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Remembering Event

In: Other Topics

Submitted By rakish666
Words 521
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The most important birthday of my life is my 11th birthday .I remember as its yesterday. It was a beautiful Saturday morning when I woke up due to a loudly noise. It was 8:00 am then I knew that it was October 12, my birthday. I took a long, cold shower to calm myself down and got dressed. I was too excited. I was still in bed when all of the sudden I started to hear noise at the outside of my room. I went down stairs to the kitchen. Just as I entered the kitchen I became aware of a delicious smell. My mom had prepared French toast which is my favorite breakfast. She was cutting tomatoes into cubic pieces. The cutting noise could hear by my room. It was now 11am. I was helping my mom prepare the chicken wings. A birthday party must be planned effectively to goal its success I had been looking forward to the party for at least two months. It cannot be a last minute planning. I will not be caught unprepared again. I‘ve been concentrated on the planning of the party for a month. Everyone had read the RSVP deadline and called in a week ahead of schedule. The weather was sunny so I didn’t have doubt about bad weather. I was keep tracking of forecast a week.

It was to be my first party at our new house. There are only a few hours till my party starts. I set up the new stereo system. When the time drew near for me to be ready for the party, I put on my birthday dress which I was specially sewn for me. Suddenly I hear a knock on the front door. I opened the door for my relatives who came to my party two hours early. I thought I am going to screw up. However I took a deep breath ,calm myself down ,and say hello to my relatives who came to my party two hours early.

A few minutes later, my parents bring my birthday cake with eleven candles on it. It was a large and beautiful cake. I wish a big red Ferrari and blew out the candles. Music was played throughout the birthday party. My mother ordered party size pizzas and sodas.

The rest of the party went well. And I never wondered why I didn't have a backup plan because I didn’t screwed up. I received all the gifts from my friends I thought I'd get. I unpacked all my birthday gifts. My parents bought me Disneyland tickets. I thanked my parents for such a pleasant birthday gift for me.

In the end the party was great. A day I shall always remember is the day when I celebrated my eleven birthday. All my friends and relatives were invited to the birthday party. This party was the most important birthday part of my life because all my relatives came to my party. I had gone to bed that night with dreams of new gifts for my twelve birthday. Next year, I did my birthday at Disneyland.

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