Learn Heatmaps in Excel

As the primary reason of the existence of Resagratia which is to democratize data analytics and support the future workforce, Resagratia brings you closer to working on real life projects through the use of case study courses. Case study courses are in-depth, detailed examination of peculiar scenarios within a real world context. Typically, case study data are gathered from different sources through the use of several methods in order to portray data-driven research in a way that adequately supports continuous learning lifelong learning.

Curriculum Content

Designing Heatmaps in Excel

Heat Maps are graphical representations of data through the use of color-codes that depicts different meanings and perhaps resonates emotionally with viewers. The primary purpose of Heat Maps is to better visualize the volume of locations/events/periods within a dataset and assist in directing viewers towards areas on data visualizations that matter most. But they're much more than that. Come peek into how you can make use of Heatmaps to creatively visualize Twitter activities of commercials banks. Come on now and get cracking… .

1 hour

Personalized course work

Study group sessions

Expert tutors

Organizations where some of our students come from

/static/media/cu.9b013cf236264c32c994.png
/static/media/lbschool.097d77e16cc33d3b5f1e.png
/static/media/egbin-power.af5e008af772f9565023.png
/static/media/m-kopa.7b2b8a0d882f84b6d223.png
/static/media/shell.23463a783a2912e9e382.png
data:image/png;base64,iVBORw0KGgoAAAANSUhEUgAAAXUAAAESCAMAAAA10rUYAAAABGdBTUEAALGPC/xhBQAAACBjSFJNAAB6JgAAgIQAAPoAAACA6AAAdTAAAOpgAAA6mAAAF3CculE8AAAAllBMVEX///8AAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAA//8A//8A//8A//8A//8A//8A//8A//8A//8A//8A//8A//8A//8A//8A//8AS/8AS/8AS/8AS/8AS/8AS/8AS/8AS/8AS/8AS/8AS/8AS/8AS/8AS/8AS/8AAAAA//8AS//////SWfDbAAAALnRSTlMAIEBwgJDAUBAw8GDgoNCwMEBQgCAQwODQsJCg8GBwMEBwgGAgkMDw4LDQEKBQb551kAAAAAFiS0dEAIgFHUgAAAAJcEhZcwAALEoAACxKAXd6dE0AAAAHdElNRQflBBUCFQbFSLazAAARsklEQVR42u2d6XbiOBBGjbGNMcYkIUz2QPZ0pxPy/k83OAS8SlWlDcvo+zNn+hAvF1EqSbV43hFp4A+DMNorCIKRHx/6oXqt8TBKvtqUROFkcOin66UGYfrFVTqduEGvVn70hdH40M/ZJ41xzL++/EM/aY8UIJk76uoUZ2jojroqjRM8dEddkUjQHXU1okF31JWIYtMddVWa0aA76io0IkIvU499ntxyiqmYZtSr1H3uB6NDv1t3hV8dOerKRB/qjrq86EPdUZdXikTtqCsU2YFx1BVo6qgfQPS51FGX1lgAuqMuq6GjfgBRt2AcdRUS8BsddWmJQHfUJeUjGE+H/mAz7fr+MIwcdRWCqQfVmCM/zBx1WUGbMEnLDvlgWPpHR11AEHXw1MhRFxBAPQQv4KgLCHDX4ThSR11A/MjGGXwBR11AfOpD+AJ86rCFOkrxqSMiMPjUg0O/XzfFp45ID3DUBcSnjrhAh6gPfF9z7tTJ6dl8p9PTc+Hr9IB67AfTqLyJl0XTYKQ4/mlxNv/vYl3X5dX8dHF81OPJlLlpGoUjRSP/7Ppyzdbl9ckxUY8n4OFAFkqP+bOb2zWk25vTI6E+mOJOfJPpSPwm59cw8q0u5gRTw6cewOKHGET7z43URp0OKKENaSiWJXv6HxL5Vjfo6RWbdadYkmvWOCTfcKKbOYW7ldR9kWPHdEiaW0/ozPHcbaROHui/SgI098W1EPN8Yp33knos8cgJcnY/w86hbbo86R91agpVTSnCoVncSDDPBQ5326gPRAIEq7eG/JmTC0nom+EOWHfLqEuO9K34ZuZOmnlu3fmrJruoK4HO3/WXtS473fWHukjUd4vYNmZxpQj6xofsC/WJmptP2dAv5WljsNtEXX4m/VHC9NqVQudht4m6UPhxU8zJVDF0DnaLqGNCMhFiDnXl0NnYLaKeqbk1cxtMbOOFr2vbqYvkCrYoZV1flctYVbsDaQ91RU/KGupKFkctOrGa+kDvjU80QV/fth0xWUNddHu3JkZc1UJ+74Wl/2ymDh1kJNE0PyiMIqH7qluSNnVvL3W+gUnKoQADTrQGYy/gTCP09W1zA9IW6tzNgFnDBR8Ms7YPMvYCFjKHGLCaNsYW6jyz3s5yEDRHPGOoCx/XIdVwH22hznnOjPlHo9oeAmMvQJv/slPDj7GFOudavDO5SqgSay9Ax6K0qvqRHjDlw8q4F0gZf0XOJuDcg/+HcbDnzhjqp9qhr9e1CdWSiDtOZY8M+tsdd9ZegP6h3tgGs4Q65y4g9Zx7/kHGXoCJob5eVy27/dQxCSV5WOQhh3rdsveAOu4erIDWcyPQ17d9o55IBQjr9tV3qvjsPaD+lcgUa9a7LC1UWaD2gbrMbbTuwFRUdh77Qf0rEx3uOjcbqypvPVpCHS7ZFIlxNwZ9fdlH6kLpGAYNTMXE2EIdtV+UBtT8I1MeTK477NsgXsIQdWyEY0Zr0qfv4K6p0q6ALdUbCCGOMzz4hUHo6wv7qNNCBLDgTZr1smG3hTo58muGmVvnRqmf2UedXk84mYKPb2bna6diB8wa6gLdP+AcU5OT6Xp9ZR910TCkKW9vzCj00jrJHupCgz0Xe/Wk/Zi6Jgupi1WK/1F60GMku6nLBLC379KYdRzX6306pE3Uie1Aq5q2zKtmHUdLqcvl4CXNuBlHHSW5cOpGEI6jjpNcmm9WszKOuhHsadV5d9SxEuiVWFI1nqCv1AWOdyCNpDKsk/KRQV+p62hwPZCKQy7bdkedoqHMcC/VlHfUSSJVc6yrKCpvem16Yjf1zW3FzUxh2vu6D6ONuueNhcf7PlHEUGRpn6h7XjwUauJXeiqz0ItQR5upe/mAF5lY94NdfW0SnoydJemmvtFIAPxurWQuyjGXsXNTA9Rz8CHR1OwyVM26jkW1wV5Q32hMAp/8/pVZJ6bITeoLdY+Zxd6qXxPT09gvk9Rz8HDPh612KyWT06m5OEfD1L282QZm/bQz7J2M6bWQupfXbQC9mp3vaNKwl1JO+0h9ownAfZ98aioZrJoO1lPqYOeN3ef0VLZrEz4vSZo6omkkSYRTEn5Awe5T5rYdyzntdp3gBS1lj8Sw7z9lKsD0qvxomqmr7Sqbl0dO8D2neO+2/5Cp5ekZ9skUUE/gCxC0fVj0cOcN9v2HDO32XrS8iDbqXxLd0JgUE6R15xSVKWUXmplPq+UFdVNXaGJKodQRqmBDjKJuZLDfUurDyFNX6MVUFvtTuaTM8mAwkSZTK/wlTT3+AtRmDsYCcTJ1hjB3TsB7mbqB3IF6kTtp6nCueb0Pmh+mAoYnbu7kQtw5e7+VEpD6LTutxh2GOryvnYS7dtLjURAl9bGGU+tac8abrHmxeZV1xLnubYGL+qPJUxcKkSBTZ/kjKbNZL3eRVH0x3T57o2WVPHWhcE8y9Yx9rTRsGfED/kZ7zTbp3Wa/ajydPHWhBAoqdeirjcJJ6VnBw416vTutE2pL3Xt56kJNAIjUcZ2Skt/CqPAnG/WUddqYs+b7yFP3pCJScFJdTbhpkvTZmBvy+6Coi0S+0agr6sS2V8vukDY/5pLeVwNFXYQJibpwVjVLbbWZNW20357Qf7so6uDqVJa6ok5shVpXV/daqLf3OVVAXcTEUKgr6sRWiNHnQccSldHlVAV1ASwE6rFg4C5brI0E9djvGXdSQV3AxSBQFy/awBC74r5q7II9H5HU6YOdMtYVNfDdKeEcRanFLtrfFBtYQR7spNkUCm6hiXu6pRL7nH0bNdTHyDcWo+6NM3XQgY4e6rDz2oWroU7eAlO9D6Puxop6P96e8m6iiDrVxtB3ejMl0DM4vuBUxSr18kSCFp56TKMicIgtldqLh+55C/mD1JsF/xaqqBMbqIuEDsg7M9hIGskdyNsz6AbKqHuDTDP1jZmR23vEt8Y6kRnuVwvw+uqoezGBiWiYjExKNell7kWt+8Up4uoKqVM8DfHgJF/QzoSkCuEb6y6UxnE7R11cKXW8CZAJCUOkYjTvJ9Dd55zsu9/OYeOigTraBEgG4o1om7+CPTe882uKnbnAMldPPTcB0FBMprSGAG2KJzPkiE9CatuHkhZ32KO9K9Bx0Urdy3OdM9YVs+lQqpVXWT77NsUXLB1UfD6HwV/en5OuqYX6RrE/DErNT/M+p0EwUp6mFPvBjLX/ns5UfcHn91dsU3Nxc4e2LL2SPwnC4itOomgaTHxpI1bV+d38v/qgv7yan9EGuZOIFqcbzef3+X8O/SxOTk5OTk5OTk5OTk5OTk5OB9fY94dBronvS+ytt2m5Wj085nparZ7Nv5nvT35ezPeFdlMHu7/fgFG4OegPw6h+2JFGwUTBju/y4eX17buq99eXp6W6p+e/WlB7s3QWEDbO/WBWP4yIVBx1jIecs4JkNpQY9cuH12+m3v48kEf9dsSx1HxS1vkc7tAmZieCyp36YArGZmLgly/v35D+EsHTzpImvHdLA8BWQEEV4AVY3yW6DntErdXx8QAj/wX/pIn6BHq5hIcN/Ov8AtSoFY/aYyOhfLPP/5DIt6bm8UM9dT9DvFTKMvA+cjgmxCo+9L4maO405j/6h+SOpo5t/Nc6WgeE+JWMYH3FesmguAswx493JHVC6GgLNVoQNLaYmucJBIFtlYIz9+ObCPScO8a+46j7lNdLal5gTM7SxdXexBqtVkXcX9TqryDzXK+wP4OiTsxZr2IfC8CZgs8t2+uU+4t6lGCeD/cHFdTJhQLK2MUS6EDsCjJmWDkEzzIDfas/gHVHUBeozlDkdIqWuwBcGbnGj7/KWhfEn6IWvax3/kYBTF2IW/Z7efHcOe58pyglry2RQNK67K0Md1IFqQsO1u2EKJFJlHCmO1XZ1mnTxgj5i63iGXeIunA3+rGEefkRM8SdkokDP2NFH3+UQd8smYSpixfEyaRLGDGcDGKOJUeNueNDfh7FYQeoS7zhZCQJJY31Qo80Q+dg51OXecNU2s0I6A9MUHPieJXnjMSuunqcSrXVFFFXtqRhX9RNpIWe7KPeYtklF6QlZfVLK3IZa/q0j3q9xKjKEoN1V/1TC/Tvt6V11OuunbAb21R9y2GpYkXapvcP66hXM//VuS+NimvK3ZdCf6yjXjUx6ox6Y6i/aIPeOqN2m3rFxKis61jzjlYaoX+/PdtGveTeqazrWBvqH9hAADG92kZ9Vjwpfp8xnQWjbUTZwJ8EUcsUXLPqepzGQp+WUS8MO7bMe0us0Tio/UxqQ/1ZM/SmH0OiHkXRNIokfulZFIWosvR77Q0w6vA1CRj7w+PKmrbmq6vcaGzXoyj1qBSK6IcCjnMaFi87Rjf23p+XY5jzggviwkLVlqUr7dC/32qDHUm90ZqIehya1okgC8kM8c8JRbnsg3Jqj6J+0wsc7Kh3b4voolWca9s+REXJBNihniGign9PW6vfjoGh3hjsGOqMKoj4TZGknQhmgf/rxIBWHVe/7ucYqjaX6thqhAY7gvqM9Q5Y7AlrGCKwb48eQAcGHS42rZ+Da3dgtnonUufU+0Qu0dm/fdhwRJgbJYScg0mtlYluX32nyr4ASJ13Vo/ogffFD22Blz4/H+P/JijQNz+w6v/qXZYWqmyCgdS5MYcYf45bzg5e5uefAk5gZepaadpWb1F5NwainvIfGjEt8JmAc0P+Ib67JNArtZCZuTRXOT4GwgZFvskNdUQvpPxD3M9gIlHZ0nWY0dRfAnUovh70QqCRCLn90FebSiVOmjMw398llx2gPoMeG1wrQVCgX4sHeDByxQp1nmbUVfJiAOpglhBkl+HSsDD1TGZY8KXv4K6pUnAMQB30yaD1C5x2ATwB0PFNLmP9wyD08kIJfGdIgGGHDUAIPQHPBslNpUbNetl35FNHlI4GvjZ4LAK9v/grKcniDKYWplsVR0p8aAirCUyn8AV86AKcR5QsKG7gPKOsYgeMTx2RDMdf06fwBUDqnOWr1ALJM7cdsFWxKaCZOmIwAu1RuU6ObJETo9BLsQKHpw64jrxubxni6jwtzVL/RlJHJPXzVzkKqHMsEL4VT7tW3aSOWPjxzbIC6px1mKxZN+s4fn+v7KHOMWGyrQvMOo59oS4J3VF31B11R91Rd9QddUfdUT8a6s5f10adszaV7XHn1qZM6m4f5hDUj2/PsQvU+7O/XsQhWUD96M6SOkFd47mpieSYQthz005QP7oYgU5QP7p4mE5Q54aX9TH2qxPUuRkhkoO9k3GO3aB+bDG93aDek/j1UoqMDdSPLVejI9T5Ob69y0vqCHUgn0Omw1UXc/A6Ql1pvmnN1zRlYioFkeygrjG32pQXQ8it7gp1KA8H33YmPFAdgbfKTe2grqxmRn6dmtNjJnOAUjOjM9QR9WEQewPbXj9J1+vDdIa6ilpI+zpCXa+F1B3qmDoRKb/u194R6nrdr+5QR5bKYtW4G1TastZcHv2DnVbjrkPUsfUcZ5NmPcd6Rb2O13PsEHVCbeR0GvjbJ4/9UTCzrnZpl6irrNNby3LrWJ3eLlFXWZM66XRN6k5RV1l/vZ7SqXNfoKVJmE3Uj6XXQLeoH0tfjY5R19lD5kkPdJEeMl2jrrNfkh7T3t6myjLqtvUGY7TbtI26uhm1WZRV/Ywq1geve9SPoedjB6kfQ3/TDlJXiL3Zy1cldvFevl2kTmxzwFGms2/1I+eVbaSuzIFs69GuyoGU69HeSerkZiqtSlsDOp5UrFLfl7w3tpW6N86koc8Y56xLeeP++uFxZSt1L5a0Mgm7ptmHpJV5e/AAWUt9F2chqIgbyLGSOeZ4ffYgWUy93O6LKDBW7EP4UO/tyYNlM/X86F8IOhQ5k+tZzId8/IAvbTt1dGO3sqbIDLIVPWLjH2xcekG93s4RErMrZJuWpPH+9oJk3gfqGzsTYOfVbELMYnp+xM6rf59QtqU/1POnmMLLpjQUSupY/YOXTe8vS9I1e0Ldyzv28t5lNpTIo1k+8kz86wMNee/kB9MG+iQKZYjvtHr410D/9vpy7MT3in1/FGzl+7KlwWparT4ft/pcrQ79ohr1P/VEJCx3GEExAAAAJXRFWHRkYXRlOmNyZWF0ZQAyMDIxLTA0LTIxVDAyOjIxOjA2KzAwOjAwPKpcCAAAACV0RVh0ZGF0ZTptb2RpZnkAMjAyMS0wNC0yMVQwMjoyMTowNiswMDowME335LQAAAAASUVORK5CYII=
/static/media/trade-depot.b963d0ac0cbf3f682df8.png
/static/media/uofibadan.e72d2718d02929786cde.png
/static/media/dangote.2b0773bb79fcfa46c9a7.jpg
data:image/png;base64,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

Want to skill up?

Join our learners to gain in-demand skills

FAQs

Frequently asked questions

  • Do I need to have prerequisite knowledge of case study topics?

    No, as all case study courses will cover the basic domain knowledge needed to be able to undertake the course for you to be fully immersed in your learning journey

  • Is the Course free?

    Full access to the case study courses are only provided for premium users

  • How is a case study project of benefit to me?

    Asides from building your data analytics portfolio, you will gain the confidence and skills of a professional data analyst with real-life project experience

  • What do I need to get started?

    There is little or no prerequisite knowledge required to get started. However, you do need access to stable internet to get the best out of the learning contents

resa logo

Empowering individuals and businesses with the tools to harness data, drive innovation, and achieve excellence in a digital world.

2025Resagratia (a brand of Resa Data Solutions Ltd). All Rights Reserved.