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  • No necesitas más disciplina. Necesitas parar

    26 MAR

    1

    No necesitas más disciplina. Necesitas parar

    🔥 Estrés, productividad, decir que no, burnout… ignoré todas las señales hasta que mi cuerpo me obligó a parar en seco. Perdí un evento importante, cancelé planes y entendí algo que puede cambiarlo todo. Este episodio gira en torno a cómo el estrés acumulado, la sobrecarga de trabajo y la incapacidad de poner límites afectan directamente a tu energía y tus decisiones, obligándote a replantear prioridades y foco. En este episodio aprenderás: 💥 Cómo identificar el punto real en el que tu cuerpo dice basta antes de colapsar (claridad brutal) 🧠 La mentalidad estratégica para elegir qué soltar sin sabotear tu crecimiento ⚡ Un sistema práctico para priorizar lo que realmente tiene impacto en tu presente 🚫 El poder oculto de decir que no y cómo usarlo como herramienta de acción y enfoque. Si sientes que estás haciendo demasiado pero avanzando poco, este episodio te va a dar un golpe de realidad necesario. No se trata de hacer más, sino de hacer mejor, con intención y con límites claros. Escucharlo puede ser el primer paso para recuperar tu energía, tomar mejores decisiones y construir un camino mucho más sostenible.

    26 Mar

    •
    12 min
  • MLG 002 Difference Between Artificial Intelligence, Machine Learning, Data Science

    SEASON 1, EPISODE 2

    2

    MLG 002 Difference Between Artificial Intelligence, Machine Learning, Data Science

