The post Today’s Wordle #1676 Hints And Answer For Tuesday, January 20 appeared on BitcoinEthereumNews.com. How to solve today’s Wordle. SOPA Images/LightRocketThe post Today’s Wordle #1676 Hints And Answer For Tuesday, January 20 appeared on BitcoinEthereumNews.com. How to solve today’s Wordle. SOPA Images/LightRocket

Today’s Wordle #1676 Hints And Answer For Tuesday, January 20

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How to solve today’s Wordle.

SOPA Images/LightRocket via Getty Images

Another lovely January Tuesday and another Wordle to solve. The three-day weekend is over and it’s time to get to our daily puzzle. Let’s dive right in!

Looking for Monday’s Wordle? Check out our guide right here.


Today’s Bonus Wordle

Now that we can create our own custom Wordles, I’m including a bonus Wordle with each daily Wordle guide. These can be 4 to 7 letters long. Hopefully this is a fun extra challenge. Click the link below to play the Wordle I hand-crafted for you.

Today’s Bonus Custom Wordle is 7 letters long.

The hint: Scary!

The clue: This Wordle begins and ends with consonants.

Play Puzzles & Games on Forbes

Yesterday’s Custom Wordle Answer: BARD


How To Solve Today’s Wordle

How To Play Wordle

Wordle game website displayed on a phone screen is seen in this illustration photo taken in Poland on August 6, 2024. (Photo by Jakub Porzycki/NurPhoto via Getty Images)

NurPhoto via Getty Images

Wordle is a daily word puzzle game where your goal is to guess a hidden five-letter word in six tries or fewer. After each guess, the game gives feedback to help you get closer to the answer:

  • Green: The letter is in the word and in the correct spot.
  • Yellow: The letter is in the word, but in the wrong spot.
  • Gray: The letter is not in the word at all.

Use these clues to narrow down your guesses. Every day brings a new word, and everyone around the world is trying to solve the same puzzle. Some Wordlers also play Competitive Wordle against friends, family, the Wordle Bot or even against me, your humble narrator. See rules for Competitive Wordle toward the end of this post.


Today’s Wordle Hints And Answer

  • Wordle Bot’s Starting Word: SLATE
  • My Starting Word Today: SLATE (19 words remaining)
  • The Hint: To stain or defile, either physically or figuratively.
  • The Clue: This Wordle has a double letter.

Okay, spoilers below! The answer is coming!

.

.

.

The Answer:

Today’s Wordle

Screenshot: Erik Kain

Wordle Bot Analysis

Every day I check Wordle Bot to help analyze my guessing game. You can check your Wordle score with Wordle Bot right here.


Despite a good start — using Wordle Bot’s favorite word left me with just 19 possible solutions — I still took four tries today. CHOIR did nothing for me (the Bot suggested after that CHILL would have been more efficient) and SULKY was so close but no cigar. I’m not sulking, however. At least I got SULLY on the next guess!

Competitive Wordle Score

Wordle Bot

Screenshot: Erik Kain

I get 0 for guessing in four and -1 for losing to the Bot. The Bot gets +1 for beating me and +1 for guessing in three. Our new January totals are:

Erik: 15 points

Wordle Bot: 4 points


How To Play Competitive Wordle

  • Guessing in 1 is worth 3 points; guessing in 2 is worth 2 points; guessing in 3 is worth 1 point; guessing in 4 is worth 0 points; guessing in 5 is -1 points; guessing in 6 is -2 points and missing the Wordle is -3 points.
  • If you beat your opponent you get 1 point. If you tie, you get 0 points. And if you lose to your opponent, you get -1 point. Add it up to get your score. Keep a daily running score or just play for a new score each day.
  • Fridays are 2XP, meaning you double your points—positive or negative.
  • You can keep a running tally or just play day-by-day. Enjoy!

Today’s Wordle Etymology

Sully comes from Anglo-French souiller “to soil, defile,” from Old French soillier/souiller, ultimately related to Latin solium meaning “mud, mire.” The sense has always been figurative as well as literal—staining something physically or morally.

Be sure to follow me for all your daily puzzle-solving guides, TV show and movie reviews and more here on this blog!

Source: https://www.forbes.com/sites/erikkain/2026/01/19/nyt-wordle-tuesday/

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