, and redaction using policy presets and client-side transforms. We’ll: • Reframe the problem (insights > risk) • Set four hard constraints (no uploads, local preferred, policy presets, human-readable audit) • Use rules-first privacy + schema semantics • Walk the 5-step workflow (paste headers → pick preset → set secret → transform → analyze) • Show real-world cases (HIPAA/HITECH-aware analytics, FERPA contexts, product analytics) • Share a checklist + quiz + local Streamlit approach Perfect for data teams in healthcare, finance, education, and privacy-sensitive orgs.Key takeawaysStop uploading customer data. Transform it client-side first.Use HMAC hashing to keep joins without exposing raw emails/IDs.Mask for human-readable UI; redact when you don’t need the field.Ship a data-handling report with every analysis.Run the app locally for maximum privacy.Affiliate note: I record with Riverside (affiliate) and host on RSS.com (affiliate). Links in show notes.LinksBlog version: (Free): https://mukundansankar.substack.com/p/the-no-upload-ai-analyst-v4-secure Join the Discussion (comments hub): https://mukundansankar.substack.com/notesTools I use for my Podcast and Affiliate PartnersRecording Partner: Riverside → Sign up here (affiliate)Host Your Podcast: RSS.com (affiliate )Research Tools: Sider.ai (affiliate)Sourcetable AI: Join Here(affiliate)🔗 Connect with Me:Free Email NewsletterWebsite: Data & AI with MukundanGitHub: https://github.com/mukund14Twitter/X: @sankarmukund475LinkedIn: Mukundan SankarYouTube: Subscribe
AI, data, and analytics pick three cookable dinners from the ingredients and appliances you already have—no grocery run.We use AI, data, and a rules-first analytics score to rank real meals you can make tonight with what’s in your pantry. A lightweight rules engine avoids AI hallucinations; Chef-AI adds safe swaps and one-line directions. You’ll learn a copy-paste AI prompt, how to reduce waste, and how analytics rank time, fit, and vibe.3 bullets (skimmable):Rules > raw AI for reliable, cookable resultsAnalytics score to rank fastest/best-fit mealsCopy-paste prompt for 3 ideas in under a minuteYou’ll learnWhy a rules engine beats raw AI for reliable, cookable recipesHow an analytics score prioritizes the best matches fastA copy-paste AI prompt that returns 3 make-tonight ideas in under a minuteHow to reduce waste and keep weeknight meals simple & tastyTry this prompt: I have [3–5 ingredients] and these appliances: [list]. Suggest 3 meals I can make in under 30 minutes. If something’s missing, suggest simple pantry substitutions. Keep it realistic and give one-line directions for each.Quick quiz True or False — If you only rely on AI, it may assume tools you don’t have and suggest impossible recipes. Answer: True. Start with rules; use AI for riffs and swaps.Discussion question When you’re deciding on dinner, do you want structure (reliable classics) or creativity (something new)? Reply on Substack or X—I'll share the poll next week.Resources & linksBlog Link: https://mukundansankar.substack.com/p/pantry-plate-the-aifirst-way-to-decideKey takeawaysPut rules before AI for cookable results.One clear AI prompt can end dinner indecision in minutes.AI is a partner, not the chef.Affiliate partners (links below):RSS: your podcast, get free transcripts, and earn ad revenue with as few as 10 monthly downloads. Sign up here.Sider AI. AI-powered research and productivity assistant for breaking down job descriptions into keywords. Try Sider here.Riverside FM: Record your podcast in studio-quality audio and 4K video from anywhere. Get started with Riverside here.Affiliate disclosure: Some links may be affiliates. If you use them, I may earn at no extra cost to you.Answer: True.Keywords: ai, ai meal planner, data, data analytics, analytics, time-saving tools, pantry, dinner ideas, recipe generator, meal planning
I first built an AI that thinks like an analyst. Now I have built a better AI Data analyst for the practical use of AI. This episode breaks down the simple rebuild: start with a clear objective, pick 5–8 focus columns, and ship a one-page Markdown brief. You’ll also get a 3-minute quiz (10:33), a Substack discussion (17:04), and a 9-step checklist you can use today.What you’ll learnHow to start with a clear business goal (not charts)Why focusing on 5–8 columns increases signalHow a 1-page brief moves work faster than a dashboardQuiz & DiscussionTake the Lightning QuizJoin the Substack discussion: https://mukundansankar.substack.com/(Tell your day-two story, your one metric, and your 5–8 focus columns.)Listener ChecklistCopy/paste:1) Objective (one line)2) 5–8 focus columns3) 10 questions + why4) Quick data health checks5) Export 1-page brief6) Share in Slack/Notion/Jira7) Run 2–3 quick analyses today8) Log learning + next decision9) Repeat tomorrowLinksBlog version: (with Medium membership): https://medium.com/data-science-collective/i-built-an-ai-that-thinks-like-a-data-analyst-then-it-went-viral-so-i-made-it-smarter-1f3206a8254b(Free): https://mukundansankar.substack.com/p/i-built-an-ai-that-thinks-like-aSubstack Note (comments hub): https://mukundansankar.substack.com/notesTools I use for my Podcast:Recording Partner: Riverside → Sign up here (affiliate)Host Your Podcast: RSS.com (affiliate )Research Tools: Sider.ai (affiliate)🔗 Connect with Me:Free Email Newsletter: https://data-ai-with-ms.kit.com/bae4d0c550Website: https://mukundansankar.substack.com/Twitter/X: @sankarmukund475LinkedIn: https://www.linkedin.com/in/mukundansankar/YouTube: https://www.youtube.com/@MukundSankar