    Artificial intelligence is the automation of tasks that require human intelligence, encompassing fields like natural language processing, perception, planning, and robotics, with machine learning emerging as the primary method to recognize patterns in data and make predictions. Data science serves as the overarching discipline that includes artificial intelligence and machine learning, focusing broadly on extracting knowledge and actionable insights from data using scientific and computational methods. Links Notes and resources at ocdevel.com/mlg/2 Try a walking desk - stay healthy & sharp while you learn & code Track privacy-first web traffic with OCDevel Analytics. Data Science Overview Data science encompasses any professional role that deals extensively with data, including but not limited to artificial intelligence and machine learning. The data science pipeline includes data ingestion, storage, cleaning (feature engineering), and outputs in data analytics, business intelligence, or machine learning. A data lake aggregates raw data from multiple sources, while a feature store holds cleaned and transformed data, prepared for analysis or model training. Data analysts and business intelligence professionals work primarily with data warehouses to generate human-readable reports, while machine learning engineers use transformed data to build and deploy predictive models. At smaller organizations, one person ("data scientist") may perform all data pipeline roles, whereas at large organizations, each phase may be specialized. Wikipedia: Data Science describes data science as the interdisciplinary field for extracting knowledge and insights from structured and unstructured data. Artificial Intelligence: Definition and Sub-disciplines Artificial intelligence (AI) refers to the theory and development of computer systems capable of performing tasks that typically require human intelligence, such as visual perception, speech recognition, decision-making, and language translation. (Wikipedia: Artificial Intelligence) The AI discipline is divided into subfields: Reasoning and problem solving Knowledge representation (such as using ontologies or knowledge graphs) Planning (selecting actions in an environment, e.g., chess- or Go-playing bots, self-driving cars) Learning Natural language processing (simulated language, machine translation, chatbots, speech recognition, question answering, summarization) Perception (AI perceives the world with sensors; e.g., cameras, microphones in self-driving cars) Motion and manipulation (robotics, transforming decisions into physical actions via actuators) Social intelligence (AI tuned to human emotions, sentiment analysis, emotion recognition) General intelligence (Artificial General Intelligence, or AGI: a system that generalizes across all domains at or beyond human skill) Applications of AI include autonomous vehicles, medical diagnosis, creating art, proving theorems, playing strategy games, search engines, digital assistants, image recognition, spam filtering, judicial decision prediction, and targeted online advertising. AI has both objective definitions (automation of intellectual tasks) and subjective debates around the threshold for "intelligence." The Turing Test posits that if a human cannot distinguish an AI from another human through conversation, the AI can be considered intelligent. Weak AI targets specific domains, while general AI aspires to domain-independent capability. AlphaGo Movie depicts the use of AI planning and learning in the game of Go. Machine Learning: Within AI Machine learning (ML) is a subdiscipline of AI focused on building models that learn patterns from data and make predictions or decisions. (Wikipedia: Machine Learning) Machine learning involves feeding data (such as spreadsheets of stock prices) into algorithms that detect patterns (learning phase) and generate models, which are then used to predict future outcomes. Although ML started as a distinct subfield, in recent years it has subsumed many of the original AI subdisciplines, becoming the primary approach in areas like natural language processing, computer vision, reasoning, and planning. Deep learning has driven this shift, employing techniques such as neural networks, convolutional networks (image processing), and transformers (language tasks), allowing generalizable solutions across multiple domains. Reinforcement learning, a form of machine learning, enables AI systems to learn sequences of actions in complex environments, such as games or real-world robotics, by maximizing cumulative rewards. Modern unified ML models, such as Google's Pathways and transformer architectures, can now tackle tasks in multiple subdomains (vision, language, decision-making) with a single framework. Data Pipeline and Roles in Data Science Data engineering covers obtaining and storing raw data from various data sources (datasets, databases, streams), aggregating into data lakes, and applying schema or permissions. Feature engineering cleans and transforms raw data (imputation, feature transformation, selection) for machine learning or analytics. Data warehouses store column-oriented, recent slices of data optimized for fast querying and are used by analysts and business intelligence professionals. The analytics branch (data analysts, BI professionals) uses cleaned, curated data to generate human insights and reports. Data analysts apply technical and coding skills, while BI professionals often use specialized tools (e.g., Tableau, Power BI). The machine learning branch uses feature data to train predictive models, automate decisions, and in some cases, trigger actions (robots, recommender systems). The role of a "data scientist" can range from specialist to generalist, depending on team size and industry focus. Historical Context of Artificial Intelligence Early concepts of artificial intelligence appear in Greek mythology (automatons) and Jewish mythology (Golems). Ramon Lull in the 13th century and Leonardo da Vinci constructed early automatons. Contributions: Thomas Bayes (probability inference, 1700s) George Boole (logical reasoning, binary algebra) Gottlob Frege (propositional logic) Charles Babbage and Ada Byron/Lovelace (Analytical Engine, 1832) Alan Turing (Universal Turing Machine, 1936; foundational ideas on computing and AI) John von Neumann (Universal Computing Machine, 1946) Warren McCulloch, Walter Pitts, Frank Rosenblatt (artificial neurons, perceptron, foundation of connectionist/neural net models) John McCarthy, Marvin Minsky, Arthur Samuel, Oliver Selfridge, Ray Solomonoff, Allen Newell, Herbert Simon (Dartmouth Workshop, 1956: "AI" coined) Newell and Simon (Heuristics, General Problem Solver) Feigenbaum (expert systems) GOFAI/symbolism (logic- and knowledge-based systems) The "AI winter" followed the Lighthill report (1970s) due to overpromising and slow real-world progress. AI resurgence in the 1990s was fueled by advances in computation, increased availability of data (the era of "big data"), and improvements in neural network methodologies (notably Geoffrey Hinton's optimization of backpropagation in 2006). The 2010s saw dramatic progress, with companies such as DeepMind (acquired by Google in 2014) achieving state-of-the-art results in reinforcement learning and general AI research. The Sub-disciplines of AI and other resources: AI on Wikipedia Machine Learning on Wikipedia Data Science on Wikipedia Further Learning Resources Artificial Intelligence (Wikipedia) Machine Learning (Wikipedia) Data Science (Wikipedia) AlphaGo Movie AI Sub-disciplines