Beat instant rejections. Use an AI resume audit to pass ATS filters and turn silence into interviews—clear steps, a one-week plan, and a free checker.AI job search without the guesswork. In this episode I use a tiny AI resume & portfolio audit to beat ATS filters—what to highlight, what’s missing, and how to rewrite one project so a hiring manager actually cares. It’s personal, practical, and ends with a one-week plan you can apply today.You’ll learn • How modern ATS screeners work—and why they’re fast (and unforgiving) • The simple AI workflow behind my ATS simulator (no hype, just outcomes) • Three lessons from failing my own test—and what actually moved the score • How to translate your story so it passes the bots and reaches humans • A one-week action plan to raise your odds on your next applicationKey takeaways • ATS = gatekeeper. If you don’t pass it, humans may never see you. • Match keywords exactly from the JD—“close enough” doesn’t count. • ATS-friendly formatting beats fancy templates that break parsing. • Quantify outcomes so machines and recruiters see impact. • Test before you apply with an ATS checker/simulator.Try this today (no code) Paste into your AI tool of choice: “Here’s my resume + 3 project summaries and the job description I’m applying to. 1) What should I highlight to match the JD? 2) What am I missing? 3) Rewrite one project to emphasize measurable business outcomes in 2–3 bullets.”One-week plan Day 1: Baseline ATS check; log gaps. Day 2: Map exact JD keywords to your resume/projects. Day 3: Rewrite top project in outcome language (numbers first). Day 4: Fix formatting (simple headings, standard section names). Day 5: Add two quantified wins; remove tool-only bullets. Day 6: Align portfolio links to the role (pin your best two). Day 7: Re-test; apply to three roles; track results.ResourcesFull story + DIY steps: https://medium.com/data-science-collective/when-an-ai-tool-i-built-evaluated-my-resume-i-learned-what-100-rejections-never-taught-me-8e8eea1f3d8fRecommended: use any reputable ATS checker to preview parsing before you apply.Affiliate DisclosureThis episode may contain affiliate links. If you purchase via these links, I may earn a small commission at no extra cost to you. Thanks for supporting the show.Affiliate partners (links below):RSS: your podcast, get free transcripts, and earn ad revenue with as few as 10 monthly downloads. Sign up here.Sider AI. AI-powered research and productivity assistant for breaking down job descriptions into keywords. Try Sider here.Riverside FM: Record your podcast in studio-quality audio and 4K video from anywhere. Get started with Riverside here.Do this nextRun your resume through an ATS checker this week. Find the gaps. Fill them. If this helped, share with a friend who’s job hunting and follow/subscribe for more real-world AI workflows.
Description: Join Mukundan Sankar as he explores the challenges of delivering an effective elevator pitch and how AI can assist in crafting one. Mukundan shares personal anecdotes and demonstrates AI-generated pitches tailored for different career stages.Key Takeaways:The importance of a well-crafted elevator pitch How AI can personalize pitches for different roles Real-life examples of AI-generated pitchesResources:1]Elevator Pitch AI Code Mukundan's Blog Post: https://substack.com/home/post/p-1704009772] Thinking about starting a podcast but worried it’ll take forever to grow? Here’s the thing — you don’t need a huge audience to get started or to earn money.I run my show on RSS.com, and it’s the simplest way to get your podcast live on Spotify, Apple, Amazon, YouTube, iHeartRadio, Deezer, and more — all in one step. Their analytics tell me exactly where my listeners are tuning in from, so I know what’s working.And here’s the best part — with their paid plan, you can start earning revenue through ads with as little as 10 downloads a month. That’s right — you don’t need to wait for thousands of listeners to start monetizing.Start your podcast for free today at RSS.com. (Affiliate link — I may earn a commission at no extra cost to you.)3] 💡 Sider.ai– Your AI Copilot for Productivity: Sider.ai is the all-in-one AI assistant that works inside your browser, letting you research, write, summarize, and brainstorm without switching tabs. Whether you’re prepping for an interview, drafting your next pitch, or refining your business plan, Sider.ai can supercharge your productivity. It’s like having GPT-4 on standby, ready to help you think faster and write better. Try Sider.ai today and see how much more you can accomplish in less time. (Affiliate link — I may earn a commission if you sign up.)
Private AI memory app, built respectfully, to echo my parents’ advice—comfort across oceans today, and someday after they’re gone.Private AI memory app—ethical, respectful, and comforting. I share why I built a small, private AI that echoes my parents’ advice when distance (India ↔ U.S.) feels heavy—and how I kept it ethical with privacy, consent, and dignity. This isn’t a replacement for real conversations; it’s a quiet anchor for hard days, and a way to preserve the feeling behind their words.You’ll learnDesign for comfort over novelty (two simple voice profiles)Boundaries: privacy, consent, dignity—and why they matterA high-level recipe for a personal AI tool (framework-agnostic)A no-code way to try the idea safely todayBuild it yourself (guide):https://medium.com/data-science-collective/what-if-you-could-talk-to-your-parents-long-after-theyre-gone-i-built-an-ai-for-that-62bbaf37236dIf this helped:Follow the show and share it with someone who misses home.Affiliate DisclosureThis episode may contain affiliate links. If you purchase via these links, I may earn a small commission at no extra cost to you. Thanks for supporting the show.Affiliate partners (links below):RSS.com — Start your podcast, get free transcripts, and earn ad revenue with as few as 10 monthly downloads. Sign up here.Sider.ai — Your AI-powered research and productivity assistant for breaking down job descriptions into keywords. Try Sider here.Riverside.fm — Record your podcast in studio-quality audio and 4K video from anywhere. Get started with Riverside here.
Turn writing into a clean, editable deck—create slides with AI so you focus on the message, not formatting. Includes a simple presentation workflow.🎧 Episode Summary:Create slides with AI—fast, clear, editable. This episode shows how I turned long-form writing (blogs, memos, outlines) into a polished slide deck you can download and edit—without getting stuck in formatting. You’ll get a simple AI presentation workflow, a reusable prompt, and ideas for diagrams that actually support your point.You’ll learnA repeatable blog → slides structure (7–10 slides, title + 3–5 bullets)How to keep slides human: clarity over decorationWhen to include a diagram (only for processes/flows)A fast export routine so you can present anywhereTry this (no code) “Convert this article into a 9-slide deck. For each slide: short title + 3–5 bullets, no paragraphs. If a slide describes a process, write a one-line prompt for a simple diagram. Keep language clear and speak to a non-expert audience.”Do next Generate → lightly edit → export → deliver. The goal is a message people can follow, not a template people admire.DIY guide https://medium.com/data-science-collective/i-built-an-ai-that-turns-any-blog-post-into-a-polished-slide-deck-with-smart-diagrams-10cbda8010aa
In this episode, we dive into the world of job searching and explore how AI tools are revolutionizing the process. Discover practical strategies to overcome common job search challenges, from crafting the perfect resume to acing interviews. Learn how AI can enhance your job search experience, making it more efficient and effective. Whether you're a recent graduate or a seasoned professional, this episode offers valuable insights to help you land your dream job. Tune in and transform your job search journey with the power of AI!See blog with code: https://medium.com/p/530957cefe65
In this deeply personal episode, I share the story of a chaotic week, mounting pressure, and a craving for Sonic fries. But more importantly, I take you inside the quiet tool I built—an AI Thought Organizer.It didn’t coach me. It didn’t solve anything. It just… reflected what I was already feeling.Inside the episode:The emotional spiral that led to this toolHow I built it (yes, with code—but it’s not technical)Why the laugh that followed changed everythingWhat this experience taught me about overwhelm, clarity, and AIWhether you're a builder, creator, or someone looking for a new kind of peace—you’ll want to hear this.🛠 Full blog and source code:1] Medium: https://medium.com/data-science-collective/i-fed-my-thoughts-to-an-ai-and-it-helped-me-breathe-again-c9796f17c7912] Website: https://mukundansankar.substack.com/p/i-fed-my-thoughts-to-an-ai-and-it🍟 Craving fries after listening? You’re not alone.
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