    S1, E2

    •
    1hr 5min
  • MLG 008 Math for Machine Learning

    SEASON 1, EPISODE 8

    3

    MLG 008 Math for Machine Learning

    Mathematics essential for machine learning includes linear algebra, statistics, and calculus, each serving distinct purposes: linear algebra handles data representation and computation, statistics underpins the algorithms and evaluation, and calculus enables the optimization process. It is recommended to learn the necessary math alongside or after starting with practical machine learning tasks, using targeted resources as needed. In machine learning, linear algebra enables efficient manipulation of data structures like matrices and tensors, statistics informs model formulation and error evaluation, and calculus is applied in training models through processes such as gradient descent for optimization. Links Notes and resources at ocdevel.com/mlg/8 Try a walking desk - stay healthy & sharp while you learn & code Come back here after you've finished Ng's course; or learn these resources in tandem with ML (say 1 day a week). Recommended Approach to Learning Math Direct study of mathematics before beginning machine learning is not necessary; essential math concepts are introduced within most introductory courses. A top-down approach, where one starts building machine learning models and learns the underlying math as needed, is effective for retaining and appreciating mathematical concepts. Allocating a portion of learning time (such as one day per week or 20% of study time) to mathematics while pursuing machine learning is suggested for balanced progress. Linear Algebra in Machine Learning Linear algebra is fundamental for representing and manipulating data as matrices (spreadsheets of features and examples) and vectors (parameter lists like theta). Every operation involving input features and learned parameters during model prediction and transformation leverages linear algebra, particularly matrix and vector multiplication. The concept of tensors generalizes vectors (1D), matrices (2D), and higher-dimensional arrays; tensor operations are central to frameworks like TensorFlow. Linear algebra enables operations that would otherwise require inefficient nested loops to be conducted quickly and efficiently via specialized computation (e.g., SIMD processing on CPUs/GPUs). Statistics in Machine Learning Machine learning algorithms and error measurement techniques are derived from statistics, making it the most complex math branch applied. Hypothesis and loss functions, such as linear regression, logistic regression, and log-likelihood, originate from statistical formulas. Statistics provides both the probability framework (modelling distributions of data, e.g., housing prices in a city) and inference mechanisms (predicting values for new data). Statistics forms the set of "recipes" for model design and evaluation, dictating how data is analyzed and predictions are made. Calculus and Optimization in Machine Learning Calculus is used in the training or "learning" step through differentiation of loss functions, enabling parameter updates via techniques such as gradient descent. The optimization process involves moving through the error space (visualized as valleys and peaks) to minimize prediction error, guided by derivative calculations indicating direction and magnitude of parameter updates. The particular application of calculus in machine learning is called optimization, more specifically convex optimization, which focuses on finding minima in "cup-shaped" error graphs. Calculus is generally conceptually accessible in this context, often relying on practical rules like the power rule or chain rule for finding derivatives of functions used in model training. The Role of Mathematical Foundations Post-Practice Greater depth in mathematics, including advanced topics and the theoretical underpinnings of statistical models and linear algebra, can be pursued after practical familiarity with machine learning tasks. Revisiting math after hands-on machine learning experience leads to better contextual understanding and practical retention. Resources for Learning Mathematics MOOCs, such as Khan Academy, provide video lessons and exercises in calculus, statistics, and linear algebra suitable for foundational knowledge. Textbooks recommended in academic and online communities cover each subject and are supplemented by concise primer PDFs focused on essentials relevant to machine learning. Supplementary resources like The Great Courses offer audio-friendly lectures for deeper or alternative exposure to mathematical concepts, although they may require adaptation for audio-only consumption. Audio courses are best used as supplementary material, with primary learning derived from video, textbooks, or interactive platforms. Summary of Math Branches in Machine Learning Context Linear algebra: manipulates matrices and tensors, enabling data structure operations and parameter computation throughout the model workflow. Statistics: develops probability models and inference mechanisms, providing the basis for prediction functions and error assessments. Calculus: applies differentiation for optimization of model parameters, facilitating the learning or training phase of machine learning via gradient descent. Optimization: a direct application of calculus focused on minimizing error functions, generally incorporated alongside calculus learning.

    S1, E8

    •
    28 min
  • Accelerating Disaster Response with GiveDirectly's Nick Allardice - Ep. 287

    28 JAN

    4

    Accelerating Disaster Response with GiveDirectly's Nick Allardice - Ep. 287

    GiveDirectly president and CEO Nick Allardice explains how his team uses AI, mobile money, and satellite imagery to send cash directly to people living in poverty and crisis, often within days of a disaster. He describes how AI-powered tools help forecast floods in places like Nigeria, Bangladesh, and Mozambique, and how “anticipatory action” can get money to families before disaster strikes.  Learn more about the AI Podcast: ai-podcast.nvidia.com

    28 Jan

    •
    49 min
  • “YouTube wuxuu beddelay Nolosheyda” — Sawda Qaalib

    8 FEB

    5

    “YouTube wuxuu beddelay Nolosheyda” — Sawda Qaalib

    “YouTube wuxuu beddelay Nolosheyda” — Sawda Qaalib

    8 Feb

    •
    2h 35m
  • Anish Acharya: Is SaaS Dead in a World of AI?

    12 FEB

    6

    Anish Acharya: Is SaaS Dead in a World of AI?

    In this episode from 20VC, Harry Stebbings talks with Anish Acharya, general partner at a16z, about the future of SaaS in an AI world. Anish argues that software is completely oversold and that the general story about vibe coding everything is flat wrong. They discuss why SaaS switching costs are actually going down thanks to coding agents, where startups versus incumbents will win, and whether the apps layer or foundation models will capture more value. They also cover agent overhype, the changing UI paradigm, what defensibility looks like now, and why boring wins versus weird wins in this product cycle.   Resources: Follow Anish Acharya on X:  https://twitter.com/illscience Follow Harry Stebbings on X:  https://twitter.com/HarryStebbings Listen to more from 20VC: https://www.thetwentyminutevc.com/ Check out 20VC's YouTube: https://www.youtube.com/@20VC   Stay Updated: Find a16z on YouTube: YouTube Find a16z on X Find a16z on LinkedIn Listen to the a16z Show on Spotify Listen to the a16z Show on Apple Podcasts Follow our host: https://twitter.com/eriktorenberg   Please note that the content here is for informational purposes only; should NOT be taken as legal, business, tax, or investment advice or be used to evaluate any investment or security; and is not directed at any investors or potential investors in any a16z fund. a16z and its affiliates may maintain investments in the companies discussed. For more details please see a16z.com/disclosures. Hosted by Simplecast, an AdsWizz company. See pcm.adswizz.com for information about our collection and use of personal data for advertising.

    12 Feb

    •
    1hr 22min
  • #1 - Rethinking Advice Commonly Given to Aspiring Junior Devs

    27/09/2022

    7

    #1 - Rethinking Advice Commonly Given to Aspiring Junior Devs

    Mike Kang, CEO & Co-founder of Launch Up and previous EM @ Clearco (a fintech unicorn in Toronto), talks about the process of breaking into the tech industry as a Junior Software Engineer. Here we talk about three broad pieces of advice that are given to aspiring juniors, and why we should rethink the advice that is given! 1.  Apply to tons of companies! 2.  Just do some Leetcode questions! 3.  Make more personal projects!  After interviewing hundreds of bootcamp graduates, and interviewing many more when he was part of the Engineering Management team at Clearco, some of the details really become self-evident. Episode 1 is all about framing the advice that we get so that folks can make progress in their careers!

    27/09/2022

    •
    25 min
  • a16z's New Media Playbook

    27 FEB

    8

    a16z's New Media Playbook

    Erik Torenberg, Ben Horowitz, and Marc Andreessen discuss how the media landscape has fundamentally changed and what a16z is doing about it. They cover why offense beats defense, why individuals now matter more than corporate brands, why speed wins in the new media landscape, and the difference between oral and written culture on the internet.   Resources: Follow Erik Torenberg on X: https://twitter.com/eriktorenberg Follow Ben Horowitz on X: https://twitter.com/bhorowitz Follow Marc Andreessen on X: https://twitter.com/bhorowitz Stay Updated: Find a16z on YouTube: YouTube Find a16z on X Find a16z on LinkedIn Listen to the a16z Show on Spotify Listen to the a16z Show on Apple Podcasts Follow our host: https://twitter.com/eriktorenberg   Please note that the content here is for informational purposes only; should NOT be taken as legal, business, tax, or investment advice or be used to evaluate any investment or security; and is not directed at any investors or potential investors in any a16z fund. a16z and its affiliates may maintain investments in the companies discussed. For more details please see a16z.com/disclosures. Hosted by Simplecast, an AdsWizz company. See pcm.adswizz.com for information about our collection and use of personal data for advertising.

    27 Feb

    •
    48 min
  • How to Build with the Department of Defense

    02/04/2025

    9

    How to Build with the Department of Defense

    When people think about startups working with the government, the phrase “black box” often comes up. But what if that box is finally being pried open? In this episode—recorded live at the American Dynamism Summit in DC—we talk with two Chief Technology Officers at the heart of American defense: Alex Miller, CTO for the Chief of Staff of the Army, and Justin Fanelli, CTO at the Department of the Navy. Along with a16z partner Leila Hay, they break down how the Department of Defense is shifting from decades-old processes to software-speed execution, why the real bottlenecks are cultural, not technical, and how startups can actually navigate and scale within this massive system. From replacing outdated procurement with faster pathways, to getting tech into the hands of warfighters faster, this is a rare look inside the government’s most ambitious efforts to modernize—and what it means for builders on the outside. Is it time to rip up the system and start fresh? Or are the seeds of change already in the ground? Resources:  DoD Contracts for Startups 101: https://a16z.com/dod-contracting-for-startups-101/ Find Justin on LinkedIn: https://www.linkedin.com/in/justinfanelli/ Find Leila on LinkedIn: https://www.linkedin.com/in/leilahay/ Stay Updated:  Let us know what you think: https://ratethispodcast.com/a16z Find a16z on Twitter: https://twitter.com/a16z Find a16z on LinkedIn: https://www.linkedin.com/company/a16z Subscribe on your favorite podcast app: https://a16z.simplecast.com/ Follow our host: https://twitter.com/stephsmithio Please note that the content here is for informational purposes only; should NOT be taken as legal, business, tax, or investment advice or be used to evaluate any investment or security; and is not directed at any investors or potential investors in any a16z fund. a16z and its affiliates may maintain investments in the companies discussed. For more details please see a16z.com/disclosures. Stay Updated: Find a16z on YouTube: YouTube Find a16z on X Find a16z on LinkedIn Listen to the a16z Show on Spotify Listen to the a16z Show on Apple Podcasts Follow our host: https://twitter.com/eriktorenberg   Please note that the content here is for informational purposes only; should NOT be taken as legal, business, tax, or investment advice or be used to evaluate any investment or security; and is not directed at any investors or potential investors in any a16z fund. a16z and its affiliates may maintain investments in the companies discussed. For more details please see a16z.com/disclosures. Hosted by Simplecast, an AdsWizz company. See pcm.adswizz.com for information about our collection and use of personal data for advertising.

    02/04/2025

    •
    51 min
  • Waxaan Dib u Bartay Micnaha Noolasha, Iimaanka Imtixaanka&Xaqiiqada Caddaaladda Eebbe”~Sh. Dr. Ali Mohamed Salah 

    21 JAN

    10

    Waxaan Dib u Bartay Micnaha Noolasha, Iimaanka Imtixaanka&Xaqiiqada Caddaaladda Eebbe”~Sh. Dr. Ali Mohamed Salah 

    Waxaan Dib u Bartay Micnaha Noolasha, Iimaanka Imtixaanka&Xaqiiqada Caddaaladda Eebbe”~Sh. Dr. Ali Mohamed Salah

    21 Jan

    •
    1hr 34min

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  • Deutschland
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  • Iceland
  • Ireland
  • Italia
  • Kosovo
  • Latvia
  • Lithuania
  • Luxembourg (English)
  • Malta
  • Moldova, Republic Of
  • Montenegro
  • Nederland
  • North Macedonia
  • Norway
  • Poland
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  • Romania
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  • Slovakia
  • Slovenia
  • España
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  • Ukraine
  • United Kingdom

Latin America and the Caribbean

  • Anguilla
  • Antigua and Barbuda
  • Argentina (Español)
  • Bahamas
  • Barbados
  • Belize
  • Bermuda
  • Bolivia (Español)
  • Brasil
  • Virgin Islands, British
  • Cayman Islands
  • Chile (Español)
  • Colombia (Español)
  • Costa Rica (Español)
  • Dominica
  • República Dominicana
  • Ecuador (Español)
  • El Salvador (Español)
  • Grenada
  • Guatemala (Español)
  • Guyana
  • Honduras (Español)
  • Jamaica
  • México
  • Montserrat
  • Nicaragua (Español)
  • Panamá
  • Paraguay (Español)
  • Perú
  • St. Kitts and Nevis
  • Saint Lucia
  • St. Vincent and The Grenadines
  • Suriname
  • Trinidad and Tobago
  • Turks and Caicos
  • Uruguay (English)
  • Venezuela (Español)

The United States and Canada

  • Canada (English)
  • Canada (Français)
  • United States
  • Estados Unidos (Español México)
  • الولايات المتحدة
  • США
  • 美国 (简体中文)
  • États-Unis (Français France)
  • 미국
  • Estados Unidos (Português Brasil)
  • Hoa Kỳ
  • 美國 (繁體中文台灣)